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SwimmeR
is intended to assist those working with times
from competitive pool swimming races, such as those conducted under the
NHFS, NCAA, ISL, or FINA rules. For more information please see
vignette("SwimmeR")
.
install.packages("SwimmeR")
library(SwimmeR)
Version 0.14.2
make_lineup
will take two data frames
containing athlete/event/time combinations (one for each team) and
create a lineup maximizing returns for one teamswim_parse
handles some Hytek psych sheets (single
column only)read_results
now handles both pdf and html results at
.aspx addressesswim_parse
handles Hytek Top Times reports via
toptimes_parse_hytek
. Still under development.place
supersedes swim_place
and dive_place
, handling both swimming and divingswim_parse
output columns
Finals_Time
and Prelims_Time
have been renamed
Finals
and Prelims
devtools::install_github("gpilgrim2670/SwimmeR", build_vignettes = TRUE)
SwimmeR
has two major uses - importing results and
formatting times. It also has functions for course conversions and
drawing brackets.
SwimmeR
reads swimming results into R and outputs tidy
data frames of the results. SwimmeR
uses
read_results
to read in either a PDF or HTML file (like a
url) and the swim_parse
or swim_parse_ISL
function to convert the read file to a tidy data frame. Reading .hy3
files is also now possible with swim_parse
, although .hy3
functionality is still under development and quite buggy. As of version
0.7.0 SwimmeR
can also read S.A.M.M.S. style results.
read_results
has two arguments, file
, which
is the file path to read in, and node
, required only for
HTML files, this is a CSS node where the results reside.
node
defaults to "pre"
, which has been correct
in every instance tested thus far.
swim_parse
has seven arguments as of version 0.7.0.
file
is the output of read_results
and is
required.
avoid
is a list of strings. Rows in file
containing any of those strings will not be included. avoid
is optional. Incorrectly specifying it may lead to nonsense rows in the
final data frame, but will not cause an error. Nonsense rows can be
removed after import.
typo
and replacement
work together to fix
typos, by replacing them with replacements. Strings in typo
will be replaced by strings in replacement
in element index
order - that is the first element of typo
will be replaced
everywhere it appears by the first element of replacement
.
Typos can cause lost data and nonsense rows.
See ?swim_parse
or the package vignette for more
information.
The following three arguments are only available in
SwimmeR v0.6.0
and higher
splits
and split_length
tell
swim_parse
if and how to import split times. Setting
splits = TRUE
will import splits as columns.
split_length
refers to the pool course (length) as defaults
to 50
. It may also be set to 25
, if splits are
recorded every 25 rather than every 50. Split reporting within source
files is very inconsistent, so while swim_parse
will import
whatever splits are present they may require some inspection after
import. swim_parse_ISL
also has a splits
argument that works the same way. Set splits = TRUE
to
record splits. See the Splits sections of
vignette("SwimmeR")
for more information and examples.
relay_swimmers
tells swim_parse
or
swim_parse_ISL
whether or not to include the names of relay
swimmers as additional columns. Set relay_swimmers = TRUE
to include. There is more information available in
vignette("SwimmeR")
swim_parse(
read_results(
"http://www.nyhsswim.com/Results/Boys/2008/NYS/Single.htm"
),typo = c("-1NORTH ROCKL"),
replacement = c("1-NORTH ROCKL"),
splits = TRUE, # requires version 0.6.0 or greater
relay_swimmers = TRUE # requires version 0.6.0 or greater
)
swim_parse_ISL
only requires one argument,
file
, the output of read_results
.
swim_parse_ISL(
file = read_results(
"https://isl.global/wp-content/uploads/2019/10/isl-indianapols-results-day-2-2.pdf"),
splits = TRUE, # requires version 0.6.0 or greater
relay_swimmers = TRUE # requires version 0.6.0 or greater
)
swim_parse
will attempt to capture the following
information, assuming it is present in the raw results.
Place
: Order of finish
Name
: An athlete’s name. Relays do not have names.
Age
: Could be a number of years (25) or a year in school
(SR)
Para
: An athlete’s para-swimming classification
(e.g. S10)
Team
: The name of a team, for athletes or relays
Prelims_Time
: If two times/scores are listed, this is
the first one. swim_parse
currently can’t differentiate
between a seed time and a prelims time. They’re both called
Prelims_Time
. Prelim/seed diving scores are also included
here even though they’re not technically times.
