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HPDIC 2013 : 2013 International Workshop on High Performance Data Intensive Computing co-located with IEEE IPDPS 2013 | |||||||||||||||
Link: http://cloud.hdu.edu.cn/hpdic2013/ | |||||||||||||||
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Call For Papers | |||||||||||||||
2013 International Workshop on High Performance Data Intensive Computing (HPDIC2013)
In Conjunction with IEEE IPDPS 2013 Hyatt Regency Cambridge Boston, Massachusetts, USA May 24, 2013 Important dates Workshop Paper Due: January 15th, 2013 Author Notification: February 10th, 2013 Camera-ready Paper Due: February 21st, 2013 Submit your paper via EasyChair for HPDIC2013 at: https://www.easychair.org/account/signin.cgi?conf=hpdic2013 Description Over the recent years, data generated by humanities, scientific activities, as well as commercial applications from a diverse range of fields have been increasing exponentially which is typically referred to as Big Data. Data volumes of applications in the fields of sciences and engineering, finance, media, online information resources, etc. are expected to double every two years over the next decade and further. With this continuing data explosion, it is necessary to store and process data efficiently by utilizing enormous computing power that is available in the form of multi/manycore platforms. This increase in the demand for high performance large-scale data processing has necessitated collaboration and sharing of data collections among the world's leading education, research, and industrial institutions and use of distributed resources owned by collaborating parties. This kind of data intensive computing is posing many challenges in exploiting parallelism of current and upcoming computer architectures, such as cache management, automated data collection and provisioning, online and near/real-time processing, very large scale system monitoring and management, programming models, etc. Performance related aspects are becoming the bottlenecks for implementation, deployment and commercial application and its operation in data intensive computing system. The high performance data intensive computing paradigm also comes up with algorithmic and engineering issues such as performance aspects not yet eminent but expected to grow with their scaling of the large scale systems, and the dynamics of management. These new challenges may comprise, sometimes even deteriorate the performance, efficiency, and scalability of the dedicated data intensive computing systems. There is no doubt in the industry and research community that the importance of data intensive computing has been raising and will continue to be the foremost fields of research. There are many emerging paradigms for Big Data processing including MapReduce/Hadoop/Spark/NoSQL stores and more. This raise brings up many research issues, in forms of capturing and accessing data effectively and fast, processing it while still achieving high performance and high throughput, and storing it efficiently for future use. Programming for high performance yielding data intensive computing is an important challenging issue. Expressing data access requirements of applications and designing programming language abstractions to exploit parallelism are at immediate need. Application and domain specific optimizations are also parts of a viable solution in data intensive computing. While these are a few examples of issues, research in data intensive computing has become quite intense during the last few years yielding strong results. Moreover, in a widely distributed environment, data is often not locally accessible and has thus to be remotely retrieved and stored. While traditional distributed systems work well for computation that requires limited data handling, they may fail in unexpected ways when the computation accesses, creates, and moves large amounts of data especially over wide-area networks. Further, data accessed and created is often poorly described, lacking both metadata and provenance. Scientists, researchers, and application developers are often forced to solve basic data-handling issues, such as physically locating data, how to access it, and/or how to move it to visualization and/or compute resources for further analysis. This workshop focuses on the challenges imposed by high performance data-intensive applications on distributed systems, and on the different state-of-the-art solutions proposed to overcome these challenges. It brought together the collaborative and distributed computing community and the data management community in an effort to generate productive conversations on the planning, management, and scheduling of data handling tasks and data storage resources. It is evident that data-intensive research is transforming computing landscape. We are facing the challenge of handling the deluge of data generated by sensors and modern instruments that are widely used in all domains. The number of sources of data is increasing, while, at the same time, the diversity, complexity and scale of these data resources are also growing dramatically. After the success of HPDIC2012, the 2013 International Workshop on High Performance Data Intensive Computing (HPDIC2013) is a forum for professionals involved in data intensive computing and high performance computing. The goal of this workshop is to bridge the gap between theory and practice in the field of high performance data intensive computing and bring together researchers and practitioners from academia and industry working on high performance data intensive computing technologies. We believe that high performance data intensive computing will benefit from close interaction between researchers and industry practitioners, so that the research can inform current deployments and deployment challenges can inform new research. In support of this, HPDIC2013 will provide a forum for both academics and industry practitioners to share their ideas and experiences, discuss challenges and recent advances, introduce developments and tools, identify open issues, present applications and enhancements for data