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from __future__ import annotations
import contextlib
from contextlib import closing
import csv
from datetime import (
date,
datetime,
time,
timedelta,
)
from io import StringIO
from pathlib import Path
import sqlite3
from typing import TYPE_CHECKING
import uuid
import numpy as np
import pytest
from pandas._libs import lib
from pandas.compat import (
pa_version_under13p0,
pa_version_under14p1,
)
from pandas.compat._optional import import_optional_dependency
import pandas.util._test_decorators as td
import pandas as pd
from pandas import (
DataFrame,
Index,
MultiIndex,
Series,
Timestamp,
concat,
date_range,
isna,
to_datetime,
to_timedelta,
)
import pandas._testing as tm
from pandas.core.arrays import (
ArrowStringArray,
StringArray,
)
from pandas.util.version import Version
from pandas.io import sql
from pandas.io.sql import (
SQLAlchemyEngine,
SQLDatabase,
SQLiteDatabase,
get_engine,
pandasSQL_builder,
read_sql_query,
read_sql_table,
)
if TYPE_CHECKING:
import sqlalchemy
pytestmark = pytest.mark.filterwarnings(
"ignore:Passing a BlockManager to DataFrame:DeprecationWarning"
)
@pytest.fixture
def sql_strings():
return {
"read_parameters": {
"sqlite": "SELECT * FROM iris WHERE Name=? AND SepalLength=?",
"mysql": "SELECT * FROM iris WHERE `Name`=%s AND `SepalLength`=%s",
"postgresql": 'SELECT * FROM iris WHERE "Name"=%s AND "SepalLength"=%s',
},
"read_named_parameters": {
"sqlite": """
SELECT * FROM iris WHERE Name=:name AND SepalLength=:length
""",
"mysql": """
SELECT * FROM iris WHERE
`Name`=%(name)s AND `SepalLength`=%(length)s
""",
"postgresql": """
SELECT * FROM iris WHERE
"Name"=%(name)s AND "SepalLength"=%(length)s
""",
},
"read_no_parameters_with_percent": {
"sqlite": "SELECT * FROM iris WHERE Name LIKE '%'",
"mysql": "SELECT * FROM iris WHERE `Name` LIKE '%'",
"postgresql": "SELECT * FROM iris WHERE \"Name\" LIKE '%'",
},
}
def iris_table_metadata():
import sqlalchemy
from sqlalchemy import (
Column,
Double,
Float,
MetaData,
String,
Table,
)
dtype = Double if Version(sqlalchemy.__version__) >= Version("2.0.0") else Float
metadata = MetaData()
iris = Table(
"iris",
metadata,
Column("SepalLength", dtype),
Column("SepalWidth", dtype),
Column("PetalLength", dtype),
Column("PetalWidth", dtype),
Column("Name", String(200)),
)
return iris
def create_and_load_iris_sqlite3(conn, iris_file: Path):
stmt = """CREATE TABLE iris (
"SepalLength" REAL,
"SepalWidth" REAL,
"PetalLength" REAL,
"PetalWidth" REAL,
"Name" TEXT
)"""
cur = conn.cursor()
cur.execute(stmt)
with iris_file.open(newline=None, encoding="utf-8") as csvfile:
reader = csv.reader(csvfile)
next(reader)
stmt = "INSERT INTO iris VALUES(?, ?, ?, ?, ?)"
# ADBC requires explicit types - no implicit str -> float conversion
records = []
records = [
(
float(row[0]),
float(row[1]),
float(row[2]),
float(row[3]),
row[4],
)
for row in reader
]
cur.executemany(stmt, records)
cur.close()
conn.commit()
def create_and_load_iris_postgresql(conn, iris_file: Path):
stmt = """CREATE TABLE iris (
"SepalLength" DOUBLE PRECISION,
"SepalWidth" DOUBLE PRECISION,
"PetalLength" DOUBLE PRECISION,
"PetalWidth" DOUBLE PRECISION,
"Name" TEXT
)"""
with conn.cursor() as cur:
cur.execute(stmt)
with iris_file.open(newline=None, encoding="utf-8") as csvfile:
reader = csv.reader(csvfile)
next(reader)
stmt = "INSERT INTO iris VALUES($1, $2, $3, $4, $5)"
# ADBC requires explicit types - no implicit str -> float conversion
records = [
(
float(row[0]),
float(row[1]),
float(row[2]),
float(row[3]),
row[4],
)
for row in reader
]
cur.executemany(stmt, records)
conn.commit()
def create_and_load_iris(conn, iris_file: Path):
from sqlalchemy import insert
iris = iris_table_metadata()
with iris_file.open(newline=None, encoding="utf-8") as csvfile:
reader = csv.reader(csvfile)
header = next(reader)
params = [dict(zip(header, row)) for row in reader]
stmt = insert(iris).values(params)
with conn.begin() as con:
iris.drop(con, checkfirst=True)
iris.create(bind=con)
con.execute(stmt)
def create_and_load_iris_view(conn):
stmt = "CREATE VIEW iris_view AS SELECT * FROM iris"
if isinstance(conn, sqlite3.Connection):
cur = conn.cursor()
cur.execute(stmt)
else:
adbc = import_optional_dependency("adbc_driver_manager.dbapi", errors="ignore")
if adbc and isinstance(conn, adbc.Connection):
with conn.cursor() as cur:
cur.execute(stmt)
conn.commit()
else:
from sqlalchemy import text
stmt = text(stmt)
with conn.begin() as con:
con.execute(stmt)
def types_table_metadata(dialect: str):
from sqlalchemy import (
TEXT,
Boolean,
Column,
DateTime,
Float,
Integer,
MetaData,
Table,
)
date_type = TEXT if dialect == "sqlite" else DateTime
bool_type = Integer if dialect == "sqlite" else Boolean
metadata = MetaData()
types = Table(
"types",
metadata,
Column("TextCol", TEXT),
Column("DateCol", date_type),
Column("IntDateCol", Integer),
Column("IntDateOnlyCol", Integer),
Column("FloatCol", Float),
Column("IntCol", Integer),
Column("BoolCol", bool_type),
Column("IntColWithNull", Integer),
Column("BoolColWithNull", bool_type),
)
return types
def create_and_load_types_sqlite3(conn, types_data: list[dict]):
stmt = """CREATE TABLE types (
"TextCol" TEXT,
"DateCol" TEXT,
"IntDateCol" INTEGER,
"IntDateOnlyCol" INTEGER,
"FloatCol" REAL,
"IntCol" INTEGER,
"BoolCol" INTEGER,
"IntColWithNull" INTEGER,
"BoolColWithNull" INTEGER
)"""
ins_stmt = """
INSERT INTO types
VALUES(?, ?, ?, ?, ?, ?, ?, ?, ?)
"""
if isinstance(conn, sqlite3.Connection):
cur = conn.cursor()
cur.execute(stmt)
cur.executemany(ins_stmt, types_data)
else:
with conn.cursor() as cur:
cur.execute(stmt)
cur.executemany(ins_stmt, types_data)
conn.commit()
def create_and_load_types_postgresql(conn, types_data: list[dict]):
with conn.cursor() as cur:
stmt = """CREATE TABLE types (
"TextCol" TEXT,
"DateCol" TIMESTAMP,
"IntDateCol" INTEGER,
"IntDateOnlyCol" INTEGER,
"FloatCol" DOUBLE PRECISION,
"IntCol" INTEGER,
"BoolCol" BOOLEAN,
"IntColWithNull" INTEGER,
"BoolColWithNull" BOOLEAN
)"""
cur.execute(stmt)
stmt = """
INSERT INTO types
VALUES($1, $2::timestamp, $3, $4, $5, $6, $7, $8, $9)
"""
cur.executemany(stmt, types_data)
conn.commit()
def create_and_load_types(conn, types_data: list[dict], dialect: str):
from sqlalchemy import insert
from sqlalchemy.engine import Engine
types = types_table_metadata(dialect)
stmt = insert(types).values(types_data)
if isinstance(conn, Engine):
with conn.connect() as conn:
with conn.begin():
types.drop(conn, checkfirst=True)
types.create(bind=conn)
conn.execute(stmt)
else:
with conn.begin():
types.drop(conn, checkfirst=True)
types.create(bind=conn)
conn.execute(stmt)
def create_and_load_postgres_datetz(conn):
from sqlalchemy import (
Column,
DateTime,
MetaData,
Table,
insert,
)
from sqlalchemy.engine import Engine
metadata = MetaData()
datetz = Table("datetz", metadata, Column("DateColWithTz", DateTime(timezone=True)))
datetz_data = [
{
"DateColWithTz": "2000-01-01 00:00:00-08:00",
},
{
"DateColWithTz": "2000-06-01 00:00:00-07:00",
},
]
stmt = insert(datetz).values(datetz_data)
if isinstance(conn, Engine):
with conn.connect() as conn:
with conn.begin():
datetz.drop(conn, checkfirst=True)
datetz.create(bind=conn)
conn.execute(stmt)
else:
with conn.begin():
datetz.drop(conn, checkfirst=True)
datetz.create(bind=conn)
conn.execute(stmt)
# "2000-01-01 00:00:00-08:00" should convert to
# "2000-01-01 08:00:00"
# "2000-06-01 00:00:00-07:00" should convert to
# "2000-06-01 07:00:00"
# GH 6415
expected_data = [
Timestamp("2000-01-01 08:00:00", tz="UTC"),
Timestamp("2000-06-01 07:00:00", tz="UTC"),
]
return Series(expected_data, name="DateColWithTz")
def check_iris_frame(frame: DataFrame):
pytype = frame.dtypes.iloc[0].type
row = frame.iloc[0]
assert issubclass(pytype, np.floating)
tm.assert_series_equal(
row, Series([5.1, 3.5, 1.4, 0.2, "Iris-setosa"], index=frame.columns, name=0)
)
assert frame.shape in ((150, 5), (8, 5))
def count_rows(conn, table_name: str):
stmt = f"SELECT count(*) AS count_1 FROM {table_name}"
adbc = import_optional_dependency("adbc_driver_manager.dbapi", errors="ignore")
if isinstance(conn, sqlite3.Connection):
cur = conn.cursor()
return cur.execute(stmt).fetchone()[0]
elif adbc and isinstance(conn, adbc.Connection):
with conn.cursor() as cur:
cur.execute(stmt)
return cur.fetchone()[0]
else:
from sqlalchemy import create_engine
from sqlalchemy.engine import Engine
if isinstance(conn, str):
try:
engine = create_engine(conn)
with engine.connect() as conn:
return conn.exec_driver_sql(stmt).scalar_one()
finally:
engine.dispose()
elif isinstance(conn, Engine):
with conn.connect() as conn:
return conn.exec_driver_sql(stmt).scalar_one()
else:
return conn.exec_driver_sql(stmt).scalar_one()
@pytest.fixture
def iris_path(datapath):
iris_path = datapath("io", "data", "csv", "iris.csv")
return Path(iris_path)
@pytest.fixture
def types_data():
return [
{
"TextCol": "first",
"DateCol": "2000-01-03 00:00:00",
"IntDateCol": 535852800,
"IntDateOnlyCol": 20101010,
"FloatCol": 10.10,
"IntCol": 1,
"BoolCol": False,
"IntColWithNull": 1,
"BoolColWithNull": False,
},
{
"TextCol": "first",
"DateCol": "2000-01-04 00:00:00",
"IntDateCol": 1356998400,
"IntDateOnlyCol": 20101212,
"FloatCol": 10.10,
"IntCol": 1,
"BoolCol": False,
"IntColWithNull": None,
"BoolColWithNull": None,
},
]
@pytest.fixture
def types_data_frame(types_data):
dtypes = {
"TextCol": "str",
"DateCol": "str",
"IntDateCol": "int64",
"IntDateOnlyCol": "int64",
"FloatCol": "float",
"IntCol": "int64",
"BoolCol": "int64",
"IntColWithNull": "float",
"BoolColWithNull": "float",
}
df = DataFrame(types_data)
return df[dtypes.keys()].astype(dtypes)
@pytest.fixture
def test_frame1():
columns = ["index", "A", "B", "C", "D"]
data = [
(
"2000-01-03 00:00:00",
0.980268513777,
3.68573087906,
-0.364216805298,
-1.15973806169,
),
(
"2000-01-04 00:00:00",
1.04791624281,
-0.0412318367011,
-0.16181208307,
0.212549316967,
),
(
"2000-01-05 00:00:00",
0.498580885705,
0.731167677815,
-0.537677223318,
1.34627041952,
),
(
"2000-01-06 00:00:00",
1.12020151869,
1.56762092543,
0.00364077397681,
0.67525259227,
),
]
return DataFrame(data, columns=columns)
@pytest.fixture
def test_frame3():
columns = ["index", "A", "B"]
data = [
("2000-01-03 00:00:00", 2**31 - 1, -1.987670),
("2000-01-04 00:00:00", -29, -0.0412318367011),
("2000-01-05 00:00:00", 20000, 0.731167677815),
("2000-01-06 00:00:00", -290867, 1.56762092543),
]
return DataFrame(data, columns=columns)
def get_all_views(conn):
if isinstance(conn, sqlite3.Connection):
c = conn.execute("SELECT name FROM sqlite_master WHERE type='view'")
return [view[0] for view in c.fetchall()]
else:
adbc = import_optional_dependency("adbc_driver_manager.dbapi", errors="ignore")
if adbc and isinstance(conn, adbc.Connection):
results = []
info = conn.adbc_get_objects().read_all().to_pylist()
for catalog in info:
catalog["catalog_name"]
for schema in catalog["catalog_db_schemas"]:
schema["db_schema_name"]
for table in schema["db_schema_tables"]:
if table["table_type"] == "view":
view_name = table["table_name"]
results.append(view_name)
return results
else:
from sqlalchemy import inspect
return inspect(conn).get_view_names()
def get_all_tables(conn):
if isinstance(conn, sqlite3.Connection):
c = conn.execute("SELECT name FROM sqlite_master WHERE type='table'")
return [table[0] for table in c.fetchall()]
else:
adbc = import_optional_dependency("adbc_driver_manager.dbapi", errors="ignore")
if adbc and isinstance(conn, adbc.Connection):
results = []
info = conn.adbc_get_objects().read_all().to_pylist()
for catalog in info:
for schema in catalog["catalog_db_schemas"]:
for table in schema["db_schema_tables"]:
if table["table_type"] == "table":
table_name = table["table_name"]
results.append(table_name)
return results
else:
from sqlalchemy import inspect
return inspect(conn).get_table_names()
def drop_table(
table_name: str,
conn: sqlite3.Connection | sqlalchemy.engine.Engine | sqlalchemy.engine.Connection,
):
if isinstance(conn, sqlite3.Connection):
conn.execute(f"DROP TABLE IF EXISTS {sql._get_valid_sqlite_name(table_name)}")
conn.commit()
else:
adbc = import_optional_dependency("adbc_driver_manager.dbapi", errors="ignore")
if adbc and isinstance(conn, adbc.Connection):
with conn.cursor() as cur:
cur.execute(f'DROP TABLE IF EXISTS "{table_name}"')
else:
with conn.begin() as con:
with sql.SQLDatabase(con) as db:
db.drop_table(table_name)
def drop_view(
view_name: str,
conn: sqlite3.Connection | sqlalchemy.engine.Engine | sqlalchemy.engine.Connection,
):
import sqlalchemy
if isinstance(conn, sqlite3.Connection):
conn.execute(f"DROP VIEW IF EXISTS {sql._get_valid_sqlite_name(view_name)}")
conn.commit()
else:
adbc = import_optional_dependency("adbc_driver_manager.dbapi", errors="ignore")
if adbc and isinstance(conn, adbc.Connection):
with conn.cursor() as cur:
cur.execute(f'DROP VIEW IF EXISTS "{view_name}"')
else:
quoted_view = conn.engine.dialect.identifier_preparer.quote_identifier(
view_name
)
stmt = sqlalchemy.text(f"DROP VIEW IF EXISTS {quoted_view}")
with conn.begin() as con:
con.execute(stmt) # type: ignore[union-attr]
@pytest.fixture
def mysql_pymysql_engine():
sqlalchemy = pytest.importorskip("sqlalchemy")
pymysql = pytest.importorskip("pymysql")
engine = sqlalchemy.create_engine(
"mysql+pymysql://root@localhost:3306/pandas",
connect_args={"client_flag": pymysql.constants.CLIENT.MULTI_STATEMENTS},
poolclass=sqlalchemy.pool.NullPool,
)
yield engine
for view in get_all_views(engine):
drop_view(view, engine)
for tbl in get_all_tables(engine):
drop_table(tbl, engine)
engine.dispose()
@pytest.fixture
def mysql_pymysql_engine_iris(mysql_pymysql_engine, iris_path):
create_and_load_iris(mysql_pymysql_engine, iris_path)
create_and_load_iris_view(mysql_pymysql_engine)
yield mysql_pymysql_engine
@pytest.fixture
def mysql_pymysql_engine_types(mysql_pymysql_engine, types_data):
create_and_load_types(mysql_pymysql_engine, types_data, "mysql")
yield mysql_pymysql_engine
@pytest.fixture
def mysql_pymysql_conn(mysql_pymysql_engine):
with mysql_pymysql_engine.connect() as conn:
yield conn
@pytest.fixture
def mysql_pymysql_conn_iris(mysql_pymysql_engine_iris):
with mysql_pymysql_engine_iris.connect() as conn:
yield conn
@pytest.fixture
def mysql_pymysql_conn_types(mysql_pymysql_engine_types):
with mysql_pymysql_engine_types.connect() as conn:
yield conn
@pytest.fixture
def postgresql_psycopg2_engine():
sqlalchemy = pytest.importorskip("sqlalchemy")
pytest.importorskip("psycopg2")
engine = sqlalchemy.create_engine(
"postgresql+psycopg2://postgres:postgres@localhost:5432/pandas",
poolclass=sqlalchemy.pool.NullPool,
)
yield engine
for view in get_all_views(engine):
drop_view(view, engine)
for tbl in get_all_tables(engine):
drop_table(tbl, engine)
engine.dispose()
@pytest.fixture
def postgresql_psycopg2_engine_iris(postgresql_psycopg2_engine, iris_path):
create_and_load_iris(postgresql_psycopg2_engine, iris_path)
create_and_load_iris_view(postgresql_psycopg2_engine)
yield postgresql_psycopg2_engine
@pytest.fixture
def postgresql_psycopg2_engine_types(postgresql_psycopg2_engine, types_data):
create_and_load_types(postgresql_psycopg2_engine, types_data, "postgres")
yield postgresql_psycopg2_engine
@pytest.fixture
def postgresql_psycopg2_conn(postgresql_psycopg2_engine):
with postgresql_psycopg2_engine.connect() as conn:
yield conn
@pytest.fixture
def postgresql_adbc_conn():
pytest.importorskip("adbc_driver_postgresql")
from adbc_driver_postgresql import dbapi
uri = "postgresql://postgres:postgres@localhost:5432/pandas"
with dbapi.connect(uri) as conn:
yield conn
for view in get_all_views(conn):
drop_view(view, conn)
for tbl in get_all_tables(conn):
drop_table(tbl, conn)
conn.commit()
@pytest.fixture
