Automated generator for complex and realistic test data—a case study

Journal Title: Annals of Computer Science and Information Systems - Year 2018, Vol 17, Issue

Abstract

Some type of tests, especially stress tests and functional tests, require a large amount of realistic test data. In this paper, we propose a tool JOP (Java Object Populator) that uses a pseudorandom number generator in order to create test sets of complex Java objects, that can be automatically generated and directly used. Along with that, we also show usage of this tool in case study focused on performance evaluation of a real cashier system.

Authors and Affiliations

Richard Lipka, Tomas Potuzak

Keywords

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  • EP ID EP567971
  • DOI 10.15439/2018F214
  • Views 32
  • Downloads 0

How To Cite

Richard Lipka, Tomas Potuzak (2018). Automated generator for complex and realistic test data—a case study. Annals of Computer Science and Information Systems, 17(), 233-240. https://europub.co.uk/articles/-A-567971