Time Machine
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Real-Time Threat Detection from Surveillance Cameras using Machine Learning
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A Grammar of Machine Learning Workflows: Rejecting Data Leakage at Call Time
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Machine-Learning Emulation of Satellite Greenhouse Gas Retrievals: Stability over Time
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Announce Type: cross Abstract: As Moore's law reaches its limits, Ising machines offer a promising alternative computing approach for difficult optimization problems. However, many analog, time-continuous Ising machines rely on gradient-descent-like dynamics to find solutions, which can limit speed and robustness.
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