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---
title: README
emoji: 🌍
colorFrom: blue
colorTo: pink
sdk: static
pinned: false
---

# TRESP Lab @ LMU Munich

We advance representation learning for **knowledge graphs**, **multimodal learning**, and **AI-driven understanding**—building systems that integrate text, images, and video into structured, actionable world models.  [oai_citation:0‡TRESP Lab](https://tresp-lab.github.io/?utm_source=chatgpt.com)

## 🔭 Research Directions
- Temporal & hyper-relational **knowledge graphs**; inductive reasoning and link prediction.  [oai_citation:1‡MCML](https://mcml.ai/research/groups/tresp/?utm_source=chatgpt.com)  
- **Multimodal foundation models** for cognitive AI and human-level understanding.  [oai_citation:2‡TRESP Lab](https://tresp-lab.github.io/?utm_source=chatgpt.com)  
- Robust **adaptation of vision-language models** and open dynamic graph benchmarks.  [oai_citation:3‡NeurIPS](https://neurips.cc/media/neurips-2023/Slides/73702.pdf?utm_source=chatgpt.com)

## 👥 People
Lead: **Prof. Dr. Volker Tresp** (LMU Munich).  

## 🏛️ Affiliation
Database Systems, Data Mining and AI, **LMU Munich**; activities within **MCML** and broader Munich AI ecosystem.  [oai_citation:5‡ifi.lmu.de](https://www.ifi.lmu.de/dbs/en/persons/contact-page/volker-tresp-e9a4da46.html?utm_source=chatgpt.com)

## 📚 Selected Activities & Topics
- Memory embeddings, tensor models, and the **Tensor Brain** line of work.  [oai_citation:6‡Qcssc](https://www.qcssc.uni-muenchen.de/activities_research/lectureseries/abstract-tresp.html?utm_source=chatgpt.com)  
- Courses & seminars on **Generative AI** and machine learning at LMU.  [oai_citation:7‡ifi.lmu.de](https://www.ifi.lmu.de/dbs/en/teaching/seminars/b-generative-ai.html?utm_source=chatgpt.com)

## 🤝 Collaborate with Us
We welcome collaborations on:
- Multimodal/streaming understanding with structured memory  
- Temporal KGs and trustworthy reasoning for real-world data  
- Domain adaptation of large VLMs and dynamic graph evaluation  
(See site for people, publications, and openings.)  [oai_citation:8‡TRESP Lab](https://tresp-lab.github.io/?utm_source=chatgpt.com)

---

### 🔗 Useful Links
- 🌐 Website: tresp-lab.github.io  [oai_citation:9‡TRESP Lab](https://tresp-lab.github.io/?utm_source=chatgpt.com)  
- 👥 People: /people  [oai_citation:10‡TRESP Lab](https://tresp-lab.github.io/people/?utm_source=chatgpt.com)  
- 🧪 Group @ MCML: mcml.ai/research/groups/tresp  [oai_citation:11‡MCML](https://mcml.ai/research/groups/tresp/?utm_source=chatgpt.com)  
- 📇 Prof. Tresp: dbs.ifi.lmu.de/~tresp  [oai_citation:12‡ifi.lmu.de](https://www.ifi.lmu.de/dbs/en/persons/contact-page/volker-tresp-e9a4da46.html?utm_source=chatgpt.com)

> _“We push the limits of AI by developing structured, interpretable models of the world.”_  [oai_citation:13‡TRESP Lab](https://tresp-lab.github.io/?utm_source=chatgpt.com)