logging.config
— Logging configuration¶
Source code: Lib/logging/config.py
This section describes the API for configuring the logging module.
Configuration functions¶
The following functions configure the logging module. They are located in the
logging.config
module. Their use is optional — you can configure the
logging module using these functions or by making calls to the main API (defined
in logging
itself) and defining handlers which are declared either in
logging
or logging.handlers
.
-
logging.config.
dictConfig
(config)¶ Takes the logging configuration from a dictionary. The contents of this dictionary are described in Configuration dictionary schema below.
If an error is encountered during configuration, this function will raise a
ValueError
,TypeError
,AttributeError
orImportError
with a suitably descriptive message. The following is a (possibly incomplete) list of conditions which will raise an error:A
level
which is not a string or which is a string not corresponding to an actual logging level.A
propagate
value which is not a boolean.An id which does not have a corresponding destination.
A non-existent handler id found during an incremental call.
An invalid logger name.
Inability to resolve to an internal or external object.
Parsing is performed by the
DictConfigurator
class, whose constructor is passed the dictionary used for configuration, and has aconfigure()
method. Thelogging.config
module has a callable attributedictConfigClass
which is initially set toDictConfigurator
. You can replace the value ofdictConfigClass
with a suitable implementation of your own.dictConfig()
callsdictConfigClass
passing the specified dictionary, and then calls theconfigure()
method on the returned object to put the configuration into effect:def dictConfig(config): dictConfigClass(config).configure()
For example, a subclass of
DictConfigurator
could callDictConfigurator.__init__()
in its own__init__()
, then set up custom prefixes which would be usable in the subsequentconfigure()
call.dictConfigClass
would be bound to this new subclass, and thendictConfig()
could be called exactly as in the default, uncustomized state.New in version 3.2.
-
logging.config.
fileConfig
(fname, defaults=None, disable_existing_loggers=True, encoding=None)¶ Reads the logging configuration from a
configparser
-format file. The format of the file should be as described in Configuration file format. This function can be called several times from an application, allowing an end user to select from various pre-canned configurations (if the developer provides a mechanism to present the choices and load the chosen configuration).- Parameters
fname – A filename, or a file-like object, or an instance derived from
RawConfigParser
. If aRawConfigParser
-derived instance is passed, it is used as is. Otherwise, aConfigparser
is instantiated, and the configuration read by it from the object passed infname
. If that has areadline()
method, it is assumed to be a file-like object and read usingread_file()
; otherwise, it is assumed to be a filename and passed toread()
.defaults – Defaults to be passed to the ConfigParser can be specified in this argument.
disable_existing_loggers –
- If specified as
False
, loggers which exist when this call is made are left enabled. The default is
True
because this enables old behaviour in a backward-compatible way. This behaviour is to disable any existing non-root loggers unless they or their ancestors are explicitly named in the logging configuration.
- param encoding
The encoding used to open file when fname is filename.
- If specified as
Changed in version 3.4: An instance of a subclass of
RawConfigParser
is now accepted as a value forfname
. This facilitates:Use of a configuration file where logging configuration is just part of the overall application configuration.
Use of a configuration read from a file, and then modified by the using application (e.g. based on command-line parameters or other aspects of the runtime environment) before being passed to
fileConfig
.
New in version 3.10: The encoding parameter is added.
-
logging.config.
