Data Analyst

Mace
London
1 month ago
Applications closed

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At Mace, our purpose is to redefine the boundaries of ambition. We believe in creating places that are responsible, bringing transformative impact to our people, communities and societies across the globe. To learn more about our purpose, culture, and priorities, visit our

Within our consult business, we harness our unique combination of leading-edge practical expertise and project delivery consultancy to unlock the potential in every project. 

Our values shape the way we consult and define the people we want to join us on our journey, they are:

Safety first - Going home safe and well Client focus - Deliver on our promise Integrity - Always do the right thing Create opportunity - For our people to excel

We are seeking an experienced and detail-oriented Power BI data analyst/developer to join our team. The ideal candidate will design and develop insightful reports and data visualisations, build and optimise datasets, and provide actionable insights to support decision-making. Collaborating across teams, you will play a pivotal role in enhancing business performance through data-driven strategies.

You’ll be responsible for:

Data visualization and reporting:

Design, develop, and maintain interactive dashboards and reports in Power BI. Ensure visualisations align with business needs and stakeholder requirements.

Data analysis:

Perform in-depth analysis of datasets to identify trends, patterns, and anomalies. Generate actionable insights from complex datasets to support business decisions.

Data modelling:

Create and optimise scalable, efficient data models in Power BI to support reporting. Develop solutions focused on maintainability and support. Ensure data models are well-documented and reusable.

Data integration:

Extract, transform, and load (ETL) data from multiple sources into Power BI. Work with databases, APIs, and other systems to ensure accurate and timely data integration.

Stakeholder collaboration:

Collaborate with business units and management to gather requirements. Communicate insights and recommendations to technical and non-technical stakeholders.

Best practices and governance:

Implement data governance and ensure compliance with data security and privacy regulations. Stay up to date with the latest Power BI features and industry trends.

Troubleshooting and maintenance:

Identify and resolve issues in reports, dashboards, and data pipelines. Perform regular audits to ensure data accuracy and reliability.

Security & compliance:

Implement and enforce security measures such as RLS, OLS, Data classifications and sensitivity labels to protect sensitive data. Ensure development is compliant with data protection regulations and industry standards. Collaborate with the security team to address any identified vulnerabilities. Enforce best practices and governance in data management. Ensure development conforms to secure software development principles including adherence to coding standards, QA & peer review, and use of version control to promote changes out of development.

You’ll need to have:

Experience with Azure SQL data modelling, including creating DIM/Facts tables. Experience building views and dataflows in Azure SQL. Deep understanding of DAX (Data Analysis Expressions) and Power Query. Strong analytical and problem-solving skills. Understanding of data security and compliance standards, especially if working with sensitive or regulated data. Experience in data visualisation and storytelling through dashboards Experience with data modelling, problem-solving skills and attention to detail. Proficiency in SQL and database querying and familiarity with ETL processes and tools. Proficient in operating within both Agile and traditional Waterfall methodologies. Excellent communication and presentation skills.

You’ll also have:

Self-motivated, proactive, and capable of working independently while fostering collaboration. Exceptional attention to detail and focus on data accuracy. Experience working in a delivery team focused on solution quality. Experience in a similar role within a BAU or project team. Proven track record of working directly with clients or stakeholders to gather requirements and deliver solutions Strong interpersonal skills and the ability to collaborate in cross-functional teams. Highly motivated with a ‘can do’ and positive attitude; resilience and patience dealing with multiple stakeholders. Ability to take ownership of own workload. Organised and meticulous, ability to adopt a process-oriented approach. Ability to work well under pressure and to deadlines, prioritising tasks accordingly.

Mace is an inclusive employer and welcomes interest from a diverse range of candidates. Even if you feel you do not fulfil all of the criteria, please apply as you may still be the best candidate for this role or another role within our organisation. 

We are also open to discussing part-time, flexible, and hybrid working options if suitable within the role. 

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