Resumen de: US2025342171A1
Apparatus and methods are disclosed for implementing a copilot as a network of microservices including specialized large language models (LLMs) or other trained machine learning (ML) tools. The microservice network architecture supports flexible, customizable, or dynamically determinable dataflow from client input to corresponding output. Compared to much larger competing LLMs, comparable or superior performance is achieved for certain tasks, while significantly reducing computation time and hardware requirements, even to a single compute node with a single GPU. Examples incorporate a qualification microservice to test data, destined for a downstream microservice, for conformance with the copilot's competency. A knowledge graph of a corpus of documents is built, visualized, and pruned. The data is tested for conformance with the pruned graph representation, and non-conforming data is excluded from the dataflow. Variations and additional techniques are disclosed.
Resumen de: WO2025231033A1
A method including receiving activity data related to a first activity utilizing an unbound schema-specific identifier; training a machine learning engine based on at least one input to obtain a trained machine learning engine that is trained to identify a category associated with the entity; where the at least one input includes: an entity data feature vector, a historical user activity data feature vector, and/or a historical user schema-specific identifier data feature vector; predicting via the trained machine learning engine, a category associated with the first activity; binding the unbound schema-specific identifier to the category to generate a category bound schema-specific identifier; receiving a request to perform a second activity using the bound schema-specific identifier; determining if a second entity associated with the request to perform the second activity is associated with the category; performing one of: approving or denying the request to perform the second activity.
Resumen de: AU2024261237A1
In a general aspect, a quantum feature-map transforms an input dataset with original features to a preprocessed dataset with quantum-enhanced features. In some cases, pre-processing an input dataset for a machine learning model includes obtaining the input dataset comprising a plurality of data points; encoding the plurality of data points as parameters of a quantum logic circuit; and executing the quantum logic circuit on a quantum computing resource. Expectation values of a set of observables are obtained based on an output quantum state generated by executing the quantum logic circuit. The set of observables includes observables of first degree and observables of second degree. A pre-processed dataset is generated based on the expectation values and provided as an input to the machine learning model.
Resumen de: US2025344080A1
Disclosed is a method comprising collecting input data comprising at least weather forecast information for an area in which one or more cells are located; providing the input data to a prediction algorithm, wherein the prediction algorithm comprises: a machine learning model trained to predict tropospheric ducting events impacting the one or more cells, and a cell site database indicating a location and one or more configuration parameters of the one or more cells; and receiving, from the prediction algorithm, output data indicating one or more predicted tropospheric ducting events expected to impact the one or more cells based on the input data.
Resumen de: US2025342959A1
A method for diagnosing Alzheimer's Disease or determining susceptibility to Alzheimer's Disease includes steps of obtaining a blood sample from a target subject and extracting cell-free (cf) DNA from the blood sample as extracted cf DNA. The degree of methylation in one or a plurality of Alzheimer indicator genes in the extracted cf DNA is identified. Each Alzheimer indicator gene identified is an indicator of the presence of or risk of developing Alzheimer's Disease where the plurality of Alzheimer indicators genes have been identified by a machine learning technique or by logistic regression. The target subject is identified as being at risk for Alzheimer's Disease if the amount of methylation of one or more Alzheimer's indicator genes differs from the amount of methylation established in control subjects not having Alzheimer's Disease to a statistically significant degree.
Resumen de: US2025342936A1
A system for generating a lifestyle-based disease prevention plan, the system including a computing device configured to receive at least a user biomarker input, produce a user profile as a function of the at least a user biomarker input, and generate a lifestyle-based disease prevention plan as a function of the user profile including training a machine learning process with a lifestyle training data set where the lifestyle training data set further comprises lifestyle elements correlated to a plurality of outputs containing diseases prevented and producing the lifestyle-based disease prevention plan as a function of the user profile and machine learning process.
Resumen de: US2025343816A1
In various examples there is a method of empirically measuring a level of security’ of a training pipeline. The training pipeline is configured to train machine learning models using confidential training data. The method comprises storing a representation of a joint distribution of false positive rate and false negative rate of membership inference attacks on a plurality of machine learning models trained using the training pipeline. The method uses the representation to compute a posterior distribution of the level of security’ from observations of the membership inference attack on the plurality’ of machine learning models trained using the training pipelines. A confidence interval of the level of security is computed from the posterior distribution and the confidence interval is stored.
