Table of Contents
Overview
Terraform is a tool for building, changing and versioning infrastructure. It enables us to do infrastructure management and automation with code, and since Terraform can manage low-level components such as compute instances, storage, and networking, as well as high-level components like Domain Name Server (DNS) entries, Software Defined Networking (SDN) is one of the many use cases of Terraform. SDN is way much more than what we'll do today but by the end of this post we'll have a blue print of a three-tier network in AWS that we can use as a base to build on top of.
Each tier will be represented by a subnet: a public subnet and two (2) private subnets. The private subnets are meant to be used by an application layer and a database layer. The public subnet is where we'll execute our administration tasks and where all public traffic is routed to. For our admin tasks, we'll launch an EC2 instance in the public subnet and use it as a jump box to connect to an EC2 instance deployed in the application layer. This centralizes access to our private subnets and gives us ability to do system updates and debugging on instances deployed therein.
Creating a custom Virtual Private Cloud (VPC) with all of its components is one of the first things I learned to do in the AWS Console. However, it became cumbersome and time-consuming to create, update and/or destroy resources all the time because it involved a lot of point-and-click, tedious, and manual work. There are quite a few tools out there to automate this process or do infrastructure-as-code, such as the AWS Command Line Interface (CLI), the AWS Software Development Kit (SDK) and Cloud Development Kit (CDK), AWS CloudFormation, Pulumi, and others; nevertheless, I find Terraform straightforward and easy to use, it has a great community, strong ecosystem, it's open source and it's backed by HashiCorp.
Prerequisites
Dependencies
First and foremost, we'll need to have Terraform and the AWS CLI installed, as well as an active AWS account. Please refer to the official documentation to do so. Installing Terraform on Linux and macOS is easier, but if you're on Windows, I'd recommend installing Terraform using Chocolatey (because it is easier). If you can't figure it out reach out in the comments section and I'll try my best to help out.
Configuration
In a new directory, open up your favorite editor and create a file named main.tf
. In this file, let's define a couple of things we need to get started: a terraform
configuration block and a provider
configuration block. Inside the terraform
block we'll need to specify our provider requirements by using a required_providers
block. This block consists of a local name, a source location and a version constraint. Let's look at the following example.
terraform {
required_providers {
local_name = {
source = "source_name"
version = "version_constraint"
}
}
}
The above-mentioned snippet is to indicate where things go, it wouldn't work like that because we'll need to use a real provider. Since we're going to interact AWS we'll need to use an AWS provider for that. You might be wondering what a provider is (I know because I'd be too) and we'll get to that soon, but what's important here is to understand that this configuration will trigger Terraform to download and install this particular provider named hashicorp/aws
and found in the Terraform Registry.
Now that we know the required nomenclature, let's proceed with defining it.
terraform {
required_providers {
aws = {
source = "hashicorp/aws"
version = "~> 3.0"
}
}
}
Next, we'll use the provider
block to configure our AWS provider, and refer to it as "aws" because that is the name we used as the local name in the required_providers
block above. The local name is what Terraform uses as a reference to that specific provider and therefore should be unique within a module. With that being said, we're using the string "aws" because it is both a convention and the provider's preferred local name (we could have named it something else).
provider "aws" {}
Inside the provider
block we'll insert all of our module-specific configuration instructions. We can view both required and optional arguments available to the provider in reference herein. A quick scan of this document tells us that there are no required arguments; however, since some arguments are needed by the provider in order to fulfill its main responsibility of interacting with AWS on your behalf, they must be sourced from somewhere.
For instance, don't we need user credentials and a region in order to do anything within AWS? The provider will try to obtain these from their default location if not provided. Given we submit an empty aws
provider block or we don't specify access_key
and secret_key
in our configuration block, our credentials will be sourced from it's usual location ~/.aws/credentials
. However, Terraform can also source the credentials from environment ariables or shared credentials.
Although the above could work, let's be specific about the region:
provider "aws" {
region = "us-east-1"
}
We can now conclude our initial configuration phase and instruct Terraform to download and install the aws
provider, as well as any other provider needed, by issuing the following command in the terminal from the root directory of our project: $ terraform init
. This initializes a working directory containing Terraform files and it is the first command that should be run after writing a new Terraform configuration, see here.
