Welcome to the Zomato Bengaluru Restaurant Analysis repository. This project provides an in-depth analysis of restaurants listed on Zomato in Bengaluru. The dataset comprises over 40,000 records and 9 features, capturing essential details about various restaurants such as their names, locations, types, ratings, and more. You can view Google Collab notebook [here] .
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Introduction
- This section details the scope and objectives of the analysis, focusing on deriving insights from the dataset to understand restaurant trends and customer preferences.
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Data Exploration and Cleaning
- Loading the Data: Explanation of how the dataset is loaded into a pandas DataFrame.
- Initial Exploration: Methods used to examine the dataset's structure and identify unnecessary columns.
- Cleaning and Wrangling: Steps taken to clean the data, including handling duplicates, null values, and data transformations.
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Identified Problems, Solutions, and Trends
- Percentage of Restaurants Offering Online Ordering: Analysis of the prevalence of online ordering and recommendations to increase adoption.
- Impact of Table Booking: Examination of how table booking affects restaurant ratings and recommendations to encourage more restaurants to offer this service.
- Restaurant Type and Online Ordering: Insights into which restaurant types are more likely to offer online ordering.
- Top Locations by Average Rating: Identification of high-rating locations and recommendations for restaurants in lower-rated areas.
- Most Popular Restaurant Chains: Analysis of popular chains and their strategies.
- Distribution of Restaurant Ratings: Visualization and interpretation of rating distributions.
- Correlation Between Votes and Ratings: Analysis of the relationship between votes and ratings.
- Locations with Most Restaurants: Insights into high-density restaurant locations.
- Impact of Online Ordering on Votes: Examination of how online ordering influences customer engagement.
- Top Rated Restaurants: Identification of the top 10 highest-rated restaurants.
- Location Impact on Votes: Analysis of how location affects vote counts.
- Bottom Locations by Average Rating: Identification of locations with the lowest average ratings.
- Expensive Restaurants for 2 People: Analysis of the top 10 most expensive restaurants.
- Cheapest Restaurants for 2 People: Identification of the 5 cheapest restaurants.
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Conclusion
- A summary of key insights and recommendations based on the analysis, highlighting trends and offering actionable advice for restaurant owners and stakeholders.
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Dashboard
- Interactive visualizations and dashboards showcasing the analysis results and insights derived from the data.