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The dataset generation failed
Error code: DatasetGenerationError
Exception: ArrowNotImplementedError
Message: Cannot write struct type 'attributes' with no child field to Parquet. Consider adding a dummy child field.
Traceback: Traceback (most recent call last):
File "/usr/local/lib/python3.12/site-packages/datasets/builder.py", line 1821, in _prepare_split_single
num_examples, num_bytes = writer.finalize()
^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/arrow_writer.py", line 781, in finalize
self.write_rows_on_file()
File "/usr/local/lib/python3.12/site-packages/datasets/arrow_writer.py", line 663, in write_rows_on_file
self._write_table(table)
File "/usr/local/lib/python3.12/site-packages/datasets/arrow_writer.py", line 771, in _write_table
self._build_writer(inferred_schema=pa_table.schema)
File "/usr/local/lib/python3.12/site-packages/datasets/arrow_writer.py", line 812, in _build_writer
self.pa_writer = pq.ParquetWriter(
^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/pyarrow/parquet/core.py", line 1070, in __init__
self.writer = _parquet.ParquetWriter(
^^^^^^^^^^^^^^^^^^^^^^^
File "pyarrow/_parquet.pyx", line 2363, in pyarrow._parquet.ParquetWriter.__cinit__
File "pyarrow/error.pxi", line 155, in pyarrow.lib.pyarrow_internal_check_status
File "pyarrow/error.pxi", line 92, in pyarrow.lib.check_status
pyarrow.lib.ArrowNotImplementedError: Cannot write struct type 'attributes' with no child field to Parquet. Consider adding a dummy child field.
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 1343, in compute_config_parquet_and_info_response
parquet_operations, partial, estimated_dataset_info = stream_convert_to_parquet(
^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 907, in stream_convert_to_parquet
builder._prepare_split(split_generator=splits_generators[split], file_format="parquet")
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.
shape list | data_type string | chunk_grid dict | chunk_key_encoding dict | fill_value int64 | codecs list | attributes dict | zarr_format int64 | node_type string | storage_transformers list |
|---|---|---|---|---|---|---|---|---|---|
[
100000,
16
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
16
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
16
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
16
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
16
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
16
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
16
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
16
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
16
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
16
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
1
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
1
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
1
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
1
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
1
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
1
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
1
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
1
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
1
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
1
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
[
100000,
1
] | uint8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
100000,
1
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
null | null | null | null | null | null | {} | 3 | group | null |
[
100000,
400000
] | int8 | {
"name": "regular",
"configuration": {
"chunk_shape": [
50000,
200
]
}
} | {
"name": "default",
"configuration": {
"separator": "/"
}
} | 0 | [
{
"name": "bytes",
"configuration": null
},
{
"name": "zstd",
"configuration": {
"level": 0,
"checksum": true
}
}
] | {} | 3 | array | [] |
null | null | null | null | null | null | {} | 3 | group | null |
ascad-v2-small-merged
This script fetches slices from existing ASCAD v2 datasets on Hugging Face and merges them into a smaller, tightly-focused dataset (e.g., Round 1 target traces) based on user-defined bounds.
Dataset Structure
This dataset is stored in Zarr format, optimized for chunked and compressed cloud storage.
Traces (/traces)
- Shape:
[100000, 400000](Traces x Time Samples) - Data Type:
int8 - Chunk Shape:
[50000, 200]
Metadata (/metadata)
- ciphertext: shape
[100000, 16], dtypeuint8 - key: shape
[100000, 16], dtypeuint8 - mask: shape
[100000, 16], dtypeuint8 - mask_: shape
[100000, 16], dtypeuint8 - plaintext: shape
[100000, 16], dtypeuint8 - rin: shape
[100000, 1], dtypeuint8 - rin_: shape
[100000, 1], dtypeuint8 - rm: shape
[100000, 1], dtypeuint8 - rm_: shape
[100000, 1], dtypeuint8 - rout: shape
