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

Compare with Current View Page History

« Previous Version 52 Next »

Project Technical Lead: Wenping Ying. Elected 5/7/2019.


Project ManagerWenhui Zhang


Link to process-SC review record Graduation reviews


Blueprint species:

Use Case Attributes

Description

Informational

Type

New Blueprint for VR/AR on the Network Edge

 

Blueprint Family

Integrated Edge Cloud (IEC)

 

Use Case

Deployment of generic edge end and cloud environment for VR/AR cloud streaming

 

Blueprint proposed Name

IEC Type 4: AR/VR oriented Internet Edge Stack for Integrated Edge Cloud (IEC) Blueprint Family

 

Initial POD Cost (capex)

NVIDIA RTX GPUs, Chelsio T580-CR NICs, AMD Radeon.

less than $120k (3 nodes)

 

Scale & Type

Generic blueprint PoC:

  •   One master node and up to 5 worker nodes with mixed Linux and optional Windows OS
  •   Each worker node is x86/ARM server with nVidia RTX GPUs (Titan or GeForce TBD), AMD Radeon.

Large scale deployment:

  •  Number of worker node servers, x86/ARM server or deep edge class, is site dependent (footprint)
  •  vGPU and federation supported class, e.g. NVIDIA Tesla K80, AMD Radeon GPUs.
  •  Chelsio T580-CR NIC

 

Applications

Generic blueprint POD: Small scale cloud AR/VR rendering farm with generic SO.

Production/commercial service:

  1. Consumer applications: High performance premium gaming, 3D/Light-field video for movies, live concerts, events, LBE, etc.
  2. Enterprise applications: training/education, product design collaboration, manufacturing, maintenance, data analytical etc,

 

Power and memory restrictions

N/A

 

Infrastructure orchestration

Docker 18.09.4 or above (19.03 may be needed to run optional windows container with nVidia or AMD GPU support) and K8s 1.14.1 or above- Container Orchestration, VMWare or Openstack VM

OS - Ubuntu 18.04.2, windows server 2019

Under Cloud Orchestration - Airship v1.0 (TBD)

 

SDN

Calico and K8s, or or SR-IOV, OVS-DPDK

 

Workload Type

VR and AR applications with split rendering runtime running inside Containers or VM

 

Additional Details

The test configuration consists of 3 machines connected using Ethernet switch: a master and 2 worker nodes, each with TBD processor clocked at TBD GHz, with TBD GB of RAM and Ubuntu operating system for master, windows server 2019 or later for worker. MTU of 1450B is configured (to compensate for GTP tunnel header and to avoid fragmentation). Each windows server preconfigures with 2-3 VMs with fixed GPU allocation per VM.



Attachments:


Committer

Committer

Company

 Committer Contact Info

Committer Bio

Committer Picture

Self Nominate for PTL (Y/N)

Arm



PSU




N
Wenping YingHTCwenping_ying@htc.com

Y
Ryan AndersonIBMrranders@us.ibm.com


Vikram SiwachMobiledgeXvikram.siwach@mobiledgex.com


Kris ChaisanguanthumVisbychaisang@visby.io



Contributor

Contributor

Company

 Contributor Contact Info

Contributor Bio

Contributor Picture

Self Nominate for PTL (Y/N)

Christos Kolias

Orangechristos.kolias@orange.com


Meeting Minutes:

June 6th: June6th

June 20th: June20th

  • No labels