This package provides evaluation and data-science capabilities for Presidio and PII detection models in general.
It also includes a fake data generator that creates synthetic sentences based on templates and fake PII.
- Anyone interested in developing or evaluating PII detection models, an existing Presidio instance or a Presidio PII recognizer.
- Anyone interested in generating new data based on previous datasets or sentence templates (e.g., to increase the coverage of entity values) for Named Entity Recognition models.
The easiest way to get started is by reviewing the notebooks.
- Notebook 1: Shows how to use the PII data generator.
- Notebook 2: Shows a simple analysis of the PII dataset.
- Notebook 3: Provides tools to split the dataset into train/test/validation sets while avoiding leakage due to the same pattern appearing in multiple folds (only applicable for synthetically generated data).
- Notebook 4: Shows how to use the evaluation tools to evaluate how well Presidio detects PII. Note that this is using the vanilla Presidio, and the results aren't very accurate.
- Notebook 5: Shows how one can configure Presidio to detect PII much more accurately, and boost the f score in ~30%.
Note: Presidio evaluator requires Python version 3.9 or higher.
conda create --name presidio python=3.9
conda activate presidio
pip install presidio-evaluator
python -m spacy download en_core_web_sm # for tokenization
python -m spacy download en_core_web_lg # for NER
To install the package:
- Clone the repo
- Install all dependencies:
# Install package+dependencies
pip install poetry
poetry install --with=dev
# Download tge spaCy pipeline used for tokenization
poetry run python -m spacy download en_core_web_sm
# To install with all additional NER dependencies (e.g. Flair, Stanza), run:
# poetry install --with='ner,dev'
# To use the default Presidio configuration, a spaCy model is required:
poetry run python -m spacy download en_core_web_lg
# Verify installation
pytest
Note that some dependencies (such as Flair and Stanza) are not automatically installed to reduce installation complexity.
- Fake data generator for PII recognizers and NER models
- Data representation layer for data generation, modeling and analysis
- Multiple Model/Recognizer evaluation files (e.g. for Presidio, Spacy, Flair, Azure AI Language)
- Training and modeling code for multiple models
- Helper functions for results analysis
See Data Generator README for more details.
The data generation process takes a file with templates, e.g. My name is {{name}}
.
Then, it creates new synthetic sentences by sampling templates and PII values.
Furthermore, it tokenizes the data, creates tags (either IO/BIO/BILUO) and spans for the newly created samples.
- For information on data generation/augmentation, see the data generator README.
- For an example for running the generation process, see this notebook.
- For an understanding of the underlying fake PII data used, see this exploratory data analysis notebook.
Once data is generated, it could be split into train/test/validation sets while ensuring that each template only exists in one set. See this notebook for more details.
In order to standardize the process, we use specific data objects that hold all the information needed for generating, analyzing, modeling and evaluating data and models. Specifically, see data_objects.py.
The standardized structure, List[InputSample]
, can be translated into different formats:
-
CoNLL
-
To CoNLL:
from presidio_evaluator import InputSample dataset = InputSample.read_dataset_json("data/synth_dataset_v2.json") conll = InputSample.create_conll_dataset(dataset) conll.to_csv("dataset.csv", sep="\t")
-
From CoNLL
from pathlib import Path from presidio_evaluator.dataset_formatters import CONLL2003Formatter # Read from a folder containing ConLL2003 files conll_formatter = CONLL2003Formatter(files_path=Path("data/conll2003").resolve()) train_samples = conll_formatter.to_input_samples(fold="train")
-
-
spaCy v3
from presidio_evaluator import InputSample dataset = InputSample.read_dataset_json("data/synth_dataset_v2.json") InputSample.create_spacy_dataset(dataset, output_path="dataset.spacy")
-
Flair
from presidio_evaluator import InputSample dataset = InputSample.read_dataset_json("data/synth_dataset_v2.json") flair = InputSample.create_flair_dataset(dataset)
-
json
from presidio_evaluator import InputSample dataset = InputSample.read_dataset_json("data/synth_dataset_v2.json") InputSample.to_json(dataset, output_file="dataset_json")
The presidio-evaluator framework allows you to evaluate Presidio as a system, a NER model, or a specific PII recognizer for precision, recall, and error analysis. See Notebook 5 for an example.
- Blog post on NLP approaches to data anonymization
- Conference talk about leveraging Presidio and utilizing NLP approaches for data anonymization
This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.
When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.
This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.
Copyright notice:
Fake Name Generator identities by the Fake Name Generator are licensed under a Creative Commons Attribution-Share Alike 3.0 United States License. Fake Name Generator and the Fake Name Generator logo are trademarks of Corban Works, LLC.