| CARVIEW |
Select Language
HTTP/2 200
server: GitHub.com
content-type: text/html; charset=utf-8
last-modified: Thu, 31 Oct 2024 10:29:24 GMT
access-control-allow-origin: *
strict-transport-security: max-age=31556952
etag: W/"67235c04-18af"
expires: Mon, 29 Dec 2025 05:51:13 GMT
cache-control: max-age=600
content-encoding: gzip
x-proxy-cache: MISS
x-github-request-id: D802:2D8B9D:851BEA:95A553:69521479
accept-ranges: bytes
age: 0
date: Mon, 29 Dec 2025 05:41:14 GMT
via: 1.1 varnish
x-served-by: cache-bom-vanm7210082-BOM
x-cache: MISS
x-cache-hits: 0
x-timer: S1766986874.588192,VS0,VE455
vary: Accept-Encoding
x-fastly-request-id: cfe995417deb8ac7496b0a6b7a2994e2cba11c41
content-length: 2318
Deep Learning for Computer Vision: Fundamentals and Applications
![]() |
Weizmann Institute of ScienceDeep Learning for Computer Vision:Fundamentals and Applications |
![]() |
| [Home | Schedule | Moodle] | ||
![]() |
||
Course Overview
This course covers the fundamentals of deep-learning based methodologies in area of computer vision. Topics include: core deep learning algorithms (e.g., convolutional neural networks, transformers, optimization, back-propagation), and recent advances in deep learning for various visual tasks. The course provides hands-on experience with deep learning for computer vision: implementing deep neural networks and their components from scratch, tackling real world tasks in computer vision by desigining, training, and debugging deep neural networks using leading mainly PyTorch.
Announcements
- We encourage students to take "Introduction to Computer Vision" and "Basic Topics I" in conjuction with this course.
- Make sure you have completed all the prerequisites.
Course Information
The template of this website is based on CSAIL MIT's Advanced Computer Vision course





