Portrait de Eilif Benjamin Muller

Eilif Benjamin Muller

Membre académique associé
Chaire en IA Canada-CIFAR
Professeur adjoint, Université de Montréal, Département de neurosciences
Chercheur principal, Laboratoire des architectures de l’apprentissage biologique (ABL-Lab), CHU Ste-Justine - Research Center
Sujets de recherche
Apprentissage de représentations
Apprentissage en ligne
Apprentissage profond
Modèles génératifs
Neurosciences computationnelles
Réseaux de neurones récurrents
Systèmes dynamiques
Vision par ordinateur

Biographie

Eilif B. Muller est un neuroscientifique et un chercheur en intelligence artificielle. Il utilise des approches informatiques et mathématiques pour étudier les mécanismes biologiques et algorithmiques de l'apprentissage dans le néocortex des mammifères. Il a obtenu un baccalauréat (2001) en physique mathématique de l'Université Simon Fraser, ainsi qu’une maîtrise (2003) et un doctorat en sciences naturelles (2007) en physique avec une spécialisation en neurosciences computationnelles de l'Université Ruprecht Karl de Heidelberg, l’université la plus ancienne d'Allemagne. Eilif B. Muller a entrepris son travail postdoctoral (2007-2010) au Laboratoire de neurosciences computationnelles de l’EPFL (Suisse) avec le professeur Wulfram Gerstner, en se concentrant sur la dynamique des réseaux, la technologie de simulation et la plasticité.

Par la suite, il a dirigé (2011-2019) l'équipe de recherche du Blue Brain Project, à l'EPFL, qui a ouvert la voie aux neurosciences in silico, une simulation inédite des tissus cérébraux basée sur les données. En 2015, Eilif B. Muller et ses collègues ont publié l’étude phare « Reconstruction and Simulation of Neocortical Microcircuitry » dans la revue Cell, décrivant « la simulation la plus complète d'un morceau de matière cérébrale excitable à ce jour », selon Christof Koch (président et directeur scientifique de l'Allen Institute for Brain Science). Cette approche lui a permis ainsi qu’à son équipe de contribuer de manière significative à la compréhension de la structure, de la dynamique et de la plasticité du néocortex, ce qui a donné lieu à des publications dans des revues de premier plan telles que Nature Neuroscience, Nature Communications et Cerebral Cortex.

En 2019, Eilif B. Muller a déménagé à Montréal, attiré par la communauté de recherche en neuro-IA florissante. Il y a d’abord été chercheur principal chez Element AI, avant sa nomination à l'Université de Montréal et au CHU Sainte-Justine, où il a lancé le Laboratoire des architectures d’apprentissage biologique (ABL-Lab).

Étudiants actuels

Doctorat - McGill
Co-superviseur⋅e :
Doctorat - UdeM
Co-superviseur⋅e :
Doctorat - UdeM
Superviseur⋅e principal⋅e :
Maîtrise recherche - UdeM