intensive computing systems and report state-of-the-art and in-progress research, leverage each other's perspectives, and identify new/emerging trends in this important area. We therefore cordially invite contributions that investigate these issues, introduce new execution environments, apply performance evaluations and show the applicability to science and enterprise applications. We welcome various different kinds of papers that could formalize, simplify and optimize all the aspects of existing data intensive applications in science, engineering and business. We particularly encourage the submission of position papers that describe novel research directions and work that is in its formative stages, and papers about practical experiences and lessons learned from production systems. Papers of applied research, industrial experience reports, work-in-progress and vision papers with different criteria for each category that describe recent advances and efforts in the design and development of data intensive computing, functionalities and capabilities that will benefit many applications are also solicited. List of topics Topics of interests include, but are not limited to: High performance distributed cache and optimization High performance data transfer and ingestion NoSQL data store Machine Learning Algorithms for Big Data Data intensive computing in science, commerce, entertainment and medicine Data-intensive applications and their challenges Data Clouds, Data Grids, and Data Centers Data-aware toolkits and middleware Network support for data-intensive computing Remote and distributed visualization of large scale data Data archives, digital libraries, and preservation Service oriented architectures for data-intensive computing High performance data access toolkits Power and energy efficiency Accountability, QoS, and SLAs Data privacy and protection in a public cloud environment Programming models, abstractions for data intensive computing Data capturing, management, and scheduling techniques Future research challenges of data intensive computing Security and protection of sensitive data in collaborative environments MapReduce implementation issues and improvements MapReduce,Hadoop,Spark and their applications in data intensive computing Large-scale MapReduce (Grid and Desktop Grid) Scientific data-sets analysis Monitoring, troubleshooting, and failure recovery Distributed I/O (wide-area, grid, peer-to-peer) Search and data retrieval Storage and file systems Performance measurement, analytic modeling, simulation Submission Instructions Please submit full papers in PDF or doc format via the submission system. Do not email submissions. Papers must be written in English. The complete submission must be no longer than ten (10) pages. It should be typeset in two-column format in 10 point type on 12 point (single-spaced) leading. References should not be set in a smaller font. Submissions that violate any of these restrictions may not be reviewed. The limits will be interpreted fairly strictly, and no extensions will be given for reformatting. Final author manuscripts will be 8.5" x 11" (two columns IEEE format), not exceeding 10 pages; max 2 extra pages allowed at additional cost. The names of authors and their affiliations should be included on the first page of the submission. Simultaneous submission of the same work to multiple venues, submission of previously published work, or plagiarism constitutes dishonesty or fraud. Reviewing of full papers will be done by the program committee, assisted by outside referees. Accepted papers will be shepherded through an editorial review process by a member of the program committee. By submitting a paper, you agree that at least one of the authors will attend the workshop to present it. Otherwise, the paper will be excluded from the digital library of IEEE. Presented papers at the workshop will be recommended for publication in some prestigious journals indexed in the Thomson Reuters' SCI database. For HPDIC2012 with IPDPS2012 at Shanghai, we recommended the accepted papers to Concurrency and Computation: Practice and Experience, Cluster Computing, and Computing and Informatics. General Chairs Christophe CERIN, Professor, University of Paris XIII, France E-mail: christophe.cerin@gmail.com Cong-Feng JIANG, PhD, Hangzhou Dianzi University, China E-mail: cjiang@hdu.edu.cn Program Chairs Yuqing GAO, IEEE Fellow, IBM T. J. Watson Research, USA E-mail: yuqing@us.ibm.com Jilin ZHANG, PhD,Hangzhou Dianzi University, China E-mail: jilin.zhang@hdu.edu.cn Program Committee Members Walter Binder, University of Lugano, Switzerland Guoray Cai, Pennsylvania State University, USA Jiannong Cao, Hong Kong Polytechnic University, Hong Kong Jean-Paul Smets, Nexedi Inc., France Weihui Dai, Fudan University, China Qiang Duan, Pennsylvania State University, USA Amit Dvir, Budapest University of Technology and Economics, Hungary Gilles Fedak,INRIA Rhone-Alpes, Lyon, France Vatche Ishakian, Boston University, USA Woosung Jung, Chungbuk National University, Korea Mustapha Lebbah, Paris University XIII, France Yong Woo Lee, University of Seoul, Korea Chunlei Liu, Valdosta State University, USA Lei Liu, Karlsruhe Institute of Technology, Germany Shiyong Lu, Wayne State University, USA Audun Nordal, University of Tromsoe, Norway Weisong Shi, Wayne State University, USA R.K. Shyamasundar, Tata Institute of Fundamental Research, India Kumiko Tadano,NEC Corporation,Japan Peng Di, University of New South Wales,Australia Jian Tan, IBM Research, USA Hong-Linh Truong, Vienna University of Technology, Austria Xiaofei Zhang, Hong Kong University of Science and Technology, Hong Kong Brian Vinter , Copenhagen University, Denmark Kevin Wang,University of Auckland,New Zealand Stephen Wang, Toshiba Telecommunications Research Laboratory Europe, UK Jie Wu, Yale University, USA Bin Xiao, Hong Kong Polytechnic University, Hong Kong Jue Wang, supercomputing center of CAS, China Jian Zhao, Institute for Infocomm Research, Singapore Tingwei Chen,Liaoning University, China Hui Ma, Victoria University of Wellington, New Zealand |
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