airflow-new-sdk

Guide for implementing a brand-new language SDK for Airflow (AIP-108). Use this skill when a contributor wants to add support for a new programming language —…

npx skills add https://github.com/astronomer/airflow --skill airflow-new-sdk

Implementing a new language SDK for Airflow

Start here

Read contributing-docs/30_new_language_sdk.rst first. It is the authoritative contributor guide for this topic — coordinator base class choices, wire protocol spec, bundle footer format, and testing requirements. Everything in this skill builds on top of it, not alongside it.


Repository layout

Every new SDK needs two things. The coordinator (Python) goes here:

task-sdk/src/airflow/sdk/coordinators/<language>/
    __init__.py        # re-export + module docstring
    coordinator.py     # subclass of SubprocessCoordinator or BaseCoordinator
task-sdk/tests/coordinators/<language>/
    test_coordinator.py
task-sdk/tests/integration/coordinators/<language>/
    test_integration.py   # requires Breeze

The language SDK itself lives in a top-level <language>-sdk/ directory (like java-sdk/ and go-sdk/). For native-executable languages using ExecutableCoordinator, no coordinator code is needed at all.


Choosing the right base class — quick guide

Does the runtime compile to a self-contained native executable?
  YES → Use ExecutableCoordinator (zero Python to write).
        Append an AFBNDL01 footer with a packer tool (see go-sdk reference).
  NO  →
    Does it start via a single shell command (node, ruby, dotnet, …)?
      YES → Subclass SubprocessCoordinator.
            Implement _build_execute_task_command only (see 30_new_language_sdk.rst).
      NO  →
        Subclass BaseCoordinator and implement execute_task from scratch.
        (Rare: gRPC daemons, shared memory, persistent processes.)

The full rationale, method signature, and socket lifecycle for each path are in 30_new_language_sdk.rst. Read that section before writing any code.


Reference implementations to study

What to studyWhere
SubprocessCoordinator base classtask-sdk/src/airflow/sdk/coordinators/_subprocess.py
Java coordinator (SubprocessCoordinator subclass)task-sdk/src/airflow/sdk/coordinators/java/coordinator.py
ExecutableCoordinator (native bundles)task-sdk/src/airflow/sdk/coordinators/executable/coordinator.py
Wire protocol in Kotlinjava-sdk/sdk/src/main/kotlin/org/apache/airflow/sdk/execution/
Wire protocol in Gogo-sdk/pkg/execution/
AFBNDL01 footer (Go reference)go-sdk/internal/bundlefooter/, task-sdk/docs/executable-bundle-spec.rst
All message types and field specstask-sdk/src/airflow/sdk/execution_time/schema/schema.json

The Java and Go implementations are the two production reference points. When implementing a new SDK, read whichever matches the target language's runtime model (JVM/interpreted → Java; native/compiled → Go).


Logging

The Logging section of 30_new_language_sdk.rst is the spec: the --logs JSON record format, the level names, and the AIRFLOW__LOGGING__* environment variables. Read it first. A few language-neutral details it leaves out:

  • Level values. Levels follow Python's logging scale, so thresholds line up with the rest of Airflow: CRITICAL=50, ERROR=40, WARNING=30, INFO=20, DEBUG=10, NOTSET=0.
  • Parsing NAMESPACE_LEVELS. Split the value on [\s,]+, then split each item on = into (logger_name, level_name). Emit a record only when its level is >= the matching logger_name threshold, or the global threshold when no per-logger entry matches.
  • Don't drop late logs. Connect the --logs socket early and keep it open until the --comm channel has finished; otherwise records emitted during teardown can be lost.
  • Extra config keys. The runtime can't read Airflow's config, so if your SDK needs [logging] settings beyond the two above, propagate them as environment variables from your coordinator's start, the same way.

For how a given language wires its native logging frameworks into this channel, read that SDK's source (e.g. java-sdk/) rather than reproducing it here.

E2E test suite

Create two files mirroring java_sdk_tests/ or go_sdk_tests/:

airflow-e2e-tests/tests/airflow_e2e_tests/<language>_sdk_tests/
    __init__.py
    test_<language>_sdk_dag.py

The test file should:

  • Trigger the SDK's example Dag (the one added to <language>-sdk/dags/ or equivalent) via AirflowClient.trigger_dag.
  • Wait for the run to finish with AirflowClient.wait_for_dag_run.
  • Assert that each SDK task instance reached "success".
  • Assert at least one XCom value — confirms the full round-trip from task return value through the supervisor to the XCom store.
  • Assert structured logs where the SDK emits them (see the Go suite for an example of log-content assertions).

Run locally with:

E2E_TEST_MODE=<language>_sdk uv run --project airflow-e2e-tests pytest \
    tests/airflow_e2e_tests/<language>_sdk_tests/ -xvs

The Java (java_sdk_tests/test_java_sdk_dag.py) and Go (go_sdk_tests/test_go_sdk_dag.py) suites are the reference implementations.


PR checklist (items not covered by 30_new_language_sdk.rst)

The 30_new_language_sdk.rst guide covers coordinator placement, wire protocol implementation, and testing. These additional items belong in the same PR:

  1. task-sdk/src/airflow/sdk/coordinators/<language>/__init__.py — short module docstring and __all__ re-export of the coordinator class.
  2. airflow-core/docs/authoring-and-scheduling/language-sdks/<language>.rst — user-facing doc following the structure of java.rst or go.rst.
  3. airflow-core/docs/authoring-and-scheduling/language-sdks/index.rst — add the new doc to the toctree.
  4. airflow-core/newsfragments/<PR>.feature.rst — a new language is always user-visible; add a newsfragment.
  5. CI wiring — check dev/breeze/src/airflow_breeze/utils/selective_checks.py to confirm <language>-sdk/ changes trigger the right test group. Add if missing.
  6. E2E tests — add a <language>_sdk_tests/ suite under airflow-e2e-tests/tests/airflow_e2e_tests/. See below.

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