Mengqing Cao 5f4391652f [PromptLogprobs][V1] Support prompt logprobs to fix ceval accuracy in V1 (#1483)
### What this PR does / why we need it?
Support prompt logprobs in V1. This also enable lm_eval to test accuracy
on V1

### Does this PR introduce _any_ user-facing change?
support prompt logprobs output

### How was this patch tested?
CI passed with accuracy test.

Using lm_eval, which use prompt logprobs as output to test accuracy, to
test:
```python
VLLM_USE_V1=1 lm_eval \
  --model vllm \
  --model_args pretrained=Qwen/Qwen2.5-7B-Instruct,max_model_len=4096,block_size=4 \
  --tasks ceval-valid_computer_network \
  --batch_size 8
```
After this pr, the accuracy test results of `Qwen/Qwen2.5-7B-Instruct`
on V1 is:
```bash
|           Tasks            |Version|Filter|n-shot| Metric |   |Value |   |Stderr|
|----------------------------|------:|------|-----:|--------|---|-----:|---|-----:|
|ceval-valid_computer_network|      2|none  |     0|acc     |↑  |0.7368|±  |0.1038|
|                            |       |none  |     0|acc_norm|↑  |0.7368|±  |0.1038|
```

Closes: https://github.com/vllm-project/vllm-ascend/issues/1043

Signed-off-by: MengqingCao <cmq0113@163.com>
2025-06-28 09:38:52 +08:00
2025-06-27 09:14:43 +08:00
2025-06-27 09:14:43 +08:00
2025-02-05 10:53:12 +08:00
2025-01-29 02:44:13 -08:00
2025-06-25 19:28:26 +08:00
2025-06-25 19:28:26 +08:00
2025-04-01 09:25:33 +08:00
2025-06-27 09:14:43 +08:00

vllm-ascend

vLLM Ascend Plugin

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Overview

vLLM Ascend (vllm-ascend) is a community maintained hardware plugin for running vLLM seamlessly on the Ascend NPU.

It is the recommended approach for supporting the Ascend backend within the vLLM community. It adheres to the principles outlined in the [RFC]: Hardware pluggable, providing a hardware-pluggable interface that decouples the integration of the Ascend NPU with vLLM.

By using vLLM Ascend plugin, popular open-source models, including Transformer-like, Mixture-of-Expert, Embedding, Multi-modal LLMs can run seamlessly on the Ascend NPU.

Prerequisites

  • Hardware: Atlas 800I A2 Inference series, Atlas A2 Training series
  • OS: Linux
  • Software:
    • Python >= 3.9, < 3.12
    • CANN >= 8.1.RC1
    • PyTorch >= 2.5.1, torch-npu >= 2.5.1.post1.dev20250619
    • vLLM (the same version as vllm-ascend)

Getting Started

Please refer to QuickStart and Installation for more details.

Contributing

See CONTRIBUTING for more details, which is a step-by-step guide to help you set up development environment, build and test.

We welcome and value any contributions and collaborations:

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vllm-ascend has main branch and dev branch.

  • main: main branchcorresponds to the vLLM main branch, and is continuously monitored for quality through Ascend CI.
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Below is maintained branches:

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main Maintained CI commitment for vLLM main branch and vLLM 0.9.x branch
v0.7.1-dev Unmaintained Only doc fixed is allowed
v0.7.3-dev Maintained CI commitment for vLLM 0.7.3 version

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Apache License 2.0, as found in the LICENSE file.

Description
XC-LLM: A Specially Optimized LLM Inference Engine for ModelHub XC
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