rqueryrquery
is a piped query generator based on Codd’s
relational algebra (updated to reflect lessons learned from working
with R, SQL, and dplyr
at big data scale in production).
rquery
is a data wrangling system designed to express complex data manipulation
as a series of simple data transforms. This is in the spirit of
R’s base::transform(), or dplyr’s
dplyr::mutate() and uses a pipe in the style popularized in
R with magrittr. The operators themselves
follow the selections in Codd’s relational algebra, with the addition of
the traditional SQL “window functions.” More on the
background and context of rquery can be found here.
The R/rquery version of this introduction
is here,
and the Python/data_algebra version of this
introduction is here.
In transform formulations data manipulation is written as
transformations that produce new data.frames, instead of as
alterations of a primary data structure (as is the case with
data.table). Transform system can use more space
and time than in-place methods. However, in our opinion, transform
systems have a number of pedagogical advantages.
In rquery’s case the primary set of data operators is as
follows:
drop_columnsselect_columnsrename_columnsselect_rowsorder_rowsextendprojectnatural_joinconvert_records (supplied by the cdata
package).These operations break into a small number of themes:
data.frames.cdata
package).The point is: Codd worked out that a great number of data
transformations can be decomposed into a small number of the above
steps. rquery supplies a high performance implementation of
these methods that scales from in-memory scale up through big data scale
(to just about anything that supplies a sufficiently powerful
SQL interface, such as PostgreSQL, Apache Spark, or Google
BigQuery).
We will work through simple examples/demonstrations of the
rquery data manipulation operators.
rquery operatorsThe simple column operations are as follows.
drop_columnsselect_columnsrename_columnsThese operations are easy to demonstrate.
We set up some simple data.
d <- data.frame(
x = c(1, 1, 2),
y = c(5, 4, 3),
z = c(6, 7, 8)
)
knitr::kable(d)| x | y | z |
|---|---|---|
| 1 | 5 | 6 |
| 1 | 4 | 7 |
| 2 | 3 | 8 |
For example: drop_columns works as follows.
drop_columns creates a new data.frame without
certain columns.
library(rquery)## Loading required package: wrapr
library(rqdatatable)
drop_columns(d, c('y', 'z'))## x
## 1 1
## 2 1
## 3 2
In all cases the first argument of a rquery operator is
either the data to be processed, or an earlier rquery
pipeline to be extended. We will take about composing
rquery operations after we work through examples of all of
the basic operations.
We can write the above in piped notation (using the wrapr
pipe in this case):
d %.>%
drop_columns(., c('y', 'z')) %.>%
knitr::kable(.)| x |
|---|
| 1 |
| 1 |
| 2 |
Notice the first argument is an explicit “dot” in wrapr
pipe notation.
select_columns’s action is also obvious from
example.
d %.>%
select_columns(., c('x', 'y')) %.>%
knitr::kable(.)| x | y |
|---|---|
| 1 | 5 |
| 1 | 4 |
| 2 | 3 |
rename_columns is given as name-assignments of the form
'new_name' = 'old_name':
d %.>%
rename_columns(.,
c('x_new_name' = 'x',
'y_new_name' = 'y')
) %.>%
knitr::kable(.)| x_new_name | y_new_name | z |
|---|---|---|
| 1 | 5 | 6 |
| 1 | 4 | 7 |
| 2 | 3 | 8 |
The simple row operations are:
select_rowsorder_rowsselect_rows keeps the set of rows that meet a given
predicate expression.
d %.>%
select_rows(., x == 1) %.>%
knitr::kable(.)| x | y | z |
|---|---|---|
| 1 | 5 | 6 |
| 1 | 4 | 7 |
Notes on how to use a variable to specify column names in
select_rows can be found here.
order_rows re-orders rows by a selection of column names
(and allows reverse ordering by naming which columns to reverse in the
optional reverse argument). Multiple columns can be
selected in the order, each column breaking ties in the earlier
comparisons.
d %.>%
order_rows(.,
c('x', 'y'),
reverse = 'x') %.>%
knitr::kable(.)| x | y | z |
|---|---|---|
| 2 | 3 | 8 |
| 1 | 4 | 7 |
| 1 | 5 | 6 |
General rquery operations do not depend on row-order and
are not guaranteed to preserve row-order, so if you do want to order
rows you should make it the last step of your pipeline.
