OpenMed-PII-Spanish-SuperMedical-Base-125M-v1
Spanish PII Detection Model | 125M Parameters | Open Source

Model Description
OpenMed-PII-Spanish-SuperMedical-Base-125M-v1 is a transformer-based token classification model fine-tuned for Personally Identifiable Information (PII) detection in Spanish text. This model identifies and classifies 54 types of sensitive information including names, addresses, social security numbers, medical record numbers, and more.
Key Features
- Spanish-Optimized: Specifically trained on Spanish text for optimal performance
- High Accuracy: Achieves strong F1 scores across diverse PII categories
- Comprehensive Coverage: Detects 55+ entity types spanning personal, financial, medical, and contact information
- Privacy-Focused: Designed for de-identification and compliance with GDPR and other privacy regulations
- Production-Ready: Optimized for real-world text processing pipelines
Performance
Evaluated on the Spanish subset of AI4Privacy dataset:
| Metric |
Score |
| Micro F1 |
0.9202 |
| Precision |
0.9181 |
| Recall |
0.9222 |
| Macro F1 |
0.9285 |
| Weighted F1 |
0.9196 |
| Accuracy |
0.9935 |
Top 10 Spanish PII Models
Supported Entity Types
This model detects 54 PII entity types organized into categories:
Identifiers (22 types)
| Entity |
Description |
ACCOUNTNAME |
Accountname |
BANKACCOUNT |
Bankaccount |
BIC |
Bic |
BITCOINADDRESS |
Bitcoinaddress |
CREDITCARD |
Creditcard |
CREDITCARDISSUER |
Creditcardissuer |
CVV |
Cvv |
ETHEREUMADDRESS |
Ethereumaddress |
IBAN |
Iban |
IMEI |
Imei |
| ... |
and 12 more |
Personal Info (11 types)
| Entity |
Description |
AGE |
Age |
DATEOFBIRTH |
Dateofbirth |
EYECOLOR |
Eyecolor |
FIRSTNAME |
Firstname |
GENDER |
Gender |
HEIGHT |
Height |
LASTNAME |
Lastname |
MIDDLENAME |
Middlename |
OCCUPATION |
Occupation |
PREFIX |
Prefix |
| ... |
and 1 more |
Contact Info (2 types)
| Entity |
Description |
EMAIL |
Email |
PHONE |
Phone |
Location (9 types)
| Entity |
Description |
BUILDINGNUMBER |
Buildingnumber |
CITY |
City |
COUNTY |
County |
GPSCOORDINATES |
Gpscoordinates |
ORDINALDIRECTION |
Ordinaldirection |
SECONDARYADDRESS |
Secondaryaddress |
STATE |
State |
STREET |
Street |
ZIPCODE |
Zipcode |
Organization (3 types)
| Entity |
Description |
JOBDEPARTMENT |
Jobdepartment |
JOBTITLE |
Jobtitle |
ORGANIZATION |
Organization |
Financial (5 types)
| Entity |
Description |
AMOUNT |
Amount |
CURRENCY |
Currency |
CURRENCYCODE |
Currencycode |
CURRENCYNAME |
Currencyname |
CURRENCYSYMBOL |
Currencysymbol |
Temporal (2 types)
| Entity |
Description |
DATE |
Date |
TIME |
Time |
Usage
Quick Start
from transformers import pipeline
ner = pipeline("ner", model="OpenMed/OpenMed-PII-Spanish-SuperMedical-Base-125M-v1", aggregation_strategy="simple")
text = """
Paciente María López (nacida el 15/03/1985, DNI: 87654321B) fue atendida hoy.
Contacto: maria.lopez@email.es, Teléfono: +34 612 345 678.
Dirección: Calle Serrano 42, 28001 Madrid.
"""
entities = ner(text)
for entity in entities:
print(f"{entity['entity_group']}: {entity['word']} (score: {entity['score']:.3f})")
Important — Accent Handling: This model was trained on text without diacritical marks (accents). For best results, strip accents from your input before inference. Character offsets are preserved, so you can map entities back to the original text.
import unicodedata
def strip_accents(text: str) -> str:
nfc = unicodedata.normalize("NFC", text)
nfd = unicodedata.normalize("NFD", nfc)
stripped = "".join(ch for ch in nfd if unicodedata.category(ch) != "Mn")
return unicodedata.normalize("NFC", stripped)
text = strip_accents(text)
entities = ner(text)
De-identification Example
def redact_pii(text, entities, placeholder='[REDACTED]'):
"""Replace detected PII with placeholders."""
sorted_entities = sorted(entities, key=lambda x: x['start'], reverse=True)
redacted = text
for ent in sorted_entities:
redacted = redacted[:ent['start']] + f"[{ent['entity_group']}]" + redacted[ent['end']:]
return redacted
redacted_text = redact_pii(text, entities)
print(redacted_text)
Batch Processing
from transformers import AutoModelForTokenClassification, AutoTokenizer
import torch
model_name = "OpenMed/OpenMed-PII-Spanish-SuperMedical-Base-125M-v1"
model = AutoModelForTokenClassification.from_pretrained(model_name)
tokenizer = AutoTokenizer.from_pretrained(model_name)
texts = [
"Paciente María López (nacida el 15/03/1985, DNI: 87654321B) fue atendida hoy.",
"Contacto: maria.lopez@email.es, Teléfono: +34 612 345 678.",
]
inputs = tokenizer(texts, return_tensors='pt', padding=True, truncation=True)
with torch.no_grad():
outputs = model(**inputs)
predictions = torch.argmax(outputs.logits, dim=-1)
Training Details
Dataset
- Source: AI4Privacy PII Masking 400k (Spanish subset)
- Format: BIO-tagged token classification
- Labels: 109 total (54 entity types × 2 BIO tags + O)
Training Configuration
- Max Sequence Length: 512 tokens
- Epochs: 3
- Framework: Hugging Face Transformers + Trainer API
Intended Use & Limitations
Intended Use
- De-identification: Automated redaction of PII in Spanish clinical notes, medical records, and documents
- Compliance: Supporting GDPR, and other privacy regulation compliance
- Data Preprocessing: Preparing datasets for research by removing sensitive information
- Audit Support: Identifying PII in document collections
Limitations
Important: This model is intended as an assistive tool, not a replacement for human review.
- False Negatives: Some PII may not be detected; always verify critical applications
- Context Sensitivity: Performance may vary with domain-specific terminology
- Language: Optimized for Spanish text; may not perform well on other languages
Citation
@misc{openmed-pii-2026,
title = {OpenMed-PII-Spanish-SuperMedical-Base-125M-v1: Spanish PII Detection Model},
author = {OpenMed Science},
year = {2026},
publisher = {Hugging Face},
url = {https://huggingface.co/OpenMed/OpenMed-PII-Spanish-SuperMedical-Base-125M-v1}
}
Links