brand_euipo_id string | brand_name string | alias string | language string | source string |
|---|---|---|---|---|
000000373 | Reebok | Mercury Sports | ca | wikidata |
000000373 | Reebok | Reebok International | en | wikidata |
000000373 | Reebok | Reebok International Limited | nl | wikidata |
000000373 | Reebok | Rbk | pl | wikidata |
000000373 | Reebok | Reebok | pl | wikidata |
000000373 | Reebok | Рибок | sr | wikidata |
000000373 | Reebok | Рібок | uk | wikidata |
000000513 | Intel | Интел | bg | wikidata |
000000513 | Intel | Intel Corporation | el | wikidata |
000000513 | Intel | INTC | en | wikidata |
000000513 | Intel | Intel | en | wikidata |
000000513 | Intel | Intel Corp. | en | wikidata |
000000513 | Intel | N M Electronics | en | wikidata |
000000513 | Intel | Інтел | uk | wikidata |
000000753 | Apple | ябълка | bg | wikidata |
000000753 | Apple | mançana | ca | wikidata |
000000753 | Apple | maçana | ca | wikidata |
000000753 | Apple | poma | ca | wikidata |
000000753 | Apple | jablka | cs | wikidata |
000000753 | Apple | jablko | cs | wikidata |
000000753 | Apple | æble | da | wikidata |
000000753 | Apple | Apfel | de | wikidata |
000000753 | Apple | μήλο | el | wikidata |
000000753 | Apple | apple | en | wikidata |
000000753 | Apple | apple fruit | en | wikidata |
000000753 | Apple | manzana | es | wikidata |
000000753 | Apple | manzanas | es | wikidata |
000000753 | Apple | õun | et | wikidata |
000000753 | Apple | sagar | eu | wikidata |
000000753 | Apple | sagarra | eu | wikidata |
000000753 | Apple | sagarrak | eu | wikidata |
000000753 | Apple | omena | fi | wikidata |
000000753 | Apple | pomme | fr | wikidata |
000000753 | Apple | úll | ga | wikidata |
000000753 | Apple | jabuka | hr | wikidata |
000000753 | Apple | alma | hu | wikidata |
000000753 | Apple | epli | is | wikidata |
000000753 | Apple | mela | it | wikidata |
000000753 | Apple | pomo | it | wikidata |
000000753 | Apple | Apel | lb | wikidata |
000000753 | Apple | Malus | lb | wikidata |
000000753 | Apple | obuolys | lt | wikidata |
000000753 | Apple | āboli | lv | wikidata |
000000753 | Apple | ābols | lv | wikidata |
000000753 | Apple | tuffieħ | mt | wikidata |
000000753 | Apple | tuffieħa | mt | wikidata |
000000753 | Apple | appel | nl | wikidata |
000000753 | Apple | handappel | nl | wikidata |
000000753 | Apple | stoofappel | nl | wikidata |
000000753 | Apple | jabłko | pl | wikidata |
000000753 | Apple | maçã | pt | wikidata |
000000753 | Apple | maçãs | pt | wikidata |
000000753 | Apple | mere | ro | wikidata |
000000753 | Apple | măr | ro | wikidata |
000000753 | Apple | jablká | sk | wikidata |
000000753 | Apple | jabolko | sl | wikidata |
000000753 | Apple | јабука | sr | wikidata |
000000753 | Apple | äpple | sv | wikidata |
000000753 | Apple | ябко | uk | wikidata |
000000753 | Apple | яблука | uk | wikidata |
000000753 | Apple | яблуко | uk | wikidata |
000010603 | Andis | Andis | ca | wikidata |
000010603 | Andis | Andis (first name) | en | wikidata |
000010603 | Andis | Andis (given name) | en | wikidata |
000010603 | Andis | Andis (voornaam) | nl | wikidata |
000016006 | Condor | Condor | en | wikidata |
000017731 | VIZIO | V Inc. | cs | wikidata |
000017731 | VIZIO | Vizio Electronics | en | wikidata |
000017731 | VIZIO | Vizio TV company | en | wikidata |
000017731 | VIZIO | Vizio | fr | wikidata |
000017731 | VIZIO | Vizio Inc. | uk | wikidata |
000021212 | Hartz | Hartz | ca | wikidata |
000031138 | Huffy | Huffy | en | wikidata |
000031864 | Mr. Coffee | Mr. Coffee | en | wikidata |
000032748 | MAM | Mam | ca | wikidata |
000034231 | Presto | Presto | ca | wikidata |
000036749 | Carhartt | Carhartt | it | wikidata |
000036749 | Carhartt | Carhartt Inc. | pl | wikidata |
000046540 | Bobbi Brown | Bobbi Brown | en | wikidata |
000047126 | Marvel | Marvel | en | wikidata |
000047258 | Avengers | Отмъстителите | bg | wikidata |
000047258 | Avengers | Els Venjadors | ca | wikidata |
