Torrent details for "Stovari A. Mathematical Foundations Guide to Neural Networks...2…" Log in to bookmark
Controls:
×
Report Torrent
Please select a reason for reporting this torrent:
Your report will be reviewed by our moderation team.
×
Report Information
Loading report information...
This torrent has been reported 0 times.
Report Summary:
| User | Reason | Date |
|---|
Failed to load report information.
×
Success
Your report has been submitted successfully.
Checked by:
Category:
Language:
None
Total Size:
13.0 MB
Info Hash:
B090461148C2269072C40280A8F8B06B0803AAF6
Added By:
Added:
May 29, 2025, 11:03 a.m.
Stats:
|
(Last updated: May 29, 2025, 11:04 a.m.)
| File | Size |
|---|---|
| Stovari A. Mathematical Foundations Guide to Neural Networks...2025.pdf | 13.0 MB |
Name
DL
Uploader
Size
S/L
Added
-
13.0 MB
[78
/
21]
2025-05-29
| Uploaded by andryold1 | Size 13.0 MB | Health [ 78 /21 ] | Added 2025-05-29 |
NOTE
SOURCE: Stovari A. Mathematical Foundations Guide to Neural Networks...2025
-----------------------------------------------------------------------------------
COVER

-----------------------------------------------------------------------------------
MEDIAINFO
Textbook in PDF format
With clear explanations and detailed insights, in 170+ pages, you will learn the inner workings of backpropagation, convolutional neural networks (CNNs), recurrent neural networks (RNNs), and long short-term memory networks (LSTMs). The book also dives into advanced techniques such as dropout, autoencoders, and attention layers that are transforming the AI landscape. Dive deep into the theory behind each model, understand their applications, and master the mathematics that power modern Machine Learning.
Key Topics Covered
The theoretical foundations of Neural Networks
Backpropagation and optimization techniques
Convolutional Neural Networks (CNNs) for image recognition and more
Recurrent Neural Networks (RNNs) and their sequential data processing power
Long Short-Term Memory (LSTM) networks for handling long-term dependencies
Autoencoders for dimensionality reduction and feature learning
Dropout and regularization techniques for robust models
Attention mechanisms and transformer models revolutionizing NLP
Advanced Deep Learning architectures and real-world applications
Mathematical principles behind Deep Learning algorithms
This book serves as both an academic reference and a practical guide.
Preface
Matrix algebra and numerical methods
Interpolation
Iterations and stability review
Fixed Point Iterative Methods
Iterative solving of systems of linear equations
Optimization
Numerical integration
Numerical differentiation and solving differential equations
×


