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azlogr

Lifecycle: experimental CRAN status Codecov test coverage R-CMD-check

The goal of azlogr is to enable logging in ‘R’ and easily send the logging messages to ‘Azure Log Analytics’ workspace in real-time. It also shows the logging message on ‘R’ console, which makes it easier to see the logs in the same place where ‘R’ codes are executed. It will be easier for somebody to retrieve the historical logs in ‘Azure Log Analytics’, if needed, and compare.

This is an extension of the 'logger' package, see this article: vignette("Intro", package = "logger") for an introduction about that package. You may set the logging threshold using logger::log_threshold() function from 'logger' package while initiating a session.

Moreover, there is an option provided to add additional custom meta-data while logging, which can be helpful at times.

Installation

You can install the latest version of azlogr as published on CRAN with:

install.packages("azlogr")

Or, install the latest development version of azlogr from GitHub with:

install.packages("devtools")
devtools::install_github("atalv/azlogr")

Example

Below is shown a simple way to use the logging mechanism. Please refer the vignette article of this package, vignette("how-to-use-azlogr"), to know more on how to configure ‘Azure Log Analytics’ workspace credentials and use this package easily.

library(azlogr)
set_log_config(log_to_azure = FALSE)
logger_info("logging info")
#> {"level":"INFO","time":"2023-01-11 13:15:03","msg":"logging info"}

Workflow

And here is an example workflow of configuring the logging mechanism and using logger_* functions to log.

# Azure Log Analytics workspace id and shared key are fetched
# from environment variables.
# `Sys.setenv` is used only for demonstration purpose!!
Sys.setenv(AZ_LOG_ID = "<enter-your-Azure-Log-Analytics-workspace-id>")
Sys.setenv(AZ_LOG_KEY = "<enter-your-Azure-Log-Analytics-shared-key>")

library(azlogr)

# Optionally, add additional meta-data, `country` and `id`, to be collected
# while logging, on top of the default fields - 'level', 'time', 'msg'.
set_log_config(
  log_fields = c("level", "time", "msg"),
  additional_fields = list(country = "in", id = 123)
)

# Use logger_* functions with appropriate logging level to log.
# If POST is successful, then it will be available in custom log table on
# Azure Log Analytics, by default table name will be `log_from_r`_CL (_CL is
# added by Azure for any custom log table)
logger_info("log info sent to Azure")
#> {"level":"INFO","time":"2023-01-11 13:15:04","msg":"log info sent to Azure","country":"in","id":123}

# If the POST request is unsuccessful due to Azure credential issue, then log
# message is displayed on console and a warning is generated with error details.
logger_info("log info sent to Azure")
#> {"level":"INFO","time":"2023-01-11 13:15:04","msg":"log info sent to Azure","country":"in","id":123}
#> Warning message:
#> In logger_level(logger::INFO, ...) :
#>   Some error happened while sending POST request to 'Azure Log Analytics' workspace.
#> Error message: Error in curl::curl_fetch_memory(url, handle = handle) :
#>   Could not resolve host: abcd.ods.opinsights.azure.com

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.