First, load the package and instantiate a new simulation environment.
library(simmer)
set.seed(42)
env <- simmer("SuperDuperSim")
env
#> simmer environment: SuperDuperSim | now: 0 | next:
#> { Monitor: in memory }
Set-up a simple trajectory. Let’s say we want to simulate an ambulatory consultation where a patient is first seen by a nurse for an intake, next by a doctor for the consultation and finally by administrative staff to schedule a follow-up appointment.
patient <- trajectory("patients' path") %>%
## add an intake activity
seize("nurse", 1) %>%
timeout(function() rnorm(1, 15)) %>%
release("nurse", 1) %>%
## add a consultation activity
seize("doctor", 1) %>%
timeout(function() rnorm(1, 20)) %>%
release("doctor", 1) %>%
## add a planning activity
seize("administration", 1) %>%
timeout(function() rnorm(1, 5)) %>%
release("administration", 1)
In this case, the argument of the timeout
activity is a
function, which is evaluated dynamically to produce a stochastic waiting
time, but it could be a constant too. Apart from that, this function may
be as complex as you need and may do whatever you want: interact with
entities in your simulation model, get resources’ status, make decisions
according to the latter…
Once the trajectory is known, you may attach arrivals to it and
define the resources needed. In the example below, three types of
resources are added: the nurse and administration
resources, each one with a capacity of 1, and the doctor
resource, with a capacity of 2. The last method adds a generator of
arrivals (patients) following the trajectory patient
. The
time between patients is about 10 minutes (a Gaussian of
mean=10
and sd=2
). (Note: returning a negative
interarrival time at some point would stop the generator).
env %>%
add_resource("nurse", 1) %>%
add_resource("doctor", 2) %>%
add_resource("administration", 1) %>%
add_generator("patient", patient, function() rnorm(1, 10, 2))
#> simmer environment: SuperDuperSim | now: 0 | next: 0
#> { Monitor: in memory }
#> { Resource: nurse | monitored: TRUE | server status: 0(1) | queue status: 0(Inf) }
#> { Resource: doctor | monitored: TRUE | server status: 0(2) | queue status: 0(Inf) }
#> { Resource: administration | monitored: TRUE | server status: 0(1) | queue status: 0(Inf) }
#> { Source: patient | monitored: 1 | n_generated: 0 }
The simulation is now ready for a test run; just let it
simmer for a bit. Below, we specify that we want to limit the
runtime to 80 time units using the until
argument. After
that, we verify the current simulation time (now
) and when
will be the next 3 events (peek
).
It is possible to run the simulation step by step, and such a method is chainable too.
env %>%
stepn() %>% # 1 step
print() %>%
stepn(3) # 3 steps
#> simmer environment: SuperDuperSim | now: 80.6953988949657 | next: 80.6953988949657
#> { Monitor: in memory }
#> { Resource: nurse | monitored: TRUE | server status: 1(1) | queue status: 1(Inf) }
#> { Resource: doctor | monitored: TRUE | server status: 1(2) | queue status: 0(Inf) }
#> { Resource: administration | monitored: TRUE | server status: 0(1) | queue status: 0(Inf) }
#> { Source: patient | monitored: 1 | n_generated: 7 }
#> simmer environment: SuperDuperSim | now: 81.6210531397386 | next: 81.6210531397386
#> { Monitor: in memory }
#> { Resource: nurse | monitored: TRUE | server status: 1(1) | queue status: 2(Inf) }
#> { Resource: doctor | monitored: TRUE | server status: 1(2) | queue status: 0(Inf) }
#> { Resource: administration | monitored: TRUE | server status: 0(1) | queue status: 0(Inf) }
#> { Source: patient | monitored: 1 | n_generated: 7 }
env %>% peek(Inf, verbose=TRUE)
#> time process
#> 1 81.62105 patient
#> 2 86.74154 patient4
#> 3 89.36934 patient3
Also, it is possible to resume the automatic execution simply by specifying a longer runtime. Below, we continue the execution until 120 time units.
You can also reset the simulation, flush all results, resources and generators, and restart from the beginning.
It is very easy to replicate a simulation multiple times using standard R functions.
envs <- lapply(1:100, function(i) {
simmer("SuperDuperSim") %>%
add_resource("nurse", 1) %>%
add_resource("doctor", 2) %>%
add_resource("administration", 1) %>%
add_generator("patient", patient, function() rnorm(1, 10, 2)) %>%
run(80)
})
The advantage of the latter approach is that, if the individual
replicas are heavy, it is straightforward to parallelise their execution
(for instance, in the next example we use the function
mclapply
from the parallel)
package. However, the external pointers to the C++ simmer core are no
longer valid when the parallelised execution ends. Thus, it is necessary
to extract the results for each thread at the end of the execution. This
can be done with the helper function wrap
as follows.
library(parallel)
envs <- mclapply(1:100, function(i) {
simmer("SuperDuperSim") %>%
add_resource("nurse", 1) %>%
add_resource("doctor", 2) %>%
add_resource("administration", 1) %>%
add_generator("patient", patient, function() rnorm(1, 10, 2)) %>%
run(80) %>%
wrap()
})
This helper function brings the simulation data back to R and makes
it accessible through the same methods that would ordinarily be used for
a simmer
environment.
envs[[1]] %>% get_n_generated("patient")
#> [1] 8
envs[[1]] %>% get_queue_count("doctor")
#> [1] 0
envs[[1]] %>% get_queue_size("doctor")
#> [1] Inf
envs %>%
get_mon_resources() %>%
head()
#> resource time server queue capacity queue_size system limit replication
#> 1 nurse 10.62004 1 0 1 Inf 1 Inf 1
#> 2 nurse 22.05780 1 1 1 Inf 2 Inf 1
#> 3 nurse 26.09985 1 0 1 Inf 1 Inf 1
#> 4 doctor 26.09985 1 0 2 Inf 1 Inf 1
#> 5 nurse 29.00395 1 1 1 Inf 2 Inf 1
#> 6 nurse 37.54538 1 2 1 Inf 3 Inf 1
envs %>%
get_mon_arrivals() %>%
head()
#> name start_time end_time activity_time finished replication
#> 1 patient0 10.620037 49.95408 39.33404 TRUE 1
#> 2 patient1 22.057802 69.95337 43.85352 TRUE 1
#> 3 patient0 11.420884 49.45958 38.03870 TRUE 2
#> 4 patient1 23.678467 64.99625 39.42406 TRUE 2
#> 5 patient2 34.870707 78.91361 39.53630 TRUE 2
#> 6 patient0 9.079259 48.33234 39.25308 TRUE 3
Unfortunately, as the C++ simulation cores are destroyed, the downside of this kind of parallelization is that one cannot resume execution of the replicas.
You may want to try the simmer.plot
package, a plugin
for simmer
that provides some basic visualisation tools to
help you take a quick glance at your simulation results or debug a
trajectory object: