Foundations Of Artificial Neural Networks
Published 3/2026
Created by M.Jaiganesh Mahalingam
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Beginner | Genre: eLearning | Language: English | Duration: 5 Lectures ( 2h 27m ) | Size: 992 MB
What you'll learn
✓ Understand the fundamentals of Artificial Neural Networks and their key components such as neurons, layers, weights, and bias.
✓ Learn the architecture of neural networks and different types of ANN models.
✓ Understand how the backpropagation algorithm is used to train neural networks.
✓ Learn the concept of intelligent algorithms and how they help improve neural network performance.
✓ Understand how recommender systems work and how they are used to provide personalized recommendations.
Requirements
● Basic understanding of mathematics such as algebra and basic statistics.
● Basic knowledge of computer science or programming concepts is helpful but not mandatory.
● Interest in artificial intelligence and machine learning concepts.
● A computer with internet access to follow the course.
Description
Artificial Neural Networks (ANN) are at the core of modern Artificial Intelligence systems, powering applications ranging from intelligent automation to personalized recommendation platforms. Foundations of Advanced Neural Networks is designed to provide a comprehensive and structured understanding of neural network principles, architectures, and intelligent algorithms.
The course begins with a foundational overview of Artificial Intelligence and its evolution, setting the context for neural network development. You will then explore the core components of ANN, including biological inspiration, neuron models, layers, weights, bias, and activation functions. The architecture of neural networks is explained in a clear and systematic manner, enabling learners to understand how information flows across layers.
A dedicated section focuses on the backpropagation algorithm, explaining how errors are calculated and propagated backward through the network to adjust weights and improve performance. The course emphasizes conceptual clarity over unnecessary complexity, ensuring strong theoretical understanding.
In addition, you will be introduced to intelligent algorithms and the fundamental principles of recommender systems. These systems play a critical role in personalized applications such as e-commerce platforms, digital media services, and online content delivery.
This course is ideal for computer science students, AI enthusiasts, researchers, and professionals who wish to build a solid academic foundation in neural networks before progressing to advanced deep learning topics.
By the end of this course, learners will have a confident understanding of ANN architecture, learning mechanisms, and intelligent system design, preparing them for further exploration in advanced AI and research domains.
Who this course is for
■ Students who want to learn the fundamentals of artificial neural networks.
■ Beginners interested in artificial intelligence and machine learning.
■ Computer science and data science students looking to understand neural network concepts.
■ Anyone curious about how neural networks power modern AI applications.
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!