Counter-UAS telemetry/log analyzer that flags drone-detection events, RF bands, and track anomalies.
Part of the Cognis Neural Suite.
pip install cognis-uaslog
uaslog scan . # → prioritized findings in seconds-
Install (Python 3.9+):
pip install uaslog
-
Analyze a C-UAS log (JSONL or CSV) and print a triage table:
uaslog analyze sensor_log.jsonl
-
Set the severity floor. Only show (and treat as failing) findings at or above a level:
uaslog analyze sensor_log.jsonl --min-severity high
-
Read the output as JSON, or stream from stdin:
cat sensor_log.jsonl | uaslog analyze - --format json | jq .severity_counts
-
Gate in CI/alerting. Exit
0means no findings at/above the floor; non-zero means actionable findings (use it in a cron alert):uaslog analyze sensor_log.jsonl --min-severity medium || echo "C-UAS findings detected"
- Why uaslog? · Features · Quick start · Example · Architecture · AI stack · How it compares · Integrations · Install anywhere · Related · Contributing
Counter-UAS telemetry/log analyzer that flags drone-detection events, RF bands, and track anomalies. — without standing up heavyweight infrastructure.
uaslog is single-purpose, scriptable, and self-hostable: point it at a target, get prioritized results in the format your workflow already speaks (table · JSON · SARIF), gate CI on it, and let agents drive it over MCP.
- ✅ Parse Log
- ✅ Classify Rf Band
- ✅ Analyze
- ✅ Runs on Linux/macOS/Windows · Docker · devcontainer
- ✅ Ports in Python, JavaScript, Go, and Rust (
ports/)
pip install cognis-uaslog
uaslog --version
uaslog scan . # scan current project
uaslog scan . --format json # machine-readable
uaslog scan . --fail-on high # CI gate (non-zero exit)$ uaslog scan .
[HIGH ] UAS-001 example finding (./src/app.py)
[MEDIUM ] UAS-002 another signal (./config.yaml)
2 findings · risk score 5 · 38ms
flowchart LR
IN[input] --> P[uaslog<br/>analyze + score]
P --> OUT[report]
uaslog is interoperable with every popular way of using AI:
- MCP server —
uaslog mcp(Claude Desktop, Cursor, Cognis.Studio, uncensored-fleet) - OpenAI-compatible / JSON — pipe
uaslog scan . --format jsoninto any agent or LLM - LangChain · CrewAI · AutoGen · LlamaIndex — wrap the CLI/JSON as a tool in one line
- CI / scripts — exit codes + SARIF for non-AI pipelines
| Cognis uaslog | typical tools | |
|---|---|---|
| Self-hostable, no account | ✅ | varies |
| Single command, zero config | ✅ | |
| JSON + SARIF for CI | ✅ | varies |
| MCP-native (AI agents) | ✅ | ❌ |
| Polyglot ports (JS/Go/Rust) | ✅ | ❌ |
| Open license | ✅ COCL | varies |
Pipes into your stack: SARIF for code-scanning, JSON for anything, an MCP server (uaslog mcp) for AI agents, and a webhook forwarder for SIEM/Slack/Jira. See docs/INTEGRATIONS.md.
pip install "git+https://github.com/cognis-digital/uaslog.git" # pip (works today)
pipx install "git+https://github.com/cognis-digital/uaslog.git" # isolated CLI
uv tool install "git+https://github.com/cognis-digital/uaslog.git" # uv
pip install cognis-uaslog # PyPI (when published)
docker run --rm ghcr.io/cognis-digital/uaslog:latest --help # Docker
brew install cognis-digital/tap/uaslog # Homebrew tap
curl -fsSL https://raw.githubusercontent.com/cognis-digital/uaslog/main/install.sh | sh| Linux | macOS | Windows | Docker | Cloud |
|---|---|---|---|---|
scripts/setup-linux.sh |
scripts/setup-macos.sh |
scripts/setup-windows.ps1 |
docker run ghcr.io/cognis-digital/uaslog |
DEPLOY.md (AWS/Azure/GCP/k8s) |
Explore the suite → 🗂️ all 170+ tools · ⭐ awesome-cognis · 🔗 cognis-sources · 🤖 uncensored-fleet · 🧠 engram
PRs, new rules, and demo scenarios are welcome under the collaboration-pull model — see CONTRIBUTING.md and SECURITY.md.
{} composes with the 300+ tool Cognis suite — JSON in/out and a shared
OpenAI-compatible /v1 backbone. See INTEROP.md for the
suite map, composition patterns, and reference stacks.
Source-available under the Cognis Open Collaboration License (COCL) v1.0 — free for personal, internal-evaluation, research, and educational use; commercial / production use requires a license (licensing@cognis.digital). See LICENSE.