We apologize if you receive multiple copies of this notice.
-----------------------------------------------------------------------------
ScalA’17: 8th Workshop on Latest Advances in
Scalable Algorithms for Large-Scale Systems
held in conjunction with the
SC17: The International Conference on High Performance
Computing, Networking, Storage and Analysis
in cooperation with ACM SIGHPC
November 13, 2017, Denver, CO, USA
<http://www.csm.ornl.gov/srt/conferences/Scala/2017>
Novel scalable scientific algorithms are needed in order to enable key
science applications to exploit the computational power of large-scale
systems. This is especially true for the current tier of leading petascale
machines and the road to exascale computing as HPC systems continue to scale
up in compute node and processor core count. These extreme-scale systems
require novel scientific algorithms to hide network and memory latency, have
very high computation/communication overlap, have minimal communication, and
have no synchronization points.
Scientific algorithms for multi-petaflop and exa-flop systems also need to be
fault tolerant and fault resilient, since the probability of faults increases
with scale. Resilience at the system software and at the algorithmic level is
needed as a crosscutting effort. Finally, with the advent of heterogeneous
compute nodes that employ standard processors as well as GPGPUs, scientific
algorithms need to match these architectures to extract the most performance.
This includes different system-specific levels of parallelism as well as
co-scheduling of computation. Key science applications require novel
mathematical models and system software that address the scalability and
resilience challenges of current- and future-generation extreme-scale HPC
systems.
Submission Guidelines
Authors are invited to submit manuscripts in English structured as technical
papers not exceeding 8 letter size (8.5in x 11in) pages including figures,
tables, and references using the ACM format for conference proceedings.
Submissions not conforming to these guidelines may be returned without
review. Reference style files are available at
<http://www.acm.org/sigs/publications/proceedings-templates>.
All manuscripts will be reviewed and judged on correctness, originality,
technical strength, and significance, quality of presentation, and interest
and relevance to the workshop attendees. Submitted papers must represent
original unpublished research that is not currently under review for any
other conference or journal. Papers not following these guidelines will be
rejected without review and further action may be taken, including (but not
limited to) notifications sent to the heads of the institutions of the
authors and sponsors of the conference. Submissions received after the due
date, exceeding length limit, or not appropriately structured may also not
be considered. At least one author of an accepted paper must register for
and attend the workshop. Authors may contact the workshop program chair for
more information. Papers should be submitted electronically at:
<https://easychair.org/conferences/?conf=scala17>.
Full papers will be published with the SC'17 workshop proceedings in the ACM
Digital Library and IEEE Xplore. Selected papers will be invited for an
extended version in a special issue of the Journal of Computational Science
(JoCS).
Important Dates
- Full paper submission: August 28, 2017
- Notification of acceptance: September 11, 2017
- Final paper submission (firm): October 9, 2017
- Workshop/conference early registration: TBD
- Workshop: November 13, 2017
Topics of interest include, but are not limited to:
- Novel scientific algorithms that improve performance, scalability,
resilience, and power efficiency
- Porting scientific algorithms and applications to many-core and
heterogeneous architectures
- Performance and resilience limitations of scientific algorithms and
applications at scale
- Crosscutting approaches (system software and applications) in addressing
scalability challenges
- Scientific algorithms that can exploit extreme concurrency (e.g. 1 billion
for exascale by 2020)
- Naturally fault tolerant, self-healing, or fault oblivious scientific
algorithms
- Programming model and system software support for algorithm scalability and
resilience
Workshop Chairs
- Vassil Alexandrov, Barcelona Supercomputing Center, Spain
- Al Geist, Oak Ridge National Laboratory, USA
- Jack Dongarra, University of Tennessee, Knoxville, USA
Workshop Program Chair
- Christian Engelmann, Oak Ridge National Laboratory, USA
Program Committee
- Vassil Alexandrov, Barcelona Supercomputing Center, Spain
- Hartwig Anzt, University of Tennessee, Knoxville, USA
- Rick Archibald, Oak Ridge National Laboratory, USA
- Franck Cappello, Argonne National Laboratory and
University of Illinois at Urbana Champaign, USA
- Zizhong Chen, University of California, Riverside, USA
- James Elliott, Sandia National Laboratories, USA
- Nahid Emad, University of Versailles SQ, France
- Christian Engelmann, Oak Ridge National Laboratory, USA
- Wilfried Gansterer, University of Vienna, Austria
- Michael Heroux, Sandia National Laboratories, USA
- Kirk E. Jordan, IBM T.J. Watson Research, USA
- Dieter Kranzlmueller, Ludwig-Maximilians-University Munich, Germany
- Ignacio Laguna, Lawrence Livermore National Laboratory, USA
- Piotr Luszczek, University of Tennessee, Knoxville, USA
- Michael Mascagni, Florida State University, USA
- Ron Perrot, University of Oxford, UK
- Yves Robert, ENS Lyon, France
- Stuart Slattery, Oak Ridge National Laboratory, USA
- Keita Teranishi, Sandia National Laboratories, USA
--
Christian Engelmann, Ph.D.
R&D Staff Scientist
Computer Science Research Group
Computer Science and Mathematics Division
Oak Ridge National Laboratory
Mail: P.O. Box 2008, Oak Ridge, TN 37831-6173, USA
Phone: +1 (865) 574-3132 / Fax: +1 (865) 576-5491
e-Mail: engelmannc(a)ornl.gov / Home: www.christian-engelmann.info
**********************************************************************
We apologize if you received multiple copies of this message
Please feel free to distribute it to those who might be interested
**********************************************************************
HiPC 2020 VIRTUAL CONFERENCE - REVISED TIMELINE
*********************************************************************
IEEE International Conference on High Performance Computing, Data, and
Analytics (HiPC) serves as a forum to present current work by
researchers from around the world as well as highlight activities in
Asia in the areas of high performance computing and data science. The
meeting focuses on all aspects of high performance computing systems,
and data science and analytics, and their scientific, engineering, and
commercial applications.
Due to the COVID-19 pandemic, the 27th edition of HiPC - HiPC 2020
will be held VIRTUALLY this year. The registration fees for authors
will be reduced and details regarding the same will be communicated
later. We are also working with the sponsors to offer complimentary
access to the online publications as well as the virtual meeting.
The updated timeline for HiPC 2020 is as follows:
Abstract Registration: July 1, 2020
Paper Submission Deadline: July 8, 2020
Rebuttal Period: August 31 - September 2, 2020
Decisions Communicated: September 15, 2020
Deadline for Revised Papers: October 10, 2020
Final Notifications: October 25, 2020
Camera Ready Due: November 10, 2020
For more details, please visit: https://hipc.org/
Call for Papers can be found at https://hipc.org/call-for-papers/
Dear Sir, dear Madam,
Please, can you pass this announcement also to interested colleagues.
