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Machine learning

Resultados 71 resultados
LastUpdate Última actualización 19/03/2026 [07:15:00]
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Solicitudes publicadas en los últimos 30 días / Applications published in the last 30 days
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SYSTEM AND METHOD FOR MANAGING COMPUTING DEVICES

NºPublicación:  EP4711895A2 18/03/2026
Solicitante: 
CORE SCIENT INC [US]
Core Scientific, Inc
EP_4711895_A2

Resumen de: EP4711895A2

A system and method for easily managing a data center with multiple computing devices such as cryptocurrency miners from different manufactures is disclosed. A first computer includes a management application to manage the selected computing devices and periodically read and store status information from them into a database. Controls are presented to enable selection of one or more of the devices and to apply an operating mode, including manual, semi-automatic, automatic, and intelligent modes. Machine learning may be used to determine recommended settings for the selected set of computing devices.

METHOD AND DEVICE FOR PROVIDING ARTIFICIAL INTELLIGENCE/MACHINE LEARNING MEDIA SERVICE USING USER EQUIPMENT CAPABILITY NEGOTIATION IN WIRELESS COMMUNICATION SYSTEM

NºPublicación:  EP4710539A1 18/03/2026
Solicitante: 
SAMSUNG ELECTRONICS CO LTD [KR]
Samsung Electronics Co., Ltd
KR_20260008140_PA

Resumen de: WO2024237615A1

Disclosed is a method and device for efficiently providing an artificial intelligence/machine learning (AI/ML) media service by a user equipment (UE), including receiving service access information from a network server providing the AI/ML media service, receiving a trained configuration AI model used to determine a capability of the UE associated with an AI split inferencing between the UE and the network server, performing inferencing for a capability discovery based on the trained configuration AI model, and transmitting capability metrics of the UE to the network server based on a result of the inferencing.

MANAGING CLINICAL TRIAL PROGRESSION USING MACHINE LEARNING-BASED DATA

NºPublicación:  EP4710336A1 18/03/2026
Solicitante: 
GENENTECH INC [US]
GENENTECH, INC
WO_2024238507_PA

Resumen de: WO2024238507A1

Systems and methods for managing progression of a clinical trial. Input data for a machine learning model is formed, based on longitudinal data for clinical trial cohort. The input data corresponds to input features and the cohort includes a plurality of subjects. A clinical outcome output is generated for each subject, using the machine learning model and a portion of the input data corresponding to each subject. Feature importance values are generated, based on the machine learning model generating the clinical outcome output for each subject. The feature importance values include, for each subject, a set of feature importance values for a set of input features. A ratio of interest is computed using the plurality of feature importance values. An output is generated using the ratio of interest in which the output indicates whether the cohort should proceed to a next phase of the clinical trial.

MULTI-TASK REAL-TIME INFERENCE SCHEDULING SYSTEM MACHINE TOOL AND METHOD THEREOF

NºPublicación:  EP4711869A1 18/03/2026
Solicitante: 
DN SOLUTIONS CO LTD [KR]
DN Solutions Co., Ltd
EP_4711869_PA

Resumen de: EP4711869A1

The present invention relates to a multi-task real-time inference scheduling system and real-time inference scheduling method of a machine tool, wherein a central control unit is connected to each of one or more individual control units through a network, receives a use context of each machine tool through each individual control unit, generates a multi-task learning model through a neural network, infers multiple tasks required to be performed by the individual control unit of each machine tool through machine learning by using real-time use contexts collected during operation of the machine tool by a use scenario, and schedules the multiple tasks of the machine tool through machine learning.

GENERATION OF DIGITAL STANDARDS USING MACHINE-LEARNING MODEL

NºPublicación:  US20260073251A1 12/03/2026
Solicitante: 
SAE INT [US]
SAE International
US_20260073251_PA

Resumen de: US20260073251A1

One embodiment provides a method for generating a digital standard, the method including: receiving an underlying standard; extracting conceptual units from the underlying standard; classifying at least a portion of the extracted conceptual units into one of a plurality of classification groups, wherein the classifying includes classifying conceptual units from the underlying standard based upon sections of a schema corresponding to a digital standard; storing the classified extracted conceptual units into a data repository, wherein the storing is performed as defined by the schema; displaying, within a user interface, a digital standard in a format based upon the schema, wherein the displaying includes accessing conceptual units from the data repository corresponding to the digital standard and displaying the conceptual units in a format in accordance with the schema; and providing, within the user interface, search and filter functions allowing for finding information related to the digital standard.

