The Cornell Agricultural Systems Testbed and Demonstration site (CAST) for the Farm of the Future is a testbed and demonstration site for data-driven technologies and management practices where coordinated technology development, testing, demonstration, systematic integration of data, and exchanges of physical materials and ideas are shaping the Farm of the Future. CAST is a cluster of three farms in NY State that hosts data-driven research, extension, and education for crops and dairy production under the aegis of the Cornell Institute for Digital Agriculture. CAST advances climate-smart data-driven solutions for food systems, integrating commercially available and in-the-pipeline technologies and transformative practices.
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This content will become publicly available on June 2, 2026
The Cornell Agricultural Systems Testbed and Demonstration site (CAST) for the Farm of the Future
The Cornell Agricultural Systems Testbed and Demonstration site (CAST) for the Farm of the Future is a testbed and demonstration site for data-driven technologies and management practices where coordinated technology development, testing, demonstration, systematic integration of data, and exchanges of physical materials and ideas are shaping the Farm of the Future. CAST is a cluster of three farms in NY State that hosts data-driven research, extension, and education for crops and dairy production under the aegis of the Cornell Institute for Digital Agriculture. CAST advances climate-smart data-driven solutions for food systems, integrating commercially available and in-the-pipeline technologies and transformative practices.
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- Award ID(s):
- 2211941
- PAR ID:
- 10633118
- Publisher / Repository:
- 3rd U.S. Precision Livestock Farming Conference
- Date Published:
- Subject(s) / Keyword(s):
- PLF, testbed, demonstration site, validation, data integration, analytics
- Format(s):
- Medium: X
- Location:
- Lincoln, Nebraska
- Sponsoring Org:
- National Science Foundation
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