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Agents & Tools

Reflection

An agent evaluating its own output and revising it based on critique.

Published 2026-06-12

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Agent

Glossary

An AI agent is a system that uses a language model to perceive its environment, make decisions, and take actions to reach a goal. Unlike a simple chatbot that only responds to prompts, an agent can loop: observe state, plan next steps, call tools, review results, and adapt until the task is done. Agents are built from several components. A planner breaks a goal into subtasks. A memory module stores conversation history and working context. A tool interface lets the agent call APIs, run code, query databases, or interact with other systems. A feedback loop checks whether each step moved the agent closer to the goal. Simple agents might answer a question by searching the web. Complex agents can write and test code, file pull requests, or coordinate with other agents. The more autonomy an agent has, the more important safety guardrails become, such as human approval for destructive actions and clear logging for every decision.

ChatGPT Year-in-Review Wrapped Generator

Prompt

Creates personalized ChatGPT Wrapped summaries similar to Spotify Wrapped. Analyzes your conversation history to generate fun statistics, awards, and insights about how you used ChatGPT throughout the year.

3D Printing Optimizer

Skill

Optimize 3D models for additive manufacturing considering orientation, supports, infill, and material properties.

Firecrawl

MCP Server

Official Firecrawl MCP Server - Adds powerful web scraping and search to Cursor, Claude and any other LLM clients.

Multi-Agent System

Glossary

A system where multiple agents collaborate, compete, or delegate tasks to achieve complex goals.