Databricks Certified Associate Developer for Apache Spark Databricks Certified Associate Developer for Apache Spark 3.0 Dumps in PDF

Free Databricks Databricks Certified Associate Developer for Apache Spark 3.0 Real Questions (page: 22)

Which of the following code blocks returns a copy of DataFrame itemsDf where the column supplier has been renamed to manufacturer?

  1. itemsDf.withColumn(["supplier", "manufacturer"])
  2. itemsDf.withColumn("supplier").alias("manufacturer")
  3. itemsDf.withColumnRenamed("supplier", "manufacturer")
  4. itemsDf.withColumnRenamed(col("manufacturer"), col("supplier"))
  5. itemsDf.withColumnsRenamed("supplier", "manufacturer")

Answer(s): C

Explanation:

itemsDf.withColumnRenamed("supplier", "manufacturer")

Correct! This uses the relatively trivial DataFrame method withColumnRenamed for renaming column supplier to column manufacturer.
Note that the Question: asks for
"a copy of DataFrame itemsDf". This may be confusing if you are not familiar with Spark yet. RDDs (Resilient Distributed Datasets) are the foundation of Spark DataFrames and are immutable. As such, DataFrames are immutable, too. Any command that changes anything in the DataFrame therefore necessarily returns a copy, or a new version, of it that has the changes applied. itemsDf.withColumnsRenamed("supplier", "manufacturer")
Incorrect. Spark's DataFrame API does not have a withColumnsRenamed() method. itemsDf.withColumnRenamed(col("manufacturer"), col("supplier"))
No. Watch out – although the col() method works for many methods of the DataFrame API, withColumnRenamed is not one of them. As outlined in the documentation linked below, withColumnRenamed expects strings. itemsDf.withColumn(["supplier", "manufacturer"])
Wrong. While DataFrame.withColumn() exists in Spark, it has a different purpose than renaming columns. withColumn is typically used to add columns to DataFrames, taking the name of the new column as a first, and a Column as a second argument. Learn more via the documentation that is linked below.
itemsDf.withColumn("supplier").alias("manufacturer")
No. While DataFrame.withColumn() exists, it requires 2 arguments. Furthermore, the alias() method on DataFrames would not help the cause of renaming a column much. DataFrame.alias() can be useful in addressing the input of join statements. However, this is far outside of the scope of this question. If you are curious nevertheless, check out the link below.
More info: pyspark.sql.DataFrame.withColumnRenamed — PySpark 3.1.1 documentation, pyspark.sql.DataFrame.withColumn — PySpark 3.1.1 documentation, and pyspark.sql.DataFrame.alias —

PySpark 3.1.2 documentation (https://bit.ly/3aSB5tm , https://bit.ly/2Tv4rbE , https://bit.ly/2RbhBd2)
Static notebook | Dynamic notebook: See test 1, Question: 31 (Databricks import instructions) (https://flrs.github.io/spark_practice_tests_code/#1/31.html ,
https://bit.ly/sparkpracticeexams_import_instructions)



Which of the following code blocks returns DataFrame transactionsDf sorted in descending order by column predError, showing missing values last?

  1. transactionsDf.sort(asc_nulls_last("predError"))
  2. transactionsDf.orderBy("predError").desc_nulls_last()
  3. transactionsDf.sort("predError", ascending=False)
  4. transactionsDf.desc_nulls_last("predError")
  5. transactionsDf.orderBy("predError").asc_nulls_last()

Answer(s): C

Explanation:

transactionsDf.sort("predError", ascending=False)
Correct! When using DataFrame.sort() and setting ascending=False, the DataFrame will be sorted by the specified column in descending order, putting all missing values last. An alternative, although not listed as an answer here, would be transactionsDf.sort(desc_nulls_last("predError")). transactionsDf.sort(asc_nulls_last("predError"))
Incorrect. While this is valid syntax, the DataFrame will be sorted on column predError in ascending order and not in descending order, putting missing values last. transactionsDf.desc_nulls_last("predError")
Wrong, this is invalid syntax. There is no method DataFrame.desc_nulls_last() in the Spark API. There is a Spark function desc_nulls_last() however (link see below). transactionsDf.orderBy("predError").desc_nulls_last()
No. While transactionsDf.orderBy("predError") is correct syntax (although it sorts the DataFrame by column predError in ascending order) and returns a DataFrame, there is no method DataFrame.desc_nulls_last() in the Spark API. There is a Spark function desc_nulls_last() however (link see below).
transactionsDf.orderBy("predError").asc_nulls_last()
Incorrect. There is no method DataFrame.asc_nulls_last() in the Spark API (see above).
More info: pyspark.sql.functions.desc_nulls_last — PySpark 3.1.2 documentation and pyspark.sql.DataFrame.sort — PySpark 3.1.2 documentation (https://bit.ly/3g1JtbI , https://bit.ly/2R90NCS)
Static notebook | Dynamic notebook: See test 1, Question: 32 (
Databricks import instructions) (https://flrs.github.io/spark_practice_tests_code/#1/32.html ,
https://bit.ly/sparkpracticeexams_import_instructions)



The code block displayed below contains an error. The code block is intended to perform an outer join of DataFrames transactionsDf and itemsDf on columns productId and itemId, respectively.

Find the error.
Code block:
transactionsDf.join(itemsDf, [itemsDf.itemId, transactionsDf.productId], "outer")

  1. The "outer" argument should be eliminated, since "outer" is the default join type.
  2. The join type needs to be appended to the join() operator, like join().outer() instead of listing it as the last argument inside the join() call.
  3. The term [itemsDf.itemId, transactionsDf.productId] should be replaced by itemsDf.itemId == transactionsDf.productId.
  4. The term [itemsDf.itemId, transactionsDf.productId] should be replaced by itemsDf.col("itemId")
    == transactionsDf.col("productId").
  5. The "outer" argument should be eliminated from the call and join should be replaced by joinOuter.

Answer(s): C

Explanation:

Correct code block:
transactionsDf.join(itemsDf, itemsDf.itemId == transactionsDf.productId, "outer") Static notebook | Dynamic notebook: See test 1, Question: 33 (
Databricks import instructions) (https://flrs.github.io/spark_practice_tests_code/#1/33.html ,
https://bit.ly/sparkpracticeexams_import_instructions)



Which of the following code blocks performs a join in which the small DataFrame transactionsDf is sent to all executors where it is joined with DataFrame itemsDf on columns storeId and itemId, respectively?

  1. itemsDf.join(transactionsDf, itemsDf.itemId == transactionsDf.storeId, "right_outer")
  2. itemsDf.join(transactionsDf, itemsDf.itemId == transactionsDf.storeId, "broadcast")
  3. itemsDf.merge(transactionsDf, "itemsDf.itemId == transactionsDf.storeId", "broadcast")
  4. itemsDf.join(broadcast(transactionsDf), itemsDf.itemId == transactionsDf.storeId)
  5. itemsDf.join(transactionsDf, broadcast(itemsDf.itemId == transactionsDf.storeId))

Answer(s): D

Explanation:

The issue with all answers that have "broadcast" as very last argument is that "broadcast" is not a valid join type. While the entry with "right_outer" is a valid statement, it is not a broadcast join. The item where broadcast() is wrapped around the equality condition is not valid code in Spark. broadcast() needs to be wrapped around the name of the small DataFrame that should be broadcast.

More info: Learning Spark, 2nd Edition, Chapter 7
Static notebook | Dynamic notebook: See test 1, Question: 34 ( Databricks import instructions)
tion and explanation?



Which of the following code blocks reduces a DataFrame from 12 to 6 partitions and performs a full shuffle?

  1. DataFrame.repartition(12)
  2. DataFrame.coalesce(6).shuffle()
  3. DataFrame.coalesce(6)
  4. DataFrame.coalesce(6, shuffle=True)
  5. DataFrame.repartition(6)

Answer(s): E

Explanation:

DataFrame.repartition(6)
Correct. repartition() always triggers a full shuffle (different from coalesce()). DataFrame.repartition(12)
No, this would just leave the DataFrame with 12 partitions and not 6. DataFrame.coalesce(6)
coalesce does not perform a full shuffle of the data. Whenever you see "full shuffle", you know that you are not dealing with coalesce(). While coalesce() can perform a partial shuffle when required, it will try to minimize shuffle operations, so the amount of data that is sent between executors.
Here, 12 partitions can easily be repartitioned to be 6 partitions simply by stitching every two partitions into one.
DataFrame.coalesce(6, shuffle=True) and DataFrame.coalesce(6).shuffle() These statements are not valid Spark API syntax.
More info: Spark Repartition & Coalesce - Explained and Repartition vs Coalesce in Apache Spark - Rock the JVM Blog



Share your comments for Databricks Databricks Certified Associate Developer for Apache Spark 3.0 exam with other users:

A
Anonymous User
4/15/2026 2:43:53 AM

Question 23:
The correct answer is Domain admin (option B), not Fabric admin.

