Twitter leverages Google Cloud AutoML to help customers find meaningful Spaces

Source: Twitter Helping customers find meaningful Spaces with AutoML

Twitter leverages ML to surface the most interesting and relevant Spaces to a particular Twitter customer, making it easier for them to find and join the conversations they personally care about.

With a classification model in place to predict the probability of user engagement in a particular Space, Twitter now aims to optimize its model with aggregated data around Twitter features that can help it better understand customer preferences. For example, if a customer has historically engaged with a particular topic and a new Space matches that topic, the ML model increases the score of that Space being served to that user on the Spaces tab.

Because Spaces are live audio conversations, the Spaces tab needs to be ranked to customers in near real time so they don’t miss out.

Result and Success Metrics:

  • Daily active customers

  • Spaces join in rates

  • User clicks to explore a Space

"After deploying our AutoML Tables solution we saw an increase of 1.96% in Spaces daily active customers, which is one of our key metrics. We also noticed an increase of 1.99% in Spaces join in rates, and an increase of 8.42% in user clicks to explore a Space”

AutoML brings that value to our product teams because it is so hands-off. You don’t need to write any model code in order to reap the benefits from this machine learning framework; AutoML automatically experiments with many different model architectures and comes up with a state-of-the-art model that addresses your needs. So while it is not a one-size-fits-all solution, it is a great solution with the potential to power many more Twitter use cases.

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