leaky-bucket
A token-based rate limiter based on the leaky bucket algorithm.
If the bucket overflows and goes over its max configured capacity, the task that tried to acquire the tokens will be suspended until the required number of tokens has been drained from the bucket.
Since this crate uses timing facilities from tokio it has to be used within
a Tokio runtime with the time
feature enabled.
Usage
Add the following to your Cargo.toml
:
= "0.11.1"
Examples
The core type is the RateLimiter
type, which allows for limiting the
throughput of a section using its acquire
and acquire_one
methods.
use RateLimiter;
use time;
async
Implementation details
Each rate limiter has two acquisition modes. A fast path and a slow path. The fast path is used if the desired number of tokens are readily available, and involves incrementing an atomic counter indicating that the acquired number of tokens have been added to the bucket.
If this counter goes over its configured maximum capacity, it overflows into a slow path. Here one of the acquiring tasks will switch over to work as a core. This is known as core switching.
use RateLimiter;
use time;
let limiter = builder
.initial
.interval
.build;
// This is instantaneous since the rate limiter starts with 10 tokens to
// spare.
limiter.acquire.await;
// This however needs to core switch and wait for a while until the desired
// number of tokens is available.
limiter.acquire.await;
The core is responsible for sleeping for the configured interval so that more tokens can be added. After which it ensures that any tasks that are waiting to acquire including itself are appropriately unsuspended.
On-demand core switching is what allows this rate limiter implementation to
work without a coordinating background thread. But we need to ensure that
any asynchronous tasks that uses RateLimiter
must either run an
acquire
call to completion, or be cancelled by being dropped.
If none of these hold, the core might leak and be locked indefinitely
preventing any future use of the rate limiter from making progress. This is
similar to if you would lock an asynchronous Mutex
but never drop its
guard.
You can run this example with:
use RateLimiter;
use Future;
use Arc;
use Context;
;
let limiter = new;
let waker = new.into;
let mut cx = from_waker;
let mut a0 = Box pin;
// Poll once to ensure that the core task is assigned.
assert!;
assert!;
// We leak the core task, preventing the rate limiter from making progress
// by assigning new core tasks.
forget;
// Awaiting acquire here would block forever.
// limiter.acquire(1).await;
Fairness
By default RateLimiter
uses a fair scheduler. This ensures that the
core task makes progress even if there are many tasks waiting to acquire
tokens. As a result it causes more frequent core switching, increasing the
total work needed. An unfair scheduler is expected to do a bit less work
under contention. But without fair scheduling some tasks might end up taking
longer to acquire than expected.
This behavior can be tweaked with the Builder::fair
option.
use RateLimiter;
let limiter = builder
.fair
.build;
The unfair-scheduling
example can showcase this phenomenon.
# fair
Max: 1011ms, Total: 1012ms
Timings:
0: 101ms
1: 101ms
2: 101ms
3: 101ms
4: 101ms
...
# unfair
Max: 1014ms, Total: 1014ms
Timings:
0: 1014ms
1: 101ms
2: 101ms
3: 101ms
4: 101ms
...
As can be seen above the first task in the unfair scheduler takes longer to run because it prioritises releasing other tasks waiting to acquire over itself.
License: MIT/Apache-2.0