zhifu gao
2024-04-23 2ac38adbe5f4e1374a079e032ed4b504351a207c
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import os
import json
import torch
import logging
 
import librosa
import random
import torch.distributed as dist
 
from funasr.register import tables
 
 
# @tables.register("index_ds_classes", "IndexDSJsonlRankSplit")
# class IndexDSJsonlRankSplit(torch.utils.data.Dataset):
#
#     def __init__(self, path):
#         super().__init__()
#
#         contents = []
#         with open(path, encoding='utf-8') as fin:
#             for line in fin:
#                 data = json.loads(line.strip())
#                 if "text" in data:  # for sft
#                     self.contents.append(data['text'])
#                 if "source" in data:  # for speech lab pretrain
#                     prompt = data["prompt"]
#                     source = data["source"]
#                     target = data["target"]
#                     source_len = data["source_len"]
#                     target_len = data["target_len"]
#
#                     contents.append({"source": source,
#                                      "prompt": prompt,
#                                      "target": target,
#                                      "source_len": source_len,
#                                      "target_len": target_len,
#                                      }
#                                     )
#
#         self.contents = []
#         total_num = len(contents)
#         try:
#             rank = dist.get_rank()
#             world_size = dist.get_world_size()
#         except:
#             rank = 0
#             world_size = 1
#             logging.info("distributed is not initialized, only single shard")
#         num_per_rank = total_num // world_size
#
#         # rank = 0
#         # import ipdb; ipdb.set_trace()
#         self.contents = contents[rank * num_per_rank:(rank + 1) * num_per_rank]
#
#         logging.info("in rank: {}, num of samplers: {}, total_num of samplers across ranks: {}".format(rank, len(self.contents), len(contents)))
#
#     def __len__(self):
#         return len(self.contents)
#
#     def __getitem__(self, index):
#         try:
#             data = self.contents[index]
#         except:
#             print(index)
#         return data
#
#     def get_source_len(self, data_dict):
#         return data_dict["source_len"]
#
#     def get_target_len(self, data_dict):
#
#         return data_dict["target_len"] if "target_len" in data_dict else 0
 
@tables.register("index_ds_classes", "IndexDSJsonl")
@tables.register("index_ds_classes", "IndexDSJsonlRankFull")
@tables.register("index_ds_classes", "IndexDSJsonlRankSplit")
class IndexDSJsonlRankFull(torch.utils.data.Dataset):
    
    def __init__(self, path: str, **kwargs):
        super().__init__()
        self.max_source_length = kwargs.get("max_source_length", 2048)
        self.min_source_length = kwargs.get("min_source_length", 0)
        self.max_target_length = kwargs.get("max_target_length", 2048)
        self.min_target_length = kwargs.get("min_target_length", 0)
 
        is_training = kwargs.get("is_training", True)
        if not (path.endswith(".jsonl") or path.endswith(".json")):
            # jsonl list file
            data_split_num = kwargs.get("data_split_num", 1)
            data_split_i = kwargs.get("data_split_i", 0)
            
            if not is_training:
                data_split_num = 1
                data_split_i = 0
            with open(path, encoding='utf-8') as fin:
                file_list_all = fin.readlines()
    
                num_per_slice = len(file_list_all) // data_split_num
                file_list = file_list_all[data_split_i * num_per_slice:(data_split_i + 1) * num_per_slice]
                logging.info(
                    f"is_training: {is_training}, data_split_num: {data_split_num}, data_split_i: {data_split_i}, \nfile_list: {file_list}, \nfile_list_all: {file_list_all}")
        
        else:
            file_list = [path]
            
 
        total_num = len(file_list)
        try:
            rank = dist.get_rank()
            world_size = dist.get_world_size()
        except:
            rank = 0
            world_size = 1
            logging.info("distributed is not initialized, only single shard")
        
        if not kwargs.get("rank_split", False):
            logging.info(f"Warning, rank_split disenabled, batch and shuffle data in global")
            rank = 0
            world_size = 1
        
        num_per_rank = total_num // world_size
        if num_per_rank * world_size < total_num:
            logging.info(f"Warning, jsonl file:{total_num} could not be divided by world_size: {world_size}, {path}")
            total_num_needed = num_per_rank * world_size
 
            extra_num = total_num_needed - total_num
            file_list_tmp = random.choices(file_list, k=extra_num)
            file_list += file_list_tmp
            logging.info(f"Warning, after random choices: {file_list}")
 
        file_list_rank = file_list[rank * num_per_rank:(rank + 1) * num_per_rank]
 
        logging.info(
            f"is_training: {is_training}, file_list_rank: {file_list_rank}")
 
