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  • Identification of Eigen-genes, consensus modules and Network Motifs in co-expression (or other biological) networks. (Webinar)

    10 August 2020

    Cambridge, United Kingdom

    Elixir node event
    Identification of Eigen-genes, consensus modules and Network Motifs in co-expression (or other biological) networks. (Webinar) https://tess.elixir-europe.org/events/identification-of-eigen-genes-consensus-modules-and-network-motifs-in-co-expression-or-other-biological-networks-webinar One of the most important tasks of systems biology is to create explanatory and predictive models of complex biological systems. Availability of gene expression data in different conditions has paved the way for reconstructing direct or indirect regulatory connections between various genes and gene products. Most often, we are not interested in single interactions between gene products; instead, we try to reconstruct networks that provide insights into the investigated biological processes or the entire system as a whole. This webinar will expand upon the concept of Gene Co-expression Networks to elucidate Weighted Gene Co-expression Network Analysis (WGCNA), and introduce the importance of visualising clustered gene expression profiles as single ‘Eigengenes’. It will describe the complete protocol for WGCNA analysis starting from normalised Gene Expression Datasets (Microarrays or RNA-Seq). This will be followed by a discussion on methods of extraction and analysis of consensus modules and Network motifs from Gene Co-Expression Networks and Transcriptional Regulatory Networks. The webinar will be presented in the form of a lecture and tutorial with screenshots that enable listeners to emulate the protocols in R. Note that this is a webinar and not a coding exercise. Links to further reading and practice will be shared. Please note that if you are not eligible for a University of Cambridge [Raven](http://www.ucs.cam.ac.uk/docs/faq/raven/n5) account you will need to book or register your interest by linking [here](http://bioinfotraining.bio.cam.ac.uk/booking-form/?event-id=3516410&amp;course-title=Identification%20of%20Eigen-genes%20in%20co-expression%20networks%20webinar).'' 2020-08-10 10:00:00 UTC 2020-08-10 12:00:00 UTC University of Cambridge Craik-Marshall Building, Cambridge, United Kingdom Craik-Marshall Building Cambridge United Kingdom CB2 3AR University of Cambridge Bioinformatics Training [] This webinar is suitable for students and early career researchers with interest in GenomicsGraduate studentsPostdocs and Staff members from the University of CambridgeInstitutions and other external Institutions or individuals.<span style="color:#FF0000">There is no fee charged for this event''<span style="color:#FF0000">. workshops_and_courses [] HDRUK
  • Using the Ensembl Genome Browser (ONLINE TRAINING)

    1 September 2020

    Cambridge, United Kingdom

    Elixir node event
    Using the Ensembl Genome Browser (ONLINE TRAINING) https://tess.elixir-europe.org/events/using-the-ensembl-genome-browser-467135ab-7028-4d4f-8a24-bbffa5548b3b PLEASE NOTE The Bioinformatics Team are presently teaching as many courses live online, with tutors available to help you work through the course material on a personal copy of the course environment. We aim to simulate the classroom experience as closely as possible, with opportunities for one-to-one discussion with tutors and a focus on interactivity throughout. The [Ensembl Project](http://www.ensembl.org) provides a comprehensive and integrated source of annotation of, mainly vertebrate, genome sequences. This workshop offers a comprehensive practical introduction to the use of the Ensembl genome browser as well as essential background information. This course will focus on the vertebrate genomes in Ensembl, however much of what will be covered is also applicable to the non-vertebrates (plants, bacteria, fungi, metazoa and protists) in Ensembl Genomes. Please note that if you are not eligible for a University of Cambridge [Raven](http://www.ucs.cam.ac.uk/docs/faq/raven/n5) account you will need to book or register your interest by linking [here](http://bioinfotraining.bio.cam.ac.uk/booking-form/?event-id=3351117&amp;course-title=Using%20the%20Ensembl%20Genome%20Browser).'' 2020-09-01 08:30:00 UTC 2020-09-01 16:30:00 UTC University of Cambridge Craik-Marshall Building, Cambridge, United Kingdom Craik-Marshall Building Cambridge United Kingdom CB2 3AR Gene transcripts Gene structure Bioinformatics University of Cambridge Bioinformatics Training [] Graduate studentsPostdocs and Staff members from the University of CambridgeInstitutions and other external Institutions or individuals workshops_and_courses [] HDRUK
  • Ensembl REST API workshop (ONLINE TRAINING)

    2 September 2020

    Cambridge, United Kingdom

    Elixir node event
    Ensembl REST API workshop (ONLINE TRAINING) https://tess.elixir-europe.org/events/ensembl-rest-api-workshop-c3f269e2-c30f-4a2d-b719-a822af0359c5 PLEASE NOTE The Bioinformatics Team are presently teaching as many courses live online, with tutors available to help you work through the course material on a personal copy of the course environment. We aim to simulate the classroom experience as closely as possible, with opportunities for one-to-one discussion with tutors and a focus on interactivity throughout. The [Ensembl project](http://www.ensembl.org/) provides a comprehensive and integrated source of annotation of mainly vertebrate genome sequences. This workshop is aimed at researchers and developers interested in exploring Ensembl beyond the website. The workshop covers how to use the Ensembl [REST APIs](http://rest.ensembl.org/), including understanding the major endpoints and how to write scripts to call them. Please note that if you are not eligible for a University of Cambridge [Raven](http://www.ucs.cam.ac.uk/docs/faq/raven/n5) account you will need to book or register your interest by linking [here](http://bioinfotraining.bio.cam.ac.uk/booking-form/?event-id=3351102&amp;course-title=Ensembl%20REST%20API%20Workshop).'' 2020-09-02 08:30:00 UTC 2020-09-02 14:30:00 UTC University of Cambridge Craik-Marshall Building, Cambridge, United Kingdom Craik-Marshall Building Cambridge United Kingdom CB2 3AR Bioinformatics University of Cambridge Bioinformatics Training [] Bioinformaticians and wet-lab biologists who can programGraduate studentsPostdocs and Staff members from the University of CambridgeInstitutions and other external Institutions or individuals workshops_and_courses [] HDRUK
  • Statistics bootcamp using R (Online)

