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Saving train state of step 1000

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  1. .gitignore +1 -0
  2. Makefile +9 -0
  3. README.md +638 -0
  4. added_tokens.json +1611 -0
  5. checkpoint-1000-epoch-71/added_tokens.json +1611 -0
  6. checkpoint-1000-epoch-71/config.json +46 -0
  7. checkpoint-1000-epoch-71/generation_config.json +255 -0
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  9. checkpoint-1000-epoch-71/model.safetensors +3 -0
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  11. checkpoint-1000-epoch-71/normalizer.json +1742 -0
  12. checkpoint-1000-epoch-71/optimizer.bin +3 -0
  13. checkpoint-1000-epoch-71/preprocessor_config.json +15 -0
  14. checkpoint-1000-epoch-71/random_states_0.pkl +3 -0
  15. checkpoint-1000-epoch-71/scheduler.bin +3 -0
  16. checkpoint-1000-epoch-71/special_tokens_map.json +139 -0
  17. checkpoint-1000-epoch-71/tokenizer.json +0 -0
  18. checkpoint-1000-epoch-71/tokenizer_config.json +0 -0
  19. checkpoint-1000-epoch-71/vocab.json +0 -0
  20. config.json +46 -0
  21. create_student_model.py +231 -0
  22. distil-large-v3-init/added_tokens.json +1611 -0
  23. distil-large-v3-init/config.json +46 -0
  24. distil-large-v3-init/generation_config.json +255 -0
  25. distil-large-v3-init/merges.txt +0 -0
  26. distil-large-v3-init/model.safetensors +3 -0
  27. distil-large-v3-init/normalizer.json +1742 -0
  28. distil-large-v3-init/preprocessor_config.json +15 -0
  29. distil-large-v3-init/special_tokens_map.json +139 -0
  30. distil-large-v3-init/tokenizer_config.json +0 -0
  31. distil-large-v3-init/vocab.json +0 -0
  32. distil-whisper/events.out.tfevents.1776269580.instance-20260324-055147.424046.0 +3 -0
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  46. distil_whisper.egg-info/PKG-INFO +660 -0
  47. distil_whisper.egg-info/SOURCES.txt +8 -0
  48. distil_whisper.egg-info/dependency_links.txt +1 -0
  49. distil_whisper.egg-info/requires.txt +12 -0
  50. distil_whisper.egg-info/top_level.txt +1 -0
.gitignore ADDED
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+ wandb
Makefile ADDED
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+ check_dirs := .
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+
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+ quality:
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+ black --check $(check_dirs)
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+ ruff $(check_dirs)
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+
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+ style:
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+ black $(check_dirs)
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+ ruff $(check_dirs) --fix
README.md ADDED
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+ ## Training Distil-Whisper
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+
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+ This sub-folder contains all the scripts required to train a Distil-Whisper model in your choice of language. They are
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+ slightly modified from the original scripts used to distill Whisper for English ASR (as-per the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430)).
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+ The main difference is that these scripts are written in [PyTorch](https://pytorch.org), whereas the original scripts
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+ are in [JAX](https://jax.readthedocs.io/en/latest/#)/[Flax](https://flax.readthedocs.io/en/latest/). These scripts are
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+ also made to be easier to run end-to-end, whereas the original scripts require more steps and are somewhat hard-coded
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+ for English ASR. Both sets of scripts achieve equivalent downstream results when the hyper-parameters are set equal.
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+
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+ If you are interested in reproducing the original Distil-Whisper checkpoints, we refer you to the sub-folder [Flax Training](./flax/README.md).
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+ Otherwise, if you wish to distill Whisper on your own language/dataset, we recommend you use these scripts for ease of use
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+ and the configurability they provide.
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+
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+ Reproducing the Distil-Whisper project requires four stages to be completed in successive order:
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+
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+ 1. [Pseudo-labelling](#1-pseudo-labelling)
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+ 2. [Initialisation](#2-initialisation)
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+ 3. [Training](#3-training)
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+ 4. [Evaluation](#4-evaluation)
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+
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+ This README is partitioned according to the four stages. Each section provides a minimal example for running the
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+ scripts used in the project. We will use a running example of distilling the Whisper model for Hindi speech recognition
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+ on the Common Voice dataset. Note that this dataset only contains ~20 hours of audio data. Thus, it can be run extremely
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+ quickly, but does not provide sufficient data to achieve optimal performance. We recommend training on upwards of 1000
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+ hours of data should you want to match the performance of Whisper on high-resource languages.
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+
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+ ## Requirements
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+
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+ The Distil-Whisper training code is written in [PyTorch](https://pytorch.org) and [Accelerate](https://huggingface.co/docs/accelerate/index).
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+ It heavily leverages the Whisper implementation in [🤗 Transformers](https://github.com/huggingface/transformers) for both
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+ training and inference.
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+
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+ The instructions for installing the package are as follows:
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+ 1. Install PyTorch from the [official instructions](https://pytorch.org/get-started/locally/), ensuring you install the correct version for your hardware and CUDA version.
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+ 2. Fork the `distil-whisper` repository by clicking on the [fork](https://github.com/huggingface/distil-whisper/fork) button on the reopsitory's page
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+ 3. Clone the `distil-whisper` repository and add the base repository as a remote. This will allow you to "pull" any upstream changes that are made to the base repository:
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+
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+ ```bash
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+ git clone https://github.com/<your GitHub handle>/distil-whisper.git
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+ cd distil-whisper
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+ git remote add upstream https://github.com/huggingface/distil-whisper.git
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+ ```
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+ 4. pip install the required packages from the [setup.py](./setup.py) file:
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+ ```bash
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+ cd training
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+ pip install -e .
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+ cd ../..
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+ ```
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+
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+ 5. Configure Accelerate by running the following command. Note that you should set the number of GPUs you wish to use for distillation, and also the data type (dtype) to your preferred dtype for training/inference (e.g. `bfloat16` on A100 GPUs, `float16` on V100 GPUs, etc.):
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+
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+ ```bash
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+ accelerate config
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+ ```
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+
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+ 6. The last thing we need to do is link our Hugging Face account so that we can pull/push model repositories on the Hub. This will allow us to save our final distilled weights on the Hub so that we can share them with the community. Run the command:
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+
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+ ```bash
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+ git config --global credential.helper store
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+ huggingface-cli login
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+ ```
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+ And then enter an authentication token from https://huggingface.co/settings/tokens. Create a new token if you do not have one already. You should make sure that this token has "write" privileges.
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+
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+ To confirm that you have a working environment, first accept the terms of use of the Common Voice 16.1 dataset on the Hub: https://huggingface.co/datasets/mozilla-foundation/common_voice_16_1
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+
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+ You can run the following code cell to stream one sample of data from the Common Voice dataset, and check that you can
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+ perform inference using the "tiny" Whisper model:
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+
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+ ```python
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+ from transformers import WhisperProcessor, WhisperForConditionalGeneration
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+ from datasets import load_dataset, Audio
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+
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+ model = WhisperForConditionalGeneration.from_pretrained("openai/whisper-tiny", low_cpu_mem_usage=True)
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+ processor = WhisperProcessor.from_pretrained("openai/whisper-tiny")
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+
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+ model.to("cuda")
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+
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+ common_voice = load_dataset("mozilla-foundation/common_voice_16_1", "en", split="validation", streaming=True)
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+ common_voice = common_voice.cast_column("audio", Audio(sampling_rate=processor.feature_extractor.sampling_rate))
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+
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+ inputs = processor(next(iter(common_voice))["audio"]["array"], sampling_rate=16000, return_tensors="pt")
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+ input_features = inputs.input_features
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+
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+ generated_ids = model.generate(input_features.to("cuda"), max_new_tokens=128)
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+ pred_text = processor.decode(generated_ids[0], skip_special_tokens=True)
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+
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+ print("Pred text:", pred_text)
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+ print("Environment set up successful?", generated_ids.shape[-1] == 20)
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+ ```
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+
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+ ## 1. Pseudo-Labelling
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+
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+ The python script [`run_pseudo_labelling.py`](run_pseudo_labelling.py) is a flexible inference script that can be used
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+ to generate pseudo-labels under a range of settings, including using both greedy and beam-search. It is also compatible
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+ with [🤗 Datasets](https://github.com/huggingface/datasets) *streaming mode*, allowing users to load massive audio
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+ datasets with **no disk space requirements**. For more information on streaming mode, the reader is referred to the
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+ blog post: [A Complete Guide to Audio Datasets](https://huggingface.co/blog/audio-datasets#streaming-mode-the-silver-bullet).
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+
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+ > As of the latest Distil-Whisper release, [`distil-large-v3`](https://huggingface.co/distil-whisper/distil-large-v3), this
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+ pseudo-labelling script also performs the added operation of concatenating (or packing) the audio inputs to 30-seconds.
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+ Not only does this lead to a WER improvement when using sequential long-form decoding algorithm, but concatenating audios
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+ to 30-seconds also improves the throughput during training, since the amount of zero-padding on the audio inputs is minimised.
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+
104
+ The following script demonstrates how to pseudo-label the Hindi split of the Common Voice 16.1 dataset with greedy sampling:
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+
106
+ ```bash
107
+ #!/usr/bin/env bash
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+
109
+ accelerate launch run_pseudo_labelling.py \
110
+ --model_name_or_path "openai/whisper-large-v3" \
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+ --dataset_name "mozilla-foundation/common_voice_16_1" \
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+ --dataset_config_name "hi" \
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+ --dataset_split_name "train+validation+test" \
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+ --text_column_name "sentence" \
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+ --id_column_name "path" \
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+ --output_dir "./common_voice_16_1_hi_pseudo_labelled" \
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+ --wandb_project "distil-whisper-labelling" \
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+ --per_device_eval_batch_size 64 \
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+ --dtype "bfloat16" \
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+ --attn_implementation "sdpa" \
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+ --logging_steps 500 \
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+ --max_label_length 256 \
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+ --concatenate_audio \
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+ --preprocessing_batch_size 500 \
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+ --preprocessing_num_workers 8 \
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+ --dataloader_num_workers 8 \
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+ --report_to "wandb" \
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+ --language "hi" \
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+ --task "transcribe" \
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+ --return_timestamps \
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+ --streaming False \
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+ --generation_num_beams 1 \
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+ --push_to_hub
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+ ```
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+
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+ On an 80 GB A100 GPU, the following script takes approximately 5 minutes to concatenate and pre-process the 20 hours of
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+ audio data, and a further 10 minutes to transcribe the pseudo-labels. The pseudo-labelled dataset corresponding to this
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+ script is available on the Hugging Face Hub under [sanchit-gandhi/common_voice_16_1_hi_pseudo_labelled](https://huggingface.co/datasets/sanchit-gandhi/common_voice_16_1_hi_pseudo_labelled).
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+ The WER of the pre-trained Whisper large-v3 model is 17.2% on the test split. We will compare the performance of our distilled model against this number.
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+
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+ There are two noteworthy arguments that configure the dataset concatenation (or packing) process:
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+ 1. `concatenate_audio`: whether or not to concatenate (or pack) the audios to 30-second chunks. The latest Distil-Whisper model, [`distil-large-v3`](https://huggingface.co/distil-whisper/distil-large-v3#differences-with-distil-large-v2), highlights the WER improvements obtained using the sequential long-form decoding algorithm when concatenated audios are used. Concatenating audios to 30-seconds also improves the throughput during training, since the amount of zero-padding on the audio inputs is minimised. Hence, it is highly recommended to set `--concatenate_audio=True`.
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+ 2. `preprocessing_batch_size`: the batch size to use when concatenating (or packing) the audios. Using a larger batch size results in a greater portion of audio samples being packed to 30-seconds, at the expense of higher memory consumption. If you exceed your system's RAM when performing the concatenation operation, reduce the `preprocessing_batch_size` by a factor of 2 to 250 or even 125.
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+ 3. `preprocessing_num_workers`: the number of multiprocessing workers to use when concatenating the audios. Using more workers will result in faster pre-processing, at the expense of higher memory consumption. Ensure you do not exceed the maximum number of CPUs on your device.
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+
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+ In addition, the following arguments configure the inference of the Whisper model:
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+ 1. `language`: explicitly setting the language token during inference substantially improves the generation performance of the Whisper model, since the model is forced always to predict in the given language. We recommend you set the language to the language you wish to distil the Whisper model on. The only exception is when distilling an English-only model (i.e. where the model id is appended with an `.en`, e.g. `small.en`), the language argument should be set to None, since there is no language token used during training/inference.
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+ 2. `return_timestamps`: whether or not to predict timestamps in the pseudo-labels. Timestamp prediction is required should you want your distilled model to be able to predict timestamps at inference time (e.g. for the original OpenAI long-form transcription algorithm). However, the pseudo-labels are marginally less accurate than not using timestamps. We recommend pseudo-labelling **with** timestamps to ensure the distilled model is as general as possible.
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+ 3. `attn_implementation`: which attention implementation to use for inference. Set to `sdpa` for [PyTorch SDPA](https://huggingface.co/docs/transformers/v4.35.2/en/perf_infer_gpu_one#bettertransformer), or `flash_attention_2` if your hardware supports Flash Attention 2 and you have the [package installed](https://github.com/Dao-AILab/flash-attention).
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+ 4. `streaming`: whether or not to use Datasets' streaming mode. If enabled, the audio data will be streamed from the Hugging Face Hub with no disk space requirements. However, the user is then responsible for adding the pseudo-labels to the dataset script in a follow-up step (see [Using Streaming Mode](#TODO)). If set to `False`, the audio data will be downloaded and pre-processed offline. At the end of pseudo-labelling, the pseudo-labels will be automatically appended to the original dataset, meaning the dataset is ready to be used for the subsequent training step without any additional steps.
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+ 5. `generation_num_beams`: how many beams to use while decoding. In practice, we found the distilled model to perform comparably when the data was pseudo-labelled with `generation_num_beams=1` (greedy) or `generation_num_beams>1` (beam). This is likely because the WER filter compensates for the lower quality pseudo-labels obtained using greedy search. However, using `generation_num_beams=1` gives substantially faster inference time for the pseudo-labelling step, and so we recommend this configuration.
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+
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+ Should you have your own audio dataset, you can first [convert it](https://huggingface.co/docs/datasets/audio_dataset) to
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+ Hugging Face Datasets format and push it to the Hugging Face Hub. You can then pseudo-label it using the script above,
155
+ replacing the `--dataset_name` with the name of your dataset on the Hub.
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+
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+ Otherwise, you may wish to use an open-source dataset already available on the Hugging Face Hub. We provide a summary of
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+ the three most popular multilingual datasets in the table below. For more details, refer to the blog post: [A Complete Guide to Audio Datasets](https://huggingface.co/blog/audio-datasets#multilingual-speech-recognition).
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+
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+ | Dataset | Languages | Domain | Speaking Style | License | Text Column | ID Column |
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+ |-----------------------------------------------------------------------------------------------|-----------|---------------------------------------|----------------|-----------|---------------------|--------------|
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+ | [Multilingual LibriSpeech](https://huggingface.co/datasets/facebook/multilingual_librispeech) | 6 | Audiobooks | Narrated | CC-BY-4.0 | `"text"` | `"id"` |
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+ | [Common Voice 16](https://huggingface.co/datasets/mozilla-foundation/common_voice_16_1) | 120 | Wikipedia text & crowd-sourced speech | Narrated | CC0-1.0 | `"sentence"` | `"path"` |
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+ | [VoxPopuli](https://huggingface.co/datasets/facebook/voxpopuli) | 15 | European Parliament recordings | Spontaneous | CC0 | `"normalized_text"` | `"audio_id"` |
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+
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+ To achieve *robustness* to different distributions of audio data, it is recommended to train on multiple datasets where possible.
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+ For example, the above three datasets all have splits for the German language. Thus, if distilling a Whisper model for German,
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+ it would be wise to use a combination of the three datasets during training, in order to cover at least three distinct domains
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+ (audiobooks, crowd-sourced speech, parliament recordings). You may wish to use a combination of open-source datasets, or
170
+ a combination of open-source and individually owned datasets to cover multiple distributions and domains. Moreover, if you were to train on low-resource datasets (<500 hours), you could experiment with [language mixing](#3-language-mixing) to improve robustness.
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+
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+ ## 2. Initialisation
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+
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+ The script [`create_student_model.py`](create_student_model.py) can be used to initialise a small student model
175
+ from a large teacher model. When initialising a student model with fewer layers than the teacher model, the student is
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+ initialised by copying maximally spaced layers from the teacher, as per the [DistilBart](https://arxiv.org/abs/2010.13002)
177
+ recommendations.
178
+
179
+ First, we need to create a model repository on the Hugging Face Hub. This repository will contain all the required files
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+ to reproduce the training run, alongside model weights, training logs and a README.md card. You can either create a model
181
+ repository directly on the Hugging Face Hub using the link: https://huggingface.co/new. Or, via the CLI, as we'll show here.
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+
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+ Let's pick a name for our distilled model: `distil-whisper-large-v3-hi`. We can run the following command to create a repository under this name:
184
+
185
+ ```bash
186
+ huggingface-cli repo create distil-whisper-large-v3-hi
187
+ ```
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+
189
+ We can now see the model on the Hub, e.g. under https://huggingface.co/sanchit-gandhi/distil-whisper-large-v3-hi
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+
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+ Let's clone the repository so that we can place our training script and model weights inside:
192
+
193
+ ```bash
194
+ git lfs install
195
+ git clone https://huggingface.co/sanchit-gandhi/distil-whisper-large-v3-hi
196
+ ```
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+
198
+ Be sure to change the repo address to `https://huggingface.co/<your-user-name>/<your-repo-name>`
199
+
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+ We can now copy the relevant training scrips to the repository:
201
+ ```bash
202
+ cd distil-whisper-large-v3-hi
203
+
204
+ cp ../distil-whisper/training/create_student_model.py .
205
+ cp ../distil-whisper/training/run_distillation.py .
206
+ ```
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+
208
+ The following command demonstrates how to initialise a student model from the Whisper [large-v3](https://huggingface.co/openai/whisper-large-v3)
209
+ checkpoint, with all 32 encoder layer and 2 decoder layers. The 2 student decoder layers are copied from teacher layers
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+ 1 and 32 respectively, as the maximally spaced layers:
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+
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+ ```bash
213
+ #!/usr/bin/env bash
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+
215
+ python create_student_model.py \
216
+ --teacher_checkpoint "openai/whisper-large-v3" \
217
+ --encoder_layers 32 \
218
+ --decoder_layers 2 \
219
+ --save_dir "./distil-large-v3-init"
220
+ ```
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+
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+ The initialised model will be saved to the sub-directory `distil-large-v3-init` in our model repository.
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+
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+
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+ **Note:** You can leverage language transfer by setting `--teacher_checkpoint` to "distil-whisper/distil-large-v3", see [language transfer](#22-language-transfer) for more details.
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+
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+ ## 3. Training
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+
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+ The script [`run_distillation.py`](run_distillation.py) is an end-to-end script for loading multiple
230
+ datasets, a student model, a teacher model, and performing teacher-student distillation. It uses the loss formulation
231
+ from the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430), which is a weighted sum of the cross-entropy and
232
+ KL-divergence loss terms.
233
+
234
+ The following command takes the Common Voice dataset that was pseudo-labelled in the first stage and trains the
235
+ 2-layer decoder model intialised in the previous step. We pass the local path to the pseudo-labelled Common Voice dataset
236
+ (`../common_voice_16_1_hi_pseudo_labelled`), which you can change to the path where your local pseudo-labelled dataset is
237
+ saved.
238
+
239
+ In this example, we will combine the train and validation splits to give our training set, and evaluate on the test split
240
+ only. This is purely to demonstrate how to combine multiple pseudo-labelled datasets for training, rather than recommended
241
+ advice for defining train/validation splits. We advise that you train on the train splits of your dataset, evaluate and
242
+ tune hyper-parameters on the validation split, and only test the final checkpoint on the test split. Note how multiple
243
+ training datasets and splits can be loaded by separating the dataset arguments by `+` symbols. Thus, the script generalises
244
+ to any number of training datasets.
245
+
246
+ ```bash
247
+ #!/usr/bin/env bash
248
+
249
+ accelerate launch run_distillation.py \
250
+ --model_name_or_path "./distil-large-v3-init" \
251
+ --teacher_model_name_or_path "openai/whisper-large-v3" \
252
+ --train_dataset_name "../common_voice_16_1_hi_pseudo_labelled+../common_voice_16_1_hi_pseudo_labelled" \
253
+ --train_split_name "train+validation" \
254
+ --text_column_name "sentence+sentence" \
255
+ --train_dataset_samples "7+4" \
256
+ --eval_dataset_name "../common_voice_16_1_hi_pseudo_labelled" \
257
+ --eval_split_name "test" \
258
+ --eval_text_column_name "sentence" \
259
+ --eval_steps 1000 \
260
+ --save_steps 1000 \
261
+ --warmup_steps 50 \
262
+ --learning_rate 0.0001 \
263
+ --lr_scheduler_type "constant_with_warmup" \
264
+ --timestamp_probability 0.2 \
265
+ --condition_on_prev_probability 0.2 \
266
+ --language "hi" \
267
+ --task "transcribe" \
268
+ --logging_steps 25 \
269
+ --save_total_limit 1 \
270
+ --max_steps 5000 \
271
+ --wer_threshold 20 \
272
+ --per_device_train_batch_size 32 \
273
+ --per_device_eval_batch_size 32 \
274
+ --dataloader_num_workers 8 \
275
+ --preprocessing_num_workers 8 \
276
+ --ddp_timeout 7200 \
277
+ --dtype "bfloat16" \
278
+ --attn_implementation "sdpa" \
279
+ --output_dir "./" \
280
+ --do_train \
281
+ --do_eval \
282
+ --gradient_checkpointing \
283
+ --overwrite_output_dir \
284
+ --predict_with_generate \
285
+ --freeze_encoder \
286
+ --freeze_embed_positions \
287
+ --streaming False \
288
+ --push_to_hub
289
+
290
+ ```
291
+
292
+ The above training script will take approximately 3 hours to complete on an 80 GB A100 GPU and yield a final WER of 76%.
293
+ While the generations are starting to take form, there is still a 59% WER gap to the teacher model. This is hardly
294
+ surprising give we only have 15 hours of un-filtered data, and closer to just 1.5 hours with data filtering.
295
+ As mentioned above, using upwards of 1000 hours of data and training for 10k steps will likely yield
296
+ more competitive performance. For the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430), we trained on 21k hours
297
+ of audio data for 80k steps. We found that upwards of 13k hours of audio data was required to reach convergence on English
298
+ ASR (see Section 9.2 of the [paper](https://arxiv.org/abs/2311.00430)), so the more data you have, the better!
299
+
300
+ Scaling to multiple GPUs using [distributed data parallelism (DDP)](https://pytorch.org/tutorials/beginner/ddp_series_theory.html)
301
+ is trivial: simply run `accelerate config` and select the multi-GPU option, specifying the IDs of the GPUs you wish to use. The
302
+ above script can then be run using DDP with no code changes.
303
+
304
+ Training logs will be reported to TensorBoard and WandB, provided the relevant packages are available. An example of a
305
+ saved checkpoint pushed to the Hugging Face Hub can be found here: [sanchit-gandhi/distil-whisper-large-v3-hi](https://huggingface.co/sanchit-gandhi/distil-whisper-large-v3-hi).
306
+
307
+ There are a few noteworthy data arguments:
308
+ 1. `train_dataset_samples`: defines the number of training samples in each dataset. Used to calculate the sampling probabilities in the dataloader. A good starting point is setting the samples to the number of hours of audio data in each split. A more refined strategy is setting it to the number of training samples in each split, however this might require downloading the dataset offline to compute these statistics.
309
+ 2. `wer_threshold`: sets the WER threshold between the normalised pseudo-labels and normalised ground truth labels. Any samples with WER > `wer_threshold` are discarded from the training data. This is beneficial to avoid training the student model on pseudo-labels where Whisper hallucinated or got the predictions grossly wrong. In our English distillation experiments, we found a WER threshold of 10% provides the optimal trade-off between ensuring high-quality transcriptions, and not filtering unnecessary amounts of training data. For multilingual distillation, the threshold should be set in accordance with the WER achieved by the pre-trained model on the test set.
310
+ 3. `streaming`: whether or not to use Datasets' streaming mode. Recommended for large datasets, where the audio data can be streamed from the Hugging Face Hub with no disk space requirements.
311
+ 4. `timestamp_probability`: the per-sample probability for retaining timestamp tokens in the labels (should they contain them). Retaining some portion of timestamp tokens in the training data is required to ensure the distilled model can predict timestamps at inference time. In our experiments, we found that training on timestamps with high-probability hurts the distilled model's transcription performance. Thus, we recommend setting this to a value below 0.5. Typically, a value of 0.2 works well, giving good transcription and timestamp performance.
312
+ 5. `condition_on_prev_probability`: the per-sample probability for conditioning on previous labels. Conditioning on previous tokens is required to ensure the distilled model can be used with the "sequential" long-form transcription algorithm at inference time. We did not experiment with this parameter, but found values around 0.2 to provide adequate performance. OpenAI pre-trained Whisper on with a 50% probability for conditioning on previous tokens. Thus, you might wish to try higher values.
313
+
314
+ As well as a few noteworthy model arguments that can be configured to give optimal training performance:
315
+ 1. `freeze_encoder`: whether to freeze the entire encoder of the student model during training. Beneficial when the student encoder is copied exactly from the teacher encoder. In this case, the encoder hidden-states from the teacher model are re-used for the student model. Stopping the gradient computation through the encoder and sharing the encoder hidden-states provides a significant memory saving, and can enable up to 2x batch sizes.
316
+ 2. `freeze_embed_positions`: whether to freeze the student model's decoder positional embeddings. Using the same embed positions as the teacher model, which is designed to handle context lengths up to 448 tokens, helps the student model retain its input id representation up to the full max input length.
317
+ 3. `dtype`: data type (dtype) in which the model computation should be performed. Note that this only controls the dtype of the computations (forward and backward pass), and not the dtype of the parameters or optimiser states.
318
+ 4. `freeze_decoder`: whether to freeze the student model's decoder. Note that the input tokens embeddings and language modelling head will remain trainable.
319
+
320
+ And finally, a few noteworthy training arguments:
321
+ 1. `max_steps`: defines the total number of optimisation steps (forward + backward pass) during training. To reach convergence, you should use a dataset of at least 1k hours and train for a minimum of 50k steps.
322
+ 2. `lr_scheduler_stype`: defines the learning rate schedule, one of `constant_with_warmup` or `linear`. When experimenting with a training set-up or training for very few steps (< 5k), using `constant_with_warmup` is typically beneficial, since the learning rate remains high over the short training run. When performing long training runs (> 5k), using a `linear` schedule generally results in superior downstream performance of the distilled model.
323
+
324
+ TODO:
325
+ - [ ] Template for model cards
326
+
327
+ ## 4. Evaluation
328
+
329
+ There are four types of evaluation performed in Distil-Whisper:
330
+ 1. Short form: evaluation on audio samples less than 30s in duration. Examples include typical ASR test sets, such as the LibriSpeech validation set.
331
+ 2. Sequential long form: evaluation on audio samples longer than 30s in duration using the original "sequential" long-form algorithm. Examples include entire TED talks or earnings calls.
332
+ 3. Chunked long form: evaluation on audio samples longer than 30s in duration using the Transformers "chunked" long-form algorithm.
333
+ 4. Speculative decoding: evaluation on audio samples less than 30s in duration, where a faster, distilled model is used as the assistant to a slower, teacher model.
334
+
335
+ All four forms of evaluation are performed using the script [`run_eval.py`](run_eval.py). Unlike the pseudo-labelling
336
+ and training scripts, the evaluation script assumes that only one GPU accelerator is used. We can copy the corresponding
337
+ evaluation script to the model repository using the following command:
338
+
339
+ ```bash
340
+ cp ../distil-whisper/training/run_eval.py .
341
+ ```
342
+
343
+ Models are assessed jointly using:
344
+ 1. The *word-error rate (WER)* metric: measures the number of substitution, deletion and insertion errors relative to the total number of words. A lower WER indicates a more accurate model.
345
+ 2. The *inverse real-time factor (RTFx)* metric: measures the ratio of `audio input time : model compute time`. A higher RTFx indicates a faster model. Note that this metric is WER-dependent, meaning that it makes sense to compare two models' *RTFx* only at fixed *WER* performances. Indeed, deletions could lead to early stopping of token generation, resulting in higher *WER* and lower *RTFx*.
346
+ 3. Token generation speed: This refers to the number of tokens generated per second. As with *RTFx*, this metric is dependent on the *WER* since token generation time is not linear. By default, this metric is calculated by averaging the total number of `generated tokens : generation time` (full forward pass of the model) when evaluating on the given test set. However, using the `--precise_tok_generation` flag will compute this metric separately for a fixed number of tokens.
347
+
348
+ In all cases, it is particularly important to evaluate the final model on data that is *out-of-distribution (OOD)* with
349
+ the training data. Evaluating on OOD data provides insight as to how well the distilled model is likely to generalise to
350
+ different audio distributions at inference time. In our example, the Common Voice test set is *in-distribution (ID)*
351
+ with our training data, since it is taken from the same distribution as the Common Voice training set. Whereas the FLEURS
352
+ test set is OOD, since it is not used as part of the training set. See [Datasets](#1-datasets) section for recommendations.
353
+
354
+ ### Short Form
355
+
356
+ The script [`run_eval.py`](run_eval.py) can be used to evaluate a trained student model over multiple short-form
357
+ validation sets. The following example demonstrates how to evaluate the student model trained in the previous step on
358
+ the Common Voice `test` set (ID) and also the FLEURS `test` set (OOD). Again, it leverages streaming mode to bypass
359
+ the need to download the data offline:
360
+
361
+ ```bash
362
+ #!/usr/bin/env bash
363
+
364
+ python run_eval.py \
365
+ --model_name_or_path "./" \
366
+ --dataset_name "../common_voice_16_1_hi_pseudo_labelled+google/fleurs" \
367
+ --dataset_config_name "default+hi_in" \
368
+ --dataset_split_name "test+test" \
369
+ --text_column_name "sentence+transcription" \
370
+ --batch_size 16 \
371
+ --dtype "bfloat16" \
372
+ --generation_max_length 256 \
373
+ --language "hi" \
374
+ --attn_implementation "sdpa" \
375
+ --streaming
376
+
377
+ ```
378
+
379
+ The student model achieves an average WER of TODO% with an RTFx of TODO for a batch size of 16. We can easily adapt the above
380
+ script to evaluate the teacher model, simply by switching the `model_name_or_path` to `openai/whisper-large-v3`, which
381
+ achieves an average WER of TODO% with an RTFx of TODO. Therefore, for a batch size of 16, the student model is a factor of TODO
382
+ times faster than the teacher. The WER gap can be closed by training on more data (at least 1k hours) for more training
383
+ steps (at least 50k).
