mats-sql-bundle / code /evaluate_end2end.py
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Push code: scripts, slurm sbatch, recipes, utils (v3 + selector series)
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import json
import os
from tqdm import tqdm
from data_processing.planner import Planner, FixAgent, SelectionAgent, SelectionAgentWithSchema
import argparse
from multiprocessing import Pool
import requests
import re
from utils.db_utils import check_sql_executability, get_db_schema_sequence
from validator_data.validator import ValidatorSelect, ValidatorJOIN, ValidatorOrder, ValidatorCondition, _make_str_response, _execute_sql
from copy import deepcopy
from multiprocessing import Process, Manager
from concurrent.futures import ThreadPoolExecutor
import torch
import numpy as np
def extract_sql_in_code_block(pred_sql_text):
sql_block_match = re.search(r"```(.+?)```", pred_sql_text, re.DOTALL)
if sql_block_match:
sql_query = sql_block_match.group(1).strip()
if sql_query.startswith("sql"):
sql_query = sql_query.replace("sql", "")
return sql_query
else:
return pred_sql_text
class PostProcessing:
@staticmethod
def post_process_sql(sql, schema):
table_names = [table['table_name'] for table in schema['schema_items']]
# replace this pattern table_name.table_name.column_name with table_name.column_name
for table_name in table_names:
sql = sql.replace(f"{table_name}.{table_name}.", f"{table_name}.")
# sql = sql.lower()
sql = re.sub("\s+", " ", sql)
return sql
class MultiAgentSystem():
def __init__(self, get_answer_func):
self.planner = Planner(prompt_file='data_processing/prompts/zero_shot_prompt_planner.txt',
endpoint_type='vllm')
if args.model_name != 'codes':
# self.planner.prompt_template = """{schema}
# Question: {question}
# External knowledge: {evidence}
# Planning:
# <|reserved_special_token_247|>"""
self.planner.prompt_template = USER_TOKEN + """
{schema}
Question: {question}
External knowledge: {evidence}
Planning:
""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN
if args.model_name == 'nl2sql':
self.planner.prompt_template = """{schema}
Question: {question}{evidence}
<|eot_id|>"""
self.validator_select = ValidatorSelect(endpoint_type='vllm')
self.validator_condition = ValidatorCondition(endpoint_type='vllm')
self.validator_join = ValidatorJOIN(endpoint_type='vllm')
self.validator_order = ValidatorOrder(endpoint_type='vllm')
self.validator_select.prompt_template = USER_TOKEN + """
Generate feedbacks to fix the following SQL query:
{schema}
Question: {question}
External knowledge: {evidence}
SQL query: {sql_query}
Execution response:
{execution_response}
Feedback:""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN + """
SELECT.
1. Based on the SQL query, the query selects: {select_columns}"""
'''
self.validator_condition.prompt_template = USER_TOKEN + """Generate feedbacks to fix the following SQL query:
{schema}
Question: {question}
External knowledge: {evidence}
SQL query: {sql_query}
Execution response:
{execution_response}
Write feedback, include Conclude (incorrect or correct) at the end of your answer.
If there is a syntax error, write "Conclude: incorrect", then write the reason and guide to fix it.
Some error and how to fix:
- no such column, guide to add need tables in the JOIN.
- no such table, need write a correct table name.""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN + """
CONDITION."""'''
self.validator_condition.prompt_template = USER_TOKEN + """
Generate feedbacks to fix the following SQL query:
{schema}
Question: {question}
External knowledge: {evidence}
SQL query: {sql_query}
Execution response:
{execution_response}
Feedback:""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN + """
CONDITION.
"""
self.validator_join.prompt_template = USER_TOKEN + """
Generate feedbacks to fix the following SQL query:
{schema}
Question: {question}
External knowledge: {evidence}
SQL query: {sql_query}
Execution response:
{execution_response}
Feedback:""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN + """
JOIN.
- The SQL query uses tables {used_tables}, joining them on foreign keys {used_fks}."""
self.validator_order.prompt_no_none = USER_TOKEN + """
Generate feedbacks to fix the following SQL query:
{schema}
Question: {question}
External knowledge: {evidence}
SQL query: {sql_query}
Execution response:
{execution_response}
Feedback:""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN + """
ORDER BY.
