Buying Advice to Tackle AI Trust, Risk, and Security Management

In this technologically dominated era, the integration of artificial intelligence (AI) has become a trend in numerous industries across the globe. With this development of technology, AI brings potential risks like malicious attacks, data leakage, and tampering.

Thus, companies are going beyond traditional security measures and developing technology to secure AI applications and services and ensure they are ethical and secure. This revolutionary discipline and framework is known as AI Trust, Risk, and Security Management (AI TRiSM), which makes AI models reliable, trustworthy, private, and secure.

In this article, we will explore how chief information security officers (CISOs) can strategize an AI-TRiSM environment in the workplace.

Four Reasons CISOs Need to Build an AI Trism Framework Into AI Models 

Generative AI (GenAI) has sparked an interest in AI pilots, but organizations often don’t consider the risk until the AI applications or models are ready to use. So,a comprehensive AI trust, risk, and security management program that helps CISOs integrate governance upfront and robust proactive measures to ensure AI systems protect data privacy, compliance, fairness, and reliability.

Here are four reasons CISOs need to build an AI TRiSM framework while creating AI models:

Explain to Managers the Use of AI Models

CISOs should not explain the terminology of AI; rather, they should be specific about how the model works, its strengths and weaknesses, and potential biases..

With numerous application areas in businesses, AI enables good managers to be great by improving employees and customer relations by analyzing and automating the repetitive tasks of data collection and training.

Anyone Can Access Generative AI Tools

GenAI has the potential to transform your business at a competitive level, but this opportunity also opens doors for new risks that cannot be addressed with traditional controls.

The implementation of the AI TRiSM framework on generative AI establishes a robust technological foundation, fostering a culture of responsibility and comprehensive policies that help you and your team responsibly and ethically deploy AI technologies.

AI Models Require Constant Monitoring

Specialized risk management processes can be integrated into AI models to keep AI compliant, fair, and ethical. Further, software developers can build custom solutions for the AI pipeline.

CISOs must also control the whole process of building an AI model, for example, model and application development, testing and deployment, and ongoing operations.

Detecting Malware Through AI Models

Malicious AI attacks cause losses and injury to organizations, including those involving money, people, sensitive information, reputation, and associated intellectual property.

However, such accidents may be avoided by implementing certain procedures and controls, as well as by enhancing and testing a strong workflow of AI models outside of the apps.

To Know More, Read Full Article @ https://ai-techpark.com/tackling-ai-trism-in-ai-models/

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Posted in Business blogs on January 22 at 01:17 AM

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