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license: gpl-3.0
task_categories:
- text-retrieval
- text-classification
language:
- zh
- en
tags:
- papers
- academic
- bibliography
- nlp
- computer-vision
- machine-learning
pretty_name: PaperVault
size_categories:
- 100K<n<1M
configs:
- config_name: papers
data_files: "cache/cache.jsonl.gz"
default: true
- config_name: abstract_backfill_progress
data_files: "cache/abstract_backfill_progress.jsonl.gz"
---
# PaperVault Dataset · 论文元数据库
## 🔎 项目简介 · Overview
PaperVault 是一份**持续自动更新**的统一论文元数据库,覆盖自然语言处理、计算机视觉、机器学习、数据挖掘、数据库、语音、系统、网络、安全、理论计算机科学、人机交互、计算机图形学与多媒体等方向的顶级会议与期刊。PaperVault is a **continuously-updated, unified metadata database** of papers from top-tier conferences and journals across NLP, Computer Vision, Machine Learning, Data Mining, Databases, Speech, Systems, Networking, Security, Theory, HCI, Graphics, and Multimedia.
> 🌐 源仓库 / Source: **[github.com/youngfish42/PaperVault](https://github.com/youngfish42/PaperVault)** — Web UI、REST API、采集流水线、Issues / PRs 全部在那里 · Web UI, REST API, crawling pipelines and issues/PRs all live there.
---
## 🆕 最近更新 · Recent Update
<!-- hf-recent-update-start -->
- 📅 **最近更新 · Last updated**: 2026-07-03 (Asia/Shanghai)
- 📊 **数据库规模 · Database size**: 635,187 篇论文 / 120 个刊物系列 / 162,906 篇含摘要 / 26,588 篇含开源代码(635,187 papers / 120 venue series / 162,906 with abstract / 26,588 with code)
<!-- hf-recent-update-end -->
---
## 📈 数据看板 · Statistics at a Glance
下列 4 张统计图与 `cache.jsonl.gz` 同源同步,反映本数据集的最新状态。The four charts below are generated from the same `cache.jsonl.gz` and always reflect the latest state of this dataset.
<p align="center">
<img src="pics/stats/stats_overview.svg" alt="Statistics Overview" width="850" />
</p>
<p align="center">
<img src="pics/stats/papers_by_category.svg" alt="Papers by Research Field" width="850" />
</p>
<p align="center">
<img src="pics/stats/papers_by_year.svg" alt="Annual Paper Collection Trend" width="850" />
</p>
<p align="center">
<img src="pics/stats/wordcloud.svg" alt="Publication Series Word Cloud" width="900" />
</p>
---
## 📦 数据集内容 · What's in this dataset
| 路径 Path | 子集 Subset | 格式 Format | 说明 Description |
|---|---|---|---|
| `cache/cache.jsonl.gz` | `papers`(默认 / default) | gzip-compressed JSON Lines (UTF-8) | 每行一篇论文 · One paper per line; one JSON object per line |
| `cache/abstract_backfill_progress.jsonl.gz` | `abstract_backfill_progress` | gzip-compressed JSON Lines (UTF-8) | 摘要回填流水线的进度/断点记录,**不是论文元数据**;仅供工作流恢复使用 · Append-only progress log of the abstract-backfill pipeline (**not paper records**); used by the workflow to resume between runs |
Hugging Face 会自动为 `cache.jsonl.gz` 生成 Parquet 视图,也可直接用 `datasets.load_dataset(...)` 读取,无需手动解压。Hugging Face also exposes an auto-generated Parquet view, so `datasets.load_dataset(...)` works out of the box.
> 💡 Dataset Viewer 与 `datasets.load_dataset("youngfish42/PaperVault")` 默认展示/加载的都是 `papers` 子集(即 `cache/cache.jsonl.gz`)。如需查看回填进度,请在 Viewer 顶部下拉框切换到 `abstract_backfill_progress`,或调用 `load_dataset("youngfish42/PaperVault", name="abstract_backfill_progress")`。The Dataset Viewer and `datasets.load_dataset("youngfish42/PaperVault")` both default to the `papers` subset (`cache/cache.jsonl.gz`). To inspect backfill progress, switch the Viewer's subset dropdown to `abstract_backfill_progress` or call `load_dataset("youngfish42/PaperVault", name="abstract_backfill_progress")`.
