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Context Monitor

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Context window usage estimation for AI coding agents via MCP, enabling proactive state preservation before compaction.

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Описание

Context window usage estimation for AI coding agents via MCP, enabling proactive state preservation before compaction.

README

Context window usage estimation for AI coding agents via MCP.

Parses your session transcript to estimate how close you are to context compaction, so agents can proactively save important state before it's lost. Supports Claude Code and Codex CLI backends with auto-detection.

Why

AI coding agents accumulate context through conversation, tool calls, and file reads. When the context window fills up, compaction discards older content. Agents that know compaction is coming can write key insights to persistent storage first — memory queues, documents, knowledge graphs — instead of losing them silently.

Features

  • Live estimation — Single MCP tool returns usage percentage, distance to compaction, and status level
  • Multi-backend — Supports Claude Code (JSONL transcripts) and Codex CLI (native token counts) with auto-detection
  • Incremental scanning — Sidecar cache tracks scan position; subsequent calls only process new bytes
  • Compaction-aware — Finds the last compaction boundary and measures only post-compaction content
  • Configurable — TOML config for thresholds, token ratios, and backend-specific settings
  • Zero infrastructure — Reads the transcript file directly, no daemon or network calls

Quick Start

Requires Python 3.11+ and uv.

git clone https://github.com/sophia-labs/mcp-context-monitor.git
cd mcp-context-monitor
uv sync

Claude Code

Add to ~/.claude.json:

{
  "mcpServers": {
    "context-monitor": {
      "type": "stdio",
      "command": "uv",
      "args": ["run", "--directory", "/path/to/mcp-context-monitor", "python", "server.py"]
    }
  }
}

Codex CLI

Add to ~/.codex/config.toml:

[mcp_servers.context-monitor]
command = "uv"
args = ["run", "--directory", "/path/to/mcp-context-monitor", "python", "server.py"]

The backend is auto-detected based on which CLI has the most recent transcript.

Usage

Call context_status() from your agent:

{
  "status": "HIGH",
  "usage_percent": 73.9,
  "compaction_percent": 88.5,
  "estimated_tokens_used": 147780,
  "estimated_tokens_remaining": 19220
}

Status Levels

Status Compaction % Recommended Action
OK < 50% Normal operation
MODERATE 50–75% Be aware, no action needed
HIGH 75–90% Start saving important state to persistent storage
CRITICAL 90%+ Save everything immediately — compaction is imminent

How Agents Should Use This

  • Call context_status() periodically during long sessions
  • At HIGH: write key insights to memory queue, sing if at a phase transition
  • At CRITICAL: write everything important to persistent storage immediately
  • The compaction_percent measures distance to the compaction trigger, not the total window

Configuration

Create ~/.config/context-monitor/config.toml:

# Backend selection: "auto", "claude-code", or "codex-cli"
[backend]
type = "auto"

# Claude Code settings
[claude-code]
context_window = 200000
autocompact_buffer = 33000
static_overhead = 43500
bytes_per_token = 3.2
# transcript_dir = "~/.claude/projects"

# Codex CLI settings
[codex-cli]
context_window = 400000
max_output_tokens = 128000
autocompact_ratio = 0.95
static_overhead = 30000
bytes_per_token = 3.2
# transcript_dir = "~/.codex/sessions"

Environment Variables

Variable Description
CONTEXT_MONITOR_BACKEND Force backend: claude-code or codex-cli
CONTEXT_MONITOR_WINDOW Context window size (tokens)
CONTEXT_MONITOR_BUFFER Autocompact buffer (tokens)
CONTEXT_MONITOR_OVERHEAD Static overhead estimate (tokens)
CONTEXT_MONITOR_BPT Bytes-per-token ratio
CONTEXT_MONITOR_TRANSCRIPT Explicit transcript file path
CONTEXT_MONITOR_PROJECT_DIR Transcript directory

How It Works

  1. Startup: Auto-detects backend (Claude Code or Codex CLI) and finds the active session transcript
  2. Compaction detection: Scans for compaction markers to find the boundary of current context
  3. Content estimation: Parses post-compaction content, categorizing by type (text, tool calls, tool results, thinking, system)
  4. Token estimation:
    • Claude Code: Estimates tokens from byte counts using a calibrated bytes-per-token ratio
    • Codex CLI: Uses native token counts from turn_complete events when available
  5. Caching: Stores scan position in a sidecar file so subsequent calls only process new bytes

What's Counted

  • User messages, assistant messages, system prompts
  • Tool use (function calls) and tool results
  • Compaction summaries (from prior compactions)

What's Excluded

  • Thinking/reasoning blocks (not retained in context after generation)
  • JSON wrapper overhead (only content bytes are counted)

License

MIT — see LICENSE.

from github.com/sophia-labs/mcp-context-monitor

Установка Context Monitor

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/sophia-labs/mcp-context-monitor

FAQ

Context Monitor MCP бесплатный?

Да, Context Monitor MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Context Monitor?

Нет, Context Monitor работает без API-ключей и переменных окружения.

Context Monitor — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Context Monitor в Claude Desktop, Claude Code или Cursor?

Открой Context Monitor на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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