Torrent details for "Gollnick B. PyTorch. The Practical Guide 2026" 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:
29.8 MB
Info Hash:
75DD1164A9479AF9C1F3965676B47383B2C2AC71
Added By:
Added:
March 1, 2026, 5:15 a.m.
Stats:
|
(Last updated: March 1, 2026, 5:16 a.m.)
| File | Size |
|---|---|
| Gollnick B. PyTorch. The Practical Guide 2026.pdf | 29.8 MB |
Name
DL
Uploader
Size
S/L
Added
NOTE
SOURCE: Gollnick B. PyTorch. The Practical Guide 2026
-----------------------------------------------------------------------------------
COVER

-----------------------------------------------------------------------------------
MEDIAINFO
Textbook in PDF format
PyTorch is the framework for deep learning—so dive on in! Learn how to train, optimize, and deploy AI models with PyTorch by following practical exercises and example code. You’ll walk through using PyTorch for linear regression, classification, image processing, recommendation systems, autoencoders, graph neural networks, time series predictions, and language models—all the essentials. Then evaluate and deploy your models using key tools like MLflow, TensorBoard, and FastAPI. With information on fine-tuning your models using HuggingFace and reducing training time with PyTorch Lightning, this practical guide is the one you need!
- Train, tune, and deploy deep learning models with PyTorch
- Implement models for linear regression, classification, computer vision, recommendation systems, and more
- Work with PyTorch Lightning, TensorBoard, LangChain, and FastAPI
Theory
Get a thorough grounding in the concepts behind your models. Whether you’re looking to understand how a confusion matrix or ROC curve helps you evaluate a classification model or you want to grasp how recommendation system algorithms function, this guide has got you covered.
Practice
Move beyond theory with hands-on exercises and code. Create datasets for your linear regression models, use diffusion to create realistic images from noise, process sequential data with recurrent neural networks, and more.
Deployment and Evaluation
Monitor your training process, visualize metrics, and evaluate models with tools like MLflow and TensorBoard. Deploy models on-premise with FastAPI or in the cloud with Heroku
×