def postgresql_adbc_iris(postgresql_adbc_conn, iris_path):
import adbc_driver_manager as mgr
conn = postgresql_adbc_conn
try:
conn.adbc_get_table_schema("iris")
except mgr.ProgrammingError:
conn.rollback()
create_and_load_iris_postgresql(conn, iris_path)
try:
conn.adbc_get_table_schema("iris_view")
except mgr.ProgrammingError: # note arrow-adbc issue 1022
conn.rollback()
create_and_load_iris_view(conn)
yield conn
@pytest.fixture
def postgresql_adbc_types(postgresql_adbc_conn, types_data):
import adbc_driver_manager as mgr
conn = postgresql_adbc_conn
try:
conn.adbc_get_table_schema("types")
except mgr.ProgrammingError:
conn.rollback()
new_data = [tuple(entry.values()) for entry in types_data]
create_and_load_types_postgresql(conn, new_data)
yield conn
@pytest.fixture
def postgresql_psycopg2_conn_iris(postgresql_psycopg2_engine_iris):
with postgresql_psycopg2_engine_iris.connect() as conn:
yield conn
@pytest.fixture
def postgresql_psycopg2_conn_types(postgresql_psycopg2_engine_types):
with postgresql_psycopg2_engine_types.connect() as conn:
yield conn
@pytest.fixture
def sqlite_str():
pytest.importorskip("sqlalchemy")
with tm.ensure_clean() as name:
yield f"sqlite:///{name}"
@pytest.fixture
def sqlite_engine(sqlite_str):
sqlalchemy = pytest.importorskip("sqlalchemy")
engine = sqlalchemy.create_engine(sqlite_str, poolclass=sqlalchemy.pool.NullPool)
yield engine
for view in get_all_views(engine):
drop_view(view, engine)
for tbl in get_all_tables(engine):
drop_table(tbl, engine)
engine.dispose()
@pytest.fixture
def sqlite_conn(sqlite_engine):
with sqlite_engine.connect() as conn:
yield conn
@pytest.fixture
def sqlite_str_iris(sqlite_str, iris_path):
sqlalchemy = pytest.importorskip("sqlalchemy")
engine = sqlalchemy.create_engine(sqlite_str)
create_and_load_iris(engine, iris_path)
create_and_load_iris_view(engine)
engine.dispose()
return sqlite_str
@pytest.fixture
def sqlite_engine_iris(sqlite_engine, iris_path):
create_and_load_iris(sqlite_engine, iris_path)
create_and_load_iris_view(sqlite_engine)
yield sqlite_engine
@pytest.fixture
def sqlite_conn_iris(sqlite_engine_iris):
with sqlite_engine_iris.connect() as conn:
yield conn
@pytest.fixture
def sqlite_str_types(sqlite_str, types_data):
sqlalchemy = pytest.importorskip("sqlalchemy")
engine = sqlalchemy.create_engine(sqlite_str)
create_and_load_types(engine, types_data, "sqlite")
engine.dispose()
return sqlite_str
@pytest.fixture
def sqlite_engine_types(sqlite_engine, types_data):
create_and_load_types(sqlite_engine, types_data, "sqlite")
yield sqlite_engine
@pytest.fixture
def sqlite_conn_types(sqlite_engine_types):
with sqlite_engine_types.connect() as conn:
yield conn
@pytest.fixture
def sqlite_adbc_conn():
pytest.importorskip("adbc_driver_sqlite")
from adbc_driver_sqlite import dbapi
with tm.ensure_clean() as name:
uri = f"file:{name}"
with dbapi.connect(uri) as conn:
yield conn
for view in get_all_views(conn):
drop_view(view, conn)
for tbl in get_all_tables(conn):
drop_table(tbl, conn)
conn.commit()
@pytest.fixture
def sqlite_adbc_iris(sqlite_adbc_conn, iris_path):
import adbc_driver_manager as mgr
conn = sqlite_adbc_conn
try:
conn.adbc_get_table_schema("iris")
except mgr.ProgrammingError:
conn.rollback()
create_and_load_iris_sqlite3(conn, iris_path)
try:
conn.adbc_get_table_schema("iris_view")
except mgr.ProgrammingError:
conn.rollback()
create_and_load_iris_view(conn)
yield conn
@pytest.fixture
def sqlite_adbc_types(sqlite_adbc_conn, types_data):
import adbc_driver_manager as mgr
conn = sqlite_adbc_conn
try:
conn.adbc_get_table_schema("types")
except mgr.ProgrammingError:
conn.rollback()
new_data = []
for entry in types_data:
entry["BoolCol"] = int(entry["BoolCol"])
if entry["BoolColWithNull"] is not None:
entry["BoolColWithNull"] = int(entry["BoolColWithNull"])
new_data.append(tuple(entry.values()))
create_and_load_types_sqlite3(conn, new_data)
conn.commit()
yield conn
@pytest.fixture
def sqlite_buildin():
with contextlib.closing(sqlite3.connect(":memory:")) as closing_conn:
with closing_conn as conn:
yield conn
@pytest.fixture
def sqlite_buildin_iris(sqlite_buildin, iris_path):
create_and_load_iris_sqlite3(sqlite_buildin, iris_path)
create_and_load_iris_view(sqlite_buildin)
yield sqlite_buildin
@pytest.fixture
def sqlite_buildin_types(sqlite_buildin, types_data):
types_data = [tuple(entry.values()) for entry in types_data]
create_and_load_types_sqlite3(sqlite_buildin, types_data)
yield sqlite_buildin
mysql_connectable = [
pytest.param("mysql_pymysql_engine", marks=pytest.mark.db),
pytest.param("mysql_pymysql_conn", marks=pytest.mark.db),
]
mysql_connectable_iris = [
pytest.param("mysql_pymysql_engine_iris", marks=pytest.mark.db),
pytest.param("mysql_pymysql_conn_iris", marks=pytest.mark.db),
]
mysql_connectable_types = [
pytest.param("mysql_pymysql_engine_types", marks=pytest.mark.db),
pytest.param("mysql_pymysql_conn_types", marks=pytest.mark.db),
]
postgresql_connectable = [
pytest.param("postgresql_psycopg2_engine", marks=pytest.mark.db),
pytest.param("postgresql_psycopg2_conn", marks=pytest.mark.db),
]
postgresql_connectable_iris = [
pytest.param("postgresql_psycopg2_engine_iris", marks=pytest.mark.db),
pytest.param("postgresql_psycopg2_conn_iris", marks=pytest.mark.db),
]
postgresql_connectable_types = [
pytest.param("postgresql_psycopg2_engine_types", marks=pytest.mark.db),
pytest.param("postgresql_psycopg2_conn_types", marks=pytest.mark.db),
]
sqlite_connectable = [
"sqlite_engine",
"sqlite_conn",
"sqlite_str",
]
sqlite_connectable_iris = [
"sqlite_engine_iris",
"sqlite_conn_iris",
"sqlite_str_iris",
]
sqlite_connectable_types = [
"sqlite_engine_types",
"sqlite_conn_types",
"sqlite_str_types",
]
sqlalchemy_connectable = mysql_connectable + postgresql_connectable + sqlite_connectable
sqlalchemy_connectable_iris = (
mysql_connectable_iris + postgresql_connectable_iris + sqlite_connectable_iris
)
sqlalchemy_connectable_types = (
mysql_connectable_types + postgresql_connectable_types + sqlite_connectable_types
)
adbc_connectable = [
"sqlite_adbc_conn",
pytest.param("postgresql_adbc_conn", marks=pytest.mark.db),
]
adbc_connectable_iris = [
pytest.param("postgresql_adbc_iris", marks=pytest.mark.db),
pytest.param("sqlite_adbc_iris", marks=pytest.mark.db),
]
adbc_connectable_types = [
pytest.param("postgresql_adbc_types", marks=pytest.mark.db),
pytest.param("sqlite_adbc_types", marks=pytest.mark.db),
]
all_connectable = sqlalchemy_connectable + ["sqlite_buildin"] + adbc_connectable
all_connectable_iris = (
sqlalchemy_connectable_iris + ["sqlite_buildin_iris"] + adbc_connectable_iris
)
all_connectable_types = (
sqlalchemy_connectable_types + ["sqlite_buildin_types"] + adbc_connectable_types
)
@pytest.mark.parametrize("conn", all_connectable)
def test_dataframe_to_sql(conn, test_frame1, request):
# GH 51086 if conn is sqlite_engine
conn = request.getfixturevalue(conn)
test_frame1.to_sql(name="test", con=conn, if_exists="append", index=False)
@pytest.mark.parametrize("conn", all_connectable)
def test_dataframe_to_sql_empty(conn, test_frame1, request):
if conn == "postgresql_adbc_conn":
request.node.add_marker(
pytest.mark.xfail(
reason="postgres ADBC driver cannot insert index with null type",
strict=True,
)
)
# GH 51086 if conn is sqlite_engine
conn = request.getfixturevalue(conn)
empty_df = test_frame1.iloc[:0]
empty_df.to_sql(name="test", con=conn, if_exists="append", index=False)
@pytest.mark.parametrize("conn", all_connectable)
def test_dataframe_to_sql_arrow_dtypes(conn, request):
# GH 52046
pytest.importorskip("pyarrow")
df = DataFrame(
{
"int": pd.array([1], dtype="int8[pyarrow]"),
"datetime": pd.array(
[datetime(2023, 1, 1)], dtype="timestamp[ns][pyarrow]"
),
"date": pd.array([date(2023, 1, 1)], dtype="date32[day][pyarrow]"),
"timedelta": pd.array([timedelta(1)], dtype="duration[ns][pyarrow]"),
"string": pd.array(["a"], dtype="string[pyarrow]"),
}
)
if "adbc" in conn:
if conn == "sqlite_adbc_conn":
df = df.drop(columns=["timedelta"])
if pa_version_under14p1:
exp_warning = DeprecationWarning
msg = "is_sparse is deprecated"
else:
exp_warning = None
msg = ""
else:
exp_warning = UserWarning
msg = "the 'timedelta'"
conn = request.getfixturevalue(conn)
with tm.assert_produces_warning(exp_warning, match=msg, check_stacklevel=False):
df.to_sql(name="test_arrow", con=conn, if_exists="replace", index=False)
@pytest.mark.parametrize("conn", all_connectable)
def test_dataframe_to_sql_arrow_dtypes_missing(conn, request, nulls_fixture):
# GH 52046
pytest.importorskip("pyarrow")
df = DataFrame(
{
"datetime": pd.array(
[datetime(2023, 1, 1), nulls_fixture], dtype="timestamp[ns][pyarrow]"
),
}
)
conn = request.getfixturevalue(conn)
df.to_sql(name="test_arrow", con=conn, if_exists="replace", index=False)
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize("method", [None, "multi"])
def test_to_sql(conn, method, test_frame1, request):
if method == "multi" and "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'method' not implemented for ADBC drivers", strict=True
)
)
conn = request.getfixturevalue(conn)
with pandasSQL_builder(conn, need_transaction=True) as pandasSQL:
pandasSQL.to_sql(test_frame1, "test_frame", method=method)
assert pandasSQL.has_table("test_frame")
assert count_rows(conn, "test_frame") == len(test_frame1)
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize("mode, num_row_coef", [("replace", 1), ("append", 2)])
def test_to_sql_exist(conn, mode, num_row_coef, test_frame1, request):
conn = request.getfixturevalue(conn)
with pandasSQL_builder(conn, need_transaction=True) as pandasSQL:
pandasSQL.to_sql(test_frame1, "test_frame", if_exists="fail")
pandasSQL.to_sql(test_frame1, "test_frame", if_exists=mode)
assert pandasSQL.has_table("test_frame")
assert count_rows(conn, "test_frame") == num_row_coef * len(test_frame1)
@pytest.mark.parametrize("conn", all_connectable)
def test_to_sql_exist_fail(conn, test_frame1, request):
conn = request.getfixturevalue(conn)
with pandasSQL_builder(conn, need_transaction=True) as pandasSQL:
pandasSQL.to_sql(test_frame1, "test_frame", if_exists="fail")
assert pandasSQL.has_table("test_frame")
msg = "Table 'test_frame' already exists"
with pytest.raises(ValueError, match=msg):
pandasSQL.to_sql(test_frame1, "test_frame", if_exists="fail")
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_iris_query(conn, request):
conn = request.getfixturevalue(conn)
iris_frame = read_sql_query("SELECT * FROM iris", conn)
check_iris_frame(iris_frame)
iris_frame = pd.read_sql("SELECT * FROM iris", conn)
check_iris_frame(iris_frame)
iris_frame = pd.read_sql("SELECT * FROM iris where 0=1", conn)
assert iris_frame.shape == (0, 5)
assert "SepalWidth" in iris_frame.columns
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_iris_query_chunksize(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'chunksize' not implemented for ADBC drivers",
strict=True,
)
)
conn = request.getfixturevalue(conn)
iris_frame = concat(read_sql_query("SELECT * FROM iris", conn, chunksize=7))
check_iris_frame(iris_frame)
iris_frame = concat(pd.read_sql("SELECT * FROM iris", conn, chunksize=7))
check_iris_frame(iris_frame)
iris_frame = concat(pd.read_sql("SELECT * FROM iris where 0=1", conn, chunksize=7))
assert iris_frame.shape == (0, 5)
assert "SepalWidth" in iris_frame.columns
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_read_iris_query_expression_with_parameter(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'chunksize' not implemented for ADBC drivers",
strict=True,
)
)
conn = request.getfixturevalue(conn)
from sqlalchemy import (
MetaData,
Table,
create_engine,
select,
)
metadata = MetaData()
autoload_con = create_engine(conn) if isinstance(conn, str) else conn
iris = Table("iris", metadata, autoload_with=autoload_con)
iris_frame = read_sql_query(
select(iris), conn, params={"name": "Iris-setosa", "length": 5.1}
)
check_iris_frame(iris_frame)
if isinstance(conn, str):
autoload_con.dispose()
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_iris_query_string_with_parameter(conn, request, sql_strings):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'chunksize' not implemented for ADBC drivers",
strict=True,
)
)
for db, query in sql_strings["read_parameters"].items():
if db in conn:
break
else:
raise KeyError(f"No part of {conn} found in sql_strings['read_parameters']")
conn = request.getfixturevalue(conn)
iris_frame = read_sql_query(query, conn, params=("Iris-setosa", 5.1))
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_read_iris_table(conn, request):
# GH 51015 if conn = sqlite_iris_str
conn = request.getfixturevalue(conn)
iris_frame = read_sql_table("iris", conn)
check_iris_frame(iris_frame)
iris_frame = pd.read_sql("iris", conn)
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_read_iris_table_chunksize(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="chunksize argument NotImplemented with ADBC")
)
conn = request.getfixturevalue(conn)
iris_frame = concat(read_sql_table("iris", conn, chunksize=7))
check_iris_frame(iris_frame)
iris_frame = concat(pd.read_sql("iris", conn, chunksize=7))
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_to_sql_callable(conn, test_frame1, request):
conn = request.getfixturevalue(conn)
check = [] # used to double check function below is really being used
def sample(pd_table, conn, keys, data_iter):
check.append(1)
data = [dict(zip(keys, row)) for row in data_iter]
conn.execute(pd_table.table.insert(), data)
with pandasSQL_builder(conn, need_transaction=True) as pandasSQL:
pandasSQL.to_sql(test_frame1, "test_frame", method=sample)
assert pandasSQL.has_table("test_frame")
assert check == [1]
assert count_rows(conn, "test_frame") == len(test_frame1)
@pytest.mark.parametrize("conn", all_connectable_types)
def test_default_type_conversion(conn, request):
conn_name = conn
if conn_name == "sqlite_buildin_types":
request.applymarker(
pytest.mark.xfail(
reason="sqlite_buildin connection does not implement read_sql_table"
)
)
conn = request.getfixturevalue(conn)
df = sql.read_sql_table("types", conn)
assert issubclass(df.FloatCol.dtype.type, np.floating)
assert issubclass(df.IntCol.dtype.type, np.integer)
# MySQL/sqlite has no real BOOL type
if "postgresql" in conn_name:
assert issubclass(df.BoolCol.dtype.type, np.bool_)
else:
assert issubclass(df.BoolCol.dtype.type, np.integer)
# Int column with NA values stays as float
assert issubclass(df.IntColWithNull.dtype.type, np.floating)
# Bool column with NA = int column with NA values => becomes float
if "postgresql" in conn_name:
assert issubclass(df.BoolColWithNull.dtype.type, object)
else:
assert issubclass(df.BoolColWithNull.dtype.type, np.floating)
@pytest.mark.parametrize("conn", mysql_connectable)
def test_read_procedure(conn, request):
conn = request.getfixturevalue(conn)
# GH 7324
# Although it is more an api test, it is added to the
# mysql tests as sqlite does not have stored procedures
from sqlalchemy import text
from sqlalchemy.engine import Engine
df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3]})
df.to_sql(name="test_frame", con=conn, index=False)
proc = """DROP PROCEDURE IF EXISTS get_testdb;
CREATE PROCEDURE get_testdb ()
BEGIN
SELECT * FROM test_frame;
END"""
proc = text(proc)
if isinstance(conn, Engine):
with conn.connect() as engine_conn:
with engine_conn.begin():
engine_conn.execute(proc)
else:
with conn.begin():
conn.execute(proc)
res1 = sql.read_sql_query("CALL get_testdb();", conn)
tm.assert_frame_equal(df, res1)
# test delegation to read_sql_query
res2 = sql.read_sql("CALL get_testdb();", conn)
tm.assert_frame_equal(df, res2)
@pytest.mark.parametrize("conn", postgresql_connectable)
@pytest.mark.parametrize("expected_count", [2, "Success!"])
