Apache Spark Scala Interview Questions- Shyam Mallesh May 2026
val rdd = sc.textFile("data.txt") // nothing read yet val words = rdd.flatMap(_.split(" ")) // transformation val counts = words.map(w => (w, 1)).reduceByKey(_ + _) // transformation counts.saveAsTextFile("output") // 🔥 Action triggers job | Operation | Shuffle Behavior | Performance | |----------------|------------------|--------------| | groupByKey | Sends all values for a key across the network → high shuffle I/O | Slower, risks OOM | | reduceByKey | Combines values locally (map-side reduce) before shuffle → reduces data transfer | Faster, memory efficient |
import org.apache.spark.sql.types._ val schema = StructType(Seq( StructField("name", StringType), StructField("age", IntegerType), StructField("address", StructType(Seq( StructField("city", StringType), StructField("zip", LongType) ))) )) Apache Spark Scala Interview Questions- Shyam Mallesh
⚠️ coalesce(1) avoids shuffle but may cause data skew. Only safe if current partitions are small. With schema inference (slow but automatic): val rdd = sc