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
Máy chủ liên quan
OpenFoodTox Food Chemical Hazards
MCP server providing tools to access EFSA's comprehensive OpenFoodTox Chemical Hazards in food dataset
Bible Study
Study the Bible in its original languages, trace themes across both testaments, and compare five translations — all in one conversation. Ask any question about what Scripture says and get grounded, cited answers: What does the Bible say about suffering? Topical search surfaces Job as the Bible's principal witness on suffering (with explanations of why it matters and suggested starting passages), Psalms on lament, Romans on justification — whole books and narratives alongside individual verses. What is the Hebrew word behind lovingkindness in Psalm 23? Compare how KJV and WEB translate John 3:16. Trace the word grace through Paul's letters. Covers 155,510 verses across KJV, WEB, ASV, YLT, and Darby with 606,140 cross-references, 17,543 Strong's entries, BDB and Thayer lexicon definitions, and Nave's 5,319 topical categories.
Clicks Protocol
Autonomous DeFi yield for AI agents on Base. Query APY rates, agent status, payment splits. 9 MCP tools.
MCP.science
A collection of open-source MCP servers designed for scientific research applications.
Kite Trading
A server for performing trading operations using the Kite Connect API.
Agent Central
Hosted MCP server for Amazon sellers using Claude, ChatGPT, and other AI clients.
Duplicacy MCP
Monitor backup status and query Prometheus metrics from a Duplicacy exporter
Lotlytics
Live real estate market data for 895 US metros. Home prices, rental yields, investment health scores, migration trends, and HUD fair market rents. Free tier included, no account needed.
MCP Audio Tweaker
Batch audio processing and optimization using FFmpeg. Modify sample rate, bitrate, volume, channels, and apply effects.
OP.GG
Access real-time gaming data across popular titles like League of Legends, TFT, and Valorant, offering champion analytics, esports schedules, meta compositions, and character statistics.