“Liquid” machine-learning system adapts to changing conditions
MIT researchers developed a neural network that learns on the job, not just during training. The “liquid” network varies its equations’ parameters, enhancing its ability to analyze time series data.…
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MIT engineers designed an adhesive patch that produces ultrasound images of the body. The stamp-sized device sticks to skin and can provide continuous ultrasound imaging of internal organs for 48…
A tool for predicting the future
By adapting a powerful algorithm, MIT researchers created a user-friendly tool that enables a nonexpert to make predictions with high accuracy using time-series data with just a few keystrokes and in…
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A new computer vision system watches the 3D printing process and adjusts velocity and printing path to avoid errors. Training the system in simulation, researchers from MIT and elsewhere avoid the…
To the brain, reading computer code is not the same as reading language
MIT neuroscientists have found reading computer code does not rely on the regions of the brain involved in language processing. Instead, it activates the “multiple demand network,” which is also…
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