The Cutting Edge of AI — Part 1
Notes from the day one of Exponential View talks and panels at CogX Festival, 11–12 June, London
Why the Future of Machine Learning is Tiny
I don’t know the details of what the future will bring, but I know ML on tiny, cheap battery powered chips is coming and will open the door for some amazing new applications!
AI could get 100 times more energy-efficient with IBM’s new artificial synapses
Copying the features of a neural network in silicon might make machine learning more usable on small devices like smartphones.
Data science vs. statistics: two cultures?
Data science is the business of learning from data, which is traditionally the business of statistics. Data science, however, is often understood as a broader, task-driven and computationally-oriented version of statistics. Both the term data science and the broader idea it conveys have origins in statistics and are a reaction to a narrower view of data analysis. Expanding upon the views of a number of statisticians, this paper encourages a big-tent view of data analysis. We examine how evolving approaches to modern data analysis relate to the existing discipline of statistics (e.g. exploratory analysis, machine learning, reproducibility, computation, communication and the role of theory). Finally, we discuss what these trends mean for the future of statistics by highlighting promising directions for communication, education and research.
Improving Language Understanding with Unsupervised Learning
Our approach is a combination of two existing ideas: transformers and unsupervised pre-training.
Machine Learning as a Service: Part 1
Sentiment analysis: 10 applications and 4 services
Physicist Max Tegmark on the promise and pitfalls of artificial intelligence
Tegmark recently spoke about AI’s potential — and its dangers — at IPsoft’s Digital Workforce Summit in New York City. After the keynote address, we spoke via phone about the challenges around AI, especially as they relate to autonomous weapons and defense systems like the Pentagon’s controversial Project Maven program.
The old story of AI is about human brains working against silicon brains. The new story of IA will be about human brains working with silicon brains. As it turns out, most of the world is the opposite of a chess game: Non-zero-sum — both players can win.
Why did the neural network cross the road?
Can a machine learning algorithm learn to tell a joke?
For the past 9 months I have been presenting versions of this talk to AI researchers, investors, politicians and policy makers. I felt it was time to share these ideas with a wider audience. Thanks to the Ditchley conference on Machine Learning in 2017 for giving me a fantastic platform to get early feedback on my ideas. Thanks also to Nathan Benaich, Jack Clark, Matt Clifford, Jeff Ding, Paul Graham, Michael Page, Nick Srnicek, Yancey Strickler and Michelle You for helpful conversations and feedback on this piece.