Senior Data Analyst

UK Home Office
Sheffield
4 days ago
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Job Title: Senior Data Analyst


Employer: UK Home Office


Salary: £46,062 plus up to £7,300 recruitment and retention allowance


Location: Sheffield (hybrid with 60% office attendance)


Advert Close: Tuesday 20th January at 11:55pm


At Home Office Digital, we design and deliver services that support millions; from visa and passport applications to border security and police checks. As a Senior Data Analyst in our ServiceNow DevOps team, you’ll harness the power of data to drive innovation and improve outcomes across government.


Senior Data Analysts collect, organise and analyse data to provide insight across various business areas. You’ll use tools and techniques for Data Analysis and visualisation, briefing a wide range of audiences and simplifying complex data for non‑specialists. You’ll engage with senior stakeholders on high‑profile projects and champion the value of Data Analysis. Additionally, you’ll contribute to Data Analyst community reviews of best practice, and actively mentor junior staff, helping to develop their skills and knowledge.


We are recruiting for two positions; one role will be in the Service Now Team. You’ll be part of the exploration of complex datasets, applying advanced analytical tools and techniques to uncover insights that support Home Office stakeholders. With ServiceNow as your primary platform, you’ll build dynamic dashboards and visualisations, integrating data from across systems to deliver joined_binding, intelligent services.


The other role will be within the End User Compute and Collaboration (EUC&C) Team, which develops and delivers a range of Microsoft 365 solutions, including Teams, SharePoint, OneDrive, Power Platform, and Office applications. These tools support collaboration and productivity across the organisation. The data team specifically will help to foster AI and automation within the teams driven by product insights, derived through integrations via multiple data sources helping to visualise key metrics linked to Product health and customer experience using a range of tools such as PowerBi and AWS QuickSight.


Responsibilities

  • To manage, clean, abstract and aggregate data alongside a range of analytical studies on that data.
  • Identifying, collecting and migrating complex data to/from a range of systems, and delegating to their team where required.
  • Summarising and presenting the results of data analysis to a range of senior customers, making recommendations.
  • Use a rangetrend of analytical techniques such as data mining, time series, forecasting and modelling techniques to identify and predict trends in a variety of complex data types.
  • Work with stakeholders to gather requirements and deliver findings, with oversight from Lead Data Analysts.
  • Building capability and continually developing programming and analysis skills of self and others through line managing Data Analysts.

Qualifications

  • Help teams apply a range of techniques (e.g. network analysis, data matching, information retrieval, text analytics) to analyse data and to provide insight.
  • Understanding data sources, data organisations and storage.
  • Grasping conceptual, logical and physical data modelling, as well as development aspects.
  • Knowledge of data cleansing and standardisation by presenting analysis and visualisations in a clear way to communicate complex messages that inform decisions to technical and non‑technical audiences.
  • Leading a team to develop and deliver analytics dermand identified the business value for innovation within an organisation.
  • Proficient in SQL and Python, ServiceNow.
  • A civil service pension with employer contribution rates of at least 28.97%.
  • In‑year reward scheme for one‑off or sustained exceptional personal or team achievements.
  • The ability to potentially adopt flexible working options that suit your work/life balance, plus the opportunity in future to take a career break.
  • 25 days annual leave on appointment, rising with service.
  • Eight days public holidays, plus one additional privilege day.
  • 26 weeks maternity, adoption or shared parental leave at full pay, followed by 13 weeks statutory pay and a further 13 weeks’ unpaid, after qualifying service.
  • Maternity and adoption support leave (also known as paternity universitational 2 weeks full pay, after qualifying service).
  • Paid leave for fostering approval processes, support when a child is substantively placed with you plus a foster to adopt policy.
  • Support for guardians and kinship carers.
  • Corporate membership of.of ‘Employers for Carers’ providing additional information and advice rarity for carriers, plus a ‘ ivy carrier passport’ to discuss workplace needs and underpin supportive conversations.
  • Time off to deal with emergencies and certain other unplanned special circumstances.

Please click on apply now to be redirected to the full job advert and application portal.


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