The app 'Too Good To Go' is praised for its innovative approach to reducing food waste and providing affordable food options. Users appreciate the variety of participating stores, and the potential to save money while enjoying quality products. However, several reviews highlight issues such as inconsistent product quality, lack of responsiveness from vendors regarding refunds, and difficulties in accessing vegetarian options. Some users also suggest improvements, including the addition of filters for easier navigation, better visibility of store information, and the ability to read previous reviews. Overall, while the app is recognized as a valuable tool against food waste, there are areas for enhancement to improve user experience and satisfaction.
Source: App Store Reviews of Too Good To Go: no allo sprecoStarting from $18, you can purchase the complete report, offering advanced filters, buyer personas, and SWOT analysis, with Excel, PDF and PowerPoint exports.
Uncover insights from 'Too Good To Go' app reviews with analysis on user experience, food variety, and more to boost your strategy.
Ragazzi consiglio cibo buonissimo app facile da usare
Grazie a questa ap faccio spesa risparmio soldi e nn spreco cibo
App fantastica ti permette di spendere poco e avere prodotti buoni e di qualità
È un’app davvero molto interessante e utile
Qualità ottima
Pizzeria veramente da provare
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This page displays purchase options and a preview of the customer feedback analysis report for Too Good To Go: no allo spreco based on online reviews collected from App Store. The analysis helps Digital Marketers, App Developers, Sustainability Consultants, Restaurant Owners, Food Industry Analysts to discover insights into what people love, dislike, and need.
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