Life Data Graduate Learner

Location: 

Johannesburg, GT, ZA

Job Type:  Full-Time
Work Mode:  Hybrid
Job Level:  Graduate & Entry-Level
Job ID:  12035
Company:  Munich Re
Employment Type:  Temporary
Area of Expertise:  Data, BI & Analytics
Description: 

We are seeking a Life Data Graduate Learner to join our Munich Reinsurance Africa Branch Team.   

Your Programme:

As a Graduate, you will:

  • Take part in soft skills and technical training
  • Conduct daily team specific tasks
  • Participate in team specific tasks and deliverables
  • Participate in team and business projects

Exposure may include:

  • Introduction to Life Data Management
  • Exposure to Treaties: identify and document treaty data requirements, identify and document standard treaty information, identify and document treaty product information and identify and document treaty specific conditions
  • Work with data: transform client data into re-useable format for analysis and identify gaps between treaty data requirements, data standard requirements and the data provided by clients 

Your profile:

  • Bachelor of Science –Statistics as a major with an excellent academic record
  • Good coding/programming skills
  • Individuals who are driven and passionate about data
  • Ability to work under pressure and multitask
  • Working knowledge of  Excel and any other MS tools

Munich Re will offer:

  • INSETA Learnership: FETC – Short-Term Insurance Qualification
  • Learning and Development opportunities
  • 12 months fixed term contract (with a possible 12-month extension)

At Munich Re, we embrace and value the interaction of diverse backgrounds, experiences, perspectives and thought. This interaction is our foundation of our open culture and spirit of partnership. It shapes how our teams are built and cultivated and how we are supported and developed. And at the center of this interaction is each of us. As part of our commitment to opportunity, growth and diversity, preference may be given to EE candidates.  


Job Segment: Database, Technology