This week in AI & Machine Learning: Computer vision labeling, ML for better communities, fastai, PyTorch Developer Day, tinyML, and more!
Artificial Intelligence News:
Read about how Blizzard uses machine learning to help tackle the problem with toxicity in the incredibly popular game, Overwatch. Toxic behavior in online games and communities is nothing new, but the approach of using ML to help verify reports shows a huge potential on creating better communities. Do you feel like this is a good approach, or will it create new problems?
In this “machine learning fail”, the AI camera is trained to track the soccer ball during streams to always keep a good view for the audience but it frequently confuses a bald head for the ball and tracks it instead of the ball.
Fortunately in this case, the failure just ended up being funny, but it's a great illustration of how important it is to have the proper data in your training dataset to account for objects that may be encountered during a live run of the model. Try to think of edge cases like this that might happen before you deploy your computer vision model.
Learn how TinyML is revolutionizing the way AI can be run--not just in the cloud or on edge devices, but virtually anywhere! The ability to run machine learning on affordable microcontrollers that can fit into almost any device will certainly open up many more opportunities for fields and devices to harness the power of AI.
Check out this unique approach taken by researchers at MIT to potentially identify COVID-19 infections using machine learning and the audio recording of forced coughs.
Version 2.1.3 of fastai is out, bringing bug fixes and some Pytorch 1.7 support.
Learn how to incorporate April Tags into your computer vision projects.
Here at Sixgill, we’ve officially launched our data annotation tool that makes it easier to label your data for computer vision. Check it out and sign up for a 30-day free trial to try out the features that set it apart from other labeling solutions.
Amazon Web Services (AWS) launches new very beefy P4 instances with impressive specs.
Charles Isbell is the Dean of the College of Computing at Georgia Tech. In this conversation, he provides his thoughts on interactive artificial intelligence, machine learning, computing, music, and much more.
Learn about the intersection of machine learning and finance, natural language processing with textual data of earnings, data pipelines, and more.
Some of the interesting machine learning papers published this week.