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Fundamentos

Artificial Intelligence

AI, Machine Intelligence
El amplio campo de construir máquinas capaces de realizar tareas que típicamente requieren inteligencia humana — entender lenguaje, reconocer imágenes, tomar decisiones, resolver problemas. La IA va desde sistemas estrechos que destacan en una tarea específica (filtros antispam, motores de ajedrez) hasta la meta aspiracional de una inteligencia general capaz de manejar cualquier tarea intelectual que un humano pueda hacer.

Por qué importa

La IA es el paraguas que cubre todo lo demás en este wiki — machine learning, deep learning, LLMs, visión por computadora, robótica. Entender que «IA» es un espectro que va desde sistemas basados en reglas simples hasta modelos de lenguaje de frontera te ayuda a evaluar afirmaciones, cortar a través del hype, y entender lo que los sistemas actuales realmente son: pattern matchers extraordinariamente capaces, no máquinas pensantes.

Deep Dive

The term "Artificial Intelligence" was coined at the Dartmouth Conference in 1956, and the field has gone through multiple cycles of hype and disappointment ("AI winters") since then. The current wave, driven by deep learning and massive compute, began around 2012 with AlexNet's breakthrough in image recognition and accelerated dramatically with the Transformer architecture in 2017 and ChatGPT's public launch in 2022.

Narrow AI vs. General AI

Everything that exists today is narrow AI (also called "weak AI") — systems designed for specific tasks. Your spam filter is AI. Your voice assistant is AI. Claude is AI. But none of them can do everything a human can. Artificial General Intelligence (AGI) — a system with human-level capability across all domains — remains a research goal, not a product. The timeline debate ranges from "a few years" to "never," and the honest answer is that nobody knows.

The ML Subset

Most modern AI is machine learning: instead of programming explicit rules, you provide data and let the system learn patterns. Deep learning (neural networks with many layers) is a subset of ML. LLMs are a subset of deep learning. This nesting matters because not all AI is ML (expert systems use hand-coded rules), and not all ML is deep learning (random forests, SVMs, and logistic regression are still widely used for tabular data where they often outperform neural networks).

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