Predicting flight ticket prices using a random forest regression model based on scraped data from Kayak. A Kayak scraper is also provided.
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Updated
Jul 26, 2023 - Jupyter Notebook
Predicting flight ticket prices using a random forest regression model based on scraped data from Kayak. A Kayak scraper is also provided.
Data Science & Machine Learning Internship at Flip Robo Technologies
Data Science Projects done at Data Trained Education during PG Data Science & ML Course
Analyze and Predict the Flight Price Using Machine Learning Models and Plotly Library
Predictive model to forecast flight prices.
A Streamlit ML app for flight price prediction. This one project involves concepts like EDA, Linear, Lasso & Ridge Regression, Kfold, Hyper Parameter Tuning & GridSearchCV. I am constantly building a rich repository of all the information I have on a particular topic as part of my machine learning practice. Very Helpful for ML beginners.
A flight price prediction website that works on the Random Forest model for predicting flight fares. The model is then hosted using Flask API.
MyFlightPrice is a Flask web app which can predict your flight price based on the required information.
The primary goal is to develop a predictive model that leverages historical data, machine learning algorithms, and real-time market trends to empower users with insights for informed decision-making in air travel planning.
A Flight Price Prediction System, which is a machine learning-based web application. Users can predict the cost of a flight based on their desired travel details. The project has been implemented using the Streamlit framework for hosting the application and providing a user interface for flight price predictions.
This project aims to provide users with a tool to predict flight fares based on various parameters, allowing them to make informed decisions when booking air travel. The app utilizes machine learning algorithms trained on historical flight data to estimate future fares.
Built flight fare prediction and deploy using flask on Heroku platform
A Flight price prediction application which predicts fares of flight for a particular date based on various parameters like Source, Destination, Stops & Airline.
The main goal is to predict the fares of the flights based on different factors available in the provided dataset.
End to end implementation of Machine Learning Airline Flight Fare Prediction using python
Flight Price Prediction Model Deployment IN Heroku
Repo for Flight Price Predictor Model and Web App
Deploying Flight Price Prediction via Microsoft Azure
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