Python Maps

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Python Maps

Python Maps

@PythonMaps

Mapping the world with Python. Buy my book here - https://t.co/hAaaAxtIO9

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Python Maps
Python Maps@PythonMaps·
Ending 2023 with my favourite map. South American forests. See you next year!
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Python Maps@PythonMaps·
Forest Loss. This map shows forest loss since 2000 in Africa. Defined as a stand-replacement disturbance, or a change from a forest to non-forest state.
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Python Maps
Python Maps@PythonMaps·
Forest Loss. This map shows forest loss since 2000 in South America. Defined as a stand-replacement disturbance, or a change from a forest to non-forest state.
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Python Maps
Python Maps@PythonMaps·
Forest Loss. This map shows forest loss since 2000 in Asia. Defined as a stand-replacement disturbance, or a change from a forest to non-forest state. For those who care - projection is EPSG:27703 is WGS 84 / Equi7 Asia
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Python Maps@PythonMaps·
Forest Loss. This map shows forest loss since 2000 in Oceania. Defined as a stand-replacement disturbance, or a change from a forest to non-forest state.
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Python Maps
Python Maps@PythonMaps·
Forest Loss. This map shows forest loss since 2000 in North America. Defined as a stand-replacement disturbance, or a change from a forest to non-forest state.
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Python Maps
Python Maps@PythonMaps·
Forest Loss. This map shows forest loss since 2000 in Europe. Defined as a stand-replacement disturbance, or a change from a forest to non-forest state.
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Python Maps
Python Maps@PythonMaps·
This bivariate map uses WRI's Aqueduct 4.0 data to show projected gross water demand (white→orange) vs. blue water availability (blue→purple) under a business-as-usual scenario by 2065–2095.
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Python Maps@PythonMaps·
This bivariate map uses WRI's Aqueduct 4.0 data to show projected gross water demand (white→orange) vs. blue water availability (blue→purple) under a business-as-usual scenario by 2065–2095.
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Python Maps@PythonMaps·
This bivariate map uses WRI's Aqueduct 4.0 data to show projected gross water demand (white→orange) vs. blue water availability (blue→purple) under a business-as-usual scenario by 2065–2095.
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Python Maps@PythonMaps·
This bivariate map uses WRI's Aqueduct 4.0 data to show projected gross water demand (white→orange) vs. blue water availability (blue→purple) under a business-as-usual scenario by 2065–2095.
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Python Maps@PythonMaps·
This bivariate map uses WRI's Aqueduct 4.0 data to show projected gross water demand (white→orange) vs. blue water availability (blue→purple) under a business-as-usual scenario by 2065–2095. For those who care - projection is EPSG:27703 is WGS 84 / Equi7 Asia
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Python Maps@PythonMaps·
This bivariate map uses WRI's Aqueduct 4.0 data to show projected gross water demand (white→orange) vs. blue water availability (blue→purple) under a business-as-usual scenario by 2065–2095. Inspiration came from this post from @Esri - esri.com/arcgis-blog/pr…
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Python Maps@PythonMaps·
@Nikki_Bea_ Lots of evidence that mars had water in the past but no evidence of grass
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Nikki :)¹⁸⁶🐊
Nikki :)¹⁸⁶🐊@Nikki_Bea_·
@PythonMaps There's no water on mars either, kinda why it's a "what it would look like if it did have this"
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Nikita Bier
Nikita Bier@nikitabier·
Over the past month, we have identified a number of large accounts that have been programmatically reuploading content from smaller accounts to game the revenue share program and circumvent crediting the original author. We are now identifying these posts and allocating the impressions entirely to the creator. If you have insightful commentary about a post, we recommend using the Share Video or Quote feature to ensure your posts are properly attributed.
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Python Maps@PythonMaps·
@DanNeidle @Heccles94 The ruthlessness with which you pursue and enrage the entire political spectrum is nothing short of commendable Dan.
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Dan Neidle
Dan Neidle@DanNeidle·
@Heccles94 So lying is okay? Or not okay? I think you need to pick one.
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Harry Eccles
Harry Eccles@Heccles94·
When will the Times apologise for misleading the nation for 238 years
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