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MALT - 2025

2025Activity report​​​‌Project-TeamMALT

RNSR: 202524664E‌
  • Research center Inria Centre‌​‌ at Rennes University
  • In​​ partnership with:Université de​​​‌ Rennes, Université Rennes 2‌
  • Team name: MAchine Learning‌​‌ with Temporal Constraints
  • In​​ collaboration with:Institut de​​​‌ recherche en informatique et‌ systèmes aléatoires (IRISA)

Creation‌​‌ of the Project-Team: 2025​​ March 01

Each year,​​​‌ Inria research teams publish‌ an Activity Report presenting‌​‌ their work and results​​ over the reporting period.​​​‌ These reports follow a‌ common structure, with some‌​‌ optional sections depending on​​ the specific team. They​​​‌ typically begin by outlining‌ the overall objectives and‌​‌ research programme, including the​​ main research themes, goals,​​​‌ and methodological approaches. They‌ also describe the application‌​‌ domains targeted by the​​ team, highlighting the scientific​​​‌ or societal contexts in‌ which their work is‌​‌ situated.

The reports then​​ present the highlights of​​​‌ the year, covering major‌ scientific achievements, software developments,‌​‌ or teaching contributions. When​​ relevant, they include sections​​​‌ on software, platforms, and‌ open data, detailing the‌​‌ tools developed and how​​ they are shared. A​​​‌ substantial part is dedicated‌ to new results, where‌​‌ scientific contributions are described​​ in detail, often with​​​‌ subsections specifying participants and‌ associated keywords.

Finally, the‌​‌ Activity Report addresses funding,​​ contracts, partnerships, and collaborations​​​‌ at various levels, from‌ industrial agreements to international‌​‌ cooperations. It also covers​​​‌ dissemination and teaching activities,​ such as participation in​‌ scientific events, outreach, and​​ supervision. The document concludes​​​‌ with a presentation of​ scientific production, including major​‌ publications and those produced​​ during the year.

Keywords​​​‌

Computer Science and Digital​ Science

  • A3.1.1. Modeling, representation​‌
  • A3.1.3. Distributed data
  • A3.1.4.​​ Uncertain data
  • A3.1.10. Heterogeneous​​​‌ data
  • A3.1.11. Structured data​
  • A3.2.3. Inference
  • A3.3. Data​‌ and knowledge analysis
  • A3.3.1.​​ On-line analytical processing
  • A3.3.2.​​​‌ Data mining
  • A3.3.3. Big​ data analysis
  • A3.4. Machine​‌ learning and statistics
  • A3.5.2.​​ Recommendation systems
  • A4.8. Privacy-enhancing​​​‌ technologies
  • A4.9.1. Intrusion detection​
  • A5.3. Image processing and​‌ analysis
  • A5.3.2. Sparse modeling​​ and image representation
  • A5.3.3.​​​‌ Pattern recognition
  • A5.8. Natural​ language processing
  • A8.1. Discrete​‌ mathematics, combinatorics
  • A8.2. Optimization​​
  • A8.2.6. Numerical methods for​​​‌ optimization
  • A8.12. Optimal transport​
  • A9.1. Knowledge
  • A9.2. Machine​‌ learning
  • A9.2.1. Supervised learning​​
  • A9.2.2. Unsupervised learning
  • A9.2.3.​​​‌ Reinforcement learning
  • A9.2.4. Optimization​ and learning
  • A9.2.5. Bayesian​‌ methods
  • A9.2.6. Neural networks​​
  • A9.2.8. Deep learning
  • A9.3.​​​‌ Signal processing
  • A9.4. Natural​ language processing
  • A9.6. Decision​‌ support
  • A9.7. AI algorithmics​​
  • A9.10. Hybrid approaches for​​​‌ AI
  • A9.11. Generative AI​
  • A9.12.1. Object recognition
  • A9.12.6.​‌ Object localization
  • A9.14. Evaluation​​ of AI models
  • A9.17.​​​‌ Cybersecurity and AI

Other​ Research Topics and Application​‌ Domains

  • B1.1. Biology
  • B2.6.​​ Biological and medical imaging​​​‌
  • B2.7.2. Health monitoring systems​
  • B6.6. Embedded systems
  • B9.​‌ Society and Knowledge
  • B9.5.6.​​ Data science
  • B9.9. Ethics​​​‌
  • B9.10. Privacy

1 Team​ members, visitors, external collaborators​‌

Research Scientists

  • Patrick Bouthemy​​ [INRIA, Emeritus​​​‌, from Mar 2025​, HDR]
  • Paul​‌ Viallard [INRIA,​​ ISFP, from Mar​​​‌ 2025]

Faculty Members​

  • Elisa Fromont [Team​‌ leader, UNIV RENNES​​, Professor, from​​​‌ Mar 2025, HDR​]
  • Romaric Gaudel [​‌UNIV RENNES, Associate​​ Professor, from Mar​​​‌ 2025, HDR]​
  • Mathieu Lefort [UNIV​‌ RENNES, Associate Professor​​, from Sep 2025​​​‌, CDD, LRU,​ HDR]
  • Simon Malinowski​‌ [UNIV RENNES,​​ Associate Professor, from​​​‌ Mar 2025]
  • Romain​ Tavenard [UNIV RENNES​‌ II, Professor,​​ from Mar 2025,​​​‌ HDR]

Post-Doctoral Fellow​

  • Aurélien Delage [INRIA​‌, Post-Doctoral Fellow,​​ from Sep 2025]​​​‌

PhD Students

  • Noam Bires​ [UNIV RENNES,​‌ with TARAN Team]​​
  • Niels Cobat [UNIV​​​‌ RENNES, with PACAP​ Team]
  • Julianne Guerbette​‌ [UNIV RENNES,​​ with LACODAM Team]​​​‌
  • Yasmine Hachani [INRIA​, from Mar 2025​‌]
  • Carolina Jeronimo De​​ Almeida [GOUV BRESIL​​​‌, from Mar 2025​ until Aug 2025]​‌
  • Nouha Karaouli [UNIV​​ RENNES, from Mar​​​‌ 2025]
  • G. Charbel​ Kindji [ORANGE LABS​‌, CIFRE, from​​ Mar 2025]
  • Dimitri​​​‌ Lereverend [INRIA,​ with WIDE Team]​‌
  • Youwan Mahe [SIEMENS​​ IND.SOFTWARE, CIFRE,​​​‌ with EMPENN Team]​
  • Manuel Nkegoum Nzouakeu [​‌ATERMES, CIFRE,​​ with OBELIX Team]​​​‌
  • Ambroise Odonnat [HUAWEI​, CIFRE, from​‌ Mar 2025]
  • Paul​​ Sevellec [STELLANTIS,​​​‌ CIFRE, from Mar​ 2025, with LACODAM​‌ Team]
  • Oussama Zaid​​ [ORANGE LABS,​​ CIFRE, from Dec​​​‌ 2025]

Interns and‌ Apprentices

  • Youcef Boulfrad [‌​‌UNIV RENNES, Intern​​, from Mar 2025​​​‌ until Aug 2025]‌
  • Florent Cheyron [UNIV‌​‌ RENNES, Intern,​​ from Jun 2025 until​​​‌ Aug 2025]
  • Leo‌ Laffeach [UNIV RENNES‌​‌, Intern, from​​ Mar 2025 until Jun​​​‌ 2025]
  • Loane Portier‌ [UNIV RENNES,‌​‌ Apprentice, from Mar​​ 2025]
  • Benjamin Wojtecki​​​‌ [ENS Rennes,‌ Intern, from Oct‌​‌ 2025]
  • Benjamin Wojtecki​​ [UNIV RENNES,​​​‌ Intern, from May‌ 2025 until Jul 2025‌​‌]

Administrative Assistant

  • Gaelle​​ Tworkowski [INRIA]​​​‌

Visiting Scientist

  • Benjamin Leblanc‌ [Université Laval, Canada‌​‌, from Nov 2025​​ until Nov 2025,​​​‌ EA PACTOL]

External‌ Collaborator

  • Barbara Pilastre [‌​‌AMIAD, from May​​ 2025]

2 Overall​​​‌ objectives

The MALT research‌ project is dedicated to‌​‌ incorporating temporal dimensions into​​ machine learning algorithms. It​​​‌ encompasses three primary research‌ directions: learning from temporal‌​‌ data, learning over​​ time, and ensuring​​​‌ the trustworthiness of temporal‌ models.

In the‌​‌ first dimension, MALT plans​​ to tackle the complexities​​​‌ of effectively integrating temporal‌ elements into machine learning‌​‌ models, including the generation​​ of multivariate time series​​​‌ and making early predictions‌ on such data. The‌​‌ second dimension addresses challenges​​ related to adapting to​​​‌ changes in data distribution‌ while considering temporal aspects‌​‌ and facilitating continual or​​ sequential learning. Lastly, our​​​‌ focus in the third‌ dimension is on guaranteeing‌​‌ the reliability, privacy, and​​ transparency of these models.​​​‌

3 Research program

MALT‌ (MAchine Learning with Temporal‌​‌ constraints) is a joint​​ project-team between Inria (Centre​​​‌ Inria de l'Université de‌ Rennes), Université de Rennes,‌​‌ and Université Rennes 2​​ hosted at IRISA (Institut​​​‌ de Recherche en Informatique‌ et Systèmes Aléatoires). We‌​‌ aim to develop trustworthy​​ machine learning models that​​​‌ account for time constraints,‌ either in the data‌​‌ or during the learning​​ process.

