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Databricks Databricks-Certified-Professional-Data-Engineer Exam With Confidence Using Practice Dumps

Exam Code:
Databricks-Certified-Professional-Data-Engineer
Exam Name:
Databricks Certified Data Engineer Professional Exam
Certification:
Vendor:
Questions:
195
Last Updated:
Apr 22, 2026
Exam Status:
Stable
Databricks Databricks-Certified-Professional-Data-Engineer

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Databricks Certified Data Engineer Professional Exam Questions and Answers

Question 1

The view updates represents an incremental batch of all newly ingested data to be inserted or updated in the customers table.

The following logic is used to process these records.

Which statement describes this implementation?

Options:

A.

The customers table is implemented as a Type 3 table; old values are maintained as a new column alongside the current value.

B.

The customers table is implemented as a Type 2 table; old values are maintained but marked as no longer current and new values are inserted.

C.

The customers table is implemented as a Type 0 table; all writes are append only with no changes to existing values.

D.

The customers table is implemented as a Type 1 table; old values are overwritten by new values and no history is maintained.

E.

The customers table is implemented as a Type 2 table; old values are overwritten and new customers are appended.

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Question 2

A data engineer is designing a Lakeflow Declarative Pipeline to process streaming order data. The pipeline uses Auto Loader to ingest data and must enforce data quality by ensuring customer_id and amount are greater than zero. Invalid records should be dropped.

Which Lakeflow Declarative Pipelines configurations implement this requirement using Python?

Options:

A.

@dlt.table

def silver_orders():

return (

dlt.read_stream( " bronze_orders " )

.expect_or_drop( " valid_customer " , " customer_id IS NOT NULL " )

.expect_or_drop( " valid_amount " , " amount > 0 " )

)

B.

@dlt.table

@dlt.expect( " valid_customer " , " customer_id IS NOT NULL " )

@dlt.expect( " valid_amount " , " amount > 0 " )

def silver_orders():

return dlt.read_stream( " bronze_orders " )

C.

@dlt.table

def silver_orders():

return (

dlt.read_stream( " bronze_orders " )

.expect( " valid_customer " , " customer_id IS NOT NULL " )

.expect( " valid_amount " , " amount > 0 " )

)

D.

@dlt.table

@dlt.expect_or_drop( " valid_customer " , " customer_id IS NOT NULL " )

@dlt.expect_or_drop( " valid_amount " , " amount > 0 " )

def silver_orders():

return dlt.read_stream( " bronze_orders " )

Question 3

A data engineer has a Delta table orders with deletion vectors enabled. The engineer executes the following command:

DELETE FROM orders WHERE status = ' cancelled ' ;

What should be the behavior of deletion vectors when the command is executed?

Options:

A.

Rows are marked as deleted both in metadata and in files.

B.

Delta automatically removes all cancelled orders permanently.

C.

Files are physically rewritten without the deleted rows.

D.

Rows are marked as deleted in metadata, not in files.