| from typing import Optional |
|
|
| import pandas as pd |
| import streamlit as st |
| from datasets import Dataset |
|
|
| from src.data import encode_dataset, get_collator, get_data, predict |
| from src.model import get_encoder, get_model, get_tokenizer |
| from src.subpages import Context |
| from src.utils import align_sample, device, explode_df |
|
|
| _TOKENIZER_NAME = ( |
| "xlm-roberta-base", |
| "gagan3012/bert-tiny-finetuned-ner", |
| "distilbert-base-german-cased", |
| )[0] |
|
|
|
|
| def _load_models_and_tokenizer( |
| encoder_model_name: str, |
| model_name: str, |
| tokenizer_name: Optional[str], |
| device: str = "cpu", |
| ): |
| sentence_encoder = get_encoder(encoder_model_name, device=device) |
| tokenizer = get_tokenizer(tokenizer_name if tokenizer_name else model_name) |
| labels = "O B-COMMA".split() if "comma" in model_name else None |
| model = get_model(model_name, labels=labels) |
| return sentence_encoder, model, tokenizer |
|
|
|
|
| @st.cache(allow_output_mutation=True) |
| def load_context( |
| encoder_model_name: str, |
| model_name: str, |
| ds_name: str, |
| ds_config_name: str, |
| ds_split_name: str, |
| split_sample_size: int, |
| randomize_sample: bool, |
| **kw_args, |
| ) -> Context: |
| """Utility method loading (almost) everything we need for the application. |
| This exists just because we want to cache the results of this function. |
| |
| Args: |
| encoder_model_name (str): Name of the sentence encoder to load. |
| model_name (str): Name of the NER model to load. |
| ds_name (str): Dataset name or path. |
| ds_config_name (str): Dataset config name. |
| ds_split_name (str): Dataset split name. |
| split_sample_size (int): Number of examples to load from the split. |
| |
| Returns: |
| Context: An object containing everything we need for the application. |
| """ |
|
|
| sentence_encoder, model, tokenizer = _load_models_and_tokenizer( |
| encoder_model_name=encoder_model_name, |
| model_name=model_name, |
| tokenizer_name=_TOKENIZER_NAME if "comma" in model_name else None, |
| device=str(device), |
| ) |
| collator = get_collator(tokenizer) |
|
|
| |
| split: Dataset = get_data( |
| ds_name, ds_config_name, ds_split_name, split_sample_size, randomize_sample |
| ) |
| tags = split.features["ner_tags"].feature |
| split_encoded, word_ids, ids = encode_dataset(split, tokenizer) |
|
|
| |
| df = predict(split_encoded, model, tokenizer, collator, tags) |
| df["word_ids"] = word_ids |
| df["ids"] = ids |
|
|
| |
| df_tokens = explode_df(df) |
| df_tokens_cleaned = df_tokens.query("labels != 'IGN'") |
| df_merged = pd.DataFrame(df.apply(align_sample, axis=1).tolist()) |
| df_tokens_merged = explode_df(df_merged) |
|
|
| return Context( |
| **{ |
| "model": model, |
| "tokenizer": tokenizer, |
| "sentence_encoder": sentence_encoder, |
| "df": df, |
| "df_tokens": df_tokens, |
| "df_tokens_cleaned": df_tokens_cleaned, |
| "df_tokens_merged": df_tokens_merged, |
| "tags": tags, |
| "labels": tags.names, |
| "split_sample_size": split_sample_size, |
| "ds_name": ds_name, |
| "ds_config_name": ds_config_name, |
| "ds_split_name": ds_split_name, |
| "split": split, |
| } |
| ) |
|
|