Patents Assigned to Gatik AI Inc.
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Patent number: 12252153Abstract: A system for context-aware decision making of an autonomous agent includes a computing system having a context selector and a map. A method for context-aware decision making of an autonomous agent includes receiving a set of inputs, determining a context associated with an autonomous agent based on the set of inputs, and optionally any or all of: labeling a map; selecting a learning module (context-specific learning module) based on the context; defining an action space based on the learning module; selecting an action from the action space; planning a trajectory based on the action S260; and/or any other suitable processes.Type: GrantFiled: July 24, 2023Date of Patent: March 18, 2025Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 12228936Abstract: A system for deterministic trajectory selection based on uncertainty estimation includes a set of one or more computing systems. A method for deterministic trajectory selection includes receiving a set of inputs; determining a set of outputs; determining uncertainty parameters associated with any or all of the set of inputs and/or any or all of the set of outputs; and evaluating the uncertainty parameters and optionally triggering a process and/or action in response.Type: GrantFiled: January 13, 2023Date of Patent: February 18, 2025Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 12222716Abstract: A system for operating an autonomous agent with a remote operator includes a remote subsystem, a local subsystem, and a communication subsystem. A method for operating an autonomous agent with a remote operator includes receiving and processing a set of inputs; presenting a set of outputs to a remote subsystem; receiving an input from a remote operator; and operating the autonomous agent. Additionally or alternatively, the method can include any or all of: detecting a failure and/or triggering a failure response; detecting a particular scenario associated with the autonomous agent; triggering a remote operator request; processing remote operator input; and/or any other processes.Type: GrantFiled: December 6, 2022Date of Patent: February 11, 2025Assignee: Gatik AI Inc.Inventors: Apeksha Kumavat, Arjun Narang, Gautam Narang, Dharmateja Kadem, Gunnar Newquist
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Patent number: 12091052Abstract: A system for addressing failure in an autonomous agent includes a driving subsystem, a control subsystem, a central computing subsystem, and an autonomous vehicle (AV) sensor subsystem. The system can optionally additionally include a power subsystem, a vehicle chassis subsystem, a communication subsystem, a distributed computing and/or processing subsystem, a supplementary sensor subsystem, and/or any other components. A method for addressing failure can include any or all of: detecting and responding to a failure; and operating the vehicle. Additionally or alternatively, the method 200 can include any other processes.Type: GrantFiled: December 15, 2022Date of Patent: September 17, 2024Assignee: Gatik AI Inc.Inventors: Apeksha Kumavat, Brian McLean, Siddharth Ram, Arjun Narang, Gautam Narang
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Publication number: 20240300531Abstract: A system for data-driven, modular decision making and trajectory generation includes a computing system. A method for data-driven, modular decision making and trajectory generation includes: receiving a set of inputs; selecting a learning module such as a deep decision network and/or a deep trajectory network from a set of learning modules; producing an output based on the learning module; repeating any or all of the above processes; and/or any other suitable processes. Additionally or alternatively, the method can include training any or all of the learning modules; validating one or more outputs; and/or any other suitable processes and/or combination of processes.Type: ApplicationFiled: May 3, 2024Publication date: September 12, 2024Applicant: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 12065155Abstract: A vehicle control system for controlling a vehicle, including a set of task nodes, wherein each of the set of task nodes compares a failure criterion to input to the task node to generate a failure flag and provides output to at least one other task node of the set of task nodes; an aggregator node directly communicatively coupled to each of the set of task nodes, and wherein the aggregator node: receives a set of failure flags from the set of task nodes, determines a failure tier based on the set of failure flags, and generates a failure tier message defining the failure tier; and, a behavior planning node communicatively coupled to the aggregator node, wherein the behavior planning node: receives the failure tier message, and in response to the failure tier defined by the failure tier message, generates vehicle control instructions.Type: GrantFiled: May 10, 2019Date of Patent: August 20, 2024Assignee: Gatik AI Inc.Inventor: Kartik Tiwari