A palpable consequence of running the init
command is the appearance of a new .terraform
folder in your root directory, in addition to a .terraform.lock.hcl
file. The .terraform
directory is a local cache used by Terraform to retain files it will need for future operations, see here. The lock file is a dependency lock file for various items cached in the aforementioned directory, see here. I'd advise to inspect the directory and files to get a sense of their contents but it's not necessary. What I'd like you to do though is take advantage of a very useful command: $ terraform fmt
; this rewrites our Terraform code in accordance to Terraform language style conventions, see here. It certainly helps tidy things up and it's good to run it as part of a Continuous Integration (CI) pipeline.
By the way, before we continue, aren't you curious to know what happens if we don't specify a required provider block? Well, Terraform would still figure out what we need to download and install because by convention the resource block, which we'll see later, start with a provider's preferred local name, i.e. aws_vpc
or aws_subnet
both start with aws
.
Our network layout
We can create a VPC by defining it ourselves from scratch using resource
blocks provided by the aws
provider or by using an available module like this one, that takes in a set of required and optional variables to create a variety of resources (infrastructure objects) typically found in a VPC, which would otherwise need to be created individually using a combination of resource
blocks. A resource
is the most important element in the Terraform language. It's equivalent to a Lego piece.
Despite the existence of community modules and taking into consideration that our goal is to have a deeper understanding of Terraform and AWS, we'll take the road less travelled approach and code everything from scratch. This will foster our appreciation of all readily available modules created by the community and give us a much needed know-how in reading documentation and tweaking configuration files to our desire.
Requirements
Most of the time we have two forms of requirements: the ones that are explicitly mentioned and the ones that are implied. In other words, if one is given a list of explicit requirements like the ones found below, one should be able to know that in order to do x we'll need y.
Explicit requirements
- The VPC should have an IPv4 CIDR block of
172.16.0.0/16
(translates to 65,356 IP addresses). - One (1) public subnet and two (2) private subnets spread out in one (1) availability zone. The public subnet's CIDR block is
172.0.1.0/24
and the private subnets' CIDR blocks are172.0.2.0/24
and172.0.3.0/24
. - One (1) EC2 instance must be deployed in the public subnet.
- One (1) EC2 instance must be deployed in the private subnet.
- Ability to connect to our EC2 instance (the jump box) in the public subnet via SSH.
- Ability to connect to our EC2 instance in the private subnet only from the jump box.
- Ability to perform updates on our instances.
- Keep costs free or as low as possible.
Implicit requirements
There are also implied requirements that weren't explicitly mentioned:
- In order to access our VPC from the internet to connect to our jump box instance we need an Internet Gateway attached to our VPC, a Route Table and Route Table Association that routes traffic between the Internet Gateway and the public subnet, and a public IP address assigned to our EC2 instance.
- In order to perform updates from within the EC2 instance deployed in the private subnet, we need to create a Network Address Translation (NAT) Gateway that'll reside in the public subnet and assign an Elastic IP (EIP) to it.
- We'll also need at least two (2) security groups assigned to our instance in the public subnet and private subnet. The former needs to allow SSH access from anywhere and the latter needs to allow SSH access from the former's Security Group. Both of the security groups in reference also need to allow outbound HTTP traffic on port 80 so we can perform updates. Note that a common characteristic of Security Groups is that they are stateful, meaning that a response to an outbound request will be allowed to enter as inbound traffic only if the request was initiated from within the Security Group in reference.
- To keep it in the free tier, our EC2 instance types will be
t2.micro
.
A Diagram of our Requirements
They say a picture is worth a thousand words, so let's use that to our advantage and create a visual representation of our requirements. I used an AWS template from Lucid Chart to do the following diagram, feel free to grab a copy of the diagram here.
VPC
Now that we're clear on what we're building, it's time to get our hands dirty. Let's start at the top with the VPC and move down gradually. We'll be hard coding some values into our resources but we'll have an opportunity to refactor later. This gives us a chance to introduce Terraform gradually and gives us additional perspective.
Terraform does a fantastic job at providing detailed documentation, so let's check out the docs for the VPC resource here. By default, all VPC's and subnets must have an IPv4 CIDR block, which is a method for allocating IP addresses introduced in 1993 by the Internet Engineering Task Force (see here). Thus, it's not a surprise that aws_vpc
's Argument Reference indicates that we are required to submit a CIDR block to create a VPC.
Let's use one of AWS' recommended IPv4 CIDR blocks for VPC and subnet sizing: 172.16.0.0/16
, which translates to 65,536 IPv4 addresses that'll be assigned to our VPC. This doesn't mean we actually have 65,536 addresses at our disposal, just 65,531. AWS will reserve the first four and last address (i.e. 172.16.0.0
, 172.16.0.1
, 172.16.0.2
, 172.16.0.3
, 172.16.0.255
). If you're somewhat confused about CIDR's, here's a CIDR to IPv4 conversion tool to the rescue.
