Skip to end of metadata
Go to start of metadata

You are viewing an old version of this page. View the current version.

Compare with Current View Page History

« Previous Version 29 Current »

BP State: Incubation BP. It has already been approved and voted by Akraino TSC Incubation Review at TSC 2022-06-28 (Tuesday) 7:00 am Pacific - Akraino - Akraino Confluence .


Use case

Attributes

Description

Informational

Type

New 


Industry Sector

V2X、artificial Intelligence app、enterprise OA


Business driver

Real World needs:

-92 percent of respondents reported having a multi-cloud strategy* and has multi cloud vendors.

-Hybrid cloud management including public cloud, on premise and edge cloud.

-Multi-cluster deployment strategy to achieve high availability.

-Disaster recovery scenario. The application system is usually deployed in the geo-redundant mode.

-...


Business use cases

According to the CFN  Ubiquitous Computing Force Scheduling, the computing force of public cloud, edge cloud and external third parties is managed to achieve consistent cluster, policy, configuration and traffic management, and to achieve resource-level and task-level scheduling.

* Ubiquitous Computing Force concept:Logically, the computing force is more three-dimensional, including three levels: center, edge and terminal. Physically, resources span data centers in different regions. The kernel is heterogeneous, including general computing force ( x86/ARM ) and special computing force ( GPU/DPU... ).


Business Cost - Initial Build Cost Target Objective

Set up the infrastructure environment preparation to achieve multiple clusters management. Multi Cloud environment should be deployed in more than 3 servers in a single rack at a low cost.


Business Cost – Target Operational Objective

Build the Ubiquitous Computing Force Scheduling BP which includes:

-Set up the infrastructure environment to achieve multiple clusters management, and expand cluster from central cloud to edge cloud;

-Scheduling mechanism based on cloud-edge collaboration, such as traffic governance and scheduling across nodes;

-The management and monitoring of cloud and edge clusters;

-Enrich scheduling strategy;(such as latency, task type, etc.)


Security need

N/A


Regulations

N/A


Other restrictions

N/A


Additional details

N/A

more details see the attachment please

Blueprint Species:

Case Attributes

Description

Informational

Type

New


Blueprint Family - Proposed   Name

CFN (Computing Force Network) family


Use Case

XR, Video Streaming, V2X,Ubiquitous Computing Force Scheduling


Blueprint proposed Name

CFN (Computing Force Network) Ubiquitous Computing Force Scheduling


Initial POD Cost (capex)

At least 10 virtual machines, depends on deployment scale


Scale & Type

For large deployments, this could span to large number of virtual machines.


Applications

XR, Video Streaming, V2X(to be discussed)

Power Restrictions

N/A


Infrastructure orchestration

Upstream: Docker/K8s - Container  Orchestration


Upstream Project:

-Karmada: https://github.com/karmada-io/karmada

-Kurator: https://github.com/kurator-dev/kurator


OS - Linux, such as Ubuntu


SDN

N/A


Workload Type

container


Additional Details

N/A




Committer

Committer

Company

 Committer Contact Info

Committer Bio

Committer Picture

 PTL

Hanyu Ding
China Mobiledinghanyu0502@hotmail.com

Kevin WangHuaweiwangzefeng@huawei.com


Yanjun ChenChina Mobilechenyanjunyjy@chinamobile.com


Lei ShiChina Mobileshileiyj@chinamobile.com


Pengxiang ChenChina Mobilechenpengxiang@chinamobile.com


Fanqin ZhouBUPTfqzhou2012@bupt.edu.cn


Baohong Ma MIGUmabaohong@migu.cn


Guangming Wang MIGUwangguangming@migu.cn


Zhonghu XuHuaweixuzhonghu@huawei.com 


Jianpeng He
hejianpeng2@huawei.com


Mengxuan Li4Paradigm










Contributor

Contributor

Company

 Contributor Contact Info

Contributor Bio

Contributor Picture




















  • No labels