I am writing an R package that uses `rstan`

for Bayesian
sampling. (Here
is the specific commit if you want to reproduce the issue.) I only succeed in
running a function that calls `rstan`

from the vignette if I use
`library(rstan)`

in the vignette, and not with a few workarounds.

### The setup

A function in the package calls `rstan`

(edited for clarity):

```
#' @importFrom Rcpp cpp_object_initializer
#' @export
run_variational_bayes <- function(x, y, output_samples, beta_sd, stan_file) {
n_input <- length(y)
p <- ncol(x)
train_dat <- list(n = n_input, p = p, x = x, y = y, beta_sd = beta_sd)
stan_model <- rstan::stan_model(file = stan_file)
stan_vb <- rstan::vb(object = stan_model, data = train_dat,
output_samples = output_samples)
return(rstan::extract(stan_vb)$beta)
}
```

I test this function in the package:

```
context("RStan variational Bayes model")
test_that("Rstan variational Bayes model runs", {
german <- PosteriorBootstrap::get_german_credit_dataset()
n_bootstrap <- 10
prior_variance <- 100
stan_vb_sample <- PosteriorBootstrap::run_variational_bayes(x = german$x,
y = german$y,
output_samples = n_bootstrap,
beta_sd = sqrt(prior_variance),
iter = 10)
expect_true(nrow(stan_vb_sample) == n_bootstrap)
expect_true(ncol(stan_vb_sample) == ncol(german$x))
})
```

The tests pass locally and on Travis, so the function works from inside the package.

### The problem

The vignette code works if I include `library(rstan)`

:

```
library(rstan)
prior_sd <- 10
n_bootstrap <- 1000
german <- PosteriorBootstrap::get_german_credit_dataset()
stan_vb_sample <- PosteriorBootstrap::run_variational_bayes(x = german$x,
y = german$y,
output_samples = n_bootstrap,
beta_sd = prior_sd)
dim(stan_vb_sample)
#> [1] 1000 25
```

but I see it as bad practice that the user needs to attach another package to
use my package. If I use `requireNamespace()`

, building the vignette works but
the Stan model does not run:

```
requireNamespace("PosteriorBootstrap", quietly = TRUE)
# ...
stan_vb_sample <- PosteriorBootstrap::run_variational_bayes(x = german$x,
y = german$y,
output_samples = n_bootstrap,
beta_sd = prior_sd)
#> Error in cpp_object_initializer(.self, .refClassDef, ...) :
#> could not find function "cpp_object_initializer"
#> failed to create the model; variational Bayes not done
#> Stan model 'bayes_logit' does not contain samples.
dim(stan_vb_sample)
#> NULL
```

Note that I used `#' @importFrom Rcpp cpp_object_initializer`

in the Roxygen
comment, which should import the function that `rstan`

says is missing.

### Comparison with another package that uses `rstan`

This package
has similar values in `DESCRIPTION`

, yet I tested that it does not require `library(rstan)`

to
run `rstan`

. It uses `@import Rcpp`

in one function, which I tested with my
package by replacing `@importFrom Rcpp cpp_object_initializer`

in front of the
function and got the same error.

### Failed workarounds

The difference between `requireNamespace()`

and `library()`

is that the latter
imports the namespace of the package into the current environment. But
`rstan`

does `import(Rcpp)`

so that object should be available.

(1) I tried `library("PosteriorBootstrap")`

in the vignette, since the
package imports that object into its namespace: I got the same error (with
`@import Rcpp`

or with `@importFrom Rcpp cpp_object_initializer`

).

