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To begin, make sure civis
is installed and your API key is
in your R environment. You can quickly test that civis
is working by invoking
If civis
is working, you’ll see a friendly message.
Otherwise, you might see an error like this when civis
wasn’t installed properly:
Error in loadNamespace(name) : there is no package called 'civis'
or like this if you haven’t set your API key correctly:
Error in api_key() : The environmental variable CIVIS_API_KEY is not set. Add this to your .Renviron or call Sys.setenv(CIVIS_API_KEY = '<api_key>')
With civis
, moving data to and from the cloud takes only
a few lines of code. Your data can be stored as rows in a table, CSVs on
remote file system or even as serialized R objects like nested lists.
For example,
library(civis)
# First we'll load a dataframe of the famous iris dataset
data(iris)
# We'll set a default database and define the table where want to
# store our data
options(civis.default_db = "my_database")
iris_tablename <- "my_schema.my_table"
# Next we'll push the data to the database table
write_civis(iris, iris_tablename)
# Great, now let's read it back
df <- read_civis(iris_tablename)
# Hmmm, I'm more partial to setosa myself. Let's write a custom sql query.
# We'll need to wrap our query string in `sql` to let read_civis know we
# are passing in a sql command rather than a tablename.
query_str <- paste("SELECT * FROM", iris_tablename, "WHERE Species = 'setosa'")
iris_setosa <- read_civis(sql(query_str))
# Now let's store this data along with a note as a serialized R object
# on a remote file system. We could store any object remotely this way.
data <- list(data = iris_setosa, special_note = "The best iris species")
file_id <- write_civis_file(data)
# Finally, let's read back our data from the remote file system.
data2 <- read_civis(file_id)
data2[["special_note"]]
## [1] "The best iris species"
civis
also includes functionality for working with
CivisML, Civis’ machine learning ecosystem. With the combined power of
CivisML and civis
, you can build models in the cloud where
the models can use as much memory as they need and there’s no chance of
your laptop crashing.
library(civis)
# It really is a great dataset
data(iris)
# Gradient boosting or random forest, who will win?
gb_model <- civis_ml_gradient_boosting_classifier(iris, "Species")
rf_model <- civis_ml_random_forest_classifier(iris, "Species")
macroavgs <- list(gb_model = gb_model$metrics$metrics$roc_auc_macroavg,
rf_model = rf_model$metrics$metrics$roc_auc_macroavg)
macroavgs
## $gb_model
## [1] 0.9945333
##
## $rf_model
## [1] 0.9954667
For a comprehensive list of functions in civis
, see Reference
in the full
documentation. The full documentation also includes a set of
Articles
for detailed documentation on common workflows,
including data
manipulation and building
models in parallel.
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.