listen
(port=DEFAULT_LOGGING_CONFIG_PORT, verify=None)¶ Starts up a socket server on the specified port, and listens for new configurations. If no port is specified, the module’s default
DEFAULT_LOGGING_CONFIG_PORT
is used. Logging configurations will be sent as a file suitable for processing bydictConfig()
orfileConfig()
. Returns aThread
instance on which you can callstart()
to start the server, and which you canjoin()
when appropriate. To stop the server, callstopListening()
.The
verify
argument, if specified, should be a callable which should verify whether bytes received across the socket are valid and should be processed. This could be done by encrypting and/or signing what is sent across the socket, such that theverify
callable can perform signature verification and/or decryption. Theverify
callable is called with a single argument - the bytes received across the socket - and should return the bytes to be processed, orNone
to indicate that the bytes should be discarded. The returned bytes could be the same as the passed in bytes (e.g. when only verification is done), or they could be completely different (perhaps if decryption were performed).To send a configuration to the socket, read in the configuration file and send it to the socket as a sequence of bytes preceded by a four-byte length string packed in binary using
struct.pack('>L', n)
.Note
Because portions of the configuration are passed through
eval()
, use of this function may open its users to a security risk. While the function only binds to a socket onlocalhost
, and so does not accept connections from remote machines, there are scenarios where untrusted code could be run under the account of the process which callslisten()
. Specifically, if the process callinglisten()
runs on a multi-user machine where users cannot trust each other, then a malicious user could arrange to run essentially arbitrary code in a victim user’s process, simply by connecting to the victim’slisten()
socket and sending a configuration which runs whatever code the attacker wants to have executed in the victim’s process. This is especially easy to do if the default port is used, but not hard even if a different port is used. To avoid the risk of this happening, use theverify
argument tolisten()
to prevent unrecognised configurations from being applied.Changed in version 3.4: The
verify
argument was added.Note
If you want to send configurations to the listener which don’t disable existing loggers, you will need to use a JSON format for the configuration, which will use
dictConfig()
for configuration. This method allows you to specifydisable_existing_loggers
asFalse
in the configuration you send.
Security considerations¶
The logging configuration functionality tries to offer convenience, and in part this is done by offering the ability to convert text in configuration files into Python objects used in logging configuration - for example, as described in User-defined objects. However, these same mechanisms (importing callables from user-defined modules and calling them with parameters from the configuration) could be used to invoke any code you like, and for this reason you should treat configuration files from untrusted sources with extreme caution and satisfy yourself that nothing bad can happen if you load them, before actually loading them.
Configuration dictionary schema¶
Describing a logging configuration requires listing the various
objects to create and the connections between them; for example, you
may create a handler named ‘console’ and then say that the logger
named ‘startup’ will send its messages to the ‘console’ handler.
These objects aren’t limited to those provided by the logging
module because you might write your own formatter or handler class.
The parameters to these classes may also need to include external
objects such as sys.stderr
. The syntax for describing these
objects and connections is defined in Object connections
below.
Dictionary Schema Details¶
The dictionary passed to dictConfig()
must contain the following
keys:
version - to be set to an integer value representing the schema version. The only valid value at present is 1, but having this key allows the schema to evolve while still preserving backwards compatibility.
All other keys are optional, but if present they will be interpreted
as described below. In all cases below where a ‘configuring dict’ is
mentioned, it will be checked for the special '()'
key to see if a
custom instantiation is required. If so, the mechanism described in
User-defined objects below is used to create an instance;
otherwise, the context is used to determine what to instantiate.
formatters - the corresponding value will be a dict in which each key is a formatter id and each value is a dict describing how to configure the corresponding
Formatter
instance.The configuring dict is searched for the following optional keys which correspond to the arguments passed to create a
Formatter
object:format
datefmt
style
validate
(since version >=3.8)
An optional
class
key indicates the name of the formatter’s class (as a dotted module and class name). The instantiation arguments are as forFormatter
, thus this key is most useful for instantiating a customised subclass ofFormatter
. For example, the alternative class might present exception tracebacks in an expanded or condensed format. If your formatter requires different or extra configuration keys, you should use User-defined objects.filters - the corresponding value will be a dict in which each key is a filter id and each value is a dict describing how to configure the corresponding Filter instance.
The configuring dict is searched for the key
name
(defaulting to the empty string) and this is used to construct alogging.Filter
instance.handlers - the corresponding value will be a dict in which each key is a handler id and each value is a dict describing how to configure the corresponding Handler instance.
The configuring dict is searched for the following keys:
class
(mandatory). This is the fully qualified name of the handler class.level
(optional). The level of the handler.formatter
(optional). The id of the formatter for this handler.filters
(optional). A list of ids of the filters for this handler.
All other keys are passed through as keyword arguments to the handler’s constructor. For example, given the snippet:
handlers: console: class : logging.StreamHandler formatter: brief level : INFO filters: [allow_foo] stream : ext://sys.stdout file: class : logging.handlers.RotatingFileHandler formatter: precise filename: logconfig.log maxBytes: 1024 backupCount: 3
the handler with id
console
is instantiated as alogging.StreamHandler
, usingsys.stdout
as the underlying stream. The handler with idfile
is instantiated as alogging.handlers.RotatingFileHandler
with the keyword argumentsfilename='logconfig.log', maxBytes=1024, backupCount=3
.loggers - the corresponding value will be a dict in which each key is a logger name and each value is a dict describing how to configure the corresponding Logger instance.
