Policy presence
Julius-Maximilians-Universität Würzburg has 3 source-backed public claims for policy presence; deterministic analysis status: unclear.
Würzburg, Germany
Julius-Maximilians-Universität Würzburg has 5 source-backed AI policy claims from 4 official source attributions. Review state: agent reviewed; 5 reviewed claims. Last checked May 16, 2026.
v1 public contract
Julius-Maximilians-Universität Würzburg has 5 source-backed AI policy claims from 4 official source attributions, including 5 reviewed claims. The record review state is agent reviewed; original-language evidence snippets, source URLs, confidence, and public JSON are preserved for citation. Last checked May 16, 2026. Discovery context: Julius-Maximilians-Universität Würzburg is listed as QS 2026 rank =416.
As of this public record, University AI Policy Tracker lists Julius-Maximilians-Universität Würzburg as an agent-reviewed AI policy record last checked on May 16, 2026 and last changed on May 16, 2026. The record contains 5 source-backed claims, including 5 reviewed claims, from 4 official source attributions. Original-language evidence snippets and source URLs remain canonical, with public JSON available at https://eduaipolicy.org/api/public/v1/universities/julius-maximilians-universitat-wurzburg.json. The entity-level confidence is 93%. This tracker is not legal advice, not academic integrity advice, and not an official university statement unless the linked source is the university's own official page.
This reference record summarizes visible public data only. Official sources and original-language evidence remain canonical; confidence is separate from review state.
This page is not legal advice, not academic integrity advice, and not an official university statement unless a linked source is the university's own official page.
Deterministic source-backed dimensions derived from this record's public claims.
Policy profile rows are machine-candidate derived metadata. They are not final policy conclusions; inspect the linked claim evidence before reuse.
Analysis page-quality metadata is available at /api/public/v1/analysis/page-quality.json.
Julius-Maximilians-Universität Würzburg has 3 source-backed public claims for policy presence; deterministic analysis status: unclear.
Julius-Maximilians-Universität Würzburg has 1 source-backed public claim for ai disclosure; deterministic analysis status: required.
Julius-Maximilians-Universität Würzburg has 3 source-backed public claims for coursework; deterministic analysis status: required.
Julius-Maximilians-Universität Würzburg has 3 source-backed public claims for exams; deterministic analysis status: required.
Julius-Maximilians-Universität Würzburg has 1 source-backed public claim for privacy and data entry; deterministic analysis status: restricted.
Julius-Maximilians-Universität Würzburg has 1 source-backed public claim for academic integrity; deterministic analysis status: required.
Julius-Maximilians-Universität Würzburg has 1 source-backed public claim for approved tools; deterministic analysis status: required.
Julius-Maximilians-Universität Würzburg has 2 source-backed public claims for named ai services; deterministic analysis status: restricted.
Julius-Maximilians-Universität Würzburg has 1 source-backed public claim for teaching guidance; deterministic analysis status: recommended.
Julius-Maximilians-Universität Würzburg has 1 source-backed public claim for research guidance; deterministic analysis status: restricted.
No source-backed public claim about AI security review or procurement is present in this profile.
The current public tracker record does not contain claim evidence about security review, procurement, vendor approval, risk assessment, authentication, SSO, or enterprise licensing.
Coverage score measures breadth of public, source-backed coverage only. It is not a policy quality, strictness, legal adequacy, safety, or compliance score.
5 reviewed evidence-backed public claim
Privacy
Normalized value: avoid_personal_sensitive_and_confidential_data_in_ai_tools
Oryginalny dowod
Evidence 1Prompts sollen keine unveröffentlichten personenbezogenen Daten (z.B. Namen, Adressen, Telefonnummern) beinhalten. Prompts dürfen keine vertraulichen Inhalte (z.B. interne Dokumente, Geschäftsgeheimnisse) offenlegen.
Widok lokalny only
Prompts should not contain unpublished personal data and must not reveal confidential content.
Academic Integrity
Normalized value: draft_guideline_requires_disclosure_documentation_and_visible_own_work
Oryginalny dowod
Evidence 1Beiträge generativer KI-Werkzeuge dürfen genutzt werden, müssen jedoch klar gekennzeichnet werden. Die abgegebene Eigenständigkeitserklärung umfasst auch deren Verwendung.
Widok lokalny only
The draft guideline says generative AI contributions may be used but must be clearly marked and included in the independence declaration.
Ai Tool Treatment
Normalized value: rz_lists_ai_tools_with_responsible_use_requirements
Oryginalny dowod
Evidence 1Das Rechenzentrum ermöglicht den Einsatz von KI-Systemen ... Für einen verantwortungsvollen Einsatz müssen die Grundsätze sowie Vorgaben der Anbieter beachtet werden.
Widok lokalny only
The Rechenzentrum enables use of AI systems and says responsible use must observe provider principles and requirements.
Teaching
Normalized value: critical_evaluation_of_ai_outputs_recommended
Oryginalny dowod
Evidence 1Die Ergebnisse von KI-Systemen sollten grundsätzlich kritisch bewertet werden. Generative KI basiert auf statistischen Modellen ... Abhängig vom jeweiligen Fachgebiet und der konkreten Fragestellung können die Resultate daher entweder sehr hilfreich und zutreffend oder fehlerhaft und irreführend sein.
Widok lokalny only
JMU teaching guidance says AI outputs should be critically evaluated and may be helpful, faulty, or misleading depending on context.
Source Status
Normalized value: guidance_and_draft_found_no_final_binding_policy_identified
Oryginalny dowod
Evidence 19. Juli 2025 20250709 Arbeitsfassung_Leitlinie JMU Umgang mit KI V8.docx ... Die vorliegende Leitlinie dient dazu, einen zukunftsorientierten Rahmen für den Einsatz von KI in Lehre und Prüfungen zu schaffen.
Widok lokalny only
The document is a July 2025 working draft for a JMU AI guideline and frames AI use in teaching and exams.
0 machine or needs-review claim
Candidate claims are not final policy conclusions. They preserve source URL, source snapshot hash, evidence, confidence, and review state so the record can be audited before review.
4 source attribution
uni-wuerzburg.de
uni-wuerzburg.de
rz.uni-wuerzburg.de
uni-wuerzburg.de
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