22 lines
2.2 KiB
Bash
22 lines
2.2 KiB
Bash
# create ~/llama-3.1-405b-fp8-dummy and create config.json and tokenizer:
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# config.json from ./config.md
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# wget https://huggingface.co/neuralmagic/Meta-Llama-3.1-8B-Instruct-quantized.w8a8/resolve/main/tokenizer.json
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# wget https://huggingface.co/neuralmagic/Meta-Llama-3.1-8B-Instruct-quantized.w8a8/resolve/main/tokenizer_config.json
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# Launch sglang
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# python -m sglang.launch_server --model ~/llama-3.1-405b-fp8-dummy/ --load-format dummy --tp 8 --quant fp8 --disable-radix --mem-frac 0.88
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# offline
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 2500 --random-input 1024 --random-output 1024 --random-range-ratio 0.5 > sglang/log11
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 2500 --random-input 4096 --random-output 1024 --random-range-ratio 0.5 > sglang/log12
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 2500 --random-input 1024 --random-output 512 --random-range-ratio 0.5 > sglang/log13
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 2500 --random-input 4096 --random-output 512 --random-range-ratio 0.5 > sglang/log14
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python3 -m sglang.bench_serving --backend sglang --dataset-name sharegpt --num-prompt 2500 > sglang/log21
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# online
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 300 --request-rate 1 --random-input 4096 --random-output 1024 --random-range-ratio 0.125 > sglang/log31
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 600 --request-rate 2 --random-input 4096 --random-output 1024 --random-range-ratio 0.125 > sglang/log32
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 1200 --request-rate 4 --random-input 4096 --random-output 1024 --random-range-ratio 0.125 > sglang/log33
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 2400 --request-rate 8 --random-input 4096 --random-output 1024 --random-range-ratio 0.125 > sglang/log34
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python3 -m sglang.bench_serving --backend sglang --dataset-name random --num-prompt 3200 --request-rate 16 --random-input 4096 --random-output 1024 --random-range-ratio 0.125 > sglang/log35
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