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https://github.com/WaylonWalker/find-kedro

kedro plugin to automatically construct pipelines using pytest style pattern matching
https://github.com/WaylonWalker/find-kedro

kedro kedro-hook kedro-plugin pipelines python

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kedro plugin to automatically construct pipelines using pytest style pattern matching

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README

        

# ![Find Kedro Title](./art/find-kedro.png)

`find-kedro` is a small library to enhance your kedro experience. It looks through your modules to find kedro pipelines, nodes, and iterables (lists, sets, tuples) of nodes. It then assembles them into a dictionary of pipelines, each module will create a separate pipeline, and `__default__` being a combination of all pipelines. This format is compatible with the kedro `_create_pipelines` format.

![Python package](https://github.com/WaylonWalker/find-kedro/workflows/Python%20package/badge.svg)

![Test](https://github.com/WaylonWalker/find-kedro/workflows/Test/badge.svg)

[![Build-Docs](https://github.com/WaylonWalker/find-kedro/workflows/Build-Docs/badge.svg?branch=master)](https://find-kedro.waylonwalker.com)

## ![Motivation](./art/headers/1.png)

`kedro` is a ✨ fantastic project that allows for super-fast prototyping of data pipelines, while yielding production-ready pipelines. `find-kedro` enhances this experience by adding a pytest like node/pipeline discovery eliminating the need to bubble up pipelines through modules.

When working on larger pipeline projects, it is advisable to break your project down into different sub-modules which requires knowledge of building python libraries, and knowing how to import each module correctly. While this is not too difficult, in some cases, it can trip up even the most senior engineers, losing precious feature development time to debugging a library.

## ![Installation](./art/headers/2.png)

`find-kedro` is deployed to pypi and can easily be `pip` installed.

``` console
pip install find-kedro
```

## ![Python Usage](./art/headers/3.png)

The recommended usage of `find-kedro` is to implement it directly into your projects `run.py` module

## > 0.17.x +

After `0.17.x` `find-kedro` can be added to the ProjectsHooks as the return statement of `register_pipelines` in `hooks.py`.

``` python
class ProjectHooks:
@hook_impl
def register_pipelines(self) -> Dict[str, Pipeline]:
return find_kedro(
file_patterns=["*.py"],
directory=Path(__file__).parent / "pipelines",
)
```

### < 0.17.x

Before `0.17.x` `find-kedro` can be added to the `ProjectContext` in `run.py`.

``` python
from kedro.context import KedroContext
from find_kedro import find_kedro

class ProjectContext(KedroContext):
def _get_pipelines(self) -> Pipeline:
return find_kedro()
```

### Creating nodes

`find-kedro` will not execute any functions. It will simply look for variables that match the `pattern` and identify if they are a `kedro.pipeline.Pipeline`, `kedro.pipeline.nodes.Node`, or a list of `kedro.pipeline.nodes.Node`'s. If so, it will collect them into the dictionary of pipelines.

There are typically **three** ways that pipelines are constructed with `find-kedro`; **lists**, **single-nodes**, and **pipelines**.

#### Lists

Any pattern matched list will be flattened and collected into the pipeline. Nodes can be created all at once in the list definition.

``` python
# my-proj/pipelinies/data_engineering/pipeline
from kedro.pipeline import node
from .nodes import split_data

pipeline = [
node(
split_data,
["example_iris_data", "params:example_test_data_ratio"],
dict(
train_x="example_train_x",
train_y="example_train_y",
test_x="example_test_x",
test_y="example_test_y",
),
)
]
```

It is also convenient many times to keep the node definition close to the function definition. Many times I define the list at the top of the file, then append to it as I go.

``` python
# my-proj/pipelinies/data_engineering/pipeline
from kedro.pipeline import node
from .nodes import split_data

nodes = []
nodes.append(
node(
split_data,
["example_iris_data", "params:example_test_data_ratio"],
dict(
train_x="example_train_x",
train_y="example_train_y",
test_x="example_test_x",
test_y="example_test_y",
),
)
)
```