Machine Learning (ML)​​​‌ is a sub-field of‌ Artificial Intelligence (AI) that‌​‌ explores the construction and​​ study of algorithms that​​​‌ enable machines to learn‌ from data. In ML,‌​‌ the primary purpose of​​ the learned model is​​​‌ to make sense of‌ past data (e.g. by‌​‌ modeling the original data​​ distribution) or make predictions​​​‌ on unseen future data.‌ Different types of machine‌​‌ learning algorithms have emerged​​ over the years depending​​​‌ on the kind of‌ data from which machines‌​‌ learn. In MALT, we​​ are interested in data​​​‌ that exhibits temporal dependencies‌ or machine algorithms that‌​‌ operate with temporal constraints.​​

  • Our first obvious research​​​‌ axis aims at exploring‌ how to learn on‌​‌ temporal data and, in​​ particular, time series. Time​​​‌ series data consists of‌ sequential data points collected‌​‌ at regular intervals, each​​ associated with a specific​​​‌ timestamp, portraying particular variable‌ changes over time. Time‌​‌ series that involve multiple​​ variables whose recording is​​​‌ aligned (e.g. different sensors‌ recording multiple views of‌​‌ the same situation) are​​ called multivariate time series.​​​‌ Time series datasets are‌ pervasive across various domains‌​‌ such as finance, meteorology,​​​‌ computer vision (videos), healthcare,​ and manufacturing. They play​‌ a critical role in​​ understanding temporal dependencies, forecasting​​​‌ future trends, and monitoring​ processes in real time.​‌ The temporal nature of​​ these data makes them​​​‌ invaluable for uncovering patterns,​ anomalies, and trends, essential​‌ for decision-making and predictive​​ analytics. While this is​​​‌ clearly not a new​ research avenue, many problems​‌ remain when trying to​​ correctly embed the time​​​‌ aspects in ML models,​ when trying to solve​‌ particular tasks such as​​ early classification or when​​​‌ dealing with multivariate time​ series, for example, in​‌ a generation context.
  • The​​ second axis aims to​​​‌ explore how to learn​ through time. Specifically, our​‌ focus lies in scenarios​​ where a machine learning​​​‌ (temporal or not) model​ is initially trained and​‌ subsequently reused at a​​ later stage, encountering potential​​​‌ shifts in data distribution​ or slight modifications in​‌ the task requirements. This​​ involves, for example, the​​​‌ problems of domain adaptation,​ continual/incremental learning or sequential​‌ learning that will all​​ be studied in MALT.​​​‌ Domain adaptation (DA) is​ a machine learning setting​‌ in which the challenge​​ lies in transferring knowledge​​​‌ from a source domain​ to a target domain,​‌ where the distributions of​​ data may differ. It​​​‌ aims to improve the​ performance of models on​‌ the target domain by​​ leveraging information learned from​​​‌ the source domain while​ mitigating the effects of​‌ domain shift. This adaptation​​ process helps to overcome​​​‌ discrepancies between training and​ testing data distributions, enhancing​‌ the generalization and robustness​​ of machine learning models​​​‌ across diverse real-world scenarios.​ Continual or incremental learning​‌ (CL) refers to a​​ machine learning paradigm where​​​‌ models are trained continuously​ over time on new​‌ data streams or batches​​ of data, without forgetting​​​‌ previously learned information. Unlike​ traditional batch learning approaches,​‌ continual learning systems dynamically​​ adapt to incoming data,​​​‌ updating their parameters or​ architecture incrementally to incorporate​‌ new knowledge while retaining​​ past experiences. This enables​​​‌ models to adapt to​ changing environments, learn from​‌ evolving data distributions, and​​ accumulate knowledge over time,​​​‌ making them suitable for​ long-term learning tasks where​‌ data arrives in a​​ sequential or streaming fashion.​​​‌ Finally, we will explore​ sequential learning through the​‌ use of multi-armed bandit​​ (MAB). In this setting,​​​‌ which is related to​ CL, the model learns​‌ and improves sequentially through​​ trial and error by​​​‌ interacting with an environment​ and receiving feedback in​‌ the form of rewards​​ or penalties based on​​​‌ its actions.
  • Our last​ research axis concerns the​‌ trustworthiness of the temporal​​ models (timely learning). Trustworthy​​​‌ AI represents a booming​ area of research encompassing​‌ work on reliability, privacy,​​ fairness, and transparency (and​​​‌ in particular eXplainable Artificial​ Intelligence (XAI)) of the​‌ learned models. MALT predominant​​ expertise lies in XAI,​​​‌ privacy-preserving algorithms and providing​ theoretical guarantees on the​‌ generalisability of the models.​​

4 Application domains

Most​​​‌ of MALT’s research is​ application-agnostic, meaning that we​‌ validate our algorithms using​​ publicly available benchmarks that​​​‌ are best suited to​ assess our methods. Nevertheless,​‌ we recognize the value​​ of engaging in real-world​​ applications through collaborations with​​​‌ industrial or academic partners‌ who are not AI‌​‌ specialists, as such interactions​​ often foster novel perspectives​​​‌ and ideas. Accordingly, we‌ co-supervise students with experts‌​‌ from industry or academia,​​ leveraging their domain expertise​​​‌ to enrich our research.‌ The applications described in‌​‌ this section arise from​​ CIFRE contracts with Orange,​​​‌ Stellantis, Huawei, Atermes, and‌ Siemens, as well as‌​‌ academic collaborations with INRAE​​ and other research teams​​​‌ within Inria.

4.1 Industry‌ & Telecommunication

  • Heterogeneous tabular‌​‌ data generation with deep​​ generative models. Tabular data​​​‌ generation is paramount when‌ dealing with privacy-sensitive data‌​‌ and with missing values,​​ which are frequent cases​​​‌ in the real (industrial)‌ world and particularly at‌​‌ Orange. It is also​​ used for data augmentation,​​​‌ a pre-processing step often‌ needed when training data-hungry‌​‌ deep learning models (for​​ example to detect anomalies​​​‌ in networks, study customer‌ profiles, ...). The CIFRE‌​‌ PhD of G. Charbel​​ Kindji, funded by Orange,​​​‌ is concerned with this‌ application. We study methods‌​‌ to tackle this problem​​ when the tabular data​​​‌ are heterogeneous (numerical and‌ symbolic) and when new‌​‌ tables should be generated​​ from scratch based on​​​‌ a human prompt.
  • Counterfactual‌ explanations over multivariate time‌​‌ series. Very complex machine​​ learning models (that are​​​‌ called black-boxes) are often‌ used in critical applications‌​‌ (e.g. self-driving cars). To​​ comply with EU regulations​​​‌ and better understand their‌ systems, many companies, and‌​‌ in particular Stellantis, are​​ interested in developing skills​​​‌ in "explainable AI", a‌ domain which aims at‌​‌ bringing back the human​​ in the decision loop​​​‌ that involves a black‌ box model. The CIFRE‌​‌ PhD of Paul Sevellec,​​ funded by Stellantis, is​​​‌ concerned with this application.‌ We study the particular‌​‌ case of counterfactual explanations​​ on the challenging context​​​‌ of multivariate time-series. This‌ problem is related to‌​‌ the generation of new​​ data that fulfills some​​​‌ human requirements.
  • Analysis and‌ optimization of 3D-printing files‌​‌ through Machine Learning. In​​ the realm of Additive​​​‌ Manufacturing, and more specifically‌ Fused Filament Fabrication 3D‌​‌ printing, print time estimation​​ and optimization plays a​​​‌ pivotal role. The two‌ main approaches for this‌​‌ task are parametric models​​ taking as input the​​​‌ 3D description of the‌ model, and analytical models‌​‌ based on G-code. In​​ the context of the​​​‌ PhD of Niels Cobat‌ , we explore the‌​‌ potential of Machine Learning​​ models dedicated to sequences​​​‌ to handle this task.‌
  • Transfer learning for time‌​‌ series analysis. In many​​ industrial and scientific domains—such​​​‌ as sensor monitoring, anomaly‌ detection, forecasting or activity‌​‌ recognition—time series data are​​ abundant, while labeled data​​​‌ for each new task‌ or domain remain scarce‌​‌ and costly to obtain.​​ The PhD project of​​​‌ Ambroise Odonnat addresses this‌ challenge by studying and‌​‌ developing transfer learning methods​​ specifically tailored to time​​​‌ series data, with a‌ particular focus on modern‌​‌ sequence models such as​​ Transformers. The work aims​​​‌ to design robust and‌ transferable representations that capture‌​‌ both temporal dependencies and​​ dynamic patterns, enabling knowledge​​​‌ learned from one set‌ of time series to‌​‌ be efficiently reused across​​​‌ different domains, conditions or​ applications. By bridging theoretical​‌ analysis and practical methodologies,​​ the project targets scalable​​​‌ and data-efficient learning solutions​ for real-world time series​‌ applications.
  • Convergence of graph​​ and vector approaches for​​​‌ integrating machine learning predictions​ into network digital twin​‌ simulations The PhD thesis​​ of Oussama Zaid —in​​​‌ collaboration with Orange—focuses on​ the convergence of graph-based​‌ and vector-based approaches to​​ natively integrate machine learning​​​‌ predictions into digital twin​ simulations of telecommunications networks,​‌ within the context of​​ Orange’s digital twin platforms​​​‌ such as Thing’in and​ network management systems for​‌ 5G and fiber infrastructures.​​ The research aims to​​​‌ leverage graph databases and​ graph machine learning—particularly Graph​‌ Neural Networks—to model complex,​​ dynamic network structures, predict​​​‌ traffic and failures, and​ enable advanced “what-if” simulations​‌ to assess the impact​​ of network changes on​​​‌ performance and customer experience.​ Addressing current limitations where​‌ graph learning pipelines are​​ decoupled from database systems,​​​‌ the thesis proposes a​ hybrid graph–vector database that​‌ embeds machine learning capabilities​​ directly into data management.​​​‌ The expected outcome is​ a prototype supporting multi-model​‌ data representation (graphs and​​ embeddings), a unified query​​​‌ language operating across structural​ and vector spaces, and​‌ scalable storage with versioning​​ of data, models, and​​​‌ embeddings, thereby ensuring efficient​ querying, data governance, incremental​‌ learning, and reproducibility over​​ time.

