Diagram-as-Code: Creating Dynamic and Interactive Documentation for Visual Content
In this article, I will guide you step by step to create dynamic and interactive visual documentation using Diagram-as-Code tools. Instead of static images, we will generate diagrams programmatically, ensuring they are always up-to-date and easy to maintain.
🎨 Diagram as code
Diagram as Code is an approach that allows you to create diagrams through code instead of traditional graphic tools. Instead of manually building diagrams, you can write code in a text file to define the structure, components, and connections of your diagrams.
This code is then translated into graphical images, making it easier to integrate and document in software projects, where it is especially useful for creating and updating architectural and flow diagrams programmatically.
What is Diagrams?
Diagrams is a 🐍Python library that implements the Diagram as Code approach, enabling you to create architectural infrastructure diagrams and other types of diagrams through code. With Diagrams, you can easily define cloud infrastructure components (such as AWS
, Azure
, and GCP
), network elements, software services, and more, all with just a few lines of code.
🎉 Benefits of Diagram-as-Code
- 📝 Representation of Diagrams as Code: Create and update diagrams directly from code, ensuring maintainability in agile projects.
- 📑 Automated Documentation: Generate visuals from code, keeping diagrams aligned with the current architecture.
- 🔄 Change Control: Track diagram modifications over time.
- 🔍 Enhanced Clarity: Improve understanding of complex systems with clear, shared visuals.
- ✏️ Customizable: Represent cloud infrastructures, workflows, or data pipelines with flexible and tailored visuals.
Tutorial
🐍 Library Installation
I was currently using version '0.23.4'
for this tutorial.
!pip install diagrams=='0.23.4'
🎨 Diagrams: Nodes
The library allows you to create architectural diagrams programmatically, using nodes to represent different infrastructure components and services.
Node Types
Nodes in Diagrams represent components from different cloud service providers as well as other architectural elements. Here are the main categories of available nodes:
- ☁️ Cloud Providers: AWS (Amazon Web Services), Azure, GCP, IBM Cloud, Alibaba Cloud, Oracle Cloud, DigitalOcean, among others.
- 🏢 On-Premise: Represents the infrastructure physically located on the company's premises.
- 🚢 Kubernetes (K8S): Container orchestration system to automate the deployment, scaling, and management of containerized applications (represented by a ship's wheel, symbolizing control and navigation).
- 🖥️ OpenStack: Open-source software platform for creating and managing public and private clouds.
- 🔧 Generic: Generic nodes that can represent any component not specifically covered by provider-specific nodes (crossed tools, representing different tools in one category).
- ☁️ SaaS (Software as a Service): Represents applications delivered as a service over the internet, such as Snowflake, chat services (Slack, Teams, Telegram, among others), security (e.g., Okta), or social networks (crossed out phone and cloud for the SaaS concept).
- 🔧 Custom: Allows users to customize their diagrams using PNG icons stored in a specific folder. This is useful for representing infrastructure components not covered by the default nodes (crossed-out custom tools).
💻 Programming Languages
The Diagrams library allows you to use different nodes to represent various programming languages. These nodes are helpful for indicating in your diagrams if any part of your architecture utilizes scripts or components developed in a specific programming language.
Below, we will showcase all the available languages in the library. If any language is missing, you can add custom nodes by uploading the corresponding logo into a specific folder.
# Create the diagram object
with diagrams.Diagram("Programming Languages", show=False, filename="languages"):
# Get all the languages available in this library
languages = [item for item in dir(diagrams.programming.language) if item[0] != '_']
# Divide the representation in two lines
mid_index = len(languages) // 2
first_line = languages[:mid_index]
second_line = languages[mid_index:]
# Add nodes in the first row
prev_node = None
for language in first_line:
current_node = eval(f"diagrams.programming.language.{language}(language)")
if prev_node is not None:
prev_node >> current_node
prev_node = current_node
# Add nodes in the second row
prev_node = None
for language in second_line:
current_node = eval(f"diagrams.programming.language.{language}(language)")
if prev_node is not None:
prev_node >> current_node
prev_node = current_node
Image("languages.png")
☁️ AWS (Amazon Web Services)
We can use Amazon nodes, which are organized into several categories, such as:
- Analytics and Business: aws.analytics, aws.business
- Compute and Storage: aws.compute, aws.storage, aws.cost
- Database and DevTools: aws.database, aws.devtools
- Integration and Management: aws.integration, aws.management
- Machine Learning and Mobile: aws.ml, aws.mobile
- Networking and Security: aws.network, aws.security
- Others: aws.blockchain, aws.enduser, aws.engagement, aws.game, aws.general, aws.iot, aws.media, aws.migration, aws.quantum, aws.robotics, aws.satellite
Next, we will represent one of these categories to visualize the available nodes within aws.database
.
