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        • An MIT team discusses their work on accessible data visualization with the Perkins School for the Blind, detailing the importance of “sociotechnical” factors and of avoiding parachute research. 3Q: Collaborating with users to develop accessible designs
        • MIT computer scientist Aleksander Madry of CSAIL and EECS wants to do machine learning “the right way” by making models more accurate, efficient, and robust against errors caused by adversarial examples, and by addressing ethical artificial intelligence for society. “Doing machine learning the right way”
        • MIT researchers have designed a system that lets “learning from demonstrations” (LfD) robots learn complicated tasks, such as setting a dinner table, that would otherwise stymie them with confusing rules. Showing robots how to do your chores
        • Computer vision
        • Electrical Engineering & Computer Science (eecs)
          • A simulation system invented at MIT to train driverless cars creates a photorealistic world with infinite steering possibilities, helping the cars learn to navigate a host of worse-case scenarios before cruising down real streets.
        • U.S. News and World Report has ranked MIT’s graduate engineering program as No. 1 in the country for 2021. The MIT Sloan School of Management is ranked as the nation’s No. 5 business school. MIT graduate engineering, business programs ranked highly by U.S. News for 2021
        • An MIT team discusses their work on accessible data visualization with the Perkins School for the Blind, detailing the importance of “sociotechnical” factors and of avoiding parachute research. 3Q: Collaborating with users to develop accessible designs
        • MIT computer scientist Aleksander Madry of CSAIL and EECS wants to do machine learning “the right way” by making models more accurate, efficient, and robust against errors caused by adversarial examples, and by addressing ethical artificial intelligence for society. “Doing machine learning the right way”
        • Imaging