Kind regards
==========================================================================
CALL FOR PAPERS
The 7th Special Session on High Performance Computing for Application
Benchmarking and Optimization (HPBench 2020)
As part of the International Conference on High Performance Computing &
Simulation (HPCS 2020) http://hpcs2020.cisedu.info/ or
http://conf.cisedu.info/rp/hpcs20
Barcelona, Spain
==========================================================================
Benchmarking is an essential aspect of modern high performance computing
and computational science, and as such, it provides a means for quantifying
and comparing the performance of different computer systems. With a
large combination of aspects to benchmark, all the way from the capability
of a single core, to cluster configuration, and to various software
configurations, the benchmarking process is more of an art than science.
However, the results of this process drive modern science and are vital for
the community to draw sensible conclusions on the performance of
applications and systems. This special session focuses on research work
aimed at benchmarking modern parallel and distributed systems for
addressing a number of real world problems. As such, contributions
concerning the definition of new open platforms, new benchmarks to match
modern architectural evolutions, studies on the aspects of benchmarking
different aspects of systems (from raw runtime performance to energy
consumption to energy consumed per data movement) and mathematical
foundations of benchmarking are sought.
IMPORTANT DATES :
Papers Due: 1 July 2020
Author Notification: 22 July 2020
Camera-Ready Submission: 10 August 2020
Conference Dates: 26-30 October 2020
TOPICS :
The HPBench topics of interest include, but are not limited to
-Open Platforms for Parallel and Distributed Application Benchmarking and
Optimization
-Benchmarking on the Cloud
-Benchmarking of Clusters, Supercomputers, and large-scale systems
-Benchmarking the Performance of I/O
-Benchmarking of Energy and Energy Efficiency
-Benchmarking Web Services
-Virtualization for Distributed Benchmarking
-Data Distribution for Benchmarking
-Performance results of benchmarks on modern platforms
-Scalability Aspects of Benchmarking Parallel Applications on Parallel and
Distributed Systems
-Benchmarking of Parallel Scientific and Business Applications
-Performance of Benchmarking Applications (Eg: NAS parallel benchmarks)
-Techniques, frameworks and results concerning the benchmarking of library
packages
-Tools and frameworks for performance modeling systems and applications
-Tools and frameworks for simulation, measurement and monitoring
-Performance Measurements, Monitoring, Modeling and Simulation
-Domain-specific benchmarks and applications (such as image processing,
pattern recognition, cryptography, biometrics, differential equation
solvers, signal processing and alike)
-Mathematical Foundations of Benchmarking, Metrics and Heuristics
GENERAL CHAIRS :
Samar Aseeri, King Abdullah University of Science and Technology, Saudi
Arabia
Luigi Iapichino, Leibniz Supercomputing Centre (LRZ), Germany
TECHNICAL PROGRAM COMMITTEE:
Cosimo Anglano, Universitá del Piemonte Orientale, Italy
Fabio Baruffa, Intel, Germany
Suren Byna, Lawrence Berkeley National Laboratory, California, USA
Paul Carpenter, Barcelona Supercomputing Center, Spain
Douglas Doerfler, Lawrence Berkeley National Laboratory, USA
Zhiyi Huang, University of Otago, New Zealand
Clay Hughes, Sandia National Laboratories, USA
Aleksandar Ilic, Universidade de Lisboa, Portugal
Bok Jik Lee, Seoul National University, Korea
Ravi Reddy Manumachu, University College Dublin, Ireland
Dana Petcu, West University of Timisoara, Romania
Ivan Rodero, Rutgers University, USA
*********************************************************************
For more information see
http://conf.cisedu.info/rp/hpcs20/2-conference/special-sessions/session02-h…
Kind Regards
--
Samar Aseeri, PhD
Computational Scientist
Extreme Computing Research Center (ECRC)
Building 1 -Office: 0128
*King Abdullah University of Science & Technology*
Thuwal, Saudi Arabia
--
This message and its contents, including attachments are intended solely
for the original recipient. If you are not the intended recipient or have
received this message in error, please notify me immediately and delete
this message from your computer system. Any unauthorized use or
distribution is prohibited. Please consider the environment before printing
this email.
Dear Sir, dear Madam,
Please, can you pass this announcement also to interested colleagues.
Kind regards
==========================================================================
CALL FOR PAPERS
The 7th Special Session on High Performance Computing for Application
Benchmarking and Optimization (HPBench 2020)
As part of the International Conference on High Performance Computing &
Simulation (HPCS 2020) http://hpcs2020.cisedu.info/ or
http://conf.cisedu.info/rp/hpcs20
Barcelona, Spain
==========================================================================
The Special Session on Compiler Architecture, Design and Optimization
provides a premier venue to bring together systems researchers working on
compiler architecture, design and code optimization of high performance
computing systems, particularly for many-core, GPU, and accelerators. The
track spans the spectrum from compiler performance to energy optimization,
and from purely static to fully dynamic approaches.
IMPORTANT DATES :
Papers Due: 1 July 2020
Author Notification: 22 July 2020
Camera-Ready Submission: 3 August 2020
Conference Dates: 26-30 October 2020
TOPICS :
The HPBench topics of interest include, but are not limited to
-Open Platforms for Parallel and Distributed Application Benchmarking and
Optimization
-Benchmarking on the Cloud
-Benchmarking of Clusters, Supercomputers, and large-scale systems
-Benchmarking the Performance of I/O
-Benchmarking of Energy and Energy Efficiency
-Benchmarking Web Services
-Virtualization for Distributed Benchmarking
-Data Distribution for Benchmarking
-Performance results of benchmarks on modern platforms
-Scalability Aspects of Benchmarking Parallel Applications on Parallel and
Distributed Systems
-Benchmarking of Parallel Scientific and Business Applications
-Performance of Benchmarking Applications (Eg: NAS parallel benchmarks)
-Techniques, frameworks and results concerning the benchmarking of library
packages
-Tools and frameworks for performance modeling systems and applications
-Tools and frameworks for simulation, measurement and monitoring
-Performance Measurements, Monitoring, Modeling and Simulation
-Domain-specific benchmarks and applications (such as image processing,
pattern recognition, cryptography, biometrics, differential equation
solvers, signal processing and alike)
-Mathematical Foundations of Benchmarking, Metrics and Heuristics
GENERAL CHAIRS :
Samar Aseeri, King Abdullah University of Science and Technology, Saudi
Arabia
Luigi Iapichino, Leibniz Supercomputing Centre (LRZ), Germany
TECHNICAL PROGRAM COMMITTEE:
Cosimo Anglano, Universitá del Piemonte Orientale, Italy
Fabio Baruffa, Intel, Germany
Suren Byna, Lawrence Berkeley National Laboratory, California, USA
Paul Carpenter, Barcelona Supercomputing Center, Spain
Douglas Doerfler, Lawrence Berkeley National Laboratory, USA
Zhiyi Huang, University of Otago, New Zealand
Clay Hughes, Sandia National Laboratories, USA
Aleksandar Ilic, Universidade de Lisboa, Portugal
Bok Jik Lee, Gwangju Institute of Science and Technology, Korea
Ravi Reddy Manumachu, University College Dublin, Ireland
Dana Petcu, West University of Timisoara, Romania
Ivan Rodero, Rutgers University, USA
*********************************************************************
For more information see
http://conf.cisedu.info/rp/hpcs20/2-conference/special-sessions/session02-h…
Kind Regards
--
Samar Aseeri, PhD
Computational Scientist
Extreme Computing Research Center (ECRC)
Building 1 -Office: 0128
*King Abdullah University of Science & Technology*
Thuwal, Saudi Arabia
--
This message and its contents, including attachments are intended solely
for the original recipient. If you are not the intended recipient or have
received this message in error, please notify me immediately and delete
this message from your computer system. Any unauthorized use or
distribution is prohibited. Please consider the environment before printing
this email.
