Apache Spark is an open source distributed data processing library for large-scale in-memory data analytics computing.
Apache Spark is an open source cluster computing system that aims to make data analytics fast — both fast to run and fast to write.
To run programs faster, Spark offers a general execution model based on the
RDD data abstraction that can help optimizing arbitrary long operator graphs, and supports in-memory computing, which lets it query data faster than disk-based engines like hadoop.
Spark is not tied to the two-stage mapreduce paradigm, and promises performance up to 100 times faster than Hadoop MapReduce.
Spark provides primitives for in-memory cluster computing that allows user programs to load data into a cluster's memory and query it repeatedly, making it well suited for interactive as well as iterative algorithms in machine learning or graph computing.
When asking Spark related question please don't forget to provide a reproducible example, when applicable. You can refer to How to make good reproducible Apache Spark Dataframe examples for general guidelines and suggestions.
Latest stable version:
- Apache Spark 2.3.0 - Feb 28, 2018
Recommended reference sources:
Spark Programming Guide - Shows each of these features in each of Spark’s supported languages (Python, Scala, Java)
Spark-Summit Past Events Online materials of spark training courses and keynotes (please refer to PAST EVENTS tab in the top)
Awesome Spark - Awesome collection of resources by Github Apache Spark Community
Mastering Apache Spark 2 - Notes on the internals of Apache Spark, Spark SQL and Spark MLlib
Learning Spark - Lightning-Fast Big Data Analysis
AMP Camp 6 (Berkeley, CA, November 19-20, 2015)
AMP Camp 5 (Berkeley, CA, November 20-21, 2014)
AMP Camp 4 (Strata Santa Clara, Feb 2014) — focus on BlinkDB, MLlib, GraphX, Tachyon
AMP Camp 3 (Berkeley, CA, Aug 2013)
AMP Camp 2 (Strata Santa Clara, Feb 2013)
AMP Camp 1 (Berkeley, CA, Aug 2012)