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Model Card

Model Documentation, Data Sheet
Un documento estandarizado que describe el uso previsto de un modelo de machine learning, sus características de rendimiento, datos de entrenamiento, limitaciones y consideraciones éticas. Introducidas por Mitchell et al. (2019), las model cards buscan aumentar la transparencia y ayudar a usuarios a tomar decisiones informadas sobre si un modelo es apropiado para su caso de uso.

Por qué importa

Las model cards son las etiquetas nutricionales de la IA. Sin ellas, estás usando un modelo a ciegas — no sabes en qué data fue entrenado, en qué rinde bien y mal, o qué grupos podría desfavorecer. Mientras la regulación IA aumenta (el EU AI Act exige documentación), las model cards pasan de mejor práctica a requisito legal.

Deep Dive

A model card typically includes: model details (architecture, version, date), intended use (what the model is designed for and what it shouldn't be used for), training data (description of the training dataset, including any known biases), performance metrics (broken down by relevant subgroups), limitations (known failure modes, edge cases), and ethical considerations (potential harms, mitigation strategies).

In Practice

Hugging Face popularized model cards by requiring them for all models on their Hub. Quality varies widely — some are detailed technical documents, others are perfunctory placeholders. The best model cards include per-group performance breakdowns (does the model work equally well for different languages, demographics, or domains?), concrete examples of failure cases, and honest assessments of limitations rather than marketing language.

Data Cards and System Cards

The concept extends beyond models: data cards document datasets (collection methodology, annotation process, known biases), and system cards document entire AI systems (model + post-processing + guardrails + deployment context). Anthropic publishes system cards for Claude releases. These broader documents capture information that model cards alone miss — a model might be safe in isolation but dangerous when deployed with certain tool-use capabilities or without content filters.

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