Data Analyst

Heathrow
2 weeks ago
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Data Analyst - Advanced Analytics
Middlesex offices / Home - hybrid working (3 days per week in the office)
Salaries in the region of £35,000 - £50,000 DoE
J13028

Candidates must have the right to work in the UK without sponsorship requirements

A fantastic opportunity for a proven analyst to join a highly respected global organisation. The successful candidate will have strong SQL skills, experience analysing large data sets, and a collaborative approach to working as part of a team.

Joining a large and multi-disciplined team, this role not only offers the chance to partner with core business areas, but also develop further experience presenting to stakeholders across the business and work with advanced technologies.

The team is headed up by 4 separate Analytics Leads, all working on exciting and revolutionary projects for the wider business. Working closely with the Lead and your fellow peers, this role will provide the opportunity to develop your analytical skills and make a real impact in the business.

You will have experience delivering meaningful business insights and engaging with stakeholders, and provide analytical expertise, clearly communicating technical information to non-technical audiences.

Duties
• Partner with core business areas to gain a deep understanding of their data, reporting, visualisation and analysis requirements
• Manage a portfolio of dashboards, visualisations and data sources, including their ongoing development and continuous improvement
• Deliver robust, accurate data sets and visualisations within agreed timescales
• Structure problems and design, develop and maintain numerical models to support decision-making
• Proactively engage with multiple stakeholders, bringing them together and gaining buy-in for ideas and approaches
• Provide deep insight into critical business questions using a range of analytical tools, including SQL, Tableau, Python and Excel

Skills
• Confidence in challenging and influencing senior stakeholders with differing viewpoints
• Creativity in recommending solutions, with a strong commitment to delivery
• Excellent presentation and communication skills
• Proven technical skills including SQL, Excel and Python (or similar)
• Experience designing and building data visualisations and dashboards (e.g. Tableau)

Experience
• Minimum of 1 year's experience in an Analyst role
• Analysing complex problems, packaging insights and presenting findings effectively to stakeholders
• Managing databases and/or blending multiple data sources
• Designing data structures for management information purposes
• Visualising data and presenting trends and insights to a broad audience

If this role sounds right for you, please apply today.

Alternatively, you can refer a friend or colleague by taking part in our excellent referral scheme. For every suitable candidate you introduce to us (with no limit) who is successfully placed, you will be eligible for our standard gift/voucher reward.

Datatech is one of the UK's leading recruitment agencies specialising in analytics and is the host of the critically acclaimed Women in Data event. For more information, please visit our website: (url removed)

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