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← Back to Lily AI Overview

Lily AI Pricing & Plans 2026

Complete pricing guide for Lily AI. Compare all plans, analyze costs, and find the perfect tier for your needs.

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Still deciding? Read our full verdict on whether Lily AI is worth it →

💎1 Paid Plans
⚡No Setup Fees

Choose Your Plan

Enterprise (Custom)

Contact sales

mo

  • ✓Full customer-centric attribution across all product categories with unlimited SKU processing and enrichment for the contracted catalog scope.
  • ✓Computer vision and NLP-based attribute generation covering visual, textual, and trend-derived product characteristics across the full supported taxonomy.
  • ✓Integration with onsite search, SEO, and advertising channels including Google Shopping, Performance Max, and retail media network feed outputs.
  • ✓Taxonomy mapping, validation, and implementation support with dedicated customer success management and technical onboarding resources.
  • ✓Performance reporting tied to traffic, conversion, and revenue metrics with attribution dashboards linking enriched attributes to measurable business outcomes.
Contact Sales →

Pricing sourced from Lily AI · Last verified March 2026

Is Lily AI Worth It?

✅ Why Choose Lily AI

  • • Delivers measurable, retailer-reported traffic and conversion lifts, with customers citing 20-40% organic traffic increases and 5-9% conversion rate improvements across product categories.
  • • Purpose-built taxonomy for fashion, apparel, home goods, and beauty categories with thousands of consumer-centric attribute values that far exceed standard catalog taxonomies.
  • • Augments rather than replaces existing search, PIM, and ecommerce platforms, functioning as an application layer that integrates with current technology investments.
  • • Computer vision + NLP combination can derive rich product attributes from images alone, reducing dependency on manual product description writing and merchandising effort.
  • • Enriched attributes flow through both organic and paid channels simultaneously, improving onsite search, SEO, Google Shopping, Performance Max, and retail media in a unified workflow.
  • • Continuously updated trend and query signals keep product attributes aligned with evolving consumer search language, seasonal trends, and emerging style terminology.

⚠️ Consider This

  • • Enterprise-only pricing model excludes small and mid-size retailers who could benefit from attribute enrichment but cannot meet minimum contract thresholds.
  • • Platform effectiveness heavily depends on existing catalog data quality; incomplete or inconsistent product images and descriptions reduce enrichment accuracy.
  • • Limited industry focus means retailers in electronics, grocery, automotive, or other non-fashion/home/beauty verticals cannot leverage the platform's specialized taxonomy.
  • • Implementation requires dedicated resources for API integration, taxonomy mapping, and stakeholder alignment across search, merchandising, and marketing teams.
  • • Performance optimization timeline of 4-8 weeks post-launch means retailers should not expect immediate results and need patience during the model calibration period.

What Users Say About Lily AI

👍 What Users Love

  • ✓Delivers measurable, retailer-reported traffic and conversion lifts, with customers citing 20-40% organic traffic increases and 5-9% conversion rate improvements across product categories.
  • ✓Purpose-built taxonomy for fashion, apparel, home goods, and beauty categories with thousands of consumer-centric attribute values that far exceed standard catalog taxonomies.
  • ✓Augments rather than replaces existing search, PIM, and ecommerce platforms, functioning as an application layer that integrates with current technology investments.
  • ✓Computer vision + NLP combination can derive rich product attributes from images alone, reducing dependency on manual product description writing and merchandising effort.
  • ✓Enriched attributes flow through both organic and paid channels simultaneously, improving onsite search, SEO, Google Shopping, Performance Max, and retail media in a unified workflow.
  • ✓Continuously updated trend and query signals keep product attributes aligned with evolving consumer search language, seasonal trends, and emerging style terminology.

👎 Common Concerns

  • ⚠Enterprise-only pricing model excludes small and mid-size retailers who could benefit from attribute enrichment but cannot meet minimum contract thresholds.
  • ⚠Platform effectiveness heavily depends on existing catalog data quality; incomplete or inconsistent product images and descriptions reduce enrichment accuracy.
  • ⚠Limited industry focus means retailers in electronics, grocery, automotive, or other non-fashion/home/beauty verticals cannot leverage the platform's specialized taxonomy.
  • ⚠Implementation requires dedicated resources for API integration, taxonomy mapping, and stakeholder alignment across search, merchandising, and marketing teams.
  • ⚠Performance optimization timeline of 4-8 weeks post-launch means retailers should not expect immediate results and need patience during the model calibration period.
  • ⚠Custom pricing model lacks transparency, making it difficult for prospective buyers to benchmark costs or build accurate business cases without engaging the sales team directly.

Pricing FAQ

How does Lily AI improve product discovery for retailers?

Lily AI uses AI models trained on millions of consumer search queries and product images to generate rich, consumer-centric product attributes. These attributes align product listings with the language shoppers actually use, improving relevance in onsite search, organic SEO, Google Shopping feeds, and recommendation engines. By bridging the gap between internal merchandising terminology and consumer vocabulary, Lily AI ensures products surface for the queries most likely to convert.

What results can I expect from implementing Lily AI?

Retailers typically see incremental organic traffic increases of 20-40%, conversion rate improvements of 5-9%, and measurable lifts in Google Shopping and Performance Max campaign performance within 60-90 days of full deployment. Results vary based on catalog size, existing content quality, and the breadth of channels receiving enriched attributes. Lily AI provides performance reporting tied to traffic, conversion, and revenue metrics so teams can quantify ROI.

Does Lily AI work with my existing ecommerce platform and search provider?

Yes, Lily AI's Application Layer architecture is designed to integrate with existing ecommerce technology stacks rather than replace them. The platform connects with major search providers, PIM systems, content management platforms, and advertising channels through APIs and pre-built connectors. Retailers can layer Lily AI's attribute enrichment onto their current infrastructure without migrating away from existing tools.

What industries and product categories does Lily AI support?

Lily AI specializes in fashion, apparel, home goods, furniture, and beauty retail categories. The platform's taxonomy and computer vision models are purpose-built for these verticals, with thousands of category-specific attribute values covering silhouette, pattern, texture, material, color, style, occasion, and other dimensions relevant to how consumers search for these products. The platform does not currently support non-retail verticals such as electronics, grocery, or automotive.

How does Lily AI handle trending search terms and evolving consumer language?

Lily AI continuously monitors millions of consumer search queries, social signals, and emerging style terminology to keep its attribute models current. The platform identifies trending language patterns—such as new style descriptors, seasonal terms, or viral product characteristics—and incorporates them into product attribute enrichment. This ensures that product listings remain aligned with how consumers are actively searching, rather than relying on static taxonomies that become outdated as language evolves.

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More about Lily AI

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