MLBase.jl

MLBase.jl

MLBase.jl From United States

MLBase.jl offers a versatile collection of functions designed to enhance the development of machine learning algorithms. Rather than implementing specific algorithms, it equips users with essential tools and resources, enabling efficient program support. This package relies on StatsBase, seamlessly integrating its functionalities to facilitate robust machine learning workflows.

1 vote

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Company Information

  • Company: MLBase.jl
  • Country: United States