Josephine Sullivan
Closing soon
Top university
6 days ago
Doctoral student in Image representations for class discovery KTH Royal Institute of Technology in Sweden
Degree Level
PhD
Field of study
Computer Science
Funding
Full funding availableDeadline
December 31, 2026Country
Sweden
University
KTH Royal Institute of Technology

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About this position
The Division of Robotics, Perception and Learning at KTH Royal Institute of Technology invites applications for a doctoral student position focused on image representations for class discovery. This WASP-funded project aims to advance generative approaches for out-of-distribution discovery and novel species identification, with a particular emphasis on fine-grained classification tasks such as plankton species identification. The research will integrate genomic measurements into the identification process, developing robust algorithms that are application area independent but tested in environmental and biological contexts.
The successful candidate will join a collaborative environment, working with Associate Professor Josephine Sullivan (RPL), Professor Anders Andersson (Environmental Genomics, SciLife Lab), and Bengt Karlson (SMHI). The PhD student will also be part of the WASP graduate school, benefiting from interdisciplinary expertise and access to cutting-edge resources. The project is designed to contribute to scientific advances in both computer vision and environmental genomics, as highlighted in recent collaborative publications.
Applicants must meet the eligibility requirements for postgraduate education as outlined by the Swedish Higher Education Ordinance. This includes holding a second cycle degree (master's or equivalent), or completing at least 240 higher education credits with 60 at the second-cycle level, or possessing equivalent knowledge. Practical proficiency in deep learning programming libraries such as TensorFlow, PyTorch, or JAX is mandatory, and experience with GPU-based experimentation and cluster computing (e.g., Docker, Slurm) is advantageous. English proficiency equivalent to English B/6 is required. Selection criteria include academic results, completed courses, demonstrated programming ability, and personal skills, with a strong preference for candidates specialized in computer vision and/or machine learning.
The position offers full-time employment for up to four years, with renewal options, and includes a monthly salary according to KTH's doctoral student salary agreement. Doctoral students are entitled to a workplace with employee benefits and may perform certain tasks within their role, such as training and administration, up to 20% of their time. The research environment at KTH is creative and dynamic, with a commitment to equality, diversity, and sustainability.
To apply, candidates must submit their application through KTH's recruitment system, including copies of diplomas, grades, certificates of fulfilled language requirements, CV, and representative publications or technical reports. Certified translations are required if documents are not in English or Swedish. Applications must be received by midnight CET on the closing date. For further information, contact Associate Professor Josephine Sullivan at [email protected].
Join KTH Royal Institute of Technology and contribute to shaping the future of education, research, and innovation in a leading international technical university.
Funding details
Full funding including tuition fees and living expenses is available for this position. The scholarship covers all educational costs and provides a monthly stipend.
How to apply
Please submit your application including a cover letter, CV, academic transcripts, and contact information for two references. Applications should be sent via the online portal before the deadline.
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