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To get started with the nfer R interface, one option is to attach the library.
The recommended way to use nfer, though, is to just specify the nfer namespace whenever you use an nfer function. Throughout this vignette, we’ll use the nfer namespace.
library(nfer)
#>
#> Attaching package: 'nfer'
#> The following objects are masked from 'package:base':
#>
#> apply, load
There are four functions provided by the nfer package:
load
learn
apply
read
To initialize a specification that can be applied to a dataframe of events, use the load
function. This function takes two parameters: the path to an nfer specification file and the log level (optional).
<- nfer::load(system.file("extdata", "ssps.nfer", package = "nfer")) ssps
This specification can then be applied to a dataframe containing events. There should be at least two columns, the first of which is a character type containing the event names, and the second of which is either an integer or a character type containing the event timestamps.
The reason for representing timestamps as strings is that integers in R are limited to 32 bits, so if you need larger numbers (say, if you have millisecond granularity Unix timestamps), they must be character type. Technically numeric type timestamp columns are supported but discouraged, because they risk loss of precision during floating-point conversion. Internally, timestamps are represented by nfer as 64-bit integers. Currently the R wrappers will automatically convert factor columns to character columns.
<- nfer::load(system.file("extdata", "ssps.nfer", package = "nfer"))
ssps <- read.table(system.file("extdata", "ssps.events", package = "nfer"), sep="|", header=FALSE, colClasses = "character")
df <- nfer::apply(ssps, df)
intervals summary(intervals)
#> name start end
#> Length:743 Min. :8.238e+05 Min. :1.080e+09
#> Class :character 1st Qu.:8.909e+11 1st Qu.:9.007e+11
#> Mode :character Median :1.791e+12 Median :1.800e+12
#> Mean :1.787e+12 Mean :1.799e+12
#> 3rd Qu.:2.677e+12 3rd Qu.:2.699e+12
#> Max. :3.599e+12 Max. :3.601e+12
If the data frame has more than two columns, the 3rd on will be used as data.
Events will be assigned data values with a name equal to the name of the column whenever the value in the cell corresponding to that event and column has a value other than NA. The read
function will load event files formatted for the command-line version of nfer into a dataframe formatted for the R version.
<- nfer::load(system.file("extdata", "ops.nfer", package = "nfer"))
test <- nfer::read(system.file("extdata", "ops.events", package = "nfer"))
ops str(ops)
#> 'data.frame': 300 obs. of 4 variables:
#> $ Name : chr "ON" "ON" "TEST" "ON" ...
#> $ Time : int 1090 1148 1760 2206 2330 2357 3106 3186 3298 3688 ...
#> $ id : chr "idf0e9ad0e-5474-4ef7-a170-24503301e30f" "id46c21410-c8b3-4581-90b4-402248eb3483" "idf0e9ad0e-5474-4ef7-a170-24503301e30f" "id8e13ec1f-ae66-48b2-87d0-df7256f0ad1a" ...
#> $ success: logi NA NA TRUE NA TRUE NA ...
<- nfer::apply(test, ops)
intervals summary(intervals)
#> name start end s
#> Length:209 Min. : 1090 Min. : 2357 Length:209
#> Class :character 1st Qu.:15740 1st Qu.:17357 Class :character
#> Mode :character Median :28473 Median :29371 Mode :character
#> Mean :29017 Mean :29685
#> 3rd Qu.:43630 3rd Qu.:44189
#> Max. :55129 Max. :55261
#> id
#> Length:209
#> Class :character
#> Mode :character
#>
#>
#>
The nfer mining algorithm can also be used from R using the learn
function. The function takes a single parameter which is a data frame of events.
There should be two columns, the first of which is a character type containing the event names, and the second of which is an integer, string, or numeric type containing the event timestamps. learn
also has the same optional argument as load
which is the log level.
The specification returned from learn
can then be applied to a trace using apply
just like if it had been loaded from a specification file.
<- read.table(system.file("extdata", "ssps.events", package = "nfer"), sep="|", header=FALSE)
df <- nfer::learn(df)
learned <- nfer::apply(learned, df)
intervals summary(intervals)
#> name start end
#> Length:197 Min. :8.238e+05 Min. :1.080e+09
#> Class :character 1st Qu.:8.909e+11 1st Qu.:8.937e+11
#> Mode :character Median :1.800e+12 Median :1.800e+12
#> Mean :1.786e+12 Mean :1.788e+12
#> 3rd Qu.:2.676e+12 3rd Qu.:2.676e+12
#> Max. :3.599e+12 Max. :3.601e+12
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They may not be fully stable and should be used with caution. We make no claims about them.
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