Select the search type
  • Site
  • Web
Search

Learning Path

AI for Scrum Product Owners

Built for Product Owners and product leaders who want practical, sprint-ready ways to use AI for discovery, roadmap clarity, and backlog excellence—without losing customer focus.

  • Turn fuzzy ideas into crisp requirements Use AI-assisted discovery prompts to clarify outcomes, assumptions, and constraints—fast.
  • Write better stories with fewer rework loops Generate user stories, acceptance criteria, and examples that align to the Sprint Goal and Definition of Done.
  • Improve prioritization & stakeholder alignment Use AI to synthesize feedback, spot tradeoffs, and communicate value with confidence.

Path Steps

Work through these in order. Each step links to an EasyDNNnews article/video post, with a quick exercise to apply it immediately.

Learn a simple PO-friendly mental model for where AI helps most (discovery, backlog quality, prioritization, and stakeholder communication).

!Do this exercise

List your top 3 “unknowns” for the next release (users, value, constraints). Ask AI to generate 10 clarifying questions for each.

Learn how to turn interviews, notes, and feedback into themes, risks, and opportunities you can act on in a sprint.

!Do this exercise

Paste 10–20 lines of feedback. Ask AI to cluster it into themes + propose 3 experiments you can run next sprint.

Learn how to use AI to produce verifiable criteria and concrete examples (happy path, edge cases, and failure modes).

!Do this exercise

Pick one story. Ask AI for 6 acceptance tests: 2 happy, 2 edge, 2 negative—then remove anything you can’t objectively verify.

Learn a lightweight approach to ranking work using value, risk, and effort—and how to use AI to surface tradeoffs and assumptions.

!Do this exercise

Take your top 10 backlog items. Ask AI to propose a ranked list and explain the assumptions—then adjust the assumptions, not just the order.

Learn how to generate clear status updates that focus on outcomes, decisions needed, risks, and next steps—without noise.

!Do this exercise

Ask AI to draft a 6-sentence stakeholder update: outcome, evidence, what changed, current risk, decision needed, and next checkpoint.


Reminder: To deepen these skills in a real product environment, remember to take the Certified Scrum Product Owner (CSPO) class. The course expands on these techniques and shows how to apply AI responsibly in real Scrum teams.

Path Steps - Free

24 Feb 2026

Step 1: AI Foundations for Product Owners: A Practical Mental Model

This content introduces a practical mental model for how Product Owners should use AI effectively.

Instead of focusing on tools, it emphasizes outcomes. AI delivers the most value in four areas:

  1. Discovery – Clarifying user needs and exposing assumptions.

  2. Backlog Quality – Strengthening acceptance criteria and reducing ambiguity.

  3. Prioritization – Evaluating trade-offs across value, risk, and constraints.

  4. Stakeholder Communication – Translating complexity into clear narratives.

The core message: AI should amplify critical thinking, not replace product judgment.

A practical exercise reinforces this approach:

  • Identify the top three unknowns for the next release (users, value, constraints).

  • Ask AI to generate ten clarifying questions for each unknown.

The objective is to surface blind spots early, improve backlog decisions, and increase the probability of delivering meaningful business outcomes.

Author: Rod Claar
0 Comments
RSS

Path Steps - Members

 
 
✓ Featured Content

Scrum Product Owner Videos

A curated playlist of specific YouTube content.

Search Results

2 Jun 2026

What Changed in Software Development This Week Because of AI

Author: Rod Claar  /  Categories: Free Articles,   / 

Agile + AI · Weekly

What Changed in Software Development This Week Because of AI

Five facts from the past seven days, and what each one means for your Scrum team.

This was a big week for the tools that write code. One company shipped a stronger model that can run hundreds of helper agents at once. Another flipped the switch on how it charges for AI coding. A third opened a fast, cheap coding model to everyone. The pattern is clear: AI coding got more powerful and more hands-off, and the cost and control questions moved front and center.

Here are the five changes from the past seven days that matter most for software teams, with a source for each one. No guesses, no hype. After each story you will find a Scrum Team Signal with a plain next step.

Story One

Claude Opus 4.8 ships, and it can run hundreds of helper agents at once

On May 28, Anthropic released Claude Opus 4.8. It is the company's strongest public model, and it costs the same as the last version. The coding scores went up. On a hard coding test called SWE-bench Pro, it scored 69.2%, up from 64.3% on the prior model.

The bigger news for teams is a new Claude Code feature called dynamic workflows. It lets the model plan a large job and then run hundreds of smaller helper agents, called subagents, at the same time. Anthropic says this can carry a whole-codebase change, such as moving hundreds of thousands of lines of code to a new pattern, from start to a finished, tested merge. The feature is in research preview and is offered on the Enterprise, Team, and Max plans.

Anthropic also reports the model is better at being honest about its own work. It is more likely to flag what it is unsure about, and Anthropic's own tests show it is about four times less likely than the last version to let a flaw in code it wrote slip by without comment.

Less likely than the prior model to let a flaw in its own code pass without flagging it, by Anthropic's own tests.
Source: Anthropic
Scrum Team Signal

Treat the model like a strong but fallible teammate. Its better self-checking helps, but it does not replace your Definition of Done. Keep human review and passing tests as the bar before any AI change is "done."

Dynamic workflows can take on epic-sized jobs like big refactors and migrations. Plan those as their own backlog items, with clear acceptance criteria and a working test suite that defines success.

Read Anthropic: Introducing Claude Opus 4.8 · Anthropic: Dynamic workflows in Claude Code

Story Two

GitHub Copilot switches to pay-as-you-go billing today

Starting June 1, every GitHub Copilot plan moves to usage-based billing. The old system counted "premium requests." The new system uses GitHub AI Credits, where one credit equals one cent. Credits are used up based on how many tokens your work consumes, including input, output, and cached text.

