Rainforest Builder IT Jobs in Accra
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Your Role:
As a Rainforest Builder data scientist, you will play a central role in the development and monitoring of large-scale tropical forest restoration projects. You will embedded within a dynamic science team working to develop and apply cutting-edge data science solutions to emerging challenges in this space.
You will work closely with Dr Simon Mills, and Dr James Gilroy, and be supported by our Scientific Advisory Board, including Professor Casey Ryan, University of Edinburgh (https://www.research.ed.ac.uk/en/persons/casey-ryan), and Professor David Edwards, University of Cambridge (https://www.plantsci.cam.ac.uk/staff/professor-david-edwards).
You will help to develop Machine Learning approaches that underpin monitoring of our project areas, build and maintain Rainforest Builder’s core data streams, and develop tools that take data from a wide range of data sources (including remote sensing and geospatial data) and provide solutions to emerging business challenges.
You will write clean and scalable code that follows software development best practices to generate products that facilitate project monitoring and help Rainforest Builder to achieve its goals.
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Desirable qualifications
- Experience with Machine Learning methods, particularly with application to geospatial (including remote-sensing) data.
- Experience deploying code on AWS.
- Experience working with Shiny for building dashboards.
- Excellent interpersonal and cross-cultural communication skills, with the ability to collaborate closely on data science tasks and present findings to a generalist audience.
- Commitment to equity, diversity, and inclusion in the workplace and research environment.
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1. Patiently scroll down and read the job description below.
2. Scroll down and find how to apply or mode of application for this job after the job description.
3. Carefully follow the instructions on how to apply.
4. Always apply for a job by attaching CV with a Cover Letter / Application Letter.
Your Role:
As a Rainforest Builder data scientist, you will play a central role in the development and monitoring of large-scale tropical forest restoration projects. You will embedded within a dynamic science team working to develop and apply cutting-edge data science solutions to emerging challenges in this space.
You will work closely with Dr Simon Mills, and Dr James Gilroy, and be supported by our Scientific Advisory Board, including Professor Casey Ryan, University of Edinburgh (https://www.research.ed.ac.uk/en/persons/casey-ryan), and Professor David Edwards, University of Cambridge (https://www.plantsci.cam.ac.uk/staff/professor-david-edwards).
You will help to develop Machine Learning approaches that underpin monitoring of our project areas, build and maintain Rainforest Builder’s core data streams, and develop tools that take data from a wide range of data sources (including remote sensing and geospatial data) and provide solutions to emerging business challenges.
You will write clean and scalable code that follows software development best practices to generate products that facilitate project monitoring and help Rainforest Builder to achieve its goals.
ADVERTISEMENT - CONTINUE READING BELOW
Desirable qualifications
- Experience with Machine Learning methods, particularly with application to geospatial (including remote-sensing) data.
- Experience deploying code on AWS.
- Experience working with Shiny for building dashboards.
- Excellent interpersonal and cross-cultural communication skills, with the ability to collaborate closely on data science tasks and present findings to a generalist audience.
- Commitment to equity, diversity, and inclusion in the workplace and research environment.
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