There are 3 repositories under cars-dataset topic.
Introducing the most comprehensive and up-to-date open source dataset on US car models on Github. With over 15,000 entries covering car models manufactured between 1992 and 2023, this repository offers valuable information for anyone looking to incorporate car data into their applications. Best of all, it's completely free to use!
Simple Implementation of many GAN models with PyTorch.
The models are trained on the Cars Dataset. Given an image of a car, the models can predict the vehicle's make, model and year of production.
Python script to fetch cars data
Master Degree Coursework: Econometrics II
Analyze cars dataset through EDA using Python. Includes data preprocessing, visualization, and insights extraction. Technologies: Pandas, Seaborn, Matplotlib.
Recognizing car models through pictures with deep machine learning
Analysis of cars in Germany and price prediction with regression model.
Project on vehycle radar data to Udacity Nanodegree on Data Science. Started on Dec, 2020.
Tesla Deaths is a record of Tesla accidents that involved a driver, occupant, cyclist, motorcyclist, or pedestrian death. We record information about Tesla fatalities that have been reported and as much related crash data as possible such as location of crash, names of deceased. This dataset also tallies claimed and confirmed Tesla autopilot crashes, that is instances when Autopilot was activated during a Tesla crash that resulted in death. Latest version of dataset at https://www.tesladeaths.com.
Welcome to ILikeThisCars dedicated to cars, where we provide all the latest news, reviews, and insights about the automotive industry. Our platform offers a wide range of resources for car enthusiasts, including in-depth car reviews, comparisons, and buying guides, as well as the latest industry news, trends, and developments.
Web scraping car listings with Python and BeautifulSoup4
Determine what influences and drives car prices given technical specs and identify which car(s) are the most under/overpriced and why.
Estudo para predição de preços de carros
A repository focused on using images of cars to complete various tasks using deep learning
Explanatory Data Analysis using Python
One of my very first exercises in Machine Learning in which I used Random Forest and SVM to predict used cars' prices
Project that detects the brand of a car, between 1 and 49 brands ( the 49 brands of Stanford car file), that appears in a photograph with a success rate of more than 80% (using a test file that has not been involved in the training as a valid or training file, "unseen data") and can be implemented on a personal computer.
Project that detects the model of a car, between 1 and 196 models ( the 196 modelss of Stanford car file), that appears in a photograph with a success rate of more than 70% (using a test file that has not been involved in the training as a valid or training file, "unseen data") and can be implemented on a personal computer.
Streamline your car rental experience with our effortless booking process.