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Error code: DatasetGenerationError
Exception: CastError
Message: Couldn't cast
query_id: int64
required_label: int64
range_low: double
range_high: double
label: int64
range_value: double
id: int64
to
{'id': Value('int64'), 'label': Value('int64'), 'range_value': Value('float64')}
because column names don't match
Traceback: Traceback (most recent call last):
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1779, in _prepare_split_single
for key, table in generator:
^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/packaged_modules/json/json.py", line 299, in _generate_tables
self._cast_table(pa_table, json_field_paths=json_field_paths),
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/packaged_modules/json/json.py", line 128, in _cast_table
pa_table = table_cast(pa_table, self.info.features.arrow_schema)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2321, in table_cast
return cast_table_to_schema(table, schema)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2249, in cast_table_to_schema
raise CastError(
datasets.table.CastError: Couldn't cast
query_id: int64
required_label: int64
range_low: double
range_high: double
label: int64
range_value: double
id: int64
to
{'id': Value('int64'), 'label': Value('int64'), 'range_value': Value('float64')}
because column names don't match
The above exception was the direct cause of the following exception:
Traceback (most recent call last):
File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1348, in compute_config_parquet_and_info_response
parquet_operations = convert_to_parquet(builder)
^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 980, in convert_to_parquet
builder.download_and_prepare(
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 882, in download_and_prepare
self._download_and_prepare(
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 943, in _download_and_prepare
self._prepare_split(split_generator, **prepare_split_kwargs)
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1646, in _prepare_split
for job_id, done, content in self._prepare_split_single(
^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1832, in _prepare_split_single
raise DatasetGenerationError("An error occurred while generating the dataset") from e
datasets.exceptions.DatasetGenerationError: An error occurred while generating the datasetNeed help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
id int64 | label int64 | range_value float64 |
|---|---|---|
0 | 6 | 0.375007 |
1 | 3 | 0.753257 |
2 | 7 | 0.790821 |
3 | 7 | 0.671349 |
4 | 2 | 0.654791 |
5 | 3 | 0.311729 |
6 | 6 | 0.506457 |
7 | 5 | 0.547758 |
8 | 5 | 0.668046 |
9 | 4 | 0.701781 |
10 | 7 | 0.398856 |
11 | 7 | 0.712096 |
12 | 6 | 0.601841 |
13 | 8 | 0.664163 |
14 | 6 | 0.233608 |
15 | 4 | 0.566727 |
16 | 6 | 0.422924 |
17 | 4 | 0.776609 |
18 | 7 | 0.664448 |
19 | 5 | 0.700508 |
20 | 5 | 0.550224 |
21 | 4 | 0.512136 |
22 | 8 | 0.420989 |
23 | 5 | 0.46543 |
24 | 5 | 0.558499 |
25 | 5 | 0.584126 |
26 | 7 | 0.219876 |
27 | 6 | 0.615172 |
28 | 6 | 0.379883 |
29 | 6 | 0.635152 |
30 | 10 | 0.640067 |
31 | 5 | 0.286027 |
32 | 4 | 0.360278 |
33 | 4 | 0.463259 |
34 | 7 | 0.472602 |
35 | 8 | 0.575734 |
36 | 5 | 0.437071 |
37 | 4 | 0.765429 |
38 | 4 | 0.437924 |
39 | 7 | 0.195694 |
40 | 7 | 0.505344 |
41 | 7 | 0.429804 |
42 | 4 | 0.647169 |
43 | 6 | 0.850018 |
44 | 6 | 0.193761 |
45 | 6 | 0.498842 |
46 | 7 | 0.631452 |
47 | 6 | 0.49189 |
48 | 7 | 0.464314 |
49 | 6 | 0.582723 |
50 | 6 | 0.455112 |
51 | 7 | 0.395351 |
52 | 3 | 0.524122 |
53 | 5 | 0.40768 |
54 | 5 | 0.536536 |
55 | 4 | 0.386599 |
56 | 5 | 0.404784 |
57 | 8 | 0.491193 |
58 | 4 | 0.317831 |
59 | 7 | 0.351165 |
60 | 2 | 0.396119 |
61 | 5 | 0.6602 |
62 | 6 | 0.315549 |
63 | 7 | 0.521135 |
64 | 7 | 0.392862 |
65 | 7 | 0.36163 |
66 | 5 | 0.230501 |
67 | 5 | 0.649966 |
68 | 7 | 0.487395 |
69 | 5 | 0.659521 |
70 | 3 | 0.467456 |
71 | 3 | 0.265339 |
72 | 4 | 0.56707 |
73 | 6 | 0.325261 |
74 | 6 | 0.189391 |
75 | 7 | 0.375525 |
76 | 5 | 0.398187 |
77 | 6 | 0.554653 |
78 | 7 | 0.427959 |
79 | 5 | 0.485057 |
80 | 6 | 0.56586 |
81 | 4 | 0.248697 |
82 | 5 | 0.346629 |
83 | 5 | 0.361814 |
84 | 3 | 0.277555 |
85 | 6 | 0.742588 |
86 | 5 | 0.626521 |
87 | 6 | 0.684781 |
88 | 6 | 0.442096 |
89 | 6 | 0.384411 |
90 | 7 | 0.216499 |
91 | 5 | 0.663515 |
92 | 5 | 0.409149 |
93 | 5 | 0.624949 |
94 | 2 | 0.591333 |
95 | 3 | 0.552295 |
96 | 3 | 0.464977 |
97 | 4 | 0.613498 |
98 | 6 | 0.395756 |
99 | 4 | 0.388249 |
SIFT1M Dataset to Evaluate (Filtered) Approximate Nearest Neighbor Search — Normal Variant
This dataset is intended to benchmark Approximate Nearest Neighbor Search (ANNS) and
Filtered Approximate Nearest Neighbor Search (FANNS) algorithms. It is based on the
classic SIFT1M dataset (1,000,000 base vectors and 10,000 query vectors, each
128-dimensional). Because SIFT1M ships without any structured metadata, we augment it
with synthetic attributes drawn from a normal (Gaussian) distribution: every base
vector receives one categorical label and one continuous range_value. Query
attributes for three different filter types are sampled from the same normal distribution
as the base attributes. The ground truth for the up to k=100 nearest neighbors was
computed for unfiltered ANNS and for filtered ANNS with the three different filter types.
