Dataset Viewer
Auto-converted to Parquet Duplicate
symbol
stringclasses
68 values
base_asset
stringclasses
68 values
quote_asset
stringclasses
1 value
date
stringdate
2023-04-15 00:00:00
2026-01-08 00:00:00
open
float64
0
125k
high
float64
0
126k
low
float64
0
123k
close
float64
0
125k
volume
float64
99.9
121,611B
included_in_cryptogat
bool
2 classes
source_file
stringclasses
68 values
1INCHUSDT
1INCH
USDT
2023-04-15
0.565
0.571
0.552
0.566
3,393,557.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-16
0.566
0.58
0.557
0.575
3,483,902
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-17
0.574
0.583
0.548
0.557
5,562,355.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-18
0.557
0.58
0.548
0.57
4,225,172
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-19
0.569
0.572
0.502
0.511
6,914,746.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-20
0.51
0.52
0.493
0.511
4,843,144.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-21
0.511
0.522
0.487
0.492
5,896,901.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-22
0.492
0.508
0.488
0.507
2,093,673.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-23
0.507
0.508
0.482
0.494
2,483,209.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-24
0.495
0.5
0.48
0.487
2,043,976.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-25
0.487
0.496
0.471
0.494
2,336,695.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-26
0.494
0.51
0.455
0.48
4,378,243.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-27
0.479
0.496
0.476
0.49
2,693,679.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-28
0.489
0.491
0.476
0.483
2,330,769.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-29
0.483
0.515
0.48
0.496
8,321,061.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-04-30
0.496
0.496
0.466
0.471
9,912,041.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-01
0.472
0.474
0.446
0.454
5,533,040.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-02
0.454
0.461
0.451
0.459
1,779,113.6
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-03
0.458
0.459
0.439
0.457
3,699,514.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-04
0.457
0.458
0.447
0.452
1,213,440.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-05
0.451
0.466
0.447
0.463
3,038,665.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-06
0.463
0.466
0.436
0.447
2,577,076.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-07
0.447
0.456
0.443
0.447
1,157,145.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-08
0.447
0.449
0.389
0.407
6,985,054.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-09
0.407
0.42
0.405
0.415
2,574,022.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-10
0.415
0.426
0.402
0.422
5,440,379.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-11
0.422
0.422
0.398
0.409
4,184,701.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-12
0.409
0.416
0.396
0.415
5,227,099.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-13
0.415
0.416
0.407
0.41
1,727,590
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-14
0.41
0.418
0.405
0.413
1,539,480.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-15
0.413
0.422
0.407
0.414
2,477,561.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-16
0.414
0.422
0.409
0.416
2,823,655.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-17
0.416
0.421
0.405
0.416
8,108,353.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-18
0.415
0.416
0.395
0.402
8,290,307.6
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-19
0.401
0.404
0.397
0.4
3,107,204.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-20
0.4
0.404
0.397
0.404
1,494,015
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-21
0.404
0.404
0.392
0.395
1,845,779.6
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-22
0.396
0.4
0.389
0.397
2,130,820.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-23
0.397
0.405
0.395
0.402
2,020,630.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-24
0.402
0.402
0.382
0.389
2,846,935.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-25
0.389
0.396
0.382
0.392
2,281,843.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-26
0.392
0.396
0.386
0.395
1,637,524.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-27
0.394
0.397
0.391
0.397
1,183,676.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-28
0.397
0.409
0.395
0.404
3,137,914.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-29
0.405
0.407
0.391
0.393
4,538,570.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-30
0.394
0.4
0.39
0.395
2,444,809.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-05-31
0.394
0.398
0.375
0.38
5,174,871
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-01
0.381
0.382
0.367
0.368
3,939,050.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-02
0.368
0.387
0.362
0.381
14,684,626.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-03
0.381
0.382
0.368
0.371
6,264,642.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-04
0.371
0.378
0.368
0.372
3,303,096.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-05
0.373
0.373
0.317
0.326
18,637,398.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-06
0.326
0.337
0.314
0.334
8,811,775
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-07
0.335
0.335
0.31
0.313
5,865,231.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-08
0.314
0.328
0.311
0.322
3,820,291.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-09
0.322
0.328
0.317
0.322
3,665,495.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-10
0.323
0.324
0.235
0.272
23,816,462.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-11
0.272
0.276
0.265
0.27
4,334,172.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-12
0.269
0.275
0.26
0.269
6,316,519.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-13
0.27
0.277
0.263
0.268
4,671,266.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-14
0.269
0.278
0.257
0.262
6,283,278.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-15
0.263
0.266
0.252
0.26
3,905,308.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-16
0.261
0.2799
0.259
0.2756
16,518,221.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-17
0.2754
0.2845
0.2719
0.2766
11,151,127.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-18
0.2767
0.2846
0.2729
0.2755
8,805,709
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-19
0.2755
0.2789
0.2707
0.2775
7,132,580.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-20
0.2777
0.2943
0.2736
0.2932
10,365,208
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-21
0.2931
0.3138
0.2911
0.309
8,926,135.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-22
0.3088
0.3166
0.2989
0.3041
9,238,260.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-23
0.3041
0.3258
0.304
0.3184
6,000,686.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-24
0.3183
0.3316
0.3161
0.3265
7,960,730.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-25
0.3263
0.3505
0.3225
0.3279
14,728,476.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-26
0.3278
0.3333
0.3127
0.3196
8,127,239.6
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-27
0.3197
0.3265
0.3167
0.319
5,119,156.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-28
0.3194
0.3196
0.2877
0.2987
7,425,737.7
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-29
0.2989
0.3125
0.2975
0.3085
6,122,372.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-06-30
0.3084
0.3275
0.2944
0.3173
13,293,658
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-01
0.3173
0.3333
0.3111
0.3324
4,876,560.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-02
0.3324
0.3327
0.3164
0.3243
5,442,134.6
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-03
0.3245
0.3438
0.3209
0.3418
8,525,332.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-04
0.342
0.342
0.3197
0.327
11,623,759.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-05
0.3272
0.3304
0.3096
0.3147
9,387,146.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-06
0.3147
0.3277
0.3012
0.3015
6,806,415.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-07
0.3014
0.3092
0.2973
0.3086
4,612,644.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-08
0.3084
0.3112
0.2994
0.3064
4,139,671.4
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-09
0.3063
0.3101
0.3015
0.3036
3,322,427.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-10
0.3036
0.312
0.2949
0.3052
5,418,271.1
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-11
0.3053
0.3148
0.3019
0.3142
3,791,693.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-12
0.3143
0.43
0.3141
0.3254
28,356,027.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-13
0.3254
0.3531
0.3135
0.3491
13,992,832.9
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-14
0.3494
0.3595
0.3243
0.335
12,475,279.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-15
0.335
0.383
0.3295
0.3709
35,592,043.6
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-16
0.3709
0.4494
0.362
0.4321
87,545,833
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-17
0.4317
0.5935
0.3913
0.4029
273,826,458.3
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-18
0.4027
0.405
0.351
0.3598
74,966,833
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-19
0.3596
0.3681
0.3327
0.3361
58,537,762.5
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-20
0.3361
0.3436
0.317
0.329
60,608,283.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-21
0.3288
0.3457
0.3232
0.3358
47,315,772.2
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-22
0.336
0.338
0.325
0.3279
17,697,344.8
true
1INCHUSDT_daily_1000days.csv
1INCHUSDT
1INCH
USDT
2023-07-23
0.3279
0.3317
0.3237
0.3271
21,900,459.8
true
1INCHUSDT_daily_1000days.csv
End of preview. Expand in Data Studio