We can create a VPC with the configuration code shown below. Notice the use of resource tags, a useful practice to assign metadata to your AWS resources. Read here for more information about tagging AWS resources.
resource "aws_vpc" "main" {
cidr_block = "172.16.0.0/16"
tags = {
Project = "sdn-tutorial"
}
}
Subnets
Now that we've defined our virtual network within AWS, let's proceed to define our public and private subnets. According to the Attribute Reference of an aws_subnet
resource, the two required arguments consist of a CIDR block, as we saw before, and the VPC id of where this subnet would be located. In addition to that, we'll go ahead and specify the availability zone as well and switch the map_public_ip_on_launch
option to true
in our public subnet. We want EC2 instances that are launched in this subnet to have a public facing IP address and for the assignment to happen automatically on launch (which is part of the reason why it is a public subnet).
resource "aws_subnet" "pub_sub" {
vpc_id = aws_vpc.main.id
cidr_block = "172.16.1.0/24"
availability_zone = "us-east-1a"
map_public_ip_on_launch = true
tags = {
Project = "sdn-tutorial"
}
}
resource "aws_subnet" "prv_sub" {
vpc_id = aws_vpc.main.id
cidr_block = "172.16.4.0/24"
availability_zone = "us-east-1a"
map_public_ip_on_launch = false
tags = {
Project = "sdn-tutorial"
}
}
Resource Graphs and Exported Attributes
Before we continue I'd like to address how the vpc_id
required by the subnet is obtained by the subnet resource because it relies on an important feature of Terraform in regards to resources: dependency graphs and exported attributes. In case you didn't know, Terraform builds a dependency graph of all our resources in order to create and modify them as efficiently as possible in a logical sequence. It does this by walking the graph in parallel using a standard depth-first traversal wherein a node is considered walked when all of it's dependencies have been seen. You don't need to know exactly how it works, but it's good to be aware of it at a high level.
The key takeaway of this is that Terraform maps out the logical inter-dependency of all our resources before it actually takes any action on them. In other words, Terraform knows that it needs to create the VPC resource first and use its exported attribute as an input to the subnet resource. There is more to know about about inputs and outputs in Terraform but we'll look at that later. The exported attributes of a resource are in the Attributes Reference section of the resource's documentation.
The Execution Plan
We've come to that point where we have enough and would like to see what actions will be taken by Terraform to create our desired infrastructure. For that to happen we can execute the following command $ terraform plan
. This is a way for us to check whether the plan matches our expectations. In this case, it'll produce an output similar to the one below.
An execution plan has been generated and is shown below.
Resource actions are indicated with the following symbols:
+ create
Terraform will perform the following actions:
# aws_subnet.prv_sub will be created
+ resource "aws_subnet" "prv_sub" {
+ arn = (known after apply)
+ assign_ipv6_address_on_creation = false
+ availability_zone = "us-east-1a"
+ availability_zone_id = (known after apply)
+ cidr_block = "172.16.4.0/24"
+ id = (known after apply)
+ ipv6_cidr_block_association_id = (known after apply)
+ map_public_ip_on_launch = false
+ owner_id = (known after apply)
+ tags = {
+ "Project" = "sdn-tutorial"
}
+ vpc_id = (known after apply)
}
# aws_subnet.pub_sub will be created
+ resource "aws_subnet" "pub_sub" {
...
}
# aws_vpc.main will be created
+ resource "aws_vpc" "main" {
...
}
Plan: 3 to add, 0 to change, 0 to destroy.
It's really interesting to observe that the first resource on the list is the last resource in our configuration. As a matter of fact, the resources are in reverse order compared to how we defined them in our file. Why do you think that is? Hint: dependency graph. Feel free to comment in the comments section.
Another thing to note are all the +
symbols indicating that the resource will be created and that the lines have been added, as opposed to deleted or modified. Reading the execution plan in reference provides a sense of reassurance that we're on the right track.
Routing
We need to build all of the plumbing in our virtual network: Internet Gateway, Route Tables and NAT Gateways. These are the main components that'll enable communication to and within our network. We'll begin with the internet gateway because it's what allows communication between our VPC and the rest of the world.
