36 lines
1.2 KiB
Markdown
36 lines
1.2 KiB
Markdown
## 1.Install dnmetis_backend
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As README.md:
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backend_C++/dnmetis_backend/README.md
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## 2.Download dataset and model(.om)
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1.download Imagenet-val dataset URL: http://www.image-net.org/download-imageurls
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2.download efficientnet-b8 model(.om) URL: obs://hwwheel23/efficientnet-b8.om
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3.process the original Imagenet-val dataset as list:
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## 3.Start execute the inference:
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sh run_efficientnet-b8.sh
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or
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python3.7 main.py --model=/data/hwwheel123/model/efficientnet-b8.om --image_size='672,672,3' --inputs='images:0' --outputs='Softmax:0' --precision=fp16
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## 4.ATC offline model generate (optional):
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1.download efficientnet-b8 model(.pb) URL: obs://hwwheel23/efficientnet-b8.pb
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2.atc --model=$MODEL_DIR/efficientnet-b8.pb --framework=3 --input_shape='images:1,672,672,3' --output=$MODEL_DIR/efficientnet-b8 --mode=0 --out_nodes='Softmax:0' --soc_version=Ascend310 --input_fp16_nodes=images --output_type=FP16
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## 5.Imagenet2012-val Top1 Accuracy:
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