Suliann Ben Hamed
benhamedlab.bsky.social
Suliann Ben Hamed
@benhamedlab.bsky.social
Neuroscience research director, passionate about the brain and mind

🌐 benhamedlab.org
📍 Bluesky: @benhamedlab.bsky.social
✖️ X: https://x.com/BenHamedLab
💼 LinkedIn: linkedin.com/in/suliannbenhamed
🐘 Mastodon: https://mastodon.social/@benhamedlab
On the fundamental responsibilities of intellectuals in the 21st centuray:
academic.oup.com/bra...
Unforetunately, the most recent international events seem to suggest a disconnection between modern societies and their intellectuals.
On the responsibilities of intellectuals and the rise of bullshit jobs in universities
You may never have considered yourself to be one. Why would you? But if you’re reading this, there is more than a likelihood that you are one. If you’re a
academic.oup.com
March 7, 2025 at 10:22 AM
Reposted by Suliann Ben Hamed
In pyramidal neuron we trust 🧠💡
New research shows that dendritic #ANNs inspired by #brain connectivity—reduce overfitting, use fewer parameters, and outperform traditional ANNs in image classification!
Is this going towards #AI or towards cognitive #neuroscience? 🔥👇
www.nature.com/articles/s41...
January 30, 2025 at 6:05 PM
The architecture of the human default mode network explored through cytoarchitecture, wiring and signal flow: www.nature.com/artic...
The architecture of the human default mode network explored through cytoarchitecture, wiring and signal flow
Nature Neuroscience - The default mode network (DMN) is implicated in cognition and behavior. Here, the authors show that the DMN is cytoarchitecturally heterogeneous, it contains regions receptive...
www.nature.com
January 30, 2025 at 6:22 PM
🚀 Exciting news: FOCUS is moving forward with fully individualized neurofeedback protocols! I’m honored to announce that I’ve been awarded an #ERCPoC grant by @ERC_research and @european-research-council, hosted by @CNRSbiologie @CNRS_dr07 www.cnrs.fr/en/updat...

ERC Proof of Concept grants - final round 2024 announced | CNRS
Five of the 10 French grant-winners in the European Research Council's (ERC) 'Proof of Concept' call for 2024 come from the CNRS.
www.cnrs.fr
January 27, 2025 at 12:11 PM
Reposted by Suliann Ben Hamed
Why do diverse ANNs resemble brain representations? Check out our new paper with Colton Casto, @nogazs.bsky.social , Colin Conwell, Mark Richardson, & @evfedorenko.bsky.social on “Universality of representation in biological and artificial neural networks.” 🧠🤖
tinyurl.com/yckndmjt
Universality of representation in biological and artificial neural networks
Many artificial neural networks (ANNs) trained with ecologically plausible objectives on naturalistic data align with behavior and neural representations in biological systems. Here, we show that this...
tinyurl.com
December 27, 2024 at 8:14 PM
Playing around with PyTorch for neuroscience made easy : NeuroTorch: A Python library for neuroscience-oriented machine learning biorxiv.org/cgi/cont... #biorxiv_neursci #neuroscience #neuroAI
NeuroTorch: A Python library for neuroscience-oriented machine learning
Machine learning (ML) has become a powerful tool for data analysis, leading to significant advances in neuroscience research. While ML algorithms are proficient in general-purpose tasks, their highly technical nature often hinders their compatibility with the observed biological principles and constraints in the brain, thereby limiting their suitability for neuroscience applications. In this work, we introduce NeuroTorch, a comprehensive ML pipeline specifically designed to assist neuroscientists in leveraging ML techniques using biologically inspired neural network models. NeuroTorch enables the training of recurrent neural networks equipped with either spiking or firing-rate dynamics, incorporating additional biological constraints such as Dale's law and synaptic excitatory-inhibitory balance. The pipeline offers various learning methods, including backpropagation through time and eligibility trace forward propagation, aiming to allow neuroscientists to effectively employ ML approaches. To evaluate the performance of NeuroTorch, we conducted experiments on well-established public datasets for classification tasks, namely MNIST, Fashion-MNIST, and Heidelberg. Notably, NeuroTorch achieved accuracies that replicated the results obtained using the Norse and SpyTorch packages. Additionally, we tested NeuroTorch on real neuronal activity data obtained through volumetric calcium imaging in larval zebrafish. On training sets representing 9.3 minutes of activity under darkflash stimuli from 522 neurons, the mean proportion of variance explained for the spiking and firing-rate neural network models, subject to Dale's law, exceeded 0.97 and 0.96, respectively. Our analysis of networks trained on these datasets indicates that both Dale's law and spiking dynamics have a beneficial impact on the resilience of network models when subjected to connection ablations. NeuroTorch provides an accessible and well-performing tool for neuroscientists, granting them access to state-of-the-art ML models used in the field without requiring in-depth expertise in computer science. ### Competing Interest Statement The authors have declared no competing interest.
biorxiv.org
December 30, 2024 at 3:18 PM
Reposted by Suliann Ben Hamed
NeuroTorch: A Python library for neuroscience-oriented machine learning https://www.biorxiv.org/content/10.1101/2024.12.29.630683v1
December 30, 2024 at 2:15 PM
Reposted by Suliann Ben Hamed
Scientific Reports

Neuronal travelling waves explain rotational dynamics in experimental datasets and modelling

www.nature.com/articles/s41...
Neuronal travelling waves explain rotational dynamics in experimental datasets and modelling - Scientific Reports
Scientific Reports - Neuronal travelling waves explain rotational dynamics in experimental datasets and modelling
www.nature.com
December 24, 2024 at 11:44 AM
Reposted by Suliann Ben Hamed
PNAS

Bayesian inference in ring attractor networks

www.pnas.org/doi/10.1073/...
Bayesian inference in ring attractor networks | PNAS
Working memories are thought to be held in attractor networks in the brain. These attractors should keep track of the uncertainty associated with e...
www.pnas.org
December 30, 2024 at 12:16 PM
New preprint by PhD students Genevieve Moat & Maxime Gaudet-Trafit, collaborator Jaume Bacardit under the efficient coordination of Colline Poirier #neuroscience #neuroAI: MacqD for automated detection of socially housed macaques
https://www.biorxiv.org/content/10.1101/2024.12.23.629644v1.abstract
buff.ly
December 30, 2024 at 8:44 AM