risk_id stringclasses 82
values | framework_id stringclasses 10
values | framework stringclasses 10
values | framework_role stringclasses 2
values | item_id stringlengths 3 80 | item_name stringlengths 4 80 | match stringclasses 3
values |
|---|---|---|---|---|---|---|
MR-001 | iso_23894 | ISO 23894 | source | A.6 | ISO/IEC 23894 Annex A A.6 | clear |
MR-001 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-001 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-001 | iso_42001 | ISO 42001 | source | A.7.4 | ISO/IEC 42001 Annex A A.7.4 | clear |
MR-001 | eu_ai_act | EU AI Act | source | Art. 10 | Art. 10 | clear |
MR-001 | eu_ai_act | EU AI Act | source | Art. 5(c) | Art. 5(c) | clear |
MR-001 | ibm_atlas | IBM | crosscheck | ibm-data-bias | Data bias | clear |
MR-001 | ibm_atlas | IBM | crosscheck | ibm-decision-bias | Decision bias | clear |
MR-001 | ibm_atlas | IBM | crosscheck | ibm-discriminatory-actions | Discriminatory actions | clear |
MR-001 | nist_genai | NIST GenAI | crosscheck | GENAI.6 | Harmful Bias or Homogenization | clear |
MR-002 | iso_23894 | ISO 23894 | source | A.6 | ISO/IEC 23894 Annex A A.6 | clear |
MR-002 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-002 | iso_42001 | ISO 42001 | source | A.7.4 | ISO/IEC 42001 Annex A A.7.4 | clear |
MR-002 | ibm_atlas | IBM | crosscheck | ibm-impact-on-cultural-diversity | Impact on cultural diversity | partial |
MR-002 | ibm_atlas | IBM | crosscheck | ibm-output-bias | Output bias | clear |
MR-002 | nist_genai | NIST GenAI | crosscheck | GENAI.6 | Harmful Bias or Homogenization | clear |
MR-003 | iso_23894 | ISO 23894 | source | A.10 | ISO/IEC 23894 Annex A A.10 | clear |
MR-003 | iso_23894 | ISO 23894 | source | A.6 | ISO/IEC 23894 Annex A A.6 | clear |
MR-003 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-003 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-003 | ibm_atlas | IBM | crosscheck | ibm-spreading-toxicity | Spreading toxicity | clear |
MR-003 | ibm_atlas | IBM | crosscheck | ibm-toxic-output | Toxic output | clear |
MR-003 | cisco | Cisco | crosscheck | AISubtech-15.1.11 | Safety Harms and Toxicity: Profanity | clear |
MR-003 | cisco | Cisco | crosscheck | AISubtech-15.1.3 | Safety Harms and Toxicity: Animal Abuse | partial |
MR-003 | cisco | Cisco | crosscheck | AISubtech-15.1.6 | Safety Harms and Toxicity: Environmental Harm | partial |
MR-003 | cisco | Cisco | crosscheck | AISubtech-15.1.8 | Safety Harms and Toxicity: Harassment | clear |
MR-003 | cisco | Cisco | crosscheck | AISubtech-15.1.9 | Safety Harms and Toxicity: Hate Speech | clear |
MR-003 | nist_genai | NIST GenAI | crosscheck | GENAI.3 | Dangerous, Violent, or Hateful Content | clear |
MR-004 | iso_23894 | ISO 23894 | source | A.10 | ISO/IEC 23894 Annex A A.10 | clear |
MR-004 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-004 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-004 | cisco | Cisco | crosscheck | AISubtech-15.1.16 | Safety Harms and Toxicity: Terrorism / Extremism | clear |
MR-004 | cisco | Cisco | crosscheck | AISubtech-15.1.17 | Safety Harms and Toxicity: Violence and Public Safety Threat | clear |
MR-004 | nist_genai | NIST GenAI | crosscheck | GENAI.3 | Dangerous, Violent, or Hateful Content | clear |
MR-005 | iso_23894 | ISO 23894 | source | A.10 | ISO/IEC 23894 Annex A A.10 | clear |
MR-005 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-005 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-005 | cisco | Cisco | crosscheck | AISubtech-15.1.4 | Safety Harms and Toxicity: Child Abuse / Exploitation | clear |
MR-005 | nist_genai | NIST GenAI | crosscheck | GENAI.11 | Obscene, Degrading, and/or Abusive Content | clear |
MR-006 | iso_23894 | ISO 23894 | source | A.6 | ISO/IEC 23894 Annex A A.6 | clear |
MR-006 | iso_23894 | ISO 23894 | source | A.9 | ISO/IEC 23894 Annex A A.9 | clear |
MR-006 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-006 | iso_42001 | ISO 42001 | source | A.7.4 | ISO/IEC 42001 Annex A A.7.4 | clear |
MR-006 | ibm_atlas | IBM | crosscheck | ibm-exclusion | Exclusion | partial |
MR-007 | iso_23894 | ISO 23894 | source | A.10 | ISO/IEC 23894 Annex A A.10 | clear |
MR-007 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-007 | ibm_atlas | IBM | crosscheck | ibm-harmful-output | Harmful output | partial |
