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ring-congestion

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A ring middleware for applying rate limiting policies to HTTP requests.

The middleware is used to implement request rate limits on HTTP endpoints. A key feature is the ability to stack rate limits: multiple instances of the middleware can be wrapped around the same route, e.g. before and after authentication.

The library provides only IP address -based limiting out of the box, i.e. it's up to the library user to implement other types of rate limits by implementing the RateLimit protocol. The obvious rate limit to implement is a user-specific limit.

A storage implementation is used for storing rate limit counters. The library provides storage implementations for an in-process atom and Redis, but new storage implementations can be provided easily by implementing the Storage protocol.

Usage

[listora/ring-congestion "0.1.2"]

The middleware is used by wrapping a ring request handler with either wrap-rate-limit or wrap-stacking-rate-limit. For both functions the first argument is the ring request handler to wrap, and the second argument is the configuration for the rate limiting middleware. The configuration is used to specify the storage backend, the rate limit being applied by this instance of the middleware, and a response builder used when the rate limit has been exhausted.

wrap-rate-limit

Let's start with the simplest possible use case: limiting requests to 1 req/s per IP address, returning the default 429 - Too Many Requests response when the rate limit is exhausted.

(require '[clj-time.core :as t])
(require '[compojure.core :refer :all])
(require '[congestion.middleware :refer [wrap-rate-limit]])
(require '[congestion.storage :as storage])

;; Instantiate a storage backend
(def storage (storage/local-storage))

;; Define the rate limit: 1 req/s per IP address
(def limit (ip-rate-limit :limit-id 1 (t/seconds 1)))

;; Define the middleware configuration
(def rate-limit-config {:storage storage :limit limit})

;; Wrap the /limit route in the rate limiting middleware
(def app (routes
          (GET "/no-limit" [] "no-limit")
          (wrap-rate-limit
           (GET "/limit" [] "limit")
           rate-limit-config)))

Note that the rate limit, ip-rate-limit, takes an identifier, a number of requests and a time-to-live as arguments. The identifier is used when referring to the limit counter in the storage backend and therefore should be unique for each limit. The request count and TTL together describe how many request can be made within a certain time-span.

The wrap-rate-limit middleware checks and updates the rate limit counter before calling the wrapped request handler. This means that an earlier rate limit is applied before a later rate limit is checked. For example, an 'unauthenticated' rate limit would be applied before a 'user-specific' rate limit. This is often not what is wanted, i.e. an authenticated user would usually have a greater rate limit than unauthenticated users, but with wrap-rate-limit the 'unauthenticated' limit would get exhausted and further requests would be denied. The wrap-stacking-rate-limit is provided to address this issue.

The reason for using wrap-rate-limit rather than the more flexible wrap-stacking-rate-limit is that since wrap-rate-limit increments the counter before calling the request handler, there is less of a chance of concurrent requests being allowed to execute when the rate limit is already exhausted.

wrap-stacking-rate-limit

An application's ring middleware stack can have multiple instances of the wrap-stacking-rate-limit middleware and the rate limits will get updated in reverse order. That is, each middleware checks if its rate limit has been exhausted and, if so, denies the request. But if the limit has not been exhausted the request is delegated to the wrapped handler allowing subsequent rate limiting middlewares to be applied to the request. When the wrapped handler returns a response, the rate limiting middleware checks if a rate limit has been applied, and if not so, the middleware will increment its own rate limit counter.

Performing the counter update after the request has been handled means that a subsequent rate limiting middleware can be applied instead of the current middleware. For example, in the below example code when the request is authenticated we want the greater user-limit to be applied rather than the lower unauthenticated-limit. Were the unauthenticated-limit applied regardless of whether the request authenticates or not would mean that an authenticated user could only perform 100 req/h rather than the intended 5000 req/h.

