Changes
On May 23, 2022 at 8:23:12 AM UTC, kennedysenagi:
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Updated description of A symbolic regression model for estimating attainable maize yield under maize-legume farming systems in East Africa using climatic factors from
The data comprises of cleaned data in CSV format and python code
toThe data comprises of cleaned data in CSV format, and python code
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148 | "title": "A symbolic regression model for estimating attainable | 148 | "title": "A symbolic regression model for estimating attainable | ||
149 | maize yield under maize-legume farming systems in East Africa using | 149 | maize yield under maize-legume farming systems in East Africa using | ||
150 | climatic factors", | 150 | climatic factors", | ||
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