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A high-throughput and memory-efficient inference and serving engine for LLMs
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Questions about the inference performance of the GPTQ model #9240

Open Rssevenyu opened 1 week ago

Rssevenyu commented 1 week ago

Why is it that when using a quantitative model for inference, the TTFT optimization is not obvious, but the overall inference efficiency is improved a lot? At the same time, the inference efficiency of gptq marlin is not as good as gptq? What is the reason? Version Information: vLLM Version: 0.6.2

Start-up Commands: Non-quantized model: python3 -m vllm.entrypoints.openai.api_server --host 0.0.0.0 --port 7807 --model /mnt/home/Qwen1.5_32B_Chat --trust-remote-code --served-model-name Qwen --gpu-memory-utilization 0.9 --tensor-parallel-size 2 --enforce-eager --max-model-len 8192 --enable-prefix-caching

Quantized model using GPTQ (without GPTQ Marlin kernel): python3 -m vllm.entrypoints.openai.api_server --host 0.0.0.0 --port 7807 --model /mnt/home/Qwen1.5-32B-Chat-GPTQ-Int4 --trust-remote-code --served-model-name Qwen --gpu-memory-utilization 0.9 --tensor-parallel-size 2 --enforce-eager --max-model-len 8192 --enable-prefix-caching --quantization gptq

Quantized model using GPTQ Marlin kernel (automatic mode without specifying --quantization gptq): python3 -m vllm.entrypoints.openai.api_server --host 0.0.0.0 --port 7807 --model /mnt/home/Qwen1.5-32B-Chat-GPTQ-Int4 --trust-remote-code --served-model-name Qwen --gpu-memory-utilization 0.9 --tensor-parallel-size 2 --enforce-eager --max-model-len 8192 --enable-prefix-caching Test Setup: The test script uses 4 concurrent requests with the same prompt for evaluation.

Metric Outputs: Non-quantized Model: Time to First Token (TTFT): vllm:time_to_first_token_seconds_sum{model_name="Qwen"} 2.931025266647339 Time Per Output Token: vllm:time_per_output_token_seconds_sum{model_name="Qwen"} 6.13854455947876

Quantized Model using GPTQ: Time to First Token (TTFT): vllm:time_to_first_token_seconds_sum{model_name="Qwen"} 2.7571163177490234 Time Per Output Token: vllm:time_per_output_token_seconds_sum{model_name="Qwen"} 3.8764026165008545

Quantized Model using GPTQ Marlin: Time to First Token (TTFT): vllm:time_to_first_token_seconds_sum{model_name="Qwen"} 2.9693307876586914 Time Per Output Token: vllm:time_per_output_token_seconds_sum{model_name="Qwen"} 4.670741319656372

LucasWilkinson commented 1 week ago

@Rssevenyu can you run python collect_env.py please? alot of this will depend on the device you are running on

Rssevenyu commented 1 week ago

@Rssevenyu你能运行python collect_env.py吗?这很大程度上取决于你正在运行的设备

Of course, the following is my environmental information: PyTorch version: 2.4.0+cu121 Is debug build: False CUDA used to build PyTorch: 12.1 ROCM used to build PyTorch: N/A

OS: Ubuntu 20.04.5 LTS (x86_64) GCC version: (Ubuntu 9.4.0-1ubuntu1~20.04.1) 9.4.0 Clang version: Could not collect CMake version: version 3.30.4 Libc version: glibc-2.31

Python version: 3.11.5 (main, Sep 11 2023, 13:54:46) [GCC 11.2.0] (64-bit runtime) Python platform: Linux-4.18.0-193.14.2.el8_2.x86_64-x86_64-with-glibc2.31 Is CUDA available: True CUDA runtime version: Could not collect CUDA_MODULE_LOADING set to: LAZY GPU models and configuration: GPU 0: NVIDIA A40 GPU 1: NVIDIA A40

