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Target audience
- PhD students1
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- This course is aimed at advanced PhD students and post-doctoral researchers who are currently working with large-scale omics datasets with the aim of discerning biological function and processes. Ideal applicants should already have some experience (ideally 1-2 years) working with systems biology or related large-scale multi-omics data analyses. Applicants are expected to have a working knowledge of the Linux operating system and the ability to use the command line. Experience of using a programming language (i.e. Python) is highly desirable, and while the course will make use of simple coding or streamlined approaches such as Python notebooks, higher levels of competency will allow participants to focus on the scientific methodologies rather than the practical aspects of coding and how they can be applied in their own research. We recommend these free tutorials: Basic introduction to the Unix environment: www.ee.surrey.ac.uk/Teaching/Unix Introduction and exercises for Linux: https://training.linuxfoundation.org/free-linux-training Python turorial: https://www.w3schools.com/python/ R tutorial: https://www.datacamp.com/courses/free-introduction-to-r Regardless of your current knowledge we encourage successful participants to use these, and other materials, to prepare for attending the course and future work in this area.1
- This introductory course is aimed at biologists who are embarking on multiomics projects and computational biologists / bioinformaticians who wish to gain a better understanding of the biological challenges when working with integrated datasets. No programming or command line experience is required to attend this course. Please note this course does not cover statistical approaches for data integration. For advanced-level training in using large-scale multiomics data and machine learning to infer biological models you may wish to consider our course on Systems Biology: From large datasets to biological insight.1
- post-docs1
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Eligibility
- First come first served1
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Instructor
- Girolamo Giudice2
- Andrew Jarnuczak1
- Anne-Laure Boulesteix1
- Asier Gonzalez1
- Aurelien Dugourd1
- Birgit Meldal1
- Claire O’Donovan1
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- Lee Larcombe1
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- Nils Eling1
- Pablo Porras Millan1
- Rachel Lyne1
- Rea Laila Antoniou-Kourounioti1
- Ricard Argelaguet1
- Sandra Orchard1
- Tamas Korcsmáros1
- Yasset Perez Riverol1
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