1. A Survey on Online Judge Systems and Their Applications
- Author
-
Artur Laskowski, Jan Badura, Tomasz Sternal, Szymon Wasik, and Maciej Antczak
- Subjects
FOS: Computer and information sciences ,Source code ,Optimization problem ,General Computer Science ,Computer science ,media_common.quotation_subject ,Computer Science - Human-Computer Interaction ,02 engineering and technology ,Crowdsourcing ,computer.software_genre ,Human-Computer Interaction (cs.HC) ,Theoretical Computer Science ,Computer Science - Computers and Society ,Online judge ,Computers and Society (cs.CY) ,0202 electrical engineering, electronic engineering, information engineering ,media_common ,Competitive programming ,business.industry ,05 social sciences ,Principal (computer security) ,050301 education ,Data science ,020201 artificial intelligence & image processing ,State (computer science) ,Compiler ,business ,0503 education ,computer - Abstract
Online judges are systems designed for the reliable evaluation of algorithm source code submitted by users, which is next compiled and tested in a homogeneous environment. Online judges are becoming popular in various applications. Thus, we would like to review the state of the art for these systems. We classify them according to their principal objectives into systems supporting organization of competitive programming contests, enhancing education and recruitment processes, facilitating the solving of data mining challenges, online compilers and development platforms integrated as components of other custom systems. Moreover, we introduce a formal definition of an online judge system and summarize the common evaluation methodology supported by such systems. Finally, we briefly discuss an Optil.io platform as an example of an online judge system, which has been proposed for the solving of complex optimization problems. We also analyze the competition results conducted using this platform. The competition proved that online judge systems, strengthened by crowdsourcing concepts, can be successfully applied to accurately and efficiently solve complex industrial- and science-driven challenges., Authors pre-print of the article accepted for publication in ACM Computing Surveys (accepted on 19-Sep-2017)
- Published
- 2017