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Weather Data Engineer (Commodities) | Buy Side Fund

Selby Jennings
City of London
2 weeks ago
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Weather Data Engineer (Commodities) | Buy Side Fund

A leading global investment firm is seeking a Weather Data Engineer to help build proprietary weather analytics and infrastructure that directly powers alpha generation across its commodities trading strategies. This is a high-impact opportunity to work at the intersection of data engineering, meteorology, and AI-driven forecasting.


Weather data is central to the firm's edge - from raw satellite observations to climate simulations and proprietary model outputs. You'll be part of a specialist team driving innovation in how weather data is ingested, transformed, and deployed across the investment process.


Responsibilities

  • Design and maintain scalable, cloud-native (AWS) pipelines for ingesting and processing real-time and historical weather data.
  • Build robust APIs and data services to serve weather data and AI model outputs to researchers, quants, and traders.
  • Support the development and deployment of proprietary forecasting models, including workflows for blending, debiasing, and fine-tuning.
  • Collaborate with meteorologists, data scientists, and AI researchers to onboard new datasets and accelerate research.
  • Implement automated data validation, monitoring, and alerting to ensure reliability and uptime.
  • Continuously improve infrastructure to reduce time-to-insight and enhance operational scale.

Required Skills

  • 5+ years of experience building production-grade data systems, ideally in a scientific or financial setting.
  • Strong Python skills and deep understanding of system architecture and cloud-native development (AWS).
  • Experience with weather/climate datasets (e.g., GRIB, NetCDF, HDF5) and sources like NOAA, ECMWF, GFS.
  • Solid grasp of time-series and geospatial data concepts.
  • Familiarity with collaborative software development practices (CI/CD, version control, testing).
  • Bonus: experience with distributed computing (Spark, Dask), container orchestration (Kubernetes, Airflow), and dashboarding/uncertainty quantification.

This is a rare chance to build differentiated infrastructure that directly supports alpha generation. You'll work closely with world‑class researchers and technologists and help shape the future of weather-driven analytics in commodities trading.


If you're passionate about building scalable systems and want to work at the cutting edge of data, weather, and AI - apply today!


Seniority Level

Not Applicable


Employment Type

Full-time


Job Function

Engineering, Finance, Information Technology


Industries

Investment Management


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