import argparse from functools import partial from itertools import chain from typing import Dict, Tuple import datasets import pytorch_lightning as pl import torch from torch.utils.data import ConcatDataset, DataLoader, Dataset, random_split, Subset from lit_module import LitModule from tokenization_qwen import QWenTokenizer from logger import TBLogger from special_dataset import SpecialDataset from meaning_dataset import MeaningDataset, BatchGroupMeaningDataloader from wit.configuration import ModelConfig pretrain_model_name = None # "qwen/Qwen-1_8B-Chat" learning_rate = 0.0001 use_tril_attention_mask = None precision = "32-true" # "precision:bf16-mixed,16-mixed,32-true" train_batch_size = 1 val_batch_size = 2 num_proc = 8 max_epochs = 10 strategy = "auto" resume_from_ckpt_path = None seed = 42 vocab_size = 16 if __name__ == "__main__": torch.manual_seed(seed) config = ModelConfig() config.vocab_size = vocab_size config.hidden_size = 1024 # 128 1024 2048 32 config.num_hidden_layers = 1 # 6 12 24 3 config.num_attention_heads = 16 # 8 8 16 lit_module = LitModule(pretrain_model_name, learning_rate, config, use_tril_attention_mask) tokenizer = QWenTokenizer("./wit_b64.tiktoken", "./wit_char.tiktoken") level_ratio = 2 start = vocab_size * level_ratio * level_ratio end = start * level_ratio size = end * level_ratio size = 1024 raw_dataset = MeaningDataset(start, end, size, vocab_size, level_ratio) train_dataset, val_dataset = raw_dataset.Split(0.95) train_dataloader = BatchGroupMeaningDataloader(train_dataset, train_batch_size) val_dataloader = BatchGroupMeaningDataloader(val_dataset, val_batch_size) it = iter(val_dataloader) batch = next(it) b, l = lit_module.llm(**batch, return_dict=True) print("b ") print(b.detach().cpu().numpy()) # batch["input_ids"] = batch["input_ids"][0:1, :] batch["input_ids"] = batch["input_ids"][1:2, :] batch["labels"] = batch["labels"][1:2, :] s, l = lit_module.llm(**batch, return_dict=True) print("s ") print(s.detach().cpu().numpy()) print("data samples:")