4.2 Embedded Systems​​​‌

Elisa Fromont is the​ local coordinator of the​‌ ADAPTING ("Architectures adaptatives pour​​ l’intelligence artificielle embarquée") project​​​‌ of the PEPR AI.​ The ADAPTING project aims​‌ at proposing new architectural​​ paradigms adaptable to any​​​‌ AI application and its​ constraints in terms of​‌ precision, energy, latency and​​ reliability. The adaptive architecture​​​‌ will be designed to​ ensure the flexibility, efficiency,​‌ durability and reliability of​​ embedded AI. Within this​​​‌ project, she co-supervises two​ PhD students and one​‌ research apprentice (together with​​ Mathieu Lefort ) who​​​‌ respectively started in fall​ 2024 and 2025 and​‌ 2024. Within this project,​​ Simon Malinowski also co-supervises​​​‌ the PhD of Julianne​ Guerbette with the LACODAM​‌ team.

  • Continual learning for​​ time series forecasting in​​​‌ embedded systems. During her​ first PhD year, Nouha​‌ Karaouli evaluated whether Time​​ Series Foundation Models (TSFMs)​​​‌ would be better suited​ for continual learning than​‌ smaller specific time series​​ models and whether they​​​‌ could meet the resource​ constraints of embedded systems.​‌ She did a systematic​​ study of the "catastrophic​​​‌ forgetting" phenomenon in TSFMs​ sequentially fine-tuned (FT) on​‌ multiple forecasting tasks, evaluating​​ TimesFM-2.0, Chronos-2, and Granite-FlowState-r1​​​‌ across synthetic and real-world​ datasets. While FT improves​‌ performance on new tasks,​​ it often degrades accuracy​​​‌ on earlier ones. All​ models exhibit forgetting, though​‌ larger models are markedly​​ more robust than smaller​​​‌ ones. Forgetting and adaptability​ further depend on the​‌ gap between pretraining and​​ fine-tuning data distributions. These​​​‌ results expose key limitations​ in current TSFM design​‌ and emphasize the need​​ for continual-learning methods for​​​‌ deployment in non-stationary forecasting​ settings.
  • Trustworthy AI hardware​‌ architectures. The goal of​​ Noam Birès 's PhD​​​‌ thesis is to study​ the impact of hardware​‌ faults not only on​​ the AI decisions, but​​ also on algorithms developed​​​‌ to explain AI (XAI)‌ models. The objective is‌​‌ to make AI-HW reliable​​ by understanding how hardware​​​‌ faults (due to variability,‌ aging, external perturbations) can‌​‌ impact AI and XAI​​ decisions and how to​​​‌ mitigate those impacts efficiently.‌ The final goal is‌​‌ to enable the transparency​​ of the AI-HW by​​​‌ designing self-explainable, trustworthy, reliable,‌ and real-time verifiable AI‌​‌ hardware accelerators, capable of​​ performing self-test, self-diagnosis, and​​​‌ self-correction.
  • Monitoring Federated Systems‌ with XAI.Loane Portier‌​‌ is an apprentice in​​ the AI Master of​​​‌ University of Rennes. Federated‌ Learning (FL) enables collaborative‌​‌ model training across decentralized​​ data sources, but heterogeneous​​​‌ client distributions can lead‌ to local drifts or‌​‌ adversarial behaviors that are​​ difficult to detect with​​​‌ conventional metrics. In his‌ first apprentice year (M1),‌​‌ he studied a method​​ that leverages SHAP (SHapley​​​‌ Additive exPlanations) to monitor‌ the evolution of feature‌​‌ contributions in both local​​ and global models during​​​‌ training.

4.3 Defense

  • Object‌ detection from few multispectral‌​‌ examples. This project, developed​​ during the thesis of​​​‌ Manuel Nkegoum, aims at‌ providing robust deep-learning-based methods‌​‌ to detect objects in​​ outdoor environments using multispectral​​​‌ images under a low‌ supervision context. The developed‌​‌ methods are expected to​​ learn from few labeled​​​‌ examples at training time‌ and be able to‌​‌ detect scarcely-observed objects in​​ prediction. In case of​​​‌ very few object labels‌ (even no label) being‌​‌ available, the model to​​ be developed should be​​​‌ capable of discovering unknown‌ novel objects from the‌​‌ observed scene.
  • Local search​​ for multi-armed bandit problems.​​​‌ Multi-armed bandits is the‌ paradigm to design algorithms‌​‌ which simultaneously learn from​​ the data they have​​​‌ collected and act (and‌ therefore collect data) based‌​‌ on what they have​​ learned. While being important​​​‌ for many aplications, such‌ algorithms prove to be‌​‌ inefficient when confronted to​​ combinatorial optimization problems. To​​​‌ remove this limit, we‌ are developing bandit algorithms‌​‌ dedicated to combinatorial problems​​ which can be solved​​​‌ through local search. This‌ project is currently supported‌​‌ by a funding from​​ a collaboration between Inria​​​‌ and DGA-AID to foster‌ reasearch subjects which are‌​‌ of interest to both​​ the army and the​​​‌ industry.

4.4 Agriculture

  • Deep‌ learning-based analysis of the‌​‌ early development of bovine​​ embryos from videomicroscopy. The​​​‌ PhD of Yasmine Hachani‌ (collaboration with the Sairpico‌​‌ team and INRAE) focuses​​ on designing deep learning​​​‌ methods for the comparison‌ and classification of videos‌​‌ of embryos produced in​​ vitro (PIV). These automatic​​​‌ methods are eagerly awaited‌ by biologists in order‌​‌ to broaden the potential​​ of fundamental and applied​​​‌ research in this field,‌ and to help improve‌​‌ results and reproductive performance​​ in breeding. The problem​​​‌ posed is multifaceted. First‌ of all, the images‌​‌ acquired by microscopy are​​ complex in nature: they​​​‌ are low-contrast, noisy, contain‌ transparency effects, and movements‌​‌ are difficult to characterize.​​ The categorization of in​​​‌ vitro fertilized embryos, in‌ terms of the quality‌​‌ of their development, is​​ based on a continuum​​​‌ of classes, rather than‌ distinct ones. Furthermore, the‌​‌ need is to obtain​​​‌ reliable classification at the​ earliest possible stage, i.e.​‌ 3 days post-gamete contact,​​ from a video of​​​‌ 300 images, with images​ acquired every 15 minutes.​‌ Finally, while classification can​​ be supervised, we have​​​‌ only a limited amount​ of data (a few​‌ hundred videos) for deep​​ learning purposes, especially as​​​‌ class characterization can only​ be achieved by observing​‌ a video in its​​ entirety.

4.5 Medicine

  • On​​​‌ multimodal segmentation of chronic​ stroke lesions. Since fall​‌ 2024, Elisa Fromont is​​ the co-supervisor of Youwan​​​‌ Mahé with the EMPENN​ Inria team. Post-stroke MRI​‌ not only delineates focal​​ lesions but also reveals​​​‌ secondary structural changes, such​ as atrophy and ventricular​‌ enlargement. These abnormalities, increasingly​​ recognised as imaging biomarkers​​​‌ of recovery and outcome,​ remain poorly captured by​‌ supervised segmentation methods. In​​ this thesis, we adapt​​​‌ state-of-the-art generative methods to​ this particular medical context​‌ to better detect and​​ segment these anomalies.

5​​​‌ Social and environmental responsibility​

5.1 Footprint of research​‌ activities

There are two​​ main axes that characterize​​​‌ the bulk of MALT's​ environmental impact: work trips,​‌ and computing resources utilisation.​​

  • Work trips. Whenever possible,​​​‌ we prefer using train​ rather than plane for​‌ national and European travels.​​ Most of us continue​​​‌ to submit papers to​ international conferences outside of​‌ Europe but if a​​ paper gets accepted into​​​‌ such conference, we prioritize​ sending the first author​‌ (PhD student). Outside of​​ conferences, for national events​​​‌ (seminars, PhD juries, etc.),​ videoconference is increasingly used,​‌ which helps to reduce​​ the overall carbon footprint​​​‌ of the community.
  • Utilisation​ of computing resources. The​‌ discontinuation of Igrida services​​ and the transition towards​​​‌ Grid'5000 and Jean Zay​ has reduced our access​‌ to easily available computation​​ resources. It adds friction​​​‌ to making experiments, but​ has a positive effect​‌ on energy consumption, as​​ we are now using​​​‌ national infrastructures that benefit​ from even better sharing​‌ between users than Igrida​​ (which was already heavily​​​‌ used).