Resumen de: US2025344079A1
A method for managing a plurality of wireless devices. The method includes obtaining a plurality of base Machine Learning (ML) models, wherein each base ML model is operable to provide an output on the basis of which at least one RAN operation performed by a wireless device may be configured. The method further includes transmitting characterising information for individual models of the plurality of base ML models and configuration information for the plurality of base ML models over the RAN. The method further includes receiving an indication of which one or more of the plurality of base ML models the wireless device will be using as an ensemble ML model in connection with a RAN operation performed by the wireless device, and setting a value of at least one configuration parameter associated with the RAN operation performed by the wireless device based on the received indication.
Resumen de: US2025342250A1
An apparatus for detecting malicious files includes a memory and a processor communicatively coupled to the memory. The processor receives multiple potentially malicious files. A first potentially malicious file has a first file format, and a second potentially malicious file has a second file format different than the first file format. The processor extracts a first set of strings from the first potentially malicious file, and extracts a second set of strings from the second potentially malicious file. First and second feature vectors are defined based on lengths of each string from the associated set of strings. The processor provides the first feature vector as an input to a machine learning model to produce a maliciousness classification of the first potentially malicious file, and provides the second feature vector as an input to the machine learning model to produce a maliciousness classification of the second potentially malicious file.
Resumen de: US2025342281A1
The present disclosure relates to an information processing device, an information processing method, and a program capable of effectively detecting counterfeit data using a more versatile method.A contribution indicating how much each feature in a training dataset contributes to a predicted label output from a trained model is calculated, the training dataset including both a legitimate sample including only legitimate data and a counterfeit sample at least partially including counterfeit data. Then, clustering is executed to classify each sample of the training dataset into a plurality of clusters using unsupervised learning with the contribution as input, and feature variability between the clusters in the result of the clustering is compared to identify a cluster to which the counterfeit sample included in the training dataset belongs. The present technology can be applied to, for example, a machine learning system that generates a fraud detection model.
Resumen de: US2025342394A1
Producing an augmented dataset to improve performance of a machine learning model. A test series is created for a first type of data transformation. the test series defining a set of test values for at least one parameter characterizing the first type of data transformation. Test datasets are generated based on a source dataset, each of the test datasets corresponding to a respective test value of the set of test values for said at least one parameter characterizing the first type of data transformation. Each of the test datasets is input to the machine learning model to produce a corresponding model output. At least one score is determined for each test dataset based at least in part on the corresponding model output. Robustness metrics of the first type of data transformation are determined based on a function which maps said at least one score of each of the test datasets to said at least one parameter characterizing the first type of data transformation. A set of one or more data augmentations are determined to be applied to the source dataset based at least in part on said one or more robustness metrics of the first type of data transformation. An augmented dataset is generated based on the source dataset using the determined set of one or more data augmentations.
Resumen de: US2025342374A1
Various embodiments of the present invention provide methods, apparatuses, systems, computing devices, and/or the like that are configured accurately and programmatically train a responder prediction machine learning model for generating response team predictions based on the systematic collection of one or more responder prediction training corpuses comprising one or more alert related datasets in a responder prediction server system. For example, the responder prediction server system may extract one or more alert attributes for each of the one or more alert related datasets for training one or more responder prediction machine learning models and/or one or more prioritization machine learning models. The responder prediction machine learning model and prioritization machine learning models may process one or more alerts, in real-time, to generate one or more response team prediction objects for rendering in a response team suggestion interface.
Resumen de: US2025342373A1
Implementations described herein relate to methods, systems, and computer-readable media for automated generation and use of a machine learning (ML) model to provide recommendations. In some implementations, a method includes receiving a recommendation specification that includes a content type and an outcome identifier, and determining model parameters for a ML model based on the recommendation specification. The method further includes generating a historical user feature matrix (FM), generating a historical content feature matrix (FM), and transforming the historical user FM and the historical content FM into a suitable format for the ML model. The method further includes obtaining a target dataset that includes historical results for the outcome identifier for a plurality of pairs of user identifiers and content items of the content type. The method further includes training the ML model using supervised learning to generate a ranked list of content items for each user identifier.
