Skip to content

EmilaineBorato/optimizing_transport_public

Repository files navigation

Public Transit Status with Apache Kafka

In this project, you will construct a streaming event pipeline around Apache Kafka and its ecosystem. Using public data from the Chicago Transit Authority we will construct an event pipeline around Kafka that allows us to simulate and display the status of train lines in real time.

When the project is complete, you will be able to monitor a website to watch trains move from station to station.

Prerequisites

The following are required to complete this project:

  • Docker
  • Python 3.7
  • Access to a computer with a minimum of 16gb+ RAM and a 4-core CPU to execute the simulation

Description

The Chicago Transit Authority (CTA) has asked us to develop a dashboard displaying system status for its commuters. We have decided to use Kafka and ecosystem tools like REST Proxy and Kafka Connect to accomplish this task.

Documentation

In addition to the course content you have already reviewed, you may find the following examples and documentation helpful in completing this assignment:

Running and Testing

To run the simulation, you must first start up the Kafka ecosystem on their machine utilizing Docker Compose.

%> docker-compose up

Docker compose will take a 3-5 minutes to start, depending on your hardware. Please be patient and wait for the docker-compose logs to slow down or stop before beginning the simulation.

Once docker-compose is ready, the following services will be available:

Service Host URL Docker URL Username Password
Public Transit Status http://localhost:8888 n/a
Landoop Kafka Connect UI http://localhost:8084 http://connect-ui:8084
Landoop Kafka Topics UI http://localhost:8085 http://topics-ui:8085
Landoop Schema Registry UI http://localhost:8086 http://schema-registry-ui:8086
Kafka PLAINTEXT://localhost:9092,PLAINTEXT://localhost:9093,PLAINTEXT://localhost:9094 PLAINTEXT://kafka0:9092,PLAINTEXT://kafka1:9093,PLAINTEXT://kafka2:9094
REST Proxy http://localhost:8082 http://rest-proxy:8082/
Schema Registry http://localhost:8081 http://schema-registry:8081/
Kafka Connect http://localhost:8083 http://kafka-connect:8083
KSQL http://localhost:8088 http://ksql:8088
PostgreSQL jdbc:postgresql://localhost:5432/cta jdbc:postgresql://postgres:5432/cta cta_admin chicago

Note that to access these services from your own machine, you will always use the Host URL column.

When configuring services that run within Docker Compose, like Kafka Connect you must use the Docker URL. When you configure the JDBC Source Kafka Connector, for example, you will want to use the value from the Docker URL column.

Running the Simulation

There are two pieces to the simulation, the producer and consumer. As you develop each piece of the code, it is recommended that you only run one piece of the project at a time.

However, when you are ready to verify the end-to-end system prior to submission, it is critical that you open a terminal window for each piece and run them at the same time. If you do not run both the producer and consumer at the same time you will not be able to successfully complete the project.

To run the producer:

  1. cd producers
  2. virtualenv venv
  3. . venv/bin/activate
  4. pip install -r requirements.txt
  5. python simulation.py

Once the simulation is running, you may hit Ctrl+C at any time to exit.

To run the Faust Stream Processing Application:

  1. cd consumers
  2. virtualenv venv
  3. . venv/bin/activate
  4. pip install -r requirements.txt
  5. faust -A faust_stream worker -l info

To run the KSQL Creation Script:

  1. cd consumers
  2. virtualenv venv
  3. . venv/bin/activate
  4. pip install -r requirements.txt
  5. python ksql.py

To run the consumer:

** NOTE **: Do not run the consumer until you have reached Step 6!

  1. cd consumers
  2. virtualenv venv
  3. . venv/bin/activate
  4. pip install -r requirements.txt
  5. python server.py

Once the server is running, you may hit Ctrl+C at any time to exit.

Our architecture will look like so:

Project Architecture

About

Optimizing Transport Public the Chicago (udacity)

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published