Free Artificial Intelligence Courses
LEVEL: Intermediate
Completion Certificate : YES
Duration : 2 Hours
Discover the Power of R Programming
Throughout the course, you will dive deep into the fundamentals of neural networks, understanding their significance and exploring their applications across various industries. You will gain a comprehensive understanding of activation functions, their role in shaping network behavior, and how to optimize MLP models using backpropagation and stochastic gradient descent. What sets our course apart is the emphasis on practicality. Through handson examples and demonstrations, you will gain invaluable experience implementing MLP in realworld scenarios. By the end of the course, you will be equipped with the skills to tackle complex challenges and unleash the full potential of Multilayer Perceptron (MLP).
Enroll today and take the first step towards expanding your AI and ML skills. As you complete the course and successfully pass the quiz, you will earn a certificate of completion, validating your expertise in Multilayer Perceptron (MLP). Don't miss out on this opportunity to enhance your career prospects and join the forefront of innovation in the exciting world of artificial intelligence.
COURSE OUTLINE
Module 1: Introduction to Neural Networks
- fundamentals of neural networks lets understand
- History and evolution of neural networks
- Overview of the architecture and components of neural networks
Module 2: Importance of Neural Networks
- Exploring the reasons behind the widespread use of neural networks
- Realworld applications of neural networks in various industries
- Advantages and limitations of neural networks compared to other techniques
Module 3: Neural Network Mechanics
- Understanding the working principles of neural networks
- Neuron activation and information flow
- The role of weights and biases in neural network computations
Module 4: Activation Functions in Neural Networks
- Introduction to activation functions and their significance
- Common activation functions: sigmoid, ReLU, tanh, etc.
- Selection and comparison of activation functions based on different use cases
Module 5: Optimization and Training of Neural Networks
- Backpropagation algorithm and its importance in training neural networks
- Gradient descent and its variations: stochastic gradient descent, minibatch gradient descent
- Techniques for avoiding overfitting and improving generalization of neural networks
Module 6: Practical Applications of Neural Networks
- Implementing neural networks using popular frameworks and libraries
- Handson exercises and projects to apply neural networks to realworld problems
- Discussion of case studies showcasing successful neural network applications
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