Internet Gateway
This component acts as a centralized target attached to our VPC in order to route traffic between our subnets and the internet, hence the name gateway. It also performs network address translation for instances that have been assigned a public IP address. To gain a deeper understanding of an internet gateway read here, as it's certainly helpful information on AWS internals.
Within hashicorp/aws
provider documentation we see that, like our subnets, the only required argument is vpc_id
.
resource "aws_internet_gateway" "igw" {
vpc_id = aws_vpc.main.id
tags = {
Project = "sdn-tutorial"
}
}
Public Subnet Route Tables and Associations
Route tables are used to control where network traffic is directed. Each subnet needs to be associated with a route table. A VPC comes with a main route table by default and controls the routing for all subnets that are not explicitly associated with any other route table. Since we'd like to be explicit with our associations and do not want the default behavior implied with not associating our subnet to a route table, we need to create a custom route table and a subnet route table association. This allows routing from our public subnet to our internet gateway. We can use their corresponding Terraform resources: aws_route_table
and aws_route_table_association
. Required arguments for the first is the vpc_id
and for the latter is route_table_id
.
Furthermore, since a route table is a set of rules, called routes, we'll need a rule that directs traffic from anywhere "0.0.0.0/0"
to the internet gateway. We can use the route object implemented as an attribute-as-block, which is an attribute that uses Terraform's block syntax. Many resources use this approach to manage sub-objects that are related to the primary resource.
resource "aws_route_table" "pub_rt" {
vpc_id = aws_vpc.main.id
route {
cidr_block = "0.0.0.0/0"
gateway_id = aws_internet_gateway.igw.id
}
tags = {
Project = "sdn-tutorial"
}
}
And our route table association that glues the subnet and the route table together.
resource "aws_route_table_association" "rt_assoc" {
subnet_id = aws_subnet.pub_sub.id
route_table_id = aws_route_table.pub_rt.id
}
We're done with the public subnet for now and we can move on to our private subnet's requirements. Specifically, we should only able to access the internet from within it (outbound traffic). Remember that we are not able to initiate connection from outside the VPC with our private subnet (inbound traffic), but if we want to perform updates in our instance we need to be able to talk to the outside world (outbound traffic). This is where the NAT gateway comes in.
NAT Gateway and Elastic IP
A Network Address Translation (NAT) gateway is what enables an instance in a private subnet to connect to the internet (outbound) but prevents the internet initiating a connection with it (inbound). To create it, we need to specify the public subnet in which it will reside and associate it with an Elastic IP (EIP) address.
Since the EIP is required by the NAT Gateway, let's define it first. Important to note that the order of resources in our configuration file is meaningless to Terraform, precisely because Terraform builds and walks a graph of our dependencies, as mentioned previously.
Here's the provider documentation for the EIP and NAT gateway. Notice that the required arguments for an EIP are none but we will indicate the fact that it is located in a VPC. The required arguments of a NAT gateway are allocation_id
and subnet_id
. Allocation is the EIP that is allocated to it.
resource "aws_eip" "nat_eip" {
vpc = true
tags = {
Project = "sdn-tutorial"
}
}
resource "aws_nat_gateway" "ngw" {
allocation_id = aws_eip.nat_eip.id
subnet_id = aws_subnet.pub_sub.id
tags = {
Project = "sdn-tutorial"
}
}
Private Subnet Route Tables and Associations
Now that we have our NAT gateway with an EIP assigned to it, we can define our private route table wherein there's a route that directs traffic to anywhere "0.0.0.0/0"
through the NAT gateway, as opposed to the internet gateway. This doesn't mean that the internet gateway isn't used, on the contrary, once traffic reaches the NAT gateway in the public subnet, it will abide by the rules specified in the public route table.
resource "aws_route_table" "prv_rt" {
vpc_id = aws_vpc.main.id
route {
cidr_block = "0.0.0.0/0"
nat_gateway_id = aws_nat_gateway.ngw.id
}
tags = {
Project = "sdn-tutorial"
}
}
resource "aws_route_table_association" "prv_rt_assoc" {
subnet_id = aws_subnet.prv_sub.id
route_table_id = aws_route_table.prv_rt.id
}
This concludes our plumbing work . We can now generate a new execution plan to see if it matches our expectations ($ terraform plan
). It's also a good moment to think about the work we've done because there are about 105
lines of code in one file and it's starting to get crowded. Perhaps there is a better way to organize our code.
