BI Reporting SME

Norwich
8 months ago
Applications closed

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BI Reporting SME - Contract - INSIDE IR35 - Hybrid - Norwich

As a Business Intelligence Reporting SME, you will play a vital role in bridging the gap between complex business requirements and technical solutions. You’ll work closely with stakeholders to gather requirements and translate them into high-performing, interactive dashboards that enable strategic decision-making. This is an exciting opportunity to contribute to high-impact projects, leveraging the latest Qlik technologies in a forward-thinking, Agile environment.

Key Responsibilities



Develop Qlik Sense applications and dashboards based on user requirements

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Write complex SQL and ETL Data Load scripts for .QVD generation and app integration

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Create apps with complex visualisations and multi-sheet designs

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Utilise Qlik Dev Hub to develop and deploy mashups

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Manage tasks within the Qlik Management Console (QMC)

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Apply insurance industry knowledge to develop relevant data solutions

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Collaborate professionally with executives, managers, and subject matter experts

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Adapt quickly to changing priorities and project requirements

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Work independently and collaboratively within Agile teams

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Communicate effectively with both technical and non-technical stakeholders

Key Skills & Experience

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Minimum 4 years of experience in Qlik Sense development

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Proficiency in SQL and ETL scripting

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Solid understanding of Qlik architecture and administration

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Experience creating advanced visualisations and mashups

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Familiarity with Agile project methodologies

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Knowledge of the insurance domain is a strong advantage

Person Specification

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Strong client-facing and stakeholder management skills

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Excellent oral and written communication abilities

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Assertive, collaborative, and solution-oriented mindset

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Ability to manage multiple tasks with a high degree of professionalism

JOB REF:19302

If this role is of interest, please apply with a copy of you most recent CV ASAP

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