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refreshr allows you to create dataframes/tables that are
refreshable. That means they have information about their (online) data
source baked into them (as attributes) and can be updated from that
source using a simple call of the refresh()
function. The
dataframe can the be shared with coworkers (e.g. as an RData file) and
the recpient does not need to care about how he can update the data. If
he wants the data updated from the original source refreshr
will do the job for him.
The function make_refreshable()
converts a conventional
dataframe/table into a refreshable dataframe/table. This is done by
specifying a load_code
that is essentially the code you
would call to download the data from the original data source.
Sometimes, you want to process the raw data that is downloaded from
the remote data source. This can be achieved using the
prep_code
argument of the make_refreshable()
.
prep_code
stores a code that is automatically applied to
the raw data from the the data source after the data has been
refreshed.
Let us take as an example US labor market data provided by the U.S.
Bureau of Labor Statistics (BLS). We want to download this data from
BLS’ public website and filter it for the overall unemployment rate
(data series LNS14000000
); the overall dataset contains
many more data series beyond the overall unemployment rate.
First, we load the data:
library(refreshr)
library(data.table)
library(dplyr)
data <- fread("https://download.bls.gov/pub/time.series/ln/ln.data.1.AllData", sep="\t")
data <- filter(data, series_id=="LNS14000000")
Then we make data
refreshable:
data_refresh <- make_refreshable(data,
load_code = "fread(\"https://download.bls.gov/pub/time.series/ln/ln.data.1.AllData\",
sep=\"\t\")",
prep_code = "filter(#, series_id==\"LNS14000000\")")
The #
in the data preparation code
prep_code
is not an R comment but a reference to the
refreshable dataframe.
We have now a refreshable dataframe:
class(data_refresh)
## [1] "refreshr" "data.table" "data.frame"
is.refreshr(data_refresh)
## [1] TRUE
We could now save our dataframe, e.g. with
save(data_refresh, file = "refresh.RData")
and share it with other people.
If we want to refresh the data we just need to call
data_refresh <- refresh(data_refresh)
## Origina data set had 889 rows, updated dataset has 889.
The function uptodate()
confirms, that the data in our
dataframe is up-to-date:
uptodate(data_refresh)
## [1] TRUE
If we have a look at the properties of the refreshable dataframe
properties(data_refresh)
## Last refresh: 2022-02-25 09:25:13
## Data source: https://download.bls.gov/pub/time.series/ln/ln.data.1.AllData
## Structure: 889 rows | 5 columns
## Load code: fread("https://download.bls.gov/pub/time.series/ln/ln.data.1.AllData",
## sep=" ")
## Preparation code: filter(#, series_id=="LNS14000000")
we see that confirmed by the date/timestamp of the last update.
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.