How can you compare Hadoop and Spark in terms of ease of use?
Answer / Alka Yadav
Hadoop is known for its complexity due to its large number of components and configurations that need to be managed. On the other hand, Apache Spark provides a more simplified and high-level API, making it easier to write and run distributed applications.
| Is This Answer Correct ? | 0 Yes | 0 No |
Is spark an etl?
What is sc parallelize?
How can you compare Hadoop and Spark in terms of ease of use?
What happens when we submit a spark job?
What are the advantages of datasets in spark?
Do we need scala for spark?
What happens when you submit spark job?
How Spark uses Hadoop?
What is in memory in spark?
How is machine learning implemented in spark?
What is external shuffle service in spark?
Can you explain benefits of spark over mapreduce?
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)