Programming PyTorch for Deep Learning (Creating and Deploying Deep Learning Applications)

ISBN: 9781492045359
List Price $55.99 Up to % OFF

FREE Ground Shipping in US

Expect Delivery in 4-10 weekdays

Brand New Books

Lock in your price today! Prices tomorrow are NOT GUARANTEED.
$55.99
List Price
Your Price Per Book
Discount
Total for copies: Save

Found a lower price on another site? Request a Price Match

Minimum Order: 25 copies per title

true
Select QTYQuantity:
Quantity
Price
Discount

Minimum Order $100 / 25 copies per title, no exceptions

Not ready to place your order?

Prices change daily. Order now!

Not ready to place your order?

Request a quote

$55.99
SKU:
9781492045359
Availability:
979.75
Minimum Purchase:
25 units
Bulk Pricing:
Buy in bulk and save

Minimum Order: 25 copies per title

true

Overview

Deep learning is changing everything. This machine-learning method has already surpassed traditional computer vision techniques, and the same is happening with NLP. If you're looking to bring deep learning into your domain, this practical book will bring you up to speed on key concepts using Facebook's PyTorch framework.

Once author Ian Pointer helps you set up PyTorch on a cloud-based environment, you'll learn how use the framework to create neural architectures for performing operations on images, sound, text, and other types of data. By the end of the book, you'll be able to create neural networks and train them on multiple types of data.

  • Learn how to deploy deep learning models to production
  • Explore PyTorch use cases in companies other than Facebook
  • Learn how to apply transfer learning to images
  • Apply cutting-edge NLP techniques using a model trained on Wikipedia

This book title, Programming PyTorch for Deep Learning (Creating and Deploying Deep Learning Applications), ISBN: 9781492045359, by Ian Pointer, published by O'Reilly Media (November 4, 2019) is available in paperback. Our minimum order quantity is 25 copies. All standard bulk book orders ship FREE in the continental USA and delivered in 4-10 business days.

Unlike Amazon and other retailers who may also offer Programming PyTorch for Deep Learning (Creating and Deploying Deep Learning Applications) books on their website, we specialize in large quantities and provide personal service, from trusted, experienced, friendly people in Portland, Oregon. We offer a Price Match Guarantee, and QuickQuote form, to make purchasing quick and easy.

Prefer to work with a human being when you order Programming PyTorch for Deep Learning (Creating and Deploying Deep Learning Applications) books in bulk? Our Book Specialists are standing by Monday-Friday 8-5 PST, ready to help!

Product Details

Author:
Ian Pointer
Format:
Paperback
Pages:
217
Publisher:
O'Reilly Media (November 4, 2019)
Language:
English
ISBN-13:
9781492045359
ISBN-10:
1492045357
Dimensions:
7" x 9.19"
File:
TWO RIVERS-PERSEUS-Metadata_Only_Perseus_Distribution_Customer_Group_Metadata_20241002160929-20241003.xml
Folder:
TWO RIVERS
List Price:
$55.99
As low as:
$31.91
Publisher Identifier:
P-PER
Discount Code:
C
Case Pack:
18
Country of Origin:
United States
Pub Discount:
60
Weight:
12.64oz

Ordering Details

  • Product Availability: Typically, all books are in stock and ready to ship. If a title becomes unavailable unexpectedly, you will be contacted with 24 business hours.
  • Standard Shipping: FREE Shipping via ground transportation within the continental United States.
  • Estimated Delivery: Most orders deliver within 4-10 business days from order date (excluding weekends and holidays). Orders shipping to Alaska or Hawaii should allow a minimum of 3 weeks for delivery.
  • Rush Shipping: Deliver in 5 business days from order date (excluding weekends and holidays).
  • Important Note: Books ship from various warehouses and may receive multiple cartons to fill the complete order. Do not assume your order is shipping from Portland, OR.
  • Payment Terms: Visa, MC, Amex, PayPal, Purchase Orders and P-Cards can be used to purchase online. Check and wire-transfer payments are available offline through Customer Service