Modules Management¶
Airflow allows you to use your own Python modules in the DAG and in the Airflow configuration. The following article will describe how you can create your own module so that Airflow can load it correctly, as well as diagnose problems when modules are not loaded properly.
Often you want to use your own python code in your Airflow deployment, for example common code, libraries, you might want to generate DAGs using shared python code and have several DAG python files.
You can do it in one of those ways:
add your modules to one of the folders that Airflow automatically adds to
PYTHONPATH
add extra folders where you keep your code to
PYTHONPATH
package your code into a Python package and install it together with Airflow.
The next chapter has a general description of how Python loads packages and modules, and dives deeper into the specifics of each of the three possibilities above.
How package/modules loading in Python works¶
The list of directories from which Python tries to load the module is given
by the variable sys.path
. Python really tries to
intelligently determine the contents of
of this variable, including depending on the operating system and how Python
is installed and which Python version is used.
You can check the contents of this variable for the current Python environment by running an interactive terminal as in the example below:
>>> import sys
>>> from pprint import pprint
>>> pprint(sys.path)
['',
'/home/arch/.pyenv/versions/3.7.4/lib/python37.zip',
'/home/arch/.pyenv/versions/3.7.4/lib/python3.7',
'/home/arch/.pyenv/versions/3.7.4/lib/python3.7/lib-dynload',
'/home/arch/venvs/airflow/lib/python3.7/site-packages']
sys.path
is initialized during program startup. The first precedence is
given to the current directory, i.e, path[0]
is the directory containing
the current script that was used to invoke or an empty string in case it was
an interactive shell. Second precedence is given to the PYTHONPATH
if provided,
followed by installation-dependent default paths which is managed by
site module.
sys.path
can also be modified during a Python session by simply using append
(for example, sys.path.append("/path/to/custom/package")
). Python will start
searching for packages in the newer paths once they're added. Airflow makes use
of this feature as described in the section
Adding directories to the PYTHONPATH.
In the variable sys.path
there is a directory site-packages
which
contains the installed external packages, which means you can install
packages with pip
or anaconda
and you can use them in Airflow.
In the next section, you will learn how to create your own simple
installable package and how to specify additional directories to be added
to sys.path
using the environment variable PYTHONPATH
.
Also make sure to Add init file to your folders.
Typical structure of packages¶
This is an example structure that you might have in your dags
folder:
<DIRECTORY ON PYTHONPATH>
| .airflowignore -- only needed in ``dags`` folder, see below
| -- my_company
| __init__.py
| common_package
| | __init__.py
| | common_module.py
| | subpackage
| | __init__.py
| | subpackaged_util_module.py
|
| my_custom_dags
| __init__.py
| my_dag_1.py
| my_dag_2.py
| base_dag.py
In the case above, there are the ways you could import the python files:
from my_company.common_package.common_module import SomeClass
from my_company.common_package.subpackge.subpackaged_util_module import AnotherClass
from my_company.my_custom_dags.base_dag import BaseDag
You can see the .ariflowignore
file at the root of your folder. This is a file that you can put in your
dags
folder to tell Airflow which files from the folder should be ignored when the Airflow
scheduler looks for DAGs. It should contain regular expressions for the paths that should be ignored. You
do not need to have that file in any other folder in PYTHONPATH
(and also you can only keep
shared code in the other folders, not the actual DAGs).
In the example above the dags are only in my_custom_dags
folder, the common_package
should not be
scanned by scheduler when searching for DAGS, so we should ignore common_package
folder. You also
want to ignore the base_dag
if you keep a base DAG there that my_dag1.py
and my_dag1.py
derives
from. Your .airflowignore
should look then like this:
my_company/common_package/.*
my_company/my_custom_dags/base_dag\.py
Built-in PYTHONPATH
entries in Airflow¶
Airflow, when running dynamically adds three directories to the sys.path
:
The
dags
folder: It is configured with optiondags_folder
in section[core]
.The
config
folder: It is configured by settingAIRFLOW_HOME
variable ({AIRFLOW_HOME}/config
) by default.The
plugins
Folder: It is configured with optionplugins_folder
in section[core]
.
