— Surface 09 · Catalog enrichment + information architecture

The day Google's
Merchant Center feed
grows up.

Google rolled out six conversational attributes for AI-ready product feeds in 2026 — they are the minimum a grocer needs to be discoverable on AI Mode in Search. Delectable's PIM + IA modules deliver all six, plus thirty-six more, in the schema Vertex Retail Search and Gemini agents need. Every Tier-2 grocer with a Merchant Center feed needs this work done. Today, it doesn't get done.

↗ Google's conversational-attributes spec ← Briefing room
— Three Google motions, one Delectable workstream

A 4-week catalog enrichment accelerates time-to-value
across Search, Cloud, and Ads — simultaneously.

The same enriched catalog feeds three Google products. Each one wins when the data is richer. Delectable's PIM + IA pipeline is the one place a grocer pays for the work — and three Google teams collect the dividend.

Motion 01 · Google Search + AI Mode

Merchant Center, agent-ready.

The six new attributes (question_and_answer, related_product, item_group_title, variant_option, document_link, popularity_rank) are how Google's AI Mode parses product nuance. Delectable populates all six from grocer-specific food intelligence, not generic LLM guesses.

Motion 02 · Vertex AI Retail Search

Search relevance, grounded.

Vertex Retail Search is already live in grocer projects (we run it ourselves — asset inventory shows retail.googleapis.com/Catalog: default_catalog). The deeper the attribute graph, the higher the relevance — Delectable's 42-dim enrichment is the substrate Vertex's ranker needs to outperform Algolia / Constructor / Bloomreach.

Motion 03 · Google Ads + retail media

CPG targetability unlocked.

CPG retail-media dollars flow to whoever has the richest attribute graph — that's why Amazon Ads dominates today. Delectable enrichment makes a grocer's catalog targetable on dietary, lifestyle, occasion, cultural relevance. Google Ad Manager wins back the attribution loop. $69B TAM.

— Proof · Giant Eagle Q1 2026

From eight attributes per SKU to forty-two, in four weeks.

The Giant Eagle case study, walked end-to-end. Here we go past the headline numbers into the shape of the enrichment — the dimensional structure that makes a Gemini agent actually able to answer "is this gluten-free, kosher, and under $4?" without hallucinating.

— Before · Generic merchant catalog

Eight attributes per SKU.

title
Organic Whole Wheat Bread
brand
Giant Eagle Brand
price
$3.99
size
24 oz
category
Bakery / Bread
image_url
https://...
availability
in_stock
gtin
30041500000094
↓ Gemini cannot ground "gluten-free?" against this. SKU hallucination risk: high.
— After · Delectable-enriched

Forty-two attributes per SKU.

title, brand, price, size, category, image, availability, gtin
+ 8 baseline (above)
dietary_flags
["whole_grain","contains_gluten","vegan","kosher_dairy"]
allergen_graph
{wheat: yes, soy: trace, dairy: no, nuts: facility_warning}
ingredient_lineage
[wheat_flour, water, yeast, salt, honey, vital_wheat_gluten]
nutrition_tier
{sodium: low, fiber: high, added_sugar: minimal}
cultural_relevance
["everyday_staple","sandwich_base","mediterranean_pairing"]
occasion_tags
["weekday_lunch","breakfast","kids_lunchbox"]
question_and_answer
[{q:"Is this gluten-free?",a:"No — contains wheat flour."}, ...12 more]
related_product
[{rel:"alternative",id:"GF-1234","gluten-free version"}, ...]
+ 27 additional dimensions...
↑ Gemini grounds in this. Zero hallucination. 490ms response.
SKUs enriched
70k
Every product, every store. Refresh runs nightly on BigQuery + Vertex.
Data points
2.94M
From 560k baseline — a 5.25× grounding multiplier for every Gemini call.
Time to delivery
4 wk
Catalog ingestion → enrichment → BigQuery → Merchant Center feed.
Year-1 ROI
460%
Projected on $1M Phase 1. +18% basket lift drives the math.
— Coverage · Google Merchant Center conversational attributes

Delectable ships all six Google attributes — and reads them out of our ontology, not by hand.

