AUTOMATIC IMAGE VARIETY SIMULATION FOR IMPROVED DEEP LEARNING PERFORMANCE

    公开(公告)号:US20250029370A1

    公开(公告)日:2025-01-23

    申请号:US18356461

    申请日:2023-07-21

    Abstract: In various embodiments, a system can: access a failure image on which a first model has inaccurately performed an inferencing task; train, on a set of dummy images, a second model to learn a visual variety of the failure image, based on a loss function having a first term and a second term, the first term quantifying visual content dissimilarities between the set of dummy images and outputs predicted during training by the second model, and the second term quantifying, at a plurality of different image scales, visual variety dissimilarities between the failure image and the outputs predicted during training by the second model; and execute the second model on each of a set of training images on which the first model was trained, thereby yielding a set of first converted training images that exhibit the visual variety of the failure image.

    FASTESTIMATOR HEALTHCARE AI FRAMEWORK
    2.
    发明申请

    公开(公告)号:US20200327379A1

    公开(公告)日:2020-10-15

    申请号:US16699567

    申请日:2019-11-30

    Abstract: An artificial intelligence platform and associated methods of training and use are disclosed. An example apparatus includes a data pipeline to: preprocess data using one or more preprocessing operations applied to features associated with the data; and enable debugging to visualize the preprocessed data. The example apparatus includes a network to: instantiate one or more differentiable operations in a training configuration to train an artificial intelligence model; capture feedback including optimization and loss information to adjust the training configuration; and store one or more metrics to evaluate performance of the artificial intelligence model. The example apparatus includes an estimator to: store the training configuration for the artificial intelligence model; configure the pipeline and the network based on the training configuration; iteratively link the pipeline and the network based on the training configuration; and initiate training of the artificial intelligence model using the linked pipeline and network.

    MULTI-TASK NEURAL NETWORK DESIGN USING TASK CRYSTALIZATION

    公开(公告)号:US20240346291A1

    公开(公告)日:2024-10-17

    申请号:US18300807

    申请日:2023-04-14

    CPC classification number: G06N3/0455 G06N3/082

    Abstract: Techniques are described for multi-task neural network model design using task crystallization are described. In one example a task crystallization method comprises adding one or more task-specific channels to a backbone neural network adapted to perform a primary inferencing task to generate a multi-task neural network model, wherein the adding comprises adding task-specific elements to different layers of the backbone neural network for each channel of the one or more task-specific channels. The method further comprises training, by the system, the one or more task-specific channels to perform one or more additional inferencing tasks that are respectively different from one another and the primary inferencing task, comprising separately tuning and crystallizing the task-specific elements of each channel of the one or more task-specific channels.

    PATH FINDING SYSTEM FOR ARTIFICIAL INTELLIGENCE MODEL OPTIMIZATION

    公开(公告)号:US20250148040A1

    公开(公告)日:2025-05-08

    申请号:US18500529

    申请日:2023-11-02

    Abstract: One or more systems, devices, computer program products and/or computer-implemented methods of use provided herein relate to a path finding system for AI model optimization. The computer-implemented system can comprise a memory that can store computer-executable components. The computer-implemented system can further comprise a processor that can execute the computer-executable components stored in the memory, wherein the computer-executable components can comprise a graph generation component that can convert an AI model optimization workflow into a path finding graph comprising a plurality of paths that can capture respective relationships between a plurality of optimization tools, wherein the path finding graph can be employed to solve a graph traversal problem for an AI model optimization task based on a model optimization sequence.

    AUTOMATED DATA AUGMENTATION IN DEEP LEARNING

    公开(公告)号:US20220277195A1

    公开(公告)日:2022-09-01

    申请号:US17648996

    申请日:2022-01-26

    Abstract: Techniques regarding autonomous data augmentation are provided. For example, one or more embodiments described herein can regard a system comprising a memory that can store computer-executable components. The system can also comprise a processor, operably coupled to the memory, that executes the computer-executable components stored in the memory. The computer-executable components can include a data augmentation component that executes a random unidimensional augmentation algorithm to augment a dataset for training a machine learning model via a plurality of augmentation operations. The random unidimensional augmentation algorithm can employ a global augmentation parameter that defines: a distortion magnitude associated with the plurality of augmentation operations, and a number of augmentation operations included in the plurality of augmentation operations.

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