The main problem with dynamic Web sites is, well, they’re dynamic. Each time a user requests a page, the webserver executes a lot of code, queries the database, renders templates until the visitor gets the page he sees.
This is a lot more expensive than just loading a file from the file system and sending it to the visitor.
For most Web applications, this overhead isn’t a big deal but once it becomes, you will be glad to have a cache system in place.
Caching is pretty simple. Basically you have a cache object lurking around somewhere that is connected to a remote cache or the file system or something else. When the request comes in you check if the current page is already in the cache and if so, you’re returning it from the cache. Otherwise you generate the page and put it into the cache. (Or a fragment of the page, you don’t have to cache the full thing)
Here is a simple example of how to cache a sidebar for a template:
def get_sidebar(user):
identifier = 'sidebar_for/user%d' % user.id
value = cache.get(identifier)
if value is not None:
return value
value = generate_sidebar_for(user=user)
cache.set(identifier, value, timeout=60 * 5)
return value
To create a cache object you just import the cache system of your choice from the cache module and instantiate it. Then you can start working with that object:
>>> from werkzeug.contrib.cache import SimpleCache
>>> c = SimpleCache()
>>> c.set("foo", "value")
>>> c.get("foo")
'value'
>>> c.get("missing") is None
True
Please keep in mind that you have to create the cache and put it somewhere you have access to it (either as a module global you can import or you just put it into your WSGI application).
Baseclass for the cache systems. All the cache systems implement this API or a superset of it.
参数: | default_timeout – the default timeout that is used if no timeout is specified on set(). |
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Works like set() but does not overwrite the values of already existing keys.
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Clears the cache. Keep in mind that not all caches support completely clearing the cache.
Decrements the value of a key by delta. If the key does not yet exist it is initialized with -delta.
For supporting caches this is an atomic operation.
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Deletes key from the cache. If it does not exist in the cache nothing happens.
参数: | key – the key to delete. |
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Deletes multiple keys at once.
参数: | keys – The function accepts multiple keys as positional arguments. |
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Looks up key in the cache and returns the value for it. If the key does not exist None is returned instead.
参数: | key – the key to be looked up. |
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Works like get_many() but returns a dict:
d = cache.get_dict("foo", "bar")
foo = d["foo"]
bar = d["bar"]
参数: | keys – The function accepts multiple keys as positional arguments. |
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Returns a list of values for the given keys. For each key a item in the list is created. Example:
foo, bar = cache.get_many("foo", "bar")
If a key can’t be looked up None is returned for that key instead.
参数: | keys – The function accepts multiple keys as positional arguments. |
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Increments the value of a key by delta. If the key does not yet exist it is initialized with delta.
For supporting caches this is an atomic operation.
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Adds a new key/value to the cache (overwrites value, if key already exists in the cache).
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Sets multiple keys and values from a mapping.
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A cache that doesn’t cache. This can be useful for unit testing.
参数: | default_timeout – a dummy parameter that is ignored but exists for API compatibility with other caches. |
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Simple memory cache for single process environments. This class exists mainly for the development server and is not 100% thread safe. It tries to use as many atomic operations as possible and no locks for simplicity but it could happen under heavy load that keys are added multiple times.
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A cache that uses memcached as backend.
The first argument can either be an object that resembles the API of a memcache.Client or a tuple/list of server addresses. In the event that a tuple/list is passed, Werkzeug tries to import the best available memcache library.
Implementation notes: This cache backend works around some limitations in memcached to simplify the interface. For example unicode keys are encoded to utf-8 on the fly. Methods such as get_dict() return the keys in the same format as passed. Furthermore all get methods silently ignore key errors to not cause problems when untrusted user data is passed to the get methods which is often the case in web applications.
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This class is deprecated in favour of MemcachedCache which now supports Google Appengine as well.
在 0.8 版更改: Deprecated in favour of MemcachedCache.
Uses the Redis key-value store as a cache backend.
The first argument can be either a string denoting address of the Redis server or an object resembling an instance of a redis.Redis class.
Note: Python Redis API already takes care of encoding unicode strings on the fly.
0.7 新版功能.
0.8 新版功能: key_prefix was added.
在 0.8 版更改: This cache backend now properly serializes objects.
在 0.8.3 版更改: This cache backend now supports password authentication.
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A cache that stores the items on the file system. This cache depends on being the only user of the cache_dir. Make absolutely sure that nobody but this cache stores files there or otherwise the cache will randomly delete files therein.
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