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LexPredict LexNLP

Project description

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LexNLP by LexPredict

LexNLP provides functionality such as:

  • Segmentation and tokenization, such as

    • A sentence parser that is aware of common legal abbreviations like LLC. or F.3d.

    • Pre-trained segmentation models for legal concepts such as pages or sections.

  • Pre-trained word embedding and topic models, broadly and for specific practice areas

  • Pre-trained classifiers for document type and clause type

  • Broad range of fact extraction, such as:

    • Monetary amounts, non-monetary amounts, percentages, ratios

    • Conditional statements and constraints, like “less than” or “later than”

    • Dates, recurring dates, and durations

    • Courts, regulations, and citations

  • Tools for building new clustering and classification methods

  • Hundreds of unit tests from real legal documents

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Information

Structure

Please note that ContraxSuite installations generally require trained models or knowledge sets for usage.

Licensing

LexNLP is available under a dual-licensing model. By default, this library can be used under AGPLv3 terms as detailed in the repository LICENSE file; however, organizations can request a release from the AGPL terms or a non-GPL evaluation license by contacting ContraxSuite Licensing at <license@contraxsuite.com>.

Requirements

  • Python 3.6

  • see python-requirements.txt file for full information

Releases

  • 1.4.0: December 20, 2019 - Eighteenth scheduled public release; code

  • 1.3.0: November 1, 2019 - Seventeenth scheduled public release; code

  • 0.2.7: August 1, 2019 - Sixteenth scheduled public release; code

  • 0.2.6: June 12, 2019 - Fifteenth scheduled public release; code

  • 0.2.5: March 1, 2019 - Fourteenth scheduled public release; code

  • 0.2.4: February 1, 2019 - Thirteenth scheduled public release; code

  • 0.2.3: Junuary 10, 2019 - Twelfth scheduled public release; code

  • 0.2.2: September 30, 2018 - Eleventh scheduled public release; code

  • 0.2.1: August 24, 2018 - Tenth scheduled public release; code

  • 0.2.0: August 1, 2018 - Ninth scheduled public release; code

  • 0.1.9: July 1, 2018 - Ninth scheduled public release; code

  • 0.1.8: May 1, 2018 - Eighth scheduled public release; code

  • 0.1.7: April 1, 2018 - Seventh scheduled public release; code

  • 0.1.6: March 1, 2018 - Sixth scheduled public release; code

  • 0.1.5: February 1, 2018 - Fifth scheduled public release; code

  • 0.1.4: January 1, 2018 - Fourth scheduled public release; code

  • 0.1.3: December 1, 2017 - Third scheduled public release; code

  • 0.1.2: November 1, 2017 - Second scheduled public release; code

  • 0.1.1: October 2, 2017 - Bug fix release for 0.1.0; code

  • 0.1.0: September 30, 2017 - First public release; code

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