| ********* |
| Callbacks |
| ********* |
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| Exponential Moving Average (EMA) |
| ================================ |
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| During training, EMA maintains a moving average of the trained parameters. |
| EMA parameters can produce significantly better results and faster convergence for a variety of different domains and models. |
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| EMA is a simple calculation. EMA Weights are pre-initialized with the model weights at the start of training. |
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| Every training update, the EMA weights are updated based on the new model weights. |
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| .. math:: |
| ema_w = ema_w * decay + model_w * (1-decay) |
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| Enabling EMA is straightforward. We can pass the additional argument to the experiment manager at runtime. |
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| .. code-block:: bash |
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| python examples/asr/asr_ctc/speech_to_text_ctc.py \ |
| model.train_ds.manifest_filepath=/path/to/my/train/manifest.json \ |
| model.validation_ds.manifest_filepath=/path/to/my/validation/manifest.json \ |
| trainer.devices=2 \ |
| trainer.accelerator='gpu' \ |
| trainer.max_epochs=50 \ |
| exp_manager.ema.enable=True # pass this additional argument to enable EMA |
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| To change the decay rate, pass the additional argument. |
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| .. code-block:: bash |
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| python examples/asr/asr_ctc/speech_to_text_ctc.py \ |
| ... |
| exp_manager.ema.enable=True \ |
| exp_manager.ema.decay=0.999 |
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| We also offer other helpful arguments. |
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| .. list-table:: |
| :header-rows: 1 |
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| * - Argument |
| - Description |
| * - `exp_manager.ema.validate_original_weights=True` |
| - Validate the original weights instead of EMA weights. |
| * - `exp_manager.ema.every_n_steps=2` |
| - Apply EMA every N steps instead of every step. |
| * - `exp_manager.ema.cpu_offload=True` |
| - Offload EMA weights to CPU. May introduce significant slow-downs. |
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