Reporting Analyst (Project Controls)

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REPORTING ANALYST (PROJECT CONTROLS)

CONTRACT OPPORTUNITY - INSIDE IR35 - £330 A DAY - LONG TERM CONTRACT

Job Overview:

We are looking for a highly skilled and motivated Reporting Analyst to join our dynamic team. The ideal candidate will have a strong background in data analytics, with proficiency in Power BI. The Data Analyst will be responsible for analyzing complex datasets, creating insightful dashboards, and developing automated solutions to drive data-driven decision-making across the organization.

Key Responsibilities:

  • Data Analysis & Reporting: Analyze large datasets to identify trends, patterns, and insights to support strategic decision-making.

  • Dashboard Development: Design and develop interactive dashboards and visualizations using Power BI to communicate findings effectively to stakeholders.

  • Data Quality & Integrity: Ensure data accuracy and consistency across all reports, dashboards, and analytical outputs.

  • Collaboration: Work closely with cross-functional teams, including finance, marketing, operations, and IT, to understand data requirements and deliver actionable insights.

  • Continuous Improvement: Identify opportunities to improve data analysis processes and tools and implement innovative solutions.

    Qualifications:

  • 2-5 years of experience in a data analysis or similar role.

  • Strong proficiency in Power BI for data visualization and dashboard creation.

  • Excellent analytical and problem-solving skills with attention to detail.

  • Strong communication skills and the ability to present complex data insights to non-technical stakeholders.

    Preferred Skills:

  • Expertise in Power BI for complex data visualization and report creation.

  • Proficient in creating and managing custom applications using Power Apps to automate business processes.

  • Familiarity with data visualization best practices to ensure clear and effective communication of insights.

  • Understanding of data modeling techniques to support the creation of efficient, scalable analytical solutions.

    Personal Attributes:

  • Analytical mindset: Able to think critically and approach data with curiosity and rigor.

  • Detail-oriented: Thorough in ensuring data accuracy and quality.

  • Collaborative: Comfortable working in a team environment and across departments.

  • Self-motivated: Able to work independently and manage multiple tasks simultaneously.

  • Adaptable: Willing to learn new tools and technologies as needed

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