Naming conventions
This page describes common naming conventions to keep your flows and tasks well-organized and consistent.
Namespace Naming Conventions
We recommend using the company.team naming convention for namespaces to maintain a well-organized and consistent structure across your workflows. This pattern helps in the following ways:
- Centralized governance for credentials
 - Sharing configurations across namespaces
 - Simplified Git sync
 
Why we recommend a company.team namespace structure
By having a root namespace named after your company, you can centrally govern plugin defaults, variables and secrets and share that configuration across all other namespaces under the company root.
Adhering to this naming convention also simplifies Git operations. You can maintain a single flow that synchronizes all workflows with Git across all namespaces under the parent namespace named after your company.
The next level of namespaces should be named after your team (e.g., company.team). This structure allows for centralized governance and visibility at the team level before further dividing into projects, systems, or other logical hierarchies. When syncing your code with Git, that nested structure will be reflected as nested directories in your Git repository.
Example Namespace Structure
Here is an example of how you might structure your namespaces:
mycompanymycompany.marketingmycompany.marketing.projectAmycompany.marketing.projectB
mycompany.salesmycompany.sales.projectCmycompany.sales.projectD
Should you use environment-specific namespaces?
We generally recommend against using environment-specific namespaces (e.g., dev, prod, staging) because it can lead to several issues such as:
- Dev and prod not fully separated: a development workflow running out of memory could impact the production instance.
 - Duplication of configurations: you may end up duplicating configurations across environments, which can lead to inconsistencies.
 
It's recommended to use separate Kestra instances to separate dev and prod environments.
Summary
The company.team namespace structure  will help you to facilitate a logical, easy to maintain hierarchy, and will make it easy to sync your workflows with Git. To reliably separate dev and prod environments, use separate Kestra instances or tenants.
Subscript notation and valid characters in IDs
Kestra doesn't enforce any naming convention. For example, if you want to use the URL-style naming including hyphens, Kestra supports that. However, keep in mind that IDs for flows, tasks, inputs, outputs and triggers must match the "^[a-zA-Z0-9][a-zA-Z0-9_-]*" regex pattern. This means that:
- you can't use any special characters except for hyphens 
-and underscores_ - when using hyphens, you need to follow the format 
"{{ outputs.task_id[your-custom-value].attribute }}"when referencing that ID in output expressions; the square brackets[]in[your-custom-value]is called the subscript notation and it enables using special characters such as spaces or hyphens (as in thekebab-casenotation) in task identifiers or output attributes. 
We recommend using the snake_case or camelCase conventions over the kebab-case, as they allow you to avoid the subscript notation and make your flows easier to read.
Snake case
Snake case is a common naming convention in programming. It's popular among Python developers in the data science, AI and data engineering domain.
Here is an example of a flow using the snake case convention to name IDs for flows, inputs, outputs, tasks, and triggers:
id: api_python_sql
namespace: prod.marketing.attribution
inputs:
  - id: api_endpoint
    type: URL
    defaults: https://dummyjson.com/products
tasks:
  - id: fetch_products
    type: io.kestra.plugin.core.http.Request
    uri: "{{ inputs.api_endpoint }}"
  - id: transform_in_python
    type: io.kestra.plugin.scripts.python.Script
    docker:
      image: python:slim
    beforeCommands:
      - pip install polars
    warningOnStdErr: false
    outputFiles:
      - "products.csv"
    script: |
      import polars as pl
      data = {{outputs.fetch_products.body | jq('.products') | first}}
      df = pl.from_dicts(data)
      df.glimpse()
      df.select(["brand", "price"]).write_csv("products.csv")
  - id: sql_query
    type: io.kestra.plugin.jdbc.duckdb.Query
    inputFiles:
      in.csv: "{{ outputs.transform_in_python.outputFiles['products.csv'] }}"
    sql: |
      SELECT brand, round(avg(price), 2) as avg_price
      FROM read_csv_auto('{{workingDir}}/in.csv', header=True)
      GROUP BY brand
      ORDER BY avg_price DESC;
    store: true
outputs:
  - id: final_result
    value: "{{ outputs.sql_query.uri }}"
triggers:
  - id: daily_at_9am
    type: io.kestra.plugin.core.trigger.Schedule
    cron: "0 9 * * *"
Camel case
Camel case is another common naming convention in programming. It's popular among Java and JavaScript developers. Let's look at the same flow as above, but using the camel case convention:
id: apiPythonSql
namespace: prod.marketing.attribution
inputs:
  - id: apiEndpoint
    type: URL
    defaults: https://dummyjson.com/products
tasks:
  - id: fetchProducts
    type: io.kestra.plugin.core.http.Request
    uri: "{{ inputs.apiEndpoint }}"
  - id: transformInPython
    type: io.kestra.plugin.scripts.python.Script
    docker:
      image: python:slim
    beforeCommands:
      - pip install polars
    warningOnStdErr: false
    outputFiles:
      - "products.csv"
    script: |
      import polars as pl
      data = {{outputs.fetchProducts.body | jq('.products') | first}}
      df = pl.from_dicts(data)
      df.glimpse()
      df.select(["brand", "price"]).write_csv("products.csv")
  - id: sqlQuery
    type: io.kestra.plugin.jdbc.duckdb.Query
    inputFiles:
      in.csv: "{{ outputs.transformInPython.outputFiles['products.csv'] }}"
    sql: |
      SELECT brand, round(avg(price), 2) as avgPrice
      FROM read_csv_auto('{{workingDir}}/in.csv', header=True)
      GROUP BY brand
      ORDER BY avgPrice DESC;
    store: true
outputs:
  - id: finalResult
    value: "{{ outputs.sqlQuery.uri }}"
triggers:
  - id: dailyAt9am
    type: io.kestra.plugin.core.trigger.Schedule
    cron: "0 9 * * *"
Both conventions are valid and it's up to you to choose the one you prefer.
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