ERROR] Network has dynamic or shape inputs, but no optimization

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Last updated 11 novembro 2024
ERROR] Network has dynamic or shape inputs, but no optimization
I want to use the tao-converter file (on the jetson nx) to convert the unet model .etlt to int8 engine but get the error: [INFO] Detected input dimensions from the model: (-1, 1, 320, 320) [INFO] Model has dynamic shape. Setting up optimization profiles. [INFO] Using optimization profile min shape: (1, 1, 320, 320) for input: input_1:0 [INFO] Using optimization profile opt shape: (4, 1, 320, 320) for input: input_1:0 [INFO] Using optimization profile max shape: (16, 1, 320, 320) for input
ERROR] Network has dynamic or shape inputs, but no optimization
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ERROR] Network has dynamic or shape inputs, but no optimization
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ERROR] Network has dynamic or shape inputs, but no optimization
Error when using dynamic input: Dynamic input is missing dimensions in profile 0. · Issue #532 · NVIDIA/TensorRT · GitHub
ERROR] Network has dynamic or shape inputs, but no optimization
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ERROR] Network has dynamic or shape inputs, but no optimization
Network has dynamic or shape inputs, but no optimization profile has been defined - TensorRT - NVIDIA Developer Forums
ERROR] Network has dynamic or shape inputs, but no optimization
TensorRT] ERROR: Network has dynamic or shape inputs, but no optimization profile has been defined. · Issue #1167 · NVIDIA/TensorRT · GitHub
ERROR] Network has dynamic or shape inputs, but no optimization
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ERROR] Network has dynamic or shape inputs, but no optimization
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ERROR] Network has dynamic or shape inputs, but no optimization
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