Select the search type
  • Site
  • Web
Search

Check Back Here Often!

Just the facts, about AI!

AI Tips and Tricks

AI For Scrum Product Owners - February 17. 2026

Transforming Team Performance with Artificial Intelligence

Rod Claar CST 0 115 Article rating: No rating

AI for Scrum Product Owners is a focused, practitioner-oriented course designed to help Product Owners apply modern AI capabilities directly to their day-to-day responsibilities. The class emphasizes practical leverage, not theory, showing how AI can improve product discovery, backlog management, decision-making, and stakeholder collaboration while remaining aligned with Scrum values and empiricism.

Participants learn how to use AI as a product thinking amplifier—to clarify product vision, refine Product Goals, generate and test hypotheses, and improve the quality and flow of Product Backlog Items. The course also addresses how AI can support evidence-based decisions through better synthesis of customer feedback, metrics, and experimentation results.

Key themes include:

  • Product Ownership with AI assistance
    Applying AI to Product Vision, Product Goals, roadmaps, and outcome-oriented planning.

  • Backlog quality and refinement
    Using AI to help draft, split, clarify, and assess Product Backlog Items while preserving human judgment and accountability.

  • Discovery, learning, and validation
    Leveraging AI to explore customer problems, analyze qualitative and quantitative data, and support hypothesis-driven development.

  • Ethics, risk, and governance
    Understanding where AI helps, where it can mislead, and how Product Owners remain responsible for product decisions.

  • Hands-on, immediately usable techniques
    Concrete prompts, workflows, and examples that Product Owners can apply immediately in real Scrum contexts.

The class is designed for experienced Product Owners and product leaders who want to integrate AI responsibly and effectively—without turning Scrum into a tool-driven or output-focused process. By the end of the course, participants leave with a clear mental model for when and how AI adds value, and when human product leadership must take precedence.

Retrieval Augmented Generation (RAG)

Retrieval Augmented Generation (RAG) is an advanced artificial intelligence technique that enhances the capabilities of generative AI models-like large language models (LLMs)-by allowing them to fetch and incorporate up-to-date, domain-specific, or proprietary information from external data sources in real time.

Rod Claar 0 332 Article rating: 5.0

How to Create a Custom GPT

Custom GPTs (Generative Pre-trained Transformers) allow anyone to build a personalized AI assistant tailored to a specific purpose!

Rod Claar 0 5083 Article rating: 5.0

Custom GPTs (Generative Pre-trained Transformers) allow anyone to build a personalized AI assistant tailored to a specific purpose, tone, or knowledge area—without needing to write code. Whether you're a coach, developer, educator, or entrepreneur, building a custom GPT can help streamline tasks, automate support, or create interactive tools for clients and teams.

Here’s a step-by-step guide to creating your own custom GPT using OpenAI’s platform.

RSS
12