- The SQL query uses ```{order_by_clause}```.
- Based on the question, the query should use"""
self.validator_order.prompt_has_none = USER_TOKEN + """
Generate feedbacks to fix the following SQL query:
{schema}
Question: {question}
External knowledge: {evidence}
SQL query: {sql_query}
Execution response:
{execution_response}
Feedback:""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN + """
ORDER BY.
- The SQL query uses ```{order_by_clause}```.
- However, the column ```{order_by_column}``` has None values, so the SQL query need to add condition ```{order_by_column} IS NOT NULL``` to filter out None values.
- Conclude: incorrect."""
self.fixed_sql_agent = FixAgent(USER_TOKEN + """
{schema}
Question: {question}
External knowledge: {evidence}
Generated SQL query: {sql_query}
Execution response:
{execution_response}
Feedback for the SQL query:
{feedback_select}
{feedback_condition}
{feedback_join}
FIXED SQL:""" + EOS_TOKEN + "\n" + ASSISTANT_TOKEN
)
self.selection_agent = SelectionAgent(endpoint_type='vllm')
self.planner.get_answer = get_answer_planner
self.validator_select.get_answer = lambda x: get_answer_validator('validator-select', x)
self.validator_condition.get_answer = lambda x: get_answer_validator('validator-condition', x)
self.validator_join.get_answer = lambda x: get_answer_validator('validator-join', x)
self.validator_order.get_answer = lambda x: get_answer_validator('validator-order', x)
self.fixed_sql_agent.get_answer = get_answer_fixed
self.selection_agent.get_answer = get_answer_selection
def _extract_sql_in_plan(self, plan):
pred_sql_match = re.search(r'Final SQL query:\s*```(.*?)```', plan, re.DOTALL)
if pred_sql_match is None:
if plan.strip().startswith('SELECT'):
pred_sql = plan.strip()
else:
# find ``` ``` block
sql_block_match = re.search(r"```(.+?)```", plan, re.DOTALL)
if sql_block_match:
pred_sql = sql_block_match.group(1).strip()
else:
return None
else:
pred_sql = pred_sql_match.group(1).replace("sql", "").replace("```", "").strip()
return pred_sql
def generate_plans(self, sample):
prompt_planner, plans = self.planner.generate(sample)
plan_with_sqls = []
added_sqls = set()
for plan in plans:
pred_sql = self._extract_sql_in_plan(plan)
if pred_sql is None:
continue
pred_sql = PostProcessing.post_process_sql(pred_sql, sample['schema'])
#print(f"pred_sql: {pred_sql}")
#print(f"new pred_sql: {pred_sql}")
if pred_sql not in added_sqls:
added_sqls.add(pred_sql)
plan_with_sqls.append((plan, pred_sql))
good_plans = []
good_plan_sqls = []
for plan, pred_sql in plan_with_sqls:
# if args.mode == 'test':
# execution_error = check_sql_executability(pred_sql, sample["db_path"])
# if execution_error is not None:
# continue
# good_plans.append(plan)
# good_plan_sqls.append(pred_sql)
# break
# else:
good_plans.append(plan)
good_plan_sqls.append(pred_sql)
if len(good_plans) == 0:
if len(plan_with_sqls) > 0:
good_plans = [plan_with_sqls[0][0]]
good_plan_sqls = [plan_with_sqls[0][1]]
else:
good_plans = [plans[0]]
good_plan_sqls = ["NO SQL"]
sample['prompt_planner'] = [prompt_planner] * len(good_plans)
sample['planners'] = good_plans
sample['predict_sqls'] = good_plan_sqls
# print(re.sub("\s+", " ", good_plan_sqls[0]))
return sample
def generate_feedbacks(self, sample):
# key to extend to the same length
prompt_planner = sample['prompt_planner']
planners = sample['planners']
predict_sqls = sample['predict_sqls']
sample['prompt_planner'] = []
sample['planners'] = []
sample['predict_sqls'] = []
sample['prompt_feedback_select'] = []
sample['prompt_feedback_condition'] = []
sample['prompt_feedback_join'] = []
sample['prompt_feedback_order'] = []
sample['feedback_selects'] = []
sample['feedback_conditions'] = []
sample['feedback_joins'] = []
sample['feedback_orders'] = []
sample['pred_results'] = []
sample['first_try_has_errors'] = []
