federated-ml-health
This colab implements side-by-side comparison of models and their interpretations trained in a centralized machine learning (a.k.a. classical) way vs. the federated (distributed) way. Specifically, we concentrate on binary inference problems and evaluate several approaches:
- regression models trained in a traditional way using various optimizers on centralized datasets
- equivalent models expressed in tensorflow and trained using available optimizers therein
- equivalent models trained in tensorflow_federated where each device keeps its data local and private
- all of the above with differential privacy added
This is not an officially supported Google product.