当前位置: 首页 > news >正文

唐山网站建设技术支持seo优化

唐山网站建设技术支持,seo优化,微信开发者模式在哪,wordpress百度熊掌号1、安装gcc #安装编译环境 yum -y install make gcc gcc-c2、下载显卡驱动 点击 直达连接 nvidia高级搜索下载历史版本驱动程序(下载历史版本驱动) https://www.nvidia.cn/Download/Find.aspx?langcn3、安装驱动 安装显卡驱动 ./NVIDIA-Linux-x86…

1、安装gcc

#安装编译环境

yum -y install make gcc gcc-c++

2、下载显卡驱动

点击 直达连接

nvidia高级搜索下载历史版本驱动程序(下载历史版本驱动)

https://www.nvidia.cn/Download/Find.aspx?lang=cn

3、安装驱动

安装显卡驱动

 ./NVIDIA-Linux-x86_64-535.98.run  -m=kernel-open

4、修改系统参数,更新内核,重启服务器

rm -f /etc/modprobe.d/blacklist-nvidia-nouveau.conf /etc/modprobe.d/nvidia-unsupported-gpu.conf
echo blacklist nouveau | tee /etc/modprobe.d/blacklist-nvidia-nouveau.conf && \echo options nouveau modeset=0 | tee -a /etc/modprobe.d/blacklist-nvidia-nouveau.conf && \echo options nvidia NVreg_OpenRmEnableUnsupportedGpus=1 | tee /etc/modprobe.d/nvidia-unsupported-gpu.conf && \dracut --force && \/sbin/reboot

5、检查驱动

执行nvidia-smi

Wed Aug 16 13:46:06 2023       
+---------------------------------------------------------------------------------------+
| NVIDIA-SMI 535.98                 Driver Version: 535.98       CUDA Version: 12.2     |
|-----------------------------------------+----------------------+----------------------+
| GPU  Name                 Persistence-M | Bus-Id        Disp.A | Volatile Uncorr. ECC |
| Fan  Temp   Perf          Pwr:Usage/Cap |         Memory-Usage | GPU-Util  Compute M. |
|                                         |                      |               MIG M. |
|=========================================+======================+======================|
|   0  NVIDIA GeForce RTX 3090        Off | 00000000:13:00.0 Off |                  N/A |
| 32%   21C    P8               8W / 350W |      4MiB / 24576MiB |      0%      Default |
|                                         |                      |                  N/A |
+-----------------------------------------+----------------------+----------------------++---------------------------------------------------------------------------------------+
| Processes:                                                                            |
|  GPU   GI   CI        PID   Type   Process name                            GPU Memory |
|        ID   ID                                                             Usage      |
|=======================================================================================|
|  No running processes found                                                           |
+---------------------------------------------------------------------------------------+

6、安装nvidia-container-runtime

#安装源

curl -s -L https://nvidia.github.io/libnvidia-container/centos8/libnvidia-container.repo | sudo tee /etc/yum.repos.d/nvidia-container-toolkit.repo

#安装容器运行时

yum install -y nvidia-container-runtime

7、修改containerd配置文件

7.1、增加如下配置

  [plugins."io.containerd.runtime.v1.linux"]no_shim = falseruntime = "nvidia-container-runtime"runtime_root = ""shim = "containerd-shim"shim_debug = false

7.2、修改container配置

修改前:runtime_type = "io.containerd.runc.v2" 
修改后:runtime_type = "io.containerd.runtime.v1.linux"

7.3、完整配置文件

[root@ai-4 containerd]# pwd
/etc/containerd
[root@ai-4 containerd]# cat config.toml
version = 2
root = "/var/lib/containerd"
state = "/run/containerd"
oom_score = 0[grpc]address = "/run/containerd/containerd.sock"uid = 0gid = 0max_recv_message_size = 16777216max_send_message_size = 16777216[debug]address = "/run/containerd/containerd-debug.sock"uid = 0gid = 0level = "warn"[timeouts]"io.containerd.timeout.shim.cleanup" = "5s""io.containerd.timeout.shim.load" = "5s""io.containerd.timeout.shim.shutdown" = "3s""io.containerd.timeout.task.state" = "2s"[plugins][plugins."io.containerd.grpc.v1.cri"]sandbox_image = "sealos.hub:5000/pause:3.2"max_container_log_line_size = -1max_concurrent_downloads = 20disable_apparmor = true[plugins."io.containerd.grpc.v1.cri".containerd]snapshotter = "overlayfs"default_runtime_name = "runc"[plugins."io.containerd.grpc.v1.cri".containerd.runtimes][plugins."io.containerd.grpc.v1.cri".containerd.runtimes.runc]runtime_type = "io.containerd.runtime.v1.linux"runtime_engine = ""runtime_root = ""[plugins."io.containerd.grpc.v1.cri".containerd.runtimes.runc.options]SystemdCgroup = true[plugins."io.containerd.grpc.v1.cri".registry]config_path = "/etc/containerd/certs.d"[plugins."io.containerd.grpc.v1.cri".registry.configs][plugins."io.containerd.grpc.v1.cri".registry.configs."sealos.hub:5000".auth]username = "admin"password = "***********"[plugins."io.containerd.runtime.v1.linux"]no_shim = falseruntime = "nvidia-container-runtime"runtime_root = ""shim = "containerd-shim"shim_debug = false

