A rule-based data loss prevention (DLP) tool is a software solution that identifies and helps prevent unsafe or inappropriate sharing, transfer, or use of sensitive data. It can help an organization monitor and protect sensitive information across on-premises systems, cloud-based locations, and endpoint devices. It can also help an organization comply with regulations such as the Health Insurance Portability and Accountability Act (HIPAA) and General Data Protection Regulation (GDPR). A rule-based DLP tool works by comparing content to the organization’s DLP policy, which defines how the organization labels, shares, and protects data without exposing it to unauthorized users. The tool can then apply protective actions such as encryption, access restrictions, and alerts. As a result of implementing a rule-based DLP tool, the most likely change is the reduction of risk likelihood, which is the probability of a risk event occurring. By detecting and preventing data breaches, exfiltration, or unwanted destruction of sensitive data, a rule-based DLP tool can lower the chance of such incidents happening and thus decrease the risk likelihood. The other options are less likely to change as a result of implementing a rule-based DLP tool. Risk velocity is the speed at which a risk event impacts an organization, which depends on factors such as the nature of the threat, the response time, and the recovery process. Risk appetite is the amount and type of risk that an organization is willing to accept in pursuit of its objectives, which depends on factors such as the organization’s culture, strategy, and stakeholder expectations. Risk impact is the potential loss or damage that a risk event can cause to an organization, which depends on factors such as the severity of the incident, the extent of theexposure, andthe resilience of the organization. While a rule-based DLP tool may have some influence on these factors, it is not the primary driver of change for them. References = Risk IT Framework, ISACA, 2022, p. 13
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