log-essence

log-essence

Enables LLMs to analyze logs by extracting patterns, redacting secrets, and providing token-efficient summaries from files, Docker containers, or journald.

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README

log-essence

Extract the essence of your logs for LLM analysis.

Analyzes log files using template extraction (Drain3) and semantic clustering (FastEmbed) to produce token-efficient summaries for LLM consumption. Includes automatic secret/PII redaction for safe external analysis.

https://github.com/user-attachments/assets/97d66d89-1745-4d0f-ac10-38744f98b636

<p align="center"> <em>Raw logs → Token-efficient summary with automatic secret redaction</em> </p>

Features

  • Auto-detection: JSON, syslog, Apache, nginx, Docker, Kubernetes log formats
  • Template extraction: Drain3 algorithm identifies log patterns and groups similar messages
  • Semantic clustering: Groups related patterns using FastEmbed embeddings
  • Token budget: Respects LLM context limits with intelligent summarization
  • Secret redaction: Correlation-preserving redaction of emails, IPs, API keys, credit cards
  • Error chain analysis: Traces root causes through related log entries
  • Time filtering: Filter logs by duration (1h, 30m, 2d) or datetime
  • Multi-source: Files, directories, glob patterns, Docker containers, journald
  • Web UI: Paste-and-copy interface with real-time processing metrics

Installation

# Using uv (recommended)
uvx log-essence

# Using pip
pip install log-essence

CLI Usage

# Analyze a log file
log-essence /var/log/app.log

# Analyze with glob pattern
log-essence "/var/log/*.log"

# Read from stdin — pipe any command's output
docker logs my-app 2>&1 | log-essence -
journalctl --since "1h ago" --no-pager | log-essence -

# Filter by severity
log-essence /var/log/app.log --severity ERROR WARNING

# Filter by time
log-essence /var/log/app.log --since 1h

# Strict redaction mode
log-essence /var/log/app.log --redact strict

# Disable redaction (for internal logs only)
log-essence /var/log/app.log --no-redact

# JSON output for programmatic use
log-essence /var/log/app.log -o json

# Watch mode for live log monitoring
log-essence /var/log/app.log --watch --interval 5

# Run as MCP server
log-essence --serve

CLI Options

Option Description
--token-budget N Maximum tokens in output (default: 8000)
--clusters N Number of semantic clusters (default: 10)
--severity LEVEL... Filter by severity (ERROR, WARNING, INFO, DEBUG)
--since TIME Only logs since TIME (1h, 30m, 2d, 2025-01-01)
--redact MODE Redaction: strict, moderate (default), minimal, disabled
--no-redact Disable redaction
-o, --output FORMAT Output format: markdown (default) or json
-w, --watch Watch log file for changes (live updates)
--interval SECONDS Update interval for watch mode (default: 3.0)
--config FILE Path to config file
--profile NAME Use named configuration profile
--serve Run as MCP server
--version Show version number

Web UI

A browser-based interface for quick log analysis without command-line setup.

# Using uvx (recommended - no installation needed)
uvx --with log-essence[ui] log-essence ui

# Or specify a custom port
uvx --with log-essence[ui] log-essence ui --port 8080

# Using pip (if you prefer to install)
pip install log-essence[ui]
log-essence ui

Features

  • Browser-based analysis: Paste logs, get LLM-ready output with real-time metrics
  • Configurable settings: Token budget, cluster count, redaction mode, severity filter
  • Processing metrics: Real-time stats displayed after analysis
    • Time: Processing duration
    • Redactions: Number of secrets/PII items redacted
    • Tokens: Original → Output token count
    • Savings: Compression percentage achieved
  • Download: Export analysis as markdown file

UI Options

Option Description
--port N Port to run on (default: 8501)
--no-browser Don't auto-open browser

MCP Server Usage

log-essence can run as an MCP (Model Context Protocol) server, allowing Claude Desktop, Claude Code, Cursor, and other MCP-compatible clients to directly analyze logs from your system. This enables natural language interactions like:

"Check the logs from the last hour for any database errors" "What's causing the slow response times in my API?" "Analyze the docker logs and find the root cause of the crash"

Setup

Add to your Claude Desktop config (~/Library/Application Support/Claude/claude_desktop_config.json):

{
  "mcpServers": {
    "log-essence": {
      "command": "uvx",
      "args": ["log-essence", "--serve"]
    }
  }
}

Restart Claude Desktop. You'll see log-essence listed in the MCP servers (🔌 icon).

How It Works

  1. You ask Claude about logs in natural language
  2. Claude calls log-essence with the appropriate tool and parameters
  3. log-essence analyzes the logs, redacts secrets, and returns a compressed summary
  4. Claude interprets the results and provides actionable insights

The logs never leave your machine unredacted - log-essence strips sensitive data before Claude sees it, and the analysis runs locally using Drain3 and FastEmbed.

