Metadata-Version: 2.1
Name: openlineage-airflow
Version: 0.2.0
Summary: OpenLineage integration with Airflow
Home-page: UNKNOWN
Author: OpenLineage
License: UNKNOWN
Keywords: openlineage
Platform: UNKNOWN
Requires-Python: >=3.6
Description-Content-Type: text/markdown
Provides-Extra: tests
Provides-Extra: dev

# OpenLineage Airflow Integration

A library that integrates [Airflow `DAGs`]() with [OpenLineage](https://openlineage.io) for automatic metadata collection.

## Features

**Metadata**

* Task lifecycle
* Task parameters
* Task runs linked to **versioned** code
* Task inputs / outputs

**Lineage**

* Track inter-DAG dependencies

**Built-in**

* SQL parser
* Link to code builder (ex: **GitHub**)
* Metadata extractors

## Requirements

- [Python 3.6.0](https://www.python.org/downloads)+
- [Airflow 1.10.12+](https://pypi.org/project/apache-airflow)+

## Installation

```bash
$ pip3 install openlineage-airflow
```

> **Note:** You can also add `openlineage-airflow` to your `requirements.txt` for Airflow.

To install from source, run:

```bash
$ python3 setup.py install
```

## Configuration


### `HTTP` Backend Environment Variables

`openlineage-airflow` uses OpenLineage client to push data to OpenLineage backend.

OpenLineage client depends on environment variables:

* `OPENLINEAGE_URL` - point to service which will consume OpenLineage events
* `OPENLINEAGE_API_KEY` - set if consumer of OpenLineage events requires `Bearer` authentication key
* `OPENLINEAGE_NAMESPACE` - set if you are using something other than the `default` namespace for job namespace.

For backwards compatibility, `openlineage-airflow` also support configuration via
`MARQUEZ_URL`, `MARQUEZ_NAMESPACE` and `MARQUEZ_API_KEY` variables.

```
MARQUEZ_URL=http://my_hosted_marquez.example.com:5000
MARQUEZ_NAMESPACE=my_special_ns
```

### Extractors : Sending the correct data from your DAGs

If you do nothing, OpenLineage backend will receive the `Job` and the `Run` from your DAGs, but sources and datasets will not be sent.

`openlineage-airflow` allows you to do more than that by building "Extractors".  Extractors are in the process of changing right now, but they basically take a task and extract:

1. Name : The name of the task
2. Location : Location of the code for the task
3. Inputs : List of input datasets
4. Outputs : List of output datasets
5. Context : The Airflow context for the task

#### Great Expectations

`great_expectations` extractor requires more care than that. For technical reasons, you need to manually provide dataset
name and namespace for dataset provided to great expectations operator by calling function `openlineage.airflow.extractors.great_expectations_extractor.set_dataset_info`.

## Usage

To begin collecting Airflow DAG metadata with OpenLineage, use:

```diff
- from airflow import DAG
+ from openlineage.airflow import DAG
```

When enabled, the library will:

1. On DAG **start**, collect metadata for each task using an `Extractor` (the library defines a _default_ extractor to use otherwise)
2. Collect task input / output metadata (`source`, `schema`, etc)
3. Collect task run-level metadata (execution time, state, parameters, etc)
4. On DAG **complete**, also mark the task as _complete_ in OpenLineage

## Triggering Child Jobs
Commonly, Airflow DAGs will trigger processes on remote systems, such as an Apache Spark or Apache
Beam job. Those systems may have their own OpenLineage integration and report their own
job runs and dataset inputs/outputs. To propagate the job hierarchy, tasks must send their own run
id so that the downstream process can report the [ParentRunFacet](https://github.com/OpenLineage/OpenLineage/blob/main/spec/OpenLineage.json#/definitions/ParentRunFacet)
with the proper run id.

The `lineage_run_id` macro exists to inject the run id of a given task into the arguments sent to a
remote processing job's Airflow operator. The macro requires the DAG run_id and the task to access
the generated run id for that task. For example, a Spark job can be triggered using the
`DataProcPySparkOperator` with the correct parent run id using the following configuration:
```python
t1 = DataProcPySparkOperator(
    task_id=job_name,
    #required pyspark configuration,
    job_name=job_name,
    dataproc_pyspark_properties={
        'spark.driver.extraJavaOptions':
            f"-javaagent:{jar}={os.environ.get('OPENLINEAGE_URL')}/api/v1/namespaces/{os.getenv('OPENLINEAGE_NAMESPACE', 'default')}/jobs/{job_name}/runs/{{{{lineage_run_id(run_id, task)}}}}?api_key={os.environ.get('OPENLINEAGE_API_KEY')}"
        dag=dag)
```
## Development

To install all dependencies for _local_ development:

```bash
# Bash
$ pip3 install -e .[dev]
```
```zsh
# escape the brackets in zsh
$ pip3 install -e .\[dev\]
```

To run the entire test suite, you'll first want to initialize the Airflow database:

```bash
$ airflow initdb
```

Then, run the test suite with:

```bash
$ pytest
```