===========================================================
17th International Conference on Economics of Grids, Clouds, Systems &
Services
Extended Deadline: June 7th, 2020
===========================================================
ONLINE CONFERENCE with high interaction between participants
WWW: http://2020.gecon-conference.org
Dates: 15-17 September 2020
Proceedings: Springer LNCS
===========
/ NOTICES! /
===========
Extended Deadlines:
Extended abstract Submission deadline: May 31st, 2020
Full papers deadline: June 7th, 2020
The organizing committee of GECON 2020 has decided all
sessions will be held exclusively online!
We consider the new online format to offer opportunities
for exploring new ways of improving the interaction and
feedback of the audience with speakers and promoting
networking among the conference participants.
The registration fee of the online conference has been
reduced to 250€ for one author of each publication,
100 € for participants, and 50€ for students.
The selection process will run as planned. The timely
publication of accepted papers in the proceedings of
GECON 2020 will be published in the LNCS series of
Springer as announced.
Due to the new online format, GECON maintains open the
proposal for special sessions. With the objective of
encouraging alternative forms of participation that can
increase discussions of technical topics and new ideas.
We solicit new topics and birds-of-a-feather session
proposals. Deadline for proposals is August 15th, 2020.
========
/ SCOPE /
========
GECON 2020 builds upon the very successful tradition
of the conference previous editions
(http://www.gecon-conference.org) since 2003. GECON
solicits contributions that are interdisciplinary,
combining business and economic aspects with
engineering and computer science related themes.
==============
/ Important Dates /
==============
Deadlines:
Extended abstract submission deadline: May 31st, 2020
Full papers deadline: June 7th, 2020
Notification of acceptance: July 6th, 2020
Camera Ready deadline: July 13th, 2020
Poster Submission for accepted papers: July 20th, 2020
Birds of a feather session proposals: August 15th, 2020
==============================
/ Publication and Submission Guidelines /
==============================
Original full papers and work-in-progress papers,
which are not currently under review by another
conference, will be considered. Manuscripts will be
reviewed based on technical merit, originality, and
relevance. Past acceptance rates have been around
30 per cent in recent years.
Full papers, work-in-progress (WIP) papers, and
wild-and-crazy-ideas (WACI) papers shall be submitted
using the Springer LNCS format.
Submitted full papers should not exceed 12 pages, WIP
papers should not exceed 8 pages (including references
and appendices) and WACI papers (4 pages). For further
details, visit the GECON 2020 web page. Paper
submissions are managed through EasyChair at
(https://easychair.org/conferences/?conf=gecon2020).
The proceedings will be published by Springer LNCS.
Extended versions of up to 10 accepted papers in the
Computer
Science field will be invited for publication
in a special issue of the:
- Elsevier Journal of Future Generation Computing Systems.
For papers targeting mainly business and economic
aspects, a special issue of the
- Springer Electronic Markets Journal or
- Elsevier Electronic Commerce and Applications
with up to 5 papers is foreseen.
==============
/ Topics of Interest /
==============
As a global market for infrastructures, platforms, and
software services emerge, the need to understand and deal
with its implications and its interdisciplinary challenges
is quickly growing. To address this, GECON encourages the
submission of papers, which combine at least one
economic/legal area and one technologic area. GECON list
of areas includes, but is not limited to:
-Economics-
Incentive design, strategic behavior & game theory
Market mechanisms, auctions models, and bidding languages
Economic efficiency
Techno-economic analysis and modelling
Pricing schemes and revenue models
Metering, accounting, and billing
Cost-benefit analysis
Automated trading and bidding support tools
Trust, reputation, security, and risk management
Performance monitoring, optimization, and prediction
Reports on industry test-beds and operational markets
Energy efficiency
Sustainability
Business models and strategies
Decision support
Open source ecosystems
-Law and Legal Aspects-
Standardization, interoperability, and legal aspects
Service level agreements (SLAs), negotiation,
Monitoring and enforcement
Governance of ecosystems
Privacy
-Clouds, Grids, Systems and Services-
IaaS, SaaS, PaaS and Federation of resources
Vertical scaling, burstable computing, vertical elasticity
Resource management: allocation, sharing, scheduling
Capacity planning
Virtualization and containers
Service science, management and engineering (SSME)
Software engineering
Security
-Technologies Transforming the Economy-
Smart grids, smart cities, and smart buildings
Energy-aware infrastructures and services
Fog, edge, osmosis computing
Micro-services, serverless computing
Internet-of-Things
Blockchains
Community networks
Social networks
Social computing
Big data
Data stream ingestion and complex event processing
Additionally, the following special topic sessions have been
lined up (a detailed description is available on the GECON
2020 submission web site):
-Digital Infrastructures to Support Decision Making for
Pandemic Response and Countermeasures-
Contact:
GECON 2020 Chairs,
gecon2020(a)easychair.org
-Decentralising Clouds to Deliver Intelligence at the Edge-
Contact:
Seugwoo Kum,
Korean Electronics Technology Institute, Korea,
seungwoo.kum(a)gmail.com;
Domenico Siracusa,
Fondazione Bruno Kessler, Italy,
dsiracusa(a)fbk.eu.
