ACTIVITIES
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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.
Meet Our
KEYNOTE SPEAKERS

Humberto Sossa
"Why neural networks are such a powerful tool"

- Recipient of the National Computing Award (2021)
- Promotor of intelligent robotics
- Former President of the Mexican Society for Artificial Intelligence
About the Talk:
Artificial neural networks have become a very useful tool in recent years for solving problems of all kinds. Advances in this field have been driven, on the one hand, by a better understanding of their operation. On the other hand, by the consolidation of the development of processors that enable associated learning algorithms. In this talk, after an introduction, we will explore a set of concepts related to artificial neural networks as operational models of biological brains. We will then explain why artificial neural networks are such a powerful tool today.
Bio:
Humberto Sossa holds a Ph.D. in Computer Science from the National Polytechnic Institute of Grenoble, France. He is a full professor at the National Polytechnic Institute and Director of the Center for Computing Research. He is an Emeritus Member of the National System of Researchers. He is a member of the Mexican Academy of Sciences and a member of the Academy of Engineering. He is also a Senior Member of the Institute of Electrical and Electronics Engineers (IEEE) and the International Society for Neural Networks (INNS). He is a member of the Academy of Computing Machinery (ACM) and a Fellow of the Mexican Society of Artificial Intelligence (SMIA). In 2021, he was awarded the National Computing Prize by the Mexican Academy of Computing (AMEXCOMP). In 2023, he received the Research Award at the National Polytechnic Institute in the area of basic research. In 2024, he received an Honorary Doctorate from the Technological Institute of Ecatepec. He is the author of five textbooks, 13 patents, 32 copyrights, and over 500 conference and journal papers. He has given over 560 invited talks. His research interests include Artificial Intelligence, Machine Learning, Artificial Neural Networks, Image Analysis, Pattern Recognition, Robotics, and Metaverses.

ISABELLE GUYON
"The Role of AI in Scientific Peer Review"

- Co-inventor of Support Vector Machines (SVM)
- Contributor of feature selection algorithms
- Recipient of the BBVA Foundation Frontiers of Knowledge Award (2020)
About the Talk:
One of the pillars of scientific progress, the peer review system, is facing unprecedented challenges. The pressure to publish, coupled with the lack of adequate incentives for reviewers, the sheer volume of submissions, and the difficulties in finding relevant expertise, are pushing the system towards a breaking point. The rise of sophisticated language models (LLMs) has added another layer of complexity, exacerbating the problem by facilitating the generation of potentially low-quality or even fabricated content. However, these very same technological advancements promise to improve the peer review process. In this presentation, we will review recent progress in this area.
Bio:
Isabelle Guyon is Director, Research Scientist at Google, in detachment from her position as professor of Artificial Intelligence at Université Paris-Saclay (Orsay). She specializes in data-centric AI, statistical data analysis, pattern recognition, and machine learning. Her areas of expertise include computer vision, bioinformatics, and power systems. Her recent interests include meta-learning, causal discovery, AI fairness and safety, and Generative AI. Prior to joining Paris-Saclay she worked as an independent consultant and was a researcher at AT&T Bell Laboratories, where she pioneered applications of neural networks to pen computer interfaces (with collaborators including Yann LeCun and Yoshua Bengio) and co-invented with Bernhard Boser and Vladimir Vapnik Support Vector Machines (SVM), which became a textbook machine learning method. She is also the primary inventor of SVM-RFE, a variable selection technique based on SVM. The SVM-RFE paper has thousands of citations and is often used as a reference method against which new feature selection methods are benchmarked. She also authored a seminal paper on feature selection that received thousands of citations. She organized many challenges in Machine Learning since 2003 supported by the EU network Pascal2, NSF, DARPA, and the European Commission, with prizes sponsored by Microsoft, Google, Facebook, Amazon, Disney Research, and Texas Instrument. Isabelle Guyon holds a Ph.D. degree in Physical Sciences of the University Pierre and Marie Curie, Paris, France. She is president of Chalearn, a non-profit dedicated to organizing challenges, action editor of the Journal of Machine Learning Research, editor of the Springer series of Challenges in Machine Learning, and served as program co-chair of NIPS 2016, general co-chair of NIPS 2017, and NeurIPS board member 2018-2024. She serves on the board of Kaggle. She is a 2020 recipient of the BBVA Frontiers in Research Award together with Prof. Schoelkopf and Prof. Vapnik and a member of the French Academy of technologies since 2024.

