Data Analyst

Datatech Analytics
London
6 days ago
Create job alert
Data Analyst

Middlesex offices/Home - hybrid working 3 days p/w in the office


Salaries in the region of £35,000 - 50,000 DoE


J13028


Candidates must have working rights without sponsorship requirements


Fantastic opportunity for a graduate with 1 + years' proven commercial application experience in an Analyst role to join a highly respected global company. Candidate needs to have proven skills with SQL, analysing large data sets and working collaboratively as part of a team.


Degrees such as Mathematics, Statistics, Physics, MORSE, Economics etc are suitable - with a strong numerical and problem solving content. You should have experience delivering business insights and stakeholder engagement. You will be expected to provide analytical expertise and communicate technical data to non-technical audiences to develop the data agenda in line with business priorities. A positive thinker with plenty of curiosity would be ideal for this role.


Duties

  • Partner with core business areas to gain a deep understanding of their data, reporting, visualisation and analysis needs
  • Manage a portfolio of dashboards, visualisations and data sources, and the continuous improvement of these
  • Deliver robust and accurate data sets and visualisations within expected timescales
  • Structure problems and design and develop numerical models to inform decisions
  • Proactively consult and bring together multiple stakeholders and gain buy-in to ideas and approaches
  • Provide deep insight for critical business questions using a variety of analytical tools e.g., SQL, Tableau, Python and Excel

Skills

  • Proven advanced analytical skills
  • Comfortable challenging and influencing senior management with conflicting views
  • Creativity in recommending solutions and commitment to driving delivery
  • Proven ability to lead the direction of analytical projects
  • Excellent presentation and communication skills
  • Strong business acumen and commercial awareness
  • Proven technical skills including SQL, Excel and Python (or similar)
  • Experience in design and creation of data visualisations and dashboards e.g., Tableau

Experience

  • 1+ year in an Analyst role
  • Analysing complex issues, packaging findings and presenting effectively to stakeholders
  • Managing databases and/or blending data
  • Designing data for management information purposes
  • Visualising data and presenting trends and findings for broad audiences

If this sounds like the role for you then please apply today!


Alternatively, you can refer a friend or colleague by taking part in our fantastic referral schemes! If you have a friend or colleague who would be interested in this role, please refer them to us. For each relevant candidate that you introduce to us (there is no limit) and we place, you will be entitled to our general gift/voucher scheme.


Datatech is one of the UK's leading recruitment agencies in the field of analytics and host of the critically acclaimed event, Women in Data. For more information, visit our website: www.datatech.org.uk


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