-Sustainability of Digital Infrastructures: Social, Economic,
and Policy Aspects for Material Resources Supporting the
Digital World-
Contact:
Leandro Navarro
Universitat Politecnica de Catalunya, Spain,
leandro(a)ac.upc.edu;
Felix Freitag
Universitat Politecnica de Catalunya, Spain,
felix(a)ac.upc.edu
-Business and Economic Aspects of Machine Learning, Cognitive
Systems and Data Science-
Contact:
Aurilla Aurelie Arntzen
University of South-Eastern, Norway,
aurilla.aurelie.arntzen(a)usn.no
====================
/ Conference Organization /
====================
Conference Chair
Vlado Stankovski (University of Ljubljana,Slovenia)
Conference Vice-Chairs
Karim Djemame (University of Leeds, UK)
Orna Agmon Ben-Yehuda (University of Haifa, Israel)
Jorn Altmann (Seoul National University, South-Korea)
Jose Angel Banares (Zaragoza University, Spai
Steering Committee
Karim Djemame (University of Leeds, UK)
Jorn Altmann (Seoul National University, South-Korea)
Jose Angel Banares (Zaragoza University, Spain)
Orna Agmon Ben-Yehuda (Technion, Israel)
Steven Miller (Singapore Management University, Singapore)
Omer F. Rana (Cardiff University, UK)
Gheorghe Cosmin Silaghi (Babes-Bolyai University, Romania)
Konstantinos Tserpes (Harokopio University, Greece)
Maurizio Naldi (Universita di Roma, Italy)
Contact for Questions: gecon2020(a)easychair.org
@&@#^%&*%$@*#*&%#%^&$#@^@^&@%$@*^#&@
@%#&#@^*$@@#*%&%#@*$*&^@#$%@#%&$&%@
Prof. Dr. Jörn ALTMANN
office 37-305
Technology Management, Economics, and Policy Program
Departmentof Industrial Engineering
Collegeof Engineering
Seoul National University
1 Gwanak-Ro, Gwanak-Gu, 08826 Seoul, South-Korea
phone: +82 70 7678 6676
phone: +49 4155 129333
phone: +1 510 962 3062
phone: +44 20 32393134
fax: +1 610 956 4404
email: jorn.altmann(a)acm.org
www: http://altmann.my-groups.de/
*The Third Special Session on Virtualization in Machine Learning, High
Performance Computing and Simulation*
*(VIRT 2020)*
*CALL FOR PAPERS & PARTICIPATION*
*As part of *
*The 18th International Conference on High Performance Computing &
Simulation (HPCS 2020)http://hpcs2020.cisedu.info/
<http://hpcs2020.cisedu.info/> or http://conf.cisedu.info/rp/hpcs20
<http://conf.cisedu.info/rp/hpcs20>*
*26 - 30 October*
* 2020*
*Barcelona, Spain*
*(Tentative)*
* Paper Submission Deadline: 17 June 2020*
*Submissions could be for full papers, short papers, poster papers, or
posters*
*PURPOSE AND SCOPE*
Virtualization has become the foundation of cloud computing. The scale of
cloud computing data centers is similar to the supercomputers used in High
Performance Computing. Both involve millions of CPU cores, tens of
thousands of accelerators like GPUs, FPGAs connected by high speed
interconnects and different connection topologies. Studies have shown that
the GPU utilization in HPC is often at 50%. Virtualization can be the key
to increasing resource utilization and managing massive infrastructures
efficiently.
GPU vendors have introduced virtualized versions of GPUs. FPGAs are being
deployed in virtual infrastructure. These and other developments in the
field, along with future exascale systems, will provide increasing degree
of virtualization within the systems.
The goal of this special session is to be an opportunity to discuss and
exchange research on the different virtualization technologies and how they
can be efficiently applied in High Performance Computing. Theoretical
research, engineering solutions dealing with practical tradeoffs, and
complex system implementation papers are welcomed.
*The VIRT topics include (but are not limited to) the following: *
- *Virtualization in HPC*
o Energy efficient solutions for HPC applications in the cloud environment
o High-availability based on system-level virtualization mechanisms for HPC
o Fault tolerance mechanisms based on system-level virtualization
mechanisms for HPC
o Performance and evaluation of diverse HPC workloads in virtualization
environment
o Security Isolation, Resource Isolation and Data Isolation in Virtualized
HPC
o Flexibility and Ease of system administration and management for
virtualized environments for HPC
o Running diverse workloads
o Running heterogeneous Operating Systems
o Live Migration and Suspend/Resume of VMs to improve resource utilization
and avoid downtime
o Scheduling of resources and Workloads
o Software Defined Data Centers (SDDC)
o Hypervisors and other virtualization solutions tailored for HPC systems
o Big Data and Analytics in Virtualized Environments
o Enterprise High Performance Computing in Virtualized Environments
- *Accelerators in Virtualized HPC Environments:*
o Virtualized GPUs
o Scheduling of Virtual GPUs
o Using FPGAs in Virtualization Stack
o Dynamic Reconfiguration of FPGAs
- * IO Virtualization*
o Network Virtualization
o SR-IOV
o Software Defined Networking (SDN)
o Storage Virtualization
o RDMA and vRDMA
-
- Containers in HPC
o Isolation of Multiple User-Spaces
o Running containers in Virtual Machines
- *Tools*
o Virtualization solutions for dealing with heterogeneity in HPC
environments
o Compilers for heterogenous architectures involving GPUS, FPGAs,
multi-core CPUs
o Operating system support for virtualization in HPC systems
o Debugging and/or profiling in virtual environments
- *Algorithms*
o Distributed Resource Scheduling
o Distributed Computing
- *AI, Machine Learning and Deep Learning*
o Virtualization of Deep Learning Workloads
o Deep Learning in HPC Simulations
o Resource Allocation Using Machine Learning
o Reinforcement Learning for Resource Allocation
o Machine Learning to build tools for measurement & calibration
- *Virtualization in Simulation*
*INSTRUCTIONS FOR PAPER SUBMISSIONS *
You are invited to submit original and unpublished research works on above
and other topics related to *virtualization in high performance computing
and simulation*. Submitted papers must not have been published or
simultaneously submitted elsewhere until it appears in HPCS proceedings, in
the case of acceptance, or notified otherwise. Submission can be for
*- Regular papers*, please submit a PDF copy of your full manuscript, not
to exceed 8 double-column formatted pages per template, and include up to 6
keywords and an abstract of no more than 400 words. Additional pages will
be charged additional fee. Submission should include a cover page with
authors' names, affiliation addresses, fax numbers, phone numbers, and all
authors email addresses. Please, indicate clearly the corresponding
author(s) although all authors are equally responsible for the manuscript.
*- Short papers* (up to 4 pages), please submit a PDF copy of your full
manuscript, not to exceed 4 double-column formatted pages per template, and
include up to 6 keywords and an abstract of no more than 400 words.
