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Understanding and Improving
Code Generation
Michael Chen
Agenda
Spark SQL Basics
Volcano Iterator Model
Whole-Stage Code Generation
Problems
Splitting Generated Code
Performance
Spark SQL
https://databricks.com/blog/2015/03/24/spark-sql-graduates-from-alpha-in-spark-1-3.html
Volcano Iterator Model
Volcano Iterator Model
▪ Each operator can be thought of as an iterator
▪ Simple to compose arbitrary operators
Volcano Iterator Model
https://databricks.com/blog/2016/05/23/apache-spark-as-a-compiler-joining-a-billion-rows-per-second-on-a-laptop.html
Interpreted Evaluation
Expression Code Generation
Whole Stage Code Generation
Whole-Stage Code Generation
▪ Inspired by Thomas Neumann’s paper –
Efficiently Compiling Efficient Query Plans for Modern Hardware
▪ Collapse entire query into a single operator
▪ Generate one function for the entire query
Whole-Stage Code Generation
▪ Less virtual function calls
▪ Data placed in CPU registers
▪ Compiler optimizations
Whole-Stage Code Generation
▪ Produce method called on children until producer operator
▪ Call consume on parents to generate code for their logic
▪ A Deep Dive into Query Execution of Spark SQL
Whole-Stage Code Generation
Whole-Stage Code Generation
Whole-Stage Code Generation
Problems
Whole-Stage Code Generation Problems
▪ Customers map external data to internal representations using case
statements
▪ Accounting use case for validating input => case expressions with
thousands of when branches
▪ Generated functions are 1million LOC plus
Whole-Stage Code Generation Problems
Whole-Stage Code Generation Problems
▪ Java limits method size to 64KB
▪ JIT compilation disabled when methods exceed 8KB
▪ Compiler can throw OOM exceptions with large methods
Large Generated Code Solutions
▪ Split large functions into many small functions
▪ Implemented in expression code generation
▪ Whole-stage code generation can fallback to volcano iterator
Splitting Code Generated Functions
Splitting Expression Code Generation
▪ Each operator can be thought of as an iterator
▪ Result of every operator share common interface
▪ Only input to generated function is output of next
Splitting Expression Code Generation
Splitting Expression Code Generation
Splitting Whole-Stage Code Generation
▪ Before calling parent’s consume, store output variables
Splitting Whole-Stage Code Generation
Tracking Whole-Stage Code Generation Inputs
▪ Evaluated variables from current or child expressions
▪ Rows referred by current or child expressions
▪ Eliminated subexpressions in child expressions
Split Case Expression Function
Performance
Performance Setup
▪ 1 Driver
▪ 12GB memory
▪ 1 core
▪ 3 Executors
▪ 120GB memory
▪ 28 core
▪ 50 million input rows
Performance
▪ Project case expression with 3000 branches
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