Skip to main content

The Future Role of a QA Tester When AI and Automation Testing Takes Over

The platform of Artificial Intelligence (AI) and Machine Learning (ML) has been considered a highly productive domain by organizations worldwide. With the advent of AI testing, the software testing realm will eventually witness a monumental shift in the way testing activities are carried out. Accurate test results along with testing large amounts of data without any human intervention can be made possible by the AI platform. A QA tester has to raise the bar in terms of upgrading the specific skillsets required to manage the complex and intricate aspects of artificial intelligence and machine learning meticulously. In this article, you will get to know about the future role of the QA tester, when AI testing will take over. 


Inaccuracies are greatly reduced in QA through the strategic application of AI:


Both machines and humans have their pros and cons. Huge amounts of data can be greatly analyzed by machines, whereas humans excel in applying knowledge and exploring creativity. Humans are required for carrying out traditional testing, so that data can be sourced and analyzed.


Inaccuracies occur when large amounts of data are not dealt with properly. This will in turn lead to defects in software that will eventually hinder the progress of a project. When it comes to the overall brand reputation, general trustworthiness of the application and product positioning in the market, the issues would need to be tactically acted upon. 


For the above mentioned reasons, accurate results are achieved through the tactical implementation of Artificial Intelligence (AI) and Machine Learning (ML) platforms. These high-end platforms teach systems to apply learned knowledge and learn source analysis.


The future roles of QA testers:


The platform of AI will not be able to perform each and every activity of software testing succinctly. But, testers need to gear up as the testing platform will become more complex and intricate, as testers need to integrate AI in the software testing domain.


Software testing is a significant and valuable component of the software development process and there is a determined or fixed result expected out of it. New ways need to be ascertained by testers for the purpose of exposing defects in application results. Unique testing tasks need to be focused upon by the testers, rather than executing the test itself. 


Mathematical models should be utilized in order to analyze the results of algorithms effectively and to make sure that the thought process of testers is mimicked with regard to risk assessment.



Software tester’s roles are diversified:


As there is a constant evolution of the AI platform, there is a possibility that most of the test execution activities will be taken over by the machines. In the process, efficient testing methodologies will be implemented by organizations. But, this in turn will lead to a point where QA engineers need to level up and develop new skills at the earliest. If a working relationship needs to be maintained between man and machine, then in certain specific areas software testers must outsmart machines and ensure steady growth. 


When AI testing is being leveraged, software testers and developers must have practical knowledge in neuro linguistic programming, business intelligence, algorithmic analysis, math optimization etc., so that the software development domain can be further improved. Software testers must also learn, understand and build machine learning algorithms, understand math models and data flow as well as perform predictive analysis so that new AI strategies can be formed. 


Software testers must have a keen understanding to know what it takes to teach AI in line with working through huge amounts of data, analyzing certain information and executing tests. 


Conclusion: If you are looking forward to implementing AI testing for your software development project, then do get connected with a globally acclaimed automation testing services UK that will provide you specific and insightful AI testing solutions that is precisely in line with your project specific requirements along with professional support. 


About the author: I am a technical content writer focused on writing technology specific articles. I strive to provide well-researched information on the leading market savvy technologies. 

Comments

Popular posts from this blog

5 Key Activities of UAT

User Acceptance Testing (UAT) ensures that a product is made according to the customer requirements. The ultimate goal of a product is that it should work seamlessly in a real-time environment thereby offering the necessary services to be of worth in the marketplace. This testing method solidifies the testing process and makes the product robust and scalable. In this article, you will get to know the five activities of UAT.    What is User Acceptance Testing? In this testing method, end-users will take up the responsibility to test and evaluate the software application. The feedback provided by end-users will be analysed by the testing and development team to make any necessary changes and modifications for improving the quality of the software application. Following are the 5 key activities of UAT : 1. Initiate with a well-defined plan: Conducting User Acceptance Testing (UAT) in a feasible and rewarding manner requires implementing a well-defined plan of action. Information pertain

Difference Between Regression Testing and Integration Testing

  What is regression testing? It is a testing method that is performed to ensure that despite making any changes, modifications and updations to the code, the existing functionalities of the software application are working as expected. The overall functionality and stability of the existing features are tested using this testing method. Test cases that have been already executed are partially or fully selected and then re-executed in order to make sure that the existing functionalities are working as expected. What is integration testing? It is a testing method where different software modules are validated based on how they function when they are combined, especially in terms of performance and effectiveness. The focus is on finding defects when these software modules that have been coded by different programmers interact with each other. How the data is being communicated amongst these modules is thoroughly checked.                 Difference between regression testing and

5 reasons why Agile Methodology is better than Waterfall

IT deployments relied on the waterfall model and it worked really fine. But, with the advent of the agile model, the speed and agility of project development are taken to an all-new level, and thus businesses are steadily shifting their focus in adopting the agile methodology . The Waterfall model has some flaws where the dominance of agile wins. In this article, you will get to know about the five reasons as to why agile methodology is better than the waterfall model. What is agile methodology? It is a process where a project is broken down into several phases and each of these phases is developed in an iterative manner till a specific objective is attained. Teams collaborate and communicate constantly to discuss and work on the project’s progress. Stakeholders are constantly collaborated and continuous improvement takes place at every stage. Team members are properly assigned with their specific roles and responsibilities and simultaneously values, opportunities and problems are