Sales Data Analyst – Finance Sector

Express Recruitment
Nottingham
1 month ago
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This range is provided by Express Recruitment. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Base pay range

We’re on the search for a high performing, ambitious professional with a passion for providing insightful data analysis to join a leading International Financial Services business and their Business Development team with an expanding presence in Nottingham.


Due to the technical nature of our client’s service, plenty of training will be on offer as well as sponsored qualifications to get the successful candidate up to speed!


The track‑record of progression in this role from others internally has been unrivalled and this position should be viewed as “just the start” in an organisation who have quadrupled in size over the past 3 years.


The basic salary for the role is £30,000‑£35,000 with an annual discretional bonus of c£10k and 25 days annual leave plus bank holidays and the opportunity sponsored finance qualifications.


It would be highly beneficial to have experience in the Financial Services or linked sectors, such as mortgages, pensions, financial advice, credit services or banking.


Responsibilities

  • Lead on data capture for sales campaigns in order to assist on the wider sales teams targets
  • Forecast and risk analysis on leading UK clients
  • Preparation of product information packs, reports and information for key client meetings
  • Assist with the organisation and management of events and webinars to further asset gathering drives
  • Support the wider team in a proactive sense during external analyst meetings

Skills & Experience

  • Experience providing valuable insight to a Sales function essential
  • Finance industry experience would be desirable
  • Able to deliver on prospective outputs in line with business goals
  • Willingness to take professional qualifications to improve industry knowledge.
  • Preferable financial degree or background (or willingness to take on company sponsored qualifications)

Unfortunately, we are unable to contact all candidates due to the large volume of applications we receive. If you have not heard from a consultant within the next three days, please assume that you have not been successful on this occasion. Please do not hesitate to apply for other suitable roles in the future.


This vacancy is being advertised on behalf of Express Recruitment Ltd. The services advertised by Express Recruitment Ltd. are those of an Employment Agency.


Vacancy Summary

Hours: Full Time, Monday-Friday


Salary: c£30,000- £35,000 per annum with a performance bonus within company discretion


Location: Nottingham City Centre, Nottinghamshire


Job Type: Permanent, Hybrid


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