NFT Log Analyser
AI-powered log analysis MCP server. Scans 500MB+ log files locally, analyses errors with Ollama + CrewAI agents, and automatically files structured GitHub Issues. 100% local — no logs leave your machine.
🔍 NFT Log Analyzer
AI-powered log analysis that automatically files GitHub Issues — 100% local via Ollama, zero data leaves your machine.
What It Does
Point it at any log file and it will:
- Scan 500MB+ files in seconds using ripgrep
- Parse error patterns, deduplicate repeated events
- Analyse using local LLM (Ollama + deepseek-r1:14b) via CrewAI agents
- Compose structured GitHub Issues with root cause and suggested fixes
- File Issues automatically to your repo — skipping duplicates
All processing happens locally on your machine. Raw log content never leaves your system.
Architecture
Claude Desktop / Cursor / LangChain
↓ MCP (stdio or HTTP+SSE)
MCP Log Analyzer Server
↓
ripgrep pre-filter (2-4s on 500MB)
↓
mmap streaming parser + deduplicator
↓
CrewAI agents → Ollama (local LLM)
↓
GitHub Issues API
Requirements
| Requirement | Version | Notes |
|---|---|---|
| Python | 3.11+ | 3.14 not supported |
| Ollama | Latest | brew install ollama |
| deepseek-r1:14b | — | ~9GB download |
| ripgrep | Latest | brew install ripgrep |
| RAM | 16GB min | 32GB recommended |
| macOS | Ventura 13+ | Apple Silicon recommended |
Quick Start
1. Install system dependencies
brew install ollama ripgrep
brew services start ollama
ollama pull deepseek-r1:14b # ~9GB — start this first
2. Clone and set up Python environment
git clone https://github.com/YOUR_ORG/mcp-log-analyzer
cd mcp-log-analyzer
/opt/homebrew/bin/python3.11 -m venv .venv
source .venv/bin/activate
pip install --upgrade pip
pip install mcp "crewai>=0.80.0" crewai-tools langchain-ollama \
litellm fastapi uvicorn httpx httpx-sse \
structlog loguru pydantic python-dotenv \
tenacity rich typer
3. Configure environment
cp .env.example .env
nano .env # fill in your values
GITHUB_PAT=ghp_your_token_here
GITHUB_REPO_OWNER=your-username
GITHUB_REPO_NAME=your-repo
OLLAMA_BASE_URL=http://localhost:11434
OLLAMA_MODEL=deepseek-r1:14b
CREWAI_TELEMETRY_OPT_OUT=true
OTEL_SDK_DISABLED=true
OLLAMA_KEEP_ALIVE=-1
4. Create a GitHub PAT
Go to: github.com → Settings → Developer settings → Personal access tokens → Tokens (classic)
Enable scope: repo (full)
5. Register with Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"mcp-log-analyzer": {
"command": "/path/to/mcp-log-analyzer/.venv/bin/python",
"args": ["/path/to/mcp-log-analyzer/mcp_server/server.py"],
"env": {
"GITHUB_PAT": "ghp_your_token",
"GITHUB_REPO_OWNER": "your-username",
"GITHUB_REPO_NAME": "your-repo",
"OLLAMA_BASE_URL": "http://localhost:11434",
"OLLAMA_MODEL": "deepseek-r1:14b"
}
}
}
}
Restart Claude Desktop. You should see the 🔨 tools icon appear.
Usage
Via Claude Desktop (natural language)
analyze the log file at /var/log/app.log and file GitHub issues for any errors
use analyze_log_file with path="/var/log/app.log" dry_run=true
check status of job abc12345
Via Python CLI
source .venv/bin/activate
python3 -c "
from dotenv import load_dotenv
load_dotenv()
from mcp_server.tools.analyze_tool import analyze_log_file
import asyncio, json
result = asyncio.run(analyze_log_file({
'path': '/var/log/app.log',
'severity': 'ERROR',
'dry_run': False
}))
print(result[0].text)
"
MCP Tools Reference
ping
Health check — verifies the server and Ollama are running.
{}
Returns: "mcp-log-analyzer online — Ollama: deepseek-r1:14b"
analyze_log_file
Start async log analysis. Returns a job ID immediately — pipeline runs in background.
| Parameter | Type | Required | Default | Description |
|---|---|---|---|---|
path | string | ✅ | — | Absolute path to log file |
severity | string | — | ERROR | Minimum severity: WARN, ERROR, CRITICAL |
dry_run | boolean | — | false | Preview issues without filing to GitHub |
Returns:
{
"job_id": "abc12345",
"status": "started",
"message": "Analysis started. Check progress with get_job_status('abc12345')."
