|
|
| import sqlite3 |
| import multiprocessing.pool |
| import functools |
| import re |
| import sqlparse |
| import requests |
| from sql_metadata import Parser |
| from validator_data.utils import get_table_columns_list, remove_table_alias, get_columns_in_select_clause, get_equation_function_in_select_clause, remove_table_alias |
| from openai import OpenAI |
| import os |
| import pandas as pd |
| from func_timeout import func_timeout, FunctionTimedOut |
| import time |
|
|
| pd.set_option('display.max_rows', 5) |
| pd.set_option('display.max_columns', 10) |
|
|
| def timeout(max_timeout): |
| """Timeout decorator, parameter in seconds.""" |
| def timeout_decorator(item): |
| """Wrap the original function.""" |
| @functools.wraps(item) |
| def func_wrapper(*args, **kwargs): |
| """Closure for function.""" |
| pool = multiprocessing.pool.ThreadPool(processes=1) |
| async_result = pool.apply_async(item, args, kwargs) |
| |
| return async_result.get(max_timeout) |
| return func_wrapper |
| return timeout_decorator |
|
|
| def _execute_sql_with_timeout(db_path, action): |
| conn = sqlite3.connect(db_path) |
| conn.text_factory = lambda b: b.decode(errors="ignore") |
| actions = action.split(";") |
| actions = [x for x in actions if len(x.strip()) > 0] |
| |
| if len(actions) == 0: |
| return "No SQL query executed.", True |
| |
| cursor = conn.cursor() |
| for action in actions: |
| try: |
| |
| response = pd.read_sql_query(action, conn) |
| has_error = False |
| except Exception as error: |
| |
| response = str(error) |
| has_error = True |
| cursor.close() |
| break |
| |
| cursor.close() |
| conn.close() |
| return response, has_error |
|
|
| _DB_EXEC_API_URL = os.environ.get("DB_EXEC_API_URL", "http://127.0.0.1:8003") |
|
|
|
|
| def _extract_db_id(db_path): |
| """Parse db_id from a SQLite path like .../<db_id>/<db_id>.sqlite.""" |
| import os as _os |
| p = db_path.rstrip("/") |
| if p.endswith(".sqlite"): |
| return _os.path.splitext(_os.path.basename(p))[0] |
| return _os.path.basename(p) |
|
|
|
|
| def _execute_sql_via_api(db_path, sql_query, timeout=15): |
| """Out-of-process SQL execution via the db_execution API (port 8003 by default).""" |
| db_id = _extract_db_id(db_path) |
| payload = { |
| "dataset_name": "bird", |
| "db_id": db_id, |
| "sql": sql_query, |
| "mode": "sandbox_rollback", |
| "timeout_ms": int(timeout * 1000), |
| "max_rows": 10000, |
| } |
| try: |
| r = requests.post( |
| f"{_DB_EXEC_API_URL}/execute", |
| json=payload, |
| timeout=timeout + 10, |
| proxies={"http": "", "https": ""}, |
| ) |
| r.raise_for_status() |
| data = r.json() |
| except Exception as err: |
| return str(err), True |
| if not data.get("ok"): |
| if data.get("timed_out"): |
| return "The query takes too much time.", True |
| return str(data.get("error") or "unknown error"), True |
| rows = data.get("rows") or [] |
| if not rows: |
| return pd.DataFrame(), False |
| df = pd.DataFrame(rows) |
| return df, False |
|
|
|
|
| def _execute_sql(db_path, sql_query, timeout=15): |
| if os.environ.get("DB_EXEC_API_DISABLE", "") != "1": |
| try: |
| return _execute_sql_via_api(db_path, sql_query, timeout=timeout) |
| except Exception: |
| pass |
| try: |
| |
| pred_result, has_error = func_timeout(timeout, _execute_sql_with_timeout, args=(db_path, sql_query)) |
| except FunctionTimedOut: |
| pred_result = "The query takes too much time." |
| has_error = True |
| except Exception as err: |
| pred_result = str(err) |
| has_error = True |
| return pred_result, has_error |
|
|
| def execute_sql_with_time(db_path, sql_query, timeout=10): |
| start_time = time.time() |
| try: |
| |
| pred_result, has_error = func_timeout(timeout, _execute_sql_with_timeout, args=(db_path, sql_query)) |
| except FunctionTimedOut: |
| pred_result = "The query takes too much time." |
| has_error = True |
| except Exception as err: |
| pred_result = str(err) |
| has_error = True |
| execution_time = time.time() - start_time |
| return pred_result, has_error, execution_time |
|
|
| def _make_str_response(response, has_error, add_num_duplicated=False): |
| if has_error: |
| response = str(response) |
