Patents by Inventor Debabrata PATI

Debabrata PATI has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11954174
    Abstract: A computerized-method for scaling automatic deployment of a machine-learning detection model in a cloud-based managed analytics service by knowledge sharing to overcome an imbalanced dataset learning problem. The computerized-method includes: sending the received data to machine-learning models to synthesize patterns of the received data to yield a differential privacy data; maintaining in the database the differential privacy data of one or more on-prem cloud-based managed analytics services to generate a consortium shared synthetic data lake; operating phases of machine-learning detection model based on the received data and data in the database to create a packaged model. The data in the database is aggregated and used during the operating phases of the machine-learning detection model to create a packaged model for other on-prem cloud-based managed analytics services, thus overcoming imbalanced dataset learning thereof, and after the packaged model is created it is automatically deployed on-prem.
    Type: Grant
    Filed: October 6, 2020
    Date of Patent: April 9, 2024
    Assignee: ACTIMIZE LTD.
    Inventors: Debabrata Pati, Pravin Dahiphale, Danny Butvinik
  • Publication number: 20230050193
    Abstract: A computerized-method for generating a dataset for a Machine Learning (ML) model for an increased accurate financial crime detection from an initiation stage of the ML model implementation. The computerized-method includes retrieval of financial transaction records from a database of financial transaction records to arrange a dataset of financial transaction records, according to preconfigured techniques. Then, processing the records in the dataset; Then, operating feature engineering on preselected anomalous related features to yield probabilistic categorical features and to yield probabilistic numerical features, and then combining the probabilistic categorical features with the probabilistic numerical features to generate a complex features dataset, and providing the probabilistic categorical features, the probabilistic numerical features and the complex features dataset to an ML model, thus, increasing accuracy of detection that is performed right from an initiation stage of the ML model implementation.
    Type: Application
    Filed: October 31, 2022
    Publication date: February 16, 2023
    Inventors: Debabrata PATI, Akshaykumar Bhausaheb TILEKAR, Shevale Ashish SUHAS
  • Patent number: 11562372
    Abstract: A computerized-method for generating a dataset for a Machine Learning (ML) model for an increased accurate financial crime detection from an initiation stage of the ML model implementation. The computerized-method includes: retrieval of financial transaction records from a database of financial transaction records to arrange a dataset of financial transaction records, according to preconfigured techniques. Then, processing the records in the dataset; Then, operating feature engineering on preselected anomalous related features to yield probabilistic categorical features and to yield probabilistic numerical features, and then combining the probabilistic categorical features with the probabilistic numerical features to generate a complex features dataset, and providing the probabilistic categorical features, the probabilistic numerical features and the complex features dataset to an ML model, thus, increasing accuracy of detection that is performed right from an initiation stage of the ML model implementation.
    Type: Grant
    Filed: June 4, 2020
    Date of Patent: January 24, 2023
    Assignee: ACTIMIZE LTD
    Inventors: Debabrata Pati, Akshaykumar Bhausaheb Tilekar, Shevale Ashish Suhas
  • Publication number: 20220108133
    Abstract: A computerized-method for scaling automatic deployment of a machine-learning detection model in a cloud-based managed analytics service by knowledge sharing to overcome an imbalanced dataset learning problem, is provided herein. The computerized-method includes: sending the received data to machine-learning models to synthesize patterns of the received data to yield a deferential privacy data; maintaining in the database the deferential privacy data of one or more on-prem cloud-based managed analytics services to generate a consortium shared synthetic data lake; operating phases of machine-learning detection model based on the received data and data in the database to create a packaged model.
    Type: Application
    Filed: October 6, 2020
    Publication date: April 7, 2022
    Inventors: Debabrata PATI, Pravin Dahiphale, Danny Butvinik
  • Patent number: 11263644
    Abstract: In a method for detecting unauthorized or suspicious financial activity, a graph convolutional network for financial crime prevention, a separate node is created for each entity: each account, each person, each address (e.g. email address), etc. Separate attributes are provided to aggregate transactions in which the node acts as a sender; transactions in which the node acts as a receiver; transactions using a specific channel (e.g. ATM); and transactions of a specific type (e.g. online money transfer). In some embodiments, the attributes exclude data on individual transactions to reduce the amount of data and hence provide more effective computer utilization. The approach is suitable for many applications, including anti-money laundering. Other features are also provided, as well as systems for such detection.
    Type: Grant
    Filed: April 22, 2020
    Date of Patent: March 1, 2022
    Assignee: ACTIMIZE LTD.
    Inventors: Debabrata Pati, Pravin Dahiphale, Ofir Itzhak Reichenberg
  • Publication number: 20220044199
    Abstract: A computerized-method for automatically generating a two-part readable Suspicious Activity Report (SAR) from high-dimensional data in tabular form is provided herein. The computerized-method may include receiving high-dimensional data in tabular form of evidence financial transactions to be reported under Anti Money Laundering (AML) regulations. Then, displaying the received data to a Subject Matter Expert (SME) for ordering each displayed transaction in a predefined construction; Then, training one or more Natural Language Generation (NLG) translation models, for each transaction type, according to a deep learning model. Then, operating the one or more NLG translation models on each transaction e to generate for each transaction type a narrative of SAR; Then, operating a prebuilt summary model on the generated narrative of SAR of each transaction type to generate a summary of the narrative of SAR; and combining the narrative of SAR and the summary of narrative of SAR to one SAR.
    Type: Application
    Filed: August 6, 2020
    Publication date: February 10, 2022
    Inventors: Debabrata PATI, Danny BUTVINIK
  • Publication number: 20210383407
    Abstract: A computerized-method for generating a dataset for a Machine Learning (ML) model for an increased accurate financial crime detection from an initiation stage of the ML model implementation. The computerized-method includes: retrieval of financial transaction records from a database of financial transaction records to arrange a dataset of financial transaction records, according to preconfigured techniques. Then, processing the records in the dataset; Then, operating feature engineering on preselected anomalous related features to yield probabilistic categorical features and to yield probabilistic numerical features, and then combining the probabilistic categorical features with the probabilistic numerical features to generate a complex features dataset, and providing the probabilistic categorical features, the probabilistic numerical features and the complex features dataset to an ML model, thus, increasing accuracy of detection that is performed right from an initiation stage of the ML model implementation.
    Type: Application
    Filed: June 4, 2020
    Publication date: December 9, 2021
    Inventors: Debabrata PATI, Akshaykumar Bhausaheb Tilekar, Shevale Ashish Suhas
  • Publication number: 20210334822
    Abstract: In a method for detecting unauthorized or suspicious financial activity, a graph convolutional network for financial crime prevention, a separate node is created for each entity: each account, each person, each address (e.g. email address), etc. Separate attributes are provided to aggregate transactions in which the node acts as a sender; transactions in which the node acts as a receiver; transactions using a specific channel (e.g. ATM); and transactions of a specific type (e.g. online money transfer). In some embodiments, the attributes exclude data on individual transactions to reduce the amount of data and hence provide more effective computer utilization. The approach is suitable for many applications, including anti-money laundering. Other features are also provided, as well as systems for such detection.
    Type: Application
    Filed: April 22, 2020
    Publication date: October 28, 2021
    Inventors: Debabrata PATI, Pravin DAHIPHALE, Ofir Itzhak REICHENBERG