The lambda-warmer-py package contains a single decorator that makes it easy to minimize the drag of aws lambda cold
starts. Just ...
- wrap your lambdas in the
@lambdawarmer.warmerdecorator and - ping your lambda once every 5 minutes
and you'll cut your cold starts way down.
Configuration options are also available that ...
- allow for keeping many concurrent lambdas warm
- sending CloudWatch metrics tracking the number of cold and warm starts by lambda function name
The warming logic is a python adaption* of the js package, lambda-warmer. Read more about the background to this approach on his site here
and some best practices on lambda optimization here.
* In addition to supporting CloudWatch Metrics, there are some small differences in parameterization. See configuration.
pip install lambda-warmer-pyIncorporating the lambda warmer into your existing lambdas only requires adding a single decorator.
import lambdawarmer
@lambdawarmer.warmer
def your_lambda_function(event, context):
passIf your handler is not a function (for example, if you use Mangum), just wrap its invocation in a function.
from fastapi import FastAPI
from mangum import Mangum
import lambdawarmer
app = FastAPI()
handler = Mangum(app)
@lambdawarmer.warmer
def your_lambda_function(event, context):
return handler(event, context)To leverage the concurrency options, the package will invoke your lambda multiple times. This means that the deployed lambda will need the following permissions
- Effect: Allow
Action: lambda:InvokeFunction
Resource: [your-lambdas-arn]In order for the lambda warmer to track cold and warm start metrics, the lambda execution role will need permissions to send metric data to CloudWatch. The required policy action is
- Effect: Allow
Action: cloudwatch:PutMetricDataCreate a CloudWatch Rule that periodically invokes your lambda directly and passes the following json as the event
{
"warmer": true,
"concurrency": (int, defaults to 1)
}It is possible to change the warmer and concurrency names by overriding parameters in the warmer decorator. See
configuration for details.
The lambda warmer is configured via the function parameters for the @warmer decorator. It takes the following ...
Name of the field used to indicate that it is a warm up event.
Name of the field used to set the number of concurrent lambdas to invoke and keep warm.
Number of millis a concurrent warm up invocation should sleep. This helps avoid under delivering on the concurrency target.
Whether or not CloudWatch Metrics for the number of cold/warm starts will be sent at each invocation. The metrics names
are ColdStart and WarmStart, are recorded under LambdaWarmer namespace, and can be filtered by lambda function name.
Using alternative event and delay configurations is straightforward.
@lambdawarmer.warmer(flag='am_i_a_warmer', concurrency='how_many_lambdas', delay=150)
def your_lambda_function(event, context):
passThis implementation will expect events of the form
{"am_i_a_warmer": true, "how_many_lambdas": (int)}and all concurrent executions will delay for 150 milliseconds.
If you want to track metrics on number of warm/cold starts activate that functionality in the decorator.
@lambdawarmer.warmer(send_metric=True)
def your_lambda_function(event, context):
passNote: Configuration options that are excluded from this implementation but can be found in the js version are
test: Testing is handled in the unittests using mocks/fakes instead of flagged invocationslog: Logging levels of imported python packages should be handled via the stdlibloggingmodule.correlationId. This has been made into the snake casedcorrelation_idsince we're in python and is always set to the current lambda'saws_request_idfield as is recommended in the originallambda-warmerpackage.