7th International Conference on Advanced Machine Learning (AMLA 2026) July 25 ~ 26, 2026, Toronto, Canada https://ais2026.org/amla/index Scope 7th International Conference on Advanced Machine Learning (AMLA 2026) serves as a premier international forum for presenting cutting edge research, exchanging ideas, and exploring the latest breakthroughs in Machine Learning and its rapidly expanding ecosystem. As ML continues to transform science, engineering, industry, and society, AMLA 2026 aims to highlight both foundational advances and emerging innovations that define the next generation of intelligent systems. Topics of interest Machine Learning Foundations Machine Learning Algorithms and Theory Supervised, Unsupervised and Semi Supervised Learning Learning in Knowledge Intensive Systems Optimization, Generalization and Learning Dynamics Probabilistic Modeling, Bayesian Learning and Uncertainty Quantification Classical ML Tasks: Classification, Regression, Clustering, Ranking Deep Learning and Representation Learning Deep Neural Networks and Advanced Architectures Self Supervised, Contrastive and Representation Learning Foundation Models and Large Scale Pretraining Parameter Efficient Fine Tuning (PEFT, LoRA, Adapters) Multimodal Deep Learning (Vision, Text, Audio, Graphs) Efficient Deep Learning: Distillation, Quantization, Pruning and Sparse Models Scaling Laws and Training Dynamics of Large Models Generative AI and Creative ML Diffusion Models and Score Based Generative Models Generative Transformers and Autoregressive Models GANs and Hybrid Generative Architectures Text to X, Image to X and Multimodal Generation Synthetic Data Generation, Evaluation and Bias Control Generative Agents and Simulation Driven Generation Reinforcement Learning and Decision Making Reinforcement Learning (RL) and Deep RL RLHF (Reinforcement Learning from Human Feedback) Model Based RL, World Models and Planning Multi Agent RL and Game Theoretic Learning RL for Robotics, Control, Games and Autonomous Systems Causal RL and Safe RL Agentic ML and Autonomous Learning Systems Autonomous ML Agents and Tool Using Agents Multi Agent Collaboration, Communication and Coordination Planning Augmented ML Models Agent Memory, Long Horizon Reasoning and Task Decomposition Evaluation of Agentic Systems Graph Machine Learning and Structured Models Graph Neural Networks (GNNs) Graph Transformers and Relational Learning Knowledge Graph Embeddings and Reasoning Structured Prediction and Probabilistic Graphical Models Spatio Temporal Graph Learning Causal ML, Reasoning and Explainability Causal Inference and Causal Representation Learning Counterfactual Reasoning and Causal Discovery Causal Generative Modeling Explainable ML (XAI) and Interpretable Models Trustworthy ML: Robustness, Fairness and Bias Mitigation Multimodal ML and Cross Domain Learning Vision Language, Audio Language and Multimodal Transformers Cross Modal Alignment, Fusion and Retrieval Multimodal Representation Learning Vision Language Action Models and Embodied ML Time Series ML, Forecasting and Sequential Models Temporal Transformers and Sequence Modeling Forecasting, Predictive Modeling and Anomaly Detection Sequential Decision Making and Temporal Representation Learning ML for Sensor Data, IoT and Real Time Systems Optimization, ML Systems and Infrastructure Optimization Algorithms for ML Distributed Training, Parallel ML and Large Scale Systems ML Compilers, Accelerators and Hardware Aware ML Efficient Inference, Model Compression and Deployment MLOps, ML Pipelines and Lifecycle Management Memory Augmented ML and Long Context Models Federated, Distributed and Privacy Preserving ML Federated Learning and Collaborative ML Differential Privacy and Secure ML Edge ML, TinyML and On Device Intelligence Privacy Preserving Training and Inference Adversarial ML and ML Security Adversarial Attacks and Defenses Robust ML and Certified Robustness Secure ML Pipelines and Model Integrity Red Teaming ML Systems and Safety Critical ML Meta Learning, Active Learning and Learning to Learn Meta Learning and Few Shot Learning Active Learning and Curriculum Learning AutoML, Neural Architecture Search (NAS) Continual Learning, Lifelong Learning and Catastrophic Forgetting Mitigation Applied Machine Learning and Real World Systems ML for Healthcare, Bioinformatics and Genomics ML for Finance, Economics and Risk Modeling ML for Engineering, Manufacturing and Industry 4.0 ML for Climate Science, Energy and Sustainability ML for Social Computing, Recommendation and Personalization ML for Scientific Discovery, Simulation and Physical Modeling ML for Software Engineering, Code Generation and Program Synthesis Paper Submission Authors are invited to submit papers through the conference Submission System by May 09, 2026. Submissions must be original and should not have been published previously or be under consideration for publication while being evaluated for this conference. The proceedings of the conference will be published by Computer Science Conference Proceedings in Computer Science & Information Technology (CS & IT) series (Confirmed). Selected papers from AMLA 2026, after further revisions, will be published in the special issue of the following journal. Machine Learning and Applications: An International Journal (MLAIJ) International Journal of Artificial Intelligence & Applications (IJAIA) Important Dates Submission Deadline: May 09, 2026 Authors Notification: May 23, 2026 Registration & camera – Ready Paper Due: May 30, 2026 Contact Us Here’s where you can reach us : This email address is being protected from spambots. You need JavaScript enabled to view it. (or) This email address is being protected from spambots. You need JavaScript enabled to view it.