Kingfisher is a blazingly fast secret-scanning and live validation tool built in Rust.
It combines Intel's SIMD-accelerated regex engine (Hyperscan) with language-aware parsing to achieve high accuracy at massive scale, and ships with hundreds of built-in rules to detect, validate, and triage secrets before they ever reach production.
Designed for offensive security engineers and blue-teamers alike, Kingfisher helps you pivot across repo ecosystems, validate exposure paths, and hunt for developer-owned leaks that spill beyond the primary codebase.
Learn more: Introducing Kingfisher: Real‑Time Secret Detection and Validation
| Files / Dirs | Local Git | GitHub | GitLab | Azure Repos | Bitbucket | Gitea | Hugging Face |
|---|---|---|---|---|---|---|---|
Files / Dirs |
Local Git |
GitHub |
GitLab |
Azure Repos |
Bitbucket |
Gitea |
Hugging Face |
| Docker | Jira | Confluence | Slack | AWS S3 | Google Cloud |
|---|---|---|---|---|---|
Docker |
Jira |
Confluence |
Slack |
AWS S3 |
Cloud Storage |
- Performance: multithreaded, Hyperscan‑powered scanning built for huge codebases
- Extensible rules: hundreds of built-in detectors plus YAML-defined custom rules (docs/RULES.md)
- Validate & Revoke: live validation of discovered secrets, plus direct revocation for supported platforms (GitHub, GitLab, Slack, AWS, GCP, and more) (docs/USAGE.md)
- Blast Radius Mapping: instantly map leaked keys to their effective cloud identities and exposed resources with
--access-map. Supports AWS, GCP, Azure, GitHub, Gitlab, and more token support coming. - Broad AI SaaS coverage: finds and validates tokens for OpenAI, Anthropic, Google Gemini, Cohere, AWS Bedrock, Voyage AI, Mistral, Stability AI, Replicate, xAI (Grok), Ollama, Langchain, Perplexity, Weights & Biases, Cerebras, Friendli, Fireworks.ai, NVIDIA NIM, Together.ai, Zhipu, and many more
- Compressed Files: Supports extracting and scanning compressed files for secrets
- Baseline management: generate and track baselines to suppress known secrets (docs/BASELINE.md)
- Checksum-aware detection: verifies tokens with built-in checksums (e.g., GitHub, Confluent, Zuplo) — no API calls required
- Built-in Report Viewer: Visualize and triage findings locally with
kingfisher view ./report-file.json - Library crates: Embed Kingfisher's scanning engine in your own Rust applications (docs/LIBRARY.md)
See (docs/COMPARISON.md)
kingfisher scan /path/to/scan --view-reportNOTE: Replay has been slowed down for demo

Explore Kingfisher's built-in report viewer and its --access-map, which can show what the token (AWS, GCP, Azure, GitHub, GitLab, and Slack...more coming) can actually access.
Note: when you pass --view-report, Kingfisher starts a localhost-only web server on port 7890 and opens it in your default browser. You'll see this near the end of the scan output, and Kingfisher will keep running until you stop it.
INFO kingfisher::cli::commands::view: Starting access-map viewer address=127.0.0.1:7890
Serving access-map viewer at http://127.0.0.1:7890 (Ctrl+C to stop)Usage:
kingfisher scan /path/to/scan --access-map --view-report- Key Features
- Benchmark Results
- Getting Started
- Detection Rules
- Usage Examples
- Platform Integrations
- Advanced Features
- Documentation
- Library Usage
- Roadmap
- License
1: Install Kingfisher (INSTALLATION.md)
# Homebrew (Linux/macOS)
brew install kingfisher
# Or install from PyPI with uv
uv tool install kingfisher-bin
# Or use the install script (Linux/macOS)
curl -sSL https://raw.githubusercontent.com/mongodb/kingfisher/main/scripts/install-kingfisher.sh | bash
# Or use PowerShell based install script on Windows
Set-ExecutionPolicy -Scope Process -ExecutionPolicy Bypass -Force
Invoke-WebRequest -Uri 'https://raw.githubusercontent.com/mongodb/kingfisher/main/scripts/install-kingfisher.ps1' -OutFile install-kingfisher.ps1
./install-kingfisher.ps1
# Or run with Docker (no install required)
docker run --rm -v "$PWD":/src ghcr.io/mongodb/kingfisher:latest scan /src2: Scan a directory for secrets (USAGE.md)
kingfisher scan /path/to/codekingfisher scan /path/to/code --view-reportkingfisher scan /path/to/code --only-valid# Revoke a GitHub token
kingfisher revoke --rule github "ghp_xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx"
