The Wallet app has received mixed reviews from users, highlighting significant issues with data synchronization, particularly between iOS and web platforms. Many premium users express frustration over the inability to sync financial accounts and data loss, despite contacting support multiple times. Users appreciate the app's budgeting features but express disappointment regarding its export options, particularly in PDF or Excel format. Some users note performance disparities between iOS and Android versions, as well as issues with investment tracking. Requests for improved features, such as enhanced categorization and shortcuts, indicate a desire for more functionality. Overall, while the app has potential, users are seeking critical functionality improvements and better customer support to enhance their experience.
Source: App Store Reviews of Wallet - Daily Budget & ProfitStarting from $18, you can purchase the complete report, offering advanced filters, buyer personas, and SWOT analysis, with Excel, PDF and PowerPoint exports.
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Why canât I add/delete categories and subcategories? All I can is to hide category/subcategory and add subcategory for already existing subcategory
Itâs doesnât help at all I demand a refund on my subscription I deleted my account.
I had this all for about 2 Weeks now and for starters itâs super slow. You donât get transaction updates until 4/5 days after you made them.
It takes a while to get used to, but the interface is really friendly and simple. Honestly, one of the best apps for expense tracking and overall savings.
Hello,
Ia there not have any way to export data with pdf or excel format?
Please add this. I hope i will increase the rating then.
It does not have the opciĂłn of basic mathematics like add or subtract in the iPhone version
It only works with the android sistem
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