Graduate Data Analyst Programme | Central London

Regal Brooke Limited
Nw10Ab, NW1 0AB, United Kingdom
Last month
£35,000 – £45,000 pa

Salary

£35,000 – £45,000 pa

Job Type
Permanent
Work Location
Hybrid
Seniority
Entry
Education
Degree
Posted
28 Apr 2026 (Last month)

Benefits

Private healthcare 25 days annual leave Performance related bonus Structured salary reviews Support towards professional certifications

Start your career where data drives decisions

This is an opportunity for a graduate to step into a high impact data analyst role within one of London’s most commercially driven and forward thinking environments. Based in the heart of Central London, you will be part of a team that sits at the centre of strategic decision making, working with live data, real clients, and senior stakeholders from day one.

This programme has been designed for ambitious individuals who want more than just a job. You will gain hands on experience, structured development, and full support towards professional growth in data, analytics, and financial decision making.

Salary and Package

Competitive graduate salary between £35000 and £45000

Performance related bonus with strong earning potential

Structured salary reviews within your first 12 months

Hybrid working available after initial training period

Full support towards relevant professional certifications

Private healthcare and wellbeing support

25 days annual leave plus bank holidays

Access to industry leading data tools and platforms

Clear progression pathway into senior analyst roles

About the Role

You will work closely with senior analysts, data scientists, and commercial teams to turn raw data into meaningful insight. Your work will directly influence business strategy, client outcomes, and operational efficiency.

From day one, you will be exposed to real projects and datasets, allowing you to build confidence quickly and develop a strong technical foundation.

Key Responsibilities

Collecting, cleaning, and analysing large datasets to identify trends and patterns

Building dashboards and reports to support business decisions

Working with stakeholders to understand data requirements and deliver insights

Supporting the development of predictive models and data driven strategies

Using tools such as Excel, SQL, and Python to manipulate and analyse data

Presenting findings in a clear and commercially focused way

Collaborating with cross functional teams across finance, operations, and strategy

What We Are Looking For

A strong interest in data analysis, business intelligence, or financial analytics

Analytical mindset with the ability to interpret complex information

Confidence working with numbers and drawing meaningful conclusions

Strong communication skills with the ability to explain data clearly

Motivated, ambitious, and eager to learn in a fast paced environment

Basic exposure to Excel or any data tools is beneficial but not essential

Training and Development

You will be enrolled onto a structured development programme designed to accelerate your career. This includes ongoing mentorship, technical training, and support towards industry recognised qualifications. We invest heavily in our people and provide the tools needed to progress into senior and specialist roles.

Career Progression

This programme is designed to move high performing graduates into more advanced roles within 12 to 24 months. Opportunities include Data Analyst, Business Intelligence Analyst, and Data Scientist pathways.

Why Apply

This is not a passive graduate role. You will be working on real business problems, gaining valuable experience, and building a skillset that is in high demand across multiple industries. If you are looking for a role where your work has impact, your progression is prioritised, and your earning potential grows quickly, this is the opportunity to take seriously.

Apply now to secure your place in a competitive and rewarding graduate programme in Central London.

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