| elms = response.split(":") |
| response = ":".join(elms[-2:]) |
| return response |
| else: |
| |
| |
| str_response = str(response).strip() |
| if add_num_duplicated: |
| num_duplicated = response.duplicated().sum() |
| str_response += f"\nNumber of duplicated records: {num_duplicated}." |
|
|
| return str_response |
| |
| def is_execution_correct(true_response, pred_response): |
| if type(true_response) == str and type(pred_response) == str: |
| return true_response == pred_response |
| elif type(true_response) == str and type(pred_response) != str: |
| return False |
| elif type(true_response) != str and type(pred_response) == str: |
| return False |
| else: |
| return set([tuple(x) for x in true_response.values.tolist()]) == set([tuple(x) for x in pred_response.values.tolist()]) |
|
|
| def get_answer_vllm(messages): |
| response = requests.post("http://localhost:8003/v1/completions", |
| json={ |
| "model": "Qwen/Qwen2.5-14B-Instruct/", |
| "prompt": messages[0]['content'], |
| "max_tokens": 1024, |
| "use_beam_search": True, |
| "n": 4, |
| "temperature": 0.0, |
| "stop": ["========"] |
| }).json() |
| |
| return response["choices"][0]["text"] |
|
|
|
|
| def get_answer_llamacpp(messages): |
| response = requests.post("http://localhost:8000/v1/completions", |
| json={ |
| "model": "meta-llama/Meta-Llama-3.1-8B-Instruct/", |
| "prompt": messages[0]['content'], |
| "n_predict": 256, |
| "stop": ["========="] |
| }).json() |
| return response["content"] |
|
|
| class Validator: |
| def __init__(self, endpoint_type='llamacpp'): |
| pd.set_option('display.max_rows', 5) |
| pd.set_option('display.max_columns', 10) |
|
|
| if endpoint_type == 'llamacpp': |
| self.get_answer = get_answer_llamacpp |
| elif endpoint_type == 'vllm': |
| |
| client = OpenAI( |
| base_url="http://localhost:8005/v1", |
| api_key="no-key", |
| ) |
| self.get_answer = lambda x: get_answer_openai(client, x, model='fixed') |
|
|
| elif endpoint_type == 'openai': |
| from dotenv import load_dotenv |
| load_dotenv() |
| client = OpenAI(api_key=os.getenv("OPENAI_API_KEY")) |
| self.get_answer = lambda x: get_answer_openai(client, x) |
|
|
| def process_feedback_message_from_completion(self, prompt, answer): |
| if prompt is None: |
| prompt = '' |
| |
| if answer is None: |
| return f"{self.first_token}\nNone" |
|
|
| answer = prompt.split("Feedback:")[-1] + answer |
| answer = answer.replace('<|assistant|>', '').replace('<|end|>', '').strip() |
| answer = answer.replace('<|start_header_id|>assistant<|end_header_id|>', '').replace('<|eot_id|>', '').strip() |
| return answer |
| |
| class ValidatorSelect(Validator): |
| def __init__(self, endpoint_type='llamacpp'): |
| super().__init__(endpoint_type=endpoint_type) |
| self.first_token = "SELECT." |
|
|
| self.prompt_template = open('./validator_data/few_shot_prompt_select.txt').read() + """========= |
| {schema} |
| |
| Question: {question} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]: |
| {execution_response} |
| |
| Feedback: |
| SELECT. |
| 1. Based on the SQL query, the query selects: {select_columns}""" |
|
|
|
|
|
|
| def check_able_to_comment(self, sql_query): |
| equations = get_equation_function_in_select_clause(sql_query) |
| if len(equations) == 0: |
| return True |
|
|
| able_to_comment_equations = ['min', 'max', 'sum', 'avg', 'divide', '+', '/', 'count'] |
| |
| for equation in equations: |
| if equation not in able_to_comment_equations: |
| return False |
| |
| return True |
|
|
| def comment(self, sql, sample, execution_result): |
| try: |
| select_columns = get_columns_in_select_clause(sql, sample['schema']) |
| if len(select_columns) == 0: |
| select_columns = "" |
| except: |
| select_columns = "" |
|
|
| prompt = self.prompt_template.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sql, |
| execution_response=_make_str_response(execution_result[0], execution_result[1], add_num_duplicated=True), |
| select_columns=select_columns |
| ) |
|
|
| |
| |
| |
| answers = self.get_answer([{"role": "user", "content": prompt}]) |
|
|
| return prompt, answers |
|
|
| def validate(self, sample, execution_result=None): |
