{"payload":{"pageCount":2,"repositories":[{"type":"Public","name":"gedi_tutorials","owner":"ornldaac","isFork":false,"description":"GEDI L3 and L4 Tutorials","allTopics":["lidar","gedi","nasa-data","altimetry","aboveground-biomass","canopy-metrics"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":113,"forksCount":49,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-09-04T16:09:04.674Z"}},{"type":"Public","name":"cms","owner":"ornldaac","isFork":false,"description":"NASA Carbon Monitoring System (CMS) Data Tutorial","allTopics":["cms","lidar","gedi","icesat-2"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":0,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-08-21T18:52:13.242Z"}},{"type":"Public","name":"deltax_workshop_2024","owner":"ornldaac","isFork":false,"description":"2024 Delta-X Applications Workshop","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":4,"forksCount":5,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-07-15T12:25:29.298Z"}},{"type":"Public","name":"daymet-python-opendap-xarray","owner":"ornldaac","isFork":false,"description":"Notebooks for Programmatic Access to Daymet V4 Data and Geospatial Analysis in Python and ArcGIS Pro","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":1,"starsCount":9,"forksCount":13,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-07-03T19:24:42.223Z"}},{"type":"Public","name":"deltax_workshop_2022","owner":"ornldaac","isFork":false,"description":"Delta-X Applications Workshop ","allTopics":["delft3d","uavsar","deltax","anuga","aviris-ng","airswot"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":9,"forksCount":5,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-05-15T16:26:10.278Z"}},{"type":"Public","name":"netCDF_data_in_R","owner":"ornldaac","isFork":false,"description":"How to open and work with NetCDF data in R","allTopics":[],"primaryLanguage":{"name":"HTML","color":"#e34c26"},"pullRequestCount":0,"issueCount":0,"starsCount":6,"forksCount":4,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-02-02T17:41:18.501Z"}},{"type":"Public","name":"r-geospatial-webinar","owner":"ornldaac","isFork":true,"description":"Earthdata Webinar March 2019","allTopics":[],"primaryLanguage":{"name":"HTML","color":"#e34c26"},"pullRequestCount":0,"issueCount":0,"starsCount":35,"forksCount":37,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2024-02-02T17:31:18.891Z"}},{"type":"Public","name":"tesvis","owner":"ornldaac","isFork":false,"description":"Resources on the ORNL DAAC's Terrestrial Ecology Subsetting & Visualization Services (TESViS) tools","allTopics":["ecology","modis","viirs","atl08"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":10,"forksCount":2,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2023-12-20T12:37:05.550Z"}},{"type":"Public","name":"granulemeta","owner":"ornldaac","isFork":false,"description":"A metadata extraction tool originally developed for use at the ORNL DAAC","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2023-10-05T14:43:36.352Z"}},{"type":"Public","name":"daymet-single-pixel-batch","owner":"ornldaac","isFork":false,"description":"Automating the download of multiple locations for the Daymet Single Pixel Tool","allTopics":[],"primaryLanguage":{"name":"Java","color":"#b07219"},"pullRequestCount":1,"issueCount":2,"starsCount":7,"forksCount":23,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2023-09-20T03:16:06.318Z"}},{"type":"Public","name":"daymet-normals-anomalies-years","owner":"ornldaac","isFork":false,"description":"OPeNDAP Access in Python to Derive Climate Normals and Anomalies of Daymet netCDF4 Yearly Data","allTopics":["webservice","daymet","python","thredds","opendap"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":0,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2023-03-09T16:33:36.106Z"}},{"type":"Public","name":"gridded_subset_example_script","owner":"ornldaac","isFork":false,"description":"","allTopics":[],"primaryLanguage":{"name":"Shell","color":"#89e051"},"pullRequestCount":0,"issueCount":0,"starsCount":5,"forksCount":8,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-11-02T01:04:20.317Z"}},{"type":"Public","name":"daymet-TDStiles-batch","owner":"ornldaac","isFork":false,"description":"","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":4,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-11-02T00:42:27.475Z"}},{"type":"Public","name":"how-to-earthdata-search-subscriptions","owner":"ornldaac","isFork":false,"description":"How To: Create a Subscription in Earthdata Search","allTopics":[],"primaryLanguage":null,"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":0,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-09-22T20:54:16.811Z"}},{"type":"Public","name":"Airborne_CO2","owner":"ornldaac","isFork":false,"description":"R tutorial for visualizing airborne, in-situ CO2 from netCDF","allTopics":["r","nasa","netcdf","airborne-data"],"primaryLanguage":null,"pullRequestCount":0,"issueCount":0,"starsCount":3,"forksCount":1,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-08-26T16:34:39.473Z"}},{"type":"Public","name":"uavsar_tutorials","owner":"ornldaac","isFork":false,"description":"Tutorials