Meta AI Chief Defends Team
In brief
- Meta's AI chief says his team is not motivated by money.
- He says top AI researchers joined Meta because they wanted to work with a lot of compute.
- Top AI researchers reportedly received $100 million offers to join Meta.
- But the AI chief says they were motivated by other factors.
- He says they wanted to make progress with a lot of compute and work with great talent.
- Meta spent $14 billion to acquire nearly half of Scale AI and to lure the AI chief to lead a new AI team.
- The company will continue to recruit top AI researchers to build its team.
Terms in this brief
- compute
- In the context of AI research, 'compute' refers to the computational resources and power needed to train and run large-scale machine learning models. It is a critical factor in determining the performance and capabilities of AI systems, as more compute often leads to better model accuracy and efficiency.
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