Graduate Data Analyst

Pareto
Northampton
1 year ago
Applications closed

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Role: Graduate Data Analyst (Contract)

Salary: £25,297

Location: Northampton

With roots tracing back over 300 years and with offices across 60 countries, Barclaycard retain historical precedent and a global presence that sets them apart from other graduate employers. Facilitating card transactions, Barclaycard has active links with a massive 93,000 business and retailers. They're looking for ambitious candidates to help keep delivering on their reputation for excellence.

We're now looking for a Data Analyst to read, manage and interpolate actionable conclusions from complex data sets. You'll also take responsibility for lead management, and you'll be working cross-functionally with senior stakeholders across the business, working on sizable projects - with plenty of exposure offered.

Role:

  • Manipulate complex data sets to arrive at actionable conclusions with which to help drive business decisions and strategy
  • Communicate informed risks within the business to key stakeholders
  • Responsible for daily lead management across New Customer & Existing Customer Sales Teams
  • Manage shared inboxes and respond within agreed service level timeframes
  • Provide in-team support to activities across the Sales Enablement Teams
  • Proactively collaborate on Sales Enablement initiatives to drive execution of projects based on current demands in the SME Sales Strategy.
  • Creation &amp...

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