The configuring dict is searched for the following keys:
level
(optional). The level of the logger.propagate
(optional). The propagation setting of the logger.filters
(optional). A list of ids of the filters for this logger.handlers
(optional). A list of ids of the handlers for this logger.
The specified loggers will be configured according to the level, propagation, filters and handlers specified.
root - this will be the configuration for the root logger. Processing of the configuration will be as for any logger, except that the
propagate
setting will not be applicable.incremental - whether the configuration is to be interpreted as incremental to the existing configuration. This value defaults to
False
, which means that the specified configuration replaces the existing configuration with the same semantics as used by the existingfileConfig()
API.If the specified value is
True
, the configuration is processed as described in the section on Incremental Configuration.disable_existing_loggers - whether any existing non-root loggers are to be disabled. This setting mirrors the parameter of the same name in
fileConfig()
. If absent, this parameter defaults toTrue
. This value is ignored if incremental isTrue
.
Incremental Configuration¶
It is difficult to provide complete flexibility for incremental configuration. For example, because objects such as filters and formatters are anonymous, once a configuration is set up, it is not possible to refer to such anonymous objects when augmenting a configuration.
Furthermore, there is not a compelling case for arbitrarily altering the object graph of loggers, handlers, filters, formatters at run-time, once a configuration is set up; the verbosity of loggers and handlers can be controlled just by setting levels (and, in the case of loggers, propagation flags). Changing the object graph arbitrarily in a safe way is problematic in a multi-threaded environment; while not impossible, the benefits are not worth the complexity it adds to the implementation.
Thus, when the incremental
key of a configuration dict is present
and is True
, the system will completely ignore any formatters
and
filters
entries, and process only the level
settings in the handlers
entries, and the level
and
propagate
settings in the loggers
and root
entries.
Using a value in the configuration dict lets configurations to be sent over the wire as pickled dicts to a socket listener. Thus, the logging verbosity of a long-running application can be altered over time with no need to stop and restart the application.
Object connections¶
The schema describes a set of logging objects - loggers, handlers, formatters, filters - which are connected to each other in an object graph. Thus, the schema needs to represent connections between the objects. For example, say that, once configured, a particular logger has attached to it a particular handler. For the purposes of this discussion, we can say that the logger represents the source, and the handler the destination, of a connection between the two. Of course in the configured objects this is represented by the logger holding a reference to the handler. In the configuration dict, this is done by giving each destination object an id which identifies it unambiguously, and then using the id in the source object’s configuration to indicate that a connection exists between the source and the destination object with that id.
So, for example, consider the following YAML snippet:
formatters:
brief:
# configuration for formatter with id 'brief' goes here
precise:
# configuration for formatter with id 'precise' goes here
handlers:
h1: #This is an id
# configuration of handler with id 'h1' goes here
formatter: brief
h2: #This is another id
# configuration of handler with id 'h2' goes here
formatter: precise
loggers:
foo.bar.baz:
# other configuration for logger 'foo.bar.baz'
handlers: [h1, h2]
(Note: YAML used here because it’s a little more readable than the equivalent Python source form for the dictionary.)
The ids for loggers are the logger names which would be used
programmatically to obtain a reference to those loggers, e.g.
foo.bar.baz
. The ids for Formatters and Filters can be any string
value (such as brief
, precise
above) and they are transient,
in that they are only meaningful for processing the configuration
dictionary and used to determine connections between objects, and are
not persisted anywhere when the configuration call is complete.
The above snippet indicates that logger named foo.bar.baz
should
have two handlers attached to it, which are described by the handler
ids h1
and h2
. The formatter for h1
is that described by id
brief
, and the formatter for h2
is that described by id
precise
.
User-defined objects¶
The schema supports user-defined objects for handlers, filters and formatters. (Loggers do not need to have different types for different instances, so there is no support in this configuration schema for user-defined logger classes.)