Additional pages will be charged additional fee. Submission should include
a cover page with authors' names, affiliation addresses, fax numbers, phone
numbers, and all authors email addresses. Please, indicate clearly the
corresponding author(s) although all authors are equally responsible for
the manuscript.
*- Poster papers* and *Posters* (please refer to
http://hpcs2020.cisedu.info/1-call-for-papers-and-participation/call-for-po…
for
posters submission details) will also be considered.
Please specify the type of submission you have. Please include page numbers
on all preliminary submissions to make it easier for reviewers to provide
helpful comments.
Submit a PDF copy of your full manuscript to the special session paper
submission site at https://cmt3.research.microsoft.com/VIRT2020 .
Acknowledgement will be sent within 48 hours of submission.
*Conference Policies*
Only PDF files will be accepted, uploaded to the submission link above.
Each paper will receive a minimum of three reviews. Papers will be selected
based on their originality, relevance, significance, technical clarity and
soundness, presentation, language, and references. Submission implies the
willingness of at least one of the authors to register and present the
paper, if accepted. At least one of the authors of each accepted paper will
have to register and attend the HPCS 2020 conference to present the paper
at the special session as scheduled. By submitting the paper to the HPCS
conference, all authors agree to abide by all HPCS conference paper
submission, publication and presentation policies as well as following
ethical and professional codes of conduct, including those of the
professional co-sponsoring organizations. Contents of manuscripts submitted
to the tracks program committees shall be regarded as privileged as well
and handled in the same manner and standards. For more information, please
refer to the *Authors Info* and *Registration Info* pages.
*Proceedings*
Accepted papers will be published in the Conference proceedings.
Instructions for final manuscript format and requirements will be posted on
the HPCS 2020 Conference web site. It is our intent to have the proceedings
formally published in hard and soft copies and be available at the time of
the conference. The proceedings is projected to be included in the IEEE or
ACM Digital Library and indexed in all major indexing services accordingly.
*SPECIAL ISSUE*
Plans are underway to have the best papers, in extended version, selected
for possible publication in a reputable journal as special issue. Detailed
information will soon be announced and will be made available on the
conference website.
If you have any questions about paper submission or the special session,
please contact the special session organizers.
*IMPORTANT DATES*
*Paper Submissions: ------------------------------------------- 17 June
2020*
*Acceptance Notification: -------------------------------------- 10 July
2020*
*Camera Ready Papers and Registration Due by: ----------- 03 August 2020*
*Conference Dates: -------------------------------------------- 26-30
October 2020*
*SPECIAL SESSION ORGANIZERS*
*Uday Kurkure *
VMware, Inc.
3401 Hillview Avenue
Palo Alto, CA 94304, USA
Phone: +1 650-427-1179
Fax: +1 650-
Email: uday(a)alumni.stanford.edu
*Hari Sivaraman *
VMware, Inc.
3401 Hillview Avenue
Palo Alto, CA 94304, USA
Phone: +1 650-427-3681
Fax: +1 650-
Email: hsivaraman(a)vmware.com
*Lan Vu *
VMware, Inc.
3401 Hillview Avenue
Palo Alto, CA 94304, USA
Phone: +1 650-427-1327
Fax: +1 650-
Email: lanv(a)vmware.com
*International Program Committee*: *
All submitted papers will be rigorously reviewed by the special session
technical program committee members following similar criteria used in HPCS
2020 and will be published as part of the HPCS 2020 Proceedings.
- *Cristina Boeres*, Fluminense Federal University, Brazil
- *Isaac Gelado*, Nvidia Corp., Santa Clara, California, USA
- *Kyle Hale*, Illinois Institute of Technology, Illinois, USA
- *Xiaoyi Lu*, The Ohio State University - Columbus, Ohio, USA
- *Carlos Reano*, Queen's University Belfast, U.K.
- *Federico Silla*, Universitat Politecnica de Valencia, Spain
- *Alex Sim*, Lawrence Berkeley National Laboratory, California, USA
- *Giang Son Tran*, University of Science and Technology of Hanoi,
Hanoi, Vietnam
- *Blesson Varghese*, Queen's University Belfast, U.K.
- *Dong Ping Zhang*, AMD Inc., San Jose, California, USA
- *Jie Zhang*, Amazon Inc., Washington, USA
- *Yongli Zhao*, Beijing University of Posts and Telecommunications,
Beijing, China
Berkeley Lab's Computational Research Division has an opening for a
Postdoctoral Scholar to work on the BISICLES Ice Sheet Model.
The Applied Numerical Algorithms Group (ANAG), in partnership with the
Universities of Bristol and Swansea in the UK, is a home of BISICLES, an
open-source adaptive mesh refinement (AMR) ice sheet model under
development as a part of the U.S. Department of Energy-funded ProSPect
SciDAC partnership (see http://bisicles.lbl.gov). You will join an
interdisciplinary team of scientists and engineers in extending the
current BISICLES capabilities while applying the model to a range of
idealized and realistic problems.
ANAG develops advanced numerical algorithms and software for partial
differential equations integrated with the application of the software
to problems of independent scientific and engineering interest. The
primary focus of our work is in the development of high-resolution and
adaptive finite difference methods for partial differential equations in
complex geometries with applications to DOE-mission applications
including porous media flows, magnetohydrodynamics, industrial problems,
climate, and fusion energy.
Details, including how to apply, can be found here:
https://jobs.lbl.gov/jobs/bisicles-ice-sheet-model-postdoctoral-scholar-2616
We apologize if you receive multiple copies of this call for papers.
--------------------------------------------------------------------------------
13th Workshop on Resiliency in High Performance Computing (Resilience)
in Clusters, Clouds, and Grids
<https://www.csm.ornl.gov/srt/conferences/Resilience/2020>
in conjunction with
the 26th International European Conference on Parallel and Distributed
Computing (Euro-Par), Warsaw, Poland
August 24 - 28, 2020
<http://2020.euro-par.org>
2020 Workshop Format:
Due to the exceptional situation of COVID-19, this year Euro-Par and its
workshops will be organized as an all-virtual event. This includes the main
conference and workshops. The accepted workshop papers must be presented by
one of the authors in order to be included in the proceedings. There will
be a single minimal registration fee for each accepted paper in order to
cover expenses associated with organization and proceedings publication.
Only one author per paper needs to register (150 euros). Lastly, the
preferred presentation format for the workshop will be via a streaming
presentation, with slides and pre-recorded video presentations used in
exceptional situations.
Overview:
Resilience is a critical challenge as high performance computing (HPC)
systems continue to increase component counts, individual component
reliability decreases (such as due to shrinking process technology and
near-threshold voltage (NTV) operation), hardware complexity increases
(such as due to heterogeneous computing) and software complexity increases
(such as due to complex data- and workflows, real-time requirements and
integration of artificial intelligence (AI) technologies with traditional
applications).