Stephen Smith
"Smart Infrastructure for Future Urban Mobility"

- Pioneer in constraint-based planning and scheduling
- Inventor of real-world urban traffic systems
- President of the Association for the Advancement of Artificial Intelligence
About the Talk:
Real-time traffic signal control presents a challenging multi-agent planning problem, particularly in urban road networks where there are competing dominant traffic flows that shift through the day. Further complicating matters, urban environments require attention to multi-modal traffic flows (vehicles, pedestrians, bicyclists, buses, etc.) that move at different speeds and may be given different priorities. In our research group, we propose Surtrac, a real-time, decentralized adaptive signal control system that optimizes the flow of actual traffic rather than relying on historical predictions, which has now been deployed in over 40 North American cities. The system has been improved over the years, and this talk will summarize this overall research effort and discuss the open research challenges that remain.
Bio:
Stephen F. Smith is a Research Professor of Robotics at Carnegie Mellon University, where he heads the Intelligent Coordination and Logistics Laboratory. Smith’s research focuses broadly on the theory and practice of next-generation technologies for automated planning, scheduling, and control of large multi-actor systems. He pioneered the development and use of constraint-based search and optimization models for solving planning and scheduling problems and has successfully fielded AI-based planning and scheduling systems in a range of application domains. One principal application focus for many years now has been urban mobility and smart transportation infrastructure. His work on smart traffic signals, which combines concepts from artificial intelligence and traffic theory, led to development of Surtrac – an innovative decentralized system for real-time urban traffic signal control that is now deployed in over 40 North American cities. Smith has published over 325 technical papers in the areas of automated planning and scheduling, search-based optimization, multiagent systems and machine learning, and he has received numerous research and best paper awards. He is a Fellow of the Association for the Advancement of Artificial Intelligence (AAAI) and in February 2025 became AAAI President.

VICENTE ORDOÑEZ
"The Multimodal Frontier: Challenges and Opportunities in the New Era of AI"

- Expert on large multimodal models
- Recipient of the US National Science Foundation CAREER Award (2021)
- Winner of the IEEE Marr Prize in fundamental computer vision
About the Talk:
The aim of artificial intelligence has moved from mastering single domains to achieving a holistic understanding of our world. This new era is defined by multimodality—the ability to reason coherently across images, text, sound, and video. In this keynote, I will explore this frontier, contextualizing major breakthroughs and identifying critical obstacles to real-world impact. Drawing on research from our research group at Rice University, I will delve into specific solutions, including: Anchoring Language in Reality, Learning from Less, and From Understanding to Creating. Finally, I will argue that efficiency—in data, computation, deployment and human-AI interaction — are important factors to unlock the transformative potential of multimodal AI, moving it from the laboratory to our daily lives.
Bio:
Vicente Ordóñez is an associate professor in computer science at Rice University where he directs the Vision, Language and Learning Lab. He is also a member of the Ken Kennedy Institute where he leads a research cluster on computer vision. His work is at the intersection of computer vision, machine learning and natural language processing and explores developing artificial intelligence models from multimodal data. He has received the Marr Prize — Best Paper Award — at the International Conference on Computer Vision (ICCV) and a Best Paper Award at the Conference on Empirical Methods in Natural Language Processing (EMNLP). His experience includes visiting and part time appointments at the Allen Institute for Artificial Intelligence, Adobe Research, and the Amazon Alexa AI and Amazon AGI Foundations teams. His research has been funded by the US National Science Foundation, and gifts from Google, IBM, Facebook, Salesforce, SAP, Amazon, Adobe, Snapchat, among others. Vicente holds a PhD in computer science from the University of North Carolina at Chapel Hill, an MS in computer science from Stony Brook University and an engineering degree from the Escuela Superior Politécnica del Litoral in Ecuador.

