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DataRobot Airflow provider.

Project description

DataRobot Provider for Apache Airflow

This package provides operators, sensors, and a hook that integrates DataRobot into Apache Airflow. Using these components you should be able to build the essential DataRobot pipeline - create a project, train models, deploy a model, score predictions against the model deployment.

Installation

Prerequisites: Apache Airflow

Install the DataRobot provider:

pip install airflow-provider-datarobot

Connection

In the Airflow user interface, create a new DataRobot connection in Admin > Connections:

  • Connection Type: DataRobot
  • Connection Id: datarobot_default (default)
  • API Key: your-datarobot-api-key
  • DataRobot endpoint URL: https://app.datarobot.com/api/v2 (default)

Create the API Key in the DataRobot Developer Tools page, API Keys section (see DataRobot Docs for more details).

By default, all components use datarobot_default connection ID.

Config JSON for dag run

Operators and sensors use parameters from the config which must be submitted when triggering the dag. Example config JSON with required parameters:

{
    "training_data": "s3-pre-signed-url-of-training-data",
    "project_name": "Project created from Airflow",
    "autopilot_settings": {
        "target": "readmitted"
    },
    "deployment_label": "Deployment created from Airflow",
    "score_settings": {
        "intake_settings": {
            "type": "s3",
            "url": "s3://path/to/scoring-data/Diabetes10k.csv",
            "credential_id": "62160b511fb29da8dd5f2c81"
        },
        "output_settings": {
            "type": "s3",
            "url": "s3://path/to/results-dir/Diabetes10k_predictions.csv",
            "credential_id": "62160b511fb29da8dd5f2c81"
        }
    }
}

These config values can be accessed in the execute() method of any operator the dag in the context["params"] variable, e.g. getting a training data you would use this in the operator:

def execute(self, context: Dict[str, Any]) -> str:
    ...
    training_data = context["params"]["training_data"]
    ...

Modules

Operators

  • CreateProjectOperator - creates a DataRobot project and returns its ID

    Required config params:

      training_data: str - pre-signed S3 URL to training dataset
      project_name: str - project name
    

    The training_data value must be a pre-signed AWS S3 URL.

    For more project settings see the DataRobot docs.

  • TrainModelsOperator - triggers DataRobot Autopilot to train models

    Parameters:

      project_id: str - DataRobot project ID
    

    Required config params:

      "autopilot_settings": {
          "target": "readmitted"
      } 
    

    target is a required parameter with the column name which defines the modeling target.

    For more autopilot settings see the DataRobot docs.

  • DeployModelOperator - deploys a specified model to production and returns its ID

    Parameters:

      model_id: str - DataRobot model ID
    

    Required config params:

      deployment_label - deployment label/name
    

    For more deployment settings see the DataRobot docs.

  • DeployRecommendedModelOperator - deploys a recommended model to production and returns its ID

    Parameters:

      project_id: str - DataRobot project ID
    

    Required config params:

      deployment_label: str - deployment label
    

    For more deployment settings see the DataRobot docs.

  • ScorePredictionsOperator - scores predictions against the deployment and returns a batch prediction job ID

    Prerequisites:

    Parameters:

      deployment_id: str - DataRobot project ID
    

    Required config params:

      "score_settings": {
          "intake_settings": {
              "type": "s3",
              "url": "s3://my-bucket/Diabetes10k.csv",
              "credential_id": "62160b511fb29da8dd5f2c81"
          },
          "output_settings": {
              "type": "s3",
              "url": "s3://my-bucket/Diabetes10k_predictions.csv",
              "credential_id": "62160b511fb29da8dd5f2c81"
          }
      }
    

    For more batch prediction settings see the DataRobot docs.

Sensors

  • AutopilotCompleteSensor - check whether the Autopilot has completed

    Parameters:

      project_id: str - DataRobot project ID
    
  • ScoringCompleteSensor - check whether batch scoring has completed

    Parameters:

      job_id: str - Batch prediction job ID
    

Hooks

  • DataRobotHook - a hook for initializing DataRobot Public API client

Pipeline

The modules described above allows to construct a standard DataRobot pipeline in an Airflow dag:

create_project_op >> train_models_op >> autopilot_complete_sensor >> deploy_model_op >> score_predictions_op >> scoring_complete_sensor

Examples

See the examples directory for the example DAGs.

Issues

Please submit issues and pull requests in our official repo: https://github.com/datarobot/airflow-provider-datarobot

We are happy to hear from you. Please email any feedback to the authors at support@datarobot.com.

Copyright Notice

Copyright 2022 DataRobot, Inc. and its affiliates.

All rights reserved.

This is proprietary source code of DataRobot, Inc. and its affiliates.

Released under the terms of DataRobot Tool and Utility Agreement.

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