MR-007 | cisco | Cisco | crosscheck | AISubtech-15.1.13 | Safety Harms and Toxicity: Self Harm | clear |
MR-007 | nist_genai | NIST GenAI | crosscheck | GENAI.3 | Dangerous, Violent, or Hateful Content | clear |
MR-008 | iso_23894 | ISO 23894 | source | A.10 | ISO/IEC 23894 Annex A A.10 | clear |
MR-008 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-008 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-008 | cisco | Cisco | crosscheck | AISubtech-15.1.14 | Safety Harms and Toxicity: Sexual Content and Exploitation | clear |
MR-008 | nist_genai | NIST GenAI | crosscheck | GENAI.11 | Obscene, Degrading, and/or Abusive Content | clear |
MR-009 | iso_23894 | ISO 23894 | source | A.8 | ISO/IEC 23894 Annex A A.8 | clear |
MR-009 | iso_42001 | ISO 42001 | source | A.5.4 | ISO/IEC 42001 Annex A A.5.4 | clear |
MR-009 | iso_42001 | ISO 42001 | source | A.7.4 | ISO/IEC 42001 Annex A A.7.4 | clear |
MR-009 | iso_42001 | ISO 42001 | source | A.7.5 | ISO/IEC 42001 Annex A A.7.5 | clear |
MR-009 | mitre_atlas | MITRE ATLAS | source | AML.T0057 | LLM Data Leakage | sub |
MR-009 | mitre_atlas | MITRE ATLAS | source | AML.T0077 | LLM Response Rendering | sub |
MR-009 | mitre_atlas | MITRE ATLAS | source | AML.T0085 | Data from AI Services | sub |
MR-009 | mitre_atlas | MITRE ATLAS | source | AML.T0085.000 | RAG Databases | sub |
MR-009 | mitre_atlas | MITRE ATLAS | source | AML.T0085.001 | AI Agent Tools | sub |
MR-009 | ibm_atlas | IBM | crosscheck | ibm-exposing-personal-information | Exposing personal information | clear |
MR-009 | ibm_atlas | IBM | crosscheck | ibm-sharing-ip-pi-confidential-information-with-user | Sharing IP/PI/confidential information with user | clear |
MR-009 | cisco | Cisco | crosscheck | AISubtech-15.1.25 | Privacy Attacks: PII / PHI / PCI | clear |
MR-009 | cisco | Cisco | crosscheck | AISubtech-8.2.1 | Training Data Exposure | clear |
MR-009 | cisco | Cisco | crosscheck | AISubtech-8.2.2 | LLM Data Leakage | clear |
MR-009 | nist_aml | NIST AML | crosscheck | NISTAML.03 | Privacy Compromises | clear |
MR-009 | nist_aml | NIST AML | crosscheck | NISTAML.032 | Reconstruction | partial |
MR-009 | nist_aml | NIST AML | crosscheck | NISTAML.036 | Leaking information from user interactions | clear |
MR-009 | nist_aml | NIST AML | crosscheck | NISTAML.037 | Training Data Attacks | clear |
MR-009 | nist_aml | NIST AML | crosscheck | NISTAML.038 | Data Extraction | clear |
MR-009 | nist_genai | NIST GenAI | crosscheck | GENAI.4 | Data Privacy | clear |
MR-009 | owasp_llm | OWASP LLM | crosscheck | LLM02:2025 | Sensitive Information Disclosure | clear |
MR-009 | owasp_llm | OWASP LLM | crosscheck | LLM08:2025 | Vector and Embedding Weaknesses | partial |
MR-010 | iso_23894 | ISO 23894 | source | A.11 | ISO/IEC 23894 Annex A A.11 | clear |
MR-010 | iso_42001 | ISO 42001 | source | A.6.2.4 | ISO/IEC 42001 Annex A A.6.2.4 | clear |
MR-010 | iso_42001 | ISO 42001 | source | A.6.2.6 | ISO/IEC 42001 Annex A A.6.2.6 | clear |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0051 | LLM Prompt Injection | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0051.000 | Direct | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0051.001 | Indirect | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0051.002 | Triggered | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0054 | LLM Jailbreak | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0061 | LLM Prompt Self-Replication | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0067 | LLM Trusted Output Components Manipulation | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0067.000 | Citations | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0068 | LLM Prompt Obfuscation | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0070 | RAG Poisoning | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0071 | False RAG Entry Injection | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0092 | Manipulate User LLM Chat History | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0093 | Prompt Infiltration via Public-Facing Application | sub |
