Metadata-Version: 2.1
Name: django-cog
Version: 1.3.2
Summary: Django library for launching pipelines of multiple stages and parallel tasks.
Home-page: https://github.com/david-pettifor-nd/django_cog.git
Author: David W Pettifor
Author-email: dpettifo@nd.edu
License: MIT
Description: # Django-Cog
        A [django-celery-beat](https://github.com/celery/django-celery-beat) extension to build pipelines of chronological stages and parallel tasks.
        
        ## About
        Using the Djano admin, this library allows you to create pipelines of multi-staged tasks.  Each pipeline is launched at a specific time, utilizing the `django-celery-beat` `CrontabSchedule` object to define the time of launch.  Once launched, the pipeline looks for the first stage(s) of parallel tasks.  Each task is submitted to a celery worker for completion.  Once all tasks of a stage complete, the stage is considered complete and any proceeding stages will launch (assuming all previous stages required are completed).
        
        ### Pipelines
        A pipeline is a collection of stages.  It has an optional launch schedule tied to a `CronSchedule` that defines when the pipeline should be launched.  By default, a pipeline will not launch if it detects that a previous launch has not yet completed.
        
        You can also leave the launch schedule blank should you not want a particular pipeline to run on its own.  Instead, clicking the `Launch Now` button on that pipeline's Django admin page will begin its execution.
        
        _Note:_ If a pipeline was previously scheduled using a `CronSchedule` object but needs to be taken off the schedule, simply set the `Schedule` field of the pipeline to the first option of the drop-down menu (`---------`).  This will remove the generated `PeriodicTask` within the database scheduler, preventing further auto-execution of that pipeline.
        
        ### Stages
        A stage is a collection of tasks that can all be ran independently (and in parallel) of each other.  It can be dependent on any number of previous stages to be complete before launching, but will be launched upon the completion of all prerequisite stages.
        
        If a stage has no prerequisite stages, it will be launched at the start of the Pipeline's launch.  You can have multiple stages run at the same time.
        
        Upon launching a stage, each task that belongs to it will be sent to the `celery` broker for execution.
        
        ### Tasks and Cogs
        
        #### Cogs:
        A `Cog` is a registered python function that can be used in a task.  To register a function, use the `@cog` function decorator:
        ```python
        from django_cog import cog
        
        @cog
        def my_task():
            # do something in a celery worker
            pass
        ```
        
        **NOTE**: These functions *must* be imported in your application's `__init__.py` file.  Otherwise the auto-discovery process will not find them.
        
        Once Django starts, an auto-discovery process will find all functions with this decorator and create `Cog` records for them in the database.  This allows them to be reference in the Django admin.
        
        #### Tasks:
        Once you have cogs registered, you can create a task.  Tasks are specific execution definitions for a cog, and are tied to a stage.  This allows you to run the same function through multiple stages, if needed.
        
        ##### Parameters
        If your function has parameters needed, you can set these in the Task creation.  See below for an example:
        
        ```python
        from django_cog import cog
        
        @cog
        def add(a, b):
            # add the two numbers together
            return a + b
        ```
        
        Then in the Task Django admin page, set these variables in the `Arguments as JSON:` field:
        ```json
        {
            "a": 1,
            "b": 2
        }
        ```
        
        ## Installation
        
        **IMPORTANT**: It is required that the library is installed and migrations ran PRIOR to registering functions as `cogs`.
        First install the library with:
        
        ```bash
        pip install django-cog
        ```
        
        Then add it to your Django application's `INSTALLED_APPS` inside your `settings.py` file:
        ```python
        INSTALLED_APPS = [
            ...
        
            # Django-Cog:
            'django_cog.apps.DjangoCogConfig',
        
            # Required for nested inline child views in the Django Admin:
            'nested_inline',
        
            # Optional (recommended):
            'django_celery_beat',
        ]
        ```
        
        Lastly, run migrations:
        ```python
        python manage.py migrate django_cog
        ```
        
        #### Cog Registration
        Once migrations complete, it is safe to register your functions using the `cog` decorator:
        ```python
        from django_cog import cog
        
        @cog
        def my_task():
            # do something in a celery worker
            pass
        ```
        
        ##### Manual Registration
        If the library doesn't pick up your registered cogs and doesn't create `Cog` records in the admin automatically, you can call the `Cog` record creation function manually in the Django shell:
        ```python
        from django_cog.apps import create_cog_records
        create_cog_records()
        ```
        
        _Note_: This does require the functions to be registered cogs.  You can list the functions `django_cog` has discovered with:
        ```python
        from django_cog import cog
        print(cog.all)
        ```
        This will output a dictionary where the key is the function name it discovered, and the value is the actual function itself.
        
        __If your function is not listed here:__ this means the registration was not called.  This is likely due to the function not being imported in your applications `__init__.py`.  Double check to make sure you are importing the function somewhere that gets called on Django's startup (`__init__.py` is the recommended place for this).
        
