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适配FlashVSR-v1.1模型 Co-authored-by: socrahow1<suzihao4@h-partners.com> # message auto-generated for no-merge-commit merge: !7524 merge master into master 适配FlashVSR-v1.1模型 Created-by: socrahow1 Commit-by: socrahow1 Merged-by: ascend-robot Description: ## Motivation 适配FlashVSR-v1.1模型 ## Modification 适配FlashVSR-v1.1模型 ## Self-test (Optional) If modifications to this PR may cause/fix function/accuracy/performance DTSs/issues, a self-inspection record needs to be attached. ## BC-breaking (Optional) If there are compatibility issues, such as dependencies on cann/torch_npu versions, they need to be explained in the PR. ## Checklist **Before PR**: - [ ] The new code needs to comply with the Clean Code specification. - [ ] The PR content is self-checked, and the expression can be clear and the writing standardized **After PR**: - [ ] CLA has been signed and all committers have signed the CLA in this PR. - [ ] The ci-pipeline is passed, Code Check is passed. See merge request: Ascend/ModelZoo-PyTorch!75241 个月前
适配FlashVSR-v1.1模型 Co-authored-by: socrahow1<suzihao4@h-partners.com> # message auto-generated for no-merge-commit merge: !7524 merge master into master 适配FlashVSR-v1.1模型 Created-by: socrahow1 Commit-by: socrahow1 Merged-by: ascend-robot Description: ## Motivation 适配FlashVSR-v1.1模型 ## Modification 适配FlashVSR-v1.1模型 ## Self-test (Optional) If modifications to this PR may cause/fix function/accuracy/performance DTSs/issues, a self-inspection record needs to be attached. ## BC-breaking (Optional) If there are compatibility issues, such as dependencies on cann/torch_npu versions, they need to be explained in the PR. ## Checklist **Before PR**: - [ ] The new code needs to comply with the Clean Code specification. - [ ] The PR content is self-checked, and the expression can be clear and the writing standardized **After PR**: - [ ] CLA has been signed and all committers have signed the CLA in this PR. - [ ] The ci-pipeline is passed, Code Check is passed. See merge request: Ascend/ModelZoo-PyTorch!75241 个月前
README.md

FlashVSR-v1.1-推理指导

概述

FlashVSR 是一个面向实时扩散模型的流式视频超分 辨率框架,旨在通过实现高效性、可扩展性和实时性能,使基于扩散模型的视频超分辨率技术变得实用化。

本文的介绍了FlashVSR-v1.1模型的部署流程,包括推理环境准备、模型部署、功能验证,旨在帮助用户快速完成模型部署和验证。

  • 版本说明:
url=https://github.com/OpenImagingLab/FlashVSR
commit_id=b527c6f285fb30df530f5febc8b45764a789c961

推理环境准备

  • 该模型需要以下插件与驱动
    表 1 版本配套表
配套 版本 环境准备指导
固件与驱动 25.5.2 Pytorch框架推理环境准备
CANN 8.5.0 -
Python 3.11 -
PyTorch 2.6.0 -
Ascend Extension PyTorch 2.6.0.post5 -
硬件 Atlas 800T A2, Atlas 800I A2 -

快速上手

获取源码

  1. 获取PyTotch源码
git clone https://gitcode.com/Ascend/ModelZoo-PyTorch.git
cd ModelZoo-PyTorch/MindIE/MultiModal/FlashVSR-v1.1
git clone https://github.com/OpenImagingLab/FlashVSR.git
cd FlashVSR
git reset --hard b527c6f285fb30df530f5febc8b45764a789c961
cd ..
git clone https://gitcode.com/Ascend/MindIE-SD.git
cd MindIE-SD
git reset --hard 4aa3014c21ea171c3255d2d2591debeaac9e5202
cd ..
  1. 修改第三方库
# 注:patch命令只能执行一次,第二次执行会报错
cd FlashVSR
git apply ../diff.patch
cd ..
  1. 安装依赖
# openeuler
yum update
yum -y install opencv ffmpeg
# ubuntu
apt-get update
apt-get install -y libgl1 libglib2.0-0 ffmpeg

cd FlashVSR
pip install -e .
pip install -r requirements.txt
cd ../MindIE-SD
python setup.py bdist_wheel
cd ..
pip install MindIE-SD/dist/xxx.whl #根据实际情况修改xxx

获取权重

cd FlashVSR/examples/WanVSR
git lfs install
git clone https://huggingface.co/JunhaoZhuang/FlashVSR-v1.1

环境变量

# 一级流水优化
export TASK_QUEUE_ENABLE=1
# combind标志,用于优化两个非连续算子组合类场景
export COMBIND_ENABLE=1
# CPU绑核
export CPU_AFFINITY_CONF=1

执行推理

# full模式
python infer_flashvsr_v1.1_full.py
# tiny模式
python infer_flashvsr_v1.1_tiny.py
# tiny_long模式
python infer_flashvsr_v1.1_tiny_long_video.py

具体推理文件以及结果保存路径可以在推理脚本中配置,默认从inputs文件夹中读取视频文件(warm_up和正式推理文件),输出结果到results

性能数据

注:为了获取真实性能数据,推理前需要先进行warm_up

机器 模式 输入尺寸 时长 放大倍率 输出 推理时长
Atlas 800T A2 full 384x384@30fps 2s 2.0 768x768@30fps 13.85s
Atlas 800T A2 full 672x384@30fps 3s 2.0 1280x768@30fps 25.60s
Atlas 800T A2 full 384x672@30fps 3s 2.0 768x1280@30fps 23.31s
Atlas 800T A2 full 640x480@30fps 2s 2.0 1280x896@30fps 23.35s
Atlas 800T A2 tiny 384x384@30fps 2s 2.0 768x768@30fps 11.25s
Atlas 800T A2 tiny 672x384@30fps 3s 2.0 1280x768@30fps 20.20s
Atlas 800T A2 tiny 384x672@30fps 3s 2.0 768x1280@30fps 19.99s
Atlas 800T A2 tiny 640x480@30fps 2s 2.0 1280x896@30fps 19.04s
Atlas 800T A2 tiny-long 768x416@30fps 54s 2.0 1536x768@30fps 498.74s