Data Analyst

Eames Consulting
London
1 year ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

***12-14 month FTC***


My client, a global insurance broker is looking for an experienced Data Analyst to join the team and play an important role in delivering on a very exciting Data Transformation project.

Responsibilities


  • Designing, maintaining, and updating key sales information for underwriters (underwriting dashboard).
  • Collaborating with IT and Data Engineers on changes to data layers and marts.
  • Selecting AI tools with IT for risk insights for underwriters.
  • Discussing analytics and insights with the business to enhance data awareness and analysis.
  • Designing dashboards and visualisations to showcase new analyses from actuarial teams and data scientists.
  • Providing data analytics support for decision-making in back-office functions (e.g., exposure management, finance, HR, claims).
  • Collaborating with Data Scientists to research, cleanse, analyse, and visualise external data sources.
  • Educating the business on available information to promote self-service and idea generation for future analyses.


Qualifications


  • Data Analysis/Visualisation Expert:Proficient in advanced techniques.
  • Programming Skills:Python experience is a plus.
  • Data Science Knowledge:Familiar with key methodologies.
  • Relevant Experience:2+ years in data analysis/visualisation, ideally in a Lloyd’s environment.
  • IT Proficiency:Skilled in essential software tools.
  • Organisational Skills:Strong planning and task management.
  • Communication Skills:Effective written and verbal communicator.
  • Agile Experience:Familiar with Agile practices and breaking down complex requirements.
  • Azure Experience:Knowledge of Azure technologies like Data Factory, SQL, Synapse Analytics, and Power BI is advantageous.

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