CHASE 2023
Sun 14 - Mon 15 May 2023
Melbourne, Australia
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Maxime Cordy
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Registered user since Thu 31 Jan 2019
Name:
Maxime Cordy
Affiliation:
University of Luxembourg, Luxembourg
Contributions
2023
ICSE
Aries: Efficient Testing of Deep Neural Networks via Labeling-Free Accuracy Estimation
CodeS: Towards Code Model Generalization Under Distribution Shift
Learning from What We Know: How to Perform Vulnerability Prediction using Noisy Historical Data
CAIN
Towards Understanding Model Quantization for Reliable Deep Neural Network Deployment
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Sun 22 Dec 17:36