October 18, 2023
Managing the Risks of Generative AI: The Critical Role of Data Governance
Marketing
October 18, 2023
Marketing

Generative AI promises to transform businesses through enhanced efficiency, insights and customer engagement. Yet it also poses considerable risks around data privacy, security, ethics and responsible usage. Recent incidents have showcased generative AI's downsides. With adoption accelerating rapidly, proactive data governance becomes essential to manage risks.
Generative AI refers to machine learning systems that can generate new, original content such as text, images, audio or video that reflects the data on which it’s trained. Prominent examples are chatbots like ChatGPT that can hold conversational dialog. But it also includes systems that generate images, 3D models, computer code and more based on textual prompts.
Key capabilities that enable generative AI systems include:
According to a recent IDC forecast, worldwide spending on generative AI is forecasted to reach nearly $16 billion in 2025, up from $300 million in 2020. [1] This exponential growth underscores how rapidly these technologies are spreading across organizations.
What's driving this surge in interest? Generative AI promises to unlock insights, enhance workflows, and improve customer experiences across organizations.
Relevant use cases include:
In a recent 1touch.io webinar, IDC analyst Jennifer Glenn stated:
"What digital transformation did for data, generative AI took a match and a room full of gasoline and just lit it on fire. Data is everywhere and people want to take advantage of it and harness it." [2]
Indeed, generative AI brings data to life in new ways. But if mishandled, it could also burn organizations.
While generative AI unlocks new opportunities, it also opens the door to significant risks if governance lags adoption. These dangers stem from both inherent model vulnerabilities and potential usage risks. Model risks involve threats of biases, errors, non-compliance, and harmful outputs, while usage risks relate to data loss, privacy infringement, and intellectual property theft.
Specific generative AI risks include:
The risks arising from both technical and human factors underscore the critical need for governance over data flows, model training and usage. Otherwise, organizations are flying blind.
Several recent incidents have provided sobering examples of how generative AI can backfire if governance is lacking:
These examples provide a reality check: deploying generative AI without governance invites risks.
How prepared are companies to govern generative AI data and usage? An IDC survey reveals a concerning gap:
Many organizations recognize the advantages of generative AI but aren't putting proper governance guardrails in place. This dilemma of maximizing potential while minimizing risk raises significant concerns about data security, privacy, and governance. Depending solely on humans to govern generative AI data and models at scale is unrealistic. Yet legacy tools also fall short.
Most organizations rely on traditional data security tools like classification, encryption and data loss prevention (DLP). While helpful, these solutions alone are inadequate for governing complex generative AI for several reasons:
Governing and managing generative AI risks poses major challenges:
Overcoming these hurdles necessitates thinking beyond legacy tools to create an integrated, scalable approach customized to generative AI's evolving risks.
To manage risks responsibly, data governance needs to be built into generative AI systems from the initial design stage.
Key data governance elements should include:
Gartner has highlighted AI Trust, Risk, and Security Management (AI TRiSM) as the number one strategic technology trend for 2024.[8] AI TRiSM provides a framework to build protections into AI systems and establish robust AI governance. Elements of an AI TRiSM program align with the data governance imperatives outlined here, including privacy, security, explainability, and continuous model monitoring.
Gartner predicts that by 2026, enterprises employing TRiSM controls will increase decision-making accuracy by eliminating 80% of faulty generative AI outputs. With a comprehensive governance strategy incorporating leading practices like AI TRiSM, organizations can securely harness generative AI and minimize blind spots.
As generative AI adoption accelerates, overlooking governance invites unnecessary risks ranging from non-compliance to reputational damage. By taking a proactive approach, organizations can benefit from generative AI securely and responsibly. The imperative now for security, privacy and compliance leaders is to recognize AI data governance gaps. With proper governance, companies can strategically tap into generative AI, harnessing data’s full potential while upholding ethics and protecting sensitive information. The principles of automation, integration, transparency, and human oversight serve as guideposts to realize generative AI's promise while controlling the risks.
Navigating the complexities of Generative AI can be daunting, but AI-powered solutions like 1touch.io Inventa simplify the complexities of generative AI. Inventa offers sensitive data intelligence, enabling organizations to safely leverage their entire data estate, including structured and unstructured data, for AI and analytics projects. By maintaining robust security controls and providing comprehensive visibility into data sensitivity and classification, it enhances time to insight while protecting sensitive information.
Don't let data governance gaps hold your organization back from harnessing generative AI securely. Get our white paper, 1touch.io Inventa: Optimize Generative AI with Precision and Protection, for insights and guidance on implementing robust data governance for AI. With the right data governance strategy tailored to your unique use cases, you can confidently innovate with AI and protect what matters most.
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