Getting started! ================ A comprehensive, fast, pure-Python memcached client library. Basic Usage ------------ .. code-block:: python from pymemcache.client.base import Client client = Client('localhost') client.set('some_key', 'some_value') result = client.get('some_key') The server to connect to can be specified in a number of ways. If using TCP connections over IPv4 or IPv6, the ``server`` parameter can be passed a ``host`` string, a ``host:port`` string, or a ``(host, port)`` 2-tuple. The host part may be a domain name, an IPv4 address, or an IPv6 address. The port may be omitted, in which case it will default to ``11211``. .. code-block:: python ipv4_client = Client('127.0.0.1') ipv4_client_with_port = Client('127.0.0.1:11211') ipv4_client_using_tuple = Client(('127.0.0.1', 11211)) ipv6_client = Client('[::1]') ipv6_client_with_port = Client('[::1]:11211') ipv6_client_using_tuple = Client(('::1', 11211)) domain_client = Client('localhost') domain_client_with_port = Client('localhost:11211') domain_client_using_tuple = Client(('localhost', 11211)) Note that IPv6 may be used in preference to IPv4 when passing a domain name as the host if an IPv6 address can be resolved for that domain. You can also connect to a local memcached server over a UNIX domain socket by passing the socket's path to the client's ``server`` parameter. An optional ``unix:`` prefix may be used for compatibility in code that uses other client libraries that require it. .. code-block:: python client = Client('/run/memcached/memcached.sock') client_with_prefix = Client('unix:/run/memcached/memcached.sock') Using a client pool ------------------- :class:`pymemcache.client.base.PooledClient` is a thread-safe client pool that provides the same API as :class:`pymemcache.client.base.Client`. It's useful in for cases when you want to maintain a pool of already-connected clients for improved performance. .. code-block:: python from pymemcache.client.base import PooledClient client = PooledClient('127.0.0.1', max_pool_size=4) Using a memcached cluster ------------------------- This will use a consistent hashing algorithm to choose which server to set/get the values from. It will also automatically rebalance depending on if a server goes down. .. code-block:: python from pymemcache.client.hash import HashClient client = HashClient([ '127.0.0.1:11211', '127.0.0.1:11212', ]) client.set('some_key', 'some value') result = client.get('some_key') Using the built-in retrying mechanism ------------------------------------- The library comes with retry mechanisms that can be used to wrap all kind of pymemcache clients. The wrapper allow you to define the exceptions that you want to handle with retries, which exceptions to exclude, how many attempts to make and how long to wait between attempts. The ``RetryingClient`` wraps around any of the other included clients and will have the same methods. For this example we're just using the base ``Client``. .. code-block:: python from pymemcache.client.base import Client from pymemcache.client.retrying import RetryingClient from pymemcache.exceptions import MemcacheUnexpectedCloseError base_client = Client(("localhost", 11211)) client = RetryingClient( base_client, attempts=3, retry_delay=0.01, retry_for=[MemcacheUnexpectedCloseError] ) client.set('some_key', 'some value') result = client.get('some_key') The above client will attempt each call three times with a wait of 10ms between each attempt, as long as the exception is a ``MemcacheUnexpectedCloseError``. Using TLS --------- **Memcached** `supports `_ authentication and encryption via TLS since version **1.5.13**. A Memcached server running with TLS enabled will only accept TLS connections. To enable TLS in pymemcache, pass a valid TLS context to the client's ``tls_context`` parameter: .. code-block:: python import ssl from pymemcache.client.base import Client context = ssl.create_default_context( cafile="my-ca-root.crt", ) client = Client('localhost', tls_context=context) client.set('some_key', 'some_value') result = client.get('some_key') Serialization -------------- .. code-block:: python import json from pymemcache.client.base import Client class JsonSerde(object): def serialize(self, key, value): if isinstance(value, str): return value, 1 return json.dumps(value), 2 def deserialize(self, key, value, flags): if flags == 1: return value if flags == 2: return json.loads(value) raise Exception("Unknown serialization format") client = Client('localhost', serde=JsonSerde()) client.set('key', {'a':'b', 'c':'d'}) result = client.get('key') pymemcache provides a default `pickle `_-based serializer: .. code-block:: python from pymemcache.client.base import Client from pymemcache import serde class Foo(object): pass client = Client('localhost', serde=serde.pickle_serde) client.set('key', Foo()) result = client.get('key') The serializer uses the highest pickle protocol available. In order to make sure multiple versions of Python can read the protocol version, you can specify the version by explicitly instantiating :class:`pymemcache.serde.PickleSerde`: .. code-block:: python client = Client('localhost', serde=serde.PickleSerde(pickle_version=2)) Deserialization with Python 3 ----------------------------- Values passed to the `serde.deserialize()` method will be bytestrings. It is therefore necessary to encode and decode them correctly. Here's a version