Data Analyst

Wokingham
3 months ago
Applications closed

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Data Analyst

Data Analyst

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Location: Wokingham (Hybrid - 2-3 days per week on site)
Contract: Initial 6 months (Full time)
Day Rate: From £400 per day (via Umbrella)

About the Role
Our client, a key organisation in the UK energy sector, is looking for an Operational Data Insight Analyst to join their Skip Rate Team within System Operations.

This role focuses on improving transparency around dispatch decisions by turning complex operational data into clear insights for internal teams and industry stakeholders. You'll help explain the factors driving skip rates, support external engagement activity, and provide data-driven clarity to customers and regulators.

It's an excellent opportunity for an experienced analyst who enjoys combining technical analysis with communication and stakeholder engagement.

Key Responsibilities

Analyse operational data to explain skip rate trends and dispatch decisions.
Translate analytical findings into clear insights, reports, and presentations.
Support external engagement activity such as webinars, forums, and Q&A sessions.
Act as a customer-facing contact for skip rate data and insights.
Contribute to ongoing transparency and process improvement initiatives.

About You

Proven experience in operational data analysis.
Experience using Azure, Python and PowerBI.
Excellent communication skills, able to present complex data clearly.
Strong stakeholder engagement experience (internal and external).
Self-starter, highly organised, and confident working in a fast-paced environment.
Background or interest in the UK energy or utilities sector advantageous.

Is this of interest? If so, apply now with an up-to-date CV for consideration!

Note - if you do not hear back within 48 hours of applying, please assume you have been unsuccessful on this occasion, however, we will have your CV and contact details on files should something more suitable arise.

We use generative AI tools to support our candidate screening process. This helps us ensure a fair, consistent, and efficient experience for all applicants. Rest assured, all final decisions are made by our hiring team, and your application will be reviewed with care and attention.

Adecco is an employment consultancy. We put expertise, energy, and enthusiasm into improving everyone's chance of being part of the workplace. We respect and appreciate people of all ethnicities, generations, religious beliefs, sexual orientations, gender identities, and more. We do this by showcasing their talents, skills, and unique experience in an inclusive environment that helps them thrive

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