ACMLC 2026 - 8th Asia Conference on Machine Learning and Computing(ACMLC 2026)
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Website http://www.acmlc.org/ |
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Category Machine Learning and Computing
Deadline: June 01, 2026 | Date: July 10, 2026-July 12, 2026
Venue/Country: Beijing, China
Updated: 2025-10-11 16:03:51 (GMT+9)
Call For Papers - CFP
Full Name: 2026 8th Asia Conference on Machine Learning and Computing(ACMLC 2026)Acronym: ACMLC 2026Place: Beijing, ChinaDate: July 10-12, 2026Website: http://www.acmlc.org/
Sponsor: Renmin University of ChinaCo-organizers: Gaoling School of Artificial Intelligence, Renmin University of ChinaSchool of Journalism and Communication Renmin University of ChinaSupporters: Wentworth Institute of Technology, Thammasat University, Pontifical and Royal University of Santo Tomas☛ PUBLICATIONSubmitted papers will be strictly reviewed by technical committee. Accepted papers will be included into Conference Proceedings, which will be submitted for indexing by Ei Compendex and Scopus. The authors of the papers will be invited to participate in the ACMLC 2026 to display their research results.☛ CALL FOR PAPERSAuthors are invited to submit full papers describing original research work in areas including, but not limited to:TRACK 1: Large Language Model Agents Theory and ApplicationsMultimodal LLM Agents: Vision-language-audio integrated agent systemsAgent Planning and Reasoning: Task decomposition, path planning, and logical reasoning with large modelsTool Use and API Integration: External tool invocation and system integration capabilities for agentsMulti-Agent Collaboration: Large model-driven multi-agent coordination and cooperation mechanismsAgent Safety and Alignment: Safety assurance and value alignment for trustworthy AI agentsDomain-Specific Agents: Specialized agents for vertical domains such as healthcare, finance, and educationAgent Evaluation and Benchmarking: Capability assessment frameworks and standardized testing for intelligent agentsAgent Memory and Learning: Long-term memory systems and continual learning for persistent agentsHuman-Agent Interaction: Natural language interfaces and interaction design for AI agentsAgent Architecture and Infrastructure: Scalable frameworks and platforms for deploying LLM agentsTRACK 2: Social Computing and Human-AI CollaborationComputational Social Science: Simulation, prediction, and modeling of social phenomena and communitiesHuman-AI Collaboration Patterns: Workflow design for AI agent and human cooperationSocial Network Dynamics: Behavioral pattern mining and analysis in large-scale social networksCollective Intelligence: Group decision-making, crowdsourcing, and distributed problem-solving systemsAgent-Driven Social Modeling: Using AI agents for social behavior analysis and human preference learningSocial Media and Cultural Computing: Content analysis, sentiment analysis, cross-cultural AI systems, and bias mitigationAI Ethics and Social Impact: Research on AI systems' effects on social structures, relationships, and equityExplainable and Socially-Aware AI: Interpretable AI systems that understand and adapt to social contextsDigital Governance and Policy: AI applications in public administration, policy-making, and social governanceSocial Robotics and Interaction: Human-robot interaction in social and collaborative contextsDigital Humanities: AI applications in humanities research and cultural heritage preservationFor details about topics, please visit at http://www.acmlc.org/topics.html
☛ SUBMISSION1. Full Paper (Publication and Presentation)2. Abstract (Presentation Only)For full paper(.pdf), please upload to https://www.zmeeting.org/submission/ACMLC2026
For abstract, please send it to acmlc
iacsitp.comMore details about submission, please visit at http://www.acmlc.org/submission.html
☛ CONTACTMary Zhan (Conference Secretary)Tel.: +86-186-2405-8113 (10:00AM to 5:00PM, GMT+8)E-mail: acmlc
iacsitp.com
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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