Source code for apache_beam.transforms.sql
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"""Package for SqlTransform and related classes."""
# pytype: skip-file
import typing
from apache_beam.transforms.external import BeamJarExpansionService
from apache_beam.transforms.external import ExternalTransform
from apache_beam.transforms.external import NamedTupleBasedPayloadBuilder
__all__ = ['SqlTransform']
SqlTransformSchema = typing.NamedTuple(
'SqlTransformSchema', [('query', str), ('dialect', typing.Optional[str])])
[docs]
class SqlTransform(ExternalTransform):
"""A transform that can translate a SQL query into PTransforms.
Input PCollections must have a schema. Currently, there are two ways to define
a schema for a PCollection:
1) Register a `typing.NamedTuple` type to use RowCoder, and specify it as the
output type. For example::
Purchase = typing.NamedTuple('Purchase',
[('item_name', unicode), ('price', float)])
coders.registry.register_coder(Purchase, coders.RowCoder)
with Pipeline() as p:
purchases = (p | beam.io...
| beam.Map(..).with_output_types(Purchase))
2) Produce `beam.Row` instances. Note this option will fail if Beam is unable
to infer data types for any of the fields. For example::
with Pipeline() as p:
purchases = (p | beam.io...
| beam.Map(lambda x: beam.Row(item_name=unicode(..),
price=float(..))))
Similarly, the output of SqlTransform is a PCollection with a schema.
The columns produced by the query can be accessed as attributes. For example::
purchases | SqlTransform(\"\"\"
SELECT item_name, COUNT(*) AS `count`
FROM PCOLLECTION GROUP BY item_name\"\"\")
| beam.Map(lambda row: "We've sold %d %ss!" % (row.count,
row.item_name))
Additional examples can be found in
`apache_beam.examples.wordcount_xlang_sql`, `apache_beam.examples.sql_taxi`,
and `apache_beam.transforms.sql_test`.
For more details about Beam SQL in general, see the `Java transform
<https://beam.apache.org/releases/javadoc/current/org/apache/beam/sdk/extensions/sql/SqlTransform.html>`_,
and the `documentation
<https://beam.apache.org/documentation/dsls/sql/overview/>`_.
"""
URN = 'beam:external:java:sql:v1'
def __init__(self, query, dialect=None, expansion_service=None):
"""
Creates a SqlTransform which will be expanded to Java's SqlTransform.
(See class docs).
:param query: The SQL query.
:param dialect: (optional) The dialect, e.g. use 'zetasql' for ZetaSQL.
:param expansion_service: (optional) The URL of the expansion service to use
"""
expansion_service = expansion_service or BeamJarExpansionService(
':sdks:java:extensions:sql:expansion-service:shadowJar')
super().__init__(
self.URN,
NamedTupleBasedPayloadBuilder(
SqlTransformSchema(query=query, dialect=dialect)),
expansion_service=expansion_service)