Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
CNNs, LSTMs, GANs, VAEs, Transformers (including GPTs) and Stable Diffusion
Welcome to the Deep Learning and Generative Artificial Intelligence course! This comprehensive course is designed for anyone interested in diving into the exciting world of deep learning and generative AI, whether you're a beginner with no programming experience or an experienced developer looking to expand your skill set.
What You Will Learn:
Foundations of Deep Learning and Artificial Neural Networks: Gain a solid understanding of the basic concepts and architectures that form the backbone of modern AI.
Convolutional Neural Networks (CNNs): Learn how to implement and train CNNs for image classification and object detection tasks using Python and popular deep learning libraries.
Long Short-Term Memory (LSTM) Networks: Explore the application of LSTM networks to predict and analyze time series data, enhancing your ability to handle sequential data.
Transformer Models: Dive into the world of Transformer models, including GPT-type models, and learn how to construct, fine-tune, and deploy these models for various natural language processing tasks.
Generative Adversarial Networks (GANs): Understand the principles behind GANs and learn how to create and train them to generate realistic synthetic images and data.
Variational Auto-Encoders (VAEs): Discover how to build and utilize VAEs for data compression and generation, understanding their applications and advantages.
Style Transfer and Stable Diffusion: Experiment with style transfer techniques and stable diffusion methods to creatively alter and enhance images.
Course Features:
Interactive Coding Exercises: Engage with hands-on coding exercises designed to reinforce learning and build practical skills.
User-Friendly Demos and Playgrounds: For those who prefer a more visual and interactive approach, our course includes demos and playgrounds to experiment with AI models without needing to write code.
Real-World Examples: Each module includes real-world examples and case studies to illustrate how these techniques are applied in various industries.
Project-Based Learning: Apply what you've learned by working on projects that mimic real-world scenarios, allowing you to build a portfolio of AI projects.
Who Should Take This Course?
Aspiring AI Enthusiasts: Individuals with no prior programming experience who want to understand and leverage AI through intuitive interfaces.
Developers and Data Scientists: Professionals looking to deepen their understanding of deep learning and generative AI techniques.
Students and Researchers: Learners who want to explore the cutting-edge advancements in AI and apply them to their studies or research projects.
Course Content
- 14 section(s)
- 182 lecture(s)
- Section 1 Foundations of Modern AI
- Section 2 Playground for the Foundational Part of the Course
- Section 3 Code demos for the Foundational Part of the Course
- Section 4 Artificial Intelligence for Visual Tasks
- Section 5 Playgrounds for AI for Vision
- Section 6 Code demos of AI for Computer Vision
- Section 7 Deep Learning for Time Series
- Section 8 Code Demo for Part 2 - Time Series
- Section 9 Deep Learning for Language - The Transformer Model
- Section 10 Code Demos - Language and AI
- Section 11 Generative Artificial Intelligence - Gen AI
- Section 12 Code Demos for Generative AI
- Section 13 Playgrounds for Generative AI
- Section 14 All Resources and Link for the GitHub Repository
What You’ll Learn
- Learn the basic principles of artificial neural networks and how they are trained.
- Implement and train Convolutional Neural Networks (CNNs) for image classification and object detection using Python.
- Design and apply Long Short-Term Memory (LSTM) networks to predict and analyze time series data.
- Construct, fine-tune, and deploy Transformer models, such as GPT-type models, for various natural language processing tasks.
- Create and train Generative Adversarial Networks (GANs) to generate realistic synthetic images and data.
- Build and utilize Variational Auto-Encoders (VAEs) for data compression and generation tasks.
- Apply style transfer and stable diffusion methods to creatively alter and enhance images.
Skills covered in this course
Reviews
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SSushma Karkera
It's too fast
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BBrett Baden
Very clear and logical explanation step-by-step of terms that are usually just thrown around.
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JJONGIL PARK
A clean slate for deffusion models
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RRav ~
This course is really good, but pls combine all the 30s videos together into one 15-20 min video; too many tiny video disrupts the learning experience badly, every 30s the player has to load a new video!