Helping AI models to meet the real world
Through research and entrepreneurship, Professor Devavrat Shah is helping to design methods that can handle constant decision-making using limited computational resources.
Through research and entrepreneurship, Professor Devavrat Shah is helping to design methods that can handle constant decision-making using limited computational resources.
Researchers developed an auditing technique to test generative AI models for malicious capabilities, without prompting them for illegal outputs.
Researchers show that for certain kinds of games, an overlooked class of algorithms performs much better than expected.
A new spatial memory system for robots efficiently captures details about the objects they see while exploring their environment.
MIT researchers provide a major upgrade to the nearly century-old idea of random utility models.
Assistant Professor Gabriele Farina mines the foundations of decision-making in complex multi-agent scenarios.
A new debiasing technique called WRING avoids creating or amplifying biases that can occur with existing debiasing approaches.
MIT researchers developed a testing framework that pinpoints situations where AI decision-support systems are not treating people and communities fairly.
This new approach adapts to decide which robots should get the right of way at every moment, avoiding congestion and increasing throughput.
This new metric for measuring uncertainty could flag hallucinations and help users know whether to trust an AI model.