Upgrade to Pro — share decks privately, control downloads, hide ads and more …

The Joy of Functional Programming

The Joy of Functional Programming

Hadley Wickham

June 20, 2019
Tweet

More Decks by Hadley Wickham

Other Decks in Technology

Transcript

  1. # Find all the csv files in the current directory

    paths <- dir(pattern = "\\.csv$") # And read them in as data frames data <- vector("list", length(paths)) for (i in seq_along(paths)) { data[[i]] <- read.csv(paths[[i]]) } Imagine we want to read in a bunch of csv files
  2. # Find all the csv files in the current directory

    paths <- dir(pattern = "\\.csv$") # And read them in as data frames data <- vector("list", length(paths)) for (i in seq_along(paths)) { data[[i]] <- read.csv(paths[[i]]) } Imagine we want to read in a bunch of csv files R uses <- for assignment
  3. data <- vector("list", length(paths)) for (i in seq_along(paths)) { data[[i]]

    <- read.csv(paths[[i]]) } A loop always has three components
  4. data <- vector("list", length(paths)) for (i in seq_along(paths)) { data[[i]]

    <- read.csv(paths[[i]]) } 1. Space for the output Create a new list of the correct size
  5. data <- vector("list", length(paths)) for (i in seq_along(paths)) { data[[i]]

    <- read.csv(paths[[i]]) } 2. A vector to iterate over Creates an integer vector from 1 to length(paths) Avoid 1:length(paths) because it fails in unhappy way if paths has length 0
  6. data <- vector("list", length(paths)) for (i in seq_along(paths)) { data[[i]]

    <- read.csv(paths[[i]]) } 3. Code that’s run for every iteration Extract element i from paths Use [[ whenever you get or set a single element
  7. library(purrr) # But the FP equivalent is much shorter data

    <- map(paths, read.csv) # And has convenient extensions data <- map_dfr(paths, read.csv, id = "path") There’s nothing wrong with using a loop
  8. 1 cup flour a scant ¾ cup sugar 1 ½

    t baking powder 3 T unsalted butter ½ cup whole milk 1 egg ¼ t pure vanilla extract Preheat oven to 350°F. Put the flour, sugar, baking powder, salt, and butter in a freestanding electric mixer with a paddle attachment and beat on slow speed until you get a sandy consistency and everything is combined. Whisk the milk, egg, and vanilla together in a pitcher, then slowly pour about half into the flour mixture, beat to combine, and turn the mixer up to high speed to get rid of any lumps. Turn the mixer down to a slower speed and slowly pour in the remaining milk mixture. Continue mixing for a couple of more minutes until the batter is smooth but do not overmix. Spoon the batter into paper cases until 2/3 full and bake in the preheated oven for 20-25 minutes, or until the cake bounces back when touched. Vanilla cupcakes The hummingbird bakery cookbook
  9. ¾ cup + 2T flour 2 ½ T cocoa powder

    a scant ¾ cup sugar 1 ½ t baking powder 3 T unsalted butter ½ cup whole milk 1 egg ¼ t pure vanilla extract Preheat oven to 350°F. Put the flour, cocoa, sugar, baking powder, salt, and butter in a freestanding electric mixer with a paddle attachment and beat on slow speed until you get a sandy consistency and everything is combined. Whisk the milk, egg, and vanilla together in a pitcher, then slowly pour about half into the flour mixture, beat to combine, and turn the mixer up to high speed to get rid of any lumps. Turn the mixer down to a slower speed and slowly pour in the remaining milk mixture. Continue mixing for a couple of more minutes until the batter is smooth but do not overmix. Spoon the batter into paper cases until 2/3 full and bake in the preheated oven for 20-25 minutes, or until the cake bounces back when touched. Chocolate cupcakes The hummingbird bakery cookbook
  10. ¾ cup + 2T flour 2 ½ T cocoa powder

    a scant ¾ cup sugar 1 ½ t baking powder 3 T unsalted butter ½ cup whole milk 1 egg ¼ t pure vanilla extract Preheat oven to 350°F. Put the flour, cocoa, sugar, baking powder, salt, and butter in a freestanding electric mixer with a paddle attachment and beat on slow speed until you get a sandy consistency and everything is combined. Whisk the milk, egg, and vanilla together in a pitcher, then slowly pour about half into the flour mixture, beat to combine, and turn the mixer up to high speed to get rid of any lumps. Turn the mixer down to a slower speed and slowly pour in the remaining milk mixture. Continue mixing for a couple of more minutes until the batter is smooth but do not overmix. Spoon the batter into paper cases until 2/3 full and bake in the preheated oven for 20-25 minutes, or until the cake bounces back when touched. Chocolate cupcakes The hummingbird bakery cookbook
  11. 120g flour 140g sugar 1.5 t baking powder 40g butter

