Joomla CSV migration to Wordpress

150.0 GBP

150.0 GBP peopleperhour Technology & Programming Overseas
3 days ago

Description


This project involves migrating customer and order data from a Joomla system to WordPress. There are 2750 customer records within the Joomla customer database that must be imported into the new WordPress site while preserving important profile fields like name, address, username and other relevant details. Additionally, 8195 order records from the Joomla backend need to be transferred to WordPress with all associated order information like products, totals and statuses accurately reflected. The user registration system on WordPress needs to support logging users into the new site using the same email and password credentials from Joomla. Bidders should have strong experience with PHP, MySQL, performing data conversions between different systems and setting up user authentication frameworks. The bulk importer must be thoroughly tested to ensure all customer and order records transfer accurately and the new WordPress site integrates seamlessly with the migrated data. Security, data integrity and validation are top priorities throughout this transition process.

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