CRU: Neural Networks, Open Baseband, RISC-V, and More - AB Open

#artificialintelligence 

It's been a strong fortnight for machine intelligence fans, starting with Arm's Robert Elliot and Mark O'Conner publishing a white paper on the company's Arm NN machine learning platform and its optimisations for use on low-power embedded devices. "We expect machine learning to become a natural part of programming environments, with tiny embedded neural networks being part of program execution," the pair explain of the inspiration behind Arm NN. "To prepare for this, we've developed a low-overhead inference engine with the ability to import a file produced by a handful of machine learning frameworks. This supports a'write once, deploy many' approach to development, with the same framework able to target the Cortex-A class cores used in high-end mobile as well as the Cortex-M class cores used in processing environments with very small memories. We've spent significant effort to make sure that good performance is achieved on all of these processors It enables efficient translation of existing neural network frameworks, including TensorFlow and Caffe, allowing them to run efficiently, without modification, across Arm processing platforms. The inference engine can be distributed to different devices while taking advantage of the key optimizations of each."

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