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https://github.com/brohrer/academic_advisory
Collected opinions and advice for academic programs focused on data science skills.
https://github.com/brohrer/academic_advisory
Last synced: 9 days ago
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Collected opinions and advice for academic programs focused on data science skills.
- Host: GitHub
- URL: https://github.com/brohrer/academic_advisory
- Owner: brohrer
- License: other
- Created: 2018-03-21T10:06:09.000Z (over 6 years ago)
- Default Branch: main
- Last Pushed: 2020-06-12T22:08:04.000Z (over 4 years ago)
- Last Synced: 2024-08-02T14:10:37.129Z (3 months ago)
- Size: 813 KB
- Stars: 444
- Watchers: 48
- Forks: 75
- Open Issues: 1
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Metadata Files:
- Readme: README.md
- License: LICENSE.md
Awesome Lists containing this project
README
# Industry recommendations for academic data science programs
[List of authors](authors.md)
As industry data scientists, we are grateful for the growing number of academic programs in the field. It is a challenge to find enough candidates to fill out our teams and solve the problems we face. We welcome new entrants to the field, whether it is their first career or a second, and would like to help them get the best preparation possible.
Several of us have been invited to participate on the advisory boards of academic data science programs, and we want to share our collected insights as a resource to such programs anywhere.
Two of the most common questions are indirectly about how to best prepare students: [**What precisely do industry data scientists do?**](what_DS_do.md) and [**What makes someone a good data scientist?**](strong_DS_skills.md)
We've attempted to answer both of these in a way that can inform how you construct your degree program and your course material.
We address the third most common question as well: [**How can we partner with companies?**](partnering.md)## A work in progress
It is the authors' hope that this serves as a summary of an ongoing conversation.
If you are part of an academic data science program and have other questions you would like to see answered here,
reach out to Brandon Rohrer ([email protected]) or one of the other authors.
If you work as a data scientist and would like to contribute, [we welcome your insights](author_q_and_a.md).