SYSTEM FOR TIME BASED MONITORING AND IMPROVED INTEGRITY OF MACHINE LEARNING MODEL INPUT DATA

NºPublicación:  US20260073309A1 12/03/2026
Solicitante: 
BANK OF AMERICA CORP [US]
BANK OF AMERICA CORPORATION
US_20260073309_PA

Resumen de: US20260073309A1

Embodiments of the invention are directed to systems, methods, and computer program products for providing intelligent system and methods for identifying and weighting volatile data in machine learning data sets. The system is adaptive, in that it can be adjusted based on the needs or goals of the user utilizing it, or may intelligently and proactively adapt based on the data set or machine learning model being employed. The system may be seamlessly embedded within existing applications or programs that the user may already use to interact with one or more entities, particularly those which aid in the managing of user resources.

SYSTEM AND METHOD FOR USE WITH A DATA ANALYTICS ENVIRONMENT TO ENABLE USE OF AI IN PROVIDING CUSTOMER SUPPORT

NºPublicación:  WO2026055146A1 12/03/2026
Solicitante: 
ORACLE INT CORPORATION [US]
ORACLE INTERNATIONAL CORPORATION
WO_2026055146_PA

Resumen de: WO2026055146A1

Embodiments described herein are generally related to data analytics environments, and are particularly directed to systems and methods for use with a data analytics environment to enable use of AI in providing customer support. Machine learning AI models are trained based on one or more previous service request lifecycles of service requests of a customer to determine latent emotions of the customer based on determined customer problem data. A customer service prioritization signal related to a current service request of the customer is generated by a predictive analytics application that includes the models. The customer service prioritization signal is indicative of a need to prioritize a current service request of the customer based on the determined latent emotions of the customer and is generated during and prior to the end of the lifecycle of the current service request whereby escalation of the current service request may be deferred or prevented.

Computer System and Method for Providing a Subject-Related Data Development Platform

NºPublicación:  US20260072930A1 12/03/2026
Solicitante: 
LIZAI INC [US]
LizAI Inc
US_20260072930_PA

Resumen de: US20260072930A1

A method, performed by a computer system connected to a network, comprises processing at least one input data object for standardizing subject-related information. The method further comprises subjecting the subject-related information contained in the processed at least one input data object to a first machine learning model for generating a uniform dataset containing the subject-related information in a uniform structured format, and storing the uniform dataset in one or more secured data repositories connected to the network. The method further comprises providing a secured virtual environment accessible to users connected to the network, the secured virtual environment enabling importation of datasets stored in the one or more secured data repositories and a use of imported datasets as part of one or more user-controlled subject-related data development operations for generating at least one workspace-developed data object.

COMPUTER SYSTEM AND METHOD FOR PROVIDING A SUBJECT-RELATED DATA DEVELOPMENT PLATFORM

NºPublicación:  WO2026052797A1 12/03/2026
Solicitante: 
LIZAI INC [US]
NGUYEN TRUNG TIN [DE]
LIZAI INC,
NGUYEN, Trung Tin
WO_2026052797_PA

Resumen de: WO2026052797A1

A method (200), performed by a computer system (110) connected to a network (150), comprises receiving (210), by means of a data receiving module (122) of the computer system (110) and from at least one of a plurality of sources connected to the network (150), at least one input data object (162-1 - 162-n, 172-1 - 172-n, 182-1 - 182-n) containing subject-related information according to at least one of a plurality of information types encoded in at least one of a plurality of data formats; processing (220, 300), by means of a data extraction and classification module (124) of the computer system (110), the at least one input data object (162-1 - 162-n, 172-1 - 172-n, 182-1 - 182-n) for standardizing the subject-related information; subjecting (230), by means of a data engineering module (126) of the computer system (110), the subject-related information contained in the processed at least one input data object to a first machine learning model for generating a uniform dataset containing the subject-related information in a uniform structured format; storing (240), by means of a storing module (128) of the computer system (110), the uniform dataset in one or more secured data repositories (140, 181-1 - 181- n) connected to the network (150); and, providing (250), by means of a workspace module (130) of the computer system (110), a secured virtual environment accessible to users (180-1 - 180- n, 190) connected to the network (150), the secured virtual environment enabling impor