Correctness and execution efficiency, in spite of faults, errors, and
failures, is essential to ensure the success of the HPC systems, cluster
computing environments, Grid computing infrastructures, and Cloud computing
services. The impact of faults, errors, and failures in such HPC systems
can range from financial losses due to system downtime (sometimes several
tens-of-thousands of Dollars per lost system-hour), to financial losses due
to unnecessary overprovision (acquisition and operating costs), to
financial losses and legal liabilities due to erroneous or delayed output.
The emergence of AI technology opens up new possibilities, but also new
problems. Using AI technology for operational intelligence that enables
resilience in HPC systems and centers is a complex control problem, while
designing resilient AI technology for HPC applications is a difficult
algorithmic problem. Resilience for HPC systems encompasses a wide spectrum
of fundamental and applied research and development, including theoretical
foundations, error/failure and anomaly detection, monitoring and control,
end-to-end data integrity, enabling infrastructure, and resilient
algorithms.
This workshop brings together experts in the community to further research
and development in HPC resilience and to facilitate exchanges across the
computational paradigms of extreme-scale HPC, cluster computing, Grid
computing, and Cloud computing.
Submission Guidelines:
Authors are invited to submit papers electronically in English in PDF
format. Submitted manuscripts should be structured as technical papers and
BETWEEN 10 AND 12 PAGES, including figures, tables and references, using
Springer's Lecture Notes in Computer Science (LNCS) format at
<http://www.springer.com/computer/lncs?SGWID=0-164-6-793341-0>. Papers with
less than 10 or more than 12 pages will not be accepted due to publisher
guidelines. Submissions should include abstract, key words and the e-mail
address of the corresponding author. Papers not conforming to these
guidelines may be returned without review. All manuscripts will be reviewed
and will be judged on correctness, originality, technical strength,
significance, quality of presentation, and interest and relevance to the
conference attendees. Submitted papers must represent original unpublished
research that is not currently under review for any other conference or
journal. Papers not following these guidelines will be rejected without
review and further action may be taken, including (but not limited to)
notifications sent to the heads of the institutions of the authors and
sponsors of the conference. Submissions received after the due date or not
appropriately structured may also not be considered. The proceedings will
be published in Springer's LNCS as post-conference proceedings. At least
one author of an accepted paper must register for and attend the workshop
for inclusion in the proceedings. Authors may contact the workshop program
chairs for more information.
Important websites:
- Resilience 2020 Website: <https://www.csm.ornl.gov/srt/conferences/Resilience/2020>
- Resilience 2020 Submissions: <https://easychair.org/conferences/?conf=europar2020workshop>
- Euro-Par 2020 website: <http://2020.euro-par.org>
Topics of interest include, but are not limited to:
- Theoretical foundations for resilience:
- Metrics and measurement
- Statistics and optimization
- Simulation and emulation
- Formal methods
- Efficiency modeling and uncertainty quantification
- Experience reports
- Error/failure/anomaly detection and reliability/dependability modeling:
- Statistical analyses
- Machine learning and artificial intelligence
- Digital twins
- Data collection and aggregation
- Information visualization
- Monitoring and control for resilience:
- Center, system and application monitoring and control
- Reliability, availability, serviceability and performability
- Tunable fidelity and quality of service
- Automated response and recovery
- Operational intelligence to enable resilience
- End-to-end integrity:
- Fault tolerant design of centers, systems and applications
- Forward migration and verification
- Degraded operation
- Error propagation, failure cascades, and error/failure containment
- Testing and evaluation, including fault/error/failure injection
- Enabling infrastructure for resilience:
- Reliability, availability, serviceability systems
- System software and middleware
- Resilience extensions for programming models
- Tools and frameworks
- Support for resilience in heterogeneous architectures
- Resilient algorithms:
- Algorithmic detection and correction
- Resilient solvers and algorithm-based fault tolerance
- Fault tolerant numerical methods
- Robust iterative algorithms
- Resilient artificial intelligence
Important Dates:
- Workshop papers due: June 12, 2020 (extended)
- Workshop author notification: July 21, 2020
- Workshop author registration: TBA
- Workshop paper (for informal workshop proceedings): July 21, 2020
- Workshop date: August 24 or 25, 2020
- Workshop camera-ready papers: September 11, 2020 (after the conference)
General Co-Chairs:
- Stephen L. Scott
Tennessee Tech University, USA
scottsl(a)ornl.gov
- Christian Engelmann
Oak Ridge National Laboratory , USA
engelmannc(a)ornl.gov
Program Co-Chairs:
- Ferrol Aderholdt
Middle Tennessee State University, USA
ferrol.aderholdt(a)mtsu.edu
- Thomas Naughton
Oak Ridge National Laboratory , USA
naughtont(a)ornl.gov
Workshop Chair Emeritus:
- Chokchai (Box) Leangsuksun
Louisiana Tech University, USA
box(a)latech.edu
Program Committee:
- Wesley Bland, Intel Corporation, USA
- Hans-Joachim Bungartz, Technical University of Munich, Germany
- Marc Casas, Barcelona Supercomputer Center, Spain
- Zizhong Chen, University of California at Riverside, USA
- Robert Clay, Sandia National Laboratories, USA
- Nathan DeBardeleben, Los Alamos National Laboratory, USA
- James Elliott, Sandia National Laboratories, USA
- Kurt Ferreira, Sandia National Laboratories, USA
- Saurabh Hukerikar, NVIDIA, USA
- Ignacio Laguna, Lawrence Livermore National Laboratory, USA
- Scott Levy, Sandia National Laboratories, USA
- Rolf Riesen, Intel Corporation, USA
- Yves Robert, ENS Lyon, France
- Thomas Ropars, Universite Grenoble Alpes, France
- Martin Schulz, Technical University of Munich, Germany
- Keita Teranishi, Sandia National Laboratories, USA
_________________________________________________________________________
Thomas Naughton naughtont(a)ornl.gov
Research Associate (865) 576-4184
Dear Computer Vision/Machine Learning/Autonomous Systems students,
engineers, scientists and enthusiasts,
Artificial Intelligence and Information analysis (AIIA) Lab, Aristotle
University of Thessaloniki, Greece is proud to have launched the live CVML
Web lecture series
that covers very important Computer Vision/Machine Learning topics. Two new
upcoming 45 min lectures will take place soon:
1) Motion estimation
2) Introduction to Machine Learning
New!: Date/time: Wednesday 20th May 2020, 17:00-18:30 EEST for both
lectures (7:00-8:30 am California time, 10:00-11:30 am New York time,
22:00-23:30 Beijing time).
