
IMPLEMENT AGENTIC AI AND MAXIMIZE ROI
Implementing agentic AI requires more than technical readiness. Strategic planning and phased deployment determine whether organizations achieve sustainable value or face escalating costs. This section of our Economics of Agentic AI series explains how to structure adoption, manage integration complexity, and optimize operational expenses.
Compute requirements for reasoning models can be 10–20 times higher than traditional AI, creating unique challenges for IT budgets. Pricing models such as pay-as-you-go introduce unpredictability, while managed infrastructure demands upfront investment. Without a clear strategy, these factors can erode returns and delay adoption.
Inside this report, you’ll find practical guidance on:
- Cost modeling for inference and infrastructure
- Integration approaches for legacy and modern systems
- Optimization techniques for token usage and processing
- Workforce enablement and change management strategies
Whether you’re piloting a single use case or scaling enterprise-wide, this guide helps you align implementation tactics with business objectives and maintain predictable performance.
