Generates all variables from your .tf files into a variables.tf file.

Related tags

Deep Learningtfvg
Overview

tfvg

Generates all variables from your .tf files into a variables.tf file. It searches for every var.variable_name in your .tf files and generates a variables.tf file with the following for every variable:

variable "variable_name" {
    type = 
    description = ""
    default = ""
}

It's safe to use even if you already have a variable.tf file, it will just add the ones that are not present.

USE

Just execute this script on the path of your .tf files where you want to generate your variables.tf file. If your are working in a module, then you execute it on the module path, if you are on the main directory of the terraform folder, then there.

DEPENDENCIES

  • jinja2
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