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B2B Trading App for PVC Raw Material

By Nettyfy Technologies

Client

Project Description

B2B Trading App for PVC Raw Material Company, a leading player in the PVC raw material trading industry, recognized the need to digitize their trading operations to enhance efficiency and gain a competitive edge. With a wide network of suppliers and buyers across the globe, they sought a comprehensive solution that could simplify the trading process, facilitate seamless communication, and enable secure transactions. Technology Stack:Node JsReactNext JsAWS EC2, S3, ELB, RDS, Route53, Cloud FrontPythonMySQLResult The implementation of the B2B trading app produced impressive metrics that demonstrated the success and impact of the solution on Puri Polymer’s business performance. Key statistics include:35% reduction in trading discrepancies and disputes, leading to increased operational efficiency.25% increase in average profit margins due to data-driven pricing strategies.80% growth in the customer base, expanding market reach and enhancing revenue opportunities.20% improvement in customer retention rates, indicating higher customer satisfaction and loyalty.

B2B Trading App for PVC Raw Material Company, a leading player in the PVC raw material trading industry, recognized the need to digitize their trading operations to enhance efficiency and gain a competitive edge. With a wide network of suppliers and buyers across the globe, they sought a comprehensive solution that could simplify the trading process, facilitate seamless communication, and enable secure transactions. Technology Stack:Node JsReactNext JsAWS EC2, S3, ELB, RDS, Route53, Cloud FrontPythonMySQLResult The implementation of the B2B trading app produced impressive metrics that demonstrated the success and impact of the solution on Puri Polymer’s business performance. Key statistics include:35% reduction in trading discrepancies and disputes, leading to increased operational efficiency.25% increase in average profit margins due to data-driven pricing strategies.80% growth in the customer base, expanding market reach and enhancing revenue opportunities.20% improvement in customer retention rates, indicating higher customer satisfaction and loyalty.

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