Akshay Kulkarni
#ATAITF: A Festival of AI Testing Tools & Techniques

About Speaker

Akshay Kulkarni

Managar
_VOIS

Seasoned telecom professional and a transformational leader with over 12+ years of experience in driving business transformation, digital, agile, IT tools and creating successful IT strategies. As one of the test release streams leads for test Strategy, Governance & Transformation for VodafoneZiggo Netherlands, I lead and empower a test unit that delivers agile based estimation test delivery & governance. My aim is to enable digital transformation and agile culture for telecom customers, leveraging the latest technologies like AI and extend the best practices.

Interactive Session -Smart Utilization of AI in Software testing: Challenges and Opportunities

Topic – Smart Utilization of AI in Software testing: Challenges and Opportunities

As we stand today, the AI industry is buzzing with innovation and growth. One specific area of interest is the AI-enabled testing tool market, which is projected to be worth a staggering $453 million by 2025. This figure alone highlights the rapid adoption and integration of AI technologies in various sectors. But that’s not all – the future looks even more promising. By 2033, this market is expected to soar to an impressive $2 billion! 
In the current era, AI can automate test case generation, improve testing efficiency, and prioritize critical test cases based on risk analysis. However, Bias in AI systems can lead to inadequate testing coverage or unfair treatment of specific user groups, highlighting the need for diverse datasets and extensive testing for which we will suggest the mitigations too. AI integration poses unique challenges in software testing, requiring extensive training and refinement of algorithms to identify patterns. Selecting suitable test automation tools and frameworks is essential for reliable and effective software testing. A short case study of The Cost Investment analysis would enlighten all the aspects of investments and expected breakaway duration and ROI of a mid-size AI solution. ‘

Key Takeaways from the Abstract

  •  Prepossession data in AI systems can lead to inadequate testing coverage or unfair treatment of specific groups, highlighting the need for diverse datasets and extensive testing.
  • AI integration poses unique challenges in software testing, requiring extensive training of people and refinement of algorithms to identify patterns time to time which leads to cost involved making it unsuitable for small/medium scale industries.
  • Selecting suitable test automation tools and frameworks is essential for reliable and effective software testing.
  • AI can automate test case generation, improve testing efficiency, and prioritize critical test cases based on risk analysis.
Scroll to Top