def test_copy_from_callable_insertion_method(conn, expected_count, request):
# GH 8953
# Example in io.rst found under _io.sql.method
# not available in sqlite, mysql
def psql_insert_copy(table, conn, keys, data_iter):
# gets a DBAPI connection that can provide a cursor
dbapi_conn = conn.connection
with dbapi_conn.cursor() as cur:
s_buf = StringIO()
writer = csv.writer(s_buf)
writer.writerows(data_iter)
s_buf.seek(0)
columns = ", ".join([f'"{k}"' for k in keys])
if table.schema:
table_name = f"{table.schema}.{table.name}"
else:
table_name = table.name
sql_query = f"COPY {table_name} ({columns}) FROM STDIN WITH CSV"
cur.copy_expert(sql=sql_query, file=s_buf)
return expected_count
conn = request.getfixturevalue(conn)
expected = DataFrame({"col1": [1, 2], "col2": [0.1, 0.2], "col3": ["a", "n"]})
result_count = expected.to_sql(
name="test_frame", con=conn, index=False, method=psql_insert_copy
)
# GH 46891
if expected_count is None:
assert result_count is None
else:
assert result_count == expected_count
result = sql.read_sql_table("test_frame", conn)
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", postgresql_connectable)
def test_insertion_method_on_conflict_do_nothing(conn, request):
# GH 15988: Example in to_sql docstring
conn = request.getfixturevalue(conn)
from sqlalchemy.dialects.postgresql import insert
from sqlalchemy.engine import Engine
from sqlalchemy.sql import text
def insert_on_conflict(table, conn, keys, data_iter):
data = [dict(zip(keys, row)) for row in data_iter]
stmt = (
insert(table.table)
.values(data)
.on_conflict_do_nothing(index_elements=["a"])
)
result = conn.execute(stmt)
return result.rowcount
create_sql = text(
"""
CREATE TABLE test_insert_conflict (
a integer PRIMARY KEY,
b numeric,
c text
);
"""
)
if isinstance(conn, Engine):
with conn.connect() as con:
with con.begin():
con.execute(create_sql)
else:
with conn.begin():
conn.execute(create_sql)
expected = DataFrame([[1, 2.1, "a"]], columns=list("abc"))
expected.to_sql(
name="test_insert_conflict", con=conn, if_exists="append", index=False
)
df_insert = DataFrame([[1, 3.2, "b"]], columns=list("abc"))
inserted = df_insert.to_sql(
name="test_insert_conflict",
con=conn,
index=False,
if_exists="append",
method=insert_on_conflict,
)
result = sql.read_sql_table("test_insert_conflict", conn)
tm.assert_frame_equal(result, expected)
assert inserted == 0
# Cleanup
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_insert_conflict")
@pytest.mark.parametrize("conn", mysql_connectable)
def test_insertion_method_on_conflict_update(conn, request):
# GH 14553: Example in to_sql docstring
conn = request.getfixturevalue(conn)
from sqlalchemy.dialects.mysql import insert
from sqlalchemy.engine import Engine
from sqlalchemy.sql import text
def insert_on_conflict(table, conn, keys, data_iter):
data = [dict(zip(keys, row)) for row in data_iter]
stmt = insert(table.table).values(data)
stmt = stmt.on_duplicate_key_update(b=stmt.inserted.b, c=stmt.inserted.c)
result = conn.execute(stmt)
return result.rowcount
create_sql = text(
"""
CREATE TABLE test_insert_conflict (
a INT PRIMARY KEY,
b FLOAT,
c VARCHAR(10)
);
"""
)
if isinstance(conn, Engine):
with conn.connect() as con:
with con.begin():
con.execute(create_sql)
else:
with conn.begin():
conn.execute(create_sql)
df = DataFrame([[1, 2.1, "a"]], columns=list("abc"))
df.to_sql(name="test_insert_conflict", con=conn, if_exists="append", index=False)
expected = DataFrame([[1, 3.2, "b"]], columns=list("abc"))
inserted = expected.to_sql(
name="test_insert_conflict",
con=conn,
index=False,
if_exists="append",
method=insert_on_conflict,
)
result = sql.read_sql_table("test_insert_conflict", conn)
tm.assert_frame_equal(result, expected)
assert inserted == 2
# Cleanup
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_insert_conflict")
@pytest.mark.parametrize("conn", postgresql_connectable)
def test_read_view_postgres(conn, request):
# GH 52969
conn = request.getfixturevalue(conn)
from sqlalchemy.engine import Engine
from sqlalchemy.sql import text
table_name = f"group_{uuid.uuid4().hex}"
view_name = f"group_view_{uuid.uuid4().hex}"
sql_stmt = text(
f"""
CREATE TABLE {table_name} (
group_id INTEGER,
name TEXT
);
INSERT INTO {table_name} VALUES
(1, 'name');
CREATE VIEW {view_name}
AS
SELECT * FROM {table_name};
"""
)
if isinstance(conn, Engine):
with conn.connect() as con:
with con.begin():
con.execute(sql_stmt)
else:
with conn.begin():
conn.execute(sql_stmt)
result = read_sql_table(view_name, conn)
expected = DataFrame({"group_id": [1], "name": "name"})
tm.assert_frame_equal(result, expected)
def test_read_view_sqlite(sqlite_buildin):
# GH 52969
create_table = """
CREATE TABLE groups (
group_id INTEGER,
name TEXT
);
"""
insert_into = """
INSERT INTO groups VALUES
(1, 'name');
"""
create_view = """
CREATE VIEW group_view
AS
SELECT * FROM groups;
"""
sqlite_buildin.execute(create_table)
sqlite_buildin.execute(insert_into)
sqlite_buildin.execute(create_view)
result = pd.read_sql("SELECT * FROM group_view", sqlite_buildin)
expected = DataFrame({"group_id": [1], "name": "name"})
tm.assert_frame_equal(result, expected)
def test_execute_typeerror(sqlite_engine_iris):
with pytest.raises(TypeError, match="pandas.io.sql.execute requires a connection"):
with tm.assert_produces_warning(
FutureWarning,
match="`pandas.io.sql.execute` is deprecated and "
"will be removed in the future version.",
):
sql.execute("select * from iris", sqlite_engine_iris)
def test_execute_deprecated(sqlite_conn_iris):
# GH50185
with tm.assert_produces_warning(
FutureWarning,
match="`pandas.io.sql.execute` is deprecated and "
"will be removed in the future version.",
):
sql.execute("select * from iris", sqlite_conn_iris)
def flavor(conn_name):
if "postgresql" in conn_name:
return "postgresql"
elif "sqlite" in conn_name:
return "sqlite"
elif "mysql" in conn_name:
return "mysql"
raise ValueError(f"unsupported connection: {conn_name}")
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_sql_iris_parameter(conn, request, sql_strings):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'params' not implemented for ADBC drivers",
strict=True,
)
)
conn_name = conn
conn = request.getfixturevalue(conn)
query = sql_strings["read_parameters"][flavor(conn_name)]
params = ("Iris-setosa", 5.1)
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
iris_frame = pandasSQL.read_query(query, params=params)
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_sql_iris_named_parameter(conn, request, sql_strings):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'params' not implemented for ADBC drivers",
strict=True,
)
)
conn_name = conn
conn = request.getfixturevalue(conn)
query = sql_strings["read_named_parameters"][flavor(conn_name)]
params = {"name": "Iris-setosa", "length": 5.1}
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
iris_frame = pandasSQL.read_query(query, params=params)
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_sql_iris_no_parameter_with_percent(conn, request, sql_strings):
if "mysql" in conn or ("postgresql" in conn and "adbc" not in conn):
request.applymarker(pytest.mark.xfail(reason="broken test"))
conn_name = conn
conn = request.getfixturevalue(conn)
query = sql_strings["read_no_parameters_with_percent"][flavor(conn_name)]
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
iris_frame = pandasSQL.read_query(query, params=None)
check_iris_frame(iris_frame)
# -----------------------------------------------------------------------------
# -- Testing the public API
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_api_read_sql_view(conn, request):
conn = request.getfixturevalue(conn)
iris_frame = sql.read_sql_query("SELECT * FROM iris_view", conn)
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_api_read_sql_with_chunksize_no_result(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="chunksize argument NotImplemented with ADBC")
)
conn = request.getfixturevalue(conn)
query = 'SELECT * FROM iris_view WHERE "SepalLength" < 0.0'
with_batch = sql.read_sql_query(query, conn, chunksize=5)
without_batch = sql.read_sql_query(query, conn)
tm.assert_frame_equal(concat(with_batch), without_batch)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql(conn, request, test_frame1):
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame1", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame1")
sql.to_sql(test_frame1, "test_frame1", conn)
assert sql.has_table("test_frame1", conn)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql_fail(conn, request, test_frame1):
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame2", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame2")
sql.to_sql(test_frame1, "test_frame2", conn, if_exists="fail")
assert sql.has_table("test_frame2", conn)
msg = "Table 'test_frame2' already exists"
with pytest.raises(ValueError, match=msg):
sql.to_sql(test_frame1, "test_frame2", conn, if_exists="fail")
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql_replace(conn, request, test_frame1):
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame3", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame3")
sql.to_sql(test_frame1, "test_frame3", conn, if_exists="fail")
# Add to table again
sql.to_sql(test_frame1, "test_frame3", conn, if_exists="replace")
assert sql.has_table("test_frame3", conn)
num_entries = len(test_frame1)
num_rows = count_rows(conn, "test_frame3")
assert num_rows == num_entries
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql_append(conn, request, test_frame1):
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame4", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame4")
assert sql.to_sql(test_frame1, "test_frame4", conn, if_exists="fail") == 4
# Add to table again
assert sql.to_sql(test_frame1, "test_frame4", conn, if_exists="append") == 4
assert sql.has_table("test_frame4", conn)
num_entries = 2 * len(test_frame1)
num_rows = count_rows(conn, "test_frame4")
assert num_rows == num_entries
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql_type_mapping(conn, request, test_frame3):
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame5", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame5")
sql.to_sql(test_frame3, "test_frame5", conn, index=False)
result = sql.read_sql("SELECT * FROM test_frame5", conn)
tm.assert_frame_equal(test_frame3, result)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql_series(conn, request):
conn = request.getfixturevalue(conn)
if sql.has_table("test_series", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_series")
s = Series(np.arange(5, dtype="int64"), name="series")
sql.to_sql(s, "test_series", conn, index=False)
s2 = sql.read_sql_query("SELECT * FROM test_series", conn)
tm.assert_frame_equal(s.to_frame(), s2)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_roundtrip(conn, request, test_frame1):
conn_name = conn
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame_roundtrip", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame_roundtrip")
sql.to_sql(test_frame1, "test_frame_roundtrip", con=conn)
result = sql.read_sql_query("SELECT * FROM test_frame_roundtrip", con=conn)
