Our Sponsors
Website https://www.ctml.org/ |
Edit Freely
Category Computational Theory and Machine Learning
Deadline: October 20, 2026 | Date: November 27, 2026-November 29, 2026
Venue/Country: Rio de Janeiro, Brazil
Updated: 2026-03-18 16:47:16 (GMT+9)
Organizer: Universidade Federal FluminenThe International Conference on Computational Theory and Machine Learning (CTML 2026) will be held in Rio de Janeiro, Brazil, during November 27-29, 2026. This conference focuses on computational theory, machine learning foundations, algorithm design, and related interdisciplinary research. It provides a high-level academic platform for global researchers, scholars, and practitioners to share innovative findings, exchange ideas, and promote academic cooperation. CTML 2026 welcomes high-quality papers and presentations, aiming to advance theoretical progress and practical applications in computational theory and machine learning.PUBLICATIONSubmissions will be reviewed by the conference technical committees, and accepted papers will be published in Conference Proceedings and submitted to EI Compendex, Scopus, etc. for indexing.CALL FOR PAPERSAuthors are invited to submit full papers describing original research work in areas including, but not limited to:TRACK 1: Foundations of Computational LearningStatistical Learning Theory and GeneralizationComputational Complexity of LearningOnline Learning and Regret AnalysisLearning Dynamics and ConvergenceScaling Laws and Emergent Behavior in Large ModelsPAC-Bayes Theory and Algorithmic StabilityTRACK 2: Deep Learning Theory and Neural ArchitecturesExpressivity and Capacity of Neural NetworksTheoretical Analysis of Transformers and Foundation ModelsNeural Network Optimization LandscapesOverparameterization and Double DescentImplicit Regularization and Bias of Gradient MethodsMechanistic Interpretability and Model InternalsPhysics-Informed Neural Networks and Neural OperatorsTRACK 3: Optimization and Algorithms for Machine LearningConvex and Non-Convex OptimizationEvolutionary Algorithms and MetaheuristicsCombinatorial Optimization in LearningSurrogate-Assisted and Expensive OptimizationOptimization for Resource-Constrained SettingsFederated Learning and Distributed OptimizationMulti-Objective Optimization in ML SystemsTRACK 4: Graph Theory, Combinatorics, and Learning on StructuresGraph Neural Networks TheorySpectral Graph Theory and ApplicationsAlgorithmic Graph Theory and Network AnalysisCombinatorial Optimization with LearningRandom Graphs and Probabilistic MethodsGeometric Deep LearningLearning on Manifolds and Non-Euclidean DataTRACK 5: Trustworthy and Explainable AICausal Inference and DiscoveryExplainability and InterpretabilityRobustness, Uncertainty, and CalibrationPrivacy and Fairness in Machine LearningAdversarial Machine LearningDistribution Shift and Domain GeneralizationSafety and Alignment of AI SystemsTRACK 6: AI for Scientific Discovery and Emerging FrontiersAI for Scientific DiscoveryQuantum Machine LearningSymbolic Regression and Scientific Law DiscoveryAI-Accelerated Scientific ComputingMulti-Modal Learning and FusionComputational Biology and AI for HealthcareClimate Modeling and Environmental AITRACK 7: Efficient and Scalable Machine Learning SystemsModel Compression and Knowledge DistillationQuantization and PruningNeural Architecture SearchEdge AI and TinyMLGreen AI and Energy-Efficient LearningLarge-Scale Training SystemsML Compilers and Hardware-Software Co-DesignFor details about topics, please visit at https://www.ctml.org/cfp.html
SUBMISSION1. Full Paper (Publication and Presentation)2. Abstract (Presentation Only)For full paper(.pdf), please upload to https://www.zmeeting.org/submission/ctml2026
For abstract, please send it to ctmlconf
163.comMore details about submission, please visit at https://www.ctml.org/submission.html
CONTACTMary Zhan (Conference Secretary)E-mail: ctmlconf
163.comKeywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
Disclaimer: ourGlocal is an open academical resource system, which anyone can edit or update. Usually, journal information updated by us, journal managers or others. So the information is old or wrong now. Specially, impact factor is changing every year. Even it was correct when updated, it may have been changed now. So please go to Thomson Reuters to confirm latest value about Journal impact factor.