Data Analyst - Lloyds

Stott & May Professional Search Limited
The City
1 year ago
Applications closed

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Data Analyst - Lloyd's Experience Contract Type: 1 Year Fixed-Term Contract (FTC) Location: London (Hybrid) Salary Benefits Bonus Stott and May are seeking a skilled Data Analyst to join the dynamic and innovative data team of a leading, well-known insurance provider. The ideal candidate will have experience in the Lloyd's market and a passion for leveraging data to drive impactful decisions in a rapidly growing environment. Skills & Experience: Expert in data analysis and visualisation techniques. Proficient in programming (Python is an advantage). Working knowledge of data science techniques. 2 years of experience in data analysis/visualisation, ideally in a Lloyd's environment. Strong proficiency in relevant IT tools. Excellent organisational, planning, and communication skills. Experience with Agile methodologies and the ability to break down complex requirements into epics and technical user stories. Familiarity with Azure data technologies (Data Factory, SQL, Synapse Analytics, Power BI) is a plus. If you're an analytical thinker with a passion for data and are eager to make a tangible impact on business outcomes, apply now to be a part of our dynamic team

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