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Register training material

Scientific topics: Single-cell genomics

and Content provider: Glittr.org

and Keywords: Python

5 materials found
  • sib-swiss/single-cell-python-training

    ELIXIR node event
    Sequencing Transcriptomics Single-cell sequencing RNA-Seq Single-cell sequencing RNA-seq Transcriptomics Python Next generation sequencing
  • hds-sandbox/scRNASeq_course

    ELIXIR node event
    Transcriptomics Single-cell sequencing RNA-Seq Single-cell sequencing RNA-seq Transcriptomics Python R
  • carpentries-incubator/scrna-seq-analysis

    ELIXIR node event
    Transcriptomics Single-cell sequencing RNA-Seq Single-cell sequencing Transcriptomics RNA-seq Python
  • theislab/single-cell-best-practices

    ELIXIR node event
    Transcriptomics Single-cell sequencing Single-cell sequencing Transcriptomics Python
  • theislab/single-cell-tutorial

    ELIXIR node event
    Transcriptomics Single-cell sequencing RNA-Seq Single-cell sequencing Python RNA-seq Transcriptomics
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