#### Nodes

All pattern matched `kedro.pipeline.node.Node` objects will get collected into the pipeline.

``` python
# my-proj/pipelinies/data_engineering/pipeline
from kedro.pipeline import node
from .nodes import split_data

split_node = node(
split_data,
["example_iris_data", "params:example_test_data_ratio"],
dict(
train_x="example_train_x",
train_y="example_train_y",
test_x="example_test_x",
test_y="example_test_y",
),
)
```

#### Pipeline

All pattern matched `kedro.pipeline.Pipeline` objects will get collected into the pipeline.

``` python
# my-project/pipelinies/data_engineering/pipeline
from kedro.pipeline import node, Pipeline
from .nodes import split_data

split_node = Pipeline(
[
node(
split_data,
["example_iris_data", "params:example_test_data_ratio"],
dict(
train_x="example_train_x",
train_y="example_train_y",
test_x="example_test_x",
test_y="example_test_y",
),
)
]
)
```

### `create_pipeline`

`find-kedro` now looks for `create_piepeline` functions, then adds those to your pipelines.

``` python
# my-project/pipelinies/data_engineering/pipeline
from kedro.pipeline import node, Pipeline
from .nodes import split_data

def create_pipelines():
return Pipeline(
[
node(
split_data,
["example_iris_data", "params:example_test_data_ratio"],
dict(
train_x="example_train_x",
train_y="example_train_y",
test_x="example_test_x",
test_y="example_test_y",
),
)
]
)
```

### Fully Qualified imports

When using fully qualified imports `from my_proj.pipelines.data_science.nodes import split_data` instead of
relative imports `from .nodes split_data` you will need to make sure that your project is installed, in your current path, or you set the directory

### ![CLI Usage](./art/headers/4.png)

The CLI provides a handy interface to search your project for nodes

```
Usage: find-kedro [OPTIONS]

Options:
--file-patterns TEXT glob-style file patterns for Python node module
discovery

--patterns TEXT prefixes or glob names for Python pipeline, node,
or list object discovery

-d, --directory DIRECTORY Path to save the static site to
--version Prints version and exits
-v, --verbose Prints extra information for debugging
--help Show this message and exit.
```

Example ran with a slightly modified default `kedro new` project.

``` bash
❯ find-kedro
{
"__default__": [
"split_data([example_iris_data,params:example_test_data_ratio]) -> [example_test_x,example_test_y,example_train_x,example_train_y]",
"train_model([example_train_x,example_train_y,parameters]) -> [example_model]",
"predict([example_model,example_test_x]) -> [example_predictions]",
"report_accuracy([example_predictions,example_test_y]) -> None"
],
"src.default_kedro_159.pipelines.data_engineering.pipeline": [
"split_data([example_iris_data,params:example_test_data_ratio]) -> [example_test_x,example_test_y,example_train_x,example_train_y]"
],
"src.default_kedro_159.pipelines.data_science.pipeline": [
"train_model([example_train_x,example_train_y,parameters]) -> [example_model]",
"predict([example_model,example_test_x]) -> [example_predictions]",
"report_accuracy([example_predictions,example_test_y]) -> None"
]
}
```
## ![Contributing](./art/headers/5.png)

**You're Awesome** for considering a contribution! Contributions are welcome, please check out the [Contributing Guide](./contributing.md) for more information. Please be a positive member of the community and embrace feedback

## ![Versioning](./art/headers/6.png)

We use [SemVer](https://semver.org/) for versioning. For the versions available, see the [tags on this repository](./tags).

## ![Authors](./art/headers/7.png)

[![Waylon Walker](https://avatars1.githubusercontent.com/u/22648375?s=64&v=4)](https://github.com/WaylonWalker) - Waylon Walker - _Original Author_

[![Zain Patel](https://avatars3.githubusercontent.com/u/30357972?s=64&v=4)](https://github.com/mzjp2) - Zain Patel

[![Data Engineer One](https://avatars1.githubusercontent.com/u/64087279?s=64&v=4)](https://github.com/dataengineerone) - Data Engineer One

## ![License](./art/headers/8.png)

This project is licensed under the MIT License - see the LICENSE.md file for details