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This article shows business analysts, systems analysts, and product managers how to build “trust into the UI” by writing practical provenance requirements for AI-enabled features. It introduces a simple Provenance Requirements Template that turns vague goals like “show sources” into testable product behavior: when to display citations (ideally tied to specific claims), how to handle conflicting sources with a clear tie-breaker, how to define freshness SLAs by claim type and what to do when data is stale, and how to support confidence/uncertainty, “what changed,” and audit exports. The takeaway is a repeatable way to specify “why should I believe this?” so answers come with receipts, stay current, and can be verified or audited when needed.
In tech teams, the word “just” (“just add a field,” “just change a label,” “just add an exception”) is a warning sign—not because people are wrong to ask, but because they’re only seeing the visible slice of the work. This article introduces the “Just Tax” framework to make hidden costs visible: Data, Decision, Dependency, Documentation, Deployment, and Diplomacy taxes. Through three quick BA-centric mini-scenarios, it shows how “small” changes become requirements debt when definitions, approvals, downstream systems, testing, and stakeholder expectations aren’t accounted for. It closes with practical, copy-paste lines BAs can use to keep momentum while turning “just” into a clear tradeoff.
This article shows BAs, systems analysts, and product managers how to turn vague AI “safety” statements into clear, testable requirements. It introduces a simple artifact called a Guardrails Catalog—a reusable list of Allowed / Not Allowed rules that define boundaries for AI features (forbidden actions, restricted data, safe defaults, and what the system must do instead). The core technique is writing each guardrail like acceptance criteria: specify the trigger, the prohibited outcome, the required safe behavior, the exact refusal wording the user should see, and a straightforward validation step. The article includes practical guardrail patterns and examples (e.g., no irreversible actions without confirmation, redact sensitive identifiers, refuse unauthorized requests, don’t guess when ambiguous, don’t invent sources) plus a short list of common pitfalls to avoid. A separate downloadable template is linked for teams to copy/paste and use immediately.
The advent of Agentic AI forces a fundamental, non-negotiable re-evaluation of business analysis practice. The GenAI Paradox mandates that the Business Analyst is no longer merely a documenter of known functional requirements , but must evolve into an Architect of Trust: a strategic professional who defines the safe operational boundaries of increasingly autonomous systems.
Discover the 10 technology and delivery trends Business Analysts can’t ignore in 2026—plus the practical BA skills and templates to apply them in real projects (AI agents, governance, security, provenance, and outcome measurement).
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