Wed 11 May 2022 12:10 - 12:15 at ICSE room 1-even hours - Machine Learning with and for SE 11 Chair(s): Ipek Ozkaya
Fri 27 May 2022 11:10 - 11:15 at Room 301+302 - Papers 19: Machine Learning with and for SE 2 Chair(s): Dalal Alrajeh
Fri 27 May 2022 13:30 - 15:00 at Ballroom Gallery - Posters 3
Recently, various Deep Neural Network (DNN) models have been proposed for environments like embedded systems with stringent energy constraints. The fundamental problem of determining the robustness of a DNN with respect to its energy consumption (energy robustness) is relatively unexplored compared to accuracy-based robustness. This work investigates the energy robustness of Adaptive Neural Networks (AdNNs), a type of energy-saving DNNs proposed for many energy-sensitive domains and have recently gained traction. We propose EREBA, the first black-box testing method for determining the energy robustness of an AdNN. EREBA explores and infers the relationship between inputs and the energy consumption of AdNNs to generate energy surging samples. Extensive implementation and evaluation using three state-of-the-art AdNNs demonstrate that test inputs generated by EREBA could degrade the performance of the system substantially. The test inputs generated by EREBA can increase the energy consumption of AdNNs by 2,000% compared to the original inputs. Our results also show that test inputs generated via EREBA are valuable in detecting energy surging inputs.
Mon 9 MayDisplayed time zone: Eastern Time (US & Canada) change
Wed 11 MayDisplayed time zone: Eastern Time (US & Canada) change
12:00 - 13:00 | Machine Learning with and for SE 11Journal-First Papers / Technical Track at ICSE room 1-even hours Chair(s): Ipek Ozkaya Carnegie Mellon Software Engineering Institute | ||
12:00 5mTalk | Lessons Learnt on Reproducibility in Machine Learning Based Android Malware Detection Journal-First Papers Nadia Daoudi SnT, University of Luxembourg, Kevin Allix University of Luxembourg, Tegawendé F. Bissyandé SnT, University of Luxembourg, Jacques Klein University of Luxembourg Link to publication Pre-print Media Attached | ||
12:05 5mTalk | DeepAnalyze: Learning to Localize Crashes at Scale Technical Track Manish Shetty Microsoft Research, India, Chetan Bansal Microsoft Research, Suman Nath Microsoft Corporation, Sean Bowles Microsoft, Henry Wang Microsoft, Ozgur Arman Microsoft, Siamak Ahari Microsoft Pre-print Media Attached | ||
12:10 5mTalk | EREBA: Black-box Energy Testing of Adaptive Neural Networks Technical Track Mirazul Haque UT Dallas, Yaswanth Yadlapalli University of Texas at Dallas, Wei Yang University of Texas at Dallas, Cong Liu University of Texas at Dallas, USA Pre-print Media Attached | ||
12:15 5mTalk | Fast Changeset-based Bug Localization with BERT Technical Track Agnieszka Ciborowska Virginia Commonwealth University, Kostadin Damevski Virginia Commonwealth University Pre-print Media Attached | ||
12:20 5mTalk | Multilingual training for Software Engineering Technical Track Toufique Ahmed University of California at Davis, Prem Devanbu Department of Computer Science, University of California, Davis DOI Pre-print Media Attached | ||
12:25 5mTalk | Using Pre-Trained Models to Boost Code Review Automation Technical Track Rosalia Tufano Università della Svizzera Italiana, Simone Masiero Software Institute @ Università della Svizzera Italiana, Antonio Mastropaolo Università della Svizzera italiana, Luca Pascarella Università della Svizzera italiana (USI), Denys Poshyvanyk William and Mary, Gabriele Bavota Software Institute, USI Università della Svizzera italiana Pre-print Media Attached |