VTU 2022 Scheme  ·  Degree  ·  AIML

Machine Learning - I BAI602

Module-wise notes, PYQs, and a built-in resource explorer — everything you need to crack BAI602 in one focused page.

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CodeBAI602
Credits04
CIE / SEE50 / 50
TypeTheory
Exam3 Hours
Hours / Week4:0:0:0
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Last Updated:  15 March 2026

Module Overview

M1

Module 1 Overview

Introduction: Need for Machine Learning, Machine Learning Explained, Machine Learning in Relation to other Fields, Types of Machine Learning, Challenges of Machine Learning, Machine Learning Process, Machine Learning Applications.

Understanding Data - 1: Introduction, Big Data Analysis Framework, Descriptive Statistics, Univariate Data Analysis and Visualization.

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Chapter-1, 2 (2.1-2.5)
M2

Module 2 Overview

Understanding Data - 2: Bivariate Data and Multivariate Data, Multivariate Statistics, Essential Mathematics for Multivariate Data, Feature Engineering and Dimensionality Reduction Techniques.

Testing Machine Learning Algorithms: Overfitting, Training, Testing, and Validation Sets, The Confusion Matrix, Accuracy Metrics, The Receiver Operator Characteristic (ROC) Curve, Unbalanced Datasets, Measurement Precision

Textbook-1: Chapter -2 (2.6-2.8, 2.10), Text book-2 (2.2)

M3

Module 3 Overview

Similarity-based Learning: Nearest-Neighbor Learning, Weighted K-Nearest-Neighbor Algorithm, Nearest Centroid Classifier, Locally Weighted Regression (LWR).

Regression Analysis: Introduction to Regression, Introduction to Linear Regression, Multiple Linear Regression, Polynomial Regression, Logistic Regression.

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Chapter-4 (4.2-4.5), Chapter-5 (5.1-5.3, 5.5-5.7)
M4

Module 4 Overview

Decision Tree Learning: Introduction to Decision Tree Learning Model, Decision Tree Induction Algorithms. Validating and pruning of Decision trees.

Bayesian Learning: Introduction to Probability-based Learning, Fundamentals of Bayes Theorem, Classification Using Bayes Model, Naive Bayes Algorithm for Continuous Attributes.

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Chapter-6 (6.1, 6.3), Chapter-8 (8.1-8.4)
M5

Module 5 Overview

Artificial Neural Networks: Introduction, Biological Neurons, Artificial Neurons, Perceptron and Learning Theory, Types of Artificial Neural Networks, Popular Applications of Artificial Neural Networks, Advantages and Disadvantages of ANN, Challenges of ANN.

Clustering Algorithms: Introduction to Clustering Approaches, Proximity Measures, Hierarchical Clustering Algorithms, Partitional Clustering Algorithm, Density-based Methods, Grid-based Approach.

Chapter-10 (10.1-10.5, 10.9-10.11), Chapter -13 (13.1-13.6)

Machine Learning - I BAI602 is a VTU course covered through module-wise syllabus, notes, and PYQ-driven exam practice available on this page.

Credits for BAI602: 04.

Yes. You can access organized notes, PDFs, and PYQ material from the file explorer/resources section on this page.

Start with module summaries, solve recent PYQs unit-wise, and finish with complete paper practice under time constraints for SEE readiness.

Yes, this page is maintained with current scheme-oriented materials and practical exam-focused resource curation.

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Resource Explorer

Browse all BAI602 study materials — notes, PYQs, and revision resources. Navigate folders for module-wise content and preview files before downloading.

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Frequently Asked Questions

What is BAI602 (Machine Learning - I BAI602)?

Machine Learning - I BAI602 is a VTU course covered through module-wise syllabus, notes, and PYQ-driven exam practice available on this page.

How many credits is BAI602?

Credits for BAI602: 04.

Are notes and previous year question papers available for BAI602?

Yes. You can access organized notes, PDFs, and PYQ material from the file explorer/resources section on this page.

How should I prepare Machine Learning - I BAI602 for VTU exams?

Start with module summaries, solve recent PYQs unit-wise, and finish with complete paper practice under time constraints for SEE readiness.

Is this BAI602 page updated for current VTU scheme?

Yes, this page is maintained with current scheme-oriented materials and practical exam-focused resource curation.

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About Machine Learning - I (BAI602)

Machine Learning - I (BAI602) is a critical course in the VTU curriculum, essential for any student looking to master the foundations of engineering. It covers key theoretical frameworks and practical concepts that are widely used in the industry today, ensuring students are well-prepared for both exams and their future careers.

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Highlight definitions, advantages/disadvantages, and use case examples. Clear headings and bullet points are essential for VTU evaluators.

📘 Detailed Syllabus & Topic Breakdown

Detailed Subject Overview

Machine Learning - I (BAI602) is designed to provide a comprehensive look into the core methodologies and advanced theories that define this field. Understanding this subject is fundamental for anyone looking to excel in modern technical domains and industrial engineering.

By studying this course, you will learn how to approach complex problems with a structured mindset, optimizing systems for better performance and reliability—skills that are highly valued in both AI research and software architecture.

Module-by-Module Breakdown

Module 1
Essential

Master the Introduction Need for Machine Learning, Machine Learning Explained, Machine Learning in Relation to other Fields, Types of Machine Learning, Challenges of Machine ...

Key: Exam Priority Concept
Module 2
Math Heavy

Master the Understanding Data - 2 Bivariate Data and Multivariate Data, Multivariate Statistics, Essential Mathematics for Multivariate Data, Feature Engineering and Dimensionality Red...

Key: Exam Priority Concept
Module 3
Logic Core

Master the Similarity-based Learning Nearest-Neighbor Learning, Weighted K-Nearest-Neighbor Algorithm, Nearest Centroid Classifier, Locally Weighted Regression (LWR)....

Key: Exam Priority Concept
Module 4
Exam Focus

Master the Decision Tree Learning Introduction to Decision Tree Learning Model, Decision Tree Induction Algorithms. Validating and pruning of Decision trees....

Key: Exam Priority Concept
Module 5
High Weight

Master the Artificial Neural Networks Introduction, Biological Neurons, Artificial Neurons, Perceptron and Learning Theory, Types of Artificial Neural Networks, Popular Applications of Art...

Key: Exam Priority Concept

Professional Career Relevance

Highly sought after for Data Science, Predictive Analytics, and recommendation engineering in companies like Netflix and Spotify. Mastering these concepts prepares you for high-demand roles in Data Science, System Architecture, and Technical Leadership in top-tier tech companies.

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