Beginning Apache Spark 3 Pdf Review
# Read df = spark.read.option("header", "true").csv("path/to/file.csv") df.write.parquet("output.parquet") 4.2 Common Transformations | Operation | Example | |------------------|-------------------------------------------| | Select columns | df.select("name", "age") | | Filter rows | df.filter(df.age > 21) | | Add column | df.withColumn("new", df.value * 2) | | Group and aggregate | df.groupBy("dept").avg("salary") | | Join | df1.join(df2, "id", "inner") | 4.3 Handling Missing Data df.dropna(how="any", subset=["important_col"]) df.fillna("age": 0, "name": "unknown") 4.4 User‑Defined Functions (UDFs) When built‑in functions are insufficient:
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from pyspark.sql import SparkSession spark = SparkSession.builder .appName("MyApp") .config("spark.sql.adaptive.enabled", "true") .getOrCreate() 3.1 RDD – The Original Foundation RDDs (Resilient Distributed Datasets) are low‑level, immutable, partitioned collections. They provide fault tolerance via lineage. However, they are not recommended for new projects because they lack optimization. beginning apache spark 3 pdf
df = spark.read.parquet("sales.parquet") df.filter("amount > 1000").groupBy("region").count().show() You can register DataFrames as temporary views and run SQL: # Read df = spark