Book Image

Modern Data Architectures with Python

By : Brian Lipp
3 (1)
Book Image

Modern Data Architectures with Python

3 (1)
By: Brian Lipp

Overview of this book

Modern Data Architectures with Python will teach you how to seamlessly incorporate your machine learning and data science work streams into your open data platforms. You’ll learn how to take your data and create open lakehouses that work with any technology using tried-and-true techniques, including the medallion architecture and Delta Lake. Starting with the fundamentals, this book will help you build pipelines on Databricks, an open data platform, using SQL and Python. You’ll gain an understanding of notebooks and applications written in Python using standard software engineering tools such as git, pre-commit, Jenkins, and Github. Next, you’ll delve into streaming and batch-based data processing using Apache Spark and Confluent Kafka. As you advance, you’ll learn how to deploy your resources using infrastructure as code and how to automate your workflows and code development. Since any data platform's ability to handle and work with AI and ML is a vital component, you’ll also explore the basics of ML and how to work with modern MLOps tooling. Finally, you’ll get hands-on experience with Apache Spark, one of the key data technologies in today’s market. By the end of this book, you’ll have amassed a wealth of practical and theoretical knowledge to build, manage, orchestrate, and architect your data ecosystems.
Table of Contents (19 chapters)
1
Part 1:Fundamental Data Knowledge
4
Part 2: Data Engineering Toolset
8
Part 3:Modernizing the Data Platform
13
Part 4:Hands-on Project

Introduction to machine learning

ML is a discipline that heavily correlates with the discipline of statistics. We will go through the basics of ML at a high level so that we can appreciate the tooling mentioned later in this chapter.

Understanding data

ML is the process of using some type of learning algorithm on a set of historical data to predict things that are unknown, such as image recognition and future event forecasting, to name a few. When you’re feeding data into your ML model, you will use features. A feature is just another term for data. Data is the oil that runs ML, so we will talk about that first.

Types of data

Data can come in two forms:

  • Quantitative data: Quantitative data is data that can be boxed in and measured. Data such as age and height are good examples of quantitative data. Quantitative data can come in two flavors: discrete and continuous. Discrete data is data that is countable and finite or has a limited range of values. An example...