You know that you could be testing more to catch bugs earlier, but QA testing can take a lot of time, effort and resources to do it right. MuukTest can get growing engineering teams up to 95% coverage of end-to-end tests in just 3 months.
Our QA experts create, manage, maintain, and update E2E tests on the MuukTest Platform for your web, API, and mobile apps at record speed. We begin exploratory and negative tests after achieving 100% regression coverage within 8 weeks to uncover bugs and increase coverage. The time you spend on development is reduced by managing your testing frameworks, scripts, libraries and maintenance.
We also proactively identify flaky tests and false test results to ensure the accuracy of your tests. Early and frequent testing allows you to detect errors in the early stages your development lifecycle. This reduces the burden of technical debt later on.
Learn more
Parasoft's mission is to provide automated testing solutions and expertise that empower organizations to expedite delivery of safe and reliable software.
A powerful unified C and C++ test automation solution for static analysis, unit testing and structural code coverage, Parasoft C/C++test helps satisfy compliance with industry functional safety and security requirements for embedded software systems.
Learn more
Devel::Cover
This module offers metrics for code coverage specifically tailored for Perl, highlighting the extent to which tests engage with the code. By utilizing Devel::Cover, users can identify sections of their code that remain untested and decide on additional tests necessary to enhance coverage. Essentially, code coverage serves as a proxy indicator of software quality. Devel::Cover has reached a commendable level of stability, incorporating an array of features typical of effective coverage tools. It provides detailed reports on statement, branch, condition, subroutine, and pod coverage. Generally, the data on statement and subroutine coverage is reliable, while branch and condition coverage may not always align with expectations. For pod coverage, it leverages Pod::Coverage, and if Pod::Coverage::CountParents is accessible, it will utilize that for more comprehensive insights. Overall, Devel::Cover stands out as an essential tool for Perl developers seeking to improve their code's robustness through better testing practices.
Learn more
OpenClover
Allocate your efforts wisely between developing applications and writing corresponding test code. For Java and Groovy, utilizing an advanced code coverage tool is essential, and OpenClover stands out by evaluating code coverage while also gathering over 20 different metrics. This tool highlights the areas of your application that lack testing and integrates coverage data with metrics to identify the most vulnerable sections of your code. Additionally, its Test Optimization feature monitors the relationship between test cases and application classes, allowing OpenClover to execute only the tests pertinent to any modifications made, which greatly enhances the efficiency of test execution time. You may wonder if testing simple getters and setters or machine-generated code is truly beneficial. OpenClover excels in its adaptability, enabling users to tailor coverage measurement by excluding specific packages, files, classes, methods, and even individual statements. This flexibility allows you to concentrate your testing efforts on the most critical components of your codebase. Moreover, OpenClover not only logs the results of tests but also provides detailed coverage analysis for each individual test, ensuring that you have a thorough understanding of your testing effectiveness. Emphasizing such precision can lead to significant improvements in code quality and reliability.
Learn more