Metadata-Version: 2.1
Name: datadog-lambda
Version: 2.19.0
Summary: The Datadog AWS Lambda Layer
Home-page: https://github.com/DataDog/datadog-lambda-layer-python
Author: Datadog, Inc.
Author-email: dev@datadoghq.com
License: UNKNOWN
Keywords: datadog aws lambda layer
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 2.7
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Requires-Python: >=2.7, !=3.0.*, !=3.1.*, !=3.2.*, !=3.3.*, !=3.4.*, !=3.5.*, <4
Description-Content-Type: text/markdown
Requires-Dist: aws-xray-sdk (==2.5.0)
Requires-Dist: datadog (==0.32.0)
Requires-Dist: ddtrace (==0.36.0)
Requires-Dist: wrapt (==1.11.2)
Requires-Dist: setuptools (==42.0.2)
Provides-Extra: dev
Requires-Dist: nose2 (==0.9.1) ; extra == 'dev'
Requires-Dist: flake8 (==3.7.9) ; extra == 'dev'
Requires-Dist: requests (==2.22.0) ; extra == 'dev'
Requires-Dist: boto3 (==1.10.33) ; extra == 'dev'

# datadog-lambda-layer-python

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Datadog Lambda Layer for Python (2.7, 3.6, 3.7 and 3.8) enables custom metric submission from AWS Lambda functions, and distributed tracing between serverful and serverless environments.

## IMPORTANT NOTE

AWS Lambda is expected to recieve a [breaking change](https://aws.amazon.com/blogs/compute/upcoming-changes-to-the-python-sdk-in-aws-lambda/) on **January 30, 2021**. If you are using Datadog Python Lambda layer version 7 or below, please upgrade to version 11.

## Installation

Datadog Lambda Layer can be added to a Lambda function via AWS Lambda console, [AWS CLI](https://docs.aws.amazon.com/lambda/latest/dg/configuration-layers.html#configuration-layers-using) or [Serverless Framework](https://serverless.com/framework/docs/providers/aws/guide/layers/#using-your-layers) using the following ARN.

```
arn:aws:lambda:<AWS_REGION>:464622532012:layer:Datadog-<PYTHON_RUNTIME>:<VERSION>
```

Replace `<AWS_REGION>` with the AWS region where your Lambda function is published to. Replace `<PYTHON_RUNTIME>` with one of the following that matches your Lambda's Python runtime:

- `Datadog-Python27`
- `Datadog-Python36`
- `Datadog-Python37`
- `Datadog-Python38`

Replace `<VERSION>` with the latest layer version that can be found from [releases](https://github.com/DataDog/datadog-lambda-layer-python/releases). For example,

```
arn:aws:lambda:us-east-1:464622532012:layer:Datadog-Python37:1
```

### PyPI

When developing your Lambda function locally where AWS Layer doesn't work, the Datadog Lambda layer can be installed from [PyPI](https://pypi.org/project/datadog-lambda/) by `pip install datadog-lambda` or adding `datadog-lambda` to your project's `requirements.txt`.

The minor version of the `datadog-lambda` package always match the layer version. E.g., datadog-lambda v0.5.0 matches the content in layer version 5.

### The Serverless Framework

[The Datadog Serverless Framework Plugin](https://github.com/DataDog/serverless-plugin-datadog) makes it easy to manage the Datadog instrumentation for all of your Lambda functions in one place.

Instead of the plugin, you can also use the sample `serverless.yml` below as a reference for manually including the Lambda Layer, enable AWS X-Ray tracing, and set up environment variables.

```yaml
provider:
  name: aws
  runtime: python3.7
  tracing:
    lambda: true
    apiGateway: true

functions:
  hello:
    handler: handler.hello
    events:
      - http:
          path: hello
          method: get
    layers:
      - arn:aws:lambda:<AWS_REGION>:464622532012:layer:Datadog-<PYTHON_RUNTIME>:<VERSION>
    environment:
      DD_FLUSH_TO_LOG: true
```

Alternatively, consider using [serverless-plugin-datadog](https://github.com/DataDog/serverless-plugin-datadog). The plugin can take care of adding lambda layers to your functions, and wrapping your handlers.

## Environment Variables

### DD_FLUSH_TO_LOG

Set to `true` (recommended) to send custom metrics asynchronously (with no added latency to your Lambda function executions) through CloudWatch Logs with the help of [Datadog Forwarder](https://github.com/DataDog/datadog-serverless-functions/tree/master/aws/logs_monitoring).

If set to `false`, you also need to set `DD_API_KEY` and `DD_SITE`.

### DD_API_KEY

If `DD_FLUSH_TO_LOG` is set to false (not recommended), the Datadog API Key must be defined as one of the following environment variables:

- DD_API_KEY - the Datadog API Key in plain-text, NOT recommended
- DD_KMS_API_KEY - the KMS-encrypted API Key, requires the `kms:Decrypt` permission
- DD_API_KEY_SECRET_ARN - the Secret ARN to fetch API Key from the Secrets Manager, requires the `secretsmanager:GetSecretValue` permission (and `kms:Decrypt` if using a customer managed CMK)

You can also supply or override the API key at runtime (not recommended):

```python
# Override DD API Key after importing datadog_lambda packages
from datadog import api
api._api_key = "MY_API_KEY"
```

### DD_SITE

If `DD_FLUSH_TO_LOG` is set to false (not recommended), and your data need to be sent to the Datadog EU site, you must set `DD_SITE` to `datadoghq.eu`.

