This article is featured in the new DZone Guide to Automated Testing: Your End-to-end Ecosystem. Get your free copy for more insightful articles, industry statistics, and more! Today, almost all IT projects are faced with the challenge of operationalizing and deploying software and services with greater speed and accuracy, creating an unrelenting, high-pressure environment for the project team. Requirements shift daily and there are never enough engineers to make it all happen perfectly. A major part of the burden on project teams is the need for continuous testing. In this article, I will explore the opportunities I've discovered by applying artificial intelligence (AI) to test automation. AI is meant to make businesses far more capable and efficient. The best companies are using AI to enhance customer and client interactions, not eliminate them. Big data collection and algorithmic advances are vastly extending the scope of testing automation, making it possible for non-technical team members to define and scale tests with levels of capability and sophistication comparable to or even greater than developers'.


I guess you came to this post by searching similar kind of issues in any of the search engine and hope that this resolved your problem. If you find this tips useful, just drop a line below and share the link to others and who knows they might find it useful too.

Stay tuned to my blogtwitter or facebook to read more articles, tutorials, news, tips & tricks on various technology fields. Also Subscribe to our Newsletter with your Email ID to keep you updated on latest posts. We will send newsletter to your registered email address. We will not share your email address to anybody as we respect privacy.


This article is related to

machine learning,artificial intelligence,test automation,data modeling,self-healing systems