The important create or replace column operation is:
extendextend accepts arbitrary expressions to create new
columns (or replace existing ones). For example:
d %.>%
extend(., zzz := y / x) %.>%
knitr::kable(.)| x | y | z | zzz |
|---|---|---|---|
| 1 | 5 | 6 | 5.0 |
| 1 | 4 | 7 | 4.0 |
| 2 | 3 | 8 | 1.5 |
We can use = or := for column assignment.
In these examples we will use := to keep column assignment
clearly distinguishable from argument binding.
extend allows for very powerful per-group operations
akin to what SQL calls “window
functions”. When the optional partitionby argument is
set to a vector of column names then aggregate calculations can be
performed per-group. For example.
shift <- data.table::shift
d %.>%
extend(.,
max_y := max(y),
shift_z := shift(z),
row_number := row_number(),
cumsum_z := cumsum(z),
partitionby = 'x',
orderby = c('y', 'z')) %.>%
knitr::kable(.)| x | y | z | max_y | shift_z | row_number | cumsum_z |
|---|---|---|---|---|---|---|
| 1 | 4 | 7 | 5 | NA | 1 | 7 |
| 1 | 5 | 6 | 5 | 7 | 2 | 13 |
| 2 | 3 | 8 | 3 | NA | 1 | 8 |
Notice the aggregates were performed per-partition (a set of rows
with matching partition key values, specified by
partitionby) and in the order determined by the
orderby argument (without the orderby argument
order is not guaranteed, so always set orderby for windowed
operations that depend on row order!).
More on the window functions can be found here.
Notes on how to use a variable to specify column names in
extend can be found here.
The main aggregation method for rquery is:
projectproject performs per-group calculations, and returns
only the grouping columns (specified by groupby) and
derived aggregates. For example:
d %.>%
project(.,
max_y := max(y),
count := n(),
groupby = 'x') %.>%
knitr::kable(.)| x | max_y | count |
|---|---|---|
| 1 | 5 | 2 |
| 2 | 3 | 1 |
Notice we only get one row for each unique combination of the
grouping variables. We can also aggregate into a single row by not
specifying any groupby columns.
d %.>%
project(.,
max_y := max(y),
count := n()) %.>%
knitr::kable(.)| max_y | count |
|---|---|
| 5 | 3 |
Notes on how to use a variable to specify column names in
project can be found here.
data.framesTo combine multiple tables in rquery one uses what we
call the natural_join operator. In the rquery
natural_join, rows are matched by column keys and any two
columns with the same name are coalesced (meaning the first
table with a non-missing values supplies the answer). This is easiest to
demonstrate with an example.
Let’s set up new example tables.
d_left <- data.frame(
k = c('a', 'a', 'b'),
x = c(1, NA, 3),
y = c(1, NA, NA),
stringsAsFactors = FALSE
)
knitr::kable(d_left)| k | x | y |
|---|---|---|
| a | 1 | 1 |
| a | NA | NA |
| b | 3 | NA |
d_right <- data.frame(
k = c('a', 'b', 'q'),
y = c(10, 20, 30),
stringsAsFactors = FALSE
)
knitr::kable(d_right)| k | y |
|---|---|
| a | 10 |
| b | 20 |
| q | 30 |
To perform a join we specify which set of columns our our
row-matching conditions (using the by argument) and what
type of join we want (using the jointype argument). For
example we can use jointype = 'LEFT' to augment our
d_left table with additional values from
d_right.
natural_join(d_left, d_right,
by = 'k',
jointype = 'LEFT') %.>%
knitr::kable(.)| k | x | y |
|---|---|---|
| a | 1 | 1 |
| a | NA | 10 |
| b | 3 | 20 |
In a left-join (as above) if the right-table has unique keys then we get a table with the same structure as the left-table- but with more information per row. This is a very useful type of join in data science projects. Notice columns with matching names are coalesced into each other, which we interpret as “take the value from the left table, unless it is missing.”
Record transformation is “simple once you get it”. However, we suggest reading up on that as a separate topic here.
We could, of course, perform complicated data manipulation by
sequencing rquery operations. For example to select one row
with minimal y per-x group we could work in
steps as follows.