# HACK!
if "adbc" in conn_name:
result = result.rename(columns={"__index_level_0__": "level_0"})
result.index = test_frame1.index
result.set_index("level_0", inplace=True)
result.index.astype(int)
result.index.name = None
tm.assert_frame_equal(result, test_frame1)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_roundtrip_chunksize(conn, request, test_frame1):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="chunksize argument NotImplemented with ADBC")
)
conn = request.getfixturevalue(conn)
if sql.has_table("test_frame_roundtrip", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_frame_roundtrip")
sql.to_sql(
test_frame1,
"test_frame_roundtrip",
con=conn,
index=False,
chunksize=2,
)
result = sql.read_sql_query("SELECT * FROM test_frame_roundtrip", con=conn)
tm.assert_frame_equal(result, test_frame1)
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_api_execute_sql(conn, request):
# drop_sql = "DROP TABLE IF EXISTS test" # should already be done
conn = request.getfixturevalue(conn)
with sql.pandasSQL_builder(conn) as pandas_sql:
iris_results = pandas_sql.execute("SELECT * FROM iris")
row = iris_results.fetchone()
iris_results.close()
assert list(row) == [5.1, 3.5, 1.4, 0.2, "Iris-setosa"]
@pytest.mark.parametrize("conn", all_connectable_types)
def test_api_date_parsing(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
# Test date parsing in read_sql
# No Parsing
df = sql.read_sql_query("SELECT * FROM types", conn)
if not ("mysql" in conn_name or "postgres" in conn_name):
assert not issubclass(df.DateCol.dtype.type, np.datetime64)
df = sql.read_sql_query("SELECT * FROM types", conn, parse_dates=["DateCol"])
assert issubclass(df.DateCol.dtype.type, np.datetime64)
assert df.DateCol.tolist() == [
Timestamp(2000, 1, 3, 0, 0, 0),
Timestamp(2000, 1, 4, 0, 0, 0),
]
df = sql.read_sql_query(
"SELECT * FROM types",
conn,
parse_dates={"DateCol": "%Y-%m-%d %H:%M:%S"},
)
assert issubclass(df.DateCol.dtype.type, np.datetime64)
assert df.DateCol.tolist() == [
Timestamp(2000, 1, 3, 0, 0, 0),
Timestamp(2000, 1, 4, 0, 0, 0),
]
df = sql.read_sql_query("SELECT * FROM types", conn, parse_dates=["IntDateCol"])
assert issubclass(df.IntDateCol.dtype.type, np.datetime64)
assert df.IntDateCol.tolist() == [
Timestamp(1986, 12, 25, 0, 0, 0),
Timestamp(2013, 1, 1, 0, 0, 0),
]
df = sql.read_sql_query(
"SELECT * FROM types", conn, parse_dates={"IntDateCol": "s"}
)
assert issubclass(df.IntDateCol.dtype.type, np.datetime64)
assert df.IntDateCol.tolist() == [
Timestamp(1986, 12, 25, 0, 0, 0),
Timestamp(2013, 1, 1, 0, 0, 0),
]
df = sql.read_sql_query(
"SELECT * FROM types",
conn,
parse_dates={"IntDateOnlyCol": "%Y%m%d"},
)
assert issubclass(df.IntDateOnlyCol.dtype.type, np.datetime64)
assert df.IntDateOnlyCol.tolist() == [
Timestamp("2010-10-10"),
Timestamp("2010-12-12"),
]
@pytest.mark.parametrize("conn", all_connectable_types)
@pytest.mark.parametrize("error", ["ignore", "raise", "coerce"])
@pytest.mark.parametrize(
"read_sql, text, mode",
[
(sql.read_sql, "SELECT * FROM types", ("sqlalchemy", "fallback")),
(sql.read_sql, "types", ("sqlalchemy")),
(
sql.read_sql_query,
"SELECT * FROM types",
("sqlalchemy", "fallback"),
),
(sql.read_sql_table, "types", ("sqlalchemy")),
],
)
def test_api_custom_dateparsing_error(
conn, request, read_sql, text, mode, error, types_data_frame
):
conn_name = conn
conn = request.getfixturevalue(conn)
if text == "types" and conn_name == "sqlite_buildin_types":
request.applymarker(
pytest.mark.xfail(reason="failing combination of arguments")
)
expected = types_data_frame.astype({"DateCol": "datetime64[ns]"})
result = read_sql(
text,
con=conn,
parse_dates={
"DateCol": {"errors": error},
},
)
if "postgres" in conn_name:
# TODO: clean up types_data_frame fixture
result["BoolCol"] = result["BoolCol"].astype(int)
result["BoolColWithNull"] = result["BoolColWithNull"].astype(float)
if conn_name == "postgresql_adbc_types":
expected = expected.astype(
{
"IntDateCol": "int32",
"IntDateOnlyCol": "int32",
"IntCol": "int32",
}
)
if not pa_version_under13p0:
# TODO: is this astype safe?
expected["DateCol"] = expected["DateCol"].astype("datetime64[us]")
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", all_connectable_types)
def test_api_date_and_index(conn, request):
# Test case where same column appears in parse_date and index_col
conn = request.getfixturevalue(conn)
df = sql.read_sql_query(
"SELECT * FROM types",
conn,
index_col="DateCol",
parse_dates=["DateCol", "IntDateCol"],
)
assert issubclass(df.index.dtype.type, np.datetime64)
assert issubclass(df.IntDateCol.dtype.type, np.datetime64)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_timedelta(conn, request):
# see #6921
conn_name = conn
conn = request.getfixturevalue(conn)
if sql.has_table("test_timedelta", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_timedelta")
df = to_timedelta(Series(["00:00:01", "00:00:03"], name="foo")).to_frame()
if conn_name == "sqlite_adbc_conn":
request.node.add_marker(
pytest.mark.xfail(
reason="sqlite ADBC driver doesn't implement timedelta",
)
)
if "adbc" in conn_name:
if pa_version_under14p1:
exp_warning = DeprecationWarning
else:
exp_warning = None
else:
exp_warning = UserWarning
with tm.assert_produces_warning(exp_warning, check_stacklevel=False):
result_count = df.to_sql(name="test_timedelta", con=conn)
assert result_count == 2
result = sql.read_sql_query("SELECT * FROM test_timedelta", conn)
if conn_name == "postgresql_adbc_conn":
# TODO: Postgres stores an INTERVAL, which ADBC reads as a Month-Day-Nano
# Interval; the default pandas type mapper maps this to a DateOffset
# but maybe we should try and restore the timedelta here?
expected = Series(
[
pd.DateOffset(months=0, days=0, microseconds=1000000, nanoseconds=0),
pd.DateOffset(months=0, days=0, microseconds=3000000, nanoseconds=0),
],
name="foo",
)
else:
expected = df["foo"].astype("int64")
tm.assert_series_equal(result["foo"], expected)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_complex_raises(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
df = DataFrame({"a": [1 + 1j, 2j]})
if "adbc" in conn_name:
msg = "datatypes not supported"
else:
msg = "Complex datatypes not supported"
with pytest.raises(ValueError, match=msg):
assert df.to_sql("test_complex", con=conn) is None
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize(
"index_name,index_label,expected",
[
# no index name, defaults to 'index'
(None, None, "index"),
# specifying index_label
(None, "other_label", "other_label"),
# using the index name
("index_name", None, "index_name"),
# has index name, but specifying index_label
("index_name", "other_label", "other_label"),
# index name is integer
(0, None, "0"),
# index name is None but index label is integer
(None, 0, "0"),
],
)
def test_api_to_sql_index_label(conn, request, index_name, index_label, expected):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="index_label argument NotImplemented with ADBC")
)
conn = request.getfixturevalue(conn)
if sql.has_table("test_index_label", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_index_label")
temp_frame = DataFrame({"col1": range(4)})
temp_frame.index.name = index_name
query = "SELECT * FROM test_index_label"
sql.to_sql(temp_frame, "test_index_label", conn, index_label=index_label)
frame = sql.read_sql_query(query, conn)
assert frame.columns[0] == expected
@pytest.mark.parametrize("conn", all_connectable)
def test_api_to_sql_index_label_multiindex(conn, request):
conn_name = conn
if "mysql" in conn_name:
request.applymarker(
pytest.mark.xfail(
reason="MySQL can fail using TEXT without length as key", strict=False
)
)
elif "adbc" in conn_name:
request.node.add_marker(
pytest.mark.xfail(reason="index_label argument NotImplemented with ADBC")
)
conn = request.getfixturevalue(conn)
if sql.has_table("test_index_label", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_index_label")
expected_row_count = 4
temp_frame = DataFrame(
{"col1": range(4)},
index=MultiIndex.from_product([("A0", "A1"), ("B0", "B1")]),
)
# no index name, defaults to 'level_0' and 'level_1'
result = sql.to_sql(temp_frame, "test_index_label", conn)
assert result == expected_row_count
frame = sql.read_sql_query("SELECT * FROM test_index_label", conn)
assert frame.columns[0] == "level_0"
assert frame.columns[1] == "level_1"
# specifying index_label
result = sql.to_sql(
temp_frame,
"test_index_label",
conn,
if_exists="replace",
index_label=["A", "B"],
)
assert result == expected_row_count
frame = sql.read_sql_query("SELECT * FROM test_index_label", conn)
assert frame.columns[:2].tolist() == ["A", "B"]
# using the index name
temp_frame.index.names = ["A", "B"]
result = sql.to_sql(temp_frame, "test_index_label", conn, if_exists="replace")
assert result == expected_row_count
frame = sql.read_sql_query("SELECT * FROM test_index_label", conn)
assert frame.columns[:2].tolist() == ["A", "B"]
# has index name, but specifying index_label
result = sql.to_sql(
temp_frame,
"test_index_label",
conn,
if_exists="replace",
index_label=["C", "D"],
)
assert result == expected_row_count
frame = sql.read_sql_query("SELECT * FROM test_index_label", conn)
assert frame.columns[:2].tolist() == ["C", "D"]
msg = "Length of 'index_label' should match number of levels, which is 2"
with pytest.raises(ValueError, match=msg):
sql.to_sql(
temp_frame,
"test_index_label",
conn,
if_exists="replace",
index_label="C",
)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_multiindex_roundtrip(conn, request):
conn = request.getfixturevalue(conn)
if sql.has_table("test_multiindex_roundtrip", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_multiindex_roundtrip")
df = DataFrame.from_records(
[(1, 2.1, "line1"), (2, 1.5, "line2")],
columns=["A", "B", "C"],
index=["A", "B"],
)
df.to_sql(name="test_multiindex_roundtrip", con=conn)
result = sql.read_sql_query(
"SELECT * FROM test_multiindex_roundtrip", conn, index_col=["A", "B"]
)
tm.assert_frame_equal(df, result, check_index_type=True)
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize(
"dtype",
[
None,
int,
float,
{"A": int, "B": float},
],
)
def test_api_dtype_argument(conn, request, dtype):
# GH10285 Add dtype argument to read_sql_query
conn_name = conn
conn = request.getfixturevalue(conn)
if sql.has_table("test_dtype_argument", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_dtype_argument")
df = DataFrame([[1.2, 3.4], [5.6, 7.8]], columns=["A", "B"])
assert df.to_sql(name="test_dtype_argument", con=conn) == 2
expected = df.astype(dtype)
if "postgres" in conn_name:
query = 'SELECT "A", "B" FROM test_dtype_argument'
else:
query = "SELECT A, B FROM test_dtype_argument"
result = sql.read_sql_query(query, con=conn, dtype=dtype)
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_integer_col_names(conn, request):
conn = request.getfixturevalue(conn)
df = DataFrame([[1, 2], [3, 4]], columns=[0, 1])
sql.to_sql(df, "test_frame_integer_col_names", conn, if_exists="replace")
@pytest.mark.parametrize("conn", all_connectable)
def test_api_get_schema(conn, request, test_frame1):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'get_schema' not implemented for ADBC drivers",
strict=True,
)
)
conn = request.getfixturevalue(conn)
create_sql = sql.get_schema(test_frame1, "test", con=conn)
assert "CREATE" in create_sql
@pytest.mark.parametrize("conn", all_connectable)
def test_api_get_schema_with_schema(conn, request, test_frame1):
# GH28486
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'get_schema' not implemented for ADBC drivers",
strict=True,
)
)
conn = request.getfixturevalue(conn)
create_sql = sql.get_schema(test_frame1, "test", con=conn, schema="pypi")
assert "CREATE TABLE pypi." in create_sql
@pytest.mark.parametrize("conn", all_connectable)
def test_api_get_schema_dtypes(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'get_schema' not implemented for ADBC drivers",
strict=True,
)
)
conn_name = conn
conn = request.getfixturevalue(conn)
float_frame = DataFrame({"a": [1.1, 1.2], "b": [2.1, 2.2]})
if conn_name == "sqlite_buildin":
dtype = "INTEGER"
else:
from sqlalchemy import Integer
dtype = Integer
create_sql = sql.get_schema(float_frame, "test", con=conn, dtype={"b": dtype})
assert "CREATE" in create_sql
assert "INTEGER" in create_sql
@pytest.mark.parametrize("conn", all_connectable)
def test_api_get_schema_keys(conn, request, test_frame1):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="'get_schema' not implemented for ADBC drivers",
strict=True,
)
)
conn_name = conn
conn = request.getfixturevalue(conn)
frame = DataFrame({"Col1": [1.1, 1.2], "Col2": [2.1, 2.2]})
create_sql = sql.get_schema(frame, "test", con=conn, keys="Col1")
if "mysql" in conn_name:
constraint_sentence = "CONSTRAINT test_pk PRIMARY KEY (`Col1`)"
else:
constraint_sentence = 'CONSTRAINT test_pk PRIMARY KEY ("Col1")'
assert constraint_sentence in create_sql
# multiple columns as key (GH10385)
create_sql = sql.get_schema(test_frame1, "test", con=conn, keys=["A", "B"])
if "mysql" in conn_name:
constraint_sentence = "CONSTRAINT test_pk PRIMARY KEY (`A`, `B`)"
else:
constraint_sentence = 'CONSTRAINT test_pk PRIMARY KEY ("A", "B")'
assert constraint_sentence in create_sql
@pytest.mark.parametrize("conn", all_connectable)
def test_api_chunksize_read(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="chunksize argument NotImplemented with ADBC")
)
conn_name = conn
conn = request.getfixturevalue(conn)
if sql.has_table("test_chunksize", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_chunksize")
df = DataFrame(
np.random.default_rng(2).standard_normal((22, 5)), columns=list("abcde")
)
df.to_sql(name="test_chunksize", con=conn, index=False)
# reading the query in one time
res1 = sql.read_sql_query("select * from test_chunksize", conn)
# reading the query in chunks with read_sql_query
res2 = DataFrame()
i = 0
sizes = [5, 5, 5, 5, 2]
for chunk in sql.read_sql_query("select * from test_chunksize", conn, chunksize=5):
res2 = concat([res2, chunk], ignore_index=True)
assert len(chunk) == sizes[i]
i += 1
tm.assert_frame_equal(res1, res2)
# reading the query in chunks with read_sql_query
if conn_name == "sqlite_buildin":
with pytest.raises(NotImplementedError, match=""):
sql.read_sql_table("test_chunksize", conn, chunksize=5)
else:
res3 = DataFrame()
i = 0
sizes = [5, 5, 5, 5, 2]
for chunk in sql.read_sql_table("test_chunksize", conn, chunksize=5):
res3 = concat([res3, chunk], ignore_index=True)
assert len(chunk) == sizes[i]
i += 1
tm.assert_frame_equal(res1, res3)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_categorical(conn, request):
if conn == "postgresql_adbc_conn":
adbc = import_optional_dependency("adbc_driver_postgresql", errors="ignore")
if adbc is not None and Version(adbc.__version__) < Version("0.9.0"):
request.node.add_marker(
pytest.mark.xfail(
reason="categorical dtype not implemented for ADBC postgres driver",
strict=True,
)
)
# GH8624
# test that categorical gets written correctly as dense column
conn = request.getfixturevalue(conn)
if sql.has_table("test_categorical", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_categorical")
df = DataFrame(
{
"person_id": [1, 2, 3],
"person_name": ["John P. Doe", "Jane Dove", "John P. Doe"],
}
)
df2 = df.copy()
df2["person_name"] = df2["person_name"].astype("category")
df2.to_sql(name="test_categorical", con=conn, index=False)
res = sql.read_sql_query("SELECT * FROM test_categorical", conn)
tm.assert_frame_equal(res, df)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_unicode_column_name(conn, request):
# GH 11431
conn = request.getfixturevalue(conn)
if sql.has_table("test_unicode", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_unicode")
df = DataFrame([[1, 2], [3, 4]], columns=["\xe9", "b"])
df.to_sql(name="test_unicode", con=conn, index=False)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_escaped_table_name(conn, request):
# GH 13206
conn_name = conn
conn = request.getfixturevalue(conn)
if sql.has_table("d1187b08-4943-4c8d-a7f6", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("d1187b08-4943-4c8d-a7f6")
df = DataFrame({"A": [0, 1, 2], "B": [0.2, np.nan, 5.6]})
df.to_sql(name="d1187b08-4943-4c8d-a7f6", con=conn, index=False)
if "postgres" in conn_name:
query = 'SELECT * FROM "d1187b08-4943-4c8d-a7f6"'
else:
query = "SELECT * FROM `d1187b08-4943-4c8d-a7f6`"
res = sql.read_sql_query(query, conn)
tm.assert_frame_equal(res, df)
@pytest.mark.parametrize("conn", all_connectable)
def test_api_read_sql_duplicate_columns(conn, request):
# GH#53117
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="pyarrow->pandas throws ValueError", strict=True)
)
conn = request.getfixturevalue(conn)
if sql.has_table("test_table", conn):
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("test_table")
df = DataFrame({"a": [1, 2, 3], "b": [0.1, 0.2, 0.3], "c": 1})
df.to_sql(name="test_table", con=conn, index=False)
result = pd.read_sql("SELECT a, b, a +1 as a, c FROM test_table", conn)
expected = DataFrame(
[[1, 0.1, 2, 1], [2, 0.2, 3, 1], [3, 0.3, 4, 1]],
columns=["a", "b", "a", "c"],
)
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", all_connectable)
def test_read_table_columns(conn, request, test_frame1):
# test columns argument in read_table
conn_name = conn
if conn_name == "sqlite_buildin":
request.applymarker(pytest.mark.xfail(reason="Not Implemented"))
conn = request.getfixturevalue(conn)
sql.to_sql(test_frame1, "test_frame", conn)
cols = ["A", "B"]
result = sql.read_sql_table("test_frame", conn, columns=cols)
assert result.columns.tolist() == cols
@pytest.mark.parametrize("conn", all_connectable)
def test_read_table_index_col(conn, request, test_frame1):
# test columns argument in read_table
conn_name = conn
if conn_name == "sqlite_buildin":
request.applymarker(pytest.mark.xfail(reason="Not Implemented"))
conn = request.getfixturevalue(conn)
sql.to_sql(test_frame1, "test_frame", conn)
result = sql.read_sql_table("test_frame", conn, index_col="index")
assert result.index.names == ["index"]
result = sql.read_sql_table("test_frame", conn, index_col=["A", "B"])
assert result.index.names == ["A", "B"]
result = sql.read_sql_table(
"test_frame", conn, index_col=["A", "B"], columns=["C", "D"]
)
assert result.index.names == ["A", "B"]
assert result.columns.tolist() == ["C", "D"]
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_read_sql_delegate(conn, request):
if conn == "sqlite_buildin_iris":
request.applymarker(
pytest.mark.xfail(
reason="sqlite_buildin connection does not implement read_sql_table"
)
)
conn = request.getfixturevalue(conn)
iris_frame1 = sql.read_sql_query("SELECT * FROM iris", conn)
iris_frame2 = sql.read_sql("SELECT * FROM iris", conn)
tm.assert_frame_equal(iris_frame1, iris_frame2)
iris_frame1 = sql.read_sql_table("iris", conn)
iris_frame2 = sql.read_sql("iris", conn)
tm.assert_frame_equal(iris_frame1, iris_frame2)
def test_not_reflect_all_tables(sqlite_conn):
conn = sqlite_conn
from sqlalchemy import text
from sqlalchemy.engine import Engine
# create invalid table
query_list = [
text("CREATE TABLE invalid (x INTEGER, y UNKNOWN);"),
text("CREATE TABLE other_table (x INTEGER, y INTEGER);"),
]
for query in query_list:
if isinstance(conn, Engine):
with conn.connect() as conn:
with conn.begin():
conn.execute(query)
else:
with conn.begin():
conn.execute(query)
with tm.assert_produces_warning(None):
sql.read_sql_table("other_table", conn)
sql.read_sql_query("SELECT * FROM other_table", conn)
@pytest.mark.parametrize("conn", all_connectable)
def test_warning_case_insensitive_table_name(conn, request, test_frame1):
conn_name = conn
if conn_name == "sqlite_buildin" or "adbc" in conn_name:
request.applymarker(pytest.mark.xfail(reason="Does not raise warning"))
conn = request.getfixturevalue(conn)
# see gh-7815
with tm.assert_produces_warning(
UserWarning,
match=(
r"The provided table name 'TABLE1' is not found exactly as such in "
r"the database after writing the table, possibly due to case "
r"sensitivity issues. Consider using lower case table names."
