Tag Archive for: Infrastructure as Code

Why using Infrastructure as Code for developing Cloud-based Data Warehouse Systems?

In the contemporary age of Big Data, Data Warehouse Systems and Data Science Analytics Infrastructures have become an essential component for organizations to store, analyze, and make data-driven decisions. With the evolution of cloud computing, many organizations are now migrating their Data Warehouse Systems to the cloud for better scalability, flexibility, and cost-efficiency. Infrastructure as Code (IaC) can be a game-changer in this scenario. By automating the provisioning and management of cloud resources through code, IaC brings a host of advantages to the development and maintenance of Data Warehouse Systems in the cloud.

So why using IaC for Cloud Data Infrastructures?

Of course you – as a human user – can always login into the admin portal of any cloud provider and manually get your resources like SQL databases, ETL tools, Virtual Networks and tools like Synapse, snowflake, BigQuery or Databrikcs in place by clicking on the right buttons….. But here is why you should better follow the idea of having your code explaining which resources are in what order in place in your cloud:

Version Control for your Cloud Infrastructure

One of the primary advantages of using IaC is version control for your Data Warehouse – or Data Lakehouse – Architecture. Whether you’re using Redshift, Snowflake, or any other cloud-based data warehouse solutions, you can codify your architecture settings, allowing you to track changes over time. This ensures a reliable and consistent development environment and makes it easier to identify issues, rollback updates, or replicate the architecture for other projects.

Scalability Tailored for Data Needs

Data Warehouse Systems often require to scale quickly to handle larger datasets or more queries. Traditional manual scaling methods are cumbersome and slow. IaC allows for efficient auto-scaling based on real-time needs. You can write scripts to automatically provision or de-provision resources depending on your data workloads, making your data warehouse highly adaptive to your organization’s changing requirements.

Cost-Efficiency in Resource Allocation

Cloud resources are priced based on usage, so efficient allocation is crucial for managing costs. IaC enables precise control over cloud resources, allowing you to turn them off when not in use or allocate more resources during peak times. For Data Warehouse Systems that often require powerful (and expensive) computing resources, this level of control can translate into significant cost savings.

Streamlined Collaboration Among Teams

Data Warehouse Systems in the cloud often involve cross-functional teams — data engineers, data scientists, and system administrators. IaC allows these teams to collaborate more effectively. Everyone works with the same infrastructure configurations, reducing discrepancies between development, staging, and production environments. This ensures that the data models and queries developed by data professionals are consistent with the underlying infrastructure.

Enhanced Security and Compliance

Data Warehouses often store sensitive information, making security a paramount concern. IaC allows security configurations to be codified and automated, ensuring that every new resource or service deployed complies with organizational and regulatory guidelines. This proactive security approach is particularly beneficial for industries that have to adhere to strict compliance rules like HIPAA or GDPR.

Reliable Environment for Data Operations

Manual configurations are prone to human error, which can compromise the reliability of a Data Warehouse System. IaC mitigates this risk by automating repetitive tasks, ensuring that the infrastructure is consistently provisioned. This brings reliability to data ETL (Extract, Transform, Load) processes, query performances, and other critical data operations.

Documentation and Disaster Recovery Made Easy

Data is the lifeblood of any organization, and losing it can be catastrophic. IaC allows for swift disaster recovery by codifying the entire infrastructure. If a disaster occurs, the infrastructure can be quickly recreated, reducing downtime and data loss.

Most common IaC solutions

The most common tools for creating Cloud Infrastructure as Code are probably Terraform and Pulumi. However, IaC solutions can be very different in their concepts. For example: While Terraform is a pure declarative configuration language that just describes how the infrastructure will look like (execution then by the Terraform-supporting Cloud Provider), Pulumi on the other hand will execute the deployment by a programming language iteratively deploying the wished cloud resources (e.g. using for loops in Python). While executing Pulumi in any supported programming language like Python or C#, Pulumi generates declarative Infrastructure build plans for the Cloud. Any IaC solution is declaring how the infrastrcture looks like.

Terraform

Terraform is one of the most widely used Infrastructure as Code (IaC) tools, developed by HashiCorp. It enables users to define and provision a data center infrastructure using a declarative configuration language known as HashiCorp Configuration Language (HCL).

The following Terraform script will create an Azure Resource Group, a SQL Server, and a SQL Database. It will also output the fully qualified domain name (FQDN) of the SQL Server, which you can use to connect to the database:

provider "azurerm" {
  features {}
}

resource "azurerm_resource_group" "example" {
  name     = "example-resources"
  location = "East US"
}

resource "azurerm_sql_server" "example" {
  name                         = "example-sqlserver"
  resource_group_name          = azurerm_resource_group.example.name
  location                     = azurerm_resource_group.example.location
  version                      = "12.0"
  administrator_login          = "adminUser"
  administrator_login_password = "adminPassword1234!"
}

resource "azurerm_sql_database" "example" {
  name                = "example-sqldb"
  resource_group_name = azurerm_resource_group.example.name
  server_name         = azurerm_sql_server.example.name
  location            = azurerm_resource_group.example.location
  edition             = "Basic"
}

output "sql_server_fqdn" {
  value = azurerm_sql_server.example.fully_qualified_domain_name
}

The HCL code needs to be placed into the Terrafirm main.tf file. Of course, Terraform and the Azure CLI needs to be installed before.

