Generative Deep Learning I



Free Download Generative Deep Learning I
Published 6/2024
Created by Madali Nabil
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 37 Lectures ( 7h 30m ) | Size: 3 GB


Teaching Machines To Generate, Edit, and Paint Images
What you’ll learn:
Learn how images are encoded into numerical representations and decoded back into visual formats.
Master techniques to edit images by manipulating their latent representations, enabling transformative changes and enhancements.
Dive into GANs, including their structure, training dynamics with a generator and discriminator, and applications in generating realistic images.
Examine advanced GAN architectures such as WGAN, Progressive GAN, StyleGAN v1, and StyleGAN v2, focusing on their improvements in stability and image quality.
Requirements:
Programming Skills: Proficiency in programming, preferably in Python, as the course involves hands-on implementation of deep learning models using libraries such as TensorFlow or PyTorch.
Basic Knowledge of Deep Learning: Some prior exposure to deep learning concepts and architectures (e.g., feedforward neural networks, convolutional neural networks) will aid in grasping advanced topics covered in the course.
Computer Vision Basics (Recommended): While not mandatory, familiarity with computer vision tasks and techniques can facilitate understanding the applications and challenges specific to image generation and manipulation.
Description:
Welcome to the Deep Image Generative Models CourseUnlock the power of deep learning to create and manipulate images like never before. This course is designed for enthusiasts and professionals eager to dive into the world of image generation using advanced deep learning techniques. What You Will Learn:Image Encoding and Decoding: Understand the fundamentals of how images are encoded into numerical representations and decoded back to visual formats.Latent Space: Explore the concept of latent space and its significance in image generation and manipulation.Image Editing in Latent Space: Learn how to edit images by manipulating their latent representations, enabling sophisticated transformations and enhancements.Autoencoder: Delve into autoencoders, understanding their architecture and applications in unsupervised learning.Variational Autoencoder (VAE): Gain insights into VAEs, learning how they generate new images by sampling from a latent space.Generative Adversarial Networks (GANs): Master the basics of GANs, including their unique training dynamics involving a generator and a discriminator.Wasserstein GAN (WGAN): Explore WGANs and understand how they improve upon traditional GANs by stabilizing training and enhancing image quality.Realistic GAN Models with Progressive GAN, StyleGAN v1, and StyleGAN v2: Learn about cutting-edge GAN architectures that produce highly realistic images, including Progressive GAN, StyleGAN v1, and StyleGAN v2.Final Project:As a culmination of your learning journey, you will work on a **Realistic Face Editor** project. This hands-on project will empower you to:- Edit facial attributes seamlessly.- Generate photorealistic faces from scratch.- Apply various transformations using advanced GAN techniques.Why Enroll?- Expert Instructors: Learn from industry experts with real-world experience in deep learning and image generation.-Comprehensive Curriculum: Cover all essential topics from basic concepts to advanced models.-Hands-On Learning: Engage in practical projects that solidify your understanding and skills.- Cutting-Edge Tools: Gain proficiency in the latest tools and techniques used in image generation.Join Us:Embark on this exciting journey to master deep image generative models. Whether you’re a data scientist, machine learning engineer, or a deep learning enthusiast, this course will equip you with the knowledge and skills to excel in the field of image generation.
Who this course is for:
Data Scientists and Machine Learning Engineers: Professionals looking to deepen their expertise in deep learning techniques for image generation and manipulation.
Researchers and Academics: Those involved in academic research or industrial research labs focusing on computer vision, generative models, and AI.
Computer Vision Enthusiasts: Individuals passionate about exploring cutting-edge technologies in computer vision and applying them to create realistic images.
Entrepreneurs and Innovators: Individuals aiming to innovate in fields requiring advanced image manipulation capabilities, such as entertainment, fashion, healthcare, and more.
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https://www.udemy.com/course/generative-deep-learning-i/
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