(require '[clj-time.core :as t])
(require '[compojure.core :refer :all])
(require '[congestion.middleware :refer [wrap-rate-limit]])
(require '[congestion.storage :as storage])

;; A custom per-user rate limit
(defrecord UserRateLimit [id quota ttl]
  RateLimit
  (get-key [self req]
    (str (.getName (class self)) id "-" (:user-name req)))

  (get-quota [self req]
    quota)

  (get-ttl [self req]
    ttl))

;; Instantiate a storage backend
(def storage (storage/local-storage))

;; Define a limit and config for unauthenticated requests: 100 req/h
;; per IP address
(def unauthenticated-limit (ip-rate-limit :unauthenticated-limit 100 (t/hours 1)))
(def unauthenticated-config {:storage storage :limit unauthenticated-limit})

;; Define a limit and config for authenticated requests: 5000 req/h
;; per user
(def user-limit (->UserRateLimit :user-limit 5000 (t/hours 1)))
(def user-config {:storage storage :limit user-limit})

(defn wrap-authentication
  [handler]
  (fn [req]
    ;; TODO: magically authenticate users and attach user name to request
    (let [user-name "Bob"
          req (assoc req :user-name user-name)]
      (handler req))))

(def app (routes
          (GET "/no-limit" [] "no-limit")
          (->
           (ANY "/limit" [] "limit")
           (wrap-stacking-rate-limit user-config)
           (wrap-authentication)
           (wrap-stacking-rate-limit unauthenticated-config))))

Note: we implement a UserRateLimit to be able to perform rate limiting based on the :user-name field in the request. The key points are: 1) attaching some data, :user-name in this case, to the request, and 2) looking that data up in the rate limit implementation. The get-key function returns a key that is used to identify the rate limit counter. For a user-specific rate limit that key should be unique to each user. For an IP address -specific rate limit the key should be unique to each IP address.

Custom response builders

When the rate limit is exhausted, the middleware needs to produce a ring response to this effect. The library provides a default response builder, which returns a JSON 429 response:

{:body "{\"error\": \"Too Many Requests\"}"
 :headers {"Content-Type" "application/json"
           "Retry-After" "Fri, 28 Nov 2014 12:03:55 GMT"}
 :status 429}

Most likely the default response is not suitable for your application. For example, you want to specify a custom Content-Type, or the response body isn't in the correct format.

The middleware configuration accepts a custom response builder as the :response-builder key:

(defn custom-response-builder
  [quota retry-after]
  ...)

(wrap-rate-limit app {... :response-builder custom-response-builder})

The response builder takes two arguments: quota and retry-after, where quota is the number of requests allowed by the limit that has been exhausted and retry-after is the time when the rate limit counter will be reset.

The simplest way to build an appropriate 429 - Too Many Requests response is to call the too-many-requests-response function with a custom ring response map. The too-many-requests-response function will add a Retry-After header to the response and set :status to 429 unless it was already set.

But if you want to, you can return whatever response you desire from your custom response builder.

Debugging rate limits

When a rate limit is applied to a request, the library assocs the quota state to the ring response with the key :congestion.responses/rate-limit-applied. The quota state is either AvailableQuota or ExhaustedQuota as defined in congestion.quota-state.

This serves two purposes: 1) it allows stacked rate limiting middleware to work out if a rate limit has already been applied, and 2) it is helpful in tests and in debugging since we can inspect what rate limit was applied, what the total quota is and how many requests are remaining until the rate limit resets.

But the data in the response is available to any other ring middleware so you can also use it to add custom HTTP headers to responses reporting the total and available requests, if you want to!

Custom rate limits

The library provides only an IP address rate limit. Other rate limits have to be implemented by the library user. This might change in the future, but at the moment it seemed like there was little benefit in trying to guess what authentication system people use etc. Contributions are welcome!

The RateLimit protocol describes the interface for a rate limit:

(defprotocol RateLimit
  (get-key [self req])
  (get-quota [self req])
  (get-ttl [self req]))

The IpRateLimit is an example of a simple static limit:

(defrecord IpRateLimit [id quota ttl]
  RateLimit
  (get-key [self req]
    (str (.getName (class self)) id "-" (:remote-addr req)))

  (get-quota [self req]
    quota)

  (get-ttl [self req]
    ttl))

The key part is returning a key from get-key that is unique within the context defined by the limit. E.g. for IpRateLimit we want each unique request IP address to have its own rate limit counter. The return value is used to identify the rate limit counter in the storage backend.

For a static limit, like IpRateLimit above, the get-quota and get-ttl functions both just return the value passed to the limit during construction time.

A dynamic limit could return different quota and TTL value depending on the request. E.g. we could define a custom rate limit for each user of our application, where both the quota and the TTL would be looked up from the user database after the user has been authenticated.

