Skip to content

Latest commit

 

History

History
112 lines (81 loc) · 4.78 KB

README.md

File metadata and controls

112 lines (81 loc) · 4.78 KB

vscode-kedro

The extension integrates Kedro projects with Visual Studio Code, providing features like enhanced code navigation and autocompletion for seamless development.

If you encounter issue, report it in Github or Slack, we will try to fix ASAP.

Requirements

  1. VS Code 1.64.0 or greater
  2. Python extension for VS Code
  3. Kedro Project >= 0.19

How to use this extension

  1. Install Kedro from the extension
  2. Select the correct Python interpreter that you use to run the Kedro project with the > Python: select interpreter command

p.s. If you can kedro run with the environment, you are good to go.

The extension requires bootstrap_project in Kedro, you need to make sure you can do kedro run without getting any immediate error, otherwise you may get a server panic error.

Settings

Change Configuration Environment

By default, the extension references the configuration loader's base_env (typically base). To change the directory where the extension looks for configurations, the extension provides 3 different ways to do this:

  1. Click on the Kedro Icon in the status bar (bottom right) Status Bar
  2. Use Command (Cmd + Shift + P) and choose kedro: Select Environment
  3. Change default environment

How to restart a server if there are error

Click Output and select Kedro from the dropdown list. It may gives you some hints and report back if you think this is a bug.

Hit Cmd + Shift + P to open the VSCode command, look for kedro: restart server in case it's panic.

Assumptions

Configuration Source

Currently, the extension assume the source of configuration is in the base_env defined by the config loader (if you didn't speficy, usually it is conf/base).

This mean that if the configuration is overrided by the default_run_env(usually it is local), the extension may fails to resolve to the correct location.

Pipeline Discovery

The extension follows Kedro pipeline autodiscovery mechanism. It means that in general it is looking for modular pipelines structure, i.e. <src/package/pipelines/<pipeline>. It can be visualised as follows:

.
├── conf
│   ├── base
│   └── local
├── notebooks
├── src
│   └── demo
│       ├── pipelines
│           ├── first_pipeline
│           └── second_pipeline

Visualisation with Kedro-Viz

To visualize your Kedro project using Kedro-Viz in Visual Studio Code, follow these steps:

  1. Open the Command Palette: Press Cmd + Shift + P (on macOS) or Ctrl + Shift + P (on Windows/Linux).

  2. Run Kedro-Viz: Type kedro: Run Kedro Viz and select the command. This will launch Kedro-Viz and display your pipeline visually within the extension.

start kedro viz

Note: To update the Kedro-Viz flowchart after making any changes to your Kedro project, please hit Cmd + Shift + P to open the VSCode command and look for kedro: restart server.

Feature

Go to Definition from pipeline.py to configuration files

Use Cmd (Mac)/ Ctrl (Window) + Click or F12 to trigger Go to Definition go to definition

Go to Reference from configuration files to pipeline.py

  • Cmd or Ctrl (Window) + Click on the definition.
  • Use Find Reference
  • Use the shortcut Shift + F12 find reference

Note: You can find pipeline reference in all the python files under <package_name>/pipelines

- pipelines
  - sub_pipeline
    - pipeline_data_processing.py
    - sub_pipeline_1
        - pipeline_data_processing_1.py

Autocompletion in Python

Type " in any pipeline.py and it should trigger the autocompletion list. autocompletion

Schema Validation

schema validation

Hover

Just hover your mouse over any params:, datasets or hit the command Show or Focus Hover hover

To navigate between the flowchart and the code editor in Kedro-Viz:

Navigate to Node Functions: Click on a node in the Kedro-Viz flowchart, and it will automatically navigate to the corresponding node function in your code. navigation to node function

Navigate to DataCatalog: Clicking on a data node in the flowchart will open the corresponding dataset in the Data Catalog. navigation to dataset