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How To Identify Generative AI Use Cases: A Step-by-Step Guide for Businesses

Avery Brooks
September 16, 2025

AI Use Case Planning & Deployment Starts By Understanding Your People & Your Processes

Generative AI is everywhere right now. But while the hype is high, the success rates are not. Most companies rush into pilots without a clear plan, only to find that the project stalls, fails to scale, or produces little measurable value. In fact, 95% of GenAI projects fail because they start with the technology instead of the business problem.

The good news: you don’t have to be in that 95%. With the right process, you can systematically identify generative AI use cases that fit your business, align with your strategy, and deliver measurable ROI.

This guide walks step by step through how to identify, evaluate, and prioritize AI opportunities—using frameworks, canvases, and process intelligence. And most importantly, we’ll show why task mining and process discovery are the foundation for building AI agents grounded in how your business really operates.

Why Most AI Pilots Fail (and What to Do Differently)

Generative AI pilots tend to fail for a few consistent reasons:

  • Hype-driven starts: Projects are launched because “we need to do AI,” not because they solve a business problem.
  • No process visibility: Teams don’t actually know how work is done today, so the AI solution doesn’t fit into daily workflows.
  • Poor data grounding: Without access to the right operational data, agents make unreliable or irrelevant decisions.
  • Lack of prioritization: All ideas are treated as equal, wasting resources on low-impact use cases.

The difference between the 95% that fail and the 5% that succeed comes down to one thing: a structured approach to AI use case identification, deployment and grounding.

The Business Value of Systematic Use Case Identification

Identifying GenAI use cases systematically ensures:

  • Strategic alignment – Every AI project ties directly to efficiency, customer experience, compliance, or revenue.
  • Higher ROI – You focus resources on the few use cases that deliver measurable impact.
  • Faster adoption – Use cases are grounded in real workflows employees already understand.
  • Reduced risk – You avoid wasting effort on projects that sound exciting but don’t map to business needs.

Step 1: Capture Ideas Across the Organization

Start broad. Potential AI use cases exist everywhere:

  • Frontline employees who see repetitive, manual work daily.
  • Customer feedback that reveals friction in service.
  • IT and data teams that know which systems are overloaded with requests.
  • Leaders who need better insights and faster decision-making.

Workshops, surveys, and ideation sessions are a great way to collect inputs before narrowing them down.

Step 2: Frame Ideas with an AI Use Case Canvas

Not every idea is worth pursuing. That’s where the AI use case canvas comes in.

A simple one-page canvas helps you answer key questions:

  • What problem are we solving?
  • What data sources are required?
  • What business value will this create?
  • What risks or compliance issues exist?
  • How will we measure success?

Framing ideas this way prevents “AI for AI’s sake” and keeps discussions anchored in outcomes.

Step 3: Evaluate with a Framework

Once you’ve framed ideas, evaluate them systematically with an AI use case framework.

Common frameworks include:

  • Business value vs feasibility: Will this move the needle, and can we realistically implement it?
  • Risk vs reward: Does the potential upside outweigh compliance, reputational, or technical risk?
  • Strategic alignment: Does this support your organization’s top priorities?

Clear scoring criteria help you quickly eliminate distractions and double down on high-value opportunities.

Step 4: Score with Impact–Feasibility Matrices

Now it’s time to prioritize. Use an impact–feasibility scoring matrix to rank opportunities:

  • Quick wins: High impact, easy to implement.
  • Strategic bets: High impact, harder to implement—worth planning for.
  • Low-value distractions: Drop them.
  • Long-term plays: Keep on the radar, but don’t prioritize now.

This step turns a long list of ideas into a focused portfolio of use cases that can actually move the business forward.

Step 5: Map the Current State with Task Mining and Process Discovery

Here’s where most AI initiatives fall apart: companies don’t actually know how work is done today. Without visibility into real workflows, any AI solution is built on guesswork.

This is where task mining and process discovery come in.

  • Process discovery maps out your workflows end-to-end by analyzing user activity, and business data.
  • Task mining captures user-level actions—clicks, copy/paste, form fills, research steps—so you see the granular details of how work actually gets done.

Together, they create a clear picture of your current state operations.