. <- d
. <- extend(.,
row_number := row_number(),
partitionby = 'x',
orderby = c('y', 'z'))
. <- select_rows(.,
row_number == 1)
. <- drop_columns(.,
"row_number")
knitr::kable(.)| x | y | z |
|---|---|---|
| 1 | 4 | 7 |
| 2 | 3 | 8 |
The above discipline has the advantage that it is easy to debug, as we can run line by line and inspect intermediate values. We can even use the Bizarro pipe to make this look like a pipeline of operations.
d ->.;
extend(.,
row_number := row_number(),
partitionby = 'x',
orderby = c('y', 'z')) ->.;
select_rows(.,
row_number == 1) ->.;
drop_columns(.,
"row_number") ->.;
knitr::kable(.)| x | y | z |
|---|---|---|
| 1 | 4 | 7 |
| 2 | 3 | 8 |
Or we can use the wrapr
pipe on the data, which we call “immediate mode” (for more on modes
please see here).
d %.>%
extend(.,
row_number := row_number(),
partitionby = 'x',
orderby = c('y', 'z')) %.>%
select_rows(.,
row_number == 1) %.>%
drop_columns(.,
"row_number") %.>%
knitr::kable(.)| x | y | z |
|---|---|---|
| 1 | 4 | 7 |
| 2 | 3 | 8 |
rquery operators can also act on rquery
pipelines instead of acting on data. We can write our operations as
follows:
ops <- local_td(d) %.>%
extend(.,
row_number := row_number(),
partitionby = 'x',
orderby = c('y', 'z')) %.>%
select_rows(.,
row_number == 1) %.>%
drop_columns(.,
"row_number")
cat(format(ops))## mk_td("d", c(
## "x",
## "y",
## "z")) %.>%
## extend(.,
## row_number := row_number(),
## partitionby = c('x'),
## orderby = c('y', 'z'),
## reverse = c()) %.>%
## select_rows(.,
## row_number == 1) %.>%
## drop_columns(.,
## c('row_number'))
And we can re-use this pipeline, both on local data and to generate
SQL to be run in remote databases. Applying this operator
pipeline to our data.frame d is performed as
follows.
d %.>%
ops %.>%
knitr::kable(.)| x | y | z |
|---|---|---|
| 1 | 4 | 7 |
| 2 | 3 | 8 |
And for SQL we have the following.
raw_connection <- DBI::dbConnect(RSQLite::SQLite(), ":memory:")
RSQLite::initExtension(raw_connection)
db <- rquery_db_info(
connection = raw_connection,
is_dbi = TRUE,
connection_options = rq_connection_tests(raw_connection))
cat(to_sql(ops, db))## SELECT
## `x`,
## `y`,
## `z`
## FROM (
## SELECT * FROM (
## SELECT
## `x`,
## `y`,
## `z`,
## row_number ( ) OVER ( PARTITION BY `x` ORDER BY `y`, `z` ) AS `row_number`
## FROM (
## SELECT
## `x`,
## `y`,
## `z`
## FROM
## `d`
## ) tsql_87263209472242564970_0000000000
## ) tsql_87263209472242564970_0000000001
## WHERE `row_number` = 1
## ) tsql_87263209472242564970_0000000002
# clean up
DBI::dbDisconnect(raw_connection)For more SQL examples, please see here.
What we are trying to illustrate above: there is a continuum of notations possible between:
Being able to see these as all related gives some flexibility in decomposing problems into solutions. We have some more advanced notes on the differences in working modalities here and here.
rquery supplies a very teachable grammar of data
manipulation based on Codd’s relational algebra and experience with
pipelined data transforms (such as base::transform(),
dplyr, and data.table).
For in-memory situations rquery uses
data.table as the implementation provider (through the
small adapter package rqdatatable) and is routinely faster
than any other R data manipulation system except
data.table itself.
For bigger than memory situations rquery can translate
to any sufficiently powerful SQL dialect, allowing
rquery pipelines to be executed on PostgreSQL, Apache
Spark, or Google BigQuery.
In addition the data_algebra
Python package supplies a nearly identical system for working with data
in Python. # Background
There are many prior relational algebra inspired specialized query languages. Just a few include:
Alpha
~1971.ISBL / Information system based language ~1973QUEL
~1974.IBM System R
~1974.SQL
~1974.Tutorial D ~1994.data.table
~2006.LINQ
~2007.pandas
~2008.dplyr
~2014.Apache Calcite
~2014.rquery is realized as a thin translation to an
underlying SQL provider. We are trying to put the Codd
relational operators front and center (using the original naming, and
back-porting SQL progress such as window functions to the
appropriate relational operator).
Some related work includes:
data.tabledisk.framedbplyrdplyrdtplyrmaditrncpoormanrqdatatableSparkRsparklyrsqldftable.expresstidyfasttidyfsttidyquerytidyrtidytable
(formerly gdt/tidydt)data_algebraTo install rquery please try
install.packages("rquery").
rquery is intended to work with “tame column names”,
that is column names that are legitimate symbols in R and
SQL.
The previous rquery introduction is available here.