llmbooster

by danlct27

A 4-step thinking framework to boost LLM output quality. Enforces structured reasoning (Plan → Draft → Self-Critique → Refine) to improve low-end LLM responses. No LLM endpoint needed - LLM follows the framework itself. Triggered by "detailed analysis", "in-depth analysis", "use booster", or /booster command.

3.7kAI 与智能体未扫描2026年3月23日

安装

claude skill add --url github.com/openclaw/skills/tree/main/skills/danlct27/llmbooster

文档

LLMBooster Skill

A Thinking Framework, Not an Automation Tool

LLMBooster is a 4-step thinking framework that improves LLM output quality through structured reasoning. No LLM endpoint needed - the LLM follows the framework itself.

Core Philosophy

Problem with low-end LLMs: Jump to conclusions, miss details, lack self-review.

Booster solution: Enforce structured thinking process.

code
Plan → Draft → Self-Critique → Refine

Trigger Conditions

  • User says "use booster", "booster", or "/booster"
  • User requests: "detailed analysis", "in-depth analysis", "help me analyze"
  • User requests: "improve quality", "detailed analysis"
  • User asks for evaluation, comparison, or decision support
  • User requests code review or technical documentation
  • User asks complex questions (lengthy tasks, multi-step problems)

How It Works

LLM executes the framework itself, no Python calls needed:

  1. LLM reads prompts/plan.md → Create structured plan
  2. LLM reads prompts/draft.md → Write complete draft
  3. LLM reads prompts/self_critique.md → Review issues
  4. LLM reads prompts/refine.md → Polish final output

Command Handling

When user enters /booster command, execute:

bash
cd ~/.openclaw/workspace/skills/llmbooster && python3 -c "
from config_loader import ConfigLoader
from state_manager import SkillStateManager
from cli_handler import CLICommandHandler

loader = ConfigLoader()
config = loader.load('config.schema.json')
state_mgr = SkillStateManager(config)
cli = CLICommandHandler(state_mgr)
result = cli.handle('/booster status')
print(result.message)
"

CLI Commands

CommandDescription
/booster enableEnable LLMBooster
/booster disableDisable LLMBooster
/booster statusShow current status
/booster statsShow usage statistics
/booster depth <1-4>Set thinking depth
/booster helpShow help

Thinking Depth

DepthStepsQualitySpeedUse Case
1Plan★★☆☆FastestQuick analysis, brainstorm
2Plan → Draft★★★☆FastGeneral tasks, simple Q&A
3+ Self-Critique★★★★MediumCode review, technical docs
4Full pipeline★★★★★SlowestImportant docs, complex analysis

Visual Feedback

When executing, Booster displays:

code
🚀 **Booster Pipeline Started**: Analyzing task...
────────────────────────────────────────
🚀 Booster [█░░░░] Step 1/4: **Plan**
✅ Plan completed (2.3s)

🚀 Booster [██░░░] Step 2/4: **Draft**
✅ Draft completed (5.1s)

🚀 Booster [███░░] Step 3/4: **Self-Critique**
✅ Self-Critique completed (1.8s)

🚀 Booster [████] Step 4/4: **Refine**
✅ Refine completed (3.2s)
────────────────────────────────────────
✅ **Booster Complete** - 4 steps, 12.4s total

Prompt Templates

All templates are in prompts/ directory:

  • plan.md - Step 1: Create structured plan
  • draft.md - Step 2: Write complete draft
  • self_critique.md - Step 3: Review and list improvements
  • refine.md - Step 4: Apply improvements

Why It Works

Low-End LLM ProblemBooster Solution
Jumps to conclusionsPlan step forces structured thinking
Misses detailsDraft step requires complete coverage
No self-reviewSelf-Critique step finds issues
Rough outputRefine step polishes final result

Usage Statistics

bash
/booster stats
# 📊 **Booster Statistics**
# ───────────────────────
# Status: enabled
# Thinking Depth: 4
# Tasks Processed: 5
# Last Used: 2026-03-22T09:30:00

Files

FilePurpose
SKILL.mdSkill definition + trigger conditions
README.mdDocumentation
booster.pyCore module + helpers
cli_handler.pyCLI command processing
state_manager.pyState + statistics
stream_handler.pyVisual feedback
config_loader.pyConfig loading
prompts/*.mdStep prompt templates

相关 Skills

Claude接口

by anthropics

Universal
热门

面向接入 Claude API、Anthropic SDK 或 Agent SDK 的开发场景,自动识别项目语言并给出对应示例与默认配置,快速搭建 LLM 应用。

想把Claude能力接进应用或智能体,用claude-api上手快、兼容Anthropic与Agent SDK,集成路径清晰又省心

AI 与智能体
未扫描109.6k

提示工程专家

by alirezarezvani

Universal
热门

覆盖Prompt优化、Few-shot设计、结构化输出、RAG评测与Agent工作流编排,适合分析token成本、评估LLM输出质量,并搭建可落地的AI智能体系统。

把提示优化、LLM评测到RAG与智能体设计串成一套方法,适合想系统提升AI开发效率的人。

AI 与智能体
未扫描9.0k

智能体流程设计

by alirezarezvani

Universal
热门

面向生产级多 Agent 编排,梳理顺序、并行、分层、事件驱动、共识五种工作流设计,覆盖 handoff、状态管理、容错重试、上下文预算与成本优化,适合搭建复杂 AI 协作系统。

帮你把多智能体流程设计、编排和自动化统一起来,复杂工作流也能更稳地落地,适合追求强控制力的团队。

AI 与智能体
未扫描9.0k

相关 MCP 服务

顺序思维

编辑精选

by Anthropic

热门

Sequential Thinking 是让 AI 通过动态思维链解决复杂问题的参考服务器。

这个服务器展示了如何让 Claude 像人类一样逐步推理,适合开发者学习 MCP 的思维链实现。但注意它只是个参考示例,别指望直接用在生产环境里。

AI 与智能体
82.9k

知识图谱记忆

编辑精选

by Anthropic

热门

Memory 是一个基于本地知识图谱的持久化记忆系统,让 AI 记住长期上下文。

帮 AI 和智能体补上“记不住”的短板,用本地知识图谱沉淀长期上下文,连续对话更聪明,数据也更可控。

AI 与智能体
82.9k

PraisonAI

编辑精选

by mervinpraison

热门

PraisonAI 是一个支持自反思和多 LLM 的低代码 AI 智能体框架。

如果你需要快速搭建一个能 24/7 运行的 AI 智能体团队来处理复杂任务(比如自动研究或代码生成),PraisonAI 的低代码设计和多平台集成(如 Telegram)让它上手极快。但作为非官方项目,它的生态成熟度可能不如 LangChain 等主流框架,适合愿意尝鲜的开发者。

AI 与智能体
6.4k

评论