THE CHALLENGE
Navigating excessive latency, an outdated delivery platform, and mounting technical debt
Rezolve Ai is transforming how shoppers discover products online. The company uses AI to power e-commerce search and product discovery solutions that enable retailers to bridge the gap between consumers and merchants. The company serves both business-to-business (B2B) and business-to-consumer (B2C) retail brands through its software-as-a-service (SaaS) platform.
Rezolve Ai’s original product discovery system featured a contextual, AI-based search engine that performed well with subjective queries, such as "blue blankets." As Rezolve Ai expanded its product discovery system to serve more diverse use cases, the company identified an opportunity to enhance its capabilities for B2B customers. Specifically, the system could be improved to more efficiently support precise part number searches, which follow specific formats without contextual elements. To address this need, Rezolve Ai sought to incorporate a specialized keyword-based search capability.
Behind the scenes, the Rezolve Ai team grappled with extensive operational overhead. The company’s Elasticsearch-based solution required dedicated teams to maintain the system. The platform also lacked the flexibility needed to adapt to evolving customer requirements.
As Rezolve Ai modernized its platform from 1.0 to 2.0, it began exploring alternative foundations that could deliver the required performance, reduce operational complexity, and handle both contextual and non-contextual search queries. After evaluating multiple vendors and conducting proof-of-concept tests, the product discovery team identified MongoDB Atlas as the ideal solution.
“MongoDB Atlas, with its auto-scaling and search node provisioning, eases a lot of the overhead,” said Henry Tang, Lead Solutions Architect at Rezolve Ai. “It was a no-brainer to adopt MongoDB Atlas, from not only a feature perspective but also an operational one.”

