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ESEM 2021 : 15th ACM/IEEE International Symposium on Empirical Software Engineering and Measurement

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Conference Series : Empirical Software Engineering and Measurement
 
Link: https://conf.researchr.org/home/esem-2021
 
When Oct 11, 2021 - Oct 15, 2021
Where See note on the website
Abstract Registration Due May 8, 2021
Submission Deadline May 15, 2021
Notification Due Jun 30, 2021
Categories    software engineering   empirical software engineering   empirical studies
 

Call For Papers

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The 15th ACM/IEEE International Symposium on Empirical Software Engineering and Measurement (ESEM2021)
https://conf.researchr.org/home/esem-2021
11-15 October 2021
Bari, Italy
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ESEM 2021 - Call for Papers

The ACM/IEEE International Symposium on Empirical Software Engineering and Measurement (ESEM) is the premier conference for presenting research results related to empirical software engineering. ESEM provides a stimulating forum where researchers and practitioners can present and discuss recent research results on a wide range of topics, in addition to exchanging ideas, experiences and challenging problems.

Details on the topics of interest, the submission procedures, as well as all co-located events, are available at the conference website: https://conf.researchr.org/home/esem-2021


*Important Dates*
(All dates are end of the day, anywhere on earth) ​

Technical Papers
- Abstract May 8, 2021
- Submission May 15, 2021
- Notification June 30, 2021

Emerging Results and Vision Papers
- Submission July 16, 2021
- Notification August 20, 2021

Journal-First Papers
Submission August 9, 2021
Notification September 6, 2021

Industry Talks
Submission August 9, 2021
Notification September 6, 2021


*Conference Organization*

General Chair
Filippo Lanubile, University of Bari, Italy

Program Co-Chairs
Maria Teresa Baldassarre, University of Bari, Italy
Marcos Kalinowski, PUC-Rio, Brazil

Emerging Results and Vision Papers Co-Chairs
Maleknaz Nayebi, York University, Canada
Pilar Rodríguez, Universidad Politécnica de Madrid, Spain

Journal First Chair
Robert Feldt, Chalmers University, Sweden

Industry Talks Co-Chairs
Titus Barik, Microsoft, USA
Marcus Ciolkowski, QAware, Germany

Open Science Initiative Co-Chairs
Fabio Calefato, University of Bari, Italy
Alexander Serebrenik, Eindhoven University of Technology, Netherlands

Proceedings Chair
Bruno Cartaxo, IFPE, Brazil

Social Media and Publicity Co-Chairs
Valentina Lenarduzzi, LUT University, Finland
Silverio Martínez-Fernández, Universitat Politècnica de Catalunya-BarcelonaTech, Spain

Local Organizing Chair
Vita Santa Barletta, University of Bari, Italy

Web Chair
Luigi Quaranta, University of Bari, Italy

Virtualization Co-Chairs
Simone Romano, University of Bari, Italy
Amadeu Anderlin-Neto, PUC-Rio, Brazil

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