Data Engineer

The Big Life Group
Manchester
3 days ago
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About The Big Life Group

The Big Life Group’s mission is to fight for equity, in health, in wealth and in life. We are a social business delivering a range of services across the North of England, covering everything from mental and physical health, addiction and criminal justice, to housing, education, family support and much more. What links them together is the way we work – The Big Life Way.


We always stand shoulder‑to‑shoulder with people, working with them on the things that matter most to them. Everything we do is designed and informed by the needs, priorities and strengths of people and communities.


Our values

  • Courage: We stand up for ourselves, and the people and communities we work alongside, even when that makes us unpopular, or challenges accepted wisdom.
  • Creativity: We find innovative solutions that work, never accepting the easy option or the status quo.
  • Honesty: We act with integrity, speaking the truth to ourselves and others.
  • Inspiration: We are inspired by the people and communities we work with and share what we learn from them to inspire others.
  • Thoughtful: We act with care and compassion and work to understand people’s experiences. We take time to listen, reflect and continually learn.
  • Valuing difference: We recognise and celebrate the unique qualities, gifts, insights and perspectives that different people offer.

Working at Big Life

At Big Life, work is more than a job – it’s about standing shoulder‑to‑shoulder with people and communities, making a difference every day. We fight for equity in health, in wealth and in life, and that commitment starts with how our staff.


Be yourself

We want you to feel safe, respected and able to bring your whole self to work. Difference is celebrated here, and our staff networks – from menopause to neurodiversity, LGBTQI+ and more – create space to connect and support each other.


Benefits that matter

We offer more than a payslip – you’ll find wellbeing support through LifeWorks, Simply Health and mindfulness sessions, 25‑30 days’ annual leave plus your birthday off, flexible working, and regular learning opportunities. Everyday perks include Blue Light Card discounts, savings schemes, cycle‑to‑work, free eye tests and more – little extras to make life easier inside and outside of work.


Recognised as outstanding

We’re proud to be ranked by Best Companies as one of the UK’s outstanding places to work, with a two‑star accreditation in 2024.


A culture of trust and flexibility

Our people describe our culture as relaxed and supportive. You’ll be trusted to plan your own day, take breaks when you need, and work in a way that fits with your life as well as your role.


If you’re looking for more than a job – if you want to be part of a team that’s bold, creative and relentlessly committed to equity – then Big Life could be the place for you.


Data Engineer: The basics

Salary: Up to £55 000 based on experience


Hours: Full‑time, 35 hours per week on a permanent contract


Annual leave: 25 days, increasing to 30 days after five years


Base: Zion Centre, 339 Stretford Road, Manchester, M15 4ZY is the main office base. But you will have the ability to work flexibly, from home.


Line manager: Data Analyst Manager


Closing date for applications: 8 February, 2026


What you’ll be doing

As our Data Engineer, you’ll play a vital role in shaping how we use data across The Big Life Group. Working as part of a small and collaborative data team, you’ll ensure that our data is reliable, secure, and accessible – helping us deliver insights that improve lives and services.


You’ll work within our Azure environment, developing and maintaining the data warehouse, promoting data quality, and optimising performance. You’ll collaborate with a range of teams – from developers and IT to operations and leadership – turning complex business needs into effective data solutions.


If you enjoy solving problems, building data infrastructure, and improving how organisations use information, this is an excellent opportunity to make a real impact while developing your own skills in a supportive and forward‑thinking environment.


Note: This post will require you to undergo HMPPS clearance vetting.


For the full recruitment pack, including the job description, go to: Vacancies Archive – The Big Life group


For more information on the role, please contact:


Interviews will be held w/c 16 February 2026


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