We help organizations cut through the noise, evaluate the right options, and move forward with greater clarity.
Whether you are replacing legacy systems or supporting growth, let’s define the right next step for your business.
Watch this on-demand webinar to learn how AI is reshaping FP&A for modern finance teams.
Come meet Delbridge in Austin, Texas, where Delbridge is sponsoring this year’s Vena Excelerate Conference!
When customers across Europe logged into their favorite online electronics store, they weren’t expecting delays. But instead of a seamless shopping experience, they faced sluggish searches, lagging filters, and slow-loading pages. Finding the right product became frustrating. Conversions dropped. Complaints rose.
Behind the scenes, the platform was straining under the weight of rapid growth.
This mid-sized, multi-tenant e-commerce provider served over 250 business clients across the UK, France, Germany, and the Netherlands. With millions of products and 13 supported languages, performance wasn’t just a technical concern, it was directly tied to revenue.
The company’s newer platform, Prisma 2, was particularly vulnerable. Despite using MongoDB Atlas Search, the configuration was flawed. Indexes were bloated. Pagination relied on skip/limit, degrading user experience with every scroll. Read costs surged. Memory spikes triggered node restarts and replica elections.
The platform wasn’t broken, but it was stuck in first gear. That’s when Delbridge stepped in.
Delbridge began with a comprehensive audit of the MongoDB Atlas environment. The findings told a familiar story: a modern tech stack with plenty of potential but misconfigured, under-optimized, and driving up costs.
Key issues identified:
The diagnosis was clear: the platform didn’t need a rebuild, it needed a rethink.
Delbridge restructured the Atlas Search index to support:
Example synonym document:
Skip/limit pagination was replaced with cursor-based logic using _id, createdAt, and searchAfter.
This dramatically improved response times and reduced query load.
Example:
Indexes were redesigned using Equality, Sort, Range (ESR) principles:
Command to identify index usage:
To reduce cloud spend and improve resource usage, the team:
Example cleanup commands:
To improve observability and reduce performance risk, Delbridge:
The Impact: Faster, Leaner, and AI-Ready
Once the improvements were deployed, the results were immediate:
And most importantly, the platform is now AI-ready—capable of powering smart recommendations, predictive search, and personalized ranking models without a full-stack rebuild.
For product leaders and founders, this isn’t just a technical win, it’s proof that MongoDB Atlas, when fully optimized, can become a powerful engine for scale.
With the right partner, a sluggish stack isn’t a setback, it’s an opportunity.
You don’t need to rebuild.
You need to reimagine what your database can do.
Delbridge can help you get there.
