I have created a workflow in kedro made of different data science processing pipelines. These pipelines are tested independently.

When i run a particular kedro pipeline in stand alone fashion, the pipeline takes its input from a CSV file.

In the production environment, the pipelines need to be stitched together. In production, when i am running this pipeline(PL1) together with another pipeline (PL0) , I would like the pipeline (PL1) take its input from pipeline (PL0) .

So how to make the input to a kedro pipeline configurable depending on runtime option? Runtime option can be either standalone or integration.

I appreciate any example code to accomplish the same.

1 Answer 1


As an example, create a new Kedro sample project with kedro new --starter spaceflights. If you accept all of the default prompts, you will end up with a project in the new-kedro-project directory. Inside that folder, you will find src/new_kedro_project/pipeline_registry.py contains two pipelines (dp and ds) as well as their combination, the __default__ pipeline. dp and ds are analogous to your PL0 and PL1, respectively.

First, let's allow the ds pipeline to be run in a standalone environment. There is one dataset input to the pipeline, model_input_table, for which we define a catalog entry in the standalone environment's catalog, conf/standalone/catalog.yml:

  type: pandas.CSVDataSet
  filepath: data/03_primary/example_model_input_table.csv
  layer: primary

Now, you can run your ds pipeline in the standalone environment with kedro run --env standalone --pipeline ds, provided you've placed your sample data in data/03_primary/example_model_input_table.csv.

In the production environment, you could run your end-to-end pipeline with kedro run --env production, assuming you created a production folder under conf. If it's empty, this is almost equivalent to just using the default base environment (the different lies in whether something in the local env is considered).

In reality, you would probably change a lot more paths based on the environment, quite possibly using templated configuration. You can read a lot more about all of this, including additional configuration environments, in the Configuration section in the official docs.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.