yolov8n flops
时间: 2023-08-24 10:06:49 浏览: 94
根据引用中提到的要计算flops的公式,在YOLOv8n模型中,我们需要计算total_ops。具体的计算公式如下:
total_ops = total_kernel_macs + total_output_macs
其中,total_kernel_macs是通过计算kernel_ops(卷积核操作数)乘以输入通道数和输出通道数得到的,即total_kernel_macs = kernel_ops * m.in_channels * m.out_channels。
而total_output_macs表示输出的访存量,它等于模型输出的元素个数,即total_output_macs = y.nelement()。
因此,如果给定YOLOv8n模型的kernel_ops和输出的尺寸信息,可以通过上述公式来计算出flops。但是由于引用提供的代码无法获得kernel_ops和输出的尺寸信息,无法直接计算出flops。<span class="em">1</span><span class="em">2</span><span class="em">3</span>
#### 引用[.reference_title]
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