AI Ethics: The New Frontier
Many organizations are either delaying or pulling the plug on generative AI due to concerns about its ethics and safety. This is prompting calls to move AI out of technology departments and involve more non-technical business stakeholders in AI design and management.
More Challenging than Technology Issues
More than half (56%) of businesses are delaying major investments in generative AI until there is clarity on AI standards and regulations, according to a recent survey from the IBM Institute for Business Value. At least 72% say they are willing to forgo generative AI benefits due to ethical concerns.
The challenge for development teams at this stage is "to recognize that creating ethical AI is not strictly a technical problem but a socio-technical problem," said Phaedra Boinodiris, global leader for trustworthy AI at IBM Consulting, in a recent podcast. This means extending AI oversight beyond IT and data management teams across organizations.
AI Teams Should Ask Themselves These Questions
To build responsibly curated AI models, "you need a team composed of more than just data scientists," Boinodiris said. "For decades, we’ve been communicating that those who don’t have traditional domain expertise don’t belong in the room. That’s a huge misstep."
The ideal AI team should include "linguistics and philosophy experts, parents, young people, everyday people with different life experiences from different socio-economic backgrounds," she urged. "The wider the variety, the better." Team members are needed to weigh in on the following types of questions:
- Is this AI solving the problem we need it to?
- Is this even the right data according to domain experts?
- What are the unintended effects of AI?
- How can we mitigate those effects?
Very Important Strategically
Business leaders may be growing more cautious about the ethical implications of AI, but they also see a strong embrace of ethics as a source of competitive strength. Seventy-five percent of executives view AI ethics as an important source of competitive differentiation, and a majority — 54% — expect AI ethics to be "very important strategically." It’s an important signal to stakeholders: more than 85% of surveyed consumers, citizens, and employees value AI ethics.
A Holistic AI Ethics Framework
A holistic AI ethics framework identifies three types of ROI that can result from AI ethics investments, the IBM report states:
- Economic Impact (Tangible ROI): The tangible or direct financial benefits of AI ethics cover measurable factors such as cost savings, increased revenue, or reduced cost of capital.
- Capabilities Impact (Long-term ROI): This alludes to the long-term benefits of an AI ethics effort. Examples may include technical infrastructure or specific platforms for ethics that may allow organizations to modernize in ways that lead to further cost savings and innovation.
- Reputational Impact (Intangible ROI): The intangible or difficult-to-quantify benefits coming out of a strong AI ethics effort cover factors such as brand and culture that positively affect an organization’s reputations with shareholders, governments, employees, and customers.
Conclusion
The importance of AI ethics cannot be overstated. As organizations continue to invest in AI, it is crucial that they prioritize ethical considerations and involve a diverse range of stakeholders in the design and management of these systems. By doing so, they can mitigate the risks associated with AI and unlock its full potential.
FAQs
Q: What percentage of businesses are delaying investments in generative AI due to ethical concerns?
A: At least 72% of surveyed businesses are willing to forgo generative AI benefits due to ethical concerns.
Q: What is the most important aspect of AI ethics, according to executives?
A: Seventy-five percent of executives view AI ethics as an important source of competitive differentiation.
Q: What is the role of linguistics and philosophy experts in AI ethics?
A: Linguistics and philosophy experts can provide valuable insights on the unintended effects of AI and help identify potential biases in AI models.
Q: What are the three types of ROI that can result from AI ethics investments?
A: The three types of ROI are economic impact, capabilities impact, and reputational impact.

