PyTorch Pocket Reference: Building and Deploying Deep Learning Models
- 35
- 0
- 100+ Sold in the past week
- 💥 300+ people added this to wishlists
- ⏳ Limited quantity — order now
- ⭐️ Trusted by shoppers
Discover the power of deep learning with the PyTorch Pocket Reference. This invaluable resource is essential for beginners and seasoned practitioners alike, offering a swift and effective overview of the PyTorch framework. It provides a comprehensive guide through not only the building of deep learning models but also deploying them efficiently. Packed with practical tips, real-world examples, and concise information, it acts as a perfect companion for anyone looking to harness the capabilities...
Show moreDiscover the power of deep learning with the PyTorch Pocket Reference. This invaluable resource is essential for beginners and seasoned practitioners alike, offering a swift and effective overview of the PyTorch framework. It provides a comprehensive guide through not only the building of deep learning models but also deploying them efficiently. Packed with practical tips, real-world examples, and concise information, it acts as a perfect companion for anyone looking to harness the capabilities of PyTorch.
Whether you're developing insightful ML applications or starting your journey into artificial intelligence, this reference book equips you with the right tools to succeed. The innovative, step-by-step instructions ensure clarity and ease of understanding, catering to a diverse range of readers, from students to professional developers. Unlock the potential of machine learning today with this indispensable guide!
Less| manufacturer | O'Reilly Media |
|---|---|
| height | 7 |
| weight | 0.5 |
| width | 0.65 |
| length | 4.25 |
| languages | [ Published Value = English ] [ Original Language Value = English ] [ Unknown Value = English ] |
| productGroup | Book |
The book focuses on building and deploying deep learning models using the PyTorch framework.
Yes, it is designed to be accessible for both beginners and those with prior experience in deep learning.
Absolutely! It includes practical tips and examples that relate to real-world ML applications.