Senior Data Analyst- Data Extraction

AIB (NI)
Belfast
1 month ago
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AIB (NI) Belfast, Northern Ireland, United Kingdom


Location: Ann Street, Belfast or St Marys Axe, London, Hardman Street Manchester.


Hybrid Working: Currently 2 days per week in base location; 3 days per week in base location from 1st January 2026.



  • Would you like to work in a collaborative environment where your analytical skills help drive customer improvements?
  • Are you keen to shape the future of banking through data-driven innovation?
  • Can you frame business requirements in technical terms and extract code for the desired solution?

What is the Role

AIB UK is a subsidiary of AIB Group, Ireland’s largest bank, and a leading bank in Europe. The UK business focuses on full‑service retail & business banking in Northern Ireland and Corporate Banking in GB.


This is a great opportunity to join a growing Technology & Data Team for the UK business that sits under the UK Chief Operating Officer.


We’re looking for a curious and detail‑oriented Data Analyst to join our Technology & Data Team. You’ll play a key role in extracting complex financial data, supporting a team in delivering insights that ensures regulatory compliance and strategic decision‑making across AIB and ensuring we deliver positive customer outcomes.


Key Accountabilities

  • Utilise advanced data transformation skills to deliver data sets to meet business requirements of identifying trends, insights and opportunities to drive customer improvements.
  • Manage and prioritise various regulatory data initiatives.
  • Using data extraction tools from the AIB Data Warehouse, analyse and report data to meet business requirements.
  • Monitor and report on key customer and regulatory metrics, ensuring data integrity and alignment with FCA and PRA regulation.
  • Support the translation of data into actionable insights and communicate key findings to senior management and committees.
  • Collaborate with UK Customer Experience teams to ensure data accuracy and integrity. This will include validating data sources, cleansing datasets, and applying robust quality checks before analysis.

What You Will Bring

  • Minimum 3 years proven technical experience in data extraction and reporting, within financial services sector, preferably banking.
  • Excellent analytical and problem‑solving skills with a high attention to detail.
  • Exceptional communication and interpersonal skills, with the ability to communicate complex data sets clearly to both technical and non‑technical audiences.
  • Strong proficiency with data tools such as SQL, Python, Excel, Power BI, Qlikview, and with agile tools like Jira; JQLs.
  • Good stakeholder management skills, with ability to collaborate with cross‑functional teams to support data-driven decisions.
  • Ability to multitask and work well under pressure and meet tight timescales whilst ensuring quality and accuracy of output.

Why Work for AIB

We are committed to offering our colleagues choice and flexibility in how we work and live and our hybrid working model enables our people to balance their time between working from home and their designated office, subject to their role, the needs of our customers and business requirements.


Some of our benefits include:



  • Variable Pay
  • Employee Assistance Programme
  • Family leave options

Follow here for further information about AIB’s PACT – Our Commitment to You.


Key Capabilities
Behavioural

  • Customer Focus – Building strong relationships with internal stakeholders, delivering customer focussed insights to support the delivery of good customer outcomes.
  • Collaborates – Works closely with cross functional teams on a daily basis to deliver and support data-driven decisions.
  • Eliminates Complexity – Knowing the most effective and efficient processes to get things done, with a focus on continuous improvement.

Technical

  • Data Analysis – Extracts, and supports the analysis and interpretation of data to reach conclusions and/or present insights and findings.
  • Data Visualisation – Demonstrates ability to use the features of technology applications and tools to create and build visually impactful end‑user outputs.
  • Presentation – Communicates with clarity and precision, presenting complex information in a concise format that is audience appropriate.

If you are not sure about your suitability based on any aspects of the role advertised, we encourage you to please contact the Recruiter for this role, Noelle Ryan, at for a conversation.


AIB is an equal opportunities employer, and we pride ourselves on being the first bank in Ireland to receive the Investors in Diversity Gold Standard accreditation from the Irish Centre for Diversity. We are committed to providing reasonable accommodations for applicants and employees. Should you have a reasonable accommodation request please email the Talent Acquisition team at .


Disclaimer: Unsolicited CVs sent to AIB by Recruitment Agencies will not be accepted for this position. AIB operates a direct sourcing model and where agency assistance is required, the Talent Acquisition team will engage directly with our recruitment partners.


Application deadline: Thursday 20th November 2025 (just before midnight).


Seniority level: Associate.


Employment type: Full‑time.


Job function: Information Technology and Analyst.


Industries: Banking.


Referrals increase your chances of interviewing at AIB (NI) by 2x.


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