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eval.py
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eval.py
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# this file contains all of the helper functions used for evaluations
import itertools
import re
from func_timeout import func_timeout
import pandas as pd
from pandas.testing import assert_frame_equal, assert_series_equal
from sqlalchemy import create_engine, text
from utils.creds import db_creds_all
import time
import collections
LIKE_PATTERN = r"LIKE[\s\S]*'"
def deduplicate_columns(df: pd.DataFrame) -> pd.DataFrame:
cols = df.columns.tolist()
if len(cols) != len(set(cols)):
duplicates = [
item for item, count in collections.Counter(cols).items() if count > 1
]
for dup in duplicates:
indices = [i for i, x in enumerate(cols) if x == dup]
for i in indices:
cols[i] = f"{dup}_{i}"
df.columns = cols
return df
def normalize_table(
df: pd.DataFrame, query_category: str, question: str, sql: str = None
) -> pd.DataFrame:
"""
Normalizes a dataframe by:
1. removing all duplicate rows
2. sorting columns in alphabetical order
3. sorting rows using values from first column to last (if query_category is not 'order_by' and question does not ask for ordering)
4. resetting index
"""
# remove duplicate rows, if any
df = df.drop_duplicates()
# sort columns in alphabetical order of column names
sorted_df = df.reindex(sorted(df.columns), axis=1)
# check if query_category is 'order_by' and if question asks for ordering
has_order_by = False
pattern = re.compile(r"\b(order|sort|arrange)\b", re.IGNORECASE)
in_question = re.search(pattern, question.lower()) # true if contains
if query_category == "order_by" or in_question:
has_order_by = True
if sql:
# determine which columns are in the ORDER BY clause of the sql generated, using regex
pattern = re.compile(r"ORDER BY[\s\S]*", re.IGNORECASE)
order_by_clause = re.search(pattern, sql)
if order_by_clause:
order_by_clause = order_by_clause.group(0)
# get all columns in the ORDER BY clause, by looking at the text between ORDER BY and the next semicolon, comma, or parantheses
pattern = re.compile(r"(?<=ORDER BY)(.*?)(?=;|,|\)|$)", re.IGNORECASE)
order_by_columns = re.findall(pattern, order_by_clause)
order_by_columns = (
order_by_columns[0].split() if order_by_columns else []
)
order_by_columns = [
col.strip().rsplit(".", 1)[-1] for col in order_by_columns
]
ascending = False
# if there is a DESC or ASC in the ORDER BY clause, set the ascending to that
if "DESC" in [i.upper() for i in order_by_columns]:
ascending = False
elif "ASC" in [i.upper() for i in order_by_columns]:
ascending = True
# remove whitespace, commas, and parantheses
order_by_columns = [col.strip() for col in order_by_columns]
order_by_columns = [
col.replace(",", "").replace("(", "") for col in order_by_columns
]
order_by_columns = [
i
for i in order_by_columns
if i.lower()
not in ["desc", "asc", "nulls", "last", "first", "limit"]
]
# get all columns in sorted_df that are not in order_by_columns
other_columns = [
i for i in sorted_df.columns.tolist() if i not in order_by_columns
]
# only choose order_by_columns that are in sorted_df
order_by_columns = [
i for i in order_by_columns if i in sorted_df.columns.tolist()
]
sorted_df = sorted_df.sort_values(
by=order_by_columns + other_columns, ascending=ascending
)
sorted_df = sorted_df[other_columns + order_by_columns]
if not has_order_by:
# sort rows using values from first column to last
sorted_df = sorted_df.sort_values(by=list(sorted_df.columns))
# reset index
sorted_df = deduplicate_columns(sorted_df)
sorted_df = sorted_df.reset_index(drop=True)
return sorted_df
# for escaping percent signs in regex matches
def escape_percent(match):
# Extract the matched group
group = match.group(0)
# Replace '%' with '%%' within the matched group
escaped_group = group.replace("%", "%%")
# Return the escaped group
return escaped_group
# find start and end index of { } in a string. return (start, end) if found, else return (-1, -1)
def find_bracket_indices(s: str, start_index: int = 0) -> "tuple[int, int]":
start = s.find("{", start_index)
end = s.find("}", start + 1)
if start == -1 or end == -1:
return (-1, -1)
return (start, end)
# extrapolate all possible queries from a query with { } in it
def get_all_minimal_queries(query: str) -> "list[str]":
"""
extrapolate all possible queries
- split by semicolon. this is to accommodate queries where joins to other tables are also acceptable.
