Technical Executive Summary

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Definition : Technologies of Home Edge Project

  • Technologies that compute and proceed user data in real-time by using distributed edge devices at home network.

  • BENEFIT : Reinforcement of user privacy, low latency

  • Performance examples when employing Home Edge Project technologies



Smart TV

Home Edge **



Smart TV

Home Edge **

* # of Cores

4

28

* Memory

2 GB

12 GB

Service examples

Voice recognition for device control

(Required anticipated size of ML Model : 20 MB)

Voice recognition for contents searching (e.g. media, retail, etc.)

(Required anticipated size of ML model : 100 MB)

* Given number is an example referring from the product specification available from the Market (TV, Refrigerator, Air Conditioner, Speaker, and Mobile Phone).

** It is assumed that there are 5 edge devices at home enabling the Home Edge Project technologies in this example.

Highlights : Required Technologies

  • Edge Orchestration : for deploying / searching / and managing services for distributed edge devices at home.

Key Features

Description

Key Features

Description

Edge Device / Service Discovery

Discovery on edge devices and their services (e.g. voice recognition, device control, etc.)

Resource Capability Exchange

Exchange the available (computing) resource information (e.g. CPU, GPU, NPU, Storage, type of connected devices, etc.)

Topology Decision

Decision on Master / Slave device roles, devices that are able to interoperate with cloud

Real-time Monitoring

Offers network connection status (e.g. power on / off), services based on (computing) resource at home

  • Distributed & Parallel Machine Learning : for enabling inference / model learning at home with low latency.

Key Features

Description

Key Features

Description

Data Parallelism

Distribution and Parallel ML through data partition into multiple edge devices at home

Service Parallelism

Distribution and Parallel ML through multiple services into multiple edge devices at home

Model Parallelism

Distribution and Parallel ML through knowledge model partition into multiple edge devices at home