Data Analyst (Revenue)

Jet2
Leeds
1 year ago
Applications closed

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Growth in the business means that we are looking to strengthen this team with an additional hire, meaning we can broaden the scope of work the team offers and serve more departments. OurRevenue Analytics Executivewill provide detailed analytical and statistical reports relating to all areas of airline and package holiday sales, revenue, budgeting, forecasting, product performance and availability.

As ourRevenue Analytics Executive, you’ll have access to a wide range of benefits including:

Hybrid working (we’re in the office 2 days per week) Colleague discounts onJet2holidaysandJet2.comflights Many retail discounts on – travel and leisure, health, and wellbeing, eating out, shopping and lifestyle


AtJet2.comandJet2holidayswe’re working together to deliver an amazing journey, literally! We work together to really drive forward a ‘Customer First’ ethos, creating unforgettable package holidays and flights. We couldn’t do it without our wonderful people.

What you’ll be doing:
You’ll report the daily and cumulative sales position and channel mix.You’ll highlight any areas of concern around destination and product performance.You’ll assess variance to targets by season, changes to buying trends and external impact factors and report to the Revenue Team and Senior Management.You’ll work extensively and confidently using BI Cubes, Excel and Tableau.You’ll work with various stakeholders to design and improve reporting and analysis.
What you’ll have:

OurRevenue Analytics Executivewill ideally be educated to a degree level or equivalent with a forward-thinking, can-do attitude, you’ll also:
Have the ability to identify new reporting opportunities to constantly drive the business forward.Have experience in producing management information and financial/sales analysis and be commercially aware.Be able to identify, interpret and communicate business trends, risks, and opportunities to all levels of the business.Have an eye for detail and the ability to present complex data in an easily understandable and usable format, providing commentary as required.Be highly competent in the use of Microsoft Excel and Tableau and preferably have experience with other analytical and database software, with a high degree of literacy and numeracy.
Join us as we redefine travel experiences and create memories for millions of passengers. AtJet2.comandJet2holidays, your potential has no limits. Apply today and let your career take flight!

#LI-Hybrid

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