OpenAI Scholars

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Summary

OpenAI Scholars is a mentorship and grant program for underrepresented groups in science and engineering to learn deep learning over a three-month period. Applications are open with rolling reviews starting March 14th and closing March 31st, 2018.

We’re providing 6–10 stipends and mentorship to individuals from underrepresented groups to study deep learning full-time for 3 months and open-source a project.
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# OpenAI Scholars Source: [https://openai.com/index/openai-scholars/](https://openai.com/index/openai-scholars/) You are eligible to apply if: - You are a member of an underrepresented group in science and engineering\. - You have US work authorization and are located in a US timezone\. - You understand this article on[calculus⁠\(opens in a new window\)](http://wiki.fast.ai/index.php/Calculus_for_Deep_Learning)and this article on[linear algebra⁠\(opens in a new window\)](https://www.quantstart.com/articles/matrix-algebra-linear-algebra-for-deep-learning-part-2)\. It’s fine if you have to brush up on these skills\. - You are comfortable programming in Python \(other languages are helpful, but you’ll spend the program writing in Python\)\. We’re open to all experience levels and backgrounds that meet the above criteria—it’s a common myth that you need a PhD to work in AI \(many OpenAI employees don’t have one\)\. We’ll use these criteria for selection: - **Impact on you**\. We want to understand why this grant and mentorship will help you achieve something you couldn’t otherwise\. - **Self\-motivation & communication**\. We’re looking for people who will work hard through those three months, and who will inspire others \(in the program and externally\) to endeavor to learn deep learning as well\. - **Technical skills**\. The stronger your technical background, the more time you’ll spend focusing on the deep learning itself\. Questions? Email[scholars@openai\.com⁠](mailto:[email protected])\. Applications are open starting immediately, and starting March 14th we will begin reviewing applications, contacting people for follow\-up, and filling positions on a rolling basis\. Applications will close no later than 11:59pm PT on March 31st, with decision sent no later than April 16th\.[Apply⁠\(opens in a new window\)](https://jobs.lever.co/openai/2153959a-77bf-443e-bc07-e36da36c98ce/apply)now\! *Update: Applications for the Summer 2018 Scholars cohort are now closed\. We will be reaching out to applicants regarding their admissions status by April 16th\.*

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