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Mahout's goal is to build scalable machine learning libraries. With scalable we mean: Scalable to reasonably large data sets. Our core algorithms for clustering, classification and batch based collaborative filtering are implemented on top of Apache Hadoop using the map/reduce paradigm. However we do not restrict contributions to Hadoop based implementations: Contributions that run on a single node or on a non-Hadoop cluster are welcome as well. The core libraries are highly optimized to ...
Last Release on Jul 16, 2020
A collection of well-known AI and machine learning algorithms
Last Release on Mar 18, 2014
An implementation of Random Ferns machine learning algorithm for Apache Spark.
Last Release on Sep 30, 2015