- expand all column permutations if there are braces { } in it. eg:
```sql
SELECT {user.id, user.name} FROM user;
```
Would be expanded to:
```sql
SELECT user.id FROM user;
SELECT user.name FROM user;
SELECT user.id, user.name FROM user;
```
"""
queries = query.split(";")
result_queries = []
for query in queries:
query = query.strip()
if query == "":
continue
start, end = find_bracket_indices(query, 0)
if (start, end) == (-1, -1):
result_queries.append(query)
continue
else:
# get all possible column subsets
column_options = query[start + 1 : end].split(",")
column_combinations = list(
itertools.chain.from_iterable(
itertools.combinations(column_options, r)
for r in range(1, len(column_options) + 1)
)
)
for column_tuple in column_combinations:
left = query[:start]
column_str = ", ".join(column_tuple)
right = query[end + 1 :]
# change group by size dynamically if necessary
if right.find("GROUP BY {}"):
right = right.replace("GROUP BY {}", f"GROUP BY {column_str}")
result_queries.append(left + column_str + right)
return result_queries
def query_postgres_db(
query: str,
db_name: str,
db_creds: dict = None,
timeout: float = 10.0,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Runs query on postgres db and returns results as a dataframe.
This assumes that you have the evaluation database running locally.
If you don't, you can following the instructions in the README (Start Postgres Instance) to set it up.
timeout: time in seconds to wait for query to finish before timing out
decimal_points: number of decimal points to round floats to
"""
engine = None
if db_creds is None:
db_creds = db_creds_all["postgres"]
try:
try:
import psycopg
has_psycopg = True
except ImportError:
has_psycopg = False
try:
import psycopg2
has_psycopg2 = True
except ImportError:
has_psycopg2 = False
if not has_psycopg2 and not has_psycopg:
print(
"You do not have psycopg2 or psycopg installed. Please install either."
)
exit(1)
if has_psycopg2:
dialect_prefix = "postgresql"
elif has_psycopg:
dialect_prefix = "postgresql+psycopg"
db_url = f"{dialect_prefix}://{db_creds['user']}:{db_creds['password']}@{db_creds['host']}:{db_creds['port']}/{db_name}"
engine = create_engine(db_url)
escaped_query = re.sub(
LIKE_PATTERN, escape_percent, query, flags=re.IGNORECASE
) # ignore case of LIKE
results_df = func_timeout(
timeout, pd.read_sql_query, args=(escaped_query, engine)
)
# round floats to decimal_points
if decimal_points:
results_df = results_df.round(decimal_points)
engine.dispose() # close connection
return results_df
except Exception as e:
if engine:
engine.dispose() # close connection if query fails/timeouts
raise e
def clean_metadata_string(md_str: str) -> str:
# for every line, remove all text after "--"
md_str = "\n".join([line.split("--")[0] for line in md_str.split("\n")])
# remove all ", \n);"
md_str = md_str.replace(", \n);", "\n);").replace(",\n);", "\n);").strip()
md_str = md_str.split("Here is a list of joinable columns:")[0].strip()
return md_str
def query_postgres_temp_db(
query: str,
db_name: str,
db_creds: dict = None,
table_metadata_string: str = "",
timeout: float = 10.0,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Creates a temporary db from the table metadata string, runs query on the temporary db, and returns results as a dataframe.
After the query is run, the temporary db is dropped.
