Current directory: /home3/bjinbymy/public_html/indianext/wp-content/mu-plugins A Shift From Continuous Testing To Autonomous Ai-Driven Test Automation - AI Next
Indianext
No Result
View All Result
Subscribe
  • News
    • Project Watch
    • Policy
  • AI Next
  • People
    • Interviews
    • Profiles
  • Companies
  • Make In India
    • Solutions
    • State News
  • About Us
    • Editors Corner
    • Mission
    • Contact Us
    • Work Culture
  • Events
  • Guest post
  • News
    • Project Watch
    • Policy
  • AI Next
  • People
    • Interviews
    • Profiles
  • Companies
  • Make In India
    • Solutions
    • State News
  • About Us
    • Editors Corner
    • Mission
    • Contact Us
    • Work Culture
  • Events
  • Guest post
No Result
View All Result
Latest News on AI, Healthcare & Energy updates in India
No Result
View All Result
Home AI Next

A Shift From Continuous Testing To Autonomous Ai-Driven Test Automation

July 24, 2021
ai

Artificial Intelligence (AI) and Machine Learning (ML) have transformed almost every sector. The testing industry is no longer an exception to this. It hasn’t been long, we used to discuss the importance of “continuous testing” for “agile” and “DevOps”. Undoubtedly, continuous testing provides the path for swiftly embedding quality assurance (QA) by ensuring that changes in the code can be integrated efficiently in the DevOps. However, continuous testing is not a walk in the park due to factors like siloed automation, lack of end-to-end visibility of requirements, high volume tests, etc. This is the time to incorporate Artificial Intelligence (AI) & Machine Learning (ML) to enable an autonomous and zero-touch QA.

Why is AI for Continuous Testing?
With releases taking place on a weekly basis and updates are rolling out on almost every alternate day, there is a need to streamline software testing by making it smarter and more efficient. Incorporating AI will make the testing process smarter since QA teams can trigger unattended test cycles in which defects can be identified based on insights that are picked from historical data sets and past events. AI-driven algorithms can completely mimic human intelligence while ML automatically updates the test scripts, eliminating unstable test cases. AI-based engines can ensure that only a robust code progresses from one stage to the next and ML-specific algorithms extract patterns by accessing data to make predictions. All this will help in improving software testing.

Given below are some of the scenarios that manifest how AI is about to change testing

Automated Visual Testing for UI – Visual validation is all about ensuring that UI is appearing correctly to the users. It is really difficult to detect discrepancies while testing colour, position, & size of the UI elements while testing manually. AL-based visual testing is all about recognizing the patterns. With AI, it can be ensured that UI appears correctly to the users and UI elements are not overlapped. In nutshell, AI & ML-based tests automatically detect all the visual bugs to validate the visual correctness of the apps.

API Testing – API has taken the central stage of development. However, creating a multitude of scenarios to test API while ensuring coverage is difficult since it requires an understanding of the API. With AI-driven test automation, this problem can be addressed efficiently since AI can identify patterns and connections between API calls and group the scenarios to deliver adequate test coverage.

Test Maintenance – Test stability of apps that feature “dynamic” elements often gets compromised with updates. When changes are made to the app directly in the form of new screens, buttons, or user flows, the static test scripts fail to adapt the changes, resulting in test failures, flaky/brittle tests, or build failures. However, with AI & ML-based test automation, changes to an element locator (ID) are identified automatically and fixes to test scripts happen with self-healing capabilities, reducing the noise related to test failures.

Test Data Generation – Appropriate and proper data is necessary for robust testing. However, enterprises often struggle with transactional data since it is sensitive in nature. Manually synthesizing this data is not only time-consuming but also error-prone. However, with AI, data can be generated easily and can be used to test different scenarios.

More Reliable Test Cases – AI-driven test automation tools can understand your application by identifying relationships between document object model, and changes that occur to apps throughout time. Based on these changes, AI engines can autonomously generate test cases based on risks, eliminating the risk of business disruption with an application update. For instance, Oracle offers quarterly updates. The AI-based approach can be used to highlight the impact of the changes happen due to updates in Oracle Cloud testing. It helps in providing adequate test coverage while limiting the scope of testing based on highlighted impact.

