Skip to content
/ hudi Public
forked from apache/hudi

Upserts, Deletes And Incremental Processing on Big Data.

License

Notifications You must be signed in to change notification settings

acryldata/hudi

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Apache Hudi

Apache Hudi is an open data lakehouse platform, built on a high-performance open table format to ingest, index, store, serve, transform and manage your data across multiple cloud data environments.

Hudi logo

https://hudi.apache.org/

Build Test License Maven Central GitHub commit activity Join on Slack Twitter Follow Follow Linkedin

Features

Hudi stores all data and metadata on cloud storage in open formats, providing the following features across different aspects.

Ingestion

  • Built-in ingestion tools for Apache Spark/Apache Flink users.
  • Supports half-dozen file formats, database change logs and streaming data systems.
  • Connect sink for Apache Kafka, to bring external data sources.

Storage

  • Optimized storage format, supporting row & columnar data.
  • Timeline metadata to track history of changes
  • Automatically manages file sizes, layout using statistics
  • Savepoints for data versioning and recovery
  • Schema tracking and evolution.

Indexing

  • Scalable indexing subsystem to speed up snapshot queries, maintained automatically by writes.
  • Tracks file listings, column-level and partition-level statistics to help plan queries efficiently.
  • Record-level indexing mechanisms built on row-oriented file formats and bloom filters.
  • Logical partitioning on tables, using expression indexes to decouple from physical partitioning on storage.

Writing

  • Atomically commit data with rollback/restore support.
  • Fast upsert/delete support leveraging record-level indexes.
  • Snapshot isolation between writer & queries.
  • Optimistic concurrency control to implement relational data model, with Read-Modify-Write style consistent writes.
  • Non-blocking concurrency control, to implement streaming data model, with support for out-of-order, late data handling.

Queries

Hudi supports different types of queries, on top of a single table.

  • Snapshot Query - Provides a view of the table, as of the latest committed state, accelerated with indexes as applicable.
  • Incremental Query - Provides latest value of records inserted/updated, since a given point in time of the table. Can be used to "diff" table states between two points in time.
  • Change-Data-Capture Query - Provides a change stream with records inserted or updated or deleted since a point in time or between two points in time. Provides both before and after images for each change record.
  • Time-Travel Query - Provides a view of the table, as of a given point in time.
  • Read Optimized Query - Provides excellent snapshot query performance via purely columnar storage (e.g. Parquet), when used with a compaction policy to provide a transaction boundary.

Table Management

  • Automatic, hands-free table services runtime integrated into Spark/Flink writers or operated independently.
  • Configurable scheduling strategies with built-in failure handling, for all table services.
  • Cleaning older versions and time-to-live management to expire older data, reclaim storage space.
  • Clustering and space-filling curve algorithms to optimize data layout with pluggable scheduling strategies.
  • Asynchronous compaction of row oriented data into columnar formats, for efficient streaming writers.
  • Consistent index building in face of ongoing queries or writers.
  • Catalog sync with Apache Hive Metastore, AWS Glue, Google BigQuery, Apache XTable and more.

Learn more about Hudi at https://hudi.apache.org

Building Apache Hudi from source

Prerequisites for building Apache Hudi:

  • Unix-like system (like Linux, Mac OS X)
  • Java 8 (Java 9 or 11 may work)
  • Git
  • Maven (>=3.3.1)
# Checkout code and build
git clone https://github.com/apache/hudi.git && cd hudi
mvn clean package -DskipTests

# Start command
spark-3.5.0-bin-hadoop3/bin/spark-shell \
  --jars `ls packaging/hudi-spark-bundle/target/hudi-spark3.5-bundle_2.12-*.*.*-SNAPSHOT.jar` \
  --conf 'spark.serializer=org.apache.spark.serializer.KryoSerializer' \
  --conf 'spark.sql.extensions=org.apache.spark.sql.hudi.HoodieSparkSessionExtension' \
  --conf 'spark.sql.catalog.spark_catalog=org.apache.spark.sql.hudi.catalog.HoodieCatalog' \
  --conf 'spark.kryo.registrator=org.apache.spark.HoodieSparkKryoRegistrar'

To build for integration tests that include hudi-integ-test-bundle, use -Dintegration-tests.

