Panels, tutorials, workshops and more. Explore the full program and make the most of your MICAI experience. Connect, learn, and be part of the future of AI.
Workshops
Workshops bring together contributions focused on key topics in artificial intelligence, join expert-led workshops to build skills, explore tools, and apply AI in real-world contexts.
The rapid integration of artificial intelligence into educational contexts is shifting not only how we teach, but how knowledge is produced, evaluated, and distributed. Generative models, adaptive systems, and AI-assisted tools are now part of everyday academic practice, raising questions that go well beyond efficiency or access.
We invite contributions that engage with these changes at a deeper level. We are interested in work that examines not just what AI does in education, but how it reshapes our assumptions about learning, authorship, and expertise.
Goals
We invite authors to submit their original research papers on Artificial Intelligence and education, written in English. Submissions should present novel contributions, whether empirical, theoretical, or applied, that advance understanding in this evolving field.
We welcome contributions that question assumptions, explore tensions, and offer grounded insights into the evolving relationship between artificial intelligence and education.
Accepted papers will be presented orally during the workshop and included in the official proceedings. The proceedings will be published in the Lecture Notes in Artificial Intelligence (LNAI) series by Springer and indexed in Scopus.
Suggested Topics
Submissions may address, but are not limited to, the following themes:
• Generative AI and the transformation of assessment practices
• Academic integrity, authorship, and originality in AI-assisted work
• Human–AI collaboration in learning and teaching processes
• Design and evaluation of AI-driven educational tools and systems
• Bias, fairness, and ethical implications of AI in educational settings
• AI literacy and the competencies required for students and educators
• The impact of AI on curriculum design and disciplinary boundaries
• Institutional strategies and policies for integrating AI in education
• Learning analytics and data-driven decision-making in AI-supported environments
• The role of AI in expanding or constraining access to education
• Case studies of AI implementation in diverse educational contexts
• The epistemological implications of AI in knowledge production and validation
Submission and Participation
All submissions will undergo a peer-review process conducted by an international board of experts. Accepted papers will be scheduled for oral presentation and discussion during the workshop sessions.
In addition to contributing papers, the workshop will feature invited keynote speakers addressing high-impact topics at the intersection of AI and education, helping to frame the broader conversation and identify emerging challenges.
Organizing Committee
Hybrid Intelligent Systems (HIS) deal with real-world complexity with a multidisciplinary approach and a plurality of artificial intelligence techniques. Complex systems, including biology, medicine, logistics, management, engineering, humanities, industrial environments, and technological applications, have significant difficulty modeling and interacting with their processes using classical methods. This workshop aims to discuss research on progress working with hybrid intelligent systems applied to different fields.
The HIS2026 is a workshop conference held by the Mexican Society of Artificial Intelligence (SMIA) in its central Mexican International Conference on Artificial Intelligence (MICAI).
HIS2026 covers and gathers research topics associated with Hybrid Intelligent Systems and their capabilities for modeling, controlling, negotiating, predicting, and managing all these complex processes.
PAPER
Full papers describing final results on original research within the conference topics.
POSTER
Posters describing advances in original research or prototypes within the conference topics.
TOPICS:
Hybrid Intelligent Systems for Industrial applications.
Hybrid Intelligent Systems for Technological Applications.
Hybrid Intelligent Systems for Argumentation and Negotiation.
Synthetic datasets.
Applications of Agents, LLMs, VLMs, RAG, etc.
Applications of Artificial Neural Networks.
Applications Swarm Intelligence.
Applications of Automatic programming.
Agent-Based Social Simulation, especially using Soft Computing Techniques.
Theoretical Approaches with Social Network Analysis.
Applications on Virtual Social Networks.
Virtual and Intelligent Games based on Artificial Societies (like RPGs).
Social Data Mining.
Artificial Societies and Social Simulation.
Other application domains for Hybrid Intelligent Systems: Blogs, Cultural Aspects, Web Fan Clubs, Topic Communities, Opinion Dynamics, Diffusion Networks, Consumer Behavior
Organizing Committee
Artificial intelligence has become a transformative force in healthcare, enabling systems that can interpret medical images and biosignals with accuracy comparable to, and in some cases exceeding, that of clinical experts. However, the development of reliable, safe, and equitable AI tools for medical applications remains an open research challenge that demands dedicated interdisciplinary forums.
WIMS 2026 (Workshop on Intelligent Medical Imaging and Signal Processing) aims to be an intimate and focused forum for researchers, clinicians, and engineers to present and discuss advances at the intersection of artificial intelligence and clinical data analysis. The workshop targets two complementary domains:
1. Medical imaging: automated analysis of radiological scans (X-ray, CT, MRI, ultrasound), histopathological slides, retinal fundus images, and endoscopic video.