),
):
with sql.SQLDatabase(conn) as db:
db.check_case_sensitive("TABLE1", "")
# Test that the warning is certainly NOT triggered in a normal case.
with tm.assert_produces_warning(None):
test_frame1.to_sql(name="CaseSensitive", con=conn)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_sqlalchemy_type_mapping(conn, request):
conn = request.getfixturevalue(conn)
from sqlalchemy import TIMESTAMP
# Test Timestamp objects (no datetime64 because of timezone) (GH9085)
df = DataFrame(
{"time": to_datetime(["2014-12-12 01:54", "2014-12-11 02:54"], utc=True)}
)
with sql.SQLDatabase(conn) as db:
table = sql.SQLTable("test_type", db, frame=df)
# GH 9086: TIMESTAMP is the suggested type for datetimes with timezones
assert isinstance(table.table.c["time"].type, TIMESTAMP)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
@pytest.mark.parametrize(
"integer, expected",
[
("int8", "SMALLINT"),
("Int8", "SMALLINT"),
("uint8", "SMALLINT"),
("UInt8", "SMALLINT"),
("int16", "SMALLINT"),
("Int16", "SMALLINT"),
("uint16", "INTEGER"),
("UInt16", "INTEGER"),
("int32", "INTEGER"),
("Int32", "INTEGER"),
("uint32", "BIGINT"),
("UInt32", "BIGINT"),
("int64", "BIGINT"),
("Int64", "BIGINT"),
(int, "BIGINT" if np.dtype(int).name == "int64" else "INTEGER"),
],
)
def test_sqlalchemy_integer_mapping(conn, request, integer, expected):
# GH35076 Map pandas integer to optimal SQLAlchemy integer type
conn = request.getfixturevalue(conn)
df = DataFrame([0, 1], columns=["a"], dtype=integer)
with sql.SQLDatabase(conn) as db:
table = sql.SQLTable("test_type", db, frame=df)
result = str(table.table.c.a.type)
assert result == expected
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
@pytest.mark.parametrize("integer", ["uint64", "UInt64"])
def test_sqlalchemy_integer_overload_mapping(conn, request, integer):
conn = request.getfixturevalue(conn)
# GH35076 Map pandas integer to optimal SQLAlchemy integer type
df = DataFrame([0, 1], columns=["a"], dtype=integer)
with sql.SQLDatabase(conn) as db:
with pytest.raises(
ValueError, match="Unsigned 64 bit integer datatype is not supported"
):
sql.SQLTable("test_type", db, frame=df)
@pytest.mark.parametrize("conn", all_connectable)
def test_database_uri_string(conn, request, test_frame1):
pytest.importorskip("sqlalchemy")
conn = request.getfixturevalue(conn)
# Test read_sql and .to_sql method with a database URI (GH10654)
# db_uri = 'sqlite:///:memory:' # raises
# sqlalchemy.exc.OperationalError: (sqlite3.OperationalError) near
# "iris": syntax error [SQL: 'iris']
with tm.ensure_clean() as name:
db_uri = "sqlite:///" + name
table = "iris"
test_frame1.to_sql(name=table, con=db_uri, if_exists="replace", index=False)
test_frame2 = sql.read_sql(table, db_uri)
test_frame3 = sql.read_sql_table(table, db_uri)
query = "SELECT * FROM iris"
test_frame4 = sql.read_sql_query(query, db_uri)
tm.assert_frame_equal(test_frame1, test_frame2)
tm.assert_frame_equal(test_frame1, test_frame3)
tm.assert_frame_equal(test_frame1, test_frame4)
@td.skip_if_installed("pg8000")
@pytest.mark.parametrize("conn", all_connectable)
def test_pg8000_sqlalchemy_passthrough_error(conn, request):
pytest.importorskip("sqlalchemy")
conn = request.getfixturevalue(conn)
# using driver that will not be installed on CI to trigger error
# in sqlalchemy.create_engine -> test passing of this error to user
db_uri = "postgresql+pg8000://user:pass@host/dbname"
with pytest.raises(ImportError, match="pg8000"):
sql.read_sql("select * from table", db_uri)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_query_by_text_obj(conn, request):
# WIP : GH10846
conn_name = conn
conn = request.getfixturevalue(conn)
from sqlalchemy import text
if "postgres" in conn_name:
name_text = text('select * from iris where "Name"=:name')
else:
name_text = text("select * from iris where name=:name")
iris_df = sql.read_sql(name_text, conn, params={"name": "Iris-versicolor"})
all_names = set(iris_df["Name"])
assert all_names == {"Iris-versicolor"}
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_query_by_select_obj(conn, request):
conn = request.getfixturevalue(conn)
# WIP : GH10846
from sqlalchemy import (
bindparam,
select,
)
iris = iris_table_metadata()
name_select = select(iris).where(iris.c.Name == bindparam("name"))
iris_df = sql.read_sql(name_select, conn, params={"name": "Iris-setosa"})
all_names = set(iris_df["Name"])
assert all_names == {"Iris-setosa"}
@pytest.mark.parametrize("conn", all_connectable)
def test_column_with_percentage(conn, request):
# GH 37157
conn_name = conn
if conn_name == "sqlite_buildin":
request.applymarker(pytest.mark.xfail(reason="Not Implemented"))
conn = request.getfixturevalue(conn)
df = DataFrame({"A": [0, 1, 2], "%_variation": [3, 4, 5]})
df.to_sql(name="test_column_percentage", con=conn, index=False)
res = sql.read_sql_table("test_column_percentage", conn)
tm.assert_frame_equal(res, df)
def test_sql_open_close(test_frame3):
# Test if the IO in the database still work if the connection closed
# between the writing and reading (as in many real situations).
with tm.ensure_clean() as name:
with closing(sqlite3.connect(name)) as conn:
assert sql.to_sql(test_frame3, "test_frame3_legacy", conn, index=False) == 4
with closing(sqlite3.connect(name)) as conn:
result = sql.read_sql_query("SELECT * FROM test_frame3_legacy;", conn)
tm.assert_frame_equal(test_frame3, result)
@td.skip_if_installed("sqlalchemy")
def test_con_string_import_error():
conn = "mysql://root@localhost/pandas"
msg = "Using URI string without sqlalchemy installed"
with pytest.raises(ImportError, match=msg):
sql.read_sql("SELECT * FROM iris", conn)
@td.skip_if_installed("sqlalchemy")
def test_con_unknown_dbapi2_class_does_not_error_without_sql_alchemy_installed():
class MockSqliteConnection:
def __init__(self, *args, **kwargs) -> None:
self.conn = sqlite3.Connection(*args, **kwargs)
def __getattr__(self, name):
return getattr(self.conn, name)
def close(self):
self.conn.close()
with contextlib.closing(MockSqliteConnection(":memory:")) as conn:
with tm.assert_produces_warning(UserWarning):
sql.read_sql("SELECT 1", conn)
def test_sqlite_read_sql_delegate(sqlite_buildin_iris):
conn = sqlite_buildin_iris
iris_frame1 = sql.read_sql_query("SELECT * FROM iris", conn)
iris_frame2 = sql.read_sql("SELECT * FROM iris", conn)
tm.assert_frame_equal(iris_frame1, iris_frame2)
msg = "Execution failed on sql 'iris': near \"iris\": syntax error"
with pytest.raises(sql.DatabaseError, match=msg):
sql.read_sql("iris", conn)
def test_get_schema2(test_frame1):
# without providing a connection object (available for backwards comp)
create_sql = sql.get_schema(test_frame1, "test")
assert "CREATE" in create_sql
def test_sqlite_type_mapping(sqlite_buildin):
# Test Timestamp objects (no datetime64 because of timezone) (GH9085)
conn = sqlite_buildin
df = DataFrame(
{"time": to_datetime(["2014-12-12 01:54", "2014-12-11 02:54"], utc=True)}
)
db = sql.SQLiteDatabase(conn)
table = sql.SQLiteTable("test_type", db, frame=df)
schema = table.sql_schema()
for col in schema.split("\n"):
if col.split()[0].strip('"') == "time":
assert col.split()[1] == "TIMESTAMP"
# -----------------------------------------------------------------------------
# -- Database flavor specific tests
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_create_table(conn, request):
if conn == "sqlite_str":
pytest.skip("sqlite_str has no inspection system")
conn = request.getfixturevalue(conn)
from sqlalchemy import inspect
temp_frame = DataFrame({"one": [1.0, 2.0, 3.0, 4.0], "two": [4.0, 3.0, 2.0, 1.0]})
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
assert pandasSQL.to_sql(temp_frame, "temp_frame") == 4
insp = inspect(conn)
assert insp.has_table("temp_frame")
# Cleanup
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("temp_frame")
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_drop_table(conn, request):
if conn == "sqlite_str":
pytest.skip("sqlite_str has no inspection system")
conn = request.getfixturevalue(conn)
from sqlalchemy import inspect
temp_frame = DataFrame({"one": [1.0, 2.0, 3.0, 4.0], "two": [4.0, 3.0, 2.0, 1.0]})
with sql.SQLDatabase(conn) as pandasSQL:
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(temp_frame, "temp_frame") == 4
insp = inspect(conn)
assert insp.has_table("temp_frame")
with pandasSQL.run_transaction():
pandasSQL.drop_table("temp_frame")
try:
insp.clear_cache() # needed with SQLAlchemy 2.0, unavailable prior
except AttributeError:
pass
assert not insp.has_table("temp_frame")
@pytest.mark.parametrize("conn", all_connectable)
def test_roundtrip(conn, request, test_frame1):
if conn == "sqlite_str":
pytest.skip("sqlite_str has no inspection system")
conn_name = conn
conn = request.getfixturevalue(conn)
pandasSQL = pandasSQL_builder(conn)
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(test_frame1, "test_frame_roundtrip") == 4
result = pandasSQL.read_query("SELECT * FROM test_frame_roundtrip")
if "adbc" in conn_name:
result = result.rename(columns={"__index_level_0__": "level_0"})
result.set_index("level_0", inplace=True)
# result.index.astype(int)
result.index.name = None
tm.assert_frame_equal(result, test_frame1)
@pytest.mark.parametrize("conn", all_connectable_iris)
def test_execute_sql(conn, request):
conn = request.getfixturevalue(conn)
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
iris_results = pandasSQL.execute("SELECT * FROM iris")
row = iris_results.fetchone()
iris_results.close()
assert list(row) == [5.1, 3.5, 1.4, 0.2, "Iris-setosa"]
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_sqlalchemy_read_table(conn, request):
conn = request.getfixturevalue(conn)
iris_frame = sql.read_sql_table("iris", con=conn)
check_iris_frame(iris_frame)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_sqlalchemy_read_table_columns(conn, request):
conn = request.getfixturevalue(conn)
iris_frame = sql.read_sql_table(
"iris", con=conn, columns=["SepalLength", "SepalLength"]
)
tm.assert_index_equal(iris_frame.columns, Index(["SepalLength", "SepalLength__1"]))
@pytest.mark.parametrize("conn", sqlalchemy_connectable_iris)
def test_read_table_absent_raises(conn, request):
conn = request.getfixturevalue(conn)
msg = "Table this_doesnt_exist not found"
with pytest.raises(ValueError, match=msg):
sql.read_sql_table("this_doesnt_exist", con=conn)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_types)
def test_sqlalchemy_default_type_conversion(conn, request):
conn_name = conn
if conn_name == "sqlite_str":
pytest.skip("types tables not created in sqlite_str fixture")
elif "mysql" in conn_name or "sqlite" in conn_name:
request.applymarker(
pytest.mark.xfail(reason="boolean dtype not inferred properly")
)
conn = request.getfixturevalue(conn)
df = sql.read_sql_table("types", conn)
assert issubclass(df.FloatCol.dtype.type, np.floating)
assert issubclass(df.IntCol.dtype.type, np.integer)
assert issubclass(df.BoolCol.dtype.type, np.bool_)
# Int column with NA values stays as float
assert issubclass(df.IntColWithNull.dtype.type, np.floating)
# Bool column with NA values becomes object
assert issubclass(df.BoolColWithNull.dtype.type, object)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_bigint(conn, request):
# int64 should be converted to BigInteger, GH7433
conn = request.getfixturevalue(conn)
df = DataFrame(data={"i64": [2**62]})
assert df.to_sql(name="test_bigint", con=conn, index=False) == 1
result = sql.read_sql_table("test_bigint", conn)
tm.assert_frame_equal(df, result)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_types)
def test_default_date_load(conn, request):
conn_name = conn
if conn_name == "sqlite_str":
pytest.skip("types tables not created in sqlite_str fixture")
elif "sqlite" in conn_name:
request.applymarker(
pytest.mark.xfail(reason="sqlite does not read date properly")
)
conn = request.getfixturevalue(conn)
df = sql.read_sql_table("types", conn)
assert issubclass(df.DateCol.dtype.type, np.datetime64)
@pytest.mark.parametrize("conn", postgresql_connectable)
@pytest.mark.parametrize("parse_dates", [None, ["DateColWithTz"]])
def test_datetime_with_timezone_query(conn, request, parse_dates):
# edge case that converts postgresql datetime with time zone types
# to datetime64[ns,psycopg2.tz.FixedOffsetTimezone..], which is ok
# but should be more natural, so coerce to datetime64[ns] for now
conn = request.getfixturevalue(conn)
expected = create_and_load_postgres_datetz(conn)
# GH11216
df = read_sql_query("select * from datetz", conn, parse_dates=parse_dates)
col = df.DateColWithTz
tm.assert_series_equal(col, expected)
@pytest.mark.parametrize("conn", postgresql_connectable)
def test_datetime_with_timezone_query_chunksize(conn, request):
conn = request.getfixturevalue(conn)
expected = create_and_load_postgres_datetz(conn)
df = concat(
list(read_sql_query("select * from datetz", conn, chunksize=1)),
ignore_index=True,
)
col = df.DateColWithTz
tm.assert_series_equal(col, expected)
@pytest.mark.parametrize("conn", postgresql_connectable)
def test_datetime_with_timezone_table(conn, request):
conn = request.getfixturevalue(conn)
expected = create_and_load_postgres_datetz(conn)
result = sql.read_sql_table("datetz", conn)
tm.assert_frame_equal(result, expected.to_frame())
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_datetime_with_timezone_roundtrip(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
# GH 9086
# Write datetimetz data to a db and read it back
# For dbs that support timestamps with timezones, should get back UTC
# otherwise naive data should be returned
expected = DataFrame(
{"A": date_range("2013-01-01 09:00:00", periods=3, tz="US/Pacific")}
)
assert expected.to_sql(name="test_datetime_tz", con=conn, index=False) == 3
if "postgresql" in conn_name:
# SQLAlchemy "timezones" (i.e. offsets) are coerced to UTC
expected["A"] = expected["A"].dt.tz_convert("UTC")
else:
# Otherwise, timestamps are returned as local, naive
expected["A"] = expected["A"].dt.tz_localize(None)
result = sql.read_sql_table("test_datetime_tz", conn)
tm.assert_frame_equal(result, expected)
result = sql.read_sql_query("SELECT * FROM test_datetime_tz", conn)
if "sqlite" in conn_name:
# read_sql_query does not return datetime type like read_sql_table
assert isinstance(result.loc[0, "A"], str)
result["A"] = to_datetime(result["A"])
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_out_of_bounds_datetime(conn, request):
# GH 26761
conn = request.getfixturevalue(conn)
data = DataFrame({"date": datetime(9999, 1, 1)}, index=[0])
assert data.to_sql(name="test_datetime_obb", con=conn, index=False) == 1
result = sql.read_sql_table("test_datetime_obb", conn)
expected = DataFrame([pd.NaT], columns=["date"])
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_naive_datetimeindex_roundtrip(conn, request):
# GH 23510
# Ensure that a naive DatetimeIndex isn't converted to UTC
conn = request.getfixturevalue(conn)
dates = date_range("2018-01-01", periods=5, freq="6h")._with_freq(None)
expected = DataFrame({"nums": range(5)}, index=dates)
assert expected.to_sql(name="foo_table", con=conn, index_label="info_date") == 5
result = sql.read_sql_table("foo_table", conn, index_col="info_date")
# result index with gain a name from a set_index operation; expected
tm.assert_frame_equal(result, expected, check_names=False)
@pytest.mark.parametrize("conn", sqlalchemy_connectable_types)
