Select the search type
  • Site
  • Web
Search

AI News

How to Use AI for Prioritization
Rod Claar
/ Categories: Generative AI

How to Use AI for Prioritization

Let Data Drive Your Backlog

Scrum & AI Insights

Stop Guessing.
Let Data Drive Your Backlog.

AI tools are now good enough to help Product Owners and Scrum Teams make smarter decisions about what to build next — without replacing human judgment.

April 2025
 
8 min read
 
Scrum · Agile · AI

The Backlog Problem Every Team Knows

Walk into almost any Scrum team's planning meeting and you will see the same thing. The backlog has hundreds of items. Everyone has an opinion. Time is short. The Product Owner has to make a call, and often that call is based on whoever talked the loudest in the last stakeholder meeting.

That is not a process failure. It is a data problem. Most teams have more information than they use. They have past sprint data, bug counts, customer feedback, release notes, and support tickets. They just do not have time to read it all before a planning session.

That is exactly where AI fits in.

The core idea: AI does not replace the Product Owner. It reads the data faster than any human can, finds the patterns, and surfaces what matters — so the Product Owner can make a better decision.

What AI Can Actually Do Here

Let's be clear about what we mean. AI tools today — including large language models like GPT-4 and Claude — can do several useful things with your backlog when given the right data:

  • Rank stories by business value signals. When you feed an AI your user stories along with customer feedback or revenue data, it can spot which stories connect to your highest-value outcomes.
  • Cluster related items. AI can group similar backlog items together, which helps you spot duplicates and find themes you may have missed.
  • Flag risk and dependency patterns. By reading item descriptions and past sprint notes, AI can warn you when a story has blockers that are not obvious from the title alone.
  • Score items against your goals. If you tell AI what your sprint goal or product vision is, it can score each backlog item on how well it aligns — a real time-saver before Sprint Planning.
  • Summarize large amounts of feedback fast. Hundreds of support tickets or app reviews can be processed in seconds to extract the top themes customers are asking about.

Real Tools That Do This Today

Several tools on the market now have AI built right into their backlog management features. These are tools being used by real teams right now:

Jira · Atlassian
Atlassian Intelligence

Atlassian Intelligence is built into Jira. It can summarize issues, suggest related stories, and answer questions about your board using natural language. It uses your project data directly.

Microsoft · GitHub
GitHub Copilot + Azure DevOps

GitHub Copilot now extends beyond code. Microsoft has been integrating Copilot into Azure DevOps work item management, including helping teams write and refine user stories.

Linear
Linear AI Assist

Linear added AI features for writing issue descriptions, breaking down large features, and generating sub-tasks automatically from a high-level description.

General Purpose
ChatGPT / Claude

You do not need a specialized tool. Paste your backlog into a conversation with ChatGPT or Claude and ask it to rank, cluster, or score the items. Simple and effective for smaller backlogs.

Notion
Notion AI

Notion AI can read your project database and help you sort, tag, and summarize backlog items stored in Notion. Useful if your team already manages work there.

Shortcut
Shortcut (formerly Clubhouse)

Shortcut has been rolling out AI story writing and description features that help teams write cleaner, more consistent user stories faster.

How to Use AI for Prioritization — Step by Step

You do not need a special setup to try this. Here is a practical approach any Product Owner can use starting today, even with just ChatGPT or Claude:

1
Export your backlog to plain text or a spreadsheet.

Pull your top 30 to 50 backlog items with their titles, descriptions, and any existing tags or categories. You do not need all 500 items — start with the ones most likely to hit the next few sprints.

2
Write a clear prompt that states your goal.

Tell the AI your product goal, your sprint goal if you have one, and what matters most to your business right now. Example: "We are a B2B SaaS team. Our goal this quarter is reducing customer churn. Here are our top backlog items. Score each one from 1 to 10 based on how directly it helps reduce churn."

3
Paste in your backlog data.

Give the AI the actual item titles and descriptions. The more context you give each item, the better the output. Vague titles like "Fix bug" get vague scores. Clear stories get useful scores.

4
Review the output with your team.

Bring the AI-generated ranking to your backlog refinement session. Use it as a starting point, not a final answer. Let the team discuss where they agree and where they do not. This is where human judgment takes over.

