METHOD AND DEVICE FOR DETECTING AND CORRECTING ABNORMAL SCORING OF PEER REVIEWS

    公开(公告)号:US20240176768A1

    公开(公告)日:2024-05-30

    申请号:US18489879

    申请日:2023-10-19

    Applicant: ZHEJIANG LAB

    CPC classification number: G06F16/215 G06F16/2246

    Abstract: The present application disclose a method and a device for detecting and correcting abnormal scoring of peer reviews, which includes: converting collected scoring data into a two-dimensional matrix and preprocessing the data; determining the anomaly of the processed structured data with a one-way anomaly detection method, a consistency check method and a two-way anomaly detection method, and classifying the detected abnormal data into an abnormal data set; repairing the abnormal data for the abnormal data set with an information entropy correction method; generating an ability evaluation report according to the abnormal data set, performing weighed averaging on the corrected scoring data according to the scoring weights of reviewers in the ability evaluation report to obtain a final scoring result, and generating an abnormal scoring correction report. The present application can effectively detect the abnormal phenomenon of peer reviews in the performance appraisal of enterprise personnel.

    NON-INTRUSIVE LOAD MONITORING METHOD AND DEVICE BASED ON PHYSICS-INFORMED NEURAL NETWORK

    公开(公告)号:US20240103052A1

    公开(公告)日:2024-03-28

    申请号:US18097234

    申请日:2023-01-14

    Applicant: ZHEJIANG LAB

    CPC classification number: G01R21/001 G06N3/042 G06N3/08

    Abstract: The present invention relates to the cross field of smart grid and artificial intelligence, provides a non-intrusive load monitoring method and device based on physics-informed neural network, comprising the following steps: Step 1, obtaining a total load data and an equipment load data of a building in a certain period of time, and using a sliding window method to cut to construct a training data. Step 2, designing a deep learning neural network model to learn the equipment load characteristics contained in the total load data, and outputting the equipment load forecasting. Step 3, based on a physics-constrained learning framework, training the deep learning neural network model by iteratively optimizing the training loss to obtain a trained physics-informed neural network model. Step 4, monitoring the equipment's power consumption in the building according to the output results of the physics-informed neural network model. The present invention can fully extract the operation characteristics of electric equipment, and improve the accuracy of load identification without increasing additional cost.

    COMPILING SYSTEM AND COMPILING METHOD FOR PROGRAMMABLE NETWORK ELEMENT

    公开(公告)号:US20240061663A1

    公开(公告)日:2024-02-22

    申请号:US18495707

    申请日:2023-10-26

    Applicant: ZHEJIANG LAB

    CPC classification number: G06F8/443 G06F9/44505

    Abstract: The present disclosure discloses a compiling system for a compiling system and a compiling method for a programmable network element. Aiming at the diversified requirements of network modals for the underlying hardware resources, the system realizes the integration and fusion mechanism of computing/storage/forwarding/security, and abstracts network element equipment including heterogeneous hardware resources and isomeric hardware resources into a logical network element irrelevant to the underlying hardware; performs advanced abstract encapsulation on the heterogeneous hardware resources and isomeric hardware resources, supports flexible calling of underlying hardware and software resources, uses the technology of functional equivalent replacement between heterogeneous hardware resources and isomeric hardware resources, realizes switching and co-processing of network modals among hardware resources according to actual requirements, allocates heterogeneous hardware resources according to modal characteristics, and calls various compilers to automatically generate and optimize modal packet processing pipelines.

    Data Flow Method and Apparatus for Neural Network Computation

    公开(公告)号:US20240054319A1

    公开(公告)日:2024-02-15

    申请号:US17954109

    申请日:2022-09-27

    Applicant: ZHEJIANG LAB

    CPC classification number: G06N3/04 G06K9/6296

    Abstract: Disclosed are a data flow method and apparatus for neural network computation. The method includes: step 1, initializing the lifecycle of a variable in a computational graph, i.e., initializing a time period from the start of a definition of the variable to the end of use as the lifecycle of the variable in the computational graph; and step 2, defining a propagation rule for a variable in use to flow through a node, i.e., defining that in the case that a variable at a certain node in the computational graph is used, a definition of the variable is produced at a precursor node of the node, such that an input set of valid variables flowing through the node contains the variable. The application discloses a data flow modeling method and apparatus for neural network computation in a deep learning training system.

