01/25/2026

Registration closes 01/25/2026

Machine Learning using Python Programming in Bioscience Research

Empowering Bioscience Research with Machine Learning and Python

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level:
  • Duration: 3 Days (1.5 Hours Per Day)
  • Starts: 25 January 2026
  • Time: 08:00 PM IST

About This Course

The rapid growth of biological data—from genomics and transcriptomics to clinical and imaging datasets—has made traditional analysis approaches insufficient. Machine learning offers powerful methods to uncover hidden patterns, predict outcomes, and support decision-making in bioscience research. Python, with its rich ecosystem of libraries, has become the most widely used language for implementing ML in biological and biomedical domains.

This workshop introduces a structured, hands-on approach to machine learning using Python, tailored specifically for bioscience applications. Participants will learn data preprocessing, feature extraction, model selection, training, validation, and interpretation using real biological datasets. Dry-lab sessions will focus on practical implementation using Python libraries such as NumPy, Pandas, Scikit-learn, and Matplotlib, enabling participants to confidently apply ML techniques in research and industry settings.

Aim

This workshop aims to equip participants with practical skills in applying machine learning (ML) using Python to solve real-world problems in bioscience research. It focuses on building, training, and evaluating ML models for biological datasets such as genomics, omics, imaging, and experimental data. Participants will learn how data-driven approaches enhance prediction, classification, and pattern discovery in life sciences. The program bridges biology with computational intelligence for modern research workflows.

Workshop Objectives

  • Understand core machine learning concepts and workflows.
  • Learn Python-based data handling and preprocessing for biological datasets.
  • Build and evaluate supervised and unsupervised ML models.
  • Interpret model outputs and biological relevance.
  • Apply ML pipelines to real bioscience research problems.

Workshop Structure

Day 1: Introduction to Python Programming & Machine Learning Fundamentals

  • Introduction to Python programming and libraries (NumPy, Pandas, Matplotlib, Scikit-learn)
  • Key Python concepts: Data structures, loops, functions, and libraries
  • Introduction to machine learning: Types of learning (supervised, unsupervised, reinforcement)
  • Data preprocessing for bioscience: Handling biological data, normalization, and missing data
  • Feature engineering: Feature extraction and selection techniques
  • Tools: Jupyter Notebooks, Pandas, Scikit-learn, Matplotlib

Day 2: Machine Learning Algorithms & Practical Applications in Biosciences

  • Supervised learning algorithms: Linear regression, logistic regression, decision trees, and random forests
  • Unsupervised learning algorithms: Clustering techniques (K-means, hierarchical)
  • Support vector machines and neural networks for bioscience data analysis
  • Applications of machine learning in bioscience research: Genomics, proteomics, and biomarker discovery
  • Model evaluation techniques: Cross-validation, performance metrics (accuracy, precision, recall, F1 score)
  • Tools: Scikit-learn, TensorFlow/Keras (for neural networks), Seaborn (for visualization)

Day 3: Advanced Machine Learning Techniques & Research-Grade Reporting

  • Deep learning in biosciences: Introduction to deep neural networks (DNNs) for genomic data analysis
  • Natural language processing (NLP) for biological text mining and literature analysis
  • Model optimization: Hyperparameter tuning, grid search, and model comparison
  • Research-grade reporting: Documenting findings, reproducible research, and best practices in machine learning for biosciences
  • Real-world case studies in bioscience research with hands-on coding and model deployment
  • Tools: TensorFlow, Keras, GridSearchCV, Jupyter Notebooks

Who Should Enrol?

  • Doctoral Scholars & Researchers: PhD candidates seeking to integrate computational workflows into their molecular research.
  • Postdoctoral Fellows: Early-career scientists aiming to enhance their data-driven publication profile.
  • University Faculty: Professors and HODs interested in modern bioinformatics pedagogy and tool mastery.
  • Industry Scientists: R&D professionals from the Biotechnology and Pharmaceutical sectors transitioning to genomic-driven discovery.
  • Postgraduate Students: Final-year PG students looking for specialized research-grade exposure beyond standard curricula.

Important Dates

Registration Ends

01/25/2026
IST 07:00 PM

Workshop Dates

01/25/2026 – 01/27/2026
IST 08:00 PM

Workshop Outcomes

Participants will be able to:

  • Preprocess and analyze biological datasets using Python.
  • Build ML models for prediction, classification, and pattern discovery.
  • Evaluate and validate ML model performance.
  • Interpret results in a biological research context.
  • Apply ML workflows to thesis projects, research papers, or industry tasks.

Fee Structure

Student Fee

₹1799 | $70

Ph.D. Scholar / Researcher Fee

₹2799 | $80

Academician / Faculty Fee

₹3799 | $95

Industry Professional Fee

₹4799 | $110

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

Join Our Hall of Fame!

Take your research to the next level with NanoSchool.

Publication Opportunity

Get published in a prestigious open-access journal.

Centre of Excellence

Become part of an elite research community.

Networking & Learning

Connect with global researchers and mentors.

Global Recognition

Worth ₹20,000 / $1,000 in academic value.

Need Help?

We’re here for you!


(+91) 120-4781-217

★★★★★
AI Applications in Pharmacy: Leveraging Technology for Innovative Healthcare Solutions

estryuj

Ankita Srivastava
★★★★★
AI for Healthcare Applications

NA

Aimun A. E. Ahmed
★★★★★
Forecasting patient survival in cases of heart failure and determining the key risk factors using Machine Learning (ML), Predictive Modelling of Heart Failure Risk and Survival

The mentor was very clear and engaging, providing practical examples that made complex topics easier to understand.

Federico Cortese
★★★★★
AI for Psychological and Behavioral Analysis

Good

Dr srilatha Ande srilatha.ammu12@gmail.com

View All Feedbacks →

Stay Updated


Join our mailing list for exclusive offers and course announcements

Ai Subscriber