Home Postdoc Abroad Postdoc in Machine Learning for Bioimage-Based Profiling, Stockholm, Sweden

Postdoc in Machine Learning for Bioimage-Based Profiling, Stockholm, Sweden

Postdoctoral Position in KTH Royal Institute of Technology, Sweden

Summary

The KTH Royal Institute of Technology is seeking an outstanding postdoctoral researcher in computational biology to enhance the integration and modeling of large-scale microscopy data through modern machine learning approaches. The successful candidate will work within a highly interdisciplinary environment, focusing on uncovering conserved cellular state transitions and biological discovery.

Postdoc in Machine Learning for Bioimage-Based Profiling, Stockholm, Sweden

Designation

Postdoctoral Research Fellow


Job Details

FieldDetails
Research AreaMachine Learning, Computational Biology
LocationStockholm, Sweden
Type of EmploymentTemporary position, full-time
Contract DurationUp to 2 years
Monthly SalaryNot Specified
Number of Positions1
Full-time Equivalent100%

Eligibility/Qualification

Requirements:

  • A doctoral degree or an equivalent foreign degree.
  • Significant research expertise in image-based profiling and computational biology methods for single-cell or tissue data.
  • Extensive knowledge of relevant machine learning and AI techniques.
  • Proven scientific excellence demonstrated by a strong publication record.
  • Strong programming skills in Python or R and familiarity with high-performance computing.

Preferred Qualifications:

  • Doctoral degree obtained within the last three years.
  • Highly creative and collaborative researcher.
  • Self-motivated with the ability to work independently.
  • Interest in teaching and mentorship.
  • Awareness of diversity and equal opportunity issues, particularly regarding gender equality.

Job Description

Cellular morphology reflects fundamental biological processes such as division, differentiation, stress response, and apoptosis. This project aims to determine whether shared biological structures can be recovered across heterogeneous datasets using representation learning and generative modeling methods. The position involves leading independent research projects at the intersection of machine learning and biology, with an emphasis on method development, large-scale data integration, and biological discovery.


How to Apply

To apply for the position, please log into KTH’s recruitment system and ensure your application includes:

  • CV detailing relevant professional experience and knowledge.
  • Copies of diplomas and grades from previous university studies, translated into English or Swedish if necessary.
  • A brief account (max two pages) explaining your research interests, academic background, and future goals.

Complete applications must be received no later than midnight CET/CEST on the last application date.


Last Date for Application

17 April 2026


For further information, please contact:

  • Gisele Miranda
    Email: gmirand@kth.se

Link

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