Refactoring
Terraform is built around the concept of modules. A module is an abstraction that resembles a container for multiple resources that are used together. All of the .tf
files in your working directory form the root module. Terraform loads all of the files in your root module together when generating the execution plan or applying the execution plan. This means we can separate our code into files to achieve some sort of separation of concerns. It's be easier to find things that way. For example, it's common to have a separate file for the required providers' version specifications and the provider configurations.
# ./versions.tf
terraform {
required_version = "~> 0.14"
required_providers {
aws = {
source = "hashicorp/aws"
version = "~> 3.0"
}
}
}
# ./providers.tf
provider "aws" {
region = var.region
}
Moreover, all of the resources we've defined are functionally related to the concept of a network. If we were to carry on further with adding the rest of the remaining resources, we'll have to add things related to computing (EC2 instances) and security (security groups). So, in a way, it makes sense to organize our code into files in terms of functionality. Let's do that by creating a file named network.tf
and move over all of the resources we have in our configuration right now. We'll use this approach for the remaining components and then talk about alternatives.
Remember I stated we don't necessarily need a file named main.tf
? Well, let's find out. Delete the empty main.tf
and run terraform plan
.
Security
Our requirements state that SSH access is allowed into the instance in our public subnet and, similarly, SSH access is allowed into our instance in the private subnet, but only if it comes from the jump box. We can do this with security groups.
Security Groups
A security group is a virtual firewall around an instance or component that controls inbound and outbound traffic. We can assign security groups to an EC2 instance. Each security group is composed of rules for inbound traffic and rules for outbound traffic. Gain a deeper understanding of them here.
There are two ways you can define your security groups in Terraform. One approach is to define all ingress and egress rules within a aws_security_group
resource block. Another approach is to define both a security group and an aws_security_group_rule
which represents a single ingress or egress rule that'd otherwise be in a security group resource. I usually prefer the latter approach but you can implement it however you want.
Since we need HTTP egress traffic in all of our instances to be able to perform updates, we'll create a general security group for this. Let's also use the "description" argument to explain it.
# ./security.tf
resource "aws_security_group" "general_sg" {
description = "HTTP egress to anywhere"
vpc_id = aws_vpc.main.id
tags = {
Project = "sdn-tutorial"
}
}
resource "aws_security_group" "bastion_sg" {
description = "SSH ingress to Bastion and SSH egress to App"
vpc_id = aws_vpc.main.id
tags = {
Project = "sdn-tutorial"
}
}
resource "aws_security_group" "app_sg" {
description = "SSH ingress from Bastion and all TCP traffic ingress from ALB Security Group"
vpc_id = aws_vpc.main.id
tags = {
Project = "sdn-tutorial"
}
}
In regards to our security group rules, we have to be specific about the type of rule, i.e. ingress or egress, the origin and destination ports, the communication protocol, CIDR blocks where the traffic comes from and the security group it pertains to.
Egress rules
# ./security.tf
resource "aws_security_group_rule" "out_http" {
type = "egress"
from_port = 80
to_port = 80
protocol = "tcp"
cidr_blocks = ["0.0.0.0/0"]
security_group_id = aws_security_group.general_sg.id
}
resource "aws_security_group_rule" "out_ssh_bastion" {
type = "egress"
from_port = 22
to_port = 22
protocol = "tcp"
security_group_id = aws_security_group.bastion_sg.id
source_security_group_id = aws_security_group.app_sg.id
}
resource "aws_security_group_rule" "out_http_app" {
type = "egress"
description = "Allow TCP internet traffic egress from app layer"
from_port = 80
to_port = 80
protocol = "tcp"
cidr_blocks = ["0.0.0.0/0"]
security_group_id = aws_security_group.app_sg.id
}
Ingress rules
# security.tf
resource "aws_security_group_rule" "in_ssh_bastion_from_anywhere" {
type = "ingress"
from_port = 22
to_port = 22
protocol = "tcp"
cidr_blocks = ["0.0.0.0/0"]
security_group_id = aws_security_group.bastion_sg.id
}
resource "aws_security_group_rule" "in_ssh_app_from_bastion" {
type = "ingress"
description = "Allow SSH from a Bastion Security Group"
from_port = 22
to_port = 22
protocol = "tcp"
security_group_id = aws_security_group.app_sg.id
source_security_group_id = aws_security_group.bastion_sg.id
}
SSH Keys
To access our instances, we'll need to register a key pair consisting of a private key and a public key. The key pair is used as a set of security credentials to prove our identity when connecting to an EC2 instance. The way this works is that Amazon EC2 stores the public key and we store the private key. We can use that instead of a password and anyone with the private key can connect to the instances, so it's really important to store them in a secure place. This also means we need to perform some tasks on our end: generate a key pair, send its public key to AWS, and keep the private key in our computer in a safe place.
