Research on Enterprise Tax Risk Control and Planning Strategy Based on Big Data Technology
Keywords:
big data technology, tax risk management, tax planningAbstract
Under the digitalized economic environment, the extensive application of big data technology has promoted a change in enterprise tax management modes. Tax risk control and planning, as an important part of enterprise financial management, are closely related to the compliant operation and sustainable development of enterprises. This paper analyzes the application of big data technology in enterprise tax risk identification, assessment, and response. It also discusses strategies for integrating tax-related information, strengthening information security management, constructing a professional talent system, and building an intelligent tax planning system. These strategies aim to optimize the enterprise tax structure, reduce tax risk, and provide strong support for the lawful and compliant operation of the enterprise and its sustainable development.
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