Interaction logging export to BigQuery

You can export interaction logging to BigQuery . Once configured, all live interaction logging is written to your BigQuery table. This provides you with advanced analysis tools that can help you debug and improve your agent and to discover patterns in conversation data.

Limitations

The following limitations apply:

  • A maximum of 500 turns can be exported for each conversation.

Cross project permissions

If your Dialogflow agent and BigQuery data are not in the same project, the service account associated with your Dialogflow Google Cloud project must also have the roles/bigquery.dataEditor IAM permission for the BigQuery dataset in your BigQuery Google Cloud project.

Service account format: service-<dialogflow-project-number>@gcp-sa-dialogflow.iam.gserviceaccount.com

The user configuring the export in Dialogflow must have permissions on the BigQuery project. If they don't, the BigQuery project won't appear as an option in the Dialogflow Console.

The minimum permission required on the BigQuery project in order for the user to see it in Dialogflow is resourcemanager.projects.get . Alternatively, you can assign one of the following Google Cloud predefined roles that include this permission but don't require the user to have access to the BigQuery dataset: roles/browser or roles/bigquery.metadataViewer .

Table description

Each row of the table contains one conversational turn with the following columns:

Column Type Description
project_id
STRING The project ID.
agent_id
STRING The agent ID.
conversation_name
STRING The fully qualified resource name for the session.
turn_position
INTEGER The conversational turn number.
request_time
TIMESTAMP The time of the conversational turn.
language_code
STRING The language tag .
request
JSON The detect intent request.
response
JSON The detect intent response.
partial_responses
JSON Partial responses if applicable.
derived_data
JSON Additional metadata for this conversational turn.
conversation_signals
JSON NLU related analytics data. See ConversationSignals for the JSON schema.
bot_answer_feedback
JSON Answer feedback if provided.

Configuration

To configure interaction logging export:

  1. Ensure that interaction logging is enabled.
  2. Follow the BigQuery dataset creation guide to create a dataset. Note the dataset name, as you will need this in the next step.
  3. Follow the BigQuery table creation guide to create a table with a SQL schema definition. Use the following SQL statement for creation:

      CREATE 
      
     TABLE 
      
    < your_dataset_name 
    > . 
     dialogflow_bigquery_export_data 
     ( 
      
     project_id 
      
     STRING 
     , 
      
     agent_id 
      
     STRING 
     , 
      
     conversation_name 
      
     STRING 
     , 
      
     turn_position 
      
     INTEGER 
     , 
      
     request_time 
      
     TIMESTAMP 
     , 
      
     language_code 
      
     STRING 
     , 
      
     request 
      
     JSON 
     , 
      
     response 
      
     JSON 
     , 
      
     partial_responses 
      
     JSON 
     , 
      
     derived_data 
      
     JSON 
     , 
      
     conversation_signals 
      
     JSON 
     , 
      
     bot_answer_feedback 
      
     JSON 
     ); 
     
    
  4. Configure your agent settings to enable BigQuery export, and to provide the dataset and table names created above.

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