Lydia Kavraki
"Robotics, AI, and the Quest for Human-Centered Autonomous Systems"

- Inventor of the Probabilistic Roadmap Method (PRM)
- Bridges robotics and biomedical discovery
- Recipient of the IEEE Robotics Pioneer Award (2020)
About the Talk:
Spurred by advances over the last sixty years, robots are no longer confined to factories; they are increasingly integrated into human environments, collaborating closely with people on a diverse range of tasks. As these systems evolve to tackle even more complex roles, a multitude of theoretical and practical challenges arise to ensure their reliability and performance. This talk will delve into the intricacies of developing human-centered robotic systems, placing particular emphasis on the computational underpinnings of motion planning.
Bio:
Lydia E. Kavraki is the Kenneth and Audrey Kennedy Professor of Computing and professor of Computer Science and Bioengineering at Rice University. She is also the Director of the Ken Kennedy Institute for AI and Computing. Kavraki’s research develops the AI and the algorithmics needed to connect the digital to the physical world. She has two main areas of application for her research. In robotics, she develops methodologies for motion planning, machine learning methods for reasoning under uncertainty, and multi-modal frameworks to instruct robots and collaborate with them. In computational biomedicine, she develops AI methods for understanding biomolecular interactions and aiding the design of new therapeutics. Kavraki is a member of the National Academy of Engineering, the National Academy of Sciences, the National Academy of Medicine, and the American Academy of Arts and Sciences. She is the recipient of the IEEE Robotics and Automation Society Pioneer Award and the IEEE Frances E. Allen Medal.

HIS 2025
18th Workshop of Hybrid Intelligent Systems

Organizing Committee
- Martín Montes Rivera (Chair) – Universidad Politécnica de Aguascalientes
- Carlos Alberto Ochoa O. Zezzatti – Universidad Autónoma de Ciudad Juárez
- Julio Cesar Ponce Gallegos – Universidad Autónoma de Aguascalientes
- José Alberto Hernández Aguilar – Universidad Autónoma del Estado de Morelos
- Daniela Paola López Betancourt – Universidad Politécnica de Aguascalientes
- Carlos Alejandro Guerrero Méndez – Universidad Autónoma de Zacatecas
Exploring Hybrid Intelligence to Solve Complex Real-World Problems
Are you passionate about artificial intelligence, smart systems, and technologies that combine the best of different approaches? HIS 2025 is the ideal place for you.
This international workshop brings together researchers, professionals, and students working on hybrid intelligent systems/technologies that integrate symbolic AI, neural networks, fuzzy logic, evolutionary algorithms, and more to tackle complex tasks in modeling, negotiation, reputation building, and knowledge management.
What to Expect
- Hybrid models that combine multiple AI techniques to solve real-world problems in medicine, finance, education, and beyond.
- Decision-making strategies for uncertain or dynamic environments.
- Methods to represent, negotiate, and manage knowledge across intelligent systems.
- Real-life applications that showcase the power of hybrid AI.
How to Participate
- Submit a full paper presenting original and completed research.
- Or submit a poster highlighting research advances or prototypes related to hybrid intelligent systems.
Whether you’re a researcher, developer, student, or AI enthusiast, HIS 2025 is your chance to learn, share, and connect with a vibrant community advancing intelligent systems.
Additionally, the best papers of HIS2025 will be published in extended versions in the International Journal of Combinatorial Optimization Problems and Informatics (https://ijcopi.org/ojs), an indexed journal on Web of Science Core Collection: Emerging Sources Citation Index , DBLP, LatIndex, Periódica of Instituto Politécnico Nacional
Submission deadline
September 10, 2025
Paper Format: The submissions are to be formatted in accordance with the author guidelines
Organizing Committee
- Martín Montes Rivera (Chair) – Universidad Politécnica de Aguascalientes
- Carlos Alberto Ochoa O. Zezzatti – Universidad Autónoma de Ciudad Juárez
- Julio Cesar Ponce Gallegos – Universidad Autónoma de Aguascalientes
- José Alberto Hernández Aguilar – Universidad Autónoma del Estado de Morelos
- Daniela Paola López Betancourt – Universidad Politécnica de Aguascalientes
- Carlos Alejandro Guerrero Méndez – Universidad Autónoma de Zacatecas

CIAPP 2025
7th Workshop on New Trends in Computational Intelligence and Applications

