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Learn AMR Detection: From Raw Genomic Reads to ML Prediction

Build end-to-end AMR analysis pipelines on Linux identify resistance genes, and prepare data for advanced ML predictions

Antimicrobial resistance (AMR) is one of the most critical challenges in modern medicine and bioinformatics provides the tools to detect, analyze, and predict resistance directly from genomic data.

What you’ll learn

Course Content

Requirements

Antimicrobial resistance (AMR) is one of the most critical challenges in modern medicine and bioinformatics provides the tools to detect, analyze, and predict resistance directly from genomic data.

In this hands-on course, you’ll learn how to build complete AMR analysis pipelines starting from raw sequencing reads all the way to machine learning-based resistance prediction.

You’ll begin with the fundamentals of AMR and bioinformatics, then move on to Linux essentials, data preprocessing, and genome assembly using tools like SPAdes and Quast. Next, you’ll perform genome annotation with Prokka and detect resistance genes through ABRicate using multiple AMR databases (CARD, NCBI, ResFinder).

Finally, you’ll learn how to extract key features from AMR data, build an AMR gene presence–absence matrix, and apply machine learning models in Python to predict resistance patterns.

This course combines real-world genomic data, practical coding, and clear explanations to help you master AMR genomics analysis even if you’re a beginner.

No coding is required: all pipelines and codes are provided! Just follow the guided workflow and focus on learning the biological insights.

By the end of this course, you will:

Ideal For:

Enroll now and start your journey to master AMR genomics and machine learning powered resistance detection today!