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Summary: Python Rate-Limiter using Leaky-Bucket Algorithm
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# PyrateLimiter
The request rate limiter using Leaky-bucket algorithm.

Full project documentation can be found at [pyratelimiter.readthedocs.io](https://pyratelimiter.readthedocs.io).

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<br>

## Contents
- [PyrateLimiter](#pyratelimiter)
  - [Contents](#contents)
  - [Features](#features)
  - [Installation](#installation)
  - [Basic usage](#basic-usage)
    - [Defining rate limits](#defining-rate-limits)
    - [Applying rate limits](#applying-rate-limits)
    - [Identities](#identities)
  - [Handling exceeded limits](#handling-exceeded-limits)
    - [Bucket analogy](#bucket-analogy)
    - [Rate limit exceptions](#rate-limit-exceptions)
    - [Rate limit delays](#rate-limit-delays)
  - [Additional usage options](#additional-usage-options)
    - [Decorator](#decorator)
    - [Contextmanager](#contextmanager)
    - [Async decorator/contextmanager](#async-decoratorcontextmanager)
  - [Backends](#backends)
    - [Memory](#memory)
    - [SQLite](#sqlite)
    - [Redis](#redis)
    - [Custom backends](#custom-backends)
  - [Additional features](#additional-features)
    - [Time sources](#time-sources)
  - [Examples](#examples)

## Features
* Tracks any number of rate limits and intervals you want to define
* Independently tracks rate limits for multiple services or resources
* Handles exceeded rate limits by either raising errors or adding delays
* Several usage options including a normal function call, a decorator, or a contextmanager
* Async support
* Includes optional SQLite and Redis backends, which can be used to persist limit tracking across
  multiple threads, processes, or application restarts

## Installation
Install using pip:
```
pip install pyrate-limiter
```

Or using conda:
```
conda install --channel conda-forge pyrate-limiter
```

## Basic usage

### Defining rate limits
Consider some public API (like LinkedIn, GitHub, etc.) that has rate limits like the following:
```
- 500 requests per hour
- 1000 requests per day
- 10000 requests per month
```

You can define these rates using the `RequestRate` class, and add them to a `Limiter`:
``` python
from pyrate_limiter import BucketFullException, Duration, RequestRate, Limiter

hourly_rate = RequestRate(500, Duration.HOUR) # 500 requests per hour
daily_rate = RequestRate(1000, Duration.DAY) # 1000 requests per day
monthly_rate = RequestRate(10000, Duration.MONTH) # 10000 requests per month

limiter = Limiter(hourly_rate, daily_rate, monthly_rate)
```

Note that these rates need to be ordered by interval length; in other words, an hourly rate must
come before a daily rate, etc.

### Applying rate limits
Then, use `Limiter.try_acquire()` wherever you are making requests (or other rate-limited operations).
This will raise an exception if the rate limit is exceeded.

```python
import requests

def request_function():
    limiter.try_acquire('identity')
    requests.get('https://example.com')

while True:
    request_function()
```

Alternatively, you can use `Limiter.ratelimit()` as a function decorator:
```python
@limiter.ratelimit('identity')
def request_function():
    requests.get('https://example.com')
```
See [Additional usage options](#additional-usage-options) below for more details.

### Identities
Note that both `try_acquire()` and `ratelimit()` take one or more `identity` arguments. Typically this is
the name of the service or resource that is being rate-limited. This allows you to track rate limits
for these resources independently. For example, if you have a service that is rate-limited by user:
```python
def request_function(user_ids):
    limiter.try_acquire(*user_ids)
    for user_id in user_ids:
        requests.get(f'https://example.com?user_id={user_id}')
```

## Handling exceeded limits
When a rate limit is exceeded, you have two options: raise an exception, or add delays.

### Bucket analogy
<img height="300" align="right" src="https://upload.wikimedia.org/wikipedia/commons/c/c4/Leaky_bucket_analogy.JPG">

At this point it's useful to introduce the analogy of "buckets" used for rate-limiting. Here is a
quick summary:

* This library implements the [Leaky Bucket algorithm](https://en.wikipedia.org/wiki/Leaky_bucket).
* It is named after the idea of representing some kind of fixed capacity -- like a network or service -- as a bucket.
* The bucket "leaks" at a constant rate. For web services, this represents the **ideal or permitted request rate**.
* The bucket is "filled" at an intermittent, unpredicatble rate, representing the **actual rate of requests**.
* When the bucket is "full", it will overflow, representing **canceled or delayed requests**.

