Skip to content

Here I will be exploring various tools and methods that are used in data engineering process with Python.

License

Notifications You must be signed in to change notification settings

jeantardelli/data-engineering-with-python

Repository files navigation

Issues Forks Stars MIT License

Data Engineering w/ Python

This repo contains my code and pipelines explained on Data Engineering with Python book.

Software and Hardware List

Software required OS used
Python 3.x, Spark 3.x, Nifi 1.x, MySQL 8.0.x, Elasticsearch 7.x, Kibana 7.x, Apache Kafka 2.x Linux (any distro)

Directories

  • airflow-dag: this directory contains the airflow DAG modules used in this repo
  • great_expectations: contains all the important components of a local Great Expectation deployment
  • kafka-producer-consumer: contains modules that produce and consume Kafka topics in Python
  • load-database: this directory contains modules that load and query data from MySQL
  • load-nosql: this directory contains modules that load and query data from Elasticsearch
  • nifi-datalake: this directory contains Nifi Pipelines to simulate reading data from the datalike
  • nifi-files: this directory contains the files derived from the Nifi template pipelines
  • nifi-scanfiles: this directory contains dictionary files read by ScanContent processor (e.g. VIP)
  • nifi-scripts: this directory contains shell scripts that are used with ExecuteStreamCommand in Nifi
  • nifi-templates: this directory contains different Apache Nifi pipeline templates
  • nifi-versioning: this directory contains Nifi pipelines with version control (NiFi Regsitry)
  • pyspark: this directory contains Jupyter Notebooks that connect to PySpark data processor
  • scooter-data: this directory contains the scooter dataset and wrangling data modules (pandas)
  • sql-user: this directory contains the query to create a user and its credentials data
  • writing-reading-data: this directory contains modules that create and read fake data

Setup working environment

To setup the working environment run the command:

$ source start-working-environment

If you want to stop/kill the working environment, run the command:

$ ./stop-working-environment

Creating DB user

To create the MySQL user, run the following statement as the root user:

$ mysql -u root -p -e "SOURCE sql-user/create-user.sql"

This will also grant access to the databases used in this repo.

License

MIT

About

Here I will be exploring various tools and methods that are used in data engineering process with Python.

Topics

Resources

License

Stars

Watchers

Forks

Packages

No packages published