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"""Tests for issue #259: datetime/date/Timestamp vs string comparisons.
Uses get_imports from fixture only.
"""
from datetime import date, datetime
from typing import Iterable, List, Tuple
import pytest
from sparkless.testing import get_imports
_imports = get_imports()
SparkSession = _imports.SparkSession
F = _imports.F
class TestIssue259DatetimeStringComparison:
"""Regression tests for datetime/date/Timestamp vs string comparisons."""
def test_date_column_vs_string_column_filter(self) -> None:
"""Exact repro from GitHub issue #259 using date vs string columns."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{
"Name": "Alice",
"date_timestamp": date(2026, 1, 1),
"date_string": "2025-06-15",
},
{
"Name": "Bob",
"date_timestamp": date(2026, 1, 1),
"date_string": "2026-01-30",
},
{
"Name": "Charlie",
"date_timestamp": date(2026, 1, 1),
"date_string": "2026-01-01",
},
]
)
# Compare date column to string column; should not raise TypeError
result = df.filter(F.col("date_timestamp") > F.col("date_string")).collect()
# PySpark expected:
# +-----+-----------+--------------+
# | Name|date_string|date_timestamp|
# +-----+-----------+--------------+
# |Alice| 2025-06-15| 2026-01-01|
# +-----+-----------+--------------+
assert len(result) == 1
assert result[0]["Name"] == "Alice"
assert result[0]["date_timestamp"] == date(2026, 1, 1)
assert result[0]["date_string"] == "2025-06-15"
finally:
spark.stop()
@pytest.mark.parametrize( # type: ignore[misc,untyped-decorator]
"op,expected_names",
[
(">", {"Alice"}),
(">=", {"Alice", "Charlie"}),
("<", {"Bob"}),
("<=", {"Bob", "Charlie"}),
("==", {"Charlie"}),
("!=", {"Alice", "Bob"}),
],
)
def test_date_column_vs_string_column_all_operators(
self, op: str, expected_names: Iterable[str]
) -> None:
"""Verify all comparison operators match PySpark semantics for date vs string columns."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{
"Name": "Alice",
"d": date(2026, 1, 1),
"d_str": "2025-06-15",
},
{
"Name": "Bob",
"d": date(2026, 1, 1),
"d_str": "2026-01-30",
},
{
"Name": "Charlie",
"d": date(2026, 1, 1),
"d_str": "2026-01-01",
},
]
)
# Build comparison; handle each operator explicitly to match PySpark semantics.
if op == ">":
filtered = df.filter(F.col("d") > F.col("d_str"))
elif op == ">=":
filtered = df.filter(F.col("d") >= F.col("d_str"))
elif op == "<":
filtered = df.filter(F.col("d") < F.col("d_str"))
elif op == "<=":
filtered = df.filter(F.col("d") <= F.col("d_str"))
elif op == "==":
filtered = df.filter(F.col("d") == F.col("d_str"))
elif op == "!=":
filtered = df.filter(F.col("d") != F.col("d_str"))
else: # pragma: no cover - defensive
pytest.fail(f"Unsupported operator {op}")
names = {row["Name"] for row in filtered.collect()}
assert names == set(expected_names)
finally:
spark.stop()
def test_datetime_column_vs_string_column_filter(self) -> None:
"""Test datetime.datetime column compared to ISO datetime string column."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{
"Name": "Early",
"ts": datetime(2025, 1, 1, 12, 0, 0),
"ts_str": "2024-12-31 23:59:59",
},
{
"Name": "Equal",
"ts": datetime(2025, 1, 1, 12, 0, 0),
"ts_str": "2025-01-01 12:00:00",
},
{
"Name": "Later",
"ts": datetime(2025, 1, 2, 0, 0, 0),
"ts_str": "2025-01-03 00:00:00",
},
]
)
# Keep rows where ts > ts_str
result = df.filter(F.col("ts") > F.col("ts_str")).collect()
names = {row["Name"] for row in result}
# Only "Early" should satisfy ts > ts_str
assert names == {"Early"}
finally:
spark.stop()
def test_datetime_column_vs_string_column_all_operators(self) -> None:
"""Verify all comparison operators for datetime vs string columns behave like PySpark."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
base = datetime(2025, 1, 1, 12, 0, 0)
df = spark.createDataFrame(
[
{"Name": "Less", "ts": base, "ts_str": "2025-01-02 00:00:00"},
{"Name": "Equal", "ts": base, "ts_str": "2025-01-01 12:00:00"},
{"Name": "Greater", "ts": base, "ts_str": "2024-12-31 23:59:59"},
]
)