timeout: time in seconds to wait for query to finish before timing out
"""
engine = None
admin_engine = None
conn = None
create_table_ddl = clean_metadata_string(table_metadata_string)
if db_creds is None:
db_creds = db_creds_all["postgres"]
try:
# create a temporary database on postgres if it doesn't exist
admin_db_url = f"postgresql://{db_creds['user']}:{db_creds['password']}@{db_creds['host']}:{db_creds['port']}/postgres"
admin_engine = create_engine(admin_db_url)
with admin_engine.connect() as conn:
conn.execution_options(isolation_level="AUTOCOMMIT")
db_exists = (
conn.execute(
text(f"SELECT 1 FROM pg_database WHERE datname = '{db_name}'")
).first()
is not None
)
if not db_exists:
conn.execute(text(f"CREATE DATABASE {db_name}"))
conn.close()
admin_engine.dispose() # close connection
# create tables in the temporary database
db_url = f"postgresql://{db_creds['user']}:{db_creds['password']}@{db_creds['host']}:{db_creds['port']}/{db_name}"
engine = create_engine(db_url)
with engine.connect() as conn:
conn.execution_options(isolation_level="AUTOCOMMIT")
conn.execute(text(create_table_ddl))
escaped_query = re.sub(
LIKE_PATTERN, escape_percent, query, flags=re.IGNORECASE
) # ignore case of LIKE
results_df = func_timeout(
timeout, pd.read_sql_query, args=(escaped_query, engine)
)
# round floats to decimal_points
if decimal_points:
results_df = results_df.round(decimal_points)
conn.close()
engine.dispose() # close connection
# remove the temporary database
with admin_engine.connect() as conn:
conn.execution_options(isolation_level="AUTOCOMMIT")
conn.execute(text(f"DROP DATABASE IF EXISTS {db_name}"))
conn.close()
admin_engine.dispose() # close connection
return results_df
except Exception as e:
if engine:
engine.dispose()
if admin_engine:
admin_engine.dispose()
if conn:
conn.close()
raise e
def query_snowflake_db(
query: str,
db_name: str,
db_creds: dict = None,
timeout: float = 10.0,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Runs query on snowflake db and returns results as a dataframe.
This assumes that you have the evaluation database set up on Snowflake.
If you don't, you can following the instructions in the README (Snowflake Setup) to set it up.
timeout: time in seconds to wait for query to finish before timing out
"""
import snowflake.connector
conn = None
cur = None
if db_creds is None:
db_creds = db_creds_all["snowflake"]
try:
conn = snowflake.connector.connect(
user=db_creds["user"],
password=db_creds["password"],
account=db_creds["account"],
)
cur = conn.cursor()
cur.execute(f"USE WAREHOUSE {db_creds['warehouse']}") # set the warehouse
cur.execute(f"USE DATABASE {db_name}") # set the database
cur.execute(query)
colnames = [desc[0] for desc in cur.description]
results = cur.fetchall()
cur.close()
conn.close()
# make into a dataframe
df = pd.DataFrame(results, columns=colnames)
# round floats to decimal_points
if decimal_points:
df = df.round(decimal_points)
return df
except Exception as e:
if cur:
cur.close()
if conn:
conn.close()
raise e
def query_bq_db(
query: str,
db_name: str,
db_creds: dict = None,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Runs query on BigQuery db and returns results as a dataframe.
This assumes that you have the evaluation databases already set up in a BigQuery project.
If you don't, you can follow the instructions in the README of the defog-data repo to set it up.
timeout: time in seconds to wait for query to finish before timing out
decimal_points: number of decimal points to round floats to
"""
from google.cloud import bigquery
if db_creds is None:
db_creds = db_creds_all["bigquery"]
bigquery_proj = db_creds["project"]
tries = 0
error_msg = ""
while tries < 3:
try:
client = bigquery.Client(project=bigquery_proj)
query_job = client.query(query)
results = query_job.result()
# make into a dataframe
df = results.to_dataframe()
# round floats to decimal_points
if decimal_points:
df = df.round(decimal_points)
return df
except Exception as e:
error_msg = str(e)
if any(x in error_msg for x in ["Not found: Table", "Not found: Dataset"]):
tries += 1
time.sleep(4)
else:
raise e
raise Exception(f"BigQuery error: {error_msg}")
def query_mysql_db(
query: str,
db_name: str,
db_creds: dict = None,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Runs query on mysql db and returns results as a dataframe.
This assumes that you have the evaluation database running locally on MySQL.
If you don't, you can follow the instructions in the README of the defog-data repo to set it up.
timeout: time in seconds to wait for query to finish before timing out
decimal_points: number of decimal points to round floats to
"""
import mysql.connector
conn = None
cur = None
if db_creds is None:
db_creds = db_creds_all["mysql"]
try:
conn = mysql.connector.connect(**db_creds)
cursor = conn.cursor()
use_db = f"USE {db_name};"
cursor.execute(use_db)
cursor.execute(query)
results = cursor.fetchall()
cursor.close()
conn.close()
# make into a dataframe
df = pd.DataFrame(results)
# round floats to decimal_points
if decimal_points:
df = df.round(decimal_points)
return df
except Exception as e:
if cur:
cur.close()
if conn:
conn.close()
raise e
def query_sqlite_db(
query: str,
db_name: str,
db_creds: dict = None,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Runs query on sqlite db and returns results as a dataframe.