We'll use the hashicorp/tls
provider to generate a throwable key pair, see here. Specifically, we'll use the tls_private_key
resource to generate a 4096 bit sized RSA key.
# ./keys.tf
resource "tls_private_key" "rsa_key" {
algorithm = "RSA"
rsa_bits = 4096
}
We'll use the aws_key_pair
resource from hashicorp/aws
provider to send the public key in a file to AWS. We need to provide a key name and the contents of the public key data in a format that is compatible with Amazon EC2. One of the exported attributes from the tls_private_key
is public_key_openssh
that contains the public key data in OpenSSH authorized_keys
format, thereby complying with AWS' requirements.
# ./keys.tf
resource "aws_key_pair" "key_pair" {
key_name = "sdn_tutorial_key"
public_key = tls_private_key.rsa_key.public_key_openssh
}
We also need to generate a file that has the contents of our private key. For this, we can use the local_file
resource from the Local provider. This provider is used to manage local resources, like a file, and the local_rile
resource is used to generate a file with desired content. In addition to that, if you've used SSH before, you're aware that proper file permissions are not only required but important. Particularly, we'd like Terraform to set the proper file permissions when we create our private key file.
To put it in perspective, to connect to our instance we'll need to:
- Generate a key pair.
- Send the public key to AWS.
- Store the private key in a safe place.
- Set proper file permissions on the private key file.
- Add the key to our SSH keychain.
Since this is something we'll typically do in our shell or terminal by executing a series of commands, we can use the Terraform Provisioners, particularly the local_exec
provisioner, which executes a local executable after a resource is created by invoking a process on the machine running Terraform (see here for more information). Do note that the use of provisioners is considered to be a possible security vulnerability and therefore recommended as a practice of last resort. This is a tutorial so we'll go with it.
Another thing to bear in mind about provisioners is that by default they run when the resource they're defined in is created, but we can change it to run before the resource is destroyed. Furthermore, multiple provisioner blocks could be included in the same resource block, and if they are they'll execute in the order they were defined. In our case, the last thing we'd like to do is start the ssh-agent service and add the private key to our key chain. When we do this, the only thing we'd have to do is connect to our instance with ssh -A ec2-user@ip_address
. Yes, it saves times... try doing all of that manually every single time.
Depending on your Operating System of choice, the commands issued to set the file with user-level read-only permissions vary. In Linux or macOS this is achieved by running $ chmod 400 key_file.pem
but it's a little more verbose on Windows: $ icacls ${local.key_file} /inheritancelevel:r /grant:r johndoe:R
. Remember to replace "johndoe" with your username.
# ./keys.tf
resource "local_file" "my_key_file" {
content = tls_private_key.rsa_key.private_key_pem
filename = local.key_file
provisioner "local-exec" {
command = local.is_windows ? local.powershell : local.bash
}
provisioner "local-exec" {
command = local.is_windows ? local.powershell_ssh : local.bash_ssh
}
}
locals {
is_windows = substr(pathexpand("~"), 0, 1) == "/" ? false : true
key_file = pathexpand("~/.ssh/sdn_tutorial_key.pem")
}
locals {
bash = "chmod 400 ${local.key_file}"
bash_ssh = "eval `ssh-agent` ; ssh-add -k ${local.key_file}"
powershell = "icacls ${local.key_file} /inheritancelevel:r /grant:r johndoe:R"
powershell_ssh = "ssh-agent ; ssh-add -k ~/.ssh/sdn_tutorial_key.pem
}
There are three (3) new things in this code snippet: locals {}
, substr()
and pathexpand()
.
Locals are like a function's temporary local variable and they are helpful in avoiding repetition of the same values. According to the documentation, they are to be used in moderation and only when a single value or result is used in many places and the value is likely to be changed in the future.
The two other things are Terraform functions. These are built-in functions provided by the Terraform language. Note that Terraform does not support user-defined functions. The substr(string, offset, length)
is a String function that allows us to extract a substring from the start and end index of a string (offset and length). The pathexpand(path)
is a Filesystem function that takes a path and replaces it with the current user's home directory path. Since the first character of a user's home directory path is different in Unix vs Windows, we can use this to determine if we're on a Unix friendly OS or a Windows OS.
Generate another execution plan with terraform plan
before proceeding to know we're alright.
