Data Analyst

Slough
1 week ago
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Good Afternoon,

I am currently representing Slough Council, who are offering an initial temporary contract for a period of 3- 6 months with a view to be extended or offered a permanent position for the right candidate at a rate which is negotiable dependent upon experience

We are looking for a Data Analyst this role will be: Hybrid SL1 2EJ

The right candidate will:

The role will ensure the Council is making excellent use of it’s data assets.

It will achieve that by supporting the overall development, management and delivery of the Council’s Data Strategy and associated work programmes.

Starting with the creation, maintenance and further development of the technical infrastructure needed to host and integrate disparate datasets. Through to supporting colleagues to ensure the data are high quality,and taking the lead role creating insightful Power BI dashboards providing the business with all the management information (e.g. PIs, KPIs, Statutory Reporting) and insights it needs to deliver the Council’s services efficiently and effectively. You will;

  • Help to create business and user value from data by undertaking significant engineering projects which improve and combine data from back office and customer-facing systems.

  • Lead a team of data analysts, providing management oversight and leadership.

  • Make sure our data, and data shared by others is of the highest quality, highly available, usable and shareable by rigorous standard setting and quality control.

  • Work with data professionals to build products and services which deliver continuous insight and value to our staff and residents.

  • Lead data projects, including leading and managing external suppliers.

  • Use the best of modern data technologies and platforms, including ongoing investigation and research into emerging technology.

    We require the following:

  • They will primarily be working on Adult Service systems so need to Liquidlogic and Controcc, ideally Agresso too.

  • Proficiency in using query languages and data analysis packages such as SQL, R, Python, Power BI.

  • Familiar with applicable national and international standards, frameworks, and methods such as ITIL, ISO 20000, PRINCE, MSP, MoP, ISO 27001.

    To discuss this opportunity further please send over an up-to-date CV and give me a call on (phone number removed)

    If you know someone who would be a good fit for the role, please send over their contact details and get in touch, as we do offer a generous referral fee.

    IF THIS ROLE IS NOT APPLICABLE TO YOU, BUT YOU ARE LOOKING FOR ROLE, PLEASE SEND OVER YOUR CV AND I WILL CHECK WHAT ROLES I HAVE AVAILABLE.

    Look forward to speaking with you soon

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