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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 20, 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

A production workload incrementally applies updates from an external Change Data Capture feed to a Delta Lake table as an always-on Structured Stream job. When data was initially migrated for this table, OPTIMIZE was executed and most data files were resized to 1 GB. Auto Optimize and Auto Compaction were both turned on for the streaming production job. Recent review of data files shows that most data files are under 64 MB, although each partition in the table contains at least 1 GB of data and the total table size is over 10 TB.

Which of the following likely explains these smaller file sizes?

Options:

A.

Databricks has autotuned to a smaller target file size to reduce duration of MERGE operations

B.

Z-order indices calculated on the table are preventing file compaction

C Bloom filler indices calculated on the table are preventing file compaction

C.

Databricks has autotuned to a smaller target file size based on the overall size of data in the table

D.

Databricks has autotuned to a smaller target file size based on the amount of data in each partition

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Question 2

The data engineer team has been tasked with configured connections to an external database that does not have a supported native connector with Databricks. The external database already has data security configured by group membership. These groups map directly to user group already created in Databricks that represent various teams within the company.

A new login credential has been created for each group in the external database. The Databricks Utilities Secrets module will be used to make these credentials available to Databricks users.

Assuming that all the credentials are configured correctly on the external database and group membership is properly configured on Databricks, which statement describes how teams can be granted the minimum necessary access to using these credentials?

Options:

A.

‘’Read’’ permissions should be set on a secret key mapped to those credentials that will be used by a given team.

B.

No additional configuration is necessary as long as all users are configured as administrators in the workspace where secrets have been added.

C.

“Read” permissions should be set on a secret scope containing only those credentials that will be used by a given team.

D.

“Manage” permission should be set on a secret scope containing only those credentials that will be used by a given team.

Question 3

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.