Extract, tag, and normalize product attributes with precision using AI-powered multimodal analysis
From fabric type in fashion to technical specs in electronics every industry has unique attributes
Categories, brands, and retailers define and categorize attributes differently
Product details like material type, dimensions, or certifications are often absent or inconsistently labeled
Product descriptions and images often contain conflicting or incomplete information disrupting accurate attribute extraction
Product attributes vary by industry, from ingredients in grocery to screen size in electronics. Our AI-driven solution accurately extracts and standardizes these attributes at scale.
Align brand-specific terms with industry standards using AI-powered contextual understanding. From size normalization to variant mapping, our solution ensures clean, structured data for better insights.
Unlock deeper insights with AI-driven semantic analysis. Our LLMs extract key attributes, resolve ambiguities, and map products accurately—no matter how they’re described.
Accurate attribute-based product matching enables precise benchmarking and market positioning.
Automated, scalable attribute tagging reduces manual effort and ensures accuracy and consistency.
Structured attribute data helps identify gaps, track competitor offerings, and refine product strategies.
Detecting certification marks, logos, and counterfeit indicators help safeguard brand integrity.
Accurate attribute extraction ensures that key product details—like size, color, flavor, quantity, and specifications—are consistently and correctly captured across channels. This forms the backbone of reliable product matching, powering competitive benchmarking, price tracking, assortment analysis, and content optimization. Without clean and consistent attributes, comparisons across marketplaces become unreliable, leading to poor search relevance, inconsistent customer experiences, and lost conversions.
DataWeave uses large language model (LLM)-based normalization and AI-driven rules to standardize product attributes across platforms. It intelligently maps synonyms (e.g., “XL” vs. “Extra Large”), resolves brand-specific naming conventions, and aligns variations in units, pack sizes, and descriptors. This ensures consistent, structured data—essential for accurate comparison, content optimization, and analytics across diverse retailer ecosystems.
DataWeave’s multimodal AI combines the power of both text and image analysis to enhance attribute tagging and normalization. By processing product descriptions, titles, and images, our AI ensures that product attributes are accurately extracted, standardized, and aligned across different retailer sites. This approach ensures consistent and reliable product data, improving product matching, content accuracy, and overall eCommerce performance across various platforms.
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