Graduate Data Analyst - London

GRAYCE
Slough
2 months ago
Applications closed

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Job Position:Graduate Data Analyst (Engineer/Scientist) - via the Graduate Development Programme

Locations:London

Starting Salary:£28,000

Application Requirements:

  • Minimum 2:1 or above in a STEM (Science, Technology, Engineering, and Math) subject
  • Experience in analysing data
  • Right to work in the UK unsponsored for the duration of the programme
  • Ability to work on site 5 days a week.

Grayce specialises in driving change and transformation for some of the world's most ambitious organisations. For over a decade, we've partnered with FTSE 100 and 250 companies to deliver impactful results by developing and deploying high-performing talent in the UK and beyond.

Grayce is not on the UK Border Agency's Sponsor Register and is unable to sponsor work visas for international applicants.

Our Accelerated Development Programmeis designed to launch the careers of recent graduates eager to make an impact. We offer a fast-track route to expertise, allowing you to gain hands-on experience with one of our impressive clients in a variety of flexible roles such as Data Analysis, InfoSec, Software Testing and DevOps.

Join Grayce and accelerate your career!

Why Grayce?Our Analysts are actively involved in major global transformation programmes across diverse industries.

Opportunity:You'll embark on a journey of continuous learning, gaining industry-accredited qualifications, whilst getting hands-on experience working full time on site directly with prestigious FTSE100, 250, and 500 organisations.

Delivery:You will work with one client, delivering high quality outcomes during your Grayce tenure, before transitioning to working directly for them. The skills required for exceptional client delivery include natural curiosity, proactivity, adaptability, effective communication and problem solving.

Mentoring:Thrive under the guidance of our experienced Delivery Managers and Technical Trainers. They'll be your go-to, offering support, insights, sharing experiences.

Progression:Starting as an Analyst with the potential for significant salary progression, you will pick up invaluable skills and complete a minimum of 6 industry recognised accreditations during your time on the development programme.

What Makes a Great Grayce Analyst

  • 2:1 Undergraduate Degree:An undergraduate degree with a minimum 2:1 within a STEM field. A solid academic basis within data analysis and science through an additional MSc would be an advantage.
  • Data Tools:Previous experience with tools such as Excel, R, SQL or Python are essential for this role. If you have utilised visualisation programmes such as Tableau or Power BI in projects before, we are also keen to hear from you.
  • Analytical Problem Solving:We're looking for analytical minds that can spot patterns and think creatively. Whether it's dissecting complex issues or finding fresh angles, we highly value critical thinking skills and their application.
  • Soft Skills:From effective communication styles to planning, organisation and a learning development mindset, Grayce is committed to building core consultancy skills. Stakeholder and time management are core skills we utilise every day and we look for examples of those through our interview process.

Why work for us?

  • Competitive Salary:Starting at £28,000 with potential for significant growth
  • Industry Recognition:We help you embark on your journey with fully funded, industry-recognised qualifications designed to maximise your experience and put you in control of your career
  • Mentors and Coaches:Access a network of mentors and coaches dedicated to you, your experiences and development at Grayce
  • Wellness Support:We are here for you 24/7 with our Employee Assistance Programme, offering confidential assistance ranging from financial and legal support to health and wellbeing

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