This is a post with executable code.
A simple distributional model  from the brm’s site .
Loading required package: Rcpp 
 
Loading 'brms' package (version 2.19.0). Useful instructions
can be found by typing help('brms'). A more detailed introduction
to the package is available through vignette('brms_overview'). 
 
Attaching package: 'brms' 
 
The following object is masked from 'package:stats':
    ar 
 
 
 group <-  rep (c ("treat" , "placebo" ), each =  30 ) 
 symptom_post <-  c (rnorm (30 , mean =  1 , sd =  2 ), rnorm (30 , mean =  0 , sd =  1 )) 
 dat1 <-  data.frame (group, symptom_post) 
head (dat1) 
  group symptom_post
1 treat    0.2197493
2 treat    1.1132342
3 treat    0.6705705
4 treat    3.3821604
5 treat    4.9302193
6 treat    2.7953792 
 
 
 formula <-  bf (symptom_post ~  group, sigma ~  group) 
 fit <-  brm ( 
   formula =  formula, data =  dat1,  
   backend =  'cmdstanr' , cores =  12  
 ) 
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Mean chain execution time: 0.1 seconds.
Total execution time: 0.2 seconds. 
 
 Family: gaussian 
  Links: mu = identity; sigma = log 
Formula: symptom_post ~ group 
         sigma ~ group
   Data: dat1 (Number of observations: 60) 
  Draws: 4 chains, each with iter = 2000; warmup = 1000; thin = 1;
         total post-warmup draws = 4000
Population-Level Effects: 
                 Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
Intercept            0.24      0.21    -0.17     0.65 1.00     4671     2972
sigma_Intercept      0.11      0.13    -0.14     0.40 1.00     3765     2420
grouptreat           0.92      0.39     0.14     1.70 1.00     3314     2966
sigma_grouptreat     0.48      0.19     0.10     0.85 1.00     3637     2337
Draws were sampled using sample(hmc). For each parameter, Bulk_ESS
and Tail_ESS are effective sample size measures, and Rhat is the potential
scale reduction factor on split chains (at convergence, Rhat = 1).