on UAVSAR","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":0,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-08-16T15:46:35.831Z"}},{"type":"Public","name":"AVIRIS-NG_PCA","owner":"ornldaac","isFork":false,"description":"","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":1,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-08-12T20:52:24.830Z"}},{"type":"Public","name":"sif-esdr_thredds","owner":"ornldaac","isFork":false,"description":"Spatial and Temporal Subsetting of Gridded SIF Data","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":0,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2022-01-28T16:20:46.540Z"}},{"type":"Public","name":"SPET-Analysis","owner":"ornldaac","isFork":false,"description":"","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":0,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2021-09-20T16:02:06.360Z"}},{"type":"Public","name":"ornldaac_icartt_to_netcdf","owner":"ornldaac","isFork":true,"description":"This is python 3 code for translating LaRC ICARTTs to CF compliant netCDFs for EVS missions.","allTopics":[],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":5,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-10-27T17:43:26.202Z"}},{"type":"Public","name":"identify-metadata","owner":"ornldaac","isFork":false,"description":"Code for REST web service to provide specific metadata for a time and place","allTopics":[],"primaryLanguage":null,"pullRequestCount":0,"issueCount":0,"starsCount":0,"forksCount":1,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-10-25T22:50:01.225Z"}},{"type":"Public","name":"webinar-modis-viirs-august2018","owner":"ornldaac","isFork":false,"description":"Webinar: NASA ORNL DAAC MODIS and VIIRS Data Tools and Services at your Fingertips","allTopics":["modis","viirs"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":1,"starsCount":17,"forksCount":7,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:12:38.306Z"}},{"type":"Public","name":"sdat_wms_python_clumping_index","owner":"ornldaac","isFork":false,"description":"Access ORNL DAAC WMS Service using Python","allTopics":["python","ogc-services","wms-service"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":1,"forksCount":0,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:11:49.256Z"}},{"type":"Public","name":"netcdf_open_visualize_csv","owner":"ornldaac","isFork":false,"description":"Opening and visualizing a netCDF file in Python","allTopics":["soilscape","visualization","csv","netcdf","soil-moisture"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":7,"forksCount":8,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:10:45.082Z"}},{"type":"Public","name":"modis_restservice_qc_filter_R","owner":"ornldaac","isFork":false,"description":"","allTopics":["webservice","r","rest-api","modis"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":11,"forksCount":5,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:10:00.613Z"}},{"type":"Public","name":"modis_restservice_qc_filter_Python","owner":"ornldaac","isFork":false,"description":"Access data from the MODIS web service and perform quality filtering in Python","allTopics":["python","webservice","rest-api","modis","viirs"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":22,"forksCount":19,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:09:51.716Z"}},{"type":"Public","name":"modis_global_tool_batch_order","owner":"ornldaac","isFork":false,"description":"Submit a batch of MODIS Global Subset Tool orders via the MODIS Web Service","allTopics":["webservice","modis","viirs","globaltool"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":4,"forksCount":9,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:09:39.848Z"}},{"type":"Public","name":"modis-viirs-rest-api-python","owner":"ornldaac","isFork":false,"description":"Examples for incorporating MODIS-VIIRS Web Service subsets into your Python workflows","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":3,"forksCount":2,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:09:33.427Z"}},{"type":"Public","name":"modis","owner":"ornldaac","isFork":false,"description":"MODIS Subsetting Tools and Services at ORNL DAAC","allTopics":["soap-web-services","modis","ornl-daac"],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":8,"forksCount":9,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:09:25.082Z"}},{"type":"Public","name":"daymet_netcdf_season-avg","owner":"ornldaac","isFork":false,"description":"Daymet netCDF file manipulation (read, write, plot, season analysis) in Python","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":9,"forksCount":6,"license":"Other","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2020-09-30T21:07:38.572Z"}}],"repositoryCount":39,"userInfo":null,"searchable":true,"definitions":[],"typeFilters":[{"id":"all","text":"All"},{"id":"public","text":"Public"},{"id":"source","text":"Sources"},{"id":"fork","text":"Forks"},{"id":"archived","text":"Archived"},{"id":"template","text":"Templates"}],"compactMode":false},"title":"ornldaac repositories"}