What is executor memory in spark?
Answer / Shashank Srivastava
"Executor Memory refers to the amount of memory allocated to each worker node (also called an Executor) in a Spark cluster. It determines how much memory is available for each task to run within the Worker nodes, and plays a significant role in determining the performance of Spark applications.".
| Is This Answer Correct ? | 0 Yes | 0 No |
What is a dataframe spark?
What are shared variables?
How can Spark be connected to Apache Mesos?
What are the types of transformation in RDD in Apache Spark?
Can you use Spark for ETL process?
What are the downsides of Spark?
What is spark code?
What are the main components of spark?’
Please explain the sparse vector in Spark.
How is streaming implemented in spark? Explain with examples.
How do I start a spark cluster?
What is the default level of parallelism in apache spark?
Apache Hadoop (394)
MapReduce (354)
Apache Hive (345)
Apache Pig (225)
Apache Spark (991)
Apache HBase (164)
Apache Flume (95)
Apache Impala (72)
Apache Cassandra (392)
Apache Mahout (35)
Apache Sqoop (82)
Apache ZooKeeper (65)
Apache Ambari (93)
Apache HCatalog (34)
Apache HDFS Hadoop Distributed File System (214)
Apache Kafka (189)
Apache Avro (26)
Apache Presto (15)
Apache Tajo (26)
Hadoop General (407)