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Etta Rapp 编辑于
* implemented an azure blob storage filesystem

removed ignored test from this PR

removed unused file

fixed a typo

small fixes

small fixes

small fixes

small fixes for readability

cleaning code

small fixes

ignore mockito config, move test file

implemented an azure blob storage filesystem

removed ignored test from this PR

removed unused file

fixed a typo

small fixes

small fixes

small fixes

small fixes for readability

cleaning code

small fixes

ignore mockito config, move test file

implemented an azure blob storage filesystem

removed ignored test from this PR

removed unused file

fixed a typo

small fixes

small fixes

small fixes

small fixes for readability

cleaning code

small fixes

ignore mockito config, move test file

organized dependencies

fixed a typo

* added options to azure filesystem

* added experimental annotation

* adding mocks to azure filesystem tests

* adding mocks to azure filesystem test

* resolving various reviewer comments

applied spotless to fix formatting

* adding mocks to filesystem test

* adding mocks to filesystem test

* working on options and mocks

* applied spotless

* Update sdks/java/io/azure/src/main/java/org/apache/beam/sdk/io/azure/blobstore/AzureBlobStoreFileSystem.java

Co-authored-by: default avatarPablo <pabloem@users.noreply.github.com>

* incorporating reviewer feeback

* fixed a checkstyle issue, annotated tests in progress with @Ignore

* adding javadoc

* fixing a bug in AzureReadableSeekableByteChannel read

* removing logger from azure bytechannel

* removed non-serializable option

* removed non-serializable configuration option

* removed integration tests - they will be in a followup PR

Co-authored-by: default avatarPablo <pabloem@users.noreply.github.com>
f7b49b66
历史

Apache Beam

Apache Beam is a unified model for defining both batch and streaming data-parallel processing pipelines, as well as a set of language-specific SDKs for constructing pipelines and Runners for executing them on distributed processing backends, including Apache Flink, Apache Spark, Google Cloud Dataflow and Hazelcast Jet.

Status

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Overview

Beam provides a general approach to expressing embarrassingly parallel data processing pipelines and supports three categories of users, each of which have relatively disparate backgrounds and needs.

  1. End Users: Writing pipelines with an existing SDK, running it on an existing runner. These users want to focus on writing their application logic and have everything else just work.
  2. SDK Writers: Developing a Beam SDK targeted at a specific user community (Java, Python, Scala, Go, R, graphical, etc). These users are language geeks, and would prefer to be shielded from all the details of various runners and their implementations.
  3. Runner Writers: Have an execution environment for distributed processing and would like to support programs written against the Beam Model. Would prefer to be shielded from details of multiple SDKs.

The Beam Model

The model behind Beam evolved from a number of internal Google data processing projects, including MapReduce, FlumeJava, and Millwheel. This model was originally known as the “Dataflow Model”.

To learn more about the Beam Model (though still under the original name of Dataflow), see the World Beyond Batch: Streaming 101 and Streaming 102 posts on O’Reilly’s Radar site, and the VLDB 2015 paper.

The key concepts in the Beam programming model are:

  • PCollection: represents a collection of data, which could be bounded or unbounded in size.
  • PTransform: represents a computation that transforms input PCollections into output PCollections.
  • Pipeline: manages a directed acyclic graph of PTransforms and PCollections that is ready for execution.
  • PipelineRunner: specifies where and how the pipeline should execute.

SDKs

Beam supports multiple language specific SDKs for writing pipelines against the Beam Model.

Currently, this repository contains SDKs for Java, Python and Go.

Have ideas for new SDKs or DSLs? See the JIRA.

Runners

Beam supports executing programs on multiple distributed processing backends through PipelineRunners. Currently, the following PipelineRunners are available:

  • The DirectRunner runs the pipeline on your local machine.
  • The DataflowRunner submits the pipeline to the Google Cloud Dataflow.
  • The FlinkRunner runs the pipeline on an Apache Flink cluster. The code has been donated from dataArtisans/flink-dataflow and is now part of Beam.
  • The SparkRunner runs the pipeline on an Apache Spark cluster. The code has been donated from cloudera/spark-dataflow and is now part of Beam.
  • The JetRunner runs the pipeline on a Hazelcast Jet cluster. The code has been donated from hazelcast/hazelcast-jet and is now part of Beam.
  • The Twister2Runner runs the pipeline on a Twister2 cluster. The code has been donated from DSC-SPIDAL/twister2 and is now part of Beam.

Have ideas for new Runners? See the JIRA.

Getting Started

To learn how to write Beam pipelines, read the Quickstart for [Java, Python, or Go] available on our website.

Contact Us

To get involved in Apache Beam:

Instructions for building and testing Beam itself are in the contribution guide.

More Information