def test_date_parsing(conn, request):
# No Parsing
conn_name = conn
conn = request.getfixturevalue(conn)
df = sql.read_sql_table("types", conn)
expected_type = object if "sqlite" in conn_name else np.datetime64
assert issubclass(df.DateCol.dtype.type, expected_type)
df = sql.read_sql_table("types", conn, parse_dates=["DateCol"])
assert issubclass(df.DateCol.dtype.type, np.datetime64)
df = sql.read_sql_table("types", conn, parse_dates={"DateCol": "%Y-%m-%d %H:%M:%S"})
assert issubclass(df.DateCol.dtype.type, np.datetime64)
df = sql.read_sql_table(
"types",
conn,
parse_dates={"DateCol": {"format": "%Y-%m-%d %H:%M:%S"}},
)
assert issubclass(df.DateCol.dtype.type, np.datetime64)
df = sql.read_sql_table("types", conn, parse_dates=["IntDateCol"])
assert issubclass(df.IntDateCol.dtype.type, np.datetime64)
df = sql.read_sql_table("types", conn, parse_dates={"IntDateCol": "s"})
assert issubclass(df.IntDateCol.dtype.type, np.datetime64)
df = sql.read_sql_table("types", conn, parse_dates={"IntDateCol": {"unit": "s"}})
assert issubclass(df.IntDateCol.dtype.type, np.datetime64)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_datetime(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
df = DataFrame(
{"A": date_range("2013-01-01 09:00:00", periods=3), "B": np.arange(3.0)}
)
assert df.to_sql(name="test_datetime", con=conn) == 3
# with read_table -> type information from schema used
result = sql.read_sql_table("test_datetime", conn)
result = result.drop("index", axis=1)
tm.assert_frame_equal(result, df)
# with read_sql -> no type information -> sqlite has no native
result = sql.read_sql_query("SELECT * FROM test_datetime", conn)
result = result.drop("index", axis=1)
if "sqlite" in conn_name:
assert isinstance(result.loc[0, "A"], str)
result["A"] = to_datetime(result["A"])
tm.assert_frame_equal(result, df)
else:
tm.assert_frame_equal(result, df)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_datetime_NaT(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
df = DataFrame(
{"A": date_range("2013-01-01 09:00:00", periods=3), "B": np.arange(3.0)}
)
df.loc[1, "A"] = np.nan
assert df.to_sql(name="test_datetime", con=conn, index=False) == 3
# with read_table -> type information from schema used
result = sql.read_sql_table("test_datetime", conn)
tm.assert_frame_equal(result, df)
# with read_sql -> no type information -> sqlite has no native
result = sql.read_sql_query("SELECT * FROM test_datetime", conn)
if "sqlite" in conn_name:
assert isinstance(result.loc[0, "A"], str)
result["A"] = to_datetime(result["A"], errors="coerce")
tm.assert_frame_equal(result, df)
else:
tm.assert_frame_equal(result, df)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_datetime_date(conn, request):
# test support for datetime.date
conn = request.getfixturevalue(conn)
df = DataFrame([date(2014, 1, 1), date(2014, 1, 2)], columns=["a"])
assert df.to_sql(name="test_date", con=conn, index=False) == 2
res = read_sql_table("test_date", conn)
result = res["a"]
expected = to_datetime(df["a"])
# comes back as datetime64
tm.assert_series_equal(result, expected)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_datetime_time(conn, request, sqlite_buildin):
# test support for datetime.time
conn_name = conn
conn = request.getfixturevalue(conn)
df = DataFrame([time(9, 0, 0), time(9, 1, 30)], columns=["a"])
assert df.to_sql(name="test_time", con=conn, index=False) == 2
res = read_sql_table("test_time", conn)
tm.assert_frame_equal(res, df)
# GH8341
# first, use the fallback to have the sqlite adapter put in place
sqlite_conn = sqlite_buildin
assert sql.to_sql(df, "test_time2", sqlite_conn, index=False) == 2
res = sql.read_sql_query("SELECT * FROM test_time2", sqlite_conn)
ref = df.map(lambda _: _.strftime("%H:%M:%S.%f"))
tm.assert_frame_equal(ref, res) # check if adapter is in place
# then test if sqlalchemy is unaffected by the sqlite adapter
assert sql.to_sql(df, "test_time3", conn, index=False) == 2
if "sqlite" in conn_name:
res = sql.read_sql_query("SELECT * FROM test_time3", conn)
ref = df.map(lambda _: _.strftime("%H:%M:%S.%f"))
tm.assert_frame_equal(ref, res)
res = sql.read_sql_table("test_time3", conn)
tm.assert_frame_equal(df, res)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_mixed_dtype_insert(conn, request):
# see GH6509
conn = request.getfixturevalue(conn)
s1 = Series(2**25 + 1, dtype=np.int32)
s2 = Series(0.0, dtype=np.float32)
df = DataFrame({"s1": s1, "s2": s2})
# write and read again
assert df.to_sql(name="test_read_write", con=conn, index=False) == 1
df2 = sql.read_sql_table("test_read_write", conn)
tm.assert_frame_equal(df, df2, check_dtype=False, check_exact=True)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_nan_numeric(conn, request):
# NaNs in numeric float column
conn = request.getfixturevalue(conn)
df = DataFrame({"A": [0, 1, 2], "B": [0.2, np.nan, 5.6]})
assert df.to_sql(name="test_nan", con=conn, index=False) == 3
# with read_table
result = sql.read_sql_table("test_nan", conn)
tm.assert_frame_equal(result, df)
# with read_sql
result = sql.read_sql_query("SELECT * FROM test_nan", conn)
tm.assert_frame_equal(result, df)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_nan_fullcolumn(conn, request):
# full NaN column (numeric float column)
conn = request.getfixturevalue(conn)
df = DataFrame({"A": [0, 1, 2], "B": [np.nan, np.nan, np.nan]})
assert df.to_sql(name="test_nan", con=conn, index=False) == 3
# with read_table
result = sql.read_sql_table("test_nan", conn)
tm.assert_frame_equal(result, df)
# with read_sql -> not type info from table -> stays None
df["B"] = df["B"].astype("object")
df["B"] = None
result = sql.read_sql_query("SELECT * FROM test_nan", conn)
tm.assert_frame_equal(result, df)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_nan_string(conn, request):
# NaNs in string column
conn = request.getfixturevalue(conn)
df = DataFrame({"A": [0, 1, 2], "B": ["a", "b", np.nan]})
assert df.to_sql(name="test_nan", con=conn, index=False) == 3
# NaNs are coming back as None
df.loc[2, "B"] = None
# with read_table
result = sql.read_sql_table("test_nan", conn)
tm.assert_frame_equal(result, df)
# with read_sql
result = sql.read_sql_query("SELECT * FROM test_nan", conn)
tm.assert_frame_equal(result, df)
@pytest.mark.parametrize("conn", all_connectable)
def test_to_sql_save_index(conn, request):
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(
reason="ADBC implementation does not create index", strict=True
)
)
conn_name = conn
conn = request.getfixturevalue(conn)
df = DataFrame.from_records(
[(1, 2.1, "line1"), (2, 1.5, "line2")], columns=["A", "B", "C"], index=["A"]
)
tbl_name = "test_to_sql_saves_index"
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(df, tbl_name) == 2
if conn_name in {"sqlite_buildin", "sqlite_str"}:
ixs = sql.read_sql_query(
"SELECT * FROM sqlite_master WHERE type = 'index' "
f"AND tbl_name = '{tbl_name}'",
conn,
)
ix_cols = []
for ix_name in ixs.name:
ix_info = sql.read_sql_query(f"PRAGMA index_info({ix_name})", conn)
ix_cols.append(ix_info.name.tolist())
else:
from sqlalchemy import inspect
insp = inspect(conn)
ixs = insp.get_indexes(tbl_name)
ix_cols = [i["column_names"] for i in ixs]
assert ix_cols == [["A"]]
@pytest.mark.parametrize("conn", all_connectable)
def test_transactions(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
stmt = "CREATE TABLE test_trans (A INT, B TEXT)"
if conn_name != "sqlite_buildin" and "adbc" not in conn_name:
from sqlalchemy import text
stmt = text(stmt)
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction() as trans:
trans.execute(stmt)
@pytest.mark.parametrize("conn", all_connectable)
def test_transaction_rollback(conn, request):
conn_name = conn
conn = request.getfixturevalue(conn)
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction() as trans:
stmt = "CREATE TABLE test_trans (A INT, B TEXT)"
if "adbc" in conn_name or isinstance(pandasSQL, SQLiteDatabase):
trans.execute(stmt)
else:
from sqlalchemy import text
stmt = text(stmt)
trans.execute(stmt)
class DummyException(Exception):
pass
# Make sure when transaction is rolled back, no rows get inserted
ins_sql = "INSERT INTO test_trans (A,B) VALUES (1, 'blah')"
if isinstance(pandasSQL, SQLDatabase):
from sqlalchemy import text
ins_sql = text(ins_sql)
try:
with pandasSQL.run_transaction() as trans:
trans.execute(ins_sql)
raise DummyException("error")
except DummyException:
# ignore raised exception
pass
with pandasSQL.run_transaction():
res = pandasSQL.read_query("SELECT * FROM test_trans")
assert len(res) == 0
# Make sure when transaction is committed, rows do get inserted
with pandasSQL.run_transaction() as trans:
trans.execute(ins_sql)
res2 = pandasSQL.read_query("SELECT * FROM test_trans")
assert len(res2) == 1
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_get_schema_create_table(conn, request, test_frame3):
# Use a dataframe without a bool column, since MySQL converts bool to
# TINYINT (which read_sql_table returns as an int and causes a dtype
# mismatch)
if conn == "sqlite_str":
request.applymarker(
pytest.mark.xfail(reason="test does not support sqlite_str fixture")
)
conn = request.getfixturevalue(conn)
from sqlalchemy import text
from sqlalchemy.engine import Engine
tbl = "test_get_schema_create_table"
create_sql = sql.get_schema(test_frame3, tbl, con=conn)
blank_test_df = test_frame3.iloc[:0]
create_sql = text(create_sql)
if isinstance(conn, Engine):
with conn.connect() as newcon:
with newcon.begin():
newcon.execute(create_sql)
else:
conn.execute(create_sql)
returned_df = sql.read_sql_table(tbl, conn)
tm.assert_frame_equal(returned_df, blank_test_df, check_index_type=False)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_dtype(conn, request):
if conn == "sqlite_str":
pytest.skip("sqlite_str has no inspection system")
conn = request.getfixturevalue(conn)
from sqlalchemy import (
TEXT,
String,
)
from sqlalchemy.schema import MetaData
cols = ["A", "B"]
data = [(0.8, True), (0.9, None)]
df = DataFrame(data, columns=cols)
assert df.to_sql(name="dtype_test", con=conn) == 2
assert df.to_sql(name="dtype_test2", con=conn, dtype={"B": TEXT}) == 2
meta = MetaData()
meta.reflect(bind=conn)
sqltype = meta.tables["dtype_test2"].columns["B"].type
assert isinstance(sqltype, TEXT)
msg = "The type of B is not a SQLAlchemy type"
with pytest.raises(ValueError, match=msg):
df.to_sql(name="error", con=conn, dtype={"B": str})
# GH9083
assert df.to_sql(name="dtype_test3", con=conn, dtype={"B": String(10)}) == 2
meta.reflect(bind=conn)
sqltype = meta.tables["dtype_test3"].columns["B"].type
assert isinstance(sqltype, String)
assert sqltype.length == 10
# single dtype
assert df.to_sql(name="single_dtype_test", con=conn, dtype=TEXT) == 2
meta.reflect(bind=conn)
sqltypea = meta.tables["single_dtype_test"].columns["A"].type
sqltypeb = meta.tables["single_dtype_test"].columns["B"].type
assert isinstance(sqltypea, TEXT)
assert isinstance(sqltypeb, TEXT)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_notna_dtype(conn, request):
if conn == "sqlite_str":
pytest.skip("sqlite_str has no inspection system")
conn_name = conn
conn = request.getfixturevalue(conn)
from sqlalchemy import (
Boolean,
DateTime,
Float,
Integer,
)
from sqlalchemy.schema import MetaData
cols = {
"Bool": Series([True, None]),
"Date": Series([datetime(2012, 5, 1), None]),
"Int": Series([1, None], dtype="object"),
"Float": Series([1.1, None]),
}
df = DataFrame(cols)
tbl = "notna_dtype_test"
assert df.to_sql(name=tbl, con=conn) == 2
_ = sql.read_sql_table(tbl, conn)
meta = MetaData()
meta.reflect(bind=conn)
my_type = Integer if "mysql" in conn_name else Boolean
col_dict = meta.tables[tbl].columns
assert isinstance(col_dict["Bool"].type, my_type)
assert isinstance(col_dict["Date"].type, DateTime)
assert isinstance(col_dict["Int"].type, Integer)
assert isinstance(col_dict["Float"].type, Float)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_double_precision(conn, request):
if conn == "sqlite_str":
pytest.skip("sqlite_str has no inspection system")
conn = request.getfixturevalue(conn)
from sqlalchemy import (
BigInteger,
Float,
Integer,
)
from sqlalchemy.schema import MetaData
V = 1.23456789101112131415
df = DataFrame(
{
"f32": Series([V], dtype="float32"),
"f64": Series([V], dtype="float64"),
"f64_as_f32": Series([V], dtype="float64"),
"i32": Series([5], dtype="int32"),
"i64": Series([5], dtype="int64"),
}
)
assert (
df.to_sql(
name="test_dtypes",
con=conn,
index=False,
if_exists="replace",
dtype={"f64_as_f32": Float(precision=23)},
)
== 1
)
res = sql.read_sql_table("test_dtypes", conn)
# check precision of float64
assert np.round(df["f64"].iloc[0], 14) == np.round(res["f64"].iloc[0], 14)
# check sql types
meta = MetaData()
meta.reflect(bind=conn)
col_dict = meta.tables["test_dtypes"].columns
assert str(col_dict["f32"].type) == str(col_dict["f64_as_f32"].type)
assert isinstance(col_dict["f32"].type, Float)
assert isinstance(col_dict["f64"].type, Float)
assert isinstance(col_dict["i32"].type, Integer)
assert isinstance(col_dict["i64"].type, BigInteger)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_connectable_issue_example(conn, request):
conn = request.getfixturevalue(conn)
# This tests the example raised in issue
# https://github.com/pandas-dev/pandas/issues/10104
from sqlalchemy.engine import Engine
def test_select(connection):
query = "SELECT test_foo_data FROM test_foo_data"
return sql.read_sql_query(query, con=connection)
def test_append(connection, data):
data.to_sql(name="test_foo_data", con=connection, if_exists="append")
def test_connectable(conn):
# https://github.com/sqlalchemy/sqlalchemy/commit/
# 00b5c10846e800304caa86549ab9da373b42fa5d#r48323973
foo_data = test_select(conn)
test_append(conn, foo_data)
def main(connectable):
if isinstance(connectable, Engine):
with connectable.connect() as conn:
with conn.begin():
test_connectable(conn)
else:
test_connectable(connectable)
assert (
DataFrame({"test_foo_data": [0, 1, 2]}).to_sql(name="test_foo_data", con=conn)
== 3
)
main(conn)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
@pytest.mark.parametrize(
"input",
[{"foo": [np.inf]}, {"foo": [-np.inf]}, {"foo": [-np.inf], "infe0": ["bar"]}],
)
def test_to_sql_with_negative_npinf(conn, request, input):
# GH 34431
df = DataFrame(input)
conn_name = conn
conn = request.getfixturevalue(conn)
if "mysql" in conn_name:
# GH 36465
# The input {"foo": [-np.inf], "infe0": ["bar"]} does not raise any error
# for pymysql version >= 0.10
# TODO(GH#36465): remove this version check after GH 36465 is fixed
pymysql = pytest.importorskip("pymysql")
if Version(pymysql.__version__) < Version("1.0.3") and "infe0" in df.columns:
mark = pytest.mark.xfail(reason="GH 36465")
request.applymarker(mark)
msg = "inf cannot be used with MySQL"
with pytest.raises(ValueError, match=msg):
df.to_sql(name="foobar", con=conn, index=False)
else:
assert df.to_sql(name="foobar", con=conn, index=False) == 1
res = sql.read_sql_table("foobar", conn)
tm.assert_equal(df, res)
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_temporary_table(conn, request):
if conn == "sqlite_str":
pytest.skip("test does not work with str connection")
conn = request.getfixturevalue(conn)
from sqlalchemy import (
Column,
Integer,
Unicode,
select,
)
from sqlalchemy.orm import (
Session,
declarative_base,
)
test_data = "Hello, World!"