### DD_LOGS_INJECTION

Inject Datadog trace id into logs for [correlation](https://docs.datadoghq.com/tracing/connect_logs_and_traces/?tab=python). Defaults to true.

### DD_LOG_LEVEL

Set to `debug` enable debug los from the Datadog Lambda Layer.

### DD_ENHANCED_METRICS

Generate enhanced Datadog Lambda integration metrics, such as, `aws.lambda.enhanced.invocations` and `aws.lambda.enhanced.errors`. Defaults to true.

### DD_LAMBDA_HANDLER

For use with the [redirected handler](#Redirected-Handler) method. Location of your original lambda handler.

### DD_TRACE_ENABLED

When used with the [redirected handler](#Redirected-Handler) method, will auto initialize the tracer when set to true.

## Basic Usage

Datadog needs to be able to read headers from the incoming Lambda event. To do this, you must wrap your handler function with our library. We provide some easy ways of wrapping your handlers.

### Redirected Handler

We provide a swap in replacement handler, with zero required code changes.

1. Set the environment variable `DD_LAMBDA_HANDLER` to your regular handler location, eg. `myfunc.handler`.
2. Set your handler to `datadog_lambda.handler.handler`.

### Manual Wrap

You might find it more convenient to wrap your handlers manually.

```python
import requests
from datadog_lambda.wrapper import datadog_lambda_wrapper
from datadog_lambda.metric import lambda_metric

@datadog_lambda_wrapper
def lambda_handler(event, context):
    lambda_metric("my_metric", 10, tags=['tag:value'])
    requests.get("https://www.datadoghq.com")
```

## Custom Metrics

Custom metrics can be submitted using `lambda_metric` and the Lambda handler function needs to be decorated with `@datadog_lambda_wrapper`. The metrics are submitted as [distribution metrics](https://docs.datadoghq.com/graphing/metrics/distributions/).

**IMPORTANT NOTE:** If you have already been submitting the same custom metric as non-distribution metric (e.g., gauge, count, or histogram) without using the Datadog Lambda Layer, you MUST pick a new metric name to use for `lambda_metric`. Otherwise that existing metric will be converted to a distribution metric and the historical data prior to the conversion will be no longer queryable.

```python
from datadog_lambda.wrapper import datadog_lambda_wrapper
from datadog_lambda.metric import lambda_metric

@datadog_lambda_wrapper
def lambda_handler(event, context):
    lambda_metric(
        "coffee_house.order_value",  # metric
        12.45,  # value
        tags=['product:latte', 'order:online']  # tags
    )
```

### VPC

If your Lambda function is associated with a VPC, you need to ensure it has [access to the public internet](https://aws.amazon.com/premiumsupport/knowledge-center/internet-access-lambda-function/).

## Distributed Tracing

[Distributed tracing](https://docs.datadoghq.com/tracing/guide/distributed_tracing/?tab=python) allows you to propagate a trace context from a service running on a host to a service running on AWS Lambda, and vice versa, so you can see performance end-to-end. Linking is implemented by injecting Datadog trace context into the HTTP request headers.

Distributed tracing headers are language agnostic, e.g., a trace can be propagated between a Java service running on a host to a Lambda function written in Python.

Because the trace context is propagated through HTTP request headers, the Lambda function needs to be triggered by AWS API Gateway or AWS Application Load Balancer.

To enable this feature, you simple need to decorate your Lambda handler function with `@datadog_lambda_wrapper`.

```python
import requests
from datadog_lambda.wrapper import datadog_lambda_wrapper

@datadog_lambda_wrapper
def lambda_handler(event, context):
    requests.get("https://www.datadoghq.com")
```

Note, the Datadog Lambda Layer is only needed to enable _distributed_ tracing between Lambda and non-Lambda services. For standalone Lambda functions, traces can be found in Datadog APM after configuring [the X-Ray integration](https://docs.datadoghq.com/integrations/amazon_xray/).

### Patching

By default, widely used HTTP client libraries, such as `requests`, `urllib2` and `urllib.request` are patched automatically to inject Datadog trace context into outgoing requests.

You can also manually retrieve the Datadog trace context (i.e., http headers in a Python dict) and inject it to request headers when needed.

```python
import requests
from datadog_lambda.wrapper import datadog_lambda_wrapper
from datadog_lambda.tracing import get_dd_trace_context

@datadog_lambda_wrapper
def lambda_handler(event, context):
    headers = get_dd_trace_context()
    requests.get("https://www.datadoghq.com", headers=headers)
```

### Sampling

The traces for your Lambda function are converted by Datadog from AWS X-Ray traces. X-Ray needs to sample the traces that the Datadog tracing agent decides to sample, in order to collect as many complete traces as possible. You can create X-Ray sampling rules to ensure requests with header `x-datadog-sampling-priority:1` or `x-datadog-sampling-priority:2` via API Gateway always get sampled by X-Ray.

