Business Intelligence Developer

Office for Legal Complaints (OLC) / Legal Ombudsman
Birmingham
3 weeks ago
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About us and why we matter:

People rely on legal services at key times in their lives whether its buying a home, dealing with bereavement, having issues at work, ending a marriage, or being involved in legal action. These things really matter and thats why the Legal Ombudsman really matters.

If people cant sort out a problem with a legal provider, were here to resolve things fairly and as quickly as possible. And as we resolve individual complaints, we share learning and insight into what weve seen helping prevent the same issues arising again.

Our Benefits:

Our total reward package includes a basic salary and a potential to earn rewards for excellent contribution to LeO.

Stakeholder pension scheme, whereby LeO will double your contribution up to 10%.

Annual Leave of 26 days per year (plus bank holidays) (pro rata for part time staff), plus you can buy or sell 4 days leave each year.

Flexible hours driven by work life balance and operated between 7am and 9pm each day, this also includes hybrid working of 80% at home and 20% in the office each week.

Group Income Protection if you cant work due to lo...

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