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  • Create a pipeline
  • Run the pipeline
  1. Edge Impulse Studio
  2. Organization hub
  3. Health Reference Design

Buildling data pipelines

PreviousTransforming clinical dataNextProject dashboard

Last updated 6 months ago

Building data pipelines is a very useful feature where you can stack several transformation blocks similar to the . They can be used in a standalone mode (just execute several transformation jobs in a pipeline), to feed a dataset or to feed a project.

Only available with Edge Impulse Professional and Enterprise Plans

Try our or FREE today.

The examples in the screenshots below shows how to create and use a pipeline to create the 'AMS Activity 2022' dataset.

Create a pipeline

To create a new pipeline, click on '+Add a new pipeline:

Get the steps from your transformation blocks

In your organization workspace, go to Custom blocks -> Transformation and select Run job on the job you want to add.

Select Copy as pipeline step and paste it to the configuration json file.

You can then paste the copied step directly to the respected field.

Below, you have an option to feed the data to either a organisation dataset or an Edge Impulse project

Schedule and notify

By default, your pipeline will run every day. To schedule your pipeline jobs, click on the ⋮ button and select Edit pipeline.

Once the pipeline has successfully finished, it can send an email to the Users to notify.

Run the pipeline

Once your pipeline is set, you can run it directly from the UI, from external sources or by scheduling the task.

Run the pipeline from the UI

To run your pipeline from Edge Impulse studio, click on the ⋮ button and select Run pipeline now.

Run the pipeline from code

To run your pipeline from Edge Impulse studio, click on the ⋮ button and select Run pipeline from code. This will display an overlay with curl, Node.js and Python code samples.

You will need to create an API key to run the pipeline from code.

Webhooks

Another useful feature is to create a webhook to call a URL when the pipeline has ran. It will run a POST request containing the following information:

{
    "organizationId":XX,
    "pipelineId":XX,
    "pipelineName":"Fetch, sort, validate and combine",
    "projectId":XXXXX,
    "success":true,
    "newItems":0,
    "newChecklistOK":0,
    "newChecklistFail":0
}
Data sources pipelines
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clinical data pipelines example
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