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Scientific topics: Machine learning

and Keywords: Data science

and Competency level: Not specified

13 materials found
  • sib-swiss/intermediate-machine-learning-training

    ELIXIR node event
    Machine learning Machine learning Python Data science
  • Caltech BI/BE/CSS 183: Introduction to Computational Biology and Bioinformatics

    ELIXIR node event
    RNA-Seq Single-cell sequencing Statistics and probability Machine learning RNA-seq Single-cell sequencing Statistics Machine learning Data science
  • EmilHvitfeldt/feature-engineering-az

    ELIXIR node event
    Machine learning Statistics and probability Machine learning Statistics Data science Python R
  • PAIR-code/understanding-umap

    ELIXIR node event
    Machine learning Statistics and probability Single-cell sequencing Data visualisation Single-cell sequencing Data visualization Data science Machine learning Statistics
  • EmilHvitfeldt/smltar

    ELIXIR node event
    Machine learning Machine learning Data science R
  • pablo14/data-science-live-book

    ELIXIR node event
    Machine learning Statistics and probability Data science Statistics Machine learning
  • shawnrhoads/gu-psyc-347

    ELIXIR node event
    Machine learning Data science Machine learning Python
  • carpentries-incubator/deep-learning-intro

    ELIXIR node event
    Machine learning Machine learning Data science
  • tidymodels/workshops

    ELIXIR node event
    Machine learning Machine learning R Data science
  • bradleyboehmke/data-science-learning-resources

    ELIXIR node event
    Machine learning General Data science Machine learning
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