for prompt_planner, planner, plan_sql in zip(prompt_planner, planners, predict_sqls):
copy_sample = deepcopy(sample)
copy_sample['predict_sql'] = plan_sql.replace('\n', ' ')
# First, get execution_result by executing the SQL query
execution_result = _execute_sql("./" + sample['db_path'], copy_sample['predict_sql'])
# Now, call validators in parallel
with ThreadPoolExecutor(max_workers=4) as executor:
futures = []
# Add tasks conditionally based on the skip flags
if not args.skip_validator_select:
futures.append(executor.submit(self.validator_select.validate, copy_sample, execution_result=execution_result))
else:
futures.append(executor.submit(lambda: ("", "", None)))
if not args.skip_validator_condition:
futures.append(executor.submit(self.validator_condition.validate, copy_sample, execution_result=execution_result))
else:
futures.append(executor.submit(lambda: ("", "", None)))
if not args.skip_validator_join:
futures.append(executor.submit(self.validator_join.validate, copy_sample, execution_result=execution_result))
else:
futures.append(executor.submit(lambda: ("", "", None)))
if not args.skip_validator_order:
futures.append(executor.submit(self.validator_order.validate, copy_sample, execution_result=execution_result))
else:
futures.append(executor.submit(lambda: ("", "", None)))
# Collect results
results = [f.result() for f in futures]
# Unpack the results
prompt_feedback_select, feedback_selects, _ = results[0]
prompt_feedback_condition, feedback_conditions, _ = results[1]
prompt_feedback_join, feedback_joins, _ = results[2]
prompt_feedback_order, feedback_orders, _ = results[3]
max_length_feedback = max(len(feedback_selects), len(feedback_conditions), len(feedback_joins), len(feedback_orders))
# if any feedback is empty, fill with None
if len(feedback_selects) == 0:
feedback_selects = [None] * max_length_feedback
if len(feedback_conditions) == 0:
feedback_conditions = [None] * max_length_feedback
if len(feedback_joins) == 0:
feedback_joins = [None] * max_length_feedback
if len(feedback_orders) == 0:
feedback_orders = [None] * max_length_feedback
# if any feedback has length 1, fill with the first element
if len(feedback_selects) == 1:
feedback_selects = feedback_selects * max_length_feedback
if len(feedback_conditions) == 1:
feedback_conditions = feedback_conditions * max_length_feedback
if len(feedback_joins) == 1:
feedback_joins = feedback_joins * max_length_feedback
if len(feedback_orders) == 1:
feedback_orders = feedback_orders * max_length_feedback
copy_sample['feedback_select'] = feedback_selects
copy_sample['feedback_condition'] = feedback_conditions
copy_sample['feedback_join'] = feedback_joins
copy_sample['feedback_order'] = feedback_orders
sample['prompt_planner'].extend([prompt_planner] * max_length_feedback)
sample['planners'].extend([planner] * max_length_feedback)
sample['predict_sqls'].extend([plan_sql] * len(feedback_selects))
sample['prompt_feedback_select'].extend([prompt_feedback_select] * len(feedback_selects))
sample['prompt_feedback_condition'].extend([prompt_feedback_condition] * len(feedback_conditions))
sample['prompt_feedback_join'].extend([prompt_feedback_join] * len(feedback_joins))
sample['prompt_feedback_order'].extend([prompt_feedback_order] * len(feedback_orders))
sample['feedback_selects'].extend(feedback_selects)
sample['feedback_conditions'].extend(feedback_conditions)
sample['feedback_joins'].extend(feedback_joins)
sample['feedback_orders'].extend(feedback_orders)
sample['pred_results'].extend([_make_str_response(*execution_result)] * max_length_feedback)
sample['first_try_has_errors'].extend([execution_result[1]] * max_length_feedback)
assert len(sample['predict_sqls']) == len(sample['feedback_selects'])
assert len(sample['predict_sqls']) == len(sample['feedback_conditions'])
assert len(sample['predict_sqls']) == len(sample['feedback_joins'])
