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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 19, 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

A Structured Streaming job deployed to production has been experiencing delays during peak hours of the day. At present, during normal execution, each microbatch of data is processed in less than 3 seconds. During peak hours of the day, execution time for each microbatch becomes very inconsistent, sometimes exceeding 30 seconds. The streaming write is currently configured with a trigger interval of 10 seconds.

Holding all other variables constant and assuming records need to be processed in less than 10 seconds, which adjustment will meet the requirement?

Options:

A.

Decrease the trigger interval to 5 seconds; triggering batches more frequently allows idle executors to begin processing the next batch while longer running tasks from previous batches finish.

B.

Increase the trigger interval to 30 seconds; setting the trigger interval near the maximum execution time observed for each batch is always best practice to ensure no records are dropped.

C.

The trigger interval cannot be modified without modifying the checkpoint directory; to maintain the current stream state, increase the number of shuffle partitions to maximize parallelism.

D.

Use the trigger once option and configure a Databricks job to execute the query every 10 seconds; this ensures all backlogged records are processed with each batch.

E.

Decrease the trigger interval to 5 seconds; triggering batches more frequently may prevent records from backing up and large batches from causing spill.

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Question 2

A security analytics pipeline must enrich billions of raw connection logs with geolocation data. The join hinges on finding which IPv4 range each event’s address falls into.

Table 1: network_events (≈ 5 billion rows)

event_id ip_int

42 3232235777

Table 2: ip_ranges (≈ 2 million rows)

start_ip_int end_ip_int country

3232235520 3232236031 US

The query is currently very slow:

SELECT n.event_id, n.ip_int, r.country

FROM network_events n

JOIN ip_ranges r

ON n.ip_int BETWEEN r.start_ip_int AND r.end_ip_int;

Question:

Which change will most dramatically accelerate the query while preserving its logic?

Options:

A.

Increase spark.sql.shuffle.partitions from 200 to 10000.

B.

Add a range-join hint /*+ RANGE_JOIN(r, 65536) */.

C.

Force a sort-merge join with /*+ MERGE(r) */.

D.

Add a broadcast hint: /*+ BROADCAST(r) */ for ip_ranges.

Question 3

A member of the data engineering team has submitted a short notebook that they wish to schedule as part of a larger data pipeline. Assume that the commands provided below produce the logically correct results when run as presented.

Which command should be removed from the notebook before scheduling it as a job?

Options:

A.

Cmd 2

B.

Cmd 3

C.

Cmd 4

D.

Cmd 5

E.

Cmd 6