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Keras char rnn trainer for ICO whitepapers ready to go on Google ML Engine

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smithclay/char-embeddings-ml-engine

 
 

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char-embeddings on Google ML Engine

char-embeddings is a repository by Max Woolf containing 300D character embeddings derived from the GloVe 840B/300D dataset, and uses these embeddings to train a deep learning model to generate text using Keras. The generation and model construction is heavily modified after the automatic text generation Keras example by François Chollet.

This repository takes this work, replaces references to specific input files with variables, and refactors it to run as a trainer on Google's ML Engine with a GPU instance.

Usage: Training

Follow Google's quickstart guides to get your ML Engine up and running. Ensure you can successfully run a training job before continuing here!

You can run the trainer locally with:

gcloud ml-engine local train --module-name trainer.text_generator_keras --package-path ./trainer -- --train-file=input.txt --job-dir=tmp

Once you have this working correctly, proceed to upload your training text (input.txt) to Google Storage. To setup the Cloud ML Environment from scatch, there's see setup.sh which uses gsutil to create the nessecary cloud storage buckets and uploads nessecary training data.

Next, copy the gcloud.remote.run.sh.example and change the exports to point to your bucket, region, training file etc.

Execute your script, and you should see a job appear on ML Engine, with data created in your bucket as iterations complete.

Usage: Generating Text

After the training completes (a few hours) there will be a model file (model.hdf5) in the storage bucket. Download this model file to the output/ directory and run:

    python generate_text.py

This script will output text trained from ICO whitepapers. Next step: profit!

Requirements

keras, tensorflow, h5py, scikit-learn, gcloud

License

MIT

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