2. Biomedical signal processing: AI-driven interpretation of physiological time series such as ECG, EEG, EMG, and photoplethysmography (PPG).
The specific goals of WIMS 2026 are:
1. Provide a dedicated venue within MICAI for work at the boundary of AI and biomedicine, a growing area that currently lacks a dedicated forum in Mexico’s leading AI conference.
2. Promote the exchange of methodological advances, including deep learning architectures, foundation models, graph neural networks, and uncertainty quantification, applied to medical data.
3. Encourage interdisciplinary collaboration between computer scientists, biomedical engineers, and medical practitioners from Mexico, Latin America, and abroad.
4. Highlight challenges specific to clinical deployment: limited annotated data, domain shift across hospitals and devices, regulatory requirements, and explainability.
5. Foster the development of a research community around medical AI in Mexico, connecting students and early-career researchers with established international experts.
Upon acceptance, the organizers will immediately disseminate the Call for Papers (CfP) through the following channels:
1. MICAI 2026 official website and mailing list
2. SMIA (Sociedad Mexicana de Inteligencia Artificial) newsletter and mailing list
3. SOMIB (Sociedad Mexicana de Ingeniería Biomédica) communication channels
4. IEEE EMBS Latin America chapter mailing list
5. Personal academic networks of the organizers and Program Committee members
6. Social media (LinkedIn, X/Twitter, ResearchGate) using hashtags #MICAI2026 #MedicalAI #WIMS2026
7. Direct invitation emails to researchers active in relevant MICCAI, MIDL, and EMBC communities
WIMS 2026 will welcome original contributions covering, but not limited to, the following topics:
1. Medical Image Analysis
* Segmentation, detection, and classification of anatomical structures and lesions
* Deep learning for radiology: X-ray, CT, MRI, and PET image analysis
* Computational histopathology and whole-slide image analysis
* Retinal fundus image analysis and ophthalmological AI
* Endoscopy and surgical video understanding
* 3D volumetric analysis and reconstruction
* Image registration and multi-modal fusion
* Generative models and synthetic data for medical imaging (GANs, diffusion models)
2. Biomedical Signal Processing with AI
* Deep learning for ECG arrhythmia detection and cardiovascular monitoring
* EEG-based brain-computer interfaces (BCI) and neurological disorder diagnosis
* EMG signal analysis for prosthetics and rehabilitation
* Photoplethysmography (PPG) and wearable biosignal processing
* Multimodal physiological signal fusion
* Foundation models and self-supervised learning for biosignals
3 Methodological and Translational Challenges
* Transfer learning, domain adaptation, and domain generalization in clinical settings
* Federated learning and privacy-preserving methods for medical data
* Explainability, interpretability, and uncertainty quantification in medical AI
* Fairness and bias mitigation in clinical AI systems
* Annotation-efficient learning: semi-supervised, weakly supervised, and self-supervised approaches
* AI deployment in resource-limited healthcare environments
* Benchmarking, datasets, and evaluation protocols for medical AI
Organizing Committee
Artificial Intelligence is rapidly transforming industries and creating new opportunities for innovation, productivity, and value creation. However, many organizations continue to face significant challenges when moving from experimentation and pilot initiatives to enterprise-wide adoption and measurable impact.
This workshop aims to bring together researchers, practitioners, executives, consultants, and innovation leaders to explore the organizational, strategic, governance, and human dimensions of Artificial Intelligence adoption.
The workshop will provide a forum for presenting and discussing research findings, practical experiences, case studies, methodologies, frameworks, governance models, organizational structures, and lessons learned from real-world AI implementation initiatives. Topics include AI strategy, responsible AI, AI governance, organizational readiness, change management, AI operating models, capability development, AI maturity assessment, and AI value measurement.
By fostering collaboration between academia and industry, the workshop seeks to advance knowledge and promote evidence-based approaches that enable responsible, scalable, and sustainable AI transformation across organizations and society.
The workshop welcomes contributions from both research and industry communities that help bridge the gap between AI innovation and successful organizational adoption.
The workshop also aims to stimulate future research collaborations and the development of evidence-based frameworks for successful AI adoption and governance.
The workshop will issue an international Call for Papers through MICAI communication channels, universities, professional associations, research networks, industry communities, and the Strategic AI Framework global ecosystem across Latin America, Europe, and Africa.
We invite researchers, practitioners, industry leaders, consultants, graduate students, and innovation professionals to submit original research papers, industrial case studies, experience reports, frameworks, methodologies, and applied research related to Artificial Intelligence adoption and organizational transformation.
