Skip to content

felipeall/streaming-video-classifier

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

39 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Streaming Video Classifier

Project to demonstrate a Kafka deployment in a local Kubernetes environment that simulates streaming videos, classifies the frames images using a machine learning model and uploads the predictions to a MongoDB collection

Technologies

  • Docker
  • Minikube
  • Kafka
  • MongoDB
  • OpenCV
  • Tensorflow

Prerequisites

  • Docker: open platform for developing, shipping, and running applications
  • Minikube: local Kubernetes, focusing on making it easy to learn and develop

Setup

  1. Clone the repository

    https://github.com/felipeall/streaming-video-classifier.git
  2. Put videos files in the following folder:

    streaming-video-classifier/apps/video-producer/videos

    Supported formats are: avi, mp4 and webm

Running

tl;dr: make run

  1. Start minikube service

    minikube start
  2. Deploy Zookeeper and Kafka Broker

    kubectl apply -f kubernetes/zookeeper.yaml
    kubectl wait $(kubectl get pods -o name) --for=condition=Ready --timeout=600s
    kubectl apply -f kubernetes/kafka-broker.yaml
  3. Deploy MongoDB

    kubectl apply -f kubernetes/mongodb.yaml
  4. Build and deploy Video Consumer

    docker build -t video-consumer -f apps/video-consumer/Dockerfile apps/video-consumer
    minikube image load video-consumer
    kubectl apply -f kubernetes/video-consumer.yaml
  5. Build and deploy Video Producer

    docker build -t video-producer -f apps/video-producer/Dockerfile apps/video-producer
    minikube image load video-producer
    kubectl apply -f kubernetes/video-producer.yaml

Validation

In order to check the output, enable MongoDB port forwarding:

make mongodb-local

And connect to the database locally via:

mongodb://localhost:27017

About

Kafka deployed locally in Kubernetes that simulates streaming videos, classifies the frames with ML and stores the predictions in MongoDB

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published