SONM for Machine Learning: TensorFlow/Keras RNN as Jupyter notebook on 6 GPU mining rig

in sonm •  7 years ago 

Jupyter is a modern tool for conducting data mining and machine learning experiments. It provides simple GUI for wiki notepad, inline program code snippets, and inline execution results. It transforms a remote mining rig into a powerful workplace for a data scientist. Ready to use solution with SONM!

We continue practical exercises with a 6 GPU rig, provided by Mining Union.

Today we selected a sample educational task for machine learning from Github, that just predicts Apple stock prices. It models Recurrent Neural Network using TensorFlow and Keras libraries. This project is presented as a Jupyter notebook.

We used:

Publicly available Machine Learning educational task hosted on the GitHub: https://github.com/nerush/aind2-rnn/blob/master/RNN_project.ipynb
Official Docker image with Jupyter and TensorFlow.
Keras added manually according to project dependencies.
Now to the screenshots. Jupyter notebook start page on SONM:

Jupyter notebook start page on SONM

Recurrent Neural Network project notebook start page:

Recurrent Neural Network project notebook start page

Recurrent Neural Network training execution on Jupyter on 6 GPU mining rig in SONM:

More examples of Jupyter notebook execution on 6 GPU mining rig in SONM:

Working on this article I would like to give thanks to:

  • Mining Union for provided equipment and for use case idea.
  • Yevgen Nerush for RNN code from https://github.com/nerush.
  • SONM team Eugene Manaev and Alexander Sigaev for preparing and testing this use case.



Igor Lebedev
Chief Technical Officer at SONM

Authors get paid when people like you upvote their post.
If you enjoyed what you read here, create your account today and start earning FREE STEEM!
Sort Order:  

Hi! I am a robot. I just upvoted you! I found similar content that readers might be interested in:
https://medium.com/@iolebedev/sonm-for-machine-learning-tensorflow-keras-rnn-as-jupyter-notebook-on-6-gpu-mining-rig-eaa647765209