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SEAA-SPPI 2017 : Euromicro SEAA - SPPI Track

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Link: http://dsd-seaa2017.ocg.at/seaa2017.html
 
When Aug 30, 2017 - Sep 1, 2017
Where Vienna, Austria
Abstract Registration Due Mar 8, 2017
Submission Deadline Mar 15, 2017
Notification Due May 17, 2017
Final Version Due Jun 15, 2017
Categories    euromicro   software engineering   process improvement   product improvement
 

Call For Papers

**** CALL FOR PAPERS ****


:: CONFERENCE ::
43rd Euromicro Conference on Software Engineering and Advanced Applications (SEAA)


:: TECHNICAL TRACK ::
Software Process and Product Improvement (SPPI)


:: CALL FOR PAPERS ::
The size, complexity, and criticality of software-intensive systems require innovative and economic approaches to development and evolution. In today's competitive world, software quality is a key to success and stability of organizations. Software process and product improvement (SPPI) aims at significantly increasing both the quality of software-intensive systems and the productivity of software development. The SPPI track will bring together researchers and practitioners to share SPPI innovations and experiences. The track is an integral part of the 43rd Euromicro Conference on Software Engineering and Advanced Applications (SEAA) 2017.

Topics of interest include, but are not restricted to:
+ Organizational and business views on process improvement
+ Value-based software engineering
+ Global software engineering
+ Quality assurance, inspections, testing

+ Software process improvement and process standards
+ Process modeling, composition, and enactment/simulation

+ Quantitative models for development processes and products
+ Essential system quality aspects, e.g., dependability, safety, security, or usability
+ Technical debt (we will have a special session on this topic)

+ Open source software and software quality
+ Agile and lean development

+ Software reuse, product lines, and software ecosystems
+ Software evolution
+ Continuous delivery/integration and DevOps, software process and product evolution with feedback from operation.

+ Empirical studies and experimental approaches
+ Process improvement for innovative/emerging application areas (e.g., systems of systems, cloud/fog-based computing, big data systems, cyber-physical systems, Internet of Things, Industry 4.0)

In particular, we encourage submissions demonstrating the benefits or limitations of SPPI approaches through case studies, experiments, and quantitative data.

The conference proceedings will be published by the IEEE Computer Society. The format is the IEEE two-column proceedings format (max 8 pages). Submission will be handled via EasyChair (https://www.easychair.org/conferences/?conf=seaa2017); please find general submission information for SEAA on the conference homepage (http://dsd-seaa2017.ocg.at/seaa2017.html).

Please note that it is planned to select best papers among all tracks of SEAA and present them with an award. A selection of best papers will be invited to submit extended versions for tentative publication in a requested Special Issue of the Journal of Systems and Software published by Elsevier http://www.journals.elsevier.com/journal-of-systems-and-software.

Please also note that a Special Session on Technical Debt is an integral part of our SPPI track at SEAA 2017, see the conference homepage for more information.


:: TRACK ORGANIZERS ::
Stefan Biffl, TU Vienna, Austria (http://qse.ifs.tuwien.ac.at/~biffl)
Dietmar Winkler, TU Vienna, Austria (http://qse.ifs.tuwien.ac.at/~winkler)
Rick Rabiser, JKU Linz, Austria (http://mevss.jku.at/rabiser)


:: PROGRAM COMMITEE ::
Silvia Abrahao, Universitat Politecnica de Valencia, Spain
Wasif Afzal, Malardalen University, Sweden
Ove Armbrust, Alpine Electronics Research of America, USA
Claudia P. Ayala, Technical University of Catalunya, Spain
Michael Bauer, University of Heilbronn, Germany
Miklos Biro, Software Competence Center Hagenberg, Austria
Matthias Book, University of Iceland, Iceland
Jan Bosch, Chalmers University of Technology, Sweden
Ruth Breu, Research Group Quality Engineering, Austria
Michel Chaudron, Chalmers & Gothenborg University, Sweden
Maya Daneva, University of Twente, Netherlands
Frank Elberzhager, Fraunhofer IESE, Germany
Clenio F. Salviano, Centro de Tecnologia da Informação Renato Archer, Brazil
Volker Gruhn, Univ. Leipzig, Germany
Jens Heidrich, Fraunhofer IESE, Germany
Martin Höst, Lund University, Sweden
Frank Houdek, Daimler AG, Germany
Slinger Jansen, Utrecht University, Netherlands
Marcos Kalinowski, Universidade Federal Fluminense, Brazil
Stig Larsson, Lunik Process Improvement Consulting, Sweden
Maurizio Morisio, Politecnico di Torino. Italy
Juergen Muench, University of Reutlingen, Germany
Barbara Paech, Universität Heidelberg, Germany
Oscar Pastor, Univ. Polytecnica de Valencia, Spain
Rudolf Ramler, Software Competence Center Hagenberg, Austria
Ita Richardson, Lero, University of Limerick, Ireland
Barbara Russo, Free University of Bolzano/Bozen, Italy
Klaus Schmid, University of Hildesheim, Germany
Christa Schwanninger, Siemens CT, Germany

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