Gen AI governance: 10 tips to level up your AI program

Gen AI governance: 10 tips to level up your AI program

Stop us if you’ve heard this one before: A large multinational company, or even just an organization operating under a complex set of regulations, wants to add AI to their tech toolkit. They start with an AI pilot to determine viability, or perhaps they don’t even know how to get started. Either way, the bespoke nature of the AI review process and the intersection of AI and regulatory uncertainty makes progress sluggish and inefficient. Eventually, they decide to table using AI until some point in the future.

The problem is that the future is now, the competition knows this, and it’s important that organizations lean into AI to help achieve their goals — not away from it. Striking the right balance between data governance and technological development is crucial and urgent, as we explore in a new column that we’ve adapted below. You can read the full article here.


While many business leaders are eager to adopt generative AI technologies and tools, ensuring risk management and governance with AI models remains a challenging question with multifaceted answers. 

It’s no secret that using generative AI in a business setting can pose many risks around accuracy, privacy and security, regulatory compliance, and intellectual property infringement.

Choosing your path forward often starts with creating a programmatic, repeatable structure that can help achieve a consistent approach to evaluating AI use cases. Doing so also supports comprehensive oversight that considers the various facets which are relevant to a secure and compliant implementation.

Using AI can also help mitigate many challenges, including worker toil, threat overload, and the talent gap. Aligning on the objectives, roles and responsibilities, and appropriate escalation paths within the organization, are critical to maintaining ongoing viability and success. As a first step, define your governance structure and clearly articulate its role within the context of the overall organization’s AI innovation strategy.


To help organizations navigate these challenges, we’ve outlined 10 best practices to streamline and operationalize AI implementation at scale.

  1. Identify key stakeholders from various disciplines to provide their subject matter expertise to evaluating AI initiatives. Precise titles vary across organizations, but typically include representatives from the following functions: IT Infrastructure, Information Security, Application Security, Risk, Compliance, Privacy, Legal, Data Science, Data Governance, and Third Party Risk Management teams.

  2. Define your organization’s guiding AI principles to articulate foundational requirements and expectations, as well as use cases that are explicitly out of scope. The guiding principles should be flexible and not overly prescriptive, capturing commitments from which the organization won’t deviate; for instance, a focus on safeguarding customer privacy, or ensuring a human is involved in reviewing AI-generated decision making for certain use cases. As an example, see Google’s Responsible AI Principles.

  3. Use a framework such as Google’s Secure AI Framework (SAIF) for a secure and consistent approach to AI implementations. However, beware of security framework traps — a framework is just a tool, and its use shouldn’t be confused with having achieved your objective. Rather, a framework like SAIF is a helpful way to approach AI implementation to ensure its multiple facets are comprehensively considered. For instance, tying in the AI tool inventory into technology change management processes to ensure AI deployments are kept up to date, or as another example, that AI deployments are included in threat management exercises, taking into account the novel types of attacks to which AI tools are susceptible.

  4. Document and implement relevant policies and procedures for AI design, development, deployment and operations. Ownership of these resources typically varies by team, and effective AI governance oversight requires a concerted effort to maintain accuracy, completeness and alignment.

  5. Articulate the AI use cases being considered relative to the organization’s strategy and risk appetite. Rank them in order of business priority and the degree of risk they may pose, tailoring the security and data protection controls accordingly.

  6. Plug into your organization’s data governance program because AI models typically require high-quality data which should be appropriately sourced, cleansed, and normalized. Carefully selecting your data set and tuning the AI model for your specific needs can also help minimize the potential for hallucinations and risk of prompt injections.

  7. Partner closely with your Compliance, Risk, and Legal stakeholders. AI regulation is a rapidly evolving space, and staying closely aligned with regulatory requirements is imperative to maintain the organization’s compliance posture and also inform the overall governance process.

  8. Establish points of escalation so that when questions arise, there’s a clear path to getting them answered. While some organizations may want to send their internal queries to Legal, Compliance, or Information Security, others might prefer to empower a designated committee to make decisions.

  9. Implement mechanisms for providing visibility on the status of each AI initiative both to internal stakeholders (senior management, board of directors) and externally, such as to relevant regulatory bodies.

  10. Institute a dedicated AI training program to support organization-wide understanding of key concepts and potential challenges associated with AI. A modular, focused approach with tailored content for staff depending on their role may also be helpful in support of skills development and a broad understanding of risks to avoid, such as the use of shadow AI.


What’s next for your gen AI governance journey?

Identify an AI champion to get the conversation started. This executive should have visibility into the organization’s AI strategy and a collaborative approach to bringing stakeholders from various disciplines together while clearly communicating the business cases for AI and also how the organization as a whole should rise to meet it. A helpful resource to consider as you embark on this journey is Google Cloud Generative AI Skills Boost for practical, hands-on learning.

For additional information on securing AI, review our papers “Securing AI: Similar or Different” and “Google Cloud’s Approach to Trust in AI.”

William L.

Data Management and Governance @ Great Eastern | EMBA

2mo

The Future of AI: A Balancing Act The development of AI hinges on two forces: bold innovators and prudent risk managers. Organizational culture sets the stage, but true leadership will come from those who push boundaries ethically. While guardrails like GenAI governance are essential, they can't stifle creativity. The key lies in a nuanced approach - one that fosters innovation without succumbing to recklessness. Perhaps GenAI governance is more of an art than a science? Traditional methods just won't cut it in this dynamic landscape.

Like
Reply
Afsana Memon

python developer l devops l aws

3mo

Thanks for sharing

Like
Reply
Miss Terra

Corporate Communications Manager at PT. Terralogiq Integrasi Solusi

3mo

Indonesia has a national #AI #strategy and ethical guidelines, it's encouraging to see them moving towards legally binding regulations. This multi-pronged approach, combining existing data protection laws with specific AI rules, positions Indonesia well to harness the power of AI responsibly. Public participation in shaping these regulations will be crucial to ensure a future where AI benefits all of Indonesian #society.

Like
Reply
Leon Chalupa

Entrepreneur in IT Security / Business Professional and Enthusiast for Cloud Computing, Cryptography, Software Engineering and Cybersecurity I Bitkom Member and Ambassador

3mo

Amazing.

Like
Reply
Laxmi Abhay

Deep dive into personal finance …

3mo

Very helpful 👍Google Cloud

Like
Reply

To view or add a comment, sign in

Insights from the community

Others also viewed

Explore topics