import json import pandas as pd import numpy as np from transformers import AutoTokenizer from tqdm import tqdm DATA_PATH = "/home/DataProcess/data/train0_train1_merged.json" MODEL_PATH = "/home/DataProcess/model/Qwen3-4B" def main(): tokenizer = AutoTokenizer.from_pretrained(MODEL_PATH, trust_remote_code=True) with open(DATA_PATH, 'r', encoding='utf-8') as f: data = json.load(f) stats_list = [] for i, item in tqdm(enumerate(data), total=len(data), desc="Processing"): history = item.get("messages", []) response_list = item.get("chosen", []) if not response_list: response_list = item.get("rejected", []) full_conversation = history + response_list # num_msgs: 列表里的字典总数 (例如: System + User + Assistant + User + Assistant = 5) num_msgs = len(full_conversation) # turns: 估算的对话轮数 (通常一问一答算一轮,或者和前一条算一轮) turns = (num_msgs + 1) // 2 # tokenize=False 获取拼接后的字符串 text = tokenizer.apply_chat_template(full_conversation, tokenize=False, add_generation_prompt=False) # 编码计算 token id 数量 token_ids = tokenizer.encode(text, add_special_tokens=False) num_tokens = len(token_ids) stats_list.append({ "index": i, "num_messages": num_msgs, # 消息总条数 "turns": turns, # 对话轮数 "tokens": num_tokens # Token 数量 }) df = pd.DataFrame(stats_list) print(f"数据总量: {len(df)} 条") print("\n--- Tokens (长度) 统计 ---") print(f"平均 Tokens: {df['tokens'].mean():.2f}") print(f"最大 Tokens: {df['tokens'].max()}") print(f"最小 Tokens: {df['tokens'].min()}") print(f"Token 中位数: {df['tokens'].median()}") print(f"Token 95%分位: {df['tokens'].quantile(0.95):.2f}") print("\n--- Turns (消息数) 统计 ---") print(f"平均消息数 (Messages): {df['num_messages'].mean():.2f}") print(f"最大消息数: {df['num_messages'].max()}") print(f"平均轮数 (Turns): {df['turns'].mean():.2f}") # Token 分布概览 print("\n--- Token 长度分布 (区间占比) ---") token_bins = [0, 512, 1024, 2048, 4096, 8192, 100000] token_labels = ['0-512', '512-1024', '1024-2048', '2048-4096', '4096-8192', '8192+'] df['token_group'] = pd.cut(df['tokens'], bins=token_bins, labels=token_labels) print(df['token_group'].value_counts(normalize=True).sort_index() * 100) # Turns 分布概览 (新增部分) print("\n--- Turns 对话轮数分布 (区间占比) ---") # 细致划分:1轮, 2轮, 3轮, 4轮, 5轮, 6-10轮, 11-20轮, 20轮以上 turn_bins = [0, 1, 2, 3, 4, 5, 10, 20, 1000] turn_labels = ['1轮 (Single)', '2轮', '3轮', '4轮', '5轮', '6-10轮', '11-20轮', '20轮+'] df['turn_group'] = pd.cut(df['turns'], bins=turn_bins, labels=turn_labels) print(df['turn_group'].value_counts(normalize=True).sort_index() * 100) # 检查是否有超长数据 (超过2048) over_len = df[df['tokens'] > 2048] if not over_len.empty: print(f"\n 注意: 有 {len(over_len)} 条数据 Token 数超过 2048") else: print("\n 所有数据 Token 数均在 2048 以内") if __name__ == "__main__": main()