We particularly encourage submissions that present empirical evidence, longitudinal studies, industrial case studies, adoption frameworks, governance models, and lessons learned from large-scale AI transformation initiatives.
Topics of interest include, but are not limited to:
• AI Strategy and Roadmaps
• AI Governance and Responsible AI
• AI Adoption Frameworks
• AI Maturity Assessment
• Enterprise AI Operating Models
• AI Centers of Excellence
• Organizational Design for AI
• AI Change Management and Capability Development
• Human-AI Collaboration
• Generative AI Adoption
• AI ROI and Business Value Measurement
• AI Product Management
• AI Transformation Programs
• AI Ethics and Governance
• Industry Case Studies and Lessons Learned
AI Adoption Research
Socio-Technical Systems and AI
Human Factors in AI Adoption
AI Readiness Assessment
Organizational Learning and AI
AI Capability Development
Empirical Studies on AI Transformation
Special emphasis will be given to contributions that bridge AI research and real-world implementation, demonstrating measurable organizational, social, or business impact. All submissions will undergo peer review according to MICAI standards and accepted papers will be presented during the workshop.
Organizing Committee
Duration: 8 Hours
As AI technologies mature, the focus is shifting from model development to their effective deployment in real-world systems. In domains such as robotics, manufacturing, healthcare, and intelligent infrastructure, integrating AI into production environments introduces unique challenges related to system design, latency, reliability, monitoring, and trust.
* Bridge the gap between AI model development and real-world system integration.
* Promote holistic approaches to deploying AI that consider full-system engineering, not just model performance.
* Foster discussion on system-level design challenges in AI applications such as robotics, manufacturing, and healthcare.
* Explore solutions to operational constraints including latency, throughput, energy, and memory limitations.
* Advance practices for observability and monitoring to enable debugging, feedback loops, and accountability in deployed systems.
* Encourage methods that improve trustworthiness in AI, including uncertainty estimation, explainability, and robust evaluation metrics.
* Highlight data-centric approaches that drive performance improvements through data quality, augmentation, and adaptive pipelines.
* Address deployment-specific challenges of emerging technologies like foundation models and edge AI.
* Align with MICAI’s mission by bringing together foundational AI research and applied system deployment.
In order to disseminate the Call for Papers and Participation in the Workshop, we plan to use several strategies:
* Direct contact with the mexican research groups known to work on the areas of the workshop, to encourage submission
* Use the LatinX in AI (LXAI) community, as 2 members of the Chair are active members on it
* Distribute poster with QR code in standard social media such as: Linkedin, X (formerly twitter), Instagram
* One more channel is the one from Federación Mexicana de Robótica A. C. As this field overlaps with core topics from the workshop
* Likewise, with the success of our previous workshops we have access to several groups involved in AI throughout the country such as: MexAI in Guadalajara, AI in Medicine in Guanajuato, etc. Contacts that we will leverage
* Through all this we will make efforts to ensure diversity of backgrounds and gender in the target audiences
Organizing Committee
Training a high-accuracy model in a controlled setting is only a small part of delivering machine learning that works in the real world. The harder, less-published problems lie in operationalizing ML, that is, reproducible pipelines, continuous training and delivery, monitoring for data and concept drift, governance, and the engineering discipline collectively known as MLOps, and in learning across decentralized, privacy-sensitive data through Federated Learning (FL).
These two strands meet under the broader umbrella of machine learning systems: how models are built, deployed, maintained, and trusted at scale.BeMoSys aims to create a focused forum at MICAI 2026 where researchers and practitioners from Mexico, Latin America, and the broader international community can share recent results, exchange engineering experience, and discuss open problems at the intersection of ML systems, Federated Learning, and MLOps.
The workshop seeks to bridge the persistent gap between cutting-edge ML research and reliable production deployment, with special attention to settings that are common in the region: heterogeneous data sources, limited infrastructure, regulatory constraints on data sharing, and the need for cost-efficient, maintainable systems.
Dissemination: a Call for Papers distributed through MICAI/SMIA channels, relevant mailing lists (ML-news, FL portal), social media, and the organizers’ academic networks across Mexico and Latin America.
Organizing Committee
The goal of the Workshop on Automated Heuristic Design and Algorithm Selection (AHDAS) is to provide a specialized forum for researchers and practitioners interested in the automation of algorithmic decision-making for optimization and search. The workshop will focus on hyper-heuristics, automated algorithm selection, algorithm portfolios, automated heuristic generation, automated algorithm configuration, meta-learning, neuroevolution, and learning-based optimization.