of the `JsonSerde` from above which is more careful with encodings: .. code-block:: python class JsonSerde(object): def serialize(self, key, value): if isinstance(value, str): return value.encode('utf-8'), 1 return json.dumps(value).encode('utf-8'), 2 def deserialize(self, key, value, flags): if flags == 1: return value.decode('utf-8') if flags == 2: return json.loads(value.decode('utf-8')) raise Exception("Unknown serialization format") Interacting with pymemcache --------------------------- For testing purpose pymemcache can be used in an interactive mode by using the python interpreter or again ipython and tools like tox. One main advantage of using `tox` to interact with `pymemcache` is that it comes with it's own virtual environments. It will automatically install pymemcache and fetch all the needed requirements at run. See the example below: .. code-block:: shell $ podman run --publish 11211:11211 -it --rm --name memcached memcached $ tox -e venv -- python >>> from pymemcache.client.base import Client >>> client = Client('127.0.0.1') >>> client.set('some_key', 'some_value') True >>> client.get('some_key') b'some_value' >>> print(client.get.__doc__) The memcached "get" command, but only for one key, as a convenience. Args: key: str, see class docs for details. default: value that will be returned if the key was not found. Returns: The value for the key, or default if the key wasn't found. You can instantiate all the classes and clients offered by pymemcache. Your client will remain open until you decide to close it or until you decide to quit your interpreter. It can allow you to see what's happen if your server is abruptly closed. Below is an by example. Starting your server: .. code-block:: shell $ podman run --publish 11211:11211 -it --name memcached memcached Starting your client and set some keys: .. code-block:: shell $ tox -e venv -- python >>> from pymemcache.client.base import Client >>> client = Client('127.0.0.1') >>> client.set('some_key', 'some_value') True Restarting the server: .. code-block:: shell $ podman restart memcached The previous client is still opened, now try to retrieve some keys: .. code-block:: shell >>> print(client.get('some_key')) Traceback (most recent call last): File "", line 1, in File "/home/user/pymemcache/pymemcache/client/base.py", line 535, in get return self._fetch_cmd(b'get', [key], False).get(key, default) File "/home/user/pymemcache/pymemcache/client/base.py", line 910, in _fetch_cmd buf, line = _readline(self.sock, buf) File "/home/user/pymemcache/pymemcache/client/base.py", line 1305, in _readline raise MemcacheUnexpectedCloseError() pymemcache.exceptions.MemcacheUnexpectedCloseError We can see that the connection has been closed. You can also pass a command directly from CLI parameters and get output directly: .. code-block:: shell $ tox -e venv -- python -c "from pymemcache.client.base import Client; client = Client('127.0.01'); print(client.get('some_key'))" b'some_value' This kind of usage is useful for debug sessions or to dig manually into your server. Key Constraints --------------- This client implements the ASCII protocol of memcached. This means keys should not contain any of the following illegal characters: Keys cannot have spaces, new lines, carriage returns, or null characters. We suggest that if you have unicode characters, or long keys, you use an effective hashing mechanism before calling this client. At Pinterest, we have found that murmur3 hash is a great candidate for this. Alternatively you can set `allow_unicode_keys` to support unicode keys, but beware of what unicode encoding you use to make sure multiple clients can find the same key. Best Practices --------------- - Always set the ``connect_timeout`` and ``timeout`` arguments in the :py:class:`pymemcache.client.base.Client` constructor to avoid blocking your process when memcached is slow. You might also want to enable the ``no_delay`` option, which sets the TCP_NODELAY flag on the connection's socket. - Use the ``noreply`` flag for a significant performance boost. The ``noreply`` flag is enabled by default for "set", "add", "replace", "append", "prepend", and "delete". It is disabled by default for "cas", "incr" and "decr". It obviously doesn't apply to any get calls. - Use :func:`pymemcache.client.base.Client.get_many` and :func:`pymemcache.client.base.Client.gets_many` whenever possible, as they result in fewer round trip times for fetching multiple keys. - Use the ``ignore_exc`` flag to treat memcache/network errors as cache misses on calls to the get* methods. This prevents failures in memcache, or network errors, from killing your web requests. Do not use this flag if you need to know about errors from memcache, and make sure you have some other way to detect memcache server failures. - Unless you have a known reason to do otherwise, use the provided serializer in `pymemcache.serde.pickle_serde` for any de/serialization of objects. .. WARNING:: ``noreply`` will not read errors returned from the memcached server. If a function with ``noreply=True`` causes an error on the server, it will still succeed and your next call which reads a response from memcached may fail unexpectedly. ``pymemcached`` will try to catch and stop you from sending malformed inputs to memcached, but if you are having unexplained errors, setting ``noreply=False`` may help you troubleshoot the issue.