Google’s Gemini AI app now has over 750 million monthly active users

Google announced that its AI assistant app, Gemini, has surpassed 750 million monthly active users worldwide, marking a big jump from around 650 <a href="https://aiopscommunity.com/singapore-to-invest-over-779-million-in-public-ai-research-through-2030/" title="Singapore to Invest Over $779 Million in Public AI Research Through 2030″>million in the previous quarter. This rapid growth comes after the launch of Gemini 3, which CEO Sundar Pichai cited as a key factor driving new engagement and momentum.

Pichai highlighted that Gemini’s underlying AI models are now processing more than 10 billion tokens per minute via direct API use, reflecting stronger adoption by developers and integrations across services.

According to Google’s latest quarterly earnings report, users are spending more time with the app since the release of the latest version, and overall engagement has climbed compared with prior quarters.

Costs for running Gemini have also fallen sharply—Google reported a significant reduction in operating costs due to improved efficiencies and model optimization, which should help sustain wider deployment of the AI assistant across products and platforms.

The company noted that partnerships with major players like Apple and Reliance Jio are expected to boost Gemini’s reach even further, especially in new markets.

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