Please note that if fewer than 100 database items match the filter, then the ground
truth can contain fewer than k=100 entries. This variant is the Gaussian counterpart of
sift1m-fanns-uniform: the design is identical and only the sampling distribution
changes, so that the two can be compared directly to study the effect of attribute
distribution (homogeneous vs. heterogeneous selectivity).
Filter Types
| Filter | Predicate | Description |
|---|---|---|
| label | label == required_label |
Exact match on the categorical attribute. |
| range | range_low <= range_value <= range_high |
Containment in a fixed-width interval. |
| both | label AND range |
Conjunction of the two predicates above. |
Parameters
| Parameter | Value | Meaning |
|---|---|---|
| N | 1,000,000 | Number of base (database) vectors |
| nq | 10,000 | Number of query vectors |
| vec_dim | 128 | Embedding dimension (from SIFT1M) |
| NUM_LABELS | 12 | label ~ round(Normal(5.5, 2.0)) clipped to [0, 11] |
| LABEL_MEAN / LABEL_STD | 5.5 / 2.0 | Mean and std of the label histogram |
| range_value | Normal(0.5, 0.15) clipped to [0, 1] |
Continuous base attribute |
| RANGE_MEAN / RANGE_STD | 0.5 / 0.15 | Mean and std of range_value and of query window centers |
| RANGE_WIDTH | 0.2 | Width of every query range window (range_high - range_low) |
| GT_K | 100 | Max number of ground-truth neighbors per query |
| RANDOM_SEED | 42 | Fixed seed; the dataset is bit-reproducible |
Expected Selectivity
Under the normal distribution, the average selectivity is higher than in the uniform variant, but more importantly the per-query selectivity has high variance (heterogeneous): common labels and central range windows are far less selective than rare labels and edge windows. A single benchmark therefore spans a wide range of difficulties, which is closer to real-world skewed attributes.
| Filter | Avg. selectivity (approx.) | Per-query spread | Note |
|---|---|---|---|
| label | ~14% | ~0.6% (label 0/11) → ~19% (label 5/6) | Σ pₓ² exceeds the uniform 8.33% |
| range | ~30–40% | ~8% (edge window) → ~50% (central window) | Windows concentrate near the dense center |
| both | ~5% | <0.5% (rare label + edge window) → ~10% | Highest variance; a few queries may yield < 100 GT entries |
Files and Description
| File | Description |
|---|---|
database_vectors.fvecs |
128-dimensional base vectors. One vector per database item. |
database_attributes.jsonl |
JSON objects with {id, label, range_value} for each item. One JSON object per database item. |
query_vectors.fvecs |
128-dimensional query vectors. One vector per query. |
ground_truth.ivecs |
Ground truth for unfiltered nearest neighbor search. One vector per query. |
label_query_attributes.jsonl |
Query attributes for label (exact match) filtering. One JSON object per query. |
ground_truth_label.ivecs |
Ground truth for label-filtered NN search. One vector per query. |
range_query_attributes.jsonl |
Query attributes for range filtering. One JSON object per query. |
ground_truth_range.ivecs |
Ground truth for range-filtered NN search. One vector per query. |
label_and_range_query_attributes.jsonl |
Query attributes for the joint (label AND range) filter. One JSON object per query. |
ground_truth_label_and_range.ivecs |
Ground truth for joint-filtered NN search. One vector per query. |
Formats
.fvecs: Binary format for 32-bit floating point numbers (used for embedding vectors)..ivecs: Binary format for 32-bit signed integers (used for ground truth)..jsonl: Each line contains a JSON object (used for attributes).
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