The reviews for 'Rock Identifier: Stone ID' reflect a divided user experience. While many users appreciate the app's ability to identify rocks and minerals, they express frustration over the limited usage without a subscription, allowing identification of only two rocks per day. Several users criticize the high cost of the premium service, stating it diminishes the app's value. Some users reported inaccuracies in identifications, while others praised its user interface and helpfulness in categorizing stones. Despite the mixed reviews, several users found the app beneficial for their rock-collecting hobbies, with positive feedback on customer support and app enhancements.
Source: App Store Reviews of Rock Identifier: Stone IDStarting from $18, you can purchase the complete report, offering advanced filters, buyer personas, and SWOT analysis, with Excel, PDF and PowerPoint exports.

Detailed analysis of 'Rock Identifier: Stone ID' app reviews focusing on subscription issues, accuracy, and user experience.
I have to pay just to scan stuff complete waste of time
I like the rock app but I want to have the value for free and not to have to pay
Love this rock identity site
I have so much fun
Thank you for taking the time to create this app! SUPERFANTASTIC!!!
Love it so much
Have the complete report in your inbox with Excel, PDF and PowerPoint attachments. Need to play with the data? Enjoy our lightning-fast dashboard for further analysis.
One-time purchase without hidden or recurring costs!See the similar customer feedback reports based on reviews from App Store and many other platforms.
Collect and centralize feedback.
Make sense of large-scale feedback.
Turn data into meaningful insights.
Find out how Kimola can improve your feedback analysis process.
Uncover customer needs, likes, and dislikes from product reviews and feedback.
Analyze customer reviews and ratings to optimize online shopping experiences.
Extract insights from social media conversations and online discussions.
Make sense of free-text survey responses with AI-powered analysis.
Understand customer sentiment and concerns from chat and call transcripts.
Identify workplace trends and employee sentiment from internal feedback and reviews.
This page displays purchase options and a preview of the customer feedback analysis report for Rock Identifier: Stone ID based on online reviews collected from App Store. The analysis helps App Developers, Product Managers, Market Researchers, Customer Experience Specialists, UI/UX Designers 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.
Yes, this page is publicly available for everyone on the internet to see. You can copy and share this link with a friend, college or on social media.
Yes, you can, and this is the fun part about Kimola! Kimola turns customer feedback into market research by analyzing online reviews from various sources.
Yes, you can have this research report analyzed with more reviews. The page you are viewing displays a limited preview with the analysis of 30 recent reviews. Starting from $18, you can buy the complete version of this research report containing all reviews. Click here to see the purchase options.
We would like to clarify that this product is not created by App Store and is not associated with or supported by App Store in any way.
As a user of this web scraping tool, you are solely responsible for complying with all applicable laws and adhering to App Store's terms of use, including copyright regulations, when utilizing the extracted review data.
Product Feedback Analysis
E-commerce Feedback Analysis
Social Feedback Analysis
Open-ended Survey Analysis
Chatbot and Call Center Conversational Analysis
Employee Feedback Analysis