Registration can be done using the link:
<http://icarus.csd.auth.gr/cvml-web-lecture-series/>
http://icarus.csd.auth.gr/cvml-web-lecture-series/
Registration for asynchronous access to CVML live Web lecture material
(video, pdf/ppt) for any past/present lecture can be done using the link:
<http://icarus.csd.auth.gr/cvml-web-lecture-series/>
http://icarus.csd.auth.gr/cvml-web-lecture-series/
Lecture abstracts
1) Motion estimation, Wednesday 20th May 2020, 17:00-17:45 EEST
Summary: Motion estimation principals will be analyzed. Initiating form 2D
and 3D motion models, displacement estimation as well as quality metrics for
motion estimation will subsequently be detailed. One of the basic motion
estimation techniques, namely block matching, will also be presented, along
with three alternative, faster methods. A good overview of deep neural
notion estimation will be presented. Phase correlation will be described,
next followed by optical flow equation methods. Finally, a brief
introduction to object detection and tracking will conclude the lecture.
2) Introduction to Machine Learning, Wednesday 20th May 2020, 17:45-18:30
EEST
Summary: This lecture will cover the basic concepts of Machine Learning.
Supervised, self-supervised, unsupervised, semi-supervised learning.
Multi-task Machine Learning. Classification, regression. Object detection,
Object tracking. Clustering. Dimensionality reduction, data retrieval.
Artificial Neural Networks. Adversarial Machine Learning. Generative Machine
Learning. Temporal Machine learning (Recurrent Neural Networks). Continual
Learning (few-shot learning, online learning). Reinforcement Learning.
Adaptive learning (Knowledge Distillation, Domain adaptation, Transfer
learning, Activation Pattern Analysis, Federated learning/Collaborative
learning, Ensemble learning). Precise mathematical definitions of ML tasks
will be presented.
Lecturer: Prof. Ioannis Pitas (IEEE fellow, IEEE Distinguished Lecturer,
EURASIP fellow) received the Diploma and PhD degree in Electrical
Engineering, both from the Aristotle University of Thessaloniki, Greece.
Since 1994, he has been a Professor at the Department of Informatics of the
same University. His current interests are in the areas of machine learning,
computer vision, intelligent digital media, human centered interfaces,
affective computing, 3D imaging and biomedical imaging. He has published
over 860 papers, contributed in 44 books in his areas of interest and edited
or (co-)authored another 11 books. He has also been member of the program
committee of many scientific conferences and workshops. In the past he
served as Associate Editor or co-Editor of 9 international journals and
General or Technical Chair of 4 international conferences. He participated
in 69 R&D projects, primarily funded by the European Union and is/was
principal investigator/researcher in 41 such projects. He has 31000+
citations to his work and h-index 83+ (Google Scholar). Prof. Pitas lead the
big European H2020 R&D project MULTIDRONE: <https://multidrone.eu/>
https://multidrone.eu/ and is principal investigator (AUTH) in H2020
projects Aerial Core and AI4Media. He is chair of the Autonomous Systems
initiative <https://ieeeasi.signalprocessingsociety.org/>
https://ieeeasi.signalprocessingsociety.org/.
Lecturing record of Prof. I. Pitas: He was Visiting/Adjunct/Honorary
Professor/Researcher and lectured at several Universities: University of
Toronto (Canada), University of British Columbia (Canada), EPFL
(Switzerland), Chinese Academy of Sciences (China), University of Bristol
(UK), Tampere University of Technology (Finland), Yonsei University (Korea),
Erlangen-Nurnberg University (Germany), National University of Malaysia,
Henan University (China). He delivered 90 invited/keynote lectures in
prestigious international Conferences and top Universities worldwide. He run
17 short courses and tutorials on Autonomous Systems, Computer Vision and
Machine Learning, most of them in the past 3 years in many countries, e.g.,
USA, UK, Italy, Finland, Greece, Australia, N. Zealand, Korea, Taiwan, Sri
Lanka, Bhutan.
Relevant links: a) Prof. I. Pitas:
<https://scholar.google.gr/citations?user=lWmGADwAAAAJ&hl=el>
https://scholar.google.gr/citations?user=lWmGADwAAAAJ&hl=el b) AIIA Lab
<http://www.aiia.csd.auth.gr> www.aiia.csd.auth.gr
General information: Lectures will consist primarily of live lecture
streaming and PPT slides. Attendees (registrants) need no special computer
equipment for attending the lecture. They will receive the lecture PDF
before each lecture and will have the ability to ask questions real-time.
Audience should have basic University-level undergraduate knowledge of any
science or engineering department (calculus, probabilities, programming,
that are typical e.g., in any ECE, CS, EE undergraduate program). More
advanced knowledge (signals and systems, optimization theory, machine
learning) is very helpful but nor required.
These two lectures are part of a 14 lecture CVML web course 'Computer vision
and machine learning for autonomous systems' (April-June 2020):
Introduction to autonomous systems
(delivered 25th April 2020)
Introduction to computer vision
(delivered 25th April 2020)
Image acquisition, camera geometry
(delivered 2nd May 2020)
Stereo and Multiview imaging
(delivered 9th May 2020)
Structure from Motion
(delivered 9th May 2020)
2D convolution and correlation algorithms
Motion estimation
Introduction to Machine Learning
Introduction to neural networks, Perceptron, backpropagation
Deep neural networks, Convolutional NNs
Deep learning for object/target detection
Object tracking
Localization and mapping
Fast convolution algorithms. CVML programming tools.
Sincerely yours
Prof. Ioannis Pitas
Director of Artificial Intelligence and Information analysis (AIIA) Lab,
Aristotle University of Thessaloniki, Greece
Post scriptum: To stay current on CVMl matters, you may want to register to
the CVML email list, following instructions in
<https://lists.auth.gr/sympa/info/cvml>
https://lists.auth.gr/sympa/info/cvml
<https://www.avast.com/sig-email?utm_medium=email&utm_source=link&utm_campai
gn=sig-email&utm_content=emailclient&utm_term=icon>
Virus-free.
<https://www.avast.com/sig-email?utm_medium=email&utm_source=link&utm_campai
gn=sig-email&utm_content=emailclient&utm_term=link> www.avast.com
[Please accept our apologies for multiple postings.]
