posted by organizer: arindamp || 8252 views || tracked by 5 users: [display]

BigDF 2017 : IEEE International Workshop on Foundations of Big Data Computing

FacebookTwitterLinkedInGoogle

Link: https://sites.google.com/site/hipcbigdf/
 
When Dec 18, 2017 - Dec 18, 2017
Where Jaipur, India
Abstract Registration Due Jul 24, 2017
Submission Deadline Aug 1, 2017
Notification Due Sep 17, 2017
Final Version Due Oct 3, 2017
Categories    algorithms   big data analytics   machine learning   high performance computing
 

Call For Papers

*******************************************************************************
CALL FOR PAPERS

IEEE International Workshop on Foundations of Big Data Computing (BigDF 2017)
In conjunction with HiPC 2017 (http://www.hipc.org)
December 18, 2017
Le Meridien, Jaipur, India

http://hipc.org/foundations-of-big-data-computing-workshop/
*******************************************************************************

What constitutes a “Big Data” problem? What application domains are best suited to benefit from Big Data analytics and computing? What are the traits and characteristics of an application that make it suited to exploit Big Data analytics? How can Big Data systems and frameworks be designed to allow the integration and analysis of complex data sets? How can research in Big Data Analytics benefit from the latest advances in supercomputing and High Performance Computing (HPC) architectures? The goal of this workshop is to address questions like these that are fundamental to the advancement of Big Data computing, and in the process, build a diverse research community that has a shared vision to advance the state of knowledge and discovery through Big Data computing.

Topics of interest include research contributions and innovative methods in the following areas (but not limited to):

* Scalable tools, techniques and technologies for Big Data analytics (e.g., graph and stream data analysis, machine learning and emerging deep learning methods)
* Algorithms and Programming Models for Big Data
* Big Data applications - Challenges and Solutions (e.g., life sciences, health informatics, geoinformatics, climate, socio-cultural dynamics, business analytics, cybersecurity)
* Scalable Big Data systems, platforms, services, and management
* Big Data toolkits, workflows, metrics, and provenance.

We invite paper submissions that describe original research contributions in the area of Big Data computing, and position papers that highlight the potential challenges and opportunities that arise in Big Data computing. We also invite short papers that describe work-in-progress original research.

Regular papers can be up to 8 pages long and short papers can be up to 4 pages long. All submissions will undergo rigorous peer-review by the technical program committee, and accepted manuscripts will appear in the HiPC workshop ("HIPCW") proceedings and will be indexed by IEEE digital library. Authors of the accepted manuscripts will be required to present their work at the workshop proceedings.

Paper Submission link: The paper submission opens July 1, 2017. Click on the following link for submitting your papers: https://www.easychair.org/conferences/?conf=hipcbigdf17

Authors can submit an abstract prior to submitting the full paper for review. The abstract is not mandatory but is recommended to help organizers plan the review phase in a timely fashion (i.e., authors can submit a full paper without having submitted an abstract). However, submissions with only full papers will be reviewed.

Organizing Committee:

* General Chairs: Dinkar Sitaram (PESIT), Ananth Kalyanaraman (Washington State University)
* Program Chairs: Madhu Govindaraju (SUNY Binghamton), Saumyadipta Pyne (IIPH, Hyderabad)
* Publicity Chair: Arindam Pal (TCS Research and Innovation)
* Proceedings Chair: Ren Chen, USC (HiPC proceedings chair)
* Industry Liaison: Vivek Yadav (FullStackNet, India)

Technical Program Committee:

Medha Atre, IIT Kanpur

Ariful Azad, Lawrence Berkeley National Laboratory

Biplab Banerjee, IIT Roorkee

Suren Byna, Lawrence Berkeley National Laboratory

Nabanita Das, Indian Statistical Institute

Oded Green, Georgia Institute of Technology

Manish Kurhekar, Visvesvaraya National Institute of Technology

Suresh Marru, Indiana University

Arindam Pal, TCS Research

Laks Raghupathi, Shell, India

Sudip Seal, Oak Ridge National Laboratory

Gokul Swamy, Amazon

Devesh Tiwari, Northeastern University

Abhinav Vishnu, Pacific Northwest National Laboratory

Yinglong Xia, Huawei Research America

Jaroslaw Zola, University of Buffalo

Related Resources

IEEE ICCCBDA 2023   IEEE--2023 the 8th International Conference on Cloud Computing and Big Data Analytics (ICCCBDA 2023)
MLDM 2023   18th International Conference on Machine Learning and Data Mining
ICCCBDA 2023   IEEE--2023 the 8th International Conference on Cloud Computing and Big Data Analytics (ICCCBDA 2023)
ICMLA 2022   IEEE International conference on Machine Learning and Applications
ICBDA 2023   IEEE--2023 the 8th International Conference on Big Data Analytics (ICBDA 2023)
IJCNN 2023   International Joint Conference on Neural Networks
IEEE SSCI 2023   2023 IEEE Symposium Series on Computational Intelligence
CFDSP 2023   2023 International Conference on Frontiers of Digital Signal Processing (CFDSP 2023)
IEEE Big Data - MMBD 2022   IEEE Big Data 2022 Workshop on Multimodal Big Data
ICCSEA 2022   12th International Conference on Computer Science, Engineering and Applications