Publications

Top-down feedback matters: Functional impact of brainlike connectivity motifs on audiovisual integration
Long-term plasticity induces sparse and specific synaptic changes in a biophysically detailed cortical model
András Ecker
Daniela Egas Santander
Marwan Abdellah
Jorge Blanco Alonso
Sirio Bolaños-Puchet
Giuseppe Chindemi
James B. Isbister
James King
Pramod Kumbhar
Ioannis Magkanaris
Michael W. Reimann
Community-based Reconstruction and Simulation of a Full-scale Model of Region CA1 of Rat Hippocampus
Armando Romani
Alberto Antonietti
Davide Bella
Julian Budd
Elisabetta Giacalone
Kerem Kurban
Sára Sáray
Marwan Abdellah
Alexis Arnaudon
Elvis Boci
Cristina Colangelo
Jean-Denis Courcol
Thomas Delemontex
András Ecker
Joanne Falck
Cyrille Favreau
Michael Gevaert
Juan B. Hernando
Joni Herttuainen
Genrich Ivaska … (voir 28 de plus)
Lida Kanari
Anna-Kristin Kaufmann
James King
Pramod Kumbhar
Sigrun Lange
Huanxiang Lu
Carmen Alina Lupascu
Rosanna Migliore
Fabien Petitjean
Judit Planas
Pranav Rai
Srikanth Ramaswamy
Michael W. Reimann
Juan Luis Riquelme
Nadir Román Guerrero
Ying Shi
Vishal Sood
Mohameth François Sy
Werner Van Geit
Liesbeth Vanherpe
Tamás F. Freund
Audrey Mercer
Felix Schürmann
Alex M. Thomson
Michele Migliore
Szabolcs Káli
Henry Markram
The CA1 region of the hippocampus is one of the most studied regions of the rodent brain, thought to play an important role in cognitive fun… (voir plus)ctions such as memory and spatial navigation. Despite a wealth of experimental data on its structure and function, it has been challenging to reconcile information obtained from diverse experimental approaches. To address this challenge, we present a community-driven, full-scale in silico model of the rat CA1 that integrates a broad range of experimental data, from synapse to network, including the reconstruction of its principal afferents, the Schaffer collaterals, and a model of the effects that acetylcholine has on the system. We tested and validated each model component and the final network model, and made input data, assumptions, and strategies explicit and transparent. The unique flexibility of the model allows scientists to address a range of scientific questions. In this article, we describe the methods used to set up simulations that reproduce and extend in vitro and in vivo experiments. Among several applications in the article, we focus on theta rhythm, a prominent hippocampal oscillation associated with various behavioral correlates and use our computer model to reproduce and reconcile experimental findings. Finally, we make data, code and model available through the hippocampushub.eu portal, which also provides an extensive set of analyses of the model and a user-friendly interface to facilitate adoption and usage. This neuroscience community-driven model represents a valuable tool for integrating diverse experimental data and provides a foundation for further research into the complex workings of the hippocampal CA1 region.
Modeling and Simulation of Neocortical Micro- and Mesocircuitry. Part II: Physiology and Experimentation
James B. Isbister
András Ecker
Christoph Pokorny
Sirio Bolaños-Puchet
Daniela Egas Santander
Alexis Arnaudon
Omar Awile
Natali Barros-Zulaica
Jorge Blanco Alonso
Elvis Boci
Giuseppe Chindemi
Jean-Denis Courcol
Tanguy Damart
Thomas Delemontex
Alexander Dietz
Gianluca Ficarelli
Michael Gevaert
Joni Herttuainen
Genrich Ivaska
Weina Ji … (voir 22 de plus)
Daniel Keller
James King
Pramod Kumbhar
Samuel Lapere
Polina Litvak
Darshan Mandge
Fernando Pereira
Judit Planas
Rajnish Ranjan
Maria Reva
Armando Romani
Christian Rössert
Felix Schürmann
Vishal Sood
Aleksandra Teska
Anil Tuncel
Werner Van Geit
Matthias Wolf
Henry Markram
Srikanth Ramaswamy
Michael W. Reimann
Cortical dynamics underlie many cognitive processes and emerge from complex multi-scale interactions, which can be studied in large-scale, b… (voir plus)iophysically detailed models. We present a model comprising eight somatosensory cortex subregions, 4.2 million morpho-logical and electrically-detailed neurons, and 13.2 billion local and long-range synapses. In silico tools enabled reproduction and extension of complex laboratory experiments under a single parameterization, providing strong validation. We reproduced millisecond-precise stimulus-responses, stimulus-encoding under targeted optogenetic activation, and selective propagation of stimulus-evoked activity to downstream areas. The model’s di-rect correspondence with biology generated predictions about how multiscale organisation shapes activity. We predict that structural and functional recurrency increases towards deeper layers and that stronger innervation by long-range connectivity increases local correlated activity. The model also predicts the role of inhibitory interneuron types in stimulus encoding, and of different layers in driving layer 2/3 stimulus responses. Simu-slation tools and a large subvolume of the model are made available.
Predicting Infectiousness for Proactive Contact Tracing
Prateek Gupta
Nasim Rahaman
Meng Qu
Victor Schmidt
Pierre-Luc St-Charles
Hannah Alsdurf
gaetan caron
satya ortiz gagne
Bernhard Schölkopf … (voir 3 de plus)
Abhinav Sharma
Andrew Robert Williams
The COVID-19 pandemic has spread rapidly worldwide, overwhelming manual contact tracing in many countries and resulting in widespread lockdo… (voir plus)wns for emergency containment. Large-scale digital contact tracing (DCT) has emerged as a potential solution to resume economic and social activity while minimizing spread of the virus. Various DCT methods have been proposed, each making trade-offs between privacy, mobility restrictions, and public health. The most common approach, binary contact tracing (BCT), models infection as a binary event, informed only by an individual's test results, with corresponding binary recommendations that either all or none of the individual's contacts quarantine. BCT ignores the inherent uncertainty in contacts and the infection process, which could be used to tailor messaging to high-risk individuals, and prompt proactive testing or earlier warnings. It also does not make use of observations such as symptoms or pre-existing medical conditions, which could be used to make more accurate infectiousness predictions. In this paper, we use a recently-proposed COVID-19 epidemiological simulator to develop and test methods that can be deployed to a smartphone to locally and proactively predict an individual's infectiousness (risk of infecting others) based on their contact history and other information, while respecting strong privacy constraints. Predictions are used to provide personalized recommendations to the individual via an app, as well as to send anonymized messages to the individual's contacts, who use this information to better predict their own infectiousness, an approach we call proactive contact tracing (PCT). We find a deep-learning based PCT method which improves over BCT for equivalent average mobility, suggesting PCT could help in safe re-opening and second-wave prevention.
COVI-AgentSim: an Agent-based Model for Evaluating Methods of Digital Contact Tracing
Prateek Gupta
Nasim Rahaman
Hannah Alsdurf
Abhinav Sharma
Nanor Minoyan
Soren Harnois-Leblanc
Victor Schmidt
Pierre-Luc St-Charles
Andrew Robert Williams
Akshay Patel
Meng Qu
gaetan caron
satya ortiz gagne
Marc-Andre Rousseau
Yang Zhang
Bernhard Schölkopf
Joanna Merckx