Course Description:
This comprehensive course is designed to equip you with the knowledge and skills necessary to master deep learning for generative AI, enabling you to build creative applications using machine learning. Spanning 11 sections and 32 detailed videos, the course covers foundational concepts to advanced techniques in deep learning, providing a deep dive into neural networks, recurrent neural networks (RNNs), convolutional neural networks (CNNs), and their practical implementations.
Key Features:
- Foundational Concepts: Begin with an introduction to deep learning, its history, and basic concepts, setting the stage for more advanced topics.
- Neural Networks: Understand the structure, function, and training of neural networks, including single and multi-neuron networks, backpropagation, and optimization.
- Recurrent Neural Networks: Delve into RNNs, their components, and their applications in sequential data processing.
- Convolutional Neural Networks: Explore CNNs, focusing on image recognition and classification, and learn advanced techniques to enhance their performance.
- Advanced Training Techniques: Gain expertise in hyperparameter tuning, validation techniques, and model optimization to improve performance.
- Deep Learning for Computer Vision: Apply deep learning techniques to computer vision tasks, including preprocessing, training, and handling large image datasets.
- Generative Models: Train generative models using LSTM networks, focusing on hyperparameter tuning and validation techniques.
- Deployment and Maintenance: Learn practical deployment techniques using Flask, including handling requests, ensuring low latency, and maintaining models in production.
- Advanced Deployment Techniques: Master advanced techniques for deploying and scaling deep learning models, ensuring efficiency and performance.
Course Content
Section 1: Introduction to Deep Learning Concepts
-
The History of Deep Learning and Inspired by Neuroscience
10:07 -
Understanding Neural Networks: Weights, Multi-Neuron Networks,
11:58 -
Dive Deep into Backpropagation
10:54
Section 2: Recurrent Neural Networks (RNNs)
Section 3: Advanced Training Techniques
Section 4: Convolutional Neural Networks (CNNs)
Section 5: Advanced CNN Techniques
Section 6: Implementing CNNs
Section 7: Deep Learning for Computer Vision
Section 8: Advanced Techniques in Image Processing
Section 9: Model Interpretation and Optimization
Section 10: Deployment and Maintenance of Deep Learning Models
Section 11: Advanced Deployment Techniques
Student Ratings & Reviews
No Review Yet