Conclusion
In the age of Agile & DevOps, AI will help enterprises with more robust testing. Understanding the impact of the changes on the business processes, autonomous healing of the test scripts, and effortless test data synthesis can help in taking test automation to the next level. As an IT leader, you should be open to embrace innovation with AI to unleash the true potential of digital transformation.

Source: analyticsinsight.net

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Editors Corner

How can Artificial Intelligence tools be a blessing for recruiters?

Will Artificial Intelligence ever match human intelligence?

Artificial Intelligence: Features of peer-to-peer networking

What not to share or ask on Chatgpt?

How can Machine Learning help in detecting and eliminating poverty?

How can Artificial Intelligence help in treating Autism?

Speech Recognition and its Wonders in your corporate life

Most groundbreaking Artificial Intelligence-based gadgets to vouch for in 2023

Recommended News

AI Next

Google: AI From All Perspectives

Alphabet subsidiary Google may have been slower than OpenAI to make its AI capabilities publicly available in the past, but...

by India Next
May 31, 2024
AI Next

US And UK Doctors Think Pfizer Is Setting The Standard For AI And Machine Learning In Drug Discovery

New research from Bryter, which involved over 200 doctors from the US and the UK, including neurologists, hematologists, and oncologists,...

by India Next
May 31, 2024
Solutions

An Agreement Is Signed By MEA, MeitY, And CSC To Offer E-Migration Services Via Shared Service Centers

Three government agencies joined forces to form a synergy in order to deliver eMigrate services through Common Services Centers (CSCs)...

by India Next
May 31, 2024
AI Next

PR Handbook For AI Startups: How To Avoid Traps And Succeed In A Crowded Field

The advent of artificial intelligence has significantly changed the landscape of entrepreneurship. The figures say it all. Global AI startups...

by India Next
May 31, 2024

Related Posts

Google
AI Next

Google: AI From All Perspectives

May 31, 2024
Pfizer
AI Next

US And UK Doctors Think Pfizer Is Setting The Standard For AI And Machine Learning In Drug Discovery

May 31, 2024
Artificial-Intelligence
AI Next

PR Handbook For AI Startups: How To Avoid Traps And Succeed In A Crowded Field

May 31, 2024
openai
AI Next

OpenAI Creates An AI Safety Committee Following Significant Departures

May 31, 2024
Load More
Next Post
renewables

NITI Aayog And IEA Launch Report On Renewables Integration In India 2021

IndiaNext Logo
IndiaNext Brings you latest news on artificial intelligence, Healthcare & Energy sector from all top sources in India and across the world.

Recent Posts

Google: AI From All Perspectives

US And UK Doctors Think Pfizer Is Setting The Standard For AI And Machine Learning In Drug Discovery

An Agreement Is Signed By MEA, MeitY, And CSC To Offer E-Migration Services Via Shared Service Centers

PR Handbook For AI Startups: How To Avoid Traps And Succeed In A Crowded Field

OpenAI Creates An AI Safety Committee Following Significant Departures

Tags

  • AI
  • EV
  • Mental WellBeing
  • Clean Energy
  • TeleMedicine
  • Healthcare
  • Electric Vehicles
  • Artificial Intelligence
  • Chatbots
  • Data Science
  • Electric Vehicles
  • Energy Storage
  • Machine Learning
  • Renewable Energy
  • Green Energy
  • Solar Energy
  • Solar Power

Follow us

  • Facebook
  • Linkedin
  • Twitter
© India Next. All Rights Reserved.     |     Privacy Policy      |      Web Design & Digital Marketing by Heeren Tanna
No Result
View All Result
  • About Us
  • Activate
  • Activity
  • Advisory Council
  • Archive
  • Career Page
  • Companies
  • Contact Us
  • cryptodemo
  • Energy next
  • Energy Next Archive
  • Home
  • Interviews
  • Make in India
  • Market
  • Members
  • Mission
  • News
  • News Update
  • People
  • Policy
  • Privacy Policy
  • Register
  • Reports
  • Subscription Page
  • Technology
  • Top 10
  • Videos
  • White Papers
  • Work Culture
  • Write For Us

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In

Add New Playlist

IndiaNext Logo

Join Our Newsletter

Get daily access to news updates

no spam, we hate it more than you!