000047258 | Avengers | Die Rächer | de | wikidata |
000047258 | Avengers | Εκδικητές | el | wikidata |
000047258 | Avengers | Los Vengadores | es | wikidata |
000047258 | Avengers | The Avengers | es | wikidata |
000047258 | Avengers | Vengadores | es | wikidata |
000047258 | Avengers | Kostajat | fi | wikidata |
000047258 | Avengers | Dark Avengers | fr | wikidata |
000047258 | Avengers | Les Vengeurs | fr | wikidata |
000047258 | Avengers | Les Vengeurs de Maria Hill | fr | wikidata |
000047258 | Avengers | Vengeurs | fr | wikidata |
000047258 | Avengers | Vengeurs de la Côte Ouest | fr | wikidata |
000047258 | Avengers | West Coast Avengers | fr | wikidata |
000047258 | Avengers | Osvetnici | hr | wikidata |
000047258 | Avengers | Bosszú Angyalai | hu | wikidata |
000047258 | Avengers | I Vendicatori | it | wikidata |
000047258 | Avengers | Vendicatori | it | wikidata |
000047258 | Avengers | Atriebēji | lv | wikidata |
000047258 | Avengers | De Vergelders | nl | wikidata |
Product Query Benchmark
A quality-filtered product search benchmark derived from the Amazon ESCI dataset, enriched with brand metadata from EUIPO (EU trademark registry) and Wikidata. Secondly, queries from ESCII are extended with variants involving origins, exclusions, certifications.
Only Tier-1 brands are included — brands that have a confirmed EUIPO trademark registration,
giving a stable, verifiable brand identity (brand_euipo_id) for each product.
Files
| File | Rows | Description |
|---|---|---|
products.parquet |
~260k | Products with ≥1 Exact relevance judgment, with brand enrichment |
examples.parquet |
~504k | Query-product relevance pairs (E/S/C/I), query text inlined |
brand_aliases.parquet |
~21k | Multilingual brand name variants (30 European languages, Wikidata-sourced) |
brand_examples.parquet |
~269k | Query-brand relevance pairs derived by aggregating product labels |
Schema
products.parquet
| Column | Type | Description |
|---|---|---|
product_id |
string | ESCI product_id (matches original Amazon ESCI dataset) |
product_title |
string | English product title |
product_description |
string | Long prose description (NULL for ~64% of products) |
product_bullet_point |
string | Feature bullet points (NULL for ~51% of products) |
product_brand |
string | Raw brand string from ESCI |
brand_euipo_id |
string | Stable EU trademark ID — use as brand key |
brand_country |
string | ISO 3166-1 alpha-2 country code (NULL for ~74% of brands) |
brand_sector |
string | Coarse sector derived from EUIPO Nice classes (see table below) |
euipo_nice_classes |
string | JSON array of EUIPO Nice classification numbers, e.g. [3, 5] |
examples.parquet
| Column | Type | Description |
|---|---|---|
query_id |
string | Stable MD5-derived hex ID for grouping all pairs from one query |
query |
string | Raw search query text |
product_id |
string | Joins to products.product_id. Either solely implied or directly referenced |
esci_label |
string | Exact / Substitute / Complement / Irrelevant |
product_brand |
string | Raw brand string in search |
origin |
string | Country of origin in search |
certification |
string | Certification referenced in search |
exclusions |
string array | Exclusions referenced in search |
split |
string | train / test (ESCI's original split) |
brand_aliases.parquet
| Column | Type | Description |
|---|---|---|
brand_euipo_id |
string | Joins to products.brand_euipo_id |
brand_name |
string | Canonical brand name |
alias |
string | Alternate name (translated, abbreviated, legal variant, etc.) |
language |
string | ISO 639-1 language code; NULL = language-agnostic |
source |
string | wikidata / euipo / manual |
brand_examples.parquet
Brand-level relevance derived by aggregating product labels. For each (query, brand) pair,
brand_label is the highest-priority label among all products from that brand judged for
that query: Exact > Substitute > Complement > Irrelevant.
