# from functools import partial from pathlib import Path import evaluate import random # import nltk import numpy as np import transformers import yaml from custom_datasets import get_one_dataset from custom_datasets.dialogue_collator import DialogueDataCollator from custom_datasets.qa_datasets import QA_SPECIAL_TOKENS from losses import CrossEntropyLoss, PolyLoss from models import freeze_top_n_layers, get_specific_model from sklearn.model_selection import train_test_split from torch.utils.data import ConcatDataset, Subset from torch.utils.data.sampler import Sampler class ClassSampler(Sampler): """Sampler which returns a fixed number of samples per class, per epoch""" def __init__(self, class_labels, class_sizes): self.class_labels = class_labels self.class_sizes = class_sizes def __iter__(self): out = [] for i, _class in enumerate(np.unique(self.class_labels)): class_idx = np.argwhere(self.class_labels == _class).flatten() sampled_idx = random.sample(list(class_idx), int(self.class_sizes[i])) out.extend(sampled_idx) random.shuffle(out) return iter(out) def __len__(self): return int(sum(self.class_sizes)) def build_train_sampler(training_conf, datasets): train_sizes = [len(x) for x in datasets] fractions = get_dataset_fractions(training_conf.datasets, train_sizes) dataset_size_per_epoch = [int(size * frac) for size, frac in zip(train_sizes, fractions)] dataset_labels = [[i] * d for i, d in zip(range(len(dataset_size_per_epoch)), dataset_size_per_epoch)] dataset_labels = [i for s in dataset_labels for i in s] return ClassSampler(dataset_labels, dataset_size_per_epoch) def get_tokenizer(conf): tokenizer = transformers.AutoTokenizer.from_pretrained(conf.model_name, cache_dir=conf.cache_dir) if "galactica" in conf.model_name: tokenizer.add_special_tokens({"pad_token": "", "eos_token": ""}) elif "GPT-JT" in conf.model_name: tokenizer.add_special_tokens({"pad_token": tokenizer.eos_token, "sep_token": "<|extratoken_100|>"}) elif "codegen" in conf.model_name: tokenizer.add_special_tokens({"pad_token": "<|endoftext|>", "sep_token": "<|endoftext|>"}) elif "pythia" in conf.model_name: tokenizer.add_special_tokens( {"pad_token": "<|padding|>", "sep_token": "<|endoftext|>", "eos_token": "<|endoftext|>"} ) additional_special_tokens = ( [] if "additional_special_tokens" not in tokenizer.special_tokens_map else tokenizer.special_tokens_map["additional_special_tokens"] ) additional_special_tokens = list(set(additional_special_tokens + list(QA_SPECIAL_TOKENS.values()))) tokenizer.add_special_tokens({"additional_special_tokens": additional_special_tokens}) return tokenizer def default_preprocess(eval_pred, ignote_negative_labels=True): preds, labels = eval_pred.predictions, eval_pred.label_ids if not ignote_negative_labels: return preds, labels mask = labels > 0 return preds[mask], labels[mask] # placeholder for now def preprocess_qa(eval_pred): return (eval_pred.predictions, eval_pred.label_ids) # def postprocess_summarization(preds, labels): # preds = [pred.strip() for pred in preds] # labels = [label.strip() for label in labels] # preds = ["\n".join(nltk.sent_tokenize(pred)) for pred in preds] # labels = ["\n".join(nltk.sent_tokenize(label)) for label in labels] # return preds, labels # def preprocess_summarization(eval_pred, tokenizer, ignore_pad_token_for_loss=True): # preds, labels = eval_pred # decoded_preds = tokenizer.batch_decode(preds, skip_special_tokens=True) # if ignore_pad_token_for_loss: # labels = np.where(labels != -100, labels, tokenizer.pad_token_id) # decoded_labels = tokenizer.batch_decode(labels, skip_special_tokens=True) # decoded_preds, decoded_labels = postprocess_summarization(decoded_preds, decoded_labels) # return decoded_preds, decoded_labels def get_metrics(conf, tokenizer): # the reason behind using a list is that we might want to extend the list of our # metrics in the future for more thorough evaluation metrics, preprocess_fns = [evaluate.load("accuracy")], [default_preprocess] # if any(dataset in QA_DATASETS for dataset in conf.datasets): # raise ValueError("TODO") # metrics.append(evaluate.load("squad_v2")) # preprocess_fns.append(preprocess_qa) # if any(dataset in SUMMARIZATION_DATASETS for dataset in conf.datasets): # raise ValueError("TODO") # metrics.append(evaluate.load("rouge")) # preprocess_fns.append( # partial(preprocess_summarization, tokenizer, ignore_pad_token_for_loss=conf.ignore_pad_token_for_loss) # ) return metrics, preprocess_fns def get_model(conf, tokenizer): model = get_specific_model(conf.model_name, conf.cache_dir, conf.quantization, conf.seq2seqmodel) if len(tokenizer) != model.get_input_embeddings().num_embeddings: assert not conf.freeze_layer, "Cannot change the number of embeddings if the model is frozen." model.resize_token_embeddings(len(tokenizer)) if conf.freeze_layer: model = freeze_top_n_layers(model, conf.freeze_layer) model_parameters = filter(lambda p: p.requires_grad, model.parameters()) params = sum([p.numel() for p in model_parameters]) print("Number of trainable parameters: {}M".format(int(params / 1e6))) return model def get_dataset_name_from_data_config(data_config): if isinstance(data_config, dict): return list(data_config.keys())[0] return data_config def get_dataset_fractions(conf, dataset_sizes): fractions = [] for i, data_config in enumerate(conf): dataset_name = get_dataset_name_from_data_config(data_config) if isinstance(data_config, dict): if "fraction" in data_config[dataset_name]: fractions.append(min(1, data_config[dataset_name]["fraction"])) elif "size" in data_config[dataset_name]: if data_config[dataset_name]["size"] > dataset_sizes[i]: raise ValueError(f"Please specify a size smaller than number of examples ({dataset_sizes[i]})") fractions.append(data_config[dataset_name]["size"] / dataset_sizes[i]) else: raise ValueError("Please specify either fraction or size in config.yaml") else: fractions.append(1) return fractions def get_dataset(conf, tokenizer): train_datasets, evals = [], {} for data_config in conf.datasets: dataset_name = get_dataset_name_from_data_config(data_config) train, val = get_one_dataset(conf, dataset_name) train_datasets.append(train) evals[dataset_name] = Subset(val, list(range(min(len(val), conf.eval_size)))) if conf.eval_size else val train = ConcatDataset(train_datasets) collate_fn = DialogueDataCollator(tokenizer, max_length=conf.max_length) return train, evals, collate_fn def get_loss(loss, poly_eps): if loss == "CrossEntropyLoss": return CrossEntropyLoss() elif loss == "Poly": return PolyLoss(epsilon=poly_eps) else: raise ValueError(f"Loss {loss} not supported") def read_yamls(dir): conf = {} no_conf = True for config_file in Path(dir).glob("**/*.yaml"): no_conf = False with config_file.open("r") as f: conf.update(yaml.safe_load(f)) if no_conf: print(f"WARNING: No yaml files found in {dir}") return conf def train_val_dataset(dataset, val_split=0.2): train_idx, val_idx = train_test_split( list(range(len(dataset))), test_size=val_split, random_state=666, shuffle=True ) return Subset(dataset, train_idx), Subset(dataset, val_idx)