Junior Customer Data Analyst

Stratford-upon-Avon
3 months ago
Applications closed

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Senior Data Engineer

Customer Data Administrator - All Levels of experience considered

£195.00 Per Day - Inside IR35 via Umbrella
Location: Stratford upon Avon, Warwickshire - Candidates must reside within commuting distance and have a UK drivers licence/own transport
3/4 month contract, full-time hours - Potential long term opportunity for right candidate
Skills: Attention to Detail, Adaptable, Customer Orientated, Team Player, ProactiveOur leading financial services client in Warwickshire are expanding their Customer Data team, and this is an exciting opportunity for someone to join a friendly and forward-thinking team that plays a key role in maintaining the quality of customer data.

These opportunities could suit a school or university leaver, or someone returning to work after a break, or simply someone in between roles who's looking to gain valuable experience with a leading financial services business before taking their next career step.

You will be required to identify and resolve customer data issues using the client's core systems, and follow agreed standards, targets, and SLA's, therefor these roles would be ideal for someone with a keen eye for detail, who is adaptable and takes a proactive approach to their work. The role involves supporting some project-based work and requires being on-site 3 days per week.

We require applicants to to be adaptable to the ever-changing needs of the role, whilst maintaining a proactive and customer orientated approach.

The initial contract is for 3-4 months with the potential for an extension or to move into a permanent role.

These roles can suit candidates with varied levels of experience and from any background.

Candidates are required to pass an online test before being invited to interview to assess your ability to do the role.

This is an exciting opportunity for someone looking to gain more experience in a data focused role or if you are looking to pursue a different type of role than what you are usually accustomed to.

If your are interested in being considered, please submit your application ASAP to Jackie Dean at TXP for consideration.

TXP takes great pride in representing socially responsible clients who not only prioritise diversity and inclusion but also actively combat social inequality. Together, we have the power to make a profound impact on fostering a more equitable and inclusive society. By working with us, you become part of a movement dedicated to promoting a diverse and inclusive workforce

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