Training materials
Scientific topics: Bioinformatics or Data management
and Keywords: Bioinformatics or Data or Human genetic variation or training
-
Slides
Navigating Licensing in Bioinformatics: Software and Data Perspectives
-
Bioinformatics, Computational Biology, Computer Science, Programming, Coding, Education, Data Science, Transcriptomics, Machine Learning
R for Data Science
•• intermediateBioinformatics Computational biology Machine learning Transcriptomics Computational Biology Coding Programming Data Science Data Analysis Computer Science Machine Learning -
Bioinformatics, Computational Biology, Computer Science, Programming, Coding, Education
R for Beginners
• beginnerBioinformatics Computational biology Computer science Coding Programming -
Video
ELIXIR-CONVERGE - The why of research data management
• beginnerData management FAIR data Data submission, annotation, and curation Data security Data integration and warehousing Data Life Cycle Data Steward Data Data access management Data management plan Data managment plan Data handling ELIXIR-CONVERGE -
E-Learning, Training materials
Biology meets Programming - Introduction to Bioinformatics using Python
• beginnerBioinformatics Biology Python Python biologists Programming Data Analysis Sequence Analysis -
course materials, Online material, Training materials
Cloud-SPAN Genomics
• beginnerBioinformatics Software engineering Genomics DNA polymorphism Workflows Data architecture, analysis and design Shell Command line Cloud computing HPC Data analysis High performance computing -
e-learning
Human genetic variation: An introduction
-
Series of videos
Query Expansion services - tutorial
•• intermediateData management Data Query data Query expansion -
e-learning
Human genetic variation: Exploring publicly available data
-
Training materials
BioData.pt | ELIXIR PT Training Data Stewards for Life Sciences - Intro Course
• beginnerFAIR data Open science Data management Data management plan data-science data-analysis Data Integration training open science data FAIRness FAIR FAIR principles life sciences data life cycle
- 1
- 2