SESSION + Live Q&A
How to Prevent Catastrophic Failure in Production ML Systems
AI systems can fail catastrophically and without warning, a characteristic not welcomed in the corporate environment. Martin will describe the unpredictable nature of artificial intelligence systems and how mastering a handful of engineering principles can mitigate the risk of failure. You’ll learn the kinds of errors artificial intelligence systems make, how to build systems that protect against common errors, and why evaluation can be much harder than it seems.
Speaker
Martin Goodson
Chief Scientist/CEO @EvolutionAI
Martin Goodson is the chief scientist and CEO of Evolution AI, which develops a platform for large-scale natural language processing. Martin has designed machine learning products that are in use at FTSE 100 and Fortune 500 companies like Dun & Bradstreet, Time Inc., Royal Bank of Scotland,...
Read moreFind Martin Goodson at:
From the same track
Test Driven Machine Learning
Software engineers are familiar with test driven development, but are not familiar with the statistical testing required in machine learning. Machine learning specialists are familiar with testing during the model building phase when they withhold data for cross-validation or final testing, but...
Detlef Nauck
Chief Research Scientist for Data Science @BTGroup and Visiting Professor @bournemouthuni
H2O's Driverless AI: An AI that creates AI
Through my kaggle journey to the top spot, I have noticed that many of the things I do as a data scientist can be automated. In fact automation is critical to achieve good scores and promote accountability, ensuring that common pitfalls in the modelling process are prevented. Through...
Marios Michailidis
Competitive Data Scientist @h2oai
Intuition & Use-Cases of Embeddings in NLP & Beyond
Machine Learning has achieved tremendous advancements in language tasks over the last few years (think of technologies like Google Duplex, Google Translate, Amazon Alexa). One of the fundamental concepts underpinning this progress is the concept of word embeddings (using something like the...
Jay Alammar
VC and Machine Learning Explainer @STVcapital
Understanding Deep Learning
No matter what your role is, it is really important to have some understanding of the models you’re working with. In last year's keynote, Rob Harrop talked about the importance of intuition in machine learning. This is a step towards that. You might already be using neural networks. How can...
Jessica Yung
Machine Learning blogger and entrepreneur, Self-Driving Car Engineer Scholar @nvidia
AI/Machine Learning Open Space
Shane Hastie
Director of Agile Learning Programs @ICAgile