Data Analyst

Kensington
1 day ago
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Data Analyst

Location: Hornton Street, W8 7NX

Start Date: ASAP

Contract Duration: 3+ Months

Working Hours: Mon – Fri, 09:00 – 17:00

Pay Rate: £331.36 Per day

Job Ref: (phone number removed)

Job Responsibilities

Analyse and interpret data to support decision-making across departments.

Maintain and manage datasets using the CCIS database.

Produce clear reports and visualisations for internal stakeholders.

Ensure data accuracy, consistency, and compliance with council standards.

Support process improvements through data-driven insights.

Collaborate with teams to deliver timely and accurate information.

Maintain confidentiality and adhere to council policies.

Person Specification

Must-Have Requirements

Proven experience as a data analyst or in a similar analytical role.

Proficiency in MS Office and other relevant ICT tools.

Experience working with the CCIS database.

Strong numeracy and analytical skills.

Excellent written and verbal communication skills.

Eligible to work in the UK.

Nice-to-Have Requirements

Experience in a local government or public sector environment.

Familiarity with data visualisation tools and reporting software.

Knowledge of council policies, procedures, and compliance standards.

DISCLAIMER: By applying for this vacancy, you consent to your personal information being shared with our client and any relevant third parties we engage with, for the purpose of assessing your suitability specific organizations or hireSrs to whom you do not wish your details to be disclosed

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