USING MACHINE LEARNING ALGORITHMS TO PREDICT TRANSACTIONS THAT MATCH EACH OTHER USING PATTERNS FROM MATCHING FEEDBACK

NºPublicación:  WO2026054830A1 12/03/2026
Solicitante: 
ORACLE INT CORPORATION [US]
ORACLE INTERNATIONAL CORPORATION
WO_2026054830_PA

Resumen de: WO2026054830A1

Systems, methods, and computer-readable media are provided for determining matches between records of different systems based on aggregate record data, and graphically marking potentially matched groups of data along with predicted confidence levels. Preliminary matching tools may allow allow users to define various rules based on which a majority of the transactions can be matched and reconciled. However, remaining transactions are disposed of in an interactive matching process. The matches may be determined unidirectionally from a source transaction to transactions from a target ledger, or bidirectionally from transactions in the target ledger to transactions other than the source transaction. Transactions may be matched many-to-many, one-to-many, or many-to-one, and a proposed order of match selections may be presented in a user interface. Match metadata or insights may be displayed to show a confidence of the match, reasons for the confidence, and/or a confidence of other matches that may be more beneficial than a match with a source transaction. The confidence and match insights may be generated by a machine learning model with access to transactions from a source transaction ledger and a target transaction ledger. The machine learning model may be trained on manual activity for prior matches that have been made. Matches may be performed using a hybrid machine learning model that accounts for random forests, decision trees, neural networks, naïve bayes algorithm, and/or

TECHNIQUES FOR INTUITIVE MACHINE LEARNING DEVELOPMENT AND OPTIMIZATION

NºPublicación:  US20260073308A1 12/03/2026
Solicitante: 
HYLAND UK OPERATIONS LTD [GB]
Hyland UK Operations Limited
US_20260073308_PA

Resumen de: US20260073308A1

Various embodiments are generally directed to techniques for intuitive machine learning (ML) development and optimization, such as for application in a content services platform (CSP), for instance. Many embodiments include a ML model developer and a ML model evaluator to provide a graphical user interface that guides ML layman in developing, evaluating, implementing, managing, and/or optimizing ML models. Some embodiments are particularly directed to a common interface that provides a step-by-step user experience to develop and implement ML techniques. For example, embodiments may include computing a health score for various aspects of developing and/or optimizing ML models, and using the health score, and the factors contributing thereto, to guide production of a valuable ML model. These and other embodiments are described and claimed.

SYSTEM AND METHOD FOR CONTROLLING RESOURCE MANAGEMENT USING MACHINE LEARNING

NºPublicación:  AU2024327251A1 12/03/2026
Solicitante: 
EQUIFAX INC
EQUIFAX INC
AU_2024327251_PA

Resumen de: AU2024327251A1

In some aspects, a computing system can use a machine learning model for resource management. For example, the system can receive a request for a set of steps associated with a target model output of a machine learning model. The request can include a starting input feature set and a number of steps. For each of the number of steps, the system can calculate a change to one or more features from the starting input feature set to arrive at the target model output based on a current position in feature space of the machine learning model. The system can update a feature vector by applying the change to the features of the starting input feature set and transmitting the set of steps. The system can then cause a resource of the external computing system to transition toward a position defined by the target model output.