384
+
385
+ ### Sequential Long Form
386
+
387
+ The original Whisper paper presents a long-form transcription algorithm that sequentially transcribes 30-second segments
388
+ of audio and shifts the sliding window according to the timestamps predicted by the model. This style of sequential
389
+ inference is performed directly using the [`.generate`](https://huggingface.co/docs/transformers/model_doc/whisper#transformers.WhisperForConditionalGeneration.generate)
390
+ method in Transformers.
391
+
392
+ The script [`run_eval.py`](run_eval.py) can be used to evaluate the trained student model on an arbitrary number of
393
+ long-form evaluation sets using the sequential algorithm. Since we don't have a long-form validation set for Hindi to hand,
394
+ in this example we'll evaluate the official Distil-Whisper model [`distil-large-v3`](https://huggingface.co/distil-whisper/distil-large-v3)
395
+ on the TED-LIUM validation set:
396
+
397
+ ```bash
398
+ #!/usr/bin/env bash
399
+
400
+ accelerate launch run_eval.py \
401
+ --model_name_or_path "distil-whisper/distil-large-v3" \
402
+ --dataset_name "distil-whisper/tedlium-long-form" \
403
+ --dataset_config_name "default" \
404
+ --dataset_split_name "validation" \
405
+ --text_column_name "text" \
406
+ --batch_size 16 \
407
+ --dtype "bfloat16" \
408
+ --generation_max_length 256 \
409
+ --language "en" \
410
+ --attn_implementation "sdpa" \
411
+ --streaming
412
+
413
+ ```
414
+
415
+ ### Chunked Long Form
416
+
417
+ Chunked long form evaluation runs on the premise that a single long audio file can be *chunked* into smaller segments and
418
+ inferred in parallel. The resulting transcriptions are then joined at the boundaries to give the final text prediction.
419
+ A small overlap (or *stride*) is used between adjacent segments to ensure a continuous transcription across chunks.
420
+
421
+ This style of chunked inference is performed using the [`pipeline`](https://huggingface.co/docs/transformers/main_classes/pipelines)
422
+ class, which provides a wrapper around the [`.generate`](https://huggingface.co/docs/transformers/model_doc/whisper#transformers.WhisperForConditionalGeneration.generate)
423
+ function for long-form inference.
424
+
425
+ The script [`run_eval.py`](run_eval.py) can be used to evaluate the trained student model on an arbitrary number of
426
+ long-form evaluation sets using the pipeline class. Again, in this example we'll evaluate distil-large-v3 on the
427
+ TED-LIUM validation set:
428
+
429
+ ```bash
430
+ #!/usr/bin/env bash
431
+
432
+ python run_eval.py \
433
+ --model_name_or_path "openai/whisper-large-v3" \
434
+ --dataset_name "distil-whisper/tedlium-long-form" \
435
+ --dataset_config_name "default" \
436
+ --dataset_split_name "validation" \
437
+ --text_column_name "text" \
438
+ --use_pipeline \
439
+ --chunk_length_s 25.0 \
440
+ --language "en" \
441
+ --return_timestamps \
442
+ --dtype "bfloat16" \
443
+ --streaming
444
+
445
+ ```
446
+
447
+ The argument `chunk_length_s` controls the length of the chunked audio samples. It should be set to match the typical
448
+ length of audio the student model was trained on. If unsure about what value of `chunk_length_s` is optimal for your case,
449
+ it is recommended to run a *sweep* over all possible values. A template script for running a [WandB sweep](https://docs.wandb.ai/guides/sweeps)
450
+ can be found under [`run_chunk_length_s_sweep.yaml`](flax/long_form_transcription_scripts/run_chunk_length_s_sweep.yaml).
451
+
452
+ ### Speculative Decoding
453
+
454
+ Speculative decoding, or assisted generation, relies on the premise that a faster, assistant model can be used to speed-up
455
+ the generation of a slower, assistant model. Speculative decoding mathematically ensures that exactly the same outputs as
456
+ Whisper are obtained, while being ~2 times faster. This makes it the perfect drop-in replacement for existing Whisper
457
+ pipelines, since exactly the same outputs are guaranteed.
458
+
459
+ Distil-Whisper checkpoints can be designed to be efficient assistant models to Whisper for speculative decoding. More precisely,
460
+ by freezing the encoder during training, the distilled model can share the same encoder weights as Whisper during inference, since
461
+ the encoder weights are un-changed. In doing so, only the distilled 2-layer decoder has to be loaded in addition to the
462
+ original Whisper model, which is approximately an 8% increase to the total parameter count, with up to 2x faster inference
463
+ for low batch sizes. For more details on speculative decoding, the reader is advised to refer to the following blog post:
464
+ [Speculative Decoding for 2x Faster Whisper Inference](https://huggingface.co/blog/whisper-speculative-decoding).
465
+
466
+ In the example below, we use our distilled model as an assistant to the large-v3 teacher model during inference:
467
+
468
+ ```bash
469
+ #!/usr/bin/env bash
470
+
471
+ python run_eval.py \
472
+ --model_name_or_path "openai/whisper-large-v3" \
473
+ --assistant_model_name_or_path "./" \
474
+ --dataset_name "../common_voice_16_1_hi_pseudo_labelled+google/fleurs" \
475
+ --dataset_config_name "default+hi_in" \
476
+ --dataset_split_name "test+test" \
477
+ --text_column_name "sentence+transcription" \
478
+ --batch_size 16 \
479
+ --dtype "bfloat16" \
480
+ --generation_max_length 256 \
481
+ --language "hi" \
482
+ --attn_implementation "sdpa" \
483
+ --streaming
484
+
485
+ ```
486
+
487
+ We see that we achieve a WER of TODO%, the same as what we obtained with the large-v3 model, but with an RTFx of TODO,
488
+ a factor of TODO faster than using the large-v3 model alone. The RTFx value can be improved by training the student on
489
+ more data and for more training steps, since this will improve the number of predicted tokens that match the teacher
490
+ predictions.
491
+
492
+ ## Recommendations and guidelines
493
+
494
+ ### 1. Datasets
495
+
496
+ As explained, ideally, you should aim for ~1000 hours of audio data for training a distilled model via KD. Moreover, you should evaluate your model on out-of-distribution test sets to assess generalization capacities. With at least 1500 hours of audio data for German, Dutch, French and Spanish, 600 hours for Italian, and 300 hours for Portuguese and Polish (which can be supplemented with your own datasets), a good setup to start with is:
497
+ - **Training datasets:** [Common Voice 17](https://huggingface.co/datasets/mozilla-foundation/common_voice_17_0) and [Multilingual Librispeech](https://huggingface.co/datasets/facebook/multilingual_librispeech). Use the `train` split for training, and the `validation` and `test` splits for in-distribution testing.
498
+ - **Test datasets:** [VoxPopuli](https://huggingface.co/datasets/facebook/voxpopuli) and [Fleurs](https://huggingface.co/datasets/google/fleurs). Use the `validation` and `test` splits for out-of-distribution testing.
499
+
500
+ ### 2. Student model's decoder
501
+ #### 2.1 Number of Decoder Layers
502
+
503
+ We recommend using a 2-layers decoder (see language transfer below). However, you can adjust the number of decoder layers when initializing the student model to balance between inference speed and accuracy. Experimentation has revealed that the Pareto optimal points are with 2, 3, and 4-layers decoders. For indicative results, after 10,000 training steps and inference on an 80GB Nvidia H100 with a batch size of 16 and 20 tokens generation, compared to [Whiper *large-v3*](https://huggingface.co/openai/whisper-large-v3) baseline:
504
+
505
+ <center>
506
+
507
+ | | rel. token gen. speed | ΔWER(%) |
508
+ |----------|:-------------:|------:|
509
+ | 2 layers | $3.66$ | $-3.5$ |
510
+ | 3 layers | $3.35$ | $-2.3$ |
511
+ | 4 layers | $3.11$ | $-1.8$ |
512
+
513
+ </center>
514
+
515
+
516
+ #### 2.2 Language Transfer
517
+
518
+ If you opt for a 2-layers decoder, consider leveraging language transfer by initializing the student model from the [distil-large-v3 English distilled model](https://huggingface.co/distil-whisper/distil-large-v3). For French, this method has shown performance improvements of ΔWER=-1.9% (compared to a 2-layers decoder initialized from [Whiper *large-v3*](https://huggingface.co/openai/whisper-large-v3)) after 10,000 training steps.
519
+
520
+ ```diff
521
+ - --teacher_checkpoint "openai/whisper-large-v3" \
522
+ + --teacher_checkpoint "distil-whisper/distil-large-v3" \
523
+ ```
524
+
525
+ ### 3. Language mixing
526
+
527
+ If you're working with low-resource languages (<500 hours of audio data), consider mixing your training data with a closely related language (for example, mix French and Spanish) to leverage knowledge transfer between languages. Experiments showed that mixing ~400 hours of French (which resulted in a model with poor generalization capacities) with ~500 hours of Spanish improved the model's out-of-distribution performance on French by ΔWER=-7.5%.
528
+
529
+ To do this:
530
+ 1. Run [pseudo labeling](#1-pseudo-labelling) for each training dataset, setting the `--language` flag to the language of the respective dataset. In the example of mixing French and Spanish, simply modify the given [pseudo labeling](#1-pseudo-labelling) command with:
531
+ * pseudo labelling the French dataset
532
+ ```diff
533
+ - --dataset_config_name "hi" \
534
+ - --output_dir "./common_voice_16_1_hi_pseudo_labelled" \
535
+ - --language "hi" \
536
+ + --dataset_config_name "fr" \
537
+ + --output_dir "./common_voice_16_1_fr_pseudo_labelled" \
538
+ + --language "fr" \
539
+ ```
540
+ * pseudo labelling the Spanish dataset
541
+ ```diff
542
+ - --dataset_config_name "hi" \
543
+ - --output_dir "./common_voice_16_1_hi_pseudo_labelled" \
544
+ - --language "hi" \
545
+ + --dataset_config_name "es" \
546
+ + --output_dir "./common_voice_16_1_es_pseudo_labelled" \
547
+ + --language "es" \
548
+ ```
549
+
550
+ 2. Conduct [training](#3-training) on these pseudo-labeled datasets, using the `--language` flag set to your targeted language. Note that this flag is only used for evaluation purposes, so you set it to the targeted language. The language token used for forwarding the teacher and student model decoders is the one used and saved in pseudo labels during pseudo-labeling, ensuring it's the correct one for the considered sample. In the example of mixing French and Spanish, simply modify the given [training](#1-pseudo-labelling) command with:
551
+ ```diff
552
+ - --train_dataset_name "../common_voice_16_1_hi_pseudo_labelled+../common_voice_16_1_hi_pseudo_labelled" \
553
+ - --train_split_name "train+validation" \
554
+ - --eval_dataset_name "../common_voice_16_1_hi_pseudo_labelled" \
555
+ - --eval_split_name "test" \
556
+ + --train_dataset_name "../common_voice_17_0_fr_pseudo_labelled+../common_voice_17_0_es_pseudo_labelled" \
557
+ + --train_split_name "train+train" \
558
+ + --eval_dataset_name "../common_voice_16_1_fr_pseudo_labelled" \
559
+ + --eval_split_name "validation" \
560
+ ```
561
+
562
+ ## Overview of Training Methods
563
+
564
+ ### 1. Fine-Tuning
565
+
566
+ For fine-tuning, we take the original Whisper checkpoint and train it on one or more datasets using the standard
567
+ cross-entropy loss. As such, there is no involvement from the teacher checkpoint during training, and so the fine-tuned
568
+ model is permitted to *overfit* to the distribution of the training data we provide. This makes it appealing for "low-resource"
569
+ languages where the original Whisper model performs poorly, since we can boost the performance of the model on a single
570
+ language by *overfitting* to that distribution of data. Note that this means the fine-tuned model is prone to loosing
571
+ its robustness to different audio distributions, which is the trade-off with improving performance on a specified dataset.
572
+
573
+ As a rule of thumb, fine-tuning is appropriate for languages where the original Whisper model performs > 20% WER, and we
574
+ have a relatively small quantity of training data available (< 1000 hours). With fine-tuning, we require as little as **10 hours**
575
+ of training data to significantly boost the performance of the Whisper model. For an in-depth guide to fine-tuning Whisper,
576
+ the reader is advised to refer to the blog post: [Fine-Tune Whisper For Multilingual ASR with 🤗 Transformers](https://huggingface.co/blog/fine-tune-whisper).
577
+
578
+ ### 2. Shrink and Fine-Tune
579
+
580
+ Shrink and fine-tune (SFT) is a knowledge distillation (KD) technique in which we first *shrink* the teacher model to a
581
+ smaller student model by copying maximally spaced layers, and then *fine-tune* the student model on the cross-entropy loss
582
+ as described above. Typically, we retain the full encoder from the Whisper model and only shrink the decoder. Retaining
583
+ the entire encoder helps significantly with maintaining Whisper's robustness to different audio distributions (_c.f._
584
+ Section 9.3 of the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430)).
585
+
586
+ We can either train the student model on a dataset of (audio, text) pairs as above. Or, we can use the pre-trained
587
+ Whisper model to generate *pseudo-labels* for our audio data, and train on the (audio, pseudo-label) pairs.
588
+
589
+ Pseudo-labels can be used when either:
590
+ 1. The original text transcriptions are normalised (lower-cased or no punctuation): the Whisper generated pseudo-labels contain both punctuation and casing, and so can be used as a substitute for the normalised transcriptions
591
+ 2. The pre-trained Whisper model achieves < 20% WER on the languages: we then know the majority of the pseudo-labels will be accurate enough for us to train on.
592
+
593
+ They are not recommended when both of the following are true:
594
+ 1. The original text is punctuated and cased
595
+ 2. The pre-trained Whisper model achieves > 20% WER on the languages: in this case, we want to overfit to the particular distribution of the language, and so train directly on the original text data
596
+
597
+ To discard inaccurate pseudo-labels during training, we employ a simple WER heuristic to filter our pseudo-labelled
598
+ training data. We first normalise the original text and the pseudo-labelled text using the Whisper normaliser. If the
599
+ WER between the normalised text exceeds a 10% WER threshold, we discard the training sample. Else, we retain it for training.
600
+ Section 9.1 of the Distil-Whisper [paper](https://arxiv.org/abs/2311.00430) demonstrates the importance of using this
601
+ threshold for training.
602
+
603
+ ### 3. KL Divergence
604
+
605
+ In the KL Divergence setting, the student model is initialised by shrinking the teacher as before, and then trained to
606
+ match the predictions of the teacher during training.
607
+
608
+ ### Summary of Methods
609
+
610
+ The following table summarises the two training paradigms: fine-tuning and knowledge distillation (KD). It suggests
611
+ minimum values for the pre-trained WER / training data to achieve reasonable performance:
612
+
613
+ | Method | Pre-Trained WER / % | Training Data / h |
614
+ |-------------|---------------------|-------------------|
615
+ | Fine-tuning | > 20 | < 1000 |
616
+ | KD | < 20 | > 1000 |
617
+
618
+ ## Acknowledgements
619
+
620
+ * OpenAI for the Whisper [model](https://huggingface.co/openai/whisper-large-v3) and [original codebase](https://github.com/openai/whisper)
621
+ * Hugging Face 🤗 [Transformers](https://github.com/huggingface/transformers) for the Whisper model implementation
622
+ * Google's [TPU Research Cloud (TRC)](https://sites.research.google/trc/about/) program for Cloud TPU v4s used to train the official Distil-Whisper models
623
+ * The Hugging Face 🤗 cluster for enabling experimentation with the PyTorch scripts
624
+
625
+ ## Citation
626
+
627
+ If you use this code-base, please consider citing the Distil-Whisper paper:
628
+
629
+ ```
630
+ @misc{gandhi2023distilwhisper,
631
+ title={Distil-Whisper: Robust Knowledge Distillation via Large-Scale Pseudo Labelling},
632
+ author={Sanchit Gandhi and Patrick von Platen and Alexander M. Rush},
633
+ year={2023},
634
+ eprint={2311.00430},
635
+ archivePrefix={arXiv},
636
+ primaryClass={cs.CL}
637
+ }
638
+ ```
added_tokens.json ADDED
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@@ -0,0 +1,46 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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+ "callipers": "calipers",
167
+ "callisthenics": "calisthenics",
168
+ "canalise": "canalize",
169
+ "canalised": "canalized",
170
+ "canalises": "canalizes",
171
+ "canalising": "canalizing",
172
+ "cancelation": "cancellation",
173
+ "cancelations": "cancellations",
174
+ "cancelled": "canceled",
175
+ "cancelling": "canceling",
176
+ "candour": "candor",
177
+ "cannibalise": "cannibalize",
178
+ "cannibalised": "cannibalized",
179
+ "cannibalises": "cannibalizes",
180
+ "cannibalising": "cannibalizing",
181
+ "canonise": "canonize",
182
+ "canonised": "canonized",
183
+ "canonises": "canonizes",
184
+ "canonising": "canonizing",
185
+ "capitalise": "capitalize",
186
+ "capitalised": "capitalized",
187
+ "capitalises": "capitalizes",
188
+ "capitalising": "capitalizing",
189
+ "caramelise": "caramelize",
190
+ "caramelised": "caramelized",
191
+ "caramelises": "caramelizes",
192
+ "caramelising": "caramelizing",
193
+ "carbonise": "carbonize",
194
+ "carbonised": "carbonized",
195
+ "carbonises": "carbonizes",
196
+ "carbonising": "carbonizing",
197
+ "carolled": "caroled",
198
+ "carolling": "caroling",
199
+ "catalogue": "catalog",
200
+ "catalogued": "cataloged",
201
+ "catalogues": "catalogs",
202
+ "cataloguing": "cataloging",
203
+ "catalyse": "catalyze",
204
+ "catalysed": "catalyzed",
205
+ "catalyses": "catalyzes",
206
+ "catalysing": "catalyzing",
207
+ "categorise": "categorize",
208
+ "categorised": "categorized",
209
+ "categorises": "categorizes",
210
+ "categorising": "categorizing",
211
+ "cauterise": "cauterize",
212
+ "cauterised": "cauterized",
213
+ "cauterises": "cauterizes",
214
+ "cauterising": "cauterizing",
215
+ "cavilled": "caviled",
216
+ "cavilling": "caviling",
217
+ "centigramme": "centigram",
218
+ "centigrammes": "centigrams",
219
+ "centilitre": "centiliter",
220
+ "centilitres": "centiliters",
221
+ "centimetre": "centimeter",
222
+ "centimetres": "centimeters",
223
+ "centralise": "centralize",
224
+ "centralised": "centralized",
225
+ "centralises": "centralizes",
226
+ "centralising": "centralizing",
227
+ "centre": "center",
228
+ "centred": "centered",
229
+ "centrefold": "centerfold",
230
+ "centrefolds": "centerfolds",
231
+ "centrepiece": "centerpiece",
232
+ "centrepieces": "centerpieces",
233
+ "centres": "centers",
234
+ "channelled": "channeled",
235
+ "channelling": "channeling",
236
+ "characterise": "characterize",
237
+ "characterised": "characterized",
238
+ "characterises": "characterizes",
239
+ "characterising": "characterizing",
240
+ "cheque": "check",
241
+ "chequebook": "checkbook",
242
+ "chequebooks": "checkbooks",
243
+ "chequered": "checkered",
244
+ "cheques": "checks",
245
+ "chilli": "chili",
246
+ "chimaera": "chimera",
247
+ "chimaeras": "chimeras",
248
+ "chiselled": "chiseled",
249
+ "chiselling": "chiseling",
250
+ "circularise": "circularize",
251
+ "circularised": "circularized",
252
+ "circularises": "circularizes",
253
+ "circularising": "circularizing",
254
+ "civilise": "civilize",
255
+ "civilised": "civilized",
256
+ "civilises": "civilizes",
257
+ "civilising": "civilizing",
258
+ "clamour": "clamor",
259
+ "clamoured": "clamored",
260
+ "clamouring": "clamoring",
261
+ "clamours": "clamors",
262
+ "clangour": "clangor",
263
+ "clarinettist": "clarinetist",
264
+ "clarinettists": "clarinetists",
265
+ "collectivise": "collectivize",
266
+ "collectivised": "collectivized",
267
+ "collectivises": "collectivizes",
268
+ "collectivising": "collectivizing",
269
+ "colonisation": "colonization",
270
+ "colonise": "colonize",
271
+ "colonised": "colonized",
272
+ "coloniser": "colonizer",
273
+ "colonisers": "colonizers",
274
+ "colonises": "colonizes",
275
+ "colonising": "colonizing",
276
+ "colour": "color",
277
+ "colourant": "colorant",
278
+ "colourants": "colorants",
279
+ "coloured": "colored",
280
+ "coloureds": "coloreds",
281
+ "colourful": "colorful",
282
+ "colourfully": "colorfully",
283
+ "colouring": "coloring",
284
+ "colourize": "colorize",
285
+ "colourized": "colorized",
286
+ "colourizes": "colorizes",
287
+ "colourizing": "colorizing",
288
+ "colourless": "colorless",
289
+ "colours": "colors",
290
+ "commercialise": "commercialize",
291
+ "commercialised": "commercialized",
292
+ "commercialises": "commercializes",
293
+ "commercialising": "commercializing",
294
+ "compartmentalise": "compartmentalize",
295
+ "compartmentalised": "compartmentalized",
296
+ "compartmentalises": "compartmentalizes",
297
+ "compartmentalising": "compartmentalizing",
298
+ "computerise": "computerize",
299
+ "computerised": "computerized",
300
+ "computerises": "computerizes",
301
+ "computerising": "computerizing",
302
+ "conceptualise": "conceptualize",
303
+ "conceptualised": "conceptualized",
304
+ "conceptualises": "conceptualizes",
305
+ "conceptualising": "conceptualizing",
306
+ "connexion": "connection",
307
+ "connexions": "connections",
308
+ "contextualise": "contextualize",
309
+ "contextualised": "contextualized",
310
+ "contextualises": "contextualizes",
311
+ "contextualising": "contextualizing",
312
+ "cosier": "cozier",
313
+ "cosies": "cozies",
314
+ "cosiest": "coziest",
315
+ "cosily": "cozily",
316
+ "cosiness": "coziness",
317
+ "cosy": "cozy",
318
+ "councillor": "councilor",
319
+ "councillors": "councilors",
320
+ "counselled": "counseled",
321
+ "counselling": "counseling",
322
+ "counsellor": "counselor",
323
+ "counsellors": "counselors",
324
+ "crenelated": "crenellated",
325
+ "criminalise": "criminalize",
326
+ "criminalised": "criminalized",
327
+ "criminalises": "criminalizes",
328
+ "criminalising": "criminalizing",
329
+ "criticise": "criticize",
330
+ "criticised": "criticized",
331
+ "criticises": "criticizes",
332
+ "criticising": "criticizing",
333
+ "crueller": "crueler",
334
+ "cruellest": "cruelest",
335
+ "crystallisation": "crystallization",
336
+ "crystallise": "crystallize",
337
+ "crystallised": "crystallized",
338
+ "crystallises": "crystallizes",
339
+ "crystallising": "crystallizing",
340
+ "cudgelled": "cudgeled",
341
+ "cudgelling": "cudgeling",
342
+ "customise": "customize",
343
+ "customised": "customized",
344
+ "customises": "customizes",
345
+ "customising": "customizing",
346
+ "cypher": "cipher",
347
+ "cyphers": "ciphers",
348
+ "decentralisation": "decentralization",
349
+ "decentralise": "decentralize",
350
+ "decentralised": "decentralized",
351
+ "decentralises": "decentralizes",
352
+ "decentralising": "decentralizing",
353
+ "decriminalisation": "decriminalization",
354
+ "decriminalise": "decriminalize",
355
+ "decriminalised": "decriminalized",
356
+ "decriminalises": "decriminalizes",
357
+ "decriminalising": "decriminalizing",
358
+ "defence": "defense",
359
+ "defenceless": "defenseless",
360
+ "defences": "defenses",
361
+ "dehumanisation": "dehumanization",
362
+ "dehumanise": "dehumanize",
363
+ "dehumanised": "dehumanized",
364
+ "dehumanises": "dehumanizes",
365
+ "dehumanising": "dehumanizing",
366
+ "demeanour": "demeanor",
367
+ "demilitarisation": "demilitarization",
368
+ "demilitarise": "demilitarize",
369
+ "demilitarised": "demilitarized",
370
+ "demilitarises": "demilitarizes",
371
+ "demilitarising": "demilitarizing",
372
+ "demobilisation": "demobilization",
373
+ "demobilise": "demobilize",
374
+ "demobilised": "demobilized",
375
+ "demobilises": "demobilizes",
376
+ "demobilising": "demobilizing",
377
+ "democratisation": "democratization",
378
+ "democratise": "democratize",
379
+ "democratised": "democratized",
380
+ "democratises": "democratizes",
381
+ "democratising": "democratizing",
382
+ "demonise": "demonize",
383
+ "demonised": "demonized",
384
+ "demonises": "demonizes",
385
+ "demonising": "demonizing",
386
+ "demoralisation": "demoralization",
387
+ "demoralise": "demoralize",
388
+ "demoralised": "demoralized",
389
+ "demoralises": "demoralizes",
390
+ "demoralising": "demoralizing",
391
+ "denationalisation": "denationalization",
392
+ "denationalise": "denationalize",
393
+ "denationalised": "denationalized",
394
+ "denationalises": "denationalizes",
395
+ "denationalising": "denationalizing",
396
+ "deodorise": "deodorize",
397
+ "deodorised": "deodorized",
398
+ "deodorises": "deodorizes",
399
+ "deodorising": "deodorizing",
400
+ "depersonalise": "depersonalize",
401
+ "depersonalised": "depersonalized",
402
+ "depersonalises": "depersonalizes",
403
+ "depersonalising": "depersonalizing",
404
+ "deputise": "deputize",
405
+ "deputised": "deputized",
406
+ "deputises": "deputizes",
407
+ "deputising": "deputizing",
408
+ "desensitisation": "desensitization",
409
+ "desensitise": "desensitize",
410
+ "desensitised": "desensitized",
411
+ "desensitises": "desensitizes",
412
+ "desensitising": "desensitizing",
413
+ "destabilisation": "destabilization",
414
+ "destabilise": "destabilize",
415
+ "destabilised": "destabilized",
416
+ "destabilises": "destabilizes",
417
+ "destabilising": "destabilizing",
418
+ "dialled": "dialed",
419
+ "dialling": "dialing",
420
+ "dialogue": "dialog",
421
+ "dialogues": "dialogs",
422
+ "diarrhoea": "diarrhea",
423
+ "digitise": "digitize",
424
+ "digitised": "digitized",
425
+ "digitises": "digitizes",
426
+ "digitising": "digitizing",
427
+ "disc": "disk",
428
+ "discolour": "discolor",
429
+ "discoloured": "discolored",
430
+ "discolouring": "discoloring",
431
+ "discolours": "discolors",
432
+ "discs": "disks",
433
+ "disembowelled": "disemboweled",
434
+ "disembowelling": "disemboweling",
435
+ "disfavour": "disfavor",
436
+ "dishevelled": "disheveled",
437
+ "dishonour": "dishonor",
438
+ "dishonourable": "dishonorable",
439
+ "dishonourably": "dishonorably",
440
+ "dishonoured": "dishonored",
441
+ "dishonouring": "dishonoring",
442
+ "dishonours": "dishonors",
443
+ "disorganisation": "disorganization",
444
+ "disorganised": "disorganized",
445
+ "distil": "distill",
446
+ "distils": "distills",
447
+ "dramatisation": "dramatization",
448
+ "dramatisations": "dramatizations",
449
+ "dramatise": "dramatize",
450
+ "dramatised": "dramatized",
451
+ "dramatises": "dramatizes",
452
+ "dramatising": "dramatizing",
453
+ "draught": "draft",
454
+ "draughtboard": "draftboard",
455
+ "draughtboards": "draftboards",
456
+ "draughtier": "draftier",
457
+ "draughtiest": "draftiest",
458
+ "draughts": "drafts",
459
+ "draughtsman": "draftsman",
460
+ "draughtsmanship": "draftsmanship",
461
+ "draughtsmen": "draftsmen",
462
+ "draughtswoman": "draftswoman",
463
+ "draughtswomen": "draftswomen",
464
+ "draughty": "drafty",
465
+ "drivelled": "driveled",
466
+ "drivelling": "driveling",
467
+ "duelled": "dueled",
468
+ "duelling": "dueling",
469
+ "economise": "economize",
470
+ "economised": "economized",
471
+ "economises": "economizes",
472
+ "economising": "economizing",
473
+ "editorialise": "editorialize",
474
+ "editorialised": "editorialized",
475
+ "editorialises": "editorializes",
476
+ "editorialising": "editorializing",
477
+ "edoema": "edema",
478
+ "empathise": "empathize",
479
+ "empathised": "empathized",
480
+ "empathises": "empathizes",
481
+ "empathising": "empathizing",
482
+ "emphasise": "emphasize",
483
+ "emphasised": "emphasized",
484
+ "emphasises": "emphasizes",
