# How to use stan in rmarkdown

I would like to get the estimated coefficients of a model using `rstan` in an rnotebook

I have the following `stan` chunk:

`````````{stan output.var="rats"}
data {
int<lower=0> N;
int<lower=0> T;
real x[T];
real y[N,T];
real xbar;
}
parameters {
real alpha[N];
real beta[N];

real mu_alpha;
real mu_beta;          // beta.c in original bugs model

real<lower=0> sigmasq_y;
real<lower=0> sigmasq_alpha;
real<lower=0> sigmasq_beta;
}
transformed parameters {
real<lower=0> sigma_y;       // sigma in original bugs model
real<lower=0> sigma_alpha;
real<lower=0> sigma_beta;

sigma_y = sqrt(sigmasq_y);
sigma_alpha = sqrt(sigmasq_alpha);
sigma_beta =  sqrt(sigmasq_beta);
}
model {
mu_alpha ~ normal(0, 100);
mu_beta ~ normal(0, 100);
sigmasq_y ~ inv_gamma(0.001, 0.001);
sigmasq_alpha ~ inv_gamma(0.001, 0.001);
sigmasq_beta ~ inv_gamma(0.001, 0.001);
alpha ~ normal(mu_alpha, sigma_alpha); // vectorized
beta ~ normal(mu_beta, sigma_beta);  // vectorized
for (n in 1:N)
for (t in 1:T)
y[n,t] ~ normal(alpha[n] + beta[n] * (x[t] - xbar), sigma_y);

}
generated quantities {
real alpha0;
alpha0 = mu_alpha - xbar * mu_beta;
}
```
``````

I also have the following data

`````````{r}
df <- read_delim("https://raw.githubusercontent.com/wiki/stan-dev/rstan/rats.txt",delim = " ")

y <- as.matrix(df)
x <- c(8,15,22,29,36)
xbar <- mean(x)
N <- nrow(y)
T <- ncol(y)
```
``````

The documentation on github shows `rats_fit <- stan(file = 'https://raw.githubusercontent.com/stan-dev/example-models/master/bugs_examples/vol1/rats/rats.stan')`, but since I am using a chunk I don't have a file to refer to.

I have tried `stan(rats)`, `summary(rats)`, `print(rats)`, but none of these seem to work.

The first RMarkdown chunk calls `rats <- rstan::stan_model(model_code=the_text)` behind the scenes, so in order to sample from that posterior distribution you need to ultimately do `rats_fit <- sampling(rats, data = list())`, whose remaining arguments are pretty much the same as for `stan`. But you do have to call `library(rstan)` before all that.

Thanks! with your help I was able to come up with the following

``````library(tidyverse)
df <- read_delim("https://raw.githubusercontent.com/wiki/stan-dev/rstan/rats.txt",delim = " ")
y <- as.matrix(df)
x <- c(8,15,22,29,36)
xbar <- mean(x)
N <- nrow(y)
T <- ncol(y)
library(rstan)
options(mc.cores = parallel::detectCores())
rats_fit <- rstan::sampling(rats,
data = list(y,x,xbar,N,T))
rstan::summary(rats_fit)
``````