| if execution_result is None: |
| execution_result = _execute_sql("./" + sample['db_path'], sample['predict_sql']) |
|
|
| able_to_comment = self.check_able_to_comment(sample['predict_sql']) |
| if able_to_comment: |
| |
| prompt, answers = self.comment(sample['predict_sql'], sample, execution_result) |
| return prompt, answers, execution_result |
| else: |
| return None, [None], execution_result |
| |
|
|
| class ValidatorJOIN(Validator): |
| def __init__(self, endpoint_type='llamacpp'): |
| super().__init__(endpoint_type=endpoint_type) |
| self.first_token = "JOIN." |
|
|
| self.prompt_template = open('./validator_data/few_shot_prompt_join.txt').read() + """ |
| ========= |
| {schema} |
| |
| Question: {question} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]: |
| {execution_response} |
| |
| Strictly follow examples format. |
| Feedback: |
| JOIN. |
| - The SQL query uses tables {used_tables}, joining them on foreign keys {used_fks}.""" |
|
|
| def get_table_list(self, schema): |
| tables = [] |
| for table_data in schema['schema_items']: |
| table_name = table_data['table_name'].lower() |
| tables.append(table_name) |
| tables = list(set(tables)) |
| return tables |
| |
| def extract_join_clause(self, sql_query): |
| |
| pattern = re.compile(r"FROM\s.*?\s(?=WHERE)", re.IGNORECASE | re.DOTALL) |
| |
| |
| match = pattern.search(sql_query) |
| |
| if match: |
| |
| return match.group(0).strip() |
| else: |
| pattern = re.compile(r"FROM.+", re.IGNORECASE | re.DOTALL) |
| |
| |
| match = pattern.search(sql_query) |
| |
| if match: |
| |
| return match.group(0).strip() |
| else: |
| return '' |
|
|
| def get_used_fks(self, sql_query): |
| |
| pattern = re.compile(r" ON\s.*?(?=\sWHERE|\sORDER BY|\sLIMIT|\sGROUP BY)", re.IGNORECASE | re.DOTALL) |
| matches = pattern.findall(sql_query) |
| all_used_fks = [] |
| |
| |
| |
| fk_pattern = re.compile( |
| r'([`"]?[a-zA-Z0-9_]+[`"]?\.[`"]?[a-zA-Z0-9_ ]+[`"]?\s*=\s*[`"]?[a-zA-Z0-9_]+[`"]?\.[`"]?[a-zA-Z0-9_ ]+[`"]?)', |
| re.IGNORECASE |
| ) |
|
|
| for match in matches: |
| |
| fks = fk_pattern.findall(match) |
| if fks: |
| all_used_fks.extend(fks) |
| |
| return all_used_fks |
|
|
| |
|
|
| def get_tables_in_join_clause(self, sql_query, schema): |
| table_list = self.get_table_list(schema) |
| sql_query = remove_table_alias(sqlparse.format(sql_query, keyword_case = "upper", identifier_case = "lower")) |
| join_clause = self.extract_join_clause(sql_query) |
|
|
| used_tables = [] |
| for token in join_clause.strip(';').split(): |
| if token in table_list: |
| used_tables.append(token) |
|
|
| used_fks = self.get_used_fks(sql_query) |
| return used_tables, used_fks |
| |
| def add_prompt_used_fk_not_exist(self, used_tables, used_fks, sample): |
| foreign_keys = sample['schema']['foreign_keys'] |
| exist_fks = {} |
| for src_table, src_col, trg_table, trg_col in foreign_keys: |
| |
| |
| if (src_table, trg_table) not in exist_fks: |
| exist_fks[(src_table, trg_table)] = [] |
| exist_fks[(trg_table, src_table)] = [] |
| exist_fks[(src_table, trg_table)].append((src_col, trg_col)) |
| exist_fks[(trg_table, src_table)].append((trg_col, src_col)) |
| |
| added_prompt = "" |
| used_tables_in_fks = set() |
| for fk in used_fks: |
| src, trg = fk.split("=") |
| src_table, src_col = src.strip().split(".") |
| trg_table, trg_col = trg.strip().split(".") |
| used_tables_in_fks.add(src_table) |
| used_tables_in_fks.add(trg_table) |
| |
| if (src_table, trg_table) not in exist_fks: |
| added_prompt += f"\n- The foreign key `{src_table}.{src_col} = {trg_table}.{trg_col}` does not exist in the schema, the query is incorrect. Need to add more tables to the query." |
| elif (src_col, trg_col) not in exist_fks[(src_table, trg_table)]: |
| correct_fk = exist_fks[(src_table, trg_table)][0] |
| added_prompt += f"\n- The foreign key `{src_table}.{src_col} = {trg_table}.{trg_col}` does not exist in the schema, the query is incorrect. The query need to use foreign key `{src_table}.{correct_fk[0]} = {trg_table}.{correct_fk[1]}" |
| |
| |
| unincluded_tables = set(used_tables_in_fks) - set(used_tables) |
| if len(unincluded_tables) > 0: |
