Test Case Optimization Using Artificial Bee Colony Algorithm

  title={Test Case Optimization Using Artificial Bee Colony Algorithm},
  author={Adi Srikanth and Nandakishore J. Kulkarni and K. Venkat Naveen and Puneet Singh and Praveen Ranjan Srivastava},
Software Testing is one of the integral parts of software development lifecycle. Exhaustive testing on software is impossible to achieve as the testing is a continuous process. Using this as a constraint, software testing is performed in a way that requires reducing the testing effort but should provide high quality software that can yield comparable results. To accomplish this optimized testing, a software test case optimization technique based on artificial bee colony algorithm is proposed… CONTINUE READING
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