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EU AI Act Article 4 AI Literacy Starter AssessmentiFeed Evidence-Readiness Checklist · regulated life sciences / health-tech
Regulation (EU) 2024/1689 · Article 4 · AI literacy

A starter checklist for AI literacy evidence.

This iFeed checklist helps teams convert Article 4 into practical evidence-readiness questions. It is designed for regulated life sciences and health-tech settings where AI use may touch clinical, quality, regulatory, digital-health, or operational decisions.

EU AI Act Article 4 AI Literacy Starter Assessment

A fillable iFeed evidence-readiness checklist for regulated life sciences and health-tech teams. Complete the details below before using the checklist so the exported PDF carries your context, ownership, and review record.

UseReadiness support
OutputFilled PDF
Source date2024-07-12
Review date2026-05-24
Boundary: This is not legal advice, certification, conformity assessment, or a statement that a team complies with the EU AI Act. It is an evidence-readiness tool for preparing better records, questions, and review conversations.
Boundary: This is not legal advice, certification, conformity assessment, or a statement that a team complies with the EU AI Act. It is an evidence-readiness tool that helps teams prepare better records, questions, and review conversations.

Checklist table

Use the status column to mark readiness, then record evidence notes and ownership/actions. The table header repeats across PDF pages and the completed fields are retained in the downloaded PDF.

CheckpointQuestionSuggested evidenceStatusEvidence notesOwner / action
AI system inventoryList AI systems or AI-enabled workflows used, provided, deployed, evaluated, or relied on by the team.Inventory owner, system name, use context, users, affected persons.
Role mappingIdentify who deals with operation or use of each AI system on behalf of the organisation.Role list, responsibilities, access level, decision involvement.
Literacy baselineAssess current skills, knowledge, training, and practical understanding for each role.Training record, competency evidence, interview notes, role matrix.
Use-context fitCheck whether literacy is appropriate for the actual use context, not only the tool category.Workflow map, SOP link, risk notes, task description.
Risk and affected personsDocument how AI output could affect patients, trial participants, users, staff, or regulated decisions.Impact notes, risk register link, affected-person map.
Human oversightDefine what users must understand before accepting, challenging, escalating, or overriding AI output.Oversight instruction, escalation route, reviewer role.
Data and limitation awarenessEnsure users understand data limitations, model limitations, output uncertainty, and inappropriate use.Training content, limitation summary, known-use restrictions.
Vendor and tool evidenceCapture what the vendor or internal developer provides about intended use, limitations, and training needs.Vendor documentation, release note, user guide, validation summary.
GxP / regulated workflow linkMark whether the AI system touches GxP, clinical, quality, regulatory, safety, or device workflows.Workflow classification, QA review note, business owner.
Records and review cycleDefine how literacy evidence will be kept current as systems, users, or obligations change.Review date, owner, version history, update trigger.
Gap and action logRecord gaps between current literacy and what the use context reasonably requires.Gap description, priority, action owner, target date.
Management visibilityCreate a route for leadership, QA, regulatory, or governance review where risk justifies it.Review minutes, sign-off note, decision record.

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