Enterprise Search Accelerator

Your Search Ranks Keywords. Ours Understands Intent.

Product Relevance Optimizer uses AI to rank products by what customers mean, not what they type — delivering 10-20% conversion lift without manual tuning.

Connect your catalog in under an hour. See intent-aware results on your own data. No credit card required.

Fashion Retailer: 15% Conversion Lift | 60+ Implementations | Elastic Innovation Award 2023 | 24-Hour Response SLA

Search That Fails Your Customers

Intent Lost in Keywords

Customers searching "comfortable shoes for standing all day" get results ranked by keyword frequency, not intent. They scroll. They leave. They buy somewhere else.

Manual Tuning Cannot Scale

Your merchandising team manually tunes relevance for the top 500 queries. Your catalog has 50,000 products and millions of unique query combinations. The other 99% of queries run on stale keyword matching.

Testing Takes Longer Than Learning

You run A/B tests on search relevance but spend more time configuring experiments than analyzing results. By the time you have data, the catalog has changed.

Most AI search tools expand keywords into synonyms. Product Relevance Optimizer interprets intent — it understands that "wireless earbuds for running" and "wireless earbuds for office calls" require different rankings, not different keywords.

How Product Relevance Optimizer Works

01

Connect Your Data

Ingest your product catalog, user behavior signals (clicks, add-to-cart, purchases), and search query data into Elasticsearch.

Connects via Elasticsearch dense vector search (kNN).
02

LLM Interprets Intent

Each search query is interpreted semantically. The model understands what the customer means, not just the words they typed.

ELSER for semantic query encoding. LLM integration supports OpenAI, Anthropic, and open-source models.
03

Dynamic Relevance Scoring

Relevance weights computed per query in real time. Products ranked by how well they match the customer's actual intent — not static keyword rules.

Elasticsearch Learning to Rank (LTR) extended with LLM-generated features.
04

Measure and Improve

Built-in A/B test framework measures conversion lift with statistical significance. User behavior feedback continuously sharpens the model.

Statistical significance testing built in. Kibana reporting dashboards.
Flow diagram showing search query processed through LLM intent interpretation layer, Elasticsearch relevance scoring, and resulting in ranked product grid with intent-match scores and A/B test comparison

Six Capabilities That Change Search

LLM Intent Understanding

Goes beyond keyword matching. Understands that "wireless earbuds for running" and "wireless earbuds for office calls" require different rankings — and delivers them.

Dynamic Relevance Scoring

Relevance weights computed per query in real time. No static boost rules that go stale when your catalog changes.

User Behavior Feedback Loop

Click-through, add-to-cart, and purchase signals continuously train the relevance model. Search gets smarter with every interaction.

A/B Test Framework

Built-in experiment infrastructure with statistical significance testing. See the conversion lift before full rollout. No external testing tools required.

Merchandising Override Layer

Business rules and manual overrides preserved. AI relevance is the default; your merchandising team controls exceptions for specific products, categories, or promotions.

Long-Tail Query Coverage

Every query gets intent-appropriate results. Not just the top 1,000 queries your merchandising team has time to tune — every one of the millions your customers actually search.

Your Deployment, Your Way

Not SaaS. Not drop-ship. Every deployment includes engineering services.

Start with Free Trial

Connect your catalog. See intent-aware results on your own data. Upgrade to production when you're ready.

Start Free Trial

Expert-Deployed Implementation

Our Elasticsearch engineers implement, tune, and validate relevance for your catalog. Custom integration with your existing search infrastructure.

Schedule 15-Minute Demo

The Business Impact

15%
Search conversion lift — Fashion Retailer case study
10-20%
Target search-driven revenue increase
Zero
Manual relevance tuning for long-tail queries
Current
  • Merchandising team manually tunes 500 queries
  • 99% of queries use static keyword ranking
  • Long-tail conversion: poor
After Product Relevance Optimizer
  • LLM handles all queries — head and long-tail
  • Conversion lift across the full catalog
  • Merchandising team focuses on strategy

Part of the Enterprise Search Stack

Product Relevance Optimizer sits within SquareShift's Enterprise Search accelerator portfolio. It pairs with Ticket Knowledge Base for organizations running both product search and support search. Works within the AI Search Pilot engagement for e-commerce relevance use cases. Integrates with SquareShift Atlas to monitor search quality and detect relevance degradation in production.

Customer Testimonial

"We stopped manually tuning relevance rules and our conversion improved. The AI finds what customers actually want."

— VP Product, Fashion E-commerce
15%
Search Conversion Lift
60+
Implementations

Frequently Asked Questions

No. It extends your Elasticsearch implementation with AI-powered relevance scoring. Your existing indices, catalog data, and search infrastructure remain in place. This is an enhancement layer, not a migration.
The framework assigns users to control (existing relevance) and treatment (AI-powered relevance) groups, tracks conversion metrics per group, and reports statistical significance. You see the conversion lift before committing to full rollout.
Yes. The merchandising override layer gives business teams control over specific products, categories, or promotions. AI relevance is the default; human overrides apply where business logic demands it.
LLM intent understanding works from catalog semantics — product descriptions, attributes, categories. New products are searchable immediately. No training period required for new items.
Available as SaaS subscription or implementation services. Contact us for custom pricing based on your catalog size and query volume.

See Intent-Aware Search on Your Data

Connect your catalog. Measure the conversion lift. Decide with data.

schedule 24-Hour Response SLA. Demo scheduled within 72 hours.
Schedule 15-Minute Demo