  • Domain admin provides domain-level management: create domains/subdomains and assign workspaces within those domains, which matches the tasks while following least privilege.
  • Fabric admin is global-level access and is more privileges than needed for this scenario (it would grant broader control across the Fabric environment).

A
Anonymous User
4/14/2026 12:31:34 PM

Question 2:
For question 2, the key concept is the Longest Prefix Match. Routers pick the route whose subnet mask is the most specific (largest prefix length) that still matches the destination IP.
From the options:

  • A) 10.10.10.0/28 ? 10.10.10.0–10.10.10.15
  • B) 10.10.13.0/25 ? 10.10.13.0–10.10.13.127
  • C) 10.10.13.144/28 ? 10.10.13.144–10.10.13.159
  • D) 10.10.13.208/29 ? 10.10.13.208–10.10.13.215

The destination Host A’s IP must fall within 10.10.13.208–10.10.13.215 for the /29 to be the best match. Since /29 is the longest prefix among the matching options, Router1 will use 10.10.13.208/29.
Thus, the correct answer is D.

S
srameh
4/14/2026 10:09:29 AM

Question 3:

  • Correct answer: Phase 4, Post Accreditation

  • Explanation:
- In DITSCAP, the four phases are: - Phase 1: Definition (concept and requirements) - Phase 2: Verification (design and testing) - Phase 3: Validation (fielding and evaluation) - Phase 4: Post Accreditation (ongoing operations and lifecycle management) - The description—continuing operation of an accredited IT system and addressing changing threats throughout its life cycle—fits the Post Accreditation phase, which covers operations, maintenance, monitoring, and reauthorization as threats and environment evolve.

O
onibokun10
4/13/2026 7:50:14 PM

Question 129:
Correct answer: CNAME

  • A CNAME record creates an alias for a domain, so newapplication.comptia.org will resolve to whatever IP address www.comptia.org resolves to. This ensures both names point to the same resource without duplicating the IP.
  • Why not the others:
- SOA defines authoritative information for a zone. - MX specifies mail exchange servers. - NS designates name servers for a zone.
  • Notes: The alias name (newapplication.comptia.org) should not have other records if you use a CNAME for it, and CNAMEs aren’t used for the zone apex (root) domain. This scenario uses a subdomain, so a CNAME is appropriate.

A
Anonymous User
4/13/2026 6:29:58 PM

Question 1:

  • Correct answer: C

  • Why this is best:
- Uses OS Login with IAM, so SSH access is granted via Google accounts rather than distributing per-user SSH keys. - Granting the compute.osAdminLogin role to a Google group gives admin access to all team members in a centralized, auditable way. - Access is auditable: Cloud Audit Logs show who accessed which VM, satisfying the security requirement to determine who accessed a given instance.
  • How it works:
- Enable OS Login on the project/instances (enable-oslogin metadata). - Add the team’s

A
Anonymous User
4/13/2026 1:00:51 PM

Question 2:

  • Answer: D. Azure Advisor

  • Why: To view security-related recommendations for resources in the Compute and Apps area (including App Service Web Apps and Functions), you use Azure Advisor. Advisor surfaces personalized best-practice recommendations across resources, including security, and shows which resources are affected and the severity.

  • Why not the others:
- Azure Log Analytics is for ad-hoc querying of telemetry, not for viewing security recommendations. - Azure Event Hubs is for streaming telemetry data, not for security recommendations.
  • Quick tip: In the portal, navigate to Azure Advisor and check the Security recommendations for App Services to see actionable items and affe

D
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LRK
3/22/2026 2:38:08 PM

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R
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V
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