tkrabel /
edaviz
edaviz - Python library for Exploratory Data Analysis and Visualization in Jupyter Notebook or Jupyter Lab
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rajkumarjagdale / repository
Exploratory Data Analysis and Classification of Using the Zomato Bangalore Restaurants Dataset from Kaggle. In this Project , I performed Supervised Learning Algorithms and did Exploratory Data Analysis on the Zomato Bangalore Restaurants Dataset from Kaggle. This Project also Contains Detailed Documentation in PDF format. Following ML Algorithms used in this project: 1. Logistic Regression 2. Decision Tree 3. K-Nearest Neighbors 4. Random Forest 5. Support Vector Machine 6. Gradient Boosting 7. Naive bayes ------------------------------------------------------------------------- Used Libraries: Sklearn Pandas Numpy MatplotLib Seaborn ------------------------------------------------------------------------- Programming Language: Pyhton 3 Python IDE: Jupyter Notebook ------------------------------------------------------------------------- You can download the Dataset from here: https://www.kaggle.com/himanshupoddar/zomato-bangalore-restaurants/discussion
Exploratory Data Analysis and Classification of Using the Zomato Bangalore Restaurants Dataset from Kaggle.
In this Project , I performed Supervised Learning Algorithms and did Exploratory Data Analysis on the Zomato Bangalore Restaurants Dataset from Kaggle. This Project also Contains Detailed Documentation in PDF format.
Following ML Algorithms used in this project:
You can download the Dataset from here: https://www.kaggle.com/himanshupoddar/zomato-bangalore-restaurants/discussion
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tkrabel /
edaviz - Python library for Exploratory Data Analysis and Visualization in Jupyter Notebook or Jupyter Lab
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