5.2 Impact of​ research results

We estimate​‌ that the research work​​ can have actual impact​​​‌ in three different ways:​

  • In the short/medium term,​‌ a significant part of​​ our research work is​​​‌ conducted in collaboration with​ companies, through CIFRE PhDs.​‌ Hence, the addressed research​​ problems concern an important​​​‌ challenge for the company,​ and the solutions proposed​‌ are evaluated on their​​ relevance to tackle this​​​‌ challenge.
  • In the long​ term, the team has​‌ a fundamental line of​​ work on trustworthy and​​​‌ interpretable machine learning. Given​ the increasing use of​‌ machine learning solutions in​​ most areas of human​​​‌ activity, work on interpretability​ is of utmost societal​‌ importance, as it will​​ help in designing more​​​‌ useful and also more​ acceptable machine learning approaches.​‌ This will require a​​ sustained effort from the​​​‌ community: MALT is taking​ part in this effort​‌ with an important number​​ of contributions in this​​​‌ area.

6 Highlights of​ the year

  • MALT was​‌ created in March 2025!​​ Note that MALT is​​​‌ a spinoff of the​ LACODAM team.
  • We had​‌ the pleasure to follow​​ the PhD defense of​​ G. Charbel Kindji .​​​‌
  • The start of the‌ project team is supported‌​‌ by 3 projects:
    • A​​ national one, the DATES​​​‌ ANR project, which is‌ at the core of‌​‌ our research axes;
    • An​​ exploratory one, the AEx​​​‌ HYPE project, to expolore‌ research questions on the‌​‌ link between optimization and​​ multi-armed bandits;
    • An international​​​‌ one, the associate team‌ PACTOL with Université Laval‌​‌ (Québec, Canada), which is​​ about the link between​​​‌ PAC-Bayesian approaches and multi-armed‌ bandits.
  • Elisa Fromont and‌​‌ Paul Viallard (along with​​ Edwige Cyffers and Michaël​​​‌ Perrot) take the leadership‌ of the SSFAM (Société‌​‌ Savante Francophone d'Apprentissage Machine).​​

7 Latest software developments,​​​‌ platforms, open data

7.1‌ Latest software developments

7.1.1‌​‌ tslearn

  • Keywords:
    Machine learning,​​ Time Series, Forecasting
  • Functional​​​‌ Description:
    tslearn is a‌ Python package that provides‌​‌ machine learning tools for​​ the analysis of time​​​‌ series.
  • URL:
  • Contact:‌
    Romain Tavenard

8 New‌​‌ results

8.1 Learn on​​ temporal data

Participants: Patrick​​​‌ Bouthemy, Élisa Fromont‌, Romaric Gaudel,‌​‌ Nouha Karaouli, Paul​​ Sévellec, Yasmine Hachani​​​‌.

Remark about the‌ “Participants” boxes: we compiled‌​‌ syntactically the list of​​ co-authors of the papers​​​‌ that make the “New‌ Results” of the year,‌​‌ for each section. It​​ obviously does not mean​​​‌ that other members of‌ the team do not‌​‌ work on the topics​​ listed, the correct meaning​​​‌ is that they did‌ not have a publication‌​‌ on that topic this​​ year.

During the year,​​​‌ we have proposed several‌ advancements in temporal learning.‌​‌ In time series forecasting,​​ we demonstrated that foundation​​​‌ models exhibit inherent limitations‌ for time series data‌​‌ due to domain-dependent zero-shot​​ capabilities, revealing that fine-tuned​​​‌ models often fail to‌ deliver consistent performance gains‌​‌ over dedicated architectures despite​​ their larger parameter counts​​​‌ (see 25). For‌ multivariate time series classification,‌​‌ we introduced CFE4MTS,​​ a generation-based counterfactual explanation​​​‌ framework that produces interpretable,‌ plausible counterfactuals aligned with‌​‌ target class distributions, significantly​​ outperforming state-of-the-art methods across​​​‌ real-world datasets (see 23‌). Additionally, we uncovered‌​‌ critical privacy risks in​​ fine-grained electrical consumption data,​​​‌ showing that even degraded‌ time series (e.g., rounded‌​‌ to 100W) can re-identify​​ over 40% of households​​​‌ using just 7 consecutive‌ measurements, with uniqueness rates‌​‌ persisting at concerning levels​​ even under severe data​​​‌ degradation (see 12).‌ In videomicroscopy, we introduced‌​‌ CLEmbryo to identify the​​ developmental stages of embryos​​​‌ from 2D time-lapse image‌ sequences. This model leverages‌​‌ supervised contrastive learning with​​ focal loss and the​​​‌ lightweight 3D neural network‌ CSN-50 as encoder (see‌​‌ 29).

8.2 Learn​​ through time

Participants: Ambroise​​​‌ Odonnat, Romain Tavenard‌.

During the year,‌​‌ we advanced the "Learn​​ through time" initiative by​​​‌ introducing four key contributions.‌ First, we proposed Zero-shot‌​‌ Model-based Reinforcement Learning using​​ Large Language Models15​​​‌ to enable LLMs in‌ predicting continuous dynamics via‌​‌ Disentangled In-Context Learning (DICL).​​ Second, we developed PAWL​​​‌17, an efficient‌ algorithm for exact partial‌​‌ Wasserstein distances on the​​ line, and its differentiable​​​‌ extension for high-dimensional settings‌ 24. Third, we‌​‌ released SKADA-Bench10,​​​‌ a comprehensive benchmark for​ evaluating unsupervised domain adaptation​‌ across diverse modalities. Finally,​​ we introduced Leveraging Gradients​​​‌ for Unsupervised Accuracy Estimation​ under Distribution Shift13​‌, a technique that​​ uses gradient magnitudes to​​​‌ predict test accuracy under​ distribution shifts and significantly​‌ outperforms state-of-the-art methods.

8.3​​ Trustworthy AI

Participants: Élisa​​​‌ Fromont, Romaric Gaudel​, G. Charbel Kindji​‌, Dimitri Lerévérend,​​ Paul Sévellec, Paul​​​‌ Viallard.

During the​ year, we have proposed​‌ Zip-DL, a privacy-aware decentralized​​ learning algorithm that achieves​​​‌ 35% higher membership-inference​ attack resilience compared to​‌ baseline methods while maintaining​​ up to 59%​​​‌ higher accuracy under the​ same threat model, as​‌ demonstrated by 16.​​ Concurrently, to address analytical​​​‌ variability in fMRI processing,​ we released the HCP​‌ Multi-Pipeline dataset comprising 1​​,080 participants' statistic​​​‌ maps across 24 pipelines​ and developed a style​‌ transfer framework using GANs​​ and diffusion models to​​​‌ enhance reproducibility, as detailed​ in 8 and 18​‌. In the realm​​ of data integrity, we​​​‌ advanced synthetic tabular data​ detection by introducing cross-table​‌ baseline detectors and robust​​ schema-adaptive methods 26,​​​‌ demonstrating the challenge of​ 𝑖𝑛-𝑡ℎ𝑒-​‌𝑤𝑖𝑙𝑑 detection across diverse​​ table structures. Additionally, we​​​‌ established a PAC-Bayesian framework​ linking flat minima to​‌ generalization, showing their positive​​ influence via gradient-based bounds​​​‌ that avoid dimension-dependent dependencies​ 19; extended counterfactual​‌ explanations for multivariate time​​ series classification through plausible​​​‌ generation techniques, 23;​ and quantified privacy risks​‌ in fine-grained electrical consumption​​ data, revealing that 90​​​‌% of households can​ be re-identified from 5​‌ consecutive measurements—a critical insight​​ for smart grid privacy—​​​‌12.

8.4 Applications​

Participants: Patrick Bouthemy,​‌ Élisa Fromont, Romaric​​ Gaudel, G. Charbel​​​‌ Kindji, Youwan Mahé​, Ambroise Odonnat,​‌ Paul Sévellec, Simon​​ Malinowski, Erwan Vincent​​​‌.

