Best practices when using Terraform

Previously remote config allowed this but now has been replaced by "backends", so terraform remote is not anymore available.

terraform remote config -backend-config="bucket=<s3_bucket_to_store_tfstate>" -backend-config="key=terraform.tfstate" -backend=s3
terraform remote pull
terraform apply
terraform remote push

See the docs for details.


We use Terraform heavily and our recommended setup is as follows:

File layout

We highly recommend storing the Terraform code for each of your environments (e.g. stage, prod, qa) in separate sets of templates (and therefore, separate .tfstate files). This is important so that your separate environments are actually isolated from each other while making changes. Otherwise, while messing around with some code in staging, it's too easy to blow up something in prod too. See Terraform, VPC, and why you want a tfstate file per env for a colorful discussion of why.

Therefore, our typical file layout looks like this:

stage
  └ main.tf
  └ vars.tf
  └ outputs.tf
prod
  └ main.tf
  └ vars.tf
  └ outputs.tf
global
  └ main.tf
  └ vars.tf
  └ outputs.tf

All the Terraform code for the stage VPC goes into the stage folder, all the code for the prod VPC goes into the prod folder, and all the code that lives outside of a VPC (e.g. IAM users, SNS topics, S3 buckets) goes into the global folder.

Note that, by convention, we typically break our Terraform code down into 3 files:

  • vars.tf: Input variables.
  • outputs.tf: Output variables.
  • main.tf: The actual resources.

Modules

Typically, we define our infrastructure in two folders:

  1. infrastructure-modules: This folder contains small, reusable, versioned modules. Think of each module as a blueprint for how to create a single piece of infrastructure, such as a VPC or a database.
  2. infrastructure-live: This folder contains the actual live, running infrastructure, which it creates by combining the modules in infrastructure-modules. Think of the code in this folder as the actual houses you built from your blueprints.

A Terraform module is just any set of Terraform templates in a folder. For example, we might have a folder called vpc in infrastructure-modules that defines all the route tables, subnets, gateways, ACLs, etc for a single VPC:

infrastructure-modules
  └ vpc
    └ main.tf
    └ vars.tf
    └ outputs.tf

We can then use that module in infrastructure-live/stage and infrastructure-live/prod to create the stage and prod VPCs. For example, here is what infrastructure-live/stage/main.tf might look like:

module "stage_vpc" {
  source = "git::[email protected]:gruntwork-io/module-vpc.git//modules/vpc-app?ref=v0.0.4"

  vpc_name         = "stage"
  aws_region       = "us-east-1"
  num_nat_gateways = 3
  cidr_block       = "10.2.0.0/18"
}

To use a module, you use the module resource and point its source field to either a local path on your hard drive (e.g. source = "../infrastructure-modules/vpc") or, as in the example above, a Git URL (see module sources). The advantage of the Git URL is that we can specify a specific git sha1 or tag (ref=v0.0.4). Now, not only do we define our infrastructure as a bunch of small modules, but we can version those modules and carefully update or rollback as needed.

We've created a number of reusable, tested, and documented Infrastructure Packages for creating VPCs, Docker clusters, databases, and so on, and under the hood, most of them are just versioned Terraform modules.

State

When you use Terraform to create resources (e.g. EC2 instances, databases, VPCs), it records information on what it created in a .tfstate file. To make changes to those resources, everyone on your team needs access to this same .tfstate file, but you should NOT check it into Git (see here for an explanation why).

Instead, we recommend storing .tfstate files in S3 by enabling Terraform Remote State, which will automatically push/pull the latest files every time you run Terraform. Make sure to enable versioning in your S3 bucket so you can roll back to older .tfstate files in case you somehow corrupt the latest version. However, an important note: Terraform doesn't provide locking. So if two team members run terraform apply at the same time on the same .tfstate file, they may end up overwriting each other's changes.

Edit 2020: Terraform now supports locking: https://www.terraform.io/docs/state/locking.html

To solve this problem, we created an open source tool called Terragrunt, which is a thin wrapper for Terraform that uses Amazon DynamoDB to provide locking (which should be completely free for most teams). Check out Add Automatic Remote State Locking and Configuration to Terraform with Terragrunt for more info.

Further reading

We've just started a series of blog posts called A Comprehensive Guide to Terraform that describes in detail all the best practices we've learned for using Terraform in the real world.

Update: the Comprehensive Guide to Terraform blog post series got so popular that we expanded it into a book called Terraform: Up & Running!


I am also in a state of migrating existing AWS infrastructure to Terraform so shall aim to update the answer as I develop.

