Learn how metadata is used to organize, manage, and make sense of vast amounts of information in different industries.
![[Featured image] A database engineer examines metadata for a database they're working on.](https://d3njjcbhbojbot.cloudfront.net/api/utilities/v1/imageproxy/https://images.ctfassets.net/wp1lcwdav1p1/2OUAXx23jnCXpGuo4ATB5E/33c2aa13c33eab23bbe7df59d552f80d/GettyImages-1372832083__1_.jpg?w=1500&h=680&q=60&fit=fill&f=faces&fm=jpg&fl=progressive&auto=format%2Ccompress&dpr=1&w=1000)
Metadata is data about data. It describes attributes of your data that can be important to know but may not be immediately relevant to your data’s primary function. This could include information about how data was collected, where it’s stored, and how it’s used.
For example, metadata is often attached to digital files, such as photos, videos, and audio, to describe aspects of the file, such as its name, size, when it was captured, and where it was captured.
Metadata can be useful for verification and tracking purposes. You can refer to metadata to confirm that data is accurate and reliable (data integrity) or to create an organizational system for your data. Certain software and programs will also use metadata to interpret your data. For example, search engines use metadata to categorize web pages.
There are several types of metadata, but three common types are descriptive, structural, and administrative.
Descriptive metadata describes identification attributes, such as the file name and author.
Structural metadata describes how data is organized, such as versions and relationships to other pieces of data.
Administrative metadata describes technical attributes, such as the file size and creation date.
Learn more about metadata and metadata management from experts at Google:
A DBMS is a software system that facilitates the creation, manipulation, and administration of databases. Metadata in a DBMS includes column names and row numbers tied to the data. These attributes streamline data navigation and retrieval.
![[Video thumbnail] Tips to master data analytics](https://d3njjcbhbojbot.cloudfront.net/api/utilities/v1/imageproxy/https://images.ctfassets.net/wp1lcwdav1p1/2zLZPBhzoaRjEq4QmCoWHc/04116dcca35fc4330abdbd51e6b271ee/Tips_to_Master__Data_Analytics.jpg?auto=format%2Ccompress&dpr=1&w=750&h=450&q=60)
Gain hands-on experience with gathering, cleaning, and analyzing data using databases and other analytics tools with the Google Data Analytics Professional Certificate on Coursera. Develop skills for an in-demand career in data analytics while you learn at the pace that works for you.
编辑团队
Coursera 的编辑团队由经验丰富的专业编辑、作者和事实核查人员组成。我们的文章都经过深入研究和全面审核,以确保为任何主题提供值得信赖的信息和建议。我们深知,在您的教育或职业生涯中迈出下一步时可能...
此内容仅供参考。建议学生多做研究,确保所追求的课程和其他证书符合他们的个人、专业和财务目标。