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Learn Bioinformatics Data Analysis - Master Python, Linux & R - OneDDL - 12-24-2024 ![]() Free Download Learn Bioinformatics Data Analysis - Master Python, Linux & R Published: 11/2024 Created by: Rafiq Ur Rehman MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Level: Beginner | Genre: eLearning | Language: English | Duration: 38 Lectures ( 7h 17m ) | Size: 3.43 GB Master Data Analysis for Bioinformatics: Python, Linux & R for RNA-Seq and Genomic Data Using Hands-on Practical's What you'll learn Practical, Hands-On Learning: You'll gain the skills to process and analyze biological data in real-world scenarios using Python, Linux, and R. Master Basic Python Programming: Learn fundamental Python concepts, including variables, loops, and conditionals, and apply them in the context of bioinformatic Utilize Biopython for Sequence Operations: Gain hands-on experience with Biopython to manipulate and analyze biological sequences (DNA, RNA, protein). Work with FASTQ Files: Learn how to process, filter, and analyze FASTQ files commonly used in sequencing data, with a focus on quality control. Access and Query Biological Databases: Use Biopython to interact with public biological databases (e.g., NCBI, GenBank) for retrieving and analyzing genomic dat Perform Sequence Alignment in Python: Understand the basics of sequence alignment and apply algorithms for pairwise and multiple sequence alignments using Biopy Implement BLAST with Python: Learn how to programmatically use the BLAST tool through Biopython for sequence comparison and searching against sequence databases Visualize Biological Data: Use Python libraries (such as Matplotlib and Seaborn) to visualize genomic data, protein structures, and sequence alignments. Manipulate Large Biological Data Files: Learn to index, sort, and filter large biological data files using Python to ensure efficient analysis. Manage and Process Biological Data on Linux: Develop proficiency in using Linux for bioinformatics, including file management, text processing, and command-line Master Bash Scripting for Bioinformatics Workflows: Learn how to write Bash scripts to automate common bioinformatics tasks such as data preprocessing, alignmen Implement Bioinformatics Pipelines: Understand how to design and implement bioinformatics pipelines on Linux, including steps for data retrieval, processing, an Preprocess RNA-Seq Data: Learn how to preprocess raw RNA-Seq data, including quality control, trimming, and removing adapter sequences. Perform RNA-Seq Alignment and Quantification: Align RNA-Seq data to a reference genome and perform expression quantification using tools like STAR, HISAT2, and Analyze Differential Gene Expression: Use R to perform differential expression analysis on RNA-Seq data, identify significantly expressed genes, and interpret r Conduct Gene Set Enrichment Analysis (GSEA): Learn to perform GSEA using R to analyze functional categories and biological pathways associated with gene express Requirements Beginner-friendly: This course is designed to teach Python, Linux, and R from the ground up. You don't need prior programming knowledge to get started. The course will include foundational lessons on Python programming, so even if you're new to coding, you'll be able to follow along. Understanding basic concepts like percentages, averages, and standard deviation will be helpful for some aspects of data analysis (e.g., differential gene expression). No advanced math or statistical knowledge is required; the course will focus on practical applications of these concepts. Familiarity with using a computer, navigating directories, and managing files. Basic understanding of operating systems (Windows, macOS, or Linux). No prior bioinformatics experience is required. The course is designed to guide you through essential bioinformatics tools and workflows. Even if you're new to programming or bioinformatics, the step-by-step lessons will introduce you to the basic concepts and help you build confidence in your skills. Support and Guidance: You'll have access to clear explanations, resources, and troubleshooting tips throughout the course, which are designed to support beginners. Description In today's rapidly evolving world of genomics, bioinformatics, and computational biology, the ability to analyze and interpret vast amounts of biological data has become a crucial skill. From sequencing genomes to studying gene expression, the tools and techniques in bioinformatics are essential for answering complex biological questions and advancing research. If you're interested in learning how to leverage computational methods for biological analysis, this course is designed for you."Learn Bioinformatics Data Analysis: Master Python, Linux & R" is a comprehensive, hands-on course designed to teach you the foundational skills and techniques needed to process, analyze, and visualize genomic data. Whether you're an aspiring bioinformatician, a life science student, or a researcher looking to enhance your data analysis capabilities, this course will provide you with the tools and knowledge necessary to succeed in the world of bioinformatics.This course takes a multi-faceted approach by teaching you three key components: Python programming, Linux operating systems, and R for bioinformatics. These are the core tools that drive bioinformatics workflows today, and by mastering them, you'll gain the ability to handle everything from basic sequence analysis to complex RNA-Seq data analysis.What you will learn:Throughout this course, you will:Master Python for Bioinformatics:Learn Python from the ground up, starting with basic concepts like variables, loops, and conditionals, and moving towards advanced bioinformatics applications.Use the Biopython library to work with biological data, including DNA, RNA, and protein sequences.Understand how to read and manipulate FASTQ files, perform sequence alignment, and use the BLAST tool programmatically.Explore various data formats in bioinformatics, including FASTA, GFF, and VCF, and learn how to process these formats efficiently.Learn to visualize biological data with Python, using libraries like Matplotlib and Seaborn, to create insightful visualizations of genomic sequences and alignments.Become Proficient in Linux for Bioinformatics:Master the basics of the Linux command line, an essential skill for anyone working in bioinformatics.Learn to navigate the Linux file system, manage files and directories, and automate tasks using Bash scripting.Understand how to install and manage bioinformatics tools and software packages in a Linux environment, a common setup in computational biology labs.Learn how to retrieve data from biological databases using command-line tools, such as wget and curl, and process this data efficiently.Gain Expertise in RNA-Seq Data Analysis Using Linux ![]() Who this course is for Individuals who want to break into the field of bioinformatics and learn how to analyze biological data using Python, Linux, and R. Those who are looking to gain practical skills in sequence analysis, RNA-Seq data, and genomic research tools. Undergraduate or graduate students in biology, genetics, molecular biology, or related fields who want to enhance their computational skills for bioinformatics research. Students who need to understand how to work with biological datasets, genomic sequences, and high-throughput sequencing technologies. Whether you're a beginner looking to explore the field or someone who wants to add a new dimension to their data analysis toolkit, this course will provide the foundational knowledge and hands-on skills needed to succeed. People from diverse academic or professional backgrounds who want to develop practical skills in bioinformatics and computational biology. Homepage: DOWNLOAD NOW: Learn Bioinformatics Data Analysis - Master Python, Linux & R Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |