zhongyujiang commented on code in PR #2429:
URL: https://github.com/apache/iceberg-python/pull/2429#discussion_r2375526651


##########
pyiceberg/table/upsert_util.py:
##########
@@ -14,38 +14,61 @@
 # KIND, either express or implied.  See the License for the
 # specific language governing permissions and limitations
 # under the License.
-import functools
-import operator
+from math import isnan
+from typing import Any
 
 import pyarrow as pa
 from pyarrow import Table as pyarrow_table
 from pyarrow import compute as pc
 
 from pyiceberg.expressions import (
     AlwaysFalse,
+    And,
     BooleanExpression,
     EqualTo,
     In,
+    IsNaN,
+    IsNull,
     Or,
 )
 
 
 def create_match_filter(df: pyarrow_table, join_cols: list[str]) -> 
BooleanExpression:

Review Comment:
   If I understand this correctly, this is creating a predicate to test whether 
a row might exist in the `pyarrow_table` (matching on `join_cols`). 
   And since `Null(None in python) == Any` should always return unknown in SQL, 
can we just filter out any rows from the `pyarrow_table` where the `join_cols` 
fields contain `None`, and then build the match filter based on the filtered 
pyarrow table (using the existing logic for building the match filter)? This 
would be much simpler.



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