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Futuristic business intelligence framework for start-ups

Deepika Amol Ajalkar, Shaikh Abdul Waheed, Mohammed Abdul Matheen, Poonam Gupta, Jayashri Prashant Shinde

Abstract


Small businesses like start-ups and freelancing are on the rise these days. Economic changes implemented in India provided a watershed moment for India’s diverse sectors, as well as for Asia’s start-up ecosystem. However, these start-ups face a lack of financial preparation, and as a result, some of them fail. The current article covers the notion of assisting newcomers in the market with financial planning. This article intends to equip new start-ups with methods and tools such as investment plans, social marketing planning, finance management, work-life balance, savings plans, and future finance plans. Some extras include taxes storage facilities. Start-ups and freelancers use several platforms for different objectives, therefore they face many issues in communications, time planning. This article also seeks to remove the aforementioned concerns by offering a single platform for the organization’s chat, calendar, to-do lists, announcements, alerts, and Payrolls, attendance, and so on. Furthermore, for business enhancement, the project strives for business analytics as the future scope and will give a single platform for client needs to decrease mistakes to a minimum. This article introduces the “Xenom” framework, which is used to realise the optimisation design of the business management system and information analysis platform. Furthermore, the collaboration of diverse platforms would eliminate time gaps, allowing businesses to follow their aims and forecast more efficiently.


Keywords


futuristic framework; business intelligence; start up; business analysis techniques

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References


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DOI: https://doi.org/10.32629/jai.v7i2.960

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Copyright (c) 2023 Deepika Amol Ajalkar, Shaikh Abdul Waheed, Mohammed Abdul Matheen, Poonam Gupta, Jayashri Prashant Shinde

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