TopicNeuro

neural data analysis

4 Seminars2 ePosters1 Position

Latest

PositionNeuroscience

Joaquin

Gatsby Unit, the Sainsbury Wellcome Centre for Neural Circuits and Behaviour (SWC) and NeuroGEARS Ltd
London, UK
Jan 12, 2026

We invite applications for a Research Software Engineer (RSE) position with expertise in software development, machine learning, neural data analysis, and experimental control (ideally with the Bonsai ecosystem) to contribute to the recently funded project 'Machine Learning for Neuroscience Experimental Control'. You will contribute to the neuroscience community with advanced machine learning software for experimental control. You will be embedded in the unparalleled research environment of the Gatsby Unit, the SWC and NeuroGEARS, with opportunities to connect with top researchers and engineers.

SeminarNeuroscience

Analyzing artificial neural networks to understand the brain

Grace Lindsay
NYU
Dec 16, 2022

In the first part of this talk I will present work showing that recurrent neural networks can replicate broad behavioral patterns associated with dynamic visual object recognition in humans. An analysis of these networks shows that different types of recurrence use different strategies to solve the object recognition problem. The similarities between artificial neural networks and the brain presents another opportunity, beyond using them just as models of biological processing. In the second part of this talk, I will discuss—and solicit feedback on—a proposed research plan for testing a wide range of analysis tools frequently applied to neural data on artificial neural networks. I will present the motivation for this approach as well as the form the results could take and how this would benefit neuroscience.

SeminarNeuroscienceRecording

Parametric control of flexible timing through low-dimensional neural manifolds

Manuel Beiran
Center for Theoretical Neuroscience, Columbia University & Rajan lab, Icahn School of Medicine at Mount Sinai
Mar 9, 2022

Biological brains possess an exceptional ability to infer relevant behavioral responses to a wide range of stimuli from only a few examples. This capacity to generalize beyond the training set has been proven particularly challenging to realize in artificial systems. How neural processes enable this capacity to extrapolate to novel stimuli is a fundamental open question. A prominent but underexplored hypothesis suggests that generalization is facilitated by a low-dimensional organization of collective neural activity, yet evidence for the underlying neural mechanisms remains wanting. Combining network modeling, theory and neural data analysis, we tested this hypothesis in the framework of flexible timing tasks, which rely on the interplay between inputs and recurrent dynamics. We first trained recurrent neural networks on a set of timing tasks while minimizing the dimensionality of neural activity by imposing low-rank constraints on the connectivity, and compared the performance and generalization capabilities with networks trained without any constraint. We then examined the trained networks, characterized the dynamical mechanisms underlying the computations, and verified their predictions in neural recordings. Our key finding is that low-dimensional dynamics strongly increases the ability to extrapolate to inputs outside of the range used in training. Critically, this capacity to generalize relies on controlling the low-dimensional dynamics by a parametric contextual input. We found that this parametric control of extrapolation was based on a mechanism where tonic inputs modulate the dynamics along non-linear manifolds in activity space while preserving their geometry. Comparisons with neural recordings in the dorsomedial frontal cortex of macaque monkeys performing flexible timing tasks confirmed the geometric and dynamical signatures of this mechanism. Altogether, our results tie together a number of previous experimental findings and suggest that the low-dimensional organization of neural dynamics plays a central role in generalizable behaviors.

ePosterNeuroscience

Neuroformer: A Transformer Framework for Multimodal Neural Data Analysis

Antonis Antoniades, Yiyi Yu, Spencer LaVere Smith

COSYNE 2023

ePosterNeuroscience

Meta-Dynamical State Space Models for Integrative Neural Data Analysis

Ayesha Vermani, Josue Nassar, Hyungju Jeon, Matthew Dowling, Il Memming Park

COSYNE 2025

neural data analysis coverage

7 items

Seminar4
ePoster2
Position1
Domain spotlight

Explore how neural data analysis research is advancing inside Neuro.

Visit domain