ueshin commented on code in PR #41867:
URL: https://github.com/apache/spark/pull/41867#discussion_r1261873500
##########
python/pyspark/worker.py:
##########
@@ -461,24 +462,53 @@ def assign_cols_by_name(runner_conf):
# ensure the UDTF is valid. This function also prepares a mapper function for
applying
# the UDTF logic to input rows.
def read_udtf(pickleSer, infile, eval_type):
+ if eval_type == PythonEvalType.SQL_ARROW_TABLE_UDF:
+ runner_conf = {}
+ # Load conf used for arrow evaluation.
+ num_conf = read_int(infile)
+ for i in range(num_conf):
+ k = utf8_deserializer.loads(infile)
+ v = utf8_deserializer.loads(infile)
+ runner_conf[k] = v
+
+ # NOTE: if timezone is set here, that implies respectSessionTimeZone
is True
+ timezone = runner_conf.get("spark.sql.session.timeZone", None)
+ safecheck = (
+
runner_conf.get("spark.sql.execution.pandas.convertToArrowArraySafely",
"false").lower()
+ == "true"
+ )
+ ser = ArrowStreamPandasUDTFSerializer(
+ timezone,
+ safecheck,
+ assign_cols_by_name(runner_conf),
Review Comment:
Yes, Pandas UDF wants to take the column names instead of the column order
if it's true (by default).
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