Note
The DAGS folder in Airflow 2 should not be shared with the webserver. While you can do it, unlike in Airflow 1.10,
Airflow has no expectations that the DAGS folder is present in the webserver. In fact it's a bit of
security risk to share the dags
folder with the webserver, because it means that people who write DAGS
can write code that the webserver will be able to execute (ideally the webserver should
never run code which can be modified by users who write DAGs). Therefore if you need to share some code
with the webserver, it is highly recommended that you share it via config
or plugins
folder or
via installed airflow packages (see below). Those folders are usually managed and accessible by different
users (Admins/DevOps) than DAG folders (those are usually data-scientists), so they are considered
as safe because they are part of configuration of the Airflow installation and controlled by the
people managing the installation.
Best practices for module loading¶
There are a few gotchas you should be careful about when you import your code.
Use unique top package name¶
It is recommended that you always put your dags/common files in a subpackage which is unique to your
deployment (my_company
in the example below). It is far too easy to use generic names for the
folders that will clash with other packages already present in the system. For example if you
create airflow/operators
subfolder it will not be accessible because Airflow already has a package
named airflow.operators
and it will look there when importing from airflow.operators
.
Don't use relative imports¶
Never use relative imports (starting with .
) that were added in Python 3.
This is tempting to do something like that it in my_dag1.py
:
from .base_dag import BaseDag # NEVER DO THAT!!!!
You should import such shared dag using full path (starting from the directory which is added to
PYTHONPATH
):
from my_company.my_custom_dags.base_dag import BaseDag # This is cool
The relative imports are counter-intuitive, and depending on how you start your python code, they can behave differently. In Airflow the same DAG file might be parsed in different contexts (by schedulers, by workers or during tests) and in those cases, relatives imports might behave differently. Always use full python package paths when you import anything in Airflow DAGs, this will save you a lot of troubles. You can read more about relative import caveats in this Stack Overflow thread.
Add __init__.py
in package folders¶
When you create folders you should add __init__.py
file as empty files in your folders. While in Python 3
there is a concept of implicit namespaces where you do not have to add those files to folder, Airflow
expects that the files are added to all packages you added.
Inspecting your PYTHONPATH
loading configuration¶
You can also see the exact paths using the airflow info
command,
and use them similar to directories specified with the environment variable
PYTHONPATH
. An example of the contents of the sys.path variable
specified by this command may be as follows:
Python PATH: [/home/rootcss/venvs/airflow/bin:/usr/lib/python38.zip:/usr/lib/python3.8:/usr/lib/python3.8/lib-dynload:/home/rootcss/venvs/airflow/lib/python3.8/site-packages:/home/rootcss/airflow/dags:/home/rootcss/airflow/config:/home/rootcss/airflow/plugins]
Below is the sample output of the airflow info
command:
See also
Apache Airflow: 2.0.0b3
System info
OS | Linux
architecture | x86_64
uname | uname_result(system='Linux', node='85cd7ab7018e', release='4.19.76-linuxkit', version='#1 SMP Tue May 26 11:42:35 UTC 2020', machine='x86_64', processor='')
locale | ('en_US', 'UTF-8')
python_version | 3.8.6 (default, Nov 25 2020, 02:47:44) [GCC 8.3.0]
python_location | /usr/local/bin/python
Tools info
git | git version 2.20.1
ssh | OpenSSH_7.9p1 Debian-10+deb10u2, OpenSSL 1.1.1d 10 Sep 2019
kubectl | NOT AVAILABLE
gcloud | NOT AVAILABLE
cloud_sql_proxy | NOT AVAILABLE
mysql | mysql Ver 8.0.22 for Linux on x86_64 (MySQL Community Server - GPL)
sqlite3 | 3.27.2 2019-02-25 16:06:06 bd49a8271d650fa89e446b42e513b595a717b9212c91dd384aab871fc1d0alt1
psql | psql (PostgreSQL) 11.9 (Debian 11.9-0+deb10u1)
Paths info
airflow_home | /root/airflow
system_path | /opt/bats/bin:/usr/local/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
python_path | /usr/local/bin:/opt/airflow:/files/plugins:/usr/local/lib/python38.zip:/usr/local/lib/python3.8:/usr/
