Date: 11 - 13 March 2025

Timezone: London

Duration: 3 Days

Language of instruction: English

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This intensive 3-day course introduces the statistical software and programming language R with specific focus on its applications in life sciences and clinical research.

Each day of the course focuses on a specific topic, as follows:

Day 1. R fundamentals: An introduction to the language and its interface. Get familiar with R, R studio, operators, variables, functions, directories and the script editor.

Day 2. Data visualisation: Providing you with the tools to make publication quality plots using R.

Day 3. Statistical analysis in R: We will cover statistical methods ranging from simple univariate statistics to dealing with large volumes of variables using Principal Component Analysis.

The course is designed to be undertaken at the student’s own pace with 1 on 1 targeted support from our team of experts. Our team comprises computational biologists, data scientists, and bioinformaticians with a strong background in both wet and dry lab projects. Empowering you on a self-learning path, you will gain essential skills to apply R to your research projects and to generate publication-ready outputs.

We will also be available to assist with your learning up to two months after the final day of the course. Moreover, upon completion of the course, all delegates will be invited to join a peer-peer support community “RClub” to enhance their research/analytical work.

This course runs twice a year – in March and in October. The next cohort will be held online on 11th-13 March.

Sign up using the link provided before the 25th February. Places are limited and registration may close earlier if places are full.

The course has a cost of £300 for all academic delegates; £500 for all delegates from public institutions (not academic). If you are a delegate from the University of Liverpool you can access student bursaries, that you can apply to using this link. Note the delegate bursaries applications close on the 11th February. You must submit both a registration form and a bursary application to be considered.

For more advanced data analysis (e.g. omics) and data science projects, we strongly recommend you also sign up for our R for Data Science course.

Applications close on the 25th February, and spaces are limited.

To sign up, please use this form.

Contact: Computational Biology Facility: [email protected] Dr Euan McDonnell: [email protected] Dr Jordan Tzvetkov: [email protected] John Heap: [email protected]

Keywords: RStudio, Programming, R Programming, Coding, R, Statistics

City: Liverpool

Learning objectives:

  • Day 1. R fundamentals: An introduction to the language and its interface. Get familiar with R, R studio, operators, variables, functions, directories and the script editor.
  • Day 2. Data visualisation: Providing you with the tools to make publication quality plots using R.
  • Day 3. Statistical analysis in R: We will cover statistical methods ranging from simple univariate statistics to dealing with large volumes of variables using Principal Component Analysis.

Organizer: Computational Biology Facility, University of Liverpool

Host institutions: University of Liverpool

Target audience: PI, Student, Academic, Industry, Government, Bioinformatician, Statistician, Post Docs, Researcher

Capacity: 60

Tech requirements:

Access to a computer capable of running R, RStudio and Microsoft Teams.

Cost basis: Cost incurred by all


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