AI Is Just One Part of the Equation Now
Enterprises are running more AI pilots than ever, but only a fraction reach production. Agentic AI is driving the next wave of business process automation, because it allows systems to understand objectives, plan tasks, connect to enterprise tools, and act autonomously. Adoption is rising quickly, with Gartner expecting up to 40 percent of enterprise applications to feature task specific AI agents by 2026.
Yet production success remains limited. More than 40 percent of current agentic AI projects are forecasted to be cancelled by 2027. The issue is not necessarily the models; it is the lack of orchestration, operational readiness, and cross functional alignment required to convert Agentic AI into stable, secure outcomes. Without these fundamentals, pilots stay pilots.
Why Most Agentic AI Initiatives Fail
Despite strong interest, many Agentic AI initiatives fail to reach production and a consistent pattern emerges across organizations:
- Lack of orchestration: Companies have models, APIs, and datasets but no coordinated layer that manages how agents interact with systems, workflows, and teams.
- Misalignment between strategy and delivery: Business goals move faster than the technical readiness of engineering and data teams.
- Missing governance and ownership: Without guardrails, monitoring, and clear escalation paths, pilots cannot scale safely.
- No readiness assessment: Teams start building agents before validating infrastructure, data quality, skills, and integration feasibility.
- Over-engineering at the start: Early prototypes become too complex too fast, leading to delays, instability, and burnout across teams.
Only with these fundamentals in place can enterprises identify the right use cases. High value opportunities typically involve repetitive decisions, heavy manual effort, or multi-system dependencies such as knowledge retrieval, claims validation, CRM research, and internal inquiry processing.
A clear roadmap must follow: building strong foundations, piloting in a controlled environment, and scaling once operational stability is proven.

A Practical Path to Production-Ready Agentic AI: CBTW’s 2-Step Approach
Turning agentic ambitions into real production outcomes requires structure. At CBTW, we use a 2-step approach that helps organizations move from early exploration to operational deployment with confidence.
Step 1: Readiness scan
This phase evaluates readiness across data, infrastructure, skills, governance, and integration points. We collaborate with enterprise stakeholders to:
- Diagnose organizational readiness
- Identify business problems with clear ROI
- Prioritize high-value use cases
- Map existing systems, gaps, and constraints
- Establish a realistic pathway from foundations → pilot → scale
This step ensures teams start with clarity and feasibility rather than assumptions.
Step 2: Implementation
Once readiness is confirmed, we move into implementation, which includes:
- Designing the architecture and orchestration blueprint
- Establishing governance, safety layers, and escalation paths
- Developing the first production-ready agent workflow
- Deploying into controlled environments
- Measuring results (accuracy, time saved, operational improvements)
- Refining and expanding based on real-world performance
This approach reduces risk, shortens time-to-value, and enables enterprises to scale responsibly.
Case Study: Transforming CRM Insights with Agentic AI
A recent CRM modernization project demonstrates how CBTW brings Agentic AI into production in a secure, enterprise-grade environment.
The client needed a way to extract structured insights from large volumes of customer interactions while meeting strict on-premise security requirements. Manual processing was slow, costly, and required highly specialized staff.
Our experts built and deployed a secure, modular agentic workflow that automated CRM data extraction at scale. The system now processes more than 50,000 documents autonomously.
Key outcomes:
- Over €1M in potential savings due to reduced manual workload
- 20 minutes saved per document
- Improved data quality, enabling new analytics and marketing opportunities
- Identification of additional agentic use cases unlocked by this initial success
This demonstrates how Agentic AI can deliver measurable operational impact when built on the right foundations and integrated into real workflows.
Ready to Explore Agentic AI for Your Enterprise?
If your teams are considering Agentic AI or evaluating where it can deliver value, CBTW can help assess readiness, identify use cases, and guide you through a structured path to production.
