FaVeX accelerates verified explanations for neural networks via dynamic batch-sequential processing and query reuse while introducing verifier-optimal robust explanations that incorporate verifier incompleteness.
In: Majumdar, R., Kuncak, V
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An experience report from Heriot-Watt's LAIV lab on successes and language-related difficulties when incorporating neural network verification into AI MSc programs.
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Faster Verified Explanations for Neural Networks
FaVeX accelerates verified explanations for neural networks via dynamic batch-sequential processing and query reuse while introducing verifier-optimal robust explanations that incorporate verifier incompleteness.
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Neural Network Verification for the Masses (of AI graduates)
An experience report from Heriot-Watt's LAIV lab on successes and language-related difficulties when incorporating neural network verification into AI MSc programs.