25 results for “topic:uber-data”
The goal of this project is to track the expenses of Uber Rides and Uber Eats through data Engineering processes using technologies such as Apache Airflow, AWS Redshift and Power BI.
Shiny App to play with uber data
Analysis of Uber Data from NYC Open Data website
Uber web interface crawler / scraper - Convert the trips table into a CSV file
Exploratory and predictive data analysis with Uber's speeds dataset for London city.
Machine Learning Key Projects
EDA and data visualisation
No description provided.
A better dashboard for Uber Eats Drivers
Uber Data Analysis and Visualization using Python
This is the final data science project for USIT5609 MScIT Part II. Primarily made to learn Data Analytics, Machine Learning, and AI. To predict uber prices with external factors such as rain, temperature, time of day, day of the year, and more.
Code for fetching, sampling, and analysis of NYC taxi data from TLC and Uber for 2009-2018
Uber and lyft data visualization, comparision and many analysis with python
This project analyzes Uber trip data using Power BI to identify trends and patterns in ride demand. Data cleaning and transformation were performed using Power Query, and an interactive dashboard was developed to visualize key insights such as peak hours and location-based trip distribution.
Addressing some data science related issuesof a ride sharing app, Pathao
This app is integrated with UBER API. You can use uber features from your app.
A machine learning project which predicts Uber trip data for different factors.
This is an analysis for the supply demand gap faced by the Uber and taxi companies
Explore your activity on Uber with R: How to analyze and visualize your personal data history. Find out how you consume the Uber App using a copy of your data.
Uber Traveling Time Analytics in DC Census Tract Zones
Exploratory Data Analysis (EDA) of Uber ride data using advanced SQL queries. Focuses on identifying urban demand hotspots, uncovering surge pricing patterns, and analyzing route efficiency.
Develop a predictive model to accurately forecast hourly traffic volumes at different road junctions based on historical traffic data
To identify the root cause of cancellation and non-availability of cars addressing the Uber supply-demand gap.
In this Project i will do analysis on Uber data, will use some library which are mentioned below
👥🚖Data Analysis on Uber Data