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Enjoyable terraform manipulation from python.

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Pyterraformer

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About The Project

Pyterraformer is a library for reading, modifying, and writing human readable terraform code. This is in contrast to libraries such as the excellent pyhcl2, which don't support writing back in the human format. It is similar to terraform-cdk in that it also enables directly executing terraform from python as well, but is different in that it can produce human readable code to check in. This opens up a range of options for creative developers.

Pyterraformer can be used for any of the following:

  • bulk generation of human readable terraform code
  • large scale refactoring
  • process automation, since as CI
  • accessing the power of Terraform directly from python
  • introspecting a terraform repo to collect information
  • and more!

Parsing and Modifying

Specifically, this library would enable reading this string

resource "aws_s3_bucket" "b" {
  bucket = "my-tf-test-bucket"

  tags = {
    Name = "My bucket"
    Environment = "Dev"
  }
}

into python, directly modifying the tags, and writing it back.

Let's take a look.

from pyterraformer import HumanSerializer

hs = HumanSerializer(terraform='/path/to/my/terraform/binary')

example_string:str = '''resource "aws_s3_bucket" "b" {
  bucket = "my-tf-test-bucket"
  
  tags = {
Name        = "My bucket"
    Environment = "Dev"
  }
}'''

# parse a string into a list of terraform objects
namespace = hs.parse_string(example_string)

# get the bucket from that list
bucket = namespace[0]

# modify the bucket
bucket.tags["Environment"] = "Prod"
bucket.bucket = 'my-updated-bucket'

# and write the modified namespace back
# formatting requires a valid terraform binary to be provided
updated = hs.render_object(bucket, format=True)

assert updated == '''resource "aws_s3_bucket" "b" {
  bucket = "my-updated-bucket"
  tags = {
    Name        = "My bucket"
    Environment = "Prod"
  }
}'''

Applying

If you just want to directly create/modify resources from python, you can do that too.

For example, creating or modifying GCS bucket with a local state store is as simple as the below.

import os

from pyterraformer import Terraform, TerraformWorkspace, HumanSerializer, LocalBackend
from pyterraformer.core.generics import BlockList
from pyterraformer.core.resources import ResourceObject


class GoogleStorageBucket(ResourceObject):
    """Let's define a google storge bucket resource.
    To get provider resources defined for you, check out the provider packages."""
    _type = 'google_storage_bucket'


if __name__ == "__main__":
    tf = Terraform(terraform_exec_path=r'/path/to/my/terraform/binary',
                   backend=LocalBackend(path=os.getcwd()))
    workspace = TerraformWorkspace(terraform=tf, path=os.getcwd(), serializer=HumanSerializer(terraform=tf))

    namespace = workspace.get_file_safe('resource.tf')

    namespace.add_object(GoogleStorageBucket(
        id='my-new-bucket',
        name="my-new-bucket",
        location="US-EAST1",
        project="my-project",
        force_destroy=True,
        uniform_bucket_level_access=True,
        website=BlockList([{
            'not_found_page': "404.html"
        }]),
        cors=BlockList([{
            'origin': [
                "https://readthedocs.org"],
            'method': [
                "GET",
                "HEAD",
                "PUT",
                "POST",
                "DELETE"],
            'response_header': [
                "*"],
            'max_age_seconds': 3601
        }])
    ))

    workspace.save()

    application_output = workspace.apply()

Next Steps

Read the documentation to discover more, including how to work with directories, files, apply terraform directly, and get IDE auto-completion for your favorite providers.

Project Maturity

pyterraformer is under active development; we’re still working out key workflows and best practices. While it has been used extensively in internal projects, the open-source version contains significant rewrites for improved flexibility. We’re iterating fast and are likely to introduce breaking changes to existing APIs to improve the developer experience. Feedback is appreciated.

Installation

pyterraformer is hosted on PyPI, and is installable with pip:

pip install pyterraformer

Typed classes for IDE autocomplete and validation [if available] can be installed under the package name pytf-[provider-owner]-[provider-name]

pip install pytf-hashicorp-aws

And then imported in the following way

from pyterraformer.providers.hashicorp.aws import aws_s3_bucket

Documentation

Primary documentation is on Read the Docs

Roadmap

See the open issues for a list of proposed features (and known issues).

Contributing

Contributions are what make the open source community such an amazing place to learn, inspire, and create. Any contributions you make are greatly appreciated. For detailed contributing guidelines, please see CONTRIBUTING.md

License

Distributed under the MIT License License. See LICENSE for more information.

Contact

Project Link: https://github.com/org_name/repo_name

Acknowledgements

This template adapted from https://github.com/othneildrew/Best-README-Template

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