💼 Postdoctoral Position in Machine Learning for — myScience · Zurich
m

myScience

Postdoctoral Position in Machine Learning for Automated Plant Phenotyping (PhenoMix Project)

Temps plein
Zurich, ZH
Publié le 25 May 2026
6 vues
📋

Description du poste

myScience recrute un(e) Postdoctoral Position in Machine Learning for Automated Plant Phenotyping (PhenoMix Project) a Zurich.

Poste de postdoctorant en apprentissage automatique à l'ETHZ. Opportunité de est a la recherche de innovante et collaborative à Zurich.
Tâches

Développer des méthodes d'estimation automatique des traits.

Collaborer avec des experts en sciences agricoles et en vision par ordinateur.

Créer des outils de science des données pour l'automatisation.
Compétences

Doctorat en informatique ou domaine connexe, expertise en apprentissage automatique.

Compétences en vision par ordinateur et apprentissage profond.

Expérience en programmation scientifique avec Python.
Postdoctoral Position in Machine Learning for Automated Plant Phenotyping (PhenoMix Project)
Eidgenossische Technische Hochschule Zürich, ETHZ
Workplace
Zurich
- Zurich region - Switzerland
Category
Computer Science | Environment
Position
Senior Scientist / Postdoc
Published
6 May 2026
Postdoctoral Position in Machine Learning for Automated Plant Phenotyping (PhenoMix Project)
100%, Zurich, fixed-term
The Swiss Data Science Center (SDSC) is a national research infrastructure in data science and artificial intelligence (AI) of the ETH domain, with EPFL and ETH Zurich as founding partners. Its mission is to support academic labs, hospitals, industry and public sector stakeholders, including cantonal and federal administrations, through their entire data science journey, from the collection and management of data to machine learning, AI, and industrialization. With a large multidisciplinary team of professionals across three locations (Lausanne, Zurich, Villigen), the SDSC provides expertise and services to various domains, such as health and biomedical sciences, energy and sustainability, climate and environment, and large-scale scientific infrastructures.
The Swiss Data Science Center (SDSC) and the ETH Zurich’s Crop Science Group are seeking a Postdoctoral Researcher for the PhenoMix project, a Swiss National Science Foundation (SNSF) funded initiative.
This role sits at the intersection of machine learning, computer vision, agricultural sciences, and plant phenotyping. The position focuses on Automated Trait Estimation using Machine Learning, developing novel data science methods for crop mixture phenotyping.
The position will be based at the SDSC Zurich office (Andreasturm), with close collaboration with the Crop Science Group (Prof. Walter), the Grassland Sciences Group (Prof. Buchmann) at ETH Zurich’s Department of Environmental Systems Science (D-USYS), and with AGROSCOPE (Dr. Vogelgsang).
Project background
Context:
The PhenoMix project addresses the critical challenge of automated phenotyping for crop mixtures -- a promising agricultural practice with significant potential for sustainable food production. The project leverages the Field Imaging Platform (FIP), a state-of-the-art high-throughput phenotyping facility, along with field experiments to generate unprecedented multi-modal datasets of pure stands and crop mixtures. The project will also contribute to the creation of new generation phenotyping datasets - including 3D reconstructions and derived trait information - and related models, which will be made publicly available
The postdoctoral researcher will create novel data science tools and automate processing of image time series, plant trait information, and 3D reconstructions. The work will bridge advanced machine learning methods with practical agricultural applications, developing models that can transfer knowledge across different imaging platforms and environmental conditions. The postdoc will be responsible for delivering advances and solutions that not only advance the state-of-the-art, but also have real-world impact for farmers, breeders, and researchers in the field of plant phenotyping.
Collaboration:
The postdoctoral researcher will be part of a highly collaborative and interdisciplinary project, working closely with experts in machine learning, plant phenotyping, crop sciences, and field validation. The project is designed to foster knowledge exchange and collaboration across disciplines, ensuring that the developed methods are both scientifically rigorous and practically relevant.
This project brings together expertise from multiple leading groups. The SDSC provides expertise in machine learning, computer vision, and data science infrastructure, serving as the primary host institution for this position. The Crop Science Group (Prof. Achim Walter, ETH Zurich) operates the Field Imaging Platform (FIP) and and brings deep expertise in high-throughput plant phenotyping and crop science, providing access to cutting-edge infrastructure and datasets. The Grassland Sciences Group (Prof. Nina Buchmann, ETH Zurich) contributes key expertise in plant ecophysiology, biodiversity and plant ecology. The Extension Arable Group (Dr. Susanne Vogelgsang, AGROSCOPE) provides key expertise in variety testing and agronomic suitability, as well as plant pathology. The postdoc will collaborate and exchange with all partners, depending on project requirements.
Job description
The postdoc will develop and implement cutting-edge machine learning approaches for automated trait estimation, focusing on:

Foundation Models for Phenotyping: Leveraging and adapting pre-trained foundation models for crop trait estimation in both pure stands and crop mixtures, minimising computational and data annotation overheads while maximising generalisation power

Domain Transfer Methods: Developing plant-aware image-based domain transfer techniques to enable models trained on high-resolution FIP images to work effectively with lean device images (e.g., smartphone cameras)

3D Reconstruction and Rendering: Creating 3D point clouds from multi-view setups and rendering realistic 2D images across different viewpoints, leveraging among many approaches generative models, neural rendering and implicit models

Human-in-the-Loop Approaches: Implementing active learning strategies that incorporate expert feedback at inference time, enabling real-time model correction and improvement with minimal labelling budget

Field Evaluation: Conducting rigorous qualitative and quantitative evaluations of developed models on farm field experiments, integrating expert feedback to improve model performance

Data Product Generation: Preparing comprehensive time series datasets of derived products, including raw data, 3D reconstructions, model estimations, and reference measurements for downstream analyses

Software Development: Developing and maintaining codebases for the implemented methods, ensuring reproducibility, and facilitating future research and applications in the field of plant phenotyping
Research and Development

Design, develop and implement foundation model-based approaches for multi-trait plant phenotyping

Extend and implement domain-specific and plant-specific, physiologically plausile, machine learning models

Develop and evaluate domain transfer and adaptation methods for cross-platform phenotyping

Design and deploy human-in-the-loop and active learning strategies

Conduct field experiments and evaluate model performance in real-world field conditions

Engage with diverse stakeholders including researchers, farmers, and breeders
Collaboration and Scientific Communication

Process and help curating large-scale multi-modal datasets from the FIP and field experiments

Supervise and collaborate with students at different levels providing guidance and supervision

Contribute to existing codebases and engage with open source communities

Prepare scientific publications for top-tier machine learning and agricultural science venues

Present research findings at conferences, seminars and workshops

Communicate complex technical concepts to both expert and general audiences
Profile
Education:

PhD in relevant field such as computer science, machine learning, data science, or domain science (e.g., plant phenotyping, agricultural sciences, environmental sciences) with demonstrated expertise in machine learning and computer vision

Demonstrated research excellence through publications in relevant venues
Technical and Research Expertise:

Strong background in machine learning and deep learning, particularly computer vision, with hands on experience in foundation models, transfer learning, domain adaptation

Solid experience with modern deep learning frameworks (PyTorch preferred)

Proven ability in scientific programming and prototyping in Python

Ability to formulate research questions and design experiments independently

Experience handling large and complex multi-modal datasets
Soft Skills:

Excellent communication skills in English (written and oral)

Positive attitude towards interdisciplinary collaboration

Ability to work independently while contributing to team objectives
Other beneficial/
relevant competencies:

Parcours professionnel with 3D reconstruction techniques (structure from motion, neural rendering, etc.)

Knowledge of active learning, human-in-the-loop, Bayesian optimisation

Familiarity with agricultural sciences, plant phenotyping, or related domains

Experience implementing, training and evaluating models for spatio-temporal data

Interest in sustainable agriculture, crop science, or food safety challenges
Workplace
We offer
Professional Development:

A stimulating, collaborative, diverse and cross-disciplinary research environment

Opportunity to work with state-of-the-art phenotyping infrastructure and datasets

Access to computational resources and latest machine learning tools

Possibility to publish research in top-ranked conferences and journals

Opportunity to travel and present work at international events

Involvement in supervision of MSc and BSc students

Participation in lectures and teaching activities
Work Environment:

