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Regarding the Quantization-Aware training for YOLO-NAS, I followed the procedure here, but it seems that the input and output format is different between the ONNX output at PTQ and the ONNX output after QTA.
The shape of the ONNX at PTQ seems to match the input and output of the following code, which is the “Batch Format” referred to in this document, but the ONNX output after QTA has a completely different output shape.
This is because PTQ can be done solely using model.export call: model.export(..., quantization_mode=INT8, calibration_loader=...)
So during export operation you can attach a postprocessing (NMS) to model which outputs decoded boxes.
As for QAT, we are using Trainer and did not fully integrated our new export() API there.
So we have limited options to control the export of the QAT-ed model, which is exported without postprocessing.
So currently there is no option to export QAT model with postprocessing.
This is a good improvement tho.
So you are saying that at this time QAT only has a benchmark function? Or is there another way for QAT to perform object detection on an image or video and check the results other than train_from_recipe?
💡 Your Question
Regarding the Quantization-Aware training for YOLO-NAS, I followed the procedure here, but it seems that the input and output format is different between the ONNX output at PTQ and the ONNX output after QTA.
The shape of the ONNX at PTQ seems to match the input and output of the following code, which is the “Batch Format” referred to in this document, but the ONNX output after QTA has a completely different output shape.
The following images show the properties of each ONNX as confirmed by NETRON: the first is PTQ and the second is QTA.
I would appreciate an answer as to why the two ONNX formats are different and how to use the ONNX output after QTA to infer the image.
Thank you.
Versions
PyTorch version: 2.2.0+cu121
Is debug build: False
CUDA used to build PyTorch: 12.1
ROCM used to build PyTorch: N/A
OS: Ubuntu 20.04.6 LTS (x86_64)
GCC version: (Ubuntu 9.4.0-1ubuntu1~20.04.2) 9.4.0
Clang version: Could not collect
CMake version: Could not collect
Libc version: glibc-2.31
Python version: 3.8.10 (default, May 26 2023, 14:05:08) [GCC 9.4.0] (64-bit runtime)
Python platform: Linux-5.15.0-92-generic-x86_64-with-glibc2.29
Is CUDA available: True
CUDA runtime version: 11.3.109
CUDA_MODULE_LOADING set to: LAZY
GPU models and configuration: GPU 0: NVIDIA GeForce RTX 4090
Nvidia driver version: 545.29.06
cuDNN version: Could not collect
HIP runtime version: N/A
MIOpen runtime version: N/A
Is XNNPACK available: True
CPU:
Architecture: x86_64
CPU op-mode(s): 32-bit, 64-bit
Byte Order: Little Endian
Address sizes: 39 bits physical, 48 bits virtual
CPU(s): 32
On-line CPU(s) list: 0-31
Thread(s) per core: 1
Core(s) per socket: 24
Socket(s): 1
NUMA node(s): 1
Vendor ID: GenuineIntel
CPU family: 6
Model: 183
Model name: 13th Gen Intel(R) Core(TM) i9-13900KF
Stepping: 1
CPU MHz: 3000.000
CPU max MHz: 5800.0000
CPU min MHz: 800.0000
BogoMIPS: 5990.40
Virtualization: VT-x
L1d cache: 576 KiB
L1i cache: 384 KiB
L2 cache: 24 MiB
NUMA node0 CPU(s): 0-31
Vulnerability Gather data sampling: Not affected
Vulnerability Itlb multihit: Not affected
Vulnerability L1tf: Not affected
Vulnerability Mds: Not affected
Vulnerability Meltdown: Not affected
Vulnerability Mmio stale data: Not affected
Vulnerability Retbleed: Not affected
Vulnerability Spec rstack overflow: Not affected
Vulnerability Spec store bypass: Mitigation; Speculative Store Bypass disabled via prctl and seccomp
Vulnerability Spectre v1: Mitigation; usercopy/swapgs barriers and __user pointer sanitization
Vulnerability Spectre v2: Mitigation; Enhanced IBRS, IBPB conditional, RSB filling, PBRSB-eIBRS SW sequence
Vulnerability Srbds: Not affected
Vulnerability Tsx async abort: Not affected
Flags: fpu vme de pse tsc msr pae mce cx8 apic sep mtrr pge mca cmov pat pse36 clflush dts acpi mmx fxsr sse sse2 ss ht tm pbe syscall nx pdpe1gb rdtscp lm constant_tsc art arch_perfmon pebs bts rep_good nopl xtopology nonstop_tsc cpuid aperfmperf tsc_known_freq pni pclmulqdq dtes64 monitor ds_cpl vmx est tm2 ssse3 sdbg fma cx16 xtpr pdcm sse4_1 sse4_2 x2apic movbe popcnt tsc_deadline_timer aes xsave avx f16c rdrand lahf_lm abm 3dnowprefetch cpuid_fault epb ssbd ibrs ibpb stibp ibrs_enhanced tpr_shadow vnmi flexpriority ept vpid ept_ad fsgsbase tsc_adjust bmi1 avx2 smep bmi2 erms invpcid rdseed adx smap clflushopt clwb intel_pt sha_ni xsaveopt xsavec xgetbv1 xsaves split_lock_detect avx_vnni dtherm ida arat pln pts hwp hwp_notify hwp_act_window hwp_epp hwp_pkg_req umip pku ospke waitpkg gfni vaes vpclmulqdq rdpid movdiri movdir64b fsrm md_clear serialize arch_lbr flush_l1d arch_capabilities
Versions of relevant libraries:
[pip3] numpy==1.23.0
[pip3] onnx==1.13.0
[pip3] onnx-graphsurgeon==0.3.27
[pip3] onnx-simplifier==0.4.35
[pip3] onnxruntime==1.13.1
[pip3] onnxsim==0.4.35
[pip3] pytorch-quantization==2.1.2
[pip3] torch==2.2.0
[pip3] torchmetrics==0.8.0
[pip3] torchvision==0.17.0
[pip3] triton==2.2.0
[conda] Could not collect
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