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Best Paper Award at IPDPS 2024

IPDPS Best Paper Award Photo

Toby Flynn, PhD student in the department's High-Performance and Scientific Computing group, supervised by Prof. Gihan Mudalige together with at IBM Research UK received the best paper award at the last week in San Francisco US. IPDPS is one of the most prominent and high ranking conferences in parallel and distributed computing, now in its 38th year.

The paper titled "Performance-Portable Multiphase Flow Solutions with Discontinuous Galerkin Methods", details the development of a new performance portable solver workflow using Discontinuous Galerkin (DG) methods for developing multiphase flow simulations based on the domain-specific language. Results demonstrate scaling on both CPU and GPU systems including UK's national supercomputer, ARCHER2 at EPCC Edinburgh and the European Petascale Supercomputer, LUMI hosted by CSC Finland. The work is a collaboration with IBM Research UK supported by an iCASE award funded jointly by IBM and EPSRC.

The paper pre-print is available .


Seven papers accepted to ICML 2024

Seven papers authored by Computer Science researchers from 91福利 have been accepted for publication at the , one of the top three global venues for machine learning research, which will be held on 21-27 July 2024 in Vienna, Austria:

  • Agent-Specific Effects: A Causal Effect Propagation Analysis in Multi-Agent MDPs, by Stelios Triantafyllou, Aleksa Sukovic, , and Goran Radanovic
  • Dynamic Facility Location in High Dimensional Euclidean Spaces, by , Gramoz Goranci, Shaofeng Jiang, Yi Qian, and Yubo Zhang (Accepted as a spotlight, among the top 13 percent of all accepted papers)
  • High-Dimensional Kernel Methods under Covariate Shift: Data-Dependent Implicit Regularization, by Yihang Chen, , Taiji Suzuki, and Volkan Cevher
  • Revisiting character-level adversarial attacks, by Elias Abad Rocamora, Yongtao Wu, , Grigorios Chrysos, and Volkan Cevher
  • Reward Model Learning vs. Direct Policy Optimization: A Comparative Analysis of Learning from Human Preferences, by Andi Nika, , Parameswaran Kamalaruban, Georgios Tzannetos, Goran Radanovic, and Adish Singla
  • To Each (Textual Sequence) Its Own: Improving Memorized-Data Unlearning in Large Language Models, by George-Octavian B膬rbulescu and Peter Triantafillou
  • Towards Neural Architecture Search through Hierarchical Generative Modeling, by Lichuan Xiang, 艁ukasz Dudziak, Mohamed Abdelfattah, Abhinav Mehrotra, Nicholas Lane, and

MEng e-voting project published in a journal paper

As part of a 2021/2022 MEng group project, , , , and implemented a fully functional end-to-end (E2E) verifiable online voting system and conducted a successful trial among the residents of New Town in Kolkata, India during the 2022 Durga Puja festival celebration. This was the first time an E2E online voting system was built and tested in India. The feedback was overwhelmingly positive. Full details about the implementation, the trial and the voter feedback are written in a paper, published in the . A free version of the paper is available on IACR e-print as a . Also, see the earlier news item about this Durga Puja trial.

Professor , who supervised this group project, commented: 鈥淭his is great teamwork. The four MEng students worked relentlessly for nearly a year, with good assistance from Luke Harrison and Professor . The e-voting system was developed at an industry standard and worked flawlessly during the Durga Puja trial. Several government officials from India also helped us, providing invaluable support for the trial. We sincerely thank them in the acknowledgement section of .鈥


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