Data Analytics Lead - 12 Month FTC

IMSERV EUROPE LIMITED
Milton Keynes
2 days ago
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** Data Analytics Lead- 12 Month FTC **

PURPOSE OF THE ROLE:

This role is responsible for managing analyticsdelivery, overseeing report request workflows, translating business needs into actionabledatarequirements and leading agile sprint execution for analyticsinitiatives. This role partners closely withbusinessstakeholders and technical teams to ensure high-quality, timely and scalable analytics solutions.

COMPANY OVERVIEW

IMSERV is one of the UK's leadingdata collection and energy metering experts, delivering award winning services to more customers in more places, meeting industry targets and becoming a benchmark for excellence. We offer a range of specialist metering technology for electricity, gas, and water along with highly accurate energy data collection services. All this is wrapped up with an easy-to-view online datamanagementanalysis and reporting software.

MAIN RESPONSIBILITIES:

  • Act as the primary point of contact for DevOps-relatedinitiatives

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