File Name: | Neural Networks and Deep Learning |
Content Source: | https://www.udemy.com/course/neural-networks-and-deep-learning |
Genre / Category: | Other Tutorials |
File Size : | 827.8 MB |
Publisher: | Pralhad Teggi |
Updated and Published: | August 2, 2025 |
Whether you’re a student, data science enthusiast, or an early-career AI professional, this course will help you build a solid foundation in modern neural architectures — from perceptrons to multi-layered networks — and master the mechanics behind how they learn.
What You’ll Learn:
- Understand what neural networks are and how they’re inspired by the human brain.
- Build simple ANNs from scratch for basic logic operations (OR, AND, NAND).
- Dive into Perceptrons and Multi-Layer Perceptrons (MLP), learning how they process data through forward propagation.
- Master key concepts like loss functions, cost functions, and gradient descent, including the difference between partial derivatives and gradients.
- Implement and compare optimization techniques like batch, stochastic, mini-batch, momentum, and RMSProp gradient descent.
- Learn how to prevent overfitting using techniques such as L1/L2 regularization, dropout, and batch normalization.
- Apply these concepts in practical use cases, including water quality contamination detection and MNIST digit recognition.
Key Highlights:
- Visual and intuitive explanations for gradient descent and error surfaces
- Practical walkthroughs for regularization methods using real-world scenarios
- Hands-on use cases demonstrating the power of neural networks in real-world problems
- Emphasis on interpreting and improving model performance
Who this course is for:
- Beginner to Intermediate Learners who want a practical and intuitive introduction to neural networks and deep learning, without heavy math.
- Aspiring Data Scientists and ML Engineers looking to build a strong foundation in artificial neural networks and understand how models like MLPs and gradient descent work.
- Python Programmers and Developers who want to transition into AI/ML and apply neural networks to real-world problems.
- Students and Researchers interested in understanding and experimenting with deep learning models for academic or project-based work.
- Professionals in Engineering, Finance, or Environmental Science who want to leverage AI to solve domain-specific problems, like classification and forecasting.
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