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CFP DEADLINE Extension: 21 October, 2019

We welcome you to contribute or encourage your colleagues to contribute to the 
ISGC 2020. The submission deadline is extended to 14 October, 2019. Thank you 
very much for forwarding call to those potentially interested to submit.

************************************************

CALL for PARTICIPATION / ABSTRACTS

International Symposium on Grids and Clouds 
(ISGC<https://nam04.safelinks.protection.outlook.com/?url=http%3A%2F%2Fevent.twgrid.org%2Fisgc2020%2F&data=02%7C01%7Calan.sill%40ttu.edu%7C8172878376d04c21e38f08d750911235%7C178a51bf8b2049ffb65556245d5c173c%7C0%7C0%7C637066456350077736&sdata=cilVlpeBmIMPkBBBCdmxjFAjyMCVTvTxgUKMIAU%2FLH8%3D&reserved=0>)
 2020
8 ~ 13 March 2020, Academia Sinica, Taipei, Taiwan


Call for Abstracts
•  On-line Submission:  
https://indico4.twgrid.org/indico/event/11/<https://nam04.safelinks.protection.outlook.com/?url=https%3A%2F%2Findico4.twgrid.org%2Findico%2Fevent%2F11%2F&data=02%7C01%7Calan.sill%40ttu.edu%7C8172878376d04c21e38f08d750911235%7C178a51bf8b2049ffb65556245d5c173c%7C0%7C0%7C637066456350077736&sdata=lq4WkUeGxuVcnXLFCQkQOekWDoDMLeOwCcS4l3du8wY%3D&reserved=0>
•   Submission Deadline Extension: Monday, 21 October 2019
•   Abstract Word Limit: 400 (minimum)~600 (maximum) words
•   Acceptance Notification to Authors: (the week of) Monday, 9 December 2019
•  Conference website: 
http://event.twgrid.org/isgc2020/<https://nam04.safelinks.protection.outlook.com/?url=http%3A%2F%2Fevent.twgrid.org%2Fisgc2020%2F&data=02%7C01%7Calan.sill%40ttu.edu%7C8172878376d04c21e38f08d750911235%7C178a51bf8b2049ffb65556245d5c173c%7C0%7C0%7C637066456350087731&sdata=FvqWiPhwmBY6p%2Bc3xe69hch27UvZom1Q7kHdGaj6nls%3D&reserved=0>

Theme:
Challenges in High Performance Data Analytics: Combining Approaches in HPC, 
HTC, Big Data and AI

While the research data are becoming a real asset nowadays, it is an 
information and knowledge gained through thorough analysis that makes them so 
valuable. To process vast amounts of data collected, novel high performance 
data analytics methods and tools are needed, combining classical simulation 
oriented approaches, big data processing and advanced AI methods. Such a 
combination is not straightforward and needs novel insights at all levels of 
the computing environment – from the network and hardware fabrics through the 
operating systems and middleware to the platforms and software, not forgetting 
the security – to support data oriented research. Challenging use cases that 
apply difficult scientific problems are necessary to properly drive the 
evolution and also to validate such high performance data analytics 
environments.

The goal of ISGC 
2020<https://nam04.safelinks.protection.outlook.com/?url=http%3A%2F%2Fevent.twgrid.org%2Fisgc2020%2F&data=02%7C01%7Calan.sill%40ttu.edu%7C8172878376d04c21e38f08d750911235%7C178a51bf8b2049ffb65556245d5c173c%7C0%7C0%7C637066456350097726&sdata=%2FeM937h%2BBEQLuzYqfrkh99N73LnYWDAqnA39zQrY4dA%3D&reserved=0>
 is to create a face-to-face venue where individual communities and national 
representatives can present and share their contributions to the global puzzle 
and contribute thus to the solution of global challenges. We cordially invite 
and welcome your participation!

 Topics of Interest:

1.           Applications and results from the Virtual Research Communities and 
Industry

 (1)  Physics (including HEP) and Engineering Applications
Submissions should report on experience with physics and engineering 
applications that exploit grid and cloud computing services, applications that 
are planned or under development, or application tools and methodologies. 
Topics of interest include: (1) End-user data analysis including ML/DL based 
one; (2) Management of distributed data; (3) Applications level monitoring; (4) 
Performance analysis and system tuning; (5) Workload scheduling; (6) Management 
of an experimental collaboration as a virtual organization; (7) Comparison 
between grid and other distributed computing paradigms as enablers of physics 
data handling and analysis; (8) Expectations for the evolution of computing 
models drawn from recent experience handling extremely large and geographically 
diverse datasets; and (9) Application software development, optimization and 
benchmarking.

