- Splittable DoFn is opt-out for Java based runners (DirectRunner) using
--experiments=use_deprecated_read
. For all other runners, users can opt-in using--experiments=use_sdf_read
. (Java) (BEAM-10670) - New highly anticipated feature X added to Python SDK (BEAM-X).
- New highly anticipated feature Y added to Java SDK (BEAM-Y).
- Support for X source added (Java/Python) (BEAM-X).
- X feature added (Java/Python) (BEAM-X).
- X behavior was changed (BEAM-X).
- X behavior is deprecated and will be removed in X versions (BEAM-X).
- Fixed X (Java/Python) (BEAM-X).
- Apache Beam 2.24.0 is the last release with Python 2 and Python 3.5 support.
- New overloads for BigtableIO.Read.withKeyRange() and BigtableIO.Read.withRowFilter() methods that take ValueProvider as a parameter (Java) (BEAM-10283).
- The WriteToBigQuery transform (Python) in Dataflow Batch no longer relies on BigQuerySink by default. It relies on
a new, fully-featured transform based on file loads into BigQuery. To revert the behavior to the old implementation,
you may use
--experiments=use_legacy_bq_sink
. - Add cross-language support to Java's JdbcIO, now available in the Python module
apache_beam.io.external.jdbc
(BEAM-10135, BEAM-10136). - Add support of AWS SDK v2 for KinesisIO.Read (Java) (BEAM-9702).
- Support for X source added (Java/Python) (BEAM-X).
- Add streaming support to SnowflakeIO in Java SDK (BEAM-9896)
- Support reading and writing to Google Healthcare DICOM APIs in Python SDK (BEAM-10601)
- Shared library for simplifying management of large shared objects added to Python SDK. Example use case is sharing a large TF model object across threads (BEAM-10417).
- X feature added (Java/Python) (BEAM-X).
- Dataflow streaming timers are not strictly time ordered when set earlier mid-bundle (BEAM-8543).
- OnTimerContext should not create a new one when processing each element/timer in FnApiDoFnRunner (BEAM-9839)
- X behavior was changed (BEAM-X).
- X behavior is deprecated and will be removed in X versions (BEAM-X).
- Fixed X (Java/Python) (BEAM-X).
- Support for reading from Snowflake added (Java) (BEAM-9722).
- Support for writing to Splunk added (Java) (BEAM-8596).
- Support for assume role added (Java) (BEAM-10335).
- A new transform to read from BigQuery has been added:
apache_beam.io.gcp.bigquery.ReadFromBigQuery
. This transform is experimental. It reads data from BigQuery by exporting data to Avro files, and reading those files. It also supports reading data by exporting to JSON files. This has small differences in behavior for Time and Date-related fields. See Pydoc for more information. - Add dispositions for SnowflakeIO.write (BEAM-10343)
- Add cross-language support to SnowflakeIO.Read(BEAM-9897).
- Update Snowflake JDBC dependency and add application=beam to connection URL (BEAM-10383).
RowJson.RowJsonDeserializer
,JsonToRow
, andPubsubJsonTableProvider
now accept "implicit nulls" by default when deserializing JSON (Java) (BEAM-10220). Previously nulls could only be represented with explicit null values, as in{"foo": "bar", "baz": null}
, whereas an implicit null like{"foo": "bar"}
would raise an exception. Now both JSON strings will yield the same result by default. This behavior can be overridden withRowJson.RowJsonDeserializer#withNullBehavior
.- Fixed a bug in
GroupIntoBatches
experimental transform in Python to actually group batches by key. This changes the output type for this transform (BEAM-6696).
- Remove Gearpump runner. (BEAM-9999)
- Remove Apex runner. (BEAM-9999)
- RedisIO.readAll() is deprecated and will be removed in 2 versions, users must use RedisIO.readKeyPatterns() as a replacement (BEAM-9747).
- Fixed X (Java/Python) (BEAM-X).
- Basic Kafka read/write support for DataflowRunner (Python) (BEAM-8019).
- Sources and sinks for Google Healthcare APIs (Java)(BEAM-9468).
- Support for writing to Snowflake added (Java) (BEAM-9894).
--workerCacheMB
flag is supported in Dataflow streaming pipeline (BEAM-9964)--direct_num_workers=0
is supported for FnApi runner. It will set the number of threads/subprocesses to number of cores of the machine executing the pipeline (BEAM-9443).- Python SDK now has experimental support for SqlTransform (BEAM-8603).
- Add OnWindowExpiration method to Stateful DoFn (BEAM-1589).
- Added PTransforms for Google Cloud DLP (Data Loss Prevention) services integration (BEAM-9723):
- Inspection of data,
- Deidentification of data,
- Reidentification of data.
- Add a more complete I/O support matrix in the documentation site (BEAM-9916).
- Upgrade Sphinx to 3.0.3 for building PyDoc.
- Added a PTransform for image annotation using Google Cloud AI image processing service (BEAM-9646)
- Dataflow streaming timers are not strictly time ordered when set earlier mid-bundle (BEAM-8543).
- The Python SDK now requires
--job_endpoint
to be set when using--runner=PortableRunner
(BEAM-9860). Users seeking the old default behavior should set--runner=FlinkRunner
instead.
- Python: Deprecated module
apache_beam.io.gcp.datastore.v1
has been removed as the client it uses is out of date and does not support Python 3 (BEAM-9529). Please migrate your code to use apache_beam.io.gcp.datastore.v1new. See the updated datastore_wordcount for example usage. - Python SDK: Added integration tests and updated batch write functionality for Google Cloud Spanner transform (BEAM-8949).
