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📃:Zomato Restaurant Clustering and Sentiment Analysis #49
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🙌 Thank you for bringing this issue to our attention! We appreciate your input and will investigate it as soon as possible. |
assign me this project @UTSAVS26 . |
This project has already been assigned to @arhaanarif you can raise another issue. |
@arhaanarif what's the update? |
hi @UTSAVS26 while cloning I am getting an error due to file name "error: invalid path 'Machine_Learning/Hand Game Controller/"A" Key Binding.png' |
@arhaanarif try to clone again we have resolved the error. |
@UTSAVS26 still getting the same error! |
@arhaanarif try to refork the repo and then reclone it as i have asked some contributors they said they are able to clone it. |
✅ This issue has been closed. Thank you for your contribution! If you have any further questions or issues, feel free to join our community on Discord to discuss more! |
Title: Zomato Restaurant Clustering and Sentiment Analysis
The problem statement for this project is to analyze and understand the restaurant industry in India by utilizing data from the Indian restaurant aggregator and food delivery start-up, Zomato. The project aims to gain insights into the sentiments of customer reviews, cluster Zomato restaurants into different segments, and analyze the data to make useful conclusions in the form of visualizations. The data analyzed includes information on cuisine, costing, and customer reviews. The project aims to assist customers in finding the best restaurant in their locality and aid the company in identifying areas for growth and improvement in the industry. Additionally, the project aims to use the data for sentiment analysis and identifying critics in the industry through the metadata of reviewers.
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