    4 - 11 September 2020

    Cambridge, United Kingdom

    Elixir node event
    Statistics bootcamp using R (Online) https://tess.elixir-europe.org/events/statistics-bootcamp-using-r-6cc4b3fc-ff60-45e4-bd2e-11e1988c4118 PLEASE NOTE The Bioinformatics Team are presently teaching as many courses live online, with tutors available to help you work through the course material on a personal copy of the course environment. We aim to simulate the classroom experience as closely as possible, with opportunities for one-to-one discussion with tutors and a focus on interactivity throughout. This bootcamp provides an in depth look at statistical analyses using R. Day 1 aims to introduce R as a tool for statistics and graphics, with the main aim being to become comfortable with the R environment. As well as introducing core R language concepts, this course also provides the basics of using the Tidyverse for data manipulation, and ggplot for plotting. It will focus on entering and manipulating data in R and producing simple graphs. PLEASE NOTE: If you are already comfortable working in R and using the tidyverse package, you might find that you can skip Friday’s training session. Please review the pre-requisites section below for further information. Day 2-6 (half days) will focus on the statistical possibilities of R, covering from experimental design to analysis of quantitative and qualitative data. Ample time will be given to participants to practise different type of analysis and interact with the trainers to discuss their statistical problems. This event is organized in collaboration with the [Babraham Institutes's Bioinformatics Group](https://www.bioinformatics.babraham.ac.uk/index.html) and it is supported by the BBSRC Strategic Training Awards for Research Skills (STARS) grant (BB/P022766/1). Please note that if you are not eligible for a University of Cambridge [Raven](http://www.ucs.cam.ac.uk/docs/faq/raven/n5) account you will need to book or register your interest by linking [here](http://bioinfotraining.bio.cam.ac.uk/booking-form/?event-id=3544694&amp;course-title=Statistics%20bootcamp%20using%20R).'' 2020-09-04 08:30:00 UTC 2020-09-11 13:00:00 UTC University of Cambridge Craik-Marshall Building, Cambridge, United Kingdom Craik-Marshall Building Cambridge United Kingdom CB2 3AR Bioinformatics University of Cambridge Bioinformatics Training [] Graduate studentsPostdocs and Staff members from the University of CambridgeInstitutions and other external Institutions or individuals workshops_and_courses [] HDRUK
  • Data Science School: Machine learning applications for life sciences (Online)

    17 - 22 September 2020

    Cambridge, United Kingdom

    Elixir node event
    Data Science School: Machine learning applications for life sciences (Online) https://tess.elixir-europe.org/events/data-science-school-machine-learning-applications-for-life-sciences PLEASE NOTE The Bioinformatics Team are presently teaching as many courses live online, with tutors available to help you work through the course material on a personal copy of the course environment. We aim to simulate the classroom experience as closely as possible, with opportunities for one-to-one discussion with tutors and a focus on interactivity throughout. We plan on organising opportunities for networking during this 4-day workshop and encourage attendee participation as much as possible. This School aims to familiarise biomedical students and researchers with principles of Data Science. Focusing on utilising machine learning algorithms to handle biomedical data, it will cover: effects of experimental design, data readiness, pipeline implementations, machine learning in Python, and related statistics, as well as Gaussian Process models. Providing practical experience in the implementation of machine learning methods relevant to biomedical applications, including Gaussian processes, we will illustrate best practices that should be adopted in order to enable reproducibility in any data science application. This event is sponsored by [Cambridge Centre for Data-Driven Discovery (C2D3)](https://www.bigdata.cam.ac.uk/). Please note that if you are not eligible for a University of Cambridge [Raven](http://www.ucs.cam.ac.uk/docs/faq/raven/n5) account you will need to book or register your interest by linking [here](http://bioinfotraining.bio.cam.ac.uk/booking-form/?event-id=3357195&amp;course-title=Data%20Science%20School).'' 2020-09-17 09:00:00 UTC 2020-09-22 14:00:00 UTC University of Cambridge Craik-Marshall Building, Cambridge, United Kingdom Craik-Marshall Building Cambridge United Kingdom CB2 3AR Machine learning Bioinformatics University of Cambridge Bioinformatics Training [] Students and researchers from life-sciences or biomedical backgroundswho haveor will shortly havethe need to apply the techniques presented during the course to biomedical data.The course is open to Graduate studentsPostdocs and Staff members from the University of CambridgeInstitutions and other external Institutions or individuals<span style="color:#FF0000">Please note that all participants attending this course will be charged a registration fee. <span style="color:#0000FF"> Non-members of the University of Cambridge to pay £400. </span style> <span style="color:#0000FF">All Members of the University of Cambridge to pay £200. </span style> <span style="color:#FF0000">A booking will only be approved and confirmed once the fee has been paid in full.</span style> workshops_and_courses [] HDRUK

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