Objects to be configured are described by dictionaries
which detail their configuration. In some places, the logging system
will be able to infer from the context how an object is to be
instantiated, but when a user-defined object is to be instantiated,
the system will not know how to do this. In order to provide complete
flexibility for user-defined object instantiation, the user needs
to provide a ‘factory’ - a callable which is called with a
configuration dictionary and which returns the instantiated object.
This is signalled by an absolute import path to the factory being
made available under the special key '()'
. Here’s a concrete
example:
formatters:
brief:
format: '%(message)s'
default:
format: '%(asctime)s %(levelname)-8s %(name)-15s %(message)s'
datefmt: '%Y-%m-%d %H:%M:%S'
custom:
(): my.package.customFormatterFactory
bar: baz
spam: 99.9
answer: 42
The above YAML snippet defines three formatters. The first, with id
brief
, is a standard logging.Formatter
instance with the
specified format string. The second, with id default
, has a
longer format and also defines the time format explicitly, and will
result in a logging.Formatter
initialized with those two format
strings. Shown in Python source form, the brief
and default
formatters have configuration sub-dictionaries:
{
'format' : '%(message)s'
}
and:
{
'format' : '%(asctime)s %(levelname)-8s %(name)-15s %(message)s',
'datefmt' : '%Y-%m-%d %H:%M:%S'
}
respectively, and as these dictionaries do not contain the special key
'()'
, the instantiation is inferred from the context: as a result,
standard logging.Formatter
instances are created. The
configuration sub-dictionary for the third formatter, with id
custom
, is:
{
'()' : 'my.package.customFormatterFactory',
'bar' : 'baz',
'spam' : 99.9,
'answer' : 42
}
and this contains the special key '()'
, which means that
user-defined instantiation is wanted. In this case, the specified
factory callable will be used. If it is an actual callable it will be
used directly - otherwise, if you specify a string (as in the example)
the actual callable will be located using normal import mechanisms.
The callable will be called with the remaining items in the
configuration sub-dictionary as keyword arguments. In the above
example, the formatter with id custom
will be assumed to be
returned by the call:
my.package.customFormatterFactory(bar='baz', spam=99.9, answer=42)
The key '()'
has been used as the special key because it is not a
valid keyword parameter name, and so will not clash with the names of
the keyword arguments used in the call. The '()'
also serves as a
mnemonic that the corresponding value is a callable.
You can also specify a special key '.'
whose value is a dictionary is a
mapping of attribute names to values. If found, the specified attributes will
be set on the user-defined object before it is returned. Thus, with the
following configuration:
{
'()' : 'my.package.customFormatterFactory',
'bar' : 'baz',
'spam' : 99.9,
'answer' : 42,
'.' {
'foo': 'bar',
'baz': 'bozz'
}
}
the returned formatter will have attribute foo
set to 'bar'
and
attribute baz
set to 'bozz'
.
Access to external objects¶
There are times where a configuration needs to refer to objects
external to the configuration, for example sys.stderr
. If the
configuration dict is constructed using Python code, this is
straightforward, but a problem arises when the configuration is
provided via a text file (e.g. JSON, YAML). In a text file, there is
no standard way to distinguish sys.stderr
from the literal string
'sys.stderr'
. To facilitate this distinction, the configuration
system looks for certain special prefixes in string values and
treat them specially. For example, if the literal string
'ext://sys.stderr'
is provided as a value in the configuration,
then the ext://
will be stripped off and the remainder of the
value processed using normal import mechanisms.
The handling of such prefixes is done in a way analogous to protocol
handling: there is a generic mechanism to look for prefixes which
match the regular expression ^(?P<prefix>[a-z]+)://(?P<suffix>.*)$
whereby, if the prefix
is recognised, the suffix
is processed
in a prefix-dependent manner and the result of the processing replaces
the string value. If the prefix is not recognised, then the string
value will be left as-is.
Access to internal objects¶
As well as external objects, there is sometimes also a need to refer
to objects in the configuration. This will be done implicitly by the
configuration system for things that it knows about. For example, the
string value 'DEBUG'
for a level
in a logger or handler will
automatically be converted to the value logging.DEBUG
, and the
handlers
, filters
and formatter
entries will take an
object id and resolve to the appropriate destination object.
