metadata
license: cc-by-nc-4.0
tags:
- TAAC2026
- recommendation
TAAC2026 Demo Dataset (1000 Samples)
⚠️Update[2026.04.10]: This demo dataset has been updated to newest version with the following changes:
- The parquet file is now a flat column layout, with all features as top-level columns.
- Add a sequence feature, rename feature names and update some features. Participants should refer to the updated
demo_1000.parquetand thisREADME.mdfor the latest schema and data details.
A sample dataset containing 1000 user-item interaction records for the TAAC2026 competition. This dataset uses a flat column layout — all features are stored as individual top-level columns instead of nested structs/arrays.
Dataset Overview
| Property | Value |
|---|---|
| File | demo_1000.parquet |
| Rows | 1,000 |
| Columns | 120 |
| File Size | ~39 MB |
Columns
The 120 columns fall into 6 categories:
| Category | Count | Data Type | Description |
|---|---|---|---|
| ID & Label | 5 | int64 / int32 |
Core identifiers, label, and timestamp |
| User Int Features | 46 | int64 / list<int64> |
Integer-valued user features (scalar or array) |
| User Dense Features | 10 | list<float> |
Float-array user features |
| Item Int Features | 14 | int64 / list<int64> |
Integer-valued item features (scalar or array) |
| Domain Sequence Features | 45 | list<int64> |
Behavioral sequence features from 4 domains |
Detailed Column Schema
ID & Label Columns (5 columns)
All these 5 columns have no null value.
| Column | Data Type |
|---|---|
user_id |
int64 |
item_id |
int64 |
label_type |
int32 |
label_time |
int64 |
timestamp |
int64 |
Note: When
user_int_feats_{fid}anduser_dense_feats_{fid}share the same{fid}, they are aligned and jointly describe the same entity or signal.
User Int Features (46 columns)
user_int_feats_{1,3,4,48-59,82,86,92-109}: Scalarint64, total 35 columns.user_int_feats_{15, 60, 62-66, 80, 89-91}: Arraylist<int64>, total 11 columns.
User Dense Features (10 columns)
user_dense_feats_{61-66, 87, 89-91}: Arraylist<float>, total 10 columns.
Item Int Features (14 columns)
item_int_feats_{5-10, 12-13, 16, 81, 83-85}: Scalarint64, total 13 columns.item_int_feats_{11}: Arraylist<int64>, total 1 column.
Domain Sequence Features (45 columns)
list<int64> sequences from 4 behavioral domains:
domain_a_seq_{38-46}: 9 columnsdomain_b_seq_{67-79, 88}: 14 columnsdomain_c_seq_{27-37, 47}: 12 columnsdomain_d_seq_{17-26}: 10 columns
Usage
import pyarrow.parquet as pq
import pandas as pd
# Read the parquet file
df = pd.read_parquet("demo_1000.parquet")
print(df.shape) # (1000, 120)
print(df.columns) # ['user_id', 'item_id', 'label_type', ...]
With Hugging Face datasets:
from datasets import load_dataset
ds = load_dataset("TAAC2026/data_sample_1000")
print(ds)