The main goal of tidypredict
is to enable running predictions inside
databases. It reads the model, extracts the components needed to
calculate the prediction, and then creates an R formula that can be
translated into SQL. In other words, it is able to parse a model such as
this one:
model <- lm(mpg ~ wt + cyl, data = mtcars)
tidypredict
can return a SQL statement that is ready to run inside the
database. Because it uses dplyr
’s database interface, it works with
several databases back-ends, such as MS SQL:
tidypredict_sql(model, dbplyr::simulate_mssql())
## <SQL> (39.686261480253 + (`wt` * -3.19097213898374)) + (`cyl` * -1.5077949682598)
Install tidypredict
from CRAN using:
install.packages("tidypredict")
Or install the development version using devtools
as follows:
install.packages("remotes")
remotes::install_github("tidymodels/tidypredict")
tidypredict
has only a few functions, and it is not expected that
number to grow much. The main focus at this time is to add more models
to support.
Function | Description |
---|---|
tidypredict_fit() |
Returns an R formula that calculates the prediction |
tidypredict_sql() |
Returns a SQL query based on the formula from tidypredict_fit() |
tidypredict_to_column() |
Adds a new column using the formula from tidypredict_fit() |
tidypredict_test() |
Tests tidyverse predictions against the model’s native predict() function |
tidypredict_interval() |
Same as tidypredict_fit() but for intervals (only works with lm and glm ) |
tidypredict_sql_interval() |
Same as tidypredict_sql() but for intervals (only works with lm and glm ) |
parse_model() |
Creates a list spec based on the R model |
as_parsed_model() |
Prepares an object to be recognized as a parsed model |
Instead of translating directly to a SQL statement, tidypredict
creates an R formula. That formula can then be used inside dplyr
. The
overall workflow would be as illustrated in the image above, and
described here:
- Fit the model using a base R model, or one from the packages listed in Supported Models
tidypredict
reads model, and creates a list object with the necessary components to run predictionstidypredict
builds an R formula based on the list objectdplyr
evaluates the formula created bytidypredict
dplyr
translates the formula into a SQL statement, or any other interfaces.- The database executes the SQL statement(s) created by
dplyr
tidypredict
writes and reads a spec based on a model. Instead of
simply writing the R formula directly, splitting the spec from the
formula adds the following capabilities:
- No more saving models as
.rds
- Specifically for cases when the model needs to be used for predictions in a Shiny app. - Beyond R models - Technically, anything that can write a proper
spec, can be read into
tidypredict
. It also means, that the parsed model spec can become a good alternative to using PMML.
The following models are supported by tidypredict
:
- Linear Regression -
lm()
- Generalized Linear model -
glm()
- Random Forest models -
randomForest::randomForest()
- Random Forest models, via
ranger
-ranger::ranger()
- MARS models -
earth::earth()
- XGBoost models -
xgboost::xgb.Booster.complete()
- Cubist models -
Cubist::cubist()
- Tree models, via
partykit
-partykit::ctree()
tidypredict
supports models fitted via the parsnip
interface. The
ones confirmed currently work in tidypredict
are:
lm()
-parsnip
:linear_reg()
with “lm” as the engine.randomForest::randomForest()
-parsnip
:rand_forest()
with “randomForest” as the engine.ranger::ranger()
-parsnip
:rand_forest()
with “ranger” as the engine.earth::earth()
-parsnip
:mars()
with “earth” as the engine.
The tidy()
function from broom works with linear models parsed via
tidypredict
pm <- parse_model(lm(wt ~ ., mtcars))
tidy(pm)
## # A tibble: 11 × 2
## term estimate
## <chr> <dbl>
## 1 (Intercept) -0.231
## 2 mpg -0.0417
## 3 cyl -0.0573
## 4 disp 0.00669
## 5 hp -0.00323
## 6 drat -0.0901
## 7 qsec 0.200
## 8 vs -0.0664
## 9 am 0.0184
## 10 gear -0.0935
## 11 carb 0.249
This project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.
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For questions and discussions about tidymodels packages, modeling, and machine learning, please post on Posit Community.
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If you think you have encountered a bug, please submit an issue.
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Either way, learn how to create and share a reprex (a minimal, reproducible example), to clearly communicate about your code.
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Check out further details on contributing guidelines for tidymodels packages and how to get help.