REPLY MESSAGES GENERATING METHOD
    331.
    发明申请

    公开(公告)号:US20240411790A1

    公开(公告)日:2024-12-12

    申请号:US18747415

    申请日:2024-06-18

    Abstract: The present disclosure provides an answer information generation method and apparatus based on a large language model, and a device, and relates to the technical field of artificial intelligence, and in particular, to the fields of document retrieval, natural language processing, and large language models. An implementation solution includes: obtaining, in response to receiving a question text from a user, a semantic vector of the question text and event information related to a specific field; obtaining a plurality of candidate documents from a document library of the specific field based on at least two of the semantic vector of the question text, the at least one piece of argument information and the event category; determining quality evaluation information for a candidate document in the plurality of candidate documents based on the event category; and determining at least one target document from the plurality of candidate documents based on the quality evaluation information of the candidate document and a correlation between the candidate document and the question text, to obtain, based on the at least one target document, answer information used to answer the question text.

    CODE RETRIEVAL METHOD AND APPARATUS BASED ON LARGE LANGUAGE MODEL

    公开(公告)号:US20240403344A1

    公开(公告)日:2024-12-05

    申请号:US18803085

    申请日:2024-08-13

    Abstract: There is provided a code retrieval method and apparatus based on a large language model, an electronic device and a readable storage medium, which relates to the field of artificial intelligence technologies, such as large language model technologies, big data technologies, cloud service technologies, or the like. The method for code retrieval based on a large language model includes: acquiring a code retrieval query to obtain a retrieval vector of the code retrieval query; acquiring a first index of a target code library, the first index including a plurality of code blocks and a plurality of code block vectors; acquiring a target code block according to the retrieval vector and the first index; acquiring a second index of the target code library, the second index being a code architecture knowledge graph; acquiring a target code file corresponding to the target code block according to a source code file corresponding to the target code block and the second index; and acquiring a retrieval result according to the target code block and the target code file.

    Method of responding to operation, electronic device, and storage medium

    公开(公告)号:US12158801B2

    公开(公告)日:2024-12-03

    申请号:US18157429

    申请日:2023-01-20

    Abstract: A method of responding to an operation, an electronic device and a storage medium are provided, which relate to a field of cloud computing, and in particular to a field of cluster technology. The specific implementation solution includes: performing, in response to determining that a target operation performed by a target client on a shared resource has timed out, a fault detection on the target client to obtain a fault detection result; and implementing, in response to determining that the fault detection result represents that the target client has a fault, an update operation to obtain a target authority identifier, so that the target client is prevent from continuing to perform the target operation by using the target authority identifier.

    Data reading method, device and storage medium

    公开(公告)号:US12147448B2

    公开(公告)日:2024-11-19

    申请号:US18088712

    申请日:2022-12-26

    Inventor: Zhengli Yi

    Abstract: The present disclosure provides a data reading method, including: in response to receiving a read response request generated by a replication group for an application and sent by a storage terminal, setting, in a dedicated mapping table corresponding to the application, a commit index corresponding to the replication group as a commit index carried by the read response request; searching for a target replication group corresponding to a first read request generated by a target application based on the first read request; determining, in a dedicated mapping table corresponding to the target application, a commit index corresponding to the target replication group as a target commit index; sending a second read request carrying the target commit index to the storage terminal; and obtaining the data read by the storage terminal.

    METHOD OF EXECUTING TASK FOR LARGE LANGUAGE MODEL, DEVICE, AND STORAGE MEDIUM

    公开(公告)号:US20240378077A1

    公开(公告)日:2024-11-14

    申请号:US18782617

    申请日:2024-07-24

    Abstract: A method of executing a task for a large language model, a device, and a storage medium are provided, which relate to a field of artificial intelligence technology, and in particular to fields of deep learning, large language model, natural language processing and computer vision technologies. The method includes: determining, by using a determination unit, a target attention task from a plurality of attention tasks to be processed, based on a sparse representation corresponding to a feature to be processed, where the target attention task is a task corresponding to a non-fully masked region of the feature, the sparse representation represents a mask position of the feature, and the mask position represents mask endpoint positions in at least two non-intersecting intervals in a mask matrix corresponding to the feature; and executing the target attention task by using a computing unit, so as to obtain an attention feature.

    Station recommendation
    336.
    发明授权

    公开(公告)号:US12140441B2

    公开(公告)日:2024-11-12

    申请号:US17531529

    申请日:2021-11-19

    Abstract: A method for recommending a station for a vehicle, a device, and a storage medium are provided. The method comprises: receiving, by a server, an access request from a vehicle; obtaining, based on the access request, a plurality of observation values from a plurality of stations associated with the vehicle, respectively, each observation value is based on a corresponding pre-trained recommendation model, each observation value includes factors associated with access of the vehicle to the station corresponding to the observation value; determining, an action value for the station based on the observation value and the pre-trained recommendation model for the station, the action value for the station indicates a matching degree between the access request and the station; determining a recommended station among the plurality of stations based on the action values of the plurality of stations; and sending to the vehicle an instruction of driving to the recommended station.

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