2020.2.13

主要概念

Term

Meaning

Application

User program built on Spark. Consists of a driver program and executors on
the cluster.

Application jar

A jar containing the user's Spark application. In some cases users will want to create an "uber jar" containing their application along with its dependencies. The user's jar should never include Hadoop or Spark libraries, however, these will
be added at runtime.

Driver program

The process running the main() function of the application and creating the SparkContext

Cluster manager

An external service for acquiring resources on the cluster (e.g. standalone manager, Mesos, YARN)

Deploy mode

Distinguishes where the driver process runs. In "cluster" mode, the framework launches the driver inside of the cluster. In "client" mode, the submitter launches the driver outside of the cluster.

Worker node

Any node that can run application code in the cluster

Executor

A process launched for an application on a worker node, that runs tasks and keeps data in memory or disk storage across them. Each application has its own executors.

Task

A unit of work that will be sent to one executor

Job

A parallel computation consisting of multiple tasks that gets spawned in response to a Spark action (e.g. savecollect);
you'll see this term used in the driver's logs.

Stage

Each job gets divided into smaller sets of tasks called stages that depend on each other (similar to the map
and reduce stages in MapReduce); you'll see this term used in the driver's logs.

 

源文档 <http://spark.apache.org/docs/latest/cluster-overview.html>

posted @ 2020-02-13 22:32  故事-已开始。  阅读(85)  评论(0编辑  收藏  举报