E-Commerce Dashboard


Authors : Panem Vamsi; RamiReddy Rajesh; Muthavarapu Lakshman

Volume/Issue : Volume 10 - 2025, Issue 3 - March


Google Scholar : https://tinyurl.com/483d2z2x

Scribd : https://tinyurl.com/3ezvbwed

DOI : https://doi.org/10.38124/ijisrt/25mar897

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Abstract : The e-commerce dashboard serves as a vital tool for businesses to monitor and analyse their online sales performance. It provides real-time insights into key performance indicators (KPIs) such as sales revenue, customer engagement, and inventory levels. By integrating data from various sources, the dashboard enables businesses to make informed decisions, optimize marketing strategies, and enhance customer experiences. This document outlines the essential components, functionalities, and benefits of an effective e-commerce dashboard. The e-commerce dashboard is an essential tool for online retailers, providing a comprehensive view of business performance through real-time data visualization. It integrates various metrics related to sales, customer behavior, and inventory management, enabling businesses to make informed decisions. This document elaborates on the components, functionalities, methodologies, and benefits of an effective e-commerce dashboard.

Keywords : E-Commerce Dashboard, Sales Analytics, Customer Insights, Inventory Management, Marketing Performance, Order Tracking, Financial Metrics, Data Integration, Real-Time Insights, Competitive Advantage, Business Intelligence, Automation, AI- Driven Analytics, Online Retail, Supply Chain Optimization. E-Commerce, Dashboard, Key Performance Indicators, Data Analytics, Business Intelligence, User Experience.

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The e-commerce dashboard serves as a vital tool for businesses to monitor and analyse their online sales performance. It provides real-time insights into key performance indicators (KPIs) such as sales revenue, customer engagement, and inventory levels. By integrating data from various sources, the dashboard enables businesses to make informed decisions, optimize marketing strategies, and enhance customer experiences. This document outlines the essential components, functionalities, and benefits of an effective e-commerce dashboard. The e-commerce dashboard is an essential tool for online retailers, providing a comprehensive view of business performance through real-time data visualization. It integrates various metrics related to sales, customer behavior, and inventory management, enabling businesses to make informed decisions. This document elaborates on the components, functionalities, methodologies, and benefits of an effective e-commerce dashboard.

Keywords : E-Commerce Dashboard, Sales Analytics, Customer Insights, Inventory Management, Marketing Performance, Order Tracking, Financial Metrics, Data Integration, Real-Time Insights, Competitive Advantage, Business Intelligence, Automation, AI- Driven Analytics, Online Retail, Supply Chain Optimization. E-Commerce, Dashboard, Key Performance Indicators, Data Analytics, Business Intelligence, User Experience.

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