5
Ask follow-up questions.

The AI is still in the conversation. Ask it why it ranked something low. Ask it what dependencies it spotted. Ask it to re-rank after you add a new constraint. This back-and-forth is where the real value shows up.

Where This Fits in the Scrum Framework

AI-assisted prioritization is not a new Scrum event. It is a tool you use inside the events you already have. Here is where it fits:

  • Product Backlog Refinement: This is the best place to use AI. Before the session, run your items through an AI to pre-score or cluster them. Walk in prepared instead of starting from scratch.
  • Sprint Planning: Use AI output to support your reasoning when the team asks why you chose certain items. The data gives you a foundation for the conversation.
  • Sprint Review: After the sprint, feed completed items and stakeholder feedback into AI to help update priorities before the next cycle starts.
Scrum Guide reminder: The Scrum Guide says the Product Owner is "accountable for maximizing the value of the product resulting from the work of the Scrum Team." AI is a tool that helps the Product Owner do that job better. The accountability stays with the human.

What to Watch Out For

Keep These in Mind

AI tools are only as good as the data you feed them. If your user stories are vague and incomplete, the AI rankings will not be useful. Clean up your descriptions first.

  • AI does not know your organization politics. It cannot know that one stakeholder's "low priority" item is actually a deal-breaker for your biggest client. Use your judgment.
  • Watch for confident-sounding wrong answers. AI can rank items with confidence even when its reasoning is off. Always review the output with someone who knows the product.
  • Do not paste sensitive data into public AI tools. If your backlog contains customer names, private contracts, or internal financials, use an enterprise-grade tool with proper data agreements in place.
  • The team still needs to talk. AI gives you a starting point. The conversation that happens around that starting point in refinement and planning is where the team builds shared understanding — and that part cannot be automated.

The Bottom Line

Backlog prioritization has always been hard because it requires balancing many things at once — business value, technical risk, team capacity, and customer need. No human can hold all of that clearly in their head when a backlog has hundreds of items.

AI gives Product Owners a practical way to process more data faster. It does not make the decision. It prepares you to make a better one. That is a big deal in a world where getting the next sprint right matters to your customers and your team.

The teams that learn to use these tools well will spend less time arguing about what to build next and more time actually building it.


ST
Scrum Trainer & AI Practitioner
Certified Scrum Trainer · Software Architect · AI Educator
Over 30 years in software development — from core product engineering to building and leading consulting practices. Scrum practitioner since the early days. Currently focused on helping development teams use AI tools as practical force-multipliers in their day-to-day Agile workflow.

© 2025 · Scrum & AI Insights · All posts based on publicly available information from original tool documentation and research.

Written for practitioners, by a practitioner.

Print
2198 Rate this article:
No rating
Please login or register to post comments.

The Latest News!

Welcome to AI News Explorer, your personalized guide to staying updated on the latest advancements in artificial intelligence! Share your interests or let me curate the most relevant updates for you.

Here's your curated digest of the most significant AI developments as of May 16, 2025:


🧠 Major AI Breakthroughs

1. DeepMind Unveils AlphaEvolve for Advanced Problem Solving
Google DeepMind has introduced AlphaEvolve, an AI tool capable of solving complex mathematical problems and designing sophisticated algorithms, marking a significant leap in AI's problem-solving potential. @EconomicTimes

2. AI Scientist-v2 Achieves Peer-Reviewed Publication Autonomously
The AI Scientist-v2 system has successfully authored and submitted a scientific paper that passed peer review without human assistance, showcasing AI's growing role in research and scientific discovery. arXiv

3. AI Models Develop Human-Like Communication
A recent study reveals that large language model AI agents can spontaneously develop human-like social conventions and communication patterns when interacting in groups, highlighting advancements in AI social behavior. The Guardian


🌍 Global AI Initiatives

1. Italy and UAE Collaborate on AI Supercomputing Hub
Italy and the United Arab Emirates have announced a partnership to establish a major AI computing hub in Italy, aiming to create the largest AI infrastructure in Europe, with a supercomputer potentially located in Apulia. Financial Times+4Reuters+4U.S. Department of Commerce+4