This assumes that you have the evaluation databases set up in defog_data/sqlite_dbs/.
If you don't, you can follow the instructions in the README of the defog-data repo to set it up.
timeout: time in seconds to wait for query to finish before timing out
decimal_points: number of decimal points to round floats to
"""
import sqlite3
conn = None
cur = None
if db_creds is None:
db_creds = db_creds_all["sqlite"]
try:
db_file = f"{db_creds['path_to_folder']}{db_name}.db"
conn = sqlite3.connect(db_file)
cur = conn.cursor()
cur.execute(query)
results = cur.fetchall()
colnames = [desc[0] for desc in cur.description]
cur.close()
conn.close()
# make into a dataframe
df = pd.DataFrame(results, columns=colnames)
# round floats to decimal_points
if decimal_points:
df = df.round(decimal_points)
return df
except Exception as e:
if cur:
cur.close()
if conn:
conn.close()
raise e
def query_tsql_db(
query: str,
db_name: str,
db_creds: dict = None,
decimal_points: int = None,
) -> pd.DataFrame:
"""
Runs query on SQL Server db and returns results as a dataframe.
This assumes that you have the evaluation databases set up in SQL Server.
If you don't, you can follow the instructions in the README of the defog-data repo to set it up.
timeout: time in seconds to wait for query to finish before timing out
decimal_points: number of decimal points to round floats to
"""
import pyodbc
conn = None
cur = None
if db_creds is None:
db_creds = db_creds_all["tsql"]
try:
with pyodbc.connect(
f"DRIVER={db_creds['driver']};SERVER={db_creds['server']};DATABASE={db_name};UID={db_creds['user']};PWD={db_creds['password']}"
) as conn:
with conn.cursor() as cursor:
cursor.execute(query)
results = cursor.fetchall()
results = [list(row) for row in results]
colnames = [desc[0] for desc in cursor.description]
# make into a dataframe
df = pd.DataFrame(results, columns=colnames)
# round floats to decimal_points
if decimal_points:
df = df.round(decimal_points)
return df
except Exception as e:
if cur:
cur.close()
if conn:
conn.close()
raise e
def compare_df(
df_gold: pd.DataFrame,
df_gen: pd.DataFrame,
query_category: str,
question: str,
query_gold: str = None,
query_gen: str = None,
) -> bool:
"""
Compares two dataframes and returns True if they are the same, else False.
query_gold and query_gen are the original queries that generated the respective dataframes.
"""
# drop duplicates to ensure equivalence
try:
is_equal = df_gold.values == df_gen.values
if is_equal.all():
return True
except:
try:
is_equal = df_gold.values == df_gen.values
if is_equal:
return True
except:
pass
df_gold = normalize_table(df_gold, query_category, question, query_gold)
df_gen = normalize_table(df_gen, query_category, question, query_gen)
# perform same checks again for normalized tables
if df_gold.shape != df_gen.shape:
return False
# fill NaNs with -99999 to handle NaNs in the dataframes for comparison
df_gen.fillna(-99999, inplace=True)
df_gold.fillna(-99999, inplace=True)
is_equal = df_gold.values == df_gen.values
try:
return is_equal.all()
except:
return is_equal
def subset_df(
df_sub: pd.DataFrame,
df_super: pd.DataFrame,
query_category: str,
question: str,
query_super: str = None,
query_sub: str = None,
verbose: bool = False,
) -> bool:
"""
Checks if df_sub is a subset of df_super.
