Case Studies

Building Embedded AI Analytics at Scale

Cloud SaaS Provider, USA

Challenge

A US-based cloud SaaS provider serving the service operations industry faced two significant data challenges: one customer-facing and one internal.

The business wanted to introduce analytics and AI-powered insights directly into its software platform, giving customers access to reporting and intelligence as a native product feature. However, the platform operated on a single-tenant architecture, with approximately 1,000 separate customer databases, each containing variations in structure and schema. This made it impossible to create a unified analytics layer across the customer base.

Internally, data was equally fragmented. Multiple SaaS applications supported different business functions, but there was no master data management strategy or single source of truth. Teams lacked a unified view of customers, operations, and performance, making even basic reporting difficult and time-consuming.

Solution

InsyteGroup built two unified data platforms to address both challenges in parallel.

The first platform consolidated approximately 1,000 separate customer databases into a single data lake designed for embedded product analytics. The core technical challenge was the schema variation across databases – each customer’s data was structured differently. We solved this using AI-assisted mapping that handled schema differences at scale, normalising the data into a consistent model that could power analytics across the entire customer base.

The second platform integrated the business’s internal systems to create a true customer 360, a single, complete view of every customer relationship, combining product usage data with commercial, support, and operational information from across the business.

On top of these foundations, we delivered embedded BI directly inside the SaaS platform, giving end customers access to analytics and insight as a native part of the platform. For internal teams, we deployed AI agent capabilities that enabled natural language querying across all data, advanced analysis, and automated AI-generated narratives.

Impact

If you’re building or evaluating a data platform and want to understand how semantic modelling fits into the picture, we’re always happy to talk it through.

Case Studies

Lets Work Together

We’re always happy to talk about what we do, what you’d like to achieve, and answer any questions.

Let’s start with a proof-of-concept to show you how we’d solve your BI needs.

Contact Us