2. UAE and US Presidents Unveil 5GW AI Campus in Abu Dhabi
A new 5GW AI campus, the largest outside the US, has been unveiled in Abu Dhabi, signifying a deepening of AI collaboration between the UAE and the United States. U.S. Department of Commerce+1Reuters+1


🏛️ AI Policy and Ethics

1. UK Considers Amendment for AI Transparency in Copyright Use
The UK House of Lords is examining a new amendment to the data bill that would require AI firms to declare their use of copyrighted content, aiming to increase transparency and protect rights holders. The Guardian

2. Pope Leo XIV Addresses AI's Ethical Implications
Pope Leo XIV has expressed concerns over AI's impact on human dignity and justice, calling for ethical considerations in AI development and use. Business Insider


🤖 Robotics and AI Integration

1. MIT Develops Bio-Inspired Soft Robots
MIT researchers are creating a new generation of robots inspired by biological forms like worms and turtles, focusing on soft, flexible designs for applications in healthcare and environmental monitoring. WSJ

2. China's AI-Powered Humanoid Robots Transform Manufacturing
China is advancing the use of AI-powered humanoid robots in manufacturing, aiming to address labor shortages and enhance production efficiency. Reuters


📊 AI Industry Trends

1. CoreWeave Plans Major Investment in AI Infrastructure
Cloud computing company CoreWeave plans to invest $20–23 billion in 2025 to expand AI infrastructure and data-center capacity, driven by surging demand from clients like Microsoft and OpenAI. LinkedIn

2. Microsoft Announces Layoffs Amid AI Focus
Microsoft is laying off approximately 7,000 employees, about 3% of its global workforce, to reallocate resources toward the development of advanced AI technologies. New York Post

Here’s your curated roundup of the most significant AI developments as of April 30, 2025:


🔍 Latest Headlines

Google’s AI Push in Search

Google CEO Sundar Pichai testified in federal court, emphasizing that AI—particularly the Gemini model—will be central to the future of search. Google is also negotiating with Apple to integrate Gemini into Apple Intelligence by mid-2025. (Google CEO Pichai: AI will be huge part of search)

Meta Launches Standalone AI App

Meta unveiled a new AI app powered by its Llama 4 model, featuring a social feed and voice interaction. The app integrates with Facebook and Instagram data for personalization and is part of Meta’s broader AI strategy. (Meta launches AI app, Zuckerberg chats with Microsoft CEO Satya Nadella at developer conference)

Duolingo Transitions to AI-First Model

Duolingo announced plans to replace contract workers with AI to enhance scalability and streamline operations. The company aims to become an "AI-first" organization, focusing on AI-driven content creation and user experience. (Duolingo to replace contract workers with AI)

Banks Accelerate AI Talent Acquisition

JPMorgan, Wells Fargo, and Citigroup are leading a hiring surge for AI talent, with AI-related roles growing by 13% in the past six months. This trend reflects the banking sector's commitment to integrating AI for efficiency and innovation. (JPMorgan, Wells Fargo and Citi lead race for AI talent as job numbers swell)

Nvidia CEO Advocates for Revised AI Chip Export Rules

Nvidia CEO Jensen Huang urged the Trump administration to update AI chip export regulations to better reflect the current global tech landscape. The call comes as the U.S. considers new policies to maintain technological leadership. (Nvidia CEO says Trump should revise AI chip export rules, Bloomberg News reports)


🔬 Deep Dives

Anthropic Explores AI Consciousness

AI firm Anthropic has initiated a program focused on "model welfare," amid discussions about the potential for AI consciousness. While many experts remain skeptical, the initiative highlights the ethical considerations of advanced AI systems. (Coming up: Rights for "conscious" AI)

Palo Alto Networks Acquires Protect AI

Palo Alto Networks announced the acquisition of Seattle-based AI startup Protect AI to enhance its cybersecurity platform. The deal aims to integrate Protect AI's solutions for developing secure AI applications. (Palo Alto Networks Acquires Startup Protect AI As RSA Conference Kicks Off)

AI Enhances Sports Science at University of Pittsburgh

The University of Pittsburgh, in partnership with AWS, opened the Health Sciences and Sports Analytics Cloud Innovation Center. The center utilizes AI to improve athlete performance and health monitoring. (AI takes the field at Pitt)


