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Machine learning

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LastUpdate Updated on 19/08/2025 [07:08:00]
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Solicitudes publicadas en los últimos 30 días / Applications published in the last 30 days
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Sustainable Pipeline Of Pozzolanic Materials

Publication No.:  US2025259114A1 14/08/2025
Applicant: 
HALLIBURTON ENERGY SERVICES INC [US]
Halliburton Energy Services, Inc
US_2025259114_PA

Absstract of: US2025259114A1

In general, in one aspect, embodiments relate to a method of producing a sustainable pipeline of pozzolanic materials that includes gathering unstructured and/or structured data publicly available on a network, identifying analytical data of a pozzolanic material using one or more machine learning models, where the analytical data is present within at least the structured data, extracting the analytical data from the structured data, predicting, using one or more predictive models, one or more performance characteristics of the pozzolanic material based at least in part on the analytical data, to form one or more predicted performance characteristics, comparing the predicted one or more performance characteristics to one or more minimum acceptable performance characteristics, storing the extracted analytical data and the one or more predicted performance characteristics in a database if the one or more performance characteristics meets or exceeds the minimum acceptable performance characteristic, and preparing a cement composition that includes the pozzolanic material if the predicted one or more performance characteristics meets or exceeds the one or more minimum acceptable performance characteristics.

SCORE BASED CERTAINTY ESTIMATION OF PREDICTION

Publication No.:  US2025259103A1 14/08/2025
Applicant: 
TRIANGLE IP INC [US]
Triangle IP, Inc
US_2025259103_PA

Absstract of: US2025259103A1

The present disclosure describes a patent management system and method for remediating insufficiency of input data for a machine learning system. A prediction to be performed is received from a user input. Relevant input data is determined to perform the prediction. The relevant input data is determined by applying filters based on the prediction to be performed. Prediction is performed by generating a plurality of predicted vectors. A confidence score for the generated plurality of predicted vectors is determined. If the confidence score is less than a predetermined threshold, the prediction is unreliable. The input data is expanded by gathering additional input data. The input data is expanded with the additional input data until the confidence score exceeds the predetermined threshold. A predicted output is generated with the expanded input data. The prediction output and the confidence score are provided for rendering.

MACHINE-LEARNING-BASED MEAL DETECTION AND SIZE ESTIMATION USING CONTINUOUS GLUCOSE MONITORING (CGM) AND INSULIN DATA

Publication No.:  US2025259727A1 14/08/2025
Applicant: 
OREGON HEALTH & SCIENCE UNIV [US]
Oregon Health & Science University
US_2025259727_PA

Absstract of: US2025259727A1

Disclosed is a meal detection and meal size estimation machine learning technology. In some embodiments, the techniques entail applying to a trained multioutput neural network model a set of input features, the set of input features representing glucoregulatory management data, insulin on board, and time of day, the trained multioutput neural network model representing multiple fully connected layers and an output layer formed from first and second branches, the first branch providing a meal detection output and the second branch providing a carbohydrate estimation output; receiving from the meal detection output a meal detection indication; and receiving from the carbohydrate estimation output a meal size estimation.

STABLE CLASSIFICATION BY COMPONENTS FOR INTERPRETABLE MACHINE LEARNING

Publication No.:  WO2025168228A1 14/08/2025
Applicant: 
NEC LABORATORIES EUROPE GMBH [DE]
NEC LABORATORIES EUROPE GMBH
WO_2025168228_PA

Absstract of: WO2025168228A1

The present disclosure relates to a stable classification by components (SCBC) data processing architecture, configured to classify input data into one or more classes, comprising: a component detection module configured to compare the input data to a set of detection components, representing data patterns relevant for the classification, and determine a detection probability for each detection component based on the comparison. The SCBC data processing architecture further comprises a probabilistic reasoning module configured to compute one or more class prediction probabilities for the one or more classes based on the determined detection probabilities, a set of class-specific prior probabilities for the determined detection probabilities, and a set of class-specific reasoning probabilities for the determined detection probabilities. Application scenarios include medical and pharmaceutical applications, as well as healthcare in general such as interpretable and secure diagnosis and treatment recommendation systems. Related SCBC data processing system, methods and computer programs are also disclosed, as well as corresponding model training methods and systems.

