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Small Discussion About Zope?

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What is Zope?

The Zope Object Database (ZODB) is an object-oriented database for transparently and persistently storing Python objects. It is included as part of the Zope web application server, but can also be used independently of Zope.

Because ZODB is an object database:

  • no separate language for database operations
  • very little impact on your code to make objects persistent
  • no database mapper that partially hides the database.

Using an object-relational mapping is not like using an object database.
almost no seam between code and database.


The Zope Foundation is an organization that promotes the development of the Zope platform by supporting the community that develops and maintains the relevant software components. The community includes both open source software, documentation and web infrastructure contributors, as well as business and organization consumers of the software platform. It manages the zope.org websites, an infrastructure for open source collaboration.

Plone uses the ZODB database. The ZODB happily stores any Python object with any attributes — there is no need to write database schema or table descriptions as there is with SQL-based systems. If data models are described somehow the descriptions are written in Python, usually using zope.schema package.

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posted Sep 26, 2017 by Manish Tiwari

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