Holmeister/tiny_imagenet_vanilla_pgd_none_ccm_False_ccr_False_results
收藏Hugging Face2024-05-19 更新2024-06-12 收录
下载链接:
https://hf-mirror.com/datasets/Holmeister/tiny_imagenet_vanilla_pgd_none_ccm_False_ccr_False_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: 97250
dataset_size: 6400
configs:
- config_name: default
data_files:
- split: train
path: data/train-*
---
The dataset contains 200 features, each named sequentially from 0 to 199, all of which are of type float64. The dataset includes a single split named train with 4 examples, occupying 6400 bytes. The download size of the dataset is 97250 bytes, and the dataset size is 6400 bytes. Additionally, there is a configuration named default which specifies that the training data files are located in the data/train-* path.
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: 97250字节
- 数据集总大小: 6400字节
配置信息
- 配置名称: default
- 数据文件路径:
data/train-*



