Sistema multiagente para validación de pedidos de materia prima basado en un modelo visión-lenguaje

Autores/as

DOI:

https://doi.org/10.24054/rcta.v2i48.4320

Palabras clave:

modelo Deepseek OCR, sistema multiagente, verificación de documentos, pedidos, materia prima, modelo de visión a lenguaje

Resumen

En este documento se presentan los resultados de la integración del modelo Deepseek OCR mediante un modelo de visión a lenguaje y un sistema multi agente con el objetivo de desarrollar un sistema automático de validación de pedidos, el cual opera al interpretar y comparar documentos referentes a un pedido de materia prima como son la factura, la orden de compra y la remisión, integrado a una interfaz web para la carga y procesamiento de los documentos y visualización de resultados. Permitiendo obtener métricas de similitud y completitud del sistema conjunto para facilitar el análisis de múltiples documentos y encontrar inconsistencias en los mismos, en el momento de la recepción y gestión de un pedido. Para la validación se realizaron 35 pruebas usando información real de una empresa dedicada a la fabricación de productos de aseo obteniendo una ejecución exitosa del flujo de interpretación y comparación de información en el 82,353% de los casos.

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Publicado

2026-07-06

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