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Both direct and indirect tax departments employ data analytics, big data and Artificial Intelligence/Machine Learning in tax administration to make it more effective, free of official discretion, business and taxpayers friendly |
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28-3-2023 | |||
The Government is using data analytics, big data and Artificial Intelligence/Machine Learning in tax administration to make it more effective, free of official discretion, business and taxpayers friendly. This was stated by the Union Minister of State for Finance Shri Pankaj Chaudhary in a written reply to a question in Lok Sabha. Data analytics is being used to identify fiscal risks, suspicious trends and patterns and risky entities in Customs and GST by leveraging big data, the Minister added. INDIRECT TAXES The Project ADVAIT (Advanced Analytics in Indirect Taxes) has been rolled out in 2021, as a flagship analytics project for Indirect Taxes, by Central Board for Indirect Taxes and Customs (CBIC). The project uses capabilities of big data and Artificial Intelligence as well. ADVAIT has been envisaged with a threefold objective of enhancing Indirect Tax revenue, increasing taxpayer base, and supporting data-driven tax policy, the Minister stated. Further, the Minister stated, ADVAIT provides business outputs in three formats:
The Minister stated that the functionality of each output is specifically designed to aid and assist officers in their day-to-day operations that range from reporting and ensuring tax compliance to detecting tax evasion. The portal has advanced analytical capabilities including data matching, network analysis, pattern recognition, predictive analytics, text mining, forecasting and policy studies. ADVAIT has been designed and developed in a knowledge-driven data ecosystem using some of the most advanced data warehousing business intelligence solutions, keeping in view the 3 I’s:
DIRECT TAXES The Minister stated that the Central Board for Direct Taxes (CBDT) is using techniques as data analytics, big data and Artificial Intelligence/Machine Learning for:
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