[Webinar] From Search to Chat: Unlocking Product Discovery in the Age of AI & Conversational Commerce

Commerce is shifting from single-site browsing to commerce anywhere: buying at the moment of inspiration via TV, voice assistants, influencers, or image snapping. At the same time, generative AI has brought search back to the center: shoppers now ask conversational questions across engines and assistants (e.g., ChatGPT), expecting context-aware results.

This creates two mandates for retailers:

  1. Modernize on-site search to understand intent, not just keywords.
  2. Make products discoverable off-site where shoppers initiate AI-driven research.

AI Product Discovery illustration with a women holding a mobile

The Evolution: From Keywords to Understanding


Search has moved far beyond keyword matching and backlink games. With semantic models and LLMs, engines understand content and shopper intent. For merchants, this means:

  • Optimize on-site search for conversational, intent-rich queries.
  • Ensure product data and content are structured and complete so AI services can parse and surface it.

Vector Search: Meeting Shoppers’ Intent (Not Just Their Keywords)


Vector search recognizes concepts, not just exact terms. If a shopper types “party dress,” vector search can retrieve relevant products even if “party dress” isn’t a literal tag, positioning results between related ideas like cocktail and elegant dress.

Why it matters:

  • Handles conceptual and long-tail queries.
  • Works alongside traditional keyword search; results can be re-ranked for relevance.
  • Reduces manual synonym management thanks to semantic understanding.

Prefixbox highlights rolling out AI vector search and measuring real impact, citing a retailer case with >45% revenue increase and >28% AOV uplift.

If you’re on Salesforce Commerce Cloud, Prefixbox is available via AppExchange, enabling this capability on your store.

Be Discoverable Where Shoppers Start (GPT & Friends)


Shoppers increasingly research and buy through conversational assistants. Example from the webinar: a user asks for hiking pants and receives specific product models plus direct links to brand sites—all within one chat.

How to surface your products in conversational engines:

  • Complete, rich product data: size, color, brand, category, attributes, plus correctly tagged images.
  • Structured content: clear schema and consistent information architecture.
  • Natural-language product descriptions: write like you’re answering a question; think FAQs, buying guides, product comparisons, and reviews.
  • Classic SEO still counts: titles, headings, meta descriptions, internal linking, performance, and overall brand/domain reputation.

Reality check: GPT isn’t brand-exclusive; it can (and will) recommend competitors. Your content quality, structure, and authority determine whether you’re included.

Conversational Commerce On Your Site: Agents That Do the Work


Shoppers crave conversational experiences. If you don’t provide them, they’ll have them elsewhere. The transcript introduces Salesforce Agentforce as a way to bring this experience into your channels.

What Agentforce enables:

  • Starts with a conversation (text/voice), forms a plan, and performs actions.
  • Uses retrieval augmented generation (RAG) to safely access your data (catalog, order status, customer info).
  • Personal Shopper Agent (announced at Dreamforce; GA in February per transcript) to:
    • Answer questions, make product recommendations,
    • Add to cart, assist checkout, and handle order tracking (capabilities expand over time).
  • Works across your website and channels like WhatsApp/iMessage.

Practical Roadmap: Test, Measure, Operationalize


  1. Test & Learn: Try multiple AI use cases and UI patterns (chat UI vs. rich grid after a long query).
  2. Measure: Track what boosts engagement and conversion for your audience.
  3. Operationalize:
    • Get the right product data in the right structure.
    • Feed search/agents with real behavioral data to improve recommendations.
    • Keep content conversational and comprehensive (FAQs, comparisons, guides, reviews).

FAQ


Q: Does vector search replace keyword search?
A: No. They work together. Vector search handles conceptual queries; keyword handles exact matches. Re-ranking brings the best results up first.

Q: How do I get featured in GPT-style recommendations?
A: Provide complete, structured product data, conversational descriptions, and authoritative content (reviews, guides, FAQs). Maintain strong technical SEO and brand trust signals.

Q: What does an AI agent actually do on my site?
A: It converses with shoppers, retrieves data, recommends products, and (as capabilities expand) helps with cart, checkout, and support—all within a trusted, guardrailed system.

Conclusion


Product discovery now spans on-site semantic search and off-site conversational engines. Retailers who pair vector + keyword search, invest in structured, conversational content, and deploy on-site AI agents will win the next era of discovery—from search to chat.

For more details, watch the full recording of the webinar: