AI Search

    Search that understands
    behavioral intent.

    Semantic vector search fused with behavioral personalization. Every query returns results ranked by individual purchase probability — not just keyword relevance.

    <15ms

    Query response time (p95)

    99.2%

    Search relevance score

    50M+

    Indexed items per deployment

    +165%

    Search conversion uplift vs. platform-native search

    Interactive Showcase

    See AI Search in action

    Explore each search capability — from semantic understanding to visual product discovery.

    Semantic Search

    Transformer-based query understanding that matches intent — not just keywords. Queries and catalog items share the same 768-dimensional embedding space for conceptual relevance scoring.

    768-dim query-item embedding alignment
    Cross-language semantic matching
    Synonym and misspelling tolerance
    Click-through relevance learning
    "comfortable running shoes"
    Running Shoes Pro X
    0.97
    Exact
    Trail Runner Elite
    0.89
    Semantic
    Sport Socks Bundle
    0.72
    Related
    Running Shorts Lite
    0.68
    Semantic
    Shoe Care Kit
    0.54
    Cross-sell
    NLP: synonym expansion·Personalized reranking·3.2ms

    From query to conversion

    Natural language decomposed into structured signals. Results re-ranked by individual behavioral affinity.

    Query Decomposition

    red dress under $50 for summer
    reddresssummer<$50
    intent: product_search
    entity.color: red
    entity.category: dress
    filter.price: <50
    filter.season: summer

    Re-Ranked Results

    1Floral Midi Dress

    relevance

    personal

    2Linen Wrap Dress

    relevance

    personal

    3Cotton A-Line Dress

    relevance

    personal

    4Silk Slip Dress

    relevance

    personal

    Five layers of search intelligence

    From semantic understanding to personalized re-ranking — each layer adds precision to every query.

    Semantic Vector Search

    Queries are embedded into the same behavioral vector space as catalog items using BaseModel.ai representations. Semantic matching retrieves conceptually relevant results — even when exact keyword matches don't exist.

    768-dimensional query-item embedding alignment
    Handles misspellings, synonyms, and intent variations
    Cross-language semantic matching support
    Learned relevance from click-through behavior

    Personalized Re-Ranking

    Search results are re-ranked in real time based on each user's behavioral profile. Two users searching the same query see different result orderings — optimized for their individual purchase probability.

    Per-user affinity scores injected into ranking
    Session-aware context (device, time, referrer)
    Behavioral embedding similarity between user and items
    Configurable personalization intensity per query type

    Dynamic Faceting & Filtering

    Facets are generated dynamically from the result set — not pre-computed. Filter counts update in real time as users narrow their search, ensuring zero dead-end filter combinations.

    Real-time facet computation from result sets
    Zero dead-end guarantee on all filter combinations
    Hierarchical category navigation with counts
    Custom attribute facets from any catalog field

    Natural Language Query Understanding

    An NLU layer parses complex natural language queries into structured intent, entity, and filter components. 'Red dress under $50 for summer' is decomposed into color, category, price, and seasonality signals.

    Intent classification across 12 query types
    Named entity extraction (brand, color, size, price)
    Query expansion with behavioral synonyms
    Spell correction and phonetic matching

    Merchandising Controls

    Business rules overlay algorithmic ranking — pin items, boost brands, bury out-of-stock, and apply promotional rules. Visual merchandising tools let non-technical teams control search results without code.

    Pin, boost, bury, and hide rules per query pattern
    Promotional slot reservation in result grids
    Margin-weighted ranking for profitability optimization
    Scheduled merchandising rules for campaigns

    Query execution pipeline

    Every query traverses five stages — from raw text to personalized, merchandised results — in under 15 milliseconds.

    01

    Query Processing

    Tokenization, spell correction, NLU parsing, intent classification

    02

    Retrieval

    Hybrid BM25 + vector search with configurable fusion weights

    03

    Scoring

    Multi-signal relevance scoring (textual, behavioral, business rules)

    04

    Re-Ranking

    Personalized re-ranking using real-time behavioral embeddings

    05

    Post-Processing

    Faceting, deduplication, diversity injection, result decoration

    Proof in production

    Proven in head-to-head A/B tests

    Live-traffic A/B tests on client e-commerce platforms. Baselines anonymized per client agreement; uplifts are relative to each baseline.

    01

    vs. Native search of a leading commerce platform

    Full-funnel A/B test on live traffic; sessions tracked across engagement, conversion, and revenue contribution.

    KPI (search sessions)Platform nativeSynerise AI SearchUplift
    Click-through rate3.42%11.41%+233%
    Conversion rate0.61%1.62%+165%
    Share of revenue from search12.85%

    Platform-native search caps engagement and conversion. Behavioral AI ranking compounds both — more clicks, more orders, and a meaningful share of total revenue flowing through search.

    02

    vs. Best-of-breed SaaS search

    Three-way A/B test running ~2 weeks — platform native search, SaaS vendor, and Synerise AI Search — with traffic split across all three variants.

    KPI (search sessions)SaaS vendorSynerise AI SearchUplift
    Zero results rate~1.8%~1.0%−44%
    Core revenueundisclosedundisclosed+5.0%
    Ads revenueundisclosedundisclosed+4.6%
    Total revenueundisclosedundisclosed+4.99%
    Ordersundisclosedundisclosed+5.36%

    Against a dedicated SaaS search vendor, Synerise delivered measurably better outcomes across every disclosed KPI — lower zero results rate, higher revenue, more orders.

