rows { options { physical_type: PHYSICAL_STREAM_TYPE_QUADS max_name_table_size: 128 max_prefix_table_size: 16 max_datatype_table_size: 16 logical_type: LOGICAL_STREAM_TYPE_DATASETS version: 2 } } rows { prefix { value: "https://w3id.org/np/" } } rows { name { value: "RAWsLRkn9NmVndAHyyuYLa3SafzhbLUGQQrVh9hGd8z34" } } rows { namespace { name: "this" value { prefix_id: 1 } } } rows { prefix { value: "https://w3id.org/np/RAWsLRkn9NmVndAHyyuYLa3SafzhbLUGQQrVh9hGd8z34/" } } rows { name { } } rows { namespace { name: "sub" value { prefix_id: 2 } } } rows { prefix { value: "http://www.nanopub.org/nschema#" } } rows { namespace { name: "np" value { prefix_id: 3 name_id: 2 } } } rows { prefix { value: "http://purl.org/dc/terms/" } } rows { namespace { name: "dct" value { prefix_id: 4 name_id: 2 } } } rows { prefix { value: "http://purl.org/pav/" } } rows { namespace { name: "pav" value { prefix_id: 5 name_id: 2 } } } rows { prefix { value: "http://www.w3.org/1999/02/22-rdf-syntax-ns#" } } rows { namespace { name: "rdf" value { prefix_id: 6 name_id: 2 } } } rows { prefix { value: "http://www.w3.org/2002/07/owl#" } } rows { namespace { name: "owl" value { prefix_id: 7 name_id: 2 } } } rows { prefix { value: "http://www.w3.org/2004/03/trix/rdfg-1/" } } rows { namespace { name: "rdfg" value { prefix_id: 8 name_id: 2 } } } rows { prefix { value: "http://purl.org/dc/elements/1.1/" } } rows { namespace { name: "dce" value { prefix_id: 9 name_id: 2 } } } rows { prefix { value: "http://www.w3.org/2001/XMLSchema#" } } rows { namespace { name: "xsd" value { prefix_id: 10 name_id: 2 } } } rows { prefix { value: "http://www.w3.org/2000/01/rdf-schema#" } } rows { namespace { name: "rdfs" value { prefix_id: 11 name_id: 2 } } } rows { prefix { value: "http://www.w3.org/ns/prov#" } } rows { namespace { name: "prov" value { prefix_id: 12 name_id: 2 } } } rows { prefix { value: "http://purl.org/nanopub/x/" } } rows { namespace { name: "npx" value { prefix_id: 13 name_id: 2 } } } rows { name { value: "hasAssertion" } } rows { name { value: "assertion" } } rows { name { value: "Head" } } rows { quad { s_iri { prefix_id: 1 name_id: 1 } p_iri { prefix_id: 3 name_id: 3 } o_iri { prefix_id: 2 } g_iri { } } } rows { name { value: "hasProvenance" } } rows { name { value: "provenance" } } rows { quad { p_iri { prefix_id: 3 } o_iri { prefix_id: 2 } } } rows { name { value: "hasPublicationInfo" } } rows { name { value: "pubinfo" } } rows { quad { p_iri { prefix_id: 3 } o_iri { prefix_id: 2 } } } rows { name { value: "type" } } rows { name { value: "Nanopublication" } } rows { quad { p_iri { prefix_id: 6 } o_iri { prefix_id: 3 } } } rows { prefix { value: "http://eurovoc.europa.eu/" } } rows { name { value: "2114" } } rows { prefix { value: "http://schema.org/" } } rows { name { value: "description" } } rows { quad { s_iri { prefix_id: 14 } p_iri { prefix_id: 15 } o_literal { } g_iri { prefix_id: 2 name_id: 4 } } } rows { name { value: "name" } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Oceanography" } } } rows { name { value: "DefinedTerm" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 15 } } } rows { name { value: "2919" } } rows { quad { s_iri { prefix_id: 14 } p_iri { prefix_id: 15 name_id: 13 } o_literal { } } } rows { quad { p_iri { } o_literal { lex: "Environmental research" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 15 } } } rows { name { value: "c_a935cf3f" } } rows { quad { s_iri { prefix_id: 14 name_id: 17 } p_iri { prefix_id: 15 name_id: 13 } o_literal { } } } rows { quad { p_iri { } o_literal { lex: "Earth observation" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 15 } } } rows { prefix { value: "https://210507-004.oceansvirtual.com/view/content/skdwP611e3583eba2b/" } } rows { name { value: "ecf65c2aaf278557ad05c213247d67a54196c9376a0aed8f1875681f182daeed" } } rows { name { value: "author" } } rows { prefix { id: 4 } } rows { name { value: "mailto:environmental.ds.book@gmail.com" } } rows { quad { s_iri { prefix_id: 16 name_id: 18 } p_iri { prefix_id: 15 } o_iri { prefix_id: 4 } } } rows { name { value: "contentUrl" } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://210507-004.oceansvirtual.com/view/content/skdwP611e3583eba2b/ecf65c2aaf278557ad05c213247d67a54196c9376a0aed8f1875681f182daeed" } } } rows { name { value: "creator" } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { name { value: "dateCreated" } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-28 