During the year,​ we have proposed significant​‌ advancements across medical imaging,​​ tabular data processing, and​​​‌ foundational machine learning techniques.​ In medical imaging, we​‌ developed a deep learning​​ framework for multi-modal MRI​​​‌ segmentation of sub-acute and​ chronic stroke lesions, achieving​‌ a mean Dice score​​ of 0.74 for dual-modality​​​‌ (T1-w + FLAIR) ensembles​ on internal datasets—demonstrating that​‌ integrating FLAIR data and​​ ensemble strategies significantly improves​​​‌ small/medium lesion quantification 7​. Concurrently, we introduced​‌ the HCP Multi-Pipeline dataset​​ to investigate analytical variability​​​‌ in fMRI, providing 1,080​ participants' statistic maps across​‌ 24 pipelines for rigorous​​ analysis of processing inconsistencies​​​‌ 8. To address​ reproducibility challenges, we further​‌ proposed a style transfer​​ approach leveraging GANs and​​​‌ Diffusion Models to convert​ fMRI statistic maps across​‌ pipelines, enabling effective data​​ augmentation for neuroimaging studies​​​‌ 18. In tabular​ data processing, we conducted​‌ the first comprehensive benchmark​​ of 16 diverse datasets,​​​‌ revealing that diffusion-based generative​ models consistently outperform alternatives​‌ after dataset-specific tuning—while highlighting​​ the challenges of cross-table​​​‌ synthetic data detection under​ schema variability 9,​‌ 26, 20.​​ Additionally, we developed the​​​‌ supervised model CLEmbryo for​ cell stage classification of​‌ animal embryos in videomicroscopy,​​ which outperforms state-of-the-art methods​​ on both our in-house​​​‌ Bovine ECS dataset and‌ the publicly available NYU‌​‌ Mouse Embryos dataset 29​​; extended our understanding​​​‌ of optimization pathways through‌ a circuit-based curriculum for‌​‌ efficient learning 22;​​ and developed plausible counterfactual​​​‌ explanations for multivariate time‌ series classification 23.‌​‌ Finally, we demonstrated that​​ gradient-based signal analysis (via​​​‌ cross-entropy loss gradients) provides‌ robust test accuracy estimation‌​‌ under distribution shift, outperforming​​ existing methods in diverse​​​‌ scenarios 13. These‌ contributions collectively advance robustness‌​‌ in medical data, scalable​​ tabular generation, and interpretable​​​‌ AI systems for real-world‌ deployment. In 14,‌​‌ we have developed a​​ methodology that is able​​​‌ to identify impact factors‌ for buses commercial speed‌​‌ analysis. Machine learning and​​ data analysis techniques are​​​‌ used to quantify the‌ impact of many different‌​‌ features on the commercial​​ speed of buses. The​​​‌ most important features can‌ then be used within‌​‌ machine learning frameworks in​​ order to predict the​​​‌ commercial speed of buses‌ on different roads.

9‌​‌ Bilateral contracts and grants​​ with industry

9.1 Bilateral​​​‌ contracts with industry

  • ORANGE‌ - Univ. Rennes (2023-2025)‌​‌

    Participants: Elisa Fromont,​​ G. Charbel Kindji.​​​‌

    Contract amount: 45k€‌ + Phd Salary

    Context.‌​‌ Tabular data generation is​​ paramount when dealing with​​​‌ privacy-sensitive data and with‌ missing values, which are‌​‌ frequent cases in the​​ real (industrial) world and​​​‌ particularly at Orange. It‌ is also used for‌​‌ data augmentation, a pre-processing​​ step often needed when​​​‌ training data-hungry deep learning‌ models (for example to‌​‌ detect anomalies in networks,​​ study customer profiles, ...).​​​‌

    Objective. We study methods‌ to tackle heterogeneous tabular‌​‌ data generation with deep​​ generative models. We are​​​‌ particularly interested in problems‌ where the tabular data‌​‌ are heterogeneous (numerical and​​ symbolic) and when new​​​‌ tables should be generated‌ from scratch based on‌​‌ a human prompt.

    Additional​​ remarks. This is the​​​‌ doctoral contract for the‌ PhD of Charbel Kindji‌​‌ who defended his PhD​​ December 18 2025 (Thèse​​​‌ CIFRE).

  • Stellantis - Univ.‌ Rennes (2024-2026) with LACODAM‌​‌ Team

    Participants: Elisa Fromont​​, Romaric Gaudel,​​​‌ Paul Sevellec.

    Contract‌ amount: 70k€ +‌​‌ Phd Salary

    Context.​​ This project is a​​​‌ collaboration with Stellantis and‌ focuses on the development‌​‌ of interpretable machine learning​​ models for multivariate time​​​‌ series data. Utilizing a‌ range of sensors integrated‌​‌ within vehicles, these models​​ are designed to make​​​‌ real-time decisions. Providing drivers‌ with clear explanations of‌​‌ these decisions is a​​ key aspect. We specifically​​​‌ concentrate on counterfactual explanations,‌ which not only clarify‌​‌ why a particular decision​​ was made but also​​​‌ illustrate how alternative scenarios‌ might have led to‌​‌ different outcomes.

    Objective. Current​​ approaches providing counterfactual explanations​​​‌ for time series models‌ are limited to univariate‌​‌ time series. In this​​ project, we aim to​​​‌ develop approaches to handle‌ multivariate time series, which‌​‌ requires capturing the correlations​​ between the series.

    Additional​​​‌ remarks. This is the‌ doctoral contract for the‌​‌ PhD of Paul Sévellec​​ (Thèse CIFRE), which is​​​‌ co-advised with Laurence Rozé‌ from LACODAM Team.

  • ATERMES‌​‌ - Univ. Rennes (2024-2027)​​​‌ with OBELIX Team

    Participants:​ Élisa Fromont, Manuel​‌ Nkegoum.

    Contract amount​​: 0€ (for MALT​​​‌ Team) + Phd Salary​

    Objective. This project​‌ aims at providing robust​​ deep-learning-based methods to detect​​​‌ objects in outdoor environments​ using multispectral images under​‌ a low supervision context.​​ The developed methods are​​​‌ expected to learn from​ few labeled examples at​‌ training time and be​​ able to detect scarcely-observed​​​‌ objects in prediction. In​ case of very few​‌ object labels (even no​​ label) being available, the​​​‌ model to be developed​ should be capable of​‌ discovering unknown novel objects​​ from the observed scene.​​​‌

    Additional remarks. This is​ the CIFRE PhD of​‌ Manuel Nkegoum with Atermes​​ (Thèse CIFRE). There is​​​‌ an agreement with the​ Obelix team to freely​‌ use part of the​​ 60k€ contract as was​​​‌ done conversely in the​ previous PhD with the​‌ same parties.

  • SIEMENS -​​ Univ. Rennes (2025-2028) with​​​‌ EMPENN Team

    Participants: Elisa​ Fromont, Youwan Mahé​‌.

    Contract amount:​​ 12k€ (for MALT Team)+​​​‌ Phd Salary

    Context.​ Stroke is a major​‌ health issue globally, causing​​ severe brain damage due​​​‌ to disrupted blood supply.​ Medical imaging, especially MRI,​‌ is crucial for assessing​​ stroke localization and extent.​​​‌

    Objective. Objective.​ Our goal in this​‌ project, is to improve​​ the detection and delineation​​​‌ of chronic stroke lesions​ from multimodal data using​‌ deep learning, helping clinicians​​ plan better treatment and​​​‌ rehabilitation programs.

    Additional remarks.​ This is the CIFRE​‌ PhD of Youwan Mahé​​ with Siemens (Thèse CIFRE).​​​‌ The total contract with​ Siemens is 50k€ but​‌ this amount is divided​​ between the CHU of​​​‌ Rennes, the Empenn team​ and the MALT team.​‌

  • HUAWEI - Univ. Rennes​​ II (2025-2028) with OBELIX​​​‌ Team

    Participants: Romain Tavenard​, Ambroise Odonnat.​‌

    Contract amount: 90k€​​ (for MALT Team, shared​​​‌ with OBELIX team in​ practice)+ Phd Salary

    Objective​‌. Our goal in​​ this project is to​​​‌ understand how Transformer architectures​ are impacted by distribution​‌ shift so as to​​ be able to better​​​‌ adapt pre-trained models on​ target distributions.

    Additional remarks.​‌ This is the CIFRE​​ PhD of Ambroise Odonnat​​​‌ with Huawei (Thèse CIFRE).​ There is an agreement​‌ with the Obelix team​​ to freely share the​​​‌ 90k€ contract, though this​ contract is hosted on​‌ the Université de Rennes​​ II - MALT side.​​​‌

  • ORANGE - Univ. Rennes​ (2025-2028)

    Participants: Romaric Gaudel​‌, Oussama Zaid.​​

    Contract amount: 39k€​​​‌ + Phd Salary

    Objective​. In this project​‌ we develop a hybrid​​ graph–vector database that natively​​​‌ integrates machine learning, particularly​ graph neural networks. Its​‌ main use-case is telecom​​ network digital twins, aiming​​​‌ at efficient prediction, simulation,​ and data governance for​‌ complex and evolving networks.​​

    Additional remarks. This is​​​‌ the CIFRE PhD of​ Oussama Zaid with Orange​‌ (Thèse CIFRE).

10 Partnerships​​ and cooperations

10.1 International​​​‌ initiatives

10.1.1 Inria associate​ team not involved in​‌ an IIL or an​​ international program

EA PACTOL​​​‌

Participants: Paul Viallard,​ Romaric Gaudel.

  • Title:​‌ Novel PAC Theoretical Guarantees​​ Of Machine Learning Models​​
  • Partner Institution:
    Université Laval​​​‌ / Electrical Engineering and‌ Computer Engineering, Canada
  • Date/Duration:‌​‌ 3 years (2025-2027)
  • Additionnal​​ info/keywords: Machine learning and​​​‌ statistics, Machine learning, Data‌ science

Budget: 30k€ (Inria)‌​‌

This associate team project​​ seeks to advance our​​​‌ understanding of statistical machine‌ learning theory by deriving‌​‌ theoretical guarantees for model​​ performance, known as PAC​​​‌ (Probably Approximately Correct) guarantees.‌ These PAC guarantees bound‌​‌ a notion of quality​​ for the model by​​​‌ a term named complexity‌ measure to estimate the‌​‌ quality of the model​​ in practice. In order​​​‌ to obtain new complexity‌ measures, the primary objective‌​‌ is to develop a​​ novel theory of PAC​​​‌ guarantees that is distinct‌ from existing uniform-convergence-based and‌​‌ PAC-Bayesian bounds. This theory​​ will specifically upper-bound the​​​‌ generalization gap, a key‌ notion of model quality.‌​‌ During the reporting year,​​ the project enabled the​​​‌ funding of two research‌ visits (one by Paul‌​‌ Viallard and one by​​ Romaric Gaudel) and provided​​​‌ partial financial support for‌ the research visit of‌​‌ Benjamin Leblanc from Université​​ Laval.

