ImAiFox
ImAiFox
ExploreStacksCategories
Search boosters…
Open Source First·AI-Graded A–F·Updated Hourly·4 Booster Types
ImAiFoxImAiFox

© 2026 ImAiFox · Your AI Superpowers, Curated.

ExploreStacksCategories

Explore AI Boosters

7 boosters for "loops" — AI-graded, open source, ready to install

409 Skills428 Agents500 MCP Servers1031 Prompts
Clear filters
Active:
"loops"
Agent
C

growth-hacker

Growth Hacker is a proactive agent that combines marketing, product, and data analysis to optimize user acquisition and viral loop design. It's essential for product managers, founders, and growth teams seeking rapid scaling strategies.

by sibyllinesoft
apiskill
51
CCCD
Prompt
C

aura — System Prompt

Aura is a system prompt that instructs Claude to write code as an expert Lx compiler interface, enforcing LLM-friendly language rules like exhaustiveness, no loops, and explicit effects. It benefits developers learning or writing Lx code who need consistent, compiler-compatible output from Claude.

by cappallo
allrules
1
CCCDCuWS
Agent

agent-selector

Phase-aware agent adjudication engine for the dev-system pipeline. Scores and selects optimal agents for each phase task, presents candidates with confidence scores for human adjudication, and maintains selection accuracy through feedback loops.

by Smith-Happens
aiagent
CCCD
Agent

agent-selector

Phase-aware agent adjudication engine for multi-phase SDLC pipelines. Scores and selects optimal agents for each phase task, presents candidates with confidence scores for human adjudication, and maintains selection accuracy through feedback loops.

by turbobeest
aiagent
CCCD
MCP Server
C

Loops Mcp Server MCP Server

This MCP server integrates Loops.so email platform capabilities into Claude, enabling developers to programmatically manage contacts, send events, and transactional emails directly from their AI applications. It's ideal for teams building AI-powered workflows that need email automation without leaving their Claude environment.

by robertalv
mcploops
CDCC
Prompt
D

hezm-smartchat — Cursor Rules

This Cursor rule enforces interactive feedback loops by requiring MCP calls during question-asking and request completion, improving user engagement in AI-powered workflows. Developers building conversational AI systems with Cursor will benefit from structured feedback collection.

by traceme
cursorrules
Cu
Prompt
D

gaowei-meeting — Cursor Rules

Cursor Rules for gaowei-meeting that enforces interactive feedback loops via MCP during development sessions, ensuring continuous user input before task completion. Useful for teams wanting structured feedback integration in Cursor IDE workflows.

by traceme
cursorrules
Cu