Views at harbor, San Pedro, CA, 1931
收藏yahoo-finance-data
该数据集包含从Yahoo! Finance、Nasdaq和U.S. Department of the Treasury获取的财务数据,旨在用于研究和教育目的。数据集包括公司详细信息、高管信息、财务指标、历史盈利、股票价格、股息事件、股票拆分、汇率和每日国债收益率等。每个数据集都有其来源、简要描述以及列出的列及其数据类型和描述。数据定期更新,并以Parquet格式提供,可通过DuckDB进行查询。
huggingface 收录
全国 1∶200 000 数字地质图(公开版)空间数据库
As the only one of its kind, China National Digital Geological Map (Public Version at 1∶200 000 scale) Spatial Database (CNDGM-PVSD) is based on China' s former nationwide measured results of regional geological survey at 1∶200 000 scale, and is also one of the nationwide basic geosciences spatial databases jointly accomplished by multiple organizations of China. Spatially, it embraces 1 163 geological map-sheets (at scale 1: 200 000) in both formats of MapGIS and ArcGIS, covering 72% of China's whole territory with a total data volume of 90 GB. Its main sources is from 1∶200 000 regional geological survey reports, geological maps, and mineral resources maps with an original time span from mid-1950s to early 1990s. Approved by the State's related agencies, it meets all the related technical qualification requirements and standards issued by China Geological Survey in data integrity, logic consistency, location acc racy, attribution fineness, and collation precision, and is hence of excellent and reliable quality. The CNDGM-PVSD is an important component of China' s national spatial database categories, serving as a spatial digital platform for the information construction of the State's national economy, and providing informationbackbones to the national and provincial economic planning, geohazard monitoring, geological survey, mineral resources exploration as well as macro decision-making.
DataCite Commons 收录
MultiTalk
MultiTalk数据集是由韩国科学技术院创建,包含超过420小时的2D视频,涵盖20种不同语言,旨在解决多语言环境下3D说话头生成的问题。该数据集通过自动化管道从YouTube收集,每段视频都配有语言标签和伪转录,部分视频还包含伪3D网格顶点。数据集的创建过程包括视频收集、主动说话者验证和正面人脸验证,确保数据质量。MultiTalk数据集的应用领域主要集中在提升多语言3D说话头生成的准确性和表现力,通过引入语言特定风格嵌入,使模型能够捕捉每种语言独特的嘴部运动。
arXiv 收录
URPC系列数据集, S-URPC2019, UDD
URPC系列数据集包括URPC2017至URPC2020DL,主要用于水下目标的检测和分类。S-URPC2019专注于水下环境的特定检测任务。UDD数据集信息未在README中详细描述。
github 收录
DIV2K
DIV2K数据集分为: 列车数据: 从800高清高分辨率图像开始,我们获得相应的低分辨率图像,并为2、3和4个降尺度因子提供高分辨率和低分辨率图像 验证数据: 100高清晰度高分辨率图像用于生成低分辨率对应图像,低分辨率从挑战开始提供,并用于参与者从验证服务器获得在线反馈; 当挑战的最后阶段开始时,高分辨率图像将被释放。 测试数据: 100多样的图像用于生成低分辨率的相应图像; 参与者将在最终评估阶段开始时收到低分辨率图像,并在挑战结束并确定获胜者后宣布结果。
OpenDataLab 收录