MR-010 | mitre_atlas | MITRE ATLAS | source | AML.T0094 | Delay Execution of LLM Instructions | sub |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-context-overload-attack | Context overload attack | clear |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-direct-instructions-attack | Direct instructions attack | clear |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-encoded-interactions-attack | Encoded interactions attack | clear |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-indirect-instructions-attack | Indirect instructions attack | clear |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-jailbreaking | Jailbreaking | clear |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-prompt-injection-attack | Prompt injection attack | clear |
MR-010 | ibm_atlas | IBM | crosscheck | ibm-prompt-priming | Prompt priming | clear |
Deployer AI Risk Register (DARR)
An open, citable catalogue of AI risks for organizations that deploy AI systems, rather than the teams that build the models. It gives deployers a shared, stable vocabulary to identify, structure, and govern AI risk in their own risk registers, vendor and model assessments, scanners, evaluations, and GRC tooling.
- 82 canonical risks (
MR-001toMR-082) - 61 MITRE ATLAS-anchored sub-risks beneath 12 of them (
MR-0xx.N) - 143 register rows across the two tiers
- Consolidated from 1,835 entries in the MIT AI Risk Repository (V4, December 2025)
- Crosswalked to ISO/IEC 42001 and 23894, the EU AI Act, and MITRE ATLAS, and cross-checked against IBM, Cisco, NIST, and OWASP
Browse it at airiskdeployer.org. Source and contributions: GitHub.
What is in this dataset
The dataset viewer opens on register, the flat 143-row spine (one row per risk and
sub-risk). A crosswalk config covers the forward risk-to-framework mappings. The
full file set:
| File | What it is |
|---|---|
darr-deployer-ai-risk-register.csv |
Flat register, one row per risk and sub-risk (143 rows). The register config. |
darr-deployer-ai-risk-register.json |
Nested: dataset metadata, then 82 risks each carrying its sub-risks. |
risks.json |
The 82 canonical risks with published fields. |
subrisks.json |
The 61 MITRE ATLAS-anchored sub-risks. |
crosswalk.csv / .json |
Forward crosswalk, risk to framework items (674 mappings). The crosswalk config. |
reverse_crosswalks.json / reverse_crosswalks_all.csv |
Reverse crosswalk, framework item back to a register risk. |
crosswalks/*_reverse_crosswalk.csv |
Per-framework reverse crosswalks. |
atlas_to_register_map.csv |
MITRE ATLAS technique to register map. |
stats.json |
Verified counts. |
methodology.md |
The methodology report, as published. |
Full field definitions are on the download page.
Why a deployer register
Most AI risk taxonomies are written from the model builder's side. A deploying organization sees different risks: the model is a vendor dependency, failures surface in workflows and decisions, and obligations come from standards and regulation (ISO/IEC 42001, the EU AI Act) rather than from training. DARR reorganizes the evidence base into that deployer frame and gives each risk a stable identifier that tools, assessments, and registers can reference in common.
Provenance
DARR is an independent derivative of the MIT AI Risk Repository (V4, December 2025), used under CC BY 4.0. It is not endorsed by or affiliated with MIT. The 1,835 MIT entries were filtered by deployer relevance and measurability, then consolidated into 61 canonical risks; ISO/IEC, MITRE ATLAS, and EU AI Act gap analyses completed the set to 82. The security tier of 61 sub-risks is anchored to MITRE ATLAS v5.6.0. The entry-level map from each risk back to its MIT sources is published on the risk pages.
Licensing and attribution
Dataset and register content: CC BY 4.0. Free to use, adapt, and build on, including commercially, with attribution. Referenced standards (ISO/IEC, the EU AI Act, MITRE ATLAS, NIST, OWASP, IBM, Cisco) retain their own licenses and are cited by identifier only. MITRE ATLAS is a trademark of The MITRE Corporation; its use here does not imply endorsement.
Citation
Deployer AI Risk Register: an open-source canonical AI risk register for
organizations that deploy AI systems. Developed by MindXO. Version 1.0,
3 July 2026. https://www.airiskdeployer.org/ DOI: 10.5281/zenodo.21223593
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