Split-apply-combine operations refer to a common type data manipulation where a function/statistic is computed on several chunks of data independently. The chunks are defined by the value of one variable.

Split-apply-combine operations refer to a common type data manipulation where a function/statistic is computed on several chunks of data independently. The chunks are defined by the value of one variable. As the name implies, they are composed of three parts:

  1. Splitting data by the value of one or more variables
  2. Applying a function to each chunk of data independently
  3. Combining the data back into one piece

Examples of split-apply-combine operations would be:

  • Computing median income by country from individual-level data (possibly appending the result to the same data)
  • Generating highest score for each class from student scores

Tools for streamlining split-apply-combine operations are available for popular statistical computation environments (non-exhaustive list):

  • In the R statistical environment there are dedicated packages for this purpose

    • data.table is an extension of data.frame that is optimized for split-apply-combine operations among other things
    • dplyr and the original package plyr provide convenient syntax and fast processing for such manipulations
  • In Python, the pandas library introduces data objects that include a group-by method for this type of operation.