Patents by Inventor Biraj Krushna Rath
Biraj Krushna Rath 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).
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Patent number: 12346820Abstract: The systems and methods disclosed herein receive alphanumeric characters defining operative boundaries for expected model use cases, along with operational data. The expected model use cases share common attributes, which are used by a first AI model to construct observed model use cases from the operational data. Each observed model use case includes features such as a text-based description, expected input and output, AI model(s) generating the expected output from the input, and/or data supporting the AI models. For each observed model use case, a second AI model maps the alphanumeric characters and features to a risk category, selecting from multiple risk categories based on the level of risk associated with the features. The system identifies criteria for the observed model use case within the alphanumeric characters and generates gaps by comparing the criteria with the features of the observed model use case.Type: GrantFiled: September 18, 2024Date of Patent: July 1, 2025Assignee: Citibank, N. A.Inventors: Sofia Rahman, Christopher Tucker, James Myers, Prashant Praveen, Shardul Malviya, Wayne Liao, Deepak Jain, Samantha Cory, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies, Payal Jain, Tariq Husayn Maonah, Vishal Mysore, Ramkumar Ayyadurai, Chamindra Desilva
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Patent number: 12339886Abstract: The systems and methods disclosed herein relate to querying data using artificial intelligence models. A generalized model receives an output generation request and partitions it into segments mapped to specific domains, where each domain indicates associated databases and guidelines. The segments are routed to domain-specific models trained on domain-specific data, which generate query fragments by comparing performance metrics and system resource usage metrics. The query fragments are aggregated into an overall query that satisfies guidelines across domains. The systems and methods can include a feedback loop to adjust the domain-specific models using user interactions and performance metrics to dynamically adapt to a skill level or experience of the user.Type: GrantFiled: February 24, 2025Date of Patent: June 24, 2025Assignee: Citibank, N.A.Inventors: Julisia Jackson, James Myers, Chamindra Desilva, Shardul Malviya, Wayne Liao, Deepak Jain, Samantha Cory, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies, Payal Jain, Tariq Husayn Maonah, Vishal Mysore, Ramkumar Ayyadurai
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Patent number: 12321862Abstract: The disclosed data generation platform enables generation of an output in response to an output generation request based on tuning a routing model that enables model selection in a dynamic, system-sensitive manner. For example, the disclosed data generation platform receives an output generation request for a user device and generates a risk indicator associated with the output generation request. The platform can determine a current system state and generate a set of performance indicators and associated weighting values based on the risk indicator and the system state. The data generation platform can select a first routing model based on the weighting values. The data generation platform can provide the output generation request to the first routing model to generate an indication of a model with which to generate a model output responsive to the input. The data generation platform can enable access to the generated model output.Type: GrantFiled: September 11, 2024Date of Patent: June 3, 2025Inventors: Avi Levin, Miriam Silver, Payal Jain, Biraj Krushna Rath, Stuart Murray, Nimrod Barak
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Patent number: 12299140Abstract: The systems and methods disclosed herein receives artifacts generated using a first set of models within a multi-model superstructure. The multi-model superstructure includes a second set of models to test the first set of models. The multi-model superstructure dynamically routes the artifacts of the first set of models to one or more models of the second set of models by (i) determining a set of dimensions of the artifacts against which to evaluate the artifacts and (ii) identifying the models in the second set used to test the particular dimension. The second set of models then assesses each artifact against a set of assessment metrics. If an artifact fails to meet one or more assessment metrics, the second set of models generates actions to align the artifact with the set of assessment metrics.Type: GrantFiled: November 14, 2024Date of Patent: May 13, 2025Assignee: Citibank, N.A.Inventors: Sofia Rahman, James Myers, Prashant Praveen, Shardul Malviya, Wayne Liao, Deepak Jain, Samantha Cory, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies, Payal Jain, Tariq Husayn Maonah, Vishal Mysore, Ramkumar Ayyadurai, Chamindra Desilva, William Franklin Cameron, Miriam Silver, Prithvi Narayana Rao, Pramod Goyal, Manjit Rajaretnam
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Publication number: 20250068743Abstract: The systems and methods disclosed herein receives artifacts generated using a first set of models within a multi-model superstructure. The multi-model superstructure includes a second set of models to test the first set of models. The multi-model superstructure dynamically routes the artifacts of the first set of models to one or more models of the second set of models by (i) determining a set of dimensions of the artifacts against which to evaluate the artifacts and (ii) identifying the models in the second set used to test the particular dimension. The second set of models then assesses each artifact against a set of assessment metrics. If an artifact fails to meet one or more assessment metrics, the second set of models generates actions to align the artifact with the set of assessment metrics.Type: ApplicationFiled: November 14, 2024Publication date: February 27, 2025Inventors: Sofia RAHMAN, David GRIFFITHS, James MYERS, Prashant PRAVEEN, Shardul MALVIYA, Wayne LIAO, Deepak JAIN, Samantha CORY, Mariusz SATERNUS, Daniel LEWANDOWSKI, Biraj Krushna RATH, Stuart MURRAY, Philip DAVIES, Payal JAIN, Tariq Husayn MAONAH, Vishal MYSORE, Ramkumar AYYADURAI, Chamindra DESILVA, William Franklin Cameron, Miriam Silver, Prithvi Narayana Rao, Pramod Goyal, Manjit Rajaretnam
