Project 4 Cloud DevOps Nanodegree

Overview

CircleCI

Project Overview

In this project, you will apply the skills you have acquired in this course to operationalize a Machine Learning Microservice API.

You are given a pre-trained, sklearn model that has been trained to predict housing prices in Boston according to several features, such as average rooms in a home and data about highway access, teacher-to-pupil ratios, and so on. You can read more about the data, which was initially taken from Kaggle, on the data source site. This project tests your ability to operationalize a Python flask app—in a provided file, app.py—that serves out predictions (inference) about housing prices through API calls. This project could be extended to any pre-trained machine learning model, such as those for image recognition and data labeling.

Project Tasks

Your project goal is to operationalize this working, machine learning microservice using kubernetes, which is an open-source system for automating the management of containerized applications. In this project you will:

  • Test your project code using linting
  • Complete a Dockerfile to containerize this application
  • Deploy your containerized application using Docker and make a prediction
  • Improve the log statements in the source code for this application
  • Configure Kubernetes and create a Kubernetes cluster
  • Deploy a container using Kubernetes and make a prediction
  • Upload a complete Github repo with CircleCI to indicate that your code has been tested

You can find a detailed project rubric, here.

The final implementation of the project will showcase your abilities to operationalize production microservices.


Setup the Environment

  • Create a virtualenv with Python 3.7 and activate it. Refer to this link for help on specifying the Python version in the virtualenv.
python3 -m pip install --user virtualenv
# You should have Python 3.7 available in your host. 
# Check the Python path using `which python3`
# Use a command similar to this one:
python3 -m virtualenv --python=<path-to-Python3.7> .devops
source .devops/bin/activate
  • Run make install to install the necessary dependencies

Running app.py

  1. Standalone: python app.py
  2. Run in Docker: ./run_docker.sh
  3. Run in Kubernetes: ./run_kubernetes.sh

Kubernetes Steps

  • Setup and Configure Docker locally
  • Setup and Configure Kubernetes locally
  • Create Flask app in Container
  • Run via kubectl Complete the Dockerfile Specify a working directory. Copy the app.py source code to that directory Install any dependencies in requirements.txt (do not delete the commented # hadolint ignore statement). Expose a port when the container is created; port 80 is standard. Specify that the app runs at container launch.

python3 -m venv ~/.devops source ~/.devops/bin/activate $ make lint

Run a Container & Make a Prediction Build the docker image from the Dockerfile; it is recommended that you use an optional --tag parameter as described in the build documentation. List the created docker images (for logging purposes). Run the containerized Flask app; publish the container’s port (80) to a host port (8080). Run the container using the run_docker.sh script created before following the steps above: $ . ./run_docker.sh After running the container we can able to run the prediction using the make_prediction.sh script:

$ . ./make_prediction.sh

Improve Logging & Save Output Add a prediction log statement Run the container and make a prediction to check the logs $ docker ps

CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES a7d374ad73a6 api "/bin/bash" 36 minutes ago Exited (0) 28 minutes ago exciting_visvesvaraya 89fd55581a44 api "make run-app" 44 minutes ago Exited (2) 44 minutes ago brave_poitras f0b0ece5a9b5 api "make run-app" 46 minutes ago Exited (2) 46 minutes ago elated_brahmagupta a6fcd4749e44 api "make run-app" 48 minutes ago Exited (2) 48 minutes ago dreamy_agnesi

Upload the Docker Image Create a Docker Hub account Built the docker container with this command docker build --tag=<your_tag> . (Don't forget the tag name) Define a dockerpath which is <docker_hub_username>/<project_name> Authenticate and tag image Push your docker image to the dockerpath After complete all steps run the upload using the upload_docker.sh script:

$ . ./upload_docker.sh

Configure Kubernetes to Run Locally Install Kubernetes Install Minikube

Deploy with Kubernetes and Save Output Logs Define a dockerpath which will be “/path”, this should be the same name as your uploaded repository (the same as in upload_docker.sh) Run the docker container with kubectl; you’ll have to specify the container and the port List the kubernetes pods Forward the container port to a host port, using the same ports as before

After complete all steps run the kubernetes using run_kubernetes.sh script:

$ . ./run_kubernetes.sh After running the kubernete make a prediction using the make_prediction.sh script as we do in the second task.

Delete Cluster minikube delete

CircleCI Integration To create the file and folder on GitHub, click the Create new file button on the repo page and type .circleci/config.yml. You should now have in front of you a blank config.yml file in a .circleci folder.

Then you can paste the text from this yaml file into your file, and commit the change to your repository.

It may help to reference this CircleCI blog post on Github integration.