### 📐 字段 Schema
| Field 字段 | Type 类型 | Notes 说明 |
|---|---|---|
| `paper_name` | string | 论文标题(已归一化)· Normalised paper title |
| `paper_authors` | list[string] | 作者列表,按原始顺序 · Author names in order |
| `paper_url` | string | 论文在原始平台的链接(PDF 或落地页)· Canonical URL on the venue's site (PDF or landing page) |
| `paper_abstract` | string | 摘要;未回填时为空字符串 · Abstract; may be empty when not yet backfilled |
| `paper_code` | string | 从摘要中抽取出的 GitHub 仓库 URL;`"#"` 是「未发现代码链接」的占位符 · GitHub repository URL extracted from the abstract; `"#"` is the sentinel for "no code link discovered" |
| `conf` | string | 会议+年份标识,如 `ACL2024`、`NIPS2023`、`CVPR2025`;去掉末尾四位数字即可得到会议系列。注意 NeurIPS Proceedings 沿用历史命名 `NIPS{year}`。Venue + year identifier (e.g. `ACL2024`, `NIPS2023`, `CVPR2025`). Strip the trailing 4-digit year to recover the venue series. Note that NeurIPS Proceedings entries use the historical name `NIPS{year}`. |
> 缺失字段请按空字符串处理。Treat missing fields as empty strings.
---
## ⬇️ 获取方式 · How to download
下面三种方式任选其一即可,**无需克隆 GitHub 仓库**。Pick any one of the three options below — **no GitHub clone is required**.
#### 方式 A · Option A — `huggingface_hub`(推荐 / recommended)
```python
from huggingface_hub import hf_hub_download
import gzip, json
path = hf_hub_download(
repo_id="youngfish42/PaperVault",
filename="cache/cache.jsonl.gz",
repo_type="dataset",
)
with gzip.open(path, "rt", encoding="utf-8") as f:
for line in f:
record = json.loads(line)
# 在这里处理一条记录 · do something with the record
```
#### 方式 B · Option B — `datasets`
```python
from datasets import load_dataset
ds = load_dataset("youngfish42/PaperVault")
print(ds[next(iter(ds))][0])
```
> 数据集只有一个默认 split(非 ML 训练集),不要传 `split="train"`。Single default split — do **not** pass `split="train"`.
#### 方式 C · Option C — `huggingface-cli` / 直接 HTTPS · Plain HTTPS
```bash
huggingface-cli download youngfish42/PaperVault \
cache/cache.jsonl.gz --repo-type dataset --local-dir ./data
```
> 💡 文件压缩后约 120 MB(会随数据持续增长),解压后是 GB 级 JSONL 流,请按行流式读取,不要整体载入内存。The file is ~120 MB compressed (and growing) and decompresses to a multi-GB JSONL stream. Stream it line-by-line rather than loading the whole thing into memory.
---
## 🔁 更新节奏 · Update cadence
数据集由三个 GitHub Actions 工作流负责重建并推送到本 Hub 仓库 / The dataset is rebuilt and pushed to this Hub repo by three GitHub Actions workflows:
| 工作流 Workflow | 触发节奏 Schedule | 推送的内容 What it pushes |
|---|---|---|
| `collect_papers` | 每月 15 号 16:00 UTC + 手动触发 · 15th of every month at 16:00 UTC + `workflow_dispatch` | 增量抓取新发现的会议/年份组合 · Incremental crawl of newly-discovered conference/year combinations |
| `backfill_abstracts` | 每月 1 号 00:00 UTC + 手动触发 · 1st of every month at 00:00 UTC + `workflow_dispatch` | 为已有论文回填 `paper_abstract` · Adds `paper_abstract` for papers that were collected without one |
| `update_readme` | 仅手动触发 (`workflow_dispatch`) · Manual only (`workflow_dispatch`) | 默认仅刷新 README 与统计;当输入参数 `mode=force` 时执行全量重建 · Refreshes the README and statistics by default; performs a full rebuild only when invoked with `mode=force` |
每次推送都使用 Hugging Face 的 `parent_commit` 乐观锁机制,避免并发覆盖。Each push uses Hugging Face's `parent_commit` optimistic-lock mechanism to avoid silently overwriting concurrent updates.
---
## 🔗 关联仓库 · Related repository
如果你需要完整的搜索 Web UI(智能搜索 + Web of Science 风格的高级查询 DSL)、REST API(`/api/v1/*`)、抓取 / 合并 / 摘要回填流水线源码、收录会议范围、统计仪表盘、项目截图或贡献指南,请前往 GitHub 项目仓库。If you are looking for the full search Web UI (smart search + Web-of-Science-style advanced query DSL), the REST API (`/api/v1/*`), the crawling / merging / abstract-backfill pipelines source code, conference coverage, statistics dashboards, screenshots or contribution guidelines, please visit the GitHub repository.
👉 **[github.com/youngfish42/PaperVault](https://github.com/youngfish42/PaperVault)**
---
## 📜 许可证 · License
代码以 [GPL-3.0](https://github.com/youngfish42/PaperVault/blob/main/LICENSE) 发布;每条论文记录的著作权仍属于原作者 / 出版方,本数据集仅重新分发公开可获取的元数据与链接。Code is released under [GPL-3.0](https://github.com/youngfish42/PaperVault/blob/main/LICENSE); individual paper records remain the IP of their authors/publishers — this dataset only redistributes publicly available bibliographic metadata and links.
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