}
get_job_status
Check the status of a running analysis job.
| Parameter | Type | Required | Description |
|---|---|---|---|
job_id | string | ✅ | Job ID returned by analyze_log_file |
Returns (running):
{
"status": "running",
"job_id": "abc12345",
"lines_filtered": 487,
"chunks": 1
}
Returns (done):
{
"status": "done",
"job_id": "abc12345",
"lines_filtered": 487,
"unique_events": 4,
"chunks": 1,
"issues_filed": 2,
"github_issues": [
{
"title": "[CRITICAL][minting-service] DB connection pool exhausted (x117)",
"url": "https://github.com/your-org/your-repo/issues/42",
"number": 42
}
]
}
Compatible MCP Clients
| Client | Transport | Config |
|---|---|---|
| Claude Desktop | stdio | claude_desktop_config.json |
| Claude Code CLI | stdio | .mcp.json in project root |
| Cursor | stdio or HTTP+SSE | .cursor/mcp.json |
| LangChain | HTTP+SSE | url: http://localhost:8000/sse |
| n8n | HTTP+SSE | HTTP Request node → SSE |
HTTP+SSE Transport (for Cursor, LangChain, n8n)
python mcp_server/server.py --transport sse --port 8000
Customising with Skills
Skills are plain English .md files that teach the agents your stack's error patterns. Three built-in skills ship with the project:
| Skill | Purpose |
|---|---|
skills/nft-app-errors.skill.md | NFT/blockchain error classification |
skills/infrastructure-errors.skill.md | Infrastructure error classification |
skills/bug-composition.skill.md | GitHub Issue format rules |
Writing your own skill
Create skills/my-stack-errors.skill.md:
# My Stack Error Classification
## CRITICAL — file bug immediately
- "FATAL: database connection refused" = service down
- "out of memory" = process crash imminent
## HIGH — file bug, non-urgent
- "connection timeout" on external API = degraded performance
## IGNORE — known false positives
- "reconnecting..." during deploys = expected
Then load it in agents/crew.py:
_load_skill("my-stack-errors.skill.md")
Pipeline Internals
500MB log file
↓ ripgrep (2-4 seconds)
↓ Filters: ERROR|FATAL|CRITICAL|WARN|Exception|Traceback
~5MB of error lines
↓ mmap streaming parser
↓ LogEvent objects with timestamp, level, component, message
↓ Deduplicator (fingerprints strip req_id, numbers, hex)
4-20 unique error patterns
↓ Chunker (10 events per chunk, CRITICAL first)
1-3 chunks
↓ Single CrewAI agent → Ollama (local)
↓ Structured bug reports in markdown
↓ Title extractor + label classifier
↓ Duplicate check via GitHub search API
GitHub Issues filed
Performance
Tested on Apple Silicon (M2, 32GB):
| File size | Filter time | Analysis time | Total |
|---|---|---|---|
| 10MB | <1s | 3-5 min | ~5 min |
| 100MB | 1-2s | 3-5 min | ~7 min |
| 500MB | 3-5s | 5-10 min | ~15 min |
Analysis time depends on number of unique error patterns found (not file size).
Troubleshooting
| Symptom | Fix |
|---|---|
ollama ps shows empty | Run ollama run deepseek-r1:14b then /bye to warm the model |
| MCP server disconnected in Claude Desktop | Check ~/Library/Logs/Claude/mcp-server-*.log for Python errors |
Issues filed: 0 | Verify GITHUB_PAT in claude_desktop_config.json is a real token, not placeholder |
| Timeout after 600s | Add OLLAMA_KEEP_ALIVE=-1 to .env and restart Ollama |
crewai install fails | Requires Python 3.11 — not compatible with 3.13/3.14 |
Permission denied on /usr/local/bin | Use /opt/homebrew/bin/ instead on Apple Silicon |
Roadmap
v1 (current)
- Local filesystem log ingestion
- ripgrep + mmap pipeline
- Single-agent CrewAI analysis
- GitHub Issues filing with dedup
- Claude Desktop + stdio MCP transport
v2 (planned)
- Datadog MCP integration
- Splunk MCP integration
- HTTP+SSE transport (Cursor, LangChain, n8n)
- Scheduled analysis triggers
- Parallel chunk processing
- Web dashboard for job history
Contributing
Contributions welcome — especially new skill files for different stacks.
- Fork the repo
- Create
skills/your-stack-errors.skill.md - Test it against a real log file
- Open a PR with example output
License
MIT — see LICENSE
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