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PhD Position in Computer Science

Polytechnicpositions

Bern

Vor Ort

CHF 50’000 - 70’000

Vollzeit

Vor 2 Tagen
Sei unter den ersten Bewerbenden

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Zusammenfassung

The University of Bern's Computer Vision Group seeks a creative PhD student to advance research in unsupervised learning and AI systems. A fully funded opportunity, this role includes collaborative work in a top-tier environment, generous funding for conferences, and a competitive salary in a vibrant city.

Leistungen

Access to state-of-the-art compute infrastructure
Opportunities to publish at top-tier conferences
Funding for international conferences and workshops
Competitive salary with teaching compensation

Qualifikationen

  • Curious and ambitious individual eager to work on high-impact AI research.
  • Foundation in machine learning, deep learning, and computer vision is essential.
  • Experience with deep learning frameworks like PyTorch or TensorFlow.

Aufgaben

  • Conduct original research in unsupervised learning and generative models.
  • Build powerful representations bridging visual and textual data.
  • Collaborate in a dynamic research group and contribute to AI advancements.

Kenntnisse

Machine Learning
Deep Learning
Computer Vision
Applied Mathematics
Probability
Programming

Ausbildung

Master's degree in Computer Science, Engineering, Mathematics, or related field

Tools

Python
C/C++
PyTorch
TensorFlow

Jobbeschreibung

Institute of Computer Science
Start date: From July 1, 2025 (flexible)

University of Bern – Computer Vision Group
Are you passionate about deep learning, unsupervised learning, and pushing the boundaries of AI? We are offering an exciting opportunity for an outstanding PhD candidate to join the Computer Vision Group (CVG) at the University of Bern, Switzerland.

About the Position

We are looking for a creative and driven PhD student to join a project at the frontier of unsupervised learning, image and video tokenization, and discrete generative models. The research will focus on building powerful representations that bridge visual and textual data, contributing to the development of next-generation AI systems.

• You will conduct original research within a well-established and dynamic research group
• The project is fully funded for 4 years
• Start date: From July 1, 2025 (flexible)
• The position remains open until an excellent candidate is found

Your Profile

We're looking for someone who is curious, ambitious, and eager to work on high-impact research topics in AI.
Must haves:
• A master's degree in Computer Science, Engineering, Mathematics, or a related field
• A solid foundation in machine learning, deep learning, and computer vision
• Strong skills in applied mathematics, probability, and programming (e.g., Python, C/C++)
• Experience with at least one major deep learning framework (e.g., PyTorch, TensorFlow)
• Good communication skills and fluency in English
If you enjoy solving challenging problems and are excited by the prospect of contributing to fundamental advances in deep learning, we want to hear from you!

What We Offer

Join a collaborative and innovative research environment
• Be part of a vibrant academic team and work alongside world-class researchers
• Access to state-of-the-art compute infrastructure
• Opportunities to publish at top-tier conferences and participate in the global research community
• Funding to attend international conferences, workshops, and training programs
• A competitive salary, including additional compensation for teaching assistance
• Live in Bern, a beautiful, livable city in the heart of Switzerland with outstanding quality of life

Contact

Interested?
Please send your application through the submission portal link http://cvg.unibe.ch/vacancies/
Applications submitted directly via email will not be considered.


In your application, please refer to Polytechnicpositions.com

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