1 to 10 of 12,694 Results
Apr 7, 2026
Raval, Shreya; Martinelli, Sarah; Dykstra, Tatum; Ohri-Vachaspati, Punam, 2026, "Replication Data for: State and federal policies and school meal participation: A descriptive analysis from Arizona", https://doi.org/10.48349/ASU/S6OQPS, ASU Library Research Data Repository, V1, UNF:6:WuS56aMtT7xjEkGEdAgewA== [fileUNF]
This analytical dataset was created using data provided by the Arizona Department of Education (ADE) and the National Center for Education Statistics (NCES). It includes school meal participation rates for Arizona public and charter schools from July 2022 through June 2024. A data dictionary will be included to describe all variables and facilitate... |
Apr 7, 2026 -
Replication Data for: State and federal policies and school meal participation: A descriptive analysis from Arizona
Tabular Data - 2.4 KB - 4 Variables, 29 Observations - UNF:6:GZhoeNcI21MNFq9uhU0oUQ==
|
Apr 7, 2026 -
Replication Data for: State and federal policies and school meal participation: A descriptive analysis from Arizona
Tabular Data - 14.7 MB - 29 Variables, 67673 Observations - UNF:6:6iDXzqiGrY9dru3VDRh5Mg==
|
Apr 7, 2026 -
Replication Data for: State and federal policies and school meal participation: A descriptive analysis from Arizona
Plain Text - 4.4 KB -
MD5: 91b49bfb6dcd113ddec78bf6c0bc5b3c
|
Mar 19, 2026 - ASU Library Unit for Data Science
Abbasov, Namig; Mehta, Hetavi Dilip; Dwivedi, Vishnu; Abhiramacheri, Vaibhav; Panda, Abhipsa; Rathod, Mohak Narendrakumar; Chandrasekhar, Tejas; Ndegwa, Martin Mwangi; Zhang, Fan; Mysore Srinidhi, Chinmayi; Patel, Puravkumar; Tang, Wei Chieh; Bhatia, Sargun; Vongsenekeo, Tylor; Batra, Garima; Huang, Yaqing, 2026, "A Corpus of Artificial Intelligence Policies from US R1 Research Universities", https://doi.org/10.48349/ASU/VOYGW9, ASU Library Research Data Repository, V1, UNF:6:f3nmKdlJQZ3f7roPbZUNCw== [fileUNF]
This corpus contains official artificial intelligence (AI) policy documents issued by R1 universities across the United States. It includes guidelines on AI use in teaching and learning, academic integrity, research practices, data privacy, governance, and ethical considerations. The collection reflects how institutions are responding to generative... |
ZIP Archive - 477.7 KB -
MD5: a1f884daebd9d78837148cf8ba1a46f2
|
Adobe PDF - 146.1 KB -
MD5: f26a3cfc18b6e506940ae0f00cc76ba4
|
Tabular Data - 19.3 KB - 9 Variables, 133 Observations - UNF:6:f3nmKdlJQZ3f7roPbZUNCw==
|
Plain Text - 4.3 KB -
MD5: 8fb08d24222d5e94471761717771c487
|
Mar 18, 2026
Xiao, Xiao; Seekamp, Erin; Li, Peizhe, 2026, "Climate Adaptation Actions for Historic Structures at Cape Lookout National Seashore: Optimal Preservation Model Maps", https://doi.org/10.48349/ASU/5XXFLT, ASU Library Research Data Repository, V1
The dataset includes the outputs from the Optimal Preservation Model- A decision support tool of adaptation actions for historical structures in Cape Lookout National Seashore under the low budget scenario. The maps are 10-year outputs of adaptation actions applied to each historical structure in Portsmouth Village and Cape Lookout Village and stru... |