| local/lib/python3.8/lib-dynload:/usr/local/lib/python3.8/site-packages:/files/dags:/root/airflow/conf
| ig:/root/airflow/plugins
airflow_on_path | True
Config info
executor | LocalExecutor
task_logging_handler | airflow.utils.log.file_task_handler.FileTaskHandler
sql_alchemy_conn | postgresql+psycopg2://postgres:airflow@postgres/airflow
dags_folder | /files/dags
plugins_folder | /root/airflow/plugins
base_log_folder | /root/airflow/logs
Providers info
apache-airflow-providers-amazon | 1.0.0b2
apache-airflow-providers-apache-cassandra | 1.0.0b2
apache-airflow-providers-apache-druid | 1.0.0b2
apache-airflow-providers-apache-hdfs | 1.0.0b2
apache-airflow-providers-apache-hive | 1.0.0b2
Adding directories to the PYTHONPATH
¶
You can specify additional directories to be added to sys.path
using the
environment variable PYTHONPATH
. Start the python shell by providing
the path to root of your project using the following command:
PYTHONPATH=/home/arch/projects/airflow_operators python
The sys.path
variable will look like below:
>>> import sys
>>> from pprint import pprint
>>> pprint(sys.path)
['',
'/home/arch/projects/airflow_operators'
'/home/arch/.pyenv/versions/3.7.4/lib/python37.zip',
'/home/arch/.pyenv/versions/3.7.4/lib/python3.7',
'/home/arch/.pyenv/versions/3.7.4/lib/python3.7/lib-dynload',
'/home/arch/venvs/airflow/lib/python3.7/site-packages']
As we can see that our provided directory is now added to the path, let's try to import the package now:
>>> import airflow_operators
Hello from airflow_operators
>>>
We can also use PYTHONPATH
variable with the airflow commands.
For example, if we run the following airflow command:
PYTHONPATH=/home/arch/projects/airflow_operators airflow info
We'll see the Python PATH
updated with our mentioned PYTHONPATH
value as shown below:
Python PATH: [/home/arch/venv/bin:/home/arch/projects/airflow_operators:/usr/lib/python38.zip:/usr/lib/python3.8:/usr/lib/python3.8/lib-dynload:/home/arch/venv/lib/python3.8/site-packages:/home/arch/airflow/dags:/home/arch/airflow/config:/home/arch/airflow/plugins]
Creating a package in Python¶
This is most organized way of adding your custom code. Thanks to using packages, you might organize your versioning approach, control which versions of the shared code are installed and deploy the code to all your instances and containers in controlled way - all by system admins/DevOps rather than by the DAG writers. It is usually suitable when you have a separate team that manages this shared code, but if you know your python ways you can also distribute your code this way in smaller deployments. You can also install your Plugins and Provider packages as python packages, so learning how to build your package is handy.
Here is how to create your package:
Before starting, install the following packages:
setuptools
: setuptools is a package development process library designed
for creating and distributing Python packages.
wheel
: The wheel package provides a bdist_wheel command for setuptools. It
creates .whl file which is directly installable through the pip install
command. We can then upload the same file to PyPI.
pip install --upgrade pip setuptools wheel
Create the package directory - in our case, we will call it
airflow_operators
.
mkdir airflow_operators
Create the file
__init__.py
inside the package and add following code:
print("Hello from airflow_operators")
When we import this package, it should print the above message.
Create
setup.py
:
import setuptools
setuptools.setup(
name="airflow_operators",
)
Build the wheel:
python setup.py bdist_wheel
This will create a few directories in the project and the overall structure will look like following:
.
├── airflow_operators
│ ├── __init__.py
├── airflow_operators.egg-info
│ ├── PKG-INFO
│ ├── SOURCES.txt
│ ├── dependency_links.txt
│ └── top_level.txt
├── build
│ └── bdist.macosx-10.15-x86_64
├── dist
│ └── airflow_operators-0.0.0-py3-none-any.whl
└── setup.py
Install the .whl file using pip:
pip install dist/airflow_operators-0.0.0-py3-none-any.whl
The package is now ready to use!
>>> import airflow_operators
Hello from airflow_operators
>>>
The package can be removed using pip command:
pip uninstall airflow_operators
For more details on how to create to create and publish python packages, see Packaging Python Projects.