485
+ "emphasising": "emphasizing",
486
+ "enamelled": "enameled",
487
+ "enamelling": "enameling",
488
+ "enamoured": "enamored",
489
+ "encyclopaedia": "encyclopedia",
490
+ "encyclopaedias": "encyclopedias",
491
+ "encyclopaedic": "encyclopedic",
492
+ "endeavour": "endeavor",
493
+ "endeavoured": "endeavored",
494
+ "endeavouring": "endeavoring",
495
+ "endeavours": "endeavors",
496
+ "energise": "energize",
497
+ "energised": "energized",
498
+ "energises": "energizes",
499
+ "energising": "energizing",
500
+ "enrol": "enroll",
501
+ "enrols": "enrolls",
502
+ "enthral": "enthrall",
503
+ "enthrals": "enthralls",
504
+ "epaulette": "epaulet",
505
+ "epaulettes": "epaulets",
506
+ "epicentre": "epicenter",
507
+ "epicentres": "epicenters",
508
+ "epilogue": "epilog",
509
+ "epilogues": "epilogs",
510
+ "epitomise": "epitomize",
511
+ "epitomised": "epitomized",
512
+ "epitomises": "epitomizes",
513
+ "epitomising": "epitomizing",
514
+ "equalisation": "equalization",
515
+ "equalise": "equalize",
516
+ "equalised": "equalized",
517
+ "equaliser": "equalizer",
518
+ "equalisers": "equalizers",
519
+ "equalises": "equalizes",
520
+ "equalising": "equalizing",
521
+ "eulogise": "eulogize",
522
+ "eulogised": "eulogized",
523
+ "eulogises": "eulogizes",
524
+ "eulogising": "eulogizing",
525
+ "evangelise": "evangelize",
526
+ "evangelised": "evangelized",
527
+ "evangelises": "evangelizes",
528
+ "evangelising": "evangelizing",
529
+ "exorcise": "exorcize",
530
+ "exorcised": "exorcized",
531
+ "exorcises": "exorcizes",
532
+ "exorcising": "exorcizing",
533
+ "extemporisation": "extemporization",
534
+ "extemporise": "extemporize",
535
+ "extemporised": "extemporized",
536
+ "extemporises": "extemporizes",
537
+ "extemporising": "extemporizing",
538
+ "externalisation": "externalization",
539
+ "externalisations": "externalizations",
540
+ "externalise": "externalize",
541
+ "externalised": "externalized",
542
+ "externalises": "externalizes",
543
+ "externalising": "externalizing",
544
+ "factorise": "factorize",
545
+ "factorised": "factorized",
546
+ "factorises": "factorizes",
547
+ "factorising": "factorizing",
548
+ "faecal": "fecal",
549
+ "faeces": "feces",
550
+ "familiarisation": "familiarization",
551
+ "familiarise": "familiarize",
552
+ "familiarised": "familiarized",
553
+ "familiarises": "familiarizes",
554
+ "familiarising": "familiarizing",
555
+ "fantasise": "fantasize",
556
+ "fantasised": "fantasized",
557
+ "fantasises": "fantasizes",
558
+ "fantasising": "fantasizing",
559
+ "favour": "favor",
560
+ "favourable": "favorable",
561
+ "favourably": "favorably",
562
+ "favoured": "favored",
563
+ "favouring": "favoring",
564
+ "favourite": "favorite",
565
+ "favourites": "favorites",
566
+ "favouritism": "favoritism",
567
+ "favours": "favors",
568
+ "feminise": "feminize",
569
+ "feminised": "feminized",
570
+ "feminises": "feminizes",
571
+ "feminising": "feminizing",
572
+ "fertilisation": "fertilization",
573
+ "fertilise": "fertilize",
574
+ "fertilised": "fertilized",
575
+ "fertiliser": "fertilizer",
576
+ "fertilisers": "fertilizers",
577
+ "fertilises": "fertilizes",
578
+ "fertilising": "fertilizing",
579
+ "fervour": "fervor",
580
+ "fibre": "fiber",
581
+ "fibreglass": "fiberglass",
582
+ "fibres": "fibers",
583
+ "fictionalisation": "fictionalization",
584
+ "fictionalisations": "fictionalizations",
585
+ "fictionalise": "fictionalize",
586
+ "fictionalised": "fictionalized",
587
+ "fictionalises": "fictionalizes",
588
+ "fictionalising": "fictionalizing",
589
+ "fillet": "filet",
590
+ "filleted": "fileted",
591
+ "filleting": "fileting",
592
+ "fillets": "filets",
593
+ "finalisation": "finalization",
594
+ "finalise": "finalize",
595
+ "finalised": "finalized",
596
+ "finalises": "finalizes",
597
+ "finalising": "finalizing",
598
+ "flautist": "flutist",
599
+ "flautists": "flutists",
600
+ "flavour": "flavor",
601
+ "flavoured": "flavored",
602
+ "flavouring": "flavoring",
603
+ "flavourings": "flavorings",
604
+ "flavourless": "flavorless",
605
+ "flavours": "flavors",
606
+ "flavoursome": "flavorsome",
607
+ "flyer / flier": "flier / flyer",
608
+ "foetal": "fetal",
609
+ "foetid": "fetid",
610
+ "foetus": "fetus",
611
+ "foetuses": "fetuses",
612
+ "formalisation": "formalization",
613
+ "formalise": "formalize",
614
+ "formalised": "formalized",
615
+ "formalises": "formalizes",
616
+ "formalising": "formalizing",
617
+ "fossilisation": "fossilization",
618
+ "fossilise": "fossilize",
619
+ "fossilised": "fossilized",
620
+ "fossilises": "fossilizes",
621
+ "fossilising": "fossilizing",
622
+ "fraternisation": "fraternization",
623
+ "fraternise": "fraternize",
624
+ "fraternised": "fraternized",
625
+ "fraternises": "fraternizes",
626
+ "fraternising": "fraternizing",
627
+ "fulfil": "fulfill",
628
+ "fulfilment": "fulfillment",
629
+ "fulfils": "fulfills",
630
+ "funnelled": "funneled",
631
+ "funnelling": "funneling",
632
+ "gage": "gauge",
633
+ "gaged": "gauged",
634
+ "gages": "gauges",
635
+ "gaging": "gauging",
636
+ "galvanise": "galvanize",
637
+ "galvanised": "galvanized",
638
+ "galvanises": "galvanizes",
639
+ "galvanising": "galvanizing",
640
+ "gambolled": "gamboled",
641
+ "gambolling": "gamboling",
642
+ "gaol": "jail",
643
+ "gaolbird": "jailbird",
644
+ "gaolbirds": "jailbirds",
645
+ "gaolbreak": "jailbreak",
646
+ "gaolbreaks": "jailbreaks",
647
+ "gaoled": "jailed",
648
+ "gaoler": "jailer",
649
+ "gaolers": "jailers",
650
+ "gaoling": "jailing",
651
+ "gaols": "jails",
652
+ "gasses": "gases",
653
+ "generalisation": "generalization",
654
+ "generalisations": "generalizations",
655
+ "generalise": "generalize",
656
+ "generalised": "generalized",
657
+ "generalises": "generalizes",
658
+ "generalising": "generalizing",
659
+ "ghettoise": "ghettoize",
660
+ "ghettoised": "ghettoized",
661
+ "ghettoises": "ghettoizes",
662
+ "ghettoising": "ghettoizing",
663
+ "gipsies": "gypsies",
664
+ "glamor": "glamour",
665
+ "glamorise": "glamorize",
666
+ "glamorised": "glamorized",
667
+ "glamorises": "glamorizes",
668
+ "glamorising": "glamorizing",
669
+ "globalisation": "globalization",
670
+ "globalise": "globalize",
671
+ "globalised": "globalized",
672
+ "globalises": "globalizes",
673
+ "globalising": "globalizing",
674
+ "glueing": "gluing",
675
+ "goitre": "goiter",
676
+ "goitres": "goiters",
677
+ "gonorrhoea": "gonorrhea",
678
+ "gramme": "gram",
679
+ "grammes": "grams",
680
+ "gravelled": "graveled",
681
+ "grey": "gray",
682
+ "greyed": "grayed",
683
+ "greying": "graying",
684
+ "greyish": "grayish",
685
+ "greyness": "grayness",
686
+ "greys": "grays",
687
+ "grovelled": "groveled",
688
+ "grovelling": "groveling",
689
+ "groyne": "groin",
690
+ "groynes": "groins",
691
+ "gruelling": "grueling",
692
+ "gruellingly": "gruelingly",
693
+ "gryphon": "griffin",
694
+ "gryphons": "griffins",
695
+ "gynaecological": "gynecological",
696
+ "gynaecologist": "gynecologist",
697
+ "gynaecologists": "gynecologists",
698
+ "gynaecology": "gynecology",
699
+ "haematological": "hematological",
700
+ "haematologist": "hematologist",
701
+ "haematologists": "hematologists",
702
+ "haematology": "hematology",
703
+ "haemoglobin": "hemoglobin",
704
+ "haemophilia": "hemophilia",
705
+ "haemophiliac": "hemophiliac",
706
+ "haemophiliacs": "hemophiliacs",
707
+ "haemorrhage": "hemorrhage",
708
+ "haemorrhaged": "hemorrhaged",
709
+ "haemorrhages": "hemorrhages",
710
+ "haemorrhaging": "hemorrhaging",
711
+ "haemorrhoids": "hemorrhoids",
712
+ "harbour": "harbor",
713
+ "harboured": "harbored",
714
+ "harbouring": "harboring",
715
+ "harbours": "harbors",
716
+ "harmonisation": "harmonization",
717
+ "harmonise": "harmonize",
718
+ "harmonised": "harmonized",
719
+ "harmonises": "harmonizes",
720
+ "harmonising": "harmonizing",
721
+ "homoeopath": "homeopath",
722
+ "homoeopathic": "homeopathic",
723
+ "homoeopaths": "homeopaths",
724
+ "homoeopathy": "homeopathy",
725
+ "homogenise": "homogenize",
726
+ "homogenised": "homogenized",
727
+ "homogenises": "homogenizes",
728
+ "homogenising": "homogenizing",
729
+ "honour": "honor",
730
+ "honourable": "honorable",
731
+ "honourably": "honorably",
732
+ "honoured": "honored",
733
+ "honouring": "honoring",
734
+ "honours": "honors",
735
+ "hospitalisation": "hospitalization",
736
+ "hospitalise": "hospitalize",
737
+ "hospitalised": "hospitalized",
738
+ "hospitalises": "hospitalizes",
739
+ "hospitalising": "hospitalizing",
740
+ "humanise": "humanize",
741
+ "humanised": "humanized",
742
+ "humanises": "humanizes",
743
+ "humanising": "humanizing",
744
+ "humour": "humor",
745
+ "humoured": "humored",
746
+ "humouring": "humoring",
747
+ "humourless": "humorless",
748
+ "humours": "humors",
749
+ "hybridise": "hybridize",
750
+ "hybridised": "hybridized",
751
+ "hybridises": "hybridizes",
752
+ "hybridising": "hybridizing",
753
+ "hypnotise": "hypnotize",
754
+ "hypnotised": "hypnotized",
755
+ "hypnotises": "hypnotizes",
756
+ "hypnotising": "hypnotizing",
757
+ "hypothesise": "hypothesize",
758
+ "hypothesised": "hypothesized",
759
+ "hypothesises": "hypothesizes",
760
+ "hypothesising": "hypothesizing",
761
+ "idealisation": "idealization",
762
+ "idealise": "idealize",
763
+ "idealised": "idealized",
764
+ "idealises": "idealizes",
765
+ "idealising": "idealizing",
766
+ "idolise": "idolize",
767
+ "idolised": "idolized",
768
+ "idolises": "idolizes",
769
+ "idolising": "idolizing",
770
+ "immobilisation": "immobilization",
771
+ "immobilise": "immobilize",
772
+ "immobilised": "immobilized",
773
+ "immobiliser": "immobilizer",
774
+ "immobilisers": "immobilizers",
775
+ "immobilises": "immobilizes",
776
+ "immobilising": "immobilizing",
777
+ "immortalise": "immortalize",
778
+ "immortalised": "immortalized",
779
+ "immortalises": "immortalizes",
780
+ "immortalising": "immortalizing",
781
+ "immunisation": "immunization",
782
+ "immunise": "immunize",
783
+ "immunised": "immunized",
784
+ "immunises": "immunizes",
785
+ "immunising": "immunizing",
786
+ "impanelled": "impaneled",
787
+ "impanelling": "impaneling",
788
+ "imperilled": "imperiled",
789
+ "imperilling": "imperiling",
790
+ "individualise": "individualize",
791
+ "individualised": "individualized",
792
+ "individualises": "individualizes",
793
+ "individualising": "individualizing",
794
+ "industrialise": "industrialize",
795
+ "industrialised": "industrialized",
796
+ "industrialises": "industrializes",
797
+ "industrialising": "industrializing",
798
+ "inflexion": "inflection",
799
+ "inflexions": "inflections",
800
+ "initialise": "initialize",
801
+ "initialised": "initialized",
802
+ "initialises": "initializes",
803
+ "initialising": "initializing",
804
+ "initialled": "initialed",
805
+ "initialling": "initialing",
806
+ "instal": "install",
807
+ "instalment": "installment",
808
+ "instalments": "installments",
809
+ "instals": "installs",
810
+ "instil": "instill",
811
+ "instils": "instills",
812
+ "institutionalisation": "institutionalization",
813
+ "institutionalise": "institutionalize",
814
+ "institutionalised": "institutionalized",
815
+ "institutionalises": "institutionalizes",
816
+ "institutionalising": "institutionalizing",
817
+ "intellectualise": "intellectualize",
818
+ "intellectualised": "intellectualized",
819
+ "intellectualises": "intellectualizes",
820
+ "intellectualising": "intellectualizing",
821
+ "internalisation": "internalization",
822
+ "internalise": "internalize",
823
+ "internalised": "internalized",
824
+ "internalises": "internalizes",
825
+ "internalising": "internalizing",
826
+ "internationalisation": "internationalization",
827
+ "internationalise": "internationalize",
828
+ "internationalised": "internationalized",
829
+ "internationalises": "internationalizes",
830
+ "internationalising": "internationalizing",
831
+ "ionisation": "ionization",
832
+ "ionise": "ionize",
833
+ "ionised": "ionized",
834
+ "ioniser": "ionizer",
835
+ "ionisers": "ionizers",
836
+ "ionises": "ionizes",
837
+ "ionising": "ionizing",
838
+ "italicise": "italicize",
839
+ "italicised": "italicized",
840
+ "italicises": "italicizes",
841
+ "italicising": "italicizing",
842
+ "itemise": "itemize",
843
+ "itemised": "itemized",
844
+ "itemises": "itemizes",
845
+ "itemising": "itemizing",
846
+ "jeopardise": "jeopardize",
847
+ "jeopardised": "jeopardized",
848
+ "jeopardises": "jeopardizes",
849
+ "jeopardising": "jeopardizing",
850
+ "jewelled": "jeweled",
851
+ "jeweller": "jeweler",
852
+ "jewellers": "jewelers",
853
+ "jewellery": "jewelry",
854
+ "judgement": "judgment",
855
+ "kilogramme": "kilogram",
856
+ "kilogrammes": "kilograms",
857
+ "kilometre": "kilometer",
858
+ "kilometres": "kilometers",
859
+ "labelled": "labeled",
860
+ "labelling": "labeling",
861
+ "labour": "labor",
862
+ "laboured": "labored",
863
+ "labourer": "laborer",
864
+ "labourers": "laborers",
865
+ "labouring": "laboring",
866
+ "labours": "labors",
867
+ "lacklustre": "lackluster",
868
+ "legalisation": "legalization",
869
+ "legalise": "legalize",
870
+ "legalised": "legalized",
871
+ "legalises": "legalizes",
872
+ "legalising": "legalizing",
873
+ "legitimise": "legitimize",
874
+ "legitimised": "legitimized",
875
+ "legitimises": "legitimizes",
876
+ "legitimising": "legitimizing",
877
+ "leukaemia": "leukemia",
878
+ "levelled": "leveled",
879
+ "leveller": "leveler",
880
+ "levellers": "levelers",
881
+ "levelling": "leveling",
882
+ "libelled": "libeled",
883
+ "libelling": "libeling",
884
+ "libellous": "libelous",
885
+ "liberalisation": "liberalization",
886
+ "liberalise": "liberalize",
887
+ "liberalised": "liberalized",
888
+ "liberalises": "liberalizes",
889
+ "liberalising": "liberalizing",
890
+ "licence": "license",
891
+ "licenced": "licensed",
892
+ "licences": "licenses",
893
+ "licencing": "licensing",
894
+ "likeable": "likable",
895
+ "lionisation": "lionization",
896
+ "lionise": "lionize",
897
+ "lionised": "lionized",
898
+ "lionises": "lionizes",
899
+ "lionising": "lionizing",
900
+ "liquidise": "liquidize",
901
+ "liquidised": "liquidized",
902
+ "liquidiser": "liquidizer",
903
+ "liquidisers": "liquidizers",
904
+ "liquidises": "liquidizes",
905
+ "liquidising": "liquidizing",
906
+ "litre": "liter",
907
+ "litres": "liters",
908
+ "localise": "localize",
909
+ "localised": "localized",
910
+ "localises": "localizes",
911
+ "localising": "localizing",
912
+ "louvre": "louver",
913
+ "louvred": "louvered",
914
+ "louvres": "louvers",
915
+ "lustre": "luster",
916
+ "magnetise": "magnetize",
917
+ "magnetised": "magnetized",
918
+ "magnetises": "magnetizes",
919
+ "magnetising": "magnetizing",
920
+ "manoeuvrability": "maneuverability",
921
+ "manoeuvrable": "maneuverable",
922
+ "manoeuvre": "maneuver",
923
+ "manoeuvred": "maneuvered",
924
+ "manoeuvres": "maneuvers",
925
+ "manoeuvring": "maneuvering",
926
+ "manoeuvrings": "maneuverings",
927
+ "marginalisation": "marginalization",
928
+ "marginalise": "marginalize",
929
+ "marginalised": "marginalized",
930
+ "marginalises": "marginalizes",
931
+ "marginalising": "marginalizing",
932
+ "marshalled": "marshaled",
933
+ "marshalling": "marshaling",
934
+ "marvelled": "marveled",
935
+ "marvelling": "marveling",
936
+ "marvellous": "marvelous",
937
+ "marvellously": "marvelously",
938
+ "materialisation": "materialization",
939
+ "materialise": "materialize",
940
+ "materialised": "materialized",
941
+ "materialises": "materializes",
942
+ "materialising": "materializing",
943
+ "maximisation": "maximization",
944
+ "maximise": "maximize",
945
+ "maximised": "maximized",
946
+ "maximises": "maximizes",
947
+ "maximising": "maximizing",
948
+ "meagre": "meager",
949
+ "mechanisation": "mechanization",
950
+ "mechanise": "mechanize",
951
+ "mechanised": "mechanized",
952
+ "mechanises": "mechanizes",
953
+ "mechanising": "mechanizing",
954
+ "mediaeval": "medieval",
955
+ "memorialise": "memorialize",
956
+ "memorialised": "memorialized",
957
+ "memorialises": "memorializes",
958
+ "memorialising": "memorializing",
959
+ "memorise": "memorize",
960
+ "memorised": "memorized",
961
+ "memorises": "memorizes",
962
+ "memorising": "memorizing",
963
+ "mesmerise": "mesmerize",
964
+ "mesmerised": "mesmerized",
965
+ "mesmerises": "mesmerizes",
966
+ "mesmerising": "mesmerizing",
967
+ "metabolise": "metabolize",
968
+ "metabolised": "metabolized",
969
+ "metabolises": "metabolizes",
970
+ "metabolising": "metabolizing",
971
+ "metre": "meter",
972
+ "metres": "meters",
973
+ "mhm": "hmm",
974
+ "micrometre": "micrometer",
975
+ "micrometres": "micrometers",
976
+ "militarise": "militarize",
977
+ "militarised": "militarized",
978
+ "militarises": "militarizes",
979
+ "militarising": "militarizing",
980
+ "milligramme": "milligram",
981
+ "milligrammes": "milligrams",
982
+ "millilitre": "milliliter",
983
+ "millilitres": "milliliters",
984
+ "millimetre": "millimeter",
985
+ "millimetres": "millimeters",
986
+ "miniaturisation": "miniaturization",
987
+ "miniaturise": "miniaturize",
988
+ "miniaturised": "miniaturized",
989
+ "miniaturises": "miniaturizes",
990
+ "miniaturising": "miniaturizing",
991
+ "minibusses": "minibuses",
992
+ "minimise": "minimize",
993
+ "minimised": "minimized",
994
+ "minimises": "minimizes",
995
+ "minimising": "minimizing",
996
+ "misbehaviour": "misbehavior",
997
+ "misdemeanour": "misdemeanor",
998
+ "misdemeanours": "misdemeanors",
999
+ "misspelt": "misspelled",
1000
+ "mitre": "miter",
1001
+ "mitres": "miters",
1002
+ "mm": "hmm",
1003
+ "mmm": "hmm",
1004
+ "mobilisation": "mobilization",
1005
+ "mobilise": "mobilize",
1006
+ "mobilised": "mobilized",
1007
+ "mobilises": "mobilizes",
1008
+ "mobilising": "mobilizing",
1009
+ "modelled": "modeled",
1010
+ "modeller": "modeler",
1011
+ "modellers": "modelers",
1012
+ "modelling": "modeling",
1013
+ "modernise": "modernize",
1014
+ "modernised": "modernized",
1015
+ "modernises": "modernizes",
1016
+ "modernising": "modernizing",
1017
+ "moisturise": "moisturize",
1018
+ "moisturised": "moisturized",
1019
+ "moisturiser": "moisturizer",
1020
+ "moisturisers": "moisturizers",
1021
+ "moisturises": "moisturizes",
1022
+ "moisturising": "moisturizing",
1023
+ "monologue": "monolog",
1024
+ "monologues": "monologs",
1025
+ "monopolisation": "monopolization",
1026
+ "monopolise": "monopolize",
1027
+ "monopolised": "monopolized",
1028
+ "monopolises": "monopolizes",
1029
+ "monopolising": "monopolizing",
1030
+ "moralise": "moralize",
1031
+ "moralised": "moralized",
1032
+ "moralises": "moralizes",
1033
+ "moralising": "moralizing",
1034
+ "motorised": "motorized",
1035
+ "mould": "mold",
1036
+ "moulded": "molded",
1037
+ "moulder": "molder",
1038
+ "mouldered": "moldered",
1039
+ "mouldering": "moldering",
1040
+ "moulders": "molders",
1041
+ "mouldier": "moldier",
1042
+ "mouldiest": "moldiest",
1043
+ "moulding": "molding",
1044
+ "mouldings": "moldings",
1045
+ "moulds": "molds",
1046
+ "mouldy": "moldy",
1047
+ "moult": "molt",
1048
+ "moulted": "molted",
1049
+ "moulting": "molting",
1050
+ "moults": "molts",
1051
+ "moustache": "mustache",
1052
+ "moustached": "mustached",
1053
+ "moustaches": "mustaches",
1054
+ "moustachioed": "mustachioed",
1055
+ "multicoloured": "multicolored",
1056
+ "nationalisation": "nationalization",
1057
+ "nationalisations": "nationalizations",
1058
+ "nationalise": "nationalize",
1059
+ "nationalised": "nationalized",
1060
+ "nationalises": "nationalizes",
1061
+ "nationalising": "nationalizing",
1062
+ "naturalisation": "naturalization",
1063
+ "naturalise": "naturalize",
1064
+ "naturalised": "naturalized",
1065
+ "naturalises": "naturalizes",
1066
+ "naturalising": "naturalizing",
1067
+ "neighbour": "neighbor",
1068
+ "neighbourhood": "neighborhood",
1069
+ "neighbourhoods": "neighborhoods",
1070
+ "neighbouring": "neighboring",
1071
+ "neighbourliness": "neighborliness",
1072
+ "neighbourly": "neighborly",
1073
+ "neighbours": "neighbors",
1074
+ "neutralisation": "neutralization",
1075
+ "neutralise": "neutralize",
1076
+ "neutralised": "neutralized",
1077
+ "neutralises": "neutralizes",
1078
+ "neutralising": "neutralizing",
1079
+ "normalisation": "normalization",
1080
+ "normalise": "normalize",
1081
+ "normalised": "normalized",
1082
+ "normalises": "normalizes",
1083
+ "normalising": "normalizing",
1084
+ "odour": "odor",
1085
+ "odourless": "odorless",
1086
+ "odours": "odors",
1087
+ "oesophagus": "esophagus",
1088
+ "oesophaguses": "esophaguses",
1089
+ "oestrogen": "estrogen",
1090
+ "offence": "offense",
1091
+ "offences": "offenses",
1092
+ "omelette": "omelet",
1093
+ "omelettes": "omelets",
1094
+ "optimise": "optimize",
1095
+ "optimised": "optimized",
1096
+ "optimises": "optimizes",
1097
+ "optimising": "optimizing",
1098
+ "organisation": "organization",
1099
+ "organisational": "organizational",
1100
+ "organisations": "organizations",
1101
+ "organise": "organize",
1102
+ "organised": "organized",
1103
+ "organiser": "organizer",
1104
+ "organisers": "organizers",
1105
+ "organises": "organizes",
1106
+ "organising": "organizing",
1107
+ "orthopaedic": "orthopedic",
1108
+ "orthopaedics": "orthopedics",
1109
+ "ostracise": "ostracize",
1110
+ "ostracised": "ostracized",
1111
+ "ostracises": "ostracizes",
1112
+ "ostracising": "ostracizing",
1113
+ "outmanoeuvre": "outmaneuver",
1114
+ "outmanoeuvred": "outmaneuvered",
1115
+ "outmanoeuvres": "outmaneuvers",
1116
+ "outmanoeuvring": "outmaneuvering",
1117
+ "overemphasise": "overemphasize",
1118
+ "overemphasised": "overemphasized",
1119
+ "overemphasises": "overemphasizes",
1120
+ "overemphasising": "overemphasizing",
1121
+ "oxidisation": "oxidization",
1122
+ "oxidise": "oxidize",
1123
+ "oxidised": "oxidized",
1124
+ "oxidises": "oxidizes",
1125
+ "oxidising": "oxidizing",
1126
+ "paederast": "pederast",
1127
+ "paederasts": "pederasts",
1128
+ "paediatric": "pediatric",
1129
+ "paediatrician": "pediatrician",
1130
+ "paediatricians": "pediatricians",
1131
+ "paediatrics": "pediatrics",
1132
+ "paedophile": "pedophile",
1133
+ "paedophiles": "pedophiles",
1134
+ "paedophilia": "pedophilia",
1135
+ "palaeolithic": "paleolithic",
1136
+ "palaeontologist": "paleontologist",
1137
+ "palaeontologists": "paleontologists",
1138
+ "palaeontology": "paleontology",
1139
+ "panelled": "paneled",
1140
+ "panelling": "paneling",
1141
+ "panellist": "panelist",
1142
+ "panellists": "panelists",
1143
+ "paralyse": "paralyze",
1144
+ "paralysed": "paralyzed",
1145
+ "paralyses": "paralyzes",
1146
+ "paralysing": "paralyzing",
1147
+ "parcelled": "parceled",
1148
+ "parcelling": "parceling",
1149
+ "parlour": "parlor",
1150
+ "parlours": "parlors",
1151
+ "particularise": "particularize",
1152
+ "particularised": "particularized",
1153
+ "particularises": "particularizes",
1154
+ "particularising": "particularizing",
1155
+ "passivisation": "passivization",
1156
+ "passivise": "passivize",
1157
+ "passivised": "passivized",
1158
+ "passivises": "passivizes",
1159
+ "passivising": "passivizing",
1160
+ "pasteurisation": "pasteurization",
1161
+ "pasteurise": "pasteurize",
1162
+ "pasteurised": "pasteurized",
1163
+ "pasteurises": "pasteurizes",
1164
+ "pasteurising": "pasteurizing",
1165
+ "patronise": "patronize",
1166
+ "patronised": "patronized",
1167
+ "patronises": "patronizes",
1168
+ "patronising": "patronizing",
1169
+ "patronisingly": "patronizingly",
1170
+ "pedalled": "pedaled",
1171
+ "pedalling": "pedaling",
1172
+ "pedestrianisation": "pedestrianization",
1173
+ "pedestrianise": "pedestrianize",
1174
+ "pedestrianised": "pedestrianized",
1175
+ "pedestrianises": "pedestrianizes",
1176
+ "pedestrianising": "pedestrianizing",
1177
+ "penalise": "penalize",
1178
+ "penalised": "penalized",
1179
+ "penalises": "penalizes",
1180
+ "penalising": "penalizing",
1181
+ "pencilled": "penciled",
1182
+ "pencilling": "penciling",
1183
+ "personalise": "personalize",
1184
+ "personalised": "personalized",
1185
+ "personalises": "personalizes",
1186
+ "personalising": "personalizing",
1187
+ "pharmacopoeia": "pharmacopeia",
1188
+ "pharmacopoeias": "pharmacopeias",
1189
+ "philosophise": "philosophize",
1190
+ "philosophised": "philosophized",
1191
+ "philosophises": "philosophizes",
1192
+ "philosophising": "philosophizing",
1193
+ "philtre": "filter",
1194
+ "philtres": "filters",
1195
+ "phoney": "phony",
1196
+ "plagiarise": "plagiarize",
1197
+ "plagiarised": "plagiarized",
1198
+ "plagiarises": "plagiarizes",
1199
+ "plagiarising": "plagiarizing",
1200
+ "plough": "plow",
1201
+ "ploughed": "plowed",
1202
+ "ploughing": "plowing",
1203
+ "ploughman": "plowman",
1204
+ "ploughmen": "plowmen",
1205
+ "ploughs": "plows",
1206
+ "ploughshare": "plowshare",
1207
+ "ploughshares": "plowshares",
1208
+ "polarisation": "polarization",
1209
+ "polarise": "polarize",
1210
+ "polarised": "polarized",
1211
+ "polarises": "polarizes",
1212
+ "polarising": "polarizing",
1213
+ "politicisation": "politicization",
1214
+ "politicise": "politicize",
1215
+ "politicised": "politicized",
1216
+ "politicises": "politicizes",
1217
+ "politicising": "politicizing",
1218
+ "popularisation": "popularization",
1219
+ "popularise": "popularize",
1220
+ "popularised": "popularized",
1221
+ "popularises": "popularizes",
1222
+ "popularising": "popularizing",
1223
+ "pouffe": "pouf",
1224
+ "pouffes": "poufs",
1225
+ "practise": "practice",
1226
+ "practised": "practiced",
1227
+ "practises": "practices",
1228
+ "practising": "practicing",
1229
+ "praesidium": "presidium",
1230
+ "praesidiums": "presidiums",
1231
+ "pressurisation": "pressurization",
1232
+ "pressurise": "pressurize",
1233
+ "pressurised": "pressurized",
1234
+ "pressurises": "pressurizes",
1235
+ "pressurising": "pressurizing",
1236
+ "pretence": "pretense",
1237
+ "pretences": "pretenses",
1238
+ "primaeval": "primeval",
1239
+ "prioritisation": "prioritization",
1240
+ "prioritise": "prioritize",
1241
+ "prioritised": "prioritized",
1242
+ "prioritises": "prioritizes",
1243
+ "prioritising": "prioritizing",
1244
+ "privatisation": "privatization",
1245
+ "privatisations": "privatizations",
1246
+ "privatise": "privatize",
1247
+ "privatised": "privatized",
1248
+ "privatises": "privatizes",
1249
+ "privatising": "privatizing",
1250
+ "professionalisation": "professionalization",
1251
+ "professionalise": "professionalize",
1252
+ "professionalised": "professionalized",
1253
+ "professionalises": "professionalizes",
1254
+ "professionalising": "professionalizing",
1255
+ "programme": "program",
1256
+ "programmes": "programs",
1257
+ "prologue": "prolog",
1258
+ "prologues": "prologs",
1259
+ "propagandise": "propagandize",
1260
+ "propagandised": "propagandized",
1261
+ "propagandises": "propagandizes",
1262
+ "propagandising": "propagandizing",
1263
+ "proselytise": "proselytize",
1264
+ "proselytised": "proselytized",
1265
+ "proselytiser": "proselytizer",
1266
+ "proselytisers": "proselytizers",
1267
+ "proselytises": "proselytizes",
1268
+ "proselytising": "proselytizing",
1269
+ "psychoanalyse": "psychoanalyze",
1270
+ "psychoanalysed": "psychoanalyzed",
1271
+ "psychoanalyses": "psychoanalyzes",
1272
+ "psychoanalysing": "psychoanalyzing",
1273
+ "publicise": "publicize",
1274
+ "publicised": "publicized",
1275
+ "publicises": "publicizes",
1276
+ "publicising": "publicizing",
1277
+ "pulverisation": "pulverization",
1278
+ "pulverise": "pulverize",
1279
+ "pulverised": "pulverized",
1280
+ "pulverises": "pulverizes",
1281
+ "pulverising": "pulverizing",
1282
+ "pummelled": "pummel",
1283
+ "pummelling": "pummeled",
1284
+ "pyjama": "pajama",
1285
+ "pyjamas": "pajamas",
1286
+ "pzazz": "pizzazz",
