Hybrid Data Analyst - Financial Crime Impact & Ethics

The Co-operative Bank plc
Manchester
4 days ago
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Want to change the world? Choose a career that makes a difference

At The Co-operative Bank we’re proud to be different. We’re proud of our values and ethics, and our unique, customer-led Ethical Policy that shapes everything we do.

Born out of the co-operative movement over 150 years ago, you could say that doing the right thing has always been our thing. We don’t just help people with their money, but help people fight for justice and the causes they care about.

We put people at the heart of every decision we make and there’s never been a more important time for our Bank to stand up for the causes that matter most to our customers, colleagues and partner organisations.

Join us and help us continue to make progress in environmental and societal change, all with the UK’s original ethical bank.

*We promote a hybrid working environment, which means you will work at our office in Manchester roughly once a week and then remotely from home. To enable you to work from home, you will need have a suitable office set up which includes a desk and a chair in a location which is free from the interruptions of day-to-day life.


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