(2) I copied that object to the environment of the function:

```
requireNamespace("Rcpp", quietly = TRUE)
#' @import Rcpp
#' @export
run_variational_bayes <- function(x, y, output_samples, beta_sd,
stan_file = get_stan_file(),
iter = 10000, seed = 123, verbose = FALSE) {
cpp_object_initializer <- Rcpp:cpp_object_initializer
# ...
}
```

and I was surprised to get a vignette error:

```
E creating vignettes (1.8s)
Quitting from lines 151-157 (anpl.Rmd)
Error: processing vignette 'anpl.Rmd' failed with diagnostics:
object 'Rcpp' not found
Execution halted
```

### Temporary solution

As a temporary solution, I moved the code in the function to the vignette
entirely. The vignette fails with `requireNamespace()`

:

```
requireNamespace("rstan")
#> Loading required namespace: rstan
prior_sd <- 10
n_bootstrap <- 1000
german <- PosteriorBootstrap::get_german_credit_dataset()
train_dat <- list(n = length(german$y), p = ncol(german$x), x = german$x, y = german$y, beta_sd = prior_sd)
stan_file <- PosteriorBootstrap::get_stan_file()
stan_model <- rstan::stan_model(file = stan_file)
stan_vb <- rstan::vb(object = stan_model, data = train_dat, seed = seed,
output_samples = n_bootstrap)
#> Error in cpp_object_initializer(.self, .refClassDef, ...) :
#> could not find function "cpp_object_initializer"
#> failed to create the model; variational Bayes not done
stan_vb_sample <- rstan::extract(stan_vb)$beta
#> Stan model 'bayes_logit' does not contain samples.
dim(stan_vb_sample)
#> NULL
```

and succeeds with `library(rstan)`

:

```
library("rstan")
#> Loading required package: ggplot2
# ...
stan_model <- rstan::stan_model(file = stan_file)
stan_vb <- rstan::vb(object = stan_model, data = train_dat, seed = seed,
output_samples = n_bootstrap)
#> Chain 1: ------------------------------------------------------------
# ...
#> Chain 1: COMPLETED.
stan_vb_sample <- rstan::extract(stan_vb)$beta
dim(stan_vb_sample)
#> [1] 1000 25
```

In moving the code out of the package, I realised that a test that uses
`library("rstan")`

and calls the `rstan`

package directly, e.g.

```
context("Adaptive non-parametric learning function")
library("rstan")
# ...
test_that("Adaptive non-parametric learning with posterior samples works", {
german <- get_german_credit_dataset()
n_bootstrap <- 100
# Get posterior samples
seed <- 123
prior_sd <- 10
train_dat <- list(n = length(german$y), p = ncol(german$x), x = german$x,
y = german$y, beta_sd = prior_sd)
stan_model <- rstan::stan_model(file = get_stan_file())
stan_vb <- rstan::vb(object = stan_model, data = train_dat, seed = seed,
output_samples = n_bootstrap)
stan_vb_sample <- rstan::extract(stan_vb)$beta
# ...
}
```

passes the tests inside the package:

```
✔ | 24 | Adaptive non-parametric learning function [53.1 s]
══ Results ═════════════════════════════════════════════════════════════════════
Duration: 53.2 s
OK: 24
Failed: 0
Warnings: 0
Skipped: 0
```

but the same test with `requireNamespace("rstan")`

fails them:

```
⠋ | 21 | Adaptive non-parametric learning functionError in cpp_object_initializer(.self, .refClassDef, ...) :
could not find function "cpp_object_initializer"
Stan model 'bayes_logit' does not contain samples.
...
══ Results ═════════════════════════════════════════════════════════════════════
Duration: 51.7 s
OK: 22
Failed: 1
Warnings: 0
Skipped: 0
```

### Conclusion

I wonder if `rstan`

code is calling `cpp_object_initializer`

without a
qualifier, and if it's doing that in a new environment that does not inherit the
objects from the calling environment.

I acknowledge that I did not use `rstantools`

to start the package
(my employer decided to stick with the MIT license and chose not to restart the
package structure from scratch) and that I am compiling
the model at call time. I suppose that users providing their own model would
face the same errors when using `requireNamespace()`

instead of `library()`

.

How can I allow users to run package functions that call `rstan`

without
`library(rstan)`

, short of restarting the package from scratch with `rstantools`

?