GEO > SEO: Why Large Catalog Brands Must Adapt to Amazon's AI-Powered Search Now

Why traditional keyword and, more importantly, image optimization is failing on Amazon, and what successful sellers are doing instead

Amazon has changed the game forever. While most sellers are still stuffing keywords into titles and backend fields, the platform has quietly shifted from basic keyword matching to prioritizing customer experience signals and behavioral data.

The old playbook is dead. This algorithmic shift is paradigm-shifting in how sellers must approach product listing optimization, with tools heavily focused on keyword research needing to adapt to this new world of AI-assisted search algorithms.

Welcome to the era of Generative-Enhanced Optimization (GEO) where understanding shopper intent matters more than search volume, and where behavioral signals trump keyword density.

Solution: Answering questions before the customers ask them.

 

The $2.3 Trillion Problem: Why Keywords Alone Don't Work Anymore

Here's what's happening behind the scenes: Amazon is ramping up its deployment of AI search experiences that turn natural language queries into product recommendations, with features like "Interests AI" that prompt users to enter conversational search queries.

The brutal reality for large catalog brands:

  • Your 800+ SKU home goods collection sounds identical to shoppers
  • Generic "comforter set queen size" titles get buried when customers search for "Christmas bedding for in-laws."
  • Amazon's algorithm now gives the highest weight to buyer search queries, with items that are 100% relevant getting better rankings even if they're not the most profitable

Real example: A mattress protector optimized for "mattress protector waterproof" ranks poorly for parents searching "bedwetting solution toddler." Same product, different intent, completely different visibility.

Inside Amazon's AI Transformation: What's Really Changed

Amazon increasingly relies on AI to generate and refine product titles, bullet points, and descriptions using minimal input from sellers, streamlining listing creation with data-driven optimization that appeals directly to customer preferences.

The new ranking reality:

  1. Behavioral prediction over keyword matching - Amazon tracks browsing patterns, add-to-cart sessions, and return reasons to determine which products solve shoppers' problems
  2. Context-aware search results - The algorithm understands that "cooling" + "bedding" relates to temperature regulation, not air conditioning
  3. Intent-based product surfacing - External signals and seller authority now influence rankings, with A10 rewarding products that attract external traffic

What GEO Actually Means (And Why It's Not Just Buzzword Marketing)

Generative-Enhanced Optimization represents a fundamental shift from product-centric to shopper-centric content strategy.

Traditional SEO approach:

  • List product features and specifications
  • Target high-volume keywords
  • Focus on technical accuracy

GEO approach:

  • Solve specific customer problems
  • Align with behavioral search patterns
  • Create contextual, scenario-based content
  • Ramp up ImageGen because the bots are the only ones reading your bullets and description nowadays

The data speaks: Industry analysis shows that search has been shifting toward AI-powered platforms, with the foundation of the $80+ billion SEO industry being questioned as traditional methods lose ground to LLM platforms.

The Large Catalog Crisis: Why Scale Amplifies the Problem

Managing hundreds or thousands of SKUs creates unique vulnerabilities:

Visibility dilution: When your products compete against each other for similar keywords, Amazon's algorithm gets confused about which to surface.

Template trap: Copy-paste descriptions across product families make your entire catalog look generic to AI systems that prioritize unique, relevant content.

ImageGen: How do you manage, create, and answer product-specific questions via images and videos across multiple variations, especially they they are more unique than different sizes or colors?

Intent misalignment: A single search term like "kitchen storage" could apply to 50+ of your products, but each serves different use cases (small apartment, family home, professional kitchen).

The 5-Step GEO Implementation Framework

Step 1: Intent-Map Your Entire Catalog

Stop thinking about what your products are. Start thinking about what problems they solve.

Traditional grouping: "Storage containers → Food storage → Plastic containers"

GEO clustering via Image Quadrants:

  • "Meal prep containers for busy professionals"
  • "Pantry organization for small kitchens"
  • "Leftover storage for families"
  • "Lunch containers for kids"

Action: Audit your top 20% of SKUs and create intent-based clusters. Use Amazon's Brand Analytics to identify the actual search terms driving traffic.

Find ways to illustrate more use cases per image without diluting your messaging.

Step 2: Visual Question-Answer Architecture

Here's the reality: shoppers aren't reading your copy. They're flipping through images, asking specific questions that determine purchase decisions.

The visual shopping journey:

  • Main image: "Does this look like and include exactly what I need?"
  • Image 2: "Does this solve my specific problem?"
  • Image 3: "What does it look like in use?"
  • Image 4: "How big is it compared to what I know?"
  • Image 5: "What comes in the box?"
  • A+ Content: "Does this work for my exact situation?"

Critical shift: Your images must answer the questions shoppers have, not just showcase product features.

Framework for image optimization:

  • Question-driven sequencing: Each image answers at least one specific shopper concern
  • Context demonstration: Show the product solving the exact problems the customers are searching for solutions to.
  • Specification visualization: Make technical details instantly clear
  • Use case scenarios: Display different ways the product gets used

Step 3: Visual FAQ Implementation

Amazon's Cosmo and Rufus AI systems scan your images to understand product capabilities and up to 100 words per image. If your images don't visually answer common questions, you become invisible to AI-powered search.

Common visual questions by category:

Automotive:

  • "Does this wheel come with a center cap?"
  • "Will this fit my specific car model?"
  • "What tools do I need for installation? Are they included?"

