An Intelligent Infrastructure as a Foundation for Modern Science
Ghosh S
Identifiers and access
- PubMed
- 40832056
- PMC
- PMC12364050
Key findings
This perspective argues that scientific infrastructure — using neuroscience as a stress test — must evolve from static, fragmented systems into a dynamic, AI-aligned ecosystem that learns and coordinates, and lays out operational guidelines, funding, and recognition changes needed to enable human-AI scientific collaboration.
Abstract
Source: pubmed
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 existing principles for data, collective benefit, and digital repositories, I recommend operational guidelines for implementing them to create this dynamic ecosystem, aiming to foster a decentralized, self-learning, and self-correcting system where humans and AI can collaborate seamlessly. Addressing the chronic underfunding of scientific infrastructure, acknowledging diverse contributions beyond publications, and coordinating global efforts are critical steps for this transformation. By prioritizing an intelligent infrastructure as a central scientific instrument for knowledge generation, we can overcome current limitations, accelerate discovery, ensure reproducibility and ethical practices, and ultimately translate neuroscientific understanding into tangible societal benefits, setting a blueprint for other scientific domains.
Topics
- open-data-standards
- ml-nlp-knowledge
Lab authors
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