Streamlining Compliance And Risk Management with Regtech Solutions
- URL: http://arxiv.org/abs/2501.18910v1
- Date: Fri, 31 Jan 2025 06:09:56 GMT
- Title: Streamlining Compliance And Risk Management with Regtech Solutions
- Authors: Chintamani Bagwe,
- Abstract summary: RegTech is a rapidly rising financial services sector focused on using cutting-edge technology to improve the process of regulatory compliance.
This paper sheds light on why RegTech will be one of the most promising markets, driven by the rising cost of compliance and the growing reliance on technology in crisis management.
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- Abstract: RegTech is a rapidly rising financial services sector focused on using cutting-edge technology to improve the process of regulatory compliance. RegTech solutions are characterized by numerous features and benefits that can considerably contribute to helping organizations operate effectively in the increasingly regulated environment, when it comes to compliance and risk management. This paper sheds light on why RegTech will be one of the most promising markets, driven by the rising cost of compliance and the growing reliance on technology in crisis management. Moreover, this paper will examine the advantages of using such solutions to strike a balance between compliance and operational efficiencies. This paper will deepen the understanding of regulatory compliance, introduce RegTech, and examine the benefits of using these solutions to achieve compliance.
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