The FAIR principles for scientific data (Findable, Accessible, Interoperable, Reusable) are also relevant to other digital objects such as research software and scientific workflows that operate on scientific data. The FAIR principles can be applied to the data being handled by a scientific workflow as well as the processes, software, and other infrastructure which are necessary to specify and execute a workflow. The FAIR principles were designed as guidelines, rather than rules, that would allow for differences in standards for different communities and for different degrees of compliance. There are many practical considerations which impact the level of FAIR-ness that can actually be achieved, including policies, traditions, and technologies. Because of these considerations, obstacles are often encountered during the workflow lifecycle that trace directly to shortcomings in the implementation of the FAIR principles. Here, we detail some cases, without naming names, in which data and workflows were Findable but otherwise lacking in areas commonly needed and expected by modern FAIR methods, tools, and users. We describe how some of these problems, all of which were overcome successfully, have motivated us to push on systems and approaches for fully FAIR workflows.
翻译:科学数据FAIR原则(可实现、可获取、可互操作、可重复使用)也适用于其他数字物体,例如研究软件和科学工作流程,该原则适用于科学工作流程处理的数据,以及确定和执行工作流程所必需的程序、软件和其他基础设施。该原则是作为准则而不是规则设计的,允许不同社区的标准不同和不同程度的遵守。由于这些考虑,影响实际能够实现的FAIR水平的许多实际因素,包括政策、传统和技术。由于这些考虑,在工作流程生命周期中经常遇到障碍,直接追溯到FAIR原则执行过程中的缺陷。这里,我们详细列举了一些案例,其中的数据和工作流程是可以找到的,但在现代FAIR方法、工具和用户通常需要和期望的领域却缺乏。我们描述了其中一些问题是如何成功地克服的,促使我们推向全面FAIR工作流程的系统和办法。