1287
+ "quarrelled": "quarreled",
1288
+ "quarrelling": "quarreling",
1289
+ "radicalise": "radicalize",
1290
+ "radicalised": "radicalized",
1291
+ "radicalises": "radicalizes",
1292
+ "radicalising": "radicalizing",
1293
+ "rancour": "rancor",
1294
+ "randomise": "randomize",
1295
+ "randomised": "randomized",
1296
+ "randomises": "randomizes",
1297
+ "randomising": "randomizing",
1298
+ "rationalisation": "rationalization",
1299
+ "rationalisations": "rationalizations",
1300
+ "rationalise": "rationalize",
1301
+ "rationalised": "rationalized",
1302
+ "rationalises": "rationalizes",
1303
+ "rationalising": "rationalizing",
1304
+ "ravelled": "raveled",
1305
+ "ravelling": "raveling",
1306
+ "realisable": "realizable",
1307
+ "realisation": "realization",
1308
+ "realisations": "realizations",
1309
+ "realise": "realize",
1310
+ "realised": "realized",
1311
+ "realises": "realizes",
1312
+ "realising": "realizing",
1313
+ "recognisable": "recognizable",
1314
+ "recognisably": "recognizably",
1315
+ "recognisance": "recognizance",
1316
+ "recognise": "recognize",
1317
+ "recognised": "recognized",
1318
+ "recognises": "recognizes",
1319
+ "recognising": "recognizing",
1320
+ "reconnoitre": "reconnoiter",
1321
+ "reconnoitred": "reconnoitered",
1322
+ "reconnoitres": "reconnoiters",
1323
+ "reconnoitring": "reconnoitering",
1324
+ "refuelled": "refueled",
1325
+ "refuelling": "refueling",
1326
+ "regularisation": "regularization",
1327
+ "regularise": "regularize",
1328
+ "regularised": "regularized",
1329
+ "regularises": "regularizes",
1330
+ "regularising": "regularizing",
1331
+ "remodelled": "remodeled",
1332
+ "remodelling": "remodeling",
1333
+ "remould": "remold",
1334
+ "remoulded": "remolded",
1335
+ "remoulding": "remolding",
1336
+ "remoulds": "remolds",
1337
+ "reorganisation": "reorganization",
1338
+ "reorganisations": "reorganizations",
1339
+ "reorganise": "reorganize",
1340
+ "reorganised": "reorganized",
1341
+ "reorganises": "reorganizes",
1342
+ "reorganising": "reorganizing",
1343
+ "revelled": "reveled",
1344
+ "reveller": "reveler",
1345
+ "revellers": "revelers",
1346
+ "revelling": "reveling",
1347
+ "revitalise": "revitalize",
1348
+ "revitalised": "revitalized",
1349
+ "revitalises": "revitalizes",
1350
+ "revitalising": "revitalizing",
1351
+ "revolutionise": "revolutionize",
1352
+ "revolutionised": "revolutionized",
1353
+ "revolutionises": "revolutionizes",
1354
+ "revolutionising": "revolutionizing",
1355
+ "rhapsodise": "rhapsodize",
1356
+ "rhapsodised": "rhapsodized",
1357
+ "rhapsodises": "rhapsodizes",
1358
+ "rhapsodising": "rhapsodizing",
1359
+ "rigour": "rigor",
1360
+ "rigours": "rigors",
1361
+ "ritualised": "ritualized",
1362
+ "rivalled": "rivaled",
1363
+ "rivalling": "rivaling",
1364
+ "romanticise": "romanticize",
1365
+ "romanticised": "romanticized",
1366
+ "romanticises": "romanticizes",
1367
+ "romanticising": "romanticizing",
1368
+ "rumour": "rumor",
1369
+ "rumoured": "rumored",
1370
+ "rumours": "rumors",
1371
+ "sabre": "saber",
1372
+ "sabres": "sabers",
1373
+ "saltpetre": "saltpeter",
1374
+ "sanitise": "sanitize",
1375
+ "sanitised": "sanitized",
1376
+ "sanitises": "sanitizes",
1377
+ "sanitising": "sanitizing",
1378
+ "satirise": "satirize",
1379
+ "satirised": "satirized",
1380
+ "satirises": "satirizes",
1381
+ "satirising": "satirizing",
1382
+ "saviour": "savior",
1383
+ "saviours": "saviors",
1384
+ "savour": "savor",
1385
+ "savoured": "savored",
1386
+ "savouries": "savories",
1387
+ "savouring": "savoring",
1388
+ "savours": "savors",
1389
+ "savoury": "savory",
1390
+ "scandalise": "scandalize",
1391
+ "scandalised": "scandalized",
1392
+ "scandalises": "scandalizes",
1393
+ "scandalising": "scandalizing",
1394
+ "sceptic": "skeptic",
1395
+ "sceptical": "skeptical",
1396
+ "sceptically": "skeptically",
1397
+ "scepticism": "skepticism",
1398
+ "sceptics": "skeptics",
1399
+ "sceptre": "scepter",
1400
+ "sceptres": "scepters",
1401
+ "scrutinise": "scrutinize",
1402
+ "scrutinised": "scrutinized",
1403
+ "scrutinises": "scrutinizes",
1404
+ "scrutinising": "scrutinizing",
1405
+ "secularisation": "secularization",
1406
+ "secularise": "secularize",
1407
+ "secularised": "secularized",
1408
+ "secularises": "secularizes",
1409
+ "secularising": "secularizing",
1410
+ "sensationalise": "sensationalize",
1411
+ "sensationalised": "sensationalized",
1412
+ "sensationalises": "sensationalizes",
1413
+ "sensationalising": "sensationalizing",
1414
+ "sensitise": "sensitize",
1415
+ "sensitised": "sensitized",
1416
+ "sensitises": "sensitizes",
1417
+ "sensitising": "sensitizing",
1418
+ "sentimentalise": "sentimentalize",
1419
+ "sentimentalised": "sentimentalized",
1420
+ "sentimentalises": "sentimentalizes",
1421
+ "sentimentalising": "sentimentalizing",
1422
+ "sepulchre": "sepulcher",
1423
+ "sepulchres": "sepulchers",
1424
+ "serialisation": "serialization",
1425
+ "serialisations": "serializations",
1426
+ "serialise": "serialize",
1427
+ "serialised": "serialized",
1428
+ "serialises": "serializes",
1429
+ "serialising": "serializing",
1430
+ "sermonise": "sermonize",
1431
+ "sermonised": "sermonized",
1432
+ "sermonises": "sermonizes",
1433
+ "sermonising": "sermonizing",
1434
+ "sheikh": "sheik",
1435
+ "shovelled": "shoveled",
1436
+ "shovelling": "shoveling",
1437
+ "shrivelled": "shriveled",
1438
+ "shrivelling": "shriveling",
1439
+ "signalise": "signalize",
1440
+ "signalised": "signalized",
1441
+ "signalises": "signalizes",
1442
+ "signalising": "signalizing",
1443
+ "signalled": "signaled",
1444
+ "signalling": "signaling",
1445
+ "smoulder": "smolder",
1446
+ "smouldered": "smoldered",
1447
+ "smouldering": "smoldering",
1448
+ "smoulders": "smolders",
1449
+ "snivelled": "sniveled",
1450
+ "snivelling": "sniveling",
1451
+ "snorkelled": "snorkeled",
1452
+ "snorkelling": "snorkeling",
1453
+ "snowplough": "snowplow",
1454
+ "snowploughs": "snowplow",
1455
+ "socialisation": "socialization",
1456
+ "socialise": "socialize",
1457
+ "socialised": "socialized",
1458
+ "socialises": "socializes",
1459
+ "socialising": "socializing",
1460
+ "sodomise": "sodomize",
1461
+ "sodomised": "sodomized",
1462
+ "sodomises": "sodomizes",
1463
+ "sodomising": "sodomizing",
1464
+ "solemnise": "solemnize",
1465
+ "solemnised": "solemnized",
1466
+ "solemnises": "solemnizes",
1467
+ "solemnising": "solemnizing",
1468
+ "sombre": "somber",
1469
+ "specialisation": "specialization",
1470
+ "specialisations": "specializations",
1471
+ "specialise": "specialize",
1472
+ "specialised": "specialized",
1473
+ "specialises": "specializes",
1474
+ "specialising": "specializing",
1475
+ "spectre": "specter",
1476
+ "spectres": "specters",
1477
+ "spiralled": "spiraled",
1478
+ "spiralling": "spiraling",
1479
+ "splendour": "splendor",
1480
+ "splendours": "splendors",
1481
+ "squirrelled": "squirreled",
1482
+ "squirrelling": "squirreling",
1483
+ "stabilisation": "stabilization",
1484
+ "stabilise": "stabilize",
1485
+ "stabilised": "stabilized",
1486
+ "stabiliser": "stabilizer",
1487
+ "stabilisers": "stabilizers",
1488
+ "stabilises": "stabilizes",
1489
+ "stabilising": "stabilizing",
1490
+ "standardisation": "standardization",
1491
+ "standardise": "standardize",
1492
+ "standardised": "standardized",
1493
+ "standardises": "standardizes",
1494
+ "standardising": "standardizing",
1495
+ "stencilled": "stenciled",
1496
+ "stencilling": "stenciling",
1497
+ "sterilisation": "sterilization",
1498
+ "sterilisations": "sterilizations",
1499
+ "sterilise": "sterilize",
1500
+ "sterilised": "sterilized",
1501
+ "steriliser": "sterilizer",
1502
+ "sterilisers": "sterilizers",
1503
+ "sterilises": "sterilizes",
1504
+ "sterilising": "sterilizing",
1505
+ "stigmatisation": "stigmatization",
1506
+ "stigmatise": "stigmatize",
1507
+ "stigmatised": "stigmatized",
1508
+ "stigmatises": "stigmatizes",
1509
+ "stigmatising": "stigmatizing",
1510
+ "storey": "story",
1511
+ "storeys": "stories",
1512
+ "subsidisation": "subsidization",
1513
+ "subsidise": "subsidize",
1514
+ "subsidised": "subsidized",
1515
+ "subsidiser": "subsidizer",
1516
+ "subsidisers": "subsidizers",
1517
+ "subsidises": "subsidizes",
1518
+ "subsidising": "subsidizing",
1519
+ "succour": "succor",
1520
+ "succoured": "succored",
1521
+ "succouring": "succoring",
1522
+ "succours": "succors",
1523
+ "sulphate": "sulfate",
1524
+ "sulphates": "sulfates",
1525
+ "sulphide": "sulfide",
1526
+ "sulphides": "sulfides",
1527
+ "sulphur": "sulfur",
1528
+ "sulphurous": "sulfurous",
1529
+ "summarise": "summarize",
1530
+ "summarised": "summarized",
1531
+ "summarises": "summarizes",
1532
+ "summarising": "summarizing",
1533
+ "swivelled": "swiveled",
1534
+ "swivelling": "swiveling",
1535
+ "symbolise": "symbolize",
1536
+ "symbolised": "symbolized",
1537
+ "symbolises": "symbolizes",
1538
+ "symbolising": "symbolizing",
1539
+ "sympathise": "sympathize",
1540
+ "sympathised": "sympathized",
1541
+ "sympathiser": "sympathizer",
1542
+ "sympathisers": "sympathizers",
1543
+ "sympathises": "sympathizes",
1544
+ "sympathising": "sympathizing",
1545
+ "synchronisation": "synchronization",
1546
+ "synchronise": "synchronize",
1547
+ "synchronised": "synchronized",
1548
+ "synchronises": "synchronizes",
1549
+ "synchronising": "synchronizing",
1550
+ "synthesise": "synthesize",
1551
+ "synthesised": "synthesized",
1552
+ "synthesiser": "synthesizer",
1553
+ "synthesisers": "synthesizers",
1554
+ "synthesises": "synthesizes",
1555
+ "synthesising": "synthesizing",
1556
+ "syphon": "siphon",
1557
+ "syphoned": "siphoned",
1558
+ "syphoning": "siphoning",
1559
+ "syphons": "siphons",
1560
+ "systematisation": "systematization",
1561
+ "systematise": "systematize",
1562
+ "systematised": "systematized",
1563
+ "systematises": "systematizes",
1564
+ "systematising": "systematizing",
1565
+ "tantalise": "tantalize",
1566
+ "tantalised": "tantalized",
1567
+ "tantalises": "tantalizes",
1568
+ "tantalising": "tantalizing",
1569
+ "tantalisingly": "tantalizingly",
1570
+ "tasselled": "tasseled",
1571
+ "technicolour": "technicolor",
1572
+ "temporise": "temporize",
1573
+ "temporised": "temporized",
1574
+ "temporises": "temporizes",
1575
+ "temporising": "temporizing",
1576
+ "tenderise": "tenderize",
1577
+ "tenderised": "tenderized",
1578
+ "tenderises": "tenderizes",
1579
+ "tenderising": "tenderizing",
1580
+ "terrorise": "terrorize",
1581
+ "terrorised": "terrorized",
1582
+ "terrorises": "terrorizes",
1583
+ "terrorising": "terrorizing",
1584
+ "theatre": "theater",
1585
+ "theatregoer": "theatergoer",
1586
+ "theatregoers": "theatergoers",
1587
+ "theatres": "theaters",
1588
+ "theorise": "theorize",
1589
+ "theorised": "theorized",
1590
+ "theorises": "theorizes",
1591
+ "theorising": "theorizing",
1592
+ "tonne": "ton",
1593
+ "tonnes": "tons",
1594
+ "towelled": "toweled",
1595
+ "towelling": "toweling",
1596
+ "toxaemia": "toxemia",
1597
+ "tranquillise": "tranquilize",
1598
+ "tranquillised": "tranquilized",
1599
+ "tranquilliser": "tranquilizer",
1600
+ "tranquillisers": "tranquilizers",
1601
+ "tranquillises": "tranquilizes",
1602
+ "tranquillising": "tranquilizing",
1603
+ "tranquillity": "tranquility",
1604
+ "tranquillize": "tranquilize",
1605
+ "tranquillized": "tranquilized",
1606
+ "tranquillizer": "tranquilizer",
1607
+ "tranquillizers": "tranquilizers",
1608
+ "tranquillizes": "tranquilizes",
1609
+ "tranquillizing": "tranquilizing",
1610
+ "tranquilly": "tranquility",
1611
+ "transistorised": "transistorized",
1612
+ "traumatise": "traumatize",
1613
+ "traumatised": "traumatized",
1614
+ "traumatises": "traumatizes",
1615
+ "traumatising": "traumatizing",
1616
+ "travelled": "traveled",
1617
+ "traveller": "traveler",
1618
+ "travellers": "travelers",
1619
+ "travelling": "traveling",
1620
+ "travelog": "travelogue",
1621
+ "travelogs": "travelogues",
1622
+ "trialled": "trialed",
1623
+ "trialling": "trialing",
1624
+ "tricolour": "tricolor",
1625
+ "tricolours": "tricolors",
1626
+ "trivialise": "trivialize",
1627
+ "trivialised": "trivialized",
1628
+ "trivialises": "trivializes",
1629
+ "trivialising": "trivializing",
1630
+ "tumour": "tumor",
1631
+ "tumours": "tumors",
1632
+ "tunnelled": "tunneled",
1633
+ "tunnelling": "tunneling",
1634
+ "tyrannise": "tyrannize",
1635
+ "tyrannised": "tyrannized",
1636
+ "tyrannises": "tyrannizes",
1637
+ "tyrannising": "tyrannizing",
1638
+ "tyre": "tire",
1639
+ "tyres": "tires",
1640
+ "unauthorised": "unauthorized",
1641
+ "uncivilised": "uncivilized",
1642
+ "underutilised": "underutilized",
1643
+ "unequalled": "unequaled",
1644
+ "unfavourable": "unfavorable",
1645
+ "unfavourably": "unfavorably",
1646
+ "unionisation": "unionization",
1647
+ "unionise": "unionize",
1648
+ "unionised": "unionized",
1649
+ "unionises": "unionizes",
1650
+ "unionising": "unionizing",
1651
+ "unorganised": "unorganized",
1652
+ "unravelled": "unraveled",
1653
+ "unravelling": "unraveling",
1654
+ "unrecognisable": "unrecognizable",
1655
+ "unrecognised": "unrecognized",
1656
+ "unrivalled": "unrivaled",
1657
+ "unsavoury": "unsavory",
1658
+ "untrammelled": "untrammeled",
1659
+ "urbanisation": "urbanization",
1660
+ "urbanise": "urbanize",
1661
+ "urbanised": "urbanized",
1662
+ "urbanises": "urbanizes",
1663
+ "urbanising": "urbanizing",
1664
+ "utilisable": "utilizable",
1665
+ "utilisation": "utilization",
1666
+ "utilise": "utilize",
1667
+ "utilised": "utilized",
1668
+ "utilises": "utilizes",
1669
+ "utilising": "utilizing",
1670
+ "valour": "valor",
1671
+ "vandalise": "vandalize",
1672
+ "vandalised": "vandalized",
1673
+ "vandalises": "vandalizes",
1674
+ "vandalising": "vandalizing",
1675
+ "vaporisation": "vaporization",
1676
+ "vaporise": "vaporize",
1677
+ "vaporised": "vaporized",
1678
+ "vaporises": "vaporizes",
1679
+ "vaporising": "vaporizing",
1680
+ "vapour": "vapor",
1681
+ "vapours": "vapors",
1682
+ "verbalise": "verbalize",
1683
+ "verbalised": "verbalized",
1684
+ "verbalises": "verbalizes",
1685
+ "verbalising": "verbalizing",
1686
+ "victimisation": "victimization",
1687
+ "victimise": "victimize",
1688
+ "victimised": "victimized",
1689
+ "victimises": "victimizes",
1690
+ "victimising": "victimizing",
1691
+ "videodisc": "videodisk",
1692
+ "videodiscs": "videodisks",
1693
+ "vigour": "vigor",
1694
+ "visualisation": "visualization",
1695
+ "visualisations": "visualizations",
1696
+ "visualise": "visualize",
1697
+ "visualised": "visualized",
1698
+ "visualises": "visualizes",
1699
+ "visualising": "visualizing",
1700
+ "vocalisation": "vocalization",
1701
+ "vocalisations": "vocalizations",
1702
+ "vocalise": "vocalize",
1703
+ "vocalised": "vocalized",
1704
+ "vocalises": "vocalizes",
1705
+ "vocalising": "vocalizing",
1706
+ "vulcanised": "vulcanized",
1707
+ "vulgarisation": "vulgarization",
1708
+ "vulgarise": "vulgarize",
1709
+ "vulgarised": "vulgarized",
1710
+ "vulgarises": "vulgarizes",
1711
+ "vulgarising": "vulgarizing",
1712
+ "waggon": "wagon",
1713
+ "waggons": "wagons",
1714
+ "watercolour": "watercolor",
1715
+ "watercolours": "watercolors",
1716
+ "weaselled": "weaseled",
1717
+ "weaselling": "weaseling",
1718
+ "westernisation": "westernization",
1719
+ "westernise": "westernize",
1720
+ "westernised": "westernized",
1721
+ "westernises": "westernizes",
1722
+ "westernising": "westernizing",
1723
+ "womanise": "womanize",
1724
+ "womanised": "womanized",
1725
+ "womaniser": "womanizer",
1726
+ "womanisers": "womanizers",
1727
+ "womanises": "womanizes",
1728
+ "womanising": "womanizing",
1729
+ "woollen": "woolen",
1730
+ "woollens": "woolens",
1731
+ "woollies": "woolies",
1732
+ "woolly": "wooly",
1733
+ "worshipped": "worshiped",
1734
+ "worshipper": "worshiper",
1735
+ "worshipping": "worshiping",
1736
+ "yodelled": "yodeled",
1737
+ "yodelling": "yodeling",
1738
+ "yoghourt": "yogurt",
1739
+ "yoghourts": "yogurts",
1740
+ "yoghurt": "yogurt",
1741
+ "yoghurts": "yogurts"
1742
+ }
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+ "padding_side": "right",
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+ "sampling_rate": 16000
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+ }
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+ {
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+ "additional_special_tokens": [
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+ "<|startoftranscript|>",
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+ "<|en|>",
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+ "<|zh|>",
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+ "<|de|>",
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+ "<|ro|>",
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+ "<|da|>",
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+ "<|hu|>",
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+ "<|ta|>",
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+ "<|no|>",
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+ "<|th|>",
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+ "<|ur|>",
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+ "<|hr|>",
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+ "<|bg|>",
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+ "<|la|>",
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+ "<|mi|>",
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+ "<|ml|>",
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+ "<|cy|>",
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+ "<|sk|>",
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+ "<|te|>",
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+ "<|fa|>",
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+ "<|lv|>",
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+ "<|bn|>",
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+ "<|sr|>",
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+ "<|az|>",
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+ "<|sl|>",
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+ "<|kn|>",
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+ "<|et|>",
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+ "<|mk|>",
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+ "<|br|>",
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+ "<|eu|>",
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+ "<|is|>",
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+ "<|hy|>",
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+ "<|ne|>",
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+ "<|mn|>",
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+ "<|bs|>",
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+ "<|kk|>",
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+ "<|sq|>",
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+ "<|sw|>",
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+ "<|gl|>",
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+ "<|mr|>",
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+ "<|pa|>",
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+ "<|si|>",
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+ "<|km|>",
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+ "<|sn|>",
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+ "<|yo|>",
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+ "<|so|>",
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+ "<|af|>",
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+ "<|oc|>",
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+ "<|ka|>",
75
+ "<|be|>",
76
+ "<|tg|>",
77
+ "<|sd|>",
78
+ "<|gu|>",
79
+ "<|am|>",
80
+ "<|yi|>",
81
+ "<|lo|>",
82
+ "<|uz|>",
83
+ "<|fo|>",
84
+ "<|ht|>",
85
+ "<|ps|>",
86
+ "<|tk|>",
87
+ "<|nn|>",
88
+ "<|mt|>",
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+ "<|sa|>",
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+ "<|lb|>",
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+ "<|my|>",
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+ "<|bo|>",
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+ "<|tl|>",
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+ "<|mg|>",
95
+ "<|as|>",
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+ "<|tt|>",
97
+ "<|haw|>",
98
+ "<|ln|>",
99
+ "<|ha|>",
100
+ "<|ba|>",
101
+ "<|jw|>",
102
+ "<|su|>",
103
+ "<|yue|>",
104
+ "<|translate|>",
105
+ "<|transcribe|>",
106
+ "<|startoflm|>",
107
+ "<|startofprev|>",
108
+ "<|nospeech|>",
109
+ "<|notimestamps|>"
110
+ ],
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+ "bos_token": {
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+ "content": "<|endoftext|>",
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+ "lstrip": false,
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+ "content": "<|endoftext|>",
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+ },
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+ "pad_token": {
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+ "content": "<|endoftext|>",
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+ "lstrip": false,
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+ "normalized": false,
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+ "rstrip": false,
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+ "single_word": false
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+ },
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+ "unk_token": {
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+ "content": "<|endoftext|>",
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+ "lstrip": false,
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+ "normalized": false,
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+ "rstrip": false,
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+ "single_word": false
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+ }
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+ }
checkpoint-1000-epoch-71/tokenizer.json ADDED
The diff for this file is too large to render. See raw diff
 
checkpoint-1000-epoch-71/tokenizer_config.json ADDED
The diff for this file is too large to render. See raw diff
 
checkpoint-1000-epoch-71/vocab.json ADDED
The diff for this file is too large to render. See raw diff
 
config.json ADDED
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1
+ {
2
+ "activation_dropout": 0.0,
3
+ "activation_function": "gelu",
4
+ "apply_spec_augment": false,
5
+ "architectures": [
6
+ "WhisperForConditionalGeneration"
7
+ ],
8
+ "attention_dropout": 0.0,
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+ "begin_suppress_tokens": null,
10
+ "bos_token_id": 50257,
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+ "classifier_proj_size": 256,
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+ "d_model": 1280,
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+ "decoder_attention_heads": 20,
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+ "decoder_ffn_dim": 5120,
15
+ "decoder_layerdrop": 0.0,
16
+ "decoder_layers": 2,
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+ "decoder_start_token_id": 50258,
18
+ "dropout": 0.0,
19
+ "encoder_attention_heads": 20,
20
+ "encoder_ffn_dim": 5120,
21
+ "encoder_layerdrop": 0.0,
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+ "encoder_layers": 32,
23
+ "eos_token_id": 50257,
24
+ "init_std": 0.02,
25
+ "is_encoder_decoder": true,
26
+ "mask_feature_length": 10,
27
+ "mask_feature_min_masks": 0,
28
+ "mask_feature_prob": 0.0,
29
+ "mask_time_length": 10,
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+ "mask_time_min_masks": 2,
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+ "mask_time_prob": 0.05,
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+ "max_length": null,
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+ "max_source_positions": 1500,
34
+ "max_target_positions": 448,
35
+ "median_filter_width": 7,
36
+ "model_type": "whisper",
37
+ "num_hidden_layers": 32,
38
+ "num_mel_bins": 128,
39
+ "pad_token_id": 50256,
40
+ "scale_embedding": false,
41
+ "torch_dtype": "float32",
42
+ "transformers_version": "4.50.0",
43
+ "use_cache": true,
44
+ "use_weighted_layer_sum": false,
45
+ "vocab_size": 51866
46
+ }
create_student_model.py ADDED
@@ -0,0 +1,231 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #!/usr/bin/env python
2
+ # coding=utf-8
3
+ # Copyright 2023 The HuggingFace Inc. team. All rights reserved.
4
+ #
5
+ # Licensed under the Apache License, Version 2.0 (the "License");
6
+ # you may not use this file except in compliance with the License.
7
+ # You may obtain a copy of the License at
8
+ #
9
+ # http://www.apache.org/licenses/LICENSE-2.0
10
+ #
11
+ # Unless required by applicable law or agreed to in writing, software
12
+ # distributed under the License is distributed on an "AS IS" BASIS,
13
+ # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
14
+ # See the License for the specific language governing permissions and
15
+ # limitations under the License.
16
+ """
17
+ Initialise a student Whisper model from a pre-trained teacher model for
18
+ teacher-student distillation.
19
+ """
20
+
21
+ import argparse
22
+ import copy
23
+ import logging
24
+
25
+ import numpy as np
26
+ import torch
27
+ from transformers import GenerationConfig, WhisperForConditionalGeneration, WhisperProcessor
28
+
29
+
30
+ logger = logging.getLogger(__name__)
31
+
32
+
33
+ def parse_args():
34
+ parser = argparse.ArgumentParser(
35
+ description="Initialise a student Whisper model from a teacher model, copying the relevant layer weights and adjusting the processor as necessary."
36
+ )
37
+ parser.add_argument(
38
+ "--teacher_checkpoint",
39
+ type=str,
40
+ required=True,
41
+ help="The HF Hub ID of the teacher checkpoint.",
42
+ )
43
+ parser.add_argument(
44
+ "--subfolder",
45
+ type=str,
46
+ default="",
47
+ help="In case the relevant teacher weights are located inside a subfolder of the model repo on huggingface.co, you "
48
+ "can specify the folder name here.",
49
+ )
50
+ parser.add_argument(
51
+ "--encoder_layers",
52
+ type=int,
53
+ default=None,
54
+ help="Number of encoder layers to use in the student model. Defaults to all layers from the teacher.",
55
+ )
56
+ parser.add_argument(
57
+ "--decoder_layers",
58
+ type=int,
59
+ default=2,
60
+ help="Number of decoder layers to use in the student model. Defaults to 2 layers.",
61
+ )
62
+ parser.add_argument(
63
+ "--decoder_layers_numbers",
64
+ type=int,
65
+ nargs="*",
66
+ help="Layers numbers of the decoder teacher to use in the student model. Defaults to None, equivalent to taking first and last layer (and equivalent to `--decoder_layers_numbers 0 -1`).",
67
+ )
68
+ parser.add_argument(
69
+ "--save_dir",
70
+ type=str,
71
+ required=True,
72
+ help="Where to save the student weights and processor.",
73
+ )
74
+ parser.add_argument(
75
+ "--push_to_hub",
76
+ type=bool,
77
+ required=False,
78
+ default=False,
79
+ help="Whether to push the student weights and processor to the Hub.",
80
+ )
81
+ parser.add_argument(
82
+ "--cache_dir",
83
+ type=str,
84
+ default=None,
85
+ help="Where to store the pretrained models downloaded from huggingface.co",
86
+ )
87
+
88
+ args = parser.parse_args()
89
+ return args
90
+
91
+
92
+ def init_student_model_from_teacher(
93
+ teacher_checkpoint,
94
+ encoder_layers=None,
95
+ decoder_layers=2,
96
+ decoder_layers_numbers=None,
97
+ save_dir=None,
98
+ push_to_hub=None,
99
+ cache_dir=None,
100
+ subfolder="",
101
+ ):
102
+ if decoder_layers_numbers is not None and len(decoder_layers_numbers) != decoder_layers:
103
+ raise ValueError(
104
+ f"Got {len(decoder_layers_numbers)} layers number for {decoder_layers} decoder layers."
