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24 Feb 2026

Step 2: Backlog Refinement with AI (Without Losing Collaboration)

Author: Rod Claar  /  Categories: AI for Scrum Masters Learning Path  / 

Where AI Helps (and Where It Shouldn’t)

Appropriate Uses

  • Rewrite vague stories into clear user-value language

  • Generate draft acceptance criteria

  • Propose vertical slices

  • Surface edge cases

  • Suggest test scenarios

Not Appropriate

  • Final prioritization decisions

  • Technical architecture decisions

  • Estimation

  • Commitment decisions

You are using AI as a thinking amplifier, not a substitute for collaboration.


DO THIS EXERCISE

Step 1: Select One “Too Big” Story

Example:

“Build a new user dashboard with analytics.”

This is oversized, multi-featured, and vague.


Step 2: Use This Vertical Slice Prompt

Copy and use:


PROMPT TEMPLATE — Vertical Slice Generator

You are an experienced Product Owner and Agile coach.

INPUT
User Story: {paste oversized story}
Constraints: {tech constraints, sprint length, dependencies if known}

TASK
Propose 3 vertical slices that:

  • Deliver user-visible value

  • Can be completed within one sprint

  • Are independently testable

  • Avoid architectural layering splits

For each slice:

  1. Provide a short title

  2. Explain the user value

  3. List 3–5 acceptance criteria

  4. Explain why this is a true vertical slice

Keep responses concise and practical.


Step 3: Example Output (For the Dashboard Story)

Slice 1 — “View Basic Metrics Summary”

User Value:
User can see top 3 KPIs on login.

Acceptance Criteria:

  • Displays revenue, active users, churn

  • Data refreshes on page load

  • Handles empty data state

  • Works on desktop layout

Why Vertical:
End-to-end data retrieval, rendering, and validation.


Slice 2 — “Filter Metrics by Date Range”

User Value:
User can view metrics for last 7, 30, or 90 days.

(With criteria…)


Slice 3 — “Export Dashboard Snapshot as PDF”

User Value:
User can share dashboard externally.

(With criteria…)


Step 4: Bring One Slice to the Team

This is critical.

Do not accept AI output as final.

With the team:

  • Challenge assumptions

  • Improve acceptance criteria

  • Add missing edge cases

  • Refine definition of done

  • Re-estimate

The team must own the rewritten story.


Rewrite Template (With the Team)

Once a slice is selected:

Final Story Format

As a {user}
I want {capability}
So that {measurable benefit}

Acceptance Criteria:

Definition of Done Additions:


Why This Works

AI reduces:

  • Initial ambiguity

  • Story sprawl

  • Unproductive brainstorming loops

The team retains:

  • Ownership

  • Technical judgment

  • Commitment authority

That balance preserves collaboration while increasing throughput.

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After decades of building software and teaching professionals, I’ve learned that tools change—but clear thinking doesn’t. This site is here to help you use AI thoughtfully, and build software you can stand behind.  - Rod Claar