The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.
shiny_h2o
and
shiny_spark
functions now integrate density curves.shiny_h2o
and shiny_spark
functions ensure
reproducibility of results when user reproduce the same
parameters for a given machine learning modelshiny_h2o
and shiny_spark
functions now
work with an input dataset that contains a POSIXct
columnshiny_h2o
and shiny_spark
functions have
merged into shinyML_regression
function: H2O or Spark can
now be chosen just using the framework
argument.shinyML_classification
has been
implemented to train and test machine learning models for
classification tasks : classification results can be
viewed through confusion matrix charts in addition to existing available
item on old package versions .shinyML_regression
or shinyML_classification
function, authorized model families for auto ML searching can be
manually specified.shinyML_regression
and shinyML_classification
functions : argonDash
and argonR
shiny API
have been used to make user experience even more friendly.shinyML_regression
and
shinyML_classification
automatically detect if
input dataset contains a time-based column: in that case,
training and testing dataset splitting is done in order to respect
chronology. On the other case, rows are randomly assigned to training or
testing dataset according to a splitting percentage parameter.shiny_h2o
and
shiny_h2o
functionsshiny_h2o
and shiny_h2o
dashboards to explore
input data set. The Variable Summary tab allows to
check types and box plot of each input variable. The Explore
dataset tab gives the possibility to understand dependencies by
plotting each data variable as a function of another. An overview of all
variables dependencies is also available in the Correlation
matrix tab.shiny_h2o
and
shiny_h2o
have been removed to give even more simplicity
for the user: the dashboard now indicates at the top right of the
dashboard which input variable are available to train the model (output
variable y is automatically removed from the list).shiny_h2o
function: the
user now just need to set maximum calculation time.share_app
argument of shiny_h2o
and shiny_spark
examples have been set to FALSE.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.
Health stats visible at Monitor.