Putting Deep Learning into Production

QR Code Link to This Post Training modern deepnets can take an inordinate amount of time even with the best GPU hardware available. Inception-3 on ImageNet 1000 using 8 NVIDIA Tesla K40s takes about 2 weeks (Google Research Blog).This conference (http://conf.startup.ml) will focus on some best practices for deploying deep learning models into production. Speakers will discuss topics like:Ways to speed up training time Using pre-trained models Transferring knowledge from a different task Reducing model size to improve prediction latency Fitting models onto devices Speakers include:Andres Rodriguez — Intel Nervana Illia Polosukhin — Google / Tensorflow Contributor Abhradeep Guha Thakurta — University of California Santa Cruz Chris Fregly — PipelineIO Alex Miller — YelpRegister by 12/31/2016 using code “Learning17” and save 30%http://conf.startup.ml


Link to Full Article: Putting Deep Learning into Production

Pin It on Pinterest

Share This

Join Our Newsletter

Sign up to our mailing list to receive the latest news and updates about homeAI.info and the Informed.AI Network of AI related websites which includes Events.AI, Neurons.AI, Awards.AI, and Vocation.AI

You have Successfully Subscribed!