Downloads - Apache Spark Spark docker images are available from Dockerhub under the accounts of both The Apache Software Foundation and Official Images Note that, these images contain non-ASF software and may be subject to different license terms
Overview - Spark 4. 1. 1 Documentation If you’d like to build Spark from source, visit Building Spark Spark runs on both Windows and UNIX-like systems (e g Linux, Mac OS), and it should run on any platform that runs a supported version of Java
Quick Start - Spark 4. 1. 1 Documentation To follow along with this guide, first, download a packaged release of Spark from the Spark website Since we won’t be using HDFS, you can download a package for any version of Hadoop
Documentation | Apache Spark The documentation linked to above covers getting started with Spark, as well the built-in components MLlib, Spark Streaming, and GraphX In addition, this page lists other resources for learning Spark
Examples - Apache Spark Spark allows you to perform DataFrame operations with programmatic APIs, write SQL, perform streaming analyses, and do machine learning Spark saves you from learning multiple frameworks and patching together various libraries to perform an analysis
PySpark Overview — PySpark 4. 1. 1 documentation - Apache Spark PySpark combines Python’s learnability and ease of use with the power of Apache Spark to enable processing and analysis of data at any size for everyone familiar with Python PySpark supports all of Spark’s features such as Spark SQL, DataFrames, Structured Streaming, Machine Learning (MLlib), Pipelines and Spark Core
Spark SQL DataFrames | Apache Spark Spark SQL includes a cost-based optimizer, columnar storage and code generation to make queries fast At the same time, it scales to thousands of nodes and multi hour queries using the Spark engine, which provides full mid-query fault tolerance
Spark SQL and DataFrames - Spark 4. 1. 1 Documentation Spark SQL is a Spark module for structured data processing Unlike the basic Spark RDD API, the interfaces provided by Spark SQL provide Spark with more information about the structure of both the data and the computation being performed
Spark Declarative Pipelines Programming Guide Spark Declarative Pipelines (SDP) is a declarative framework for building reliable, maintainable, and testable data pipelines on Spark SDP simplifies ETL development by allowing you to focus on the transformations you want to apply to your data, rather than the mechanics of pipeline execution