Position hosted at the Swiss Data Science Center with offices at ETH Zurich and EPFL

Collaborative environment spanning multiple institutions and research groups, within PhenoMix and beyond

We value work-life balance

Beautiful locations in Zurich with excellent quality of life
Starting Date and Duration:

Starting date: August or by mutual agreement

Duration: Up to 4 years (SNSF project funding duration)
Working, teaching and research at ETH Zurich
We value diversity and sustainability
In line with our values , ETH Zurich encourages an inclusive culture. We promote equality of opportunity, value diversity and nurture a working and learning environment in which the rights and dignity of all our staff and students are respected. Visit our Equal Opportunities and Diversity website to find out how we ensure a fair and open environment that allows everyone to grow and flourish. Sustainability is a core value for us - we are consistently working towards a climate-neutral future .
Curious? So are we.
We look forward to receiving your online application with the following documents:

Letter of Motivation (max 2 pages) explaining your interest in the position and relevant experience

Curriculum Vitae including publication list

Electronic copies of relevant academic diplomas, transcripts and certificates

Contact details from 2 to 3 references

Links to code repositories or portfolios (if available)
Further information about Swiss Data Science Center can be found on our Website . Questions regarding the position should be directed to Dr. Michele Volpi, michele.volpi@
sdsc.ethz.ch (no applications).
Please note that we exclusively accept applications submitted through our online application portal. Applications via email or postal services will not be considered.
We would like to point out that the pre-selection is carried out by the responsible recruiters and not by artificial intelligence.
Apply online now
ETH Zurich is one of the world’s leading universities specialising in science and technology. We are renowned for our excellent education, cutting-edge fundamental research and direct transfer of new knowledge into society. Over 30,000 people from more than 120 countries find our university to be a place that promotes independent thinking and an environment that inspires excellence. Located in the heart of Europe, yet forging connections all over the world, we work together to develop solutions for the global challenges of today and tomorrow.
More information
In your application, please refer to
myScience.ch
and reference
JobID69788
.

Rejoignez myScience et donnez un nouvel elan a votre carriere.

Offres similaires

Voir plus →

Du blog : conseils carrière

Voir tous les articles →

Guide pour postuler en Suisse

📄 Quels documents fournir ?
  • CV — antichronologique, photo recommandée
  • Lettre de motivation — personnalisée
  • Diplômes et certificats
  • Références professionnelles
  • Certificats de travail
🎯 Comment rédiger sa candidature ?

CV :

  • 2 pages maximum
  • Compétences linguistiques détaillées

Lettre :

  • 1 page, adressée nominativement
  • Disponibilité et prétentions salariales
⏱️ Délais de réponse
  • Accusé de réception — 2–5 jours
  • Premier retour — 1–3 semaines
  • Entretien — 2–4 semaines
  • Décision — 4–8 semaines

💡 Relancez poliment après 2 semaines sans réponse.

🌍 Travailler en Suisse en tant qu'étranger

UE/AELE :

  • Permis L (< 1 an) ou Permis B (≥ 1 an)

Hors UE/AELE :

  • Permis B demandé par l'employeur, quotas annuels
💰 Salaires et négociation
  • Salaires en brut annuel
  • 13ème salaire très courant
  • Négociation possible à l'offre

💡 Consultez jobs.ch pour les benchmarks.

💼 Préparer l'entretien
  • Renseignez-vous sur l'entreprise
  • Préparez des exemples concrets
  • Arrivez 10 minutes en avance
  • Posez des questions sur les prochaines étapes

Ils ont trouvé via CH-Jobs

Tous les avis →
MK

Marie K.

Infirmière — Genève

★★★★★

« J'ai trouvé mon poste en moins de 2 semaines. La plateforme est intuitive et les offres sont actualisées quotidiennement. »

Il y a 2 mois

JD

Jean D.

Développeur — Zurich

★★★★★

« Les alertes email m'ont permis de ne rater aucune offre. Le filtre par canton est vraiment pratique. »

Il y a 1 mois

SL

Sophie L.

Chef de projet — Lausanne

★★★★☆

« Plateforme professionnelle et efficace. Contactée par plusieurs recruteurs dès ma première semaine. »

Il y a 3 semaines

Newsletter

Recevez les dernières offres et conseils