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Thesis Projects in World Models

30.07.2024, Diplomarbeiten, Bachelor- und Masterarbeiten

Are you fascinated by the potential of ChatGPT and other AI technologies? Imagine harnessing the immense power of Nvidia A100 GPUs, each with 80GB of memory, to drive your AI innovations forward. If you are passionate about World Models and eager to develop your own models or unlock the potential of Large Language Models and World Models, we invite you to join our cutting-edge research team.

We are seeking talented students to mentor, aiming to produce high-quality publications with practical applications. Our team has a strong track record, with publications in top international conferences such as NeurIPS, ICLR, ACL, EMNLP, NAACL, AAAI, UAI, and CIKM. Equipped with state-of-the-art Nvidia A100 GPUs, our research is at the forefront of multimodal machine learning, capable of handling extensive datasets and complex algorithms.

As part of this thesis project, you will have the opportunity to collaborate with a diverse group of PhDs, postdoctoral researchers, and professors from prestigious institutions like TUM, LMU, and others worldwide. This experience will allow you to develop advanced research skills and delve into the exciting field of World Models. Join us on this groundbreaking research journey and make a significant impact in the world of AI.

Topic Description:
Concrete topics in World Model

Requirements:
• Study in computer science, electrical engineering, physics, or mathematics;
• Good understanding of machine learning and deep learning;
• Good understanding of transformer as a plus;
• Good programming skills in Python and at least one deep learning framework;
• Independent working

Additional Information:
Start: from now on
Length of the work: 6-9 months

We are looking forward to hearing from you!

Kontakt: cognitive.yunpu@gmail.com, xingcheng.zhou@tum.de