105
+ )
106
+
107
+ teacher_model = WhisperForConditionalGeneration.from_pretrained(
108
+ teacher_checkpoint,
109
+ cache_dir=cache_dir,
110
+ subfolder=subfolder,
111
+ low_cpu_mem_usage=True,
112
+ )
113
+ processor = WhisperProcessor.from_pretrained(teacher_checkpoint)
114
+ generation_config = GenerationConfig.from_pretrained(teacher_checkpoint)
115
+ generation_config.forced_decoder_ids = None
116
+
117
+ teacher_config = teacher_model.config
118
+ teacher_encoder_layers = teacher_config.encoder_layers
119
+ teacher_decoder_layers = teacher_config.decoder_layers
120
+
121
+ student_config = copy.deepcopy(teacher_config)
122
+ student_config.update(
123
+ {
124
+ "encoder_layers": encoder_layers if encoder_layers is not None else teacher_encoder_layers,
125
+ "decoder_layers": decoder_layers,
126
+ }
127
+ )
128
+
129
+ encoder_mapping = np.linspace(0, teacher_encoder_layers - 1, student_config.encoder_layers, dtype=int)
130
+ encoder_mapping[-1] = teacher_encoder_layers - 1
131
+
132
+ encoder_map = {}
133
+ for student_layer, teacher_layer in enumerate(encoder_mapping):
134
+ encoder_map[teacher_layer] = student_layer
135
+
136
+ if decoder_layers_numbers is None:
137
+ decoder_mapping = np.linspace(0, teacher_decoder_layers - 1, student_config.decoder_layers, dtype=int)
138
+ decoder_mapping[-1] = teacher_decoder_layers - 1
139
+ else:
140
+ decoder_mapping = decoder_layers_numbers
141
+
142
+ decoder_map = {}
143
+ for student_layer, teacher_layer in enumerate(decoder_mapping):
144
+ decoder_map[teacher_layer] = student_layer
145
+
146
+ # init the student params from the teacher model
147
+ student_model = WhisperForConditionalGeneration(student_config)
148
+ missing_keys, unexpected_keys = student_model.load_state_dict(teacher_model.state_dict(), strict=False)
149
+ if len(missing_keys) > 0:
150
+ raise RuntimeError(
151
+ "Error(s) in loading state_dict for WhisperForConditionalGeneration. \n"
152
+ f"Missing key(s) in state_dict: {missing_keys}"
153
+ )
154
+ if decoder_layers == teacher_decoder_layers:
155
+ decoder_keys = [key for key in unexpected_keys if "model.decoder.layers" in key]
156
+ if len(decoder_keys) > 0:
157
+ raise RuntimeError(
158
+ "Error(s) in loading state_dict for WhisperForConditionalGeneration. \n"
159
+ f"Unexpected key(s) in state_dict: {decoder_keys}"
160
+ )
161
+ if encoder_layers == teacher_encoder_layers:
162
+ encoder_keys = [key for key in unexpected_keys if "model.encoder.layers" in key]
163
+ if len(encoder_keys) > 0:
164
+ raise RuntimeError(
165
+ "Error(s) in loading state_dict for WhisperForConditionalGeneration. \n"
166
+ f"Unexpected key(s) in state_dict: {encoder_keys}"
167
+ )
168
+
169
+ for layer in range(teacher_decoder_layers):
170
+ if layer in decoder_map:
171
+ # re-introduce pre-defined layers from the teacher
172
+ student_model.model.decoder.layers[decoder_map[layer]].load_state_dict(
173
+ teacher_model.model.decoder.layers[layer].state_dict()
174
+ )
175
+
176
+ if encoder_layers is not None:
177
+ for layer in range(teacher_encoder_layers):
178
+ if layer in encoder_map:
179
+ # re-introduce pre-defined layers from the teacher
180
+ student_model.model.encoder.layers[encoder_map[layer]].load_state_dict(
181
+ teacher_model.model.encoder.layers[layer].state_dict()
182
+ )
183
+
184
+ # remove the teacher params and model
185
+ del teacher_model
186
+
187
+ # save the converted weights and model
188
+ if save_dir is not None:
189
+ student_model.save_pretrained(save_dir)
190
+ # we also need to correctly save the processor and generation config
191
+ processor.save_pretrained(save_dir)
192
+ generation_config.save_pretrained(save_dir)
193
+
194
+ # check we can do a forward pass with the saved model - first load the weights and processor
195
+ logger.info("Checking we can load the saved model...")
196
+ student_model = WhisperForConditionalGeneration.from_pretrained(
197
+ save_dir,
198
+ low_cpu_mem_usage=True,
199
+ )
200
+ processor = WhisperProcessor.from_pretrained(save_dir)
201
+
202
+ # define some random inputs
203
+ input_features = processor(np.ones(16000), sampling_rate=16000, return_tensors="pt").input_features
204
+ decoder_start_token_id = student_model.config.decoder_start_token_id
205
+ decoder_input_ids = torch.ones((input_features.shape[0], 1), dtype=torch.long) * decoder_start_token_id
206
+
207
+ # do a forward pass - outputs will be gibberish for the initialised model so we can't check them
208
+ # but we make can sure the model runs as expected
209
+ logger.info("Checking we can run the converted model forward...")
210
+ _ = student_model(input_features, decoder_input_ids=decoder_input_ids).logits
211
+ logger.info("Conversion successful!")
212
+
213
+ if push_to_hub:
214
+ student_model.push_to_hub(save_dir)
215
+ processor.push_to_hub(save_dir)
216
+ generation_config.push_to_hub(save_dir)
217
+
218
+
219
+ if __name__ == "__main__":
220
+ args = parse_args()
221
+
222
+ init_student_model_from_teacher(
223
+ teacher_checkpoint=args.teacher_checkpoint,
224
+ encoder_layers=args.encoder_layers,
225
+ decoder_layers=args.decoder_layers,
226
+ decoder_layers_numbers=args.decoder_layers_numbers,
227
+ save_dir=args.save_dir,
228
+ push_to_hub=args.push_to_hub,
229
+ cache_dir=args.cache_dir,
230
+ subfolder=args.subfolder,
231
+ )
distil-large-v3-init/added_tokens.json ADDED
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@@ -0,0 +1,1742 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ {
2
+ "accessorise": "accessorize",
3
+ "accessorised": "accessorized",
4
+ "accessorises": "accessorizes",
5
+ "accessorising": "accessorizing",
6
+ "acclimatisation": "acclimatization",
7
+ "acclimatise": "acclimatize",
8
+ "acclimatised": "acclimatized",
9
+ "acclimatises": "acclimatizes",
10
+ "acclimatising": "acclimatizing",
11
+ "accoutrements": "accouterments",
12
+ "aeon": "eon",
13
+ "aeons": "eons",
14
+ "aerogramme": "aerogram",
15
+ "aerogrammes": "aerograms",
16
+ "aeroplane": "airplane",
17
+ "aeroplanes": "airplanes",
18
+ "aesthete": "esthete",
19
+ "aesthetes": "esthetes",
20
+ "aesthetic": "esthetic",
21
+ "aesthetically": "esthetically",
22
+ "aesthetics": "esthetics",
23
+ "aetiology": "etiology",
24
+ "ageing": "aging",
25
+ "aggrandisement": "aggrandizement",
26
+ "agonise": "agonize",
27
+ "agonised": "agonized",
28
+ "agonises": "agonizes",
29
+ "agonising": "agonizing",
30
+ "agonisingly": "agonizingly",
31
+ "almanack": "almanac",
32
+ "almanacks": "almanacs",
33
+ "aluminium": "aluminum",
34
+ "amortisable": "amortizable",
35
+ "amortisation": "amortization",
36
+ "amortisations": "amortizations",
37
+ "amortise": "amortize",
38
+ "amortised": "amortized",
39
+ "amortises": "amortizes",
40
+ "amortising": "amortizing",
41
+ "amphitheatre": "amphitheater",
42
+ "amphitheatres": "amphitheaters",
43
+ "anaemia": "anemia",
44
+ "anaemic": "anemic",
45
+ "anaesthesia": "anesthesia",
46
+ "anaesthetic": "anesthetic",
47
+ "anaesthetics": "anesthetics",
48
+ "anaesthetise": "anesthetize",
49
+ "anaesthetised": "anesthetized",
50
+ "anaesthetises": "anesthetizes",
51
+ "anaesthetising": "anesthetizing",
52
+ "anaesthetist": "anesthetist",
53
+ "anaesthetists": "anesthetists",
54
+ "anaesthetize": "anesthetize",
55
+ "anaesthetized": "anesthetized",
56
+ "anaesthetizes": "anesthetizes",
57
+ "anaesthetizing": "anesthetizing",
58
+ "analogue": "analog",
59
+ "analogues": "analogs",
60
+ "analyse": "analyze",
61
+ "analysed": "analyzed",
62
+ "analyses": "analyzes",
63
+ "analysing": "analyzing",
64
+ "anglicise": "anglicize",
65
+ "anglicised": "anglicized",
66
+ "anglicises": "anglicizes",
67
+ "anglicising": "anglicizing",
68
+ "annualised": "annualized",
69
+ "antagonise": "antagonize",
70
+ "antagonised": "antagonized",
71
+ "antagonises": "antagonizes",
72
+ "antagonising": "antagonizing",
73
+ "apologise": "apologize",
74
+ "apologised": "apologized",
75
+ "apologises": "apologizes",
76
+ "apologising": "apologizing",
77
+ "appal": "appall",
78
+ "appals": "appalls",
79
+ "appetiser": "appetizer",
80
+ "appetisers": "appetizers",
81
+ "appetising": "appetizing",
82
+ "appetisingly": "appetizingly",
83
+ "arbour": "arbor",
84
+ "arbours": "arbors",
85
+ "archaeologically": "archeologically",
86
+ "archaeologist": "archeologist",
87
+ "archaeologists": "archeologists",
88
+ "archaeology": "archeology</span>",
89
+ "archeological": "archaeological",
90
+ "ardour": "ardor",
91
+ "armour": "armor",
92
+ "armoured": "armored",
93
+ "armourer": "armorer",
94
+ "armourers": "armorers",
95
+ "armouries": "armories",
96
+ "armoury": "armory",
97
+ "artefact": "artifact",
98
+ "artefacts": "artifacts",
99
+ "authorise": "authorize",
100
+ "authorised": "authorized",
101
+ "authorises": "authorizes",
102
+ "authorising": "authorizing",
103
+ "axe": "ax",
104
+ "backpedalled": "backpedaled",
105
+ "backpedalling": "backpedaling",
106
+ "bannister": "banister",
107
+ "bannisters": "banisters",
108
+ "baptise": "baptize",
109
+ "baptised": "baptized",
110
+ "baptises": "baptizes",
111
+ "baptising": "baptizing",
112
+ "bastardise": "bastardize",
113
+ "bastardised": "bastardized",
114
+ "bastardises": "bastardizes",
115
+ "bastardising": "bastardizing",
116
+ "battleax": "battleaxe",
117
+ "baulk": "balk",
118
+ "baulked": "balked",
119
+ "baulking": "balking",
120
+ "baulks": "balks",
121
+ "bedevilled": "bedeviled",
122
+ "bedevilling": "bedeviling",
123
+ "behaviour": "behavior",
124
+ "behavioural": "behavioral",
125
+ "behaviourism": "behaviorism",
126
+ "behaviourist": "behaviorist",
127
+ "behaviourists": "behaviorists",
128
+ "behaviours": "behaviors",
129
+ "behove": "behoove",
130
+ "behoved": "behooved",
131
+ "behoves": "behooves",
132
+ "bejewelled": "bejeweled",
133
+ "belabour": "belabor",
134
+ "belaboured": "belabored",
135
+ "belabouring": "belaboring",
136
+ "belabours": "belabors",
137
+ "bevelled": "beveled",
138
+ "bevvies": "bevies",
139
+ "bevvy": "bevy",
140
+ "biassed": "biased",
141
+ "biassing": "biasing",
142
+ "bingeing": "binging",
143
+ "bougainvillaea": "bougainvillea",
144
+ "bougainvillaeas": "bougainvilleas",
145
+ "bowdlerise": "bowdlerize",
146
+ "bowdlerised": "bowdlerized",
147
+ "bowdlerises": "bowdlerizes",
148
+ "bowdlerising": "bowdlerizing",
149
+ "breathalyse": "breathalyze",
150
+ "breathalysed": "breathalyzed",
151
+ "breathalyser": "breathalyzer",
152
+ "breathalysers": "breathalyzers",
153
+ "breathalyses": "breathalyzes",
154
+ "breathalysing": "breathalyzing",
155
+ "brutalise": "brutalize",
156
+ "brutalised": "brutalized",
157
+ "brutalises": "brutalizes",
158
+ "brutalising": "brutalizing",
159
+ "busses": "buses",
160
+ "bussing": "busing",
161
+ "caesarean": "cesarean",
162
+ "caesareans": "cesareans",
163
+ "calibre": "caliber",
164
+ "calibres": "calibers",
165
+ "calliper": "caliper",
166
+ "callipers": "calipers",
167
+ "callisthenics": "calisthenics",
168
+ "canalise": "canalize",
169
+ "canalised": "canalized",
170
+ "canalises": "canalizes",
171
+ "canalising": "canalizing",
172
+ "cancelation": "cancellation",
173
+ "cancelations": "cancellations",
174
+ "cancelled": "canceled",
175
+ "cancelling": "canceling",
176
+ "candour": "candor",
177
+ "cannibalise": "cannibalize",
178
+ "cannibalised": "cannibalized",
179
+ "cannibalises": "cannibalizes",
180
+ "cannibalising": "cannibalizing",
181
+ "canonise": "canonize",
182
+ "canonised": "canonized",
183
+ "canonises": "canonizes",
184
+ "canonising": "canonizing",
185
+ "capitalise": "capitalize",
186
+ "capitalised": "capitalized",
187
+ "capitalises": "capitalizes",
188
+ "capitalising": "capitalizing",
189
+ "caramelise": "caramelize",
190
+ "caramelised": "caramelized",
191
+ "caramelises": "caramelizes",
192
+ "caramelising": "caramelizing",
193
+ "carbonise": "carbonize",
194
+ "carbonised": "carbonized",
195
+ "carbonises": "carbonizes",
196
+ "carbonising": "carbonizing",
197
+ "carolled": "caroled",
198
+ "carolling": "caroling",
199
+ "catalogue": "catalog",
200
+ "catalogued": "cataloged",
201
+ "catalogues": "catalogs",
202
+ "cataloguing": "cataloging",
203
+ "catalyse": "catalyze",
204
+ "catalysed": "catalyzed",
205
+ "catalyses": "catalyzes",
206
+ "catalysing": "catalyzing",
207
+ "categorise": "categorize",
208
+ "categorised": "categorized",
209
+ "categorises": "categorizes",
210
+ "categorising": "categorizing",
211
+ "cauterise": "cauterize",
212
+ "cauterised": "cauterized",
213
+ "cauterises": "cauterizes",
214
+ "cauterising": "cauterizing",
215
+ "cavilled": "caviled",
216
+ "cavilling": "caviling",
217
+ "centigramme": "centigram",
218
+ "centigrammes": "centigrams",
219
+ "centilitre": "centiliter",
220
+ "centilitres": "centiliters",
221
+ "centimetre": "centimeter",
222
+ "centimetres": "centimeters",
223
+ "centralise": "centralize",
224
+ "centralised": "centralized",
225
+ "centralises": "centralizes",
226
+ "centralising": "centralizing",
227
+ "centre": "center",
228
+ "centred": "centered",
229
+ "centrefold": "centerfold",
230
+ "centrefolds": "centerfolds",
231
+ "centrepiece": "centerpiece",
232
+ "centrepieces": "centerpieces",
233
+ "centres": "centers",
234
+ "channelled": "channeled",
235
+ "channelling": "channeling",
236
+ "characterise": "characterize",
237
+ "characterised": "characterized",
238
+ "characterises": "characterizes",
239
+ "characterising": "characterizing",
240
+ "cheque": "check",
241
+ "chequebook": "checkbook",
242
+ "chequebooks": "checkbooks",
243
+ "chequered": "checkered",
244
+ "cheques": "checks",
245
+ "chilli": "chili",
246
+ "chimaera": "chimera",
247
+ "chimaeras": "chimeras",
248
+ "chiselled": "chiseled",
249
+ "chiselling": "chiseling",
250
+ "circularise": "circularize",
251
+ "circularised": "circularized",
252
+ "circularises": "circularizes",
253
+ "circularising": "circularizing",
254
+ "civilise": "civilize",
255
+ "civilised": "civilized",
256
+ "civilises": "civilizes",
257
+ "civilising": "civilizing",
258
+ "clamour": "clamor",
259
+ "clamoured": "clamored",
260
+ "clamouring": "clamoring",
261
+ "clamours": "clamors",
262
+ "clangour": "clangor",
263
+ "clarinettist": "clarinetist",
264
+ "clarinettists": "clarinetists",
265
+ "collectivise": "collectivize",
266
+ "collectivised": "collectivized",
267
+ "collectivises": "collectivizes",
268
+ "collectivising": "collectivizing",
269
+ "colonisation": "colonization",
270
+ "colonise": "colonize",
271
+ "colonised": "colonized",
272
+ "coloniser": "colonizer",
273
+ "colonisers": "colonizers",
274
+ "colonises": "colonizes",
275
+ "colonising": "colonizing",
276
+ "colour": "color",
277
+ "colourant": "colorant",
278
+ "colourants": "colorants",
279
+ "coloured": "colored",
280
+ "coloureds": "coloreds",
281
+ "colourful": "colorful",
282
+ "colourfully": "colorfully",
283
+ "colouring": "coloring",
284
+ "colourize": "colorize",
285
+ "colourized": "colorized",
286
+ "colourizes": "colorizes",
287
+ "colourizing": "colorizing",
288
+ "colourless": "colorless",
289
+ "colours": "colors",
290
+ "commercialise": "commercialize",
291
+ "commercialised": "commercialized",
292
+ "commercialises": "commercializes",
293
+ "commercialising": "commercializing",
294
+ "compartmentalise": "compartmentalize",
295
+ "compartmentalised": "compartmentalized",
296
+ "compartmentalises": "compartmentalizes",
297
+ "compartmentalising": "compartmentalizing",
298
+ "computerise": "computerize",
299
+ "computerised": "computerized",
300
+ "computerises": "computerizes",
301
+ "computerising": "computerizing",
302
+ "conceptualise": "conceptualize",
303
+ "conceptualised": "conceptualized",
304
+ "conceptualises": "conceptualizes",
305
+ "conceptualising": "conceptualizing",
306
+ "connexion": "connection",
307
+ "connexions": "connections",
308
+ "contextualise": "contextualize",
309
+ "contextualised": "contextualized",
310
+ "contextualises": "contextualizes",
311
+ "contextualising": "contextualizing",
312
+ "cosier": "cozier",
313
+ "cosies": "cozies",
314
+ "cosiest": "coziest",
315
+ "cosily": "cozily",
316
+ "cosiness": "coziness",
317
+ "cosy": "cozy",
318
+ "councillor": "councilor",
319
+ "councillors": "councilors",
320
+ "counselled": "counseled",
321
+ "counselling": "counseling",
322
+ "counsellor": "counselor",
323
+ "counsellors": "counselors",
324
+ "crenelated": "crenellated",
325
+ "criminalise": "criminalize",
326
+ "criminalised": "criminalized",
327
+ "criminalises": "criminalizes",
328
+ "criminalising": "criminalizing",
329
+ "criticise": "criticize",
330
+ "criticised": "criticized",
331
+ "criticises": "criticizes",
332
+ "criticising": "criticizing",
333
+ "crueller": "crueler",
334
+ "cruellest": "cruelest",
335
+ "crystallisation": "crystallization",
336
+ "crystallise": "crystallize",
337
+ "crystallised": "crystallized",
338
+ "crystallises": "crystallizes",
339
+ "crystallising": "crystallizing",
340
+ "cudgelled": "cudgeled",
341
+ "cudgelling": "cudgeling",
342
+ "customise": "customize",
343
+ "customised": "customized",
344
+ "customises": "customizes",
345
+ "customising": "customizing",
346
+ "cypher": "cipher",
347
+ "cyphers": "ciphers",
348
+ "decentralisation": "decentralization",
349
+ "decentralise": "decentralize",
350
+ "decentralised": "decentralized",
351
+ "decentralises": "decentralizes",
352
+ "decentralising": "decentralizing",
353
+ "decriminalisation": "decriminalization",
354
+ "decriminalise": "decriminalize",
355
+ "decriminalised": "decriminalized",
356
+ "decriminalises": "decriminalizes",
357
+ "decriminalising": "decriminalizing",
358
+ "defence": "defense",
359
+ "defenceless": "defenseless",
360
+ "defences": "defenses",
361
+ "dehumanisation": "dehumanization",
362
+ "dehumanise": "dehumanize",
363
+ "dehumanised": "dehumanized",
364
+ "dehumanises": "dehumanizes",
365
+ "dehumanising": "dehumanizing",
366
+ "demeanour": "demeanor",
367
+ "demilitarisation": "demilitarization",
368
+ "demilitarise": "demilitarize",
369
+ "demilitarised": "demilitarized",
370
+ "demilitarises": "demilitarizes",
371
+ "demilitarising": "demilitarizing",
372
+ "demobilisation": "demobilization",
373
+ "demobilise": "demobilize",
374
+ "demobilised": "demobilized",
375
+ "demobilises": "demobilizes",
376
+ "demobilising": "demobilizing",
377
+ "democratisation": "democratization",
378
+ "democratise": "democratize",
379
+ "democratised": "democratized",
380
+ "democratises": "democratizes",
381
+ "democratising": "democratizing",
382
+ "demonise": "demonize",
383
+ "demonised": "demonized",
384
+ "demonises": "demonizes",
385
+ "demonising": "demonizing",
386
+ "demoralisation": "demoralization",
387
+ "demoralise": "demoralize",
388
+ "demoralised": "demoralized",
389
+ "demoralises": "demoralizes",
390
+ "demoralising": "demoralizing",
391
+ "denationalisation": "denationalization",
392
+ "denationalise": "denationalize",
393
+ "denationalised": "denationalized",
394
+ "denationalises": "denationalizes",
395
+ "denationalising": "denationalizing",
396
+ "deodorise": "deodorize",
397
+ "deodorised": "deodorized",
398
+ "deodorises": "deodorizes",
399
+ "deodorising": "deodorizing",
400
+ "depersonalise": "depersonalize",
401
+ "depersonalised": "depersonalized",
402
+ "depersonalises": "depersonalizes",
403
+ "depersonalising": "depersonalizing",
404
+ "deputise": "deputize",
405
+ "deputised": "deputized",
406
+ "deputises": "deputizes",
407
+ "deputising": "deputizing",
408
+ "desensitisation": "desensitization",
409
+ "desensitise": "desensitize",
410
+ "desensitised": "desensitized",
411
+ "desensitises": "desensitizes",
412
+ "desensitising": "desensitizing",
413
+ "destabilisation": "destabilization",
414
+ "destabilise": "destabilize",
415
+ "destabilised": "destabilized",
416
+ "destabilises": "destabilizes",
417
+ "destabilising": "destabilizing",
418
+ "dialled": "dialed",
419
+ "dialling": "dialing",
420
+ "dialogue": "dialog",
421
+ "dialogues": "dialogs",
422
+ "diarrhoea": "diarrhea",
423
+ "digitise": "digitize",
424
+ "digitised": "digitized",
425
+ "digitises": "digitizes",
426
+ "digitising": "digitizing",
427
+ "disc": "disk",
428
+ "discolour": "discolor",
429
+ "discoloured": "discolored",
430
+ "discolouring": "discoloring",
431
+ "discolours": "discolors",
432
+ "discs": "disks",
433
+ "disembowelled": "disemboweled",
434
+ "disembowelling": "disemboweling",
435
+ "disfavour": "disfavor",
436
+ "dishevelled": "disheveled",
437
+ "dishonour": "dishonor",
438
+ "dishonourable": "dishonorable",
439
+ "dishonourably": "dishonorably",
440
+ "dishonoured": "dishonored",
441
+ "dishonouring": "dishonoring",
442
+ "dishonours": "dishonors",
443
+ "disorganisation": "disorganization",
444
+ "disorganised": "disorganized",
445
+ "distil": "distill",
446
+ "distils": "distills",
447
+ "dramatisation": "dramatization",
448
+ "dramatisations": "dramatizations",
449
+ "dramatise": "dramatize",
450
+ "dramatised": "dramatized",
451
+ "dramatises": "dramatizes",
452
+ "dramatising": "dramatizing",
453
+ "draught": "draft",
454
+ "draughtboard": "draftboard",
455
+ "draughtboards": "draftboards",
456
+ "draughtier": "draftier",
457
+ "draughtiest": "draftiest",
458
+ "draughts": "drafts",
459
+ "draughtsman": "draftsman",
460
+ "draughtsmanship": "draftsmanship",
461
+ "draughtsmen": "draftsmen",
462
+ "draughtswoman": "draftswoman",
463
+ "draughtswomen": "draftswomen",
464
+ "draughty": "drafty",
465
+ "drivelled": "driveled",
466
+ "drivelling": "driveling",
467
+ "duelled": "dueled",
468
+ "duelling": "dueling",
469
+ "economise": "economize",
470
+ "economised": "economized",
471
+ "economises": "economizes",
472
+ "economising": "economizing",
473
+ "editorialise": "editorialize",
474
+ "editorialised": "editorialized",
475
+ "editorialises": "editorializes",
476
+ "editorialising": "editorializing",
477
+ "edoema": "edema",
478
+ "empathise": "empathize",
479
+ "empathised": "empathized",
480
+ "empathises": "empathizes",
481
+ "empathising": "empathizing",
482
+ "emphasise": "emphasize",
483
+ "emphasised": "emphasized",
484
+ "emphasises": "emphasizes",
485
+ "emphasising": "emphasizing",
486
+ "enamelled": "enameled",
487
+ "enamelling": "enameling",
488
+ "enamoured": "enamored",
489
+ "encyclopaedia": "encyclopedia",
490
+ "encyclopaedias": "encyclopedias",
491
+ "encyclopaedic": "encyclopedic",
492
+ "endeavour": "endeavor",
493
+ "endeavoured": "endeavored",
494
+ "endeavouring": "endeavoring",
495
+ "endeavours": "endeavors",
496
+ "energise": "energize",
497
+ "energised": "energized",
498
+ "energises": "energizes",
499
+ "energising": "energizing",
500
+ "enrol": "enroll",
501
+ "enrols": "enrolls",
502
+ "enthral": "enthrall",
503
+ "enthrals": "enthralls",
504
+ "epaulette": "epaulet",
505
+ "epaulettes": "epaulets",
506
+ "epicentre": "epicenter",
507
+ "epicentres": "epicenters",
508
+ "epilogue": "epilog",
509
+ "epilogues": "epilogs",
510
+ "epitomise": "epitomize",
511
+ "epitomised": "epitomized",
512
+ "epitomises": "epitomizes",
513
+ "epitomising": "epitomizing",
514
+ "equalisation": "equalization",
515
+ "equalise": "equalize",
516
+ "equalised": "equalized",
517
+ "equaliser": "equalizer",
518
+ "equalisers": "equalizers",
519
+ "equalises": "equalizes",
520
+ "equalising": "equalizing",
521
+ "eulogise": "eulogize",
522
+ "eulogised": "eulogized",
523
+ "eulogises": "eulogizes",
524
+ "eulogising": "eulogizing",
525
+ "evangelise": "evangelize",
526
+ "evangelised": "evangelized",
527
+ "evangelises": "evangelizes",
528
+ "evangelising": "evangelizing",
529
+ "exorcise": "exorcize",
530
+ "exorcised": "exorcized",
531
+ "exorcises": "exorcizes",
532
+ "exorcising": "exorcizing",
533
+ "extemporisation": "extemporization",
534
+ "extemporise": "extemporize",
535
+ "extemporised": "extemporized",
536
+ "extemporises": "extemporizes",
537
+ "extemporising": "extemporizing",
538
+ "externalisation": "externalization",
539
+ "externalisations": "externalizations",
540
+ "externalise": "externalize",
541
+ "externalised": "externalized",
542
+ "externalises": "externalizes",
543
+ "externalising": "externalizing",
544
+ "factorise": "factorize",
545
+ "factorised": "factorized",
546
+ "factorises": "factorizes",
547
+ "factorising": "factorizing",
548
+ "faecal": "fecal",
549
+ "faeces": "feces",
550
+ "familiarisation": "familiarization",
551
+ "familiarise": "familiarize",
552
+ "familiarised": "familiarized",
553
+ "familiarises": "familiarizes",
554
+ "familiarising": "familiarizing",
555
+ "fantasise": "fantasize",
556
+ "fantasised": "fantasized",
557
+ "fantasises": "fantasizes",
558
+ "fantasising": "fantasizing",
559
+ "favour": "favor",
560
+ "favourable": "favorable",
561
+ "favourably": "favorably",
562
+ "favoured": "favored",
563
+ "favouring": "favoring",
564
+ "favourite": "favorite",
565
+ "favourites": "favorites",
566
+ "favouritism": "favoritism",
567
+ "favours": "favors",
568
+ "feminise": "feminize",
569
+ "feminised": "feminized",
570
+ "feminises": "feminizes",
571
+ "feminising": "feminizing",
572
+ "fertilisation": "fertilization",
573
+ "fertilise": "fertilize",
574
+ "fertilised": "fertilized",
575
+ "fertiliser": "fertilizer",
576
+ "fertilisers": "fertilizers",
577
+ "fertilises": "fertilizes",
578
+ "fertilising": "fertilizing",
579
+ "fervour": "fervor",
580
+ "fibre": "fiber",
581
+ "fibreglass": "fiberglass",
582
+ "fibres": "fibers",
583
+ "fictionalisation": "fictionalization",
584
+ "fictionalisations": "fictionalizations",
585
+ "fictionalise": "fictionalize",
586
+ "fictionalised": "fictionalized",
587
+ "fictionalises": "fictionalizes",
588
+ "fictionalising": "fictionalizing",
589
+ "fillet": "filet",
590
+ "filleted": "fileted",
591
+ "filleting": "fileting",
592
+ "fillets": "filets",
593
+ "finalisation": "finalization",
594
+ "finalise": "finalize",
595
+ "finalised": "finalized",
596
+ "finalises": "finalizes",
597
+ "finalising": "finalizing",
598
+ "flautist": "flutist",
599
+ "flautists": "flutists",
600
+ "flavour": "flavor",
601
+ "flavoured": "flavored",
602
+ "flavouring": "flavoring",
603
+ "flavourings": "flavorings",
604
+ "flavourless": "flavorless",
605
+ "flavours": "flavors",
606
+ "flavoursome": "flavorsome",
607
+ "flyer / flier": "flier / flyer",
608
+ "foetal": "fetal",
609
+ "foetid": "fetid",
610
+ "foetus": "fetus",
611
+ "foetuses": "fetuses",
612
+ "formalisation": "formalization",
613
+ "formalise": "formalize",
614
+ "formalised": "formalized",
615
+ "formalises": "formalizes",
616
+ "formalising": "formalizing",
617
+ "fossilisation": "fossilization",
618
+ "fossilise": "fossilize",
619
+ "fossilised": "fossilized",
620
+ "fossilises": "fossilizes",
621
+ "fossilising": "fossilizing",
622
+ "fraternisation": "fraternization",
623
+ "fraternise": "fraternize",
624
+ "fraternised": "fraternized",
625
+ "fraternises": "fraternizes",
626
+ "fraternising": "fraternizing",
627
+ "fulfil": "fulfill",
628
+ "fulfilment": "fulfillment",
629
+ "fulfils": "fulfills",
630
+ "funnelled": "funneled",
631
+ "funnelling": "funneling",
632
+ "gage": "gauge",
633
+ "gaged": "gauged",
634
+ "gages": "gauges",
635
+ "gaging": "gauging",
636
+ "galvanise": "galvanize",
637
+ "galvanised": "galvanized",
638
+ "galvanises": "galvanizes",
639
+ "galvanising": "galvanizing",
640
+ "gambolled": "gamboled",
641
+ "gambolling": "gamboling",
642
+ "gaol": "jail",
643
+ "gaolbird": "jailbird",
644
+ "gaolbirds": "jailbirds",
645
+ "gaolbreak": "jailbreak",
646
+ "gaolbreaks": "jailbreaks",
647
+ "gaoled": "jailed",
648
