[hpc-announce] CFP: GrAPL Workshop at IPDPS 2024 - Submissions due February 2, 2024
Jannesari, Ali [COM S]
jannesar at iastate.edu
Thu Jan 11 10:19:11 CST 2024
Call for Papers for the IPDPS Workshop on Graphs, Architectures, Programming, and Learning (GrAPL) 2024 is now open!
GrAPL is held in conjunction with IEEE IPDPS 2024, San Francisco, CA, USA.
If you are planning to present and publish your work, please submit your papers on or before February 2, 2024.
Important dates:
* Position or full paper submission: February 2, 2024, AoE
* Notification: February 22, 2024
* Camera-ready: February 29, 2024
* Workshop: May 27, 2024
GrAPL website: https://hpc.pnl.gov/grapl/ containing a link to the submission site.
We hope that you will also encourage your colleagues, members of research groups, and other scientists to attend, contribute, and participate in this workshop.
Happy New Year!
Giulia Guidi and Ali Jannesari
GrAPL 2024 Program Co-Chairs
gguidi at cornell.edu
jannesar at iastate.edu
***
IPDPS Workshop on Graphs, Architectures, Programming, and Learning (GrAPL) 2024, May 27, San Francisco, CA, USA. Data analytics is one of the fastest-growing segments of
computer science. Many real-world analytic workloads combine 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 are supported in hardware and software, and the ways graph algorithms interact with machine learning. The workshop’s scope is broad and encompasses a wide range of methods used in large-scale data analytics workflows.
This workshop seeks papers on the theory, model-based analysis, simulation, and analysis of operational data for graph analytics and related machine-learning applications.
In particular, we are interested, but not limited to the following topics:
* Provide tractability and performance analysis in terms of complexity, time-to-solution, problem size, and quality of solution for systems that deal with mixed data analytics workflows;
* Investigate novel solutions for accelerating graph learning-based methods using methodologies such as graph neural networks and knowledge graphs;
* Discuss graph programming models and associated frameworks such as GraphBLAS, Galois, Pregel, the Boost Graph Library, 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 convergence of graph analytics, frameworks, and graph databases;
* Discuss hardware platforms specialized for addressing large, dynamic, multi-attributed graphs and associated machine learning;
* Discuss the problem domains and applications of graph methods, machine learning
methods, or both.
Besides regular papers, short papers (up to four pages) describing work-in-progress or incomplete but sound, innovative ideas related to the workshop theme are also encouraged.
More information about the hpc-announce
mailing list