| added_prompt += f"\n - The query is incorrect. Please add the tables {list(unincluded_tables)} to the FROM statement." |
| |
| return added_prompt |
|
|
|
|
| def validate(self, sample, execution_result=None): |
| if execution_result is None: |
| execution_result = _execute_sql("./" + sample['db_path'], sample['predict_sql']) |
| used_tables, used_fks = self.get_tables_in_join_clause(sample['predict_sql'], sample['schema']) |
| |
| added_prompt = self.add_prompt_used_fk_not_exist(used_tables, used_fks, sample) |
|
|
| prompt = self.prompt_template.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sample['predict_sql'], |
| execution_response=_make_str_response(*execution_result), |
| used_tables=used_tables, |
| used_fks=used_fks |
| ).strip() + added_prompt + "\n- Based on the question, the query should use tables" |
|
|
| |
| |
| |
| answers = self.get_answer([{"role": "user", "content": prompt}]) |
| return prompt, answers, execution_result |
|
|
| class ValidatorOrder(Validator): |
| def __init__(self, endpoint_type='llamacpp'): |
| super().__init__(endpoint_type=endpoint_type) |
| self.first_token = "ORDER BY." |
|
|
| self.prompt_no_none = open('./validator_data/few_shot_prompt_order.txt').read().replace("{", "{{").replace("}", "}}") + """ |
| ========= |
| {schema} |
| |
| Question: {question} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]: |
| {execution_response} |
| |
| Feedback: |
| ORDER BY. |
| - The SQL query uses ```{order_by_clause}```. |
| - Based on the question, the query should use""" |
|
|
| self.prompt_has_none = open('./validator_data/few_shot_prompt_order.txt').read().replace("{", "{{").replace("}", "}}") + """ |
| ========= |
| {schema} |
| |
| Question: {question} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]: |
| {execution_response} |
| |
| Feedback: |
| 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.""" |
|
|
| def get_table_list(self, schema): |
| tables = [] |
| for table_data in schema['schema_items']: |
| table_name = table_data['table_name'].lower() |
| tables.append(table_name) |
| tables = list(set(tables)) |
| return tables |
| |
| def extract_order_clause(self, sql_tokens): |
| |
| order_by_index = -1 |
| for i in range(len(sql_tokens)): |
| if sql_tokens[i] == "order by": |
| order_by_index = i |
| break |
| |
| if order_by_index == -1: |
| return [] |
| else: |
| return sql_tokens[order_by_index:] |
|
|
| def extract_order_by_clause_using_regex(self, sql_query): |
| |
| order_by_clause = re.search(r'(?i)ORDER BY\s+(.*)', sql_query) |
| if order_by_clause is None: |
| return None |
| else: |
| order_by_clause = order_by_clause.group(1) |
| order_by_clause = re.sub("\s+", " ", order_by_clause) |
| return order_by_clause |
|
|
| def get_columns_in_order_clause(self, sql_query, schema): |
| column_list = get_table_columns_list(schema) |
|
|
| try: |
| sql_tokens = [token.value for token in Parser(sql_query.lower()).tokens] |
| except Exception as e: |
| sql_tokens = sql_query.lower().split() |
| |
| order_clause_tokens = self.extract_order_clause(sql_tokens) |
|
|
| equation_functions = [] |
| for token in order_clause_tokens: |
| if token in ["min", "max", "avg", "sum", "count", "divide", "+", "/", "case", "when"]: |
| equation_functions.append(token) |
|
|
| |
| order_by_clause = self.extract_order_by_clause_using_regex(sql_query) |
|
|
| |
|
|
| if len(equation_functions) > 0: |
| |
| return None, order_by_clause |
| else: |
| columns = [] |
| |
| |
| for token in order_clause_tokens: |
| if token in column_list: |
| columns.append(token) |
|
|
| |
| norm_columns = [] |
| for column in columns: |
| if "." not in column: |
| |
| try: |
| table = re.search(r'(?i)FROM\s+`?(\w+)`?', sql_query).group(1) |
| norm_columns.append(f"{table}.{column}") |
| except: |
| norm_columns.append(column) |
| else: |
| norm_columns.append(column) |
|
|
| return norm_columns, order_by_clause |
| |
| def get_column_type(self, column, schema): |
| |
| if "." in column: |
| table, column = column.split(".") |
| for table_data in schema['schema_items']: |
| if table_data['table_name'] == table: |
