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TAAC2026 Demo Dataset
⚠️ 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 and update some user/item features. Participants should refer to the updated
demo_1000.parquetand this README for the latest schema and data details.
A sample dataset containing 1,000 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 |
| Format | Apache Parquet |
| File Size | ~38.38 MB |
Label Distribution
label_type |
Count | Percentage |
|---|---|---|
| 1 | 876 | 87.6% |
| 2 | 124 | 12.4% |
Column Categories
The 120 columns fall into 6 categories:
| Category | Count | Arrow 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)
| Column | Arrow Type | Nulls | Min | Max | Mean | Unique |
|---|---|---|---|---|---|---|
user_id |
int64 |
0 | 2,727,076 | 12,728,427 | 7,835,799.34 | 1,000 |
item_id |
int64 |
0 | 6,854 | 278,202,253 | 112,417,687.39 | 837 |
label_type |
int32 |
0 | 1 | 2 | 1.124 | 2 |
label_time |
int64 |
0 | 1,772,725,027 | 1,772,725,910 | 1,772,725,503.90 | 553 |
timestamp |
int64 |
0 | 1,772,725,000 | 1,772,725,781 | 1,772,725,275.45 | 501 |
User Int Features (46 columns)
Scalar Columns (int64)
| Column | Nulls | Null% | Min | Max | Mean | Unique |
|---|---|---|---|---|---|---|
user_int_feats_1 |
0 | 0.0% | 1 | 4 | 3.381 | 3 |
user_int_feats_3 |
30 | 3.0% | 9 | 1,839 | 987.557 | 341 |
user_int_feats_4 |
30 | 3.0% | 1 | 986 | 498.813 | 268 |
user_int_feats_48 |
2 | 0.2% | 3 | 99 | 58.006 | 52 |
user_int_feats_49 |
7 | 0.7% | 1 | 2 | 1.582 | 2 |
user_int_feats_50 |
4 | 0.4% | 0 | 1 | 0.998 | 2 |
user_int_feats_51 |
1 | 0.1% | 40 | 150 | 56.157 | 5 |
user_int_feats_52 |
1 | 0.1% | 5 | 174 | 93.856 | 36 |
user_int_feats_53 |
1 | 0.1% | 3 | 557 | 288.542 | 264 |
user_int_feats_54 |
368 | 36.8% | 3 | 2,843 | 1,476.783 | 462 |
user_int_feats_55 |
19 | 1.9% | 8 | 41 | 29.682 | 13 |
user_int_feats_56 |
19 | 1.9% | 1 | 1,434 | 752.658 | 405 |
user_int_feats_57 |
31 | 3.1% | 2 | 250 | 126.588 | 105 |
user_int_feats_58 |
150 | 15.0% | 1 | 2 | 1.699 | 2 |
user_int_feats_59 |
150 | 15.0% | 1 | 14 | 8.371 | 8 |
user_int_feats_82 |
204 | 20.4% | 1 | 23 | 9.097 | 23 |
user_int_feats_86 |
692 | 69.2% | 2 | 245 | 105.474 | 61 |
user_int_feats_92 |
494 | 49.4% | 1 | 2 | 1.500 | 2 |
user_int_feats_93 |
171 | 17.1% | 1 | 37 | 14.667 | 36 |
user_int_feats_94 |
521 | 52.1% | 1 | 6 | 3.770 | 6 |
user_int_feats_95 |
318 | 31.8% | 1 | 3 | 2.758 | 3 |
user_int_feats_96 |
678 | 67.8% | 1 | 3 | 1.817 | 3 |
user_int_feats_97 |
292 | 29.2% | 1 | 3 | 1.599 | 3 |
user_int_feats_98 |
103 | 10.3% | 1 | 3 | 2.678 | 3 |
user_int_feats_99 |
812 | 81.2% | 1 | 3 | 2.936 | 2 |
user_int_feats_100 |
845 | 84.5% | 1 | 2 | 1.955 | 2 |
user_int_feats_101 |
910 | 91.0% | 2 | 3 | 2.956 | 2 |
user_int_feats_102 |
877 | 87.7% | 1 | 3 | 1.130 | 2 |
user_int_feats_103 |
862 | 86.2% | 1 | 3 | 2.717 | 3 |
user_int_feats_104 |
372 | 37.2% | 1 | 3 | 2.360 | 3 |
user_int_feats_105 |
309 | 30.9% | 1 | 3 | 2.287 | 3 |
user_int_feats_106 |
160 | 16.0% | 1 | 3 | 1.760 | 3 |
user_int_feats_107 |
