AI in the Wild Is Nothing Like AI in the Room
Building AI systems for real-world applications reveals significant challenges beyond controlled demonstrations. Initial agentic systems designed for well-structured data and clear business rules falter when faced with inconsistent, low-quality inputs and undocumented, evolving processes. To address this, a multi-agent architecture was developed, featuring a supervisor agent to route documents and specialist agents for specific tasks like extraction and validation, improving both accuracy and auditability. AI
IMPACT Highlights the critical need for robust, adaptable AI architectures that can handle real-world data variability and undocumented business logic for successful enterprise adoption.