# Revoke AWS credentials (sets access key to Inactive)
kingfisher revoke --rule aws --arg "AKIAIOSFODNN7EXAMPLE" "wJalrXUtnFEMI/K7MDENG/bPxRfiCYEXAMPLEKEY"6: Scan a GitHub organization (INTEGRATIONS.md)
KF_GITHUB_TOKEN="ghp_..." kingfisher scan github --organization my-orgKF_GITLAB_TOKEN="glpat-..." kingfisher scan gitlab --group my-groupKF_AZURE_PAT="pat" kingfisher scan azure --organization my-orgKF_BITBUCKET_TOKEN="token" kingfisher scan bitbucket --workspace my-teamKF_GITEA_TOKEN="token" kingfisher scan gitea --organization my-orgKF_HUGGINGFACE_TOKEN="hf_..." kingfisher scan huggingface --organization my-orgkingfisher scan s3 bucket-name --prefix path/kingfisher scan gcs bucket-name --prefix path/kingfisher scan docker ghcr.io/org/image:latestKF_JIRA_TOKEN="token" kingfisher scan jira --url https://jira.company.com --jql "project = SEC"KF_CONFLUENCE_TOKEN="token" kingfisher scan confluence --url https://confluence.company.com --cql "label = secret"KF_SLACK_TOKEN="xoxp-..." kingfisher scan slack "api_key OR password"docker run --rm -v "$PWD":/src ghcr.io/mongodb/kingfisher:latest scan /srckingfisher scan /path/to/code --format json --output findings.jsonkingfisher scan /path/to/code --access-map --view-reportKingfisher supports multiple installation methods:
- Homebrew:
brew install kingfisher - PyPI with uv:
uv tool install kingfisher-bin - Pre-built releases: Download from GitHub Releases
- Install scripts: One-line installers for Linux, macOS, and Windows - INSTALLATION.md
- Docker:
docker run ghcr.io/mongodb/kingfisher:latest - Pre-commit hooks: Integrate with git hooks, pre-commit framework, or Husky
- Compile from source: Build with
makefor your platform
For complete installation instructions and pre-commit hook setup, see docs/INSTALLATION.md.
Kingfisher ships with hundreds of rules that cover everything from classic cloud keys to the latest AI SaaS tokens. Below is an overview:
| Category | What we catch |
|---|---|
| AI SaaS APIs | OpenAI, Anthropic, Google Gemini, Cohere, Mistral, Stability AI, Replicate, xAI (Grok), Ollama, Langchain, Perplexity, Weights & Biases, Cerebras, Friendli, Fireworks.ai, NVIDIA NIM, together.ai, Zhipu, and more |
| Cloud Providers | AWS, Azure, GCP, Alibaba Cloud, DigitalOcean, IBM Cloud, Cloudflare, and more |
| Dev & CI/CD | GitHub/GitLab tokens, CircleCI, TravisCI, TeamCity, Docker Hub, npm, PyPI, and more |
| Messaging & Comms | Slack, Discord, Microsoft Teams, Twilio, Mailgun, SendGrid, Mailchimp, and more |
| Databases & Data Ops | MongoDB Atlas, PlanetScale, Postgres DSNs, Grafana Cloud, Datadog, Dynatrace, and more |
| Payments & Billing | Stripe, PayPal, Square, GoCardless, and more |
| Security & DevSecOps | Snyk, Dependency-Track, CodeClimate, Codacy, OpsGenie, PagerDuty, and more |
| Misc. SaaS & Tools | 1Password, Adobe, Atlassian/Jira, Asana, Netlify, Baremetrics, and more |
Kingfisher ships with hundreds of rules with HTTP and service‑specific validation checks (AWS, Azure, GCP, etc.) to confirm if a detected string is a live credential.
However, you may want to add your own custom rules, or modify a detection to better suit your needs / environment.
For complete rule documentation, see docs/RULES.md.
Modern API tokens increasingly include built-in checksums, short internal digests that make each credential self-verifiable. (For background, see GitHub's write-up on their newer token formats and why checksums slash false positives.)
Kingfisher supports checksum-aware matching in rules, enabling offline structural verification of credentials without calling third-party APIs.
By validating each token's internal checksum (for tokens that support checksums), Kingfisher eliminates nearly all false positives—automatically skipping structurally invalid or fake tokens before validation ever runs.
Why this matters
- Offline verification — no API call required
- Industry-aligned — compatible with prefix + checksum token designs (e.g., modern PATs)
- Lower false positives — invalid tokens are filtered out by structure alone
Learn more: implementation details and templating are documented in docs/RULES.md
Note:
kingfisher scanautomatically detects whether the input is a Git repository or a plain directory—no extra flags required.
