Shivam Sahu's Projects
A Dynamic_Weather_App A Mini Project built with NodeJS ,HTML, CSS that fetches Real time API data regarding the weather, temperature, day, month, year and location of the request made by the user and portrays it as a webapp on the screen to the user. The Real-time API service availed here is from - Open Weather Global Services.
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Build a Java and MySQL hotel reservation system featuring user registration, room booking, and an admin dashboard. Establish a secure database, apply Java for backend functionality, and craft a user-friendly JavaFX or Swing interface. Implement user authentication, payment processing, and robust testing.
Hello Guys. This is my quarantine project. It is item based collaborative recommendation system. There is two files in master branch, i.e src and myrecommendation. src is the Flask API an myrecomendation is djano file. All the packages requirements are there in requirements.txt file. In this project you can register, login, give rating, fill the form and get the recommended places. This is places recommendation system project.Recommendated part is done by using the KNN algorithm. Cosine similarities matrix is used to find the similarites between places.Fask is used to develop API of recommendation system. Django is used to develop web application.
This repository contains the code for a Netflix clone project built with HTML, CSS, and JavaScript. It replicates the key features and design of Netflix, including a visually appealing landing page, user authentication and registration, category browsing, and search functionality.
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Tic-tac-toe is a game in which two players take turns in drawing either an ` O' or an ` X' in one square of a grid consisting of nine squares. The winner is the first player to get three of the same symbols in a row.
This repository contains a data analysis project focused on Uber's ride-hailing service. The project aims to analyze a dataset obtained from Uber and extract valuable insights regarding ride demand, geographic patterns, trip duration, and user behavior