+ "gaoler": "jailer",
649
+ "gaolers": "jailers",
650
+ "gaoling": "jailing",
651
+ "gaols": "jails",
652
+ "gasses": "gases",
653
+ "generalisation": "generalization",
654
+ "generalisations": "generalizations",
655
+ "generalise": "generalize",
656
+ "generalised": "generalized",
657
+ "generalises": "generalizes",
658
+ "generalising": "generalizing",
659
+ "ghettoise": "ghettoize",
660
+ "ghettoised": "ghettoized",
661
+ "ghettoises": "ghettoizes",
662
+ "ghettoising": "ghettoizing",
663
+ "gipsies": "gypsies",
664
+ "glamor": "glamour",
665
+ "glamorise": "glamorize",
666
+ "glamorised": "glamorized",
667
+ "glamorises": "glamorizes",
668
+ "glamorising": "glamorizing",
669
+ "globalisation": "globalization",
670
+ "globalise": "globalize",
671
+ "globalised": "globalized",
672
+ "globalises": "globalizes",
673
+ "globalising": "globalizing",
674
+ "glueing": "gluing",
675
+ "goitre": "goiter",
676
+ "goitres": "goiters",
677
+ "gonorrhoea": "gonorrhea",
678
+ "gramme": "gram",
679
+ "grammes": "grams",
680
+ "gravelled": "graveled",
681
+ "grey": "gray",
682
+ "greyed": "grayed",
683
+ "greying": "graying",
684
+ "greyish": "grayish",
685
+ "greyness": "grayness",
686
+ "greys": "grays",
687
+ "grovelled": "groveled",
688
+ "grovelling": "groveling",
689
+ "groyne": "groin",
690
+ "groynes": "groins",
691
+ "gruelling": "grueling",
692
+ "gruellingly": "gruelingly",
693
+ "gryphon": "griffin",
694
+ "gryphons": "griffins",
695
+ "gynaecological": "gynecological",
696
+ "gynaecologist": "gynecologist",
697
+ "gynaecologists": "gynecologists",
698
+ "gynaecology": "gynecology",
699
+ "haematological": "hematological",
700
+ "haematologist": "hematologist",
701
+ "haematologists": "hematologists",
702
+ "haematology": "hematology",
703
+ "haemoglobin": "hemoglobin",
704
+ "haemophilia": "hemophilia",
705
+ "haemophiliac": "hemophiliac",
706
+ "haemophiliacs": "hemophiliacs",
707
+ "haemorrhage": "hemorrhage",
708
+ "haemorrhaged": "hemorrhaged",
709
+ "haemorrhages": "hemorrhages",
710
+ "haemorrhaging": "hemorrhaging",
711
+ "haemorrhoids": "hemorrhoids",
712
+ "harbour": "harbor",
713
+ "harboured": "harbored",
714
+ "harbouring": "harboring",
715
+ "harbours": "harbors",
716
+ "harmonisation": "harmonization",
717
+ "harmonise": "harmonize",
718
+ "harmonised": "harmonized",
719
+ "harmonises": "harmonizes",
720
+ "harmonising": "harmonizing",
721
+ "homoeopath": "homeopath",
722
+ "homoeopathic": "homeopathic",
723
+ "homoeopaths": "homeopaths",
724
+ "homoeopathy": "homeopathy",
725
+ "homogenise": "homogenize",
726
+ "homogenised": "homogenized",
727
+ "homogenises": "homogenizes",
728
+ "homogenising": "homogenizing",
729
+ "honour": "honor",
730
+ "honourable": "honorable",
731
+ "honourably": "honorably",
732
+ "honoured": "honored",
733
+ "honouring": "honoring",
734
+ "honours": "honors",
735
+ "hospitalisation": "hospitalization",
736
+ "hospitalise": "hospitalize",
737
+ "hospitalised": "hospitalized",
738
+ "hospitalises": "hospitalizes",
739
+ "hospitalising": "hospitalizing",
740
+ "humanise": "humanize",
741
+ "humanised": "humanized",
742
+ "humanises": "humanizes",
743
+ "humanising": "humanizing",
744
+ "humour": "humor",
745
+ "humoured": "humored",
746
+ "humouring": "humoring",
747
+ "humourless": "humorless",
748
+ "humours": "humors",
749
+ "hybridise": "hybridize",
750
+ "hybridised": "hybridized",
751
+ "hybridises": "hybridizes",
752
+ "hybridising": "hybridizing",
753
+ "hypnotise": "hypnotize",
754
+ "hypnotised": "hypnotized",
755
+ "hypnotises": "hypnotizes",
756
+ "hypnotising": "hypnotizing",
757
+ "hypothesise": "hypothesize",
758
+ "hypothesised": "hypothesized",
759
+ "hypothesises": "hypothesizes",
760
+ "hypothesising": "hypothesizing",
761
+ "idealisation": "idealization",
762
+ "idealise": "idealize",
763
+ "idealised": "idealized",
764
+ "idealises": "idealizes",
765
+ "idealising": "idealizing",
766
+ "idolise": "idolize",
767
+ "idolised": "idolized",
768
+ "idolises": "idolizes",
769
+ "idolising": "idolizing",
770
+ "immobilisation": "immobilization",
771
+ "immobilise": "immobilize",
772
+ "immobilised": "immobilized",
773
+ "immobiliser": "immobilizer",
774
+ "immobilisers": "immobilizers",
775
+ "immobilises": "immobilizes",
776
+ "immobilising": "immobilizing",
777
+ "immortalise": "immortalize",
778
+ "immortalised": "immortalized",
779
+ "immortalises": "immortalizes",
780
+ "immortalising": "immortalizing",
781
+ "immunisation": "immunization",
782
+ "immunise": "immunize",
783
+ "immunised": "immunized",
784
+ "immunises": "immunizes",
785
+ "immunising": "immunizing",
786
+ "impanelled": "impaneled",
787
+ "impanelling": "impaneling",
788
+ "imperilled": "imperiled",
789
+ "imperilling": "imperiling",
790
+ "individualise": "individualize",
791
+ "individualised": "individualized",
792
+ "individualises": "individualizes",
793
+ "individualising": "individualizing",
794
+ "industrialise": "industrialize",
795
+ "industrialised": "industrialized",
796
+ "industrialises": "industrializes",
797
+ "industrialising": "industrializing",
798
+ "inflexion": "inflection",
799
+ "inflexions": "inflections",
800
+ "initialise": "initialize",
801
+ "initialised": "initialized",
802
+ "initialises": "initializes",
803
+ "initialising": "initializing",
804
+ "initialled": "initialed",
805
+ "initialling": "initialing",
806
+ "instal": "install",
807
+ "instalment": "installment",
808
+ "instalments": "installments",
809
+ "instals": "installs",
810
+ "instil": "instill",
811
+ "instils": "instills",
812
+ "institutionalisation": "institutionalization",
813
+ "institutionalise": "institutionalize",
814
+ "institutionalised": "institutionalized",
815
+ "institutionalises": "institutionalizes",
816
+ "institutionalising": "institutionalizing",
817
+ "intellectualise": "intellectualize",
818
+ "intellectualised": "intellectualized",
819
+ "intellectualises": "intellectualizes",
820
+ "intellectualising": "intellectualizing",
821
+ "internalisation": "internalization",
822
+ "internalise": "internalize",
823
+ "internalised": "internalized",
824
+ "internalises": "internalizes",
825
+ "internalising": "internalizing",
826
+ "internationalisation": "internationalization",
827
+ "internationalise": "internationalize",
828
+ "internationalised": "internationalized",
829
+ "internationalises": "internationalizes",
830
+ "internationalising": "internationalizing",
831
+ "ionisation": "ionization",
832
+ "ionise": "ionize",
833
+ "ionised": "ionized",
834
+ "ioniser": "ionizer",
835
+ "ionisers": "ionizers",
836
+ "ionises": "ionizes",
837
+ "ionising": "ionizing",
838
+ "italicise": "italicize",
839
+ "italicised": "italicized",
840
+ "italicises": "italicizes",
841
+ "italicising": "italicizing",
842
+ "itemise": "itemize",
843
+ "itemised": "itemized",
844
+ "itemises": "itemizes",
845
+ "itemising": "itemizing",
846
+ "jeopardise": "jeopardize",
847
+ "jeopardised": "jeopardized",
848
+ "jeopardises": "jeopardizes",
849
+ "jeopardising": "jeopardizing",
850
+ "jewelled": "jeweled",
851
+ "jeweller": "jeweler",
852
+ "jewellers": "jewelers",
853
+ "jewellery": "jewelry",
854
+ "judgement": "judgment",
855
+ "kilogramme": "kilogram",
856
+ "kilogrammes": "kilograms",
857
+ "kilometre": "kilometer",
858
+ "kilometres": "kilometers",
859
+ "labelled": "labeled",
860
+ "labelling": "labeling",
861
+ "labour": "labor",
862
+ "laboured": "labored",
863
+ "labourer": "laborer",
864
+ "labourers": "laborers",
865
+ "labouring": "laboring",
866
+ "labours": "labors",
867
+ "lacklustre": "lackluster",
868
+ "legalisation": "legalization",
869
+ "legalise": "legalize",
870
+ "legalised": "legalized",
871
+ "legalises": "legalizes",
872
+ "legalising": "legalizing",
873
+ "legitimise": "legitimize",
874
+ "legitimised": "legitimized",
875
+ "legitimises": "legitimizes",
876
+ "legitimising": "legitimizing",
877
+ "leukaemia": "leukemia",
878
+ "levelled": "leveled",
879
+ "leveller": "leveler",
880
+ "levellers": "levelers",
881
+ "levelling": "leveling",
882
+ "libelled": "libeled",
883
+ "libelling": "libeling",
884
+ "libellous": "libelous",
885
+ "liberalisation": "liberalization",
886
+ "liberalise": "liberalize",
887
+ "liberalised": "liberalized",
888
+ "liberalises": "liberalizes",
889
+ "liberalising": "liberalizing",
890
+ "licence": "license",
891
+ "licenced": "licensed",
892
+ "licences": "licenses",
893
+ "licencing": "licensing",
894
+ "likeable": "likable",
895
+ "lionisation": "lionization",
896
+ "lionise": "lionize",
897
+ "lionised": "lionized",
898
+ "lionises": "lionizes",
899
+ "lionising": "lionizing",
900
+ "liquidise": "liquidize",
901
+ "liquidised": "liquidized",
902
+ "liquidiser": "liquidizer",
903
+ "liquidisers": "liquidizers",
904
+ "liquidises": "liquidizes",
905
+ "liquidising": "liquidizing",
906
+ "litre": "liter",
907
+ "litres": "liters",
908
+ "localise": "localize",
909
+ "localised": "localized",
910
+ "localises": "localizes",
911
+ "localising": "localizing",
912
+ "louvre": "louver",
913
+ "louvred": "louvered",
914
+ "louvres": "louvers",
915
+ "lustre": "luster",
916
+ "magnetise": "magnetize",
917
+ "magnetised": "magnetized",
918
+ "magnetises": "magnetizes",
919
+ "magnetising": "magnetizing",
920
+ "manoeuvrability": "maneuverability",
921
+ "manoeuvrable": "maneuverable",
922
+ "manoeuvre": "maneuver",
923
+ "manoeuvred": "maneuvered",
924
+ "manoeuvres": "maneuvers",
925
+ "manoeuvring": "maneuvering",
926
+ "manoeuvrings": "maneuverings",
927
+ "marginalisation": "marginalization",
928
+ "marginalise": "marginalize",
929
+ "marginalised": "marginalized",
930
+ "marginalises": "marginalizes",
931
+ "marginalising": "marginalizing",
932
+ "marshalled": "marshaled",
933
+ "marshalling": "marshaling",
934
+ "marvelled": "marveled",
935
+ "marvelling": "marveling",
936
+ "marvellous": "marvelous",
937
+ "marvellously": "marvelously",
938
+ "materialisation": "materialization",
939
+ "materialise": "materialize",
940
+ "materialised": "materialized",
941
+ "materialises": "materializes",
942
+ "materialising": "materializing",
943
+ "maximisation": "maximization",
944
+ "maximise": "maximize",
945
+ "maximised": "maximized",
946
+ "maximises": "maximizes",
947
+ "maximising": "maximizing",
948
+ "meagre": "meager",
949
+ "mechanisation": "mechanization",
950
+ "mechanise": "mechanize",
951
+ "mechanised": "mechanized",
952
+ "mechanises": "mechanizes",
953
+ "mechanising": "mechanizing",
954
+ "mediaeval": "medieval",
955
+ "memorialise": "memorialize",
956
+ "memorialised": "memorialized",
957
+ "memorialises": "memorializes",
958
+ "memorialising": "memorializing",
959
+ "memorise": "memorize",
960
+ "memorised": "memorized",
961
+ "memorises": "memorizes",
962
+ "memorising": "memorizing",
963
+ "mesmerise": "mesmerize",
964
+ "mesmerised": "mesmerized",
965
+ "mesmerises": "mesmerizes",
966
+ "mesmerising": "mesmerizing",
967
+ "metabolise": "metabolize",
968
+ "metabolised": "metabolized",
969
+ "metabolises": "metabolizes",
970
+ "metabolising": "metabolizing",
971
+ "metre": "meter",
972
+ "metres": "meters",
973
+ "mhm": "hmm",
974
+ "micrometre": "micrometer",
975
+ "micrometres": "micrometers",
976
+ "militarise": "militarize",
977
+ "militarised": "militarized",
978
+ "militarises": "militarizes",
979
+ "militarising": "militarizing",
980
+ "milligramme": "milligram",
981
+ "milligrammes": "milligrams",
982
+ "millilitre": "milliliter",
983
+ "millilitres": "milliliters",
984
+ "millimetre": "millimeter",
985
+ "millimetres": "millimeters",
986
+ "miniaturisation": "miniaturization",
987
+ "miniaturise": "miniaturize",
988
+ "miniaturised": "miniaturized",
989
+ "miniaturises": "miniaturizes",
990
+ "miniaturising": "miniaturizing",
991
+ "minibusses": "minibuses",
992
+ "minimise": "minimize",
993
+ "minimised": "minimized",
994
+ "minimises": "minimizes",
995
+ "minimising": "minimizing",
996
+ "misbehaviour": "misbehavior",
997
+ "misdemeanour": "misdemeanor",
998
+ "misdemeanours": "misdemeanors",
999
+ "misspelt": "misspelled",
1000
+ "mitre": "miter",
1001
+ "mitres": "miters",
1002
+ "mm": "hmm",
1003
+ "mmm": "hmm",
1004
+ "mobilisation": "mobilization",
1005
+ "mobilise": "mobilize",
1006
+ "mobilised": "mobilized",
1007
+ "mobilises": "mobilizes",
1008
+ "mobilising": "mobilizing",
1009
+ "modelled": "modeled",
1010
+ "modeller": "modeler",
1011
+ "modellers": "modelers",
1012
+ "modelling": "modeling",
1013
+ "modernise": "modernize",
1014
+ "modernised": "modernized",
1015
+ "modernises": "modernizes",
1016
+ "modernising": "modernizing",
1017
+ "moisturise": "moisturize",
1018
+ "moisturised": "moisturized",
1019
+ "moisturiser": "moisturizer",
1020
+ "moisturisers": "moisturizers",
1021
+ "moisturises": "moisturizes",
1022
+ "moisturising": "moisturizing",
1023
+ "monologue": "monolog",
1024
+ "monologues": "monologs",
1025
+ "monopolisation": "monopolization",
1026
+ "monopolise": "monopolize",
1027
+ "monopolised": "monopolized",
1028
+ "monopolises": "monopolizes",
1029
+ "monopolising": "monopolizing",
1030
+ "moralise": "moralize",
1031
+ "moralised": "moralized",
1032
+ "moralises": "moralizes",
1033
+ "moralising": "moralizing",
1034
+ "motorised": "motorized",
1035
+ "mould": "mold",
1036
+ "moulded": "molded",
1037
+ "moulder": "molder",
1038
+ "mouldered": "moldered",
1039
+ "mouldering": "moldering",
1040
+ "moulders": "molders",
1041
+ "mouldier": "moldier",
1042
+ "mouldiest": "moldiest",
1043
+ "moulding": "molding",
1044
+ "mouldings": "moldings",
1045
+ "moulds": "molds",
1046
+ "mouldy": "moldy",
1047
+ "moult": "molt",
1048
+ "moulted": "molted",
1049
+ "moulting": "molting",
1050
+ "moults": "molts",
1051
+ "moustache": "mustache",
1052
+ "moustached": "mustached",
1053
+ "moustaches": "mustaches",
1054
+ "moustachioed": "mustachioed",
1055
+ "multicoloured": "multicolored",
1056
+ "nationalisation": "nationalization",
1057
+ "nationalisations": "nationalizations",
1058
+ "nationalise": "nationalize",
1059
+ "nationalised": "nationalized",
1060
+ "nationalises": "nationalizes",
1061
+ "nationalising": "nationalizing",
1062
+ "naturalisation": "naturalization",
1063
+ "naturalise": "naturalize",
1064
+ "naturalised": "naturalized",
1065
+ "naturalises": "naturalizes",
1066
+ "naturalising": "naturalizing",
1067
+ "neighbour": "neighbor",
1068
+ "neighbourhood": "neighborhood",
1069
+ "neighbourhoods": "neighborhoods",
1070
+ "neighbouring": "neighboring",
1071
+ "neighbourliness": "neighborliness",
1072
+ "neighbourly": "neighborly",
1073
+ "neighbours": "neighbors",
1074
+ "neutralisation": "neutralization",
1075
+ "neutralise": "neutralize",
1076
+ "neutralised": "neutralized",
1077
+ "neutralises": "neutralizes",
1078
+ "neutralising": "neutralizing",
1079
+ "normalisation": "normalization",
1080
+ "normalise": "normalize",
1081
+ "normalised": "normalized",
1082
+ "normalises": "normalizes",
1083
+ "normalising": "normalizing",
1084
+ "odour": "odor",
1085
+ "odourless": "odorless",
1086
+ "odours": "odors",
1087
+ "oesophagus": "esophagus",
1088
+ "oesophaguses": "esophaguses",
1089
+ "oestrogen": "estrogen",
1090
+ "offence": "offense",
1091
+ "offences": "offenses",
1092
+ "omelette": "omelet",
1093
+ "omelettes": "omelets",
1094
+ "optimise": "optimize",
1095
+ "optimised": "optimized",
1096
+ "optimises": "optimizes",
1097
+ "optimising": "optimizing",
1098
+ "organisation": "organization",
1099
+ "organisational": "organizational",
1100
+ "organisations": "organizations",
1101
+ "organise": "organize",
1102
+ "organised": "organized",
1103
+ "organiser": "organizer",
1104
+ "organisers": "organizers",
1105
+ "organises": "organizes",
1106
+ "organising": "organizing",
1107
+ "orthopaedic": "orthopedic",
1108
+ "orthopaedics": "orthopedics",
1109
+ "ostracise": "ostracize",
1110
+ "ostracised": "ostracized",
1111
+ "ostracises": "ostracizes",
1112
+ "ostracising": "ostracizing",
1113
+ "outmanoeuvre": "outmaneuver",
1114
+ "outmanoeuvred": "outmaneuvered",
1115
+ "outmanoeuvres": "outmaneuvers",
1116
+ "outmanoeuvring": "outmaneuvering",
1117
+ "overemphasise": "overemphasize",
1118
+ "overemphasised": "overemphasized",
1119
+ "overemphasises": "overemphasizes",
1120
+ "overemphasising": "overemphasizing",
1121
+ "oxidisation": "oxidization",
1122
+ "oxidise": "oxidize",
1123
+ "oxidised": "oxidized",
1124
+ "oxidises": "oxidizes",
1125
+ "oxidising": "oxidizing",
1126
+ "paederast": "pederast",
1127
+ "paederasts": "pederasts",
1128
+ "paediatric": "pediatric",
1129
+ "paediatrician": "pediatrician",
1130
+ "paediatricians": "pediatricians",
1131
+ "paediatrics": "pediatrics",
1132
+ "paedophile": "pedophile",
1133
+ "paedophiles": "pedophiles",
1134
+ "paedophilia": "pedophilia",
1135
+ "palaeolithic": "paleolithic",
1136
+ "palaeontologist": "paleontologist",
1137
+ "palaeontologists": "paleontologists",
1138
+ "palaeontology": "paleontology",
1139
+ "panelled": "paneled",
1140
+ "panelling": "paneling",
1141
+ "panellist": "panelist",
1142
+ "panellists": "panelists",
1143
+ "paralyse": "paralyze",
1144
+ "paralysed": "paralyzed",
1145
+ "paralyses": "paralyzes",
1146
+ "paralysing": "paralyzing",
1147
+ "parcelled": "parceled",
1148
+ "parcelling": "parceling",
1149
+ "parlour": "parlor",
1150
+ "parlours": "parlors",
1151
+ "particularise": "particularize",
1152
+ "particularised": "particularized",
1153
+ "particularises": "particularizes",
1154
+ "particularising": "particularizing",
1155
+ "passivisation": "passivization",
1156
+ "passivise": "passivize",
1157
+ "passivised": "passivized",
1158
+ "passivises": "passivizes",
1159
+ "passivising": "passivizing",
1160
+ "pasteurisation": "pasteurization",
1161
+ "pasteurise": "pasteurize",
1162
+ "pasteurised": "pasteurized",
1163
+ "pasteurises": "pasteurizes",
1164
+ "pasteurising": "pasteurizing",
1165
+ "patronise": "patronize",
1166
+ "patronised": "patronized",
1167
+ "patronises": "patronizes",
1168
+ "patronising": "patronizing",
1169
+ "patronisingly": "patronizingly",
1170
+ "pedalled": "pedaled",
1171
+ "pedalling": "pedaling",
1172
+ "pedestrianisation": "pedestrianization",
1173
+ "pedestrianise": "pedestrianize",
1174
+ "pedestrianised": "pedestrianized",
1175
+ "pedestrianises": "pedestrianizes",
1176
+ "pedestrianising": "pedestrianizing",
1177
+ "penalise": "penalize",
1178
+ "penalised": "penalized",
1179
+ "penalises": "penalizes",
1180
+ "penalising": "penalizing",
1181
+ "pencilled": "penciled",
1182
+ "pencilling": "penciling",
1183
+ "personalise": "personalize",
1184
+ "personalised": "personalized",
1185
+ "personalises": "personalizes",
1186
+ "personalising": "personalizing",
1187
+ "pharmacopoeia": "pharmacopeia",
1188
+ "pharmacopoeias": "pharmacopeias",
1189
+ "philosophise": "philosophize",
1190
+ "philosophised": "philosophized",
1191
+ "philosophises": "philosophizes",
1192
+ "philosophising": "philosophizing",
1193
+ "philtre": "filter",
1194
+ "philtres": "filters",
1195
+ "phoney": "phony",
1196
+ "plagiarise": "plagiarize",
1197
+ "plagiarised": "plagiarized",
1198
+ "plagiarises": "plagiarizes",
1199
+ "plagiarising": "plagiarizing",
1200
+ "plough": "plow",
1201
+ "ploughed": "plowed",
1202
+ "ploughing": "plowing",
1203
+ "ploughman": "plowman",
1204
+ "ploughmen": "plowmen",
1205
+ "ploughs": "plows",
1206
+ "ploughshare": "plowshare",
1207
+ "ploughshares": "plowshares",
1208
+ "polarisation": "polarization",
1209
+ "polarise": "polarize",
1210
+ "polarised": "polarized",
1211
+ "polarises": "polarizes",
1212
+ "polarising": "polarizing",
1213
+ "politicisation": "politicization",
1214
+ "politicise": "politicize",
1215
+ "politicised": "politicized",
1216
+ "politicises": "politicizes",
1217
+ "politicising": "politicizing",
1218
+ "popularisation": "popularization",
1219
+ "popularise": "popularize",
1220
+ "popularised": "popularized",
1221
+ "popularises": "popularizes",
1222
+ "popularising": "popularizing",
1223
+ "pouffe": "pouf",
1224
+ "pouffes": "poufs",
1225
+ "practise": "practice",
1226
+ "practised": "practiced",
1227
+ "practises": "practices",
1228
+ "practising": "practicing",
1229
+ "praesidium": "presidium",
1230
+ "praesidiums": "presidiums",
1231
+ "pressurisation": "pressurization",
1232
+ "pressurise": "pressurize",
1233
+ "pressurised": "pressurized",
1234
+ "pressurises": "pressurizes",
1235
+ "pressurising": "pressurizing",
1236
+ "pretence": "pretense",
1237
+ "pretences": "pretenses",
1238
+ "primaeval": "primeval",
1239
+ "prioritisation": "prioritization",
1240
+ "prioritise": "prioritize",
1241
+ "prioritised": "prioritized",
1242
+ "prioritises": "prioritizes",
1243
+ "prioritising": "prioritizing",
1244
+ "privatisation": "privatization",
1245
+ "privatisations": "privatizations",
1246
+ "privatise": "privatize",
1247
+ "privatised": "privatized",
1248
+ "privatises": "privatizes",
1249
+ "privatising": "privatizing",
1250
+ "professionalisation": "professionalization",
1251
+ "professionalise": "professionalize",
1252
+ "professionalised": "professionalized",
1253
+ "professionalises": "professionalizes",
1254
+ "professionalising": "professionalizing",
1255
+ "programme": "program",
1256
+ "programmes": "programs",
1257
+ "prologue": "prolog",
1258
+ "prologues": "prologs",
1259
+ "propagandise": "propagandize",
1260
+ "propagandised": "propagandized",
1261
+ "propagandises": "propagandizes",
1262
+ "propagandising": "propagandizing",
1263
+ "proselytise": "proselytize",
1264
+ "proselytised": "proselytized",
1265
+ "proselytiser": "proselytizer",
1266
+ "proselytisers": "proselytizers",
1267
+ "proselytises": "proselytizes",
1268
+ "proselytising": "proselytizing",
1269
+ "psychoanalyse": "psychoanalyze",
1270
+ "psychoanalysed": "psychoanalyzed",
1271
+ "psychoanalyses": "psychoanalyzes",
1272
+ "psychoanalysing": "psychoanalyzing",
1273
+ "publicise": "publicize",
1274
+ "publicised": "publicized",
1275
+ "publicises": "publicizes",
1276
+ "publicising": "publicizing",
1277
+ "pulverisation": "pulverization",
1278
+ "pulverise": "pulverize",
1279
+ "pulverised": "pulverized",
1280
+ "pulverises": "pulverizes",
1281
+ "pulverising": "pulverizing",
1282
+ "pummelled": "pummel",
1283
+ "pummelling": "pummeled",
1284
+ "pyjama": "pajama",
1285
+ "pyjamas": "pajamas",
1286
+ "pzazz": "pizzazz",
1287
+ "quarrelled": "quarreled",
1288
+ "quarrelling": "quarreling",
1289
+ "radicalise": "radicalize",
1290
+ "radicalised": "radicalized",
1291
+ "radicalises": "radicalizes",
1292
+ "radicalising": "radicalizing",
1293
+ "rancour": "rancor",
1294
+ "randomise": "randomize",
1295
+ "randomised": "randomized",
1296
+ "randomises": "randomizes",
1297
+ "randomising": "randomizing",
1298
+ "rationalisation": "rationalization",
1299
+ "rationalisations": "rationalizations",
1300
+ "rationalise": "rationalize",
1301
+ "rationalised": "rationalized",
1302
+ "rationalises": "rationalizes",
1303
+ "rationalising": "rationalizing",
1304
+ "ravelled": "raveled",
1305
+ "ravelling": "raveling",
1306
+ "realisable": "realizable",
1307
+ "realisation": "realization",
1308
+ "realisations": "realizations",
1309
+ "realise": "realize",
1310
+ "realised": "realized",
1311
+ "realises": "realizes",
1312
+ "realising": "realizing",
1313
+ "recognisable": "recognizable",
1314
+ "recognisably": "recognizably",
1315
+ "recognisance": "recognizance",
1316
+ "recognise": "recognize",
1317
+ "recognised": "recognized",
1318
+ "recognises": "recognizes",
1319
+ "recognising": "recognizing",
1320
+ "reconnoitre": "reconnoiter",
1321
+ "reconnoitred": "reconnoitered",
1322
+ "reconnoitres": "reconnoiters",
1323
+ "reconnoitring": "reconnoitering",
1324
+ "refuelled": "refueled",
1325
+ "refuelling": "refueling",
1326
+ "regularisation": "regularization",
1327
+ "regularise": "regularize",
1328
+ "regularised": "regularized",
1329
+ "regularises": "regularizes",
1330
+ "regularising": "regularizing",
1331
+ "remodelled": "remodeled",
1332
+ "remodelling": "remodeling",
1333
+ "remould": "remold",
1334
+ "remoulded": "remolded",
1335
+ "remoulding": "remolding",
1336
+ "remoulds": "remolds",
1337
+ "reorganisation": "reorganization",
1338
+ "reorganisations": "reorganizations",
1339
+ "reorganise": "reorganize",
1340
+ "reorganised": "reorganized",
1341
+ "reorganises": "reorganizes",
1342
+ "reorganising": "reorganizing",
1343
+ "revelled": "reveled",
1344
+ "reveller": "reveler",
1345
+ "revellers": "revelers",
1346
+ "revelling": "reveling",
1347
+ "revitalise": "revitalize",
1348
+ "revitalised": "revitalized",
1349
+ "revitalises": "revitalizes",
1350
+ "revitalising": "revitalizing",
1351
+ "revolutionise": "revolutionize",
1352
+ "revolutionised": "revolutionized",
1353
+ "revolutionises": "revolutionizes",
1354
+ "revolutionising": "revolutionizing",
1355
+ "rhapsodise": "rhapsodize",
1356
+ "rhapsodised": "rhapsodized",
1357
+ "rhapsodises": "rhapsodizes",
1358
+ "rhapsodising": "rhapsodizing",
1359
+ "rigour": "rigor",
1360
+ "rigours": "rigors",
1361
+ "ritualised": "ritualized",
1362
+ "rivalled": "rivaled",
1363
+ "rivalling": "rivaling",
1364
+ "romanticise": "romanticize",
1365
+ "romanticised": "romanticized",
1366
+ "romanticises": "romanticizes",
1367
+ "romanticising": "romanticizing",
1368
+ "rumour": "rumor",
1369
+ "rumoured": "rumored",
1370
+ "rumours": "rumors",
1371
+ "sabre": "saber",
1372
+ "sabres": "sabers",
1373
+ "saltpetre": "saltpeter",
1374
+ "sanitise": "sanitize",
1375
+ "sanitised": "sanitized",
1376
+ "sanitises": "sanitizes",
1377
+ "sanitising": "sanitizing",
1378
+ "satirise": "satirize",
1379
+ "satirised": "satirized",
1380
+ "satirises": "satirizes",
1381
+ "satirising": "satirizing",
1382
+ "saviour": "savior",
1383
+ "saviours": "saviors",
1384
+ "savour": "savor",
1385
+ "savoured": "savored",
1386
+ "savouries": "savories",
1387
+ "savouring": "savoring",
1388
+ "savours": "savors",
1389
+ "savoury": "savory",
1390
+ "scandalise": "scandalize",
1391
+ "scandalised": "scandalized",
1392
+ "scandalises": "scandalizes",
1393
+ "scandalising": "scandalizing",
1394
+ "sceptic": "skeptic",
1395
+ "sceptical": "skeptical",
1396
+ "sceptically": "skeptically",
1397
+ "scepticism": "skepticism",
1398
+ "sceptics": "skeptics",
1399
+ "sceptre": "scepter",
1400
+ "sceptres": "scepters",
1401
+ "scrutinise": "scrutinize",
1402
+ "scrutinised": "scrutinized",
1403
+ "scrutinises": "scrutinizes",
1404
+ "scrutinising": "scrutinizing",
1405
+ "secularisation": "secularization",
1406
+ "secularise": "secularize",
1407
+ "secularised": "secularized",
1408
+ "secularises": "secularizes",
1409
+ "secularising": "secularizing",
1410
+ "sensationalise": "sensationalize",
1411
+ "sensationalised": "sensationalized",
1412
+ "sensationalises": "sensationalizes",
1413
+ "sensationalising": "sensationalizing",
1414
+ "sensitise": "sensitize",
1415
+ "sensitised": "sensitized",
1416
+ "sensitises": "sensitizes",
1417
+ "sensitising": "sensitizing",
1418
+ "sentimentalise": "sentimentalize",
1419
+ "sentimentalised": "sentimentalized",
1420
+ "sentimentalises": "sentimentalizes",
1421
+ "sentimentalising": "sentimentalizing",
1422
+ "sepulchre": "sepulcher",
1423
+ "sepulchres": "sepulchers",
1424
+ "serialisation": "serialization",
1425
+ "serialisations": "serializations",
1426
+ "serialise": "serialize",
1427
+ "serialised": "serialized",
1428
+ "serialises": "serializes",
1429
+ "serialising": "serializing",
1430
+ "sermonise": "sermonize",
1431
+ "sermonised": "sermonized",
1432
+ "sermonises": "sermonizes",
1433
