Metadata-Version: 2.1
Name: pyrate-limiter
Version: 2.2.2
Summary: Python Rate-Limiter using Leaky-Bucket Algorimth Family
Home-page: https://github.com/vutran1710/PyrateLimiter
License: MIT
Keywords: rate,rate-limiter,rate_limiter,ratelimiter,leaky-bucket
Author: vutr
Author-email: me@vutr.io
Requires-Python: >=3.7,<4.0
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Topic :: Software Development :: Documentation
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Project-URL: Repository, https://github.com/vutran1710/PyrateLimiter
Description-Content-Type: text/markdown

<img align="left" width="95" height="120" src="https://raw.githubusercontent.com/vutran1710/PyrateLimiter/master/img/log.png">

# PyrateLimiter
The request rate limiter using Leaky-bucket algorithm

[![PyPI version](https://badge.fury.io/py/pyrate-limiter.svg)](https://badge.fury.io/py/pyrate-limiter)
[![Coverage Status](https://coveralls.io/repos/github/vutran1710/PyrateLimiter/badge.svg?branch=master)](https://coveralls.io/github/vutran1710/PyrateLimiter?branch=master)
[![Python 3.7](https://img.shields.io/badge/python-3.7-blue.svg)](https://www.python.org/downloads/release/python-370/)
[![Python 3.8](https://img.shields.io/badge/python-3.8-blue.svg)](https://www.python.org/downloads/release/python-380/)
[![Maintenance](https://img.shields.io/badge/Maintained%3F-yes-green.svg)](https://github.com/vutran1710/PyrateLimiter/graphs/commit-activity)
[![PyPI license](https://img.shields.io/pypi/l/ansicolortags.svg)](https://pypi.python.org/pypi/pyrate-limiter/)
[![HitCount](http://hits.dwyl.io/vutran1710/PyrateLimiter.svg)](http://hits.dwyl.io/vutran1710/PyrateLimiter)

<br>

## Introduction
This module can be used to apply rate-limit for API request. User defines window duration and the limit of function calls within such interval.
To hold the state of the Bucket, you can use MemoryListBucket/MemoryQueueBucket as internal bucket.
To use PyrateLimiter with Redis, redis-py is required to be installed.
It is also possible to use your own Bucket implementation, by extending AbstractBucket from pyrate_limiter.core

## Available modules
```python
from pyrate_limiter import (
	BucketFullException,
	Duration,
	RequestRate,
	Limiter,
	MemoryListBucket,
	MemoryQueueBucket,
)
```

## Strategies

### Subscription strategies

Considering API throttling logic for usual business models of Subscription, we usually see strategies somewhat similar to these.

``` shell
Some commercial/free API (Linkedin, Github etc)
- 500 requests/hour, and
- 1000 requests/day, and
- maximum 10,000 requests/month
```

- [x] `RequestRate` class is designed to describe this strategies - eg for the above strategies we have a Rate-Limiter defined
as following

``` python
hourly_rate = RequestRate(500, Duration.HOUR) # maximum 500 requests/hour
daily_rate = RequestRate(1000, Duration.DAY) # maximum 1000 requests/day
monthly_rate = RequestRate(10000, Duration.MONTH) # and so on

limiter = Limiter(hourly_rate, daily_rate, monthly_rate, *other_rates, bucket_class=MemoryListBucket) # default is MemoryQueueBucket

# usage
identity = user_id # or ip-address, or maybe both
limiter.try_acquire(identity)
```

As the logic is pretty self-explainatory, note that the superior rate-limit must come after the inferiors, ie
1000 req/day must be declared after an hourly-rate-limit, and the daily-limit must be larger than hourly-limit.

- [x] `bucket_class` is the type of bucket that holds request. It could be an in-memory data structure like Python List (`MemoryListBucket`), or Queue `MemoryQueueBucket`.


- [x] For microservices or decentralized platform, multiple rate-Limiter may share a single store for storing
	  request-rate history, ie `Redis`. This lib provides a ready-use `RedisBucket` to handle such case, and required
	  `redis-py` as its peer-dependency. The usage difference is when using Redis, a naming `prefix` must be provide so
	  the keys can be distinct for each item's identity.

``` python
from redis import ConnectionPool

pool = ConnectionPool.from_url('redis://localhost:6379')

rate = RequestRate(3, 5 * Duration.SECOND)

bucket_kwargs = {
	"redis_pool": redis_pool,
	"bucket_name": "my-ultimate-bucket-prefix"
}

# so each item buckets will have a key name as
# my-ultimate-bucket-prefix__item-identity

limiter = Limiter(rate, bucket_class=RedisBucket, bucket_kwargs=bucket_kwargs)
item = 'vutran_item'
limiter.try_acquire(item)
```

### BucketFullException
If the Bucket is full, an exception *BucketFullException* will be raised, with meta-info about the identity it received, the rate that has raised, and the remaining time until the next request can be processed.

```python
rate = RequestRate(3, 5 * Duration.SECOND)
limiter = Limiter(rate)
item = 'vutran'

has_raised = False
try:
	for _ in range(4):
		limiter.try_acquire(item)
		sleep(1)
except BucketFullException as err:
	has_raised = True
	assert str(err)
	# Bucket for vutran with Rate 3/5 is already full
	assert isinstance(err.meta_info, dict)
	# {'error': 'Bucket for vutran with Rate 3/5 is already full', 'identity': 'tranvu', 'rate': '5/5', 'remaining_time': 2}
```

- [ ] *RequestRate may be required to `reset` on a fixed schedule, eg: every first-day of a month

### Decorator usage with rate-limiting exceptions
Rate-limiting is also available in decorator form, using `Limiter.ratelimit`. Example:
```python
    @limiter.ratelimit(item)
    def my_function():
        do_stuff()
```

It also works on async functions:
```python
    @limiter.ratelimit(item)
    async def my_function():
        await do_stuff()
```

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

### Decorator usage with rate-limiting delays
In some cases, you may want to simply slow down your calls to stay within the rate limits instead of
canceling them. In that case you can use the `delay` flag, optionally with a `max_delay`
(in seconds) that you are willing to wait in between calls.

Example:
```python
    @limiter.ratelimit(item, delay=True, max_delay=10)
    def my_function():
        do_stuff()
```

In this case, calls may be delayed by at most 10 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.

This also works for async functions, which will be delayed using `asyncio.sleep` instead of
`time.sleep`.

### Spam-protection strategies
- [x] Sometimes, we need a rate-limiter to protect our API from spamming/ddos attack. Some usual strategies for this could be as
following

``` shell
1. No more than 100 requests/minute, or
2. 100 request per minute, and no more than 300 request per hour
```

### Throttling handling
When the number of incoming requets go beyond the limit, we can either do..

``` shell
1. Raise a 429 Http Error, or
2. Keep the incoming requests, wait then slowly process them one by one.
```

### More complex scenario
https://www.keycdn.com/support/rate-limiting#types-of-rate-limits

- [ ] *Sometimes, we may need to apply specific rate-limiting strategies based on schedules/region or some other metrics. It
requires the capability to `switch` the strategies instantly without re-deploying the whole service.

## Notes
Todo-items marked with (*) are planned for v3 release.

