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About AIMLM 2026

The 2026 International Conference on Artificial Intelligence, Machine Learning and Multimodality (AIMLM 2026) will be held in Hengyang, China, from October 30 to November 1, 2026. The conference aims to bring together global scholars and experts, focusing on core areas such as multimodal representation and fusion, generative AI and foundational models, multimodal systems and human-computer interaction, and trustworthy AI and algorithm governance, covering the entire innovation chain from theoretical breakthroughs to system implementation. The conference is committed to building an international platform that promotes in-depth dialogue and cross-disciplinary collaboration, and sincerely invites colleagues from the global academic and industrial communities to submit papers, share the latest research results and practical insights, and jointly promote collaborative development and responsible innovation in the era of intelligent convergence.

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At the forefront of the global STI mega-trend, China has been creating an increasingly open STI environment, increasing the depth and breadth of academic collaboration, and building a community of innovation that benefits all. These efforts make a new contribution to globalization and the creation of a common community for the future.

The AIMLM conference aims to gather professors, researchers, scholars and industrial pioneers all over the world. AIMLM is the premier forum for the presentation and exchange of past experiences and new advances and research results in the field of theoretical and experience. The conference welcomes contributions which promote the exchange of ideas and rational discourse between educators and researchers all over the world. The organizing committee of conference is pleased to invite prospective authors to submit their original manuscripts to AIMLM 2026.

Important Dates

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Full Paper Submission Date

August 30, 2026


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Notification of Acceptance

September 30, 2026


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Registration Deadline 

October 15, 2026


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Conference Dates

October 30 - November 1, 2026


Pulication

Publication

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All papers, both invited and contributed, will be reviewed by two or three expert reviewers from the conference committees. After a careful reviewing process, all accepted papers of AIMLM 2026 will be published in ACM International Conference Proceedings Series, which will be archived in the ACM Digital Library, and indexed by EI Compendex, Scopus.


Note: All submitted articles should report original research results, experimental or theoretical, not previously published or under consideration for publication elsewhere. Articles submitted to the conference should meet these criteria. We firmly believe that ethical conduct is the most essential virtue of any academics. Hence, any act of plagiarism or other misconduct is totally unacceptable and cannot be tolerated.


CFP

Conference Topics

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The foundation of multimodal artificial intelligence 

Multimodal artificial intelligence theory, Multimodal knowledge representation and reasoning, Cross-modal relationship modeling, Multi-modal data modeling method, Multimodal feature learning, Multimodal optimization method, Multimodal intelligent computing ...

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Multimodal machine learning method 

Multimodal supervised learning, Multimodal unsupervised learning, Multimodal Reinforcement Learning, Multimodal deep learning, Cross-modal transfer learning, Multimodal federal learning, Multimodal model optimization, Multimodal learning evaluation method...


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Sponsored by

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Supported by

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