16:07:40.875698+00:00" } } } rows { name { value: "dateModified" } } rows { quad { p_iri { } o_literal { lex: "2022-01-28 16:07:40.876373+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Related publication of the modelling published in OCEANS 2021" } } } rows { name { value: "license" } } rows { prefix { value: "https://choosealicense.com/no-permission/" } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Detecting macro floating objects on coastal water bodies using sentinel-2 data" } } } rows { name { value: "sdDatePublished" } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-28 16:07:40.875698+00:00" } } } rows { prefix { id: 7 value: "http://purl.org/dc/terms/" } } rows { name { value: "BibliographicResource" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 7 name_id: 27 } } } rows { prefix { value: "http://purl.org/wf4ever/wf4ever#" } } rows { name { value: "Resource" } } rows { quad { o_iri { prefix_id: 8 } } } rows { name { value: "MediaObject" } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { value: "https://doi.org/10.5194/" } } rows { name { value: "isprs-annals-V-3-2021-285-2021" } } rows { quad { s_iri { prefix_id: 9 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://doi.org/10.5194/isprs-annals-V-3-2021-285-2021" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-28 16:07:43.339740+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2022-01-28 16:07:43.341303+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Publication with further details of the modelling published in ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Towards detecting floating objects on a global scale with learned spatial features using sentinel 2" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-28 16:07:43.339740+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 7 name_id: 27 } } } rows { quad { o_iri { prefix_id: 8 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { value: "https://doi.org/10.5281/" } } rows { name { value: "zenodo.5827376" } } rows { quad { s_iri { prefix_id: 10 name_id: 31 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://doi.org/10.5281/zenodo.5827376" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-28 16:07:34.662177+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2022-02-06 10:46:37.537458+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Contains input analysis-ready input images used in the Jupyter notebook of Detecting floating objects using deep learning and Sentinel-2 imagery" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Input images" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-28 16:07:34.662177+00:00" } } } rows { name { value: "Dataset" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 32 } } } rows { quad { o_iri { name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { name { value: "zenodo.5911143" } } rows { quad { s_iri { prefix_id: 10 name_id: 33 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://doi.org/10.5281/zenodo.5911143" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-28 16:07:38.160206+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2022-02-06 10:41:30.253061+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Contains outputs, (predictions and interactive figure), generated in the Jupyter notebook of Detecting floating objects using deep learning and Sentinel-2 imagery" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Outputs" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-28 16:07:38.160206+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 32 } } } rows { quad { o_iri { name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { value: "https://edsbook.org/notebooks/gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/" } } rows { name { value: "notebook.html" } } rows { quad { s_iri { prefix_id: 11 name_id: 34 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://edsbook.org/notebooks/gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/notebook.html" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-31 11:16:52.095424+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-20 16:25:54.775078+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Rendered version of the Jupyter Notebook hosted by the Environmental Data Science Book" } } } rows { name { value: "encodingFormat" } } rows { quad { p_iri { name_id: 35 } o_literal { lex: "text/html" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Online rendered version of the Jupyter notebook" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-31 11:16:52.095424+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { name { value: "publication" } } rows { quad { o_iri { name_id: 36 } } } rows { prefix { value: "https://github.