Responsibly Deploy AI in Production with Anupam Datta
Listen now
Description
Once a machine learning model is trained and validated, it often feels like a major milestone has been achieved.  In reality, it’s more like the first lap in a relay race.  Deploying ML to production bears many similarities to a typical software release process, but brings several novel challenges like failing to generalize as expected
More Episodes
If you haven’t encountered a data quality problem, then you haven’t yet worked on a large enough project.  Invariably, a gap exists between the state of raw data and what an analyst or machine learning engineer needs to solve their problem.  Many organizations needing to automate data preparation...
Published 12/21/21
Published 12/21/21
As the internet has grown, increasingly, we are consumers of services provided by corporations rather than owners and operators of our own systems.  To many, this trend towards centralization is antithetical to the spirit of a free and open internet. Urbit is a new operating system and...
Published 12/18/21