assert len(sample['predict_sqls']) == len(sample['feedback_orders'])
assert len(sample['predict_sqls']) == len(sample['pred_results'])
return sample
def generate_fixes(self, sample):
sample['prompt_fix'] = []
sample['fixed_sqls'] = []
temp_prompt_planner = []
temp_planners = []
temp_predict_sqls = []
temp_prompt_selects = []
temp_prompt_conditions = []
temp_prompt_joins = []
temp_prompt_orders = []
temp_feedback_selects = []
temp_feedback_conditions = []
temp_feedback_joins = []
temp_feedback_orders = []
temp_pred_results = []
temp_first_try_has_errors = []
for i in range(len(sample['predict_sqls'])):
# process feedback
select_correct = sample['feedback_selects'][i] is None or 'Conclude: incorrect' not in sample['feedback_selects'][i]
condition_correct = sample['feedback_conditions'][i] is None or 'Conclude: incorrect' not in sample['feedback_conditions'][i]
join_correct = sample['feedback_joins'][i] is None or 'Conclude: incorrect' not in sample['feedback_joins'][i]
order_correct = sample['feedback_orders'][i] is None or 'Conclude: incorrect' not in sample['feedback_orders'][i]
first_try_has_error = sample['first_try_has_errors'][i]
if args.skip_validator_select:
select_correct = True
if args.skip_validator_join:
join_correct = True
if args.skip_validator_condition:
condition_correct = True
if args.skip_validator_order:
order_correct = True
if first_try_has_error:
condition_correct = False
if select_correct and condition_correct and join_correct and order_correct and not first_try_has_error:
prompt_fixed_sql = None
fixed_sqls = [None]
else:
feedback_select = self.validator_select.process_feedback_message_from_completion(sample['prompt_feedback_select'][i], sample['feedback_selects'][i])
feedback_condition = self.validator_condition.process_feedback_message_from_completion(sample['prompt_feedback_condition'][i], sample['feedback_conditions'][i])
feedback_join = self.validator_join.process_feedback_message_from_completion(sample['prompt_feedback_join'][i], sample['feedback_joins'][i])
feedback_order = self.validator_order.process_feedback_message_from_completion(sample['prompt_feedback_order'][i], sample['feedback_orders'][i])
if select_correct:
feedback_select = ""
if condition_correct:
feedback_condition = ""
if join_correct:
feedback_join = ""
if order_correct:
feedback_order = ""
copy_sample = deepcopy(sample)
copy_sample['predict_sql'] = sample['predict_sqls'][i]
copy_sample['pred_result'] = sample['pred_results'][i]
prompt_fixed_sql, fixed_sqls = self.fixed_sql_agent.generate(copy_sample, feedback_select, feedback_condition, feedback_join, feedback_order)
fixed_sqls = [extract_sql_in_code_block(x) for x in fixed_sqls]
# check executable fixed_sqls
if args.mode == 'test':
filter_fixed_sqls = []
for fixed_sql in fixed_sqls:
execution_error = check_sql_executability(fixed_sql, sample["db_path"])
if execution_error is not None:
continue
filter_fixed_sqls.append(fixed_sql)
if len(filter_fixed_sqls) == 0:
fixed_sqls = fixed_sqls[:1]
sample['prompt_fix'].extend([prompt_fixed_sql] * len(fixed_sqls))
sample['fixed_sqls'].extend(fixed_sqls)
temp_prompt_planner.extend([sample['prompt_planner'][i]] * len(fixed_sqls))
temp_planners.extend([sample['planners'][i]] * len(fixed_sqls))
temp_predict_sqls.extend([sample['predict_sqls'][i]] * len(fixed_sqls))
temp_prompt_selects.extend([sample['prompt_feedback_select'][i]] * len(fixed_sqls))
temp_prompt_conditions.extend([sample['prompt_feedback_condition'][i]] * len(fixed_sqls))
temp_prompt_joins.extend([sample['prompt_feedback_join'][i]] * len(fixed_sqls))
temp_prompt_orders.extend([sample['prompt_feedback_order'][i]] * len(fixed_sqls))
temp_feedback_selects.extend([sample['feedback_selects'][i]] * len(fixed_sqls))
temp_feedback_conditions.extend([sample['feedback_conditions'][i]] * len(fixed_sqls))
