ML Made Simple – Handwritten Notes for 1st & 2nd Year
Struggling to understand the math behind your Machine Learning course? This comprehensive, handwritten study guide is exactly what you need to master the core concepts and ace your exams this semester. Crafted by a 3rd-year VIT-AP Computer Science student and active Full Stack Gen AI Developer, these notes are structured with a developer's logic and clarity. They are the perfect theoretical companion to the popular textbook, "Hands-On Machine Learning with Scikit-Learn, Keras & TensorFlow," explaining the 'why' behind the book's practical code. Inside this guide, you will find detailed explanations, diagrams, and step-by-step examples for all essential university-level ML topics: Foundations of ML: Clear explanations of Supervised, Unsupervised, and Reinforcement Learning. Optimization: A deep dive into Gradient Descent (Batch, Stochastic, Mini-Batch) and the principles of Convex Optimization. Regression Models: Master the fundamentals with breakdowns of Linear and Multivariate Regression. Core Classification Algorithms: Logistic Regression and K-Nearest Neighbors (KNN). Support Vector Machines (SVMs), including the Kernel Trick. Decision Trees, with detailed calculations for Entropy, Information Gain, and the Gini Index. Dimensionality Reduction: Step-by-step guides for Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA). Unsupervised Learning: Simple and clear explanations of K-Means and Hierarchical Clustering. Introduction to Neural Networks: The essentials of Artificial Neural Networks (ANNs), Backpropagation, Activation Functions, and various Loss Functions. Stop just copying code and start understanding the principles. Download these notes to study smarter, save time, and build a true mastery of machine learning.
Connected book
- Unknown
- 9781492032649
- 2
Written for
- Institution
- Vellore Institute Of Technology
- Module
- CSE3008
Document information
- Uploaded on
- September 26, 2025
- Number of pages
- 39
- Written in
- 2024/2025
- Type
- Lecture notes
- Professor(s)
- Misha
- Contains
- All classes
Subjects
-
machine learning
-
artificial intelligence
-
data science
-
exam preparation
-
vit ap
-
university notes
-
hands on machine learning
-
aurélien géron
-
unsupervised learn
-
algorithms models
-
study guide
-
lecture notes