Why this matters for GenAI

Task mining isn’t just about efficiency; it’s the foundation for AI agent design.

  • Grounding in reality: AI agents can only be effective if they’re trained on how your business actually operates, not on assumptions.
  • Workflow detail: By capturing every step of a process, task mining provides the blueprint for agent workflows.
  • Error reduction: Agents trained on real-world task data make fewer irrelevant or risky decisions.

With ClearWork, this process is automated. Instead of relying on consultants or manual workshops, ClearWork captures and analyzes your real operational data—building a foundation for AI that is trusted, contextual, and grounded in how your teams truly work.

Step 6: Build and Prioritize the Portfolio

By combining:

  • Canvases to frame ideas,
  • Frameworks and scoring to evaluate, and
  • Process intelligence + task mining to ground them in reality,

…you now have a ranked list of AI use cases with a clear business case and technical foundation.

Quick wins can be piloted immediately. Strategic bets can be planned as your data and governance mature.

Step 7: Pilot, Measure, Expand

Don’t roll out GenAI everywhere at once. Start small:

  • Choose 1–2 high-value, low-risk use cases.
  • Define clear metrics (time saved, error reduction, CSAT improvements).
  • Pilot with a limited group of users.
  • Capture feedback, refine, and scale.

The goal is to prove value quickly while building the muscle for broader adoption.

Common Pitfalls to Avoid

  • Jumping straight to technology without use case identification.
  • Ignoring the current state of processes and tasks.
  • Chasing hype instead of aligning with business priorities.
  • Skipping governance and controls, leading to compliance risks.

Conclusion: From Hype to High-Value AI

Identifying generative AI use cases isn’t about brainstorming cool ideas—it’s about building a systematic, grounded approach that ties directly to business value.

By capturing ideas, framing them with a canvas, scoring them for impact, and grounding them in task mining and process discovery, you create a pipeline of AI opportunities that are achievable, measurable, and transformative.

ClearWork helps enterprises make this shift by automatically mapping processes, capturing task-level activity, and providing the foundation for AI agents grounded in real operational data.

If you want to be in the 5% of companies that succeed with GenAI, the path is clear: identify the right use cases, ground them in your processes, and scale with confidence.

FAQ: AI Use Case Planning & Deployment

1. Why do most GenAI pilots fail?

Around 95% of GenAI projects fail because they start with the technology, not the business problem. Common issues include lack of process visibility, poor data grounding, weak prioritization, and hype-driven launches. The difference between failure and success lies in using a structured approach to identify and evaluate use cases before deploying AI.

2. What’s the business value of systematic use case identification?

A structured process ensures every AI initiative aligns with strategic priorities like efficiency, customer experience, or revenue. It increases ROI by focusing resources on high-impact opportunities, reduces risk by avoiding “AI for AI’s sake,” and accelerates adoption by grounding use cases in workflows employees already understand.

3. What tools and frameworks help evaluate AI opportunities?

Organizations can use canvases and scoring frameworks to evaluate ideas:

  • AI Use Case Canvas: A one-page template to define the problem, required data, risks, and success metrics.
  • Impact–Feasibility Scoring: Ranks opportunities as quick wins, strategic bets, or low-value distractions.
    These tools help leaders prioritize effectively and create a focused portfolio of initiatives.

4. Why are task mining and process discovery critical?

Most AI initiatives collapse because companies don’t know how work is truly done. Task mining captures user-level actions (clicks, form fills, copy/paste), while process discovery maps workflows end-to-end. Together, they provide the operational “blueprint” to design AI agents that are trusted, contextual, and effective.

5. How should companies roll out GenAI use cases?

Start small with 1–2 high-value, low-risk use cases. Define measurable outcomes (e.g., time saved, error reduction, improved CSAT), pilot with a limited group, and refine before scaling. ClearWork automates process mapping and task capture, giving enterprises the foundation to design, prioritize, and expand AI use cases with confidence.

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Identify & Plan Your AI Use Cases With Confidence

Successful GenAI projects often times aren't determined by the technology you use - it's about how you choose to use that technology. With a grounded and thoughtful approach to planning you can ensure that your project is a success! Let's chat and discuss how ClearWork's task mining & process intelligence capabilities can ground your program.

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