| Column | Type | Description |
|---|---|---|
query_id |
string | Joins to examples.query_id |
query |
string | Raw search query text |
brand_euipo_id |
string | Joins to products.brand_euipo_id |
brand_label |
string | Exact / Substitute / Complement / Irrelevant |
brand_origin |
string | eu / non-eu / unknown — derived from brand_country; ~26% of brands have country data |
split |
string | train / test (inherited from query's examples) |
Sector Distribution
Brand sector is derived from EUIPO Nice Classification goods classes (1–34 take priority over service classes 35–45).
| Sector | Brands | Products |
|---|---|---|
| electronics | 3,138 | 85,890 |
| clothing | 1,204 | 37,992 |
| bags_luggage | 548 | 20,481 |
| home_living | 1,448 | 27,821 |
| sports_toys | 475 | 9,793 |
| personal_care | 1,817 | 46,875 |
| office_media | 656 | 15,935 |
| food | 594 | 12,076 |
| beverages | 166 | 2,747 |
| hardware | 1,527 | 36,321 |
| jewelry | 380 | 9,837 |
| medical | 326 | 7,538 |
| vehicles | 335 | 6,096 |
| other | 545 | 12,408 |
| TOTAL | 13,159 | 331,810 |
Usage
from datasets import load_dataset
# Pin to a specific version for reproducible training runs
ds = load_dataset("thepian/product-query-benchmark", revision="v1.0.0")
products = ds["products"].to_pandas()
examples = ds["examples"].to_pandas()
brand_aliases = ds["brand_aliases"].to_pandas()
Or load individual files:
import pandas as pd
products = pd.read_parquet("hf://datasets/thepian/product-query-benchmark/products.parquet")
examples = pd.read_parquet("hf://datasets/thepian/product-query-benchmark/examples.parquet")
Versioning
This dataset uses semantic versioning via git tags. Always load with revision= for
reproducible results — the default (HEAD) may change between runs.
| Version | Date | Notes |
|---|---|---|
| v1.0.0 | 2026-04-24 | Initial release: 13,159 EUIPO-verified brands, US locale |
Schema stability: brand_country coverage is ~26% in v1 (Wikidata-sourced only).
Product-level category inference and NACE codes are planned for v2.0.0.
License
- Relevance judgments and product metadata: CC BY-NC 4.0 (inherited from Amazon ESCI)
- Brand enrichment (EUIPO, Wikidata): open data, compatible with CC BY-NC 4.0
Commercial use requires a separate license from Amazon for the underlying ESCI data.
Citation
If you use this dataset, please cite the original Amazon ESCI paper:
@article{reddy2022shopping,
title={Shopping Queries Dataset: A Large-Scale {ESCI} Benchmark for Improving Product Search},
author={Reddy, Chandan K and Halverson, Llana and Deshpande, Ohad and others},
journal={arXiv preprint arXiv:2206.06588},
year={2022}
}
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