An Intelligent Infrastructure as a Foundation for Modern Science
Satrajit S. Ghosh

TL;DR
This paper advocates for transforming scientific infrastructure into a dynamic, AI-integrated ecosystem to enhance collaboration, reproducibility, and efficiency in scientific research, exemplified through neuroscience.
Contribution
It proposes a paradigm shift towards intelligent, self-learning scientific infrastructure, providing operational guidelines and emphasizing global coordination and ethical practices.
Findings
Neuroscience data growth underscores need for adaptive infrastructure.
AI-aligned ecosystems can improve reproducibility and collaboration.
Guidelines facilitate implementation of dynamic scientific infrastructure.
Abstract
Infrastructure shapes societies and scientific discovery. Traditional scientific infrastructure, often static and fragmented, leads to issues like data silos, lack of interoperability and reproducibility, and unsustainable short-lived solutions. Our current technical inability and social reticence to connect and coordinate scientific research and engineering leads to inefficiencies and impedes progress. With AI technologies changing how we interact with the world around us, there is an opportunity to transform scientific processes. Neuroscience's exponential growth of multimodal and multiscale data, and urgent clinical relevance demand an infrastructure itself learns, coordinates, and improves. Using neuroscience as a stress test, this perspective argues for a paradigm shift: infrastructure must evolve into a dynamic, AI-aligned ecosystem to accelerate science. Building on several…
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