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Decision-oriented benchmarking to transform AI weather forecast access: Application to the Indian monsoon

Author

Listed:
  • Rajat Masiwal
  • Colin Aitken
  • Adam Marchakitus
  • Mayank Gupta
  • Katherine Kowal
  • Hamid A. Pahlavan
  • Tyler Yang
  • Y. Qiang Sun
  • Michael Kremer
  • Amir Jina
  • William R. Boos
  • Pedram Hassanzadeh

Abstract

Artificial intelligence weather prediction (AIWP) models now often outperform traditional physics-based models on common metrics while requiring orders-of-magnitude less computing resources and time. Open-access AIWP models thus hold promise as transformational tools for helping low- and middle-income populations make decisions in the face of high-impact weather shocks. Yet, current approaches to evaluating AIWP models focus mainly on aggregated meteorological metrics without considering local stakeholders' needs in decision-oriented, operational frameworks. Here, we introduce such a framework that connects meteorology, AI, and social sciences. As an example, we apply it to the 150-year-old problem of Indian monsoon forecasting, focusing on benefits to rain-fed agriculture, which is highly susceptible to climate change. AIWP models skillfully predict an agriculturally relevant onset index at regional scales weeks in advance when evaluated out-of-sample using deterministic and probabilistic metrics. This framework informed a government-led effort in 2025 to send 38 million Indian farmers AI-based monsoon onset forecasts, which captured an unusual weeks-long pause in monsoon progression. This decision-oriented benchmarking framework provides a key component of a blueprint for harnessing the power of AIWP models to help large vulnerable populations adapt to weather shocks in the face of climate variability and change.

Suggested Citation

  • Rajat Masiwal & Colin Aitken & Adam Marchakitus & Mayank Gupta & Katherine Kowal & Hamid A. Pahlavan & Tyler Yang & Y. Qiang Sun & Michael Kremer & Amir Jina & William R. Boos & Pedram Hassanzadeh, 2026. "Decision-oriented benchmarking to transform AI weather forecast access: Application to the Indian monsoon," Papers 2602.03767, arXiv.org.
  • Handle: RePEc:arx:papers:2602.03767
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