Data Scientist – Statistical Modelling –Confidential – Mumbai (10-20 years of experience)

Jobs Admin 10 Nov, 2014
< 1 min read

Designation – Data Scientist – Statistical Modelling

Location – Mumbai

About employer– Confidential

Job description:


  • Create Algorithms to implement specific Machine Learning implementations on available data sets for analytics for customers in Insurance / Investment Banking
  • Create a Data Information Knowledge policy for the customers with respect to exploration, ML and Analytics
  • Help programmers build ML algorithms
  • Deploy analytics solutions based on Big Data and Visualization technologies
  • Customer Interaction
  • Mentoring and Team Management
  • Hire team members to build and support ML
  • Manage teams

Qualification and Skills Required

  • Experience 10 – 20 Years
  • Proven experience in Insurance domain with respect to analytics, actuarial practice, statistical modelling, simulation and planning
  • Having a flair for programming algorithms in some or the other technology for analytics, statistical modelling or simulation
  • Experience in using applied mathematics in business planning and management
  • Experience in using the algorithms like
  • K means clustering
  • Random forests
  • Decision tree
  • Linear Regression
  • Correlation
  • Time-series
  • Certificate / Diploma in Actuarial Science or Economic Planning based on Statistics
  • Certificate / Diploma in Programming (any language)
  • Certification in Statistical Modelling and Simulation
  • Post Doctorate in Statistics / Mathematics OR BE / MS

Interested people can apply for this job can mail their CV to [email protected] with subject as Data Scientist – Statistical Modelling –Confidential – Mumbai

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Jobs Admin 10 Nov, 2014

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