We provide different algorithms to use out of the box. Each has pros and cons.

Fixed Window

This algorithm divides time into fixed durations/windows. For example each window is 10 seconds long. When a new request comes in, the current time is used to determine the window and a counter is increased. If the counter is larger than the set limit, the request is rejected.

Pros

  • Very cheap in terms of data size and computation
  • Newer requests are not starved due to a high burst in the past

Cons

  • Can cause high bursts at the window boundaries to leak through
  • Causes request stampedes if many users are trying to access your server, whenever a new window begins

Usage

Create a new ratelimiter, that allows 10 requests per 10 seconds.

const ratelimit = new Ratelimit({
  redis: Redis.fromEnv(),
  limiter: Ratelimit.fixedWindow(10, "10 s"),
});

Sliding Window

Builds on top of fixed window but instead of a fixed window, we use a rolling window. Take this example: We have a rate limit of 10 requests per 1 minute. We divide time into 1 minute slices, just like in the fixed window algorithm. Window 1 will be from 00:00:00 to 00:01:00 (HH:MM:SS). Let’s assume it is currently 00:01:15 and we have received 4 requests in the first window and 5 requests so far in the current window. The approximation to determine if the request should pass works like this:

limit = 10

// 4 request from the old window, weighted + requests in current window
rate = 4 * ((60 - 15) / 60) + 5 = 8

return rate < limit // True means we should allow the request

Pros

  • Solves the issue near boundary from fixed window.

Cons

  • More expensive in terms of storage and computation
  • Is only an approximation, because it assumes a uniform request flow in the previous window, but this is fine in most cases

Usage

Create a new ratelimiter, that allows 10 requests per 10 seconds.

const ratelimit = new Ratelimit({
  redis: Redis.fromEnv(),
  limiter: Ratelimit.slidingWindow(10, "10 s"),
});

Token Bucket

Consider a bucket filled with {maxTokens} tokens that refills constantly at {refillRate} per {interval}. Every request will remove one token from the bucket and if there is no token to take, the request is rejected.

Pros

  • Bursts of requests are smoothed out and you can process them at a constant rate.
  • Allows to set a higher initial burst limit by setting maxTokens higher than refillRate

Cons

  • Expensive in terms of computation

Usage

Create a new bucket, that refills 5 tokens every 10 seconds and has a maximum size of 10.

const ratelimit = new Ratelimit({
  redis: Redis.fromEnv(),
  limiter: Ratelimit.tokenBucket(5, "10 s", 10),
  analytics: true,
});