HUMAN & MACHINE INTELLIGENCE

RESEARCH

NeuralSet: A High-Performing Python Package for Neuro-AI

May 12, 2026

Abstract

Artificial intelligence (AI) is increasingly central to understanding how the brain processes information. However, the integration of neuroscience and modern AI is bottlenecked by a fragmented software ecosystem. Current tools are siloed by recording modality and optimized for small-scale, in-memory workflows, limiting the use of massive, naturalistic datasets. Here, we introduce NeuralSet, a Python framework that efficiently unifies the processing of diverse neural recordings (including fMRI, M/EEG, and spikes) and complex experimental stimuli (such as text, audio, and video). By decoupling experimental metadata from lazy, memory-efficient data extraction, NeuralSet harmonizes standard neuroscientific preprocessing pipelines with pretrained deep learning embeddings. This approach provides a single PyTorch-ready interface that scales seamlessly from local prototyping to high-performance cluster execution. By eliminating manual data wrangling and ensuring full computational provenance, NeuralSet establishes a scalable, unified infrastructure for the next generation of neuro-AI research.

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AUTHORS

Written by

Jean Remi King

Corentin Bel

Linnea Evanson

Julien Gadonneix

Sophia Houhamdi

Jarod Levy

Josephine Raugel

Andrea Santos Revilla

Mingfang (Lucy) Zhang

Julie Bonnaire

Charlotte Caucheteux

Alexandre Défossez

Théo Desbordes

Pablo Diego-Simón

Shubh Khanna

Juliette Millet

Pierre Orhan

Saarang Panchavati

Antoine Ratouchniak

Alexis Thual

Teon Brooks

Katelyn Begany

Yohann Benchetrit

Marlene Careil

Hubert Jacob Banville

Stéphane d'Ascoli

Simon Dahan

Jérémy Rapin

Publisher

arXiv

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