
Adversarial Examples
Even as we rely more and more on machine learning algorithms to help with everyday decision-making, we're learning more and more about how they're frighteningly easy to fool sometimes. Today we have ...
28 Aug 201716min

Jupyter Notebooks
This week's episode is just in time for JupyterCon in NYC, August 22-25... Jupyter notebooks are probably familiar to a lot of data nerds out there as a great open-source tool for exploring data, doi...
21 Aug 201715min

Curing Cancer with Machine Learning is Super Hard
Today, a dispatch on what can go wrong when machine learning hype outpaces reality: a high-profile partnership between IBM Watson and MD Anderson Cancer Center has recently hit the rocks as it turns o...
14 Aug 201719min

KL Divergence
Kullback Leibler divergence, or KL divergence, is a measure of information loss when you try to approximate one distribution with another distribution. It comes to us originally from information theo...
7 Aug 201725min

Sabermetrics
It's moneyball time! SABR (the Society for American Baseball Research) is the world's largest organization of statistics-minded baseball enthusiasts, who are constantly applying the craft of scientif...
31 Jul 201725min

What Data Scientists Can Learn from Software Engineers
We're back again with friend of the pod Walt, former software engineer extraordinaire and current data scientist extraordinaire, to talk about some best practices from software engineering that are re...
24 Jul 201723min

Software Engineering to Data Science
Data scientists and software engineers often work side by side, building out and scaling technical products and services that are data-heavy but also require a lot of software engineering to build and...
17 Jul 201719min

Re-Release: Fighting Cholera with Data, 1854
This episode was first released in November 2014. In the 1850s, there were a lot of things we didn’t know yet: how to create an airplane, how to split an atom, or how to control the spread of a commo...
10 Jul 201712min




















