11#  Pipeline template that defines common runtime environment variables.
22variables :
3- 
43  #  Source Config
5-      #  The directory containing the scripts for training, evaluating, and registering the model
4+   #  The directory containing the scripts for training, evaluating, and registering the model
65  - name : SOURCES_DIR_TRAIN 
76    value : diabetes_regression 
87    #  The path to the model training script under SOURCES_DIR_TRAIN
@@ -23,7 +22,7 @@ variables:
2322    value : mlopspython 
2423  - name : DATASET_NAME 
2524    value : diabetes_ds 
26-   #  Uncomment DATASTORE_NAME if you have configured non default datastore to point to your data    
25+   #  Uncomment DATASTORE_NAME if you have configured non default datastore to point to your data
2726  #  - name: DATASTORE_NAME
2827  #    value: datablobstore
2928  - name : DATASET_VERSION 
@@ -50,25 +49,23 @@ variables:
5049  #  The name for the (docker/webapp) scoring image
5150  - name : IMAGE_NAME 
5251    value : " diabetestrained" 
53-   
52+ 
5453    #  Optional. Used by a training pipeline with R on Databricks
5554  - name : DB_CLUSTER_ID 
5655    value : " " 
5756
5857  #  These are the default values set in ml_service\util\env_variables.py. Uncomment and override if desired.
59-      #  Set to false to disable the evaluation step in the ML pipeline and register the newly trained model unconditionally.
58+   #  Set to false to disable the evaluation step in the ML pipeline and register the newly trained model unconditionally.
6059  #  - name: RUN_EVALUATION
6160  #    value: "true"
62-      #  Set to false to register the model regardless of the outcome of the evaluation step in the ML pipeline.
61+   #  Set to false to register the model regardless of the outcome of the evaluation step in the ML pipeline.
6362  #  - name: ALLOW_RUN_CANCEL
6463  #    value: "true"
6564
66-      #  For debugging deployment issues. Specify a build id with the MODEL_BUILD_ID pipeline variable at queue time
67-      #  to skip training and deploy a model registered by a previous build.
65+   #  For debugging deployment issues. Specify a build id with the MODEL_BUILD_ID pipeline variable at queue time
66+   #  to skip training and deploy a model registered by a previous build.
6867  - name : modelbuildid 
6968    value : $[coalesce(variables['MODEL_BUILD_ID'], variables['Build.BuildId'])] 
70- 
71-   
7269  #  Flag to allow rebuilding the AML Environment after it was built for the first time. This enables dependency updates from conda_dependencies.yaml.
7370  #  - name: AML_REBUILD_ENVIRONMENT
7471  #   value: "false"
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