SPECTRAL ANALYSIS, MACHINE LEARNING, AND FRAC SCORE ASSIGNMENT TO ACOUSTIC SIGNATURES OF FRACKING EVENTS

Publication No.:  US2025258311A1 14/08/2025
Applicant: 
MOMENTUM AI LLC [US]
Momentum AI, LLC
US_2025258311_PA

Absstract of: US2025258311A1

System, method, and apparatus for classifying fracture quantity and quality of fracturing operation activities during hydraulic fracturing operations, the system comprising: a sensor coupled to a fracking wellhead, circulating fluid line, or standpipe of a well and configured to convert acoustic vibrations in fracking fluid in the fracking wellhead into an electrical signal; a memory configured to store the electrical signal; a converter configured to access the electrical signal from the memory and convert the electrical signal in a window of time into a current frequency domain spectrum; a machine-learning system configured to classify the current frequency domain spectrum, the machine-learning system having been trained on previous frequency domain spectra measured during previous hydraulic fracturing operations and previously classified by the machine-learning system; and a user interface configured to return a classification of the current frequency domain spectrum to an operator of the fracking wellhead.

OBTAINING INFERENCES TO PERFORM ACCESS REQUESTS AT A NON-RELATIONAL DATABASE SYSTEM

Publication No.:  US2025258821A1 14/08/2025
Applicant: 
AMAZON TECH INC [US]
Amazon Technologies, Inc
US_2025258821_PA

Absstract of: US2025258821A1

Inferences may be obtained to handle access requests at a non-relational database system. An access request may be received at a non-relational database system. The non-relational database system may determine that the access request uses a machine learning model to complete the access request. The non-relational database system may cause an inference to be generated using data items for the access request as input to the machine learning model. The access request may be completed using the generated inference.

SYSTEMS, METHODS, AND GRAPHICAL USER INTERFACES FOR MITIGATING BIAS IN A MACHINE LEARNING-BASED DECISIONING MODEL

Publication No.:  US2025259070A1 14/08/2025
Applicant: 
SAS INST INC [US]
SAS INSTITUTE INC
US_2025259070_PA

Absstract of: US2025259070A1

A system, method, and computer-program product includes obtaining a decisioning dataset comprising a plurality of favorable decisioning records and at least one unfavorable decisioning record; detecting, via a machine learning algorithm, a favorable decisioning record of the plurality of favorable decisioning records that has a vector value closest to a vector value of the unfavorable decisioning record; executing a counterfactual assessment between the favorable decisioning record and the unfavorable decisioning record; generating an explainability artifact based on one or more bias intensity metrics to explain a bias in a machine learning-based decisioning model; and in response to generating the explainability artifact, displaying the explainability artifact in a user interface.

MALICIOUS UNIFORM RESOURCE LOCATOR (URL) DETECTION

Publication No.:  US2025258917A1 14/08/2025
Applicant: 
MELLANOX TECH LTD [IL]
Mellanox Technologies, Ltd
US_2025258917_PA

Absstract of: US2025258917A1

Apparatuses, systems, and techniques for classifying a candidate uniform resource locator (URL) as a malicious URL using a machine learning (ML) detection system. An integrated circuit is coupled to physical memory of a host device via a host interface. The integrated circuit hosts a hardware-accelerated security service that obtains a snapshot of data stored in the physical memory and extracts a set of features from the snapshot. The security service classifies the candidate URL as a malicious URL using the set of features and outputs an indication of the malicious URL.

HARD-TO-FIX (HTF) DESIGN RULE CHECK (DRC) VIOLATIONS PREDICTION

Publication No.:  US2025258990A1 14/08/2025
Applicant: 
TAIWAN SEMICONDUCTOR MFG COMPANY LTD [TW]
Taiwan Semiconductor Manufacturing Company, Ltd
US_2025258990_PA

Absstract of: US2025258990A1

A method includes: training a machine learning model with a plurality of electronic circuit placement layouts; predicting, by the machine learning model, fix rates of design rule check (DRC) violations of a new electronic circuit placement layout; identifying hard-to-fix (HTF) DRC violations among the DRC violations based on the fix rates of the DRC violations of the new electronic circuit placement layout; and fixing, by an engineering change order (ECO) tool, the DRC violations.

APPARATUS AND METHOD FOR EFFICIENTLY OPERATING AI/ML MODEL IN WIRELESS COMMUNICATION SYSTEM

Publication No.:  WO2025170089A1 14/08/2025
Applicant: 
LG ELECTRONICS INC [KR]
\uC5D8\uC9C0\uC804\uC790 \uC8FC\uC2DD\uD68C\uC0AC
WO_2025170089_PA

Absstract of: WO2025170089A1

According to various embodiments of the present disclosure, an operation method for a first node in a wireless communication system is provided, the method comprising the steps of: receiving at least one synchronization signal from a second node; receiving control information from the second node; transmitting first communication environment data to the second node; receiving, from the second node, model information related to a first secondary artificial intelligence/machine learning (AI/ML) model based on a first sub-feature set related to the first communication environment data; transmitting, to the second node, second communication environment data changed from the first communication environment data; and receiving, from the second node, model update information for a second secondary AI/ML model, which is based on a second sub-feature set related to the second communication environment data and is changed from the first secondary AI/ML model.

