What's new
Warez.Ge

This is a sample guest message. Register a free account today to become a member! Once signed in, you'll be able to participate on this site by adding your own topics and posts, as well as connect with other members through your own private inbox!

Elevating Machine Learning with Meta Learning Techniques with Python (Mastering Machine Learning)

voska89

Moderator
Staff member
Top Poster Of Month
a45bcecb52ef1767046598213626c6e5.webp

Free Download Elevating Machine Learning with Meta Learning Techniques with Python (Mastering Machine Learning)
English | 2024 | ISBN: B0DCGCY5Q4 | Pages: 185 | PDF | 3.30 MB
Discover the power of elevating machine learning with meta learning techniques using Python. This comprehensive guide takes you on a journey through the foundations, algorithms, and applications of meta-learning in the field of artificial intelligence.​

Key Features:
- Learn the essential concepts and historical perspective of meta-learning
- Explore various meta-learning algorithms, including supervised, reinforcement, and unsupervised approaches
- Implement meta-learning techniques with recurrent neural networks (RNNs) and memory-augmented neural networks (MANNs)
- Understand cutting-edge meta-learning algorithms such as MAML and Reptile
- Dive into metric learning approaches, prototypical networks, and embeddings in meta-learning
- Master the art of learning to learn with gradient descent using Meta-SGD
- Discover the exciting world of task adaptation networks, few-shot learning, and zero-shot learning
- Explore unsupervised meta-learning, meta-reinforcement learning, and hierarchical meta-reinforcement learning
- Get insights into meta-inverse reinforcement learning and meta-imitation learning
- Learn about curriculum learning, meta-learning with multi-agent systems, and exploration strategies in meta-learning
- Dive into domain adaptation, Bayesian meta-learning, and graph neural networks in meta-learning
- Explore meta-transfer learning, self-taught meta-learning, and lifelong learning with meta-learning
- Discover the possibilities of evolving meta-learners and meta-learning for optimization
- Delve into the exciting field of meta-learning for drug discovery
Book Description:
With the rapid development of machine learning, it is essential to enhance its capabilities further. This book introduces you to the world of meta-learning - a powerful technique that enables machines to learn to learn. Through practical examples and Python code, you will explore a wide range of meta-learning algorithms, architectures, and applications.
You will start by understanding the foundational concepts, motivations, and historical perspective of meta-learning. Moving forward, you will explore various meta-learning algorithms, such as supervised, reinforcement, and unsupervised approaches, and implement them using Python.
Next, the book takes you through meta-learning techniques with recurrent neural networks (RNNs) and memory-augmented neural networks (MANNs), giving you the tools to solve complex problems. You will dive into cutting-edge algorithms such as MAML and Reptile, and learn how to apply metric learning approaches, prototypical networks, and embeddings in meta-learning.
In addition, you will master the art of learning to learn using gradient descent with Meta-SGD and explore task adaptation networks, few-shot learning, zero-shot learning, and unsupervised meta-learning. The book also covers meta-reinforcement learning, hierarchical meta-reinforcement learning, meta-inverse reinforcement learning, meta-imitation learning, curriculum learning, and exploration strategies in meta-learning.
Finally, you will discover domain adaptation, Bayesian meta-learning, graph neural networks in meta-learning, meta-transfer learning, self-taught meta-learning, lifelong learning with meta-learning, evolving meta-learners, meta-learning for optimization, and meta-learning for drug discovery.

Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live

Rapidgator
epimm.7z.html
DDownload
epimm.7z
UploadCloud
epimm.7z.html
Fileaxa
epimm.7z
Fikper
epimm.7z.html

Links are Interchangeable - Single Extraction
 

Users who are viewing this thread

Back
Top