Badnets: Identifying vulnerabilities in the machine learning model supply chain T Gu, B Dolan-Gavitt, S Garg arXiv preprint arXiv:1708.06733, 2017 | 1678 | 2017 |
Fine-pruning: Defending against backdooring attacks on deep neural networks K Liu, B Dolan-Gavitt, S Garg International Symposium on Research in Attacks, Intrusions, and Defenses …, 2018 | 1046 | 2018 |
Badnets: Evaluating backdooring attacks on deep neural networks T Gu, K Liu, B Dolan-Gavitt, S Garg IEEE Access 7, 47230-47244, 2019 | 955 | 2019 |
Securing computer hardware using 3d integrated circuit ({IC}) technology and split manufacturing for obfuscation F Imeson, A Emtenan, S Garg, M Tripunitara 22nd {USENIX} Security Symposium ({USENIX} Security 13), 495-510, 2013 | 258 | 2013 |
The EDA challenges in the dark silicon era: Temperature, reliability, and variability perspectives M Shafique, S Garg, J Henkel, D Marculescu Proceedings of the 51st Annual Design Automation Conference, 1-6, 2014 | 235 | 2014 |
Integrated circuit (IC) decamouflaging: Reverse engineering camouflaged ICs within minutes. M El Massad, S Garg, MV Tripunitara NDSS, 1-14, 2015 | 232 | 2015 |
Safetynets: Verifiable execution of deep neural networks on an untrusted cloud Z Ghodsi, T Gu, S Garg Advances in Neural Information Processing Systems 30, 2017 | 181 | 2017 |
Thundervolt: enabling aggressive voltage underscaling and timing error resilience for energy efficient deep learning accelerators J Zhang, K Rangineni, Z Ghodsi, S Garg Proceedings of the 55th Annual Design Automation Conference, 1-6, 2018 | 168 | 2018 |
Analyzing and mitigating the impact of permanent faults on a systolic array based neural network accelerator JJ Zhang, T Gu, K Basu, S Garg 2018 IEEE 36th VLSI Test Symposium (VTS), 1-6, 2018 | 157 | 2018 |
Cherry-picking: Exploiting process variations in dark-silicon homogeneous chip multi-processors B Raghunathan, Y Turakhia, S Garg, D Marculescu 2013 Design, Automation & Test in Europe Conference & Exhibition (DATE), 39-44, 2013 | 141 | 2013 |
Reverse engineering camouflaged sequential circuits without scan access M El Massad, S Garg, M Tripunitara 2017 IEEE/ACM International Conference on Computer-Aided Design (ICCAD), 33-40, 2017 | 113 | 2017 |
Benchmarking large language models for automated verilog rtl code generation S Thakur, B Ahmad, Z Fan, H Pearce, B Tan, R Karri, B Dolan-Gavitt, ... 2023 Design, Automation & Test in Europe Conference & Exhibition (DATE), 1-6, 2023 | 96* | 2023 |
Lost at c: A user study on the security implications of large language model code assistants G Sandoval, H Pearce, T Nys, R Karri, S Garg, B Dolan-Gavitt 32nd USENIX Security Symposium (USENIX Security 23), 2205-2222, 2023 | 94* | 2023 |
Verifiable asics RS Wahby, M Howald, S Garg, A Shelat, M Walfish 2016 IEEE Symposium on Security and Privacy (SP), 759-778, 2016 | 91* | 2016 |
Securing hardware accelerators: A new challenge for high-level synthesis C Pilato, S Garg, K Wu, R Karri, F Regazzoni IEEE Embedded Systems Letters 10 (3), 77-80, 2017 | 90 | 2017 |
Deepreduce: Relu reduction for fast private inference NK Jha, Z Ghodsi, S Garg, B Reagen International Conference on Machine Learning, 4839-4849, 2021 | 86 | 2021 |
Cryptonas: Private inference on a relu budget Z Ghodsi, AK Veldanda, B Reagen, S Garg Advances in Neural Information Processing Systems 33, 16961-16971, 2020 | 83 | 2020 |
HaDeS: architectural synthesis for heterogeneous dark silicon chip multi-processors Y Turakhia, B Raghunathan, S Garg, D Marculescu Proceedings of the 50th Annual Design Automation Conference, 1-7, 2013 | 78 | 2013 |
Fault-tolerant systolic array based accelerators for deep neural network execution JJ Zhang, K Basu, S Garg IEEE Design & Test 36 (5), 44-53, 2019 | 77 | 2019 |
Nnoculation: Catching badnets in the wild AK Veldanda, K Liu, B Tan, P Krishnamurthy, F Khorrami, R Karri, ... Proceedings of the 14th ACM Workshop on Artificial Intelligence and Security …, 2021 | 71* | 2021 |