The reviews for 'نون للتسوق والأطعمة والبقالة' reveal a mix of experiences among users. Many customers appreciate the fast and reliable delivery services, with some labeling it as the best electronic shopping application. However, several users have highlighted issues with the app's speed, frequent crashes, and glitches that impact the shopping experience. While some users praise the variety of products and attractive prices, others express frustration with inconsistencies in order fulfillment and product authenticity. Overall, the application demonstrates potential but requires significant improvements in performance and customer service to enhance user satisfaction.
Source: Google Play Reviews of نون للتسوق والأطعمة والبقالةStarting from $18, you can purchase the complete report, offering advanced filters, buyer personas, and SWOT analysis, with Excel, PDF and PowerPoint exports.

In-depth analysis of customer feedback for نون للتسوق with insights on app performance, product quality, and service.
الاورد بيتغير يوم التسليم وتصفح سيء وحجات مش اورجينال وبجد حيره اكتر من اني انزل اشتري رابطنب بالموبايل وياريت بستلم أوردر لا مبستلمش حاجه
ما يفتح معي له اسبوع معلق واصل حذفته وثبته من جديد ونفس المشكله
التطبيق ممتاز ، لكن يعلق وبطيء جداً المشكله هاذي لها فترة طويلة لم تحل
ممتاز الخدمة فيه وتوصيل سريع من يوم إلى ٣ايام شكرا نون
مريح وكل شيء متوفر والاسعار حلوه
أفضل تطبيق للتسوق الإلكتروني
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This page displays purchase options and a preview of the customer feedback analysis report for نون للتسوق والأطعمة والبقالة based on online reviews collected from Google Play. The analysis helps Retail Business Analysts, eCommerce Managers, Customer Experience Strategists, Marketing Professionals, Product Development Specialists 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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