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What does accessible AI mean for people who want to start experimenting with its capabilities in data use cases?
In this crossover episode, we flashback to some of our favorite moments from Alter Everything and Data Science Mixer.
What's the best way to practice predictive analytics? Build a model to predict something you're passionate about!
Alberto Cairo, internationally recognized expert on data visualization, joins a special episode of our Data Science Mixer podcast. Tune in to Data Science Mixer on July 13 for an e...
Tune in to this clip from our second episode of the Data Science Mixer Podcast, featuring Alex Engler, Brookings Institution research fellow and data scientist, as he chats with us...
Tune in to our debut episode of the Data Science Mixer Podcast, featuring Margot Gerritsen, Stanford professor and a founder of Women in Data Science. Subscribe to Data Science Mix...
Calling all data scientists! We launched a new podcast called Data Science Mixer, where we'll serve up data science knowledge with a fun, happy hour twist.
In this bonus episode of the Data [in the] Sandbox mini-series, Maddie calls Susan because she’s creeped out when her TV starts making personalized TV show recommendations.
When it comes to innovation and enablement at Alteryx, we have a “can’t stop, won’t stop” attitude. Guests Max Kanter and Clara Duffy live and breathe this frame of mind as they pu...
How can spatial analysis unlock insights for your local food bank? We sat down with Chris Williams, CTO at Precision Analytics Group, to learn more about the current state of food...
Today we dive into concepts of Interpretability and Fairness through the lens of Causal Inference. This episode builds on concepts discussed in Episode 44: Causality.
Today we will be “dipping a toe” into the pool of causal inference.