2025 Level 4 Data Analyst Apprenticeship

WTW
Ipswich
6 months ago
Applications closed

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Data Analyst

WTW

Difference makers

Begin your career with WTW where every step is an opportunity. Join a company with global scale and diverse perspective where you can deepen our collective insight, set the bar high and succeed your way.

Whichever early careers program you join, you’ll go into a role with real responsibilities, exposure to client assignments and the opportunity to build up valuable experience. With WTW behind you, you’ll learn and develop the skills to succeed in your chosen role. 

Where you means all of us


We’re proud of our culture and committed to making a real impact for our clients and colleagues. That’s why we constantly challenge ourselves to grow our inclusive culture and create a place where we’re bolder together. Our inclusion networks help us to live our values and our defined inclusion and diversity commitments improve and measure our progress. For you, this means joining a company where you can bring your whole self to work.

Your future in sharp focus

We leverage the global view and local expertise of our 48,000 colleagues serving 140 countries and markets to transform tomorrows. At WTW, you’ll tackle challenges with the help of a diverse, expert global team and identify strategic solutions that move us – and the world’s most powerful organizations – forward.

The Business 

WTW Enterprise Delivery Organisation (WE DO)

WE DO brings together our Operations, Technology, Real Estate and Workplace Solutions (RE&WS), and Global Service Delivery (GSD) into one, unified organisation. Business Operations partners with the segments, geographies and functions, providing operational expertise to deliver efficient and effective services to meet internal and external client requirements and help solve for common needs. Foster a Continuous Improvement mindset among WE DO colleagues Encourage colleagues to “build once, use often” by creating a repository of ideas and solutions that can be reused or repurposed Drive engagement across WE DO by sharing best practices and encouraging cross-team collaborations Recognise colleagues who contribute improvement ideas that add value Create a consistent approval process for securing funding for implementation of large ideas

The Role 

*** Please note that we do not accept multiple applications and you should only select and apply to one programme per year***

Data Analyst Apprenticeship Programme 

Closing Date: 25th October 2024

Start Date 1st September 2025

Training & Qualifications 

This Apprenticeship is a 16-month programme where you will be provided on the job training and a highly competitive study support package for the Level 4 Data Analyst qualification. You will be fully supported by WTW and our official government approved Training Provider throughout the duration of the programme.

Data Analyst apprentices are taught how to collect, organise and study data to provide business insight. They are typically involved with managing, cleansing, abstracting and aggregating data, and conducting a range of analytical studies on that data. They'll understand data structures, database systems and procedures and the range of analytical tools used to undertake a range of different types of analyses.

The programme also provides access to senior mentors and a “buddy network” to support your wider career development, with ample networking and experience-building opportunities. 

This foundational programme is part of WTW’s culture of learning, which supports career development for all our colleagues, from apprentices through to senior leaders. You will be a permanent employee from day one and be fully supported by the experts within your team.

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