datumbox-framework - Datumbox is an open-source Machine Learning framework written in Java which allows the rapid development of Machine Learning and Statistical applications

  •        7

Datumbox is an open-source Machine Learning Framework written in Java which allows the rapid development of Machine Learning and Statistical applications.

http://www.datumbox.com/
https://github.com/datumbox/datumbox-framework
https://github.com/datumbox/datumbox-framework/

Dependencies:

org.apache.commons:commons-math3:3.6.1
org.apache.commons:commons-csv:1.6
org.slf4j:slf4j-api:1.7.25
com.datumbox:libsvm:3.23
org.mapdb:mapdb:1.0.9
junit:junit:4.12
ch.qos.logback:logback-classic:1.2.3

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