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Wordpress store search returns empty when selecting a category

So I have a bit of a weird issue

Using WordPress, store max theme, and woo-commerce to create my first online store for my local shop in France.

The theme 'StoreMax' (Child them of StoreBiz), provides me with a nice built-in search feature which the option to select from a category.

The problem is, if I select a category but don't put in a search term, it returns an empty list, even though the select category can see there are items for said category.

I want it to generate a list of all products within the selected category, pretty much the same as if I was to simply select the category in question from the side widget.

my site is www.thecorner-shop.com

Thanks for any help you can provide.



source https://stackoverflow.com/questions/69359953/wordpress-store-search-returns-empty-when-selecting-a-category

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