However, a more generic mechanism is needed for user-defined
objects which are not known to the logging
module. For
example, consider logging.handlers.MemoryHandler
, which takes
a target
argument which is another handler to delegate to. Since
the system already knows about this class, then in the configuration,
the given target
just needs to be the object id of the relevant
target handler, and the system will resolve to the handler from the
id. If, however, a user defines a my.package.MyHandler
which has
an alternate
handler, the configuration system would not know that
the alternate
referred to a handler. To cater for this, a generic
resolution system allows the user to specify:
handlers:
file:
# configuration of file handler goes here
custom:
(): my.package.MyHandler
alternate: cfg://handlers.file
The literal string 'cfg://handlers.file'
will be resolved in an
analogous way to strings with the ext://
prefix, but looking
in the configuration itself rather than the import namespace. The
mechanism allows access by dot or by index, in a similar way to
that provided by str.format
. Thus, given the following snippet:
handlers:
email:
class: logging.handlers.SMTPHandler
mailhost: localhost
fromaddr: my_app@domain.tld
toaddrs:
- support_team@domain.tld
- dev_team@domain.tld
subject: Houston, we have a problem.
in the configuration, the string 'cfg://handlers'
would resolve to
the dict with key handlers
, the string 'cfg://handlers.email
would resolve to the dict with key email
in the handlers
dict,
and so on. The string 'cfg://handlers.email.toaddrs[1]
would
resolve to 'dev_team@domain.tld'
and the string
'cfg://handlers.email.toaddrs[0]'
would resolve to the value
'support_team@domain.tld'
. The subject
value could be accessed
using either 'cfg://handlers.email.subject'
or, equivalently,
'cfg://handlers.email[subject]'
. The latter form only needs to be
used if the key contains spaces or non-alphanumeric characters. If an
index value consists only of decimal digits, access will be attempted
using the corresponding integer value, falling back to the string
value if needed.
Given a string cfg://handlers.myhandler.mykey.123
, this will
resolve to config_dict['handlers']['myhandler']['mykey']['123']
.
If the string is specified as cfg://handlers.myhandler.mykey[123]
,
the system will attempt to retrieve the value from
config_dict['handlers']['myhandler']['mykey'][123]
, and fall back
to config_dict['handlers']['myhandler']['mykey']['123']
if that
fails.
Import resolution and custom importers¶
Import resolution, by default, uses the builtin __import__()
function
to do its importing. You may want to replace this with your own importing
mechanism: if so, you can replace the importer
attribute of the
DictConfigurator
or its superclass, the
BaseConfigurator
class. However, you need to be
careful because of the way functions are accessed from classes via
descriptors. If you are using a Python callable to do your imports, and you
want to define it at class level rather than instance level, you need to wrap
it with staticmethod()
. For example:
from importlib import import_module
from logging.config import BaseConfigurator
BaseConfigurator.importer = staticmethod(import_module)
You don’t need to wrap with staticmethod()
if you’re setting the import
callable on a configurator instance.
Configuration file format¶
The configuration file format understood by fileConfig()
is based on
configparser
functionality. The file must contain sections called
[loggers]
, [handlers]
and [formatters]
which identify by name the
entities of each type which are defined in the file. For each such entity, there
is a separate section which identifies how that entity is configured. Thus, for
a logger named log01
in the [loggers]
section, the relevant
configuration details are held in a section [logger_log01]
. Similarly, a
handler called hand01
in the [handlers]
section will have its
configuration held in a section called [handler_hand01]
, while a formatter
called form01
in the [formatters]
section will have its configuration
specified in a section called [formatter_form01]
. The root logger
configuration must be specified in a section called [logger_root]
.
Note
The fileConfig()
API is older than the dictConfig()
API and does
not provide functionality to cover certain aspects of logging. For example,
you cannot configure Filter
objects, which provide for
filtering of messages beyond simple integer levels, using fileConfig()
.
If you need to have instances of Filter
in your logging
configuration, you will need to use dictConfig()
. Note that future
enhancements to configuration functionality will be added to
dictConfig()
, so it’s worth considering transitioning to this newer
API when it’s convenient to do so.
Examples of these sections in the file are given below.
[loggers]
keys=root,log02,log03,log04,log05,log06,log07
[handlers]
keys=hand01,hand02,hand03,hand04,hand05,hand06,hand07,hand08,hand09
[formatters]
keys=form01,form02,form03,form04,form05,form06,form07,form08,form09
The root logger must specify a level and a list of handlers. An example of a root logger section is given below.
