Apache Spark Certification Practice Test

Question: 1 / 400

How much faster is Spark (memory) than Hadoop?

10 times

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100 times

Choosing the answer of 100 times highlights the significant performance advantage that Apache Spark offers over traditional Hadoop MapReduce, particularly when it comes to processing data in-memory. Spark performs data processing tasks significantly faster due to its ability to store intermediate results in memory instead of writing them back to disk after every operation, which is the standard procedure in Hadoop.

This in-memory processing leads to reduced latency and increased throughput, especially for iterative algorithms and complex data processing workflows, which are common in data analysis tasks. While the exact speedup can vary depending on the specific use case and configuration, performance benchmarks and studies have often shown that Spark can achieve acceleration of around 100 times for certain workloads when compared to Hadoop.

Understanding these performance characteristics is critical for organizations when choosing between Spark and Hadoop for big data workloads. While Hadoop is still a powerful option for batch processing tasks, Spark's memory-centric approach and advanced optimizations make it a compelling choice for applications requiring rapid data processing and real-time analytics.

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