CryptoGAT Cryptocurrency Daily OHLCV Dataset

Paper Code Dataset

This dataset accompanies the paper CryptoGAT: Are Time Series Models Effective for Cryptocurrency Forecasting? by Yu Peng, Matloob Khushi, and Josiah Poon.

CryptoGAT studies cryptocurrency forecasting from a cross-asset perspective: instead of relying only on temporal patterns within each coin, it treats the market as a graph of interacting assets and learns relationships across cryptocurrencies. This Hugging Face dataset provides the daily OHLCV market data, processed tensors, feature metadata, and asset ordering needed to reproduce and extend the CryptoGAT experiments.

CryptoGAT overview

Why This Dataset

  • Reproducible benchmark for cryptocurrency forecasting. Includes the raw long-format OHLCV table and the processed tensors used by the CryptoGAT experiments.
  • Cross-asset graph modeling ready. The processed files align assets along axis 0, making them convenient for graph neural networks, attention models, and cross-sectional forecasting baselines.
  • Both simple and enhanced features. Use the base OHLCV-derived representation for clean comparisons, or the enhanced technical-indicator representation for richer feature studies.
  • Easy to load from the Hub. The default configuration loads directly with datasets, while processed tensors can be downloaded with huggingface_hub.

Dataset At A Glance

Item Value
Raw rows 68,000
Raw trading pairs 68 USDT pairs
Raw frequency Daily
Date range 2023-04-15 to 2026-01-08
Quote asset USDT
Processed model assets 66 cryptocurrencies
Common processed window 999 daily observations
Main formats CSV, Python pickle, CSV metadata, JSON manifest
Paper https://arxiv.org/abs/2606.27670
Code https://github.com/FanBroWell/CryptoGAT

USDCUSDT and TUSDUSDT are kept in the raw OHLCV file but excluded from the processed model tensors.

