The online fashion store Namshi has received mixed reviews from customers. While many appreciate the variety of authentic products and fast delivery, significant issues have been highlighted. Customers frequently complain about high delivery fees, poor customer service, and technical problems with the app. Many express frustration over the lack of discount codes and the unresponsive support when dealing with order issues. Additionally, users report that the application is slow and sometimes fails to process payments correctly. Overall, while the store has loyal patrons, the recurring negative feedback suggests a need for improvement in service quality and app functionality.
Source: App Store Reviews of Namshi - Online Fashion StoreStarting 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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التطبيق صاير بطييييييء جداً، حدثته احسب المشكلة بتنحل ومازالت
مبالغ في سعر التوصيل
كان الكوبون صالح بعد ماحطيت ايميلي صار غير صالح يعني كذب في كذب اكوادكم 👎🏻
!!!!!👎🏻👎🏻👎🏻👎🏻
The app recently is taking long time to load pages
متجر نمشي من أفضل المتاجر الموثوقة بجودة وسرعة التوصيل وعروضهم الدائمة
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This page displays purchase options and a preview of the customer feedback analysis report for Namshi - Online Fashion Store based on online reviews collected from App Store. The analysis helps eCommerce Managers, Customer Experience Specialists, Retail Strategists, Digital Marketing Professionals, App Developers to discover insights into what people love, dislike, and need.
This report contains qualitative analysis with Sentiment Analysis, content classification, most popular phrases, languages and a trend graph to display how the context changes over time. After purchasing the report, you can search in customer feedback and filter results based on classification labels and popular phrases. Also, the analysis is available in PDF and PowerPoint formats, and all the reviews are available in Excel.
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