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IBM CodeNet: Artificial Intelligence That Can Program Computers And Solve A $100 Billion Legacy Code Problem

Solving the efficiency problem at the heart of AI

IBM compiles dataset to teach software how software is made: 14m code samples, half of which actually work

Big Blue hopes to create the ImageNet of training resources for AI-powered programming tools Share Copy Think IBM has assembled a massive silo of source code for teaching machine-learning programs about programming. Dubbed Project CodeNet, the set contains, we re told, 14 million code samples totaling 500 million lines in more than 55 programming languages, from Java, C, and Go to COBOL, Pascal, and FORTRAN. Truth be told, more than three-quarters of it all is in C++ and Python. This source code wasn t taken from production nor in-development applications: it was collected from entries submitted to two programming contests organized in Japan: Aizu and AtCoder. In these contests, competitors are challenged to write the necessary code to turn a given set of inputs into a set of desired outputs. About half of the samples work as expected, and the rest are labeled as either wrong solutions, non-building, or buggy.

This new robotics challenge could bring us closer to human-level AI

This new robotics challenge could bring us closer to human-level AI Pushing the boundaries of embodied AI Ben Dickson is the founder of TechTalks. He writes regularly about business, technology and politics. Follow him on Twitter and Facebook (show all) Ben Dickson is the founder of TechTalks. He writes regularly about business, technology and politics. Follow him on Twitter and Facebook Since the early decades of artificial intelligence, humanoid robots have been a staple of sci-fi books, movies, and cartoons. Yet, after decades of research and development in AI, we still have nothing that comes close to the Jetsons’ Rosey the Robot.

Q&A: Vivienne Sze on crossing the hardware-software divide for efficient artificial intelligence | MIT News

Credits: Image: Lillie Paquette/MIT School of Engineering Previous image Next image Not so long ago, watching a movie on a smartphone seemed impossible. Vivienne Sze was a graduate student at MIT at the time, in the mid 2000s, and she was drawn to the challenge of compressing video to keep image quality high without draining the phone’s battery. The solution she hit upon called for co-designing energy-efficient circuits with energy-efficient algorithms. Sze would go on to be part of the team that won an Engineering Emmy Award for developing the video compression standards still in use today. Now an associate professor in MIT’s Department of Electrical Engineering and Computer Science, Sze has set her sights on a new milestone: bringing artificial intelligence applications to smartphones and tiny robots.

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