import random import tqdm import os import re import sys import torch import numpy as np import jsonlines import argparse import json from pathlib import Path from datasets import load_from_disk,load_dataset from transformers import AutoModelForCausalLM, AutoTokenizer from transformers.generation import GenerationConfig ''' python eval/evaluate_chat_gsm8k.py [--use-fewshot] ''' INVALID_ANS = "[invalid]" DEVICE = "cuda:0" def doc_to_text(doc, use_fewshot): if use_fewshot: context = "Question: Angelo and Melanie want to plan how many hours over the next week they should study together for their test next week. They have 2 chapters of their textbook to study and 4 worksheets to memorize. They figure out that they should dedicate 3 hours to each chapter of their textbook and 1.5 hours for each worksheet. If they plan to study no more than 4 hours each day, how many days should they plan to study total over the next week if they take a 10-minute break every hour, include 3 10-minute snack breaks each day, and 30 minutes for lunch each day?\nLet's think step by step\n" \ "Angelo and Melanie think they should dedicate 3 hours to each of the 2 chapters, 3 hours x 2 chapters = 6 hours total.\nFor the worksheets they plan to dedicate 1.5 hours for each worksheet, 1.5 hours x 4 worksheets = 6 hours total.\nAngelo and Melanie need to start with planning 12 hours to study, at 4 hours a day, 12 / 4 = 3 days.\nHowever, they need to include time for breaks and lunch. Every hour they want to include a 10-minute break, so 12 total hours x 10 minutes = 120 extra minutes for breaks.\nThey also want to include 3 10-minute snack breaks, 3 x 10 minutes = 30 minutes.\nAnd they want to include 30 minutes for lunch each day, so 120 minutes for breaks + 30 minutes for snack breaks + 30 minutes for lunch = 180 minutes, or 180 / 60 minutes per hour = 3 extra hours.\nSo Angelo and Melanie want to plan 12 hours to study + 3 hours of breaks = 15 hours total.\nThey want to study no more than 4 hours each day, 15 hours / 4 hours each day = 3.75\nThey will need to plan to study 4 days to allow for all the time they need.\nThe answer is 4\n\n" \ "Question: Mark's basketball team scores 25 2 pointers, 8 3 pointers and 10 free throws. Their opponents score double the 2 pointers but half the 3 pointers and free throws. What's the total number of points scored by both teams added together?\nLet's think step by step\n" \ "Mark's team scores 25 2 pointers, meaning they scored 25*2= 50 points in 2 pointers.\nHis team also scores 6 3 pointers, meaning they scored 8*3= 24 points in 3 pointers\nThey scored 10 free throws, and free throws count as one point so they scored 10*1=10 points in free throws.\nAll together his team scored 50+24+10= 84 points\nMark's opponents scored double his team's number of 2 pointers, meaning they scored 50*2=100 points in 2 pointers.\nHis opponents scored half his team's number of 3 pointers, meaning they scored 24/2= 12 points in 3 pointers.\nThey also scored half Mark's team's points in free throws, meaning they scored 10/2=5 points in free throws.\nAll together Mark's opponents scored 100+12+5=117 points\nThe total score for the game is both team's scores added together, so it is 84+117=201 points\nThe answer is 201\n\n" \ "Question: Bella has two times as many marbles as frisbees. She also has 20 more frisbees than deck cards. If she buys 2/5 times more of each item, what would be the total number of the items she will have if she currently has 60 marbles?\nLet's think step by step\n" \ "When Bella buys 2/5 times more marbles, she'll have increased the number of marbles by 2/5*60 = 24\nThe total number of marbles she'll have is 60+24 = 84\nIf Bella currently has 60 marbles, and she has two times as many marbles as frisbees, she has 60/2 = 30 frisbees.\nIf Bella buys 2/5 times more frisbees, she'll have 2/5*30 = 12 more frisbees.\nThe total number of frisbees she'll have will increase to 30+12 = 42\nBella also has 20 more frisbees than deck cards, meaning she has 30-20 = 10 deck cards\nIf she buys 2/5 times more deck cards, she'll have 2/5*10 = 4 more deck cards.