Главная
Study mode:
on
1
Introduction
2
What is PyTorch
3
What is a multidimensional array
4
Accelerator support
5
Automatic differentiation
6
Polymorphic code
7
Stochastic gradient descent
8
Hierarchical structure
9
Implementation
10
Model Study
11
Why use PyTorch
12
Benefits of PyTorch
13
The real question
14
Statically typed language
15
Inheritance
16
Exporting
17
Mobile Apps
18
Archives
19
Packages
20
Performance
21
Thank you
22
Questions Answers
Description:
Explore the world of PyTorch, a modern library for machine learning, in this comprehensive talk by Adam Paszke, co-author and maintainer of PyTorch. Delve into the underlying ideas of the library and discover how it can be applied across various machine learning scenarios, from research to production. Learn about PyTorch's roots in research applications and its recent focus on efficient inference functionality. Gain insights into multidimensional arrays, accelerator support, automatic differentiation, polymorphic code, and stochastic gradient descent. Understand the benefits of using PyTorch, including its hierarchical structure, implementation details, and performance advantages. Discover how PyTorch addresses the needs of both researchers and industry professionals, offering solutions for mobile apps, archives, and packages. Join this informative session to enhance your understanding of this essential tool in the machine learning ecosystem.

PyTorch - A Modern Library for Machine Learning with Adam Paszke

Association for Computing Machinery (ACM)
Add to list