Predict NCM codes from product descriptions
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NCM DEMO is a text analysis tool designed to predict NCM codes from product descriptions. It leverages advanced AI technology to automate the classification process, making it easier for users to determine the correct customs codes for their products. This tool is particularly useful for businesses involved in international trade, as it helps streamline the customs declaration process, reduce errors, and improve efficiency.
• NCM Code Prediction: Automatically predicts NCM codes based on product descriptions. • HS Code Mapping: Provides mappings to Harmonized System (HS) codes for international compatibility. • Real-Time Analysis: Processes text inputs and generates results instantly. • User-Friendly Interface: Designed for easy input and quick retrieval of results. • Multi-Language Support: Accepts product descriptions in multiple languages. • Customizable Thresholds: Allows users to set confidence thresholds for predictions.
What is an NCM code?
An NCM code is a customs classification code used in Brazil to identify products for import and export purposes. It stands for Nomenclatura Comum do Mercosul (Common Nomenclature of Mercosur).
What information is required for accurate NCM code prediction?
Provide a detailed and specific product description, including key characteristics, materials, and intended use. This ensures the AI can accurately map the product to the correct NCM code.
Can NCM DEMO handle multiple NCM codes for a single product?
Yes, NCM DEMO can generate multiple potential codes with confidence scores, allowing users to select the most appropriate one based on their specific product and context.