        contents = []
        for file_json in file_list_rank:
            with open(file_json.strip(), encoding='utf-8') as fin:
                for line in fin:
                    data = json.loads(line.strip())
                    if "text" in data:  # for sft
                        contents.append(data['text'])
                    if "source" in data:  # for speech lab pretrain
                        prompt = data.get("prompt", "<ASR>")
                        source = data["source"].replace("/cpfs01", "/cpfs_speech/data") # only use in alibaba gpu group: .replace("/cpfs01", "/cpfs_speech/data")
                        target = data["target"]
                        source_len = data.get("source_len", 1)
                        target_len = data.get("target_len", 0)
                        if "aishell" in source:
                            target = target.replace(" ", "")
                        if source_len < self.min_source_length or source_len > self.max_source_length:
                            continue
                        if target_len < self.min_target_length or target_len > self.max_target_length:
                            continue
                        contents_i = {"source": source,
                                     "prompt": prompt,
                                     "target": target,
                                     "source_len": source_len,
                                     "target_len": target_len,
                                     }
                        text_language = data.get("text_language", None)
                        if text_language is not None:
                            contents_i["text_language"] = text_language
                        # audio_language = data.get("audio_language", None)
                        # if audio_language is not None:
                        #     contents_i["audio_language"] = audio_language
                        contents.append(contents_i)
 
        self.contents = contents
        
        logging.info(
            "total_num of samplers: {}, {}".format(len(self.contents), path))
    
    def __len__(self):
        return len(self.contents)
    
    def __getitem__(self, index):
        
        data = self.contents[index]
 
        return data
    
    def get_source_len(self, data_dict):
        return data_dict.get("source_len", 1)
    
    def get_target_len(self, data_dict):
        
        return data_dict.get("target_len", 0)
 
# @tables.register("index_ds_classes", "IndexDSJsonlRankSplit")
# class IndexDSJsonlRankSplit(torch.utils.data.Dataset):
#     def __init__(self, path: str, **kwargs):
#         super().__init__()
#         logging.info("building IndexDS")
#         self.max_source_length = kwargs.get("max_source_length", 2048)
#         self.min_source_length = kwargs.get("min_source_length", 0)
#         self.max_target_length = kwargs.get("max_target_length", 2048)
#         self.min_target_length = kwargs.get("min_target_length", 0)
#         data_split_num = kwargs.get("data_split_num", 1)
#         data_split_i = kwargs.get("data_split_i", 0)
#         if not kwargs.get("is_training", True):
#             data_split_num = 1
#             data_split_i = 0
#         with open(path, encoding='utf-8') as fin:
#             file_list_all = fin.readlines()
#             num_per_slice = len(file_list_all) // data_split_num
#             file_list = file_list_all[data_split_i * num_per_slice:(data_split_i + 1) * num_per_slice]
#             logging.info(f"data_split_num: {data_split_num}, data_split_i: {data_split_i}, file_list: {file_list}, file_list_all: {file_list_all}")
#         total_num = len(file_list)
#         try:
#             rank = dist.get_rank()
#             world_size = dist.get_world_size()
#         except:
#             rank = 0
#             world_size = 1
#             logging.info("distributed is not initialized, only single shard")
#         num_per_rank = total_num // world_size
#         if num_per_rank * world_size < total_num:
#             logging.info(f"Warning, jsonl file:{total_num} could not be divided by world_size: {world_size}, {path}")
#         file_list_rank = file_list[rank * num_per_rank:(rank + 1) * num_per_rank]
#         contents = []
#         for file_json in file_list_rank:
#             with open(file_json.strip(), encoding='utf-8') as fin:
#                 for line in fin:
#                     data = json.loads(line.strip())
#                     if "text" in data:  # for sft
#                         contents.append(data['text'])
#                     if "source" in data:  # for speech lab pretrain
#                         prompt = data.get("prompt", "<ASR>")
#                         source = data["source"].replace("/cpfs01", "/cpfs_speech/data")
#                         target = data["target"]
#                         source_len = data.get("source_len", 1)
#                         target_len = data.get("target_len", 0)
#                         if source_len < self.min_source_length or source_len > self.max_source_length:
#                             continue
#                         if target_len < self.min_target_length or target_len > self.max_target_length:
#                             continue
#                         contents_i = {"source": source,
#                                       "prompt": prompt,
#                                       "target": target,
#                                       "source_len": source_len,
#                                       "target_len": target_len,
#                                       }
#                         text_language = data.get("text_language", None)
#                         if text_language is not None:
#                             contents_i["text_language"] = text_language
#                         # audio_language = data.get("audio_language", None)
#                         # if audio_language is not None:
#                         #     contents_i["audio_language"] = audio_language
#                         contents.append(contents_i)
#         self.contents = contents
#         logging.info(f"total_num: {len(self.contents)} of samplers in ranks: {rank}, file_list_rank: {file_list_rank}")
#     def __len__(self):
#         return len(self.contents)
#     def __getitem__(self, index):
#         try:
#             data = self.contents[index]
#         except:
#             print(index)
#         return data
#     def get_source_len(self, data_dict):
#         return data_dict.get("source_len", 1)
#     def get_target_len(self, data_dict):
#         return data_dict.get("target_len", 0)