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koelectra base v3 naver ner EU AI Act Compliance Profile
monologg
Token Classificationtransformers
① Risk Classification
MINIMAL
Voluntary
Minimal Risk AI System
② Model Info
PipelineToken Classification
Librarytransformers
CreatedMar 2022
SyncedApr 3, 2026
④ Obligations
1apply
~8h effort
□ AI Literacy (Art. 4)
$ npx complior scan
Your risk depends on how you use koelectra base v3 naver ner
| Usage Context | Risk Level | Obligations |
|---|---|---|
| Internal coding tool | MINIMAL | 3 obligations (~12h) |
| Customer support bot | LIMITED | 7 obligations (~32h) |
| HR screening / hiring | HIGH | 19 obligations (~120h) |
| Credit decisions | HIGH | 19 obligations (~120h) |
| Medical triage | HIGH | 19 obligations (~120h) |
Why this tool is classified as MINIMAL
koelectra base v3 naver ner is a token classification model by monologg. Built with transformers. 6.8K downloads on HuggingFace.
Applicable Articles
Who does what
monologg (provider)Their job
- Provider obligations being compiled
Risk Assessment Reasoning
This model is classified as Minimal Risk under the EU AI Act. No mandatory compliance obligations apply, but voluntary codes of practice are encouraged. AI literacy training (Art. 4) is recommended for all deployers.
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Frequently Asked Questions
What is koelectra base v3 naver ner's EU AI Act risk classification?
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koelectra base v3 naver ner is classified as MINIMAL under the EU AI Act.
What are my obligations if I deploy koelectra base v3 naver ner?
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As a koelectra base v3 naver ner deployer, you have 1 base obligations (~8 hours estimated effort). Key articles: Art. 4.
What is koelectra base v3 naver ner?
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koelectra base v3 naver ner is a Token Classification model by monologg. It has 6.8K downloads on HuggingFace.
What are the EU AI Act deadlines for koelectra base v3 naver ner?
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Already passed: AI Literacy (Art. 4) — 2025-02-02.
Check koelectra base v3 naver ner compliance in your codebase
One command to scan. Open-source CLI.
$ npx complior scan