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doc-exports/docs/modelarts/umn/develop-modelarts-0007.html
Lai, Weijian 6aa966a79a ModelArts UMN 24.3.0 version
Reviewed-by: Pruthi, Vineet <vineet.pruthi@t-systems.com>
Co-authored-by: Lai, Weijian <laiweijian4@huawei.com>
Co-committed-by: Lai, Weijian <laiweijian4@huawei.com>
2024-11-02 09:04:52 +00:00

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Overview

If the subscribed algorithms cannot meet your requirements or you want to migrate local algorithms to ModelArts for training, use the ModelArts preset images to create algorithms. This method is also called using a preset image.

This section describes how to use a preset image to create an algorithm.

Built-in Training Engines

The following table lists the training engines and their versions supported by ModelArts.

Table 1 AI engines supported by training jobs of the new version

Runtime Environment

Supported Chip

System Architecture

System Version

AI Engine and Version

Supported CUDA or Ascend Version

Ascend-Powered-Engine

Ascend910

aarch64

Euler2.8

mindspore_2.0.0-cann_6.3.0-py_3.7-euler_2.8.3-aarch64

cann_6.3.0

PyTorch

Ascend910

aarch64

Euler2.8

pytorch_1.11.0-cann_6.3.0-py_3.7-euler_2.8.3-aarch64

cann_6.3.0

TensorFlow

Ascend910

aarch64

Euler2.8

tensorflow_1.15.0-cann_6.3.0-py_3.7-euler_2.8.3-aarch64

cann_6.3.0