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Assess and Prioritize Agentic AI Use Cases in Transportation

Focus autonomy where it strengthens reliability, utilization, and service continuity.

Autonomy is being discussed faster than governance is being designed. Innovation teams are exploring agentic AI aggressively, while governance, risk, compliance, and operational control models remain underdeveloped.

Leaders struggle to determine where agentic AI is appropriate. Agentic AI is often framed as a general-purpose capability while CIOs need a tangible way to distinguish between high-value autonomy and high-risk overreach.

Value is easier to imagine than to prove at enterprise scale. CIOs face difficulty translating abilities of agentic AI into defensible business cases due to complexity of processes and lack of adoption readiness.

Our Advice

Critical Insight

Agentic AI use in transportation must prioritize robustness under volatility, align with safety engineering principles, and push against “fair-weather autonomy.”

Impact and Result

  • Evaluate agentic AI based on resilience and reliability, not just efficiency gains.
  • Prioritize improving data quality, real-time integration, and observability so that agents operate with reliable situational awareness.
  • Define escalation triggers, override authority, audit trails, and accountability ownership before allowing agents to act within operational workflows.

Assess and Prioritize Agentic AI Use Cases in Transportation Research & Tools

1. Assess and Prioritize Agentic AI Use Cases in Transportation Storyboard – A step-by-step document that helps CIOs and transportation leaders understand where agentic AI can unlock new operating capabilities.

Identify high-value opportunities for agentic AI in transportation by connecting operational priorities to the workflows, decisions, and coordination activities where agents can create measurable value. To move from isolated AI experimentation to scalable and responsible adoption, transportation organizations must understand where agents can safely support or execute decisions, how autonomy should be constrained within operational environments, and what data, integration, governance, and control mechanisms are required before deployment.

This storyboard will help you understand the capabilities and operational implications of agentic AI across transportation and logistics value streams, including customer acquisition, order management, transportation operations, fulfillment, passenger operations, and disruption management.

2. Agentic AI Use Case Tool for Transportation – A structured tool to help transport leaders prioritize agentic AI opportunities and build a roadmap for responsible adoption.

This tool guides transportation leaders through the evaluation and prioritization activities required to build a practical agentic AI adoption roadmap. This Excel workbook helps you connect business goals to agentic AI opportunities, assess where autonomous or semi-autonomous capabilities can create measurable value, and determine which use cases are most appropriate to pursue first.

Focus autonomy where it strengthens reliability, utilization, and service continuity.

About Info-Tech

Info-Tech Research Group is the world’s fastest-growing information technology research and advisory company, proudly serving over 30,000 IT professionals.

We produce unbiased and highly relevant research to help CIOs and IT leaders make strategic, timely, and well-informed decisions. We partner closely with IT teams to provide everything they need, from actionable tools to analyst guidance, ensuring they deliver measurable results for their organizations.

What Is a Blueprint?

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Each blueprint can be accompanied by a Guided Implementation that provides you access to our world-class analysts to help you get through the project.

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Guided Implementation 1: Build a Shared Understanding of Agentic AI, Value Drivers, and the Organizational Value Chain
  • Call 1: Review the capability map/value stream map.
  • Call 2: Identify domains where agentic AI may create value.

Guided Implementation 2: Establish a Structured Approach for Evaluating Use Cases Using the Tool
  • Call 1: Understand agentic AI use cases across value stream domains.
  • Call 2: Define the decision boundaries and expected operational outcomes.

Guided Implementation 3: Refine Candidate Use Cases to Produce a Realistic Set of Opportunities for Evaluation
  • Call 1: Evaluate fitment and risk scenarios.

Guided Implementation 4: Define Use Cases With Specified Value Drivers, Autonomy Levels, and Operational Roles
  • Call 1: Estimate value for each use case using metrics.

Guided Implementation 5: Prioritize Practical Opportunities and Define a Phased Roadmap for Implementation
  • Call 1: Prioritize use cases by balancing value, risk, and readiness.
  • Call 2: Develop a sequenced adoption roadmap.

Author

Shreyas Shukla

Contributors

  • Michael Chang, Director of Logistics, Canadian Recycling and Scrap Processing Company
  • Kartik R, Customer Success Manager, Global SaaS Company
  • Two Anonymous Contributors
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