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FM Research Scientist - Weather and Climate Risks / Machine Learning & AI

FM

Salary not specified
Sep 5, 2025
Norwood, MA, US
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FM is strategically investing in global climate research to offer unparalleled loss preparedness and prevention solutions due to increasing climate risk challenges.

Requirements

  • Proficient in collecting, processing, and analyzing large datasets.
  • Proficiency in statistical methods, including extreme value analysis and probabilistic modeling.
  • Strong background in data science techniques, including machine learning (ML), neural networks and artificial intelligence (AI) methods with proven experience in developing machine learning models applied to geospatial or climate data.
  • Understanding of meteorological processes, particularly related to tropical cyclones, severe convective storms, synoptic-scale systems, and/ or extreme rainfall.
  • Demonstrated experience using or developing global and/or regional climate models, analyzing CMIP6 global climate model output, and combining large atmospheric datasets in various formats (including GeoTIFF, NetCDF, HDF, and GRIB).
  • Experience writing shell scripts and using APIs for process automation, excellent programming skills in at least two programming languages including Python, R, Fortran, and/or Matlab.
  • Proficiency in utilizing Linux/Unix clusters for high performance computing, along with experience in DevOps practices and cloud platforms such as AWS and Azure.

Responsibilities

  • Identify, plan, and conduct innovative research projects focused on extreme weather events.
  • Develop and implement novel techniques and models to enhance risk analytics and loss prevention.
  • Collaborate with a global team of scientists across the U.S., Singapore, and Luxembourg.
  • Contribute to the development of hazard models assessing flood, wind, storms, and wildfire risks.

Other

  • MS in meteorology, data science or an adjacent field, with practical experience in the modelling of extreme weather, plus more than 3 years of professional experience with a good working knowledge of statistical/ dynamical downscaling techniques.
  • PhD in meteorology, data science or an adjacent field with a good working knowledge of statistical/ dynamical downscaling techniques.
  • Proven ability to manage projects and conduct research effectively.
  • Excellent oral and written communication and presentation skills.
  • Ability to self-start and thrive within a high-performance team environment.