temp_feedback_joins.extend([sample['feedback_joins'][i]] * len(fixed_sqls))
temp_feedback_orders.extend([sample['feedback_orders'][i]] * len(fixed_sqls))
temp_pred_results.extend([sample['pred_results'][i]] * len(fixed_sqls))
temp_first_try_has_errors.extend([sample['first_try_has_errors'][i]] * len(fixed_sqls))
sample['prompt_planner'] = temp_prompt_planner
sample['planners'] = temp_planners
sample['predict_sqls'] = temp_predict_sqls
sample['prompt_feedback_select'] = temp_prompt_selects
sample['prompt_feedback_condition'] = temp_prompt_conditions
sample['prompt_feedback_join'] = temp_prompt_joins
sample['prompt_feedback_order'] = temp_prompt_orders
sample['feedback_selects'] = temp_feedback_selects
sample['feedback_conditions'] = temp_feedback_conditions
sample['feedback_joins'] = temp_feedback_joins
sample['feedback_orders'] = temp_feedback_orders
sample['pred_results'] = temp_pred_results
sample['first_try_has_errors'] = temp_first_try_has_errors
assert len(sample['prompt_planner']) == len(sample['planners'])
assert len(sample['prompt_planner']) == len(sample['predict_sqls'])
assert len(sample['prompt_planner']) == len(sample['prompt_feedback_select'])
assert len(sample['prompt_planner']) == len(sample['prompt_feedback_condition'])
assert len(sample['prompt_planner']) == len(sample['prompt_feedback_join'])
assert len(sample['prompt_planner']) == len(sample['prompt_feedback_order'])
assert len(sample['prompt_planner']) == len(sample['feedback_selects'])
assert len(sample['prompt_planner']) == len(sample['feedback_conditions'])
assert len(sample['prompt_planner']) == len(sample['feedback_joins'])
assert len(sample['prompt_planner']) == len(sample['feedback_orders'])
assert len(sample['prompt_planner']) == len(sample['pred_results'])
assert len(sample['prompt_planner']) == len(sample['prompt_fix'])
assert len(sample['prompt_planner']) == len(sample['fixed_sqls'])
assert len(sample['prompt_planner']) == len(sample['first_try_has_errors'])
pair_sqls = [(x, y) for x, y in zip(sample['predict_sqls'], sample['fixed_sqls'])]
candidate_sqls = [self.fixed_sql_agent.get_final_sql(x, y, sample['db_path']) for x, y in pair_sqls]
sample['candidate_sqls'] = candidate_sqls
return sample
def select_final_sql(self, sample):
if 'candidate_sqls' not in sample:
sample['candidate_sqls'] = sample['predict_sqls']
sample['candidate_pred_results'] = [_execute_sql(sample['db_path'], x)[0] for x in sample['candidate_sqls']]
sample['final_sql'] = self.selection_agent.get_best_sql(sample, max_candidates=3)
sample['candidate_pred_results'] = [str(x) for x in sample['candidate_pred_results']]
return sample
def generate(self, sample):
if 'evidence' not in sample:
sample['evidence'] = ''
if not args.skip_planner:
sample = self.generate_plans(sample)
if not args.only_planner:
if not args.skip_validator:
sample = self.generate_feedbacks(sample)
if not args.skip_fix:
sample = self.generate_fixes(sample)
if not args.skip_selection:
sample = self.select_final_sql(sample)
return sample
def get_answer_planner(messages):
answers = []
if args.mode == 'test':
response = requests.post(f"{args.api_host}/v1/completions",
json={
"model": 'planner',
"prompt": messages[0]['content'],
"max_tokens": 1024,
"use_beam_search": False,
"n": 1,
"temperature": 0.0,
"stop": [EOS_TOKEN, '<|end|>', '<|end_header_id|>', '<|end_of_text|>'],
"seed": args.seed
}).json()
answers += [x['text'] for x in response['choices']]
if args.n_return - 1 > 0:
response = requests.post(f"{args.api_host}/v1/completions",
json={
"model": 'planner',
"prompt": messages[0]['content'],
"max_tokens": 1024,
"use_beam_search": args.use_beam_search,
"n": args.n_return - 1,
"temperature": args.temperature,
"stop": [EOS_TOKEN, '<|end|>', '<|end_header_id|>', '<|end_of_text|>']
}).json()
