Appvance, the technology leader in generative AI for software quality assurance (SQA), announced the GENI Transformation Factory, a groundbreaking expansion of its AI platform that can now generate, transform, and regenerate every QA artifact across the software development lifecycle.
With the addition of API data generation from OpenAPI specs, Appvance IQ now provides the industry’s only unified, AI-first testing platform that autonomously generates scripts and data across UI, API, and end-to-end flows.
Built with Model Context Protocol (MCP) support, the GENI Transformation Factory allows enterprises to use any compliant large language model (LLM) — open source, commercial, or homegrown. With this release, Appvance extends its decade-long leadership in AI-first testing, introducing a new level of flexibility and completeness for enterprises pursuing AI-led digital transformation.
Marketing Technology News: MarTech Interview with Miguel Lopes, CPO @ TrafficGuard
An AI Factory for QA Artifacts
QA has long relied on a chain of artifacts — business requirements, epics, user stories, Gherkin scenarios, test case summaries, step-by-step test cases, and executable test scripts. Historically, each artifact was created and maintained separately, often inconsistently, leading to gaps in coverage, costly rewrites, and fragile connections between requirements and tests.
The GENI Transformation Factory changes that. Any artifact can now serve as input to generate any of the others, instantly. For example, test cases can be transformed back into user stories if requirements documentation has fallen behind. Business requirements can flow downstream into scripts, while existing scripts can regenerate higher-level summaries or even business requirements. This two-way upstream/downstream capability ensures consistency across the QA chain, no matter where the process begins.
Marketing Technology News: BambooHR and Marketing Architects Launch First National TV Campaign to Build Brand Visibility
In early trials the GENI Transformation Factory reduced human labor by 85% to 93% compared to creating or updating the artifacts from scratch.
“AI can now design, generate, and regenerate the full set of QA artifacts with limited human intervention,” said Kevin Surace, Appvance CEO. “With the GENI Transformation Factory, QA finally has a living, bidirectional system of record. Teams can move downstream from requirements to execution or upstream from scripts to business rules in minutes. And because it’s built on MCP, enterprises can choose whichever LLM best aligns with their strategy. This is the future of quality assurance: an AI factory for every QA artifact.”
How It Works
The GENI Transformation Factory builds on Appvance’s patented Digital Twin technology and its proven AI Script Generation (AISG) and GENI
MCP ensures enterprises can execute these transformations with any compliant LLM, deployed on-premises, in private cloud, or through commercial providers.
Why MCP Matters
Enterprises have historically been locked into a single LLM vendor when adopting AI-first testing. MCP, described as a “universal translator” for AI, enables Appvance clients to swap models in and out with no disruption. This future-proofs QA infrastructure, giving CIOs and CTOs control over which models to deploy based on security, governance, or strategic priorities.
Key Benefits
The post Appvance Unveils GENI Transformation Factory with MCP Support first appeared on PressReleaseCC.
Appvance Unveils GENI Transformation Factory with MCP Support first appeared on Web and IT News.
MyndTec Inc. Completes Additional Tranche of Non-Brokered Private Placement Mississauga, Ontario–(Newsfile Corp. – February 4,…
Acceleware Secures Next Phase Contract for Mineral Drying Project with Saskatchewan’s International Minerals Innovation Institute…
ABB (Switzerland), Siemens (Germany), Schneider Electric (France), Honeywell (US), Rockwell Automation (US), Hitachi (Japan), Toshiba…
AWS (US), Microsoft (US), IBM (US), VMware (US), 11:11 Systems (US), Recovery Point Systems (US),…
The majority of leaders agree that to make Enterprise AI work, they need processes that…
Earns top scores in customer sentiment, voice quality, security, value, analytics, AI capabilities, and ease…
This website uses cookies.