Track Ticket Count by Agent and Transforming Data Using Bold Data Hub
In this article, we will demonstrate how to import tables from a CSV file, check ticket count by agent through transformations, and move the cleaned data into the destination database using Bold Data Hub. Follow the step-by-step process below.
Sample Data Source:
Creating Pipeline
Learn about Pipeline Creation
Applying Transformation
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Go to the Transform tab and click Add Table.
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Enter the table name to create a transform table for customer satisfaction summary.

Note: The data will initially be transferred to the DuckDB database within the designated {pipeline_name} schema before undergoing transformation for integration into the target databases. As an illustration, in the case of a pipeline named “customer_service_data”, the data will be relocated to the customer_service_data table schema.
Learn more about transformation here
Ticket Count by Agent
Overview
Tracking the number of tickets resolved by each agent within specific time periods (daily, weekly) helps assess performance, identify workload distribution, and optimize resource allocation.
Approach
We aggregate ticket resolution counts:
- Daily Ticket Count → Grouping by
Agent_IDandTicket_Resolution_Date - Weekly Ticket Count → Extracting the week number from
Ticket_Resolution_Date
SQL Query for Daily Ticket Count
SELECT
Agent_ID,
Ticket_Resolution_Date,
COUNT(Ticket_ID) AS Tickets_Resolved
FROM {pipeline_name}.sample_csc_data
WHERE Ticket_Status = 'Resolved'
GROUP BY Agent_ID, Ticket_Resolution_Date
ORDER BY Ticket_Resolution_Date, Agent_ID;
SQL Query for Weekly Ticket Count
SELECT
Agent_ID,
EXTRACT(week FROM Ticket_Resolution_Date) AS Resolution_Week,
COUNT(Ticket_ID) AS Tickets_Resolved
FROM {pipeline_name}.sample_csc_data
WHERE Ticket_Status = 'Resolved'
GROUP BY Agent_ID, EXTRACT(week FROM Ticket_Resolution_Date)
ORDER BY Resolution_Week, Agent_ID;