Nvidia driver version: 535.104.12 cuDNN version: Probably one of the following: /usr/lib/x86_64-linux-gnu/libcudnn.so.8.8.1 /usr/lib/x86_64-linux-gnu/libcudnn_adv_infer.so.8.8.1 /usr/lib/x86_64-linux-gnu/libcudnn_adv_train.so.8.8.1 /usr/lib/x86_64-linux-gnu/libcudnn_cnn_infer.so.8.8.1 /usr/lib/x86_64-linux-gnu/libcudnn_cnn_train.so.8.8.1 /usr/lib/x86_64-linux-gnu/libcudnn_ops_infer.so.8.8.1 /usr/lib/x86_64-linux-gnu/libcudnn_ops_train.so.8.8.1 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: 46 bits physical, 57 bits virtual CPU(s): 128 On-line CPU(s) list: 0-127 Thread(s) per core: 2 Core(s) per socket: 32 Socket(s): 2 NUMA node(s): 2 Vendor ID: GenuineIntel CPU family: 6 Model: 143 Model name: Intel(R) Xeon(R) Gold 6430 Stepping: 8 Frequency boost: enabled CPU MHz: 2599.999 CPU max MHz: 2101.0000 CPU min MHz: 800.0000 BogoMIPS: 4200.00 Virtualization: VT-x L1d cache: 3 MiB L1i cache: 2 MiB L2 cache: 128 MiB L3 cache: 120 MiB NUMA node0 CPU(s): 0-31,64-95 NUMA node1 CPU(s): 32-63,96-127 Vulnerability Itlb multihit: Not affected Vulnerability L1tf: Not affected Vulnerability Mds: Not affected Vulnerability Meltdown: Not affected Vulnerability Spec store bypass: Vulnerable Vulnerability Spectre v1: Vulnerable: __user pointer sanitization and usercopy barriers only; no swapgs barriers Vulnerability Spectre v2: Vulnerable, IBPB: disabled, STIBP: disabled 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 smx est tm2 ssse3 sdbg fma cx16 xtpr pdcm pcid dca sse4_1 sse4_2 x2apic movbe popcnt tsc_deadline_timer aes xsave avx f16c rdrand lahf_lm abm 3dnowprefetch cpuid_fault epb cat_l3 cat_l2 cdp_l3 invpcid_single cdp_l2 ssbd mba ibrs ibpb stibp ibrs_enhanced tpr_shadow vnmi flexpriority ept vpid fsgsbase tsc_adjust bmi1 hle avx2 smep bmi2 erms invpcid rtm cqm rdt_a avx512f avx512dq rdseed adx smap avx512ifma clflushopt clwb intel_pt avx512cd sha_ni avx512bw avx512vl xsaveopt xsavec xgetbv1 xsaves cqm_llc cqm_occup_llc cqm_mbm_total cqm_mbm_local avx512_bf16 wbnoinvd dtherm ida arat pln pts hwp hwp_act_window hwp_epp hwp_pkg_req avx512vbmi umip pku ospke waitpkg avx512_vbmi2 gfni vaes vpclmulqdq avx512_vnni avx512_bitalg tme avx512_vpopcntdq la57 rdpid cldemote movdiri movdir64b md_clear pconfig flush_l1d arch_capabilities

