Indaba𝕏 Roadshow rewards
The goal of any competition is to win. However, the purpose of a competition is to push ourselves and each other to innovate further, achieve new levels of insights, and create opportunities for both individual and collective achievement.
Here, the Deep Learning Indaba𝕏 South Africa (“Indaba𝕏”) seeks to bring out the best and brightest minds in machine learning within South Africa to share their achievements, community engagements, and to build solutions to an industry problem (in the form of a hackathon).

- Coolest Coder (R10,000) - rewards outstanding code-based projects or contributions to open-source code; an emphasis lies on best practices in software development and innovative solutions

- Most Rigorous Researcher (R10,000) - rewards outstanding contributions or a single outstanding contribution to machine learning research; a focus on impact for South Africa will be considered favourably

- Extraordinary Engagement (R10,000) - rewards extraordinary efforts in strengthening and growing the South African machine learning community

- Persistent Passion (R10,000) - this is an open category for anyone who does not fit the above categories, but still deserves to be acknowledged for their diligent and hardworking pursue of machine learning, especially under adversary circumstances

If you'd like to submit to multiple competitions, please submit individual responses; there is no limit to the number of submissions.
You will receive a link in your email inbox for each submission that you can edit before the deadline!

Competition rules:
Sign in to Google to save your progress. Learn more
Email *
What is the name of the person you're nominating? *
Can be yourself
What is the email of the person you're nominating, if not yourself?
The email will be used to notify them if they've won
For which competition would you like to submit an entry? *
Clear form
Never submit passwords through Google Forms.
This content is neither created nor endorsed by Google. Report Abuse - Terms of Service - Privacy Policy