📘 Deep Learning Notes (2025–2026 Edition)
📚 The Deep Learning Notes (2025–2026) Edition is a complete academic and practical resource tailored for university students, college learners, software engineering majors, and aspiring developers. Covering the entire deep learning syllabus in a structured and student-friendly way, this edition combines a complete syllabus with practice MCQs and quizzes to make learning both effective and engaging.
This app provides a step-by-step guide to mastering deep learning concepts, starting from the basics of programming and progressing to advanced topics such as convolutional networks, recurrent neural networks, and structured probabilistic models. Each unit is carefully designed with explanations, examples, and practice questions to strengthen understanding and prepare students for academic exams and professional development.
---
🎯 Learning Outcomes:
- Understand deep learning concepts from fundamentals to advanced programming.
- Reinforce knowledge with unit-wise MCQs and quizzes.
- Gain hands-on coding experience.
- Prepare effectively for university exams and technical interviews.
---
📂 Units & Topics
🔹 Unit 1: Introduction to Deep Learning
- What is Deep Learning?
- Historical Trends
- Deep Learning Success Stories
🔹 Unit 2: Linear Algebra
- Scalars, Vectors, Matrices, and Tensors
- Matrix Multiplication
- Eigendecomposition
- Principal Components Analysis
🔹 Unit 3: Probability and Information Theory
- Probability Distributions
- Marginal and Conditional Probability
- Bayes' Rule
- Entropy and KL Divergence
🔹 Unit 4: Numerical Computation
- Overflow and Underflow
- Gradient-Based Optimization
- Constrained Optimization
- Automatic Differentiation
🔹 Unit 5: Machine Learning Basics
- Learning Algorithms
- Capacity and Overfitting and Underfitting
🔹 Unit 6: Deep Feedforward Networks
- Architecture of Neural Networks
- Activation Functions
- Universal Approximation
- Depth vs. Width
🔹 Unit 7: Regularization for Deep Learning
- L1 and L2 Regularization
- Dropout
- Early Stopping
- Data Augmentation
🔹 Unit 8: Optimization for Training Deep Models
- Gradient Descent Variants
- Momentum
- Adaptive Learning Rates
- Challenges in Optimization
🔹 Unit 9: Convolutional Networks
- Convolution Operation
- Pooling Layers
- CNN Architectures
- Applications in Vision
🔹 Unit 10: Sequence Modeling: Recurrent and Recursive Nets
- Recurrent Neural Networks
- Long Short-Term Memory
- GRU
- Recursive Neural Networks
🔹 Unit 11: Practical Methodology
- Evaluating Performance
- Debugging Strategies
- Hyperparameter Optimization
- Transfer Learning
🔹 Unit 12: Applications
- Computer Vision
- Speech Recognition
- Natural Language Processing
- Game Playing
🔹 Unit 13: Deep Generative Models
- Autoencoders
- Variational Autoencoders
- Restricted Boltzmann Machines
- Generative Adversarial Networks
🔹 Unit 14: Linear Factor Models
- PCA and Factor Analysis
- ICA
- Sparse Coding
- Matrix Factorization
🔹 Unit 15: Autoencoders
- Basic Autoencoders
- Denoising Autoencoders
- Contractive Autoencoders
- Variational Autoencoders
🔹 Unit 16: Representation Learning
- Distributed Representations
- Manifold Learning
- Deep Belief Networks
- Pretraining Techniques
🔹 Unit 17: Structured Probabilistic Models for Deep Learning
- Directed and Undirected Graphical Models
- Approximate Inference
- Learning with Latent Variables
---
🌟 Why Choose This App?
- Covers the complete deep learning syllabus in a structured format with MCQs, & quizzes for practice.
- Suitable for BS/CS, BS/IT, software engineering students, and developers.
- Builds strong foundations in problem solving and professional programming.
---
✍ This app is inspired by the authors:
Ian Goodfellow, Yoshua Bengio, Aaron Courville
📥 Download Now!
Get your Deep Learning Notes (2025–2026) Edition today! Learn, practice, and master deep learning concepts in a structured, exam-oriented, and professional way.
ଗତ ଅପଡେଟର ସମୟ
ସେପ୍ଟେମ୍ବର 13, 2025