# Scan with secret validation
kingfisher scan /path/to/code
## NOTE: This path can refer to:
# 1. a local git repo
# 2. a directory with many git repos
# 3. or just a folder with files and subdirectories
# Scan without validation
kingfisher scan ~/src/myrepo --no-validate
# Display only secrets confirmed active by third‑party APIs
kingfisher scan /path/to/repo --only-valid
# Output JSON and capture to a file
kingfisher scan . --format json | tee kingfisher.json
# Output SARIF directly to disk
kingfisher scan /path/to/repo --format sarif --output findings.sarifStop Guessing, Start Mapping: Understand Your True Blast Radius
Finding a leaked credential is only the first step. The critical question isn't just "Is this a secret?"—it's "What can an attacker do with it?"
Kingfisher's --access-map feature transforms secret detection from a simple alert into a comprehensive threat assessment. Instead of leaving you with a cryptic API key, Kingfisher actively authenticates against your cloud provider (AWS, GCP, Azure Storage, Azure DevOps, GitHub, GitLab, or Slack) to map the full extent of the credential's power.
- Instant Identity Resolution: Immediately identify who the key belongs to—whether it's a specific IAM user, an assumed role, or a service account.
- Visualize the Blast Radius: See exactly which resources (S3 buckets, EC2 instances, projects, storage containers) are exposed and at risk.
# Generate access map during scan
kingfisher scan /path/to/code --access-map --view-report
# View access-map reports locally
kingfisher view kingfisher.jsonUse the access map functionality only when you are authorized to inspect the target account, as Kingfisher will issue additional network requests to determine what access the secret grants
# Validate a known secret without scanning
kingfisher validate --rule opsgenie "12345678-9abc-def0-1234-56789abcdef0"
# Validate from stdin
echo "ghp_xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx" | kingfisher validate --rule github -
# Revoke a Slack token
kingfisher revoke --rule slack "xoxb-..."
# Revoke a GitHub PAT
kingfisher revoke --rule github "ghp_xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx"# Pipe any text directly into Kingfisher
cat /path/to/file.py | kingfisher scan -
# Limit maximum file size scanned (default: 256 MB)
kingfisher scan /some/file --max-file-size 500
# Scan using a rule family
kingfisher scan /path/to/repo --rule kingfisher.aws
# Display rule performance statistics
kingfisher scan /path/to/repo --rule-stats
# Include full validation response bodies (not truncated to 512 characters)
# Useful for parsing complete validation responses (e.g., GitHub token metadata)
kingfisher scan /path/to/repo --full-validation-response
# Exclude specific paths
kingfisher scan ./my-project \
--exclude '*.py' \
--exclude '[Tt]ests'
# Scan changes in CI pipelines
kingfisher scan . \
--since-commit origin/main \
--branch "$CI_BRANCH"Kingfisher can scan multiple platforms and services directly:
Version Control & Code Hosting:
- GitHub (organizations, users, repositories)
- GitLab (groups, users, projects)
- Azure Repos (organizations, projects)
- Bitbucket (workspaces, users, repositories)
- Gitea (organizations, users, repositories)
- Hugging Face (models, datasets, spaces)
Cloud Storage:
- AWS S3
- Google Cloud Storage
Containers:
- Docker (images from registries)
Collaboration & Documentation:
- Jira (issues via JQL queries)
- Confluence (pages via CQL queries)
- Slack (messages via search queries)
See docs/INTEGRATIONS.md for complete integration documentation and authentication setup.
# Scan AWS S3 bucket
kingfisher scan s3 bucket-name --prefix path/
# Scan Google Cloud Storage
kingfisher scan gcs bucket-name
# Scan Docker image
kingfisher scan docker ghcr.io/owasp/wrongsecrets/wrongsecrets-master:latest-master
# Scan GitHub organization
kingfisher scan github --organization my-org
# Scan GitLab group
kingfisher scan gitlab --group my-group
# Scan Azure Repos
kingfisher scan azure --organization my-org
# Scan Jira issues
KF_JIRA_TOKEN="token" kingfisher scan jira --url https://jira.company.com \
--jql "project = TEST AND status = Open"
# Scan Confluence pages
KF_CONFLUENCE_TOKEN="token" kingfisher scan confluence --url https://confluence.company.com \
--cql "label = secret"
# Scan Slack messages
KF_SLACK_TOKEN="xoxp-..." kingfisher scan slack "from:username has:link"For detailed integration instructions and authentication setup, see docs/INTEGRATIONS.md.
