Overview
From the first-hand experience of over 100 academic data science projects, this guide provides clear recommendations for organizations learning how to scope data science for social good projects. This resource outlines the potential pitfalls of social impact and data science collaborations and the critical first steps for setting up a project for success.
Do you have feedback on this resource?
Thank you for your feedback as we strive to curate and publish resources to help social impact organizations succeed with data.
Explore More
Related Guides & Resources
This guide provides organizations with a framework to identify data-scienceable problems as a key first step in project scoping.
This resource provides fundamentals for practice and teams as guidance for data scientists to design and develop AI ethically.
This guide provides considerations and best practices for archiving and preserving data following the close of a project.