User profiling using chain-of-thought knowledge graphs for querying a machine learning system

NºPublicación:  AU2025217419A1 12/03/2026
Solicitante: 
EQUINIX INC
Equinix, Inc
AU_2025217419_A1

Resumen de: AU2025217419A1

Techniques are disclosed for a machine learning model, such as a large learning model (LLM), that incorporates a model of a chain of thought of a particular user when responding to a query from the user. In one example, a system generates a knowledge graph of a chain of thought of the user. The knowledge graph comprises nodes representing topics present within past queries by the user and edges representing a co-occurrence between the topics. The system determines, based on a topic present within a query from the user and the knowledge graph, a goal query comprising a goal topic. The system provides, to a machine learning model, the user to generate, by the machine learning model, a response. The machine learning model is constrained to include the goal topic of the goal query within the response. The system outputs, for display, the response to the query. Techniques are disclosed for a machine learning model, such as a large learning model (LLM), that incorporates a model of a chain of thought of a particular user when responding to a query from the user. In one example, a system generates a knowledge graph of a chain of thought of the user. The knowledge graph comprises nodes representing topics present within past queries by the user and edges representing a co-occurrence between the topics. The system determines, based on a topic present within a query from the user and the knowledge graph, a goal query comprising a goal topic. The system provides, to a machine learning m

PRESERVING PRIVACY IN GENERATING A PREDICTION MODEL FOR PREDICTING USER METADATA BASED ON NETWORK FINGERPRINTING

NºPublicación:  US20260074958A1 12/03/2026
Solicitante: 
ANAGOG LTD [IL]
ANAGOG LTD
US_20260074958_PA

Resumen de: US20260074958A1

A method, an apparatus and a computer program product for machine learning based on network fingerprinting, while preserving privacy in generating a prediction model for predicting user metadata. Routing information of a device is obtained based probe packets sent by the device to a server that is connectable to the device via the Internet, such as a series of packet hops implemented to route the packets to the server or a series of Internet Protocol (IP) addresses of the series of packet hops until reaching the Internet. A fingerprint describing an architecture of connection path of the device to the Internet is created based on the routing information. The prediction model is trained using training dataset that includes pairs of fingerprints and labels using edge devices having known labels, that are indicative of a routing information of an edge device to the Internet.

MACHINE LEARNING ACCELERATED SEMANTIC EQUIVALENCE DETECTION

NºPublicación:  US20260072913A1 12/03/2026
Solicitante: 
MICROSOFT TECH LICENSING LLC [US]
Microsoft Technology Licensing, LLC
US_20260072913_PA

Resumen de: US20260072913A1

Examples detect equivalent subexpressions within a computational workload. Examples include converting a query plan tree associated with a first subexpression into a matrix. The first subexpression is a portion of a database query from the computational workload. Each node in the query plan tree is represented as a row of the matrix. The matrix is converted into a first vector. The first subexpression is determined to be equivalent to a second subexpression by comparing the first vector to a second vector associated with the second subexpression. The comparison includes computing a distance between the first and second vectors that is lower than a distance threshold. The computational workload is modified, based on the determining, to perform the first subexpression and exclude performance of the second subexpression as duplicative.

Control Logic for Thrust Link Whiffle-Tree Hinge Positioning for Improved Clearances

NºPublicación:  US20260073240A1 12/03/2026
Solicitante: 
GENERAL ELECTRIC COMPANY [US]
General Electric Company
US_20260073240_PA

Resumen de: US20260073240A1

Systems and methods for optimizing clearances within an engine include an adjustable coupling configured to couple a thrust link to the aircraft engine, an actuator coupled to the adjustable coupling, where motion produced by the actuator adjusts a hinge point of the adjustable coupling, sensors configured to capture real time flight data, and an electronic control unit. The electronic control unit receives flight data from the sensors, implements a machine learning model trained to predict clearance values within the engine based on the received flight data, predicts, with the machine learning model, the clearance values within the engine based on the received flight data, determines an actuator position based on the clearance values, and causes the actuator to adjust to the determined actuator position.

