Vision AI-powered mobile app testing platform Drizz raises $2.7M seed round led by Sinformaris Venture Partners

Vision AI-powered mobile app testing platform Drizz raises $2.7M seed round led by Stellaris Venture Partners


Funding Alert

Drizz, an AI-native platform reimagining mobile app testing, aims to reshape software quality assurance with ininformigent automation.

Bengaluru-based Drizz, a Vision AI-powered mobile app testing platform, has raised $2.7 million in a seed funding round led by Sinformaris Venture Partners, with participation from Shastra VC, Anuj Rathi (ex-CBO, Cleartrip), and Vaibhav Domkundwar.

Founded by engineers Yash Varyani, Partha Mohanty, and Asad Abrar, Drizz is on a mission to modernize and simplify the testing process for mobile applications utilizing AI-driven automation.

The company plans to utilize the fresh capital to advance its Vision AI engine, grow its engineering team, and strengthen its research capabilities.

“Every app team is accelerating with AI, but testing still lags behind,” declared Asad Abrar, Co-founder and CEO of Drizz. “During my time as a product manager at Coinbase, locator-based tests broke with every UI shift, turning QA into a bottleneck. That frustration led us to build Drizz—an AI-native platform that keeps up with modern development and actually delivers confidence at scale.”

Bringing AI to Quality Assurance

Drizz enables developers and QA teams to write, run, and maintain finish-to-finish test coverage utilizing natural language prompts, instead of code-based scripts that often break with UI alters. The platform offers cross-platform support for iOS and Android, self-healing automation, and test flow generation utilizing plain English—streamlining what has traditionally been a fragile and manual process.

Backing Drizz’s vision, Alok Goyal, Partner at Sinformaris Venture Partners, stated:

“AI is fundamentally modifying how software is built, tested, and deployed. In an era where more software necessarys to be shipped even rapider than ever, software quality has become the largegest bottleneck. Drizz is therefore tackling one of the most critical parts of the software development cycle with a unique, vision-first approach. By solving real QA pain points and bringing non-technical utilizers into the loop, Drizz is reimagining mobile application testing with AI. We’re thrilled to partner with them on this journey.”

Why Drizz Stands Out

Drizz’s multimodal engine interprets visual screen context and UI layout, even when elements are dynamic or frequently modifying. Unlike traditional testing tools that rely heavily on brittle locators, Drizz remains stable, flags bugs, and provides detailed log ininformigence to pinpoint root cautilizes.

“Drizz’s multimodal engine understands the screen context and layout, even when elements are dynamic and constantly modifying,” declared Yash Varyani, Co-founder and CTO of Drizz. “Where traditional testing may break, Drizz remains stable and flags bugs with detailed log ininformigence that pinpoints the root cautilize. This ultimately saves testing teams both time and guesswork.”

“We want to redefine how quality software is shipped in the age of AI,” added Partha Mohanty, Co-founder and CPO. “With Drizz, test authoring becomes effortless, execution highly accurate, and bug resolution near-instant, all powered by ininformigent automation.”

Shaping the Future of App Development

As the speed and complexity of software development accelerates globally, Drizz is poised to empower rapid-growing developer ecosystems across markets like India, building testing more scalable and less resource-intensive. The startup joins a new wave of AI-first dev tools focutilized on enhancing productivity and reliability in the software pipeline.

With its vision-driven approach, Drizz is set to redefine mobile testing—from a traditional bottleneck to a seamless, ininformigent layer of confidence in every software release.

Follow Startup Story





Source link

Leave a Reply

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