cancel
Showing results for 
Search instead for 
Did you mean: 
Data Engineering
Join discussions on data engineering best practices, architectures, and optimization strategies within the Databricks Community. Exchange insights and solutions with fellow data engineers.
cancel
Showing results for 
Search instead for 
Did you mean: 

Delta live tables running count output mode?

vroste
New Contributor III

I have a DLT with a table that I want to contain the running aggregation (for the sake of simplicitly let's assume it's a count) for each value of some key column, using a session window. The input table goes back several years and to clean up aggregation state, I want to add a watermark. Doing this, however, appears to output no rows.

I believe this is because in the default append output mode, only expired session windows are emitted. Looking at the delta table's history I see appends only. How do I configure update output mode? Or is there another way to achieve my goal?

 

def running_aggregation():    
    return (
        spark.readStream
            .option("withEventTimeOrder", "true")
            .table("LIVE.input_data")
            .withWatermark("created", "365 days") # Watermark in combination with append output mode (don't know how to change for DLT) results in only expired session windows being output..
            .groupBy(session_window("created", "90 days"), "key")            
            .agg(
                count('*')
            )

 

 

1 REPLY 1

harvey-c
New Contributor III

Hi, Kaniz

Could you please more details and example on how to configure the outputmode? From public available document table_properties configuration for DLT,  does not have the option for outputMode.  I have also found that sometimes the DLT "decided" to use complete mode instead of append mode, which results in downstream workflow error such as: "streaming tables may only use append-only streaming sources".  Please clarify. Thank you!

Connect with Databricks Users in Your Area

Join a Regional User Group to connect with local Databricks users. Events will be happening in your city, and you won’t want to miss the chance to attend and share knowledge.

If there isn’t a group near you, start one and help create a community that brings people together.

Request a New Group