IPDPS 2017 WORKSHOPS - Call for Papers
-------------------------------------------------------------
November 7, 2016 release
31st IEEE International Parallel & Distributed Processing Symposium May 29 â June 2, 2017 Orlando, Florida USA http://www.ipdps.org/ipdps2017/2017_call_for_workshops.html The IPDPS 2017 workshops listed below will be held on Monday, May 29th and Friday, June 2nd. IPDPS workshops provide an extended forum that allows the IPDPS community an opportunity to fully explore special topics and to present work that is more preliminary and cutting-edge or that has more practical content than the more mature research presented in the main symposium. Proceedings of the workshops are distributed at the conference and are submitted for inclusion in the IEEE Xplore Digital Library after the conference. *** PLEASE NOTE *** All workshops have their own websites and may make changes in their submission requirements and due dates. Workshops' pages are linked here: http://www.ipdps.org/ipdps2017/2017_call_for_workshops.html. IPDPS ROUNDTABLE WORKSHOPS â 2ND ANNUAL EVENT! These condensed workshops, organized and animated by a few people, will be held on Tuesday and Thursday in a âroundtableâ setting designed to promote one-on-one interaction. They will focus on an emerging area of interest to IPDPS attendees, especially topics that complement and âround outâ the areas covered by the regular workshops. Proposals to conduct a Roundtable Workshop may be submitted after January 1, 2017. TWENTY-FOUR WORKSHOPS PLANNED FOR IPDPS 2017 IN ORLANDO Below is the list of 24 workshops planned for 2017 in Orlando. For the most up to date information on each workshop, follow the link from this page. Note that all workshops have their own Web sites and may make changes in their submission requirements and due dates. IPDPS: WORKSHOPS MONDAY 29 MAY 2017
HCW: Heterogeneity in Computing Workshop RAW: Reconfigurable Architectures Workshop HiComb: High Performance Computational Biology EduPar: NSF/TCPP W. on Parallel and Distributed Computing Education ParLearning: Parallel and Distributed Computing for Machine Learning and Big Data Analytics PDCO: Parallel / Distributed Computing and Optimization (early deadline!) GABB: Graph Algorithms Building Blocks AsHES: Accelerators and Hybrid Exascale Systems HIPS: High Level Programming Models and Supporting Environments APDCM: Advances in Parallel and Distributed Computational Models HPPAC: High-Performance, Power-Aware Computing HPBDC: High-Performance Big Data Computing IPDPS WORKSHOPS FRIDAY 2 JUNE 2017 CHIUW: Chapel Implementers and Users Workshop LSPP: Large-Scale Parallel Processing: Practices and Experiences PDSEC: Parallel and Distributed Scientific and Engineering Computing JSSPP: Job Scheduling Strategies for Parallel Processors Proposal DPDNS: Dependable Parallel, Distributed and Network-centric Systems IPDRM: Emerging Parallel and Distributed Runtime Systems and Middleware iWAPT: International Workshop on Automatic Performance Tunings (early deadline!) ParSocial: Parallel and Distributed Processing for Computational Social System BigDataEco: Big Data Regional Innovation Hubs and Spokes: Accelerating the Big Data Innovation Ecosystem GraML: Graph Algorithms and Machine Learning EMBRACE: Evolvable Methods for Benchmarking Realism and Community Engagement REPPAR: Reproducibility in Parallel Computing WORKSHOPS CHAIR and VICE-CHAIR (workshops@xxxxxxxxx) Bora UÃar (CNRS and ENS Lyon, France) Erik Saule (University of North Carolina Charlotte, USA) WORKSHOPS PROCEEDINGS CHAIR and VICE-CHAIR Ramachandran Vaidyanathan (Louisiana State University, USA) Kyle Chard (University of Chicago, USA) ---------------------------------------------------------------------------- ...Follow us on Facebook at https://www.facebook.com/IPDPS ...Follow us on Twitter at https://twitter.com/IPDPS ...Follow us on Linkedin at https://www.linkedin.com/groups/8550095 ----------------------------------------------------------------------------- Sponsored by IEEE Computer Society Technical Committee on Parallel Processing In cooperation with ACM SIGARCH, ACM SIGHPC; IEEE Computer Society Technical Committee on Computer Architecture, and IEEE Computer Society Technical Committee on Distributed Processing ----------------------------------------------------------------------------- |