Metadata-Version: 2.1
Name: pip-services4-container
Version: 0.0.1
Summary: IoC container for Pip.Services in Python
Home-page: http://github.com/pip-services3-python/pip-services4-container-python
Author: Conceptual Vision Consulting LLC
Author-email: seroukhov@gmail.com
License: MIT
Platform: any
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Description-Content-Type: text/markdown
License-File: LICENSE

# <img src="https://uploads-ssl.webflow.com/5ea5d3315186cf5ec60c3ee4/5edf1c94ce4c859f2b188094_logo.svg" alt="Pip.Services Logo" width="200"> <br/> IoC container for Python

This module is a part of the [Pip.Services](http://pipservices.org) polyglot microservices toolkit. It provides an inversion-of-control (IoC) container to facilitate the development of services and applications composed of loosely coupled components.

The module containes a basic in-memory container that can be embedded inside a service or application, or can be run by itself.
The second container type can run as a system level process and can be configured via command line arguments.
Also it can be used to create docker containers.

The containers can read configuration from JSON or YAML files use it as a recipe for instantiating and configuring components.
Component factories are used to create components based on their locators (descriptor) defined in the container configuration.
The factories shall be registered in containers or dynamically in the container configuration file.

The module contains the following packages:
- **Containers** - Basic in-memory and process containers
- **Build** - Default container factory
- **Config** - Container configuration components
- **Refer** - Inter-container reference management (implementation of the Referenceable pattern inside an IoC container)
- **Test** - minimal set of test components to make testing easier

<a name="links"></a> Quick links:

* [API Reference](https://pip-services3-python.github.io/pip-services4-container-python/index.html)
* [Change Log](CHANGELOG.md)
* [Get Help](https://www.pipservices.org/community/help)
* [Contribute](https://www.pipservices.org/community/contribute)

## Use

Install the Python package as
```bash
pip install pip_services4_container
```
Create a factory to create components based on their locators (descriptors).

```python
from pip_services4_commons.refer import Descriptor
from pip_services4_components.build import Factory


class MyFactory(Factory):
    MyComponentDescriptor = Descriptor("myservice", "mycomponent", "default", "*", "1.0")

    def __init__(self):
        super(MyFactory, self).__init__()
        self.register_as_type(MyFactory.MyComponentDescriptor, MyComponent)
```

Then create a process container and register the factory there. You can also register factories defined in other
modules if you plan to include external components into your container.

```python
from pip_services4_container import ProcessContainer
from pip_services3_rpc.build import DefaultRpcFactory


class MyProcess(ProcessContainer):
    def __init__(self):
        super(MyProcess, self).__init__('myservice', 'My service running as a process')

        self._factories.add(DefaultRpcFactory())
        self._factories.add(MyFactory())
```

Define YAML configuration file with components and their descriptors.
The configuration file is pre-processed using [Handlebars templating engine](https://handlebarsjs.com)
that allows to inject configuration parameters or dynamically include/exclude components using conditional blocks.
The values for the templating engine are defined via process command line arguments or via environment variables.
Support for environment variables works well in docker or other containers like AWS Lambda functions.

```yaml
---
# Context information
- descriptor: "pip-services:context-info:default:default:1.0"
  name: myservice
  description: My service running in a process container

# Console logger
- descriptor: "pip-services:logger:console:default:1.0"
  level: {{LOG_LEVEL}}{{^LOG_LEVEL}}info{{/LOG_LEVEL}}

# Performance counters that posts values to log
- descriptor: "pip-services:counters:log:default:1.0"
  
# My component
- descriptor: "myservice:mycomponent:default:default:1.0"
  param1: XYZ
  param2: 987
  
{{#if HTTP_ENABLED}}
# HTTP endpoint version 1.0
- descriptor: "pip-services:endpoint:http:default:1.0"
  connection:
    protocol: "http"
    host: "0.0.0.0"
    port: {{HTTP_PORT}}{{^HTTP_PORT}}8080{{/HTTP_PORT}}

 # Default Status
- descriptor: "pip-services:status-service:http:default:1.0"

# Default Heartbeat
- descriptor: "pip-services:heartbeat-service:http:default:1.0"
{{/if}}
```

To instantiate and run the container we need a simple process launcher.

```python
import sys
from MyFactory import MyFactory

try:
    proc = MyProcess()
    proc._config_path = './config/config.yml'
    proc.run()
except Exception as ex:
    sys.stderr.write(ex)
```

And, finally, you can run your service launcher as
```bash
python service.py
```

## Develop

For development you shall install the following prerequisites:
* Python 3.7+
* Visual Studio Code or another IDE of your choice
* Docker

Install dependencies:
```bash
pip install -r requirements.txt
```

Run automated tests:
```bash
python test.py
```

Generate API documentation:
```bash
./docgen.ps1
```

Before committing changes run dockerized build and test as:
```bash
./build.ps1
./test.ps1
./clear.ps1
```

## Contacts

The Python version of Pip.Services is created and maintained by **Sergey Seroukhov**
