The client runs a brand intelligence operation out of Germany, working with enterprise accounts across Europe and North America. Their core offer is straightforward: turn public conversation into business-relevant insight, delivered through dashboards their clients actually check every morning. Over seven years they had built a credible reputation in retail, consumer goods, and financial services — sectors where reputation risk is real and the cost of a slow response is measurable.
By the time they came to us, the team had grown to around 80 people. Enough to serve demanding clients, but also enough to feel the drag when the underlying infrastructure stops keeping up.
The problem was not visible from the outside. Reports were still going out. Clients were not complaining yet. But internally, the team knew they were working around limitations rather than through them.
Their data came from a third-party vendor whose model had made sense at a smaller scale: pre-processed, sampled outputs delivered on a schedule. At lower volumes, this worked. As enterprise clients started pushing for more — more granularity, more languages, faster turnaround on alerts — the cracks appeared.
Three things were becoming genuinely difficult to manage:
They spent the better part of six months evaluating alternatives. The options split into two camps: cheaper but worse, or better but prohibitively expensive. Neither solved the actual problem.
The integration took three weeks end-to-end. The technical lift on their side was modest — a clean API with consistent schema meant their existing pipeline needed adjustment, not reconstruction. What changed most immediately was the data's character: raw, real-time, pulled at the point of request rather than queued and delivered from a cache.
Language filtering improved sharply. The team could now define monitoring parameters with the precision their multilingual clients needed, without building workarounds or manually curating outputs. Query structures that used to require analyst intervention could be set up once and run reliably.
The pricing shift was also significant. Moving to a usage-based model meant the agency could scale individual client accounts up and down without absorbing fixed costs that didn't reflect actual usage. For a business where project scopes vary considerably by client, that flexibility had real financial value.
35% reduction in data costs in the first contract year, with continued headroom as usage patterns stabilised.
Alert delivery moved from hours to minutes, enabling a proactive monitoring tier that had not previously been viable to offer.
Coverage gaps closed across all target languages, with no further manual curation required.
Client retention improved as the accuracy and timeliness of dashboards became a competitive differentiator rather than a baseline expectation.
Internal engineering time freed up from maintaining data quality patches, redirected to product development.
Stop wasting time cleaning, collecting, and structuring data — we've done it for you. Focus on what really matters: creating value and driving results.
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