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Patent number: 12037011Abstract: A system for expanding the operational design domain (ODD) of an autonomous agent includes a decision-making platform (equivalently referred to herein as a decision-making architecture). A method for expanding the operational design domain (ODD) includes determining a decision-making architecture for a first domain and adapting the decision-making architecture to a second domain. Additionally or alternatively, the method 200 can include implementing the decision-making architecture S300 and/or any other processes.Type: GrantFiled: December 14, 2022Date of Patent: July 16, 2024Assignee: Gatik AI Inc.Inventors: Apeksha Kumavat, Arjun Narang, Gautam Narang, Engin Burak Anil
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Patent number: 12012121Abstract: A system for data-driven, modular decision making and trajectory generation includes a computing system. A method for data-driven, modular decision making and trajectory generation includes: receiving a set of inputs; selecting a learning module such as a deep decision network and/or a deep trajectory network from a set of learning modules; producing an output based on the learning module; repeating any or all of the above processes; and/or any other suitable processes. Additionally or alternatively, the method can include training any or all of the learning modules; validating one or more outputs; and/or any other suitable processes and/or combination of processes.Type: GrantFiled: August 20, 2021Date of Patent: June 18, 2024Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Publication number: 20240149913Abstract: An example method includes receiving a scenario that includes scenario road portions and scenario hazards. Human driver performance metrics based on driving performance of human drivers on first road portions at least generally similar to the scenario road portions when the human drivers encountered first hazards at least generally similar to the scenario are received. Autonomous vehicle performance metrics based on autonomous vehicles driving on second road portions at least generally similar to the scenario road portions and encountering second hazards at least generally similar to the scenario are received. A scenario autonomous vehicle performance assessment based on the human driver performance metrics and the autonomous vehicle performance metrics are generated and provided.Type: ApplicationFiled: November 8, 2023Publication date: May 9, 2024Applicant: Gatik AI, Inc.Inventors: Adam Campbell, Apeksha Kumavat, Gautam Narang, Arjun Narang
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Publication number: 20230394975Abstract: A method for operation of fleet vehicles includes collecting a set of inputs; processing the set of inputs to determine a set of actions associated with a vehicle and/or a site; and triggering the set of actions. Additionally or alternatively, the method can include aggregating any or all of the set of inputs, and/or any other suitable processes. A system for operation of fleet vehicles can include and/or interface with any or all of: a computing subsystem, a set of management subsystems, a set of user interfaces, a set of sensors, a set of fleet vehicles, a set of non-fleet vehicles, and/or any other components.Type: ApplicationFiled: August 18, 2023Publication date: December 7, 2023Applicant: Gatik AI Inc.Inventors: Apeksha Kumavat, Gautam Narang, Arjun Narang, Shaurya Agarwal, Sam Saad, Engin Burak Anil
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Patent number: 11745758Abstract: A system for context-aware decision making of an autonomous agent includes a computing system having a context selector and a map. A method for context-aware decision making of an autonomous agent includes receiving a set of inputs, determining a context associated with an autonomous agent based on the set of inputs, and optionally any or all of: labeling a map; selecting a learning module (context-specific learning module) based on the context; defining an action space based on the learning module; selecting an action from the action space; planning a trajectory based on the action S260; and/or any other suitable processes.Type: GrantFiled: June 22, 2022Date of Patent: September 5, 2023Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11681299Abstract: A system and method for collecting and processing sensor data for facilitating and/or enabling autonomous, semi-autonomous, and remote operation of a vehicle, including: collecting surroundings at one or more sensors, and determining properties of the surroundings of the vehicle and/or the behavior of the vehicle based on the surroundings data at a computing system.Type: GrantFiled: June 21, 2021Date of Patent: June 20, 2023Assignee: Gatik AI Inc.Inventors: Kartik Tiwari, Kevin Keogh, Isaac Brown, Aishanou Osha Rait, Tanya Sumang
