The Python interface to the Redis key-value store.
redis-py requires a running Redis server. See Redis's quickstart for installation instructions.
To install redis-py, simply:
$ sudo pip install redis
or alternatively (you really should be using pip though):
$ sudo easy_install redis
or from source:
$ sudo python setup.py install
>>> import redis >>> r = redis.StrictRedis(host='localhost', port=6379, db=0) >>> r.set('foo', 'bar') True >>> r.get('foo') 'bar'
The official Redis command documentation does a great job of explaining each command in detail. redis-py exposes two client classes that implement these commands. The StrictRedis class attempts to adhere to the official command syntax. There are a few exceptions:
- SELECT: Not implemented. See the explanation in the Thread Safety section below.
- DEL: 'del' is a reserved keyword in the Python syntax. Therefore redis-py uses 'delete' instead.
- CONFIG GET|SET: These are implemented separately as config_get or config_set.
- MULTI/EXEC: These are implemented as part of the Pipeline class. The pipeline is wrapped with the MULTI and EXEC statements by default when it is executed, which can be disabled by specifying transaction=False. See more about Pipelines below.
- SUBSCRIBE/LISTEN: Similar to pipelines, PubSub is implemented as a separate class as it places the underlying connection in a state where it can't execute non-pubsub commands. Calling the pubsub method from the Redis client will return a PubSub instance where you can subscribe to channels and listen for messages. You can only call PUBLISH from the Redis client (see this comment on issue #151 for details).
In addition to the changes above, the Redis class, a subclass of StrictRedis, overrides several other commands to provide backwards compatibility with older versions of redis-py:
- LREM: Order of 'num' and 'value' arguments reversed such that 'num' can provide a default value of zero.
- ZADD: Redis specifies the 'score' argument before 'value'. These were swapped accidentally when being implemented and not discovered until after people were already using it. The Redis class expects *args in the form of: name1, score1, name2, score2, ...
- SETEX: Order of 'time' and 'value' arguments reversed.
Behind the scenes, redis-py uses a connection pool to manage connections to a Redis server. By default, each Redis instance you create will in turn create its own connection pool. You can override this behavior and use an existing connection pool by passing an already created connection pool instance to the connection_pool argument of the Redis class. You may choose to do this in order to implement client side sharding or have finer grain control of how connections are managed.
>>> pool = redis.ConnectionPool(host='localhost', port=6379, db=0) >>> r = redis.Redis(connection_pool=pool)
ConnectionPools manage a set of Connection instances. redis-py ships with two types of Connections. The default, Connection, is a normal TCP socket based connection. The UnixDomainSocketConnection allows for clients running on the same device as the server to connect via a unix domain socket. To use a UnixDomainSocketConnection connection, simply pass the unix_socket_path argument, which is a string to the unix domain socket file. Additionally, make sure the unixsocket parameter is defined in your redis.conf file. It's commented out by default.
>>> r = redis.Redis(unix_socket_path='/tmp/redis.sock')
You can create your own Connection subclasses as well. This may be useful if you want to control the socket behavior within an async framework. To instantiate a client class using your own connection, you need to create a connection pool, passing your class to the connection_class argument. Other keyword parameters your pass to the pool will be passed to the class specified during initialization.
>>> pool = redis.ConnectionPool(connection_class=YourConnectionClass, your_arg='...', ...)
Parser classes provide a way to control how responses from the Redis server are parsed. redis-py ships with two parser classes, the PythonParser and the HiredisParser. By default, redis-py will attempt to use the HiredisParser if you have the hiredis module installed and will fallback to the PythonParser otherwise.
Hiredis is a C library maintained by the core Redis team. Pieter Noordhuis was kind enough to create Python bindings. Using Hiredis can provide up to a 10x speed improvement in parsing responses from the Redis server. The performance increase is most noticeable when retrieving many pieces of data, such as from LRANGE or SMEMBERS operations.
Hiredis is available on PyPI, and can be installed via pip or easy_install just like redis-py.
$ pip install hiredis
$ easy_install hiredis
The client class uses a set of callbacks to cast Redis responses to the appropriate Python type. There are a number of these callbacks defined on the Redis client class in a dictionary called RESPONSE_CALLBACKS.
Custom callbacks can be added on a per-instance basis using the set_response_callback method. This method accepts two arguments: a command name and the callback. Callbacks added in this manner are only valid on the instance the callback is added to. If you want to define or override a callback globally, you should make a subclass of the Redis client and add your callback to its REDIS_CALLBACKS class dictionary.
Response callbacks take at least one parameter: the response from the Redis server. Keyword arguments may also be accepted in order to further control how to interpret the response. These keyword arguments are specified during the command's call to execute_command. The ZRANGE implementation demonstrates the use of response callback keyword arguments with its "withscores" argument.
Redis client instances can safely be shared between threads. Internally, connection instances are only retrieved from the connection pool during command execution, and returned to the pool directly after. Command execution never modifies state on the client instance.
However, there is one caveat: the Redis SELECT command. The SELECT command allows you to switch the database currently in use by the connection. That database remains selected until another is selected or until the connection is closed. This creates an issue in that connections could be returned to the pool that are connected to a different database.
As a result, redis-py does not implement the SELECT command on client instances. If you use multiple Redis databases within the same application, you should create a separate client instance (and possibly a separate connection pool) for each database.
It is not safe to pass PubSub or Pipeline objects between threads.
Pipelines are a subclass of the base Redis class that provide support for buffering multiple commands to the server in a single request. They can be used to dramatically increase the performance of groups of commands by reducing the number of back-and-forth TCP packets between the client and server.
