MLHPC2015
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Call for Papers

The intent of this workshop is to bring together researchers, practitioners, and scientific communities to discuss methods that utilize extreme scale systems for machine learning. This workshop will focus on the greatest challenges in utilizing HPC for machine learning and methods for exploiting data parallelism, model parallelism, ensembles, and parameter search. We invite researchers and practitioners to participate in this workshop to discuss the challenges in using HPC for machine learning and to share the wide range of applications that would benefit from HPC powered machine learning.

In recent years, the models and data available for machine learning (ML) applications have grown dramatically. High performance computing (HPC) offers the opportunity to accelerate performance and deepen understanding of large data sets through machine learning. Current literature and public implementations focus on either cloud-­‐based or small-­‐scale GPU environments. These implementations do not scale well in HPC environments due to inefficient data movement and network communication within the compute cluster, originating from the significant disparity in the level of parallelism. Additionally, applying machine learning to extreme scale scientific data is largely unexplored. To leverage HPC for ML applications, serious advances will be required in both algorithms and their scalable, parallel implementations.

Topics will include but will not be limited to:

  • Machine learning models, including deep learning, for extreme scale systems
  • Enhancing applicability of machine learning in HPC (e.g. feature engineering, usability)
  • Learning large models/optimizing hyper parameters (e.g. deep learning, representation learning)
  • Facilitating very large ensembles in extreme scale systems
  • Training machine learning models on large datasets and scientific data
  • Overcoming the problems inherent to large datasets (e.g. noisy labels, missing data, scalable ingest)
  • Applications of machine learning utilizing HPC
  • Future research challenges for machine learning at large scale.
  • Large scale machine learning applications

Authors are invited to submit full papers with unpublished, original work of not more than 10 pages. Authors are also welcome to submit 5-page papers describing initial research, 5-page position papers, and 2-page poster abstracts. All papers should be formatted using the ACM style (see http://www.acm.org/sigs/publications/proceedings-templates). All accepted papers (subject to post-review revisions) will be published in the ACM digital and IEEE Xplore libraries by ACM SIGHPC. Papers should be submitted using EasyChair at: https://www.easychair.org/conferences/?conf=mlhpc2015.

Important Links

Paper templates
Paper submission

Papers must be written in English and be formatted according to the ACM formatting guidelines linked above and submitted electronically as a PDF file.

All submissions will be peer-reviewed for correctness, originality, technical strength, significance, quality of presentation, and relevance to the workshop topics of interest, by at least 3 reviewers. Submitted papers may not have appeared in or be under consideration for another workshop, conference or a journal, nor may they be under review or submitted to another forum during the MLHPC review process.

All accepted papers (subject to post-review revisions) will be published in the ACM digital and IEEE Xplore libraries by ACM SIGHPC.

UPDATED AUGUST 27. ALL DATES ARE FIRM.

August 15, 2015 September 15, 2015 – Submission deadline

September 15, 2015 October 1, 2015 – Notification of Acceptance

October 1, 2015 October 12, 2015 – Camera-ready submission due

November 15, 2015 – Workshop


Contact: Robert M. Patton, pattonrm "at" ornl.gov

© 2015 Oak Ridge National Laboratory

In cooperation with

Machine Learning in HPC Environments

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