answers += [x['text'] for x in response['choices']]
# unique answers
seen = set()
unique_answers = [x for x in answers if not (x in seen or seen.add(x))]
return unique_answers
def get_answer_validator(model_name, messages):
port = int(args.api_host.split(':')[-1])
api_host = args.api_host.replace(str(port), str(port + 1))
prompt = messages[0]['content']
send_data = {
"model": 'validator',
"prompt": prompt,
"max_tokens": 768,
"n": args.n_return if args.mode == 'train' else 1,
"use_beam_search": False,
"temperature": args.temperature if args.mode == 'train' else 0.0,
"stop": [EOS_TOKEN, '<|end|>', '<|end_header_id|>'],
"seed": args.seed
}
if args.use_beam_search_validator:
send_data['use_beam_search'] = True
send_data['n'] = args.n_return
response = requests.post(f"{api_host}/v1/completions",
json=send_data).json()
answers = []
for x in response['choices']:
answers.append(x['text'])
if args.mode == 'test':
answers = answers[:1]
return answers
def get_answer_fixed(messages):
port = int(args.api_host.split(':')[-1])
api_host = args.api_host.replace(str(port), str(port + 2))
response = requests.post(f"{api_host}/v1/completions",
json={
"model": 'fixed',
"prompt": messages[0]['content'],
"max_tokens": 256,
"use_beam_search": args.use_beam_search,
"n": args.n_return if args.mode == 'train' else 1,
"temperature": args.temperature if args.mode == 'train' else 0.0,
"stop": [EOS_TOKEN, '<|end|>', '<|end_header_id|>'],
"seed": args.seed
}).json()
answers = [x['text'] for x in response['choices']]
seen = set()
unique_answers = [x for x in answers if not (x in seen or seen.add(x))]
return unique_answers
def get_answer_selection(messages):
port = int(args.api_host.split(':')[-1])
api_host = args.api_host.replace(str(port), str(port + 3))
response = requests.post(f"{api_host}/v1/completions",
json={
"model": 'selection',
"prompt": messages[0]['content'],
"max_tokens": 8,
"use_beam_search": False,
"n": 1,
"temperature": 0.0,
"stop": [ '<|eot_id|>', '<|end|>', '<|end_header_id|>', '<|end_of_text|>', '<|end▁of▁sentence|>']
}).json()
answers = [x['text'] for x in response['choices']]
return answers
def parse_args():
parser = argparse.ArgumentParser()
parser.add_argument('--input_file', type=str, default='../data/sft_bird_with_evidence_train_text2sql.json')
parser.add_argument('--output_file', type=str, default='../data/planner/planner_select_bird_with_evidence_train.jsonl')
parser.add_argument('--model-name', type=str, default='phi', choices=['phi', 'llama', 'codes', 'qwen', 'nl2sql'])
parser.add_argument('--use_beam_search', action='store_true')
parser.add_argument('--n_return', type=int, default=1, help="Number of responses to return for each agent. While the number of agents is 3, the total number of responses will be n_return ** 3")
parser.add_argument('--temperature', type=float, default=0.0)
parser.add_argument('--api_host', default='http://localhost:8001', type=str)
parser.add_argument('--mode', default='test', choices=['test', 'train'])
parser.add_argument('--only_planner', action='store_true')
parser.add_argument('--skip_planner', action='store_true')
parser.add_argument('--skip_validator', action='store_true')
parser.add_argument('--skip_fix', action='store_true')
parser.add_argument('--skip_validator_select', action='store_true')
parser.add_argument('--skip_validator_condition', action='store_true')
parser.add_argument('--skip_validator_join', action='store_true')
parser.add_argument('--skip_validator_order', action='store_true', default=True)
parser.add_argument('--skip_selection', action='store_true')
parser.add_argument('--n_processes', default=64, type=int)
parser.add_argument('--use_beam_search_validator', action='store_true')
parser.add_argument('--seed', type=int, default=100)
args = parser.parse_args()
return args
import os
import sys
import json
import traceback
