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Dockerized-YOLO-on-Rpi-Cluster

Developer: Yun-Chen Lo

Description

Reference Implementation of paper "Distributed Analytics in Fog Computing Platforms Using TensorFlow and Kubernetes"

The below photo is credited to the author of the paper

alt text

Dependencies

Tensorflow 1.1.1

Kubeadm 1.10.2

kubelet 1.10.2

docker 1.13.1

Folder Description

Application/yolo/

single/ //write yolo for one machine

distributed/ //break yolo into three part, which could be handled by different devices

docker-image/ //contains final distibuted yolo version and required Dockerfile

Deployment/

helmChart/yolo/ //contains params to be passed during execution and worker.yaml, master.yaml 1_node.sh 2_node.sh 3_node.sh

Rpi_ENV/

describe my steps to setup a cluster with one pc as master and several Rpis as workers

Experiment/

contains several files that I have experimented before

Results

Because I use a router shared all wifi device in my Lab, therefore the Internet Overhead is big! In the results shown above I just doubled the CPU & Memory Resources that each operator could use on the same Rpi to simulate the 2 devices speed.

References

  1. tensorflow YOLO implementation
  2. How to partition YOLO
  3. How to write Helm diagram

Special Thanks to Hua-Jun Hong's Help to this Project