10.1.2 STIC/MATH/CLIMAT AmSud​​​‌ projects

Projet STIC AmSud-GIMMD‌

Participants: Simon Malinowski.‌​‌

  • Title: Graph-based Analysis and​​ Understanding of Image, Video​​​‌ and Multimedia Data
  • Partner‌ Institution(s):
    • PUC MINAS, Brésil‌​‌
    • UNICAMP, Brésil
    • Universidade de​​ la Republica, Uruguay
    • Université​​​‌ Gustave Eiffel, France
  • Date/Duration:‌
    from January 2024 to‌​‌ December 2025
  • Additionnal info/keywords:​​
    Main challenges adressed:
    • Graph-based​​​‌ image and video segmentation‌
    • hierarchical feature extraction for‌​‌ data classification
    • temporal graph​​ processing and classification
    • graph-based​​​‌ image and video inpainting‌

10.2 International research visitors‌​‌

10.2.1 Visits of international​​ scientists

Other international visits​​​‌ to the team
Benjamin‌ Leblanc
  • Status
    PhD
  • Institution‌​‌ of origin:
    Université Laval​​
  • Country:
    Québec, Canada
  • Dates:​​​‌
    2 weeks in November‌ 2025
  • Context of the‌​‌ visit:
    Joint work with​​ Paul Viallard on PAC-Bayes​​​‌ and fairness
  • Mobility program/type‌ of mobility:
    Associate team‌​‌ PACTOL

10.2.2 Visits to​​ international teams

Research stays​​​‌ abroad
Dimitri Lerévérend
  • Visited‌ institution:
    EPFL
  • Country:
    Switzerland‌​‌
  • Dates:
    04/05/25 - 31/07/25​​
  • Context of the visit:​​​‌
    Start a new research‌ project with the Team‌​‌ SACS at EPFL: design,​​ theoretically analyze, and test​​​‌ a distributed learning algorithm‌ that transmits only a‌​‌ subset of its model​​ to each neighbor.
  • Mobility​​​‌ program/type of mobility:
    research‌ stay partially funded by‌​‌ Aide à la mobilité​​ internationale sortante des doctorants​​​‌ 2025 du Collège doctoral‌ de Bretagne (2.8 k€)‌​‌
Simon Malinowski
  • Visited institution:​​
    PUC MINAS
  • Country:
    Brazil​​​‌
  • Dates:
    11/02/25 - 27/05/25‌
  • Context of the visit:‌​‌
    Supervision of Carolina Jeronimo​​ and research visit, both​​​‌ in the context of‌ the Stic-Amsud GIMMD project.‌​‌
  • Mobility program/type of mobility:​​
    Research stay
Paul Viallard​​​‌ and Romaric Gaudel
  • Visited‌ institution:
    Université Laval
  • Country:‌​‌
    Québec, Canada
  • Dates:
    October​​ 2025
  • Context of the​​​‌ visit:
    Kickoff of the‌ associate team PACTOL.
  • Mobility‌​‌ program/type of mobility:
    Associate​​ team PACTOL

10.3 National​​​‌ initiatives

  • DGA-AID : Local‌ search for multi-armed bandit‌​‌ problems - Inria

    Participants:​​ Romaric Gaudel, Elisa​​​‌ Fromont, Paul Viallard‌, Aurélien Delage.‌​‌

    Budget: 130k€ (Inria)

    This​​ project aims at proposing​​​‌ multi-armed bandit algorithms dedicated‌ to combinatorial problems which‌​‌ can be solved through​​​‌ local search. It is​ funding by through a​‌ collaboration between Inria and​​ DGA-AID to foster reasearch​​​‌ subjects which interest either​ the army or the​‌ industry. The fund mainly​​ covers a 2-years postdoc​​​‌ position.

  • PEPR IA ADAPTING​ - Univ. Rennes (2024-2028)​‌

    Participants: Elisa Fromont,​​ Nouha Karaouli, Noam​​​‌ Bires, Loane Portier​, Simon Malinowski,​‌ Julianne Guerbette.

    Budget:​​ 3×(14,5k€ +​​​‌ PhD Salary)

    AdaptING explores​ new models, computing paradigms​‌ (i.e., beyond the Von​​ Neumann architecture), hybrid architectures​​​‌ (i.e., beyond MPSoC –​ System-on-Chip), and emerging technologies​‌ through various initiatives aimed​​ at making AI more​​​‌ efficient, sustainable, and trustworthy.​ While the project encompasses​‌ hardware advancements, our contributions​​ in LACODAM will focus​​​‌ on the algorithmic level.​ In particular, we will​‌ design new resource-efficient incremental​​ learning algorithms that can​​​‌ run on embedded systems​ with their associated resource​‌ and privacy constraints. We​​ will also investigate post-hoc​​​‌ explanation methods for federated​ learning systems as a​‌ way to monitor the​​ trustworthiness of such systems.​​​‌ Federated learning will often​ be at the center​‌ of the project as​​ a practical learning paradigm​​​‌ suited for embedded systems.​

    We currently supervise three​‌ PhD students funded by​​ the PEPR IA ADAPTING.​​​‌

  • ANR DATES - Univ.​ Rennes (2025-2029)

    Participants: Romain​‌ Tavenard, Romaric Gaudel​​, Elisa Fromont.​​​‌

    Budget: 238k€

    DATeS focuses​ on developing data-efficient machine​‌ learning methods for time-dependent​​ data that can generalize​​​‌ across varying conditions, environments,​ or application domains. Its​‌ application context lies in​​ real-world settings where temporal​​​‌ data are continuously collected—such​ as industrial systems, monitoring​‌ infrastructures, or complex cyber-physical​​ systems—but where annotated data​​​‌ are scarce or heterogeneous.​ The project addresses the​‌ challenge of distribution shifts​​ and domain changes by​​​‌ designing learning frameworks that​ can adapt knowledge learned​‌ from one context to​​ another. By combining methodological​​​‌ advances with practical use​ cases, it aims to​‌ improve the robustness, reliability,​​ and scalability of time-series–based​​​‌ decision systems. Overall, the​ project targets impactful applications​‌ where adaptive and transferable​​ temporal models can significantly​​​‌ reduce deployment costs and​ improve operational performance. DATeS​‌ is a joint PRCE​​ project with Univ. Jean​​​‌ Monnet (St Etienne) and​ ERICSSON R&D.

  • P16 -​‌ Inria (2025-2026)

    Participants: Romain​​ Tavenard.

    Budget: Engineer​​​‌ Salary

    The tslearn library​ that is developped in​‌ the team is backed​​ by a P16 Inria​​​‌ project through the funding​ of the engineer contract​‌ of Guillaume Charavel.

  • AEx​​ HYPE: HYPErparameter-Free Optimization Algorithms​​​‌ by Online Self-Tuning -​ Inria (2025-2028)

    Participants: Paul​‌ Viallard, Romaric Gaudel​​.

    Budget: 146k€ (Inria)​​​‌

    This project lies at​ the intersection of statistical​‌ learning theory and mathematical​​ optimization, both central topics​​​‌ in machine learning. Indeed,​ optimization algorithms are the​‌ backbone of machine learning​​ methods, enabling us to​​​‌ automatically find a model​ (i.e. a mathematical function)​‌ from data to perform​​ a desired task. However,​​​‌ running these optimization algorithms​ requires setting certain hyperparameters​‌ that influence their execution,​​ and identifying optimal values​​​‌ for them can be​ time-consuming. Therefore, the goal​‌ of this project is​​ to develop novel optimization​​ algorithms capable of adaptively​​​‌ tuning all their hyperparameters‌ during execution. The funding‌​‌ provides support for a​​ three-year PhD position.

10.4​​​‌ Regional initiatives

  • AIS fund‌ for 3D-printing time prediction‌​‌

    Participants: Romaric Gaudel.​​

    Budget: 25k€ (Rennes Métropole:​​​‌ Allocation d'Insatallation Scientifique)

    This‌ fund pays for a‌​‌ GPU card used for​​ research on improving 3D​​​‌ printing. The 3D printing‌ research axis emerged within‌​‌ the IRISA laboratory in​​ 2021, led by Damien​​​‌ Hardy and Fabrice Lamarche,‌ and is still in‌​‌ the process of consolidation.​​ As part of this​​​‌ emerging research axis, Damien‌ Hardy, Romaric Gaudel ,‌​‌ and Niels Cobat work​​ at optimizing G-code using​​​‌ AI methods, in particular‌ neural networks for sequence‌​‌ modeling, and this research​​ track benefits from the​​​‌ funded GPU.

    Romaric AIS‌

11 Dissemination

11.1 Promoting‌​‌ scientific activities

11.1.1 Scientific​​ events: organisation

General chair,​​​‌ scientific chair

11.1.2 Scientific events:​​​‌ selection

Member of the‌ conference program committees

11.1.3​​​‌ Journal

Reviewer - reviewing‌ activities

11.1.4 Invited talks​​​‌

  • Paul Viallard presented a‌ tutorial entitled “How to‌​‌ Make Use of Learning​​ Theory to Learn Efficient​​​‌ ML Models: From PAC-Bayesian‌ Generalization Bounds to (Self-Bounding)‌​‌ Learning Algorithms” with Emilie​​ Morvant (University Jean Monnet​​​‌ of Saint-Etienne) at the‌ COLT'25 (A*) conference.
  • Paul‌​‌ Viallard gave a seminar​​ at Université Laval, Québec,​​​‌ Canada.
  • Mathieu Lefort gave‌ a seminar at ISIR,‌​‌ Paris.
  • Romain Tavenard gave​​ a seminar at Withings,​​​‌ Paris.