expected = DataFrame({"spam": [test_data]})
Base = declarative_base()
class Temporary(Base):
__tablename__ = "temp_test"
__table_args__ = {"prefixes": ["TEMPORARY"]}
id = Column(Integer, primary_key=True)
spam = Column(Unicode(30), nullable=False)
with Session(conn) as session:
with session.begin():
conn = session.connection()
Temporary.__table__.create(conn)
session.add(Temporary(spam=test_data))
session.flush()
df = sql.read_sql_query(sql=select(Temporary.spam), con=conn)
tm.assert_frame_equal(df, expected)
@pytest.mark.parametrize("conn", all_connectable)
def test_invalid_engine(conn, request, test_frame1):
if conn == "sqlite_buildin" or "adbc" in conn:
request.applymarker(
pytest.mark.xfail(
reason="SQLiteDatabase/ADBCDatabase does not raise for bad engine"
)
)
conn = request.getfixturevalue(conn)
msg = "engine must be one of 'auto', 'sqlalchemy'"
with pandasSQL_builder(conn) as pandasSQL:
with pytest.raises(ValueError, match=msg):
pandasSQL.to_sql(test_frame1, "test_frame1", engine="bad_engine")
@pytest.mark.parametrize("conn", all_connectable)
def test_to_sql_with_sql_engine(conn, request, test_frame1):
"""`to_sql` with the `engine` param"""
# mostly copied from this class's `_to_sql()` method
conn = request.getfixturevalue(conn)
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(test_frame1, "test_frame1", engine="auto") == 4
assert pandasSQL.has_table("test_frame1")
num_entries = len(test_frame1)
num_rows = count_rows(conn, "test_frame1")
assert num_rows == num_entries
@pytest.mark.parametrize("conn", sqlalchemy_connectable)
def test_options_sqlalchemy(conn, request, test_frame1):
# use the set option
conn = request.getfixturevalue(conn)
with pd.option_context("io.sql.engine", "sqlalchemy"):
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(test_frame1, "test_frame1") == 4
assert pandasSQL.has_table("test_frame1")
num_entries = len(test_frame1)
num_rows = count_rows(conn, "test_frame1")
assert num_rows == num_entries
@pytest.mark.parametrize("conn", all_connectable)
def test_options_auto(conn, request, test_frame1):
# use the set option
conn = request.getfixturevalue(conn)
with pd.option_context("io.sql.engine", "auto"):
with pandasSQL_builder(conn) as pandasSQL:
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(test_frame1, "test_frame1") == 4
assert pandasSQL.has_table("test_frame1")
num_entries = len(test_frame1)
num_rows = count_rows(conn, "test_frame1")
assert num_rows == num_entries
def test_options_get_engine():
pytest.importorskip("sqlalchemy")
assert isinstance(get_engine("sqlalchemy"), SQLAlchemyEngine)
with pd.option_context("io.sql.engine", "sqlalchemy"):
assert isinstance(get_engine("auto"), SQLAlchemyEngine)
assert isinstance(get_engine("sqlalchemy"), SQLAlchemyEngine)
with pd.option_context("io.sql.engine", "auto"):
assert isinstance(get_engine("auto"), SQLAlchemyEngine)
assert isinstance(get_engine("sqlalchemy"), SQLAlchemyEngine)
def test_get_engine_auto_error_message():
# Expect different error messages from get_engine(engine="auto")
# if engines aren't installed vs. are installed but bad version
pass
# TODO(GH#36893) fill this in when we add more engines
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize("func", ["read_sql", "read_sql_query"])
def test_read_sql_dtype_backend(
conn,
request,
string_storage,
func,
dtype_backend,
dtype_backend_data,
dtype_backend_expected,
):
# GH#50048
conn_name = conn
conn = request.getfixturevalue(conn)
table = "test"
df = dtype_backend_data
df.to_sql(name=table, con=conn, index=False, if_exists="replace")
with pd.option_context("mode.string_storage", string_storage):
result = getattr(pd, func)(
f"Select * from {table}", conn, dtype_backend=dtype_backend
)
expected = dtype_backend_expected(string_storage, dtype_backend, conn_name)
tm.assert_frame_equal(result, expected)
if "adbc" in conn_name:
# adbc does not support chunksize argument
request.applymarker(
pytest.mark.xfail(reason="adbc does not support chunksize argument")
)
with pd.option_context("mode.string_storage", string_storage):
iterator = getattr(pd, func)(
f"Select * from {table}",
con=conn,
dtype_backend=dtype_backend,
chunksize=3,
)
expected = dtype_backend_expected(string_storage, dtype_backend, conn_name)
for result in iterator:
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize("func", ["read_sql", "read_sql_table"])
def test_read_sql_dtype_backend_table(
conn,
request,
string_storage,
func,
dtype_backend,
dtype_backend_data,
dtype_backend_expected,
):
if "sqlite" in conn and "adbc" not in conn:
request.applymarker(
pytest.mark.xfail(
reason=(
"SQLite actually returns proper boolean values via "
"read_sql_table, but before pytest refactor was skipped"
)
)
)
# GH#50048
conn_name = conn
conn = request.getfixturevalue(conn)
table = "test"
df = dtype_backend_data
df.to_sql(name=table, con=conn, index=False, if_exists="replace")
with pd.option_context("mode.string_storage", string_storage):
result = getattr(pd, func)(table, conn, dtype_backend=dtype_backend)
expected = dtype_backend_expected(string_storage, dtype_backend, conn_name)
tm.assert_frame_equal(result, expected)
if "adbc" in conn_name:
# adbc does not support chunksize argument
return
with pd.option_context("mode.string_storage", string_storage):
iterator = getattr(pd, func)(
table,
conn,
dtype_backend=dtype_backend,
chunksize=3,
)
expected = dtype_backend_expected(string_storage, dtype_backend, conn_name)
for result in iterator:
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize("func", ["read_sql", "read_sql_table", "read_sql_query"])
def test_read_sql_invalid_dtype_backend_table(conn, request, func, dtype_backend_data):
conn = request.getfixturevalue(conn)
table = "test"
df = dtype_backend_data
df.to_sql(name=table, con=conn, index=False, if_exists="replace")
msg = (
"dtype_backend numpy is invalid, only 'numpy_nullable' and "
"'pyarrow' are allowed."
)
with pytest.raises(ValueError, match=msg):
getattr(pd, func)(table, conn, dtype_backend="numpy")
@pytest.fixture
def dtype_backend_data() -> DataFrame:
return DataFrame(
{
"a": Series([1, np.nan, 3], dtype="Int64"),
"b": Series([1, 2, 3], dtype="Int64"),
"c": Series([1.5, np.nan, 2.5], dtype="Float64"),
"d": Series([1.5, 2.0, 2.5], dtype="Float64"),
"e": [True, False, None],
"f": [True, False, True],
"g": ["a", "b", "c"],
"h": ["a", "b", None],
}
)
@pytest.fixture
def dtype_backend_expected():
def func(storage, dtype_backend, conn_name) -> DataFrame:
string_array: StringArray | ArrowStringArray
string_array_na: StringArray | ArrowStringArray
if storage == "python":
string_array = StringArray(np.array(["a", "b", "c"], dtype=np.object_))
string_array_na = StringArray(np.array(["a", "b", pd.NA], dtype=np.object_))
elif dtype_backend == "pyarrow":
pa = pytest.importorskip("pyarrow")
from pandas.arrays import ArrowExtensionArray
string_array = ArrowExtensionArray(pa.array(["a", "b", "c"])) # type: ignore[assignment]
string_array_na = ArrowExtensionArray(pa.array(["a", "b", None])) # type: ignore[assignment]
else:
pa = pytest.importorskip("pyarrow")
string_array = ArrowStringArray(pa.array(["a", "b", "c"]))
string_array_na = ArrowStringArray(pa.array(["a", "b", None]))
df = DataFrame(
{
"a": Series([1, np.nan, 3], dtype="Int64"),
"b": Series([1, 2, 3], dtype="Int64"),
"c": Series([1.5, np.nan, 2.5], dtype="Float64"),
"d": Series([1.5, 2.0, 2.5], dtype="Float64"),
"e": Series([True, False, pd.NA], dtype="boolean"),
"f": Series([True, False, True], dtype="boolean"),
"g": string_array,
"h": string_array_na,
}
)
if dtype_backend == "pyarrow":
pa = pytest.importorskip("pyarrow")
from pandas.arrays import ArrowExtensionArray
df = DataFrame(
{
col: ArrowExtensionArray(pa.array(df[col], from_pandas=True))
for col in df.columns
}
)
if "mysql" in conn_name or "sqlite" in conn_name:
if dtype_backend == "numpy_nullable":
df = df.astype({"e": "Int64", "f": "Int64"})
else:
df = df.astype({"e": "int64[pyarrow]", "f": "int64[pyarrow]"})
return df
return func
@pytest.mark.parametrize("conn", all_connectable)
def test_chunksize_empty_dtypes(conn, request):
# GH#50245
if "adbc" in conn:
request.node.add_marker(
pytest.mark.xfail(reason="chunksize argument NotImplemented with ADBC")
)
conn = request.getfixturevalue(conn)
dtypes = {"a": "int64", "b": "object"}
df = DataFrame(columns=["a", "b"]).astype(dtypes)
expected = df.copy()
df.to_sql(name="test", con=conn, index=False, if_exists="replace")
for result in read_sql_query(
"SELECT * FROM test",
conn,
dtype=dtypes,
chunksize=1,
):
tm.assert_frame_equal(result, expected)
@pytest.mark.parametrize("conn", all_connectable)
@pytest.mark.parametrize("dtype_backend", [lib.no_default, "numpy_nullable"])
@pytest.mark.parametrize("func", ["read_sql", "read_sql_query"])
def test_read_sql_dtype(conn, request, func, dtype_backend):
# GH#50797
conn = request.getfixturevalue(conn)
table = "test"
df = DataFrame({"a": [1, 2, 3], "b": 5})
df.to_sql(name=table, con=conn, index=False, if_exists="replace")
result = getattr(pd, func)(
f"Select * from {table}",
conn,
dtype={"a": np.float64},
dtype_backend=dtype_backend,
)
expected = DataFrame(
{
"a": Series([1, 2, 3], dtype=np.float64),
"b": Series(
[5, 5, 5],
dtype="int64" if not dtype_backend == "numpy_nullable" else "Int64",
),
}
)
tm.assert_frame_equal(result, expected)
def test_keyword_deprecation(sqlite_engine):
conn = sqlite_engine
# GH 54397
msg = (
"Starting with pandas version 3.0 all arguments of to_sql except for the "
"arguments 'name' and 'con' will be keyword-only."
