Patents Assigned to Arthur AI, Inc.
  • Patent number: 12033088
    Abstract: In an embodiment, the systems and methods discussed herein are related to generating, via a processor, a Markov Distribution Problem (MDP), the MDP including a state space, an action space, a transition function, a reward function, and a discount factor. A reinforcement learning (RL) model is applied, via the processor, to the MDP to generate a RL agent. An input data associated with a first user is received at the RL agent. At least one counterfactual explanation (CFE) is generated via the processor and by the RL agent and based on the input data. A representation of the at least one CFE and at least one recommended remedial action is caused to transmit, via the processor, to at least one of a compute device of the first user or a compute device of a second user different from and associated with the first user.
    Type: Grant
    Filed: June 30, 2022
    Date of Patent: July 9, 2024
    Assignee: Arthur AI, Inc.
    Inventors: Sahil Verma, John Dickerson, Keegan Hines
  • Publication number: 20240152810
    Abstract: A method for monitoring performance of a ML system includes receiving a data stream via a processor and generating a first plurality of metrics based on the data stream. The processor also generates input data based on the data stream, and sends the input data to a machine learning (ML) model for generation of intermediate output and model output based on the input data. The processor also generates a second plurality of metrics based on the intermediate output, and a third plurality of metrics based on the model output. An alert is generated based on at least one of the first plurality of metrics, the second plurality of metrics, or the third plurality of metrics, and a signal representing the alert is sent for display to a user via an interface.
    Type: Application
    Filed: January 16, 2024
    Publication date: May 9, 2024
    Applicant: Arthur AI, Inc.
    Inventors: Adam WENCHEL, John DICKERSON, Priscilla ALEXANDER, Elizabeth O'SULLIVAN, Keegan HINES
  • Patent number: 11922280
    Abstract: A method for monitoring performance of a ML system includes receiving a data stream via a processor and generating a first plurality of metrics based on the data stream. The processor also generates input data based on the data stream, and sends the input data to a machine learning (ML) model for generation of intermediate output and model output based on the input data. The processor also generates a second plurality of metrics based on the intermediate output, and a third plurality of metrics based on the model output. An alert is generated based on at least one of the first plurality of metrics, the second plurality of metrics, or the third plurality of metrics, and a signal representing the alert is sent for display to a user via an interface.
    Type: Grant
    Filed: December 9, 2020
    Date of Patent: March 5, 2024
    Assignee: Arthur AI, Inc.
    Inventors: Adam Wenchel, John Dickerson, Priscilla Alexander, Elizabeth O'Sullivan, Keegan Hines
  • Patent number: 11915109
    Abstract: In some embodiments, a method includes generating a trained decision tree with a set of nodes based on input data and a partitioning objective, and generating a modified decision tree by recursively passing the input data through the trained decision tree, recursively calculating, for each of the nodes, an associated set of metrics, and recursively defining an association between each of the nodes and the associated set of metrics. A node from a set of nodes of the modified decision tree is identified that violates a user-specified threshold value, associated with a user, for at least one of the metrics. The method also includes causing transmission of a signal to a compute device of the user, the signal including a representation of the identified node.
    Type: Grant
    Filed: September 15, 2022
    Date of Patent: February 27, 2024
    Assignee: Arthur AI, Inc.
    Inventors: Kenneth S. Chen, Reese Hyde, Keegan E. Hines
  • Publication number: 20230098255
    Abstract: In some embodiments, a method includes generating a trained decision tree with a set of nodes based on input data and a partitioning objective, and generating a modified decision tree by recursively passing the input data through the trained decision tree, recursively calculating, for each of the nodes, an associated set of metrics, and recursively defining an association between each of the nodes and the associated set of metrics. A node from a set of nodes of the modified decision tree is identified that violates a user-specified threshold value, associated with a user, for at least one of the metrics. The method also includes causing transmission of a signal to a compute device of the user, the signal including a representation of the identified node.
    Type: Application
    Filed: September 15, 2022
    Publication date: March 30, 2023
    Applicant: Arthur AI, Inc.
    Inventors: Kenneth S. CHEN, Reese HYDE, Keegan E. HINES
  • Patent number: 11568167
    Abstract: In some embodiments, a first plurality of representations are extracted from a first data set. A first set of distributions are generated based on the first plurality of representations. A machine learning model is trained based on the first plurality of representations and the first set of distributions. A second plurality of representations are extracted from a second data set different from the first data set. The machine learning model is executed based on the second plurality of representations to produce a second set of distributions. An anomaly score is determined for each datum from the second data set to produce a set of anomaly scores. The set of anomaly scores are determined based on the first set of distributions and the second set of distributions. A notification is generated when at least one anomaly score from the set of anomaly scores is larger than a predetermined threshold.
    Type: Grant
    Filed: May 25, 2022
    Date of Patent: January 31, 2023
    Assignee: Arthur AI, Inc.
    Inventors: Keegan E. Hines, John P. Dickerson, Karthik Rao, Rowan Cheung, Reese M. E. Hyde
  • Patent number: 11403538
    Abstract: In an embodiment, the systems and methods discussed herein are related to generating, via a processor, a Markov Decision Process (MDP), the MDP including a state space, an action space, a transition function, a reward function, and a discount factor. A reinforcement learning (RL) model is applied, via the processor, to the MDP to generate a RL agent. An input data associated with a first user is received at the RL agent. At least one counterfactual explanation (CFE) is generated via the processor and by the RL agent and based on the input data. A representation of the at least one CFE and at least one recommended remedial action is caused to transmit, via the processor, to at least one of a compute device of the first user or a compute device of a second user different from and associated with the first user.
    Type: Grant
    Filed: November 5, 2021
    Date of Patent: August 2, 2022
    Assignee: Arthur AI, Inc.
    Inventors: Sahil Verma, John Dickerson, Keegan Hines