BI Level 2 Data Analyst

British Business Bank plc
Sheffield
1 month ago
Applications closed

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BI Level 2 Data Analyst

Department:Middle Office

Employment Type:Permanent

Location:Sheffield

Compensation:£30,000 - £35,000 / year


Description

BI Level 2 Data Analyst

Location: Sheffield / Hybrid Working (Expectation that you will attend an office 3 days per week during probation reducing to 2 days following probation)

Contract: Permanent

Hours: Full time 37.5 hours per week/flexible days and/or hours (Mon-Fri)

Salary: £30,000 - £35,000 Depending on Experience

Please note that any same band and job family internal moves will not present any pay increase.


Key Benefits

  • 30 days annual leave plus bank holidays, opportunity to buy and sell up to 5 days holiday
  • 15% employer pension contribution
  • Flexible working
  • Cycle to work scheme, healthcare cash plan, Group Income Protection and life assurance
  • Paid voluntary days, maternity, paternity, adoption, and shared parental leave
  • Benefits designed to suit your lifestyle - from discounts on retail and dining, to health and wellbeing, travel, and technology...and plenty more


The Role

In this position, you will be required to ensure that timely, accurate data is available for use in reporting and analysis of BBB’s programmes to support SME finance. The role comprises both data management (cleansing, structuring and loading data into the BI data warehouse), together with report development and production. You will be responsible for the accuracy of data loaded into the Enterprise Data Warehouse and for the accuracy of regular and ad hoc information provided to internal and external stakeholders on a monthly, quarterly and annual basis. The outputs are used to support decision-making and manage the performance of BBB’s various business units.

It is essential that you have experience of SQL at an intermediate level or above, as well ideally being able to understand Business Intelligence, Data Quality and Data Visualisation (Power BI) concepts. You will also have some experience of producing accurate data analysis and the ability to work in an Agile Scrum/Kanban framework.


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