-
Python SDK will now use Python 3 type annotations as pipeline type hints. (#10717)
If you suspect that this feature is causing your pipeline to fail, calling
apache_beam.typehints.disable_type_annotations()
before pipeline creation will disable is completely, and decorating specific functions (such asprocess()
) with@apache_beam.typehints.no_annotations
will disable it for that function.More details will be in Ensuring Python Type Safety and an upcoming blog post.
-
Java SDK: Introducing the concept of options in Beam Schema’s. These options add extra context to fields and schemas. This replaces the current Beam metadata that is present in a FieldType only, options are available in fields and row schemas. Schema options are fully typed and can contain complex rows. Remark: Schema aware is still experimental. (BEAM-9035)
-
Java SDK: The protobuf extension is fully schema aware and also includes protobuf option conversion to beam schema options. Remark: Schema aware is still experimental. (BEAM-9044)
-
Added ability to write to BigQuery via Avro file loads (Python) (BEAM-8841)
By default, file loads will be done using JSON, but it is possible to specify the temp_file_format parameter to perform file exports with AVRO. AVRO-based file loads work by exporting Python types into Avro types, so to switch to Avro-based loads, you will need to change your data types from Json-compatible types (string-type dates and timestamp, long numeric values as strings) into Python native types that are written to Avro (Python's date, datetime types, decimal, etc). For more information see https://cloud.google.com/bigquery/docs/loading-data-cloud-storage-avro#avro_conversions.
-
Added integration of Java SDK with Google Cloud AI VideoIntelligence service (BEAM-9147)
-
Added integration of Java SDK with Google Cloud AI natural language processing API (BEAM-9634)
-
docker-pull-licenses
tag was introduced. Licenses/notices of third party dependencies will be added to the docker images whendocker-pull-licenses
was set. The files are added to/opt/apache/beam/third_party_licenses/
. By default, no licenses/notices are added to the docker images. (BEAM-9136)
- Dataflow runner now requires the
--region
option to be set, unless a default value is set in the environment (BEAM-9199). See here for more details. - HBaseIO.ReadAll now requires a PCollection of HBaseIO.Read objects instead of HBaseQuery objects (BEAM-9279).
- ProcessContext.updateWatermark has been removed in favor of using a WatermarkEstimator (BEAM-9430).
- Coder inference for PCollection of Row objects has been disabled (BEAM-9569).
- Go SDK docker images are no longer released until further notice.
- Java SDK: Beam Schema FieldType.getMetadata is now deprecated and is replaced by the Beam
Schema Options, it will be removed in version
2.23.0
. (BEAM-9704) - The
--zone
option in the Dataflow runner is now deprecated. Please use--worker_zone
instead. (BEAM-9716)
- Java SDK: Adds support for Thrift encoded data via ThriftIO. (BEAM-8561)
- Java SDK: KafkaIO supports schema resolution using Confluent Schema Registry. (BEAM-7310)
- Java SDK: Add Google Cloud Healthcare IO connectors: HL7v2IO and FhirIO (BEAM-9468)
- Python SDK: Support for Google Cloud Spanner. This is an experimental module for reading and writing data from Google Cloud Spanner (BEAM-7246).
- Python SDK: Adds support for standard HDFS URLs (with server name). (#10223).
- New AnnotateVideo & AnnotateVideoWithContext PTransform's that integrates GCP Video Intelligence functionality. (Python) (BEAM-9146)
- New AnnotateImage & AnnotateImageWithContext PTransform's for element-wise & batch image annotation using Google Cloud Vision API. (Python) (BEAM-9247)
- Added a PTransform for inspection and deidentification of text using Google Cloud DLP. (Python) (BEAM-9258)
- New AnnotateText PTransform that integrates Google Cloud Natural Language functionality (Python) (BEAM-9248)
- ReadFromBigQuery now supports value providers for the query string (Python) (BEAM-9305)
- Direct runner for FnApi supports further parallelism (Python) (BEAM-9228)
- Support for @RequiresTimeSortedInput in Flink and Spark (Java) (BEAM-8550)
- ReadFromPubSub(topic=) in Python previously created a subscription under the same project as the topic. Now it will create the subscription under the project specified in pipeline_options. If the project is not specified in pipeline_options, then it will create the subscription under the same project as the topic. (BEAM-3453).
- SpannerAccessor in Java is now package-private to reduce API surface.
SpannerConfig.connectToSpanner
has been moved toSpannerAccessor.create
. (BEAM-9310). - ParquetIO hadoop dependency should be now provided by the users (BEAM-8616).
- Docker images will be deployed to apache/beam repositories from 2.20. They used to be deployed to apachebeam repository. (BEAM-9063)
- PCollections now have tags inferred from the result type (e.g. the keys of a dict or index of a tuple). Users may expect the old implementation which gave PCollection output ids a monotonically increasing id. To go back to the old implementation, use the
force_generated_pcollection_output_ids
experiment.
- Fixed numpy operators in ApproximateQuantiles (Python) (BEAM-9579).
- Fixed exception when running in IPython notebook (Python) (BEAM-X9277).
- Fixed Flink uberjar job termination bug. (BEAM-9225)
- Fixed SyntaxError in process worker startup (BEAM-9503)
- Key should be available in @OnTimer methods (Java) (BEAM-1819).
- For versions 2.19.0 and older release notes are available on Apache Beam Blog.