Back at university, my math friends and I used to joke about Asimov’s Three Laws like they were sacred code. Here are the rules:
While these rules were fun to quote, they were never something we thought we’d actually live through. They were written for science fiction, but they stuck with us.
Fast forward to my early CA Technologies days, circa 2018: AI was still fringe. Just one friend of mine in the whole open space was tinkering with autonomous driving and building a chatbot to learn Czech—and he was the outlier.
Now? AI’s gone from niche, nerd side project to survival strategy.
As my colleague Lance Knight said in “The AI Reckoning: Why CEOs Are Losing Sleep,” CEOs aren’t wowed by pilots anymore—they want tangible impact and measurable value, and they want it yesterday.
That urgency is echoed across the industry. Gartner’s AI roadmap and Broadcom’s white papers on ValueOps for AI both underline the same point: AI is not a science experiment anymore. It’s a business discipline, one that demands structure, governance, and outcome focus. In other words, it demands Clarity.
Despite rising investment, many enterprises remain stuck in AI purgatory—trapped between pilots and production. According to Gartner, only 54% of AI projects make it to production, and fewer than half deliver meaningful results.
Gartner outlines seven workstreams critical for AI success:
Most teams can build models. But few have the structure to manage value delivery, cross-team execution, and funding at scale.
Without this foundation, use cases drift, results go unmeasured, and AI becomes a costly patchwork of disconnected pilots—rather than a strategic engine for change.
Clarity empowers CIOs to bring order to AI complexity by turning strategic vision into execution-ready action—with transparency across funding, teams, and outcomes.
In this blog, I will break out practical ways for organizations to finally get out of pilot mode and into production, showcasing how using Clarity aligns perfectly with Gartner’s AI workstreams and every stage of the Gartner’s AI Strategic Portfolio Management (SPM) lifecycle, while enabling teams to avoid common pitfalls.
→ Gartner workstreams: AI strategy, AI data
Define your AI vision and investment roadmap.
✅ Use Clarity OKRs, roadmaps, and hierarchies to map, prioritize, and reallocate AI investments in real time.
Clarity Roadmaps enables CIOs to effectively communicate AI and digital transformation strategies, providing real-time visibility into investments, timelines, and dependencies. This ensures stakeholders are aligned and informed.
Clarity’s hierarchies structure AI portfolios by themes, products, or value streams—giving CIOs a clear line of sight from high-level strategy to granular execution.
→ Gartner workstreams: AI organization, people and culture, AI governance
Build a scalable operating model for AI delivery.
✅ Use integrated resource management capabilities in Clarity to model team capacity and talent pipeline. Use Clarity workflows, blueprints, and business rules for governance controls.
Clarity provides real-time visibility into the skills in demand to deliver AI initiatives, highlighting bottleneck skills over time. The solution enables proactive planning, so teams can address resource gaps before they have an adverse impact on initiative success.
→ Gartner workstreams: AI engineering, AI data
Deliver with full visibility and cross-team alignment.
✅ Use Clarity’s integrations (such as ConnectALL) to uncover delivery risks and coordinate execution.
📸 ConnectALL in action
Use ConnectALL to bridge toolchains and workflows, ensuring traceability from strategic intent to execution.
→ Gartner workstream: AI value realization
Track ROI and accelerate high-value initiatives.
✅ Use Clarity’s OKRs and value dashboards to steer funding toward results.
Clarity’s dashboards offer comprehensive financial and non-financial insights, helping leadership track the health of initiatives and confidently assess the value delivered.
Clarity’s OKRs connect delivery metrics to strategic outcomes—helping teams focus on what truly drives value, not just what gets done.
Clarity enables AI strategy to evolve from conceptual to operational, ensuring that funding, people, and timelines are aligned with strategic business value—with transparency from the first use case to full-scale rollout.
One multinational company I advise—with more than 30,000 employees and over 300 AI initiatives—was struggling with fragmented tools, spreadsheets, emails, and slow approvals. Strategic alignment was nearly impossible. We introduced Clarity as the central platform for managing AI initiatives. The solution standardized intake, streamlined evaluations, and gave leaders real-time visibility across the portfolio.
Now:
The results? Less manual work, faster decisions, and tighter alignment with business goals. The company is now exploring how to refine Clarity for talent planning and workforce management—so they can better align skills, capacity, and staffing with their evolving AI priorities.
AI budgets are rising—but so is executive scrutiny. Boards no longer accept innovation theatre. They demand visibility, clear prioritization, and measurable outcomes. Clarity provides the structure to deliver real value—without slowing innovation.
If your AI roadmap is still trapped in PowerPoint or stuck in endless pilots—it’s time to operationalize.
Let’s talk about how Clarity can help you shift from experimentation to execution. Find out how you can connect strategy, funding, and people to value delivery—and generate results your CEO will care about. Learn more here.
Disclaimer: No AIs were harmed, retrained against their will, or left running overnight to write this article.