Digital Analytics Specialist

Bupa
Brighton
11 months ago
Applications closed

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Job Description:

Digital Analytics Specialist

Brighton BN1 4FY – flexible / hybrid – office 1 day per week

Permanent

Full time 35 hours per week

Salary £38500 - £48000 depending on experience

We consider all types of flexibility wherever possible, including locations, hours and working patterns.

Bupa Global is the international health insurance division of Bupa. We provide customers who want premium international coverage with products and services to access the healthcare they need anytime, around the world, whether at home or when studying, living, travelling or working abroad.

Bupa Global has offices around the world including London and Brighton (UK), Dublin (Europe), Miami (USA), Dubai (UAE, in partnership with OIC), Egypt and Hong Kong (China) as well as regional offices in mainland China, Singapore, the Dominican Republic, Bolivia, Panama, Guatemala and Ecuador.

We make health happen

In this role, you’ll bring a passion for data and insights.

You’ll partner with the business to understand their needs and provide the necessary information, distilling complex analysis into simple insights.

How you’ll help us make health happen

Provide regular reporting through Adobe Analytics and Power BI Produce detailed analysis on the performance of campaigns and Digital products. Produce and share actionable insights. Identify opportunities to improve the Digital customer experience. Liaise with key stakeholders to understand measurement requirements and define KPIs. Support the implementation of marketing tags and Digital Analytics tools.

You

Knowledge and experience with data visualisation tools (Power BI) is essential. Experience using Digital Analytics tools (Adobe Analytics) would be ideal - the capability and drive to learn is essential. Ability to distil complexity into simple digestible information. Effective communication and presentation skills Excellent influencing skills Proven experience using SQL. Tag management experience (Tealium) would be a bonus! A collaborative team player with the confidence and expertise to work independently.

Benefits

Our benefits are designed to make health happen for our people. Viva is our global wellbeing programme and includes all aspects of our health – from mental and physical, to financial, social and environmental wellbeing. We support flexible working and have a range of family friendly benefits.

You’ll receive the following benefits and more:

25 days holiday, increasing through length of service, with option to buy or sell. Bupa health insurance as a benefit in kind An enhanced pension plan and life insurance Various other benefits and online discounts

Why Bupa?

We’re a health insurer and provider. With no shareholders, our customers are our focus. Our people are all driven by the same purpose – helping people live longer, healthier, happier lives and making a better world. We make health happen by being brave, caring and responsible in everything we do.

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