Generative AI with Python and TensorFlow: A Complete Guide to Mastering AI Models
Vemula, Anand
- 出版商: Independently Published
- 出版日期: 2024-07-03
- 售價: $1,120
- 貴賓價: 9.5 折 $1,064
- 語言: 英文
- 頁數: 90
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9798332106040
- ISBN-13: 9798332106040
-
相關分類:
Python、程式語言、DeepLearning、TensorFlow、人工智慧
海外代購書籍(需單獨結帳)
相關主題
商品描述
Generative AI with Python and TensorFlow: A Complete Guide to Mastering AI Models is a comprehensive resource for anyone looking to delve into the world of generative artificial intelligence.
Introduction- Overview of Generative AI: Understand the basic concepts, history, and significance of generative AI.
- Importance of Generative AI: Learn about the transformative potential of generative AI in various industries.
- Applications and Use Cases: Explore real-world applications of generative AI in fields such as art, music, text generation, and data augmentation.
- Overview of Python and TensorFlow: Get an introduction to the essential tools and libraries used for building generative AI models.
- Getting Started: Set up your development environment, install necessary libraries, and take your first steps with TensorFlow.
Fundamentals of Machine Learning
- Supervised vs. Unsupervised Learning: Understand the differences and use cases of these two primary types of machine learning.
- Neural Networks Basics: Learn the fundamental concepts of neural networks and their role in AI.
- Introduction to Deep Learning: Dive deeper into the advanced techniques of deep learning and its applications in generative AI.
- Key Concepts in Generative AI: Familiarize yourself with the essential concepts and terminologies in generative AI.
Generative Models
- Understanding Generative Models: Explore the theoretical foundations of generative models.
- Types of Generative Models: Learn about various types of generative models, including VAEs, GANs, autoregressive models, and flow-based models.
- Variational Autoencoders (VAEs): Delve into the theory behind VAEs, build and train VAEs with TensorFlow, and explore their use cases.
- Generative Adversarial Networks (GANs): Get introduced to GANs, understand their architecture, implement GANs with TensorFlow, and learn advanced GAN techniques.
- Autoregressive Models: Understand autoregressive models, implement them with TensorFlow, and explore their applications.
- Flow-based Models: Learn about flow-based models, build them with TensorFlow, and explore their practical applications.
Advanced Topics
- Transfer Learning for Generative Models: Explore how transfer learning can be applied to generative models.
- Conditional Generative Models: Understand and implement models that generate outputs conditioned on specific inputs.
- Multimodal Generative Models: Learn about models that can generate multiple types of data simultaneously.
- Reinforcement Learning in Generative AI: Explore the intersection of reinforcement learning and generative AI.
Practical Applications
- Image Generation and Style Transfer: Create stunning images and apply style transfer techniques.
- Text Generation and Natural Language Processing: Generate coherent and contextually relevant text using advanced NLP techniques.
- Music and Sound Generation: Compose music and generate new sounds using generative AI.
- Data Augmentation for Machine Learning: Improve your machine learning models by augmenting your datasets with generative models.
Hands-On Projects
- Project 1: Creating Art with GANs: Step-by-step guide to building a GAN to generate art.
- Project 2: Text Generation with LSTM: Implement an LSTM model for generating text.
- Project 3: Building a VAE for Image Reconstruction: Learn how to build and train a VAE for image reconstruction.
- Project 4: Music Generation with RNNs: Create a music generation model using RNNs.