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optimum-intel-internal-testing/tiny-random-vit

作者 optimum-intel-internal-testing

image-classification transformers
↓ 64.2K ♥ 0

创建时间: 2025-10-21 10:07:49+00:00

更新时间: 2025-10-21 10:07:51+00:00

在 Hugging Face 上查看

文件 (8)

.gitattributes
README.md
config.json
model.safetensors
onnx/model.onnx ONNX
preprocessor_config.json
pytorch_model.bin
tf_model.h5