2026 Apprentice - Digital (Data Science) - London

PA Consulting
London
6 days ago
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Company Overview

PA is a global consulting firm that helps organisations harness the power of AI and data to drive business outcomes. With teams of interdisciplinary experts worldwide, we create opportunity from complexity across sectors such as government, health, finance, consumer, defence and transport.

Job Description

We are recruiting Data Science Apprentices to join our Digital and Technology Solutions team on a 3‑year apprenticeship. Apprentices will work on real client projects, learn from experienced data engineering and data science consultants, and receive coaching to develop into top‑notch data analysts and consultants. Successful completion will lead to an L6 Bachelors Degree in Digital & Technology Solutions Professional.

Key Responsibilities
  • Work with experienced data engineer and data scientist consultants to understand client requirements and develop custom data solutions
  • Learn and implement new technologies and data and digital development best practices
  • Participate in meetings with clients to understand their requirements and provide data‑driven solutions
  • Write documentation and conduct training sessions for clients
  • Pursue continuous personal development in data analytics skills
Assessment Process
  • Application form
  • Online assessments
  • Shortlisting
  • Assessment centre
  • Final stage interviews
Offer
  • Opportunity to work alongside and learn from talented colleagues on real client challenges from the start
  • Support and coaching to grow your data analytical skills and experience on real client work
  • Opportunity to work across all areas of the development lifecycle and in different sectors
  • Opportunity to provide high‑level technical designs in collaboration with business analysts, data engineers, data scientists and data architects
  • A broad rich base of experience from which to build an outstanding career in data and digital
  • Full‑time role with up to 20% time allowed for the apprentice programme
  • Hybrid working – you will be in the office or on client site at least two days per week; you must live within commuting distance of the office
  • Salary potential: £28,860
  • Role starts in September 2026
Qualifications
  • 2 A levels or equivalent in a relevant subject (e.g. Computing, Maths, IT, Science, Engineering)
  • Knowledge of relational and non‑relational databases, such as SQL and NoSQL, and/or familiarity with programming languages such as Python, R and SQL is a plus
  • Growth‑oriented and curious – open to change, driven to succeed, hungry for new challenges, and eager to broaden your understanding of the world
  • Collaborative and relationship‑focused – thrive in dynamic teams, build strong relationships with clients and peers, and support others to succeed
  • Credible and communicative – comfortable in high‑performance environments, with excellent written and verbal communication skills
  • Analytical and adaptable – demonstrate strong problem‑solving abilities, innovative thinking and flexibility to adapt your style and approach. A passion for data
  • Professional and reliable – show strong workplace etiquette by being punctual, dependable and respectful of business expectations and office conduct
Security & Eligibility

Please be aware that some of our UK roles at PA require a UK security clearance. All PA people are required to undergo background checks and to achieve the Baseline Personnel Security Standard. Some UK roles also require higher levels of National Security Vetting, which requires at least 5 years of continuous residency in the UK. Only apply if you meet the residency requirements (i.e. you are a British citizen or have lived in the UK for the past 5 years). If you are unsure about your eligibility, review the UK Government’s guidance on security vetting before applying.

Equal Opportunity

We’re committed to advancing equality. We recruit, retain, reward and develop our people based solely on their abilities and contributions and without reference to their age, background, disability, genetic information, parental or family status, religion or belief, race, ethnicity, nationality, sex, sexual orientation, gender identity (or expression), political belief, veteran status or any other range of human difference brought about by identity and experience. We welcome applications from underrepresented groups.

Application

Apply today by completing our online application. If you need any adjustments or accommodations to the recruitment process, please contact .


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