Stage-based scientific workflows for miscellaneous deep learning experiments
Project description
Flowws Modules for Machine Learning Experiments with Keras
flowws-keras-experimental
is a set of
flowws modules to train machine
learning models using tensorflow and keras. It contains basic modules
to perform common tasks such as loading data and specifying model
architectures.
Installation
Install flowws-keras-experimental
from PyPI:
pip install flowws-keras-experimental
Alternatively, install from source:
pip install git+https://github.com/klarh/flowws-keras-experimental.git#egg=flowws-keras-experimental
API Documentation
Browse more detailed documentation online or build the sphinx documentation from source:
git clone https://github.com/klarh/flowws-keras-experimental
cd flowws-keras-experimental/doc
pip install -r requirements.txt
make html
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