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/blob/main/.lock/" } } rows { name { value: "conda-linux-64.lock" } } rows { quad { s_iri { prefix_id: 12 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://github.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/blob/main/.lock/conda-linux-64.lock" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-31 11:16:54.901085+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-20 16:16:03.886974+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Lock conda file for linux-64 OS of the Jupyter Book hosted by the Environmental Data Science Book" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Lock conda file for linux-64" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-31 11:16:54.901085+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { name { value: "conda-osx-64.lock" } } rows { quad { s_iri { prefix_id: 12 name_id: 38 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://github.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/blob/main/.lock/conda-osx-64.lock" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-31 11:16:56.332731+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-20 16:16:22.474043+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Lock conda file for osx-64 OS of the Jupyter Book hosted by the Environmental Data Science Book" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Lock conda file for osx-64" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-31 11:16:56.332731+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { name { value: "requirements.txt" } } rows { quad { s_iri { prefix_id: 12 name_id: 39 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://github.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/blob/main/.lock/requirements.txt" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-31 11:27:45.283002+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-20 16:16:40.601248+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Pip requirements file containing libraries to install after conda lock" } } } rows { quad { p_iri { name_id: 35 } o_literal { lex: "text/plain" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Pip requirements for lock conda environments" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-31 11:27:45.283002+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { value: "https://raw.githubusercontent.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/main/.binder/" } } rows { name { value: "environment.yml" } } rows { quad { s_iri { prefix_id: 13 name_id: 40 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://raw.githubusercontent.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/main/.binder/environment.yml" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-31 11:32:03.379546+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-20 16:17:12.224714+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Conda environment when user want to have the same libraries installed without concerns of package versions" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Conda environment" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-31 11:32:03.379546+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { id: 1 value: "https://raw.githubusercontent.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/main/" } } rows { name { value: "notebook.ipynb" } } rows { quad { s_iri { prefix_id: 1 name_id: 41 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 4 } } } rows { quad { p_iri { prefix_id: 15 } o_literal { lex: "https://raw.githubusercontent.