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Anova

In: Business and Management

Submitted By bookie830463
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a
John S. Harris
BIS/219
Mr. Koshy Joseph-Vaidyan

Software Applications

Software Applications
Organizational employees in today's association are carrying out numerous processes in an association by advance made in technology. Programs applications and proposal systems improve regularly, accuracy reliability of tasks that enable employees to perform complex task with ease, and timeliness. Each department in an organization benefits from applications and information resources. One application that enables the finance department to perform task skillfully is the Accounting Information Systems. AIS cover business functions from traditional accounting transaction processing systems to complex financial management planning and processing systems.

By touching a button the user can obtain the information one needs to manage and control an organization. If one works in the marketing department one would benefit from Customer relationship management. CRM is used the most in large organizations. In an article presented by Richard Whitney a head vice president director, Marketing Database Services, CRM emerged in the late 90s as a mechanical strategy to improve the process companies enhance client’s service and bond. This software breaks the way organizations operate by automating and integrating marketing, sales and service The marketing and sales department can capture, store, and organize information with the use of CRM to better improve the quality of service to existing and new potential customers. At one touch of a button key information about a company's customers can help marketing personal make timely and accurate decisions. Enterprise resource planning (ERP) is a software application that integrates data and processes of an organization into one single system Finance software is very similar to accounting software but may have some additional features to…...

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