PLAY PODCASTS
Organizational Models for Data Scientists

Organizational Models for Data Scientists

When data science is hard, sometimes it’s because…

Linear Digressions

August 25, 201923m 9s

Audio is streamed directly from the publisher (feeds.soundcloud.com) as published in their RSS feed. Play Podcasts does not host this file. Rights-holders can request removal through the copyright & takedown page.

Show Notes

When data science is hard, sometimes it’s because the algorithms aren’t converging or the data is messy, and sometimes it’s because of organizational or business issues: the data scientists aren’t positioned correctly to bring value to their organization. Maybe they don’t know what problems to work on, or they build solutions to those problems but nobody uses what they build. A lot of this can be traced back to the way the team is organized, and (relatedly) how it interacts with the rest of the organization, which is what we tackle in this issue. There are lots of options about how to organize your data science team, each of which has strengths and weaknesses, and Pardis Noorzad wrote a great blog post recently that got us talking. Relevant links: https://medium.com/swlh/models-for-integrating-data-science-teams-within-organizations-7c5afa032ebd

Topics

datasciencemachinelearninglineardigressions