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I'm curious what the recommended method of querying Redis (or any DB for that matter) is from Tornado.

I've seen some examples like https://gist.github.com/357306 but they all appear to be using blocking calls to redis.

My understanding is that to avoid grinding Tornado to a halt, I need to be using non-blocking DB libraries like the ones developed for Twisted.

Am I wrong? How is this supposed to be done?

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3 Answers 3

up vote 23 down vote accepted

When it comes to blocking commands like BLPOP or listening to a Pub/Sub channel you'll need an asynchronous client like tornado-redis. You may start with this demo to see how the tornado-redis client may be used to develope a simple public chat application.

But I would recommend using the synchronous redis-py client in conjunction with hiredis for most other cases.

The main advantage of asynchronous client is that your server can handle incoming requests while waiting for Redis server response. However, the Redis server is so fast that in most cases an overhead of setting up asynchronous callbacks in your Tornado application adds more to the total time of request processing then the time spent on waiting for Redis server response.

Using an asynchronous client you may try to send multiple requests to the Redis server at the same time, but the Redis server is a single-threaded one (just like Tornado server), so it will answer to these requests one-by-one and you'll gain almost nothing. And, in fact, you don't have to send multiple Redis commands at the same time to the same Redis server as long as there are pipelines and commands like MGET/MSET.

An asynchronous client has some advantages when you use several Redis server instances, but I suggest using a synchronous (redis-py) client and a proxy like twemproxy or this one (the latter supports pipelining and MGET/MSET commands).

Also I suggest not to use the connection pooling when using the redis-py client in Tornado applications. Just create a single Redis object instance for each Redis database your application connects to.

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Can you provide any benchmarks? I'm just curious can you support your IMO? Because one of the reason of implementing async communication is that Redis (without multimaster setup) can't handle concurrent requests. I am working with single instance redis server with over 55Kops and without async tornado is stuck. –  kAlmAcetA Oct 5 '13 at 23:39
I wrote a simple benchmark before posting this. You may find it here: github.com/leporo/tornado-redis/tree/master/demos/benchmark –  leporo Nov 19 '13 at 17:40
Could you please provide more details on your server? What redis commands do you use? How many Redis connections do you open to handle 55Kops? What Redis client library do you use? And please explain what do you mean saying '55Kops'. –  leporo Nov 19 '13 at 17:49
Indeed, using a synchronous client sounds OK for the average case, but the worst case might not be acceptable! Example 1: if Redis hangs or network to Redis is slow, you will hang your Tornado app. Example 2: serializing requests on the client and serializing on the server is only equivalent if network latency is 0, which almost never the case. –  André Caron May 26 at 17:54

I would recommend to use brukva which is an "Asynchronous Redis client that works within Tornado IO loop".

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Just in case anyone stumbles across this post, I think the most up to date async redis library is now tornadoredis github.com/leporo/tornado-redis –  Nick Jennings Jun 27 '12 at 17:27

One option is to use the port of Tornado to Twisted and then use the Twisted Redis API with that. Tornado itself doesn't seem to have arbitrary asynchronous operations as an objective (though if you wanted to rebuild all of the sorts of things that have been built for Twisted, you probably could build them from the low-level iostream APIs in Tornado, but I wouldn't recommend it).

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