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Lobster Context Budget

Audits Claude Code context window consumption across agents, skills, MCP servers, and rules. Identifies bloat, redundant components, and produces prioritized...
审计 Claude Code 上下文窗口在智能体、技能、MCP 服务器和规则中的消耗,识别冗余膨胀和重复组件,并生成优先级...
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概述

Context Budget

Analyze token overhead across every loaded component in a Claude Code session and surface actionable optimizations to reclaim context space.

When to Use

  • Session performance feels sluggish or output quality is degrading
  • You've recently added many skills, agents, or MCP servers
  • You want to know how much context headroom you actually have
  • Planning to add more components and need to know if there's room
  • Running /context-budget command (this skill backs it)

How It Works

Phase 1: Inventory

Scan all component directories and estimate token consumption:

Agents (agents/*.md)

  • Count lines and tokens per file (words × 1.3)
  • Extract description frontmatter length
  • Flag: files >200 lines (heavy), description >30 words (bloated frontmatter)

Skills (skills/*/SKILL.md)

  • Count tokens per SKILL.md
  • Flag: files >400 lines
  • Check for duplicate copies in .agents/skills/ — skip identical copies to avoid double-counting

Rules (rules/*/.md)

  • Count tokens per file
  • Flag: files >100 lines
  • Detect content overlap between rule files in the same language module

MCP Servers (.mcp.json or active MCP config)

  • Count configured servers and total tool count
  • Estimate schema overhead at ~500 tokens per tool
  • Flag: servers with >20 tools, servers that wrap simple CLI commands (gh, git, npm, supabase, vercel)

CLAUDE.md (project + user-level)

  • Count tokens per file in the CLAUDE.md chain
  • Flag: combined total >300 lines

Phase 2: Classify

Sort every component into a bucket:

BucketCriteriaAction
--------------------------
Always neededReferenced in CLAUDE.md, backs an active command, or matches current project typeKeep
Sometimes neededDomain-specific (e.g. language patterns), not referenced in CLAUDE.mdConsider on-demand activation
Rarely neededNo command reference, overlapping content, or no obvious project matchRemove or lazy-load

Phase 3: Detect Issues

Identify the following problem patterns:

  • Bloated agent descriptions — description >30 words in frontmatter loads into every Task tool invocation
  • Heavy agents — files >200 lines inflate Task tool context on every spawn
  • Redundant components — skills that duplicate agent logic, rules that duplicate CLAUDE.md
  • MCP over-subscription — >10 servers, or servers wrapping CLI tools available for free
  • CLAUDE.md bloat — verbose explanations, outdated sections, instructions that should be rules

Phase 4: Report

Produce the context budget report:

Context Budget Report
═══════════════════════════════════════

Total estimated overhead: ~XX,XXX tokens
Context model: Claude Sonnet (200K window)
Effective available context: ~XXX,XXX tokens (XX%)

Component Breakdown:
┌─────────────────┬────────┬───────────┐
│ Component       │ Count  │ Tokens    │
├─────────────────┼────────┼───────────┤
│ Agents          │ N      │ ~X,XXX    │
│ Skills          │ N      │ ~X,XXX    │
│ Rules           │ N      │ ~X,XXX    │
│ MCP tools       │ N      │ ~XX,XXX   │
│ CLAUDE.md       │ N      │ ~X,XXX    │
└─────────────────┴────────┴───────────┘

WARNING: Issues Found (N):
[ranked by token savings]

Top 3 Optimizations:
1. [action] → save ~X,XXX tokens
2. [action] → save ~X,XXX tokens
3. [action] → save ~X,XXX tokens

Potential savings: ~XX,XXX tokens (XX% of current overhead)

In verbose mode, additionally output per-file token counts, line-by-line breakdown of the heaviest files, specific redundant lines between overlapping components, and MCP tool list with per-tool schema size estimates.

Examples

Basic audit

User: /context-budget
Skill: Scans setup → 16 agents (12,400 tokens), 28 skills (6,200), 87 MCP tools (43,500), 2 CLAUDE.md (1,200)
       Flags: 3 heavy agents, 14 MCP servers (3 CLI-replaceable)
       Top saving: remove 3 MCP servers → -27,500 tokens (47% overhead reduction)

Verbose mode

User: /context-budget --verbose
Skill: Full report + per-file breakdown showing planner.md (213 lines, 1,840 tokens),
       MCP tool list with per-tool sizes, duplicated rule lines side by side

Pre-expansion check

User: I want to add 5 more MCP servers, do I have room?
Skill: Current overhead 33% → adding 5 servers (~50 tools) would add ~25,000 tokens → pushes to 45% overhead
       Recommendation: remove 2 CLI-replaceable servers first to stay under 40%

Best Practices

  • Token estimation: use words × 1.3 for prose, chars / 4 for code-heavy files
  • MCP is the biggest lever: each tool schema costs ~500 tokens; a 30-tool server costs more than all your skills combined
  • Agent descriptions are loaded always: even if the agent is never invoked, its description field is present in every Task tool context
  • Verbose mode for debugging: use when you need to pinpoint the exact files driving overhead, not for regular audits
  • Audit after changes: run after adding any agent, skill, or MCP server to catch creep early

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-07 14:15 安全 安全

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腾讯云安全 (Sanbu)

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