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Learning Path

AI on a Development Team

Who it’s for: Developers, testers, and tech leads who want practical, sprint-ready ways to use AI to build faster without sacrificing quality.

Outcomes

  • Use AI to turn vague work into clear, testable stories and acceptance criteria the team can build from.
  • Accelerate coding with guardrails: prompts that reinforce TDD, code review quality, and consistent patterns.
  • Improve delivery reliability by using AI for risk surfacing, edge cases, and “definition of done” readiness checks.

Path Steps

Work through these steps in order. Each one links to a specific EasyDNNnews article/video post.

8 steps
1
Step 1: How AI fits into a dev team (without chaos)

You’ll learn where AI helps most (planning, building, testing, reviewing) and how to keep the team in control.

Do this List 3 recurring “time sinks” in your sprint and pick one to target with AI assistance first.
5
Step 5: Code generation with guardrails

You’ll learn how to constrain AI output to your architecture, conventions, and security requirements.

Do this Create a “project rules” snippet (stack, patterns, naming, linting) and reuse it in every coding prompt.
7
Step 7: Test data, mocking, and troubleshooting with AI

You’ll learn how to generate realistic test data and isolate failures faster with structured debugging prompts.

Do this Paste a failing test + stack trace and ask AI for the top 3 hypotheses with “how to prove/kill each.”

Steps - Free

Steps - Members

 
 
✓ Featured Content

AI Coding Videos

A curated playlist of specific YouTube content.

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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  /  Rate this article:
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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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