Below is the official Google spec (six rows) mapped to Delectable's enrichment outputs. Every row is automated from the PIM ingestion pipeline + IA food/health/cultural ontologies — no manual taxonomy work on the grocer's side.

Google attribute What Google asks for How Delectable derives it Auto
question_and_answer
FAQ pairs for AI Mode
Product-specific Q&A pairs that conversational agents can quote verbatim. IA module generates 8–15 Q&A per SKU from the Food HyperGraph (dietary, allergen, prep, storage, substitution). LLM rewrite at end-of-pipeline for tone.
related_product
Alternatives, accessories, required parts
Substitution and complement graph keyed by GTIN / SKU / MPN. PIM relationship engine: dietary substitutions, recipe complements, basket co-occurrence from BigQuery purchase data — all materialized to Google's relationship_type:id schema.
item_group_title
Human-readable variant family
Parent name for a group of variants (e.g. flavor / size). PIM canonicalization: variant rollup keyed on shared ingredient + brand. Auto-generated title from product-line vocabulary.
variant_option
name/value variant axes
Structured variant axes — flavor, size, pack count, organic certification. IA dimensional axes inferred from product titles + descriptions. 11 standard variant axes for grocery (flavor, size, count, organic, dietary, regional, …).
document_link
Manuals, prep guides, ingredient PDFs
URLs to supplementary PDFs — manuals, allergen statements, cooking guides. For grocery: nutrition labels (FDA-mandated), allergen sheets, prep videos. Delectable hosts in GCS, generates Merchant-compatible URLs automatically.
popularity_rank
% ranking within inventory
Percentage-based performance metric relative to inventory. Computed in BigQuery from loyalty purchase data (Eagle Eye / Inmar / Stuzo) joined to Shopper HyperGraph. Refreshed nightly. Decay-weighted, store-localized.
Source · Google Merchant Center · Conversational attributes · Last reviewed May 2026.
— Beyond the spec · Information architecture

The other thirty-six dimensions Google doesn't ask for — but Gemini needs.

Google's six attributes are the bare minimum for AI Mode discovery. To run an agentic basket — "Friday family dinner, gluten-free, $80 budget" — Gemini needs the deeper dimensional structure of the IA module. Forty-two attributes per SKU is the working number for grounded reasoning. Below: where the other 36 come from.

12

Food science dimensions

Ingredient lineage, flavor compounds, glycemic index, ferment markers, processing tier (UPF / minimally-processed / whole-food). From the Food HyperGraph.

9

Dietary & medical vectors

Gluten-free, vegan, ketogenic, low-FODMAP, kosher (parve / dairy / meat), halal, allergen avoidance graph (top-9 + sesame), pregnancy-safe, child-suitable.

7

Cultural & occasion tags

Regional cuisine relevance, holiday baskets (Diwali, Lunar New Year, Eid, Easter, Passover), meal occasion (breakfast / weeknight / weekend / picnic), gifting suitability.

5

Shopper-mission signals

Weekly-stockup / quick-trip / fill-in / specialty / gift mission propensity. Computed from BigQuery transaction patterns joined to Shopper HyperGraph.

3

Sustainability & ethics

Fair-trade certifications, regenerative-ag tier, packaging-recyclability score. Increasingly demanded by Gen-Z grocers and a Google ESG narrative lever.

Tenant-specific overlays

The grocer's loyalty program tier, private-label hierarchy, store-specific availability, cultural-DMA targeting (H Mart, 99 Ranch, Sigona's, Lulu, etc.). Configured, not coded.

— The pipeline · How a Tier-2 grocer gets to 42 attributes in 4 weeks

Five-stage pipeline. Every stage runs on Google Cloud.

Same architecture Giant Eagle uses today. Listed on Cloud Marketplace, IAM-integrated, consumed on the grocer's existing Google contract.

01
Ingest
Raw catalog from grocer's PIM (Salsify, Akeneo, Stibo, or custom SAP). Lands in BigQuery enrichment_warehouse dataset. 70k SKUs in ~6 hours.
02
PIM enrichment
Cloud Run jobs match each SKU to the Food HyperGraph (142k canonical ingredients). Dimensional axes inferred. Variant rollups computed. ~50k API calls to Gemini Pro for edge cases.
03
IA ontology
Dietary, allergen, cultural, occasion vectors applied from the Information Architecture taxonomy. 27 cross-cutting taxonomies maintained by Delectable IA team. Reviewed by food scientist on every release.
04
Publish
Output written to BigQuery retail_analytics + Vertex Retail Search catalog + Merchant Center conversational-attributes feed (GCS bucket the bundle provisions). Diff-mode: only changed rows write.
05
Operate
Nightly refresh on Cloud Scheduler. New SKUs through ingestion within 24 hours. Quality dashboard in Looker on the grocer's existing BI stack. Drift alerts to Slack / PagerDuty.

Highlighted stages are Delectable IP — the moat Gemini cannot build alone. The rest is Google-native plumbing the grocer's existing team can read.

↪ Full integration map: The complete topology — every grocer-system connector, every protocol, every API surface — is walked through in the Delectable integration flows interactive. Includes Azure / AWS / Databricks bridges for grocers whose existing data stack isn't on GCP.

— End-to-end · Catalog → Merchant Center → AI Mode

From grocer SKU to "AI Mode on Search" in one pipeline.

The point where Delectable's enrichment lands inside Google's existing systems. Same pipeline, three Google consumers downstream.

Source · Grocer

Grocer PIM

Salsify / Akeneo / SAP. 70k SKUs, 8 attrs each. Bare-minimum feed today.

Workstream · Delectable

PIM + IA enrichment

4-week sprint. 8 → 42 attrs. Food + Shopper HyperGraphs applied. Runs on Vertex + BigQuery.

Sink · Google

Three Google products

Merchant Center (AI Mode) · Vertex Retail Search (grocer.com) · Google Ad Manager (retail media).

Google Search · AI Mode
Grocer becomes discoverable on conversational queries: "Where can I buy gluten-free family dinner ingredients near 15213?" The right Giant Eagle SKUs surface — grounded, not hallucinated.
Vertex AI Retail Search
On the grocer's own site. 42-dim catalog drives semantic search ranking — Vertex outperforms Algolia / Constructor on a Delectable-enriched corpus. Already live in delectable-cloud-stage.
Google Ad Manager · retail media
CPGs target shoppers on dietary, occasion, mission. Closed-loop attribution back to grocer purchase. The $69B retail-media TAM Joseph names on deck slide 4.
— Why this matters to the FSR

Time-to-value collapses from 18 months to 4 weeks.

The fastest path to Vertex AI consumption inside a grocer's GCP project isn't a custom build. It's a packaged enrichment workstream the FSR can quote next quarter.

— Without Delectable

18 months. Maybe.

Grocer hires a data-engineering team. Builds a food ontology from scratch (failing once first). Negotiates with Salsify / Akeneo. Trains an LLM. Validates with food scientists. Q3 2027 if nothing slips. Most Tier-2 grocers never finish.

— With Delectable

4 weeks. Production.

Phase 0 SOW signed Monday. Catalog ingestion live by Friday. 42-attr enrichment running on the grocer's GCP project by Week 4. Merchant Center feed flipping over to conversational attributes by Week 6.

— Co-sell motion

$0 land cost for Google.

The grocer pays Delectable for the enrichment workstream. Vertex + BigQuery + Gemini consumption lights up on the grocer's existing Google Cloud contract. FSR books the consumption number; Delectable books the workstream margin.

— The ask, on this surface

Pick one Tier-2 grocer. We'll enrich their catalog
and light up all three Google products in a quarter.

A discovery workshop with Delectable's PIM + IA team, a 4-week Phase 0 enrichment sprint, and a Vertex Retail Search + Merchant Center go-live by end of quarter. Joint case study at Google Cloud Next 2027. Same playbook scales to ten grocers next year.

→ The co-sell playbook ↗ See the GCP stack live