Versions of relevant libraries: [pip3] flake8==6.0.0 [pip3] mypy-extensions==1.0.0 [pip3] numpy==1.26.4 [pip3] numpydoc==1.5.0 [pip3] nvidia-cublas-cu12==12.1.3.1 [pip3] nvidia-cuda-cupti-cu12==12.1.105 [pip3] nvidia-cuda-nvrtc-cu12==12.1.105 [pip3] nvidia-cuda-runtime-cu12==12.1.105 [pip3] nvidia-cudnn-cu12==9.1.0.70 [pip3] nvidia-cufft-cu12==11.0.2.54 [pip3] nvidia-curand-cu12==10.3.2.106 [pip3] nvidia-cusolver-cu12==11.4.5.107 [pip3] nvidia-cusparse-cu12==12.1.0.106 [pip3] nvidia-ml-py==12.560.30 [pip3] nvidia-nccl-cu12==2.20.5 [pip3] nvidia-nvjitlink-cu12==12.6.77 [pip3] nvidia-nvtx-cu12==12.1.105 [pip3] pyzmq==23.2.0 [pip3] torch==2.4.0 [pip3] torchvision==0.19.0 [pip3] transformers==4.45.2 [pip3] triton==3.0.0 [conda] _anaconda_depends 2023.09 py311_mkl_1
[conda] blas 1.0 mkl
[conda] mkl 2023.1.0 h213fc3f_46343
[conda] mkl-service 2.4.0 py311h5eee18b_1
[conda] mkl_fft 1.3.8 py311h5eee18b_0
[conda] mkl_random 1.2.4 py311hdb19cb5_0
[conda] numpy 1.26.4 pypi_0 pypi [conda] numpydoc 1.5.0 py311h06a4308_0
[conda] nvidia-cublas-cu12 12.1.3.1 pypi_0 pypi [conda] nvidia-cuda-cupti-cu12 12.1.105 pypi_0 pypi [conda] nvidia-cuda-nvrtc-cu12 12.1.105 pypi_0 pypi [conda] nvidia-cuda-runtime-cu12 12.1.105 pypi_0 pypi [conda] nvidia-cudnn-cu12 9.1.0.70 pypi_0 pypi [conda] nvidia-cufft-cu12 11.0.2.54 pypi_0 pypi [conda] nvidia-curand-cu12 10.3.2.106 pypi_0 pypi [conda] nvidia-cusolver-cu12 11.4.5.107 pypi_0 pypi [conda] nvidia-cusparse-cu12 12.1.0.106 pypi_0 pypi [conda] nvidia-ml-py 12.560.30 pypi_0 pypi [conda] nvidia-nccl-cu12 2.20.5 pypi_0 pypi [conda] nvidia-nvjitlink-cu12 12.6.77 pypi_0 pypi [conda] nvidia-nvtx-cu12 12.1.105 pypi_0 pypi [conda] pyzmq 23.2.0 py311h6a678d5_0
[conda] torch 2.4.0 pypi_0 pypi [conda] torchvision 0.19.0 pypi_0 pypi [conda] transformers 4.45.2 pypi_0 pypi [conda] triton 3.0.0 pypi_0 pypi ROCM Version: Could not collect Neuron SDK Version: N/A vLLM Version: 0.6.1.dev238+ge2c6e0a82 vLLM Build Flags: CUDA Archs: Not Set; ROCm: Disabled; Neuron: Disabled GPU Topology: GPU0 GPU1 NIC0 NIC1 NIC2 NIC3 NIC4 NIC5 CPU Affinity NUMA Affinity GPU NUMA ID GPU0 X SYS NODE NODE PIX PIX SYS SYS 0-31,64-95 0 N/A GPU1 SYS X SYS SYS SYS SYS PIX PIX 32-63,96-127 1 N/A NIC0 NODE SYS X PIX NODE NODE SYS SYS NIC1 NODE SYS PIX X NODE NODE SYS SYS NIC2 PIX SYS NODE NODE X PIX SYS SYS NIC3 PIX SYS NODE NODE PIX X SYS SYS NIC4 SYS PIX SYS SYS SYS SYS X PIX NIC5 SYS PIX SYS SYS SYS SYS PIX X

Legend:

X = Self SYS = Connection traversing PCIe as well as the SMP interconnect between NUMA nodes (e.g., QPI/UPI) NODE = Connection traversing PCIe as well as the interconnect between PCIe Host Bridges within a NUMA node PHB = Connection traversing PCIe as well as a PCIe Host Bridge (typically the CPU) PXB = Connection traversing multiple PCIe bridges (without traversing the PCIe Host Bridge) PIX = Connection traversing at most a single PCIe bridge NV# = Connection traversing a bonded set of # NVLinks

NIC Legend:

NIC0: mlx5_0 NIC1: mlx5_1 NIC2: mlx5_2 NIC3: mlx5_3 NIC4: mlx5_4 NIC5: mlx5_5