I have been relying heavily on the official Terraform examples and multiple trial and error to flesh out areas that I have been uncertain in.

.tfstate files

Terraform config can be used to provision many boxes on different infrastructure, each of which could have a different state. As it can also be run by multiple people this state should be in a centralised location (like S3) but not git.

This can be confirmed looking at the Terraform .gitignore.

Developer control

Our aim is to provide more control of the infrastructure to developers whilst maintaining a full audit (git log) and the ability to sanity check changes (pull requests). With that in mind the new infrastructure workflow I am aiming towards is:

  1. Base foundation of common AMI's that include reusable modules e.g. puppet.
  2. Core infrastructure provisioned by DevOps using Terraform.
  3. Developers change Terraform configuration in Git as needed (number of instances; new VPC; addition of region/availability zone etc).
  4. Git configuration pushed and a pull request submitted to be sanity checked by a member of DevOps squad.
  5. If approved, calls webhook to CI to build and deploy (unsure how to partition multiple environments at this time)

Edit 1 - Update on current state

Since starting this answer I have written a lot of TF code and feel more comfortable in our state of affairs. We have hit bugs and restrictions along the way but I accept this is a characteristic of using new, rapidly changing software.

Layout

We have a complicated AWS infrastructure with multiple VPC's each with multiple subnets. Key to easily managing this was to define a flexible taxonomy that encompasses region, environment, service and owner which we can use to organise our infrastructure code (both terraform and puppet).

Modules

Next step was to create a single git repository to store our terraform modules. Our top level dir structure for the modules looks like this:

tree -L 1 .

Result:

├── README.md
├── aws-asg
├── aws-ec2
├── aws-elb
├── aws-rds
├── aws-sg
├── aws-vpc
└── templates

Each one sets some sane defaults but exposes them as variables that can be overwritten by our "glue".

Glue

We have a second repository with our glue that makes use of the modules mentioned above. It is laid out in line with our taxonomy document:

.
├── README.md
├── clientA
│   ├── eu-west-1
│   │   └── dev
│   └── us-east-1
│       └── dev
├── clientB
│   ├── eu-west-1
│   │   ├── dev
│   │   ├── ec2-keys.tf
│   │   ├── prod
│   │   └── terraform.tfstate
│   ├── iam.tf
│   ├── terraform.tfstate
│   └── terraform.tfstate.backup
└── clientC
    ├── eu-west-1
    │   ├── aws.tf
    │   ├── dev
    │   ├── iam-roles.tf
    │   ├── ec2-keys.tf
    │   ├── prod
    │   ├── stg
    │   └── terraform.tfstate
    └── iam.tf

Inside the client level we have AWS account specific .tf files that provision global resources (like IAM roles); next is region level with EC2 SSH public keys; Finally in our environment (dev, stg, prod etc) are our VPC setups, instance creation and peering connections etc. are stored.

Side Note: As you can see I'm going against my own advice above keeping terraform.tfstate in git. This is a temporary measure until I move to S3 but suits me as I'm currently the only developer.

Next Steps

This is still a manual process and not in Jenkins yet but we're porting a rather large, complicated infrastructure and so far so good. Like I said, few bugs but going well!

Edit 2 - Changes

It's been almost a year since I wrote this initial answer and the state of both Terraform and myself have changed significantly. I am now at a new position using Terraform to manage an Azure cluster and Terraform is now v0.10.7.

State

People have repeatedly told me state should not go in Git - and they are correct. We used this as an interim measure with a two person team that relied on developer communication and discipline. With a larger, distributed team we are now fully leveraging remote state in S3 with locking provided by DynamoDB. Ideally this will be migrated to consul now it is v1.0 to cut cross cloud providers.

Modules

Previously we created and used internal modules. This is still the case but with the advent and growth of the Terraform registry we try to use these as at least a base.

File structure

The new position has a much simpler taxonomy with only two infx environments - dev and prod. Each has their own variables and outputs, reusing our modules created above. The remote_state provider also helps in sharing outputs of created resources between environments. Our scenario is subdomains in different Azure resource groups to a globally managed TLD.

├── main.tf
├── dev
│   ├── main.tf
│   ├── output.tf
│   └── variables.tf
└── prod
    ├── main.tf
    ├── output.tf
    └── variables.tf

Planning

Again with extra challenges of a distributed team, we now always save our output of the terraform plan command. We can inspect and know what will be run without the risk of some changes between the plan and apply stage (although locking helps with this). Remember to delete this plan file as it could potentially contain plain text "secret" variables.

Overall we are very happy with Terraform and continue to learn and improve with the new features added.