Pennsieve: A Collaborative Platform for Translational Neuroscience and Beyond
Zack Goldblum, Zhongchuan Xu, Haoer Shi, Patryk Orzechowski, Jamaal, Spence, Kathryn A Davis, Brian Litt, Nishant Sinha, and Joost Wagenaar

TL;DR
Pennsieve is an open-source, cloud-based platform that enhances neuroscientific data management, collaboration, and analysis, supporting complex datasets and promoting FAIR principles to advance research.
Contribution
It introduces a modular, extensible platform tailored for multidisciplinary neuroscience data management and collaborative research workflows.
Findings
Stores over 125 TB of scientific data, with 35 TB publicly available.
Supports more than 80 research groups worldwide.
Enables integration of complex multimodal datasets with advanced querying tools.
Abstract
The exponential growth of neuroscientific data necessitates platforms that facilitate data management and multidisciplinary collaboration. In this paper, we introduce Pennsieve - an open-source, cloud-based scientific data management platform built to meet these needs. Pennsieve supports complex multimodal datasets and provides tools for data visualization and analyses. It takes a comprehensive approach to data integration, enabling researchers to define custom metadata schemas and utilize advanced tools to filter and query their data. Pennsieve's modular architecture allows external applications to extend its capabilities, and collaborative workspaces with peer-reviewed data publishing mechanisms promote high-quality datasets optimized for downstream analysis, both in the cloud and on-premises. Pennsieve forms the core for major neuroscience research programs including NIH SPARC…
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Taxonomy
TopicsScience, Research, and Medicine · Biomedical Text Mining and Ontologies · Genetics, Bioinformatics, and Biomedical Research