Seat prices did not change. Pro is still $10 a month and now includes $10 in credits; Business is still $19 per seat with $19 in credits. Inline code completion, the autocomplete most people use, stays free and uses no credits.

Two things changed for heavy users. The old habit of dropping to a slower free model after you ran out is gone. When your credits run out, Copilot stops unless you have turned on extra spending. GitHub is adding a temporary "flex" credit bonus from June through September to ease the change, so watch what happens when that bonus shrinks in the fall.

$0.01
The value of one GitHub AI Credit. Credits now drain by token use, so a heavy week of agent work can pass what your plan includes.
Source: The GitHub Blog
Scrum Team Signal

AI coding is now a real, moving cost, not a flat fee. Bring it into sprint planning and team budgets. Set spend caps so a surprise bill is not possible, and use the billing preview to watch credit burn per developer.

Decide as a team which work is worth the credits. Letting an agent run unattended on a large task is no longer "free" once your included credits are gone.

Read The GitHub Blog: GitHub Copilot is moving to usage-based billing

Story Three

xAI opens a fast, low-cost coding model to all developers

On May 29, xAI made its coding model, grok-build-0.1, available to any developer through its API in public beta. Before this, you needed a paid Grok subscription to use it. It is the same model that powers the Grok Build command-line tool.

The model is built for agentic coding, meaning it can plan and carry out multi-step work such as building web pages, fixing bugs, and calling outside tools through MCP. xAI says it runs at more than 100 tokens per second and is priced at $1 per million input tokens and $2 per million output tokens. That makes it a cheap, speedy choice for routine agent and tool-calling jobs.

$1 / $2
Price per million input and output tokens for grok-build-0.1, served at 100+ tokens per second.
Source: xAI
Scrum Team Signal

More choices means "right tool for the job." Use a cheap, fast model for routine agent tasks, and save a pricier, stronger model for the hard problems. Make model choice a team decision, not a silent default in someone's editor.

Read xAI: Grok Build 0.1 on API

Story Four

Cursor 3.6 lets its agent act with fewer "are you sure?" prompts

Also on May 29, the Cursor editor shipped version 3.6 with a new setting called Auto-review. It lets the AI agent work longer with fewer stop-and-ask prompts. It covers three kinds of risky actions: shell commands, MCP tool calls, and web fetches.

Auto-review follows a three-step path. Actions you have approved in advance run right away. Actions that can be boxed off run in a safe sandbox. Everything else goes to a separate "classifier" agent that decides whether to allow it, try another way, or stop and ask you. Cursor is plain about the limit: it says this classifier is a best-effort convenience, not a security boundary.

3
Action types Auto-review now governs — shell commands, MCP tool calls, and web fetches — using allowlist, sandbox, then a classifier agent.
Source: Cursor
Scrum Team Signal

More agent freedom means fewer human checkpoints. Agree as a team on where the agent may act on its own and where a person must approve. Because the maker itself says the auto-check is not a security wall, keep security review inside your Definition of Done.

Read Cursor changelog: Auto-review Run Mode

Story Five

DeepSeek's deep price cut became permanent this week

DeepSeek had been running a 75% discount on its V4-Pro model, a strong open-weights model used for coding and reasoning. That discount was set to expire on May 31. Instead, the company kept it. When the deadline passed this week, the discounted rate did not roll back. It is now the standing price.

The new rates are about $0.435 per million input tokens and $0.87 per million output tokens. That is many times cheaper than the top models from U.S. labs, while the model still scores in the same range on coding tests. A discount that ends is a sale. A price that stays is a new floor, and rivals now have to answer it.

75%
The V4-Pro price cut that is now permanent, putting frontier-level coding at roughly $0.435 in / $0.87 out per million tokens.
Source: DeepSeek API pricing; reported by Reuters
Scrum Team Signal

Cheaper frontier models make experiments and large test or evaluation runs affordable. That is a real win for teams that want to try ideas before committing.

For regulated work, weigh more than price. Check where the data is processed and whether it meets your compliance rules. Revisit your model choices each sprint as prices keep moving.

Read Report: DeepSeek makes its V4-Pro price cut permanent

What we are watching next week

The cost and competition story is not slowing down. A few things to track, which we will report only once the source confirms them:

  • Reports say Microsoft may release its own coding model. We will cover it when Microsoft says so, not before.
  • Google committed to shipping Gemini 3.5 Pro in June. We will check whether it lands and how it scores on coding.
  • Early bills from GitHub Copilot's new credit system will start to show up. We will look for what real teams are paying.
RC

Rod Claar

Rod is a Scrum trainer, AI educator, and software development consultant with more than two decades teaching Scrum, Agile, Test-Driven Development, and software design. He writes the weekly newsletter at AgileAIDev.com on how AI is changing the way software teams work.

Every story above links to a primary source. Facts are reported as the original authors stated them. Dates and figures reflect announcements from May 28 through June 1, 2026.

Print

Number of views (461)      Comments (0)

Search

Calendar

«June 2026»
SunMonTueWedThuFriSat
31123456
78910111213
14151617181920
21222324252627
2829301234
567891011

Upcoming events

Join updates / get new lessons Free

Get notified when new Product Owner lessons, templates, and examples drop—so you can apply AI in your backlog and stakeholder work right away.

Go deeper with the course Paid

Move from “cool prompts” to a repeatable PO workflow: discovery → stories → prioritization → roadmap → stakeholder comms, with proven templates.

Quick setup: Replace the href="#" on “Join Updates” with your email/lead form link, and replace https://example.com/course-sales-page with your course sales page.