.. include:: /keyword.rst ========= Model Hub ========= .. toctree:: :hidden: YOLOv5s YOLOv8s YOLOXs ConvNeXt DenseNet EfficientNet GoogLeNet InceptionV3 MobileNetV2 MobileNetV3 ResNet ShuffleNetV2 SqueezeNet VGGFace VGG This page provides a list of commonly used TensorFlow Lite models and their converted DLAs for implementation. Each model archive here is given `tflite`, `mdla2` and `mdla3` file for inference. Users can only run the version-specific DLA model on the supporting platform. Here is the lookup table. +------------+--------------+ | Platform | MDLA Version | +============+==============+ | Genio 350 | N/A | +------------+--------------+ | Genio 510 | MDLA 3.0 | +------------+--------------+ | Genio 700 | MDLA 3.0 | +------------+--------------+ | Genio 1200 | MDLA 2.0 | +------------+--------------+ .. note:: The inference speed statistics shown here were measured with performance mode enabled across different Genio products (G510, G700, and G1200 NPUs) using various models and data types. The inference times were obtained using Neuron SDK, and more detailed information can be found on each model's detail page linked in the table. The performance may vary depending on the platform and specific hardware used. To obtain the most accurate statistics, you should run the application directly on the targeted platform. Performance may also differ between different versions of the board image and EVK. Supported Models on Genio Product ================================= .. csv-table:: Models for Detection :class: longtable :file: /_asset/tables/ml-model-hub-detection.csv :width: 100% :widths: 12 11 11 11 11 11 11 11 11 .. csv-table:: Models for Classification :class: longtable :file: /_asset/tables/ml-model-hub-classification.csv :width: 100% :widths: 12 11 11 11 11 11 11 11 11 .. csv-table:: Models for Recognition :class: longtable :file: /_asset/tables/ml-model-hub-recognition.csv :width: 100% :widths: 12 11 11 11 11 11 11 11 11