Resumen de: CN120500694A
Systems and methods for applying a machine learning (ML) model to determine a startup confidence value for a generator are presented herein. The computing system may identify a first plurality of parameters of the first generator. The plurality of parameters may identify operation of the first generator. The computing system may apply the first plurality of parameters to the ML model to determine a first confidence value that identifies a first likelihood that the first generator is started at initiation. The computing system may provide an output based on a first confidence value of the first generator.
Resumen de: EP4645322A1
Comprising at least one processor obtaining a combination of information identifying each of the raw materials received from the user and the amount of each of the raw materials, and obtaining a predicted value of a physical property of the property name to be predicted for a composition comprising each of the raw materials by inputting into a first machine learning model at least one of the chemical fingerprints, SMILES strings or chemical graph structure data or product name or substance name corresponding to each of the raw materials and the amount of each of the raw materials, or by inputting into a second machine learning model a set of values based on at least one of the chemical fingerprints, SMILES strings or chemical graph structure data or product name or substance name corresponding to each of the raw materials and the amount of each of the raw materials,wherein the first machine learning model is a model in which parameters are adjusted so that it can predict outputs from inputs by means of a learning data set that takes as inputs at least one of the chemical fingerprints, SMILES strings or chemical graph structure data or product names or substance names corresponding to each of the raw materials and the amount of each of the said raw materials, and as takes as outputs physical property values of the target property names to be predicted, and the second machine learning model is a model in which parameters are adjusted so that it can predict outputs from inputs b
Resumen de: CN120266139A
Systems and methods for predicting group composition of items are disclosed. A system for predicting group composition of items may include a memory storing instructions and at least one processor configured to execute the instructions to perform operations including: receiving entity identification information and a timestamp associated with a transaction without receiving information distinguishing items associated with the transaction; determining a localized machine learning model based on the entity identification information, the localized machine learning model trained to predict a category of an item based on transaction information applied to all of the items associated with the transaction; and applying the localized machine learning model to a model input to generate a predicted category of items associated with the transaction, the model input including the received entity identification information and timestamps but not information distinguishing items associated with the transaction.
Resumen de: WO2025226527A1
Systems and methods for application modernization using machine learning (ML) are disclosed herein. An example system receives software development information corresponding to one or more applications, the software development information including human-readable code. The system provides the software development information to an ML model. The ML model is trained using application modernization training data corresponding to best practices for modernizing historical applications based upon historical software development information. The ML model includes a large language model trained to interpret the human-readable code. The ML model generates application modernization information corresponding to at least one application of the one or more applications. The application modernization information includes technical requirements of a corresponding application, and application modernization recommendations of the corresponding application based upon the one or more technical requirements. In response to generating the application modernization information, the system provides the application modernization information to a computing device.
Resumen de: WO2025226533A1
A method may receive, by one or more processors, relevant data from a plurality of data sources. A method may input the relevant data, by the one or more processors into a machine learning model, for generating iterations of object models and iterations of object designs. A method may assess, by the one or more processors utilizing an artificial intelligence module, one or more of object performance metrics, user experience indicators, or industry acceptance probabilities based on user feedback and state pattern. A method may cause, by the one or more processors, iterative refinement of the object models and the object designs.
Resumen de: WO2025226317A2
Techniques for encrypting data within a 5G Open Radio Access Network (O-RAN) includes receiving, at a first module of the 5G O-RAN, a first set of one or more data packets encrypted using mathematical encryption. The method also includes determining, using a machine-learning model trained to detect cybersecurity threats, the existence of a cybersecurity threat associated with the voice or data transaction, and in response, determining to switch encryption from the mathematical encryption to quantum encryption. The method further includes encrypting the one or more data packets using a quantum encryption key to generate quantum-encrypted data packets, transmitting the quantum encryption key from the first module of the 5G O-RAN core to a second module of the 5G O-RAN over a quantum key distribution (QKD) channel, and transmitting the quantum-encrypted data packets from the first module of the 5G O-RAN to the second module of the 5G O-RAN.