        ## Docker-Compose
        
        Below is a sample docker-compose.yml segment to add the required services for Celery workers, Celery-Beat, and Redis:
        
        ```yml
        version: '3'
        
        # 3 name volumes are named here.
        volumes:
            volume_postgresdata:        # Store the postgres database data. Only linked with postgres.
            volume_django_media:        # Store the Django media files. Volume is shared between djangoweb and nginx.
            volume_django_static:       # Store the Django static files. Volume is shared between djangoweb and nginx.
        
        services:
            # Postgresql database settings.
            postgresdb:
                image: postgres:9.6-alpine
                environment:
                    - POSTGRES_DB
                    - POSTGRES_USER
                    - POSTGRES_PASSWORD
                restart: unless-stopped
                volumes:
                    - volume_postgresdata:/var/lib/postgresql/data
                ports:
                    - "127.0.0.1:5432:5432"
                networks:
                    - backend
        
            # Django settings.
            djangoweb:
                build:
                    context: .
                    args:
                        - DJANGO_ENVIRONMENT=${DJANGO_ENVIRONMENT:-production}
                image: djangoapp:latest
                networks:
                    - backend
                    - celery
                    - frontend
                volumes:
                    - .:/app/
                    - volume_django_static:/var/staticfiles
                    - volume_django_media:/var/mediafiles
                ports: # IMPORTANT: Make sure to use 127.0.0.1 to keep it local. Otherwise, this will be broadcast to the web.
                    - 127.0.0.1:8000:8000
                depends_on:
                    - postgresdb
                    - mailhog
                environment:
                    - POSTGRES_DB
                    - POSTGRES_USER
                    - POSTGRES_PASSWORD
                    - POSTGRES_HOST=postgresdb # Name of the postgresql service.
                    - POSTGRES_PORT
                    - DJANGO_SETTINGS_MODULE
                    - FORCE_SCRIPT_NAME
                    - DJANGO_ENVIRONMENT
                    - SECRET_KEY
                    - DJANGO_ALLOWED_HOSTS
                links:
                    - "postgresdb"
        
            # add redis as a message broker
            redis:
                image: "redis:alpine"
                networks:
                    - celery
        
            # celery worker process -- launches child celery processes equal to the number of available cores
            celery:
                build:
                    context: .
                    dockerfile: Dockerfile.celery
                    args:
                        - DJANGO_ENVIRONMENT=${DJANGO_ENVIRONMENT:-production}
                command: celery -A django_cog worker -l info
                image: djangoapp_celery:latest
                volumes:
                    - .:/app/
                environment:
                    - POSTGRES_DB
                    - POSTGRES_USER
                    - POSTGRES_PASSWORD
                    - POSTGRES_HOST=postgresdb # Name of the postgresql service.
                    - POSTGRES_PORT
                    - FORCE_SCRIPT_NAME
                    - DJANGO_ENVIRONMENT
                    - DJANGO_SETTINGS_MODULE
                    - SECRET_KEY
                    - DJANGO_ALLOWED_HOSTS
                depends_on:
                    - postgresdb
                    - redis
                networks:
                    - backend
                    - celery
                links:
                    - "postgresdb"
        
            # celery worker process -- launches child celery processes equal to the number of available cores
            celerybeat:
                build:
                    context: .
                    dockerfile: Dockerfile.celery
                    args:
                        - DJANGO_ENVIRONMENT=${DJANGO_ENVIRONMENT:-production}
                command: celery -A django_cog beat -l info --scheduler django_celery_beat.schedulers:DatabaseScheduler
                image: djangoapp_celerybeat:latest
                volumes:
                    - .:/app/
                environment:
                    - POSTGRES_DB
                    - POSTGRES_USER
                    - POSTGRES_PASSWORD
                    - POSTGRES_HOST=postgresdb # Name of the postgresql service.
                    - POSTGRES_PORT
                    - FORCE_SCRIPT_NAME
                    - DJANGO_ENVIRONMENT
                    - DJANGO_SETTINGS_MODULE
                    - SECRET_KEY
                    - DJANGO_ALLOWED_HOSTS
                depends_on:
                    - celery
                networks:
                    - backend
                    - celery
        
        networks:
            frontend:
                name: djangocog_frontend
            backend:
                name: djangocog_backend
            celery:
                name: djangocog_celery
        ```
        
        And the matching `Dockerfile.celery` (of which the `celery` and `celerybeat` services will build from):
        ```dockerfile
        FROM python:3.8
        ENV PYTHONUNBUFFERED 1
        
        ARG DJANGO_ENVIRONMENT
        
        # Make the static/media folder.
        RUN mkdir /var/staticfiles
        RUN mkdir /var/mediafiles
        
        # Make a location for all of our stuff to go into
        RUN mkdir /app
        
        # Set the working directory to this new location
        WORKDIR /app
        
        # Add our Django code
        ADD . /app/
        
        RUN pip install --upgrade pip
        
        # Install requirements for Django
        RUN pip install -r requirements/base.txt
        RUN pip install -r requirements/${DJANGO_ENVIRONMENT}.txt
        RUN pip install -r requirements/custom.txt
        
        # No need for an entry point as they are defined in the docker-compose.yml services
        ```
        
        ## Queues
        
        You can create specific queues within celery, and assign tasks to these queues.  Within the `Task` Django admin, you'll find a `queue` field that defaults to `celery`.  This is the default queue that celery works on.  This queue option is created automatically and is used as the default when you run the django-cog migrations.
        
