Automated regression testing of BPMN 2.0 processes: a capture and replay framework for continuous delivery

Author:

Makki Majid1,Van Landuyt Dimitri1,Joosen Wouter1

Affiliation:

1. KU Leuven, Belgium

Abstract

Regression testing is a form of software quality assurance (QA) that involves comparing the behavior of a newer version of a software artifact to its earlier correct behavior, and signaling the QA engineer when deviations are detected. Given the large potential in automated generation and execution of regression test cases for business process models in the context of running systems, powerful tools are required to make this practically feasible, more specifically to limit the potential impact on production systems, and to reduce the manual effort required from QA engineers. In this paper, we present a regression testing automation framework that implements the capture & replay paradigm in the context of BPMN 2.0, a domain-specific language for modeling and executing business processes. The framework employs parallelization techniques and efficient communication patterns to reduce the performance overhead of capturing. Based on inputs from the QA engineer, it manipulates the BPMN2 model before executing tests for isolating the latter from external dependencies (e.g. human actors or expensive web services) and for avoiding undesired side-effects. Finally, it performs a regression detection algorithm and reports the results to the QA engineer. We have implemented our framework on top of a BPMN2-compliant execution engine, namely jBPM, and performed functional validations and evaluations of its performance and fault-tolerance. The results, indicating 3.9% average capturing performance overhead, demonstrate that the implemented framework can be the foundation of a practical regression testing tool for BPMN 2.0, and a key enabler for continuous delivery of business process-driven applications and services.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design,Software

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