automated-research-group/llama2_7b_chat-siqa-results
收藏Hugging Face2023-11-28 更新2024-03-04 收录
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资源简介:
---
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''top_p''=0.5}/train-*'
- config_name: '{''do_sample''=True, ''beams''=1, ''temperature''=0.05, ''top_k''=100,
''top_p''=1.0}'
data_files:
- split: train
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''top_p''=1.0}/train-*'
- config_name: '{''do_sample''=True, ''beams''=1, ''temperature''=0.05, ''top_k''=1000,
''top_p''=0.5}'
data_files:
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''top_p''=0.5}/train-*'
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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''top_p''=0.5}'
data_files:
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''top_p''=0.5}/train-*'
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''top_p''=1.0}'
data_files:
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''top_p''=1.0}/train-*'
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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data_files:
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''top_p''=1.0}/train-*'
---
提供机构:
automated-research-group
原始信息汇总
数据集概述
数据集配置
配置1
- 配置名称:
{do_sample=False, beams=10} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96342, 样本数为1935
- 下载大小:
47737字节 - 数据集大小:
96342字节
配置2
- 配置名称:
{do_sample=False, beams=1} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为180990, 样本数为1935
- 下载大小:
78972字节 - 数据集大小:
180990字节
配置3
- 配置名称:
{do_sample=False, beams=5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96342, 样本数为1935
- 下载大小:
47737字节 - 数据集大小:
96342字节
配置4
- 配置名称:
{do_sample=True, beams=1, temperature=0.05, top_k=100, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96734, 样本数为1935
- 下载大小:
47798字节 - 数据集大小:
96734字节
配置5
- 配置名称:
{do_sample=True, beams=1, temperature=0.05, top_k=100, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96981, 样本数为1935
- 下载大小:
47639字节 - 数据集大小:
96981字节
配置6
- 配置名称:
{do_sample=True, beams=1, temperature=0.05, top_k=1000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96734, 样本数为1935
- 下载大小:
47798字节 - 数据集大小:
96734字节
配置7
- 配置名称:
{do_sample=True, beams=1, temperature=0.05, top_k=1000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96496, 样本数为1935
- 下载大小:
47755字节 - 数据集大小:
96496字节
配置8
- 配置名称:
{do_sample=True, beams=1, temperature=0.05, top_k=10000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96746, 样本数为1935
- 下载大小:
47779字节 - 数据集大小:
96746字节
配置9
- 配置名称:
{do_sample=True, beams=1, temperature=0.05, top_k=10000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96652, 样本数为1935
- 下载大小:
47680字节 - 数据集大小:
96652字节
配置10
- 配置名称:
{do_sample=True, beams=1, temperature=0.55, top_k=100, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为97052, 样本数为1935
- 下载大小:
47880字节 - 数据集大小:
97052字节
配置11
- 配置名称:
{do_sample=True, beams=1, temperature=0.55, top_k=100, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为111264, 样本数为1935
- 下载大小:
52779字节 - 数据集大小:
111264字节
配置12
- 配置名称:
{do_sample=True, beams=1, temperature=0.55, top_k=1000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为97197, 样本数为1935
- 下载大小:
47939字节 - 数据集大小:
97197字节
配置13
- 配置名称:
{do_sample=True, beams=1, temperature=0.55, top_k=1000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为110781, 样本数为1935
- 下载大小:
50670字节 - 数据集大小:
110781字节
配置14
- 配置名称:
{do_sample=True, beams=1, temperature=0.55, top_k=10000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为97258, 样本数为1935
- 下载大小:
47698字节 - 数据集大小:
97258字节
配置15
- 配置名称:
{do_sample=True, beams=1, temperature=0.55, top_k=10000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为111045, 样本数为1935
- 下载大小:
50862字节 - 数据集大小:
111045字节
配置16
- 配置名称:
{do_sample=True, beams=1, temperature=1.05, top_k=100, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为98672, 样本数为1935
- 下载大小:
48132字节 - 数据集大小:
98672字节
配置17
- 配置名称:
{do_sample=True, beams=1, temperature=1.05, top_k=100, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为134089, 样本数为1935
- 下载大小:
61398字节 - 数据集大小:
134089字节
配置18
- 配置名称:
{do_sample=True, beams=1, temperature=1.05, top_k=1000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为99516, 样本数为1935
- 下载大小:
48161字节 - 数据集大小:
99516字节
配置19
- 配置名称:
{do_sample=True, beams=1, temperature=1.05, top_k=1000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为137455, 样本数为1935
- 下载大小:
62213字节 - 数据集大小:
137455字节
配置20
- 配置名称:
{do_sample=True, beams=1, temperature=1.05, top_k=10000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为101581, 样本数为1935
- 下载大小:
48732字节 - 数据集大小:
101581字节
配置21
- 配置名称:
{do_sample=True, beams=1, temperature=1.05, top_k=10000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为134295, 样本数为1935
- 下载大小:
61358字节 - 数据集大小:
134295字节
配置22
- 配置名称:
{do_sample=True, beams=10, temperature=0.05, top_k=100, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96734, 样本数为1935
- 下载大小:
47798字节 - 数据集大小:
96734字节
配置23
- 配置名称:
{do_sample=True, beams=10, temperature=0.05, top_k=100, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96561, 样本数为1935
- 下载大小:
47834字节 - 数据集大小:
96561字节
配置24
- 配置名称:
{do_sample=True, beams=10, temperature=0.05, top_k=1000, top_p=0.5} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为96743, 样本数为1935
- 下载大小:
47805字节 - 数据集大小:
96743字节
配置25
- 配置名称:
{do_sample=True, beams=10, temperature=0.05, top_k=1000, top_p=1.0} - 特征:
id: 类型为stringprediction: 类型为stringsiqa_accuracy: 类型为bool
- 分割:
train: 字节数为97090, 样本数为1935
- 下载大小:
47822字节 - 数据集大小:
97090字节
配置26
- 配置名称:
{do_sample=True, beams=10, temperature=0.05, top_k=10000, top_p=0.5} - 特征:
id: 类型为string



