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The AI Edge – School/Education Video Security Monitoring Blueprint

Project Technical Lead:  Hechun Zhang, Baidu, Elected 10/21/19


ai (1).pptx Blueprint species:

Use Case Attributes

Description

Informational

Type

New Blueprint for AI on the The AI Edge

 

Blueprint Family

Integrated Edge Cloud (IEC)New

 

Use Case

Safety, security, and surveillance

 

Blueprint proposed Name

The AI on the edgeEdge

 

Initial POD Cost (capex)

Leverage Unicycle POD - less than $150K

 

Scale & Type

up to

7

4 servers, x86/ Arm server or deep edge class

With nVIDIA Telsa P4/T4 GPUs

 

ApplicationsTraining

1. Small scale IoT data aggregation and machine learning platform

2. Small scale deep learning models

for IoT devices

training for video data

3. Model training for AcumosApps

 

Power and memory restrictionsIoT devices are power and memory constrained.

Less than 10Kw

K8s 1.12.5 or above- Container Orchestration

OS –CentOS 7.0 or above

 

Infrastructure orchestrationNeed IoT device ID correlation with deep learning model (the trained ones in binary format)

Docker 1.13.1 or above

 

SDN

Calico and K8s, and Containers serving as client/server (a database to collect raw data streams) and server/client (a database for trained models in binary format)container networking, or OVS-DPDK

 

DataplaneVPP

Workload Type

Containers

(Tensoflow, Keras containers)

  • VMs
  •  

    Additional Details

    There are mainly 4 pieces:

    1. a database to collect raw data streams
    2. tons of containers with various models on training
    3. a database for trained models in binary format, and predicted result in JSON format
    4. a database for queries records and transactions of database mentioned in 1 and 3.

    Acumos and EdgeX interfaces will be connected in this case

     



    Attachment: 

    View file
    nameThe AI Edge Blueprint-V1.2.pdf
    height250
    Akraino_Blueprint_Integrated_Edge_Cloud_AI.pptx


    ContributorSelf Nominate for PTL (Y/N)

    Committer

    Affiliation

     Committer Contact Info

    Committer Bio

    Committer Picture

    Self Nominate for PTL (Y/N)

    Hechun Zhang

    Baidu

    zhanghechun@baidu.com

    Seasoned MEC and 5G Solution Architect of Baidu, with impressive 9 years experience in ICT industry.

    Project Manager of ODCC Edge Computing Group.


    Image Added

                           Y

    Dechao KongBaidukongdechao@baidu.com


    Gang ChenBaiduchengang13@baidu.com


    Hechun ZhangZhenhua XuBaiduzhanghechun@baiduxuzhenhua02@baidu.com


    Dechao KongSiyi HeBaidukongdechao@baiduhesiyi@baidu.com


    Arm



    @Yipan DengIntelyipan.deng@intel.com


    PSU




    N
    Raviraj MahatmeArmraviraj.mahatme@arm.com



    Tiejun Chen

    Affiliation

     Committer Contact Info

    Committer Bio

    Committer Picture

    VMwaretiejunc@vmware.com