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SCA can scan dependency management files in your repositories to statically detect open source libraries used in your codebase. SCA supports scanning for libraries in the following languages and lockfiles below:
Package Manager | Lockfile |
---|---|
C# (.NET) | packages.lock.json |
Go (mod) | go.mod |
JVM (Gradle) | gradle.lockfile |
JVM (Maven) | pom.xml |
Node.js (npm) | package-lock.json |
Node.js (pnpm) | pnpm-lock.yaml |
Node.js (yarn) | yarn.lock |
PHP (composer) | composer.lock |
Python (pip) | requirements.txt , Pipfile.lock |
Python (poetry) | poetry.lock |
Ruby (bundler) | Gemfile.lock |
To set up Datadog Static Code Analysis in-app, navigate to Security > Code Security.
For GitHub repositories, you can run Datadog SCA scans directly on Datadog’s infrastructure. To get started, navigate to the Code Security page.
First, configure your Datadog API and application keys by adding DD_APP_KEY
and DD_API_KEY
as secrets. Please ensure your Datadog application key has the code_analysis_read
scope.
Next, run SCA by following instructions for your chosen CI provider below.
SCA can run as a job in your GitHub Actions workflows. The action provided below invokes Datadog osv-scanner, our recommended SBOM generator, on your codebase and uploads the results into Datadog.
Add the following code snippet in .github/workflows/datadog-sca.yml
. Make sure to replace
the dd_site
attribute with the Datadog site you are using.
on: [push]
name: Datadog Software Composition Analysis
jobs:
software-composition-analysis:
runs-on: ubuntu-latest
name: Datadog SBOM Generation and Upload
steps:
- name: Checkout
uses: actions/checkout@v3
- name: Check imported libraries are secure and compliant
id: datadog-software-composition-analysis
uses: DataDog/datadog-sca-github-action@main
with:
dd_api_key: ${{ secrets.DD_API_KEY }}
dd_app_key: ${{ secrets.DD_APP_KEY }}
dd_site: "datadoghq.com"
Datadog Static Code Analysis (SAST) analyzes your first-party code. Static Code Analysis can be set up using the datadog-static-analyzer-github-action
GitHub action.
If you don’t use GitHub Actions, you can run the datadog-ci CLI directly in your CI pipeline platform and upload your SBOM to Datadog.
Prerequisites:
Configure the following environment variables:
Name | Description | Required | Default |
---|---|---|---|
DD_API_KEY | Your Datadog API key. This key is created by your Datadog organization and should be stored as a secret. | Yes | |
DD_APP_KEY | Your Datadog application key. This key, created by your Datadog organization, should include the code_analysis_read scope and be stored as a secret. | Yes | |
DD_SITE | The Datadog site to send information to. Your Datadog site is . | No | datadoghq.com |
Provide the following inputs:
Name | Description | Required | Default |
---|---|---|---|
service | The name of the service to tag the results with. | Yes | |
env | The environment to tag the results with. ci is a helpful value for this input. | No | none |
subdirectory | The subdirectory path the analysis should be limited to. The path is relative to the root directory of the repository. | No |
# Set the Datadog site to send information to
export DD_SITE="
"
# Install dependencies
npm install -g @datadog/datadog-ci
# Download the latest Datadog OSV Scanner:
# https://github.com/DataDog/osv-scanner/releases
DATADOG_OSV_SCANNER_URL=https://github.com/DataDog/osv-scanner/releases/latest/download/osv-scanner_linux_amd64.zip
# Install OSV Scanner
mkdir /osv-scanner
curl -L -o /osv-scanner/osv-scanner.zip $DATADOG_OSV_SCANNER_URL
unzip /osv-scanner/osv-scanner.zip -d /osv-scanner
chmod 755 /osv-scanner/osv-scanner
# Run OSV Scanner and scan your dependencies
/osv-scanner/osv-scanner --skip-git -r --experimental-only-packages --format=cyclonedx-1-5 --paths-relative-to-scan-dir --output=/tmp/sbom.json /path/to/repository
# Upload results to Datadog
datadog-ci sbom upload /tmp/sbom.json
Datadog SCA supports all source code management providers, with native support for GitHub.
If GitHub is your source code management provider, you must configure a GitHub App using the GitHub integration tile and set up the source code integration to see inline code snippets and enable pull request comments.
When installing a GitHub App, the following permissions are required to enable certain features:
Content: Read
, which allows you to see code snippets displayed in Datadog.Pull Request: Read & Write
, which allows Datadog to add feedback for violations directly in your pull requests using pull request comments.If you are using another source code management provider, configure SCA to run in your CI pipelines using the datadog-ci
CLI tool and upload the results to Datadog.
You must run an analysis of your repository on the default branch before results can begin appearing on the Code Security page.
Datadog associates static code and library scan results with relevant services by using the following mechanisms:
If one method succeeds, no further mapping attempts are made. Each mapping method is detailed below.
The schema version v3
and later of the Service Catalog allows you to add the mapping of your code location for your service. The codeLocations
section specifies the location of the repository containing the code and its associated paths.
The paths
attribute is a list of globs that should match paths in the repository.
entity.datadog.yaml
apiVersion: v3
kind: service
metadata:
name: my-service
datadog:
codeLocations:
- repositoryURL: https://github.com/myorganization/myrepo.git
paths:
- path/to/service/code/**
Datadog detects file usage in additional products such as Error Tracking and associate
files with the runtime service. For example, if a service called foo
has
a log entry or a stack trace containing a file with a path /modules/foo/bar.py
,
it associates files /modules/foo/bar.py
to service foo
.
Datadog detects service names in paths and repository names, and associates the file with the service if a match is found.
For a repository match, if there is a service called myservice
and
the repository URL is https://github.com/myorganization/myservice.git
, then,
it associates myservice
to all files in the repository.
If no repository match is found, Datadog attempts to find a match in the
path
of the file. If there is a service named myservice
, and the path is /path/to/myservice/foo.py
, the file is associated with myservice
because the service name is part of the path. If two services are present
in the path, the service name closest to the filename is selected.
Datadog automatically associates the team attached to a service when a violation or vulnerability is detected. For example, if the file domains/ecommerce/apps/myservice/foo.py
is associated with myservice
, then the team myservice
will be associated to any violation
detected in this file.
If no services or teams are found, Datadog uses the CODEOWNERS
file in your repository. The CODEOWNERS
file determines which team owns a file in your Git provider.
Note: You must accurately map your Git provider teams to your Datadog teams for this feature to function properly.