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    • Any students, postdocs or RAs who have an interest in bioinformatics and who intend to carry out statistical analysis of their experimental data using R. This two day course is planned to be a very gentle introduction to the very basic concepts of R.1
    • Any students, postdocs or RAs who have an interest in bioinformatics and who intend to conduct their own analyses on a Linux platform. Those intending to register for the upcoming Introduction to HPC course are very strongly encouraged to attend this short (two morning) course and it should be seen as a prerequisite for later courses to be offered on ChIP-Seq analysis and command line/Galaxy implementations of NGS workflows.1
    • Any students, postdocs or RAs who have an interest in programming and who intend to carry out computational analysis of their experimental data. Perl is often used for preparing input files for more specialized software such as R, and also to post-process the output from R and various other bioinformatics tools. It is a glue language allowing you to build pipelines of analyses of arbitrary complexity. This two day course is planned to be a gentle introduction to the basic concepts of Perl and will also introduce you to the BioPerl library of modules.1
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7 materials found
  • Introduction to Linux: The operating system for bioinformatics

    ELIXIR node event
    • Beginner
    John Innes Centre JIC
  • Python for Biologists: Programming for Scientific Computing

    ELIXIR node event
    • Beginner
    Software engineering Python for Biologists John Innes Centre JIC
  • Introduction to R: A software environment for statistical computing

    ELIXIR node event
    • Beginner
    Statistics and probability Software engineering John Innes Centre JIC
  • Introduction to Perl: Programming for bioinformatics

    ELIXIR node event
    • Beginner
    Software engineering perl John Innes Centre JIC
  • Computational Bioimaging: From images to data

    ELIXIR node event
    • Beginner
    Imaging Bioimaging John Innes Centre JIC
  • Introduction to RNA-Seq Using Galaxy: Studying the transcriptome

    ELIXIR node event
    •• Intermediate
    RNA RNA-Seq John Innes Centre JIC
  • Galaxy for NGS analysis: A web-based platform for data intensive biological research

    ELIXIR node event
    Bioinformatics Nucleic acid sequence analysis High-throughput sequencing Workflows John Innes Centre JIC
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