Compute
We're now ready to define our compute instances. First of all, we need to specify an Amazon Machine Image (AMI) because it provides the information required to launch an instance. We'll use one that is free, supported and maintained by AWS: Amzon Linux 2. We'll use a Terraform data source to fetch the ID of the Amazon Linux 2 from the AWS SSM Paremeter store.
A data source allows us to fetch or compute data elsewhere. A data source is typically provided by a provider like hashicorp/aws
; in this case, we'll use the aws_ssm_parameter
data source, see here. To figure out the path of an AMI from the SSM Paremeter Store, read this AWS article.
# ./compute.tf
data "aws_ssm_parameter" "linux_latest_ami" {
name = "/aws/service/ami-amazon-linux-latest/amzn2-ami-hvm-x86_64-gp2"
}
We can now proceed with our EC2 instance resource and insert all of the required (ami and instance type) and optional (key name, subnet id, vpc security group id) arguments.
# ./compute.tf
resource "aws_instance" "jump_box" {
ami = data.aws_ssm_parameter.linux_latest_ami.value
instance_type = "t2.micro"
key_name = "sdn_tutorial_key"
subnet_id = aws_subnet.pub_sub.id
vpc_security_group_ids = [aws_security_group.general_sg.id, aws_security_group.bastion_sg.id]
tags = {
Project = "sdn-tutorial"
}
}
resource "aws_instance" "app_instance" {
ami = data.aws_ssm_parameter.linux_latest_ami.value
instance_type = "t2.micro"
key_name = "sdn_tutorial_key"
subnet_id = aws_subnet.prv_sub.id
vpc_security_group_ids = [aws_security_group.general_sg.id, aws_security_group.app_sg.id]
tags = {
Project = "sdn-tutorial"
}
}
Apply
Let's go ahead and issue a $ terraform apply
command. This will create an execution plan first, ask for you approval, and then build all of the required infrastructure to match your desired state. Read more about it here. In case you want to issue implicit approval, use the -auto-approve
option with the command.
State Management
There's a lot to say about state management so I'll summarize the single most important thing to know for now: do not commit your .tfstate
files because they will contain sensitive information like your AWS account number and any other value you used or Terraform used to interact with the AWS API. Here's a useful site to know which files should be added to .gitignore
.
Furthermore, there are two kinds of state: local state and remote state. By default, Terraform stores state locally. When you're working alone that's kind of alright, but when you're working in a team it makes things complicated if not impossible because there's uncertainty in regards to the source of truth. With remote state, Terraform writes state data to a remote data store, which not only means you can share it with your team, but you're not keeping sensitive information in your computer.
There's a lot more to know about Terraform, but that's for another day. For now, inspect the .tfstate
files that were generated in your working directory to get a sense of the information they contain.
Destroy
When you're done checking out all your work, go ahead and destroy all of the resources with $ terraform destroy -auto-approve
. That's the beauty of infrastructure as code: create, update and destroy in a heartbeat.
Further considerations
There's a ton of stuff we left out due to time and space considerations. We'll use this space to talk about how we can improve our design. The biggest issue I have with this code is in regards to hard-coded values. What if we'd like to use a different availability zone, AMI, key name, instance type, project tag and/or CIDR block? We'll need to change all of those values in every file.
We can certainly avoid that by using Input Variables to have a file containing the variables we'd like to use in a given configuration.
Variables
Input variables allow us to provide Terraform with the values we need for a given module. In a way, variables are like function arguments. This allows for module customization, without having to alter the code, and makes our module shareable. For instance, if we'd like to customize the availability zone, we can use the following variable:
variable "az" {
description = "Availability Zone"
type = string
default = "us-east-1a"
}
This will allow us to refer to this variable as var.az
. When we include the default
parameter, it makes our variable to be considered optional and uses the default value if a variable is not provided. We can provide variables with the CLI by using the -var="NAME=VALUE"
option, in a variable definitions file that ends in .tfvars
, as environment variables, and in a Terraform Cloud Workspace.
For example, to provide the var.az
file from the CLI we could execute a plan
OR apply
command as: terraform apply -var="az=us-east-1a"
. However, as you may quickly notice, it'll be extremely inconvenient having to do this with a lot of variables. That's where variable definition files come in. We create a file named testing.tfvars
and in it define our variables (we can name it however we want but it has to end with .tfvars
).