Pulumi

Pulumi is a modern Infrastructure as Code (IaC) tool that sets itself apart by allowing infrastructure to be defined using general-purpose programming languages like Python, TypeScript, Go, and C#.

Example of a Pulumi Python script creating a SQL Database on Microsoft Azure Cloud:

import * as pulumi from "@pulumi/pulumi";
import * as azure from "@pulumi/azure";

// Create an Azure Resource Group
const resourceGroup = new azure.core.ResourceGroup("myResourceGroup", {
    location: "EastUS",
});

// Create an Azure SQL Server
const sqlServer = new azure.sql.SqlServer("mySqlServer", {
    resourceGroupName: resourceGroup.name,
    location: resourceGroup.location,
    version: "12.0",
    administratorLogin: "adminUser",
    administratorLoginPassword: "adminPassword1234!",
});

// Create an Azure SQL Database on the SQL Server
const sqlDatabase = new azure.sql.Database("mySqlDatabase", {
    resourceGroupName: resourceGroup.name,
    serverName: sqlServer.name,
    location: resourceGroup.location,
    edition: "Basic",
});

// Export connection string for the SQL Database
export const sqlConnectionString = pulumi.all([sqlServer.name, resourceGroup.name, sqlDatabase.name]).apply(([serverName, rgName, dbName]) => {
    return `Server=tcp:${serverName}.database.windows.net;initial catalog=${dbName};user ID=adminUser;password=adminPassword1234!;Min Pool Size=0;Max Pool Size=30;Persist Security Info=true;`;
});

Running the script will need the installation of Python, Pulumi and the Azure CLI.

Cloud Provider specific IaC Solutions

Cloud providers might come up with their own IaC solutions, here are the probably most common ones:

Microsoft Azure Bicep is an open-source domain-specific language (DSL) developed by Microsoft, aimed at simplifying the process of deploying Azure resources. It serves as a declarative alternative to JSON for writing Azure Resource Manager (ARM) templates. Bicep compiles down to ARM templates, offering a more concise syntax and easier tooling while leveraging the proven, underlying ARM deployment engine.

AWS CloudFormation is a service offered by Amazon Web Services (AWS) that allows you to define cloud infrastructure in JSON or YAML templates.

Google Cloud Deployment Manager is quite similar to AWS CloudFormation but tailored for Google Cloud Platform (GCP), it allows you to define and deploy resources using YAML or Python templates.

IaC Tools for Server Configuration

There are many other IaC solutions and some of them are more focused on configuration of servers. In common they offer software provisioning as well and a lot detailing in regards to micro-configuration of single applications running on the server.

The most common IaC software for Server Configuration might be Ansible, a YAML-based configuration management tool that uses an agentless architecture. It’s easy to set up and widely used for automating tasks like software provisioning and configuration management. Puppet, Chef and SaltStack are further alternatives and master-agent architecture-based.

Other types of IaC Solutions

IaC solutions with a more narrow focus are e.g. Vagrant as a primarily used IaC tool for setting up virtual development environments, especially for the automation of VM (Virtual Machine) provisioning. The widely used Docker Compose is a tool for defining and running multi-container Docker applications, which can be defined using YAML files.

Furthermore we have tools that are working closely together with IaC tooling, e.g. Prometheus as an open-source monitoring toolkit often used in conjunction with other IaC tools for monitoring deployed resources.

Conclusion

Infrastructure as Code significantly enhances the development and maintenance of Cloud-based Data Infrastructures. From versioning your warehouse architecture and scaling resources according to real-time data needs, to facilitating team collaboration and ensuring security compliance, IaC serves as a foundational technology that brings agility, reliability, and cost-efficiency. As organizations continue to realize the importance of data-driven decision-making, leveraging IaC for cloud-based Data Warehouse Systems will likely become a best practice in data engineering and infrastructure management.

Monitoring of Jobskills with Data Engineering & AI

On own account, we from DATANOMIQ have created a web application that monitors data about job postings related to Data & AI from multiple sources (Indeed.com, Google Jobs, Stepstone.de and more).

The data is obtained from the Internet via APIs and web scraping, and the job titles and the skills listed in them are identified and extracted from them using Natural Language Processing (NLP) or more specific from Named-Entity Recognition (NER).

The skill clusters are formed via the discipline of Topic Modelling, a method from unsupervised machine learning, which show the differences in the distribution of requirements between them.

The whole web app is hosted and deployed on the Microsoft Azure Cloud via CI/CD and Infrastructure as Code (IaC).

The presentation is currently limited to the current situation on the labor market. However, we collect these over time and will make trends secure, for example how the demand for Python, SQL or specific tools such as dbt or Power BI changes.

Why we did it? It is a nice show-case many people are interested in. Over the time, it will provides you the answer on your questions related to which tool to learn! For DATANOMIQ this is a show-case of the coming Data as a Service (DaaS) Business.