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"content": "Next week our ECR group are starting a #MachineLearning sprint to speed up the development of our new #IceSheet surface mass budget emulation models. \n\nI'm looking for hints, ideas tips and inspiration to help smooth and accelerate the process. \n\nIf you're used to working in #Sprint mode, what in your opinion makes it work or otherwise hinders it? \n\nWhat can I as supervisor do to make it run better? \nAnd how should we celebrate it's conclusion? \n\nAlso, should me do an #AMA on the process? \n\n#ClimateScience #IceSheets #Greenland #Antarctica",
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