Top Software Testing Trends to Follow in 2022

Top Software Testing Trends 2022

The exponential and unprecedented change in technology affects the way in which organizations develop, validate, deliver, and operate software.

Hence, these organizations must consistently innovate and revamp themselves by finding the solution to optimize practices and tools to develop and deliver high-quality software quickly.

Accounting for roughly 30% of the total project effort, software testing is an important focus for changes and improvements. Testing practices and tools need to evolve to address the challenges of achieving “Quality at Speed” amid the increasing complexity of systems, environments, and data.

This article discusses the top trends in software testing, many of which have already emerged over the past few years. One can observe that Agile and DevOps, test automation, artificial intelligence for testing, and API test automation are the most noticeable trends in 2022 and over the next few years too.

Top Software Testing Trends In 2022

Watch out for the Top Software Testing Trends that one should anticipate in 2022.

Let’s Explore!!

#1) Agile and DevOps

Organizations have embraced Agile as a response to rapidly changing requirements and DevOps as a response to the demand for speed.

DevOps involves practices, rules, processes, and tools that help to integrate development and operation activities to reduce the time from development to operations. DevOps has become a widely accepted solution for organizations that are looking at ways to shorten the software lifecycles from development to delivery and operation.

The adoption of both Agile and DevOps helps the teams to develop and deliver quality software faster, which in turn is also known as “Quality of Speed”. This adoption has gained much interest over the past five years and continues to intensify in the coming years too.

#2) Test Automation

In order to implement DevOps practices effectively, software teams cannot ignore test automation as it is an essential element of the DevOps process.

They need to find opportunities to replace manual testing with automated testing. As test automation is considered to be an important bottleneck of DevOps, at a minimum, most regression testing should be automated.

Given the popularity of DevOps and the fact that test automation is underutilized, with less than 20% of testing being automated, there is a lot of room to increase the adoption of test automation in organizations. More advanced methods and tools should emerge to allow better utilization of test automation in projects.

Existing popular automation tools such as Selenium, Katalon, and TestComplete continue to evolve with new features that make automation much easier and more effective too.

#3) API and Services Test Automation

Decoupling the client and server is a current trend in designing both Web and mobile applications.

API and services are reused in more than one application or component. These changes, in turn, require the teams to test API and services independent from the application using them.

When API and services are used across client applications and components, testing them is more effective and efficient than testing the client. The trend is that the need for API and services test automation continues to increase, possibly outpacing that of the functionality used by the end-users on user interfaces.

Having the right process, tool, and solution for API automation tests is more critical than ever. Therefore, it is worth your effort in learning the best API Testing Tools for your testing projects.

#4) Artificial Intelligence for Testing

Although applying the artificial intelligence and machine learning (AI/ML) approaches to address the challenges in software testing is not new in the software research community, the recent advancements in AI/ML with a large amount of data available pose new opportunities to apply AI/ML in testing.

However, the application of AI/ML in testing is still in the early stages. Organizations will find ways to optimize their testing practices in AI/ML.

AI/ML algorithms are developed to generate better test cases, test scripts, test data, and reports. Predictive models would help to make decisions about where what, and when to test. Smart analytics and visualization support the teams to detect faults, to understand test coverage, areas of high risk, etc.

AI/ML will be increasingly applied to solving problems such as quality prediction, test case prioritization, fault classification, and assignment in the upcoming years.

#5) Mobile Test Automation

The trend of mobile app development continues to grow as mobile devices are increasingly more capable.

To fully support DevOps, mobile test automation must be a part of DevOps toolchains. However, the current utilization of mobile test automation is very low, partly due to the lack of methods and tools.

The trend of automated testing for mobile apps continues to increase. This trend is driven by the need to shorten time-to-market and more advanced methods and tools for mobile test automation.

The integration between cloud-based mobile device labs like Kobiton and test automation tools like Katalon may help in bringing mobile automation to the next level.

#6) Test Environments and Data

The rapid growth of the Internet of Things (IoT) (see top IoT devices here) means more software systems are operating in numerous different environments. This places a challenge on the testing teams to ensure the right level of test coverage. Indeed, the lack of test environments and data is a top challenge when applying to test in agile projects.

There will be growth in offering and using cloud-based and containerized test environments. The application of AI/ML to generate test data and the growth of data projects are some solutions for the lack of test data.

#7) Integration of Tools and Activities

It is hard to use any testing tool that is not integrated with the other tools for application lifecycle management. Software teams need to integrate the tools used for all development phases and activities so that multi-source data can be gathered to apply AI/ML approaches effectively.

For Example, using AI/ML to detect where to focus testing on, needs not only data from the testing phase but also from the requirements, design, and implementation phases.

Along with the trends of increasing transformation toward DevOps, test automation, and AI/ML,  testing tools that allow integration with the other tools and activities in ALM will become more popular.

Conclusion

These are the Emerging Software Testing Trends that one should watch out for in 2022 as we live in the world of unprecedented exponential changes driven by technology and digital transformation.

Organizations and individuals need to remain aware of the developments in the industry. Keeping up with these trends would give test professionals, organizations, and teams the opportunity to stay ahead of the curve.

Source: Software Testing Help
 
 

    Popular posts

    Related posts