AUTOMATED SOURCE ROCK CHARACTERISTICS AND CLASS PREDICTION

NºPublicación:  WO2026054765A1 12/03/2026
Solicitante: 
SCHLUMBERGER TECH CORPORATION [US]
SCHLUMBERGER CANADA LTD [CA]
SERVICES PETROLIERS SCHLUMBERGER [FR]
GEOQUEST SYSTEMS B V [NL]
SCHLUMBERGER TECHNOLOGY CORPORATION,
SCHLUMBERGER CANADA LIMITED,
SERVICES PETROLIERS SCHLUMBERGER,
GEOQUEST SYSTEMS B.V
WO_2026054765_PA

Resumen de: WO2026054765A1

Disclosed is a method comprising: determining a computing platform for modeling source rocks, the computing platform including a database system, a data processing system, and a machine learning engine; generating, using the database system, analyzed graph data; filtering, using the data processing system, the analyzed graph data based on vitrinite reflectance data and thereby generate trainable data; resolving, using the data processing system, data discrepancies within the trainable data and thereby generate resolved data; holistically enhancing, using the data processing system, the resolved data to be compatible with a plurality of subterranean structures and thereby generate training data; applying, using the machine learning engine, the training data to train a subterranean model and thereby generate a trained subterranean model; and testing, using the machine learning engine, the trained subterranean model and thereby generate a prediction report indicating rock characteristics and classification of a source rocks.

ANOMALY DETECTION BASED ON ENSEMBLE MACHINE LEARNING MODEL

NºPublicación:  US20260073310A1 12/03/2026
Solicitante: 
CISCO TECH INC [US]
Cisco Technology, Inc
US_20260073310_PA

Resumen de: US20260073310A1

A security platform employs a variety techniques and mechanisms to detect security related anomalies and threats in a computer network environment. The security platform is “big data” driven and employs machine learning to perform security analytics. The security platform performs user/entity behavioral analytics (UEBA) to detect the security related anomalies and threats, regardless of whether such anomalies/threats were previously known. The security platform can include both real-time and batch paths/modes for detecting anomalies and threats. By visually presenting analytical results scored with risk ratings and supporting evidence, the security platform enables network security administrators to respond to a detected anomaly or threat, and to take action promptly.

MULTI-SCALE SPEAKER DIARIZATION FOR CONVERSATIONAL AI SYSTEMS AND APPLICATIONS

NºPublicación:  US20260073937A1 12/03/2026
Solicitante: 
NVIDIA CORP [US]
NVIDIA Corporation
US_20260073937_PA

Resumen de: US20260073937A1

Disclosed are apparatuses, systems, and techniques that may use machine learning for implementing speaker diarization. The techniques include obtaining a speaker embedding for various reference times of a speech and for various differently-sized time intervals, identifying a plurality of clusters, each cluster associated with a different speaker of the speech. The techniques further include computing, using the speaker embeddings, a set of embedding weights for various differently-sized time intervals, and identifying, using the computed set of the embedding weights, one or more speakers speaking at a respective reference time.

DIGITAL PATHOLOGY MACHINE LEARNING INFRASTRUCTURE

NºPublicación:  WO2026055331A1 12/03/2026
Solicitante: 
PROSCIA INC [US]
PROSCIA INC
WO_2026055331_PA

Resumen de: WO2026055331A1

Techniques for using a digital pathology machine learning model implementation without requiring transmission of digital pathology images to a location of the digital pathology machine learning model implementation are presented. The techniques may include: providing, on a server computer, a digital pathology image embeddings API; receiving, from a client computer, an embeddings job request including an identification of at least one digital pathology image, an image resolution instruction, and an identification of an embeddings network; passing, to an embeddings server, metadata characterizing the digital pathology image(s) resolved according to the resolution instruction; obtaining, from the embedding server, at least one embeddings vector after the embeddings server transforms a resolved set of digital pathology image(s) into at least one embeddings vector; and transmitting, by the server computer, the embeddings vector(s) to a storage location, without the client computer transmitting or receiving the digital pathology image(s).

VISUAL LOCATION OF AERIAL VEHICLES USING DYNAMIC ALEATORIC UNCERTAINTY

NºPublicación:  EP4707735A1 11/03/2026
Solicitante: 
BOEING CO [US]
The Boeing Company
EP_4707735_PA

Resumen de: EP4707735A1

Techniques for localizing a vehicle in real time using dynamic uncertainty estimates are presented. The techniques include obtaining a terrain image captured by the vehicle; passing the terrain image to a trained evidential deep learning neural network subsystem, from which a dynamic uncertainty value and a first feature vector are obtained in real time; for each of a plurality of candidate terrain locations, comparing the first feature vector to a respective second feature vector representative of a candidate terrain location, from which a respective similarity score is obtained; for at least one of the plurality of candidate terrain locations, updating in real time, by a recursive Bayesian estimator, a respective location weight based on the dynamic uncertainty value and the respective similarity score; estimating, in real time, a location of the vehicle based on the plurality of location weights; and providing the location of the vehicle.