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Patent number: 11661078Abstract: A system for context-aware decision making of an autonomous agent includes a computing system having a context selector and a map. A method for context-aware decision making of an autonomous agent includes receiving a set of inputs, determining a context associated with an autonomous agent based on the set of inputs, and optionally any or all of: labeling a map; selecting a learning module (context-specific learning module) based on the context; defining an action space based on the learning module; selecting an action from the action space; planning a trajectory based on the action S260; and/or any other suitable processes.Type: GrantFiled: June 28, 2022Date of Patent: May 30, 2023Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11586214Abstract: A system for deterministic trajectory selection based on uncertainty estimation includes a set of one or more computing systems. A method for deterministic trajectory selection includes receiving a set of inputs; determining a set of outputs; determining uncertainty parameters associated with any or all of the set of inputs and/or any or all of the set of outputs; and evaluating the uncertainty parameters and optionally triggering a process and/or action in response.Type: GrantFiled: March 25, 2022Date of Patent: February 21, 2023Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11505207Abstract: A system for context-aware decision making of an autonomous agent includes a computing system having a context selector and a map. A method for context-aware decision making of an autonomous agent includes receiving a set of inputs, determining a context associated with an autonomous agent based on the set of inputs, and optionally any or all of: labeling a map; selecting a learning module (context-specific learning module) based on the context; defining an action space based on the learning module; selecting an action from the action space; planning a trajectory based on the action S260; and/or any other suitable processes.Type: GrantFiled: February 25, 2022Date of Patent: November 22, 2022Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11505208Abstract: A system for context-aware decision making of an autonomous agent includes a computing system having a context selector and a map. A method for context-aware decision making of an autonomous agent includes receiving a set of inputs, determining a context associated with an autonomous agent based on the set of inputs, and optionally any or all of: labeling a map; selecting a learning module (context-specific learning module) based on the context; defining an action space based on the learning module; selecting an action from the action space; planning a trajectory based on the action S260; and/or any other suitable processes.Type: GrantFiled: July 5, 2022Date of Patent: November 22, 2022Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11487296Abstract: A system for deterministic trajectory selection based on uncertainty estimation includes a set of one or more computing systems. A method for deterministic trajectory selection includes receiving a set of inputs; determining a set of outputs; determining uncertainty parameters associated with any or all of the set of inputs and/or any or all of the set of outputs; and evaluating the uncertainty parameters and optionally triggering a process and/or action in response.Type: GrantFiled: March 3, 2022Date of Patent: November 1, 2022Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11440564Abstract: A system for data-driven, modular decision making and trajectory generation includes a computing system. A method for data-driven, modular decision making and trajectory generation includes: receiving a set of inputs; selecting a learning module such as a deep decision network and/or a deep trajectory network from a set of learning modules; producing an output based on the learning module; repeating any or all of the above processes; and/or any other suitable processes. Additionally or alternatively, the method can include training any or all of the learning modules; validating one or more outputs; and/or any other suitable processes and/or combination of processes.Type: GrantFiled: January 20, 2022Date of Patent: September 13, 2022Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11396307Abstract: A system for context-aware decision making of an autonomous agent includes a computing system having a context selector and a map. A method for context-aware decision making of an autonomous agent includes receiving a set of inputs, determining a context associated with an autonomous agent based on the set of inputs, and optionally any or all of: labeling a map; selecting a learning module (context-specific learning module) based on the context; defining an action space based on the learning module; selecting an action from the action space; planning a trajectory based on the action S260; and/or any other suitable processes.Type: GrantFiled: January 25, 2022Date of Patent: July 26, 2022Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski
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Patent number: 11320827Abstract: A system for deterministic trajectory selection based on uncertainty estimation includes a set of one or more computing systems. A method for deterministic trajectory selection includes receiving a set of inputs; determining a set of outputs; determining uncertainty parameters associated with any or all of the set of inputs and/or any or all of the set of outputs; and evaluating the uncertainty parameters and optionally triggering a process and/or action in response.Type: GrantFiled: October 7, 2021Date of Patent: May 3, 2022Assignee: Gatik AI Inc.Inventors: Gautam Narang, Apeksha Kumavat, Arjun Narang, Kinh Tieu, Michael Smart, Marko Ilievski