Let's Git - Version Control & Open Source Homework

Let's Git - Version Control & Open Source Homework Welcome to this homework for our MOOC: Let's Git! We hope you will learn a lot and have fun working

1 Dec 05, 2021
Docker Container wallstreetbets-sentiment-analysis

Docker Container wallstreetbets-sentiment-analysis A docker container using restful endpoints exposed on port 5000 "/analyze" to gather sentiment anal

145 Nov 22, 2022
The low-level, core functionality of boto 3.

botocore A low-level interface to a growing number of Amazon Web Services. The botocore package is the foundation for the AWS CLI as well as boto3. On

the boto project 1.2k Jan 03, 2023
Inferoxy is a service for quick deploying and using dockerized Computer Vision models.

Inferoxy is a service for quick deploying and using dockerized Computer Vision models. It's a core of EORA's Computer Vision platform Vision Hub that runs on top of AWS EKS.

94 Oct 10, 2022
MicroK8s is a small, fast, single-package Kubernetes for developers, IoT and edge.

MicroK8s The smallest, fastest Kubernetes Single-package fully conformant lightweight Kubernetes that works on 42 flavours of Linux. Perfect for: Deve

Ubuntu 7.1k Jan 08, 2023
HB Case Study

HB Case Study Envoy Proxy It is a modern Layer7(App) and Layer3(TCP) proxy Incredibly modernized version of reverse proxies like NGINX, HAProxy It is

Ilker Ispir 1 Oct 22, 2021
Wiremind Kubernetes helper

Wiremind Kubernetes helper This Python library is a high-level set of Kubernetes Helpers allowing either to manage individual standard Kubernetes cont

Wiremind 3 Oct 09, 2021
A tool to convert AWS EC2 instances back and forth between On-Demand and Spot billing models.

ec2-spot-converter This tool converts existing AWS EC2 instances back and forth between On-Demand and 'persistent' Spot billing models while preservin

jcjorel 152 Dec 29, 2022
Google Kubernetes Engine (GKE) with a Snyk Kubernetes controller installed/configured for Snyk App

Google Kubernetes Engine (GKE) with a Snyk Kubernetes controller installed/configured for Snyk App This example provisions a Google Kubernetes Engine

Pas Apicella 2 Feb 09, 2022
Copy a Kubernetes pod and run commands in its environment

copypod Utility for copying a running Kubernetes pod so you can run commands in a copy of its environment, without worrying about it the pod potential

Memrise 4 Apr 08, 2022
Emissary - open source Kubernetes-native API gateway for microservices built on the Envoy Proxy

Emissary-ingress Emissary-Ingress is an open-source Kubernetes-native API Gateway + Layer 7 load balancer + Kubernetes Ingress built on Envoy Proxy. E

Emissary Ingress 4k Dec 31, 2022
Dynamic DNS service

About nsupdate.info https://nsupdate.info is a free dynamic DNS service. nsupdate.info is also the name of the software used to implement it. If you l

nsupdate.info development 880 Jan 04, 2023
A system for managing CI data for Mozilla projects

Treeherder Description Treeherder is a reporting dashboard for Mozilla checkins. It allows users to see the results of automatic builds and their resp

Mozilla 235 Dec 22, 2022
Oracle Cloud Infrastructure Object Storage fsspec implementation

Oracle Cloud Infrastructure Object Storage fsspec implementation The Oracle Cloud Infrastructure Object Storage service is an internet-scale, high-per

Oracle 9 Dec 18, 2022
Push Container Image To Docker Registry In Python

push-container-image-to-docker-registry 概要 push-container-image-to-docker-registry は、エッジコンピューティング環境において、特定のエッジ端末上の Private Docker Registry に特定のコンテナイメー

Latona, Inc. 3 Nov 04, 2021
Glances an Eye on your system. A top/htop alternative for GNU/Linux, BSD, Mac OS and Windows operating systems.

Glances - An eye on your system Summary Glances is a cross-platform monitoring tool which aims to present a large amount of monitoring information thr

Nicolas Hennion 22k Jan 08, 2023
🐳 Docker templates for various languages.

Docker Deployment Templates One Stop repository for Docker Compose and Docker Templates for Deployment. Features Python (FastAPI, Flask) Screenshots D

CodeChef-VIT 6 Aug 28, 2022
Run your clouds in RAID.

UniKlaud Run your clouds in RAID Table of Contents About The Project Built With Getting Started Installation Usage Roadmap Contributing License Contac

3 Jan 16, 2022
Python IMDB Docker - A docker tutorial to containerize a python script.

Python_IMDB_Docker A docker tutorial to containerize a python script. Build the docker in the current directory: docker build -t python-imdb . Run the

Sarthak Babbar 1 Dec 30, 2021
CI repo for building Skia as a shared library

Automated Skia builds This repo is dedicated to building Skia binaries for use in Skija. Prebuilt binaries Prebuilt binaries can be found in releases.

Humble UI 20 Jan 06, 2023