FEA-Bench / testbed /aws-powertools__powertools-lambda-python /aws_lambda_powertools /metrics /metrics.py
| # NOTE: keeps for compatibility | |
| from __future__ import annotations | |
| from typing import TYPE_CHECKING, Any | |
| from aws_lambda_powertools.metrics.provider.cloudwatch_emf.cloudwatch import AmazonCloudWatchEMFProvider | |
| if TYPE_CHECKING: | |
| from aws_lambda_powertools.metrics.base import MetricResolution, MetricUnit | |
| from aws_lambda_powertools.metrics.provider.cloudwatch_emf.types import CloudWatchEMFOutput | |
| from aws_lambda_powertools.shared.types import AnyCallableT | |
| class Metrics: | |
| """Metrics create an CloudWatch EMF object with up to 100 metrics | |
| Use Metrics when you need to create multiple metrics that have | |
| dimensions in common (e.g. service_name="payment"). | |
| Metrics up to 100 metrics in memory and are shared across | |
| all its instances. That means it can be safely instantiated outside | |
| of a Lambda function, or anywhere else. | |
| A decorator (log_metrics) is provided so metrics are published at the end of its execution. | |
| If more than 100 metrics are added at a given function execution, | |
| these metrics are serialized and published before adding a given metric | |
| to prevent metric truncation. | |
| Example | |
| ------- | |
| **Creates a few metrics and publish at the end of a function execution** | |
| from aws_lambda_powertools import Metrics | |
| metrics = Metrics(namespace="ServerlessAirline", service="payment") | |
| @metrics.log_metrics(capture_cold_start_metric=True) | |
| def lambda_handler(): | |
| metrics.add_metric(name="BookingConfirmation", unit="Count", value=1) | |
| metrics.add_dimension(name="function_version", value="$LATEST") | |
| return True | |
| Environment variables | |
| --------------------- | |
| POWERTOOLS_METRICS_NAMESPACE : str | |
| metric namespace | |
| POWERTOOLS_SERVICE_NAME : str | |
| service name used for default dimension | |
| Parameters | |
| ---------- | |
| service : str, optional | |
| service name to be used as metric dimension, by default "service_undefined" | |
| namespace : str, optional | |
| Namespace for metrics | |
| provider: AmazonCloudWatchEMFProvider, optional | |
| Pre-configured AmazonCloudWatchEMFProvider provider | |
| Raises | |
| ------ | |
| MetricUnitError | |
| When metric unit isn't supported by CloudWatch | |
| MetricResolutionError | |
| When metric resolution isn't supported by CloudWatch | |
| MetricValueError | |
| When metric value isn't a number | |
| SchemaValidationError | |
| When metric object fails EMF schema validation | |
| """ | |
| # NOTE: We use class attrs to share metrics data across instances | |
| # this allows customers to initialize Metrics() throughout their code base (and middlewares) | |
| # and not get caught by accident with metrics data loss, or data deduplication | |
| # e.g., m1 and m2 add metric ProductCreated, however m1 has 'version' dimension but m2 doesn't | |
| # Result: ProductCreated is created twice as we now have 2 different EMF blobs | |
| _metrics: dict[str, Any] = {} | |
| _dimensions: dict[str, str] = {} | |
| _metadata: dict[str, Any] = {} | |
| _default_dimensions: dict[str, Any] = {} | |
| def __init__( | |
| self, | |
| service: str | None = None, | |
| namespace: str | None = None, | |
| provider: AmazonCloudWatchEMFProvider | None = None, | |
| ): | |
| self.metric_set = self._metrics | |
| self.metadata_set = self._metadata | |
| self.default_dimensions = self._default_dimensions | |
| self.dimension_set = self._dimensions | |
| self.dimension_set.update(**self._default_dimensions) | |
| if provider is None: | |
| self.provider = AmazonCloudWatchEMFProvider( | |
| namespace=namespace, | |
| service=service, | |
| metric_set=self.metric_set, | |
| dimension_set=self.dimension_set, | |
| metadata_set=self.metadata_set, | |
| default_dimensions=self._default_dimensions, | |
