Mobile Application for Cottage Industries Sales System
Keywords:
COVID 19, Oman, Cottage IndustryAbstract
With the spread of COVID 19 pandemic, many jobs are lost and new others appeared. Cottage industry is an already existing business, which became very popular in the last year since it does not require high capital or rent expenses. These small investors face generally difficulties in marketing their products and use social media for this purpose. This project aims at helping the cottage industries in Oman to show their products and services for the customers and to collect their orders faster by a mobile application. It will also help them in communicating with their customers and viewing their feedback, opinion, and the rate of the business. A survey was shared with some customers and has demonstrated the important need for such project. In the light of the collected results, the design of the mobile application has been completed by drawing diagrams for the most important aspects of the project.
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