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Patent number: 12204323Abstract: The systems and methods disclosed herein enable mapping of gaps in controls to operative standards. The system receives an output generation request using an artificial intelligence (AI) model, where the input includes a set of gaps associated with one or more scenarios failing to satisfy the operative standards of a set of vector representations. Each gap in the set of gaps includes attributes defining the scenario. Using the received input, the system constructs prompts for each gap, where the prompts include information related to the scenario and/or the operative standards. Each prompt compares the corresponding gap against the operative standards or the set of vector representations. For each gap, the system maps the gap to the operative standards by supplying the prompt of the particular gap into the AI model and, in response, receiving from the AI model the operative standards associated with the particular gap.Type: GrantFiled: July 12, 2024Date of Patent: January 21, 2025Inventors: Shardul Malviya, Samantha Cory, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies, Payal Jain, Tariq Husayn Maonah
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Patent number: 12197859Abstract: The systems and methods disclosed herein receive an output generation request from that includes input for generating an output using a language model. The input includes a set of alphanumeric characters associated with operative standards for a first set of actions. The system divides the set of alphanumeric characters into text subsets. For each text subset, a vector representation is determined. Prompts are created for each vector representation including the set of alphanumeric characters, query contexts, keywords, and/or the text subset. Each vector representation's prompt is input into the language model, which generates a second set of actions of related actions, where subsequently generated actions are based on prior generated actions. The system aggregates the second set of actions into a third set of actions and displays a graphical layout. The graphical layout displays a representation of the set of alphanumeric characters and the corresponding actions.Type: GrantFiled: July 23, 2024Date of Patent: January 14, 2025Assignee: CITIBANK, N.A.Inventors: Shardul Malviya, Wayne Liao, Deepak Jain, Samantha Cory, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies, Payal Jain, Tariq Husayn Maonah
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Patent number: 12147513Abstract: The systems and methods disclosed herein relate to a model validation platform that enables dynamic validation of a user's prompt for a large language model (LLM) in order to evaluate the validity of the prompt and the suitability of a large language model for processing the prompt. For example, the platform enables an estimation of the resource allocation associated with processing the prompt with a given LLM, as well as a modification of the prompt, prior to the processing the prompt with the selected LLM. The platform can further validate the output prior to transmitting the output to a server system for display to the user. By doing so, the platform enables dynamic evaluation of a request to execute an LLM, as well as evaluation of resulting outputs, for accuracy and efficiency improvements in data processing or software development pipelines.Type: GrantFiled: April 11, 2024Date of Patent: November 19, 2024Assignee: Citibank, N.A.Inventors: Payal Jain, Tariq Husayn Maonah, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies
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Patent number: 12111747Abstract: The systems and methods disclosed herein enable evaluation of machine learning model outputs within a virtual environment. The disclosed model validation platform enables testing of code generated for detection of malicious or anomalous outputs. For example, the model validation platform can construct a virtual machine isolated from the system and test model-generated code for validation of LLM-generated outputs. In some implementations, the model validation platform determines parameters of the virtual machine and/or associated validation test based on an evaluation of the machine learning model's output and/or the associated underlying prompt. For example, the parameters of the validation test depend on an evaluation of the user or the provided input (e.g., depending on the presence of sensitive data within the prompt). By doing so, the system enables dynamic evaluation of machine learning model outputs to improve the security and robustness of associated generated code.Type: GrantFiled: May 10, 2024Date of Patent: October 8, 2024Assignee: CITIBANK, N.A.Inventors: Payal Jain, Tariq Husayn Maonah, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies
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Patent number: 12106205Abstract: The disclosed data generation platform enables selection of particular machine learning models on the basis of a predicted resource allocation requirement associated with a given prompt. For example, the model validation platform can evaluate the resource use (e.g., cost) associated with processing a user's prompt with a given type of model. Based on this estimated resource use, the model validation platform can route the prompt to a suitable model to optimize a performance metric value, thereby improving the efficiency of the system. In some implementations, the data generation platform trains a model to accurately estimate resource usage based on ground-truth model-related costs, thereby improving the effectiveness of model selection for efficiency improvements.Type: GrantFiled: May 10, 2024Date of Patent: October 1, 2024Assignee: CITIBANK, N.A.Inventors: Payal Jain, Tariq Husayn Maonah, Mariusz Saternus, Daniel Lewandowski, Biraj Krushna Rath, Stuart Murray, Philip Davies