- 12 Jun, 2024 1 commit
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Woosuk Kwon authored
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- 10 Jun, 2024 1 commit
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Dipika Sikka authored
Co-authored-by:Michael Goin <michael@neuralmagic.com>
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- 01 Jun, 2024 2 commits
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chenqianfzh authored
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Ye Cao authored
Signed-off-by:Ye Cao <caoye.cao@alibaba-inc.com>
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- 24 May, 2024 1 commit
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Robert Shaw authored
Co-authored-by:Cody Yu <hao.yu.cody@gmail.com>
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- 23 May, 2024 1 commit
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Dipika Sikka authored
Co-authored-by:
Varun Sundar Rabindranath <varunsundar08@gmail.com> Co-authored-by:
Varun Sundar Rabindranath <varun@neuralmagic.com>
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- 20 May, 2024 2 commits
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Aurick Qiao authored
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Mor Zusman authored
Allow dummy load format for fp8, torch.uniform_ doesn't support FP8 at the moment Co-authored-by:Mor Zusman <morz@ai21.com>
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- 19 May, 2024 1 commit
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Cyrus Leung authored
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- 16 May, 2024 1 commit
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Aurick Qiao authored
Co-authored-by:Woosuk Kwon <woosuk.kwon@berkeley.edu>
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- 13 May, 2024 2 commits
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Sanger Steel authored
[Frontend] [Core] perf: Automatically detect vLLM-tensorized model, update `tensorizer` to version 2.9.0 (#4208)
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Woosuk Kwon authored
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- 10 May, 2024 1 commit
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SangBin Cho authored
Storing exception frame is extremely prone to circular refernece because it contains the reference to objects. When tensorizer is not installed, it leaks llm instance because error frame has references to various modules which cause circular reference problem. I also found spec decoding has a circular reference issue, and I solved it using weakref.proxy.
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- 02 May, 2024 1 commit
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youkaichao authored
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- 30 Apr, 2024 1 commit
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Alpay Ariyak authored
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- 29 Apr, 2024 1 commit
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SangBin Cho authored
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- 27 Apr, 2024 1 commit
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Prashant Gupta authored
Signed-off-by:
Prashant Gupta <prashantgupta@us.ibm.com> Co-authored-by:
Travis Johnson <tjohnson31415@gmail.com>
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- 26 Apr, 2024 2 commits
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Cody Yu authored
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SangBin Cho authored
Co-authored-by:Danny Guinther <dguinther@neuralmagic.com>
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- 24 Apr, 2024 1 commit
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Philipp Moritz authored
This PR is the first step towards fixing https://github.com/vllm-project/vllm/pull/3208 It implements dynamic per-tensor scaling (see https://github.com/vllm-project/vllm/pull/4118), so users do not need to compute activation scales on a calibration dataset and they also don't need to convert their model checkpoints. It is enough to specify the `quantization="fp8"` argument. You can try out the PR like this: ```python from vllm import LLM, SamplingParams prompts = [ "Hello, my name is", "The president of the United States is", "The capital of France is", "The future of AI is", ] sampling_params = SamplingParams(temperature=0.8, top_p=0.95) llm = LLM(model="mistralai/Mixtral-8x7B-Instruct-v0.1", tensor_parallel_size=2, quantization="fp8") outputs = llm.generate(prompts, sampling_params) # Print the outputs. for output in outputs: prompt = output.prompt generated_text = output.outputs[0].text print(f"Prompt: {prompt!r}, Generated text: {generated_text!r}") ``` **Performance**: For this PR, the focus is on making the code clean (while still trying to get reasonable performance), there is a bunch of optimizations that we will submit as a follow up PR that significantly improve the performance (similar to the numbers in https://github.com/vllm-project/vllm/pull/3954). With this PR, the results are as follows: <img width="725" alt="Screenshot 2024-04-21 at 1 31 50 PM" src="https://github.com/vllm-project/vllm/assets/113316/d8fe1118-07a0-4d4e-8530-37a77d465a03"> **Accuracy**: The accuracy with this PR on MMLU on `mistralai/Mixtral-8x7B-v0.1` is as follows: ``` | Groups |Version|Filter|n-shot|Metric|Value | |Stderr| |------------------|-------|------|-----:|------|-----:|---|-----:| |mmlu |N/A |none | 0|acc |0.7018|± |0.0036| | - humanities |N/A |none | 5|acc |0.6472|± |0.0065| | - other |N/A |none | 5|acc |0.7673|± |0.0072| | - social_sciences|N/A |none | 5|acc |0.8099|± |0.0070| | - stem |N/A |none | 5|acc |0.6131|± |0.0083| ``` this compares favorably with the fp16 results which are ``` | Groups |Version|Filter|n-shot|Metric|Value | |Stderr| |------------------|-------|------|-----:|------|-----:|---|-----:| |mmlu |N/A |none | 0|acc |0.7020|± |0.1313| | - humanities |N/A |none | 5|acc |0.6425|± |0.1349| | - other |N/A |none | 5|acc |0.7744|± |0.1038| | - social_sciences|N/A |none | 5|acc |0.8131|± |0.0695| | - stem |N/A |none | 5|acc |0.6108|± |0.1383| ``` Happy hacking!
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- 22 Apr, 2024 1 commit
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alexm-nm authored
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- 20 Apr, 2024 1 commit
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Cody Yu authored
Provide an initial support to FP8 computation. This PR is inspired by HuggingFace TGI: huggingface/text-generation-inference#1726 This feature can be enabled with --quantization fp8 or -q fp8 when launching an engine. Algorithm: We still load a model checkpoint in FP16/BF16. After the weights are loaded, Fp8LinearMethod calculates the per-tensor scaling factor of weights and quantizes the weights accordingly. The scaling factor will then be stored for future use. Meanwhile, the per-tensor scaling factor for activations is calculated in every forward pass. Initial Results: Currently tested Mistral-7B on 1xH100. With prompt length ~5 and decoding length 128: BF16: 1.47s FP8: 1.66s I'll try to use larger models and try to find more performance bottleneck. Meanwhile, you're welcome to try this code.
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- 18 Apr, 2024 1 commit
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SangBin Cho authored
Co-authored-by:SangBin Cho <sangcho@sangcho-LT93GQWG9C.local>
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- 16 Apr, 2024 1 commit
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Antoni Baum authored
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