Organizing Committee
- Efrén Mezura (Chair) – Instituto de Investigaciones en Inteligencia Artificial, Universidad Veracruzana
- Hector Gabriel Acosta Mesa – Instituto de Investigaciones en Inteligencia Artificial, Universidad Veracruzana
Discover the Trends Reshaping Artificial Intelligence from Within
Computational Intelligence (CI) is at the heart of today’s AI revolution. CIAPP 2025 is your opportunity to join the conversation and explore the latest research and applications shaping this exciting field.
This workshop is a meeting ground for researchers, practitioners, and students eager to present new ideas and real-world implementations of computational intelligence methods—ranging from machine learning and data mining to swarm intelligence and evolutionary computing.
What to Expect
Talks on machine learning, data mining, multi-agent systems, optimization, and more.
Real-world use cases across healthcare, education, industry, and smart cities.
Collaborative spaces to exchange ideas and form new research partnerships.
Featured Topics
Machine Learning & Data Mining
Swarm Intelligence & Intelligent Agents
Parallel and Distributed CI
Combinatorial and Numerical Optimization
How to participate
Submit your original paper or applied research to showcase your work and expand your network in the CI community.
Submission deadline:
September 1, 2025
Paper Format: The submissions are to be formatted in accordance with the author guidelines
Organizing Committee
- Efrén Mezura (Chair) – Instituto de Investigaciones en Inteligencia Artificial, Universidad Veracruzana
- Hector Gabriel Acosta Mesa – Instituto de Investigaciones en Inteligencia Artificial, Universidad Veracruzana

WILE 2025
18th Workshop on Intelligent Learning Environments

Organizing Committee
- María Lucia Barrón-Estrada (Chair) – TecNM-Instituto Tecnológico de Culiacán
- Ramón Zatarain Cabada – TecNM-Instituto Tecnológico de Culiacán
- Yasmín Hernández Pérez – TecNM-Cenidet
- Carlos A. Reyes García – Instituto Nacional de Astrofísica, Óptica y Electrónica
- Karina Mariela Figueroa Mora – Universidad Michoacana de San Nicolás de Hidalgo
Reimagining Education Through AI and Intelligent Systems
Intelligent learning is no longer just the future of education, it’s already transforming it. WILE 2025 invites researchers, practitioners, and students to explore how AI-powered learning environments are revolutionizing education.
This workshop provides a space to present cutting-edge research and practical applications, exchange ideas, and build collaborations in the field of intelligent learning systems.
What to Expect:
Smart tools that personalize and enhance learning experiences.
Adaptive systems, virtual tutors, learning analytics, and collaborative platforms.
Discussions on the ethical and effective integration of AI in education.
Especially welcoming to early-career researchers, WILE offers a platform to present work-in-progress, receive feedback, and grow professionally.
Submission deadline:
August 25, 2025
Paper Format: The submissions are to be formatted in accordance with the author guidelines
Organizing Committee
- María Lucia Barrón-Estrada (Chair) – TecNM-Instituto Tecnológico de Culiacán
- Ramón Zatarain Cabada – TecNM-Instituto Tecnológico de Culiacán
- Yasmín Hernández Pérez – TecNM-Cenidet
- Carlos A. Reyes García – Instituto Nacional de Astrofísica, Óptica y Electrónica
- Karina Mariela Figueroa Mora – Universidad Michoacana de San Nicolás de Hidalgo

CHARAL 2025
Challenges in Holistic AI for Real-world Applications and Learning Systems

Organizing Committee
- Arturo Gomez Chavez (Chair) – Constructor University Bremen
- Emmanuel Ovalle Magallanes – Universidad de La Salle Bajío
- Jose Martinez Carranza – Instituto Nacional de Astrofísica Óptica y Electrónica
Bringing AI from the Lab to the Real World
Building a high-performing AI model is just the beginning. At CHARAL, we take a comprehensive view: how to design, deploy, and manage AI systems that work in real environments: from robotics and manufacturing to healthcare and edge computing.
This workshop focuses on full-system thinking, going beyond model accuracy to tackle issues like latency, observability, robustness, and trust.
Topics We’ll Explore
Engineering AI systems with real-world constraints in mind.
Monitoring, debugging, and explaining deployed AI solutions.
Data-centric pipelines and techniques that adapt to dynamic environments.
Deployment challenges with foundation models and edge AI technologies.
Ideal for researchers, engineers, and system designers looking to bridge the gap between foundational AI and practical deployment.
Submission deadline:
September 12, 2025
Paper Format: The submissions are to be formatted in accordance with the author guidelines
Organizing Committee
- Arturo Gomez Chavez (Chair) – Constructor University Bremen
- Emmanuel Ovalle Magallanes – Universidad de La Salle Bajío
- Jose Martinez Carranza – Instituto Nacional de Astrofísica Óptica y Electrónica