11.1.5 Leadership within‌ the scientific community

  • Paul‌​‌ Viallard served as a​​ representative of the SequoIA​​​‌ AI cluster at Mila‌ for the first edition‌​‌ of the Franco-Canadian Dialogue​​ on Artificial Intelligence, jointly​​​‌ organized by Inria, CIFAR‌, and Mila.‌​‌
  • Elisa Fromont is a​​ member of the board​​​‌ of GDR RADIA.‌

11.1.6 Scientific expertise

  • Patrick‌​‌ Bouthemy was head of​​ the HCERES committee that​​​‌ evaluated the LIRIS (Laboratoire‌ d'InfoRmatique en Image et‌​‌ Systèmes d'information), is member​​ of the Selection and​​​‌ Validation Committee of the‌ Images & Réseaux competitivity‌​‌ cluster.
  • Romaric Gaudel was​​ member of the HCERES​​​‌ committee that evaluated IRIT‌ (Institut de Recherche en‌​‌ Informatique de Toulouse).
  • Romaric​​ Gaudel was reviewer for​​​‌ the ANR agency (review‌ of one final project)‌​‌
  • Romaric Gaudel was member​​ of the PhD-award commity​​​‌ of SSFAM association.
  • Romaric‌ Gaudel was member of‌​‌ the PhD-fund commity of​​ cluster-IA PostGenAI@Paris.
  • Romaric Gaudel​​​‌ was member of jury‌ for assistant professor position‌​‌ at univ. Paris Dauphine,​​ AgroParisTech (Paris), Ecole Centrale​​​‌ Mediterannée (Marseille).
  • Elisa Fromont‌ is a member of‌​‌ an OECD Network of​​​‌ Experts on AI “Expert​ Group on AI Risk​‌ & Accountability”
  • Elisa Fromont​​ was president of the​​​‌ PhD award committee of​ AFRIF (french society in​‌ Pattern Reconition) and was​​ a member of the​​​‌ PhD award committee of​ AFIA (french society in​‌ Artificial Intelligence).
  • Elisa Fromont​​ is a member of​​​‌ the scientific council of​ the MathNum dept of​‌ Inrae (3 days of​​ meeting and scientific evaluations​​​‌ every years)
  • Elisa Fromont​ was a member of​‌ the scientific council of​​ the SSFAM (french society​​​‌ in Machine Learning).
  • Elisa​ Fromont was head of​‌ the D7 Data and​​ Knowledge Management department at​​​‌ IRISA until June 2025​ (work: 1/2 day per​‌ month + HCERES eval).​​ Now Romain Tavenard is​​​‌ the new head of​ the department.
  • Elisa Fromont​‌ was president of the​​ PhD award committee of​​​‌ AFRIF (french society in​ Pattern Reconition) and was​‌ a member of the​​ PhD award committee of​​​‌ AFIA (french society in​ Artificial Intelligence).

11.1.7 Research​‌ administration

  • Patrick Bouthemy serves​​ as Research Integrity Officer​​​‌ for Inria (since July​ 2025), is member of​‌ the executive board of​​ Excellence Lab CominLabs, is​​​‌ member of the steering​ board of the NeurInfo​‌ platform.
  • Elisa Fromont is​​ co-head of the gender​​​‌ equality committee at IRISA​ and gender equality liaison​‌ for the CNRS.
  • Romaric​​ Gaudel is elected member​​​‌ of the board of​ the laboratory IRISA.

11.2​‌ Teaching - Supervision -​​ Juries - Educational and​​​‌ pedagogical outreach

11.2.1 Teaching​

  • Elisa Fromont is Professor​‌ at University of Rennes.​​ She taught 96h in​​​‌ 2024-2025 mainly at Master​ level. She is responsible​‌ for the AI Master​​ of the University of​​​‌ Rennes.
  • Romain Tavenard is​ Professor at University of​‌ Rennes 2. He taught​​ 200h in 2024-2025 mainly​​​‌ in the MIASH program.​ He is responsible for​‌ the Master of Statistics​​ of UR2.
  • Romaric Gaudel​​​‌ is associate professor at​ University of Rennes. He​‌ taught 200h in 2024-2025.​​ He is responsible for​​​‌ the 2nd year (M2)​ of the Master of​‌ AI. He is responsible​​ for the following courses​​​‌ at ISTIC (Univ. Rennes):​ "discover AI" (L2), "Machine​‌ Learning" (M1 SIF) Data​​ analysis and probabilistic modeling​​​‌ (M2 SIF), a course​ on recommender systems (M2​‌ Miage & IET), a​​ course on information retrieval​​​‌ and natural language processing​ (M2 Miage).
  • Simon Malinowski​‌ is associate professor at​​ University of Rennes. He​​​‌ taught taught 250h in​ 2024-2025. He is responsible​‌ for the Master EIT​​ data science and the​​​‌ 2nd year of the​ MIAGE master.
  • Mathieu Lefort​‌ is an associate professor​​ at University of Rennes​​​‌ since September 2025. He​ teaches a full service.​‌ He is responsible for​​ a course on reinforcement​​​‌ learning in the Master​ of AI.
Other major​‌ responsibilities
  • Elisa Fromont is​​ the scientific director of​​​‌ the CMA IA TIARe​ (3.5 M€ training project).​‌ She spends on average​​ 1/2 days per week​​​‌ on this project: creation​ of new training programs​‌ (e.g. AI Master), scientific​​ mediation, development of the​​​‌ continuous learning program, datalab,​ recruitments, ...
  • Elisa Fromont​‌ is elected (college A)​​ at the research council​​ ("commission recherche") of Université​​​‌ de Rennes. As such,‌ she is a member‌​‌ of the academic council​​ (CAC) of the University​​​‌ and a member of‌ the HDR Committee of‌​‌ the University. This activity​​ takes about a day​​​‌ per month.
  • Romain Tavenard‌ is elected (college A)‌​‌ at the research council​​ ("commission recherche") of Université​​​‌ de Rennes 2. As‌ such, he is a‌​‌ member of the academic​​ council (CAC) of the​​​‌ University of Rennes 2.‌

11.2.2 Supervision

Apprentice

  • Loane‌​‌ Portier (2025-2026, Univ. Rennes,​​ Elisa Fromont, Yasmine Hachani)​​​‌ "Post-hoc Explanations for Federated‌ Learning Systems"

Bachelor Students‌​‌

  • Florent Cheyron (3 months,​​ Univ. Rennes, Barbara Pilastre,​​​‌ Elisa Fromont) "Anomaly detection‌ on temporal graphs"
  • Benjamin‌​‌ Wojtecki (3 months, ENS​​ Rennes, Paul Viallard, Romaric​​​‌ Gaudel) "Parameter-free Optimization Algorithms‌ Using Contextual Bandits"

Master‌​‌ Students

  • Youcef Boulfrad (5​​ months, ENSAI, Paul Viallard,​​​‌ Romaric Gaudel) "Parameter-free Optimization‌ Algorithms Using Contextual Bandits"‌​‌
  • Léo Laffeach (5 months,​​ Univ. Rennes, Romaric Gaudel,​​​‌ Romain Tavenard) "Extension of‌ Dynamic Time Warping (DTW)‌​‌ to Continuous-Time: Theoretical Foundations​​ and Applications"