Available Tools

discover_log_sources

Find log sources for a code project — project-scoped, so it returns the project's own log files (vendored/VCS/build dirs pruned), the containers and Compose file belonging to that project's Docker Compose stack, and — since most code projects log to stdout rather than files — the run commands (from package.json scripts) you can pipe in, plus any standard agent-instruction files (CLAUDE.md, AGENTS.md, GEMINI.md, …) that document how to run and where logs go. It does not surface machine-wide system logs or other projects' containers. Each result is annotated with the tool or command to use. Call this first when you don't know what's available.

discover_log_sources()                 # scan the current directory
discover_log_sources(path="/repo")     # scan a specific project

get_logs

Analyze and consolidate log files.

get_logs(
    path="/var/log/app.log",
    token_budget=8000,
    num_clusters=10,
    severity_filter=["ERROR", "WARNING"],
    since="1h",
    redact=True  # or "strict", "minimal", False
)

get_container_logs

Analyze Docker container logs.

get_container_logs(
    container="my-app",
    since="1h",
    token_budget=8000
)

get_docker_logs

Analyze logs from Docker Compose services.

get_docker_logs(
    path="/path/to/project",
    services=["api", "worker"],
    since="30m"
)

get_error_chain

Trace error root causes through related log entries.

get_error_chain(
    path="/var/log/app.log",
    error_pattern="database",
    time_window=60
)

search_logs

Semantic search through log entries.

search_logs(
    path="/var/log/app.log",
    query="connection timeout",
    top_k=10
)

get_journald_logs

Analyze systemd journal logs.

get_journald_logs(
    unit="nginx.service",
    since="1h",
    priority="err"
)

list_containers

List running Docker containers.

list_containers()

list_docker_services

List Docker Compose services in a project.

list_docker_services(path="/path/to/project")

Per-cluster retrieval

Every analysis tool (get_logs, get_docker_logs, get_container_logs, get_journald_logs) ends its summary with an analysis_id. Pass it back to get_raw_logs to pull the full, redacted lines on demand:

  • get_raw_logs(analysis_id) — all lines (paginate with start_line/max_lines).
  • get_raw_logs(analysis_id, cluster_id=N) — only the lines behind "Cluster N" from the summary, so an agent can expand exactly the cluster under investigation without pulling the whole log back.

Retrieved lines carry the same redaction as the summary (redacted unless that analysis was run with redact=False).

Secret Redaction

Logs are automatically redacted before analysis to prevent leaking sensitive data to external LLMs.

Redaction Modes

Mode Description
moderate Default. Emails, IPs, credit cards, SSNs, phones, API keys
strict All moderate patterns + high-entropy strings in key=value
minimal Only obvious secrets (bearer tokens, API keys)
disabled No redaction (use only for internal logs)

Output Format

Redacted values use the format [TYPE:length?:hash4]:

# Input
user@acme.com logged in from 192.168.1.50
Error processing payment for user@acme.com card 4111111111111111

# Output (same entity → same hash for correlation)
[EMAIL:a7f2] logged in from [IPV4:3bc1]
Error processing payment for [EMAIL:a7f2] card [CC:16:d4e8]

Detected Patterns

PII:

  • Email addresses
  • IPv4 and IPv6 addresses
  • Credit card numbers (Luhn-validated)
  • Social Security Numbers (xxx-xx-xxxx)
  • Phone numbers

Secrets:

  • AWS access keys and secret keys
  • GitHub tokens (ghp_, ghs_)
  • Stripe API keys (sk_live_, sk_test_)
  • JWT tokens
  • Bearer tokens
  • Private key headers
  • Connection strings (postgres://, mongodb://, redis://)

Example Output

# Log Analysis Summary

**Format detected:** docker
**Total lines:** 15,432
**Unique patterns:** 47
**Semantic clusters:** 10

---

## Log Patterns by Severity

### Cluster 1: Database Operations

**Occurrences:** 5,234 | **Patterns:** 8

- `Query executed in <*>ms` (2,341x)
- `Connection pool size: <*>` (1,892x)
- `Transaction committed` (1,001x)

**Example:**

2025-01-01T10:00:00Z INFO Query executed in 45ms


### Cluster 2: HTTP Requests

**Occurrences:** 4,123 | **Patterns:** 5

- `[IPV4:3bc1] - GET /api/<*> <*>` (3,456x)
- `Response time: <*>ms` (667x)

Development

# Clone and install
git clone https://github.com/petebytes/log-essence
cd log-essence
uv sync --all-groups

# Run tests
uv run pytest

# Lint
uv run ruff check src/ tests/

# Format
uv run ruff format src/ tests/

License

MIT

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