)
df = DataFrame([{"A": 1, "B": 2, "C": 3}, {"A": 1, "B": 2, "C": 3}])
df.to_sql("example", conn)
with tm.assert_produces_warning(FutureWarning, match=msg):
df.to_sql("example", conn, None, if_exists="replace")
def test_bigint_warning(sqlite_engine):
conn = sqlite_engine
# test no warning for BIGINT (to support int64) is raised (GH7433)
df = DataFrame({"a": [1, 2]}, dtype="int64")
assert df.to_sql(name="test_bigintwarning", con=conn, index=False) == 2
with tm.assert_produces_warning(None):
sql.read_sql_table("test_bigintwarning", conn)
def test_valueerror_exception(sqlite_engine):
conn = sqlite_engine
df = DataFrame({"col1": [1, 2], "col2": [3, 4]})
with pytest.raises(ValueError, match="Empty table name specified"):
df.to_sql(name="", con=conn, if_exists="replace", index=False)
def test_row_object_is_named_tuple(sqlite_engine):
conn = sqlite_engine
# GH 40682
# Test for the is_named_tuple() function
# Placed here due to its usage of sqlalchemy
from sqlalchemy import (
Column,
Integer,
String,
)
from sqlalchemy.orm import (
declarative_base,
sessionmaker,
)
BaseModel = declarative_base()
class Test(BaseModel):
__tablename__ = "test_frame"
id = Column(Integer, primary_key=True)
string_column = Column(String(50))
with conn.begin():
BaseModel.metadata.create_all(conn)
Session = sessionmaker(bind=conn)
with Session() as session:
df = DataFrame({"id": [0, 1], "string_column": ["hello", "world"]})
assert (
df.to_sql(name="test_frame", con=conn, index=False, if_exists="replace")
== 2
)
session.commit()
test_query = session.query(Test.id, Test.string_column)
df = DataFrame(test_query)
assert list(df.columns) == ["id", "string_column"]
def test_read_sql_string_inference(sqlite_engine):
conn = sqlite_engine
# GH#54430
pytest.importorskip("pyarrow")
table = "test"
df = DataFrame({"a": ["x", "y"]})
df.to_sql(table, con=conn, index=False, if_exists="replace")
with pd.option_context("future.infer_string", True):
result = read_sql_table(table, conn)
dtype = "string[pyarrow_numpy]"
expected = DataFrame(
{"a": ["x", "y"]}, dtype=dtype, columns=Index(["a"], dtype=dtype)
)
tm.assert_frame_equal(result, expected)
def test_roundtripping_datetimes(sqlite_engine):
conn = sqlite_engine
# GH#54877
df = DataFrame({"t": [datetime(2020, 12, 31, 12)]}, dtype="datetime64[ns]")
df.to_sql("test", conn, if_exists="replace", index=False)
result = pd.read_sql("select * from test", conn).iloc[0, 0]
assert result == "2020-12-31 12:00:00.000000"
@pytest.fixture
def sqlite_builtin_detect_types():
with contextlib.closing(
sqlite3.connect(":memory:", detect_types=sqlite3.PARSE_DECLTYPES)
) as closing_conn:
with closing_conn as conn:
yield conn
def test_roundtripping_datetimes_detect_types(sqlite_builtin_detect_types):
# https://github.com/pandas-dev/pandas/issues/55554
conn = sqlite_builtin_detect_types
df = DataFrame({"t": [datetime(2020, 12, 31, 12)]}, dtype="datetime64[ns]")
df.to_sql("test", conn, if_exists="replace", index=False)
result = pd.read_sql("select * from test", conn).iloc[0, 0]
assert result == Timestamp("2020-12-31 12:00:00.000000")
@pytest.mark.db
def test_psycopg2_schema_support(postgresql_psycopg2_engine):
conn = postgresql_psycopg2_engine
# only test this for postgresql (schema's not supported in
# mysql/sqlite)
df = DataFrame({"col1": [1, 2], "col2": [0.1, 0.2], "col3": ["a", "n"]})
# create a schema
with conn.connect() as con:
with con.begin():
con.exec_driver_sql("DROP SCHEMA IF EXISTS other CASCADE;")
con.exec_driver_sql("CREATE SCHEMA other;")
# write dataframe to different schema's
assert df.to_sql(name="test_schema_public", con=conn, index=False) == 2
assert (
df.to_sql(
name="test_schema_public_explicit",
con=conn,
index=False,
schema="public",
)
== 2
)
assert (
df.to_sql(name="test_schema_other", con=conn, index=False, schema="other") == 2
)
# read dataframes back in
res1 = sql.read_sql_table("test_schema_public", conn)
tm.assert_frame_equal(df, res1)
res2 = sql.read_sql_table("test_schema_public_explicit", conn)
tm.assert_frame_equal(df, res2)
res3 = sql.read_sql_table("test_schema_public_explicit", conn, schema="public")
tm.assert_frame_equal(df, res3)
res4 = sql.read_sql_table("test_schema_other", conn, schema="other")
tm.assert_frame_equal(df, res4)
msg = "Table test_schema_other not found"
with pytest.raises(ValueError, match=msg):
sql.read_sql_table("test_schema_other", conn, schema="public")
# different if_exists options
# create a schema
with conn.connect() as con:
with con.begin():
con.exec_driver_sql("DROP SCHEMA IF EXISTS other CASCADE;")
con.exec_driver_sql("CREATE SCHEMA other;")
# write dataframe with different if_exists options
assert (
df.to_sql(name="test_schema_other", con=conn, schema="other", index=False) == 2
)
df.to_sql(
name="test_schema_other",
con=conn,
schema="other",
index=False,
if_exists="replace",
)
assert (
df.to_sql(
name="test_schema_other",
con=conn,
schema="other",
index=False,
if_exists="append",
)
== 2
)
res = sql.read_sql_table("test_schema_other", conn, schema="other")
tm.assert_frame_equal(concat([df, df], ignore_index=True), res)
@pytest.mark.db
def test_self_join_date_columns(postgresql_psycopg2_engine):
# GH 44421
conn = postgresql_psycopg2_engine
from sqlalchemy.sql import text
create_table = text(
"""
CREATE TABLE person
(
id serial constraint person_pkey primary key,
created_dt timestamp with time zone
);
INSERT INTO person
VALUES (1, '2021-01-01T00:00:00Z');
"""
)
with conn.connect() as con:
with con.begin():
con.execute(create_table)
sql_query = (
'SELECT * FROM "person" AS p1 INNER JOIN "person" AS p2 ON p1.id = p2.id;'
)
result = pd.read_sql(sql_query, conn)
expected = DataFrame(
[[1, Timestamp("2021", tz="UTC")] * 2], columns=["id", "created_dt"] * 2
)
tm.assert_frame_equal(result, expected)
# Cleanup
with sql.SQLDatabase(conn, need_transaction=True) as pandasSQL:
pandasSQL.drop_table("person")
def test_create_and_drop_table(sqlite_engine):
conn = sqlite_engine
temp_frame = DataFrame({"one": [1.0, 2.0, 3.0, 4.0], "two": [4.0, 3.0, 2.0, 1.0]})
with sql.SQLDatabase(conn) as pandasSQL:
with pandasSQL.run_transaction():
assert pandasSQL.to_sql(temp_frame, "drop_test_frame") == 4
assert pandasSQL.has_table("drop_test_frame")
with pandasSQL.run_transaction():
pandasSQL.drop_table("drop_test_frame")
assert not pandasSQL.has_table("drop_test_frame")
def test_sqlite_datetime_date(sqlite_buildin):
conn = sqlite_buildin
df = DataFrame([date(2014, 1, 1), date(2014, 1, 2)], columns=["a"])
assert df.to_sql(name="test_date", con=conn, index=False) == 2
res = read_sql_query("SELECT * FROM test_date", conn)
# comes back as strings
tm.assert_frame_equal(res, df.astype(str))
@pytest.mark.parametrize("tz_aware", [False, True])
def test_sqlite_datetime_time(tz_aware, sqlite_buildin):
conn = sqlite_buildin
# test support for datetime.time, GH #8341
if not tz_aware:
tz_times = [time(9, 0, 0), time(9, 1, 30)]
else:
tz_dt = date_range("2013-01-01 09:00:00", periods=2, tz="US/Pacific")
tz_times = Series(tz_dt.to_pydatetime()).map(lambda dt: dt.timetz())
df = DataFrame(tz_times, columns=["a"])
assert df.to_sql(name="test_time", con=conn, index=False) == 2
res = read_sql_query("SELECT * FROM test_time", conn)
# comes back as strings
expected = df.map(lambda _: _.strftime("%H:%M:%S.%f"))
tm.assert_frame_equal(res, expected)
def get_sqlite_column_type(conn, table, column):
recs = conn.execute(f"PRAGMA table_info({table})")
for cid, name, ctype, not_null, default, pk in recs:
if name == column:
return ctype
raise ValueError(f"Table {table}, column {column} not found")
def test_sqlite_test_dtype(sqlite_buildin):
conn = sqlite_buildin
cols = ["A", "B"]
data = [(0.8, True), (0.9, None)]
df = DataFrame(data, columns=cols)
assert df.to_sql(name="dtype_test", con=conn) == 2
assert df.to_sql(name="dtype_test2", con=conn, dtype={"B": "STRING"}) == 2
# sqlite stores Boolean values as INTEGER
assert get_sqlite_column_type(conn, "dtype_test", "B") == "INTEGER"
assert get_sqlite_column_type(conn, "dtype_test2", "B") == "STRING"
msg = r"B \(<class 'bool'>\) not a string"
with pytest.raises(ValueError, match=msg):
df.to_sql(name="error", con=conn, dtype={"B": bool})
# single dtype
assert df.to_sql(name="single_dtype_test", con=conn, dtype="STRING") == 2
assert get_sqlite_column_type(conn, "single_dtype_test", "A") == "STRING"
assert get_sqlite_column_type(conn, "single_dtype_test", "B") == "STRING"
def test_sqlite_notna_dtype(sqlite_buildin):
conn = sqlite_buildin
cols = {
"Bool": Series([True, None]),
"Date": Series([datetime(2012, 5, 1), None]),
"Int": Series([1, None], dtype="object"),
"Float": Series([1.1, None]),
}
df = DataFrame(cols)
tbl = "notna_dtype_test"
assert df.to_sql(name=tbl, con=conn) == 2
assert get_sqlite_column_type(conn, tbl, "Bool") == "INTEGER"
assert get_sqlite_column_type(conn, tbl, "Date") == "TIMESTAMP"
assert get_sqlite_column_type(conn, tbl, "Int") == "INTEGER"
assert get_sqlite_column_type(conn, tbl, "Float") == "REAL"
def test_sqlite_illegal_names(sqlite_buildin):
# For sqlite, these should work fine
conn = sqlite_buildin
df = DataFrame([[1, 2], [3, 4]], columns=["a", "b"])
msg = "Empty table or column name specified"
with pytest.raises(ValueError, match=msg):
df.to_sql(name="", con=conn)
for ndx, weird_name in enumerate(
[
"test_weird_name]",
"test_weird_name[",
"test_weird_name`",
'test_weird_name"',
"test_weird_name'",
"_b.test_weird_name_01-30",
'"_b.test_weird_name_01-30"',
"99beginswithnumber",
"12345",
"\xe9",
]
):
assert df.to_sql(name=weird_name, con=conn) == 2
sql.table_exists(weird_name, conn)
df2 = DataFrame([[1, 2], [3, 4]], columns=["a", weird_name])
c_tbl = f"test_weird_col_name{ndx:d}"
assert df2.to_sql(name=c_tbl, con=conn) == 2
sql.table_exists(c_tbl, conn)
def format_query(sql, *args):
_formatters = {
datetime: "'{}'".format,
str: "'{}'".format,
np.str_: "'{}'".format,
bytes: "'{}'".format,
float: "{:.8f}".format,
int: "{:d}".format,
type(None): lambda x: "NULL",
np.float64: "{:.10f}".format,
bool: "'{!s}'".format,
}
processed_args = []
for arg in args:
if isinstance(arg, float) and isna(arg):
arg = None
formatter = _formatters[type(arg)]
processed_args.append(formatter(arg))
return sql % tuple(processed_args)
def tquery(query, con=None):
"""Replace removed sql.tquery function"""
with sql.pandasSQL_builder(con) as pandas_sql:
res = pandas_sql.execute(query).fetchall()
return None if res is None else list(res)
def test_xsqlite_basic(sqlite_buildin):
frame = DataFrame(
np.random.default_rng(2).standard_normal((10, 4)),
columns=Index(list("ABCD"), dtype=object),
index=date_range("2000-01-01", periods=10, freq="B"),
)
assert sql.to_sql(frame, name="test_table", con=sqlite_buildin, index=False) == 10
result = sql.read_sql("select * from test_table", sqlite_buildin)
# HACK! Change this once indexes are handled properly.
result.index = frame.index
expected = frame
tm.assert_frame_equal(result, frame)
frame["txt"] = ["a"] * len(frame)
frame2 = frame.copy()
new_idx = Index(np.arange(len(frame2)), dtype=np.int64) + 10
frame2["Idx"] = new_idx.copy()
assert sql.to_sql(frame2, name="test_table2", con=sqlite_buildin, index=False) == 10
result = sql.read_sql("select * from test_table2", sqlite_buildin, index_col="Idx")
expected = frame.copy()
expected.index = new_idx
expected.index.name = "Idx"
tm.assert_frame_equal(expected, result)
def test_xsqlite_write_row_by_row(sqlite_buildin):
frame = DataFrame(
np.random.default_rng(2).standard_normal((10, 4)),
columns=Index(list("ABCD"), dtype=object),
index=date_range("2000-01-01", periods=10, freq="B"),
)
frame.iloc[0, 0] = np.nan
create_sql = sql.get_schema(frame, "test")
cur = sqlite_buildin.cursor()
cur.execute(create_sql)
ins = "INSERT INTO test VALUES (%s, %s, %s, %s)"
for _, row in frame.iterrows():
fmt_sql = format_query(ins, *row)
tquery(fmt_sql, con=sqlite_buildin)
sqlite_buildin.commit()
result = sql.read_sql("select * from test", con=sqlite_buildin)
result.index = frame.index
tm.assert_frame_equal(result, frame, rtol=1e-3)
def test_xsqlite_execute(sqlite_buildin):
frame = DataFrame(
np.random.default_rng(2).standard_normal((10, 4)),
columns=Index(list("ABCD"), dtype=object),
index=date_range("2000-01-01", periods=10, freq="B"),
)
create_sql = sql.get_schema(frame, "test")
cur = sqlite_buildin.cursor()
cur.execute(create_sql)
ins = "INSERT INTO test VALUES (?, ?, ?, ?)"
row = frame.iloc[0]
with sql.pandasSQL_builder(sqlite_buildin) as pandas_sql:
pandas_sql.execute(ins, tuple(row))
sqlite_buildin.commit()
result = sql.read_sql("select * from test", sqlite_buildin)
result.index = frame.index[:1]
tm.assert_frame_equal(result, frame[:1])
def test_xsqlite_schema(sqlite_buildin):
frame = DataFrame(
np.random.default_rng(2).standard_normal((10, 4)),
columns=Index(list("ABCD"), dtype=object),
index=date_range("2000-01-01", periods=10, freq="B"),
)
create_sql = sql.get_schema(frame, "test")
lines = create_sql.splitlines()
for line in lines:
tokens = line.split(" ")
if len(tokens) == 2 and tokens[0] == "A":
assert tokens[1] == "DATETIME"
create_sql = sql.get_schema(frame, "test", keys=["A", "B"])
lines = create_sql.splitlines()
assert 'PRIMARY KEY ("A", "B")' in create_sql
cur = sqlite_buildin.cursor()
cur.execute(create_sql)
def test_xsqlite_execute_fail(sqlite_buildin):
create_sql = """
CREATE TABLE test
(
a TEXT,
b TEXT,
c REAL,
PRIMARY KEY (a, b)
);
"""
cur = sqlite_buildin.cursor()
cur.execute(create_sql)
with sql.pandasSQL_builder(sqlite_buildin) as pandas_sql:
pandas_sql.execute('INSERT INTO test VALUES("foo", "bar", 1.234)')
pandas_sql.execute('INSERT INTO test VALUES("foo", "baz", 2.567)')
with pytest.raises(sql.DatabaseError, match="Execution failed on sql"):
pandas_sql.execute('INSERT INTO test VALUES("foo", "bar", 7)')
def test_xsqlite_execute_closed_connection():
create_sql = """
CREATE TABLE test
(
a TEXT,
b TEXT,
c REAL,
PRIMARY KEY (a, b)
);
"""
with contextlib.closing(sqlite3.connect(":memory:")) as conn:
cur = conn.cursor()
cur.execute(create_sql)
with sql.pandasSQL_builder(conn) as pandas_sql:
pandas_sql.execute('INSERT INTO test VALUES("foo", "bar", 1.234)')
msg = "Cannot operate on a closed database."
with pytest.raises(sqlite3.ProgrammingError, match=msg):
tquery("select * from test", con=conn)
def test_xsqlite_keyword_as_column_names(sqlite_buildin):
df = DataFrame({"From": np.ones(5)})
assert sql.to_sql(df, con=sqlite_buildin, name="testkeywords", index=False) == 5
def test_xsqlite_onecolumn_of_integer(sqlite_buildin):
# GH 3628
# a column_of_integers dataframe should transfer well to sql
mono_df = DataFrame([1, 2], columns=["c0"])
assert sql.to_sql(mono_df, con=sqlite_buildin, name="mono_df", index=False) == 2
# computing the sum via sql
con_x = sqlite_buildin
the_sum = sum(my_c0[0] for my_c0 in con_x.execute("select * from mono_df"))
# it should not fail, and gives 3 ( Issue #3628 )
assert the_sum == 3
result = sql.read_sql("select * from mono_df", con_x)
tm.assert_frame_equal(result, mono_df)
def test_xsqlite_if_exists(sqlite_buildin):
df_if_exists_1 = DataFrame({"col1": [1, 2], "col2": ["A", "B"]})
df_if_exists_2 = DataFrame({"col1": [3, 4, 5], "col2": ["C", "D", "E"]})
table_name = "table_if_exists"
sql_select = f"SELECT * FROM {table_name}"
msg = "'notvalidvalue' is not valid for if_exists"
with pytest.raises(ValueError, match=msg):
sql.to_sql(
frame=df_if_exists_1,
con=sqlite_buildin,
name=table_name,
if_exists="notvalidvalue",
)
drop_table(table_name, sqlite_buildin)
# test if_exists='fail'
sql.to_sql(
frame=df_if_exists_1, con=sqlite_buildin, name=table_name, if_exists="fail"
)
msg = "Table 'table_if_exists' already exists"
with pytest.raises(ValueError, match=msg):
sql.to_sql(
frame=df_if_exists_1,
con=sqlite_buildin,
name=table_name,
if_exists="fail",
)
# test if_exists='replace'
sql.to_sql(
frame=df_if_exists_1,
con=sqlite_buildin,
name=table_name,
if_exists="replace",
index=False,
)
assert tquery(sql_select, con=sqlite_buildin) == [(1, "A"), (2, "B")]
assert (
sql.to_sql(
frame=df_if_exists_2,
con=sqlite_buildin,
name=table_name,
if_exists="replace",
index=False,
)
== 3
)
assert tquery(sql_select, con=sqlite_buildin) == [(3, "C"), (4, "D"), (5, "E")]
drop_table(table_name, sqlite_buildin)
# test if_exists='append'
assert (
sql.to_sql(
frame=df_if_exists_1,
con=sqlite_buildin,
name=table_name,
if_exists="fail",
index=False,
)
== 2
)
assert tquery(sql_select, con=sqlite_buildin) == [(1, "A"), (2, "B")]
assert (
sql.to_sql(
frame=df_if_exists_2,
con=sqlite_buildin,
name=table_name,
if_exists="append",
index=False,
)
== 3
)
assert tquery(sql_select, con=sqlite_buildin) == [
(1, "A"),
(2, "B"),
(3, "C"),
(4, "D"),
(5, "E"),
]
drop_table(table_name, sqlite_buildin)