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Open Data

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TopicWorld Wide

open data

Discover seminars, jobs, and research tagged with open data across World Wide.
4 curated items3 Seminars1 Position
Updated 1 day ago
4 items · open data
4 results
Position

Dr. Jim Grange, Dr. Etienne Roesch

Keele University, University of Reading, Research Data Alliance, European Open Science Cloud, UK Reproducibility Network
EU and UK institutions
Dec 5, 2025

The ReproPsy & e-ReproNim Fellowship Programmes are opportunities for early career researchers (ECRs) from EU and UK institutions to join a community dedicated to advancing open and robust data practices in Psychological and Neuroscientific research. Fellows will receive financial support to fund training to enhance skills in software and data management, participate in online events, contribute to projects such as scoping and designing training needs, writing training material, and more.

SeminarNeuroscience

Toward an open science ecosystem for neuroimaging

Russ Poldrack
Stanford
Dec 7, 2022

It is now widely accepted that openness and transparency are keys to improving the reproducibility of scientific research, but many challenges remain to adoption of these practices. I will discuss the growth of an ecosystem for open science within the field of neuroimaging, focusing on platforms for open data sharing and open source tools for reproducible data analysis. I will also discuss the role of the Brain Imaging Data Structure (BIDS), a community standard for data organization, in enabling this open science ecosystem, and will outline the scientific impacts of these resources.

SeminarNeuroscienceRecording

Sharing data from your in vivo studies

Matthew Grubb
Kings College London
Jul 27, 2022
SeminarNeuroscience

Digitization as a driving force for collaboration in neuroscience

Michael Denker
Forschungszentrum Jülich
Jun 30, 2021

Many of the collaborations we encounter in our scientific careers are centered on a common idea that can be associated with certain resources, such as a dataset, an algorithm, or a model. All partners in a collaboration need to develop a common understanding of these resources, and need to be able to access them in a simple and unambiguous manner in order to avoid incorrect conclusions especially in highly cross-disciplinary contexts. While digital computers have entered to assist scientific workflows in experiment and simulation for many decades, the high degree of heterogeneity in the field had led to a scattered landscape of highly customized, lab-internal solutions to organizing and managing the resources on a project-by-project basis. Only with the availability of modern technologies such as the semantic web, platforms for collaborative coding or the development of data standards overarching different disciplines, we have tools at our disposal to make resources increasingly more accessible, understandable, and usable. However, without overarching standardization efforts and adaptation of such technologies to the workflows and needs of individual researchers, their adoption by the neuroscience community will be impeded. From the perspective of computational neuroscience, which is inherently dependent on leveraging data and methods across the field of neuroscience for inspiration and validation, I will outline my view on past and present developments towards a more rigorous use of digital resources and how they improved collaboration, and introduce emerging initiatives to support this process in the future (e.g., EBRAINS http://ebrains.eu, NFDI-Neuro http://www.nfdi-neuro.de).