Financial Crime Analytics Consultant - Data Governance

Nationwide
Swindon
5 days ago
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Job Description

This is a fantastic opportunity to join our Financial Crime Analytics team; a collaborative, forward‑thinking area that plays a vital role in protecting the Society and its members. We use data in innovative ways to strengthen our defences against economic crime, helping to keep our members' money safe and maintain their trust in us.


The Data Governance function sits at the core of how we protect the Society, ensuring the data that underpins our financial crime activity is accurate, well managed and trusted. By strengthening our data foundations, we enable better decision‑making, more effective detection of emerging threats, and faster action to keep our members safe. As part of a team of specialists across analytics, fraud and financial crime, you'll contribute to creating a more resilient organisation, one where high‑quality data helps us stay ahead of criminals and deliver the right outcomes for our members.


We are happy to consider flexible working approaches to help you perform at your best.


At Nationwide we offer hybrid working wherever possible. More rewarding relationships are supported through our hybrid approach, bringing colleagues together across our UK wide estate, whilst also supporting generous access to home working. We value our time in the office to solve problems, to learn, and to feel connected.


For this job you'll spend at least two days per week, or if part time you'll spend 40% of your working time, based at either our Swindon or London office. If your application is successful, your hiring manager will provide further details on how this works. You can also find out more about our approach to hybrid working here.


If we receive a high volume of relevant applications, we may close the advert earlier than the advertised date, so please apply as soon as you can.


Responsibilities

What you'll be doing


As a Financial Crime Analytics Consultant, you will help us assess how well we are meeting the Society's Data Governance Framework, recommending improvements to our data controls and putting these changes in place in a sustainable way. You will use your experience with data controls, including data lineage and data quality insights such as dashboards and scorecards, to make sure the data used in our financial crime systems and reports is accurate and clearly understood.


You will work closely with subject matter experts in financial crime data and systems to help them make the best use of our tools and capabilities. Through this work, you will improve the quality of the information that supports our decision‑making and strengthen the action we take to protect our members.


About you

For this role, you will have/be:



  • Proven hands‑on experience implementing data controls in a large organisation, including the development and rollout of data dictionaries, lineage documentation and data quality scorecards, along with experience resolving data quality issues
  • Strong knowledge of data governance frameworks and recognised industry best practice
  • Experience using Collibra within a data governance or data management environment
  • Confident using Microsoft Excel and Power BI, or similar analytical and reporting tools
  • Experience using SQL, SAS or another programming language such as Python or C#
  • Excellent personal organisation with the ability to plan, manage and prioritise your own workload effectively
  • Strong verbal and written communication skills with the ability to influence and challenge in a constructive way, promoting a positive data culture and helping data controls become an established business as‑usual activity
  • Experience working in one or more of the following areas, Economic Crime, Fraud or Anti‑Money Laundering

Our customer first behaviours put customers and members at the heart of how we work together. They are the set of behaviours that every colleague needs to display, in every role:



  • Feel what customers feel - We step into our customers' shoes, using their feedback and insights to empathise with them and to understand their needs, so that every decision we make starts and finishes with our customers in mind
  • Say it straight - We are brave in speaking out and saying what we think - we're honest and direct with good intent, openly sharing diverse perspectives to reach the best conclusions and using language everyone can understand
  • Push for better - We don't settle for mediocrity, we challenge the status quo, taking responsibility for continuous improvement and personal development
  • Get it done - We prioritise what will have the greatest impact, we are decisive, and we take accountability for delivering brilliant customer outcomes

You can strengthen your application by showing how our customer first behaviours resonate with you, and where you may have already demonstrated these.


Qualifications
The extras you'll get

  • 25 days holiday, pro rata
  • Access to private medical insurance
  • A highly competitive pension to help you build a strong foundation for retirement
  • Access to an annual performance related bonus
  • Training and development to help you progress your career
  • A great selection of additional benefits through our salary sacrifice scheme
  • Life assurance to provide peace of mind for you and your loved ones in the event of your death
  • Wellhub - access to a range of free and paid options for health and wellness
  • Up to 2 days of paid volunteering a year

Banking - but fairer, more rewarding, and for the good of society

We forge our own path at Nationwide.


As a mutual, we're owned by our members - those customers who bank, save or have a mortgage with us. We challenge the financial sector status quo. We don't see customers as the engine of our own profit. We share our profits with them and put their needs first. Always there when they need us. Supporting them and their lives.


If you're inspired by fairer finances, passionate about making a meaningful impact, and truly care about our customers, you're one of us.


At Nationwide, you are challenged to grow and rewarded for doing so. Valued. Recognised. Inspired to be your best. As a community we want our working lives to count. As a team, we celebrate what we achieve. As a standard‑setter, we work for the good of customers, communities, and broader society.


We are purpose‑driven. Uncompromisingly customer. Unstoppably Nationwide.


What to do next

If this role is for you, please click the 'Apply Now' button. You'll need to attach your up‑to‑date CV and answer a few quick questions for us.


We respond to everyone, so we will be in contact shortly after the closing date to let you know the outcome of your application.


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