Wang Kunpeng 0bab629f90 [v0.18.0][bugfix]fixed block_size incorrect setting issue in dsv3.2 (#7630) (#7652)
### What this PR does / why we need it?
https://github.com/vllm-project/vllm/pull/35122 This PR in the vllm
community refactors the update mode of block_size. As a result, when the
user does not specify `--block-size`, dsv3.2 obtains an incorrect
block_size.

**The root cause of the problem is analyzed from the block_size update
process as follows:**
1. In NPUPlatform, `check_and_update_config` calls `refresh_block_size`
to set block_size to 128.
2. During Modelrunner initialization, the `self.block_size` parameter is
generated. At this time, block_size is still 128. This parameter will be
used for operations such as kvcache initialization.
3. `update_block_size_for_backend` updates block_size to the size set in
attn_backend. The reason why the DSV3.2 is faulty is that it has an
additional attn_backend `DeepseekV32IndexerBackend`, and this backend is
not rewritten. The block_size obtained from attn_backend is 64. In this
case, only `vllm_config.cache_config.block_size` is updated, and other
parts are not modified. As a result, the block_size on the entire
network is inconsistent.

**Modification solution:**
Skip `update_block_size_for_backend` and modify block_size only in the
`check_and_update_config` method.

In the future, the block_size update logic can be migrated to the
`update_block_size_for_backend` method. Ensure that all block_size
values on the entire network are updated.
### Does this PR introduce _any_ user-facing change? 
no
### How was this patch tested?

- vLLM version: v0.18.0
- vLLM main:
ed359c497a
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Signed-off-by: Wang Kunpeng <1289706727@qq.com>
2026-03-26 22:38:28 +08:00
2025-02-05 10:53:12 +08:00
2026-01-12 11:21:31 +08:00
2025-01-29 02:44:13 -08:00

vllm-ascend

vLLM Ascend Plugin

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Latest News 🔥

  • [2026/02] We released the new official version v0.13.0! Please follow the official guide to start using vLLM Ascend Plugin on Ascend.
  • [2025/12] We released the new official version v0.11.0! Please follow the official guide to start using vLLM Ascend Plugin on Ascend.
  • [2025/09] We released the new official version v0.9.1! Please follow the official guide to start deploying large-scale Expert Parallelism (EP) on Ascend.
  • [2025/08] We hosted the vLLM Beijing Meetup with vLLM and Tencent! Please find the meetup slides here.
  • [2025/06] User stories page is now live! It kicks off with LLaMA-Factory/verl/TRL/GPUStack to demonstrate how vLLM Ascend assists Ascend users in enhancing their experience across fine-tuning, evaluation, reinforcement learning (RL), and deployment scenarios.
  • [2025/06] Contributors page is now live! All contributions deserve to be recorded, thanks for all contributors.
  • [2025/05] We've released the first official version v0.7.3! We collaborated with the vLLM community to publish a blog post sharing our practice: Introducing vLLM Hardware Plugin, Best Practice from Ascend NPU.
  • [2025/03] We hosted the vLLM Beijing Meetup with vLLM team! Please find the meetup slides here.
  • [2025/02] vLLM community officially created vllm-project/vllm-ascend repo for running vLLM seamlessly on the Ascend NPU.
  • [2024/12] We are working with the vLLM community to support [RFC]: Hardware pluggable.

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-Experts (MoE), Embedding, Multi-modal LLMs can run seamlessly on the Ascend NPU.

Prerequisites

  • Hardware: Atlas 800I A2 Inference series, Atlas A2 Training series, Atlas 800I A3 Inference series, Atlas A3 Training series, Atlas 300I Duo (Experimental)
  • OS: Linux
  • Software:
    • Python >= 3.10, < 3.12
    • CANN == 8.5.0 (Ascend HDK version refers to here)
    • PyTorch == 2.9.0, torch-npu == 2.9.0
    • vLLM (the same version as vllm-ascend)

Getting Started

Please use the following recommended versions to get started quickly:

Version Release type Doc
v0.17.0rc1 Latest release candidate See QuickStart and Installation for more details
v0.13.0 Latest stable version See QuickStart and Installation for more details

Contributing

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

We welcome and value any contributions and collaborations:

Branch

vllm-ascend has a main branch and a dev branch.

  • main: main branch, corresponds to the vLLM main branch, and is continuously monitored for quality through Ascend CI.
  • releases/vX.Y.Z: development branch, created alongside new releases of vLLM. For example, releases/v0.13.0 is the dev branch for vLLM v0.13.0 version.

Below are the maintained branches:

Branch Status Note
main Maintained CI commitment for vLLM main branch and vLLM v0.17.0 tag
v0.7.1-dev Unmaintained Only doc fixes are allowed
v0.7.3-dev Maintained CI commitment for vLLM 0.7.3 version, only bug fixes are allowed, and no new release tags anymore.
v0.9.1-dev Maintained CI commitment for vLLM 0.9.1 version
v0.11.0-dev Maintained CI commitment for vLLM 0.11.0 version
releases/v0.13.0 Maintained CI commitment for vLLM 0.13.0 version
rfc/feature-name Maintained Feature branches for collaboration

Please refer to Versioning policy for more details.

Weekly Meeting

License

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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