300 | 30.0% | 1 | 2 | 1.094 | 2 |
user_int_feats_108 |
516 | 51.6% | 2 | 7 | 5.455 | 6 |
user_int_feats_109 |
854 | 85.4% | 1 | 7 | 2.993 | 7 |
Array Columns (list<int64>)
| Column | Nulls | Null% | Element Type |
|---|---|---|---|
user_int_feats_15 |
139 | 13.9% | list<int64> |
user_int_feats_60 |
592 | 59.2% | list<int64> |
user_int_feats_62 |
70 | 7.0% | list<int64> |
user_int_feats_63 |
70 | 7.0% | list<int64> |
user_int_feats_64 |
70 | 7.0% | list<int64> |
user_int_feats_65 |
80 | 8.0% | list<int64> |
user_int_feats_66 |
86 | 8.6% | list<int64> |
user_int_feats_80 |
200 | 20.0% | list<int64> |
user_int_feats_89 |
55 | 5.5% | list<int64> |
user_int_feats_90 |
91 | 9.1% | list<int64> |
user_int_feats_91 |
450 | 45.0% | list<int64> |
User Dense Features (10 columns)
All columns are list<float> arrays (e.g. embedding vectors).
| Column | Nulls | Null% | Description |
|---|---|---|---|
user_dense_feats_61 |
2 | 0.2% | 256-dim embedding vector |
user_dense_feats_62 |
70 | 7.0% | Variable-length float array |
user_dense_feats_63 |
70 | 7.0% | Variable-length float array |
user_dense_feats_64 |
70 | 7.0% | Variable-length float array |
user_dense_feats_65 |
80 | 8.0% | Variable-length float array |
user_dense_feats_66 |
86 | 8.6% | Variable-length float array |
user_dense_feats_87 |
15 | 1.5% | 320-dim embedding vector |
user_dense_feats_89 |
55 | 5.5% | Variable-length float array |
user_dense_feats_90 |
91 | 9.1% | Variable-length float array |
user_dense_feats_91 |
450 | 45.0% | Variable-length float array |
Item Int Features (14 columns)
| Column | Arrow Type | Nulls | Null% | Min | Max | Mean | Unique |
|---|---|---|---|---|---|---|---|
item_int_feats_5 |
int64 |
2 | 0.2% | 4 | 325 | 118.452 | 82 |
item_int_feats_6 |
int64 |
2 | 0.2% | 0 | 977 | 419.073 | 216 |
item_int_feats_7 |
int64 |
2 | 0.2% | 0 | 2,806 | 1,052.866 | 349 |
item_int_feats_8 |
int64 |
2 | 0.2% | -1 | 2,431 | 463.712 | 226 |
item_int_feats_9 |
int64 |
2 | 0.2% | 3 | 37 | 21.171 | 24 |
item_int_feats_10 |
int64 |
2 | 0.2% | 2 | 309 | 150.007 | 110 |
item_int_feats_11 |
list<int64> |
439 | 43.9% | — | — | — | — |
item_int_feats_12 |
int64 |
2 | 0.2% | 0 | 2,777 | 1,039.381 | 352 |
item_int_feats_13 |
int64 |
2 | 0.2% | 1 | 8 | 4.457 | 8 |
item_int_feats_16 |
int64 |
2 | 0.2% | 2 | 35,259 | 12,356.101 | 662 |
item_int_feats_81 |
int64 |
2 | 0.2% | 0 | 2 | 0.508 | 3 |
item_int_feats_83 |
int64 |
832 | 83.2% | 1 | 31 | 17.595 | 22 |
item_int_feats_84 |
int64 |
832 | 83.2% | 3 | 226 | 131.131 | 66 |
item_int_feats_85 |
int64 |
832 | 83.2% | 4 | 1,001 | 439.816 | 103 |
Domain Sequence Features (45 columns)
Variable-length list<int64> sequences from 4 behavioral domains:
| Domain | Columns | Count | Nulls per Col | Max Seq Length |
|---|---|---|---|---|
| domain_a | domain_a_seq_38 – _46 |
9 | 5 | 1,888 |
| domain_b | domain_b_seq_67 – _79, _88 |
14 | 12 | 1,952 |
| domain_c | domain_c_seq_27 – _37, _47 |
12 | 2 | 3,894 |
| domain_d | domain_d_seq_17 – _26 |
10 | 80 | 3,951 |
Null Coverage Summary
| Group | Columns | Zero Coverage | Low Coverage (<50%) | Notes |
