Book Image

DevOps for Databases

By : David Jambor
Book Image

DevOps for Databases

By: David Jambor

Overview of this book

In today's rapidly evolving world of DevOps, traditional silos are a thing of the past. Database administrators are no longer the only experts; site reliability engineers (SREs) and DevOps engineers are database experts as well. This blurring of the lines has led to increased responsibilities, making members of high-performing DevOps teams responsible for end-to-end ownership. This book helps you master DevOps for databases, making it a must-have resource for achieving success in the ever-changing world of DevOps. You’ll begin by exploring real-world examples of DevOps implementation and its significance in modern data-persistent technologies, before progressing into the various types of database technologies and recognizing their strengths, weaknesses, and commonalities. As you advance, the chapters will teach you about design, implementation, testing, and operations using practical examples, as well as common design patterns, combining them with tooling, technology, and strategies for different types of data-persistent technologies. You’ll also learn how to create complex end-to-end implementation, deployment, and cloud infrastructure strategies defined as code. By the end of this book, you’ll be equipped with the knowledge and tools to design, build, and operate complex systems efficiently.
Table of Contents (24 chapters)
1
Part 1: Database DevOps
5
Part 2: Persisting Data in the Cloud
7
Chapter 5: RDBMS with DevOps
10
Part 3: The Right Tool for the Job
14
Part 4: Build and Operate
19
Part 5: The Future of Data

A deep dive into AI as a DevOps data- expert

AI services are a type of cloud service that provides access to pre-trained models and algorithms, for use in ML and other AI applications. From a DevOps and infrastructure point of view, AI services can be a powerful tool to accelerate the development and deployment of AI applications.

Here are some examples of AI services and how they can be used.

Amazon SageMaker

Amazon SageMaker is a fully managed service that provides developers and data scientists with the ability to build, train, and deploy ML models at scale.

Here is an example of using Amazon SageMaker to train an ML model:

PYTHON

import boto3
import sagemaker
# create a SageMaker session
session = sagemaker.Session()
# create an S3 bucket for storing training data
bucket_name = 'my-bucket'
bucket = session.default_bucket()
s3_input = sagemaker.s3_input(s3_data=f's3://{bucket_name}/training_data.csv', content_type='csv')
# create a...