    120ml milk 1 egg 0.25 t vanilla Preheat oven to 350°F. Put the flour, sugar, baking powder, salt, and butter in a freestanding electric mixer with a paddle attachment and beat on slow speed until you get a sandy consistency and everything is combined. Whisk the milk, egg, and vanilla together in a pitcher, then slowly pour about half into the flour mixture, beat to combine, and turn the mixer up to high speed to get rid of any lumps. Turn the mixer down to a slower speed and slowly pour in the remaining milk mixture. Continue mixing for a couple of more minutes until the batter is smooth but do not overmix. Spoon the batter into paper cases until 2/3 full and bake in the preheated oven for 20-25 minutes, or until the cake bounces back when touched. Vanilla cupcakes The hummingbird bakery cookbook
  12. 120g flour 140g sugar 1.5 t baking powder 40g butter

    120ml milk 1 egg 0.25 t vanilla Beat flour, sugar, baking powder, salt, and butter until sandy. Whisk milk, egg, and vanilla. Mix half into flour mixture until smooth (use high speed). Beat in remaining half. Mix until smooth. Bake 20-25 min at 170°C. Vanilla cupcakes The hummingbird bakery cookbook
  13. Beat dry ingredients + butter until sandy. Whisk together wet

    ingredients. Mix half into dry until smooth (use high speed). Beat in remaining half. Mix until smooth. Bake 20-25 min at 170°C. Vanilla cupcakes 120g flour 140g sugar 1.5 t baking powder 40g butter 120ml milk 1 egg 0.25 t vanilla The hummingbird bakery cookbook
  14. 120g flour 140g sugar 1.5t baking powder 40g butter 120ml

    milk 1 egg 0.25 t vanilla Beat dry ingredients + butter until sandy. Whisk together wet ingredients. Mix half into dry until smooth (use high speed). Beat in remaining half. Mix until smooth. Bake 20-25 min at 170°C. Cupcakes 100g flour 20g cocoa 140g sugar 1.5t baking powder 40g butter 120ml milk 1 egg 0.25 t vanilla Vanilla Chocolate
  15. 120g flour 140g sugar 1.5t baking powder 40g butter 120ml

    milk 1 egg 0.25 t vanilla Beat dry ingredients + butter until sandy. Whisk together wet ingredients. Mix half into dry until smooth (use high speed). Beat in remaining half. Mix until smooth. Bake 20-25 min at 170°C. Cupcakes 100g flour 20g cocoa 140g sugar 1.5t baking powder 40g butter 120ml milk 1 egg 0.25 t vanilla Vanilla Chocolate 120g flour 140g sugar 1.5t baking powder 40g butter 120ml milk + 10g espresso powder 1 egg Espresso
  16. out1 <- vector("double", ncol(mtcars)) for(i in seq_along(mtcars)) { out1[[i]] <-

    mean(mtcars[[i]], na.rm = TRUE) } out2 <- vector("double", ncol(mtcars)) for(i in seq_along(mtcars)) { out2[[i]] <- median(mtcars[[i]], na.rm = TRUE) } What do these for loops do? Extracts column i mpg cyl disp hp drat <dbl> <dbl> <dbl> <dbl> <dbl> 1 21 6 160 110 3.9 ... 2 21 6 160 110 3.9 ... 3 22.8 4 108 93 3.85 ... 4 21.4 6 258 110 3.08 ... 5 18.7 8 360 175 3.15 ... . ... . ... ... .... ...
  17. out1 <- vector("double", ncol(mtcars)) for(i in seq_along(mtcars)) { out1[[i]] <-

    mean(mtcars[[i]], na.rm = TRUE) } out2 <- vector("double", ncol(mtcars)) for(i in seq_along(mtcars)) { out2[[i]] <- median(mtcars[[i]], na.rm = TRUE) } For loops emphasise the objects
  18. out1 <- vector("double", ncol(mtcars)) for(i in seq_along(mtcars)) { out1[[i]] <-

    mean(mtcars[[i]], na.rm = TRUE) } out2 <- vector("double", ncol(mtcars)) for(i in seq_along(mtcars)) { out2[[i]] <- median(mtcars[[i]], na.rm = TRUE) } Not the actions
  19. out1 <- map_dbl(mtcars, mean, na.rm = TRUE) out2 <- map_dbl(mtcars,

    median, na.rm = TRUE) Functional programming weights action and object equally
  20. out1 <- mtcars %>% map_dbl(mean, na.rm = TRUE) out2 <-

    mtcars %>% map_dbl(median, na.rm = TRUE) And combines well with the pipe
  21. diamonds %>% split_by(diamonds$color) %>% map(~ lm(log(price) ~ log(carat), .x)) %>%

    map_dfr(broom::tidy, .id = "color") Which is particularly important for harder problems