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Persidio Anonymizer package - replaces analyzed text with desired values.

Project description

Presidio anonymizer

Description

The Presidio anonymizer is a Python based module for anonymizing detected PII text entities with desired values.

Anonymizer Design

Deploy Presidio anonymizer to Azure

Use the following button to deploy presidio anonymizer to your Azure subscription.

Deploy to Azure

The Presidio-Anonymizer package contains both Anonymizers and Deanonymizers.

  • Anonymizers are used to replace a PII entity text with some other value.
  • Deanonymizers are used to revert the anonymization operation. For example, to decrypt an encrypted text.

Anonymizer

Presidio anonymizer comes by default with the following anonymizers:

  • Replace: Replaces the PII with desired value.

    • Parameters: new_value - replaces existing text with the given value. If new_value is not supplied or empty, default behavior will be: <entity_type> e.g: <PHONE_NUMBER>
  • Redact: Removes the PII completely from text.

    • Parameters: None
  • Hash: Hashes the PII using either sha256, sha512 or md5.

    • Parameters:
      • hash_type: Sets the type of hashing. Can be either sha256, sha512 or md5. The default hash type is sha256.
  • Mask: Replaces the PII with a sequence of a given character.

    • Parameters:

      • chars_to_mask: The amount of characters out of the PII that should be replaced.
      • masking_char: The character to be replaced with.
      • from_end: Whether to mask the PII from it's end.
  • Encrypt: Encrypt the PII entity text and replace the original with the encrypted string.

  • Custom: Replace the PII with the result of the function executed on the PII string.

    • Parameters: lambda: Lambda function to execute on the PII string. The lambda return type must be a string.

The Anonymizer default setting is to use the Advanced Encryption Standard (AES) as the encryption algorithm, also known as Rijndael.

  • Parameters:
    • key: A cryptographic key used for the encryption. The length of the key needs to be of 128, 192 or 256 bits, in a string format.

Note: If the default anonymizer is not provided, the default anonymizer is "replace" for all entities. The replacing value will be the entity type e.g.: <PHONE_NUMBER>

Handling overlaps between entities

As the input text could potentially have overlapping PII entities, there are different anonymization scenarios:

  • No overlap (single PII): When there is no overlap in spans of entities, Presidio Anonymizer uses a given or default anonymization operator to anonymize and replace the PII text entity.
  • Full overlap of PII entity spans: When entities have overlapping substrings,
    the PII with the higher score will be taken. Between PIIs with identical scores, the selection is arbitrary.
  • One PII is contained in another: Presidio Anonymizer will use the PII with the larger text even if it's score is lower.
  • Partial intersection: Presidio Anonymizer will anonymize each individually and will return a concatenation of the anonymized text. For example: For the text
    I'm George Washington Square Park.
    
    Assuming one entity is George Washington and the other is Washington State Park and assuming the default anonymizer, the result would be
    I'm <PERSON><LOCATION>.
    

Additional examples for overlapping PII scenarios:

Text:

My name is Inigo Montoya. You Killed my Father. Prepare to die. BTW my number is:
03-232323.
  • No overlaps: Assuming only Inigo is recognized as NAME:
    My name is <NAME> Montoya. You Killed my Father. Prepare to die. BTW my number is:
    03-232323.
    
  • Full overlap: Assuming the number is recognized as PHONE_NUMBER with score of 0.7 and as SSN with score of 0.6, the higher score would count:
    My name is Inigo Montoya. You Killed my Father. Prepare to die. BTW my number is: <
    PHONE_NUMBER>.
    
  • One PII is contained is another: Assuming Inigo is recognized as FIRST_NAME and Inigo Montoya was recognized as NAME, the larger one will be used:
    My name is <NAME>. You Killed my Father. Prepare to die. BTW my number is: 03-232323.
    
  • Partial intersection: Assuming the number 03-2323 is recognized as a PHONE_NUMBER but 232323 is recognized as SSN:
    My name is Inigo Montoya. You Killed my Father. Prepare to die. BTW my number is: <
    PHONE_NUMBER><SSN>.
    

Deanonymizer

Presidio deanonymizer currently contains one operator:

  • Decrypt: Replace the encrypted text with decrypted text. Uses Advanced Encryption Standard (AES) as the encryption algorithm, also known as Rijndael.
    • Parameters:
      • key - a cryptographic key used for the encryption. The length of the key needs to be of 128, 192 or 256 bits, in a string format.

Please notice: you can use "DEFAULT" as an operator key to define an operator over all entities.

Installation

As a python package:

To install Presidio Anonymizer, run the following, preferably in a virtual environment:

pip install presidio-anonymizer

Getting started

from presidio_anonymizer import AnonymizerEngine
from presidio_anonymizer.entities import RecognizerResult, OperatorConfig

# Initialize the engine with logger.
engine = AnonymizerEngine()

# Invoke the anonymize function with the text, 
# analyzer results (potentially coming from presidio-analyzer) and
# Operators to get the anonymization output:
result = engine.anonymize(
    text="My name is Bond, James Bond",
    analyzer_results=[
        RecognizerResult(entity_type="PERSON", start=11, end=15, score=0.8),
        RecognizerResult(entity_type="PERSON", start=17, end=27, score=0.8),
    ],
    operators={"PERSON": OperatorConfig("replace", {"new_value": "BIP"})},
)

print(result)

This example take the output of the AnonymizerEngine with encrypted PII entities, and decrypt it back to the original text:

from presidio_anonymizer import DeanonymizeEngine
from presidio_anonymizer.entities import AnonymizerResult, OperatorConfig

# Initialize the engine with logger.
engine = DeanonymizeEngine()

# Invoke the deanonymize function with the text, anonymizer results and
# Operators to define the deanonymization type.
result = engine.deanonymize(
    text="My name is S184CMt9Drj7QaKQ21JTrpYzghnboTF9pn/neN8JME0=",
    entities=[
        AnonymizerResult(start=11, end=55, entity_type="PERSON"),
    ],
    operators={"DEFAULT": OperatorConfig("decrypt", {"key": "WmZq4t7w!z%C&F)J"})},
)

print(result)

As docker service:

In folder presidio/presidio-anonymizer run:

docker-compose up -d

HTTP API

Follow the API Spec for the Anonymizer REST API reference details

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