Skip to main content

Lightweight Airflow scheduler-side pack provider for dpone GitOps workloads

Project description

dpone-airflow-pack

dpone-airflow-pack is the lightweight Airflow scheduler/webserver provider for dpone GitOps packs.

It only reads a static airflow-pack.json and builds visible Airflow/Kubernetes tasks. It does not import the full dpone runtime and intentionally contains no source/sink/native transfer dependencies such as ClickHouse, MSSQL, pyodbc, pandas, polars, or ConnectorX.

Recommended Airflow DAG import:

from dpone_airflow_pack import build_dpone_gitops_task_group_from_pack

The full dpone[full,accel] package belongs in the KPO runtime image, not in the scheduler image.

Remote pack cache

Remote airflow-pack.json artifacts can be published to object storage and mirrored into a bounded local scheduler cache.

Bootstrap one generation:

dpone-airflow-pack-sync \
  --once \
  --index-uri s3://do-dwh/dpone-artifacts/prod/airflow-dags-dev/latest/pack-index.json \
  --reader-connection-id s3_dpone_artifacts_reader \
  --cache-dir /opt/airflow/dags/.dpone-cache/airflow \
  --status-path /opt/airflow/dags/.dpone-cache/airflow/status/last-sync-status.json \
  --airflow-variable-key dpone_airflow_pack_cache_status

Refresh without restarting Airflow pods:

dpone-airflow-pack-sync \
  --watch \
  --interval-seconds 60 \
  --jitter-seconds 15 \
  --index-uri s3://do-dwh/dpone-artifacts/prod/airflow-dags-dev/latest/pack-index.json \
  --reader-connection-id s3_dpone_artifacts_reader \
  --cache-dir /opt/airflow/dags/.dpone-cache/airflow \
  --status-path /opt/airflow/dags/.dpone-cache/airflow/status/last-sync-status.json \
  --airflow-variable-key dpone_airflow_pack_cache_status

The sync loop is fail-open. On S3, connection, index, or hash errors it writes a warning status and preserves the previous current generation. DAG parse stays local and cache-only.

When --airflow-variable-key is set, the sync process also publishes the same redacted status payload into Airflow metadata. This is the recommended diagnostic channel for KubernetesExecutor deployments because runtime worker pods do not need to mount the scheduler or dagProcessor cache volume. Variable publish tries the Airflow model first and then a direct metadata DB upsert for sidecar/init contexts where Airflow 3 task SDK variables are not available. Publish failures are warnings only and never fail the Airflow pod.

Connection resolution is scheduler-side safe for Airflow 2.x and 3.x: environment connection URI first, Airflow hook second, and metadata database fallback third. The metadata fallback matters for Airflow 3 sidecar/init containers, where provider hooks may not resolve DB-backed connections outside task execution context even though the metadata row exists.

GitOps domain groups

For DAGs that should run a whole GitOps domain or a named workflow group, keep the grouping in the domain catalog and resolve it through the lightweight provider:

workflow_groups:
  daily:
    workload_ids:
      - dim_customer
      - fact_order
from dpone_airflow_pack import workload_ids_from_gitops_domain

workload_ids = workload_ids_from_gitops_domain(
    repo_root,
    "sales",
    group="daily",
)

The resolver only reads YAML files and validates that every group member exists in the same domain catalog.

Inspect the current cache status:

dpone-airflow-pack-cache-status \
  --cache-dir /opt/airflow/dags/.dpone-cache/airflow

Airflow execution policy

airflow-pack.json can carry a scheduler-side execution policy:

{
  "airflow": {
    "execution": {
      "task_executor": "KubernetesExecutor",
      "deferrable": true,
      "on_finish_action": "delete_succeeded_pod",
      "get_logs": true,
      "logging_interval_seconds": 60
    }
  }
}

The lightweight provider maps it to KubernetesPodOperator kwargs (executor, deferrable, on_finish_action, get_logs, and logging_interval) and treats those fields as pack-owned. In deferrable mode, logging_interval_seconds controls how often the task resumes to fetch fresh pod logs. DAG-local overrides may still set DAG-owned values such as retries, pool, or in_cluster.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

dpone_airflow_pack-0.66.17.tar.gz (23.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

dpone_airflow_pack-0.66.17-py3-none-any.whl (33.1 kB view details)

Uploaded Python 3

File details

Details for the file dpone_airflow_pack-0.66.17.tar.gz.

File metadata

  • Download URL: dpone_airflow_pack-0.66.17.tar.gz
  • Upload date:
  • Size: 23.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for dpone_airflow_pack-0.66.17.tar.gz
Algorithm Hash digest
SHA256 704a00d4e9b7ed777a4d596447fcd1f6288d463ebe667e3912190e37632bc30c
MD5 93d7e0899da750dcbbdd6e309294d50b
BLAKE2b-256 e3ef118a2b9c7329caceb9d69d814d2a42db4202f6e106c3ebfa77b89cd53acd

See more details on using hashes here.

File details

Details for the file dpone_airflow_pack-0.66.17-py3-none-any.whl.

File metadata

File hashes

Hashes for dpone_airflow_pack-0.66.17-py3-none-any.whl
Algorithm Hash digest
SHA256 feb6e41e875f2139281d4042d30714511deda9286ccdcc510425489466af25bf
MD5 79edfa5234cac76d0ce618d397162674
BLAKE2b-256 c44254e0f3c4771ad0b058d7abf762920f6e30d3676755609cd5e4f882b38827

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page