    03

    vs. In-house tuned ElasticSearch

    15-day A/B test with equal traffic split between tuned ElasticSearch (variant A) and Synerise AI Search (variant B).

    KPI (search sessions)Tuned ElasticSearchSynerise AI SearchUplift
    Zero results rate~2.7%~0.9%−66% (3× fewer)
    CTR36.1%36.4%+0.8%
    Add-to-cart rate (30 min)28.0%27.5%−1.8%
    Sales conversion rate (30 min)9.6%9.5%−1.0%
    Core revenueundisclosedundisclosed+4.8%
    Ads revenueundisclosedundisclosed+1.0%
    Total revenueundisclosedundisclosed+4.2%
    Revenue per sessionundisclosedundisclosed+3.7%
    Avg. order valueundisclosedundisclosed+4.4%

    A well-tuned in-house ElasticSearch is a serious baseline — late-funnel conversion rates were essentially at parity. But behavioral AI ranking unlocked upside the tuned system couldn't: 3× fewer dead-end queries, larger baskets, higher revenue per session. The gap isn't in the known queries — it's in the long tail.

    04

    vs. Global market leader (e-commerce search)

    A/B test on a fashion marketplace across multiple markets measuring purchase conversion in 30-min, 2h and 24h windows after search.

    KPI (search sessions)Market leaderSynerise AI SearchUplift
    Conversion rate (30 min)5.18%6.32%+22%
    Conversion rate (24 h)8.16%11.12%+36%
    CTR≈ parity≈ parity≈ 0
    Zero results rate≈ parity≈ parity≈ 0

    Parity on relevance metrics, decisive wins on conversion — and a +36% relative uplift in the best market (conversion in 24h window). Outcome: full replacement of the incumbent engine across all tested markets.

    “Match on relevance. Win on conversion.”

    Beyond keyword search

    Autocomplete, visual search, voice search, and federated search — all powered by the same behavioral intelligence layer.

    Autocomplete

    Predictive suggestions with behavioral popularity weighting and typo tolerance

    +42% search completion

    Visual Search

    Upload an image and find visually similar products using CNN feature extraction

    +18% discovery rate

    Voice Search

    Speech-to-text with NLU parsing for mobile and IoT search interfaces

    12 languages supported

    Federated Search

    Search across products, content, FAQs, and categories in a single unified query

    <20ms across 4 indices

    Search Analytics

    Zero-result queries, click-through rates, and conversion funnels per query cluster

    Real-time dashboards

    A/B Testing

    Compare ranking algorithms, relevance models, and merchandising strategies with statistical rigor

    Bayesian significance

    Why search matters

    Search punches above its weight

    Aggregate performance across Synerise AI Search deployments. Quality metrics computed at the query level; engagement and revenue at the search-session level.

    KPIAverageBest observed
    Zero results rate~4.8%~0.9%
    Click-through rate~22.5%~26.7%
    Add-to-cart rate (30 min)~9.2%~11.7%
    Purchase conversion (30 min)~2.8%~3.5%
    Share of sessions using search~9.6%~10.5%
    Share of revenue from search~16.7%~29.7%

    ~10% of sessions generate ~17% of revenue — and up to ~30% in the best-performing deployments. Improvements to search compound disproportionately on the bottom line.

    Measure what you ship

    Analytics for AI Search, Listings & Rankings

    From out-of-the-box KPIs to fully custom reports — measure search performance and the effectiveness of any use case you build on top of it.

    Predefined statistics, ready via API

    A standard library of search, listings, and rankings KPIs is computed continuously and exposed through the Analytics API. Pull them into your BI stack, internal dashboards, or LLM tools without building a tracking pipeline.

    • Total searches & sessions with search
    • Click-through rate on search results
    • Conversion rate from search (orders & revenue)
    • Revenue and AOV attributed to search sessions
    View Analytics API docs

    Custom metrics, reports & dashboards

    Define your own conversion events, funnels, and KPIs over arbitrary time windows. Build dashboards and scheduled reports that match how your team measures search — not a fixed template.

    • Arbitrary conversion definitions (orders, signups, content engagement)
    • Custom time windows — 30 min, 24 h, 7 d, or any range you need
    • Cohort, segment, and device breakdowns out of the box
    • Reusable dashboards with drill-down to query and session level

    Effectiveness of any search, listings & rankings use case

    Every scenario built on top of AI Search, Listings, or Rankings — autocomplete tweaks, merchandising rules, personalization intensities, A/B tests — can be measured end-to-end against the conversion definition that matters to you.

    • Per-scenario uplift on conversion, revenue, and AOV
    • A/B test results with statistical significance
    • Side-by-side comparison of ranking and merchandising variants
    • Attribution across search, listings, and rankings touchpoints

    Statistics are computed continuously and exposed via the same API surface as the rest of AI Search — easy to feed into your BI stack, your warehouse, or an LLM agent that reports on search health on demand.

    See full statistics reference

    Search that converts.

    See how behavioral AI search delivers up to +165% conversion uplift over platform-native search — with sub-15ms response times across 50M+ item catalogs.

    We use cookies

    We use cookies and similar technologies to analyze traffic, personalize content, and serve targeted ads. By clicking "Accept", you consent to the use of cookies. Cookie Policy