Pinned Repositories
AWS-Deployment
Deploy Machine Learning models via AWS
Azure-Deployment
Deploying Machine Learning Models via Microsoft Azure
Building-A-Breast-Cancer-Predictor-App
Course-Resources-Feature-Engineering-For-Data-Science
This repository contains all the course materials for Python Data Analysis For Data Science and Machine Learning course
Covid-19-Dasboard-for-Berlin-City
FLASK-End-to-end-Zomato-Restaurant-Price-Prediction-and-Deployment
# **ABSTRACT** Main Objective: The main agenda of this project is: Perform extensive Exploratory Data Analysis(EDA) on the Zomato Dataset. Build an appropriate Machine Learning Model that will help various Zomato Restaurants to predict their respective Ratings based on certain features DEPLOY the Machine learning model via Flask that can be used to make live predictions of restaurants ratings A step by step guide is attached to this documnet as well as a video explanation of each concpet. Zomato is one of the best online food delivery apps which gives the users the ratings and the reviews on restaurants all over india.These ratings and the Reviews are considered as one of the most important deciding factors which determine how good a restaurant is. We will therefore use the real time Data set with variuos features a user would look into regarding a restaurant. We will be considering Banglore City in this analysis. Content The basic idea of analyzing the Zomato dataset is to get a fair idea about the factors affecting the establishment of different types of restaurant at different places in Bengaluru, aggregate rating of each restaurant, Bengaluru being one such city has more than 12,000 restaurants with restaurants serving dishes from all over the world. With each day new restaurants opening the industry has’nt been saturated yet and the demand is increasing day by day. Inspite of increasing demand it however has become difficult for new restaurants to compete with established restaurants. Most of them serving the same food. Bengaluru being an IT capital of India. Most of the people here are dependent mainly on the restaurant food as they don’t have time to cook for themselves. With such an overwhelming demand of restaurants it has therefore become important to study the demography of a location. What kind of a food is more popular in a locality. Do the entire locality loves vegetarian food. If yes then is that locality populated by a particular sect of people for eg. Jain, Marwaris, Gujaratis who are mostly vegetarian. These kind of analysis can be done using the data, by studying the factors such as • Location of the restaurant • Approx Price of food • Theme based restaurant or not • Which locality of that city serves that cuisines with maximum number of restaurants • The needs of people who are striving to get the best cuisine of the neighborhood • Is a particular neighborhood famous for its own kind of food. “Just so that you have a good meal the next time you step out” The data is accurate to that available on the zomato website until 15 March 2019. The data was scraped from Zomato in two phase. After going through the structure of the website I found that for each neighborhood there are 6-7 category of restaurants viz. Buffet, Cafes, Delivery, Desserts, Dine-out, Drinks & nightlife, Pubs and bars. Phase I, In Phase I of extraction only the URL, name and address of the restaurant were extracted which were visible on the front page. The URl's for each of the restaurants on the zomato were recorded in the csv file so that later the data can be extracted individually for each restaurant. This made the extraction process easier and reduced the extra load on my machine. The data for each neighborhood and each category can be found here Phase II, In Phase II the recorded data for each restaurant and each category was read and data for each restaurant was scraped individually. 15 variables were scraped in this phase. For each of the neighborhood and for each category their onlineorder, booktable, rate, votes, phone, location, resttype, dishliked, cuisines, approxcost(for two people), reviewslist, menu_item was extracted. See section 5 for more details about the variables. Acknowledgements The data scraped was entirely for educational purposes only. Note that I don’t claim any copyright for the data. All copyrights for the data is owned by Zomato Media Pvt. Ltd.. Source: Kaggle
Flight-Price-Predict-Deployment-Heroku
Netflix-Recommender-System-and-Deployment
Deploying a Netflix Recommender System on Heroku Cloud
Streamlit
Telecom-churn
In this project, you will analyze customer-level data of a leading telecom firm, build predictive models to identify customers at high risk of churn and identify the main indicators of churn.