AI DISCOVERY

Publication No.:  WO2025166404A1 14/08/2025
Applicant: 
COMMONWEALTH SCIENT AND INDUSTRIAL RESEARCH ORGANISATION [AU]
COMMONWEALTH SCIENTIFIC AND INDUSTRIAL RESEARCH ORGANISATION
WO_2025166404_PA

Absstract of: WO2025166404A1

This disclosure relates generally to detecting artificial intelligence (AI) implementation in a software application comprising one or more application packages (APs). One or more processors extract one or more AP strings from the software application, which each represent an AP; and create a prompt for a machine learning model, trained to generate output text, comprising the one or more AP strings, the prompt representing instructions to provide a classification and provide functionality information of each of the one or more APs, the classification being AI relevant or non-AI relevant and the functionality information describing a functionality of the respective AP. The one or more processors then evaluate the machine learning model on the prompt to generate output text corresponding to the classification and the functionality information of each of the one or more APs; and generate a report of the AI implementation based on the output text.

SEMI-SUPERVISED SYSTEM FOR DOMAIN SPECIFIC SENTIMENT LEARNING

Publication No.:  US2025259080A1 14/08/2025
Applicant: 
VISA INT SERVICE ASSOCIATION [US]
Visa International Service Association
US_2025259080_PA

Absstract of: US2025259080A1

Automated computer systems and methods to determine a sentiment of information in digital information or content are disclosed. One aspect includes deriving, by a processor, the digital information from a source; generating, by the processor, a domain-specific machine learning sentiment score, based on the digital information, by one model of at least two machine learning models; autonomously mapping, by the processor, a non-domain specific knowledge graph of associations between elements in a set of digital contextual information; receiving, by the processor, sentiment graphs, each sentiment graph defining a sentiment; generating, by the processor, a graph sentiment score based on the non-domain specific knowledge graph and the sentiment graphs; generating, by the processor, a final sentiment score based on the graph sentiment score and the domain-specific machine learning sentiment score; and determining the sentiment of the information in the digital information or content via the final sentiment score.

DATA DIVERSITY VISUALIZATION AND QUANTIFICATION FOR MACHINE LEARNING MODELS

Publication No.:  US2025259083A1 14/08/2025
Applicant: 
GE PREC HEALTHCARE LLC [US]
GE Precision Healthcare LLC
US_2025259083_PA

Absstract of: US2025259083A1

Systems and techniques that facilitate data diversity visualization and/or quantification for machine learning models are provided. In various embodiments, a processor can access a first dataset and a second dataset, where a machine learning (ML) model is trained on the first dataset. In various instances, the processor can obtain a first set of latent activations generated by the ML model based on the first dataset, and a second set of latent activations generated by the ML model based on the second dataset. In various aspects, the processor can generate a first set of compressed data points based on the first set of latent activations, and a second set of compressed data points based on the second set of latent activations, via dimensionality reduction. In various instances, a diversity component can compute a diversity score based on the first set of compressed data points and second set of compressed data points.

EMPOWERING RESOURCE-CONSTRAINED IOT EDGE DEVICES: A HYBRID APPROACH FOR EDGE DATA ANALYSIS

Publication No.:  US2025259077A1 14/08/2025
Applicant: 
UNIV OF SOUTH FLORIDA [US]
UNIVERSITY OF SOUTH FLORIDA
US_2025259077_PA

Absstract of: US2025259077A1

Methods and systems are provided herein for generating optimized, hybrid machine learning models capable of performing tasks such as classification and inference in IoT environments. The models may be deployed as optimized, task-specific (and/or environment-specific) hardware components (e.g., custom chips to perform the machine learning tasks) or lightweight applications that can operate on resource constrained devices. The hybrid models may comprise hybridization modules that integrate output of one or more machine learning models, according to sets of hyperparameters that are refined according to the task and/or environment/sensor data that will be used by the IoT device.

Systems and Methods for Preprocessing Medical Images

Publication No.:  US2025259735A1 14/08/2025
Applicant: 
THE REGENTS OF THE UNIV OF CALIFORNIA [US]
The Regents of the University of California
US_2025259735_PA

Absstract of: US2025259735A1

Systems and methods for preprocessing input images in accordance with embodiments of the invention are disclosed. One embodiment includes a method for performing inference based on input data, the method includes receiving a set of real-valued input images and preprocessing the set of real-valued input images by applying a virtual optical dispersion to the set of real-valued input images to produce a set of real-valued output images. The method further includes predicting, using a machine learning model, an output based on the set of real-valued output images, computing a loss based on the predicted output and a true output, and updating the machine learning model based on the loss.

