cover of episode 617: Causal Modeling and Sequence Data

617: Causal Modeling and Sequence Data

2022/10/11
logo of podcast Super Data Science: ML & AI Podcast with Jon Krohn

Super Data Science: ML & AI Podcast with Jon Krohn

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Shownotes Transcript

Dr. Sean Taylor, Co-Founder and Chief Scientist of Motif Analytics, joins Jon Krohn this week for yet another perspective on causal modeling. Tune in for a great conversation that covers large-scale causal experimentation, Information Systems, Bayesian parameter searches, and more.

This episode is brought to you by Datalore (datalore.online/SDS)), the collaborative data science platform, and by Zencastr (zen.ai/sds)), the easiest way to make high-quality podcasts. Interested in sponsoring a SuperDataScience Podcast episode? Visit JonKrohn.com/podcast) for sponsorship information.

In this episode you will learn:• Sean on his new venture, Motif Analytics [4:23]• The relationship between causality and sequence analytics [15:26]• Sean's data science work at Lyft [22:21]• The key investments for large-scale causal experimentation [27:25]• Why and when is causal modeling helpful [32:34]• Causal modeling tools and recommendations [36:52]• Facebook's Prophet automation tool for forecasting [40:02]• What Sean looks for in data science hires [50:57]• Sean on his PhD in Information Systems [53:34]

Additional materials: www.superdatascience.com/617)