polyaxon - An open source platform for reproducible machine learning and deep learning on kubernetes

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Welcome to Polyaxon, a platform for building, training, and monitoring large scale deep learning applications. Polyaxon deploys into any data center, cloud provider, or can be hosted and managed by Polyaxon, and it supports all the major deep learning frameworks such as Tensorflow, MXNet, Caffe, Torch, etc.

https://polyaxon.com
https://github.com/polyaxon/polyaxon

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