JiscMail Logo
Email discussion lists for the UK Education and Research communities

Help for CPHC-CONF Archives


CPHC-CONF Archives

CPHC-CONF Archives


cphc-conf@jiscmail.ac.uk


View:

Message:

[

First

|

Previous

|

Next

|

Last

]

By Topic:

[

First

|

Previous

|

Next

|

Last

]

By Author:

[

First

|

Previous

|

Next

|

Last

]

Font:

Proportional Font

LISTSERV Archives

LISTSERV Archives

CPHC-CONF Home

CPHC-CONF Home

CPHC-CONF  January 2019

CPHC-CONF January 2019

Options

Subscribe or Unsubscribe

Subscribe or Unsubscribe

Log In

Log In

Get Password

Get Password

Subject:

[CFP] GrAPL 2019 - co-located with IPDPS 2019

From:

"Tumeo, Antonino" <[log in to unmask]>

Reply-To:

Tumeo, Antonino

Date:

Wed, 2 Jan 2019 10:55:45 +0000

Content-Type:

text/plain

Parts/Attachments:

Parts/Attachments

text/plain (1 lines)

[Apologies if you receive multiple copies of this CFP]

GrAPL 2019: Workshop on Graphs, Architectures, Programming, and Learning
http://hpc.pnl.gov/grapl
Co-Located with IPDPS 2019
May 20, 2019
Hilton Rio De Janeiro
Brazil

-----------------------------
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
-----------------------------

Data analytics is one of the fastest growing segments of computer science. Much of the recent focus in Data Analytics has emphasized machine learning. This is understandable given the success of deep learning over the last decade. However, 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 which is a natural outgrowth of the wide range of methods used in large-scale data analytics workflows. 

The objectives of this workshop are as follows:
* Understand data analytics workflows and the mix of graph and machine learning algorithms they require
* Understand the synergies between evolving device technology and graph analytics applications to drive: 1) the direction of emerging hardware and software architecture, 2) new graph analytics algorithms that better exploit the emerging hardware; and 3) application workflows that mix the large graph synthesis and analytics and machine learning.
* Explore different frameworks, languages and libraries to support programming graph analytics and machine learning algorithms
* Evaluate the performance and scalability of integrated platforms for large graph synthesis and analysis, and machine learning

While each of these topics on their own are well addressed in other workshops, we are particularly interested in the cross-cutting synergies. For example, hardware and software architectures specialized for machine learning (and in particular deep learning) may be poorly suited for graph algorithms. Can we understand these conflicting needs and perhaps find an architecture jointly optimized for both?

This workshop seeks papers on the theory, model-based analysis, simulation, and analysis of operational data for graph analytics and related machine learning applications. We are particularly interested in papers that:

* Discuss hardware platforms specialized for addressing large, dynamic, multi-attributed graphs and associated machine learning;
* 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 the problem domains and problems addressable with graph methods, machine learning methods, or both;
* Provide tractability performance analysis in terms of complexity, time-to-solution, problem size, and quality of solution for systems that deal with mixed data analytics workflows.

Besides regular papers, papers describing work-in-progress or incomplete but sound, innovative ideas related to the workshop theme are also encouraged. 

-----------------------------
Important Dates
-----------------------------
Position or full paper submission: February 1, 2019 
Notification: February 28, 2019
Camera-ready: March 15, 2019
Workshop: May 20, 2019

-----------------------------
Submissions
-----------------------------
Submission site: https://easychair.org/conferences/?conf=grapl2019

Submitted manuscripts may not exceed ten (10) pages, single-spaced double-column pages using 10-point size font on 8.5x11 inch pages (IEEE conference style), including figures, tables, and references. 

The templates are available at: 
http://www.ieee.org/conferences_events/conferences/publishing/templates.html.