### Rate limit exceptions
By default, a `BucketFullException` will be raised when a rate limit is exceeded.
The error contains a `meta_info` attribute with the following information:
* `identity`: The identity it received
* `rate`: The specific rate that has been exceeded
* `remaining_time`: The remaining time until the next request can be sent

Here's an example that will raise an exception on the 4th request:
```python
limiter = Limiter(RequestRate(3, Duration.SECOND))

for _ in range(4):
    try:
        limiter.try_acquire('vutran')
    except BucketFullException as err:
        print(err)
        # Output: Bucket for vutran with Rate 3/5 is already full
        print(err.meta_info)
        # Output: {'identity': 'vutran', 'rate': '5/5', 'remaining_time': 2.9,
        #          'error': 'Bucket for vutran with Rate 3/5 is already full'}
```

### Rate limit delays
You may want to simply slow down your requests to stay within the rate limits instead of canceling
them. In that case you can use the `delay` argument. Note that this is only available for
`Limiter.ratelimit()`:
```python
@limiter.ratelimit('identity', delay=True)
def my_function():
    do_stuff()
```

If you exceed a rate limit with a long interval (daily, monthly, etc.), you may not want to delay
that long. In this case, you can set a `max_delay` (in seconds) that you are willing to wait in
between calls:
```python
@limiter.ratelimit('identity', delay=True, max_delay=360)
def my_function():
    do_stuff()
```
In this case, calls may be delayed by at most 360 seconds to stay within the rate limits; any longer
than that, and a `BucketFullException` will be raised instead. Without specifying `max_delay`, calls
will be delayed as long as necessary.

## Additional usage options
Besides `Limiter.try_acquire()`, some additional usage options are available using `Limiter.ratelimit()`:
### Decorator
`Limiter.ratelimit()` can be used as a decorator:
```python
@limiter.ratelimit('identity')
def my_function():
    do_stuff()
```

As with `Limiter.try_acquire()`, if calls to the wrapped function exceed the rate limits you
defined, a `BucketFullException` will be raised.

### Contextmanager
`Limiter.ratelimit()` also works as a contextmanager:

```python
def my_function():
    with limiter.ratelimit('identity', delay=True):
        do_stuff()
```

### Async decorator/contextmanager
`Limiter.ratelimit()` also support async functions, either as a decorator or contextmanager:
```python
@limiter.ratelimit('identity', delay=True)
async def my_function():
    await do_stuff()

async def my_function():
    async with limiter.ratelimit('identity'):
        await do_stuff()
```

When delays are enabled for an async function, `asyncio.sleep()` will be used instead of `time.sleep()`.

## Backends
A few different bucket backends are available, which can be selected using the `bucket_class`
argument for `Limiter`. Any additional backend-specific arguments can be passed
via `bucket_kwargs`.

### Memory
The default bucket is stored in memory, backed by a `queue.Queue`. A list implementation is also available:
```python
from pyrate_limiter import Limiter, MemoryListBucket

limiter = Limiter(bucket_class=MemoryListBucket)
```

### SQLite
If you need to persist the bucket state, a SQLite backend is available.

By default it will store the state in the system temp directory, and you can use
the `path` argument to use a different location:
```python
from pyrate_limiter import Limiter, SQLiteBucket

limiter = Limiter(bucket_class=SQLiteBucket)
```

By default, the database will be stored in the system temp directory. You can specify a different
path via `bucket_kwargs`:
```python
limiter = Limiter(
    bucket_class=SQLiteBucket,
    bucket_kwargs={'path': '/path/to/db.sqlite'},
)
```

#### Concurrency
This backend is thread-safe, and may also be used with multiple child processes that share the same
`Limiter` object, e.g. if created with `ProcessPoolExecutor` or `multiprocessing.Process`.