MrBriit's Repositories
MrBriit/FLASK-End-to-end-Zomato-Restaurant-Price-Prediction-and-Deployment
# **ABSTRACT** Main Objective: The main agenda of this project is: Perform extensive Exploratory Data Analysis(EDA) on the Zomato Dataset. Build an appropriate Machine Learning Model that will help various Zomato Restaurants to predict their respective Ratings based on certain features DEPLOY the Machine learning model via Flask that can be used to make live predictions of restaurants ratings A step by step guide is attached to this documnet as well as a video explanation of each concpet. Zomato is one of the best online food delivery apps which gives the users the ratings and the reviews on restaurants all over india.These ratings and the Reviews are considered as one of the most important deciding factors which determine how good a restaurant is. We will therefore use the real time Data set with variuos features a user would look into regarding a restaurant. We will be considering Banglore City in this analysis. Content The basic idea of analyzing the Zomato dataset is to get a fair idea about the factors affecting the establishment of different types of restaurant at different places in Bengaluru, aggregate rating of each restaurant, Bengaluru being one such city has more than 12,000 restaurants with restaurants serving dishes from all over the world. With each day new restaurants opening the industry has’nt been saturated yet and the demand is increasing day by day. Inspite of increasing demand it however has become difficult for new restaurants to compete with established restaurants. Most of them serving the same food. Bengaluru being an IT capital of India. Most of the people here are dependent mainly on the restaurant food as they don’t have time to cook for themselves. With such an overwhelming demand of restaurants it has therefore become important to study the demography of a location. What kind of a food is more popular in a locality. Do the entire locality loves vegetarian food. If yes then is that locality populated by a particular sect of people for eg. Jain, Marwaris, Gujaratis who are mostly vegetarian. These kind of analysis can be done using the data, by studying the factors such as • Location of the restaurant • Approx Price of food • Theme based restaurant or not • Which locality of that city serves that cuisines with maximum number of restaurants • The needs of people who are striving to get the best cuisine of the neighborhood • Is a particular neighborhood famous for its own kind of food. “Just so that you have a good meal the next time you step out” The data is accurate to that available on the zomato website until 15 March 2019. The data was scraped from Zomato in two phase. After going through the structure of the website I found that for each neighborhood there are 6-7 category of restaurants viz. Buffet, Cafes, Delivery, Desserts, Dine-out, Drinks & nightlife, Pubs and bars. Phase I, In Phase I of extraction only the URL, name and address of the restaurant were extracted which were visible on the front page. The URl's for each of the restaurants on the zomato were recorded in the csv file so that later the data can be extracted individually for each restaurant. This made the extraction process easier and reduced the extra load on my machine. The data for each neighborhood and each category can be found here Phase II, In Phase II the recorded data for each restaurant and each category was read and data for each restaurant was scraped individually. 15 variables were scraped in this phase. For each of the neighborhood and for each category their onlineorder, booktable, rate, votes, phone, location, resttype, dishliked, cuisines, approxcost(for two people), reviewslist, menu_item was extracted. See section 5 for more details about the variables. Acknowledgements The data scraped was entirely for educational purposes only. Note that I don’t claim any copyright for the data. All copyrights for the data is owned by Zomato Media Pvt. Ltd.. Source: Kaggle
MrBriit/Netflix-Recommender-System-and-Deployment
Deploying a Netflix Recommender System on Heroku Cloud
MrBriit/Course-Resources-Feature-Engineering-For-Data-Science
This repository contains all the course materials for Python Data Analysis For Data Science and Machine Learning course
MrBriit/Flight-Price-Predict-Deployment-Heroku
MrBriit/Telecom-churn
In this project, you will analyze customer-level data of a leading telecom firm, build predictive models to identify customers at high risk of churn and identify the main indicators of churn.
MrBriit/AWS-Deployment
Deploy Machine Learning models via AWS
MrBriit/Azure-Deployment
Deploying Machine Learning Models via Microsoft Azure
MrBriit/Covid-19-Dasboard-for-Berlin-City
MrBriit/Streamlit
MrBriit/Building-A-Breast-Cancer-Predictor-App
MrBriit/Indian-Premier-League-IPL-Prediction
MrBriit/Netflix-recommender-system-deployment
MrBriit/NLP-Project-Sacasm-Detection
MrBriit/Predicting-customer-behavior
MrBriit/Resume-Parser
MrBriit/Azure-Deployment1
Deploying models via Microsoft Azure
MrBriit/Big-data-project
Building a Recommendation system
MrBriit/Bright-nlpportfolio.github.io
A summary Of My Personal Portfolio
MrBriit/Building-a-Robust-Recommendation-System
Applying various NLP techniques to build a robust recommendation engine
MrBriit/Datasets
These are the various datasets prepared for practicing various concepts
MrBriit/Feature-Engineering-Project
Performing Extensive Feature Engineering Project For Machine Learning Projects
MrBriit/Google_Cloud_Deployment
In this Google Cloud deployment, I demonstrate how to deploy machine learning models on GCP
MrBriit/images
random images
MrBriit/mrbriit
MrBriit/mrbriit.github.io
MrBriit/mrbriit1
MrBriit/mrbriit1.github.io
My Portfolio
MrBriit/now
MrBriit/portfolio-files
These files will guide you to create your own personal portfolio
MrBriit/SD501-home-work