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Repairing a table in phpMyAdmin doesnot help like before [closed]

I use TNG, a php-based database application for genealogy in Uniserver Zero XIV from a mobile HD on two locations (one without Internet). Sometimes there is something wrong after switching computers. On inspecting in phpMyAdmin, when browsing a table there is a yellow pop-up that warns that "... a form on this page has more than 1000 (thousand) fields". I have no idea what type of error the warning points to. (programming dilletant :-)

  • What could have caused this?

I have several times repaired the culprit table, and that used to end the problems. Last weekend repairing did not help. It turned oud that 9 of the 37 tables TNG uses displayed this yellow pop-up. I repaired all of them, but still no joy. I asked on the TNG forum, but received no response

  • What can I do to get things rolling again?

(TNG V13.03, Installed on Uniform Server Zero XIV 14.02 using PHP 7.4.5 and MySQL 8.0.18



source https://stackoverflow.com/questions/69744127/repairing-a-table-in-phpmyadmin-doesnot-help-like-before

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