from diagrams import Diagram
from IPython.display import Image
import diagrams.aws.database as aws_database
database_components = []
for item in dir(aws_database):
if item[0] != '_':
if not any(comp.startswith(item) or item.startswith(comp) for comp in database_components):
database_components.append(item)
with Diagram("AWS Database", show=False, filename="aws_database"):
mid_index = len(database_components) // 2
first_line = database_components[:mid_index]
second_line = database_components[mid_index:]
prev_node = None
for item_database in first_line:
current_node = eval(f"aws_database.{item_database}(item_database)")
if prev_node is not None:
prev_node >> current_node
prev_node = current_node
prev_node = None
for item_database in second_line:
current_node = eval(f"aws_database.{item_database}(item_database)")
if prev_node is not None:
prev_node >> current_node
prev_node = current_node
Image("aws_database.png")
☁️ Use Case
Now, let's create a simple blueprint that corresponds to importing a dataset and training a machine learning model on AWS.
from diagrams import Diagram, Cluster
from diagrams.aws.storage import S3
from diagrams.aws.analytics import Glue, Athena
import diagrams.aws.ml as ml
from diagrams.aws.integration import StepFunctions
from diagrams.aws.compute import Lambda
from diagrams.aws.network import APIGateway
from IPython.display import Image
with Diagram("AWS Data Processing Pipeline", show=False):
lambda_raw = Lambda('Get Raw Data')
# Buckets de S3
with Cluster("Data Lake"):
s3_rawData = S3("raw_data")
s3_stage = S3("staging_data")
s3_data_capture = S3("data_capture")
athena = Athena("Athena")
s3_rawData >> athena
s3_stage >> athena
s3_data_capture >> athena
# Step Functions Pipeline
with Cluster("Data Processing Pipeline"):
step_functions = StepFunctions("Pipeline")
# Glue Jobs in Step Functions
with Cluster("Glue Jobs"):
data_quality = Glue("job_data_quality")
transform = Glue("job_data_transform")
dataset_preparation = Glue("job_dataset_model")
# Define Step Functions Flows
step_functions >> data_quality >> transform >> dataset_preparation
s3_rawData >> data_quality
# SageMaker for model training and deployment
with Cluster("SageMaker Model Deployment"):
train_model = ml.SagemakerTrainingJob("job_train_model")
eval_model = ml.SagemakerGroundTruth("job_evaluate_model")
endpoint = ml.SagemakerModel("model_enpoint")
# API Gateway and Lambda for the endpoint
api_gateway = APIGateway("API_gateway")
lambda_fn = Lambda("invoke_endpoint")
# Connection
lambda_raw >> s3_rawData
s3_stage >> train_model >> eval_model >> endpoint
endpoint >> lambda_fn >> api_gateway
endpoint >> s3_data_capture
dataset_preparation >> train_model
Image("aws_data_processing_pipeline.png")
Repository
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A tutorial on how to create a documentation project using the 'Doc as diagram' methodology
🎨 Diagram-as-Code: Creating Dynamic and Interactive Documentation for Visual Content
Diagram as Code is an approach that allows you to create diagrams through code instead of traditional graphic tools. Instead of manually building diagrams, you can write code in a text file to define the structure, components, and connections of your diagrams.
This code is then translated into graphical images, making it easier to integrate and document in software projects, where it is especially useful for creating and updating architectural and flow diagrams programmatically.
What is Diagrams?
Diagrams is a 🐍Python library that implements the Diagram as Code approach, enabling you to create architectural infrastructure diagrams and other types of diagrams through code. With Diagrams, you can easily define cloud infrastructure components (such as AWS
, Azure
, and GCP
), network elements, software services, and more, all with just a few lines of code.
🎉 Benefits of Diagram-as-Code
- 📝…
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