Beauty/Personal Care:

  • "Is this good for curly hair?"
  • "What's the texture like?"
  • "How many uses will this last for?"

Home & Garden:

  • "Can I store this outside?"
  • "Is it waterproof?"
  • "Will it fade in the sun?"

Action framework:

  1. Audit competitor questions: Analyze your own and competitor reviews to identify repeated questions. Can even use Amazon’s native product opportunity tool for 1P insights.
  2. Create visual answers: Design images that immediately resolve each concern
  3. Test visibility: A/B test and track how  visual and copy changes impact discoverability, Click-through, and Conversion.
  4. A+ Content optimization: Build modules that address the most common "but will it..." questions. Use the Brand Story modules toseparately  showcase your brand.

Step 4: AI-Readable Visual Content

Cosmo and Rufus don't just read text; they analyze your images for context, compatibility, and use cases via up to 100 words per image. Your visual content must be optimized for both human shoppers and AI interpretation.

Image optimization for AI systems:

  • Clear product isolation: Clean backgrounds help AI identify key features
  • Contextual usage shots: Show the product solving specific problems
  • Dimension references: Include size comparisons AI can process, without guessing
  • Feature callouts: Visual annotations that AI can read and index
  • Compatibility displays: Show what works together or what's included

A+ Content for AI discovery:

  • Comparison charts: Visual tables AI can parse for feature matching
  • Installation/usage sequences: Step-by-step visual guides
  • Lifestyle integration: Show how the product fits into daily routines
  • Problem-solution pairs: Visual before/after demonstrations

Step 5: Visual Performance Optimization Loop

Track how visual changes impact AI-driven discovery and shopper engagement.

Weekly visual audits:

  • Monitor which images get the most engagement in Brand Analytics
  • Track if visual updates improve "Frequently Bought Together" placement
  • Test A+ Content modules for question-answering effectiveness
  • Review customer photos to see what details shoppers want to show

Monthly deep dive:

  • Analyze return reasons to identify visual communication gaps
  • Review competitor visual strategies that are gaining traction
  • Update image sequences based on seasonal shopping patterns
  • Test new A+ Content formats for AI discoverability

Key metrics to track:

  • Image click-through rates within listings
  • Time spent on product detail pages
  • Reduction in "will this work for..." customer questions
  • Improvement in AI-driven organic visibility

Real Results: What GEO Delivers

Brands and Marketers are shifting focus to optimizing content for AI-generated summaries and voice search, with traditional SEO tactics evolving to focus on optimizing content for LLMs and multimodal search.

Why it works: When your content matches shopper intent, Amazon's algorithm rewards you with better placement, leading to improved performance metrics that further boost your rankings.

The Competitive Advantage Window Is Closing

Amazon's algorithm becomes more intelligent every single day, detecting unnatural patterns more easily, with sellers who try to game the system risking penalties, de-ranking, or account suspensions.

The opportunity: Most sellers are still operating with 2024 optimization strategies. Those who adopt GEO principles now will capture market share before competitors catch up.

The urgency: Every seller will feel the impact of AI-driven algorithmic changes, but early adopters will benefit while others struggle to adapt.

Your 30-Day GEO Action Plan

Week 1: Intent audit

  • Identify your top revenue-generating SKUs
  • Map current search terms to actual shopper problems
  • Create behavioral personas for each product cluster

Week 2: Visual content audit

  • Identify the top questions customers ask about each product
  • Create image sequences that visually answer these questions
  • Optimize A+ Content to address compatibility and usage concerns
  • Test image variations that show problem-solving scenarios

Week 3: AI-driven testing

  • Launch visual A/B tests focused on question-answering
  • Monitor how image updates affect AI-powered search visibility
  • Track engagement metrics on updated visual content
  • Review if Cosmo/Rufus surface your products for relevant queries

Week 4: Visual systematization

  • Create visual content templates for your product categories
  • Build image sequence standards for consistent question-answering
  • Establish A+ Content frameworks that address common concerns
  • Plan monthly visual optimization cycles based on AI feedback

The Bottom Line: Adapt or Become Invisible

Amazon's shift to AI-powered, behavior-driven search isn't coming; it's here. The system continuously refines suggestions through feedback loops, ensuring customers see the most accurate and informative product descriptions possible.

Brands clinging to keyword-first optimization strategies will find themselves increasingly invisible to shoppers who are finding exactly what they need through your competitors' GEO-optimized listings.

The choice is simple: evolve your approach to match how customers actually search and buy, or watch your visibility erode as Amazon's AI gets smarter at connecting intent-optimized products with ready-to-purchase shoppers.

Your catalog doesn't have to be another casualty of algorithmic evolution. The tools, data, and strategies exist to thrive in this new landscape, but only for sellers who act while the competitive advantage window is still open.

Start with your top SKUs. Apply these GEO principles. Measure the results. Then scale across your entire catalog before your competitors figure out what you're doing.

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About Alden Wonnell

Alden Wonnell is the CEO and co-founder of Adverio, where he leads a team dedicated to helping brands grow sustainably across Amazon, Walmart, and other marketplaces. His journey into eCommerce began with a single private-label product—a better-built selfie stick—that quickly became a best-seller on Amazon. With a background in finance and a track record of advising high-performing brands, Alden has grown Adverio into a full-service agency responsible for driving over $596 million in incremental revenue for more than 400 clients. He’s passionate about turning complexity into clarity and scaling brands with a sharp focus on strategy, data, and customer lifetime value.

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