I would like to use R and the Tidyverse to write one (long) statement to read data from a PDF-table and show as animated plot.
What i can't get right is
Note that i try this because i want to learn using the Tidyverse-functions. With multiple steps i did succeed (see code below).
I just like to learn if its possible in one continous 'flow'.
Thanks for your advice!
#
# Read data from table in PDF and show as animated plot.
# BvH. 2019-04-05
#
library(tidyverse) # i like to use the tidyverse
library(tabulizer) # needed to read tables from pdf-documents
library(gganimate) # animated plots based on ggplot2
library(gifski) # fastest renderer...
###############################################################################
# load the data (source:The Brewers of Europe) and extract table from pdf
beer_production_2010_2016.df <-
tabulizer::extract_tables(file = "https://brewersofeurope.org/uploads/mycms-files/documents/publications/2017/Statistics-201712-001.pdf",
pages = 9,
area = list(c(65, 55, 530, 550))) %>%
as.data.frame(stringsAsFactors = FALSE)
# set column-names: CAN THIS BE SIMPLIFIED WITH TIDYVERSE FUNCTIONS ?
col_names <- c("Country", "2010", "2011", "2012", "2013", "2014", "2015", "2016")
colnames(beer_production_2010_2016.df) <- col_names
# extract countries
Country <-
beer_production_2010_2016.df %>%
slice(2:29) %>%
dplyr::pull(Country)
animated.plot.beer_production_2010_2016 <-
# remove first row and data from non-EU contries and totals
beer_production_2010_2016.df %>%
slice(2:29) %>%
# remove the country column (contains alphabetical characters): CAN THIS BE SIMPLIFIED ?
dplyr::select(-Country) %>%
# remove all decimal grouping symbol's and transform country totals to numeric values
purrr::map_df(str_replace, pattern = ",", replacement = "") %>%
purrr::map_df(as.numeric) %>%
# add the country column again (as first column)
tibble::add_column(Country = as.factor(Country), .before = 1) %>%
# convert from wide to long
tidyr::gather(key = "year", value = "production", "2010":"2016") %>%
# keep the top 15 countries for each year. Add utility-columns with display labels for the plot.
group_by(year) %>%
mutate(rank = rank(-production),
Value_rel = production / production[rank == 1],
Value_lbl = paste0(" ", round(production, digits = 1), " x 1000 hl")) %>%
group_by(Country) %>%
filter(rank <= 15) %>%
ungroup() %>%
# create the plot
ggplot(aes(x = rank,
group = Country,
fill = Country,
color = Country)) +
geom_tile(aes(y = production / 2,
height = production,
width = 0.9), alpha = 0.8, color = NA) +
geom_text(aes(y = 0, label = paste(Country, " ")), vjust = 0.2, hjust = 1) +
geom_text(aes(y = production, label = Value_lbl, hjust = 0)) +
coord_flip(clip = "off", expand = FALSE) +
scale_x_reverse() +
guides(color = FALSE, fill = FALSE) +
theme_void() +
theme(legend.position = "none",
panel.grid.major.x = element_line( size = .1, color = "grey" ),
panel.grid.minor.x = element_line( size = .1, color = "grey" ),
plot.title = element_text(size = 25, hjust = 0.5, face = "bold", vjust = -1),
plot.subtitle = element_text(size = 18, hjust = 0.5, face = "italic"),
plot.margin = margin(2,2, 2, 4, "cm")) +
# animate the plot (with dynamic title that includes the year)
gganimate::transition_states(year, transition_length = 4, state_length = 1) +
gganimate::view_follow(fixed_x = TRUE) +
ggplot2::labs(title = 'European beer production per year : {closest_state}',
subtitle = "Top 15 Countries",
caption = "Data Source: The Brewers of Europe")
# Render into an animated gif
anim.gif <-
gganimate::animate(animated.plot.beer_production_2010_2016,
nframes = 200,
fps = 20,
width = 1200,
height = 1000,
renderer = gifski_renderer("eu_bier_productie_animatie.gif"))
To be honest I believe that when it comes to the use of tidyverse
, many things are a matter of taste, sure there are best practices, and intended purposes, but the preferences of a developer plays a big role.
Here's for example the main things that I would change, not because they are better, just because I'm more comfortable this way:
col_names <- c("Country", "2010", "2011", "2012", "2013", "2014", "2015", "2016")
to_numeric <- function(x){as.numeric(str_replace(x, pattern = ",", replacement = ""))}
not_factor <- function(x){!is.factor(x)}
animated.plot.beer_production_2010_2016 <-
# remove first row and data from non-EU contries and totals
beer_production_2010_2016.df %>%
#~~~~~~~~~ here are the stuff I changed ~~~~~~~~~
# give the columns the names you want
`names<-`(col_names) %>%
slice(2:29) %>%
# set country as factor
dplyr::mutate(Country = as.factor(Country)) %>%
# change the rest to numerics
dplyr::mutate_if(not_factor, to_numeric) %>%
#~~~~~~~~~~~~~~~~~~~~~ end ~~~~~~~~~~~~~~~~~~~~~~~
# convert from wide to long
tidyr::gather(key = "year", value = "production", "2010":"2016") %>%
# keep the top 15 countries for each year. Add utility-columns with display labels for the plot.
group_by(year) %>%
mutate(rank = rank(-production),
Value_rel = production / production[rank == 1],
Value_lbl = paste0(" ", round(production, digits = 1), " x 1000 hl")) %>%
# group_by(Country) %>% # ~~~~~~~~~~~~~~~~~ are you sure this is necessary?
filter(rank <= 15) %>%
# ungroup() %>% # ~~~~~~~~~~~~~~~~~ are you sure this is necessary?
# create the plot
ggplot(aes(x = rank,
group = Country,
fill = Country,
color = Country)) +
geom_tile(aes(y = production / 2,
height = production,
width = 0.9), alpha = 0.8, color = NA) +
geom_text(aes(y = 0, label = paste(Country, " ")), vjust = 0.2, hjust = 1) +
geom_text(aes(y = production, label = Value_lbl, hjust = 0)) +
coord_flip(clip = "off", expand = FALSE) +
scale_x_reverse() +
guides(color = FALSE, fill = FALSE) +
theme_void() +
theme(legend.position = "none",
panel.grid.major.x = element_line( size = .1, color = "grey" ),
panel.grid.minor.x = element_line( size = .1, color = "grey" ),
plot.title = element_text(size = 25, hjust = 0.5, face = "bold", vjust = -1),
plot.subtitle = element_text(size = 18, hjust = 0.5, face = "italic"),
plot.margin = margin(2,2, 2, 4, "cm")) +
# animate the plot (with dynamic title that includes the year)
gganimate::transition_states(year, transition_length = 4, state_length = 1) +
gganimate::view_follow(fixed_x = TRUE) +
ggplot2::labs(title = 'European beer production per year : {closest_state}',
subtitle = "Top 15 Countries",
caption = "Data Source: The Brewers of Europe")
Note that if you pass to the function tabulizer::extract_tables
the parameter output='data.frame'
, you would get the first row as a header, but you would still have to remove the total rows and the countries you don't want