Data Analyst

Newark on Trent
6 days ago
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Data Analyst

Newark

Full Time

Permanent

C£27K - £32K DOE

Our client, a leader player in their sector is seeking a Data Analyst to join their business team. Working from a modern open plan office in Newark they are looking for a confident Data Analyst that wants to be rewarded for hard work and commitment.

  • Find and process data and gather sector insights – creating visual reports.

  • Analyse client performance and create reports on core KPIs or new product reports.

  • Produce reports and analysis on product activity and Forecasts.

  • Establish and develop effective means of extracting, analysing and reporting appropriate data.

  • Create and present information appropriate to the audience.

    To be considered for the role of Data Analyst candidates will ideally hold a Mathematics, Data Science or Statistics degree and have a strong interest in Math. Advanced Excel and some Power BI exposure are essential for the role. If you have strong attention to detail, enjoy managing and manipulating data and want to work for a local client that has oodles of company benefits, this might just be the role for you.

    Benefits include - Casual dress - Company socials - Cycle to work scheme – Meals provided - Discounted gym membership - Onsite gym - Life insurance – Free On-site parking - Sick pay - Store discounts.

    To apply for the role of Data Analyst, please send your up to date CV to us

    This is being advertised on behalf of Travail Employment Group acting as an employment business in this instance

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