    CROSS-MEDIA CORRESPONDING KNOWLEDGE GENERATION METHOD AND APPARATUS

    公开(公告)号:US20240046122A1

    公开(公告)日:2024-02-08

    申请号:US18491817

    申请日:2023-10-23

    Applicant: ZHEJIANG LAB

    Inventor: Feng LIN Yunhe PAN

    CPC classification number: G06N5/022 G06V10/7715 G06V10/806 G06F40/30 G06V40/25

    Abstract: A method and an apparatus for cross-media corresponding knowledge generation. The method comprises: generating a second knowledge unit of a second medium according to a first knowledge unit of a predefined first medium; generating a first feature parameter vector corresponding to the first knowledge unit and a second feature parameter vector corresponding to the second knowledge unit; mapping the first feature parameter vector and the second feature parameter vector to a corresponding two-dimensional spherical feature surface to obtain a first feature point of the first feature parameter vector on the corresponding two-dimensional spherical feature surface and a second feature point of the second feature parameter vector on the corresponding two-dimensional spherical feature surface; indexing the first feature point and the second feature point to obtain a first index and a second index; and generating a bidirectional index corresponding relationship between the first knowledge unit and the second knowledge unit.

    Reverse Virtual Screening Platform and Method based on Programmable Quantum Computing

    公开(公告)号:US20240038325A1

    公开(公告)日:2024-02-01

    申请号:US18122251

    申请日:2023-03-16

    Applicant: ZHEJIANG LAB

    CPC classification number: G16B15/30 G16C10/00 G06N10/20

    Abstract: The application discloses a reverse virtual screening platform and method based on programmable quantum computing, the method includes the following steps: S1, for a given micromolecule and a target protein molecule, calculating a binding interaction graph of the given micromolecule and the target protein molecule on a computer according to different distances between pharmacophores; S2, encoding, according to an adjacency matrix of the binding interaction graph, the binding interaction graph into a quantum reverse virtual screening platform by decomposing the adjacency matrix; and S3, performing Gaussian boson sampling by the quantum reverse virtual screening platform. The reverse virtual screening platform and method based on programmable quantum computing provided by the present application are implemented by an optical quantum computer system based on a time domain.

    METHOD AND SYSTEM FOR AUTOMATICALLY AND QUICKLY DEPLOYING FRONT-END PROCESSOR BASED ON GRAY RELEASE

    公开(公告)号:US20240036860A1

    公开(公告)日:2024-02-01

    申请号:US18360840

    申请日:2023-07-28

    Applicant: ZHEJIANG LAB

    CPC classification number: G06F8/71 G06F8/65

    Abstract: The present disclosure discloses a method and system for automatically and quickly deploying a front-end processor based on gray release. The system includes a user management module, a front-end processor engineering configuration module, a version iteration module and an engineering code version management repository, where the version iteration module is connected with the engineering code version management repository, the user management module and the front-end processor engineering configuration module, a code is obtained through the engineering code version management repository to perform updating or rollback of a current code, an operating permission of the front-end processor is obtained by using the user management module, an engineering configuration parameter is obtained from the front-end processor engineering configuration module for engineering gray release of a plurality of front-end processors, and a task scheduling function therein is called.

    SYSTEM FOR PREDICTING END-STAGE RENAL DISEASE COMPLICATION RISK BASED ON CONTRASTIVE LEARNING

    公开(公告)号:US20240021312A1

    公开(公告)日:2024-01-18

    申请号:US18352216

    申请日:2023-07-13

    Applicant: ZHEJIANG LAB

    CPC classification number: G16H50/20 G16H50/30

    Abstract: Disclosed is an system for predicting end-stage renal disease complication risk based on contrastive learning, including an end-stage renal disease data preparation module, configured to extract structured data of a patient by using a hospital electronic information system and daily monitoring equipment, and process the structured data to obtain augmented structured data; and a complication risk prediction module, configured to construct a complication representation learning model and a complication risk prediction model, perform training and learning on the augmented structured data through the complication representation learning model to obtain a complication representation, and perform end-stage renal disease complication risk prediction by using the complication representation through the complication risk prediction model.

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