"""
if df_sub.empty:
return False # handle cases for empty dataframes
# make a copy of df_super so we don't modify the original while keeping track of matches
df_super_temp = df_super.copy(deep=True)
matched_columns = []
df_sub = deduplicate_columns(df_sub)
df_super_temp = deduplicate_columns(df_super_temp)
for col_sub_name in df_sub.columns:
col_match = False
for col_super_name in df_super_temp.columns:
col_sub = df_sub[col_sub_name].sort_values().reset_index(drop=True)
col_super = (
df_super_temp[col_super_name].sort_values().reset_index(drop=True)
)
try:
assert_series_equal(
col_sub, col_super, check_dtype=False, check_names=False
)
col_match = True
matched_columns.append(col_super_name)
# remove col_super_name to prevent us from matching it again
df_super_temp = df_super_temp.drop(columns=[col_super_name])
break
except AssertionError:
continue
if not col_match:
if verbose:
print(f"no match for {col_sub_name}")
return False
df_sub_normalized = normalize_table(df_sub, query_category, question, query_sub)
# get matched columns from df_super, and rename them with columns from df_sub, then normalize
df_super_matched = df_super[matched_columns].rename(
columns=dict(zip(matched_columns, df_sub.columns))
)
df_super_matched = normalize_table(
df_super_matched, query_category, question, query_super
)
try:
assert_frame_equal(df_sub_normalized, df_super_matched, check_dtype=False)
return True
except AssertionError:
return False
def compare_query_results(
query_gold: str,
query_gen: str,
db_name: str,
db_type: str,
db_creds: dict,
question: str,
query_category: str,
table_metadata_string: str = "",
timeout: float = 10.0,
decimal_points: int = None,
) -> "tuple[bool, bool]":
"""
Compares the results of two queries and returns a tuple of booleans, where the first element is
whether the queries produce exactly the same result, and the second element is whether the
result of the gold query is a subset of the result of the generated query (still correct).
We bubble up exceptions (mostly from query_postgres_db) to be handled in the runner.
"""
queries_gold = get_all_minimal_queries(query_gold)
if "_temp" not in db_name:
if db_type == "postgres":
results_gen = query_postgres_db(
query_gen, db_name, db_creds, timeout, decimal_points=decimal_points
)
elif db_type == "snowflake":
results_gen = query_snowflake_db(
query_gen, db_name, db_creds, timeout, decimal_points=decimal_points
)
elif db_type == "bigquery":
results_gen = query_bq_db(
query_gen, db_name, db_creds, decimal_points=decimal_points
)
elif db_type == "mysql":
results_gen = query_mysql_db(
query_gen,
db_name,
db_creds,
decimal_points=decimal_points,
)
elif db_type == "sqlite":
results_gen = query_sqlite_db(
query_gen,
db_name,
db_creds,
decimal_points=decimal_points,
)
elif db_type == "tsql":
results_gen = query_tsql_db(
query_gen,
db_name,
db_creds,
decimal_points=decimal_points,
)
else:
raise ValueError(
f"Invalid db_type: {db_type}. Only postgres, snowflake, bigquery, mysql, sqlite and tsql are supported."
)
else:
if db_type == "postgres":
results_gen = query_postgres_temp_db(
query_gen,
db_name,
db_creds,
table_metadata_string,
timeout,
decimal_points=decimal_points,
)
else:
raise ValueError(
f"Invalid db_type: {db_type}. Only postgres is supported for temporary databases."
)
correct = False
for q in queries_gold:
if "_temp" not in db_name:
if db_type == "postgres":
results_gold = query_postgres_db(
q, db_name, db_creds, timeout, decimal_points=decimal_points
)
elif db_type == "snowflake":
results_gold = query_snowflake_db(
q, db_name, db_creds, timeout, decimal_points=decimal_points
)
elif db_type == "bigquery":
results_gold = query_bq_db(
q, db_name, db_creds, decimal_points=decimal_points
)
elif db_type == "mysql":
results_gold = query_mysql_db(
q,
db_name,
db_creds,
decimal_points=decimal_points,
)
elif db_type == "sqlite":
results_gold = query_sqlite_db(
q,
db_name,
db_creds,
decimal_points=decimal_points,
)
elif db_type == "tsql":
results_gold = query_tsql_db(
q,
db_name,
db_creds,
decimal_points=decimal_points,
)
else:
raise ValueError(
f"Invalid db_type: {db_type}. Only postgres, snowflake, bigquery, mysql, sqlite and tsql are supported."
)
else:
if db_type == "postgres":
results_gold = query_postgres_temp_db(
q,
db_name,
db_creds,
table_metadata_string,
timeout,
decimal_points=decimal_points,
)
else:
raise ValueError(
f"Invalid db_type: {db_type}. Only postgres is supported for temporary databases."
)
if compare_df(
results_gold, results_gen, query_category, question, query_gold, query_gen
):
return (True, True)
elif subset_df(results_gold, results_gen, query_category, question):
correct = True
return (False, correct)