cases: List[Tuple[str, Iterable[str]]] = [
(">", {"Greater"}),
(">=", {"Greater", "Equal"}),
("<", {"Less"}),
("<=", {"Less", "Equal"}),
("==", {"Equal"}),
("!=", {"Less", "Greater"}),
]
for op, expected in cases:
if op == ">":
filtered = df.filter(F.col("ts") > F.col("ts_str"))
elif op == ">=":
filtered = df.filter(F.col("ts") >= F.col("ts_str"))
elif op == "<":
filtered = df.filter(F.col("ts") < F.col("ts_str"))
elif op == "<=":
filtered = df.filter(F.col("ts") <= F.col("ts_str"))
elif op == "==":
filtered = df.filter(F.col("ts") == F.col("ts_str"))
elif op == "!=":
filtered = df.filter(F.col("ts") != F.col("ts_str"))
else: # pragma: no cover - defensive
pytest.fail(f"Unsupported operator {op}")
names = {row["Name"] for row in filtered.collect()}
assert names == set(expected), f"Operator {op} mismatch"
finally:
spark.stop()
def test_date_column_vs_string_literal(self) -> None:
"""Test comparisons between date column and string literal thresholds."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{"Name": "A", "d": date(2025, 6, 14)},
{"Name": "B", "d": date(2025, 6, 15)},
{"Name": "C", "d": date(2025, 6, 16)},
]
)
# Use string literal on the right-hand side
result_gt = df.filter(F.col("d") > "2025-06-15").collect()
names_gt = {row["Name"] for row in result_gt}
assert names_gt == {"C"}
# Use string literal on the left-hand side
result_lt = df.filter(F.col("d") < "2025-06-15").collect()
names_lt = {row["Name"] for row in result_lt}
assert names_lt == {"A"}
finally:
spark.stop()
def test_string_column_vs_date_literal_all_operators(self) -> None:
"""Ensure string column compared to date literal behaves like PySpark (coercion on string side)."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{"Name": "A", "d_str": "2025-06-14"},
{"Name": "B", "d_str": "2025-06-15"},
{"Name": "C", "d_str": "2025-06-16"},
]
)
date_lit = date(2025, 6, 15)
cases: List[Tuple[str, Iterable[str]]] = [
(">", {"C"}),
(">=", {"B", "C"}),
("<", {"A"}),
("<=", {"A", "B"}),
("==", {"B"}),
("!=", {"A", "C"}),
]
for op, expected in cases:
if op == ">":
filtered = df.filter(F.col("d_str") > date_lit)
elif op == ">=":
filtered = df.filter(F.col("d_str") >= date_lit)
elif op == "<":
filtered = df.filter(F.col("d_str") < date_lit)
elif op == "<=":
filtered = df.filter(F.col("d_str") <= date_lit)
elif op == "==":
filtered = df.filter(F.col("d_str") == date_lit)
elif op == "!=":
filtered = df.filter(F.col("d_str") != date_lit)
else: # pragma: no cover - defensive
pytest.fail(f"Unsupported operator {op}")
names = {row["Name"] for row in filtered.collect()}
assert names == set(expected), f"Operator {op} mismatch"
finally:
spark.stop()
def test_invalid_or_null_date_strings_do_not_raise(self) -> None:
"""Invalid or null date strings should not raise and should behave like null comparisons."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{
"Name": "Valid",
"d": date(2025, 6, 16),
"d_str": "2025-06-15",
},
{
"Name": "Invalid",
"d": date(2025, 6, 16),
"d_str": "not-a-date",
},
{
"Name": "NullString",
"d": date(2025, 6, 16),
"d_str": None,
},
]
)
# Filter where date > string; invalid/None strings should be treated as null comparisons
result = df.filter(F.col("d") > F.col("d_str")).collect()
names = {row["Name"] for row in result}
# Only the valid parseable date string should participate in comparison
assert names == {"Valid"}
finally:
spark.stop()
def test_string_values_that_look_like_dates_but_both_sides_string(self) -> None:
"""When both sides are strings, comparisons should remain lexicographic (no coercion)."""
spark = SparkSession.builder.appName("Example").getOrCreate()
try:
df = spark.createDataFrame(
[
{"Name": "A", "left": "2024-01-10", "right": "2024-01-2"},
{"Name": "B", "left": "2024-01-2", "right": "2024-01-10"},
]
)
# No date objects involved here, so string comparison semantics apply
result = df.filter(F.col("left") > F.col("right")).collect()
names = {row["Name"] for row in result}
# In lexicographic comparison, "2024-01-2" > "2024-01-10"
assert names == {"B"}
finally:
spark.stop()