助力国内外作者成功发表NatureScience等国际顶尖期刊!

投稿难?全流程投稿协助,直达Accept!

CSSCICSCD北大统计源知网万方维普

专注期刊投稿咨询

多年服务铸就口碑期刊服务信赖之选
免费咨询

大类学科: 不限 医学 生物 物理 化学 农林科学 数学 地学天文 地学 环境科学与生态学 综合性期刊 管理科学 社会科学 查看全部热门领域

中科院分区: 不限 1区 2区 3区 4区

期刊收录: 不限 SCI SCIE

Scientific Data

SCI期刊查询网 更新时间:2026-04-02 00:04:37
Scientific Data封面

简称:SCI DATA

ISSN:2052-4463

ESSN:2052-4463

所属分区:1区

出版地:United Kingdom

创刊时间:2014

研究方向:Social Sciences-Education

易录用期刊推荐+论文格式模板+论文快速过审指导

填写需求
联系方式
PS:专业学术顾问会及时联系解答。

Scientific Data英文简介

Scientific Data is a peer-reviewed, open-access journal for descriptions of scientifically valuable datasets, and research that advances the sharing and reuse of scientific data. We aim to promote wider data sharing and reuse, and to credit those that share.

Scientific Data primarily publishes Data Descriptors, a new type of publication that provides detailed descriptions of research datasets, including the methods used to collect the data and technical analyses supporting the quality of the measurements. Data Descriptors focus on helping others reuse data, rather than testing hypotheses, or presenting new interpretations, methods or in-depth analyses.

Scientific Data also welcomes submissions describing analyses or meta-analyses of existing data, and original articles on systems, technologies and techniques that advance data sharing and reuse to support reproducible research.

Scientific Data offers a streamlined but thorough peer-review process that evaluates the rigour and quality of the experiments used to generate the data and the completeness of the description of the data. The actual data are stored in one or more public, community-recognized repositories, and release of the data is verified as a condition of publication.

Scientific Data is open to submissions from a broad range of natural science disciplines, including, but not limited to, data from the life, biomedical and environmental science communities. Submissions may describe big or small data, from new experiments or value-added aggregations of existing data, from major consortiums and single labs. We are also willing to consider descriptions of quantitative datasets from the social sciences, particularly those that may be of use for integrative analyses that stretch across the traditional discipline boundaries between the life, biomedical, environmental and social sciences.

IF值(影响因子)趋势图