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Laboratório interativo de aprendizado

Conceitos que você pode arrastar e sentir.

Esqueça as docs de 40 páginas. Cada explicador transforma uma ideia complicada de IA, Claude Code, MCP ou cloud num diagrama animado ao vivo que você arrasta, scruba e quebra — até o conceito clicar em minutos, não em horas.

Kit do lab Ao vivo
60
Explicadores
03
Animações
36
Sliders
Como funciona

Três passos. A ideia gruda.

01

Leia a analogia de 60 segundos

Cada conceito abre com uma história curta e direta. Sem jargão, sem enrolação — só o modelo mental que você precisa.

02

Scrube a animação ao vivo

Aperte play, arraste a timeline ou use as setas. Veja cada passo quadro a quadro até o fluxo fazer sentido.

03

Leve os sliders ao limite

Ajuste cada parâmetro. O diagrama atualiza na hora para você sentir os trade-offs e lembrar dos limites.

Biblioteca completa

Escolha seu próximo conceito

60 itens
Agent loop 3
AI Foundations 2 min de leitura

What Is an AI Model? A Function With Billions of Knobs

An AI model is a giant function from input to output, shaped by training. Tune training steps and learning rate to feel how the function bends to fit data.

/what-is-an-ai-model Testar agora
Crawler graph 3
AI Foundations 2 min de leitura

Tokens, Context Windows, and Why Long Prompts Cost More

Models do not see words — they see tokens. Drag the prompt and output sliders to watch tokens fill the context window and cost climb.

/tokens-context-windows… Testar agora
Agent loop 3
Generative AI 2 min de leitura

Generative AI: From Next-Token Prediction to Real Creation

Generative AI is autoregressive prediction with style. Adjust temperature and top-p to see why the same prompt can sound boring or wildly creative.

/generative-ai-from-pre… Testar agora
Agent loop 3
Generative AI 2 min de leitura

Prompt Engineering Patterns That Actually Work in Production

Five prompt patterns that survive contact with real users. Tune few-shot count, system strictness, and output format to feel the trade-offs.

/prompt-engineering-pat… Testar agora
MCP handshake 3
Retrieval-Augmented Generation 2 min de leitura

How a RAG System Answers a Question, Step by Step

Five stages turn a user question into a grounded answer. Adjust top-k, chunk size, and similarity threshold to see retrieval shape the result.

/how-rag-system-answers… Testar agora
Crawler graph 3
Retrieval-Augmented Generation 2 min de leitura

Embeddings and Vector Search, Without the Math

Embeddings turn meaning into coordinates. Move the dimension, top-k, and metric sliders to see how a vector store finds the nearest neighbours.

/embeddings-and-vector-… Testar agora
Agent loop 3
AI Agents 2 min de leitura

What Makes an AI Agent Different From a Chatbot

A chatbot replies. An agent acts. Tune tool count, max steps, and autonomy to see when an agent shines and when it spirals.

/ai-agent-vs-chatbot Testar agora
Agent loop 3
Agentic Workflows 2 min de leitura

Agentic Workflows: Single Agent vs Multi-Agent Crews

When does adding a second agent help — and when does it just cost more tokens? Tune crew size, parallelism, and supervisor oversight.

/agentic-workflows-sing… Testar agora
Agent loop 3
Reinforcement Learning 2 min de leitura

Reinforcement Learning, From Reward Signal to Smart Policy

RL is just trial, error, and reward — repeated billions of times. Tune learning rate, exploration, and discount to feel how a policy emerges.

/reinforcement-learning… Testar agora
Agent loop 3
Reinforcement Learning 3 min de leitura

RLHF: How AI Models Learn to Be Helpful, Honest, and Harmless

RLHF turns human preferences into a reward model, then uses RL to nudge an LLM toward better answers. Tune preference pairs, KL penalty, and reward quality.

/rlhf-helpful-honest-ha… Testar agora
Agent loop 3
Neural Networks & Deep Learning 2 min de leitura

The Transformer Architecture, Block by Block

Every modern LLM is a stack of identical Transformer blocks. Walk through one block, then see why stacking 32, 64, 96 of them changes everything.

/transformer-architectu… Testar agora
Agent loop 3
Neural Networks & Deep Learning 2 min de leitura

Attention: How Models Decide What Matters

Attention is a soft lookup — every token asks every other token "are you relevant?" and weights the answer. See it move with sliders.

/attention-how-models-d… Testar agora
Grátis · Sem cadastro · Feito para builders

Pare de ler sobre isso. Comece a scrubar.

Travado num conceito de IA, Claude Code ou cloud? Me conte o que não está clicando — entrego um explicador interativo grátis com analogia, animação e sliders, normalmente em uma semana.

Engr Mejba Ahmed

Engr Mejba Ahmed

Claude Code Expert · Online

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