# terraform.tfvars
az = "us-east-1a"
instance_type = "t2.micro"
key_name = "sdn_tutorial_key"
This will allow us to refactor our aws_instance
resource to:
resource "aws_instance" "jump_box" {
ami = data.aws_ssm_parameter.linux_latest_ami.value
instance_type = var.instance_type
key_name = var.key_name
# ... the rest is ommitted
}
Go ahead and refactor the rest of the code as you see fit. Please note that using variables require us to declare them first, as we did above. Typically, they are declared in a variables.tf
file in a module.
Outputs
Another thing worth talking about are output values. We have already mentioned them indirectly when referring to exported attributes in the Attributes Reference section of our resources. What's important here is that we can control and define exported values we'd like to save in order to make reference to them in another file.
For example, to connect to our EC2 instances we need the public IP address of the jump box and the private IP address of the application instance. We can get this information by being explicit about output values.
Create a file named outputs.tf
and in it write the following:
output "jump_box_ip" {
value = aws_instance.jump_box.public_ip
}
output "app_instance_ip" {
value = aws_instance.app_instance.private_ip
}
output "ssh_key_path" {
value = local_file.my_key_file.filename
}
The above-mentioned output values will be the last thing you see in your terminal after a terraform apply
. Go ahead and try it.
Modules
We briefly talked about modules when describing how Terraform loads all of the files in your working directory and that all these files were considered the root module. This is the essence of the idea, but Terraform allows us to take this even further with the use of module
blocks. If all files from a working directory are loaded into a root module, we can create directories and group infrastructure objects that are related to each other but different from the rest. We can then call other modules by using the module
keyword.
At the moment, we have a flat structure with all files in one (1) module. We did separate things by function to its own file but we can use the same idea and create a working directory for ./modules/compute
or ./modules/network
. This way our root module can call the compute module.
For example, if we go back to the idea of having a main file called main.tf
, we could have the following:
module "compute" {
source = "./modules/compute"
pub_sub_id = aws_subnet.pub_sub.id
bastion_sg_ids = [aws_security_group.general_sg.id, aws_security_group.bastion_sg.id]
app_sg_ids = [aws_security_group.general_sg.id, aws_security_group.app_sg.id]
}
We'll have to provide the values needed by all of the compute resources in someway, and this might not be the best way to do that, but it's enough to get started with the idea. However, doing this would imply creating a variables.tf
file in the root of the ./modules/compute
directory wherein you'd define all of the required variables mentioned above, except the source (pub_sub_id
, bastion_sg_ids
and app_sg_ids
).
# ./modules/compute/variables.tf
variable "pub_sub_id" {
type = string
}
variable "bastion_sg_ids" {
type = list
}
variable "app_sg_ids" {
type = list
}
This would also imply a refactor of our ./outputs.tf
because the values declared therein have moved to another location.
# ./outputs.tf
output "jump_box_ip" {
value = module.compute.jump_box_ip
}
output "app_instance_ip" {
value = module.compute.private_ip
}
output "ssh_key_path" {
value = local_file.my_key_file.filename
}
This also means we need to make sure our compute module is exporting output values, otherwise there'll be nothing to bubble up.
# ./modules/compute/outputs.tf
output "jump_box_ip" {
value = aws_instance.jump_box.public_ip
}
output "app_instance_ip" {
value = aws_instance.app_instance.private_ip
}
By the way, why do you think I said bubble up when making reference to the use of output values from a nested module by the root module? Hint: dependency graph.
Further reading
There are a ton of people and companies pumping Terraform tools into the ecosystem. There are many but I think of Cloude Posse, Truss and Gruntwork as some folks you can turn to inspiration. There's something for about everything you can think of in their GitHub repositories. Okay, except Terraforming Mars, we're not there yet.
If you're into courses and books, I learned a lot from a proyect-based course by Lionel Pulickal, titled Automating Infrastructure for an E-commerce Website with Terraform and AWS, and from a book titled Terraform in Action by Scott Winkler. The course was a huge inspiration in writing this article. I put in a lot of work researching all of the required topics in order to complete it. It also motivated me to get certified as a HashiCorp: Terraform Associate.
A link to the GitHub repository can be found here, but it does not include any of the refactoring exercises because that's on you to pull off and consider. Plus, it isn't that big yet, and a flat module structure works fine for now.
Feel free to comment, critique, ask questions or tell me about how you would have done something differently.
All the best, and until next time!
Top comments (4)
An article with great structured information..
Thanks Saravanan! I see you have written several articles yourself. I've added them to my reading list this week.
All the best,
Adriaan
Very insightful article
I'm glad you thought so, thanks.