Seguir
Hugh Leather
Hugh Leather
Dirección de correo verificada de inf.ed.ac.uk
Título
Citado por
Citado por
Año
End-to-end deep learning of optimization heuristics
C Cummins, P Petoumenos, Z Wang, H Leather
2017 26th International Conference on Parallel Architectures and Compilation …, 2017
2322017
Automatic feature generation for machine learning--based optimising compilation
H Leather, E Bonilla, M O'boyle
ACM Transactions on Architecture and Code Optimization (TACO) 11 (1), 1-32, 2014
2142014
MILEPOST GCC: machine learning based research compiler
G Fursin, C Miranda, O Temam, M Namolaru, E Yom-Tov, A Zaks, ...
Proceedings of the GCC Developers' Summit, 2008
1712008
Compiler fuzzing through deep learning
C Cummins, P Petoumenos, A Murray, H Leather
Proceedings of the 27th ACM SIGSOFT international symposium on software …, 2018
1562018
Emergency evacuation using wireless sensor networks
M Barnes, H Leather, DK Arvind
32nd IEEE Conference on Local Computer Networks (LCN 2007), 851-857, 2007
1462007
Synthesizing benchmarks for predictive modeling
C Cummins, P Petoumenos, Z Wang, H Leather
2017 IEEE/ACM International Symposium on Code Generation and Optimization …, 2017
1182017
Programl: A graph-based program representation for data flow analysis and compiler optimizations
C Cummins, ZV Fisches, T Ben-Nun, T Hoefler, MFP O’Boyle, H Leather
International Conference on Machine Learning, 2244-2253, 2021
922021
Programl: Graph-based deep learning for program optimization and analysis
C Cummins, ZV Fisches, T Ben-Nun, T Hoefler, H Leather
arXiv preprint arXiv:2003.10536, 2020
722020
Minimizing the cost of iterative compilation with active learning
WF Ogilvie, P Petoumenos, Z Wang, H Leather
2017 IEEE/ACM international symposium on code generation and optimization …, 2017
642017
Compilergym: Robust, performant compiler optimization environments for ai research
C Cummins, B Wasti, J Guo, B Cui, J Ansel, S Gomez, S Jain, J Liu, ...
2022 IEEE/ACM International Symposium on Code Generation and Optimization …, 2022
552022
Machine learning in compilers: Past, present and future
H Leather, C Cummins
2020 Forum for Specification and Design Languages (FDL), 1-8, 2020
462020
Value learning for throughput optimization of deep learning workloads
B Steiner, C Cummins, H He, H Leather
Proceedings of Machine Learning and Systems 3, 323-334, 2021
452021
Fast automatic heuristic construction using active learning
WF Ogilvie, P Petoumenos, Z Wang, H Leather
Languages and Compilers for Parallel Computing: 27th International Workshop …, 2015
442015
Power capping: What works, what does not
P Petoumenos, L Mukhanov, Z Wang, H Leather, DS Nikolopoulos
2015 IEEE 21st International Conference on Parallel and Distributed Systems …, 2015
392015
Autotuning OpenCL workgroup size for stencil patterns
C Cummins, P Petoumenos, M Steuwer, H Leather
arXiv preprint arXiv:1511.02490, 2015
372015
Function merging by sequence alignment
RCO Rocha, P Petoumenos, Z Wang, M Cole, H Leather
2019 IEEE/ACM International Symposium on Code Generation and Optimization …, 2019
362019
Code translation with compiler representations
M Szafraniec, B Roziere, H Leather, F Charton, P Labatut, G Synnaeve
arXiv preprint arXiv:2207.03578, 2022
342022
Masif: Machine learning guided auto-tuning of parallel skeletons
A Collins, C Fensch, H Leather
Proceedings of the 21st international conference on Parallel architectures …, 2012
332012
Raced profiles: efficient selection of competing compiler optimizations
H Leather, M O'Boyle, B Worton
Proceedings of the 2009 ACM SIGPLAN/SIGBED conference on Languages …, 2009
332009
Effective function merging in the ssa form
RCO Rocha, P Petoumenos, Z Wang, M Cole, H Leather
Proceedings of the 41st ACM SIGPLAN Conference on Programming Language …, 2020
292020
El sistema no puede realizar la operación en estos momentos. Inténtalo de nuevo más tarde.
Artículos 1–20