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Doctoral Candidate In Computer Vision And Machine Learning - Analysis Of Green Spaces And Nature in Zürich

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Jobbeschreibung

Doctoral Candidate in computer vision and machine learning - analysis of green spaces and nature

The EcoVision Lab in the Department of Mathematical Modeling and Machine Learning (DM3L) at University of Zurich is seeking applications for a Doctoral Candidate in computer vision and machine learning multimodal analysis of green spaces and nature to assess environmental and societal well-being in densely populated areas.

We offer an exciting and stimulating environment to study and work in. The University of Zurich has several internationally recognized research groups dedicated to data science, machine learning and remote sensing. We also collaborate with several other institutions and companies in the fields of computer vision, machine learning and earth observation, in Switzerland and abroad. The EcoVision Lab is member of the UZH Digital Society Initiative, the ETH AI Center, the new UN-ETH partnership, and the ETH for Development Center (ETH4D).

Your responsibilities

The successful candidate will work on a project in the EcoVision Lab in cooperation with a large project consortium to build a Public Data Lab for measuring societal wellbeing under changing circumstances together with more partners from the University of Zurich, the Statistical Office of the Canton of Zurich, and the Zurich University of the Arts. Emphasis for the doctoral project is on developing deep learning and computer vision methods to jointly analyse street-view and depth imagery, aerial and terrrestrial laser scans, satellite imagery etc. In combination with auxiliary map layers provided by the project partners, cantonal and federal Swiss agencies to come up with dense, high-resolution, spatially explicit indicators of green spaces with emphasis on societal and environmental well-being. Potential indicator domains include biomass, vegetation density, plant species, plant health etc. While project leaves ample room to explore various exciting technical avenues like uncertainty quantification, interpretability, and explainability in deep neural networks, attention-based approaches, text-to-image/point cloud translation, or diffusion models, for example.

Your profile

We are looking for candidates with an interest in performing innovative research, strong motivation, and an interest in software development. An ideal candidate will have:

  • an excellent degree (M.Sc. Or equivalent) in Computer Science, Machine Learning, or a related field (e.g. Electrical Engineering, Applied Mathematics)
  • strong mathematical understanding
  • experience in programming, preferably in Python, and engineering
  • prior experience in machine learning, computer vision and remote sensing

Furthermore, the candidate should be fluent in English, both written and spoken.

What we offer

Our employees benefit from a wide range of attractive offers.

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Location

Department of Mathematical Modeling and Machine Learning (DM3L)

Information on your application

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Professor

Working at UZH

The University of Zurich, Switzerland's largest university, offers a range of attractive positions in various subject areas and professional fields. With around 10,000 employees and currently 12 professional apprenticeship streams the University offers an inspiring working environment on cutting‑edge research and top‑class education. Put your talent and skills to work with us. Find out more about UZH as an employer!

Veröffentlicht am

25-10-2025

Extra Informationen

Status
Offen
Ausbildungsniveau
Hauptschule
Standort
Zürich
Jobart
Vollzeitstelle (mit Erfahrung)
Führerschein erforderlich?
Nein
Auto erforderlich?
Nein
Motivationsschreiben erforderlich?
Nein
Sprachkenntnisse
Deutsch

Zürich | Vollzeitstelle (mit Erfahrung) | Hauptschule

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