Pipeline for augmenting sparse data for genetic optimisation
During data collection for genetic optimisation, available data may be broad instead of specific. Training a neural network on broad data can enable data collection for a specific search space at increased resolution. This pipeline suggests a method for training a model on a broad dataset, and applying it to generate data at a desired resolution for a specific search space.
Read about this project in further detail at https://cutwell.github.io/neural-network-augmentation/.
- Follow
train_model.ipynb
to train a regression model. - View
run_model.ipynb
for ways to apply the regression model to predict wind data for the search space.