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index.json
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index.json
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{
"cmip6-zarr-jasmin": {
"package_tags": [
"pip",
"intake",
"virtualenv",
"intake_esm",
"fsspec",
"xarray"
],
"datasets": []
},
"baci-data-processor": {
"package_tags": [
"numpy",
"pip",
"pandas",
"virtualenv",
"sklearn",
"netCDF4",
"gdal,",
"matplotlib",
"seaborn"
],
"datasets": [
{
"dataset_id": "af13038e9caf499482a9bbb0b8fca2b8",
"title": "BACI: System State Vector (SSV) land surface time series dataset for the European regional site, 2000-2015, v1.0"
}
]
},
"plot-esacci-sst": {
"package_tags": [
"matplotlib",
"netCDF4",
"cartopy"
],
"datasets": [
{
"dataset_id": "c65ce27928f34ebd92224c451c2a8bed",
"title": "ESA Sea Surface Temperature Climate Change Initiative (ESA SST CCI): Analysis long term product version 1.1"
}
]
},
"S5P_NO2_NRTI_plot": {
"package_tags": [
"matplotlib"
],
"datasets": [
{
"dataset_id": "e34eaffcf6bb4f3c87fffe0814f5c9bf",
"title": "Sentinel 5P: Nitrogen Dioxide (NO2) Total Column level 2 data"
}
]
},
"pyam-example": {
"package_tags": [
"virtualenv",
"pip",
"pyam"
],
"datasets": []
},
"cru-python-example": {
"package_tags": [
"numpy",
"netCDF4",
"matplotlib",
"cartopy"
],
"datasets": [
{
"dataset_id": "b2f81914257c4188b181a4d8b0a46bff",
"title": "CRU TS4.02: Climatic Research Unit (CRU) Time-Series (TS) version 4.02 of high-resolution gridded data of month-by-month variation in climate (Jan. 1901- Dec. 2017)"
}
]
},
"add_conda_envs": {
"package_tags": [],
"datasets": []
},
"pygeode-virtualenv": {
"package_tags": [
"virtualenv",
"pip"
],
"datasets": []
},
"read-and-plot-with-xarray": {
"package_tags": [
"numpy",
"matplotlib",
"pandas",
"xarray"
],
"datasets": []
},
"rerunnable-virtualenv-maker": {
"package_tags": [
"virtualenv",
"pip"
],
"datasets": []
},
"virtualenvs-on-jasmin": {
"package_tags": [
"virtualenv",
"pip",
"fixnc"
],
"datasets": []
},
"notebook-tour-part-1": {
"package_tags": [],
"datasets": []
},
"notebook-tour-part-2": {
"package_tags": [
"math",
"pandas"
],
"datasets": []
},
"notebook-tour-part-3": {
"package_tags": [
"matplotlib"
],
"datasets": []
},
"notebook-tour-part-4": {
"package_tags": [
"matplotlib",
"xarray",
"cartopy"
],
"datasets": [
{
"dataset_id": "dd32b23f7e29424c8bc84f1f7b7678c3",
"title": "WCRP CMIP6: National Center for Atmospheric Research (NCAR) CESM2 model output for the \"abrupt-4xCO2\" experiment"
}
]
},
"notebook-tour-part-5": {
"package_tags": [
"pandas"
],
"datasets": []
},
"notebook-tour-part-6": {
"package_tags": [
"virtualenv",
"pip",
"fixnc"
],
"datasets": []
},
"notebook-tour-part-7": {
"package_tags": [],
"datasets": []
},
"notebook-tour": {
"package_tags": [
"pip",
"fixnc",
"pandas",
"virtualenv",
"math",
"matplotlib",
"xarray",
"cartopy"
],
"datasets": [
{
"dataset_id": "dd32b23f7e29424c8bc84f1f7b7678c3",
"title": "WCRP CMIP6: National Center for Atmospheric Research (NCAR) CESM2 model output for the \"abrupt-4xCO2\" experiment"
}
]
}
}