| for column_name, column_type in zip(table_data['column_names'], table_data['column_types']): |
| if column_name == column: |
| return column_type |
| else: |
| for table_data in schema['schema_items']: |
| for column_name, column_type in zip(table_data['column_names'], table_data['column_types']): |
| if column_name == column: |
| return column_type |
| |
| def check_order_by_column_has_none_values(self, column, db_path): |
| |
| conn = sqlite3.connect(db_path) |
| c = conn.cursor() |
| elms = column.split(".") |
| if len(elms) == 1: |
| return False |
| table_name = column.split(".")[0] |
| column_name = column.split(".")[1] |
| query = f"SELECT COUNT(*) FROM `{table_name}` WHERE `{column_name}` IS NULL" |
| try: |
| c.execute(query) |
| result = c.fetchall() |
| except Exception as err: |
| result = str(err) |
| conn.close() |
|
|
| if type(result) == list and result[0][0] > 0: |
| return True |
| else: |
| return False |
| |
| def validate(self, sample, execution_result=None): |
| if execution_result is None: |
| execution_result = _execute_sql("./" + sample['db_path'], sample['predict_sql']) |
|
|
| order_columns, order_by_clause = self.get_columns_in_order_clause(sample['predict_sql'], sample['schema']) |
| if order_columns is not None and len(order_columns) > 0: |
| column = order_columns[0] |
|
|
| if self.check_order_by_column_has_none_values(column, "./" + sample['db_path']) == True: |
| prompt = self.prompt_has_none.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sample['predict_sql'], |
| execution_response=_make_str_response(*execution_result), |
| order_by_clause=order_by_clause, |
| order_by_column=column |
| ) |
| |
| answers = [] |
| return None, answers, execution_result |
| else: |
| |
| table, column = column.split(".") |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| if True: |
| prompt = self.prompt_no_none.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sample['predict_sql'], |
| execution_response=_make_str_response(*execution_result), |
| order_by_clause=order_by_clause) |
| |
| |
| |
| answers = self.get_answer([{"role": "user", "content": prompt}]) |
| |
| else: |
| answers = [] |
| prompt = None |
| |
| return prompt, answers, execution_result |
|
|
| def get_answer_openai(client, messages, model='gpt-4o-mini'): |
| response = client.chat.completions.create( |
| model=model, |
| messages=messages, |
| max_tokens=1024, |
| temperature=0.0, |
| ) |
| response = response.choices[0].message.content.strip() |
| return [response] |
|
|
| |
|
|
| class ValidatorCondition(Validator): |
| def __init__(self, prompt_file='./validator_data/few_shot_prompt_condition.txt', endpoint_type='llamacpp'): |
| super().__init__(endpoint_type=endpoint_type) |
| self.first_token = "CONDITION." |
|
|
| self.prompt_template = open(prompt_file).read() + """ |
| ========= |
| {schema} |
| |
| Question: {question} |
| External knowledge: {evidence} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]. |
| {execution_response} |
| |
| If the execution response empty response, it is incorrect. Add your thought to the end of the feedback to modify the query. |
| 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. |
| Always add "Conclude: correct." or "Conclude: incorrect." at the end of the feedback. |
| |
| Feedback: |
| CONDITION. |
| """ |
| |
| def get_table_list(self, schema): |
| tables = [] |
| for table_data in schema['schema_items']: |
| table_name = table_data['table_name'].lower() |
| tables.append(table_name) |
| tables = list(set(tables)) |
| return tables |
| |
| def extract_condition_clause(self, sql_query): |
| |
| pattern = re.compile(r"WHERE\s.*?(?=\sGROUP BY|\sHAVING|\sORDER BY|\sLIMIT)", re.IGNORECASE | re.DOTALL) |
| match = pattern.search(sql_query) |
| if match: |
| return match.group(0).strip() |
| else: |
| |
| pattern = re.compile(r"WHERE\s.*", re.IGNORECASE | re.DOTALL) |
| match = pattern.search(sql_query) |
| if match: |
| return match.group(0).strip() |
| else: |
| return None |
| |
| def has_column_with_more_than_20_percent_none(self, execution_result): |
| import pandas as pd |
| |
| |
