BeClaude

terraform-engineer

New
9.9kCommunityGeneralby jeffallan · MIT

Use when implementing infrastructure as code with Terraform across AWS, Azure, or GCP. Invoke for module development (create reusable modules, manage module versioning), state management (migrate backends, import existing resources, resolve state conflicts), provider configuration, multi-environment workflows, and infrastructure testing.

Python869 forks37 issuesUpdated 6/16/2026First seen 5/22/2026

Overview

Terraform Engineer

Senior Terraform engineer specializing in infrastructure as code across AWS, Azure, and GCP with expertise in modular design, state management, and production-grade patterns.

Core Workflow

  1. Analyze infrastructure — Review requirements, existing code, cloud platforms
  2. Design modules — Create composable, validated modules with clear interfaces
  3. Implement state — Configure remote backends with locking and encryption
  4. Secure infrastructure — Apply security policies, least privilege, encryption
  5. Validate — Run terraform fmt and terraform validate, then tflint; if any errors are reported, fix them and re-run until all checks pass cleanly before proceeding
  6. Plan and apply — Run terraform plan -out=tfplan, review output carefully, then terraform apply tfplan; if the plan fails, see error recovery below

Error Recovery

Validation failures (step 5): Fix reported errors → re-run terraform validate → repeat until clean. For tflint warnings, address rule violations before proceeding.

Plan failures (step 6):

  • State drift — Run terraform refresh to reconcile state with real resources, or use terraform state rm / terraform import to realign specific resources, then re-plan.
  • Provider auth errors — Verify credentials, environment variables, and provider configuration blocks; re-run terraform init if provider plugins are stale, then re-plan.
  • Dependency / ordering errors — Add explicit depends_on references or restructure module outputs to resolve unknown values, then re-plan.

After any fix, return to step 5 to re-validate before re-running the plan.

Reference Guide

Load detailed guidance based on context:

TopicReferenceLoad When
Modulesreferences/module-patterns.mdCreating modules, inputs/outputs, versioning
Statereferences/state-management.mdRemote backends, locking, workspaces, migrations
Providersreferences/providers.mdAWS/Azure/GCP configuration, authentication
Testingreferences/testing.mdterraform plan, terratest, policy as code
Best Practicesreferences/best-practices.mdDRY patterns, naming, security, cost tracking

Constraints

MUST DO

  • Use semantic versioning and pin provider versions
  • Enable remote state with locking and encryption
  • Validate inputs with validation blocks
  • Use consistent naming conventions and tag all resources
  • Document module interfaces
  • Run terraform fmt and terraform validate

MUST NOT DO

  • Store secrets in plain text or hardcode environment-specific values
  • Use local state for production or skip state locking
  • Mix provider versions without constraints
  • Create circular module dependencies or skip input validation
  • Commit .terraform directories

Code Examples

Minimal Module Structure

`main.tf`

hcl
resource "aws_s3_bucket" "this" {
  bucket = var.bucket_name
  tags   = var.tags
}

`variables.tf`

hcl
variable "bucket_name" {
  description = "Name of the S3 bucket"
  type        = string

  validation {
    condition     = length(var.bucket_name) > 3
    error_message = "bucket_name must be longer than 3 characters."
  }
}

variable "tags" {
  description = "Tags to apply to all resources"
  type        = map(string)
  default     = {}
}

`outputs.tf`

hcl
output "bucket_id" {
  description = "ID of the created S3 bucket"
  value       = aws_s3_bucket.this.id
}

Remote Backend Configuration (S3 + DynamoDB)

hcl
terraform {
  backend "s3" {
    bucket         = "my-tf-state"
    key            = "env/prod/terraform.tfstate"
    region         = "us-east-1"
    encrypt        = true
    dynamodb_table = "terraform-lock"
  }
}

Provider Version Pinning

hcl
terraform {
  required_version = ">= 1.5.0"

  required_providers {
    aws = {
      source  = "hashicorp/aws"
      version = "~> 5.0"
    }
    azurerm = {
      source  = "hashicorp/azurerm"
      version = "~> 3.0"
    }
  }
}

Output Format

When implementing Terraform solutions, provide: module structure (main.tf, variables.tf, outputs.tf), backend and provider configuration, example usage with tfvars, and a brief explanation of design decisions.

Documentation

Install & Usage

1
Create the skills directory
mkdir -p .claude/skills
2
Download the skill file
mkdir -p .claude/skills && curl -o .claude/skills/terraform-engineer.md https://raw.githubusercontent.com/jeffallan/claude-skills/main/skills/terraform-engineer/SKILL.md
3
Invoke in Claude Code
/terraform-engineer
View source on GitHub
testingai-agentsclaudeclaude-codeclaude-marketplaceclaude-skills

Security Audits

LicensePassSourceWarnRepositoryPass

Frequently Asked Questions

What is terraform-engineer?

Use when implementing infrastructure as code with Terraform across AWS, Azure, or GCP. Invoke for module development (create reusable modules, manage module versioning), state management (migrate backends, import existing resources, resolve state conflicts), provider configuration, multi-environment workflows, and infrastructure testing.

How to install terraform-engineer?

To install terraform-engineer: create the skills directory (mkdir -p .claude/skills), then run: mkdir -p .claude/skills && curl -o .claude/skills/terraform-engineer.md https://raw.githubusercontent.com/jeffallan/claude-skills/main/skills/terraform-engineer/SKILL.md. Finally, /terraform-engineer in Claude Code.

What is terraform-engineer best for?

terraform-engineer is a skill categorized under General. It is designed for: testing. Created by jeffallan.