If you want to use SQLite with multiple processes with no shared state, for example if created by
running multiple scripts or by an external process, some additional protections are needed. For
these cases, a separate `FileLockSQLiteBucket` class is available. This requires installing the
[py-filelock](https://py-filelock.readthedocs.io) library.
```python
limiter = Limiter(bucket_class=FileLockSQLiteBucket)
```

### Redis
If you have a larger, distributed application, Redis is an ideal backend. This
option requires [redis-py](https://github.com/andymccurdy/redis-py).

Note that this backend requires a `bucket_name` argument, which will be used as a kprefix for the
Redis keys created. This can be used to disambiguate between multiple services using the same Redis
instance with pyrate-limiter.

```python
from pyrate_limiter import Limiter, RedisBucket

limiter = Limiter(bucket_class=RedisBucket, bucket_kwargs={'bucket_name': 'my_service'})
```

#### Connection settings
If you need to pass additional connection settings, you can use the `redis_pool` bucket argument:
```python
from redis import ConnectionPool

redis_pool = ConnectionPool(host='localhost', port=6379, db=0)
limiter = Limiter(
    bucket_class=RedisBucket,
    bucket_kwargs={'redis_pool': redis_pool, 'bucket_name': 'my_service'},
)
```

#### Redis clusters
Redis clusters are also supported, which requires
[redis-py-cluster](https://github.com/Grokzen/redis-py-cluster):
```python
from pyrate_limiter import Limiter, RedisClusterBucket

limiter = Limiter(bucket_class=RedisClusterBucket)
```

### Custom backends
If these don't suit your needs, you can also create your own bucket backend by extending `pyrate_limiter.bucket.AbstractBucket`.


## Additional features

### Time sources
By default, monotonic time is used, to ensure requests are always logged in the correct order.

You can specify a custom time source with the `time_function` argument. For example, you may want to
use the current UTC time for consistency across a distributed application using a Redis backend.
```python
from datetime import datetime
from pyrate_limiter import Duration, Limiter, RequestRate
from time import time

rate = RequestRate(5, Duration.SECOND)
limiter_datetime = Limiter(rate, time_function=lambda: datetime.utcnow().timestamp())
```

Or simply use the basic `time.time()` function:
```python
from time import time

rate = RequestRate(5, Duration.SECOND)
limiter_time = Limiter(rate, time_function=time)
```

## Examples
To prove that pyrate-limiter is working as expected, here is a complete example to demonstrate
rate-limiting with delays:
```python
from time import perf_counter as time
from pyrate_limiter import Duration, Limiter, RequestRate

limiter = Limiter(RequestRate(5, Duration.SECOND))
n_requests = 27

@limiter.ratelimit("test", delay=True)
def limited_function(start_time):
    print(f"t + {(time() - start_time):.5f}")

start_time = time()
for _ in range(n_requests):
    limited_function(start_time)
print(f"Ran {n_requests} requests in {time() - start_time:.5f} seconds")
```

And an equivalent example for async usage:
```python
import asyncio
from time import perf_counter as time
from pyrate_limiter import Duration, Limiter, RequestRate

limiter = Limiter(RequestRate(5, Duration.SECOND))
n_requests = 27

@limiter.ratelimit("test", delay=True)
async def limited_function(start_time):
    print(f"t + {(time() - start_time):.5f}")

async def test_ratelimit():
    start_time = time()
    tasks = [limited_function(start_time) for _ in range(n_requests)]
    await asyncio.gather(*tasks)
    print(f"Ran {n_requests} requests in {time() - start_time:.5f} seconds")

asyncio.run(test_ratelimit())
```

