Patents by Inventor Dhruv Siddharth KRISHNAN

Dhruv Siddharth KRISHNAN 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).

  • Publication number: 20230237329
    Abstract: A method for providing stock predictive information by a cloud-based computing system implementing a random forest algorithm via a machine learning model by receiving a set of stock data from multiple sources of stock data wherein the set of stock data at least comprises stock prices at the open and close of a market, changes in stock prices during the open and close of a market, and real-time stock data; defining a range in time contained in a window defined of an initial selected month, a day or real-time period and an end of the selected month, day and real-time period; applying the random forest model to the set of stock data by creating multiple decision trees to predict a stock price in a quantified period, amount or percentage change in a stock price; and presenting the predicted stock price in a graphic user interface to an user.
    Type: Application
    Filed: April 3, 2023
    Publication date: July 27, 2023
    Inventor: Dhruv Siddharth KRISHNAN
  • Patent number: 11645522
    Abstract: A method for providing stock predictive information by a cloud-based computing system implementing a random forest algorithm via a machine learning model by receiving a set of stock data from multiple sources of stock data wherein the set of stock data at least comprises stock prices at the open and close of a market, changes in stock prices during the open and close of a market, and real-time stock data; defining a range in time contained in a window defined of an initial selected month, a day or real-time period and an end of the selected month, day and real-time period; applying the random forest model to the set of stock data by creating multiple decision trees to predict a stock price in a quantified period, amount or percentage change in a stock price; and presenting the predicted stock price in a graphic user interface to an user.
    Type: Grant
    Filed: February 6, 2020
    Date of Patent: May 9, 2023
    Inventor: Dhruv Siddharth Krishnan
  • Publication number: 20200202436
    Abstract: A method for providing stock predictive information by a cloud-based computing system implementing a random forest algorithm via a machine learning model by receiving a set of stock data from multiple sources of stock data wherein the set of stock data at least comprises stock prices at the open and close of a market, changes in stock prices during the open and close of a market, and real-time stock data; defining a range in time contained in a window defined of an initial selected month, a day or real-time period and an end of the selected month, day and real-time period; applying the random forest model to the set of stock data by creating multiple decision trees to predict a stock price in a quantified period, amount or percentage change in a stock price; and presenting the predicted stock price in a graphic user interface to an user.
    Type: Application
    Filed: February 6, 2020
    Publication date: June 25, 2020
    Inventor: Dhruv Siddharth Krishnan
  • Publication number: 20190279301
    Abstract: A multi-factor qualitative method for assessing assets including receiving market data from a plurality of market data sources for processing by a trading app to make decisions as to whether to buy, sell, or hold a particular market asset; applying a data normalizer to the market data for processing dissimilar sets of market data; receiving, by user input, a particular market asset in which a decision is required; processing, the market data by a complex event processing engine using an algorithmic solutions from a particular sector for market analysis of market data to generate a multi-factor model wherein the multi-factor model comprises: at least one of a set of a plurality of multi-factors related to the particular sector; applying, the multi-factor model by the trading app, to perform a multi-factor analysis making a decision whether to buy, sell or hold the market asset based on a normalized score.
    Type: Application
    Filed: May 6, 2019
    Publication date: September 12, 2019
    Inventor: Dhruv Siddharth KRISHNAN