(2)  Biomedicine & Life Sciences Applications
During the last decade, research in Biomedicine and Life Sciences has 
dramatically changed thanks to the continuous developments in High Performance 
Computing and highly Distributed Computing Infrastructures such as grids and 
clouds, but also in big-data solutions to deal with the explosion in genomic 
data. This track aims at discussing problems, solutions and application 
examples related to this area of research, with a particular focus on 
non-technical end users. Submissions should concentrate on practical 
applications and solutions in the fields of Biomedicine and Life Sciences, such 
as  Drug discovery, Structural biology, Bioinformatics, Medical imaging, Public 
health applications / infrastructures, High throughput (grid and cloud-based) 
data processing/analysis,  Distributed data computing and services, and Big 
data management issues. Submissions should ideally highlight how the 
availability and use of Big Data has enabled new processes for or dramatically 
evolved the scope of their research.

(3)  Earth & Environmental Sciences & Biodiversity Applications
Natural and Environmental sciences are placing an increasing emphasis on the 
understanding of the Earth as a single, highly complex, coupled system with 
living and dead organisms. It is well accepted, for example, that the feedback 
involving oceanic and atmospheric processes can have major consequences for the 
long-term development of the climate system, which in turn affects 
biodiversity, natural hazards and can control the development of the cryosphere 
and lithosphere. Natural disaster mitigation is one of the most critical 
regional issues in Asia Despite the diversity of environmental sciences, many 
projects share the same significant challenges. These include the collection of 
data from multiple distributed sensors (potentially in very remote locations), 
the management of large low-level data sets, the requirement for metadata fully 
specifying how, when and where the data were collected, and the post-processing 
of those low-level data into higher-level data products which need to be 
presented to scientific users in a concise and intuitive form. This session 
would in particular address how these challenges are being handled with the 
aids of e-Science paradigm.

(4)  Humanities, Arts, and Social Sciences (HASS) Applications
Disciplines across the Humanities, Arts and Social Sciences (HASS) have 
critically engaged with technological innovations such as grid- and cloud 
computing, and, most recently, various data analytic technologies. The 
increasing availability of data, ranging from social media text data to 
consumer big data has led to an increasing interest in analysis methods such as 
natural language processing, social network analysis, machine learning and text 
mining. These developments pose challenges as well as opening up opportunities 
and members of the HASS community have been at the forefront of discussions 
about the impact that novel forms of data, novel computational infrastructures 
and novel analytical methods have for the pursuit of science endeavours and our 
understanding of what science is and can be.

The ISGC 2020 HASS track invites papers and presentations covering applications 
demonstrating the opportunities of new technologies or critically engaging with 
their methodological implications in the Humanities, Arts and Social Sciences. 
Innovative application of analytical tools for survey data, social media data, 
and government (open) data are welcomed. We also invite contributions that 
critically reflect on the following subjects: (1) the impact that ubiquitous 
and mobile access to information and communication technologies have for 
society more generally, especially around topics such as smart cities, civic 
engagement, and digital journalism; (2) philosophical and methodological 
reflections on the development of the techniques and the approaches by which 
data scientists use to pursue knowledge.

2.           Technologies that provide access and exploitation of different 
site resources and infrastructures

(5)  Virtual Research Environment (including tools, services, workflows, 
portals, … etc.)
Virtual Research Environments (VRE) provide an intuitive, easy-to-use and 
secure access to (federated) computing resources for solving scientific 
problems, trying to hide the complexity of the underlying infrastructure, the 
heterogeneity of the resources, and the interconnecting middleware. Behind the 
scenes, VREs comprise tools, middleware and portal technologies, workflow 
automation as well a security solutions for layered and multifaceted 
applications. Topics of interest include but are not limited to: (1) Real-world 
experiences building and/or using VREs to gain new scientific knowledge; (2) 
Middleware technologies, tools, services beyond the state-of-the-art for VREs; 
(3) Science gateways as specific VRE environments, (4) Innovative technologies 
to enable VREs on arbitrary devices, including Internet-of-Things; and (5) 
One-step-ahead workflow integration and automation in VREs.

(6)   Data Management & Big Data
The rapid growth of the data available to scientists and scholars – in terms of 
Velocity and Variety as well as sheer Volume – is transforming research across 
disciplines. Increasingly these data sets are generated not just through 
experiments, but as a byproduct of our day-to-day digital lives. This track 
explores the consequences of this growth, and encourages submissions relating 
to two aspects in particular - firstly, the conceptual models and analytical 
techniques required to process data at scale; secondly, approaches and tools 
for managing and creating these digital assets throughout their lifecycle.