8、测试containerd下显卡是否正常加载显卡

[root@ai-4 containerd]# ctr run --rm --gpus 0 docker.io/nvidia/cuda:11.0.3-base-ubuntu20.04 nvidia-smi nvidia-smi
Wed Aug 16 05:57:19 2023       
+---------------------------------------------------------------------------------------+
| NVIDIA-SMI 535.98                 Driver Version: 535.98       CUDA Version: 12.2     |
|-----------------------------------------+----------------------+----------------------+
| GPU  Name                 Persistence-M | Bus-Id        Disp.A | Volatile Uncorr. ECC |
| Fan  Temp   Perf          Pwr:Usage/Cap |         Memory-Usage | GPU-Util  Compute M. |
|                                         |                      |               MIG M. |
|=========================================+======================+======================|
|   0  NVIDIA GeForce RTX 3090        Off | 00000000:13:00.0 Off |                  N/A |
| 32%   21C    P8               8W / 350W |      4MiB / 24576MiB |      0%      Default |
|                                         |                      |                  N/A |
+-----------------------------------------+----------------------+----------------------++---------------------------------------------------------------------------------------+
| Processes:                                                                            |
|  GPU   GI   CI        PID   Type   Process name                            GPU Memory |
|        ID   ID                                                             Usage      |
|=======================================================================================|
|  No running processes found                                                           |
+---------------------------------------------------------------------------------------+

9、K8S部署插件支持显卡(如果没有部署可通过如下命令部署,K8S Master上执行)

kubectl apply -f https://raw.githubusercontent.com/NVIDIA/k8s-device-plugin/v0.7.1/nvidia-device-plugin.yml

10、K8S检查对应节点是否有GPU资源

[root@k8s-master-17227100216 ~]# kubectl describe node node9 |grep gpugpu/type=nvidianvidia.com/gpu:     1nvidia.com/gpu:     1nvidia.com/gpu     0           0

11、部署GPU测试容器

apiVersion: v1
kind: Pod
metadata:name: cuda-vector-add
spec:restartPolicy: OnFailurecontainers:- name: cuda-vector-add#image: "k8s.gcr.io/cuda-vector-add:v0.1"image: "docker.io/nvidia/cuda:11.0.3-base-ubuntu20.04"command:- nvidia-smiresources:limits:nvidia.com/gpu: 1
http://www.dinnco.com/news/48019.html

相关文章:

  • 优化网站制作软文什么意思范例
  • 建设网站的价格表竞价托管 微竞价
  • 重庆中企动力科技股份有限公司怎么样seo咨询服务价格
  • 网站外包开发网站怎么优化seo
  • 做漫画网站桂林seo排名
  • 黄冈做网站技术支持的中山seo关键词
  • 福州网站制作专业网站数据统计
  • 做企业公示的数字证书网站百度推广收费多少
  • 网站外链发布微信seo是什么意思
  • uc做购物网站搜索引擎优化服务公司哪家好
  • dreamweaver网站怎么做app推广是什么工作
  • 海外建站推广百度软件安装
  • 金融网站可以做公安备案免费刷赞网站推广qq免费
  • 网站设计程序整站多关键词优化
  • 徐州网站制作如何定位网络推广产品要给多少钱
  • 做网络写手最好进那个网站搜索引擎在线观看
  • 做网站更新维护工资高吗网站推广seo
  • 做网站怎么宣传网店seo
  • 云服务器可以做网站吗快速排名点击工具
  • 深圳电子商务网站建设创建网站的公司
  • 手机银行下载app网站seo具体怎么做
  • 企业网站建设 安全百度关键词收录排名
  • b2b商务贸易平台全国seo搜索排名优化公司
  • 详情页模板尺寸seo营销推广
  • 厦门网站建设模拟平台百度引流推广
  • 餐饮网站做的比较好的是哪个安徽网络推广
  • 做网站有什么用出西安专业网络推广平台
  • 做暧暧视频免费网站网站建设平台
  • 门户网站 管理系统网店代运营公司哪家好
  • 游戏公司做网站app下载推广