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Why AI Governance Should Begin During Design, Not Deployment

Written by OvalEdge Team | Jun 26, 2024 5:20:00 PM

In this blog, we’ll explain why AI governance must be built into the design of AI tools and not introduced at deployment. 

Picture this. A hospital collects patient data without a structured approach. That hospital faces significant difficulties when later attempting to introduce AI for predictive analytics or personalized medicine. Why? Because quality and standardization issues, such as inconsistencies, incompleteness, and unstructured formats, require extensive cleaning and preprocessing before AI models can utilize the data effectively. 

Similarly, a manufacturing company that relies on traditional maintenance schedules for its machinery faces substantial challenges when implementing AI for predictive maintenance later down the line. The lack of comprehensive historical data on machine performance and failures impacts the training of accurate predictive models. 

What’s more, existing machinery often requires retrofitting with sensors to collect necessary real-time data, incurring additional costs and causing potential downtime. The transition also demands significant change management efforts, as operators and maintenance staff need training to understand and trust AI-driven maintenance recommendations. 

Moreover, integrating AI systems with existing production management and monitoring systems presents technical complexities, further delaying the realization of AI’s benefits.

Similarly, a financial institution that relies on manual or rule-based systems for fraud detection faces several challenges when transitioning to AI-based methods. Historical transaction data may not be adequately annotated with fraud labels, complicating the training of supervised learning models. 

Early AI implementations might exhibit higher rates of false positives or negatives due to the lack of high-quality training data. Furthermore, introducing AI requires additional compliance checks and adjustments to ensure regulations are met. The complexity of integrating AI with existing legacy systems adds to the difficulties, making the shift to AI-driven fraud detection a formidable task.

The above three examples demonstrate why AI governance must be established during the design phase, not at deployment. 

Related Post: What is AI Governance?

Why Early-Stage Governance is Critical for AI

Implementing AI governance at the start of the development process should be a primary objective for any organization launching an AI initiative. Doing so safeguards your company from a range of risks that can seriously impact your business. 

As the above examples demonstrate, proactive AI governance is crucial for the following reasons:

1. Data quality and standardization

Proactive AI governance ensures data is collected, stored, and processed in a standardized, structured manner from the outset, facilitating easier integration and utilization by AI models.

2. Cost and resource management

Early-stage AI governance helps identify necessary technological and procedural upgrades beforehand, allowing for more efficient allocation of resources and minimizing unexpected costs and disruptions.

3. Change management and training

Implementing governance from the start ensures that organizational changes and staff training are planned and executed smoothly, fostering better acceptance and understanding of AI technologies.

4. Historical data adequacy

Proactive governance mandates proper data annotation and documentation practices from the beginning, enabling more effective training and performance of AI models.

5. Regulatory compliance

Establishing AI governance early ensures that compliance with existing and future regulations is built into the development process, reducing the risk of legal issues and ensuring smoother integration with existing systems.

6. Technical integration

Early AI governance frameworks address technical integration challenges by planning for compatibility and interoperability from the design phase, accelerating the realization of AI benefits.

7. Bias and fairness

Proactive AI governance includes measures to identify and mitigate biases during the design phase, ensuring fair and unbiased outcomes.

8. Ethical considerations

Early governance establishes ethical guidelines and frameworks, promoting transparency, accountability, and user consent from the beginning, which is essential for building trust and ensuring responsible AI deployment.

Conclusion

Proactive AI governance is crucial to ensuring the successful implementation of AI technologies. By establishing governance frameworks during the design phase, organizations can standardize data collection, manage costs, and facilitate change management and training. 

This approach ensures historical data adequacy, regulatory compliance, and smooth technical integration. Additionally, proactive governance addresses bias and fairness, and establishes ethical guidelines, promoting transparency, accountability, and user trust.