podcast

January 23, 2019

Episode 53: Estimating uncertainty with neural networks

Have you ever wanted to get an estimate of the uncertainty of your neural network? Clearly Bayesian modelling provides a solid framework to estimate uncertainty by design. However, there are many realistic cases in which Bayesian sampling is not really a...
January 17, 2019

Episode 52: why do machine learning models fail? [RB]

The success of a machine learning model depends on several factors and events. True generalization to data that the model has never seen before is more a chimera than a reality. But under specific conditions a well trained machine learning model can gene...
December 26, 2018

Episode 50: Decentralized machine learning in the data marketplace

In this episode I briefly explain how two massive technologies have been merged in 2018 (work in progress :) - one providing secure machine learning on isolated data, the other implementing a decentralized data marketplace. In this episode I explain: How...
December 19, 2018

Episode 49: The promises of Artificial Intelligence

It's always good to put in perspective all the findings in AI, in order to clear some of the most common misunderstandings and promises. In this episode I make a list of some of the most misleading statements about what artificial intelligence can achiev...
October 21, 2018

Episode 48: Coffee, Machine Learning and Blockchain

In this episode - which I advise to consume at night, in a quite place - I speak about private machine learning and blockchain, while I sip a cup of coffee in my home office.There are several reasons why I believe we should start thinking about private m...
September 11, 2018

Episode 47: Are you ready for AI winter? [Rebroadcast]

Today I am having a conversation with Filip Piękniewski, researcher working on computer vision and AI at Koh Young Research America. His adventure with AI started in the 90s and since then a long list of experiences at the intersection of computer scienc...
September 4, 2018

Episode 46: why do machine learning models fail? (Part 2)

In this episode I continue the conversation from the previous one, about failing machine learning models. When data scientists have access to the distributions of training and testing datasets it becomes relatively easy to assess if a model will perform ...
August 28, 2018

Episode 45: why do machine learning models fail?

The success of a machine learning model depends on several factors and events. True generalization to data that the model has never seen before is more a chimera than a reality. But under specific conditions a well trained machine learning model can gene...
Episode 45: why do machine learning models fail?
Our website uses cookies to give you the most relevant experience by remembering your preferences and repeat visits. By clicking “Accept,” you consent to use ALL the cookies.
Read more