        #### Adding Queues
        
        If you want to have a separate collection of workers dedicated for certain tasks, create a new `CeleryQueue` record in the Django admin and set your tasks to this queue.
        
        Additionally, you'll need workers to work on this queue.  You can do this by adding a `-Q queue_name` parameter to the `command` call in the `docker-compose.yml` file's `celery` service:
        
        ```yml
        services:
            celery:
                command: celery -A django_cog worker -l info -Q queue_name
        ```
        
        
        ## Task Optimization and Weights
        
        In order to achieve better runtimes, tasks are queued in order of greatest "weight" first.  This works best in scenarios where you have some `n` number of tasks that have a longer run time, but have extra tasks whose summation runtimes do not exceed that of the longer tasks.  The longer tasks will be launched first, allowing the runtime of each stage to be in direct correlation of the longest running individual task, rather than an arbitrary coefficient of shorter tasks that happened to be queued up before it.
        
        The weight of a task is updated at the end of each of its Pipeline run completions.  The `weight` field of a `Task` is literally the average number of total seconds it took to complete.  (NOTE: This field is limited to 11 decimal places with a precision of 5 points, which means the maximum runtime supported for a single task is roughly 11.5 days).
        
        The sample size taken defaults to the past 10 runtimes of that task, but this can be adjusted by adding the following to your Django `settings.py`:
        ```python
        DJANGO_COG_TASK_WEIGHT_SAMPLE_SIZE = 10
        ```
        
        If you do not want to have the weight auto-calculated, you can disable this calculation by adding the following to your Django `settings.py`:
        ```python
        DJANGO_COG_AUTO_WEIGHT = False
        ```
        
        Note: Tasks will still be ordered by weight (descending) when queued, but they all default to a weight of `1` prior to any runs.  You can also manually adjust this weight through the `Task` Django admin, which enables you to determine the order of queuing yourself (which of course requires the disabling of auto-weight calculation, as described above).
        
        ## Error Handling
        
        Each task can be assigned as `Critical` (default `True`).  This will cause the pipeline to halt should any critical task fail to execute.
        _NOTE_: Currently running tasks will be allowed to complete, but no new tasks of the same stage will launch, and no further stages of that pipeline will begin.
        
        This leaves the Pipeline in a `Failed` state, so if the pipeline has been marked as "Prevent overlapping runs": the pipeline cannot be launched again until the incomplete pipeline run object has been deleted.  (See below about failed pipelines.)  Once the last task of a failed pipeline completes, the task will update the Pipeline's `Completed On` timestamp to reflect when that last task completed.
        
        #### Error Handlers
        
        Each task call is wrapped in a generic `try/except` clause.  Within the `except` clause, an error handler function is called.  By default, this is the `defaultCogErrorHandler`, which records the error in the `CogErrors` table in the Django admin.  This stores information on the error type, the task run that failed, the date/time of the error, and the traceback of the error.
        
        ##### Custom Error Handlers
        
        Each task can be assigned an error handler (if none are assigned, the `defaultCogErrorHandler` is used).  You can write your own error handler function and register it like so:
        
        ```python
        from django_cog import cog_error_handler
        
        @cog_error_handler
        def myErrorHandler(error):
            """
            Do something with the error (Excemption type)
            """
            print(error)
        ```
        
        Any custom error handler needs to take in _at least_ one positional parameter, that is: the Excemption error.
        
        __OPTIONAL:__ You can also include a keyword argument `task_run` to have the failed task run object passed in:
        
        ```python
        from django_cog import cog_error_handler
        
        @cog_error_handler
        def myErrorHandler(error, task_run):
            """
            Do something with the error (Excemption type)
            and know where it came from.
            """
            print("The following error came from the task:", task_run.task.name)
            print(error)
        ```
        
        ##### Failed Pipelines
        
        Should a task marked `critical` fail, the task, its stage, and pipeline will fall into a `Failed` state.  By default, new pipeline runs cannot be called if the last run failed.  This is done intentionally so the same error does not keep repeating itself.
        
        However, you _can_ override this safety feature by setting `DJANGO_COG_OVERLAP_FAILED = True` in your Django settings.  Doing this will allow a pipeline to launch even if the last run of that pipeline failed.
        
        
        ## Canceling Pipeline Runs
        
        When a pipeline is currently running, you can visit the `Pipeline Runs` Django admin page to see which ones are running (displayed at the top of the list).  Clicking on the details of a running pipeline will show a red `Cancel Run` button at the top.  Clicking this will send the pipeline into a `Canceled` state.  Any currently running tasks will be allowed to complete.  As soon as the last one of the currently running tasks completes, it will update the stage's `Completed On` field to properly reflect the end execution timestamp of the last task.  The stage will then also fall into a `Canceled` state, and no further stages or tasks will be launched.
Platform: UNKNOWN
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.8
Classifier: Framework :: Django :: 2.2
Description-Content-Type: text/markdown