| ) | |
| else: | |
| self.provider = provider | |
| def add_metric( | |
| self, | |
| name: str, | |
| unit: MetricUnit | str, | |
| value: float, | |
| resolution: MetricResolution | int = 60, | |
| ) -> None: | |
| self.provider.add_metric(name=name, unit=unit, value=value, resolution=resolution) | |
| def add_dimension(self, name: str, value: str) -> None: | |
| self.provider.add_dimension(name=name, value=value) | |
| def serialize_metric_set( | |
| self, | |
| metrics: dict | None = None, | |
| dimensions: dict | None = None, | |
| metadata: dict | None = None, | |
| ) -> CloudWatchEMFOutput: | |
| return self.provider.serialize_metric_set(metrics=metrics, dimensions=dimensions, metadata=metadata) | |
| def add_metadata(self, key: str, value: Any) -> None: | |
| self.provider.add_metadata(key=key, value=value) | |
| def set_timestamp(self, timestamp: int): | |
| """ | |
| Set the timestamp for the metric. | |
| Parameters: | |
| ----------- | |
| timestamp: int | datetime.datetime | |
| The timestamp to create the metric. | |
| If an integer is provided, it is assumed to be the epoch time in milliseconds. | |
| If a datetime object is provided, it will be converted to epoch time in milliseconds. | |
| """ | |
| self.provider.set_timestamp(timestamp=timestamp) | |
| def flush_metrics(self, raise_on_empty_metrics: bool = False) -> None: | |
| self.provider.flush_metrics(raise_on_empty_metrics=raise_on_empty_metrics) | |
| def log_metrics( | |
| self, | |
| lambda_handler: AnyCallableT | None = None, | |
| capture_cold_start_metric: bool = False, | |
| raise_on_empty_metrics: bool = False, | |
| default_dimensions: dict[str, str] | None = None, | |
| **kwargs, | |
| ): | |
| return self.provider.log_metrics( | |
| lambda_handler=lambda_handler, | |
| capture_cold_start_metric=capture_cold_start_metric, | |
| raise_on_empty_metrics=raise_on_empty_metrics, | |
| default_dimensions=default_dimensions, | |
| **kwargs, | |
| ) | |
| def set_default_dimensions(self, **dimensions) -> None: | |
| self.provider.set_default_dimensions(**dimensions) | |
| """Persist dimensions across Lambda invocations | |
| Parameters | |
| ---------- | |
| dimensions : dict[str, Any], optional | |
| metric dimensions as key=value | |
| Example | |
| ------- | |
| **Sets some default dimensions that will always be present across metrics and invocations** | |
| from aws_lambda_powertools import Metrics | |
| metrics = Metrics(namespace="ServerlessAirline", service="payment") | |
| metrics.set_default_dimensions(environment="demo", another="one") | |
| @metrics.log_metrics() | |
| def lambda_handler(): | |
| return True | |
| """ | |
| for name, value in dimensions.items(): | |
| self.add_dimension(name, value) | |
| self.default_dimensions.update(**dimensions) | |
| def clear_default_dimensions(self) -> None: | |
| self.provider.default_dimensions.clear() | |
| self.default_dimensions.clear() | |
| def clear_metrics(self) -> None: | |
| self.provider.clear_metrics() | |
| # We now allow customers to bring their own instance | |
| # of the AmazonCloudWatchEMFProvider provider | |
| # So we need to define getter/setter for namespace and service properties | |
| # To access these attributes on the provider instance. | |
| def namespace(self): | |
| return self.provider.namespace | |
| def namespace(self, namespace): | |
| self.provider.namespace = namespace | |
| def service(self): | |
| return self.provider.service | |
| def service(self, service): | |
| self.provider.service = service | |
| # Maintenance: until v3, we can't afford to break customers. | |
| # AmazonCloudWatchEMFProvider has the exact same functionality (non-singleton) | |
| # so we simply alias. If a customer subclassed `EphemeralMetrics` and somehow relied on __name__ | |
| # we can quickly revert and duplicate code while using self.provider | |
| EphemeralMetrics = AmazonCloudWatchEMFProvider | |