https://github.com/dmitryryumin/icml-2025-papers
ICML 2025 Papers: Dive into cutting-edge research from the premier machine learning conference. Stay current with breakthroughs in deep learning, generative AI, optimization, reinforcement learning, and beyond. Code implementations included. ⭐ support the future of machine learning research!
https://github.com/dmitryryumin/icml-2025-papers
ai-research deep-learning diffusion-models generative-ai graph-learning icml icml-2025 machine-learning multimodal-ai optimization reinforcement-learning
Last synced: 3 months ago
JSON representation
ICML 2025 Papers: Dive into cutting-edge research from the premier machine learning conference. Stay current with breakthroughs in deep learning, generative AI, optimization, reinforcement learning, and beyond. Code implementations included. ⭐ support the future of machine learning research!
- Host: GitHub
- URL: https://github.com/dmitryryumin/icml-2025-papers
- Owner: DmitryRyumin
- License: mit
- Created: 2025-07-15T12:15:20.000Z (3 months ago)
- Default Branch: main
- Last Pushed: 2025-07-15T20:41:48.000Z (3 months ago)
- Last Synced: 2025-07-16T04:03:02.662Z (3 months ago)
- Topics: ai-research, deep-learning, diffusion-models, generative-ai, graph-learning, icml, icml-2025, machine-learning, multimodal-ai, optimization, reinforcement-learning
- Homepage:
- Size: 706 KB
- Stars: 5
- Watchers: 0
- Forks: 0
- Open Issues: 0
-
Metadata Files:
- Readme: README.md
- License: LICENSE
- Code of conduct: CODE_OF_CONDUCT.md
Awesome Lists containing this project
README
![]()
General Information
![]()
![]()
![]()
![]()
Repository Size and Activity
![]()
![]()
Contribution Statistics
![]()
![]()
![]()
![]()
![]()
Other Metrics
![]()
![]()
![]()
![]()
![]()
GitHub Actions
![]()
![]()
Application
![]()
Progress Status
Main
![]()
![]()
---
ICML 2025 Papers: Explore a comprehensive collection of cutting-edge research papers presented at [*ICML 2025*](https://icml.cc/Conferences/2025), the premier conference in machine learning. Stay up to date with the latest breakthroughs in deep learning, generative models, optimization, AI theory, reinforcement learning, graph learning, causality, scalable machine learning systems, interpretability, fairness, and multimodal foundation models. Code implementations included. :star: the repository for advancing machine learning research and development!
---
> [!TIP]
> Explore the [*ICML 2025 virtual paper browser*](https://icml.cc/virtual/2025/papers.html) with a comprehensive collection of accepted papers.---
![]()
Other collections of the best AI conferences
> [!important]
> Conference table will be up to date all the time.
Conference
Year
2023
2024
2025
Computer Vision (CV)
CVPR
![]()
![]()
ICCV
![]()
![]()
![]()
![]()
ECCV
![]()
![]()
![]()
WACV
:heavy_minus_sign:
![]()
![]()
![]()
FG
:heavy_minus_sign:
![]()
![]()
Speech/Signal Processing (SP/SigProc)
ICASSP
![]()
![]()
INTERSPEECH
![]()
![]()
![]()
![]()
ISMIR
![]()
![]()
:heavy_minus_sign:
:heavy_minus_sign:
Natural Language Processing (NLP)
EMNLP
![]()
![]()
![]()
Machine Learning (ML)
AAAI
:heavy_minus_sign:
![]()
![]()
ICLR
:heavy_minus_sign:
![]()
![]()
ICML
:heavy_minus_sign:
![]()
![]()
NeurIPS
:heavy_minus_sign:
![]()
![]()
---
## Contributors
> [!NOTE]
> Contributions to improve the completeness of this list are greatly appreciated. If you come across any overlooked papers, please **feel free to [*create pull requests*](https://github.com/DmitryRyumin/ICML-2025-Papers/pulls), [*open issues*](https://github.com/DmitryRyumin/ICML-2025-Papers/issues) or contact me via [*email*](mailto:neweraairesearch@gmail.com)**. Your participation is crucial to making this repository even better.---
## Papers-2025
Section
Papers
![]()
![]()
![]()
Main
Orals
Alignment and Agents
![]()
![]()
![]()
![]()
Positions: Better Ways to Do Machine Learning
![]()
![]()
![]()
![]()
Applications in Computer Vision
![]()
![]()
![]()
![]()
Learning Dynamics
![]()
![]()
![]()
![]()
Theory and Phenomenology
![]()
![]()
![]()
![]()
Diffusion Models
![]()
![]()
![]()
![]()
Positions: AI Regulation and Safety
![]()
![]()
![]()
![]()
Reinforcement Learning
![]()
![]()
![]()
![]()
Efficient ML
![]()
![]()
![]()
![]()
Optimal Transport
![]()
![]()
![]()
![]()
Reasoning
![]()
![]()
![]()
![]()
Representations
![]()
![]()
![]()
![]()
Data-Centric ML
![]()
![]()
![]()
![]()
3D Optimization
![]()
![]()
![]()
![]()
Causality and Domain Generalization
![]()
![]()
![]()
![]()
Positions: Generative AI Evaluation
![]()
![]()
![]()
![]()
Privacy and Uncertainty Quantification
![]()
![]()
![]()
![]()
Applications in Science and Language
![]()
Will soon be added
Algorithms
![]()
Safety and Security
![]()
Deep Learning Algorithms
![]()
Probablistic Models
![]()
Applications in Math and Physics
![]()
Learning Theory
![]()
Applications in Agents and Coding
![]()
Deep Learning Architectures
![]()
Evaluation
![]()
Social and Economic Perspectives
![]()
Posters
Session 1 East
![]()
Will soon be added
Session 1 West
![]()
Session 2 East
![]()
Session 2 West
![]()
Session 3 East
![]()
Session 3 West
![]()
Session 4 East
![]()
Session 4 West
![]()
Session 5 East
![]()
Session 5 West
![]()
Session 6 East
![]()
Session 6 West
![]()
---
## Key Terms
> Will soon be added
---
## Star History