Executive decisions are the core components affecting the growth of the organization. While one right decision can make the business to reach the sky, one wrong decision can bring down the business. With the increasing competition of IT industries, the investments, business directives and the business data are increasing exponentially. Hence, the business owner should be extra cautious and must keep all the factors in mind while decision making. Thus, demanding a great requirement of a tool which measures and monitors the growth of the business and to evidence that the business is heading towards the profitable direction. Even though there are few existing methods to measure the growth of the company, these are limited to provide basic information or have restrictions in analyzing the behavior of the business. Therefore, fail to provide the complete assurance to business owners in decision making. This work provides an efficient Nobel solution to address these problems by focusing on developing a Performance Dashboard. The proposed technique involves an integration of business intelligence technologies, data mining and data visualization technologies creating a perfect solution to analyze the business trends, business growth, the amount of profit, employee performance, customer satisfaction, areas of improvements in business and much more. This performance dashboard showcases the information by understating the business behavior right from the organization start period. It acts as an information management tool that is used to track the metrics, Key Performance Indicators (KPIs) and additional key factors applicable to the business or specific process. Using data visualization techniques, dashboard simplifies the complex data sets to deliver users with a glancing awareness of present performance and to keep track on the department's capability to accomplish service level targets.
[1]
Shiju Sathyadevan,et al.
Proposal of browser by exploiting the proficiency of V8 for large data visualization
,
2015
.
[2]
E. Rosow,et al.
JEDI - An Executive Dashboard and Decision Support System for Lean Global Military Medical Resource and Logistics Management
,
2006,
2006 International Conference of the IEEE Engineering in Medicine and Biology Society.
[3]
Zheng Shao,et al.
Data warehousing and analytics infrastructure at facebook
,
2010,
SIGMOD Conference.
[4]
Shoab A. Khan,et al.
Visualizations-based analysis of Telco data for business intelligence
,
2015,
2015 6th IEEE International Conference on Software Engineering and Service Science (ICSESS).
[5]
Brad A. Myers,et al.
Past, Present and Future of User Interface Software Tools
,
2000,
TCHI.
[6]
P. N. Kumar,et al.
Financial Market Analysis of Bombay Stock Exchange using an Agent Based Model
,
2010
.
[7]
G. P. Sajeev,et al.
Building Web Personalization System with Time-Driven Web Usage Mining
,
2015,
WCI '15.
[8]
Themis Palpanas,et al.
Model-Driven Dashboards for Business Performance Reporting
,
2006,
2006 10th IEEE International Enterprise Distributed Object Computing Conference (EDOC'06).