Print

Print


*** Apologies if you received multiple copies ***
*** Please kindly forward to those who may be interested ***

*CALL FOR PAPERS*

*Massively Parallel and Distributed Evolutionary Computation*
*IEEE CEC 2017 Special Session*
June 20-23, 2017, Donostia - San Sebastián, Spain
https://sites.google.com/site/bilelderbelpro/home/mpdec-cec2017

*SUBMISSION DEADLINE: January 16, 2017*

*OVERVIEW:*
Parallel and distributed computing systems have come a long way from
specialized big-scale computer systems such as Grids and clusters.
Nowadays, multi-core processing is present in our desktop systems and
smartphones as well as other mod cons. Parallel and distributed computing
systems have also moved from being permanent, physical and synchronized
systems to being used in an ad hoc, temporal and virtual (cloud)
asynchronous manner. Thus, the adaptation of evolutionary algorithms of any
kind to these environments presents unique challenges from many points of
views: from the purely theoretical that studies the influence of different
types of communication among populations, to the practical that intends to
predict the performance of the parallel system or apply it to a particular
problem. Additionally, the challenges of nowadays optimization problems can
be characterized following different complex and cross-dependent aspects: a
large number of decision variables, a large number of conflicting
objectives, expensive evaluation functions, simulation-dependent problem
formulations, uncertain and scenario-based models, multi-disciplinary
models, non-smooth and multi-modal black-box setting, etc. These
characteristics give rise to difficult issues being beyond the ability of
commonly used optimization algorithms. In this respect, there is evidence
that decentralized evolutionary computing and general purpose
metaheuristics will play a crucially important role in order to foster the
next generation optimization techniques and to accelerate their widespread
uptake.

*TOPICS OF INTEREST:*
This special session aims at fostering the cross-fertilization of knowledge
between evolutionary algorithms, or metaheuristics in general, and
parallel, distributed and concurrent computing, in order to address
increasingly complex and large scale optimization problems. Working in two
domains of research can be hard, but the cross-fertilization might be
fruitful. Knowledge about parallel computing helps in creating parallel
algorithms for clouds, multi-core or GPU architectures. However, this also
implies the need for a careful definition of proper benchmarks, software
tools, and metrics to measure the behavior of algorithms in a meaningful
way. In concrete, a conceptual separation between physical parallelism and
decentralized algorithms (whether implemented in parallel or not) is needed
to better analyze the resulting algorithms.

This special session is expected to collect contributions, from the theory
through the implementation, to the application of techniques born from the
crossover with metaheuristics of the traditional research fields in
parallel computing. Articles are solicited, that describe significant and
methodologically well-founded contributions to problem solving, aimed at
maximizing both efficiency and accuracy.

This special session includes topics concerning the design, implementation,
and application of parallel evolutionary algorithms, as well as
metaheuristics in general, for solving single- or multi- objective
optimization problems. Potential topics include, but are not limited to:

- Parallel/distributed/concurrent (PDC) evolutionary, memetic, dynamic
algorithms and metaheuristics, for single- and multi- objective
combinatorial and continuous problems
- Decentralized evolutionary optimization techniques and paradigms with
clear parallel potential for big optimization problems, e.g.,
divide-and-conquer techniques, aggregation and grouping-based algorithms,
novel decomposition-based techniques in decision and objective space, novel
parallel models for large scale optimization
- Parallel/distributed/concurrent (PDC) computing models and/or their
realizations in practice: cloud, P2P, browser-based, socket-based, mobile,
etc
- Tools for helping in designing new parallel algorithms, PDC software
frameworks/libraries
- PDC test benchmarks, performance evaluation and scalability issues
- Theory of PDC evolutionary algorithms and metaheuristics
- Big data and cloud computing
- MapReduce implementations of evolutionary computation or swarm
intelligence approaches
- Real-world applications and computational investigations on the solving
of big optimization problems

*SUBMISSION:*
Please follow the IEEE CEC2017 instruction for authors and submit your
paper via the IEEE CEC 2017 online submission system (Submission Web Site).
Please specify that your paper is for the Special Session on Massively
Parallel and Distributed Evolutionary Computation.

*IMPORTANT DATES:*
Paper submission:           January 16, 2017
Notification of acceptance: February 26, 2017
Final paper submission:     March 12, 2017
Conference dates:           June 5-8, 2017

*ORGANIZERS:*
Mathieu Brévilliers, Université de Haute-Alsace, France
Bilel Derbel, University of Lille, France
Lhassane Idoumghar, Université de Haute-Alsace, France
Julien Lepagnot, Université de Haute-Alsace, France
Simone Ludwig, North Dakota State University, USA
JJ Merelo, University of Granada, Spain
Qingfu Zhang, City University, Hong Kong