Google’s Own AI Researchers Jockey for Access to Its Computing

In the race to build the infrastructure that powers artificial intelligence, Alphabet Inc.’s Google has an enviable position: The company has a healthy cloud computing business, makes its own chips, and has struck deals to share them with companies like Anthropic PBC and Meta Platforms Inc.

Google’s success has made its computing resources so valuable, though, that its own AI researchers have to get in line.

Last summer, Andrew Dai, then a researcher in Google’s AI lab, discovered a blind spot in Gemini, the company’s flagship AI model. While playing a board game, Dai took pictures of the board and asked Gemini a simple question: who’s winning? To his surprise, Gemini was stumped, as were models from rivals. He became convinced of the need to build AI that could better understand what was happening in images.

Dai discussed his idea with some of his colleagues, but he quickly concluded that he wouldn’t be able to secure enough computing power to tackle the problem within Google, he said in an interview. He had to leave the company if he wanted to do it.

Dai is among current and former employees who say Google’s leadership in AI development has turned computing power into a precious resource, accessible mostly to people with high-priority projects, like improving Gemini.

AI researchers sometimes feel like they are losing out on computing power to paying customers, the people said. Google’s search and cloud computing units are also jockeying to use the company’s chips, known as tensor-processing units, or TPUs. Within the AI lab Google DeepMind, access to computing power influences the projects that researchers pursue, the leaders they align themselves with and the pace at which they work.