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Online-bus-booking-system
Online Bus Booking System Modules ADMIN MODULE AGENT MODULE USER MODULE Features of Online Bus Booking System ADMIN MODULE Admin has overall control of the system. The main functions of admin are given below. Bus Management Route Management Board Point Management Drop Point Management Promo Code management Gallery Add Agent Cancellation View Booking Details Seat Layout View Rating Details Admin login username - amit password amit USER MODULE Can register or login Book bus. View and select the seat Use promo code Book the ticket by selecting route, date of journey and the return date View available buses Payment integrated Brief overview of the technology: Front end: HTML, CSS, JavaScript HTML: HTML is used to create and save web document. E.g. Notepad/Notepad++ CSS : (Cascading Style Sheets) Create attractive Layout Bootstrap : responsive design mobile freindly site JavaScript: it is a programming language, commonly use with web browsers. Back end: PHP, MySQL PHP: Hypertext Preprocessor (PHP) is a technology that allows software developers to create dynamically generated web pages, in HTML, XML, or other document types, as per client request. PHP is open source software. MySQL: MySql is a database, widely used for accessing querying, updating, and managing data in databases. Software Requirement(any one) XAMPP Server LAMP Server Installation Steps 1. Download zip file and Unzip file on your local server.4 2-7ot tahina 3-put the project in the hdocs file in xammp 3. Database Configuration Open phpmyadmin Create Database named bus. Import database bus.sql from downloaded folder(inside database) 4. Open Your browser put inside "http://localhost/Bus Booking SystemPredicting-Credit-Card-Fraud-Transactions
# Problem: Predicting Credit Card Fraud ## Introduction to business scenario You work for a multinational bank. There has been a significant increase in the number of customers experiencing credit card fraud over the last few months. A major news outlet even recently published a story about the credit card fraud you and other banks are experiencing. As a response to this situation, you have been tasked to solve part of this problem by leveraging machine learning to identify fraudulent credit card transactions before they have a larger impact on your company. You have been given access to a dataset of past credit card transactions, which you can use to train a machine learning model to predict if transactions are fraudulent or not. ## About this dataset The dataset contains transactions made by credit cards in September 2013 by European cardholders. This dataset presents transactions that occurred over the course of two days and includes examples of both fraudulent and legitimate transactions. ### Features The dataset contains over 30 numerical features, most of which have undergone principal component analysis (PCA) transformations because of personal privacy issues with the data. The only features that have not been transformed with PCA are 'Time' and 'Amount'. The feature 'Time' contains the seconds elapsed between each transaction and the first transaction in the dataset. The feature 'Amount' is the transaction amount. 'Class' is the response or target variable, and it takes a value of '1' in cases of fraud and '0' otherwise. Features: `V1, V2, ... V28`: Principal components obtained with PCA Non-PCA features: - `Time`: Seconds elapsed between each transaction and the first transaction in the dataset, $T_x - t_0$ - `Amount`: Transaction amount; this feature can be used for example-dependent cost-sensitive learning - `Class`: Target variable where `Fraud = 1` and `Not Fraud = 0` ### Dataset attributions Website: https://www.openml.org/d/1597 Twitter: https://twitter.com/dalpozz/status/645542397569593344 Authors: Andrea Dal Pozzolo, Olivier Caelen, and Gianluca Bontempi Source: Credit card fraud detection - June 25, 2015 Official citation: Andrea Dal Pozzolo, Olivier Caelen, Reid A. Johnson, and Gianluca Bontempi. Calibrating Probability with Undersampling for Unbalanced Classification. In Symposium on Computational Intelligence and Data Mining (CIDM), IEEE, 2015. The dataset has been collected and analyzed during a research collaboration of Worldline and the Machine Learning Group (mlg.ulb.ac.be) of ULB (Université Libre de Bruxelles) on big data mining and fraud detection. More details on current and past projects on related topics are available on http://mlg.ulb.ac.be/BruFence and http://mlg.ulb.ac.be/ARTML.Natural-Language-Processing-with-Classification-and-Vector-Spaces-nlp_specialization-course1
course 1 of coursera specializationBikeRent
Homeversit_Website
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Restaurant-Menu-app
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Make a square with size 4X4 by using 4 or 5 pieces. The pieces can be rotated or flipped and all pieces should be used to form a square. Example sets of pieces. There may be more than one possible solution for a set of pieces, and not every arrangement will work even with a set for which a solution can be found. Examples using the above set of pieces... Rotate piece D 90 degree then flip horizontal {R 90 + F H}Recomendtions_System_Course
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