2026 Apprentice - Digital (Data Science) - Belfast

Consultancy.uk
Belfast
1 week ago
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Overview

PA Consulting is seeking Data Science Apprentices in our Belfast office. You will develop your skills and gain hands-on experience in data-driven initiatives, including artificial intelligence (AI), using contemporary coding platforms and modern tooling, while working with our top digital talent.

We partner with the University of Ulster, where you will study part-time for a Computing Science BSc alongside your apprenticeship. You must secure a place on this course directly with UU; applications to UU are separate from your PA application.

Join a team that helps clients across Government, Health, Financial Services, Consumer, Defence and Transport to leverage digital and data innovation for customers, people, and organisations. You will work on real client projects and deliver innovative data-driven solutions to critical business needs.

Key Responsibilities
  • Working with a team of experienced data engineers and data scientist consultants to understand client requirements and develop custom data solutions
  • Learning and implementing new technologies and data and digital development best practices
  • Participating in meetings with clients to understand their requirements and provide data-driven solutions
  • Writing documentation and conducting training sessions for clients
  • Pursue continuous personal development in data analytics skills
Assessment process
  • Application form
  • Online assessments
  • Shortlisting
  • Assessment centre
  • Final stage interviews
Our Offer
  • The opportunity to work alongside and learn from talented colleagues on real client challenges from the start
  • Coaching to grow your data analytical skills and experience on real client work
  • Opportunity to work across all areas of the development lifecycle, from strategy to implementation, in different sectors
  • Opportunity to provide high-level technical designs in collaboration with business analysts, data engineers, data scientists and data architects
  • A broad base of experience to build a career in data and digital
  • Full-time role with 20% time allocated to your apprenticeship programme
  • Hybrid working – in the office or on client site a minimum of 2 days per week; live within a commutable distance to the Belfast office
  • Salary potential: £26,230
  • Role starts in September 2026

Our job information: Firm: PA Consulting; Location: Belfast.

Qualifications

We’d like you to bring:

  • Qualifications: Working towards or having achieved CCC in A-levels or equivalent, ideally one in STEM; aligns with Ulster University entry requirements. See full eligibility: https://www.ulster.ac.uk/courses/202526/computing-systems-36167
  • Technical understanding: A passion for technology featured in your personal projects
  • Technical Skills: Knowledge of relational and non-relational databases (SQL, NoSQL) and/or programming (Python, R, SQL) is a plus
  • Growth-oriented and curious— open to change, driven to succeed, eager to broaden your understanding
  • Collaborative and relationship-focused— thrives in dynamic teams, builds strong client and peer relationships
  • Credible and communicative— comfortable in high-performance environments with strong written and verbal communication
  • Analytical and adaptable— strong problem-solving, innovative thinking, and a passion for data
  • Professional and reliable— punctual, dependable, and respectful of business expectations and office conduct

Apply today by completing our online application. The deadline for applications is Tuesday 17th March at 4pm. We will not accept applications after this deadline.

Note: Some UK PA Consulting roles require UK security clearance; all PA people undergo background checks and Baseline Personnel Security Standard; some roles require higher National Security Vetting with at least 5 years UK residency.

We ask applicants to meet residency requirements (British citizen or 5 years UK residency) as a prerequisite for security clearance. Review UK Government guidance on security vetting if unsure.

Additional information

Life At PA highlights our people’s experiences, opportunities, and purpose-led meaningful work. We focus on inclusion, equality, and diverse mindsets to unlock potential so everyone can be their best self.

Find out more about Life at PA here.

Benefits include: health and lifestyle perks with private healthcare; 25 days annual leave (plus a half day on Christmas Eve) with the option to buy 5 extra days; generous pension; opportunities to engage with community and charity initiatives; annual performance bonus; PA share ownership; tax-efficient benefits (cycle to work, give as you earn).

We’re committed to equality and encourage applications from underrepresented groups. Adjustments or accommodations in recruitment can be requested at .


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