95

As the AWS documentation suggests:

import logging
logger = logging.getLogger()
logger.setLevel(logging.INFO)
def my_logging_handler(event, context):
    logger.info('got event{}'.format(event))
    logger.error('something went wrong')

Now I made:

import logging
logging.basicConfig(level = logging.INFO)
logging.info("Hello World!")

The first snippet of code prints in the Cloud Watch console, but the second one no.

I didn't see any difference as the two snippets are using the root logger.

4
  • 1
    You are missing "return 'Hello World!'"
    – error2007s
    Jun 8 '16 at 13:43
  • 1
    Why not do the same as in the first code snippet? Get the logger that's already instantiated and then use said logger. Jun 8 '16 at 13:46
  • 9
    @HEADLESS_0NE: I can use the fist one. But I would like to understand why this behavior. Jun 8 '16 at 13:58
  • 1
    Also checkout python-cloud-logger at pypi.org/project/python-cloud-logger. It provides options to have context logging where requestId and other context variables can be saved to thread's context. And every log would carry the context from then on.
    – vasu
    May 14 '19 at 18:14
74

The reason that logging does not seem to work is because the AWS Lambda Python runtime pre-configures a logging handler that, depending on the version of the runtime selected, might modify the format of the message logged, and might also add some metadata to the record if available. What is not preconfigured though is the log-level. This means that no matter the type of log-message you try to send, it will not actually print.

As AWS documents themselves, to correctly use the logging library in the AWS Lambda context, you only need to set the log-level for the root-logger:

import logging
logging.getLogger().setLevel(logging.INFO)

If you want your Python-script to be both executable on AWS Lambda, but also with your local Python interpreter, you can check whether a handler is configured or not, and fall back to basicConfig (which creates the default stderr-handler) otherwise:

if len(logging.getLogger().handlers) > 0:
    # The Lambda environment pre-configures a handler logging to stderr. If a handler is already configured,
    # `.basicConfig` does not execute. Thus we set the level directly.
    logging.getLogger().setLevel(logging.INFO)
else:
    logging.basicConfig(level=logging.INFO)
3
  • 12
    Instead of len(logging.getLogger().handlers) > 0, use logging.getLogger().hasHandlers() may be better.
    – ebk
    Apr 17 '20 at 8:57
  • 4
    @ebk that is a very good point, but hasHandlers has only been available since Python 3.2. Since AWS still supports the Python 2.7 runtime, using len(...handlers) is the most portable solution at the moment.
    – Pit
    Apr 18 '20 at 9:18
  • 5
    You're right. I should've added "for Python 3.2+" :)
    – ebk
    Apr 18 '20 at 11:18
69

Copied straight from the top answer in the question @StevenBohrer's answer links to (this did the trick for me, replacing the last line with my own config):

root = logging.getLogger()
if root.handlers:
    for handler in root.handlers:
        root.removeHandler(handler)
logging.basicConfig(format='%(asctime)s %(message)s',level=logging.DEBUG)
2
  • 3
    Thanks, this is great. I put this just after my import statements, then my entire lambda/module had access to to my own personal logger :) Just added this line after basicConfig: logger = logging.getLogger()
    – comfytoday
    May 5 '18 at 7:09
  • 8
    Since python 3.8 there is a new parameter force that does exaclty what you described above: logging.basicConfig(level = logging.INFO, force=True). docs.python.org/3/library/logging.html#logging.basicConfig
    – linqu
    Jun 25 '21 at 10:11
17

I had a similar problem, and I suspect that the lambda container is calling logging.basicConfig to add handlers BEFORE the lambda code is imported. This seems like bad form...

Workaround was to see if root logger handlers were configured and if so, remove them, add my formatter and desired log level (using basicConfig), and restore the handlers.

See this article Python logging before you run logging.basicConfig?

17

I've struggled with this exact problem. The solution that works both locally and on AWS CloudWatch is to setup your logging like this:

import logging

# Initialize you log configuration using the base class
logging.basicConfig(level = logging.INFO)

# Retrieve the logger instance
logger = logging.getLogger()

# Log your output to the retrieved logger instance
logger.info("Python for the win!")

3
  • 2
    This didn't work for me. Had to use the first block code posted by OP.
    – Gru
    Aug 16 '21 at 4:45
  • 1
    Which aspect didn't work? Logging on AWS CloudWatch or logging locally?
    – Kinman
    Aug 16 '21 at 5:59
  • 1
    Logging locally worked as expected. Couldn't see the logs on cloudwatch, unless there was an error.
    – Gru
    Aug 16 '21 at 9:10
4

Probably not referencing the same logger, actually. In the first snippet, log the return of: logging.Logger.manager.loggerDict

It will return a dict of the loggers already initialized.

Also, from the logging documentation, an important note on logging.basicConfig:

Does basic configuration for the logging system by creating a StreamHandler with a default Formatter and adding it to the root logger. The functions debug(), info(), warning(), error() and critical() will call basicConfig() automatically if no handlers are defined for the root logger.

This function does nothing if the root logger already has handlers configured for it.

Source: https://docs.python.org/2/library/logging.html#logging.basicConfig

2
  • The snippets are separated. So the second snippet there isnt logging configured, so It will configure the root logger. And if I call logging.info it will use the root logger. For me makes no difference from first snippet. Jun 8 '16 at 15:11
  • @HEADLESS_0NE is right here. It seems that in lambda a logger is already configured. If I do the above but set the level to DEBUG then I see more logs than I'm producing (I'm not producing any of these myself): [DEBUG] 2016-10-29T09:01:28.376Z 45e6c8bd-9db6-11e6-aa56-43d43acb066b Acquiring 0 [DEBUG] 2016-10-29T09:01:28.389Z 45e6c8bd-9db6-11e6-aa56-43d43acb066b IOWriteTask({'offset': 0}) about to wait for the following futures [] [DEBUG] 2016-10-29T09:01:28.389Z 45e6c8bd-9db6-11e6-aa56-43d43acb066b IOWriteTask({'offset': 0}) done waiting for dependent futures
    – Brad M
    Oct 29 '16 at 9:03
0

Essentially, the AWS logging monkey patch needs to be handled in a very particular way, where:

  1. The log level is set from the TOP level of the script (e.g., at import time)
  2. The log statements you are interested in are invoked from within the lambda function

Since it's generally considered good form not to run arbitrary code in Python module import, you usually should be able to restructure your code so that the heavy lifting occurs only inside the lambda function.

-1
    LOGGER = logging.getLogger()
    HANDLER = LOGGER.handlers[0]
    HANDLER.setFormatter(
        logging.Formatter(“[%(asctime)s] %(levelname)s:%(name)s:%(message)s”, “%Y-%m-%d %H:%M:%S”)
    )
1
  • 2
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    – Community Bot
    Dec 15 '21 at 15:33

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