Crates.io | simul |
lib.rs | simul |
version | 0.4.1 |
source | src |
created_at | 2023-07-05 06:39:31.439649 |
updated_at | 2024-03-31 15:51:43.558153 |
description | A discrete-event simulation library aimed at high-level use-cases to quickly simulate real-world problems and run simulated experiments. Some example use cases might include simulating logistics or operations research problems, running experiments to determine optimal parameters, simulating queueing systems, distributed systems, performance engineering, and so on. |
homepage | https://github.com/jmqd/simul |
repository | https://github.com/jmqd/simul |
max_upload_size | |
id | 908617 |
size | 452,199 |
simul
is a discrete-event simulation library aimed at high-level use-cases to
quickly simulate real-world problems and run simulated experiments.
simul
is a discrete-event simulator using incremental time progression,
with M/M/c queues for interactions
between agents. It also supports some forms of experimentation and simulated
annealing to replicate a simulation many times, varying the simulation
parameters.
Use-cases:
Warning
Experimental and unstable. Almost all APIs are expected to change.
[dependencies]
simul = "0.3.1"
use simul::Simulation;
use simul::agent::*;
// Runs a simulation with a producer that produces work at every tick of
// discrete time (period=1), and a consumer that cannot keep up (can only
// process that work every third tick).
let mut simulation = Simulation::new(SimulationParameters {
// We pass in two agents:
// one that produces -> consumer every tick
// one that simply consumes w/ no side effects every third tick
agents: vec![
periodic_producing_agent("producer".to_string(), 1, "consumer".to_string()),
periodic_consuming_agent("consumer".to_string(), 3),
],
// You can set the starting epoch for the simulation. 0 is normal.
starting_time: 0,
// Whether to collect telemetry on queue depths at every tick.
// Useful if you're interested in backlogs, bottlenecks, etc. Costs performance.
enable_queue_depth_metric: true,
/// Records a metric on the number of cycles agents were asleep for.
enable_agent_asleep_cycles_metric: true,
// We pass in a halt condition so the simulation knows when it is finished.
// In this case, it is "when the simulation is 10 ticks old, we're done."
halt_check: |s: &Simulation| s.time == 10,
});
simulation.run();
Here's an example of an outputted graph from a simulation run. In this
simulation, we show the average waiting time of customers in a line at a
cafe. The customers arrive at a Poisson-distributed arrival rate
(lambda<-60.0
) and a Poisson-distributed coffee-serving rate with the
same distribution.
This simulation maps to the real world by assuming one tick of discrete-simulation time is equal to one second.
Basically, the barista serves coffees at around 60 seconds per drink and the customers arrive at about the same rate, both modeled by a stochastic Poisson generator.
This simulation has a halt_check
condition of the simulation's time
being equal to 60*60*12
, representing a full 12-hour day of the cafe
being open.
This is a code example for generating the above.
use plotters::prelude::*;
use rand_distr::Poisson;
use simul::agent::*;
use simul::*;
use std::path::PathBuf;
fn main() {
run_example_cafe_simulation();
}
fn run_example_cafe_simulation() -> Result<(), Box<dyn std::error::Error>> {
let mut simulation = Simulation::new(SimulationParameters {
agents: vec![
poisson_distributed_consuming_agent("Barista".to_string(), Poisson::new(60.0).unwrap()),
poisson_distributed_producing_agent(
"Customers".to_string(),
Poisson::new(60.0).unwrap(),
"Barista".to_string(),
),
],
starting_time: 0,
enable_queue_depth_metric: true,
halt_check: |s: &Simulation| s.time == 60 * 60 * 12,
});
simulation.run();
plot_queued_durations_for_processed_messages(
&simulation,
&["Barista".into()],
&"/tmp/cafe-example-queued-durations.png".to_string().into(),
)
}
Issues, bugs, features are tracked in TODO.org