Senior BI Data Analyst

Evri
Leeds
5 days ago
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Join Evri Group, and build the BI capability of the future

Evri Group is one of the UK's biggest parcel delivery businesses, powered by our two core brands: Evri and Evri Premium (previously known as DHL eCommerce). With 12,000 colleagues, 30,000+ couriers and 8,000 vehicles, we deliver through our fast, flexible network of hubs, depots, delivery units and fulfilment centres. With over 50 years of experience, we deliver more than 1 billion parcels and 1 billion letters a year, supporting everyone from casual senders to major retailers across the UK and to 200+ global destinations. Our people are at the heart of everything we do. We're friendly, ambitious and diverse, united by a drive to deliver brilliant service.

Working across both brands, this role will play a key part in driving data and reporting improvements that support and enhance our entire end to end operation, influencing how our combined organisation delivers for customers nationwide.

We're transforming the way data powers decision-making across our Operations Finance teams, and we're looking for a Senior BI Data Analyst who's more than a dashboard developer. We want a Leader, a builder and a communicator, who can turn raw complexity into clarity. Someone who knows what great Business Intelligence looks like and isn't afraid to lead the way.

What You'll Do — Your Impact

In this role, you'll own the design, developmen...

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