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R Programming for Biologists: Beginners Level

INR ₹2,499.00 INR ₹24,999.00Price range: INR ₹2,499.00 through INR ₹24,999.00

Aim: The aim of the workshop is to empower biologists with essential skills in R programming, fostering a comprehensive understanding of its applications in biological research. This workshop aims to demystify the complexities of R, providing participants, from beginners to intermediate users, with a solid foundation in utilizing R for data analysis in the biological sciences. Through a combination of theoretical knowledge and hands-on practical sessions, attendees will gain proficiency in data manipulation, statistical analysis, and visualization, enabling them to harness the full potential of R as a powerful tool for extracting meaningful insights from biological datasets. By the end of the workshop, participants will be equipped with the confidence and skills necessary to integrate R seamlessly into their research workflows, ultimately enhancing the efficiency and depth of their biological analyses.

SKU: NSTC0017 Category: Tags: ,

Aim

R Programming for Biologists: Beginners Level teaches R basics for biological data handling, simple statistics, and clear plots. Learn core coding, work with lab datasets (CSV/TSV), and create reproducible outputs for faster analysis.

Program Objectives

  • R Setup: RStudio, projects, scripts, packages, help.
  • Core R: objects, vectors, data frames, indexing, functions.
  • Data Handling: import, clean, filter, summarize, export.
  • Visualization: ggplot2 plots for experiments.
  • Basic Statistics: descriptive stats + simple tests (intro).
  • Good Practice: reproducible workflow, clean code, documentation.
  • Mini Project: complete a small end-to-end analysis.

Program Structure

Module 1: Getting Started with R

  • Install R/RStudio; create projects; organize folders.
  • Console vs script; working directory; help system.
  • Install/load packages; tidyverse overview.
  • First task: load data and compute summaries.

Module 2: Fundamentals (Objects, Vectors, Indexing)

  • Data types: numeric, character, logical, factor.
  • Vectors + indexing; basic calculations.
  • Missing values (NA): detect and handle.
  • Key functions + simple custom function.

Module 3: Data Frames for Lab Data

  • Data frames/tibbles; inspect and summarize.
  • Import/export: CSV/TSV; common format issues.
  • Clean: rename columns, fix types, remove duplicates.
  • Filter/sort: control vs treatment examples.

Module 4: Wrangling with dplyr

  • select, filter, mutate, arrange, summarise, group_by.
  • Group summaries: mean/SD by condition, replicates, time points.
  • Joins (intro): combine metadata + measurements.
  • Reshape (intro): wide vs long for plotting.

Module 5: Visualization with ggplot2

  • Bar, line, scatter, boxplot, histogram.
  • Biology plots: growth curves, QC plots, distributions.
  • Clarity: labels, scales, legends, honest visuals.
  • Export plots for reports/slides.

Module 6: Basic Statistics (Intro)

  • Mean/median, SD, IQR; distribution checks (basic).
  • t-test and chi-square concepts (intro).
  • p-values + effect size thinking (intro); common mistakes.
  • Simple reporting of results.

Module 7: Reproducible Reporting

  • Save clean tables/plots to an outputs folder.
  • RMarkdown/Quarto basics (intro).
  • Document assumptions with comments + README.
  • Reproducibility checklist.

Final Mini Project

  • Analyze a provided biology dataset (growth/enzyme/qPCR Ct table/non-diagnostic/survey).
  • Workflow: import → clean → summarize → plot → optional simple test.
  • Deliverables: script/notebook + results table + 2–3 plots + short report.

Participant Eligibility

  • UG/PG students in Biotechnology, Microbiology, Genetics, Life Sciences, Bioinformatics
  • Researchers/lab members handling experimental datasets
  • Beginners (no coding required)

Program Outcomes

  • Write basic R scripts and use RStudio confidently.
  • Import, clean, and summarize biology datasets.
  • Create clear plots for experiments.
  • Run and interpret simple stats (intro level).
  • Deliver a reproducible mini project.

Program Deliverables

  • e-LMS Access: lessons, datasets, templates.
  • Starter Pack: setup guide, import templates, dplyr cheatsheet, ggplot scripts.
  • Practice Tasks: exercises with solutions.
  • Project Support: guidance for mini project completion.
  • Assessment: certification after assignments + mini project.
  • e-Certification and e-Marksheet: digital credentials on completion.

Future Career Prospects

  • Research Data Assistant (Life Sciences)
  • Junior Bioinformatics/Data Analysis Trainee
  • Lab Data Analyst (Entry-level)
  • Biostatistics Assistant (Entry-level)

Job Opportunities

  • Labs & Universities: data cleaning, plotting, reporting support.
  • Biotech/Pharma: basic analytics and QC summaries.
  • CROs/Core Facilities: documentation and results reporting support.
  • Startups: experiment data handling and visualization.
Category

E-LMS, E-LMS+Video, E-LMS+Video+Live Lectures

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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DEEPIKA R : 06/10/2024 at 10:48 am

Very nice interaction, but need to clear all the doubts in all the sessions and each session should More be equally valuable for all as the 2nd day session was most informative while 1st day and 3rd day were more or less like casual.
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Veenu Choudhary : 05/19/2024 at 4:14 pm

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Priyanka Saha : 07/01/2024 at 12:51 pm