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/main/notebook.ipynb" } } } rows { quad { p_iri { } o_iri { prefix_id: 4 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2022-01-28 16:07:32.857476+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-20 16:21:26.513472+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "Jupyter Notebook hosted by the Environmental Data Science Book" } } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Jupyter notebook" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2022-01-28 16:07:32.857476+00:00" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { id: 3 value: "http://w3id.org/ro/" } } rows { name { value: "earth-scienceJupyterNotebook" } } rows { quad { o_iri { prefix_id: 3 name_id: 42 } } } rows { prefix { id: 2 value: "https://schema.org/" } } rows { name { value: "softwareRequirements" } } rows { prefix { id: 14 value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/resources/" } } rows { name { value: "83b2492d-b4bb-4f8c-acc9-775e288a971c" } } rows { quad { p_iri { prefix_id: 2 } o_iri { prefix_id: 14 } } } rows { prefix { id: 16 value: "https://w3id.org/ro-id/" } } rows { name { value: "020993ea-2f43-43ac-a9c7-ba93bde7ee85" } } rows { quad { s_iri { prefix_id: 16 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "research" } } } rows { prefix { id: 9 value: "https://w3id.org/ro/terms/earth-science#" } } rows { name { value: "Concept" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 46 } } } rows { name { value: "normScore" } } rows { quad { p_iri { } o_literal { lex: "12.621359223300972" } } } rows { name { value: "score" } } rows { quad { p_iri { } o_literal { lex: "9.1" } } } rows { name { value: "0500450f-25f6-46cf-95ec-6ac8dfda26a2" } } rows { quad { s_iri { prefix_id: 16 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Detecting floating objects using deep learning and Sentinel-2 imagery (Jupyter Notebook) published in the Environmental Data Science book." } } } rows { name { value: "Sentence" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 50 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "43.54354354354354" } } } rows { quad { p_iri { } o_literal { lex: "43.5" } } } rows { name { value: "05ff7c62-0fda-4b2d-b654-f8b8c0121fdd" } } rows { quad { s_iri { prefix_id: 16 name_id: 51 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "communications and radar" } } } rows { name { value: "NASA" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 52 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "100.0" } } } rows { quad { p_iri { } o_literal { lex: "0.5148147940635681" } } } rows { name { value: "1332a0b9-94f4-4f2c-a4dc-d52e99e1d61a" } } rows { prefix { id: 7 value: "http://purl.org/wf4ever/roevo#" } } rows { name { value: "isFinalized" } } rows { quad { s_iri { prefix_id: 16 name_id: 53 } p_iri { prefix_id: 7 } o_literal { lex: "False" } } } rows { name { value: "isSnapshotOf" } } rows { name { value: "b34facfa-cea8-48f5-89f6-f11ce00812a9" } } rows { quad { p_iri { } o_iri { prefix_id: 16 } } } rows { name { value: "snapshotedAtTime" } } rows { quad { p_iri { prefix_id: 7 } o_literal { lex: "2023-03-20 16:23:52.751237+00:00" } } } rows { name { value: "snapshotedBy" } } rows { prefix { id: 10 value: "https://w3id.org/ro-id/users/" } } rows { name { value: "environmental.ds.book%40gmail.com" } } rows { quad { p_iri { } o_iri { prefix_id: 10 } } } rows { prefix { value: "http://purl.org/wf4ever/ro#" } } rows { name { value: "ResearchObject" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 11 name_id: 60 } } } rows { name { value: "SnapshotRO" } } rows { quad { o_iri { prefix_id: 7 } } } rows { name { value: "13fde29e-20c9-451d-887a-5b4a6227186b" } } rows { quad { s_iri { prefix_id: 16 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "object" } } } rows { name { value: "Lemma" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "11.76470588235294" } } } rows { quad { p_iri { } o_literal { lex: "9.4" } } } rows { name { value: "1e152ae0-301a-4eb3-b26a-2d3cfab6721b" } } rows { quad { s_iri { prefix_id: 16 name_id: 64 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "research object" } } } rows { name { value: "Phrase" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 65 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "34.28280773143439" } } } rows { quad { p_iri { } o_literal { lex: "33.7" } } } rows { name { value: "1ed45077-cf8d-4057-b433-4e81ad95a093" } } rows { quad { s_iri { prefix_id: 16 name_id: 66 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Environmental Data Science" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "16.02002503128911" } } } rows { quad { p_iri { } o_literal { lex: "12.8" } } } rows { name { value: "24083871-b87f-4b16-8175-ffe485649e03" } } rows { quad { s_iri { prefix_id: 16 name_id: 67 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "publishing" } } } rows { prefix { value: "https://w3id.org/contentdesc#" } } rows { name { value: "Domain" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 12 name_id: 68 } } } rows { quad { p_iri { prefix_id: 9 name_id: 