ECSI
Evolutionary Computation and Swarm Intelligence

Organizing Committee
- Saúl Zapotecas-Martínez (Chair) – Instituto Nacional de Astrofísica Óptica y Electrónica
- Alejandro Rosales Pérez – Centro de Investigación en Matemáticas
Nature-Inspired AI for Powerful, Adaptive Solutions
Fascinated by how nature inspires problem-solving? ECSI dives into evolutionary computation and swarm intelligence, two key fields for designing algorithms that mimic natural systems to tackle complex challenges.
What to Expect
Cutting-edge developments in algorithms like GA, DE, ES, PSO, ACO, and ABC.
Solutions for large-scale, many-objective, and constrained optimization problems.
Applications in robotics, machine learning, bioinformatics, and more.
Cross-disciplinary innovation and future research directions.
Whether you’re working on optimization, bio-inspired systems, or real-world applications, ECSI is your place to exchange ideas and shape the future of intelligent algorithms.
Submission deadline:
August 25, 2025
Paper Format: The submissions are to be formatted in accordance with the author guidelines
Organizing Committee
- Saúl Zapotecas-Martínez (Chair) – Instituto Nacional de Astrofísica Óptica y Electrónica
- Alejandro Rosales Pérez – Centro de Investigación en Matemáticas

MeDA
Medical Domain Adaptation Classification Challenge


Organizers
- Dr. Gilberto Ochoa-Ruiz, CV-inside Lab Leader, Advanced AI Group, ITESM
- Msc. Ivan Reyes-Amezcua, CINVESTAV

Goal:
Data limitations often hinder the use of advanced machine learning methods in various medical fields, except for a select few large public datasets. Domain Adaptation Classification offers the capability to draw from similarities among diverse medical imaging datasets, allowing for more efficient learning of new tasks. Yet, the potential of Domain Adaptation Classification in medical imaging is not fully explored.
With the «MeDA» challenge, we aim to inspire the medical imaging and machine learning sectors to delve deeper into its capabilities in the medical imaging realm, and to craft algorithms capable of managing the significant variability in tasks and data within this sector.
What is the purpose of the challenge?
Participants are tasked with creating an algorithm using the provided MedMNIST dataset that can efficiently learn new tasks. The algorithm’s effectiveness is then assessed based on its capability to perform well on a private and previously unknown test task sourced from undisclosed datasets. Link to the dataset below.
Challenge Training Dataset
MedMNIST v2 is a comprehensive collection of standardized biomedical images resembling the MNIST format. It is composed of 12 datasets (2D images), all pre-processed to 28 x 28 (2D) or 28 x 28 x 28 (3D) dimensions, eliminating the need for prior knowledge by users. With a diverse range of tasks and scales, it offers 708,069 2D and 9,998 3D images, covering major biomedical imaging modalities. This dataset can aid in various research and educational projects in biomedical image analysis, computer vision, and machine learning. Several methods, including neural networks and AutoML tools, were benchmarked on MedMNIST v2.
How does the challenge work? Challenge general overview:

Challenge Mechanics
- We ask participants to make use of the meta-train dataset (MedMNIST v2), which is essentially a compilation of various datasets, encompassing a broad spectrum of imaging modalities such as binary, multi-class, or multi-label classification.
- Teams that participate in the MeDA challenge will utilize this data to train a cross-domain learning algorithm. Its effectiveness will be locally gauged by evaluating its capacity to perform well on a left-out classification task using a limited N number of samples.
- Potential algorithmic strategies can be inspired by techniques like meta-learning, transfer learning, or self-supervised pre-training.
Testing and ranking
- Teams must submit a trained model (exported in ONNX format), and this model must be trained only on the provided dataset (MedMNIST v2).
- The organizers will test the model using a private, unseen 3 testing datasets targeting different endoscopic classification tasks. Each dataset has been processed so it contains 6 classes. The application area is not revealed to avoid giving an unfair advantage through information leakage.
- Metrics used to evaluate the performance of the models are the average of accuracy and F1 score across the 3 testing datasets. Teams will be ranked based on these results.
Submission procedure
- A CMT link is provided for the participant teams. The participants should create a team name and do the submission using an anonymous email (i.e, team-name@domain.com) to avoid any bias in the challenge process. The submission should include the paper and link to code/model (ONNX model).
Note: please avoid any institutional or country-based references in the name of your team
Challenge Timeline
- Submission portal opens: 15 September 2025
- Registration deadline: 15 October 2025 (create a submission in CMT)
- Submission deadline: 25 October 2025 (final submission in CMT)
- Top-performing teams contacted: 2 November 2025
- Results announced at MICAI 2025: 5 November 2025
Conference Participation Dynamics
- Teams must send an 4-page paper abstract in IEEE standard format showing their procedure, explaining their method and showing results. Use the IEEE Format found at the end.
- The best ranking teams will do a short presentation of their work during the MICAI conference on November 5th, 2025
- The mode of participation will be HYBRID (teams can join via zoom if is not possible for them to attend)
Prizes
Prizes will be announced during the competition in Guanajuato. The top three methods will receive a full registration grant for MICAI 2026 to publish an extended version of their paper.
Rules
- Participating teams may consist of one or more individuals (max 5 individuals). Each individual may only be part of one team. The creation of multiple accounts to circumvent this rule is not permitted.
- All valid results will be announced publicly through the leaderboard. The teams of the three top-performing methods will be invited to publish their work in a special issue.
- We aim to publish an analysis of the challenge results. The three top-performing teams will be invited to contribute to this publication. Moreover, the challenge organizers may invite additional teams with particularly novel/interesting algorithms to contribute.
- Participating teams are free to publish their own algorithms and results separately but may only reference the overall challenge results once the challenge paper is published.
- The participants may use the data we provide, i.e. our meta-dataset for training. Additionally, a set of publicly available and commonly used computer vision datasets, may be used, specifically:
- ImageNet (ILSVRC 2012), miniImageNet, tieredImageNet
- CIFAR 100, CIFAR-FS
- MSCOCO
- Omniglot
- The use of openly available pre-trained neural networks trained exclusively on the above datasets is also permitted. Any pre-trained networks used, as well as the data used for training must be reported in the post-submission report.
- The test data will contain previously unseen (not contained in the meta-training data) data scarce scenarios that bear resemblance to the meta-training data, but is distinct from them.
- Participating teams are expected to make their methods fully reproducible. This includes the availability of code, any additional data used, as well as instructions on how to replicate the results.
CMT submission site: Track: MeDA Challenge 2025
Contact
For further details and questions please contact the organizers
- Dr. Gilberto Ochoa-Ruiz, gilberto.ochoa@tec.mx
- Msc. Ivan Reyes-Amezcua, ivan.reyes@cinvestav.mx
Acknowledgements
This challenge is organized in the context of the project 322537 “ML-INSIDE: Novel Machine Learning Methods for Image aNalysiS & bIomeDical Engineering in Endoscopy” funded by CONAHCYT through the SEP-CONAHCYT-ANUIES-ECOS NORD Francia program.
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.
Paper Format: The submissions are to be formatted in accordance with the author guidelines
CIAPP 2025
7th Workshop on New Trends in Computational Intelligence and Applications

CHARAL 2025
Challenges in Holistic AI for Real-world Applications and Learning Systems

MeDA: Medical Domain Adaptation Classification Challenge
Organizers:

Participation details
The MeDA challenge, part of MICAI 2025, aims to advance research in domain adaptation for medical imaging by tasking participants with developing cross-domain classification algorithms using the MedMNIST v2 dataset. Models will be evaluated on their ability to generalize to unseen endoscopic tasks.
Submissions must be ONNX models trained only on approved datasets, and results will be judged based on accuracy and F1-score. Top teams will present at the conference and may receive MICAI 2026 publication support.
The challenge promotes reproducibility, fair participation, and methodological innovation in medical AI.
REGISTRATION DEADLINE:
October 15, 2025