Patents Assigned to Icertis, Inc.
  • Patent number: 11593440
    Abstract: Embodiments are directed to representing documents using document keys. Documents that include one or more clauses may be provided. Each clause type for the one or more clauses in documents may be determined based on one or more classification models. One or more clause identifiers may be associated with the one or more clauses based on one or more clause types of each clause. A document key may be generated for each document based on an ordered collection of the one or more clauses included in each document such that each clause identifier may be positioned in the document key based on an order of its location in a corresponding clause of a document. The documents may be analyzed based on evaluations of one or more document keys corresponding to the documents. One or more reports may be generated based on one or more results of the analysis.
    Type: Grant
    Filed: June 13, 2022
    Date of Patent: February 28, 2023
    Assignee: Icertis, Inc.
    Inventors: Yogesh Haribhau Kulkarni, Sunu Engineer, Amitabh Jain, Ravi Kothari, Monish Mangalkumar Darda
  • Patent number: 11361034
    Abstract: Embodiments are directed to representing documents using document keys. Documents that include one or more clauses may be provided. Each clause type for the one or more clauses in documents may be determined based on one or more classification models. One or more clause identifiers may be associated with the one or more clauses based on one or more clause types of each clause. A document key may be generated for each document based on an ordered collection of the one or more clauses included in each document such that each clause identifier may be positioned in the document key based on an order of its location in a corresponding clause of a document. The documents may be analyzed based on comparisons of one or more document keys corresponding to the documents. One or more reports may be generated based on one or more results of the analysis.
    Type: Grant
    Filed: November 30, 2021
    Date of Patent: June 14, 2022
    Assignee: Icertis, Inc.
    Inventors: Yogesh Haribhau Kulkarni, Sunu Engineer, Amitabh Jain, Ravi Kothari, Monish Mangalkumar Darda
  • Patent number: 11151501
    Abstract: Embodiments are directed to managing documents over a network. A machine learning (ML) engine analyzes a plurality of documents associated with actions that were performed previously. The ML engine determines critical events associated with the performance of the actions based on the plurality documents. The ML engine generates ML models based on the critical events to compute risk values that may be associated with the critical events. In response to a request to compute risk values associated with pending actions, the ML engine determines documents that are associated with the pending actions based on the request. The ML engine determines the critical events associated with pending actions based on the documents. The ML engine employs the ML models to generate the risk values based on the documents and the critical events. The ML engine provides the risk values in response to the request.
    Type: Grant
    Filed: July 27, 2020
    Date of Patent: October 19, 2021
    Assignee: Icertis, Inc.
    Inventors: Sunu Engineer, Amitabh Jain, Monish Mangalkumar Darda
  • Patent number: 10936974
    Abstract: Embodiments are directed to a machine learning engine that determines training documents and validation documents from a plurality of documents. The machine learning engine may determine attributes associated with the documents. In response to receiving a request to predict attribute values of a selected document the machine learning engine may train a plurality of ML models to predict the attribute values based on the training documents and the attributes and associate the trained ML models with an accuracy score. The machine learning engine may determine candidate ML models from the trained ML models based on the training accuracy scores. The machine learning engine may evaluate and rank the candidate ML models based on the request and the validation documents. The machine learning engine may generate confirmed ML models based on the ranked candidate ML models such that the confirmed ML models may answer the request.
    Type: Grant
    Filed: December 24, 2018
    Date of Patent: March 2, 2021
    Assignee: Icertis, Inc.
    Inventors: Dhruv Chaudhari, Harshil Shah, Amitabh Jain, Monish Mangalkumar Darda
  • Patent number: 10726374
    Abstract: Embodiments are directed to managing documents over a network. A machine learning (ML) engine analyzes a plurality of documents associated with actions that were performed previously. The ML engine determines critical events associated with the performance of the actions based on the plurality documents. The ML engine generates ML models based on the critical events to compute risk values that may be associated with the critical events. In response to a request to compute risk values associated with pending actions, the ML engine determines documents that are associated with the pending actions based on the request. The ML engine determines the critical events associated with pending actions based on the documents. The ML engine employs the ML models to generate the risk values based on the documents and the critical events. The ML engine provides the risk values in response to the request.
    Type: Grant
    Filed: February 19, 2019
    Date of Patent: July 28, 2020
    Assignee: Icertis, Inc.
    Inventors: Sunu Engineer, Amitabh Jain, Monish Mangalkumar Darda
  • Patent number: 10409805
    Abstract: Embodiments are directed to managing documents where clauses in a document may be identified. Evaluations of the clauses may be provided based on evaluators and machine learning (ML) models that assign each of the clauses to a category and a confidence score. Actions associated with the clauses may be monitored including updates to content of the clauses. Inconsistent evaluations associated with the clauses be identified. The ML models may be retrained based on the content of the clauses associated with the inconsistent evaluations.
    Type: Grant
    Filed: December 24, 2018
    Date of Patent: September 10, 2019
    Assignee: Icertis, Inc.
    Inventors: Amitabh Jain, Nagi Prabhu, Monish Mangalkumar Darda
  • Patent number: 10162850
    Abstract: Embodiments are directed to managing documents where clauses in a document may be identified. Evaluations of the clauses may be provided based on evaluators and machine learning (ML) models that assign each of the clauses to a category and a confidence score. Actions associated with the clauses may be monitored including updates to content of the clauses. Inconsistent evaluations associated with the clauses be identified. The ML models may be retrained based on the content of the clauses associated with the inconsistent evaluations.
    Type: Grant
    Filed: April 10, 2018
    Date of Patent: December 25, 2018
    Assignee: Icertis, Inc.
    Inventors: Amitabh Jain, Nagi Prabhu, Monish Mangalkumar Darda