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    AIMLA 2026 - 6th International Conference on AI, Machine Learning and Applications (AIMLA 2026)

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    Website https://www.ccnet2026.org/aimla/index | Want to Edit it Edit Freely

    Category Artificial Intelligence; Applications; Fuzzy Logic Systems; Fuzzy logic Techniques & Algorithm

    Deadline: January 31, 2026 | Date: March 21, 2026-March 22, 2026

    Venue/Country: Australia

    Updated: 2026-01-27 14:42:50 (GMT+9)

    Call For Papers - CFP

    6th International Conference on AI, Machine Learningand Applications (AIMLA 2026)

    March 21 ~ 22, 2026, Sydney, Australia

    https://www.ccnet2026.org/aimla/index

    Scope & Topics

    6th International Conference on AI, Machine Learning and Applications (AIMLA 2026) serves as a premier global forum for presenting and exchanging the latest advances in Artificial Intelligence, Machine Learning, and their rapidly expanding range of real world applications. AIMLA 2026 brings together leading researchers, innovators, and industry practitioners to share breakthroughs in theory, algorithms, methodologies, and system level implementations that are shaping the future of intelligent technologies.

    The conference welcomes high impact contributions across all major areas of AI and ML spanning foundational research, applied innovations, and interdisciplinary developments. By fostering collaboration between academia and industry, AIMLA 2026 aims to provide a dynamic platform for discussing emerging challenges, exploring transformative ideas, and showcasing cutting edge progress that drives the next generation of intelligent systems.

    Topics of interest include, but are not limited to, the following:

    Foundations of AI & Machine Learning

    • Machine Learning Theory & Optimization

    • Statistical Learning & Generalization

    • Probabilistic Modeling & Bayesian Methods

    • Causality, Counterfactual Reasoning & Causal ML

    • Trustworthy, Explainable & Interpretable AI (XAI)

    • Fairness, Accountability & Ethics in AI

    Deep Learning & Representation Learning

    • Deep Neural Architectures & Training Techniques

    • Self Supervised, Semi Supervised & Weakly Supervised Learning

    • Generative Models (GANs, Diffusion Models, VAEs)

    • Foundation Models & Large Scale Pretraining

    • Multimodal Learning (vision language, audio text, sensor fusion)

    • Continual, Lifelong & Transfer Learning

    Natural Language Processing & Speech Technologies

    • Large Language Models (LLMs) & Instruction Tuning

    • Text Generation, Summarization & Reasoning

    • Speech Recognition, Synthesis & Spoken Dialogue Systems

    • Multilingual & Low Resource NLP

    • Responsible & Safe Language Models

    Computer Vision & Perception

    • Image/Video Understanding & Scene Analysis

    • Vision Transformers & Diffusion Based Vision Models

    • 3D Vision, Reconstruction & Robotics Perception

    • Multimodal Vision Language Models

    • Medical Imaging & Scientific Vision Applications

    Reinforcement Learning & Decision Making

    • Deep RL, Offline RL & Safe RL

    • Multi Agent Systems & Game Theoretic Learning

    • Planning, Control & Sequential Decision Making

    • RL for Robotics, Autonomous Systems & Real World Deployment

    Applied AI & Domain Specific Intelligence

    • AI for Healthcare, Bioinformatics & Computational Biology

    • AI for Finance, Climate, Sustainability & Energy

    • AI for Education, Social Good & Public Policy

    • Scientific Machine Learning & Physics Informed Models

    • AI for Smart Cities, IoT & Cyber Physical Systems

    Robotics, Autonomous Systems & Embodied AI

    • Robot Learning & Adaptive Control

    • Embodied AI, Simulation & Digital Twins

    • Human Robot Interaction & Assistive Robotics

    • Autonomous Vehicles, Drones & Navigation

    Data Science, Knowledge Systems & Information Retrieval

    • Large Scale Data Mining & Knowledge Discovery

    • Knowledge Graphs, Semantic Reasoning & Ontologies

    • Information Retrieval, Search & Recommender Systems

    • Vector Databases & Embedding Based Retrieval

    AI Systems, Hardware & Scalability

    • Distributed & Parallel Training Systems

    • Efficient AI: Model Compression, Quantization & Pruning

    • Edge AI, TinyML & On Device Learning

    • Neuromorphic Computing & AI Accelerators

    • Software/Hardware Co Design for ML Workloads

    Emerging Topics & Frontier Research

    • AI Safety, Alignment & Robustness

    • Adversarial ML & Secure AI Systems

    • Synthetic Data Generation & Data Centric AI

    • Human AI Collaboration & Cognitive Modeling

    • Autonomous Agents & Multi Modal Reasoning

    • Benchmarking, Evaluation & Reproducibility in AI

    Paper Submission

    Authors are invited to submit papers through the conference Submission System by January 31, 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 AIMLA 2026, after further revisions, will be published in the special issues of the following journals

    Machine Learning and Applications: An International Journal (MLAIJ)

    International Journal of Artificial Intelligence & Applications (IJAIA)

    International Journal on Soft Computing (IJSC)

    International Journal on Soft Computing, Artificial Intelligence and Applications (IJSCAI)

    Advances in Vision Computing: An International Journal (AVC)

    Important Dates:

    Submission Deadline : January 31, 2026

    Authors Notification : February 10, 2026

    Registration & Camera-Ready Paper Due : February 17, 2026

    Contact Us

    Here’s where you can reach us : aimlaatccnet2026.org or aimlaconfatgmail.com


    Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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