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Computer Vision -- Kickoff Session -- Hybrid

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Hosted By
Ryan C. and Ted K.
Computer Vision -- Kickoff Session -- Hybrid

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Computer Vision

We are starting a new series on computer vision! This will be mix of content from the book Computer Vision: Algorithms and Applications by Richard Szeliski and the workshop series Practical Computer Vision by Antonio Rueda-Toicen. A PDF copy of the book is downloadable from the book website (https://szeliski.org/Book/), and the workshops are available on GitHub (https://github.com/andandandand/practical-computer-vision).

The kickoff session will introduce the format of the series, talk about the history of computer vision, and provide an opportunity to meet other learners. Everyone is welcome to join.

Come join us in person or online. Please make sure to read the instructions for joining the event below.

Agenda:

  • 12:00 - 1:30 pm -- Welcome and introduction
  • Time permitting -- Additional Q&A, networking

Links to notes/slides and videos of prior meetups are available on the SDML GitHub repo https://github.com/SanDiegoMachineLearning/bookclub

Location:
We are trying a new location in Rancho Bernardo**. Please come to the correct address!**

Please Note: There are two steps required to join the online meetup:

  • You must go to our Slack community and ask for the password for the meeting. Link to join is below.
  • You must have a Zoom login in order to join the event. A free Zoom account will work. If you get an error message joining the Zoom, please login to your account on the Zoom website then try again.
  • Use this Zoom link: https://us06web.zoom.us/j/82891977558

Community:
Join our slack channel for questions and discussion about what's new in ML:
https://join.slack.com/t/sdmachinelearning/shared_invite/zt-33z4811de-F_YKuCsQH1ev3TLSnQQfgQ

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