Building a high-throughput data science machine

Mechanics: forces, gears, axles and dynamics, pulleys. (source: Wellcome on Wikimedia Commons).Scaling is hard. Scaling data science is extra hard. What does it take to run a sophisticated data science organization? What are some of the things that need to be on your mind as you scale to a repeatable, high-throughput data science machine? Erik Andrejko, VP of science at The Climate Corporation, has spent a number of years focused on this problem, building and growing multi-disciplinary data science teams. In this post, he covers what he thinks is critical to continue building world-class teams for his organization. I recently sat down with Andrejko to discuss the practice of data science, the scaling of organizations, and key components and best practices of a data science project. We also talked about…

Link to Full Article: Building a high-throughput data science machine

Pin It on Pinterest

Share This

Join Our Newsletter

Sign up to our mailing list to receive the latest news and updates about and the Informed.AI Network of AI related websites which includes Events.AI, Neurons.AI, Awards.AI, and Vocation.AI

You have Successfully Subscribed!