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"content": "Every once in a while, I stumble over a paper that has really nice figures, that make me curious to learn how they were created\n\nFiona Lippert et al.'s \"Learning to predict #spatiotemporal #movement dynamics from weather radar networks\" is definitely one of them\n\nLuckily they provide their plotting code at https://github.com/FionaLippert/FluxRGNN/blob/v.1.1.1/notebooks/radar_case_study.ipynb for all of us to learn from\n\n#OpenScience #FlowMaps #Mapping #GIScience #MovementEcology #MovementDataScience\n\nhttps://cdn.fosstodon.org/media_attachments/files/110/894/413/839/412/264/original/a3999587cde3382b.png\n\nhttps://cdn.fosstodon.org/media_attachments/files/110/894/434/059/083/833/original/618a5c35ed3a14a1.png",
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