| Variable | Purpose |
|---|---|
KF_GITHUB_TOKEN |
GitHub Personal Access Token |
KF_GITLAB_TOKEN |
GitLab Personal Access Token |
KF_GITEA_TOKEN |
Gitea Personal Access Token |
KF_GITEA_USERNAME |
Username for private Gitea clones (used with KF_GITEA_TOKEN) |
KF_AZURE_TOKEN / KF_AZURE_PAT |
Azure Repos Personal Access Token |
KF_AZURE_USERNAME |
Username to use with Azure Repos PATs (defaults to pat when unset) |
KF_BITBUCKET_TOKEN |
Bitbucket Cloud workspace API token or Bitbucket Server PAT |
KF_BITBUCKET_USERNAME |
Optional Bitbucket username for legacy app passwords or server tokens |
KF_BITBUCKET_APP_PASSWORD |
Legacy Bitbucket app password (deprecated September 9, 2025; disabled June 9, 2026) |
KF_BITBUCKET_OAUTH_TOKEN |
Bitbucket OAuth or PAT token |
KF_HUGGINGFACE_TOKEN |
Hugging Face access token for API enumeration and git cloning |
KF_HUGGINGFACE_USERNAME |
Optional username for Hugging Face git operations (defaults to hf_user) |
KF_JIRA_TOKEN |
Jira API token |
KF_CONFLUENCE_TOKEN |
Confluence API token |
KF_SLACK_TOKEN |
Slack API token |
KF_DOCKER_TOKEN |
Docker registry token (user:pass or bearer token). If unset, credentials from the Docker keychain are used |
KF_AWS_KEY, KF_AWS_SECRET, and KF_AWS_SESSION_TOKEN |
AWS credentials for S3 bucket scanning. Session token is optional, for temporary credentials |
Set them temporarily per command:
KF_GITLAB_TOKEN="glpat-…" kingfisher scan gitlab --group my-groupOr export for the session:
export KF_GITLAB_TOKEN="glpat-…"Kingfisher offers powerful features for complex scanning scenarios. See docs/ADVANCED.md for complete advanced documentation.
Track known secrets and detect only new ones:
# Create/update baseline
kingfisher scan /path/to/code \
--confidence low \
--manage-baseline \
--baseline-file ./baseline-file.yml
# Scan with baseline (suppress known findings)
kingfisher scan /path/to/code \
--baseline-file /path/to/baseline-file.yaml# Skip known false positives
kingfisher scan --skip-regex '(?i)TEST_KEY' path/
kingfisher scan --skip-word dummy path/
# Skip AWS canary tokens
kingfisher scan /path/to/code \
--skip-aws-account "171436882533,534261010715"
# Inline ignore directives in code
# Add `kingfisher:ignore` on the same line or surrounding lines# Scan only changes between branches
kingfisher scan . \
--since-commit origin/main \
--branch "$CI_BRANCH"
# Scan specific commit range
kingfisher scan /tmp/repo --branch feature-1 \
--branch-root-commit $(git -C /tmp/repo merge-base main feature-1)For more advanced features including confidence levels, validation tuning, and custom rules, see docs/ADVANCED.md.
| Document | Description |
|---|---|
| INSTALLATION.md | Complete installation guide including pre-commit hooks setup for git, pre-commit framework, and Husky |
| INTEGRATIONS.md | Platform-specific scanning guide (GitHub, GitLab, AWS S3, Docker, Jira, Confluence, Slack, etc.) |
| ADVANCED.md | Advanced features: baselines, confidence levels, validation tuning, CI scanning, and more |
| RULES.md | Writing custom detection rules, pattern requirements, and checksum intelligence |
| BASELINE.md | Baseline management for tracking known secrets and detecting new ones |
| LIBRARY.md | Using Kingfisher as a Rust library in your own applications |
| FINGERPRINT.md | Understanding finding fingerprints and deduplication |
| COMPARISON.md | Benchmark results and performance comparisons |
| PARSING.md | Language-aware parsing details |
(beta feature) - Kingfisher's scanning engine is available as a set of Rust library crates (kingfisher-core, kingfisher-rules, kingfisher-scanner) that can be embedded into other applications. This enables you to integrate secret scanning directly into your own tools and workflows.
For complete documentation and examples, see docs/LIBRARY.md.
| Code | Meaning |
|---|---|
| 0 | No findings |
| 200 | Findings discovered |
| 205 | Validated findings discovered |
Kingfisher began as an internal fork of Nosey Parker, used as a high-performance foundation for secret detection.
Since then it has evolved far beyond that starting point, introducing live validation, hundreds of new rules, additional scan targets, and major architectural changes across nearly every subsystem.
Key areas of evolution
- Live validation of detected secrets directly within rules
- Hundreds of new built-in rules and an expanded YAML rule schema
- Baseline management to suppress known findings over time
- Tree-sitter parsing layered on Hyperscan for language-aware detection
- More scan targets (GitLab, Bitbucket, Gitea, Jira, Confluence, Slack, S3, GCS, Docker, Hugging Face, etc.)
- Compressed Files scanning support added
- New storage model (in-memory + Bloom filter, replacing SQLite)
- Unified workflow with JSON/BSON/SARIF outputs
- Cross-platform builds for Linux, macOS, and Windows
- More rules
- More targets
- Please file a feature request, or open a PR, if you have features you'd like added


