BI & Data Analyst

TFS BUYING LIMITED
Manchester
1 month ago
Applications closed

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2 days ago Be among the first 25 applicants


Location Manchester


Job type: Permanent


Job ref: 007902


Published: about 4 hours ago


A bit about us: Established in 1994, The Fragrance Shop is the UKs leading independent fragrance retailer. Our aim is to make mainstream and luxury fragrances affordable and accessible to all. We showcase more than 130 fragrance brands in over 220 stores throughout the UK and online at www.thefragranceshop.co.uk. We are expanding and are looking for a BI & Data Analyst to join the team and be part of a growing and vibrant brand.


Why You’ll Love Working Here

  • Enjoy work-life balance with our flexible working scheme - including working from home allowance, duvet days and the choice to flex your working hours
  • Vibrant state‑of‑the‑art office, conveniently located in Trafford Park with great transport links and free onsite parking
  • No need to travel to the gym we have one here for you! Take advantage of our free onsite gym facilities before/after work or even pop in at lunch time
  • Generous staff discounts on a wide range of fabulous fragrances
  • Excellent progression and development opportunities - work with teams who are passionate about what they do and develop your expertise within a creative and collaborative space

The Role

An exciting opportunity to join an expanding team. The BI & Data Analyst sits within the BI & Data team which supports all areas of the business and this role will have a particular focus understanding our customers.


What You’ll Be Doing

  • Provide well presented, accurate and timely business information
  • Extract, interrogate and analyse data to support business decision making
  • Providing insights & recommendations based on their findings
  • Liaise with our data partners to ensure data accuracy
  • Build relationships with internal and external stakeholders
  • Ad‑hoc analysis as required

What You’ll Bring

  • Proficient in MS Office applications (particularly Excel)
  • Experience of business analysis tools (Qlikview, Power BI) would be beneficial but not essential
  • Experience coding in SQL would be beneficial but not essential
  • A high level of attention to detail, and drive to deliver to a high standard
  • You will be a strong team player with the ability to work with other teams to build strong collaborative relationships

How To Apply

Simply upload your CV via our careers page.


Join us now and help shape the future of fragrance retail!


The Fragrance Shop is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.


Due to the high volume of applications that we receive, we are regrettably not able to respond to everyone. If you have not heard from us within four weeks of your application, please assume that on this occasion you have not been successful.


Seniority level

  • Entry level

Employment type

  • Full-time

Job function

  • Science

Industries

  • IT System Data Services


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