OverviewSummer Student : Geospatial Deep Learning for Forestry Applications – Based in Rotorua.
Approximate dates : 1 December 2025 - 20 February 2026.As part of the Government's reset of the science, innovation and technology system, on 1 July 2025, AgResearch, Manaaki Whenua - Landcare Research, Plant & Food Research, and Scion merged to form the New Zealand Institute for Bioeconomy Science, trading as the Bioeconomy Science Institute.
This merger has created a world-class research organisation of globally significant size and scale, with over 2,000 employees — including scientists, researchers, and support staff.
It brings together fundamental science knowledge and expertise in the natural resources that underpin the bioeconomy and the native estate, alongside applied research capabilities in manufacturing, agritech and biotech, and the food and fibre sectors.
Our people drive innovation and commercial outcomes in the bioeconomy, using research and technology to support enduring economic growth and resilience, a healthy environment, and positive social outcomes for Aotearoa New Zealand.This position sits under the current Scion group of the Bioeconomy Science Institute.
Scion specialises in research, science and technology development for the forestry industry, wood products and wood-derived materials.
We lead new technology development for renewables, bioproducts and energy and the establishment of a broader-based circular bioeconomy.
Scion hosts a number of summer students, each with differing specialities, from tertiary institutes across New Zealand at both our Rotorua and Christchurch Campus.
The programme involves a student completing a 12-week, full-time, research project under the direction of Scion supervisors (allowing time for holidays over the Christmas and New Year).
Students are able to gain hands on, paid, work experience in the field of which they are studying, where they get to work shoulder to shoulder with Scion's internationally recognised staff.We are seeking a motivated student to work on the Digital Twin for Planted Forest and CHM depth estimation projects.What the Student Will DoExtract geospatial and remote sensing data from various sources under supervisionInterpret aerial, and LiDAR imagery to support data preparation and validation tasksCreate high-quality labelled datasets for training and evaluating deep learning modelsWork under supervision to assist with development of machine learning modelsInspect and provide feedback on model predictionsThis project will expose the student to a broad range of tasks in GIS, remote sensing, and environmental data science, while also deepening their understanding of forestry applications.
They will have the opportunity to develop or enhance practical skills in geospatial analysis, programming, and cloud-based data processing, as well as gain hands-on experience with cutting-edge AI tools and methods.Qualifications, Skills And Attributes NeededBasic experience with GIS software such as QGIS, ArcGIS, or similar tools.Experience in coding and modelling in Python.Familiarity with file organisation, naming conventions, and working with structured data formats (e.g., shapefiles, GeoTIFFs)Enthusiasm for landscape-level data, forest monitoring.Ability to interpret complex imagery with strong attention to detailClear documentation of work and openness to feedbackPrevious experience working with remote sensing imagery, deep learning algorithms, or machine learning training data is desirable but not essentialAbility to carry out tasks under supervision to a high level of accuracyAbility to solve problems in a timely fashionApplications close - 12 September 2025
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