You are viewing a plain text version of this content. The canonical link for it is here.
Posted to issues@arrow.apache.org by "Kirill Lykov (Jira)" <ji...@apache.org> on 2020/10/06 14:27:00 UTC

[jira] [Created] (ARROW-10197) [Gandiva][python] Execute expression on filtered data

Kirill Lykov created ARROW-10197:
------------------------------------

             Summary: [Gandiva][python] Execute expression on filtered data
                 Key: ARROW-10197
                 URL: https://issues.apache.org/jira/browse/ARROW-10197
             Project: Apache Arrow
          Issue Type: Improvement
          Components: C++ - Gandiva, Python
            Reporter: Kirill Lykov


Looks like there is no way to execute an expression on filtered data in python. 
Basically, I cannot pass `SelectionVector` to projector's `evaluate` method

```python
import pyarrow as pa
import pyarrow.gandiva as gandiva

table = pa.Table.from_arrays([pa.array([1., 31., 46., 3., 57., 44., 22.]),
                                  pa.array([5., 45., 36., 73.,
                                            83., 23., 76.])],
                                 ['a', 'b'])

builder = gandiva.TreeExprBuilder()
node_a = builder.make_field(table.schema.field("a"))
node_b = builder.make_field(table.schema.field("b"))
fifty = builder.make_literal(50.0, pa.float64())
eleven = builder.make_literal(11.0, pa.float64())

cond_1 = builder.make_function("less_than", [node_a, fifty], pa.bool_())
cond_2 = builder.make_function("greater_than", [node_a, node_b],
                                   pa.bool_())
cond_3 = builder.make_function("less_than", [node_b, eleven], pa.bool_())
cond = builder.make_or([builder.make_and([cond_1, cond_2]), cond_3])
condition = builder.make_condition(cond)

filter = gandiva.make_filter(table.schema, condition)
# filterResult has type SelectionVector
filterResult = filter.evaluate(table.to_batches()[0], pa.default_memory_pool())
print(result)

sum = builder.make_function("add", [node_a, node_b], pa.float64())
field_result = pa.field("c", pa.float64())
expr = builder.make_expression(sum, field_result)
projector = gandiva.make_projector(
        table.schema, [expr], pa.default_memory_pool())

### Here there is a problem that I don't know how to use filterResult with projector
r, = projector.evaluate(table.to_batches()[0], result)
```

In C++, I see that it is possible to pass SelectionVector as second argument to projector::Evaluate: [https://github.com/apache/arrow/blob/c5fa23ea0e15abe47b35524fa6a79c7b8c160fa0/cpp/src/gandiva/tests/filter_project_test.cc#L270]
 
Meanwhile, it looks like it is impossible in `gandiva.pyx`: [https://github.com/apache/arrow/blob/a4eb08d54ee0d4c0d0202fa0a2dfa8af7aad7a05/python/pyarrow/gandiva.pyx#L154]



--
This message was sent by Atlassian Jira
(v8.3.4#803005)