Apache Spark Certification Practice Test

Question: 1 / 400

Is it true that Spark can directly work with data from Hive, JSON, CSV, S3, and HBase?

True

The statement is true because Apache Spark is designed with the capability to interact seamlessly with a variety of data sources. It natively supports reading from and writing to multiple formats and systems, which includes Hive, JSON, CSV, Amazon S3, and HBase.

For Hive, Spark can directly query Hive tables, leveraging Hive's metadata and allowing users to run SQL queries on Hive data using Spark SQL. Additionally, the native support for reading and writing JSON and CSV files makes it straightforward for Spark to process structured data in these formats.

Connecting to Amazon S3 is another strong feature of Spark, as it can access data stored in S3 buckets directly, permitting users to handle large datasets stored in the cloud effortlessly. When it comes to HBase, Spark can utilize the HBase integration, enabling it to read from and write to HBase tables, which is particularly useful for handling NoSQL data.

This flexibility in data connectivity is a key advantage of using Spark, allowing data engineers and data scientists to create comprehensive data processing pipelines without the need for complex configurations or additional plugins for standard data sources.

Get further explanation with Examzify DeepDiveBeta

False

Only with additional plugins

Only with configuration

Next Question

Report this question

Subscribe

Get the latest from Examzify

You can unsubscribe at any time. Read our privacy policy