Data Analyst (Geospatial)

Tree Aid
Bristol
1 month ago
Applications closed

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About Tree Aid:
At Tree Aid, we believe trees and people are deeply connected. More than just nature’s gift, trees are a lifeline — vital for survival, resilience and opportunity.
Our mission goes beyond just planting trees, as we work to create lasting change for both people and the planet. Since 1987, we’ve partnered with communities across Africa, harnessing the power of trees to improve lives and advocate for those most affected by poverty and the climate crisis.
Through our work, we restore ecosystems, build sustainable livelihoods, and drive positive climate action. By working hand in hand with local communities, we prioritise their knowledge and needs to make an impact that lasts for generations.

About the role:
The Data Analyst (Geo-Spatial) is a key position in the Monitoring & Evaluation team and works closely with the wider Programmes Team to support the process of collecting, analysing, managing and storing high quality data.
The position is pivotal in the development and implementation of a new digital Information Management System (IMS) for the organisation’s Monitoring and Evaluation data. This involves working in partnership with a range of both internal and ...

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