Finals_Time
: If two times/scores are listed this is the
second one. If only one time/score is listed this is it.
DQ
: Was an athlete/relay team disqualified (1) or not
(0)
Exhibition
: Was an athlete/relay team competing as a
non-scoring (exhibition) entry (1) or not (0)
Points
: Points award based on place (not diving
score)
Relay_Swimmer_X
: Names of athletes in a relay
Split_X
: Split corresponding to a given distance X
SwimmeR
can only read files in single column format, not
double.
SwimmeR
also converts times between the conventional
swimming format of minutes:seconds.hundredths (1:35.37) and the
computationally useful format of seconds, reported to the 100ths place
(e.g. 95.37). This is accomplished with sec_format
and
mmss_format
, which are inverses of one another. Both
sec_format
and mmss_format
work well with
tidyverse
functions.
<- c("1:35.97", "57.34", "16:53.19", NA)
times <- sec_format(times)
times_sec
times_sec<- mmss_format(times_sec)
times_mmss
times_mmssall.equal(times, times_mmss)
Team names are often abbreviated. Rather than specifying every
abbreviation SwimmeR
provides get_mode
to make
the task simpler.
name <- c(rep("Lilly King", 5), rep("James Sullivan", 3))
team <- c(rep("IU", 2), "Indiana", "IUWSD", "Indiana University", rep("Monsters University", 2), "MU")
df <- data.frame(name, team, stringsAsFactors = FALSE)
df %>%
group_by(name) %>%
mutate(Team = get_mode(team))
Athlete names are sometimes formatted as “Firstname Lastname” and
sometimes as “Lastname, Firstname”. For purposes of plotting and
presentation it’s often desirable to format all names the same way. The
name_reorder
function, available in versions >= 0.8.0,
will reorder all “Lastname, Firstname” names as “Firstname
Lastname”.
df <- data.frame(Name = c("King, Lilly", "Lilly King", NA, "Richards Ross, Sanya", "Phelps, Michael F"))
name_reorder(df)
While “Lastname, Firstname” is actually more informative in that it differentiates between last names and first names it’s not always possible to convert “Firstname Lastname” to “Lastname, Firstname”. Consider an athlete named “Michael Fred Phelps II” - it’s not possible to determine programmatically where a comma should go. Is it “II, Michael Fred Phelps”? Or maybe “Fred Phelps II, Michael”? There’s no way to tell. On the other hand converting “Phelps II, Michael Fred” to “Michael Fred Phelps II” is straightforward.
Brackets for single elimination tournaments can be produced for any number of teams between 5 and 64. Byes will automatically be included for higher seeds as required.
<- c("red", "orange", "yellow", "green", "blue", "indigo", "violet")
teams <- c("red", "yellow", "blue", "indigo")
round_two <- c("red", "blue")
round_three <- "red"
champion draw_bracket(teams = teams,
round_two = round_two,
round_three = round_three,
champion = champion)
Additionally ‘SwimmeR’ also converts between the various pool sizes
used in competitive swimming, namely 50m length (LCM), 25m length (SCM)
and 25y length (SCY). This is accomplished with
course_convert
. The verbose
parameter
determines what course_convert
outputs. Setting
verbose = FALSE
(the default) returns a data frame
including the input variables whereas verbose = TRUE
only
returns the converted time(s). course_convert
will take
inputs in either seconds or swimming format.
<- tibble(time = c("6:17.53", "59.14", "4:14.32", "16:43.19"), course = c("LCM", "LCM", "SCY", "SCM"), course_to = c("SCY", "SCY", "SCM", "LCM"), event = c("400 Free", "100 Fly", "400 IM", "1650 Free"))
swim
course_convert(time = swim$time, course = swim$course, course_to = swim$course_to, event = swim$event)
course_convert(time = swim$time, course = swim$course, course_to = swim$course_to, event = swim$event, verbose = TRUE)
I do a lot of demos on how to use SwimmeR
at my blog Swimming + Data Science.
SwimmeR
also has a vignette. Call
vignette("SwimmeR")
. If you download from Github don’t
forget to set build_vignettes = TRUE
.
If you find bug, please provide a minimal reproducible example at Github.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.