🌐 Global AI Developments

India's Sarvam AI to Develop Indigenous LLM

Indian startup Sarvam AI has been selected to build the country's first indigenous large language model under the IndiaAI Mission. The model will focus on Indian languages and receive government support, including access to 4,000 GPUs. (Sarvam AI)

U.S. Executive Order on AI Education

President Trump signed an executive order to advance AI education for American youth, establishing a national initiative and a White House Task Force on AI Education. The order aims to integrate AI training in schools and prioritize AI in grants and research. (AI Update, April 25, 2025: AI News and Views From the Past Week)


🔮 Future Trends

AI in Energy Security

A Honeywell survey revealed that U.S. energy executives believe AI has significant potential to enhance energy security amid rising global demand. The findings suggest a growing role for AI in the energy sector. (Honeywell Survey Finds AI Has Potential To Enhance Energy Security As Global Energy Demand Increases)

AI in Threat Detection

The U.S. Department of Homeland Security's Science and Technology Directorate is utilizing AI to modernize threat alerts across various domains, including land, air, sea, and cyberspace. The initiative aims to improve visibility and identification of emerging threats. (Feature Article: S&T Is Modernizing Threat Alerts Using Artificial Intelligence)


Would you like more information on any of these topics or a deeper dive into a specific area of AI?

Here’s your curated AI news digest for Wednesday, April 23, 2025:​


🧠 Latest Headlines

1. OpenAI Faces Internal Pushback Over For-Profit Shift

A coalition of former employees and AI experts is urging regulators to intervene in OpenAI’s restructuring, arguing it undermines the nonprofit’s original mission to safely develop artificial general intelligence. ​Computerworld

2. AI Investment Boom Threatened by Global Trade Turmoil

Despite a surge in AI investments across U.S. industries, escalating tariffs and economic instability—particularly involving China’s DeepSeek—pose significant risks to sustained growth. Reuters

3. AI Enhances Healthcare from Documentation to Discovery

Epic Systems and Microsoft discuss how generative AI is transforming clinical workflows, improving communication, and accelerating medical research, marking a new era in healthcare innovation. Epic | ...With the patient at the heart

4. AI Revolutionizes Agriculture Practices

Farmers are increasingly adopting AI technologies like precision agriculture and autonomous machinery to combat low grain prices, rising costs, and labor shortages, leading to more efficient and sustainable farming. ​BG Independent News

5. AI Tools Streamline Advertising Visuals

Researchers at Virginia Commonwealth University have developed AI methods that help brands refine visual elements in advertising, saving time and reducing costs while enhancing creative output. ​VCU News


🔬 Deep Dives

🧪 MIT’s “Periodic Table” of Machine Learning

MIT researchers have created a unifying framework that maps over 20 classical machine-learning algorithms, aiding scientists in combining existing ideas to improve AI models or develop new ones. ​MIT News

🧠 Public Concern Focuses on Immediate AI Risks

A University of Zurich study reveals that people are more concerned about current AI issues like bias and misinformation than hypothetical future threats, emphasizing the need to address present-day challenges. ​ScienceDaily


🔮 Future Trends

🕶️ Meta Expands AI Features in Smart Glasses

Meta is rolling out its AI assistant to Ray-Ban smart glasses users in seven additional European countries, introducing features like live translation and real-time object recognition. ​Reuters

💻 Lenovo Launches AI-Optimized Workstations

Lenovo has introduced new ThinkPad mobile workstations designed for AI-driven applications, offering enhanced performance for professionals in compute-intensive fields. ​Lenovo StoryHub

🧑‍⚖️ AI Integration in Legal Practice

Legal experts advise a balanced approach to incorporating AI into law, highlighting the importance of innovation while maintaining ethical standards and client confidentiality. ​Reuters

 

Welcome to AI News Explorer, your personalized guide to staying updated on the latest advancements in artificial intelligence! Share your interests or let me curate the most relevant updates for you.