TRAINING A NEURAL DATABASE FOR ENTITY MATCHING

NºPublicación:  US20260065188A1 05/03/2026
Solicitante: 
INTUIT INC [US]
Intuit Inc
US_20260065188_PA

Resumen de: US20260065188A1

Certain aspects of the disclosure provide a method of training a neural database for entity matching. In examples, a method may include: extracting, from an electronic data repository, entity data related to a first entity that provides a good or a service; transforming the entity data into structured entity data configured to be processed by a machine learning model; processing the structured entity data with the machine learning model to generate metadata associated with the structured entity data; augmenting the structured entity data with the metadata associated with the structured entity data; and training the neural database based on the augmented structured entity data to predict one or more second entities that supply materials for the first entity and associated with the good or the service.

VISUAL LOCATION OF AERIAL VEHICLES USING DYNAMIC ALEATORIC UNCERTAINTY

NºPublicación:  US20260063424A1 05/03/2026
Solicitante: 
THE BOEING COMPANY [US]
The Boeing Company
US_20260063424_PA

Resumen de: US20260063424A1

Techniques for localizing a vehicle in real time using dynamic uncertainty estimates are presented. The techniques include obtaining a terrain image captured by the vehicle; passing the terrain image to a trained evidential deep learning neural network subsystem, from which a dynamic uncertainty value and a first feature vector are obtained in real time; for each of a plurality of candidate terrain locations, comparing the first feature vector to a respective second feature vector representative of a candidate terrain location, from which a respective similarity score is obtained; for at least one of the plurality of candidate terrain locations, updating in real time, by a recursive Bayesian estimator, a respective location weight based on the dynamic uncertainty value and the respective similarity score; estimating, in real time, a location of the vehicle based on the plurality of location weights; and providing the location of the vehicle.

MACHINE-LEARNING TECHNIQUES FOR PREDICTING UNOBSERVABLE OUTPUTS

NºPublicación:  AU2024322317A1 05/03/2026
Solicitante: 
EQUIFAX INC
EQUIFAX INC
AU_2024322317_PA

Resumen de: AU2024322317A1

In some aspects, a computing system can generate and optimize a machine learning model to estimate an unobservable capacity of a target system or entity. The computing system can access training vectors which include training predictor variables, training performance indicators, and task quantities. A training performance indicator indicating performance outcome corresponding to the predictor variables and a task quantity associated with a task assigned to the target entity that leads to the training performance indicator. The machine learning model can be trained by performing adjustments of parameters of the machine learning model to minimize a loss function defined based on the training vectors. The trained machine learning model can be used to estimate the capacity of the target system or entity for handling tasks and be used in assigning tasks to the target entity according to the determined capacity.

METHOD FOR EXTRACTING ENTITIES AND RELATIONSHIPS FROM A CORPUS TO POPULATE A KNOWLEDGE GRAPH

Nº publicación: AU2024336136A1 05/03/2026

Solicitante:

PETROLEO BRASILEIRO S A PETROBRAS
PONTIFICIA UNIV CATOLICA DO RIO DE JANEIRO
PETR\u00D3LEO BRASILEIRO S.A. - PETROBRAS,
PONTIF\u00CDCIA UNIVERSIDADE CAT\u00D3LICA DO RIO DE JANEIRO

AU_2024336136_PA

Resumen de: AU2024336136A1

The present invention discloses a method for extracting entities and relationships from technical documents in a mostly automated way which achieves a more complete and accurate result in a reduced timeframe. Various deep learning models are trained using a corpus of the domain of interest annotated by experts and linguists. A vector graph model is also trained. Manual annotations and revisions are the minimum required to obtain automated models capable of automatically extracting entities and relationships from a corpus. Once trained, the models can be used on any corpus within the same knowledge domain.

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