|---|---|---|---|---|
user_int_feats_ |
46 | 0 | 11 | Columns 99–103, 109 have >80% nulls |
user_dense_feats_ |
10 | 0 | 0 | user_dense_feats_91 has 45% nulls |
item_int_feats_ |
14 | 0 | 3 | item_int_feats_83–85 have ~83% nulls |
domain_a_seq_ |
9 | 0 | 0 | Very low null rate (0.5%) |
domain_b_seq_ |
14 | 0 | 0 | Low null rate (1.2%) |
domain_c_seq_ |
12 | 0 | 0 | Very low null rate (0.2%) |
domain_d_seq_ |
10 | 0 | 0 | Moderate null rate (8.0%) |
High-Null Columns (>50% null)
| Column | Null Count | Null% |
|---|---|---|
user_int_feats_101 |
910 | 91.0% |
user_int_feats_102 |
877 | 87.7% |
user_int_feats_103 |
862 | 86.2% |
user_int_feats_109 |
854 | 85.4% |
user_int_feats_100 |
845 | 84.5% |
item_int_feats_83 |
832 | 83.2% |
item_int_feats_84 |
832 | 83.2% |
item_int_feats_85 |
832 | 83.2% |
user_int_feats_99 |
812 | 81.2% |
user_int_feats_86 |
692 | 69.2% |
user_int_feats_96 |
678 | 67.8% |
user_int_feats_60 |
592 | 59.2% |
user_int_feats_94 |
521 | 52.1% |
user_int_feats_108 |
516 | 51.6% |
user_int_feats_92 |
494 | 49.4% |
user_dense_feats_91 |
450 | 45.0% |
user_int_feats_91 |
450 | 45.0% |
item_int_feats_11 |
439 | 43.9% |
Usage
import pyarrow.parquet as pq
import pandas as pd
# Read the parquet file
pf = pq.ParquetFile("data_1000/demo_1000.parquet")
table = pf.read()
df = table.to_pandas()
print(df.shape) # (1000, 120)
print(df.columns) # ['user_id', 'item_id', 'label_type', ...]
# Check label distribution
print(df['label_type'].value_counts())
# 1 876
# 2 124
# Access a sequence feature
seq = df['domain_a_seq_38'].dropna().iloc[0]
print(type(seq), len(seq)) # <class 'numpy.ndarray'> variable length
# Access an embedding feature
emb = df['user_dense_feats_61'].dropna().iloc[0]
print(type(emb), len(emb)) # <class 'numpy.ndarray'> 256
# Null analysis
null_pct = df.isnull().mean().sort_values(ascending=False)
print(null_pct[null_pct > 0.5]) # Columns with >50% nulls
Relationship to Other Files
| File | Rows | Size | Compression | Description |
|---|---|---|---|---|
data_1000/demo_1000.parquet |
1,000 | ~38 MB | None | This dataset — first 1,000 rows |
demo_data/demo_1000_0408.gz.parquet |
1,016 | ~27 MB | Gzip | Full 1,016-row source dataset |
test_demo_data/sample_10.parquet |
10 | ~548 KB | — | 10-row test sample |
Key Notes
- Nullable int64: All
*_int_feats_*scalar columns are stored as Arrowint64with native null support. When reading with pandas, nullable int columns may be converted tofloat64— usedf[col].fillna(-1).astype(int)or read withpd.Int64Dtype()to preserve the integer type. - No nested structs: Unlike the older
sample_data.parquet, all features are flat top-level columns. - Sparse features: 18 columns have >40% null values — handle missing data carefully during feature engineering.
- Sequence lengths vary widely: Domain sequences range from length 1 to ~3,951, which may require truncation or padding for model input.
- Imbalanced labels: ~87.6% label_type=1 vs ~12.4% label_type=2 — consider class balancing strategies.
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