[logger_root]
level=NOTSET
handlers=hand01
The level
entry can be one of DEBUG, INFO, WARNING, ERROR, CRITICAL
or
NOTSET
. For the root logger only, NOTSET
means that all messages will be
logged. Level values are eval()
uated in the context of the logging
package’s namespace.
The handlers
entry is a comma-separated list of handler names, which must
appear in the [handlers]
section. These names must appear in the
[handlers]
section and have corresponding sections in the configuration
file.
For loggers other than the root logger, some additional information is required. This is illustrated by the following example.
[logger_parser]
level=DEBUG
handlers=hand01
propagate=1
qualname=compiler.parser
The level
and handlers
entries are interpreted as for the root logger,
except that if a non-root logger’s level is specified as NOTSET
, the system
consults loggers higher up the hierarchy to determine the effective level of the
logger. The propagate
entry is set to 1 to indicate that messages must
propagate to handlers higher up the logger hierarchy from this logger, or 0 to
indicate that messages are not propagated to handlers up the hierarchy. The
qualname
entry is the hierarchical channel name of the logger, that is to
say the name used by the application to get the logger.
Sections which specify handler configuration are exemplified by the following.
[handler_hand01]
class=StreamHandler
level=NOTSET
formatter=form01
args=(sys.stdout,)
The class
entry indicates the handler’s class (as determined by eval()
in the logging
package’s namespace). The level
is interpreted as for
loggers, and NOTSET
is taken to mean ‘log everything’.
The formatter
entry indicates the key name of the formatter for this
handler. If blank, a default formatter (logging._defaultFormatter
) is used.
If a name is specified, it must appear in the [formatters]
section and have
a corresponding section in the configuration file.
The args
entry, when eval()
uated in the context of the logging
package’s namespace, is the list of arguments to the constructor for the handler
class. Refer to the constructors for the relevant handlers, or to the examples
below, to see how typical entries are constructed. If not provided, it defaults
to ()
.
The optional kwargs
entry, when eval()
uated in the context of the
logging
package’s namespace, is the keyword argument dict to the constructor
for the handler class. If not provided, it defaults to {}
.
[handler_hand02]
class=FileHandler
level=DEBUG
formatter=form02
args=('python.log', 'w')
[handler_hand03]
class=handlers.SocketHandler
level=INFO
formatter=form03
args=('localhost', handlers.DEFAULT_TCP_LOGGING_PORT)
[handler_hand04]
class=handlers.DatagramHandler
level=WARN
formatter=form04
args=('localhost', handlers.DEFAULT_UDP_LOGGING_PORT)
[handler_hand05]
class=handlers.SysLogHandler
level=ERROR
formatter=form05
args=(('localhost', handlers.SYSLOG_UDP_PORT), handlers.SysLogHandler.LOG_USER)
[handler_hand06]
class=handlers.NTEventLogHandler
level=CRITICAL
formatter=form06
args=('Python Application', '', 'Application')
[handler_hand07]
class=handlers.SMTPHandler
level=WARN
formatter=form07
args=('localhost', 'from@abc', ['user1@abc', 'user2@xyz'], 'Logger Subject')
kwargs={'timeout': 10.0}
[handler_hand08]
class=handlers.MemoryHandler
level=NOTSET
formatter=form08
target=
args=(10, ERROR)
[handler_hand09]
class=handlers.HTTPHandler
level=NOTSET
formatter=form09
args=('localhost:9022', '/log', 'GET')
kwargs={'secure': True}
Sections which specify formatter configuration are typified by the following.
[formatter_form01]
format=F1 %(asctime)s %(levelname)s %(message)s
datefmt=
style=%
validate=True
class=logging.Formatter
The arguments for the formatter configuration are the same as the keys in the dictionary schema formatters section.
Note
Due to the use of eval()
as described above, there are
potential security risks which result from using the listen()
to send
and receive configurations via sockets. The risks are limited to where
multiple users with no mutual trust run code on the same machine; see the
listen()
documentation for more information.
See also
- Module
logging
API reference for the logging module.
- Module
logging.handlers
Useful handlers included with the logging module.