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Eric D. Maloney, Andrew Gettelman, Yi Ming, J. David Neelin, Daniel Barrie, Annarita Mariotti, C.-C. Chen, Danielle R. B. Coleman, Yi-Hung Kuo, Bohar Singh, H. Annamalai, Alexis Berg, James F. Booth, Suzana J. Camargo, Aiguo Dai, Alex Gonzalez, Jan Hafner, Xianan Jiang, Xianwen Jing, Daehyun Kim, Arun Kumar, Yumin Moon, Catherine M. Naud, Adam H. Sobel, Kentaroh Suzuki, Fuchang Wang, Junhong Wang, Allison A. Wing, Xiaobiao Xu, and Ming Zhao

that may be written in diverse coding languages. PODs developed or under development for the first task include cloud microphysical processes; tropical and extratropical cyclones; ENSO teleconnections and atmospheric dynamics; land–atmosphere interactions; MJO moisture, convection, and radiative processes; precipitation diurnal cycle; AMOC; Arctic sea ice; lake-effect processes; North American monsoon; radiative forcing and cloud–circulation feedbacks; and temperature and precipitation extremes

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Fiaz Ahmed and J. David Neelin

in this study. Note that a land–sea mask was applied to ensure that selected grid points in the specified intervals did not contain data from both land and ocean. The remote sensing–based estimates of both precipitation and CWV—which rely on passive microwave imagers—suffer from greater uncertainty over land than over oceans owing to uncertainties in the estimates of the background surface emissivity ( Prigent et al. 2006 ; Tian et al. 2014 ). The satellite radiances are not assimilated into the

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