+ "sermonising": "sermonizing",
1434
+ "sheikh": "sheik",
1435
+ "shovelled": "shoveled",
1436
+ "shovelling": "shoveling",
1437
+ "shrivelled": "shriveled",
1438
+ "shrivelling": "shriveling",
1439
+ "signalise": "signalize",
1440
+ "signalised": "signalized",
1441
+ "signalises": "signalizes",
1442
+ "signalising": "signalizing",
1443
+ "signalled": "signaled",
1444
+ "signalling": "signaling",
1445
+ "smoulder": "smolder",
1446
+ "smouldered": "smoldered",
1447
+ "smouldering": "smoldering",
1448
+ "smoulders": "smolders",
1449
+ "snivelled": "sniveled",
1450
+ "snivelling": "sniveling",
1451
+ "snorkelled": "snorkeled",
1452
+ "snorkelling": "snorkeling",
1453
+ "snowplough": "snowplow",
1454
+ "snowploughs": "snowplow",
1455
+ "socialisation": "socialization",
1456
+ "socialise": "socialize",
1457
+ "socialised": "socialized",
1458
+ "socialises": "socializes",
1459
+ "socialising": "socializing",
1460
+ "sodomise": "sodomize",
1461
+ "sodomised": "sodomized",
1462
+ "sodomises": "sodomizes",
1463
+ "sodomising": "sodomizing",
1464
+ "solemnise": "solemnize",
1465
+ "solemnised": "solemnized",
1466
+ "solemnises": "solemnizes",
1467
+ "solemnising": "solemnizing",
1468
+ "sombre": "somber",
1469
+ "specialisation": "specialization",
1470
+ "specialisations": "specializations",
1471
+ "specialise": "specialize",
1472
+ "specialised": "specialized",
1473
+ "specialises": "specializes",
1474
+ "specialising": "specializing",
1475
+ "spectre": "specter",
1476
+ "spectres": "specters",
1477
+ "spiralled": "spiraled",
1478
+ "spiralling": "spiraling",
1479
+ "splendour": "splendor",
1480
+ "splendours": "splendors",
1481
+ "squirrelled": "squirreled",
1482
+ "squirrelling": "squirreling",
1483
+ "stabilisation": "stabilization",
1484
+ "stabilise": "stabilize",
1485
+ "stabilised": "stabilized",
1486
+ "stabiliser": "stabilizer",
1487
+ "stabilisers": "stabilizers",
1488
+ "stabilises": "stabilizes",
1489
+ "stabilising": "stabilizing",
1490
+ "standardisation": "standardization",
1491
+ "standardise": "standardize",
1492
+ "standardised": "standardized",
1493
+ "standardises": "standardizes",
1494
+ "standardising": "standardizing",
1495
+ "stencilled": "stenciled",
1496
+ "stencilling": "stenciling",
1497
+ "sterilisation": "sterilization",
1498
+ "sterilisations": "sterilizations",
1499
+ "sterilise": "sterilize",
1500
+ "sterilised": "sterilized",
1501
+ "steriliser": "sterilizer",
1502
+ "sterilisers": "sterilizers",
1503
+ "sterilises": "sterilizes",
1504
+ "sterilising": "sterilizing",
1505
+ "stigmatisation": "stigmatization",
1506
+ "stigmatise": "stigmatize",
1507
+ "stigmatised": "stigmatized",
1508
+ "stigmatises": "stigmatizes",
1509
+ "stigmatising": "stigmatizing",
1510
+ "storey": "story",
1511
+ "storeys": "stories",
1512
+ "subsidisation": "subsidization",
1513
+ "subsidise": "subsidize",
1514
+ "subsidised": "subsidized",
1515
+ "subsidiser": "subsidizer",
1516
+ "subsidisers": "subsidizers",
1517
+ "subsidises": "subsidizes",
1518
+ "subsidising": "subsidizing",
1519
+ "succour": "succor",
1520
+ "succoured": "succored",
1521
+ "succouring": "succoring",
1522
+ "succours": "succors",
1523
+ "sulphate": "sulfate",
1524
+ "sulphates": "sulfates",
1525
+ "sulphide": "sulfide",
1526
+ "sulphides": "sulfides",
1527
+ "sulphur": "sulfur",
1528
+ "sulphurous": "sulfurous",
1529
+ "summarise": "summarize",
1530
+ "summarised": "summarized",
1531
+ "summarises": "summarizes",
1532
+ "summarising": "summarizing",
1533
+ "swivelled": "swiveled",
1534
+ "swivelling": "swiveling",
1535
+ "symbolise": "symbolize",
1536
+ "symbolised": "symbolized",
1537
+ "symbolises": "symbolizes",
1538
+ "symbolising": "symbolizing",
1539
+ "sympathise": "sympathize",
1540
+ "sympathised": "sympathized",
1541
+ "sympathiser": "sympathizer",
1542
+ "sympathisers": "sympathizers",
1543
+ "sympathises": "sympathizes",
1544
+ "sympathising": "sympathizing",
1545
+ "synchronisation": "synchronization",
1546
+ "synchronise": "synchronize",
1547
+ "synchronised": "synchronized",
1548
+ "synchronises": "synchronizes",
1549
+ "synchronising": "synchronizing",
1550
+ "synthesise": "synthesize",
1551
+ "synthesised": "synthesized",
1552
+ "synthesiser": "synthesizer",
1553
+ "synthesisers": "synthesizers",
1554
+ "synthesises": "synthesizes",
1555
+ "synthesising": "synthesizing",
1556
+ "syphon": "siphon",
1557
+ "syphoned": "siphoned",
1558
+ "syphoning": "siphoning",
1559
+ "syphons": "siphons",
1560
+ "systematisation": "systematization",
1561
+ "systematise": "systematize",
1562
+ "systematised": "systematized",
1563
+ "systematises": "systematizes",
1564
+ "systematising": "systematizing",
1565
+ "tantalise": "tantalize",
1566
+ "tantalised": "tantalized",
1567
+ "tantalises": "tantalizes",
1568
+ "tantalising": "tantalizing",
1569
+ "tantalisingly": "tantalizingly",
1570
+ "tasselled": "tasseled",
1571
+ "technicolour": "technicolor",
1572
+ "temporise": "temporize",
1573
+ "temporised": "temporized",
1574
+ "temporises": "temporizes",
1575
+ "temporising": "temporizing",
1576
+ "tenderise": "tenderize",
1577
+ "tenderised": "tenderized",
1578
+ "tenderises": "tenderizes",
1579
+ "tenderising": "tenderizing",
1580
+ "terrorise": "terrorize",
1581
+ "terrorised": "terrorized",
1582
+ "terrorises": "terrorizes",
1583
+ "terrorising": "terrorizing",
1584
+ "theatre": "theater",
1585
+ "theatregoer": "theatergoer",
1586
+ "theatregoers": "theatergoers",
1587
+ "theatres": "theaters",
1588
+ "theorise": "theorize",
1589
+ "theorised": "theorized",
1590
+ "theorises": "theorizes",
1591
+ "theorising": "theorizing",
1592
+ "tonne": "ton",
1593
+ "tonnes": "tons",
1594
+ "towelled": "toweled",
1595
+ "towelling": "toweling",
1596
+ "toxaemia": "toxemia",
1597
+ "tranquillise": "tranquilize",
1598
+ "tranquillised": "tranquilized",
1599
+ "tranquilliser": "tranquilizer",
1600
+ "tranquillisers": "tranquilizers",
1601
+ "tranquillises": "tranquilizes",
1602
+ "tranquillising": "tranquilizing",
1603
+ "tranquillity": "tranquility",
1604
+ "tranquillize": "tranquilize",
1605
+ "tranquillized": "tranquilized",
1606
+ "tranquillizer": "tranquilizer",
1607
+ "tranquillizers": "tranquilizers",
1608
+ "tranquillizes": "tranquilizes",
1609
+ "tranquillizing": "tranquilizing",
1610
+ "tranquilly": "tranquility",
1611
+ "transistorised": "transistorized",
1612
+ "traumatise": "traumatize",
1613
+ "traumatised": "traumatized",
1614
+ "traumatises": "traumatizes",
1615
+ "traumatising": "traumatizing",
1616
+ "travelled": "traveled",
1617
+ "traveller": "traveler",
1618
+ "travellers": "travelers",
1619
+ "travelling": "traveling",
1620
+ "travelog": "travelogue",
1621
+ "travelogs": "travelogues",
1622
+ "trialled": "trialed",
1623
+ "trialling": "trialing",
1624
+ "tricolour": "tricolor",
1625
+ "tricolours": "tricolors",
1626
+ "trivialise": "trivialize",
1627
+ "trivialised": "trivialized",
1628
+ "trivialises": "trivializes",
1629
+ "trivialising": "trivializing",
1630
+ "tumour": "tumor",
1631
+ "tumours": "tumors",
1632
+ "tunnelled": "tunneled",
1633
+ "tunnelling": "tunneling",
1634
+ "tyrannise": "tyrannize",
1635
+ "tyrannised": "tyrannized",
1636
+ "tyrannises": "tyrannizes",
1637
+ "tyrannising": "tyrannizing",
1638
+ "tyre": "tire",
1639
+ "tyres": "tires",
1640
+ "unauthorised": "unauthorized",
1641
+ "uncivilised": "uncivilized",
1642
+ "underutilised": "underutilized",
1643
+ "unequalled": "unequaled",
1644
+ "unfavourable": "unfavorable",
1645
+ "unfavourably": "unfavorably",
1646
+ "unionisation": "unionization",
1647
+ "unionise": "unionize",
1648
+ "unionised": "unionized",
1649
+ "unionises": "unionizes",
1650
+ "unionising": "unionizing",
1651
+ "unorganised": "unorganized",
1652
+ "unravelled": "unraveled",
1653
+ "unravelling": "unraveling",
1654
+ "unrecognisable": "unrecognizable",
1655
+ "unrecognised": "unrecognized",
1656
+ "unrivalled": "unrivaled",
1657
+ "unsavoury": "unsavory",
1658
+ "untrammelled": "untrammeled",
1659
+ "urbanisation": "urbanization",
1660
+ "urbanise": "urbanize",
1661
+ "urbanised": "urbanized",
1662
+ "urbanises": "urbanizes",
1663
+ "urbanising": "urbanizing",
1664
+ "utilisable": "utilizable",
1665
+ "utilisation": "utilization",
1666
+ "utilise": "utilize",
1667
+ "utilised": "utilized",
1668
+ "utilises": "utilizes",
1669
+ "utilising": "utilizing",
1670
+ "valour": "valor",
1671
+ "vandalise": "vandalize",
1672
+ "vandalised": "vandalized",
1673
+ "vandalises": "vandalizes",
1674
+ "vandalising": "vandalizing",
1675
+ "vaporisation": "vaporization",
1676
+ "vaporise": "vaporize",
1677
+ "vaporised": "vaporized",
1678
+ "vaporises": "vaporizes",
1679
+ "vaporising": "vaporizing",
1680
+ "vapour": "vapor",
1681
+ "vapours": "vapors",
1682
+ "verbalise": "verbalize",
1683
+ "verbalised": "verbalized",
1684
+ "verbalises": "verbalizes",
1685
+ "verbalising": "verbalizing",
1686
+ "victimisation": "victimization",
1687
+ "victimise": "victimize",
1688
+ "victimised": "victimized",
1689
+ "victimises": "victimizes",
1690
+ "victimising": "victimizing",
1691
+ "videodisc": "videodisk",
1692
+ "videodiscs": "videodisks",
1693
+ "vigour": "vigor",
1694
+ "visualisation": "visualization",
1695
+ "visualisations": "visualizations",
1696
+ "visualise": "visualize",
1697
+ "visualised": "visualized",
1698
+ "visualises": "visualizes",
1699
+ "visualising": "visualizing",
1700
+ "vocalisation": "vocalization",
1701
+ "vocalisations": "vocalizations",
1702
+ "vocalise": "vocalize",
1703
+ "vocalised": "vocalized",
1704
+ "vocalises": "vocalizes",
1705
+ "vocalising": "vocalizing",
1706
+ "vulcanised": "vulcanized",
1707
+ "vulgarisation": "vulgarization",
1708
+ "vulgarise": "vulgarize",
1709
+ "vulgarised": "vulgarized",
1710
+ "vulgarises": "vulgarizes",
1711
+ "vulgarising": "vulgarizing",
1712
+ "waggon": "wagon",
1713
+ "waggons": "wagons",
1714
+ "watercolour": "watercolor",
1715
+ "watercolours": "watercolors",
1716
+ "weaselled": "weaseled",
1717
+ "weaselling": "weaseling",
1718
+ "westernisation": "westernization",
1719
+ "westernise": "westernize",
1720
+ "westernised": "westernized",
1721
+ "westernises": "westernizes",
1722
+ "westernising": "westernizing",
1723
+ "womanise": "womanize",
1724
+ "womanised": "womanized",
1725
+ "womaniser": "womanizer",
1726
+ "womanisers": "womanizers",
1727
+ "womanises": "womanizes",
1728
+ "womanising": "womanizing",
1729
+ "woollen": "woolen",
1730
+ "woollens": "woolens",
1731
+ "woollies": "woolies",
1732
+ "woolly": "wooly",
1733
+ "worshipped": "worshiped",
1734
+ "worshipper": "worshiper",
1735
+ "worshipping": "worshiping",
1736
+ "yodelled": "yodeled",
1737
+ "yodelling": "yodeling",
1738
+ "yoghourt": "yogurt",
1739
+ "yoghourts": "yogurts",
1740
+ "yoghurt": "yogurt",
1741
+ "yoghurts": "yogurts"
1742
+ }
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distil-large-v3-init/tokenizer_config.json ADDED
The diff for this file is too large to render. See raw diff
 
distil-large-v3-init/vocab.json ADDED
The diff for this file is too large to render. See raw diff
 
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1
+ Metadata-Version: 2.4
2
+ Name: distil_whisper
3
+ Version: 0.0.0
4
+ Summary: Toolkit for distilling OpenAI's Whisper model.
5
+ Description-Content-Type: text/markdown
6
+ Requires-Dist: torch>=1.10
7
+ Requires-Dist: transformers>=4.35.1
8
+ Requires-Dist: datasets[audio]>=2.14.7
9
+ Requires-Dist: accelerate>=0.24.1
10
+ Requires-Dist: jiwer
11
+ Requires-Dist: evaluate>=0.4.1
12
+ Requires-Dist: wandb
13
+ Requires-Dist: tensorboard
14
+ Requires-Dist: nltk
15
+ Provides-Extra: dev
16
+ Requires-Dist: ruff==0.1.5; extra == "dev"
17
+ Dynamic: description
18
+ Dynamic: description-content-type
19
+ Dynamic: provides-extra
20
+ Dynamic: requires-dist
21
+ Dynamic: summary
22
+
23
+ ## Training Distil-Whisper
24
+
25
+ This sub-folder contains all the scripts required to train a Distil-Whisper model in your choice of language. They are
26
+ slightly modified from the original scripts used to distill Whisper for English ASR (as-per the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430)).
27
+ The main difference is that these scripts are written in [PyTorch](https://pytorch.org), whereas the original scripts
28
+ are in [JAX](https://jax.readthedocs.io/en/latest/#)/[Flax](https://flax.readthedocs.io/en/latest/). These scripts are
29
+ also made to be easier to run end-to-end, whereas the original scripts require more steps and are somewhat hard-coded
30
+ for English ASR. Both sets of scripts achieve equivalent downstream results when the hyper-parameters are set equal.
31
+
32
+ If you are interested in reproducing the original Distil-Whisper checkpoints, we refer you to the sub-folder [Flax Training](./flax/README.md).
33
+ Otherwise, if you wish to distill Whisper on your own language/dataset, we recommend you use these scripts for ease of use
34
+ and the configurability they provide.
35
+
36
+ Reproducing the Distil-Whisper project requires four stages to be completed in successive order:
37
+
38
+ 1. [Pseudo-labelling](#1-pseudo-labelling)
39
+ 2. [Initialisation](#2-initialisation)
40
+ 3. [Training](#3-training)
41
+ 4. [Evaluation](#4-evaluation)
42
+
43
+ This README is partitioned according to the four stages. Each section provides a minimal example for running the
44
+ scripts used in the project. We will use a running example of distilling the Whisper model for Hindi speech recognition
45
+ on the Common Voice dataset. Note that this dataset only contains ~20 hours of audio data. Thus, it can be run extremely
46
+ quickly, but does not provide sufficient data to achieve optimal performance. We recommend training on upwards of 1000
47
+ hours of data should you want to match the performance of Whisper on high-resource languages.
48
+
49
+ ## Requirements
50
+
51
+ The Distil-Whisper training code is written in [PyTorch](https://pytorch.org) and [Accelerate](https://huggingface.co/docs/accelerate/index).
52
+ It heavily leverages the Whisper implementation in [🤗 Transformers](https://github.com/huggingface/transformers) for both
53
+ training and inference.
54
+
55
+ The instructions for installing the package are as follows:
56
+ 1. Install PyTorch from the [official instructions](https://pytorch.org/get-started/locally/), ensuring you install the correct version for your hardware and CUDA version.
57
+ 2. Fork the `distil-whisper` repository by clicking on the [fork](https://github.com/huggingface/distil-whisper/fork) button on the reopsitory's page
58
+ 3. Clone the `distil-whisper` repository and add the base repository as a remote. This will allow you to "pull" any upstream changes that are made to the base repository:
59
+
60
+ ```bash
61
+ git clone https://github.com/<your GitHub handle>/distil-whisper.git
62
+ cd distil-whisper
63
+ git remote add upstream https://github.com/huggingface/distil-whisper.git
64
+ ```
65
+ 4. pip install the required packages from the [setup.py](./setup.py) file:
66
+ ```bash
67
+ cd training
68
+ pip install -e .
69
+ cd ../..
70
+ ```
71
+
72
+ 5. Configure Accelerate by running the following command. Note that you should set the number of GPUs you wish to use for distillation, and also the data type (dtype) to your preferred dtype for training/inference (e.g. `bfloat16` on A100 GPUs, `float16` on V100 GPUs, etc.):
73
+
74
+ ```bash
75
+ accelerate config
76
+ ```
77
+
78
+ 6. The last thing we need to do is link our Hugging Face account so that we can pull/push model repositories on the Hub. This will allow us to save our final distilled weights on the Hub so that we can share them with the community. Run the command:
79
+
80
+ ```bash
81
+ git config --global credential.helper store
82
+ huggingface-cli login
83
+ ```
84
+ And then enter an authentication token from https://huggingface.co/settings/tokens. Create a new token if you do not have one already. You should make sure that this token has "write" privileges.
85
+
86
+ To confirm that you have a working environment, first accept the terms of use of the Common Voice 16.1 dataset on the Hub: https://huggingface.co/datasets/mozilla-foundation/common_voice_16_1
87
+
88
+ You can run the following code cell to stream one sample of data from the Common Voice dataset, and check that you can
89
+ perform inference using the "tiny" Whisper model:
90
+
91
+ ```python
92
+ from transformers import WhisperProcessor, WhisperForConditionalGeneration
93
+ from datasets import load_dataset, Audio
94
+
95
+ model = WhisperForConditionalGeneration.from_pretrained("openai/whisper-tiny", low_cpu_mem_usage=True)
96
+ processor = WhisperProcessor.from_pretrained("openai/whisper-tiny")
97
+
98
+ model.to("cuda")
99
+
100
+ common_voice = load_dataset("mozilla-foundation/common_voice_16_1", "en", split="validation", streaming=True)
101
+ common_voice = common_voice.cast_column("audio", Audio(sampling_rate=processor.feature_extractor.sampling_rate))
102
+
103
+ inputs = processor(next(iter(common_voice))["audio"]["array"], sampling_rate=16000, return_tensors="pt")
104
+ input_features = inputs.input_features
105
+
106
+ generated_ids = model.generate(input_features.to("cuda"), max_new_tokens=128)
107
+ pred_text = processor.decode(generated_ids[0], skip_special_tokens=True)
108
+
109
+ print("Pred text:", pred_text)
110
+ print("Environment set up successful?", generated_ids.shape[-1] == 20)
111
+ ```
112
+
113
+ ## 1. Pseudo-Labelling
114
+
115
+ The python script [`run_pseudo_labelling.py`](run_pseudo_labelling.py) is a flexible inference script that can be used
116
+ to generate pseudo-labels under a range of settings, including using both greedy and beam-search. It is also compatible
117
+ with [🤗 Datasets](https://github.com/huggingface/datasets) *streaming mode*, allowing users to load massive audio
118
+ datasets with **no disk space requirements**. For more information on streaming mode, the reader is referred to the
119
+ blog post: [A Complete Guide to Audio Datasets](https://huggingface.co/blog/audio-datasets#streaming-mode-the-silver-bullet).
120
+
121
+ > As of the latest Distil-Whisper release, [`distil-large-v3`](https://huggingface.co/distil-whisper/distil-large-v3), this
122
+ pseudo-labelling script also performs the added operation of concatenating (or packing) the audio inputs to 30-seconds.
123
+ Not only does this lead to a WER improvement when using sequential long-form decoding algorithm, but concatenating audios
124
+ to 30-seconds also improves the throughput during training, since the amount of zero-padding on the audio inputs is minimised.
125
+
126
+ The following script demonstrates how to pseudo-label the Hindi split of the Common Voice 16.1 dataset with greedy sampling:
127
+
128
+ ```bash
129
+ #!/usr/bin/env bash
130
+
131
+ accelerate launch run_pseudo_labelling.py \
132
+ --model_name_or_path "openai/whisper-large-v3" \
133
+ --dataset_name "mozilla-foundation/common_voice_16_1" \
134
+ --dataset_config_name "hi" \
135
+ --dataset_split_name "train+validation+test" \
136
+ --text_column_name "sentence" \
137
+ --id_column_name "path" \
138
+ --output_dir "./common_voice_16_1_hi_pseudo_labelled" \
139
+ --wandb_project "distil-whisper-labelling" \
140
+ --per_device_eval_batch_size 64 \
141
+ --dtype "bfloat16" \
142
+ --attn_implementation "sdpa" \
143
+ --logging_steps 500 \
144
+ --max_label_length 256 \
145
+ --concatenate_audio \
146
+ --preprocessing_batch_size 500 \
147
+ --preprocessing_num_workers 8 \
148
+ --dataloader_num_workers 8 \
149
+ --report_to "wandb" \
150
+ --language "hi" \
151
+ --task "transcribe" \
152
+ --return_timestamps \
153
+ --streaming False \
154
+ --generation_num_beams 1 \
155
+ --push_to_hub
156
+ ```
157
+
158
+ On an 80 GB A100 GPU, the following script takes approximately 5 minutes to concatenate and pre-process the 20 hours of
159
+ audio data, and a further 10 minutes to transcribe the pseudo-labels. The pseudo-labelled dataset corresponding to this
160
+ script is available on the Hugging Face Hub under [sanchit-gandhi/common_voice_16_1_hi_pseudo_labelled](https://huggingface.co/datasets/sanchit-gandhi/common_voice_16_1_hi_pseudo_labelled).
161
+ The WER of the pre-trained Whisper large-v3 model is 17.2% on the test split. We will compare the performance of our distilled model against this number.
162
+
163
+ There are two noteworthy arguments that configure the dataset concatenation (or packing) process:
164
+ 1. `concatenate_audio`: whether or not to concatenate (or pack) the audios to 30-second chunks. The latest Distil-Whisper model, [`distil-large-v3`](https://huggingface.co/distil-whisper/distil-large-v3#differences-with-distil-large-v2), highlights the WER improvements obtained using the sequential long-form decoding algorithm when concatenated audios are used. Concatenating audios to 30-seconds also improves the throughput during training, since the amount of zero-padding on the audio inputs is minimised. Hence, it is highly recommended to set `--concatenate_audio=True`.
165
+ 2. `preprocessing_batch_size`: the batch size to use when concatenating (or packing) the audios. Using a larger batch size results in a greater portion of audio samples being packed to 30-seconds, at the expense of higher memory consumption. If you exceed your system's RAM when performing the concatenation operation, reduce the `preprocessing_batch_size` by a factor of 2 to 250 or even 125.
166
+ 3. `preprocessing_num_workers`: the number of multiprocessing workers to use when concatenating the audios. Using more workers will result in faster pre-processing, at the expense of higher memory consumption. Ensure you do not exceed the maximum number of CPUs on your device.
167
+
168
+ In addition, the following arguments configure the inference of the Whisper model:
169
+ 1. `language`: explicitly setting the language token during inference substantially improves the generation performance of the Whisper model, since the model is forced always to predict in the given language. We recommend you set the language to the language you wish to distil the Whisper model on. The only exception is when distilling an English-only model (i.e. where the model id is appended with an `.en`, e.g. `small.en`), the language argument should be set to None, since there is no language token used during training/inference.
170
+ 2. `return_timestamps`: whether or not to predict timestamps in the pseudo-labels. Timestamp prediction is required should you want your distilled model to be able to predict timestamps at inference time (e.g. for the original OpenAI long-form transcription algorithm). However, the pseudo-labels are marginally less accurate than not using timestamps. We recommend pseudo-labelling **with** timestamps to ensure the distilled model is as general as possible.
171
+ 3. `attn_implementation`: which attention implementation to use for inference. Set to `sdpa` for [PyTorch SDPA](https://huggingface.co/docs/transformers/v4.35.2/en/perf_infer_gpu_one#bettertransformer), or `flash_attention_2` if your hardware supports Flash Attention 2 and you have the [package installed](https://github.com/Dao-AILab/flash-attention).
172
+ 4. `streaming`: whether or not to use Datasets' streaming mode. If enabled, the audio data will be streamed from the Hugging Face Hub with no disk space requirements. However, the user is then responsible for adding the pseudo-labels to the dataset script in a follow-up step (see [Using Streaming Mode](#TODO)). If set to `False`, the audio data will be downloaded and pre-processed offline. At the end of pseudo-labelling, the pseudo-labels will be automatically appended to the original dataset, meaning the dataset is ready to be used for the subsequent training step without any additional steps.
173
+ 5. `generation_num_beams`: how many beams to use while decoding. In practice, we found the distilled model to perform comparably when the data was pseudo-labelled with `generation_num_beams=1` (greedy) or `generation_num_beams>1` (beam). This is likely because the WER filter compensates for the lower quality pseudo-labels obtained using greedy search. However, using `generation_num_beams=1` gives substantially faster inference time for the pseudo-labelling step, and so we recommend this configuration.
174
+
175
+ Should you have your own audio dataset, you can first [convert it](https://huggingface.co/docs/datasets/audio_dataset) to
176
+ Hugging Face Datasets format and push it to the Hugging Face Hub. You can then pseudo-label it using the script above,
177
+ replacing the `--dataset_name` with the name of your dataset on the Hub.
178
+
179
+ Otherwise, you may wish to use an open-source dataset already available on the Hugging Face Hub. We provide a summary of
180
+ the three most popular multilingual datasets in the table below. For more details, refer to the blog post: [A Complete Guide to Audio Datasets](https://huggingface.co/blog/audio-datasets#multilingual-speech-recognition).
181
+
182
+ | Dataset | Languages | Domain | Speaking Style | License | Text Column | ID Column |
183
+ |-----------------------------------------------------------------------------------------------|-----------|---------------------------------------|----------------|-----------|---------------------|--------------|
184
+ | [Multilingual LibriSpeech](https://huggingface.co/datasets/facebook/multilingual_librispeech) | 6 | Audiobooks | Narrated | CC-BY-4.0 | `"text"` | `"id"` |
185
+ | [Common Voice 16](https://huggingface.co/datasets/mozilla-foundation/common_voice_16_1) | 120 | Wikipedia text & crowd-sourced speech | Narrated | CC0-1.0 | `"sentence"` | `"path"` |
186
+ | [VoxPopuli](https://huggingface.co/datasets/facebook/voxpopuli) | 15 | European Parliament recordings | Spontaneous | CC0 | `"normalized_text"` | `"audio_id"` |
187
+
188
+ To achieve *robustness* to different distributions of audio data, it is recommended to train on multiple datasets where possible.
189
+ For example, the above three datasets all have splits for the German language. Thus, if distilling a Whisper model for German,
190
+ it would be wise to use a combination of the three datasets during training, in order to cover at least three distinct domains
191
+ (audiobooks, crowd-sourced speech, parliament recordings). You may wish to use a combination of open-source datasets, or
192
+ a combination of open-source and individually owned datasets to cover multiple distributions and domains. Moreover, if you were to train on low-resource datasets (<500 hours), you could experiment with [language mixing](#3-language-mixing) to improve robustness.
193
+
194
+ ## 2. Initialisation
195
+
196
+ The script [`create_student_model.py`](create_student_model.py) can be used to initialise a small student model
197
+ from a large teacher model. When initialising a student model with fewer layers than the teacher model, the student is
198
+ initialised by copying maximally spaced layers from the teacher, as per the [DistilBart](https://arxiv.org/abs/2010.13002)
199
+ recommendations.
200
+
201
+ First, we need to create a model repository on the Hugging Face Hub. This repository will contain all the required files
202
+ to reproduce the training run, alongside model weights, training logs and a README.md card. You can either create a model
203
+ repository directly on the Hugging Face Hub using the link: https://huggingface.co/new. Or, via the CLI, as we'll show here.