[100000, 1], dtypeuint8 - rout_: shape
[100000, 1], dtypeuint8
Leakage Analysis Targets
The following targets are available for side-channel leakage analysis on this dataset:
| Target Name | Description |
|---|---|
ciphertext |
Raw ciphertext byte at position byte_index.ciphertext[i] where i = byte_index. |
key |
Raw key byte at position byte_index.key[i] where i = byte_index. |
mask |
Raw per-byte mask at position byte_index.mask[i] where i = byte_index. |
mask_ |
Raw per-byte mask for second S-box pass at position byte_index.mask_[i] where i = byte_index. |
perm_index |
Raw permutation index at shuffling slot byte_index.perm_index[i] where i = byte_index. |
plaintext |
Raw plaintext byte at position byte_index.plaintext[i] where i = byte_index. |
rin |
Raw global input mask rin. |
rin_ |
Raw global input mask rin_ for second S-box pass. |
rm |
Raw global multiplicative mask rm (alpha). |
rm_ |
Raw global multiplicative mask rm_ for second S-box pass. |
rout |
Raw global output mask rout. |
rout_ |
Raw global output mask rout_ for second S-box pass. |
sbox_masked |
Raw sbox_masked label at shuffling slot byte_index.sbox_masked[i] where i = byte_index. |
sbox_masked_with_perm |
Raw sbox_masked_with_perm label at AES byte position byte_index.sbox_masked_with_perm[i] where i = byte_index. |
v2_hd_ptx_sbi |
HD between the unmasked plaintext and the unmasked SBI.HD(ptx[j], ptx[j] ^ key[j]) where j = perm[byte_index]. |
v2_hd_rout_mask_interaction |
Hamming distance between the global rout mask and the per-byte mask.HD(rout, mask[j]) where j = perm[byte_index]. |
v2_hd_sbi_sbo |
HD between the unmasked SBI and unmasked SBO.HD(ptx[j] ^ key[j], SBOX(ptx[j] ^ key[j])) where j = perm[byte_index]. |
v2_hd_sbo_affine_mc |
HD between the affine SBO and the masked MixColumns output.HD(rm*SBOX(ptx[j]^key[j])^mask[j], MixColumns(...)[j]) where j = perm[byte_index]. |
v2_hd_xw_lut_idx |
HD between the pre-LUT state (Xor_Word applied) and the LUT index.HD(rm*(ptx[j]^key[j])^mask[j]^rin, rm*(ptx[j]^key[j])^rin) where j = perm[byte_index]. |
v2_hw_affine_ptx |
HW of the affine-masked plaintext.HW(rm * ptx[j] ^ mask[j]) where j = perm[byte_index]. |
v2_hw_key |
HW of the key byte at the permuted AES position.HW(key[j]) where j = perm[byte_index]. |
v2_hw_lut_idx |
HW of the sboxMasked LUT index.HW(rm * (ptx[j] ^ key[j]) ^ rin) where j = perm[byte_index]. |
v2_hw_mask |
HW of the per-byte additive mask.HW(mask[j]) where j = perm[byte_index]. |
v2_hw_masked_sbi |
HW of the affine-masked SBI entering round 1.HW(rm * (ptx[j] ^ key[j]) ^ mask[j]) where j = perm[byte_index]. |
v2_hw_mixcolumns_masked |
HW of the affine-masked MixColumns output.HW(MixColumns(ShiftRows(rm * SBOX(ptx ^ key) ^ mask))[j]) where j = perm[byte_index]. |
v2_hw_ptx |
HW of plaintext at the permuted AES position.HW(ptx[j]) where j = perm[byte_index]. |
v2_hw_raw_out |
HW of the sboxMasked LUT output.HW(rm * SBOX(ptx[j] ^ key[j]) ^ rout) where j = perm[byte_index]. |
v2_hw_rm_key |
HW of the multiplicatively masked key byte.HW(rm * key[j]) where j = perm[byte_index]. |
v2_hw_rm_ptx |
HW of the Map_in_G output (multiplicatively masked plaintext).HW(rm * ptx[j]) where j = perm[byte_index]. |
v2_hw_sbi |
HW of the unmasked SBI at the permuted AES position.HW(ptx[j] ^ key[j]) where j = perm[byte_index]. |
v2_hw_sbo |
HW of the unmasked SBO at the permuted AES position.HW(SBOX(ptx[j] ^ key[j])) where j = perm[byte_index]. |
v2_hw_sbo_affine |
HW of the post-SubBytes affine state.HW(rm * SBOX(ptx[j] ^ key[j]) ^ mask[j]) where j = perm[byte_index]. |
v2_hw_sbo_mid |
HW of the mid-SubBytes state (rout and per-byte mask applied).HW(rm * SBOX(ptx[j] ^ key[j]) ^ rout ^ mask[j]) where j = perm[byte_index]. |
v2_id_masked_sbi |
256-class Identity target for the affine-masked SBI. Passes the exact byte value directly to the DL model. |
v2_id_sbo_affine |
256-class Identity target for the affine-masked SBO (post-rout strip). Passes the exact byte value directly to the DL model. |
Parameters Used for Generation
- HF_ORG:
DLSCA - CHUNK_SIZE_Y:
50000 - CHUNK_SIZE_X:
200 - TOTAL_CHUNKS_ON_Y:
2 - TOTAL_CHUNKS_ON_X:
2000 - NUM_JOBS:
1 - COMPRESSED:
True - CAN_RUN_LOCALLY:
True - CAN_RUN_ON_CLOUD:
True
Usage
You can load this dataset directly using Zarr and Hugging Face File System:
import zarr
from huggingface_hub import HfFileSystem
fs = HfFileSystem()
# Map only once to the dataset root
root = zarr.open_group(fs.get_mapper("datasets/DLSCA/ascad-v2-small-merged"), mode="r")
# Access traces directly
traces = root["traces"]
print("Traces shape:", traces.shape)
# Access plaintext metadata directly
plaintext = root["metadata"]["plaintext"]
print("Plaintext shape:", plaintext.shape)
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