\nThe total number of deck cards she'll have is 10+4 = 14\nTogether, Bella will have a total of 14+42+84 = 140 items\nThe answer is 140\n\n" \ "Question: A group of 4 fruit baskets contains 9 apples, 15 oranges, and 14 bananas in the first three baskets and 2 less of each fruit in the fourth basket. How many fruits are there?\nLet's think step by step\n" \ "For the first three baskets, the number of apples and oranges in one basket is 9+15=24\nIn total, together with bananas, the number of fruits in one basket is 24+14=38 for the first three baskets.\nSince there are three baskets each having 38 fruits, there are 3*38=114 fruits in the first three baskets.\nThe number of apples in the fourth basket is 9-2=7\nThere are also 15-2=13 oranges in the fourth basket\nThe combined number of oranges and apples in the fourth basket is 13+7=20\nThe fourth basket also contains 14-2=12 bananas.\nIn total, the fourth basket has 20+12=32 fruits.\nThe four baskets together have 32+114=146 fruits.\nThe answer is 146\n\n" \ f"Question: {doc['question']}\nLet's think step by step" else: context = doc['question'] return context def decode(tokens_list, tokenizer, raw_text_len): sents = [] # print(len(tokens_list)) for tokens in tokens_list: tokens = tokens.cpu().numpy().tolist() sent = tokenizer.tokenizer.decode( tokens[raw_text_len:]) sent = sent.split('<|endoftext|>')[0] sent = sent.split('\n\n\n')[0] sent = sent.split("\n\n")[0] sent = sent.split("Question:")[0] sents.append(sent) return sents def generate_sample(model, tokenizer, question): response, history = model.chat( tokenizer, question, history=None, ) print(question) print("-------------") print(response) print("=============") return response def extract_answer_hf(completion): def _get_last_digit(s): _PAT_LAST_DIGIT = re.compile(r"(?<=(\s|[\$%#{]))([+-])?(?=(\S))(0|([1-9](\d*|\d{0,2}(,\d{3})*)))?(\.\d*[1-9])?(?=(\s|[.,}]|$))") match = list(_PAT_LAST_DIGIT.finditer(s)) if match: last_digit = match[-1].group().replace(",", "").replace("+", "") # print(f"The last digit in {s} is {last_digit}") else: last_digit = None print(f"No digits found in {s!r}") return last_digit job_gen = completion.strip('.').replace('\n', '\\n') last_digit = _get_last_digit(job_gen) if last_digit is not None: return eval(last_digit) else: return INVALID_ANS def extract_answer(completion): try: last_number = re.findall(r'\d+', completion)[-1] return eval(last_number) except: return INVALID_ANS def is_correct( completion, answer): gold = extract_answer(answer) assert gold != INVALID_ANS, "No ground truth answer found in the document." return extract_answer(completion) == gold if __name__ == '__main__': parser = argparse.ArgumentParser(description='Test HF checkpoint.') parser.add_argument("-c", "--checkpoint-path", type=Path, help="Checkpoint path", default="Qwen/Qwen-7B-Chat") parser.add_argument("-f","--sample-input-file", type=str, default=None) parser.add_argument("-o","--sample-output-file", type=str, default="gsm8k_res.jsonl") parser.add_argument("--use-fewshot", action="store_true") args = parser.parse_args() if args.sample_input_file is not None: dataset = load_from_disk(args.sample_input_file)# or: else: dataset = load_dataset("gsm8k", "main") print('Loading tokenizer ...') tokenizer = AutoTokenizer.from_pretrained(args.checkpoint_path, trust_remote_code=True, bf16=True, use_flash_attn=True) print('Loading model ...') model = AutoModelForCausalLM.from_pretrained(args.checkpoint_path, device_map="auto", trust_remote_code=True).eval() model.generation_config = GenerationConfig.from_pretrained(args.checkpoint_path, trust_remote_code=True) model.generation_config.do_sample = False # use greedy decoding test = dataset["test"] f_output = open(args.sample_output_file, 'w', encoding='utf-8') tot_length = test.num_rows acc_res = [] for doc in tqdm.tqdm(test): context = doc_to_text(doc, args.use_fewshot) print(context) completion = generate_sample(model, tokenizer, context) answer = doc["answer"] acc = is_correct(completion, answer) doc["completion"] = completion doc["acc"] = acc f_output.write(json.dumps(doc, ensure_ascii=False) + "\n") f_output.flush() acc_res.append(acc) f_output.close() print("4-shot Acc: " if args.use_fewshot else "Zero-shot Acc", np.mean(acc_res))