The easiest way to do this with ring-congestion would be to attach the rate limit information to the request, e.g. in the authentication middleware, and then simply look them up from the request in get-quota and get-ttl:

(defrecord UserRateLimit [id quota ttl]
  RateLimit
  (get-key [self req]
    (str (.getName (class self)) id "-" (:user-name req)))

  (get-quota [self req]
    (:user-rate-limit-quota req))

  (get-ttl [self req]
    (:user-rate-limit-ttl req))

Custom storage implementations

The library comes with two storage implementations: local-storage and redis-storage, but it should be easy to write your own storage implementation by implementing the Storage protocol by taking inspiration from the provided storage implementations.

The Storage protocol looks like this:

(defprotocol Storage
  (get-count [self key])
  (increment-count [self key ttl])
  (counter-expiry [self key])
  (clear-counters [self]))

The clear-counters function is used to clear all counter state from the storage which allows the application operator to reset all rate limits. This is mainly a convenience for the operator in case something goes wrong with the rate limiting implementation and HTTP API users are unable to make requests.

The other three function, get-count, increment-count and counter-expiry, are used to observe and increment the counters. We'll describe the contracts of all three functions here to make Storage implementation easier.

get-count is provided with a counter key, generated by calling get-key on the RateLimit instance, and it is expected to return the current value of the counter, or 0 if the counter does not exist.

increment-count is provided again with a counter key, and a time-to-live, which is a clj-time/JodaTime duration (e.g. (clj-time.core/hours 1)). The ttl argument is used to schedule the deletion of the counter after the counter expires, so it's only really significant if the counter does not exist already.

The LocalStorage storage implementation keeps track of when counters should expire and purges expired counters when get-count is called. The RedisStorage storage implementation instead uses a feature of Redis, the EXPIRE command, to specify when Redis should delete the counter automatically.

counter-expiry is called in order to get the time-stamp that is used to generate the Retry-After header for the 429 - Too Many Requests response.

Note: the RedisStorage storage implementation prefixes all limit keys with the string congestion-. The idea is to underline that those Redis keys belong to ring-congestion in cases where the same Redis instance is used to store other application data as well. Having a common prefix makes the implementation of the clear-counters function simple as well.

Resetting rate limits

The Storage protocol provides a clear-counters function for clearing all rate limit counters from storage. This can be used both in tests to clear state before and after tests, and by operators to clear all limits if something goes wrong with rate limiting.

Note: since LocalStorage by default creates a new atom to store state, it is not possible to clear state by simply creating a new LocalStorage instance and calling clear-counters on it. Instead the application must create the atom and hold on to it in order to be able to clear it later on.

Caveats

There are a few caveats in rate limiting requests.

IP-based rate limiting

IP-based rate limiting is usually based on the remote address of the HTTP request. Unfortunately the remote address is not actually the client's IP address in many cases. For example, any CDN, load balancer, or proxy will mess with the remote address of the request. So you have to be extra careful when applying rate limits on the remote address.

Well behaving proxies usually set or adjust the X-Forwarded-For header when they forward the request so it's possible in many cases to pull out the client's real IP address from that header. But if the number of forwarding proxies is not known or it varies, it's difficult to implement IP-based rate limiting in such a way that a malicious client cannot circumvent it by setting the X-Forwarded-For header themselves. For example, if the application can be accessed both directly or via a caching proxy, a malicious client could just set the X-Forwarded-For header to some random IP address and access the application directly.

LocalStorage

This is probably obvious, but we'll mention it just the same: the LocalStorage storage implementation is super simple and fast to use in an application for counter storage, but obviously it is only visible within that instance of the application. If you're running multiple instances of your application behind a load balancer, each application will have its own counters. That might be acceptable in some cases, but usually you'll want to use a database for counter storage so that counters are shared across all instances of the application.

Caching and rate limits

Another side effect of caching responses is that any remaining rate limit headers might not be valid when the response is served from a cache. Therefore ring-congestion doesn't set any HTTP headers reporting the total or remaining quota. Fortunately you can do it yourself with a simple ring middleware!

License

Copyright © 2014 Listora

Distributed under the Eclipse Public License either version 1.0 or (at your option) any later version.

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