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Fundamentos

Knowledge Cutoff

Training Data Cutoff, Knowledge Date
La fecha después de la cual un modelo no tiene datos de entrenamiento, significando que carece de conocimiento de eventos, descubrimientos o cambios que ocurrieron después de esa fecha. Si el cutoff de un modelo es abril 2024, no sabe nada de lo que pasó en mayo 2024 o después — nuevos productos, eventos noticiosos, papers científicos o hechos actualizados.

Por qué importa

El knowledge cutoff es la fuente más común de frustración con asistentes IA. «¿Por qué no sabe sobre X?» Porque X pasó después del entrenamiento. Esta limitación impulsa la adopción de RAG (dando al modelo acceso a información actual) y tool use (dejando al modelo buscar en la web). Entender el cutoff te ayuda a saber cuándo confiar en el modelo y cuándo verificar.

Deep Dive

The cutoff exists because training data must be collected, cleaned, and processed before training begins — a process that takes weeks to months. A model released in 2025 might have a training data cutoff of late 2024. The gap between cutoff and release represents processing time. Some providers do additional "knowledge updates" through fine-tuning on more recent data, but these are typically narrow (news events, product launches) rather than comprehensive.

Not a Hard Wall

The cutoff isn't perfectly clean. Training data often includes content published over a range of dates, and web scrapes may include pages last updated at various times. A model might know some things from after its "official" cutoff because of overlapping data collection. It might also have gaps in knowledge from before the cutoff if certain sources weren't included. The cutoff date is a rough guide, not a precise boundary.

Working Around It

Three approaches address the cutoff limitation: RAG (retrieve current documents and include them in the prompt), web search tools (let the model search for current information), and regular model updates (retraining or fine-tuning on recent data). In practice, most production applications use RAG or tool use rather than relying solely on the model's internal knowledge, even for information within the training period, because the model's parametric knowledge can be imprecise even for things it "knows."

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