PhD Students​​​‌

  • Ahmed Abdourahmane Mahamoud (2024-2027,‌ Univ. Rennes, Simon Malinowski)‌​‌ "Simulation de personnages virtuels​​ basée sur l'imitation des​​​‌ interactions", PEPR Ensemble
  • Hind‌ Atbir (2024-2027, Univ. Jean‌​‌ Monnet, Paul Viallard) with​​ Laboratoire Hubert Curien and​​​‌ MALICE Team "Learning fair‌ and robust kernel-based models‌​‌ with generalization guarantees"
  • Nadir​​ Bendoukha (2024-2025, Univ. Lyon​​​‌ 1, Mathieu Lefort) with‌ LIRIS laboratory and Institut‌​‌ Pascal "Equivariant multimodal self-supervised​​ learning"
  • Axel Bessy (2024-2027,​​​‌ Univ. Lyon 1, Mathieu‌ Lefort) with LIRIS laboratory‌​‌ and ATOS "Multimodal fusion​​ of medical imaging for​​​‌ diagnosis support: towad a‌ general model"
  • Noam Bires‌​‌ (2025-2028, Univ. Rennes, Elisa​​ Fromont) with TARAN Team​​​‌ "Architectures matérielles d'IA fiables"‌
  • Niels Cobat (2024-2027, Univ.‌​‌ Rennes, Romaric Gaudel) with​​ PACAP Team "Analyse et​​​‌ optimisation des fichiers d'impression‌ 3D à l'aide de‌​‌ méthodes d'apprentissage automatique"
  • Télio​​ Dupuis (2025-2028, Univ. Grenoble​​​‌ Alpes, Mathieu Lefort) with‌ Univ Lyon 1 "Deep‌​‌ active self-supervised sensorimotor learning​​ of manipulable object representations"​​​‌
  • Julianne Guerbette (2025-2028, Univ.‌ Rennes, Simon Malinowski) with‌​‌ LACODAM team “Continual Neuro-symbolic​​ Learning of Knowledge Graph​​​‌ Embeddings”
  • Yasmine Hachani (2023-2026,‌ Inria, Elisa Fromont, Patrick‌​‌ Bouthemy) "Deep learning analysis​​ of the dynamics of​​​‌ early bovine embryo development‌ using video microscopy"
  • Carolina‌​‌ Jeronimo de Almeida (2022-2026,​​ Gouvernement Brésil, Simon Malinowski)​​​‌ "Analysis of time series‌ graphs"
  • Nouha Karaouli (2025-2028,‌​‌ Univ. Rennes, Elisa Fromont)​​ "Incremental Deep Learning for​​​‌ Embedded Systems"
  • Charbel Kindji‌ (2022-2025, OrangeLabs, Elisa Fromont)‌​‌ "Synthetic Tabular Data: Generation​​ and Detection"
  • Julien Lefebvre​​​‌ (2024-2027, Univ. Lyon 1,‌ Mathieu Lefort) with LIRIS‌​‌ laboratory "Continual unsupervised learning"​​
  • Dimitri Lerévérend (2023-2026, Inria,​​​‌ Romaric Gaudel) with WIDE‌ Team "Privacy Preserving Decentralized‌​‌ Through Model Fragmentation"
  • Youwan​​ Mahé (2025-2028, Siemens, Elisa​​​‌ Fromont) with EMPENN Team‌ "Anomaly detection and segmentation‌​‌ for the characterization of​​ post-stroke recovery"
  • Manuel Nkegoum​​​‌ Nzouakeu (2024-2027, ATERMES, Elisa‌ Fromont) with OBELIX Team‌​‌ "Object Detection from Few​​ Multispectral Examples"
  • Ambroise Odonnat​​​‌ (2024-2027, Huawei, Romain Tavenard)‌ with OBELIX Team "Apprentissage‌​‌ par transfert pour les​​ séries temporelles"
  • Nathan Salazar​​​‌ (2024-2027, Univ. Lyon 1,‌ Mathieu Lefort) with LIRIS‌​‌ laboratory "Towards a fundation​​​‌ model of human movements​ for analysis and synthesis​‌ of body actions and​​ expressions"
  • Paul Sevellec (2023-2026,​​​‌ Stellantis, Romaric Gaudel, Elisa​ Fromont) with LACODAM Team​‌ "Explanations of multivariate time​​ series using counterfactuals"
  • Pierre-Elliott​​​‌ Thiboud (2022-2025, Univ. Lyon​ 1, Mathieu Lefort) with​‌ Creatis laboratory and Previa​​ Medical "Structure and explanibility​​​‌ of artificial neural networks​ for health - application​‌ to sepsis prevention"
  • Erwan​​ Vincent (2022-2025, Univ Rennes,​​​‌ Simon Malinowski) "Apprentissage automatique​ pour l’analyse et la​‌ prédiction de la qualité​​ de service des transports​​​‌ de bus urbains", Thèse​ CIFRE avec Keolis Rennes​‌
  • Oussama Zaid (2025-2028, OrangeLabs,​​ Romaric Gaudel) "Convergence of​​​‌ graph and vector approaches​ to integrate machine learning​‌ predictions into network digital​​ twin simulation"

Post docs​​​‌

  • Aurélien Delage (2025-2026), Inria,​ Romaric Gaudel "Local search​‌ for multi-armed bandit problems"​​
  • Nicolas Jaquelin (2025-2027, Univ.​​​‌ Lyon 1, Mathieu Lefort)​ with Neovision "Generic augmentations​‌ for self-supervised learning"

ATER​​

  • Louis Bagot (2025-2026, Univ.​​​‌ Lyon 1, Mathieu Lefort)​ "Exploration with goal conditionned​‌ reinforcement learning"

11.2.3 Juries​​

  • Elisa Fromont was involved​​​‌ in the following PhD​ juries: Hugo Laurençon, 15/01​‌ Paris (committee member); Romain​​ Ilbert, 16/05 Paris (reviewer);​​​‌ Franck-Anaël MBiaya 12/09 Orléans​ (committee member); Ricky Walsh,​‌ 17/10 Rennes (committee member,​​ president); Charbel Kindji, 18/12​​​‌ Rennes (co-supervisor).
  • Romain Tavenard​ was involved in the​‌ following PhD juries: Theo​​ Gnassounou (Paris), Thibaut Germain​​​‌ (Paris).
  • Romaric Gaudel was​ involved in the following​‌ PhD jury: Charles-Maxime Gauriat,​​ 23/06 Toulouse (reviewer).
  • Elisa​​​‌ Fromont was involved in​ the following HDR juries:​‌ Nicolas Audebert, 20/05 Paris​​ (reviewer); Charlotte Laclau, 24/11​​​‌ Paris (reviewer).

11.2.4 Educational​ and pedagogical outreach

  • Elisa​‌ Fromont made an introduction​​ to artificial intelligence for​​​‌ Rennes city councillors.
  • Elisa​ Fromont presented her job​‌ in 5 classes within​​ the 1 scientifique, 1​​​‌ classe : chiche !​ program.
  • Romaric Gaudel presented​‌ his job in 1​​ class within the 1​​​‌ scientifique, 1 classe :​ chiche ! program.
  • Elisa​‌ Fromont presented talked about​​ AI for secondary school​​​‌ students in 3 classes.​ She was also involved​‌ in JFMI days and​​ two training days for​​​‌ teachers. She was an​ Invited expert at the​‌ West Data Festival for​​ a session on "women​​​‌ and AI" for bachelor​ students.
  • Paul Viallard gave​‌ a presentation to a​​ class at Lycée Colbert​​​‌ in Lorient, as part​ of the CMA TIARe​‌ initiative.

11.3 Popularization

11.3.1​​ Specific official responsibilities in​​​‌ science outreach structures

Elisa​ Fromont , as the​‌ scientific director of the​​ CMA TIARe initiative coordinate​​​‌ a science communicator, Elsa​ Denichou, working for the​‌ project.

11.3.2 Productions (articles,​​ videos, podcasts, serious games,​​​‌ ...)

Elisa Fromont did​ a conference (in French)​‌ at l'Espace des sciences​​ "50 d'IA, et apres​​​‌ ?", Rennes. : video​ here.

11.3.3 Participation​‌ in Live events

  • Paul​​ Viallard participated in the​​​‌ various Inria dissemination stands​ organized for the “Semaine​‌ de la Science” at​​ Champs Libres.
  • Paul Viallard​​​‌ gave a talk at​ a “Pint of Science”'​‌ event entitled “How does​​ an AI learn?”.
  • Mathieu​​​‌ Lefort participated to the​ exposition Intelligences 2.0 organised​‌ during the "Fête de​​ la science" at Lyon​​ 1 library.
  • Elisa Fromont​​​‌ participated in the following‌ events: Panellist at the‌​‌ University of Rennes EPE​​ seminar on "IAG et​​​‌ son impact sur les‌ métiers", Ouest France, Rennes;‌​‌ Opening conference (in French)​​ of the academic year​​​‌ for staff (3h) for‌ ENSCR "Acculturation à l'IA",‌​‌ PNRV Rennes; Opening conference​​ (in French) of the​​​‌ academic year for staff‌ (1h30) for the La‌​‌ Fontaine des Eaux high​​ school, "IA, de quoi​​​‌ parle-t-on ?", Dinan; Panelist‌ at l'Espace des sciences‌​‌ "IA : la révolution​​ Homme-machine", Rennes; Conference (in​​​‌ French) at Le Kiosque‌ "Introduction à l’Intelligence Artificielle‌​‌ " dans le cadre​​ de la fête de​​​‌ la science, Chantepie. Panellist‌ (in French) at Les‌​‌ 9èmes Assises départementales de​​ la Recherche et de​​​‌ l’Innovation, Saint-Brieuc.
  • Romaric Gaudel‌ was part of a‌​‌ round table "Enseignement supérieur​​ et IA", organized during​​​‌ the annual conference of‌ AIR project at Rennes.‌​‌
  • Romaric Gaudel was part​​ of a round table​​​‌ "Le devenir de la‌ programmation avec ou sans‌​‌ IA" during the day​​ "IA génératives : serveurs​​​‌ et services associés" organized‌ by Univ. Rennes.

11.3.4‌​‌ Others science outreach relevant​​ activities

Elisa Fromont co-organized​​​‌ a training day (in‌ French) for high and‌​‌ secondary school teachers on​​ "Stereotypes in Computer Science",​​​‌ Je peux pas, j'ai‌ informatique !.

12 Scientific‌​‌ production

12.1 Major publications​​

12.2 Publications​ of the year

International​‌ journals

Invited conferences

  • 14 inproceedings​​​‌E.Erwan Vincent,​ Z.Zoltan Miklos and​‌ S.Simon Malinowski.​​ Commercial speed impact factors​​​‌ identification for a public​ urban bus transport network​‌.ITSC 2025 -​​ IEEE International Conference on​​​‌ Intelligent Transportation SystemsGold​ Coast, Australia2025HAL​‌back to text

International​​ peer-reviewed conferences

Conferences without proceedings​​​‌

Reports & preprints​​​‌