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Research Associate

University of Cambridge Vet School

Cambridge

On-site

GBP 35,000 - 45,000

Full time

3 days ago
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Job summary

A leading research institution in Cambridge is seeking a postdoctoral researcher to advance ecological restoration initiatives worldwide. The successful candidate will leverage geospatial modelling and remote sensing technologies to evaluate restoration activities, collaborate with interdisciplinary teams, and contribute to sustainability efforts in partnership with international organizations. This exciting role supports transformative ecological practices and aligns with a philanthropic initiative aimed at enhancing ecosystem recovery across significant biomes.

Benefits

Collaboration opportunities with international organizations
Access to interdisciplinary research teams
Funding from philanthropic initiatives

Qualifications

  • Strong interests in ecological restoration and sustainable land management.
  • Experience working with geospatial data and technologies.
  • Motivation to advance nature recovery initiatives.

Responsibilities

  • Evaluate effectiveness of ecological restoration activities.
  • Collaborate with interdisciplinary teams on ecological projects.
  • Train foundation models using forest inventory data.

Skills

Geospatial foundation modelling
Remote sensing
Data-driven analysis
Interdisciplinary collaboration

Education

Ph.D. in Ecology or related field

Tools

Tessera
Job description
Overview

Across the globe, there is an urgent need to restore ecosystems at Transformative landscape scales - protecting what remains intact while regenerating nature within human-modified environments. Cutting-edge remote sensing technologies - especially the emerging generation of geospatial foundation models - are reshaping how we plan, implement, and finance nature restoration. This position sits at the heart of that transformation, leveraging data-driven insights to accelerate the recovery of ecosystems worldwide.

The objective of this research is to evaluate the effectiveness of ecological restoration activities in supporting the recovery of biodiversity, carbon stocks, and other ecosystem services.

This three-year postdoctoral position is well suited to a researcher with strong interests in geospatial foundation modelling (e.g., Tessera) and remote sensing, motivated by a commitment to advancing nature recovery and sustainable land management, whilst recognising the continuing need for responsible production of food and fibre. The successful candidate will join a large, interdisciplinary team of field ecologists, computer scientists, and geospatial analysts working to train foundation models using forest inventory data derived from mature and secondary forests. The position is supported by a philanthropic donation to the University of Cambridge from Suzano, one of the world’s largest pulp and paper companies, which has committed to connecting and restoring 500,000 hectares across the Cerrado, Amazon, and Atlantic Forest biomes by 2030, alongside a broad portfolio of sustainability initiatives.

The postholder will have opportunities to collaborate with Suzano and other organisations dedicated to ecological restoration in Brazil. Applications are also welcomed from candidates seeking to extend the research to regional or global analyses, including those interested in financing nature-based climate solutions. They will be supervised by David Coomes, in collaboration with Adriane Esquivel-Muelbert, and join the Plant Ecology and Conservation research cluster. This position will be affiliated with both the Department of Plant Sciences and the Conservation Research Institute.

You will be part of the wider Plant Ecology and Conservation Group and based in the David Attenborough building. This post is funded by the Suzano Legacy Fund (Suzano).

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