
Treefera · London, United Kingdom, GB · 3 months ago
At Treefera we build AI-native data systems that bring clarity and credibility to nature-based assets — enabling organisations to make and defend high-impact decisions about risk, resilience and commercial performance.
You’ll join a global, cross-functional team that values rigour, curiosity and working close to real-world challenges. Whether your focus is AI, climate, product or operations, you’ll have space to contribute meaningfully and make an impact from day one.
If you’re excited by complex problems and want to help reshape how nature is valued in real-world decision-making, we’d love to hear from you.
Who you are
Strong background in Machine Learning, Deep Learning, and Applied Statistics.
Experience with time-series modelling. Familiarity with building and backtesting.
Proficiency with the Python scientific stack: scikit-learn, PyTorch, scipy etc.
Familiarity with version-controlled, reproducible workflows (AWS/cloud infrastructure, Git, Weights&Biases/experiment tracking).
Experience with risk modelling, financial time series and portfolio optimisation techniques.
Experience working with weather and climate data, particularly CMIP archives and weather forecast data.
Experience with geospatial techniques (rasterio, xarray, geopandas, GDAL) and remote sensing data (optical, radar, LiDAR) is beneficial.
Familiarity with MLOps practices (containerisation, CI/CD, model monitoring) is a plus.
Prior experience in a startup or fast-moving product team.
What the job involves
Design, implement, and evaluate ML/DL models for processing alternative data sources (satellites and weather data) for risk and trading signals , including:
Forecasting environmental or risk-related signals (e.g. increasing weather and climate volatility, agricultural stress indicators) ).
Use remote sensing datasets (e.g. Sentinel-1, Sentinel-2, GEDI, other optical and radar missions) and climate data to build vegetation stress signals, landcover classifications and land-surface conditions.
Develop time-series and forecasting models to detect and anticipate environmental changes and their impacts on global markets.
Translate business questions into robust modelling problems.
Turn research prototypes into scalable, reliable AI pipelines that deliver actionable information.
Help shape modelling standards, documentation, and reproducibility within the AI team (e.g. experiment design, evaluation protocols, uncertainty treatment).
Communicate methods, assumptions, and results clearly to technical and non-technical stakeholders, including limitations and uncertainty.
What you’ll gain at Treefera
Build a high-growth climate-tech company from the ground up
Apply AI and data to global, nature-based challenges that matter
Work on real-world systems balancing risk, resilience, compliance and sustainability
Collaborate with a diverse, cross-functional, global team
Access competitive pay, equity and meaningful benefits
Help shape the future of AI-powered risk and environmental data analysis, building systems that give organisations an information advantage
Diversity, Equity & Inclusion
Bold solutions come from diverse teams. Please refer to our DEI & EEO commitment below. If you need any accommodation during the application process, we’re here to support you.
Learn more about how we think and build
Many of our engineers, scientists and product leaders share their thinking publicly. Explore the Treefera blog for technical deep dives, research and product perspectives.
Headquarters
London, United Kingdom
Work Location
remote
Job Category
Data / Analytics
Application Deadline
Not specified
Job Type
full-time
Experience Level
Not specified
Application Method
Apply via Website
Salary
90k - 120k GBP/year
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