论文标题

重新解释和长期保存数据和代码

Reinterpretation and Long-Term Preservation of Data and Code

论文作者

Bailey, Stephen, Cranmer, K. S., Feickert, Matthew, Fine, Rob, Kraml, Sabine, Lange, Clemens

论文摘要

仔细保存实验数据,仿真,分析产品和理论工作,通过实现新的分析并重新解释结果,可以最大程度地提高其长期科学投资回报。某些高价值科学目标所需的主要基础设施和技术发展不符合大型实验的运营计划的范围,并且通常无法有效地资助。我们项目的科学目标越来越多地需要涵盖各个实验和调查之间以及理论和实验社区之间的界限。此外,这项工作的计算要求和技术复杂性正在增加。结果,资助机构必须创建计划,这些计划可以在各个主要实验的操作的背景下将大量资源投入到这些努力上,包括较小的实验和理论/仿真工作。在这款雪人2021计算前沿局部群体报告(COMPF7:重新解释和对数据和代码的长期保存)中,我们总结了该领域的当前状态,并为未来提出建议。

Careful preservation of experimental data, simulations, analysis products, and theoretical work maximizes their long-term scientific return on investment by enabling new analyses and reinterpretation of the results in the future. Key infrastructure and technical developments needed for some high-value science targets are not in scope for the operations program of the large experiments and are often not effectively funded. Increasingly, the science goals of our projects require contributions that span the boundaries between individual experiments and surveys, and between the theoretical and experimental communities. Furthermore, the computational requirements and technical sophistication of this work is increasing. As a result, it is imperative that the funding agencies create programs that can devote significant resources to these efforts outside of the context of the operations of individual major experiments, including smaller experiments and theory/simulation work. In this Snowmass 2021 Computational Frontier topical group report (CompF7: Reinterpretation and long-term preservation of data and code), we summarize the current state of the field and make recommendations for the future.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源