Hospitals are adopting a phased approach to AI. They start with commercially ready, low-risk, non-clinical applications like RCM. This allows them to build an internal 'AI muscle'—developing frameworks and expertise—before expanding into more sensitive, higher-stakes areas like patient engagement and clinical decision support.
Don't try to optimize your strongest departments with your first AI project. Instead, target 'layup roles'—areas where processes are broken or work isn't getting done. The bar for success is lower, making it easier to get a quick, impactful win.
The biggest hurdle for enterprise AI adoption is uncertainty. A dedicated "lab" environment allows brands to experiment safely with partners like Microsoft. This lets them pressure-test AI applications, fine-tune models on their data, and build confidence before deploying at scale, addressing fears of losing control over data and brand voice.
To introduce AI into a high-risk environment like legal tech, begin with tasks that don't involve sensitive data, such as automating marketing copy. This approach proves AI's value and builds internal trust, paving the way for future, higher-stakes applications like reviewing client documents.
Begin your AI journey with a broad, horizontal agent for a low-risk win. This builds confidence and organizational knowledge before you tackle more complex, high-stakes vertical agents for specific functions like sales or support, following a crawl-walk-run model.
Avoid deploying AI directly into a fully autonomous role for critical applications. Instead, begin with a human-in-the-loop, advisory function. Only after the system has proven its reliability in a real-world environment should its autonomy be gradually increased, moving from supervised to unsupervised operation.
An effective AI strategy in healthcare is not limited to consumer-facing assistants. A critical focus is building tools to augment the clinicians themselves. An AI 'assistant' for doctors to surface information and guide decisions scales expertise and improves care quality from the inside out.
While AI has vast potential, its most immediate and successful entry point is automating prior authorizations. This administrative bottleneck is considered an 'easy win' because it's non-patient-facing, has a clear ROI, and sits at the front of treatment, leading to natural and rapid adoption.
To mitigate risks like AI hallucinations and high operational costs, enterprises should first deploy new AI tools internally to support human agents. This "agent-assist" model allows for monitoring, testing, and refinement in a controlled environment before exposing the technology directly to customers.
To navigate the high stakes of public sector AI, classify initiatives into low, medium, and high risk. Begin with 'low-hanging fruit' like automating internal backend processes that don't directly face the public. This builds momentum and internal trust before tackling high-risk, citizen-facing applications.
In sectors like finance or healthcare, bypass initial regulatory hurdles by implementing AI on non-sensitive, public information, such as analyzing a company podcast. This builds momentum and demonstrates value while more complex, high-risk applications are vetted by legal and IT teams.