-----------------------------
Organization
-----------------------------
General co-Chairs

Tim Mattson (Intel), [log in to unmask]
Antonino Tumeo (PNNL), [log in to unmask]

Program co-Chairs

Ananth Kalyanaraman (WSU), [log in to unmask]
Manoj Kumar (IBM), [log in to unmask]

Steering Committe

David A. Bader (Georgia Institute of Technology)
Aydın Buluç (LBNL)
John Feo (PNNL)
John Gilbert (UC Santa Barbara)
Mahantesh Halappanavar (PNNL)
Jeremy Kepner (MIT Lincoln Laboratory)

Technical Program Committee

Aydin Buluç, LBNL, US
Timothy A. Davis, University of Florida, US
Jana Doppa, Washington State University, US
John Gilbert, University of California at Santa Barbara, US
Oded Green, Georgia Institute of Technology & NVIDIA, US
Jeremy Kepner, MIT, US
Arif Khan, PNNL, US
Hao	Lu, ORNL, US
Kamesh Madduri, The Pennsylvania State University, US
Rupesh Nasre, IIT Madras, IN
John Owens, University of California, Davis, US
Arnau Prat, Universitat Politècnica de Catalunya, ES
Jason Riedy, Georgia Institute of Technology, US
P. Sadayappan, The Ohio State University, US
A. Erdem	Sarıyüce, University at Buffalo, US
Arun Sathanur, PNNL, US
Brian Van Essen, LLNL, US
Flavio Vella, Free University of Bozen, IT
Yangzihao Wang, University of California, Davis, US
Marinka Zitnik, Stanford University, US
Jaroslaw Zola, University at Buffalo, US 
 
######################################################################## 
 
To unsubscribe from the cphc-conf list, click the following link: 
https://www.jiscmail.ac.uk/cgi-bin/webadmin?SUBED1=cphc-conf&A=1 

Top of Message | Previous Page | Permalink

JiscMail Tools


RSS Feeds and Sharing


Advanced Options


Archives

January 2019
December 2018
November 2018
October 2018
September 2018
August 2018
July 2018
June 2018
May 2018
April 2018
March 2018
February 2018
January 2018
December 2017
November 2017
October 2017
September 2017
August 2017
July 2017
June 2017
May 2017
April 2017
March 2017
February 2017
January 2017
December 2016
November 2016
October 2016
September 2016
August 2016
July 2016
June 2016
May 2016
April 2016
March 2016
February 2016
January 2016
December 2015
November 2015
October 2015
September 2015
August 2015
July 2015
June 2015
May 2015
April 2015
March 2015
February 2015
January 2015
December 2014
November 2014
October 2014
September 2014
August 2014
July 2014
June 2014
May 2014
April 2014
March 2014
February 2014
January 2014
December 2013
November 2013
October 2013
September 2013
August 2013
July 2013
June 2013
May 2013
April 2013
March 2013
February 2013
January 2013
December 2012
November 2012
October 2012
September 2012
August 2012
July 2012
June 2012
May 2012
April 2012
March 2012
February 2012
January 2012
December 2011
November 2011
October 2011
September 2011
August 2011
July 2011
June 2011
May 2011
April 2011
March 2011
February 2011
January 2011
December 2010
November 2010
October 2010
September 2010
August 2010
July 2010
June 2010
May 2010
April 2010
March 2010
February 2010
January 2010
December 2009
November 2009
October 2009
September 2009
August 2009
July 2009
June 2009
May 2009
April 2009
March 2009
February 2009
January 2009
December 2008
November 2008
October 2008
September 2008
August 2008
July 2008
June 2008
May 2008
April 2008
March 2008
February 2008
January 2008
December 2007
November 2007
October 2007
September 2007
August 2007
July 2007
June 2007
May 2007
April 2007
March 2007
February 2007
January 2007
2006
2005
2004
2003
2002
2001
2000
1999
1998


JiscMail is a Jisc service.

View our service policies at https://www.jiscmail.ac.uk/policyandsecurity/ and Jisc's privacy policy at https://www.jisc.ac.uk/website/privacy-notice

Secured by F-Secure Anti-Virus CataList Email List Search Powered by the LISTSERV Email List Manager