Resumen de: US2025335160A1
Systems and methods for application modernization using machine learning (ML) are disclosed herein. An example system receives software development information corresponding to one or more applications, the software development information including human-readable code. The system provides the software development information to an ML model. The ML model is trained using application modernization training data corresponding to best practices for modernizing historical applications based upon historical software development information. The ML model includes a large language model trained to interpret the human-readable code. The ML model generates application modernization information corresponding to at least one application of the one or more applications. The application modernization information includes technical requirements of a corresponding application, and application modernization recommendations of the corresponding application based upon the one or more technical requirements. In response to generating the application modernization information, the system provides the application modernization information to a computing device.
Resumen de: US2025334943A1
An AI-based platform for enabling intelligent orchestration and management of power and energy is provided herein. The AI-based platform includes a digital twin system including a plurality of digital twins of energy operating assets, the plurality of digital twins of energy operating assets including at least one energy generation digital twin, energy storage digital twin, energy delivery digital twin, and/or energy consumption digital twin, and a set of energy simulation systems configured to generate a simulation of energy-related behavior of at least one of the plurality of digital twins of energy operating assets, and a machine-learning system configured to generate a predicted state of at least one of the energy operating assets. The simulation of energy-related behavior is based on historical patterns, current states, and the predicted state of at least one of the energy operating assets.
Resumen de: US2025335326A1
Aspects relate to system and methods for determining a user specific mission operational performance, using machine-learning processes. An exemplary system includes a computing device configured to perform operations including receiving user-input structured data from at least a user device, receiving observed structured data related to the user and a mission performance metric, inputting the user-input structured data and the observed structured data to a machine-learning model, generating a user performance metric as a function of the machine-learning model, receiving a deterministic mission operational performance metric, disaggregating a deterministic user performance metric as a function of the deterministic mission operation performance metric and the mission performance metric, inputting training data to a machine-learning algorithm, where the training data includes the user-input structured data and the observed structured data correlated to the deterministic user performance metric, and training the machine-learning model as a function of the machine-learning algorithm and the training data.
Resumen de: US2025335796A1
Systems and methods include machine learning models operating at different frequencies. An example method includes obtaining images at a threshold frequency from one or more image sensors positioned about a vehicle. Location information associated with objects classified in the images is determined based on the images. The images are analyzed via a first machine learning model at the threshold frequency. For a subset of the images, the first machine learning model uses output information from a second machine learning model, the second machine learning model being performed at less than the threshold frequency.
Resumen de: US2025336521A1
A cell manufacturing management platform facilitates management of a cell manufacturing process. The cell manufacturing management platform tracks events associated with a cell manufacturing process and coordinates between disparate entities involved in the process. The cell manufacturing management platform utilizes machine learning techniques to generate inferences associated with event scheduling in a manner that optimizes an efficiency metric and reduces likelihood of exceptions occurring. Machine learning models may furthermore be used to generate various alerts or other actions associated with the process. A user interface enables different participating entities to track progress of the process and upcoming events.
Nº publicación: US2025337742A1 30/10/2025
Solicitante:
MICROSOFT TECH LICENSING LLC [US]
Microsoft Technology Licensing, LLC
Resumen de: US2025337742A1
Access to secured items in a computing system is requested instead of being persistent. Access requests may be granted on a just-in-time basis. Anomalous access requests are detected using machine learning models based on historic patterns. Models utilizing conditional probability or collaborative filtering also facilitate the creation of human-understandable explanations of threat assessments. Individual machine learning models are based on historic data of users, peers, cohorts, services, or resources. Models may be weighted, and then aggregated in a subsystem to produce an access request risk score. Scoring principles and conditions utilized in the scoring subsystem may include probabilities, distribution entropies, and data item counts. A feedback loop allows incremental refinement of the subsystem. Anomalous requests that would be automatically approved under a policy may instead face human review, and low threat requests that would have been delayed by human review may instead be approved automatically.