Quick Start

Load the default raw OHLCV table:

from datasets import load_dataset

dataset = load_dataset("CharlieYPeng/cryptogat-crypto-1d")
df = dataset["train"].to_pandas()

print(df.head())
print(df["symbol"].nunique())
print(df[["date", "symbol", "close", "volume"]].head())

Download a processed tensor used by the paper:

import pickle
from huggingface_hub import hf_hub_download

path = hf_hub_download(
    repo_id="CharlieYPeng/cryptogat-crypto-1d",
    repo_type="dataset",
    filename="processed/CRYPTO_1D_ALL/eod_data.pkl",
)

with open(path, "rb") as f:
    eod_data = pickle.load(f)

print(eod_data.shape)  # (66, 999, 5)

Download the asset ordering for axis 0:

from huggingface_hub import hf_hub_download

path = hf_hub_download(
    repo_id="CharlieYPeng/cryptogat-crypto-1d",
    repo_type="dataset",
    filename="processed/CRYPTO_1D_ALL/coin_names.txt",
)

with open(path) as f:
    coins = [line.strip() for line in f if line.strip()]

print(coins[:10])

Repository Structure

data/raw_ohlcv.csv
processed/CRYPTO_1D_ALL/eod_data.pkl
processed/CRYPTO_1D_ALL/price_data.pkl
processed/CRYPTO_1D_ALL/gt_data.pkl
processed/CRYPTO_1D_ALL/mask_data.pkl
processed/CRYPTO_1D_ALL/coin_names.txt
processed/CRYPTO_1D_ENHANCED/eod_data.pkl
processed/CRYPTO_1D_ENHANCED/price_data.pkl
processed/CRYPTO_1D_ENHANCED/gt_data.pkl
processed/CRYPTO_1D_ENHANCED/mask_data.pkl
processed/CRYPTO_1D_ENHANCED/coin_names.txt
metadata/base_feature_names.csv
metadata/enhanced_feature_names.csv
metadata/cryptogat_model_assets.csv
metadata/manifest.json
assets/cryptogat-overview-results.png

Raw OHLCV Table

data/raw_ohlcv.csv is a long-format daily market table.

Column Description
symbol Trading pair symbol, for example BTCUSDT
base_asset Base cryptocurrency ticker, for example BTC
quote_asset Quote asset, fixed as USDT
date Daily timestamp
open Daily open price
high Daily high price
low Daily low price
close Daily close price
volume Daily traded volume
included_in_cryptogat Whether the symbol is included in the processed CryptoGAT tensors
source_file Source CSV filename in the original CryptoGAT repository

Processed Tensor Layout

The processed files are Python pickle files containing NumPy arrays. Asset order is fixed by the corresponding coin_names.txt file.

CRYPTO_1D_ALL

File Shape Dtype Meaning
eod_data.pkl (66, 999, 5) float32 Normalized OHLCV-derived features
price_data.pkl (66, 999) float32 Close prices
gt_data.pkl (66, 999) float32 Next-period return labels
mask_data.pkl (66, 999) float32 Valid-observation mask
coin_names.txt 66 entries text Asset order for axis 0

Feature names are listed in metadata/base_feature_names.csv:

open_norm, high_norm, low_norm, close_norm, volume_norm

CRYPTO_1D_ENHANCED

File Shape Dtype Meaning
eod_data.pkl (66, 999, 35) float32 Base features plus technical indicators
price_data.pkl (66, 999) float32 Close prices
gt_data.pkl (66, 999) float32 Next-period return labels
mask_data.pkl (66, 999) float32 Valid-observation mask
coin_names.txt 66 entries text Asset order for axis 0

Feature names are listed in metadata/enhanced_feature_names.csv. They include normalized OHLCV fields, moving-average ratios, MACD, RSI, rate-of-change, volatility, volume-flow features, candle-shape features, and return lags.

Intended Uses

This dataset is designed for research on:

  • cryptocurrency return forecasting;
  • cross-asset graph neural networks;
  • graph attention models for financial markets;
  • time-series versus cross-sectional modeling comparisons;
  • reproducible baselines for pure price-based crypto prediction;
  • feature engineering studies on daily OHLCV data.

It can also be used as a compact benchmark for teaching or prototyping financial machine learning pipelines.

Reproducing CryptoGAT

The original training code expects processed tensors under the GitHub repository's dataset/ directory. To use this Hugging Face copy for reproduction, download the processed folders and place them as:

CryptoGAT/dataset/CRYPTO_1D_ALL/
CryptoGAT/dataset/CRYPTO_1D_ENHANCED/

Then follow the training instructions in the official implementation:

https://github.com/FanBroWell/CryptoGAT

Data Source And License Note

The raw market data are cryptocurrency OHLCV records collected from Binance USDT trading pairs and released here for academic research and reproducibility of the CryptoGAT experiments. Users should independently verify that their intended use complies with the terms of the original data source.

This dataset is provided for research and benchmarking. It is not financial advice and should not be used as the sole basis for trading or investment decisions.

Citation

If you use this dataset, code, or paper, please cite:

@misc{peng2026cryptogat,
  title = {{CryptoGAT}: Are Time Series Models Effective for Cryptocurrency Forecasting?},
  author = {Peng, Yu and Khushi, Matloob and Poon, Josiah},
  year = {2026},
  eprint = {2606.27670},
  archivePrefix = {arXiv},
  primaryClass = {cs.CE},
  doi = {10.48550/arXiv.2606.27670},
  url = {https://arxiv.org/abs/2606.27670}
}

Links

Downloads last month
47

Paper for CharlieYPeng/cryptogat-crypto-1d