19th Multi-Disciplinary International Conference on Artificial Intelligence

Artificial Intelligence (AI) research has broad applications in real-world problems. Examples include control, planning and scheduling, pattern recognition, knowledge mining, software applications, strategy games and others. The ever-evolving needs in society and business both on a local and on a global scale demand better technologies for solving more and more complex problems. Such needs can be found in all industrial sectors and in any part of the world.

The International Conference on Multi-disciplinary Trends in Artificial Intelligence (MIWAI), formerly called The Multi-disciplinary International Workshop on Artificial Intelligence, is a well-established scientific venue in the field of artificial Intelligence. MIWAI was established more than 18 years ago. This conference aims to be a meeting place where excellence in AI research meets the needs for solving dynamic and complex problems in the real world. The academic researchers, developers, and industrial practitioners will have extensive opportunities to present their original work, technological advances and practical problems.

Artificial intelligence is a broad area of research. We encourage researchers to submit papers in the following areas but not limited to:

Scope and Topics

Machine Learning & Deep Learning

Neural networks and representation learning

Reinforcement learning and decision-making

Explainable AI and trustworthy ML

Natural Language Processing & Speech Recognition

Large language models and generative AI

Multimodal AI and human-AI interaction

Sentiment analysis and discourse modeling

Computer Vision & Image Processing

Object detection and scene understanding

Medical imaging and biometrics

AI-driven creative applications (e.g., art, design, and multimedia)

Robotics & Autonomous Systems

AI for robotics and intelligent automation

Multi-agent systems and swarm intelligence

Human-robot interaction

AI for Society, Ethics & Applications

AI for healthcare, finance, and smart cities

Ethical AI, bias mitigation, and fairness

AI-driven education and learning analytics

AI Theory & Algorithms

Computational intelligence and optimization

Knowledge representation and reasoning

Probabilistic modeling and uncertainty in AI

Agentic AI

Defining agency in AI

Reinforcement learning in agentic AI systems

Multi-agent coordination and negotiation strategies

Handling uncertainty and risk in agentic AI decision-making

Large Language Model

Interpretability and Explainability

Alignment and Safety

Multilingual & Cross-Lingual Learning

Agentic AI with LLM

Submission Guidelines

Submission link: https://www.easychair.org/conferences/?conf=miwai2026

Both research and application papers are solicited. All submitted papers will be carefully peer-reviewed on the basis of technical quality, relevance, significance, and clarity.

Each paper should have no more than twelve (12) pages in the Springer-Verlag LNCS style. The authors’ names and institutions should not appear in the paper. Unpublished work of the authors should not be cited. Springer-Verlag author instructions are available at: https://www.springer.com/gp/computer-science/lncs/conference-proceedings-guidelines