YoVDO

Linux for Bioinformatics - BioCode

Offered By: YouTube

Tags

Bioinformatics Courses Data Visualization Courses Linux Courses Data Preprocessing Courses

Course Description

Overview

Explore essential Linux commands for bioinformatics in this 90-minute tutorial. Learn to preprocess genomic datasets, retrieve bioinformatics files, find sequence differences, locate user-created files, search for uncharacterized proteins in the human genome, extract compressed content, copy files, visualize delimited datasets, inspect text data, navigate directories, and create bioinformatics pipelines. Gain practical skills for handling and analyzing biological data using powerful command-line tools, enhancing your ability to work efficiently with large-scale genomic information.

Syllabus

Introduction To Linux For Bioinformatics | BioCode Ltd.
Bioinformatics: Cut - Preprocess And Extract Column Data From Genomics Dataset | BioCode.
Bioinformatics: Curl - Retrieval Of Bioinformatics Files | BioCode.
Bioinformatics: Diff - Find Sequence Differences In Files | BioCode.
Bioinformatics: Find - Finding User Created Files | BioCode.
Bioinformatics: Grep - Finding Uncharacterized Proteins In Human Genome | BioCode.
Bioinformatics: Gunzip - Extract Compressed Content | BioCode.
Bioinformatics: Cp - Copying Files And Files Contents | BioCode.
Bioinformatics: Column - Proper Visualiation Of Delimited Datasets | BioCode.
Bioinformatics: Cat - Visualization And Inspection Of Text Data | BioCode.
Bioinformatics: Cd - Changing Directories | BioCode.
Bioinformatics: Uniq - Creating A Bioinformatics Pipeline For Genomics Dataset | BioCode Ltd.


Taught by

BioCode Ltd.

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