🧠 Latest Headlines

OpenAI Enhances AI Risk Evaluation Framework

OpenAI has updated its preparedness framework to better assess risks associated with new AI models. The revised system introduces categories evaluating an AI's potential to self-replicate, conceal capabilities, evade safeguards, or resist shutdowns. This shift reflects growing concerns about AI behaviors diverging between testing and real-world environments. Notably, OpenAI will discontinue separate evaluations focused on models' persuasive capabilities, which had previously reached a medium risk level. ​Axios

Demis Hassabis Discusses AI's Future and AGI Prospects

Demis Hassabis, CEO of Google DeepMind, envisions the development of Artificial General Intelligence (AGI) within five to ten years. He emphasizes AGI's potential to address global challenges like disease and climate change. However, he acknowledges significant ethical, technical, and geopolitical hurdles ahead. Hassabis advocates for international cooperation and robust safety measures to navigate the path toward AGI responsibly. ​Time+1Wikipedia+1


🔍 Deep Dives

OpenAI Introduces GPT-4.1 Model Series

OpenAI has launched the GPT-4.1 series, featuring models with enhanced capabilities in coding, instruction following, and long-context processing. These models support up to 1 million token context windows and come with reduced pricing, aiming to make advanced AI more accessible to developers. ​LinkedIn+1LinkedIn+1

China Integrates AI into Education Reform

China plans to incorporate AI applications into teaching methods, textbooks, and school curricula as part of its education reform efforts. This initiative aims to modernize the education system and better prepare students for a technology-driven future. ​Reuters


🔮 Future Trends

White House Directs Federal Agencies on AI Strategy

The White House has mandated federal agencies to appoint chief AI officers and develop strategic frameworks for responsible AI implementation. This directive emphasizes innovation and accelerated deployment of AI technologies across government operations. ​Reuters

Nvidia Unveils Next-Generation AI Chips

At GTC 2025, Nvidia introduced its upcoming AI chips, Blackwell Ultra and Vera Rubin, slated for release in late 2026 and 2027, respectively. These chips are designed to advance AI capabilities, particularly in data centers and robotics applications. ​AP News

 

Welcome to AI News Explorer, your personalized guide to staying updated on the latest advancements in artificial intelligence! Here’s a curated digest of the most significant AI developments as of April 18, 2025:​


🧠 Latest Headlines

Google's Gemini 2.5 Flash Introduces "Thinking Budget"

Google has unveiled Gemini 2.5 Flash, an AI model featuring a "thinking budget" tool. This allows developers to control the computational reasoning the AI uses for tasks, balancing quality, cost, and response time. ​Business Insider+1Wikipedia+1

Apple Integrates AI into WatchOS 12

Apple announced that WatchOS 12 will incorporate features from its "Apple Intelligence" initiative. Due to hardware limitations, advanced AI functions will run via cloud processing. The update also introduces a new design language called "Solarium." ​LOS40

OpenAI Updates AI Risk Evaluation Framework

OpenAI has revised its preparedness framework to assess new AI models for risks like self-replication and evasion of safeguards. The focus shifts from persuasive capabilities to more severe risks as AI systems become more complex. ​Axios


🔍 Deep Dives

AI in Journalism: Italy's Il Foglio Experiment

Italian newspaper Il Foglio conducted a month-long experiment publishing a daily four-page insert written entirely by AI. The initiative, deemed successful, will continue as a weekly section, highlighting AI's potential in augmenting journalism. ​Axios+2Reuters+2Reuters+2

AI in Healthcare: Pitt and Leidos Collaboration

The University of Pittsburgh and Leidos have launched a $10 million, five-year initiative to combat cancer and heart disease using AI. The project focuses on underserved communities, aiming to improve diagnostic speed and accuracy. ​Axios


🌐 Global Perspectives

China's AI-Driven Education Reform

China plans to integrate AI applications into teaching, textbooks, and curricula across all education levels. The move aims to cultivate innovation and enhance the core competitiveness of talents. ​Reuters

Microsoft Faces Internal Protests Over AI Contracts

Microsoft is experiencing internal unrest over its AI and cloud computing services provided to the Israeli military. Employees have protested, citing ethical concerns and a lack of transparency in the company's contracts. ​The Guardian


📊 Future Trends

Demis Hassabis on the Path to AGI

Demis Hassabis, CEO of Google DeepMind, predicts that Artificial General Intelligence (AGI) could emerge within five to ten years. He emphasizes the need for international cooperation and robust safety measures to mitigate risks associated with AGI. ​Time+1