Google Drive Adds Machine Learning-Backed Quick Access

Google has rolled out an update to Google Drive that brings a new, Machine Learning-backed Quick Access panel to the app.  Machine Learning is something that Google is rapidly deploying in all of their products, from G Suite to Google Cloud Platform.  The good news is that everyday users can also gain the advantages of ML in the everyday apps they provide.

This feature rolled out a few months ago for those who are G Suite customers and principally what it does is use a wide set of patterns to determine the files you need to access quickly.  This isn’t just your most recent files as that’s fairly mundane these days.  No, this looks at things like your calendar or activity on your Drive to bubble up the files you are likely to need.

Google Drive Quick Access

Google Drive Quick Access

For Quick Access, however, we constructed thousands of simple features from the various signals above (for instance, the timestamps of the last 20 edit events on a document would constitute 20 simple input features), and combined them with the power of deep neural networks to learn from the aggregated activity of our users. By using deep neural networks we were able to develop accurate predictive models with simpler features and less feature engineering effort.

It is a pretty impressive model and frankly, it works just as impressively.  Looking at a meeting I had on my calendar, it bubbled up a Docs file that I had been using for notes around this particular meeting.  I didn’t have to search for it.  As you use Drive and other Google apps like G Suite (which includes the likes of Gmail, Calendar and of course Docs, Sheets and Slides), it will learn you better to give you more personalized results.

For Quick Access to work in Google Drive, you need to have the latest version of the app on your phone or tablet.  The feature should be enabled by default but if not, you can go into Setting to enable it (or disable it). You can read more about it on the Google Research Blog.

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