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MI Analyst

Robert Half
Bristol
1 year ago
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Data Analyst

Data Analyst

Data Analyst – Financial Services | Manchester | FTC | Circa £50k | Hybrid

Data Analyst

Data Analyst

Data Analyst

We are looking for a skilled MI Analyst to join our client's established Data team and play a critical role in ensuring the quality, accuracy, and effectiveness of the data that supports our business operations. Role Overview As an MI Analyst, you will be responsible for gathering, analysing, and interpreting data to produce actionable insights that help guide strategic decision-making. You will collaborate with stakeholders across the business, providing critical reporting and analysis to improve business performance. Key Responsibilities: Develop, produce, and deliver regular and ad-hoc reports to internal stakeholders. Analyse large data sets to identify trends, anomalies, and opportunities for improvement. Ensure the accuracy and integrity of MI reports and dashboards. Work closely with business departments to understand their reporting needs and translate them into technical requirements. Automate reporting processes and continuously look for ways to streamline and improve data workflows. Provide insights through data visualisations and presentations to support business strategies. Monitor and maintain data quality and accuracy. Support projects with data analysis and reporting expertise. Key Requirements: Experience : Proven experience in an MI, Business Intelligence, or Data Analyst role. Technical Skills : Proficient in data analysis tools such as SQL, Excel, Power BI, Tableau, or similar. Analytical Mindset : Strong analytical and problem-solving skills with a keen eye for detail. Communication Skills : Excellent communication and presentation skills, with the ability to explain complex data clearly to non-technical stakeholders. Data Visualisation : Experience in building clear, insightful reports and dashboards. Attention to Detail : A meticulous approach to ensure data accuracy and reporting reliability Why Join Us? Collaborative Culture : Work in an innovative and collaborative environment where your contributions are valued. Professional Development : Opportunities for growth and career advancement, including training and development. Competitive Benefits : We offer a competitive salary between £38,000 and £45,000, flexible working options, and an attractive benefits package. Robert Half Ltd acts as an employment business for temporary positions and an employment agency for permanent positions. Robert Half is committed to equal opportunity and diversity. Suitable candidates with equivalent qualifications and more or less experience can apply. Rates of pay and salary ranges are dependent upon your experience, qualifications and training. If you wish to apply, please read our Privacy Notice describing how we may process, disclose and store your personal data: roberthalf.com/gb/en/privacy-notice Security alert: scammers are currently targeting jobseekers. Robert Half do not ask candidates for a fee or request candidates to send applications through instant messaging services such as WhatsApp or Telegram. Learn how to protect yourself by visiting our website: roberthalf.com/gb/en/how-spot-recruitment-scams-and-protect-yourself

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