five

Holmeister/tiny_imagenet_vanilla_pgd_fawa_ccm_True_ccr_True_results

收藏
Hugging Face2024-05-20 更新2024-06-12 收录
下载链接:
https://hf-mirror.com/datasets/Holmeister/tiny_imagenet_vanilla_pgd_fawa_ccm_True_ccr_True_results
下载链接
链接失效反馈
官方服务:
资源简介:
--- dataset_info: features: - name: '0' dtype: float64 - name: '1' dtype: float64 - name: '2' dtype: float64 - name: '3' dtype: float64 - name: '4' dtype: float64 - name: '5' dtype: float64 - name: '6' dtype: float64 - name: '7' dtype: float64 - name: '8' dtype: float64 - name: '9' dtype: float64 - name: '10' dtype: float64 - name: '11' dtype: float64 - name: '12' dtype: float64 - name: '13' dtype: float64 - name: '14' dtype: float64 - name: '15' dtype: float64 - name: '16' dtype: float64 - name: '17' dtype: float64 - name: '18' dtype: float64 - name: '19' dtype: float64 - name: '20' dtype: float64 - name: '21' dtype: float64 - name: '22' dtype: float64 - name: '23' dtype: float64 - name: '24' dtype: float64 - name: '25' dtype: float64 - name: '26' dtype: float64 - name: '27' dtype: float64 - name: '28' dtype: float64 - name: '29' dtype: float64 - name: '30' dtype: float64 - name: '31' dtype: float64 - name: '32' dtype: float64 - name: '33' dtype: float64 - name: '34' dtype: float64 - name: '35' dtype: float64 - name: '36' dtype: float64 - name: '37' dtype: float64 - name: '38' dtype: float64 - name: '39' dtype: float64 - name: '40' dtype: float64 - name: '41' dtype: float64 - name: '42' dtype: float64 - name: '43' dtype: float64 - name: '44' dtype: float64 - name: '45' dtype: float64 - name: '46' dtype: float64 - name: '47' dtype: float64 - name: '48' dtype: float64 - name: '49' dtype: float64 - name: '50' dtype: float64 - name: '51' dtype: float64 - name: '52' dtype: float64 - name: '53' dtype: float64 - name: '54' dtype: float64 - name: '55' dtype: float64 - name: '56' dtype: float64 - name: '57' dtype: float64 - name: '58' dtype: float64 - name: '59' dtype: float64 - name: '60' dtype: float64 - name: '61' dtype: float64 - name: '62' dtype: float64 - name: '63' dtype: float64 - name: '64' dtype: float64 - name: '65' dtype: float64 - name: '66' dtype: float64 - name: '67' dtype: float64 - name: '68' dtype: float64 - name: '69' dtype: float64 - name: '70' dtype: float64 - name: '71' dtype: float64 - name: '72' dtype: float64 - name: '73' dtype: float64 - name: '74' dtype: float64 - name: '75' dtype: float64 - name: '76' dtype: float64 - name: '77' dtype: float64 - name: '78' dtype: float64 - name: '79' dtype: float64 - name: '80' dtype: float64 - name: '81' dtype: float64 - name: '82' dtype: float64 - name: '83' dtype: float64 - name: '84' dtype: float64 - name: '85' dtype: float64 - name: '86' dtype: float64 - name: '87' dtype: float64 - name: '88' dtype: float64 - name: '89' dtype: float64 - name: '90' dtype: float64 - name: '91' dtype: float64 - name: '92' dtype: float64 - name: '93' dtype: float64 - name: '94' dtype: float64 - name: '95' dtype: float64 - name: '96' dtype: float64 - name: '97' dtype: float64 - name: '98' dtype: float64 - name: '99' dtype: float64 - name: '100' dtype: float64 - name: '101' dtype: float64 - name: '102' dtype: float64 - name: '103' dtype: float64 - name: '104' dtype: float64 - name: '105' dtype: float64 - name: '106' dtype: float64 - name: '107' dtype: float64 - name: '108' dtype: float64 - name: '109' dtype: float64 - name: '110' dtype: float64 - name: '111' dtype: float64 - name: '112' dtype: float64 - name: '113' dtype: float64 - name: '114' dtype: float64 - name: '115' dtype: float64 - name: '116' dtype: float64 - name: '117' dtype: float64 - name: '118' dtype: float64 - name: '119' dtype: float64 - name: '120' dtype: float64 - name: '121' dtype: float64 - name: '122' dtype: float64 - name: '123' dtype: float64 - name: '124' dtype: float64 - name: '125' dtype: float64 - name: '126' dtype: float64 - name: '127' dtype: float64 - name: '128' dtype: float64 - name: '129' dtype: float64 - name: '130' dtype: float64 - name: '131' dtype: float64 - name: '132' dtype: float64 - name: '133' dtype: float64 - name: '134' dtype: float64 - name: '135' dtype: float64 - name: '136' dtype: float64 - name: '137' dtype: float64 - name: '138' dtype: float64 - name: '139' dtype: float64 - name: '140' dtype: float64 - name: '141' dtype: float64 - name: '142' dtype: float64 - name: '143' dtype: float64 - name: '144' dtype: float64 - name: '145' dtype: float64 - name: '146' dtype: float64 - name: '147' dtype: float64 - name: '148' dtype: float64 - name: '149' dtype: float64 - name: '150' dtype: float64 - name: '151' dtype: float64 - name: '152' dtype: float64 - name: '153' dtype: float64 - name: '154' dtype: float64 - name: '155' dtype: float64 - name: '156' dtype: float64 - name: '157' dtype: float64 - name: '158' dtype: float64 - name: '159' dtype: float64 - name: '160' dtype: float64 - name: '161' dtype: float64 - name: '162' dtype: float64 - name: '163' dtype: float64 - name: '164' dtype: float64 - name: '165' dtype: float64 - name: '166' dtype: float64 - name: '167' dtype: float64 - name: '168' dtype: float64 - name: '169' dtype: float64 - name: '170' dtype: float64 - name: '171' dtype: float64 - name: '172' dtype: float64 - name: '173' dtype: float64 - name: '174' dtype: float64 - name: '175' dtype: float64 - name: '176' dtype: float64 - name: '177' dtype: float64 - name: '178' dtype: float64 - name: '179' dtype: float64 - name: '180' dtype: float64 - name: '181' dtype: float64 - name: '182' dtype: float64 - name: '183' dtype: float64 - name: '184' dtype: float64 - name: '185' dtype: float64 - name: '186' dtype: float64 - name: '187' dtype: float64 - name: '188' dtype: float64 - name: '189' dtype: float64 - name: '190' dtype: float64 - name: '191' dtype: float64 - name: '192' dtype: float64 - name: '193' dtype: float64 - name: '194' dtype: float64 - name: '195' dtype: float64 - name: '196' dtype: float64 - name: '197' dtype: float64 - name: '198' dtype: float64 - name: '199' dtype: float64 splits: - name: train num_bytes: 6400 num_examples: 4 download_size: 96498 dataset_size: 6400 configs: - config_name: default data_files: - split: train path: data/train-* ---

The dataset includes 200 features, each named sequentially from 0 to 199, all of type float64. It has one split named train with 4 examples, occupying 6400 bytes. The download size of the dataset is 96498 bytes, and the dataset size is 6400 bytes. The configuration named default specifies that the training data is located in files matching the pattern data/train-*.
提供机构:
Holmeister
原始信息汇总

数据集概述

数据集特征

  • 特征数量: 200个
  • 特征类型: 所有特征均为float64类型

数据集划分

  • 训练集:
    • 样本数量: 4个
    • 数据大小: 6400字节

数据集大小

  • 下载大小: 96498字节
  • 数据集总大小: 6400字节
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作