IDENTIFICATION OF NETWORK EVENTS REPRESENTING A NETWORK SECURITY THREAT

Publication No.:  WO2025163013A1 07/08/2025
Applicant: 
VOCALINK LTD [GB]
VOCALINK LIMITED
WO_2025163013_PA

Absstract of: WO2025163013A1

A computer-implemented method is provided for training a machine learning model to identify one or more network events associated with a network and representing a network security threat. The method comprises: a) obtaining a first dataset comprising data representative of a plurality of network events in a first network; b) obtaining a second dataset comprising data representative of a plurality of network events in a second network; c) performing covariate shift analysis on the first dataset and the second dataset to identify and classify a plurality of differences between the first dataset and the second dataset; d) performing domain adaptation on the first dataset, based on a classified difference, to generate a training dataset; e) training a machine learning model using the training dataset to produce a trained threat detection model.

IOT DEVICE IDENTIFICATION BY MACHINE LEARNING WITH TIME SERIES BEHAVIORAL AND STATISTICAL FEATURES

Publication No.:  US2025254189A1 07/08/2025
Applicant: 
PALO ALTO NETWORKS INC [US]
Palo Alto Networks, Inc
US_2023231860_PA

Absstract of: US2025254189A1

Identifying Internet of Things (IoT) devices with packet flow behavior including by using machine learning models is disclosed. A set of training data associated with a plurality of IoT devices is received. The set of training data includes, for at least some of the exemplary IoT devices, a set of time series features for applications used by the IoT devices. A model is generated, using at least a portion of the received training data. The model is usable to classify a given device.

MULTI-PHASE TRAINING OF MACHINE LEARNING MODELS FOR SEARCH RESULTS RANKING

Publication No.:  US2025252112A1 07/08/2025
Applicant: 
Y E HUB ARMENIA LLC [AM]
Y.E. Hub Armenia LLC
US_2023161779_PA

Absstract of: US2025252112A1

A method and system for training a machine-learning algorithm (MLA) to rank digital documents at an online search platform. The method comprises training the MLA in a first phase for determining past user interactions of a given user with past digital documents based on a first set of training objects including the past digital documents generated by the online search platform in response to the given user having submitted thereto respective past queries. The method further comprises training the MLA in a second phase to determine respective likelihood values of the given user interacting with in-use digital documents based on a second set of training objects including only those past digital documents with which the given user has interacted and respective past queries associated therewith. The MLA may include a Transformer-based learning model, such as a BERT model.

SELF-IMPROVING ARTIFICIAL INTELLIGENCE PROGRAMMING

Publication No.:  US2025252338A1 07/08/2025
Applicant: 
QUALCOMM TECH INC [US]
QUALCOMM Technologies, Inc

Absstract of: US2025252338A1

Certain aspects of the present disclosure provide techniques and apparatus for improved machine learning. In an example method, a current program state comprising a set of program instructions is accessed. A next program instruction is generated using a search operation, comprising generating a probability of the next program instruction based on processing the current program state and the next program instruction using a machine learning model, and generating a value of the next program instruction based on processing the current program state, the next program instruction, and a set of alternative outcomes using the machine learning model. An updated program state is generated based on adding the next program instruction to the set of program instructions.

Multi-Sourced Machine Learning Model-Based Artificial Intelligence Character Training and Development

Publication No.:  US2025252341A1 07/08/2025
Applicant: 
DISNEY ENTPR INC [US]
Disney Enterprises, Inc
CN_120430335_PA

Absstract of: US2025252341A1

A system includes a hardware processor configured to execute software code to receive interaction data identifying an action and personality profiles corresponding respectively to multiple participant cohorts in the action, generate, using the interaction data, an interaction graph of behaviors of the participant cohorts in the action, simulate, using a behavior model, participation of each of the participant cohorts in the action to provide a predicted interaction graph, and compare the predicted and generated interaction graphs to identify a similarity score for the predicted interaction graph relative to the generated interaction graph. When the similarity score satisfies a similarity criterion, the software code is executed to train, using the behavior model, an artificial intelligence character for interactions. When the similarity score fails to satisfy the similarity criterion, the software code is executed to modify the behavior model based on one or more differences between the predicted and generated interaction graphs.

