--- license: mit language: - en pipeline_tag: text-generation tags: - LLM - token classification - nlp - safetensor base_model: microsoft/Phi-3-mini-4k-instruct library_name: transformers widget: - text: "My name is Sylvain and I live in Paris" example_title: "Parisian" - text: "My name is Sarah and I live in London" example_title: "Londoner" --- # PII Detection Model - Phi3 Mini Fine-Tuned This repository contains a fine-tuned version of the [Phi3 Mini](https://huggingface.co/ab-ai/PII-Model-Phi3-Mini) model for detecting personally identifiable information (PII). The model has been specifically trained to recognize various PII entities in text, making it a powerful tool for tasks such as data redaction, privacy protection, and compliance with data protection regulations. ## Model Overview ### Model Architecture - **Base Model**: Phi3 Mini - **Fine-Tuned For**: PII detection - **Framework**: [Hugging Face Transformers](https://huggingface.co/transformers/) ### Detected PII Entities The model is capable of detecting the following PII entities: - **Personal Information**: - `firstname` - `middlename` - `lastname` - `sex` - `dob` (Date of Birth) - `age` - `gender` - `height` - `eyecolor` - **Contact Information**: - `email` - `phonenumber` - `url` - `username` - `useragent` - **Address Information**: - `street` - `city` - `state` - `county` - `zipcode` - `country` - `secondaryaddress` - `buildingnumber` - `ordinaldirection` - **Geographical Information**: - `nearbygpscoordinate` - **Organizational Information**: - `companyname` - `jobtitle` - `jobarea` - `jobtype` - **Financial Information**: - `accountname` - `accountnumber` - `creditcardnumber` - `creditcardcvv` - `creditcardissuer` - `iban` - `bic` - `currency` - `currencyname` - `currencysymbol` - `currencycode` - `amount` - **Unique Identifiers**: - `pin` - `ssn` - `imei` (Phone IMEI) - `mac` (MAC Address) - `vehiclevin` (Vehicle VIN) - `vehiclevrm` (Vehicle VRM) - **Cryptocurrency Information**: - `bitcoinaddress` - `litecoinaddress` - `ethereumaddress` - **Other Information**: - `ip` (IP Address) - `ipv4` - `ipv6` - `maskednumber` - `password` - `time` - `ordinaldirection` - `prefix` ## Usage ### Installation To use this model, you'll need to have the `transformers` library installed: ```bash pip install transformers ``` ### Run Inference ```bash from transformers import AutoTokenizer, AutoModelForTokenClassification # Load the tokenizer and model tokenizer = AutoTokenizer.from_pretrained("ab-ai/PII-Model-Phi3-Mini") model = AutoModelForTokenClassification.from_pretrained("ab-ai/PII-Model-Phi3-Mini") input_text = "Hi Abner, just a reminder that your next primary care appointment is on 23/03/1926. Please confirm by replying to this email Nathen15@hotmail.com." model_prompt = f"""### Instruction: Identify and extract the following PII entities from the text, if present: companyname, pin, currencyname, email, phoneimei, litecoinaddress, currency, eyecolor, street, mac, state, time, vehiclevin, jobarea, date, bic, currencysymbol, currencycode, age, nearbygpscoordinate, amount, ssn, ethereumaddress, zipcode, buildingnumber, dob, firstname, middlename, ordinaldirection, jobtitle, bitcoinaddress, jobtype, phonenumber, height, password, ip, useragent, accountname, city, gender, secondaryaddress, iban, sex, prefix, ipv4, maskednumber, url, username, lastname, creditcardcvv, county, vehiclevrm, ipv6, creditcardissuer, accountnumber, creditcardnumber. Return the output in JSON format. ### Input: {input_text} ### Output: """ inputs = tokenizer(model_prompt, return_tensors="pt").to(device) # adjust max_new_tokens according to your need outputs = model.generate(**inputs, do_sample=True, max_new_tokens=120) response = tokenizer.decode(outputs[0], skip_special_tokens=True) print(response) ```