3.     Infrastructure for Research

(7)    Network, Security, Infrastructure & Operations
Networking and the connected e-Infrastructures are becoming ubiquitous. 
Ensuring the smooth operation and integrity of the services for research 
communities in a rapidly changing environment are key challenges. This track 
focuses on the current state of the art and recent advances in these areas: 
networking, infrastructure, operations, and security. The scope of this track 
includes advances in high-performance networking (software defined networks, 
community private networks, the IPv4 to IPv6 transition, cross-domain 
provisioning), the connected data and compute infrastructures (storage and 
compute systems architectures, improving service and site reliability, 
interoperability between infrastructures, data centre models), monitoring tools 
and metrics, service management (ITIL and SLAs), and infrastructure/systems 
operations and management. Also included here are issues related to the 
integrity, reliability, and security of services and data: developments in 
security middleware, operational security, security policy, federated identity 
management, and community management. Submissions should address solutions in 
at least one of these areas.

(8)    Infrastructure Clouds and Virtualizations
This track will focus on the development of cloud infrastructures and on the 
use of cloud computing and virtualization technologies in large-scale 
(distributed) computing environments in science and technology. We solicit 
papers describing underlying virtualization and "cloud" technology including 
integration of accelerators and support for specific needs of AI/ML and DNN, 
scientific applications and case studies related to using such technology in 
large scale infrastructure as well as solutions overcoming challenges and 
leveraging opportunities in this setting. Of particular interest are results 
exploring the usability of virtualization and infrastructure clouds from the 
perspective of machine learning and other scientific applications, the 
performance, reliability and fault-tolerance of solutions used, and data 
management issues. Papers dealing with the cost, price, and cloud markets, with 
security and privacy, as well as portability and standards, are also most 
welcome.

(9)   Converging High Performance infrastructures: Supercomputers, clouds, 
accelerators
The classical simulation-oriented computing is nowadays complemented by the 
novel general machine learning and specifically deep neural networks based 
approaches. This requires novel approaches to build high performance 
infrastructures, combining supercomputers, high performance clouds, specialized 
DNN hardware and other accelerators. An additional challenge lies in the 
individual components being provided by different owners, usually in a 
federated distributed way.

                 This track solicits recent research and development 
achievements and best practices in building and exploiting these converging 
high performance infrastructures or their components. The topics of interest 
include, but are not limited to the followings: (1) Building and use of modern 
high performance computing systems, including special support for AI and DNN in 
particular; (2) Use of virtualization techniques and containers to support 
access to and portability across different heterogeneous systems; (3) 
Experiences, use cases and best practices on the development and operation of 
large-scale heterogeneous applications; (4) Integration and interoperability to 
support coordinated federated use of different e-infrastructures 
(supercomputers, accelerated clouds, …) and their building blocks; (5) 
Performance of different applications on these integrated high performance 
infrastructures.

Program Committees (In last name alphabetic order)

Kento Aida, NII, JP

Jim Basney, Univ. of Illinois at Urbana-Champaign. US

Daniele Bonacorsi, Univ. of Bologna,, IT

Alexandre M.J.J Bonvin, Utrecht Univ., NL

Yaning, Arthur Chen, Tamkang Univ., TW

Gang Chen, IHEP/ CAS, CN

Patrick Fuhrmann, DESY, DE

David Groep, Nikhef, NL

Mark Hedges, King's College London, UK

David Kelsey, STFC-RAL, UK

Dieter Kranzlmüller, LMU Munich, DE

Yannick Legre, EGI.eu<http://EGI.eu>, NL

Simon C. Lin, Academia Sinica, TW

Satoshi Matsuoka, Tokyo Inst. of Tech, JP

Ludek Matyska, CESNET, CZ

Glenn Moloney, Univ. of Melbourne, AU

Tomoaki Nakamura, KEK, JP

Suhaimi Napis, UPM, MY

Alan Sill, Texas Tech Univ., US

Basuki Suhardiman, ITB, ID

Junichi Tanaka, Univ. of Tokyo, JP

Andrea Valassi, CERN, CH

Alexander Voss, Univ. of St. Andrews, UK

Von Welch, Indiana University, US


Remarks

All submitted abstracts will be reviewed by the ISGC program committee and 
track conveners.  Authors will receive notification of acceptance in the week 
of 9 December 2019. For any further questions, please contact the Secretariat.

        Ms. Stella Shen ([email protected]<mailto:[email protected]>)
        Ms. Vicky Huang ([email protected])<mailto:[email protected]>

        Tel: +886-2-2789-8375
        Fax: +886-2-2783-5434


Sincerely,

ISGC Secretariat
Academia Sinica Grid Computing Centre (ASGC)
Taipei, Taiwan



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