Natural Capital Data Scientist

unearthed
Bristol
9 months ago
Applications closed

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Nattergal is on a mission to deliver nature recovery across large landscapes in the UK. We acquire and manage ecologically degraded land, rewilding it to restore biodiversity, unlock ecosystem services like carbon capture and flood mitigation, and generate long-term, sustainable returns through natural capital markets.


We believe nature is an investable asset class, and that belief is underpinned by robust evidence and rigorous data. We’re looking for a data scientist with a strong background in ecology or conservation to help drive that work forward.


About the role

As our Natural Capital Data Scientist, you’ll sit at the heart of our evidence and insight work transforming raw ecological and spatial data into meaningful outputs that guide decisions, track progress, and communicate impact.


You’ll lead geospatial modelling, manage our ecological reporting, collaborate with academic partners, and help design a robust, strategic, evidence-led approach to land restoration across our portfolio.


This role combines technical depth with real-world application. You’ll be contributing directly to large-scale nature recovery efforts and helping build the scientific foundation for a new model of land use in the UK.


What you'll be doing

  • Analyse and interpret ecological and geospatial datasets across our sites
  • Develop clear, visual outputs—maps, charts, infographics, and reports—to communicate ecological impact
  • Manage and evolve our internal natural capital database and reporting systems
  • Collaborate with academic institutions and lead on active research projects
  • Present data and insights to a range of audiences, including internal teams, investors and partners
  • Develop and implement a strategy for evidence use across the business, including the evaluation of ecological interventions
  • Contribute to the development of our natural capital measurement, reporting, and verification (MRV) approach


What we’re looking for

  • A postgraduate qualification in ecology, environmental science or a related field. If you have a PhD even better!
  • Strong data analysis skills, including statistical modelling and data interpretation and proficiency with Python, R or similar.
  • Advanced GIS and geospatial analysis experience
  • Excellent written and visual communication skills, including reporting and data visualisation
  • Comfortable working across disciplines and collaborating with stakeholders from science to investment
  • Familiarity with ecosystem services or natural capital accounting frameworks
  • A proactive, independent approach and a problem-solving mindset
  • Full UK driving licence and willingness to travel to project sites


Why Nattergal?

We are a purpose-driven business committed to delivering real, lasting impact for people, nature, and the climate. Our team blends science, land management, and commercial thinking to develop new models for nature-positive land use. We work collaboratively, act locally, and stay grounded in our mission: to restore functioning ecosystems across the UK.


If you’re passionate about putting ecological science to work in the real world and want to be part of a team breaking new ground in nature recovery, we’d love to hear from you.

All applications and enquiries should be directed to our recruitment partner - Unearthed Search

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