204
+
205
+ Let's pick a name for our distilled model: `distil-whisper-large-v3-hi`. We can run the following command to create a repository under this name:
206
+
207
+ ```bash
208
+ huggingface-cli repo create distil-whisper-large-v3-hi
209
+ ```
210
+
211
+ We can now see the model on the Hub, e.g. under https://huggingface.co/sanchit-gandhi/distil-whisper-large-v3-hi
212
+
213
+ Let's clone the repository so that we can place our training script and model weights inside:
214
+
215
+ ```bash
216
+ git lfs install
217
+ git clone https://huggingface.co/sanchit-gandhi/distil-whisper-large-v3-hi
218
+ ```
219
+
220
+ Be sure to change the repo address to `https://huggingface.co/<your-user-name>/<your-repo-name>`
221
+
222
+ We can now copy the relevant training scrips to the repository:
223
+ ```bash
224
+ cd distil-whisper-large-v3-hi
225
+
226
+ cp ../distil-whisper/training/create_student_model.py .
227
+ cp ../distil-whisper/training/run_distillation.py .
228
+ ```
229
+
230
+ The following command demonstrates how to initialise a student model from the Whisper [large-v3](https://huggingface.co/openai/whisper-large-v3)
231
+ checkpoint, with all 32 encoder layer and 2 decoder layers. The 2 student decoder layers are copied from teacher layers
232
+ 1 and 32 respectively, as the maximally spaced layers:
233
+
234
+ ```bash
235
+ #!/usr/bin/env bash
236
+
237
+ python create_student_model.py \
238
+ --teacher_checkpoint "openai/whisper-large-v3" \
239
+ --encoder_layers 32 \
240
+ --decoder_layers 2 \
241
+ --save_dir "./distil-large-v3-init"
242
+ ```
243
+
244
+ The initialised model will be saved to the sub-directory `distil-large-v3-init` in our model repository.
245
+
246
+
247
+ **Note:** You can leverage language transfer by setting `--teacher_checkpoint` to "distil-whisper/distil-large-v3", see [language transfer](#22-language-transfer) for more details.
248
+
249
+ ## 3. Training
250
+
251
+ The script [`run_distillation.py`](run_distillation.py) is an end-to-end script for loading multiple
252
+ datasets, a student model, a teacher model, and performing teacher-student distillation. It uses the loss formulation
253
+ from the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430), which is a weighted sum of the cross-entropy and
254
+ KL-divergence loss terms.
255
+
256
+ The following command takes the Common Voice dataset that was pseudo-labelled in the first stage and trains the
257
+ 2-layer decoder model intialised in the previous step. We pass the local path to the pseudo-labelled Common Voice dataset
258
+ (`../common_voice_16_1_hi_pseudo_labelled`), which you can change to the path where your local pseudo-labelled dataset is
259
+ saved.
260
+
261
+ In this example, we will combine the train and validation splits to give our training set, and evaluate on the test split
262
+ only. This is purely to demonstrate how to combine multiple pseudo-labelled datasets for training, rather than recommended
263
+ advice for defining train/validation splits. We advise that you train on the train splits of your dataset, evaluate and
264
+ tune hyper-parameters on the validation split, and only test the final checkpoint on the test split. Note how multiple
265
+ training datasets and splits can be loaded by separating the dataset arguments by `+` symbols. Thus, the script generalises
266
+ to any number of training datasets.
267
+
268
+ ```bash
269
+ #!/usr/bin/env bash
270
+
271
+ accelerate launch run_distillation.py \
272
+ --model_name_or_path "./distil-large-v3-init" \
273
+ --teacher_model_name_or_path "openai/whisper-large-v3" \
274
+ --train_dataset_name "../common_voice_16_1_hi_pseudo_labelled+../common_voice_16_1_hi_pseudo_labelled" \
275
+ --train_split_name "train+validation" \
276
+ --text_column_name "sentence+sentence" \
277
+ --train_dataset_samples "7+4" \
278
+ --eval_dataset_name "../common_voice_16_1_hi_pseudo_labelled" \
279
+ --eval_split_name "test" \
280
+ --eval_text_column_name "sentence" \
281
+ --eval_steps 1000 \
282
+ --save_steps 1000 \
283
+ --warmup_steps 50 \
284
+ --learning_rate 0.0001 \
285
+ --lr_scheduler_type "constant_with_warmup" \
286
+ --timestamp_probability 0.2 \
287
+ --condition_on_prev_probability 0.2 \
288
+ --language "hi" \
289
+ --task "transcribe" \
290
+ --logging_steps 25 \
291
+ --save_total_limit 1 \
292
+ --max_steps 5000 \
293
+ --wer_threshold 20 \
294
+ --per_device_train_batch_size 32 \
295
+ --per_device_eval_batch_size 32 \
296
+ --dataloader_num_workers 8 \
297
+ --preprocessing_num_workers 8 \
298
+ --ddp_timeout 7200 \
299
+ --dtype "bfloat16" \
300
+ --attn_implementation "sdpa" \
301
+ --output_dir "./" \
302
+ --do_train \
303
+ --do_eval \
304
+ --gradient_checkpointing \
305
+ --overwrite_output_dir \
306
+ --predict_with_generate \
307
+ --freeze_encoder \
308
+ --freeze_embed_positions \
309
+ --streaming False \
310
+ --push_to_hub
311
+
312
+ ```
313
+
314
+ The above training script will take approximately 3 hours to complete on an 80 GB A100 GPU and yield a final WER of 76%.
315
+ While the generations are starting to take form, there is still a 59% WER gap to the teacher model. This is hardly
316
+ surprising give we only have 15 hours of un-filtered data, and closer to just 1.5 hours with data filtering.
317
+ As mentioned above, using upwards of 1000 hours of data and training for 10k steps will likely yield
318
+ more competitive performance. For the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430), we trained on 21k hours
319
+ of audio data for 80k steps. We found that upwards of 13k hours of audio data was required to reach convergence on English
320
+ ASR (see Section 9.2 of the [paper](https://arxiv.org/abs/2311.00430)), so the more data you have, the better!
321
+
322
+ Scaling to multiple GPUs using [distributed data parallelism (DDP)](https://pytorch.org/tutorials/beginner/ddp_series_theory.html)
323
+ is trivial: simply run `accelerate config` and select the multi-GPU option, specifying the IDs of the GPUs you wish to use. The
324
+ above script can then be run using DDP with no code changes.
325
+
326
+ Training logs will be reported to TensorBoard and WandB, provided the relevant packages are available. An example of a
327
+ saved checkpoint pushed to the Hugging Face Hub can be found here: [sanchit-gandhi/distil-whisper-large-v3-hi](https://huggingface.co/sanchit-gandhi/distil-whisper-large-v3-hi).
328
+
329
+ There are a few noteworthy data arguments:
330
+ 1. `train_dataset_samples`: defines the number of training samples in each dataset. Used to calculate the sampling probabilities in the dataloader. A good starting point is setting the samples to the number of hours of audio data in each split. A more refined strategy is setting it to the number of training samples in each split, however this might require downloading the dataset offline to compute these statistics.
331
+ 2. `wer_threshold`: sets the WER threshold between the normalised pseudo-labels and normalised ground truth labels. Any samples with WER > `wer_threshold` are discarded from the training data. This is beneficial to avoid training the student model on pseudo-labels where Whisper hallucinated or got the predictions grossly wrong. In our English distillation experiments, we found a WER threshold of 10% provides the optimal trade-off between ensuring high-quality transcriptions, and not filtering unnecessary amounts of training data. For multilingual distillation, the threshold should be set in accordance with the WER achieved by the pre-trained model on the test set.
332
+ 3. `streaming`: whether or not to use Datasets' streaming mode. Recommended for large datasets, where the audio data can be streamed from the Hugging Face Hub with no disk space requirements.
333
+ 4. `timestamp_probability`: the per-sample probability for retaining timestamp tokens in the labels (should they contain them). Retaining some portion of timestamp tokens in the training data is required to ensure the distilled model can predict timestamps at inference time. In our experiments, we found that training on timestamps with high-probability hurts the distilled model's transcription performance. Thus, we recommend setting this to a value below 0.5. Typically, a value of 0.2 works well, giving good transcription and timestamp performance.
334
+ 5. `condition_on_prev_probability`: the per-sample probability for conditioning on previous labels. Conditioning on previous tokens is required to ensure the distilled model can be used with the "sequential" long-form transcription algorithm at inference time. We did not experiment with this parameter, but found values around 0.2 to provide adequate performance. OpenAI pre-trained Whisper on with a 50% probability for conditioning on previous tokens. Thus, you might wish to try higher values.
335
+
336
+ As well as a few noteworthy model arguments that can be configured to give optimal training performance:
337
+ 1. `freeze_encoder`: whether to freeze the entire encoder of the student model during training. Beneficial when the student encoder is copied exactly from the teacher encoder. In this case, the encoder hidden-states from the teacher model are re-used for the student model. Stopping the gradient computation through the encoder and sharing the encoder hidden-states provides a significant memory saving, and can enable up to 2x batch sizes.
338
+ 2. `freeze_embed_positions`: whether to freeze the student model's decoder positional embeddings. Using the same embed positions as the teacher model, which is designed to handle context lengths up to 448 tokens, helps the student model retain its input id representation up to the full max input length.
339
+ 3. `dtype`: data type (dtype) in which the model computation should be performed. Note that this only controls the dtype of the computations (forward and backward pass), and not the dtype of the parameters or optimiser states.
340
+ 4. `freeze_decoder`: whether to freeze the student model's decoder. Note that the input tokens embeddings and language modelling head will remain trainable.
341
+
342
+ And finally, a few noteworthy training arguments:
343
+ 1. `max_steps`: defines the total number of optimisation steps (forward + backward pass) during training. To reach convergence, you should use a dataset of at least 1k hours and train for a minimum of 50k steps.
344
+ 2. `lr_scheduler_stype`: defines the learning rate schedule, one of `constant_with_warmup` or `linear`. When experimenting with a training set-up or training for very few steps (< 5k), using `constant_with_warmup` is typically beneficial, since the learning rate remains high over the short training run. When performing long training runs (> 5k), using a `linear` schedule generally results in superior downstream performance of the distilled model.
345
+
346
+ TODO:
347
+ - [ ] Template for model cards
348
+
349
+ ## 4. Evaluation
350
+
351
+ There are four types of evaluation performed in Distil-Whisper:
352
+ 1. Short form: evaluation on audio samples less than 30s in duration. Examples include typical ASR test sets, such as the LibriSpeech validation set.
353
+ 2. Sequential long form: evaluation on audio samples longer than 30s in duration using the original "sequential" long-form algorithm. Examples include entire TED talks or earnings calls.
354
+ 3. Chunked long form: evaluation on audio samples longer than 30s in duration using the Transformers "chunked" long-form algorithm.
355
+ 4. Speculative decoding: evaluation on audio samples less than 30s in duration, where a faster, distilled model is used as the assistant to a slower, teacher model.
356
+
357
+ All four forms of evaluation are performed using the script [`run_eval.py`](run_eval.py). Unlike the pseudo-labelling
358
+ and training scripts, the evaluation script assumes that only one GPU accelerator is used. We can copy the corresponding
359
+ evaluation script to the model repository using the following command:
360
+
361
+ ```bash
362
+ cp ../distil-whisper/training/run_eval.py .
363
+ ```
364
+
365
+ Models are assessed jointly using:
366
+ 1. The *word-error rate (WER)* metric: measures the number of substitution, deletion and insertion errors relative to the total number of words. A lower WER indicates a more accurate model.
367
+ 2. The *inverse real-time factor (RTFx)* metric: measures the ratio of `audio input time : model compute time`. A higher RTFx indicates a faster model. Note that this metric is WER-dependent, meaning that it makes sense to compare two models' *RTFx* only at fixed *WER* performances. Indeed, deletions could lead to early stopping of token generation, resulting in higher *WER* and lower *RTFx*.
368
+ 3. Token generation speed: This refers to the number of tokens generated per second. As with *RTFx*, this metric is dependent on the *WER* since token generation time is not linear. By default, this metric is calculated by averaging the total number of `generated tokens : generation time` (full forward pass of the model) when evaluating on the given test set. However, using the `--precise_tok_generation` flag will compute this metric separately for a fixed number of tokens.
369
+
370
+ In all cases, it is particularly important to evaluate the final model on data that is *out-of-distribution (OOD)* with
371
+ the training data. Evaluating on OOD data provides insight as to how well the distilled model is likely to generalise to
372
+ different audio distributions at inference time. In our example, the Common Voice test set is *in-distribution (ID)*
373
+ with our training data, since it is taken from the same distribution as the Common Voice training set. Whereas the FLEURS
374
+ test set is OOD, since it is not used as part of the training set. See [Datasets](#1-datasets) section for recommendations.
375
+
376
+ ### Short Form
377
+
378
+ The script [`run_eval.py`](run_eval.py) can be used to evaluate a trained student model over multiple short-form
379
+ validation sets. The following example demonstrates how to evaluate the student model trained in the previous step on
380
+ the Common Voice `test` set (ID) and also the FLEURS `test` set (OOD). Again, it leverages streaming mode to bypass
381
+ the need to download the data offline:
382
+
383
+ ```bash
384
+ #!/usr/bin/env bash
385
+
386
+ python run_eval.py \
387
+ --model_name_or_path "./" \
388
+ --dataset_name "../common_voice_16_1_hi_pseudo_labelled+google/fleurs" \
389
+ --dataset_config_name "default+hi_in" \
390
+ --dataset_split_name "test+test" \
391
+ --text_column_name "sentence+transcription" \
392
+ --batch_size 16 \
393
+ --dtype "bfloat16" \
394
+ --generation_max_length 256 \
395
+ --language "hi" \
396
+ --attn_implementation "sdpa" \
397
+ --streaming
398
+
399
+ ```
400
+
401
+ The student model achieves an average WER of TODO% with an RTFx of TODO for a batch size of 16. We can easily adapt the above
402
+ script to evaluate the teacher model, simply by switching the `model_name_or_path` to `openai/whisper-large-v3`, which
403
+ achieves an average WER of TODO% with an RTFx of TODO. Therefore, for a batch size of 16, the student model is a factor of TODO
404
+ times faster than the teacher. The WER gap can be closed by training on more data (at least 1k hours) for more training
405
+ steps (at least 50k).
406
+
407
+ ### Sequential Long Form
408
+
409
+ The original Whisper paper presents a long-form transcription algorithm that sequentially transcribes 30-second segments
410
+ of audio and shifts the sliding window according to the timestamps predicted by the model. This style of sequential
411
+ inference is performed directly using the [`.generate`](https://huggingface.co/docs/transformers/model_doc/whisper#transformers.WhisperForConditionalGeneration.generate)
412
+ method in Transformers.
413
+
414
+ The script [`run_eval.py`](run_eval.py) can be used to evaluate the trained student model on an arbitrary number of
415
+ long-form evaluation sets using the sequential algorithm. Since we don't have a long-form validation set for Hindi to hand,
416
+ in this example we'll evaluate the official Distil-Whisper model [`distil-large-v3`](https://huggingface.co/distil-whisper/distil-large-v3)
417
+ on the TED-LIUM validation set:
418
+
419
+ ```bash
420
+ #!/usr/bin/env bash
421
+
422
+ accelerate launch run_eval.py \
423
+ --model_name_or_path "distil-whisper/distil-large-v3" \
424
+ --dataset_name "distil-whisper/tedlium-long-form" \
425
+ --dataset_config_name "default" \
426
+ --dataset_split_name "validation" \
427
+ --text_column_name "text" \
428
+ --batch_size 16 \
429
+ --dtype "bfloat16" \
430
+ --generation_max_length 256 \
431
+ --language "en" \
432
+ --attn_implementation "sdpa" \
433
+ --streaming
434
+
435
+ ```
436
+
437
+ ### Chunked Long Form
438
+
439
+ Chunked long form evaluation runs on the premise that a single long audio file can be *chunked* into smaller segments and
440
+ inferred in parallel. The resulting transcriptions are then joined at the boundaries to give the final text prediction.
441
+ A small overlap (or *stride*) is used between adjacent segments to ensure a continuous transcription across chunks.
442
+
443
+ This style of chunked inference is performed using the [`pipeline`](https://huggingface.co/docs/transformers/main_classes/pipelines)
444
+ class, which provides a wrapper around the [`.generate`](https://huggingface.co/docs/transformers/model_doc/whisper#transformers.WhisperForConditionalGeneration.generate)
445
+ function for long-form inference.
446
+
447
+ The script [`run_eval.py`](run_eval.py) can be used to evaluate the trained student model on an arbitrary number of
448
+ long-form evaluation sets using the pipeline class. Again, in this example we'll evaluate distil-large-v3 on the
449
+ TED-LIUM validation set:
450
+
451
+ ```bash
452
+ #!/usr/bin/env bash
453
+
454
+ python run_eval.py \
455
+ --model_name_or_path "openai/whisper-large-v3" \
456
+ --dataset_name "distil-whisper/tedlium-long-form" \
457
+ --dataset_config_name "default" \
458
+ --dataset_split_name "validation" \
459
+ --text_column_name "text" \
460
+ --use_pipeline \
461
+ --chunk_length_s 25.0 \
462
+ --language "en" \
463
+ --return_timestamps \
464
+ --dtype "bfloat16" \
465
+ --streaming
466
+
467
+ ```
468
+
469
+ The argument `chunk_length_s` controls the length of the chunked audio samples. It should be set to match the typical
470
+ length of audio the student model was trained on. If unsure about what value of `chunk_length_s` is optimal for your case,
471
+ it is recommended to run a *sweep* over all possible values. A template script for running a [WandB sweep](https://docs.wandb.ai/guides/sweeps)
472
+ can be found under [`run_chunk_length_s_sweep.yaml`](flax/long_form_transcription_scripts/run_chunk_length_s_sweep.yaml).
473
+
474
+ ### Speculative Decoding
475
+
476
+ Speculative decoding, or assisted generation, relies on the premise that a faster, assistant model can be used to speed-up
477
+ the generation of a slower, assistant model. Speculative decoding mathematically ensures that exactly the same outputs as
478
+ Whisper are obtained, while being ~2 times faster. This makes it the perfect drop-in replacement for existing Whisper
479
+ pipelines, since exactly the same outputs are guaranteed.
480
+
481
+ Distil-Whisper checkpoints can be designed to be efficient assistant models to Whisper for speculative decoding. More precisely,
482
+ by freezing the encoder during training, the distilled model can share the same encoder weights as Whisper during inference, since
483
+ the encoder weights are un-changed. In doing so, only the distilled 2-layer decoder has to be loaded in addition to the
484
+ original Whisper model, which is approximately an 8% increase to the total parameter count, with up to 2x faster inference
485
+ for low batch sizes. For more details on speculative decoding, the reader is advised to refer to the following blog post:
486
+ [Speculative Decoding for 2x Faster Whisper Inference](https://huggingface.co/blog/whisper-speculative-decoding).
487
+
488
+ In the example below, we use our distilled model as an assistant to the large-v3 teacher model during inference:
489
+
490
+ ```bash
491
+ #!/usr/bin/env bash
492
+
493
+ python run_eval.py \
494
+ --model_name_or_path "openai/whisper-large-v3" \
495
+ --assistant_model_name_or_path "./" \
496
+ --dataset_name "../common_voice_16_1_hi_pseudo_labelled+google/fleurs" \
497
+ --dataset_config_name "default+hi_in" \
498
+ --dataset_split_name "test+test" \
499
+ --text_column_name "sentence+transcription" \
500
+ --batch_size 16 \
501
+ --dtype "bfloat16" \
502
+ --generation_max_length 256 \
503
+ --language "hi" \
504
+ --attn_implementation "sdpa" \
505
+ --streaming
506
+
507
+ ```
508
+
509
+ We see that we achieve a WER of TODO%, the same as what we obtained with the large-v3 model, but with an RTFx of TODO,
510
+ a factor of TODO faster than using the large-v3 model alone. The RTFx value can be improved by training the student on
511
+ more data and for more training steps, since this will improve the number of predicted tokens that match the teacher
512
+ predictions.
513
+
514
+ ## Recommendations and guidelines
515
+
516
+ ### 1. Datasets
517
+
518
+ As explained, ideally, you should aim for ~1000 hours of audio data for training a distilled model via KD. Moreover, you should evaluate your model on out-of-distribution test sets to assess generalization capacities. With at least 1500 hours of audio data for German, Dutch, French and Spanish, 600 hours for Italian, and 300 hours for Portuguese and Polish (which can be supplemented with your own datasets), a good setup to start with is:
519
+ - **Training datasets:** [Common Voice 17](https://huggingface.co/datasets/mozilla-foundation/common_voice_17_0) and [Multilingual Librispeech](https://huggingface.co/datasets/facebook/multilingual_librispeech). Use the `train` split for training, and the `validation` and `test` splits for in-distribution testing.
520
+ - **Test datasets:** [VoxPopuli](https://huggingface.co/datasets/facebook/voxpopuli) and [Fleurs](https://huggingface.co/datasets/google/fleurs). Use the `validation` and `test` splits for out-of-distribution testing.
521
+
522
+ ### 2. Student model's decoder
523
+ #### 2.1 Number of Decoder Layers
524
+
525
+ We recommend using a 2-layers decoder (see language transfer below). However, you can adjust the number of decoder layers when initializing the student model to balance between inference speed and accuracy. Experimentation has revealed that the Pareto optimal points are with 2, 3, and 4-layers decoders. For indicative results, after 10,000 training steps and inference on an 80GB Nvidia H100 with a batch size of 16 and 20 tokens generation, compared to [Whiper *large-v3*](https://huggingface.co/openai/whisper-large-v3) baseline:
526
+
527
+ <center>
528
+
529
+ | | rel. token gen. speed | ΔWER(%) |
530
+ |----------|:-------------:|------:|
531
+ | 2 layers | $3.66$ | $-3.5$ |
532
+ | 3 layers | $3.35$ | $-2.3$ |
533
+ | 4 layers | $3.11$ | $-1.8$ |
534
+
535
+ </center>
536
+
537
+
538
+ #### 2.2 Language Transfer
539
+
540
+ If you opt for a 2-layers decoder, consider leveraging language transfer by initializing the student model from the [distil-large-v3 English distilled model](https://huggingface.co/distil-whisper/distil-large-v3). For French, this method has shown performance improvements of ΔWER=-1.9% (compared to a 2-layers decoder initialized from [Whiper *large-v3*](https://huggingface.co/openai/whisper-large-v3)) after 10,000 training steps.
541
+
542
+ ```diff
543
+ - --teacher_checkpoint "openai/whisper-large-v3" \
544
+ + --teacher_checkpoint "distil-whisper/distil-large-v3" \
545
+ ```
546
+
547
+ ### 3. Language mixing
548
+
549
+ If you're working with low-resource languages (<500 hours of audio data), consider mixing your training data with a closely related language (for example, mix French and Spanish) to leverage knowledge transfer between languages. Experiments showed that mixing ~400 hours of French (which resulted in a model with poor generalization capacities) with ~500 hours of Spanish improved the model's out-of-distribution performance on French by ΔWER=-7.5%.
550
+
551
+ To do this:
552
+ 1. Run [pseudo labeling](#1-pseudo-labelling) for each training dataset, setting the `--language` flag to the language of the respective dataset. In the example of mixing French and Spanish, simply modify the given [pseudo labeling](#1-pseudo-labelling) command with:
553
+ * pseudo labelling the French dataset
554
+ ```diff
555
+ - --dataset_config_name "hi" \
556
+ - --output_dir "./common_voice_16_1_hi_pseudo_labelled" \
557
+ - --language "hi" \
558
+ + --dataset_config_name "fr" \
559
+ + --output_dir "./common_voice_16_1_fr_pseudo_labelled" \
560
+ + --language "fr" \
561
+ ```
562
+ * pseudo labelling the Spanish dataset
563
+ ```diff
564
+ - --dataset_config_name "hi" \
565
+ - --output_dir "./common_voice_16_1_hi_pseudo_labelled" \
566
+ - --language "hi" \
567
+ + --dataset_config_name "es" \
568
+ + --output_dir "./common_voice_16_1_es_pseudo_labelled" \
569
+ + --language "es" \
570
+ ```
571
+
572
+ 2. Conduct [training](#3-training) on these pseudo-labeled datasets, using the `--language` flag set to your targeted language. Note that this flag is only used for evaluation purposes, so you set it to the targeted language. The language token used for forwarding the teacher and student model decoders is the one used and saved in pseudo labels during pseudo-labeling, ensuring it's the correct one for the considered sample. In the example of mixing French and Spanish, simply modify the given [training](#1-pseudo-labelling) command with:
573
+ ```diff
574
+ - --train_dataset_name "../common_voice_16_1_hi_pseudo_labelled+../common_voice_16_1_hi_pseudo_labelled" \
575
+ - --train_split_name "train+validation" \
576
+ - --eval_dataset_name "../common_voice_16_1_hi_pseudo_labelled" \
577
+ - --eval_split_name "test" \
578
+ + --train_dataset_name "../common_voice_17_0_fr_pseudo_labelled+../common_voice_17_0_es_pseudo_labelled" \
579
+ + --train_split_name "train+train" \
580
+ + --eval_dataset_name "../common_voice_16_1_fr_pseudo_labelled" \
581
+ + --eval_split_name "validation" \
582
+ ```
583
+
584
+ ## Overview of Training Methods
585
+
586
+ ### 1. Fine-Tuning
587
+
588
+ For fine-tuning, we take the original Whisper checkpoint and train it on one or more datasets using the standard
589
+ cross-entropy loss. As such, there is no involvement from the teacher checkpoint during training, and so the fine-tuned
590
+ model is permitted to *overfit* to the distribution of the training data we provide. This makes it appealing for "low-resource"
591
+ languages where the original Whisper model performs poorly, since we can boost the performance of the model on a single
592
+ language by *overfitting* to that distribution of data. Note that this means the fine-tuned model is prone to loosing
593
+ its robustness to different audio distributions, which is the trade-off with improving performance on a specified dataset.
594
+
595
+ As a rule of thumb, fine-tuning is appropriate for languages where the original Whisper model performs > 20% WER, and we
596
+ have a relatively small quantity of training data available (< 1000 hours). With fine-tuning, we require as little as **10 hours**
597
+ of training data to significantly boost the performance of the Whisper model. For an in-depth guide to fine-tuning Whisper,
598
+ the reader is advised to refer to the blog post: [Fine-Tune Whisper For Multilingual ASR with 🤗 Transformers](https://huggingface.co/blog/fine-tune-whisper).
599
+
600
+ ### 2. Shrink and Fine-Tune
601
+
602
+ Shrink and fine-tune (SFT) is a knowledge distillation (KD) technique in which we first *shrink* the teacher model to a
603
+ smaller student model by copying maximally spaced layers, and then *fine-tune* the student model on the cross-entropy loss
604
+ as described above. Typically, we retain the full encoder from the Whisper model and only shrink the decoder. Retaining
605
+ the entire encoder helps significantly with maintaining Whisper's robustness to different audio distributions (_c.f._
606
+ Section 9.3 of the [Distil-Whisper paper](https://arxiv.org/abs/2311.00430)).
607
+
608
+ We can either train the student model on a dataset of (audio, text) pairs as above. Or, we can use the pre-trained
609
+ Whisper model to generate *pseudo-labels* for our audio data, and train on the (audio, pseudo-label) pairs.
610
+
611
+ Pseudo-labels can be used when either:
612
+ 1. The original text transcriptions are normalised (lower-cased or no punctuation): the Whisper generated pseudo-labels contain both punctuation and casing, and so can be used as a substitute for the normalised transcriptions
613
+ 2. The pre-trained Whisper model achieves < 20% WER on the languages: we then know the majority of the pseudo-labels will be accurate enough for us to train on.
614
+
615
+ They are not recommended when both of the following are true:
616
+ 1. The original text is punctuated and cased
617
+ 2. The pre-trained Whisper model achieves > 20% WER on the languages: in this case, we want to overfit to the particular distribution of the language, and so train directly on the original text data
618
+
619
+ To discard inaccurate pseudo-labels during training, we employ a simple WER heuristic to filter our pseudo-labelled
620
+ training data. We first normalise the original text and the pseudo-labelled text using the Whisper normaliser. If the
621
+ WER between the normalised text exceeds a 10% WER threshold, we discard the training sample. Else, we retain it for training.
622
+ Section 9.1 of the Distil-Whisper [paper](https://arxiv.org/abs/2311.00430) demonstrates the importance of using this
623
+ threshold for training.
624
+
625
+ ### 3. KL Divergence
626
+
627
+ In the KL Divergence setting, the student model is initialised by shrinking the teacher as before, and then trained to
628
+ match the predictions of the teacher during training.
629
+
630
+ ### Summary of Methods
631
+
632
+ The following table summarises the two training paradigms: fine-tuning and knowledge distillation (KD). It suggests
633
+ minimum values for the pre-trained WER / training data to achieve reasonable performance:
634
+
635
+ | Method | Pre-Trained WER / % | Training Data / h |
636
+ |-------------|---------------------|-------------------|
637
+ | Fine-tuning | > 20 | < 1000 |
638
+ | KD | < 20 | > 1000 |
639
+
640
+ ## Acknowledgements
641
+
642
+ * OpenAI for the Whisper [model](https://huggingface.co/openai/whisper-large-v3) and [original codebase](https://github.com/openai/whisper)
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+ * Hugging Face 🤗 [Transformers](https://github.com/huggingface/transformers) for the Whisper model implementation
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+ * Google's [TPU Research Cloud (TRC)](https://sites.research.google/trc/about/) program for Cloud TPU v4s used to train the official Distil-Whisper models
645
+ * The Hugging Face 🤗 cluster for enabling experimentation with the PyTorch scripts
646
+
647
+ ## Citation
648
+
649
+ If you use this code-base, please consider citing the Distil-Whisper paper:
650
+
651
+ ```
652
+ @misc{gandhi2023distilwhisper,
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+ title={Distil-Whisper: Robust Knowledge Distillation via Large-Scale Pseudo Labelling},
654
+ author={Sanchit Gandhi and Patrick von Platen and Alexander M. Rush},
655
+ year={2023},
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+ eprint={2311.00430},
657
+ archivePrefix={arXiv},
658
+ primaryClass={cs.CL}
659
+ }
660
+ ```
distil_whisper.egg-info/SOURCES.txt ADDED
@@ -0,0 +1,8 @@
 
 
 
 
 
 
 
 
 
1
+ README.md
2
+ pyproject.toml
3
+ setup.py
4
+ distil_whisper.egg-info/PKG-INFO
5
+ distil_whisper.egg-info/SOURCES.txt
6
+ distil_whisper.egg-info/dependency_links.txt
7
+ distil_whisper.egg-info/requires.txt
8
+ distil_whisper.egg-info/top_level.txt
distil_whisper.egg-info/dependency_links.txt ADDED
@@ -0,0 +1 @@
 
 
1
+
distil_whisper.egg-info/requires.txt ADDED
@@ -0,0 +1,12 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ torch>=1.10
2
+ transformers>=4.35.1
3
+ datasets[audio]>=2.14.7
4
+ accelerate>=0.24.1
5
+ jiwer
6
+ evaluate>=0.4.1
7
+ wandb
8
+ tensorboard
9
+ nltk
10
+
11
+ [dev]
12
+ ruff==0.1.5
distil_whisper.egg-info/top_level.txt ADDED
@@ -0,0 +1 @@
 
 
1
+