The {dm} package offers functions to work with relational data models in R.
This document introduces you to filtering functions, and shows how to apply them to the data that is separated into multiple tables.
Our example data is drawn from the {nycflights13} package that contains five inter-linked tables.
First, we will load the packages that we need:
library(tidyverse)
library(nycflights13)
library(dm)
To explore filtering with {dm}, we’ll use the {nycflights13} data
with its flights
, planes
,
airlines
, airports
and weather
tables.
This dataset contains information about the 336 776 flights that
departed from New York City in 2013, with 3322 different planes and 1458
airports involved. The data comes from the US Bureau of Transportation
Statistics, and is documented in
?nycflights13::flights
.
To start with our exploration, we have to create a dm
object from the {nycflights13} data. The built-in
dm::dm_nycflights13()
function takes care of this.
By default it only uses a subset of the complete data though: only
the flights on the 10th of each month are considered, reducing the
number of rows in the flights
table to 11 227.
A data model object contains data from the source tables, and metadata about the tables.
If you would like to create a dm
object from tables
other than the example data, you can use the new_dm()
,
dm()
or as_dm()
functions. See
vignette("howto-dm-df")
for details.
<- dm_nycflights13() dm
The console output of the ’dm` object shows its data and metadata, and is colored for clarity:
dm
Now we know that there are five tables in our dm
object.
But how are they connected? These relations are best displayed as a
visualization of the entity-relationship model:
dm_draw(dm)
You can look at a single table with tbl
. To print the
airports
table, call
tbl(dm, "airports")
dm
objectdm_filter()
allows you to select a subset of a
dm
object.
Filtering a dm
object is not that different from
filtering a dataframe or tibble with dplyr::filter()
.
The corresponding {dm} function is dm::dm_filter()
. With
this function one or more filtering conditions can be set for one of the
tables of the dm
object. These conditions are immediately
evaluated for their respective tables and for all related tables. For
each resulting table, all related tables (directly or indirectly) with a
filter condition them are taken into account in the following way: -
filtering semi-joins are successively performed along the paths from
each of the filtered tables to the requested table, each join reducing
the left-hand side tables of the joins to only those of their rows with
key values that have corresponding values in key columns of the
right-hand side tables of the join. - eventually the requested table is
returned, containing only the the remaining rows after the filtering
joins
Currently, this only works if the graph induced by the foreign key
relations is cycle free. Fortunately, this is the default for
dm_nycflights13()
.
Let’s see filtering in action:
We only want the data that is related to John F. Kennedy International Airport.
<-
filtered_dm %>%
dm dm_filter(airports = (name == "John F Kennedy Intl"))
filtered_dm
You can get the numbers of rows of each table with
dm_nrow()
.
<-
rows_per_table %>%
filtered_dm dm_nrow()
rows_per_tablesum(rows_per_table)
<- sum(dm_nrow(dm))
sum_nrow <- sum(dm_nrow(dm_apply_filters(filtered_dm))) sum_nrow_filtered
The total number of rows in the dm
drops from NA to NA
(the only unaffected table is the disconnected weather
table).
Next example:
Get a dm
object containing data for flights from
New York to the Dulles International Airport in Washington D.C.,
abbreviated with IAD
.
%>%
dm dm_filter(flights = (dest == "IAD")) %>%
dm_nrow()
Applying multiple filters to different tables is also supported.
An example:
Get all January 2013 flights from Delta Air Lines which didn’t depart from John F. Kennedy International Airport.
<-
dm_delta_may %>%
dm dm_filter(
airlines = (name == "Delta Air Lines Inc."),
airports = (name != "John F Kennedy Intl"),
flights = (month == 1)
)
dm_delta_may%>%
dm_delta_may dm_nrow()
You can inspect the filtered tables by subsetting them.
In the airlines
table, Delta is the only remaining
carrier:
$airlines dm_delta_may
Which planes were used to service these flights?
$planes dm_delta_may
And indeed, all included flights departed in January
(month == 1
):
$flights %>%
dm_delta_maycount(month)
For comparison, let’s review the equivalent manual query for
flights
in dplyr
syntax:
<- filter(airlines, name == "Delta Air Lines Inc.")
airlines_filtered <- filter(airports, name != "John F Kennedy Intl")
airports_filtered %>%
flights semi_join(airlines_filtered, by = "carrier") %>%
semi_join(airports_filtered, by = c("origin" = "faa")) %>%
filter(month == 5)
The {dm} code is leaner because the foreign key information is encoded in the object.
dm
object on a
database{dm} is meant to work with relational data models, locally as well as on databases. In your project, the data is probably not stored locally but in a remote relational database that can be queried with SQL statements.
You can check the queries by using sql_render()
from the
{dbplyr} package.
Example:
Print the SQL statements for getting all January 2013 flights from Delta Air Lines, which did not depart from John F. Kennedy International Airport, with the data stored in a sqlite database.
To show the SQL query behind a dm_filter()
, we copy the
flights
, airlines
and airports
tables from the nyflights13
dataset to a temporary
in-memory database using the built-in function copy_dm_to()
and dbplyr::src_memdb
.
Then we filter the data, and print the corresponding SQL statement
with dbplyr::sql_render()
.
%>%
dm dm_select_tbl(flights, airlines, airports) %>%
copy_dm_to(dbplyr::src_memdb(), .) %>%
dm_filter(
airlines = (name == "Delta Air Lines Inc."),
airports = (name != "John F Kennedy Intl"),
flights = (month == 1)
%>%
) dm_get_tables() %>%
map(dbplyr::sql_render)
Further reading: {dm}’s function for copying data from and to databases.