Feb. 5, 2024, 3:42 p.m. | Md Shazid Islam Md Saydur Rahman Md Saad Ul Haque Farhana Akter Tumpa Md Sanzid Bin Hossain Abul Al Arabi

cs.LG updates on arXiv.org arxiv.org

Rain precipitation prediction is a challenging task as it depends on weather and meteorological features which vary from location to location. As a result, a prediction model that performs well at one location does not perform well at other locations due to the distribution shifts. In addition, due to global warming, the weather patterns are changing very rapidly year by year which creates the possibility of ineffectiveness of those models even at the same location as time passes. In our …

cs.ai cs.lg deep learning distribution features global global warming location locations precipitation prediction rain weather

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