Webvar
sparkMLlib - logo

sparkMLlib

This product has charges associated with it for seller support. MLlib is Spark's machine learning library, focusing on learning algorithms and utilities, including classification, regression, clustering, collaborative filtering, dimensionality reduction, as well as underlying optimization primitives.

Available in

AWS Marketplace

Available in

AWS Marketplace

Purchase this listing from Webvar in AWS Marketplace using your AWS account. In AWS Marketplace, you can quickly launch pre-configured software with just a few clicks. AWS handles billing and payments, and charges on your AWS bill.

About

SparkMLlib3.5.0onUbuntu20.04 with Free maintenance support by ATH

This is a repackaged open source software product wherein additional charges apply for support. An AWS product Spark Mllib Hadoop Scala powered by ATH Infosystems. MLlib is Spark's machine learning library, focusing on learning algorithms and utilities, including classification, regression, clustering, collaborative filtering, dimensional reduction, as well as underlying optimization primitives. We are launching a product which will configure and publish Spark MLlib, an open source software solution which is embedded per-configured tool with Ubuntu OS and ready-to-launch AMI on Amazon EC2 that contains Spark MBlib, Hadoop 2.7, Scala, Linux, PHP (LAMP). MLlib fits into Spark's APIs and interoperates with Scala. You can use any Hadoop data source (e.g. HDFS, HBase, or local files), making it easy to plug into Hadoop workflows. Why MLlib? It is built on Apache Spark, which is a fast and general engine for large scale processing. Supposedly, running times or up to 100x faster than Hadoop Map Reduce, or 10x faster on disk. Supports writing applications in Java, Scala, or Python. MLlib contains many algorithms and utilities Classification: logistic regression, naive Bayes Regression: generalized linear regression, survival regression Decision trees, random forests, and gradient-boosted trees Recommendation: alternating least squares (ALS) Clustering: K-means, Gaussian mixtures (GMMs) Topic modeling: latent Dirichlet allocation (LDA) Frequent item sets, association rules, and sequential pattern mining MLlib will still support the RDD-based API in spark.mllib with bug fixes. MLlib will not add new features to the RDD-based API. In the Spark 2.x releases, MLlib will add features to the Data Frames-based API to reach feature parity with the RDD-based API. After reaching feature parity (roughly estimated for Spark 2.2), the RDD-based API will be deprecated. The RDD-based API is expected to be removed in Spark 3.0. Data Frames provide a more user-friendly API than RDDs. The many benefits of Data Frames include Spark Data sources, SQL/DataFrame queries, Tungsten and Catalyst optimizations, and uniform APIs across languages. The Data Frame-based API for MLlib provides a uniform API across ML algorithms and across multiple languages. Data Frames facilitate practical ML Pipelines, particularly feature transformations. See the Pipelines guide for details. Data types Classification and regression Collaborative filtering Clustering Dimensional reduction Feature extraction and transformation.

Related Products

How it works?

Search

Search 25000+ products and services vetted by AWS.

Request private offer

Our team will send you an offer link to view.

Purchase

Accept the offer in your AWS account, and start using the software.

Manage

All your transactions will be consolidated into one bill in AWS.

Create Your Marketplace with Webvar!

Launch your marketplace effortlessly with our solutions. Optimize sales processes and expand your reach with our platform.