from multiprocessing import Pool, Manager
from tqdm import tqdm
def init_worker():
global mas
mas = MultiAgentSystem(None)
def process_sample(args):
sample, output_file_path = args
try:
# sample['schema_sequence'] = sample['schema_sequence'].replace('; values:', '; example values:')
sample = mas.generate(sample)
# Write to file directly with synchronization
with lock:
with open(output_file_path, 'a', encoding='utf-8') as f:
f.write(json.dumps(sample, ensure_ascii=False) + '\n')
f.flush()
except Exception as e:
# Re-raise the exception to be caught in the main process
traceback.print_exc()
raise e
def update_data_with_old_output(args, data):
if os.path.exists(args.output_file):
old_output = {}
# Load the old output file and store it in a dictionary for quick lookups
with open(args.output_file, 'r', encoding='utf-8') as f:
for line in f:
try:
sample = json.loads(line)
key = f"{sample['source']} {sample['db_id']} {sample['question']}"
old_output[key] = sample
except Exception as err:
print(err)
# Replace data entries with corresponding entries from old_output
for i, sample in enumerate(data):
key = f"{sample['source']} {sample['db_id']} {sample['question']}"
if key in old_output:
data[i] = old_output[key]
# Rewrite old_output to output_file
with open(args.output_file, 'w', encoding='utf-8') as f:
for sample in old_output.values():
f.write(json.dumps(sample, ensure_ascii=False) + '\n')
else:
old_output = {}
# unique_data by keys
unique_data = {}
for i, sample in enumerate(data):
key = f"{sample['source']} {sample['db_id']} {sample['question']}"
unique_data[key] = sample
print("unique_data", len(unique_data))
# Remove already processed entries from data
data = [sample for sample in data if f"{sample['source']} {sample['db_id']} {sample['question']}" not in old_output]
return data
if __name__ == '__main__':
args = parse_args()
np.random.seed(args.seed)
torch.manual_seed(args.seed)
torch.cuda.manual_seed(args.seed)
if args.model_name == 'phi':
EOS_TOKEN = '<|end|>'
ASSISTANT_TOKEN = '<|assistant|>'
USER_TOKEN = '<|user|>'
elif 'llama' in args.model_name:
EOS_TOKEN = '<|eot_id|>'
ASSISTANT_TOKEN = '<|start_header_id|>assistant<|end_header_id|>'
USER_TOKEN = '<|start_header_id|>user<|end_header_id|>'
elif 'codes' in args.model_name:
EOS_TOKEN = '<|eot_id|>'
ASSISTANT_TOKEN = '<|assistant|>'
USER_TOKEN = '<|user|>'
elif args.model_name == 'qwen':
EOS_TOKEN = '<|im_end|>'
ASSISTANT_TOKEN = '<|im_start|>assistant'
USER_TOKEN = '<|im_start|>user'
elif args.model_name == 'nl2sql':
EOS_TOKEN = '<|eot_id|>'
ASSISTANT_TOKEN = '<|start_header_id|>assistant<|end_header_id|>'
USER_TOKEN = '<|start_header_id|>user<|end_header_id|>'
else:
raise Exception('Invalid model name')
data = json.load(open(args.input_file, 'r', encoding='utf-8'))
print(len(data))
# Build schema_sequence for each sample if not already present (uses new DDL format
# which incorporates column_descriptions and value_descriptions from BIRD CSVs).
for sample in data:
if "schema_sequence" not in sample and "schema" in sample:
sample["schema_sequence"] = get_db_schema_sequence(sample["schema"])
data = update_data_with_old_output(args, data)
# Make directories if they do not exist
os.makedirs(os.path.dirname(args.output_file), exist_ok=True)
manager = Manager()
lock = manager.Lock()
args_list = [(sample, args.output_file) for sample in data]
if len(args_list) == 0:
import sys; sys.exit()
with Pool(processes=args.n_processes, initializer=init_worker) as pool:
results = []
for params in args_list:
res = pool.apply_async(process_sample, args=(params,))
results.append(res)
# Use tqdm to display progress
for res in tqdm(results):
try:
res.get()
except Exception as e:
# Print the traceback of the exception
print("An error occurred:", file=sys.stderr)
traceback.print_exc()
pool.terminate()
pool.join()
sys.exit(1)