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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 15, 2026
Exam Status:
Stable
Databricks Databricks-Certified-Professional-Data-Engineer

Databricks-Certified-Professional-Data-Engineer: Databricks Certification Exam 2025 Study Guide Pdf and Test Engine

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Databricks Certified Data Engineer Professional Exam Questions and Answers

Question 1

The data engineering team maintains a table of aggregate statistics through batch nightly updates. This includes total sales for the previous day alongside totals and averages for a variety of time periods including the 7 previous days, year-to-date, and quarter-to-date. This table is named store_saies_summary and the schema is as follows:

The table daily_store_sales contains all the information needed to update store_sales_summary . The schema for this table is:

store_id INT, sales_date DATE, total_sales FLOAT

If daily_store_sales is implemented as a Type 1 table and the total_sales column might be adjusted after manual data auditing, which approach is the safest to generate accurate reports in the store_sales_summary table?

Options:

A.

Implement the appropriate aggregate logic as a batch read against the daily_store_sales table and overwrite the store_sales_summary table with each Update.

B.

Implement the appropriate aggregate logic as a batch read against the daily_store_sales table and append new rows nightly to the store_sales_summary table.

C.

Implement the appropriate aggregate logic as a batch read against the daily_store_sales table and use upsert logic to update results in the store_sales_summary table.

D.

Implement the appropriate aggregate logic as a Structured Streaming read against the daily_store_sales table and use upsert logic to update results in the store_sales_summary table.

E.

Use Structured Streaming to subscribe to the change data feed for daily_store_sales and apply changes to the aggregates in the store_sales_summary table with each update.

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Question 2

All records from an Apache Kafka producer are being ingested into a single Delta Lake table with the following schema:

key BINARY, value BINARY, topic STRING, partition LONG, offset LONG, timestamp LONG

There are 5 unique topics being ingested. Only the " registration " topic contains Personal Identifiable Information (PII). The company wishes to restrict access to PII. The company also wishes to only retain records containing PII in this table for 14 days after initial ingestion. However, for non-PII information, it would like to retain these records indefinitely.

Which of the following solutions meets the requirements?

Options:

A.

All data should be deleted biweekly; Delta Lake ' s time travel functionality should be leveraged to maintain a history of non-PII information.

B.

Data should be partitioned by the registration field, allowing ACLs and delete statements to be set for the PII directory.

C.

Because the value field is stored as binary data, this information is not considered PII and no special precautions should be taken.

D.

Separate object storage containers should be specified based on the partition field, allowing isolation at the storage level.

E.

Data should be partitioned by the topic field, allowing ACLs and delete statements to leverage partition boundaries.

Question 3

A data engineering team uses Databricks Lakehouse Monitoring to track the percent_null metric for a critical column in their Delta table.

The profile metrics table (prod_catalog.prod_schema.customer_data_profile_metrics) stores hourly percent_null values.

The team wants to:

    Trigger an alert when the daily average of percent_null exceeds 5% for three consecutive days .

    Ensure that notifications are not spammed during sustained issues.

Options:

Options:

A.

SELECT percent_null

FROM prod_catalog.prod_schema.customer_data_profile_metrics

WHERE window.end > = CURRENT_TIMESTAMP - INTERVAL ' 1 ' DAY

Alert Condition: percent_null > 5

Notification Frequency: At most every 24 hours

B.

WITH daily_avg AS (

SELECT DATE_TRUNC( ' DAY ' , window.end) AS day,

AVG(percent_null) AS avg_null

FROM prod_catalog.prod_schema.customer_data_profile_metrics

GROUP BY DATE_TRUNC( ' DAY ' , window.end)

)

SELECT day, avg_null

FROM daily_avg

ORDER BY day DESC

LIMIT 3

Alert Condition: ALL avg_null > 5 for the latest 3 rows

Notification Frequency: Just once

C.

SELECT AVG(percent_null) AS daily_avg

FROM prod_catalog.prod_schema.customer_data_profile_metrics

WHERE window.end > = CURRENT_TIMESTAMP - INTERVAL ' 3 ' DAY

Alert Condition: daily_avg > 5

Notification Frequency: Each time alert is evaluated

D.

SELECT SUM(CASE WHEN percent_null > 5 THEN 1 ELSE 0 END) AS violation_days

FROM prod_catalog.prod_schema.customer_data_profile_metrics

WHERE window.end > = CURRENT_TIMESTAMP - INTERVAL ' 3 ' DAY

Alert Condition: violation_days > = 3

Notification Frequency: Just once