To build the Javadoc for all Java and Scala classes:

# Javadoc generated under target/site/apidocs
mvn clean javadoc:aggregate -Pjavadocs

Build with different Spark versions

The default Spark 3.x version, corresponding to spark3 profile is 3.5.3. The default Scala version is 2.12. Scala 2.13 is supported for Spark 3.5 and above.

Refer to the table below for building with different Spark and Scala versions.

Maven build options Expected Spark bundle jar name Notes
(empty) hudi-spark3.5-bundle_2.12 For Spark 3.5.x and Scala 2.12 (default options)
-Dspark3.3 hudi-spark3.3-bundle_2.12 For Spark 3.3.2+ and Scala 2.12
-Dspark3.4 hudi-spark3.4-bundle_2.12 For Spark 3.4.x and Scala 2.12
-Dspark3.5 -Dscala-2.12 hudi-spark3.5-bundle_2.12 For Spark 3.5.x and Scala 2.12 (same as default)
-Dspark3.5 -Dscala-2.13 hudi-spark3.5-bundle_2.13 For Spark 3.5.x and Scala 2.13
-Dspark3 hudi-spark3-bundle_2.12 (legacy bundle name) For Spark 3.5.x and Scala 2.12

Please note that only Spark-related bundles, i.e., hudi-spark-bundle, hudi-utilities-bundle, hudi-utilities-slim-bundle, can be built using scala-2.13 profile. Hudi Flink bundle cannot be built using scala-2.13 profile. To build these bundles on Scala 2.13, use the following command:

# Build against Spark 3.5.x and Scala 2.13
mvn clean package -DskipTests -Dspark3.5 -Dscala-2.13 -pl packaging/hudi-spark-bundle,packaging/hudi-utilities-bundle,packaging/hudi-utilities-slim-bundle -am

For example,

# Build against Spark 3.5.x
mvn clean package -DskipTests

# Build against Spark 3.4.x
mvn clean package -DskipTests -Dspark3.4

What about "spark-avro" module?

Starting from versions 0.11, Hudi no longer requires spark-avro to be specified using --packages

Build with different Flink versions

The default Flink version supported is 1.20. The default Flink 1.20.x version, corresponding to flink1.20 profile is 1.20.0. Flink is Scala-free since 1.15.x, there is no need to specify the Scala version for Flink 1.15.x and above versions. Refer to the table below for building with different Flink and Scala versions.

Maven build options Expected Flink bundle jar name Notes
(empty) hudi-flink1.20-bundle For Flink 1.20 (default options)
-Dflink1.20 hudi-flink1.20-bundle For Flink 1.20 (same as default)
-Dflink1.19 hudi-flink1.19-bundle For Flink 1.19
-Dflink1.18 hudi-flink1.18-bundle For Flink 1.18
-Dflink1.17 hudi-flink1.17-bundle For Flink 1.17
-Dflink1.16 hudi-flink1.16-bundle For Flink 1.16
-Dflink1.15 hudi-flink1.15-bundle For Flink 1.15
-Dflink1.14 hudi-flink1.14-bundle For Flink 1.14

For example,

# Build against Flink 1.15.x
mvn clean package -DskipTests -Dflink1.15

Running Tests

Unit tests can be run with maven profile unit-tests.

mvn -Punit-tests test

Functional tests, which are tagged with @Tag("functional"), can be run with maven profile functional-tests.

mvn -Pfunctional-tests test

Integration tests can be run with maven profile integration-tests.

mvn -Pintegration-tests verify

To run tests with spark event logging enabled, define the Spark event log directory. This allows visualizing test DAG and stages using Spark History Server UI.

mvn -Punit-tests test -DSPARK_EVLOG_DIR=/path/for/spark/event/log

Quickstart

Please visit https://hudi.apache.org/docs/quick-start-guide.html to quickly explore Hudi's capabilities using spark-shell.

Contributing

Please check out our contribution guide to learn more about how to contribute. For code contributions, please refer to the developer setup.

About

Upserts, Deletes And Incremental Processing on Big Data.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Java 80.1%
  • Scala 18.4%
  • Shell 0.7%
  • ANTLR 0.6%
  • Dockerfile 0.1%
  • Python 0.1%