| if isinstance(execution_result, str) or execution_result is None: |
| return True |
| |
| elif isinstance(execution_result, pd.DataFrame): |
| |
| if execution_result.empty: |
| return True |
| |
| if execution_result.size == 1 and execution_result.values[0][0] == 0: |
| return True |
| |
| missing_ratios = execution_result.isnull().mean() |
| |
| return any(missing_ratios >= 0.2) |
| else: |
| |
| return True |
| |
|
|
| def validate(self, sample, execution_result=None): |
| if execution_result is None: |
| execution_result = _execute_sql("./" + sample['db_path'], sample['predict_sql']) |
|
|
|
|
| prompt = self.prompt_template.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sample['predict_sql'], |
| execution_response=_make_str_response(*execution_result), |
| ) |
| |
| answers = self.get_answer([{"role": "user", "content": prompt}]) |
|
|
| return prompt, answers, execution_result |
|
|
|
|
| class ValidatorConditionWithTrueSQL(ValidatorCondition): |
| def __init__(self, prompt_file='./validator_data/few_shot_prompt_condition.txt', endpoint_type='llamacpp'): |
| super().__init__(endpoint_type=endpoint_type) |
| self.first_token = "CONDITION." |
|
|
| self.prompt_template = open(prompt_file).read() + """ |
| ========= |
| {schema} |
| |
| Question: {question} |
| External knowledge: {evidence} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]. |
| {execution_response} |
| |
| If the execution response empty response, it is incorrect. Add your thought to the end of the feedback to modify the query. |
| 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. |
| Always add "Conclude: correct." or "Conclude: incorrect." at the end of the feedback. |
| |
| Use this hidden True SQL query to write correct analysis that derives to the correct answer. The True SQL query cannot be used in the analysis. |
| Hidden True SQL query: {true_sql_query} |
| |
| Feedback: |
| CONDITION. |
| """ |
|
|
| def validate(self, sample, execution_result=None): |
| if execution_result is None: |
| execution_result = _execute_sql("./" + sample['db_path'], sample['predict_sql']) |
|
|
| prompt = self.prompt_template.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sample['predict_sql'], |
| execution_response=_make_str_response(*execution_result), |
| true_sql_query=sample['sql'], |
| ) |
| |
| answers = self.get_answer([{"role": "user", "content": prompt}]) |
|
|
| return prompt, answers, execution_result |
| |
|
|
| class ValidatorJOINWithTrueSQL(ValidatorJOIN): |
| def __init__(self, endpoint_type='llamacpp'): |
| super().__init__(endpoint_type=endpoint_type) |
| self.first_token = "JOIN." |
|
|
| self.prompt_template = open('./validator_data/few_shot_prompt_join.txt').read() + """ |
| ========= |
| {schema} |
| |
| Question: {question} |
| |
| SQL query: {sql_query} |
| |
| Execution response [written in pandas format]: |
| {execution_response} |
| |
| Use this hidden True SQL query to write correct analysis that derives to the correct answer. The True SQL query cannot be used in the analysis. |
| Hidden True SQL query: {true_sql_query} |
| |
| Strictly follow examples format. |
| Feedback: |
| JOIN. |
| - The SQL query uses tables {used_tables}, joining them on foreign keys {used_fks}.""" |
|
|
| def validate(self, sample, execution_result=None): |
| if execution_result is None: |
| execution_result = _execute_sql("./" + sample['db_path'], sample['predict_sql']) |
| used_tables, used_fks = self.get_tables_in_join_clause(sample['predict_sql'], sample['schema']) |
| |
| added_prompt = self.add_prompt_used_fk_not_exist(used_tables, used_fks, sample) |
|
|
| prompt = self.prompt_template.format( |
| schema=sample['schema_sequence'], |
| question=sample['question'], |
| evidence=sample['evidence'], |
| sql_query=sample['predict_sql'], |
| execution_response=_make_str_response(*execution_result), |
| true_sql_query=sample['sql'], |
| used_tables=used_tables, |
| used_fks=used_fks |
| ).strip() + added_prompt + "\n- Based on the question, the query should use tables" |
|
|
| answers = self.get_answer([{"role": "user", "content": prompt}]) |
| return prompt, answers, execution_result |
| |
|
|
|
|