Revenue & Data Analytics Manager

edyn
London
3 days ago
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REVENUE & DATA ANALYTICS MANAGER – LONDON, HQ

Reporting to the VP Revenue Management & Distribution, the Revenue & Data Analytics Manager will drive data-led insights to support revenue performance across the portfolio. The role will translate complex data into clear actions, improving forecasting, identifying optimisation opportunities, and strengthening commercial decision-making.

Working closely with Revenue, Commercial, and Technology teams, the role will also enhance the revenue data infrastructure and reporting tools, helping embed a Test & Learn culture and enabling smarter, faster decisions across the business.

THE STAGE IS SET

The stage is set for something different. We don't run conventional hotels; we build places with character and intent.

What began as a small UK aparthotel portfolio has grown into a European collection recognised for design and atmosphere - and we're now entering a new chapter. As we redefine the brand and evolve our identity, we're focused on creating spaces that feel compelling, contemporary, and truly distinctive. Locke leads with bold expression; Cove by Locke refines that same spirit into a quieter, more streamlined approach.

Guests come to rest, work, or escape. Comfort is a given - great beds, hot showers, genuine service. But we aim to create moments that feel memorable and a little unexpected, bringing back the sense of mood hospitality often lost.

This is o...

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