Automated Payments Performance Monitoring, Alerting and Recommendation Framework

Publication No.:  US2025252412A1 07/08/2025
Applicant: 
ROKU INC [US]
Roku, Inc
US_2023351348_PA

Absstract of: US2025252412A1

A method may include determining a combination of values of attributes represented by reference data associated with payment transaction by training a machine learning model based on an association between (i) respective values of the attributes and (ii) the payment transactions having a given result. The combination may be correlated with having the given result. The method may also include selecting a subset of the payment transactions that is associated with the combination of values. The method may additionally include determining a first rate at which payment transactions of the subset have the given result during a first time period and a second rate at which one or more payment transactions associated with the combination have the given result during a second time period, and generating an indication that the two rates differ.

MODEL GENERATION METHOD AND INFERENCE PROGRAM

Publication No.:  WO2025164720A1 07/08/2025
Applicant: 
NATIONAL INSTITUTE OF INFORMATION AND COMMUNICATIONS TECH [JP]
\u56FD\u7ACB\u7814\u7A76\u958B\u767A\u6CD5\u4EBA\u60C5\u5831\u901A\u4FE1\u7814\u7A76\u6A5F\u69CB
WO_2025164720_PA

Absstract of: WO2025164720A1

A model generation device according to one aspect of the present disclosure acquires eyeball-related data measured from a subject who is viewing content, uses the acquired eyeball-related data to perform machine learning of an inference model, and outputs the results of the machine learning. The machine learning includes training the inference model to acquire, from the eyeball-related data, the ability to infer a semantic representation in an information space corresponding to content included in the viewed content. Thus, the present disclosure provides a technique for easily inferring, at low cost, content perceived by an individual while viewing content.

METHOD, SYSTEM, AND COMPUTER PROGRAM PRODUCT FOR IDENTIFYING PROPENSITIES USING MACHINE-LEARNING MODELS

Publication No.:  WO2025165604A1 07/08/2025
Applicant: 
VISA INT SERVICE ASSOCIATION [US]
VISA INTERNATIONAL SERVICE ASSOCIATION
WO_2025165604_PA

Absstract of: WO2025165604A1

The method may include inputting a first set of data into a first model; for each user in the second group, generating a first similarity score; generating a relevance score for each parameter; determining a subset of parameters based on relevance; inputting the subset of parameters, a second set of data, and a third set of data into a second model; generating a space-partitioning data structure based on the second set of data; for each user in the first group, determining a feature distance between a representation of the user in the first group and a representation of a user in the second group based on the third set of data and the space-partitioning data structure; for each user in the second group, generating a second similarity score; and for each user in the second group, generating an overall similarity score.

GENERATING DYNAMIC UTILIZATION MEASURES FOR AIRCRAFT BASED ON ENVIRONMENTAL CONDITIONS

Publication No.:  EP4596425A1 06/08/2025
Applicant: 
BOEING CO [US]
The Boeing Company
EP_4596425_A1

Absstract of: EP4596425A1

The present disclosure provides techniques for dynamic utilization of aircraft based on environmental conditions. A proposed flight plan for an aircraft is received. Environment data representing a set of environmental conditions at a source airport indicated in the proposed flight plan is collected. Weather data representing a set of environmental conditions at a destination airport indicated in the proposed flight plan is collected. Operation data related to the aircraft indicated in the proposed flight plan is received. Aircraft engine degradation of the aircraft is dynamically simulated based on the collected environment data and the received operation data using a trained machine learning (ML) model. The simulated aircraft engine degradation is output.

MULTI-SOURCED MACHINE LEARNING MODEL-BASED ARTIFICIAL INTELLIGENCE CHARACTER TRAINING AND DEVELOPMENT

Nº publicación: EP4597360A1 06/08/2025

Applicant:

DISNEY ENTPR INC [US]
Disney Enterprises, Inc

EP_4597360_A1

Absstract of: EP4597360A1

A system includes a hardware processor configured to execute software code to receive interaction data identifying an action and personality profiles corresponding respectively to multiple participant cohorts in the action, generate, using the interaction data, an interaction graph of behaviors of the participant cohorts in the action, simulate, using a behavior model, participation of each of the participant cohorts in the action to provide a predicted interaction graph, and compare the predicted and generated interaction graphs to identify a similarity score for the predicted interaction graph relative to the generated interaction graph. When the similarity score satisfies a similarity criterion, the software code is executed to train, using the behavior model, an artificial intelligence character for interactions. When the similarity score fails to satisfy the similarity criterion, the software code is executed to modify the behavior model based on one or more differences between the predicted and generated interaction graphs.

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