Affiliation:
1. Smt. Kashibai Navale College of Engineering, Vadgaon Bk, Pune, Maharashtra, India
Abstract
A krishi market system is automated by utilising technology to speed up the buying and selling of agricultural goods. To gain a complete picture of the agricultural market, the system gathers information from a variety of sources, including farmers, dealers, and government organisations. In order to find trends, patterns, and insights that can aid in decision-making, the data is then processed and analysed. The system displays the data in a comprehensible way using visualisation techniques like charts, graphs, and maps to make it simpler for users to understand and make defensible judgements. Additionally, the system automatically creates invoices for transactions based on the gathered and processed data. This guarantees correctness and gets rid of mistakes that could happen with manual bill production. The krishi market system with visualization of data and an automated bill generation system is implemented as a website application that provides a user-friendly interface for farmers, traders, and government agencies to access the data and bills. The website application also integrates with payment gateways to enable online payment for transactions, making the process faster, more secure, and more convenient for all parties involved. Furthermore, the website application provides alerts and notifications to users based on their preferences, including alerts for price changes, new crops in the market, and payment reminders. The system also ensures the security and privacy of the data collected and stored, using encryption and secure data storage methods to prevent unauthorized access. Overall, the automation of a krishi market system with visualization of data and an automated bill generation system for a website application streamlines the process of buying and selling agricultural products, making it more efficient and convenient for all parties involved. The website application provides a user-friendly interface that makes it easy to access the data and bills, and the integration with payment gateways makes transactions more secure and convenient.
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