Pipelines are quite simple to use:
>>> r = redis.Redis(...) >>> r.set('bing', 'baz') >>> # Use the pipeline() method to create a pipeline instance >>> pipe = r.pipeline() >>> # The following SET commands are buffered >>> pipe.set('foo', 'bar') >>> pipe.get('bing') >>> # the EXECUTE call sends all buffered commands to the server, returning >>> # a list of responses, one for each command. >>> pipe.execute() [True, 'baz']
For ease of use, all commands being buffered into the pipeline return the pipeline object itself. Therefore calls can be chained like:
>>> pipe.set('foo', 'bar').sadd('faz', 'baz').incr('auto_number').execute() [True, True, 6]
In addition, pipelines can also ensure the buffered commands are executed atomically as a group. This happens by default. If you want to disable the atomic nature of a pipeline but still want to buffer commands, you can turn off transactions.
>>> pipe = r.pipeline(transaction=False)
A common issue occurs when requiring atomic transactions but needing to retrieve values in Redis prior for use within the transaction. For instance, let's assume that the INCR command didn't exist and we need to build an atomic version of INCR in Python.
The completely naive implementation could GET the value, increment it in Python, and SET the new value back. However, this is not atomic because multiple clients could be doing this at the same time, each getting the same value from GET.
Enter the WATCH command. WATCH provides the ability to monitor one or more keys prior to starting a transaction. If any of those keys change prior the execution of that transaction, the entire transaction will be canceled and a WatchError will be raised. To implement our own client-side INCR command, we could do something like this:
>>> with r.pipeline() as pipe: ... while 1: ... try: ... # put a WATCH on the key that holds our sequence value ... pipe.watch('OUR-SEQUENCE-KEY') ... # after WATCHing, the pipeline is put into immediate execution ... # mode until we tell it to start buffering commands again. ... # this allows us to get the current value of our sequence ... current_value = pipe.get('OUR-SEQUENCE-KEY') ... next_value = int(current_value) + 1 ... # now we can put the pipeline back into buffered mode with MULTI ... pipe.multi() ... pipe.set('OUR-SEQUENCE-KEY', next_value) ... # and finally, execute the pipeline (the set command) ... pipe.execute() ... # if a WatchError wasn't raised during execution, everything ... # we just did happened atomically. ... break ... except WatchError: ... # another client must have changed 'OUR-SEQUENCE-KEY' between ... # the time we started WATCHing it and the pipeline's execution. ... # our best bet is to just retry. ... continue
Note that, because the Pipeline must bind to a single connection for the duration of a WATCH, care must be taken to ensure that the connection is returned to the connection pool by calling the reset() method. If the Pipeline is used as a context manager (as in the example above) reset() will be called automatically. Of course you can do this the manual way by explicity calling reset():
>>> pipe = r.pipeline() >>> while 1: ... try: ... pipe.watch('OUR-SEQUENCE-KEY') ... ... ... pipe.execute() ... break ... except WatchError: ... continue ... finally: ... pipe.reset()
A convenience method named "transaction" exists for handling all the boilerplate of handling and retrying watch errors. It takes a callable that should expect a single parameter, a pipeline object, and any number of keys to be WATCHed. Our client-side INCR command above can be written like this, which is much easier to read:
>>> def client_side_incr(pipe): ... current_value = pipe.get('OUR-SEQUENCE-KEY') ... next_value = int(current_value) + 1 ... pipe.multi() ... pipe.set('OUR-SEQUENCE-KEY', next_value) >>> >>> r.transaction(client_side_incr, 'OUR-SEQUENCE-KEY') [True]
redis-py supports the EVAL, EVALSHA, and SCRIPT commands. However, there are a number of edge cases that make these commands tedious to use in real world scenarios. Therefore, redis-py exposes a Script object that makes scripting much easier to use.
To create a Script instance, use the register_script function on a client instance passing the LUA code as the first argument. register_script returns a Script instance that you can use throughout your code.
The following trivial LUA script accepts two parameters: the name of a key and a multiplier value. The script fetches the value stored in the key, multiplies it with the multiplier value and returns the result.
>>> r = redis.StrictRedis() >>> lua = """ ... local value = redis.call('GET', KEYS) ... value = tonumber(value) ... return value * ARGV""" >>> multiply = r.register_script(lua)
multiply is now a Script instance that is invoked by calling it like a function. Script instances accept the following optional arguments:
- keys: A list of key names that the script will access. This becomes the KEYS list in LUA.
- args: A list of argument values. This becomes the ARGV list in LUA.
- client: A redis-py Client or Pipeline instance that will invoke the script. If client isn't specified, the client that intiially created the Script instance (the one that register_script was invoked from) will be used.
Continuing the example from above:
>>> r.set('foo', 2) >>> multiply(keys=['foo'], args=) 10
The value of key 'foo' is set to 2. When multiply is invoked, the 'foo' key is passed to the script along with the multiplier value of 5. LUA executes the script and returns the result, 10.
Script instances can be executed using a different client instance, even one that points to a completely different Redis server.
>>> r2 = redis.StrictRedis('redis2.example.com') >>> r2.set('foo', 3) >>> multiply(keys=['foo'], args=, client=r2) 15
The Script object ensures that the LUA script is loaded into Redis's script cache. In the event of a NOSCRIPT error, it will load the script and retry executing it.
Script objects can also be used in pipelines. The pipeline instance should be passed as the client argument when calling the script. Care is taken to ensure that the script is registered in Redis's script cache just prior to pipeline execution.
>>> pipe = r.pipeline() >>> pipe.set('foo', 5) >>> multiply(keys=['foo'], args=, client=pipe) >>> pipe.execute() [True, 25]
Special thanks to:
- Ludovico Magnocavallo, author of the original Python Redis client, from which some of the socket code is still used.
- Alexander Solovyov for ideas on the generic response callback system.
- Paul Hubbard for initial packaging support.