Google is introducing a new way for its AI-powered services to improve as people use them.
The tech giant is testing whether its mobile services could use an approach called Federated Learning to refine their underlying machine-learning models.
For each Google service, a machine-learning model is downloaded to a mobile device. Federated Learning allows these models to improve by learning from data on the phone, and then to summarize any local changes as a small update. This update is then encrypted and sent back to the Google cloud, where it is averaged with other user updates to improve the shared backend model.
The continual refinement of the machine learning model stored on the phone benefits the end user, as improvements no longer depend solely on the improved machine learning models being downloaded to their phone.
Google says the approach also has the advantage of improving privacy, as all the training data remains on the device, and no individual updates are stored in the cloud. Updates will only be decrypted and averaged with those from other phones once hundreds or thousands of similar updates have been gathered.
"And this approach has another immediate benefit: in addition to providing an update to the shared model, the improved model on your phone can also be used immediately, powering experiences personalized by the way you use your phone."
Google is testing the Federated Learning approach in Gboard, a keyboard for Android handsets. In this instance, the machine learning model will remember which suggested inputs and information the user clicked on and use that data to improve future suggestions.