Valid Associate-Developer-Apache-Spark Dumps shared by EduDump.com for Helping Passing Associate-Developer-Apache-Spark Exam! EduDump.com now offer the newest Associate-Developer-Apache-Spark exam dumps, the EduDump.com Associate-Developer-Apache-Spark exam questions have been updated and answers have been corrected get the newest EduDump.com Associate-Developer-Apache-Spark dumps with Test Engine here:
Which of the following code blocks reads all CSV files in directory filePath into a single DataFrame, with column names defined in the CSV file headers? Content of directory filePath: 1._SUCCESS 2._committed_2754546451699747124 3._started_2754546451699747124 4.part-00000-tid-2754546451699747124-10eb85bf-8d91-4dd0-b60b-2f3c02eeecaa-298-1-c000.csv.gz 5.part-00001-tid-2754546451699747124-10eb85bf-8d91-4dd0-b60b-2f3c02eeecaa-299-1-c000.csv.gz 6.part-00002-tid-2754546451699747124-10eb85bf-8d91-4dd0-b60b-2f3c02eeecaa-300-1-c000.csv.gz 7.part-00003-tid-2754546451699747124-10eb85bf-8d91-4dd0-b60b-2f3c02eeecaa-301-1-c000.csv.gz spark.option("header",True).csv(filePath)
Correct Answer: C
Explanation The files in directory filePath are partitions of a DataFrame that have been exported using gzip compression. Spark automatically recognizes this situation and imports the CSV files as separate partitions into a single DataFrame. It is, however, necessary to specify that Spark should load the file headers in the CSV with the header option, which is set to False by default.