Problem Resolution Cycle Time Optimization
No matter how well we plan and execute software development, defects are generated and can escape to the customers. Failure to quickly resolve software problems leads to negative consequences for our customers and increases internal business costs. A quick deterministic
method to prioritize problems and implement their solution helps to reduce cycle time and costs. Achieving this goal requires several steps. The first is to determine a model that links problem resolution performance to institutional variables and problem characteristics. Statistical Design of Experiments (DOE) is a tool that provides data requirements for estimating the impacts of these variables on problem resolution. Once data has been gathered the results of statistical analysis can be input into a mathematical optimization model to guide the organization.
This paper describes such an analysis.
Upcoming Events
Jun 04 |
Agile + DevOps West The Latest in Agile and DevOps |
Oct 01 |
STARWEST Software Testing Conference in Anaheim & Online |
Nov 05 |
Agile + DevOps East The Conference for Agile and DevOps Professionals |
Apr 28 |
STAREAST Software Testing Conference in Orlando & Online |