International Workshop on Opencl and SYCL Call for Submissions

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International Workshop on Opencl and SYCL Call for Submissions TH International Workshop on OpenCL and SYCL 9 27-29 April 2021 | LRZ Munich, Germany Workshop Chairs Call for Submissions Chair: Simon McIntosh-Smith, Professor of High-Performance Computing and IWOCL & SYCLcon 2021 will be the 9th annual gathering of the international community Head of the HPC Research Group, of developers, researchers, suppliers and Khronos Working Group members to share University of Bristol. Local Co-Chairs: best practice, and to advance the use and evolution of the Open Computing Language Martin Schreiber, Lecturer and Researcher (OpenCL), and the SYCL standard for C++ programming of heterogeneous platforms and at the Chair of Computer Architecture and their associated ecosystems. Parallel Systems, Technical University This pioneering workshop has been attracting an International audience of leading of Munich and Christoph Riesinger, academic and industrial experts since 2013 and is the premier forum for the community Application Engineer, Intel. SYCLcon to present, discuss and learn about applying OpenCL and SYCL to address the issues Chair: Michael Wong, VP Research faced in High Performance Computing across a wide range of application domains. & Development, Codeplay Software. Proceedings Chair: Andrei Poenaru, Researcher, University of Bristol. Topics of Interest Organising Chair: Tim Lewis, IWOCL. You are cordially invited to contribute and participate in this workshop. Topics of interest include but are not limited to: Program Committee Ben Ashbaugh, Intel. Patrick Atkinson, • Scientific and high-performance computing (HPC) applications NVIDIA. David Beckingsale, Lawrence • Machine Learning Training and Inferencing Livermore National Laboratory. Thomasz • Development tools, including debuggers, profilers and reference implementations Bednarz, CSIRO Data61. Ben Bergen , Los • HPC frameworks and supporting libraries developed on top of OpenCL, SYCL, Alamos National Laborator.Alex Bourd, SPIR-V, Vulkan and other parallel C++ paradigms Qualcomm. Daniel Connors, University of • The use of OpenCL and SYCL on CPU, GPU, DSP, NNP, FPGA and hardware Colorado State. Tom Deakin, University of accelerators on mobile, embedded, cloud, edge and automotive platforms Bristol. Dmitry Denisenko, Intel - Alastair Donaldson, Google and Imperial College. Making a Submission Benedict Gaster, University of the West of The workshop welcomes four types of submission, all of which will undergo peer England. Wayne Gaudin, PGI. Leonardo review by at least three members of the Program Committee comprising world- Gomez, Barcelona Supercomputing leaders in OpenCL and SYCL. Center. AJ Guillon, YetiWare. Vincent Hindriksen, StreamComputing. Pekka • Research Papers (Full paper required) Jääskeläinen, Tampere University of • Technical Presentations (Abstract required) Technology. Del Johar, Streamcomputing. • Tutorials and Special Sessions (1/4 , 1/2 or full day. Abstract Required) David Kaeli, Northeastern University. • Posters (Abstract required) Ronan Keryell, Xilinx. Michael Kinser, Accepted and presented papers and posters will be published in the Intel. Anton Lokhmotov, dividiti. Matt proceedings and included in the ACM Digital Library. Full details of the Martineau, NVIDIA. Richard Membarth. submission process and guidelines for authors can be found at: German Research Center for Artificial www.iwocl.org/call-for-submissions Intelligence (DFKI). Gaurav Mitra, Texas Instruments. Jamal Mohd-Yusof, Los Important Dates Alamos National Laboratory.Laurent Deadline for all submission types: Friday January 15, 2021 Morichetti, AMD. Gihan Mudalige, University of Warwick. Cedric Nugteren, Author notifications: Monday February 15, 2021 TomTom. Yiannis Papadopoulos. Neurala. Camera ready for papers and posters: Friday March 12, 2021 James Price, Google. Istvan Reguly, Video presentations: Friday April 9, 2021 Pázmány Péter Catholic University. Ruyman Reyes, Codeplay. Andrew Please stay safe and healthy. We look forward to your contributions and meeting you Richards, Codeplay. Christoph Riesinger. in April 2021. Thank you very much. Intel. Robert Robey, Los Alamos National Laboratory. Karl Rupp, Vienna University Covid-19 Update: The workshop is planned to be an in-person event, hosted by TUM (Technical University of of Technology. Martin Schreiber, Technical Munich) and taking place at the LRZ supercomputing centre in Munich, Germany. We are constantly monitoring the International pandemic and if necessary will go fully or partially virtual/online, as we did in 2020. Authors will University of Munich. Jakub Szuppe, be required to submit video recordings of their presentations. Registration fees will be adjusted accordingly and NVIDIA. Neil Trevett, The Khronos Group posted on the website. and NVIDIA. Carsten Trinitis, Technical University of Munich. Flavio Vella, Website: www.iwocl.org University of Rome. Josef Weidendorfer, LRZ. Sarah Witt, Sony Europe. Michael Wong, Codeplay. Ferad Zyulkyarov, Barcelona Supercomputing Center Document Revision: 1.1 - SEPT-2020 SYCL and the SYCL logo are trademarks of the Khronos Group Inc. OpenCL and the OpenCL logo are trademarks of Apple Inc..
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