These rules can be created using the following AWS CLI command.

```bash
aws xray create-sampling-rule --cli-input-json file://datadog-sampling-priority-1.json
aws xray create-sampling-rule --cli-input-json file://datadog-sampling-priority-2.json
```

The file content for `datadog-sampling-priority-1.json`:

```json
{
  "SamplingRule": {
    "RuleName": "Datadog-Sampling-Priority-1",
    "ResourceARN": "*",
    "Priority": 9998,
    "FixedRate": 1,
    "ReservoirSize": 100,
    "ServiceName": "*",
    "ServiceType": "AWS::APIGateway::Stage",
    "Host": "*",
    "HTTPMethod": "*",
    "URLPath": "*",
    "Version": 1,
    "Attributes": {
      "x-datadog-sampling-priority": "1"
    }
  }
}
```

The file content for `datadog-sampling-priority-2.json`:

```json
{
  "SamplingRule": {
    "RuleName": "Datadog-Sampling-Priority-2",
    "ResourceARN": "*",
    "Priority": 9999,
    "FixedRate": 1,
    "ReservoirSize": 100,
    "ServiceName": "*",
    "ServiceType": "AWS::APIGateway::Stage",
    "Host": "*",
    "HTTPMethod": "*",
    "URLPath": "*",
    "Version": 1,
    "Attributes": {
      "x-datadog-sampling-priority": "2"
    }
  }
}
```

### Non-proxy integration

If your Lambda function is triggered by API Gateway via [the non-proxy integration](https://docs.aws.amazon.com/apigateway/latest/developerguide/getting-started-lambda-non-proxy-integration.html), then you have to [set up a mapping template](https://aws.amazon.com/premiumsupport/knowledge-center/custom-headers-api-gateway-lambda/), which passes the Datadog trace context from the incoming HTTP request headers to the Lambda function via the `event` object.

If your Lambda function is deployed by the Serverless Framework, such a mapping template gets created by default.

## Log and Trace Correlations

By default, the Datadog trace id gets automatically injected into the logs for correlation, if using the standard python `logging` library.

If you use a custom logger handler to log in json, you can inject the ids using the helper function `get_correlation_ids` [manually](https://docs.datadoghq.com/tracing/connect_logs_and_traces/?tab=python#manual-trace-id-injection).

Set the environment variable `DD_LOGS_INJECTION` to `false` to disable this feature.

```python
from datadog_lambda.wrapper import datadog_lambda_wrapper
from ddtrace.helpers import get_correlation_ids

@datadog_lambda_wrapper
def lambda_handler(event, context):
  trace_id, span_id = get_correlation_ids()
  logger.info({
    "message": "hello world",
    "dd": {
      "trace_id": trace_id,
      "span_id": span_id
    }
  })
```

## Datadog Tracer (**Beta**)

You can now trace Lambda functions using Datadog APM's tracing libraries ([dd-trace-py](https://github.com/DataDog/dd-trace-py)).

1. If you are using the Lambda layer, upgrade it to at least version 15.
1. If you are using the pip package `datadog-lambda-python`, upgrade it to at least version `v2.15.0`.
1. Install (or update to) the latest version of [Datadog forwarder Lambda function](https://docs.datadoghq.com/integrations/amazon_web_services/?tab=allpermissions#set-up-the-datadog-lambda-function). Ensure the trace forwarding layer is attached to the forwarder, e.g., ARN for Python 2.7 `arn:aws:lambda:<AWS_REGION>:464622532012:layer:Datadog-Trace-Forwarder-Python27:4`.
1. Set the environment variable `DD_TRACE_ENABLED` to true on your function.
1. Instrument your function using `dd-trace`.

```py
from datadog_lambda.metric import lambda_metric
from datadog_lambda.wrapper import datadog_lambda_wrapper

from ddtrace import tracer

@datadog_lambda_wrapper
def hello(event, context):
  return {
    "statusCode": 200,
    "body": get_message()
  }

@tracer.wrap()
def get_message():
  return "hello world"
```

You can also use `dd-trace` and the X-Ray tracer together and merge the traces into one, using the environment variable `DD_MERGE_XRAY_TRACES` to true on your function.

## Opening Issues

If you encounter a bug with this package, we want to hear about it. Before opening a new issue, search the existing issues to avoid duplicates.

When opening an issue, include the Datadog Lambda Layer version, Python version, and stack trace if available. In addition, include the steps to reproduce when appropriate.

You can also open an issue for a feature request.

## Contributing

If you find an issue with this package and have a fix, please feel free to open a pull request following the [procedures](CONTRIBUTING.md).

## License

Unless explicitly stated otherwise all files in this repository are licensed under the Apache License Version 2.0.

This product includes software developed at Datadog (https://www.datadoghq.com/). Copyright 2019 Datadog, Inc.