The workshop seeks to connect complementary perspectives from artificial intelligence, computational intelligence, operations research, evolutionary computation, machine learning, and automated machine learning. Its purpose is to promote and encourage a critical and nourishing discussion on methods that can automatically design, select, configure, learn, or adapt algorithms according to problem characteristics, instance features, performance feedback, or application requirements.
By bringing this discussion to the Mexican International Conference on Artificial Intelligence (MICAI) 2026, the workshop aims to incentivize collaboration, disseminate recent advances, identify open research challenges, and strengthen the visibility of automated heuristic design and algorithm selection within the broader AI community.
The Workshop on Automated Heuristic Design and Algorithm Selection (ADHAS) invites submissions on methods, models, systems, and applications related to the automation of algorithmic decision-making for optimization, search, and artificial intelligence.
The workshop will be held in conjunction with the 25th Mexican International Conference on Artificial Intelligence, MICAI 2026, which will take place from November 2 to 6, 2026, at Tecnológico de Monterrey, Campus Chihuahua, Mexico. MICAI 2026 is organized by the Mexican Society for Artificial Intelligence and Tecnológico de Monterrey, Campus Chihuahua.
Scope and Motivation
Many real-world computational problems require the use of sophisticated algorithms whose performance depends strongly on the structure of the problem, the characteristics of the instance, and the operational context in which they are deployed. Traditionally, the design, selection, and configuration of these algorithms have relied heavily on expert knowledge, manual experimentation, and problem-specific tuning.
This workshop focuses on approaches that seek to automate these processes. Topics of interest include hyper-heuristics, automated heuristic design, automated algorithm selection, automated algorithm portfolios, automated algorithm configuration, neuroevolution, meta-learning, learning-based optimization, and related areas. The goal is to bring together researchers and practitioners interested in systems that can automatically design, select, configure, or adapt algorithms according to problem features, performance feedback, or changing environments.
The workshop aims to incentivize discussion across artificial intelligence, computational intelligence, operations research, evolutionary computation, machine learning, automated machine learning, and combinatorial optimization.
Topics of Interest
Submissions should address, but are not limited to, the following topics:
All submissions must be written in English and should present original work that has not been previously published and is not under review elsewhere. MICAI indicates that only complete and finished papers will be reviewed, not abstracts.
Proceedings
Accepted workshop papers will be included in the MICAI proceedings. According to the MICAI 2026 call, workshop proceedings will appear in the Springer LNAI series and are indexed in Scopus, SCImago, DBLP, INSPEC, and EI Compendex.
Organizing Committee
Duration: 8 Hours
Artificial Intelligence is rapidly moving from experimental settings into industrial, business, governmental, educational, and organizational environments. This transition raises questions that go beyond model performance: how systems are framed, integrated, evaluated, monitored, governed, adopted, scaled, and sustained once they interact with heterogeneous data, operational constraints, human decision-makers, institutional rules, organizational cultures, risks, and public expectations.
This workshop aims to connect academic AI research with real-world implementation by bringing together researchers, industry leaders, practitioners, decision-makers, consultants, executives, graduate students, and innovation professionals to discuss applied AI systems, deployment challenges, successful case studies, governance strategies, and organizational adoption practices.
The workshop focuses on how Artificial Intelligence can be designed, evaluated, deployed, governed, and adopted responsibly in industrial, business, governmental, educational, and organizational environments. It gives particular attention to the gap between promising AI methods and the practical conditions required for reliable adoption, including data quality, system integration, uncertainty, risk management, human oversight, institutional accountability, organizational readiness, leadership alignment, capability development, and value realization.
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The workshop will be organized around an open Call for Papers for original research papers, applied case studies, position papers, industrial experience reports, conceptual frameworks, methodologies, and invited contributions from experts working at the intersection of AI research, industry implementation, governance, and organizational adoption.
The Call for Papers will invite submissions that address the design, evaluation, deployment, monitoring, governance, and adoption of AI systems in practical environments. Authors will be encouraged to submit original, unpublished work that presents empirical findings, technical frameworks, implementation lessons, organizational analyses, governance approaches, maturity assessments, value measurement techniques, transformation strategies, or case studies relevant to real-world AI adoption.
To ensure academic rigor and practical relevance, submissions will undergo peer review by a multidisciplinary program committee with expertise in applied AI, industrial systems, responsible AI, data science, governance, organizational transformation, change management, and enterprise implementation. Review criteria will include originality, methodological quality, clarity of contribution, relevance to real-world deployment, implications for responsible governance, and contribution to organizational AI adoption.
Organizing Committee
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