I am looking for the standard (if any) logging package for R, and some sample usage?
I also don't see any among the packages listed: http://cran.r-project.org/web/packages/
Join Stack Overflow to learn, share knowledge, and build your career.
I just submitted a
logging package to CRAN. it is based on some parts of an older version of the 'futile' package (by Brian Lee Yung Rowe).
You find the
It mimics the standard python
logging package, but please be careful if you decide to use it. I also attempted to document it by example, the package home page on R-Forge points to a couple of possible usage sessions.
Any feedback will be read with interest!
At the moment, there is still no native library for logging. But there are four of them available on CRAN:
- simple & log4j-like
- resembles standard Python library (uses that documentation as guideline)
- author started it in 2010, 'mature' by 2012
- adopted by WLOGSolutions
- actively maintained
2) futile.logger (recommended! I am also using it)
- actively maintaining
- supports json error logging
- similar semantics to Python’s logging as well as log4j-like
- may be complicated
- easy and log4j-like
- not being maintained since 2014
- supersimple - (open, write, close file)
I suggest the
futile.logger package, it implements multiple hierarchical loggers with formatted output strings and you can send the output different ways. It also implements per-package loggers naturally.
A simpler alternative compared to
The log4r package is meant to provide a clean, lightweight object-oriented approach to logging in R based roughly on the widely emulated log4j API. The example code below shows how the logger is used in practice to print output to a simple plaintext log file.
I've started logR project in June 2014. Initially it was a R process logger with exception handling capable to log to csv and DBI/RODBDC/RJDBC databases.
Starting from 2.1 version I've switched to support only PostgreSQL as backend for logs.
If you are able to arrange single table in postgres database then you can easily use logR.
Some of logR features:
# install logR install.packages("logR", repos = c("https://jangorecki.github.io/logR", "https://cran.rstudio.com")) # attach logR library(logR) # setup connection, default to env vars: `POSTGRES_DB`, etc. # if you have docker then: docker run --rm -p 127.0.0.1:5432:5432 -e POSTGRES_PASSWORD=postgres --name pg-logr postgres:9.5 logR_connect() #  TRUE # create logr table logR_schema() # make some logging and calls logR(1+2) # OK # 3 logR(log(-1)) # warning # NaN f = function() stop("an error") logR(r <- f()) # stop #NULL g = function(n) data.frame(a=sample(letters, n, TRUE)) logR(df <- g(4)) # out rows # a #1 u #2 c #3 w #4 p # try CTRL+C / 'stop' button to interrupt logR(Sys.sleep(15)) # wrapper to: dbReadTable(conn = getOption("logR.conn"), name = "logr") logR_dump() # logr_id logr_start expr status alert logr_end timing in_rows out_rows mail message cond_call cond_message #1: 1 2016-02-08 16:35:00.148 1 + 2 success FALSE 2016-02-08 16:35:00.157 0.000049163 NA NA FALSE NA NA NA #2: 2 2016-02-08 16:35:00.164 log(-1) warning TRUE 2016-02-08 16:35:00.171 0.000170801 NA NA FALSE NA log(-1) NaNs produced #3: 3 2016-02-08 16:35:00.180 r <- f() error TRUE 2016-02-08 16:35:00.187 0.000136896 NA NA FALSE NA f() an error #4: 4 2016-02-08 16:35:00.197 df <- g(4) success FALSE 2016-02-08 16:35:00.213 0.000696145 NA 4 FALSE NA NA NA #5: 5 2016-02-08 16:35:00.223 Sys.sleep(15) interrupt TRUE 2016-02-08 16:35:05.434 5.202319000 NA NA FALSE NA NA NA
More examples can be found in logR unit tests.