CALL FOR PARTICIPATION
*******************************************************************************
GrAPL 2020: Workshop on Graphs, Architectures, Programming, and Learning
https://hpc.pnl.gov/grapl/
May 18, 2020
8AM – 10AM PDT
IMPORTANT: This year, GrAPL will hold two LIVE 45 minute Q&A sessions with the authors of the accepted papers and invited talks according to the schedule below. Papers and static presentations for the entire conference including the GrAPL Workshop will be made available to all conference registrants by Friday May 15th. Register for free at the IPDPS website (http://www.ipdps.org) to get instructions on how to access to this content. In addition, links to 3-5 minute lightning talks by the workshop speakers will be found at the GrAPL website (https://hpc.pnl.gov/grapl/) by May 15th.
To attend the Zoom Sessions, we ask participants to register in advance at the following link: https://tinyurl.com/grapl2020
The organizing committee will then provide the link to the session.
******************************************************************************
Program for May 18th:
0800 – 0845 (PDT): Session 1
Welcome message.
Algorithms and Applications
Kronecker Graph Generation with Ground Truth for 4-Cycles and Dense Structure in Bipartite Graphs
Trevor Steil (University of Minnesota), Scott McMillan (SEI, Carnegie Mellon University), Geoffrey Sanders (LLNL), Roger Pearce (LLNL), Benjamin Priest (LLNL)
A scalable graph generation algorithm to sample over a given shell distribution
M. Yusuf Özkaya (Georgia Institute of Technology), Muhammed Fatih Balin (Georgia Institute of Technology), Ali Pinar (SNL), Ümit V. Çatalyürek (Georgia Institute of Technology)
An incremental GraphBLAS solution for the 2018 TTC Social Media case study
Márton Elekes (Budapest University of Technology and Economics), Gábor Szárnyas (Budapest University of Technology and Economics)
Linear Algebraic Louvain Method in Python
Tze Meng Low (Carnegie Mellon University), Daniele Spampinato (Carnegie Mellon University), Scott McMillan (SEI, Carnegie Mellon University), Michel Pelletier (FPX, LLC)
0900 – 0945 (PDT): Session 2
Keynote - The GraphIt Universal Graph Framework: Achieving High-Performance across Algorithms, Graph Types and Architectures
Saman Amarasinghe (Massachusetts Institute of Technology)
API's and Implementations
Parallelizing Maximal Clique Enumeration on Modern Manycore Processors
Jovan Blanuša (IBM Research - Zürich, EPFL), Radu Stoica (IBM Research - Zürich), Paolo Ienne (EPFL), Kubilay Atasu (IBM Research - Zürich)
A Roadmap for the GraphBLAS C++ API
Benjamin A. Brock (UC Berkeley), Aydın Buluç (LBNL), Timothy G. Mattson (Intel), Scott McMillan (SEI, Carnegie Mellon University), José E. Moreira (IBM)
Considerations for a Distributed GraphBLAS API
Benjamin A. Brock (UC Berkeley), Aydın Buluç (LBNL), Timothy G. Mattson (Intel), Scott McMillan (SEI, Carnegie Mellon University), José E. Moreira (IBM), Roger Pearce (LLNL), Oguz Selvitopi (LBNL), Trevor Steil (University of Minnesota)
75,000,000,000 Streaming Inserts/Second Using Hierarchical Hypersparse GraphBLAS Matrices
Jeremy Kepner (MIT Lincoln Laboratory)
******************************************************************************
GrAPL is the result of the combination of two IPDPS workshops:
GABB: Graph Algorithms Building Blocks
GraML: Workshop on The Intersection of Graph Algorithms and Machine Learning
SUMMARY
-------
Data analytics is one of the fastest growing segments of computer science. Many real-world analytic workloads are a mix of graph and machine learning methods. Graphs play an important role in the synthesis and analysis of relationships and organizational structures, furthering the ability of machine-learning methods to identify signature features. Given the difference in the parallel execution models of graph algorithms and machine learning methods, current tools, runtime systems, and architectures do not deliver consistently good performance across data analysis workflows. In this workshop we are interested in graphs, how their synthesis (representation) and analysis is supported in hardware and software, and the ways graph algorithms interact with machine learning. The workshop’s scope is broad and encompasses the wide range of methods used in large-scale data analytics workflows.
This workshop seeks papers on the theory, model-based analysis, simulation, and analysis of operational data for graph analytics and related machine learning applications. In particular, we are interested, but not limited to the following topics:
• Provide tractability and performance analysis in terms of complexity, time-to-solution, problem size, and quality of solution for systems that deal with mixed data analytics workflows;
• Discuss the problem domains and problems addressable with graph methods, machine learning methods, or both;
• Discuss programming models and associated frameworks such as Pregel, Galois, Boost, GraphBLAS, GraphChi, etc., for building large multi-attributed graphs;
• Discuss how frameworks for building graph algorithms interact with those for building machine learning algorithms;
• Discuss hardware platforms specialized for addressing large, dynamic, multi-attributed graphs and associated machine learning;
Besides regular papers, short papers (up to four pages) describing work-in-progress or incomplete but sound, innovative ideas related to the workshop theme are also encouraged.
ORGANIZATION
------------
General co-Chairs:
Scott McMillan (CMU SEI), smcmillan(a)sei.cmu.edu
Manoj Kumar (IBM), manoj1(a)us.ibm.com
Program Chairs:
Danai Koutra (University of Michigan, Ann Arbor), dkoutra(a)umich.edu
Mahantesh Halappanavar (PNNL), hala(a)pnnl.gov
GrAPL's Little Helpers:
Tim Mattson (Intel)
Antonino Tumeo (PNNL)
Program Committee:
Nesreen K Ahmed, Intel Research and Intel AI, USA
Sasikanth Avancha, Intel Labs - Parallel Computing Lab, India
Aydin Buluç, Lawrence Berkeley National Lab, USA
Timothy A. Davis, University of Florida, USA
Jana Doppa, Washington State University, USA
John Gilbert, University of California at Santa Barbara, USA
Sergio Gómez, Universitat Rovira i Virgili, Catalonia
Will Hamilton, McGill University, Mila, Canada
Stratis Ioannidis, Northeastern University, Boston, USA
Bharat Kaul, Intel Labs - Parallel Computing Labs, India
Kamesh Madduri, The Pennsylvania State University, USA
Henning Meyerhenke, Humboldt University of Berlin, Germany
Indranil Roy, Natural Intelligence, USA
Robert Rallo, Pacific Northwest National Lab, USA
P. Sadayappan, University of Utah, USA
Yizhou Sun, University of California, Los Angeles, USA
Flavio Vella, Free University of Bozen, Italy
Steering Committee:
David A. Bader (New Jersey Institute of Technology)
Aydın Buluç (LBNL)
John Feo (PNNL)
John Gilbert (UC Santa Barbara)
Tim Mattson (Intel)
Ananth Kalyanaraman (Washington State University)
Jeremy Kepner (MIT Lincoln Laboratory)
Antonino Tumeo (PNNL)