47 } o_literal { lex: "100.0" } } } rows { quad { p_iri { } o_literal { lex: "4.8" } } } rows { name { value: "39ee4bb8-6053-4f40-b378-a9fed6ee5b01" } } rows { quad { s_iri { prefix_id: 16 name_id: 69 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "notebook" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "12.621359223300972" } } } rows { quad { p_iri { } o_literal { lex: "9.1" } } } rows { name { value: "42a5f00d-7eee-4dbe-85d6-c192fa6e135e" } } rows { quad { s_iri { prefix_id: 16 name_id: 70 } p_iri { prefix_id: 7 name_id: 54 } o_literal { lex: "False" } } } rows { quad { p_iri { } o_iri { prefix_id: 16 } } } rows { quad { p_iri { prefix_id: 7 } o_literal { lex: "2023-03-20 16:26:43.968412+00:00" } } } rows { quad { p_iri { } o_iri { prefix_id: 10 } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 11 name_id: 60 } } } rows { quad { o_iri { prefix_id: 7 } } } rows { name { value: "442b70f2-1904-465a-a6ef-89213f9d63d5" } } rows { quad { s_iri { prefix_id: 16 name_id: 71 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "detection" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "15.395284327323164" } } } rows { quad { p_iri { } o_literal { lex: "11.1" } } } rows { name { value: "46d0477b-8855-4835-9e3b-5cda9e9380cb" } } rows { quad { s_iri { prefix_id: 16 name_id: 72 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "notebook" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "12.891113892365455" } } } rows { quad { p_iri { } o_literal { lex: "10.3" } } } rows { name { value: "48a5e4d6-4b13-40aa-a696-d5fcdd2ac5cb" } } rows { quad { s_iri { prefix_id: 16 name_id: 73 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Language" } } } rows { name { value: "IPTC" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 74 } } } rows { name { value: "path" } } rows { quad { p_iri { } o_literal { lex: "Arts, culture and entertainment/Culture/Language" } } } rows { name { value: "50782314-83c8-4add-ad12-727a8a9f8ba1" } } rows { quad { s_iri { prefix_id: 16 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "imagery" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "13.730929264909848" } } } rows { quad { p_iri { } o_literal { lex: "9.9" } } } rows { name { value: "59fb5813-d6c0-41b0-96a8-9ce42df766ee" } } rows { quad { s_iri { prefix_id: 16 name_id: 77 } p_iri { prefix_id: 7 name_id: 54 } o_literal { lex: "False" } } } rows { quad { p_iri { } o_iri { prefix_id: 16 } } } rows { quad { p_iri { prefix_id: 7 } o_literal { lex: "2022-10-27 21:00:20.753040+00:00" } } } rows { quad { p_iri { } o_iri { prefix_id: 10 } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 11 name_id: 60 } } } rows { quad { o_iri { prefix_id: 7 } } } rows { name { value: "5b42da77-0525-41da-9951-7af6507a3010" } } rows { quad { s_iri { prefix_id: 16 name_id: 78 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Environmental Data Science book" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 65 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "15.259409969481181" } } } rows { quad { p_iri { } o_literal { lex: "15.0" } } } rows { name { value: "670fa719-f56f-4fcd-94a6-f224c040ca7a" } } rows { quad { s_iri { prefix_id: 16 name_id: 79 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "deep learning" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 65 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "5.391658189216684" } } } rows { quad { p_iri { } o_literal { lex: "5.3" } } } rows { name { value: "6ad58da0-eddf-4c16-914b-5e2715303c39" } } rows { quad { s_iri { prefix_id: 16 name_id: 80 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "engineering" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 52 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "100.0" } } } rows { quad { p_iri { } o_literal { lex: "0.5148147940635681" } } } rows { name { value: "70eedfd1-0c99-4d40-b82d-98d171a4ab68" } } rows { quad { s_iri { prefix_id: 16 name_id: 81 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "earth sciences" } } } rows { name { value: "FieldOfResearch" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 82 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "100.0" } } } rows { quad { p_iri { } o_literal { lex: "0.5625630021095276" } } } rows { name { value: "8c196b46-bc61-4541-bcbc-4ca4c9a3ba1c" } } rows { quad { s_iri { prefix_id: 16 name_id: 83 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "detecting" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "15.269086357947433" } } } rows { quad { p_iri { } o_literal { lex: "12.2" } } } rows { name { value: "8cdca317-5c07-4159-8873-60ba70a7042c" } } rows { quad { s_iri { prefix_id: 16 name_id: 84 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "imagery" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "13.642052565707132" } } } rows { quad { p_iri { } o_literal { lex: "10.9" } } } rows { name { value: "968c0242-cc81-487c-bd5a-c2ccf704e57e" } } rows { quad { s_iri { prefix_id: 16 name_id: 85 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "research" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "12.891113892365455" } } } rows { quad { p_iri { } o_literal { lex: "10.3" } } } rows { prefix { value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a/" } } rows { name { value: "0edc91a9-9049-4357-bad7-677880c8fd8a" } } rows { prefix { id: 1 value: "http://www.opengis.net/ont/geosparql#" } } rows { name { value: "asWKT" } } rows { quad { s_iri { prefix_id: 13 name_id: 86 } p_iri { prefix_id: 1 } o_literal { lex: "POLYGON ((26.521543885417145 39.03722381230471, 26.52744474524991 39.03722381230471, 26.52744474524991 39.04105711064335, 26.521543885417145 39.04105711064335, 26.521543885417145 39.03722381230471))" } } } rows { name { value: "Geometry" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 1 name_id: 88 } } } rows { prefix { id: 4 value: "http://www.opengis.net/ont/sf#" } } rows { name { value: "Polygon" } } rows { quad { o_iri { prefix_id: 4 } } } rows { name { value: "19f9ef3f-8678-48f5-a9ac-cf364939dcda" } } rows { quad { s_iri { prefix_id: 13 } p_iri { prefix_id: 1 name_id: 87 } o_literal { lex: "POLYGON ((-43.2315509040757 -22.80675019122663, -43.02418396071632 -22.80675019122663, -43.02418396071632 -22.678831998280632, -43.2315509040757 -22.678831998280632, -43.2315509040757 -22.80675019122663))" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 1 name_id: 88 } } } rows { quad { o_iri { prefix_id: 4 } } } rows { name { value: "4b55fad1-092b-4657-a004-aafc05499e18" } } rows { quad { s_iri { prefix_id: 13 name_id: 91 } p_iri { prefix_id: 1 name_id: 87 } o_literal { lex: "POLYGON ((-86.82548387 20.977342054, -86.751891297 20.977342054, -86.751891297 21.033273193, -86.82548387 21.033273193, -86.82548387 20.977342054))" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 1 name_id: 88 } } } rows { quad { o_iri { prefix_id: 4 } } } rows { name { value: "e2eba045-3c2c-44a1-aa39-06cc232d05f9" } } rows { quad { s_iri { prefix_id: 13 name_id: 92 } p_iri { prefix_id: 1 name_id: 87 } o_literal { lex: "POLYGON ((119.12620106576212 39.27393119797617, 119.19563809273966 39.27393119797617, 119.19563809273966 39.30980175207518, 119.12620106576212 39.30980175207518, 119.12620106576212 39.27393119797617))" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 1 name_id: 88 } } } rows { quad { o_iri { prefix_id: 4 } } } rows { prefix { value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/#" } } rows { name { value: "033df0b0-3c57-49a6-863b-b8354d4a50cd" } } rows { quad { s_iri { prefix_id: 5 name_id: 93 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "POLYGON ((-43.2315509040757 -22.80675019122663, -43.02418396071632 -22.80675019122663, -43.02418396071632 -22.678831998280632, -43.2315509040757 -22.678831998280632, -43.2315509040757 -22.80675019122663))" } } } rows { name { value: "polygon" } } rows { quad { p_iri { name_id: 94 } o_literal { lex: "-43.2315509040757 -22.80675019122663, -43.02418396071632 -22.80675019122663, -43.02418396071632 -22.678831998280632, -43.2315509040757 -22.678831998280632, -43.2315509040757 -22.80675019122663" } } } rows { name { value: "GeoShape" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 95 } } } rows { name { value: "083a1112-0f83-449a-b55f-8c541c04f454" } } rows { quad { s_iri { prefix_id: 5 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "POLYGON ((119.12620106576212 39.27393119797617, 119.19563809273966 39.27393119797617, 119.19563809273966 39.30980175207518, 119.12620106576212 39.30980175207518, 119.12620106576212 39.27393119797617))" } } } rows { quad { p_iri { name_id: 94 } o_literal { lex: "119.12620106576212 39.27393119797617, 119.19563809273966 39.27393119797617, 119.19563809273966 39.30980175207518, 119.12620106576212 39.30980175207518, 119.12620106576212 39.27393119797617" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 95 } } } rows { name { value: "1b6c86bb-155c-4b71-b4c1-57255e564c5e" } } rows { name { value: "geo" } } rows { quad { s_iri { prefix_id: 5 name_id: 97 } p_iri { prefix_id: 15 } o_iri { prefix_id: 5 name_id: 93 } } } rows { name { value: "identifier" } } rows { quad { p_iri { prefix_id: 15 name_id: 99 } o_literal { lex: "1b6c86bb-155c-4b71-b4c1-57255e564c5e" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "POLYGON ((-43.2315509040757 -22.80675019122663, -43.02418396071632 -22.80675019122663, -43.02418396071632 -22.678831998280632, -43.2315509040757 -22.678831998280632, -43.2315509040757 -22.80675019122663))" } } } rows { name { value: "Place" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 100 } } } rows { name { value: "4f90b61f-e5a3-4007-8ded-36a82835a533" } } rows { name { value: "94d3dde9-4ee6-48d9-9fcb-d0a84afe32d4" } } rows { quad { s_iri { prefix_id: 5 } p_iri { prefix_id: 15 name_id: 98 } o_iri { prefix_id: 5 name_id: 102 } } } rows { quad { p_iri { prefix_id: 15 name_id: 99 } o_literal { lex: "4f90b61f-e5a3-4007-8ded-36a82835a533" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "POLYGON ((-86.82548387 20.977342054, -86.751891297 20.977342054, -86.751891297 21.033273193, -86.82548387 21.033273193, -86.82548387 20.977342054))" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 100 } } } rows { name { value: "6f58cc27-60e5-466b-93bc-b5223fdfd6fc" } } rows { quad { s_iri { prefix_id: 5 name_id: 103 } p_iri { prefix_id: 15 name_id: 98 } o_iri { prefix_id: 5 name_id: 96 } } } rows { quad { p_iri { prefix_id: 15 name_id: 99 } o_literal { lex: "6f58cc27-60e5-466b-93bc-b5223fdfd6fc" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "POLYGON ((119.12620106576212 39.27393119797617, 119.19563809273966 39.27393119797617, 119.19563809273966 39.30980175207518, 119.12620106576212 39.30980175207518, 119.12620106576212 39.27393119797617))" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 100 } } } rows { quad { s_iri { prefix_id: 5 name_id: 102 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "POLYGON ((-86.82548387 20.977342054, -86.751891297 20.977342054, -86.751891297 21.033273193, -86.82548387 21.033273193, -86.82548387 20.977342054))" } } } rows { quad { p_iri { name_id: 94 } o_literal { lex: "-86.82548387 20.977342054, -86.751891297 20.977342054, -86.751891297 21.033273193, -86.82548387 21.033273193, -86.82548387 20.977342054" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 95 } } } rows { name { value: "aa215ab6-2462-4620-8d96-feee99755115" } } rows { quad { s_iri { prefix_id: 5 name_id: 104 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "POLYGON ((26.521543885417145 39.03722381230471, 26.52744474524991 39.03722381230471, 26.52744474524991 39.04105711064335, 26.521543885417145 39.04105711064335, 26.521543885417145 39.03722381230471))" } } } rows { quad { p_iri { name_id: 94 } o_literal { lex: "26.521543885417145 39.03722381230471, 26.52744474524991 39.03722381230471, 26.52744474524991 39.04105711064335, 26.521543885417145 39.04105711064335, 26.521543885417145 39.03722381230471" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 95 } } } rows { name { value: "b0c22f0b-726c-4d55-ba79-f1f0948b49c3" } } rows { quad { s_iri { prefix_id: 5 name_id: 105 } p_iri { prefix_id: 15 name_id: 98 } o_iri { prefix_id: 5 name_id: 104 } } } rows { quad { p_iri { prefix_id: 15 name_id: 99 } o_literal { lex: "b0c22f0b-726c-4d55-ba79-f1f0948b49c3" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "POLYGON ((26.521543885417145 39.03722381230471, 26.52744474524991 39.03722381230471, 26.52744474524991 39.04105711064335, 26.521543885417145 39.04105711064335, 26.521543885417145 39.03722381230471))" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 100 } } } rows { prefix { id: 8 value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/" } } rows { name { value: "hasSnapshot" } } rows { quad { s_iri { prefix_id: 8 name_id: 2 } p_iri { prefix_id: 7 name_id: 106 } o_iri { prefix_id: 16 name_id: 53 } } } rows { quad { o_iri { name_id: 70 } } } rows { quad { o_iri { name_id: 77 } } } rows { name { value: "about" } } rows { prefix { id: 3 value: "http://eurovoc.europa.eu/" } } rows { quad { p_iri { prefix_id: 15 name_id: 107 } o_iri { prefix_id: 3 name_id: 12 } } } rows { quad { o_iri { name_id: 16 } } } rows { quad { o_iri { } } } rows { prefix { id: 2 value: "mailto:https://orcid.org/" } } rows { name { value: "0000-0002-9480-7387" } } rows { quad { p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 2 name_id: 108 } } } rows { name { value: "0000-0003-0808-3480" } } rows { quad { o_iri { } } } rows { name { value: "contentLocation" } } rows { quad { p_iri { prefix_id: 15 } o_iri { prefix_id: 5 name_id: 97 } } } rows { quad { o_iri { name_id: 101 } } } rows { quad { o_iri { name_id: 103 } } } rows { quad { o_iri { name_id: 105 } } } rows { name { value: "contentSize" } } rows { datatype { value: "http://www.w3.org/2001/XMLSchema#integer" } } rows { quad { p_iri { prefix_id: 15 name_id: 111 } o_literal { lex: "1824218" datatype: 1 } } } rows { quad { p_iri { name_id: 21 } o_literal { lex: "https://api.rohub.org/api/ros/b34facfa-cea8-48f5-89f6-f11ce00812a9/crate/download/" } } } rows { name { value: "contributor" } } rows { prefix { id: 14 value: "mailto:https://github.com/" } } rows { name { value: "acocac" } } rows { quad { p_iri { name_id: 112 } o_iri { prefix_id: 14 } } } rows { name { value: "copyrightHolder" } } rows { prefix { id: 12 } } rows { quad { p_iri { prefix_id: 15 } o_iri { prefix_id: 12 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 22 } } } rows { quad { p_iri { } o_literal { lex: "2022-01-28 16:07:18.008253+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2025-03-05 00:50:12.499018+00:00" } } } rows { name { value: "datePublished" } } rows { quad { p_iri { name_id: 115 } o_literal { lex: "2022-01-28 16:07:18.008253+00:00" } } } rows { quad { p_iri { name_id: 13 } o_literal { lex: "The research object refers to the Detecting floating objects using deep learning and Sentinel-2 imagery notebook published in the Environmental Data Science book." } } } rows { quad { p_iri { name_id: 35 } o_literal { lex: "application/ld+json" } } } rows { name { value: "hasPart" } } rows { prefix { id: 10 value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/folders/" } } rows { name { value: "2f133c7a-1f38-458c-a161-06af5c47a91d" } } rows { quad { p_iri { name_id: 116 } o_iri { prefix_id: 10 } } } rows { name { value: "4f82b393-ef74-4a3c-9687-8af2a955143a" } } rows { quad { o_iri { } } } rows { name { value: "70d89478-3bf7-4cc9-8483-ec2b2ee17c1b" } } rows { quad { o_iri { } } } rows { name { value: "9fb38664-58aa-4bd0-8652-81fd23203460" } } rows { quad { o_iri { } } } rows { prefix { value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/resources/" } } rows { name { value: "b46914a7-cee7-4026-bc43-46988b8afe7f" } } rows { quad { o_iri { prefix_id: 11 } } } rows { quad { p_iri { prefix_id: 15 name_id: 99 } o_literal { lex: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9" } } } rows { name { value: "keywords" } } rows { quad { p_iri { name_id: 122 } o_literal { lex: "Environmental Science" } } } rows { prefix { id: 9 value: "https://choosealicense.com/no-permission/" } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 9 name_id: 2 } } } rows { name { value: "mainEntity" } } rows { quad { p_iri { prefix_id: 15 name_id: 123 } o_literal { lex: "Jupyter Notebook" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "Detecting floating objects using deep learning and Sentinel-2 imagery (Jupyter Notebook) published in the Environmental Data Science book" } } } rows { name { value: "publisher" } } rows { quad { p_iri { name_id: 124 } o_iri { prefix_id: 12 name_id: 20 } } } rows { prefix { id: 13 value: "http://w3id.org/ro-id/rohub/model#" } } rows { name { value: "community" } } rows { prefix { id: 1 value: "https://w3id.org/ro-id/communities/" } } rows { name { value: "379a4687-de50-44c7-b7bd-37125ebd4ff7" } } rows { quad { p_iri { prefix_id: 13 name_id: 125 } o_iri { prefix_id: 1 } } } rows { name { value: "creation_mode" } } rows { quad { p_iri { prefix_id: 13 } o_literal { lex: "MANUAL" } } } rows { prefix { id: 4 value: "http://www.opengis.net/ont/geosparql#" } } rows { name { value: "hasGeometry" } } rows { quad { p_iri { prefix_id: 4 } o_iri { prefix_id: 8 name_id: 90 } } } rows { quad { o_iri { } } } rows { quad { o_iri { } } } rows { prefix { id: 7 value: "http://purl.org/wf4ever/ro#" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 7 name_id: 60 } } } rows { prefix { id: 16 value: "http://purl.org/wf4ever/roevo#" } } rows { name { id: 1 value: "LiveRO" } } rows { quad { o_iri { prefix_id: 16 name_id: 1 } } } rows { quad { o_iri { prefix_id: 15 name_id: 32 } } } rows { prefix { id: 3 value: "http://w3id.org/ro/" } } rows { name { id: 3 value: "earth-scienceExecutableResearchObject" } } rows { quad { o_iri { prefix_id: 3 name_id: 3 } } } rows { prefix { id: 2 value: "https://w3id.org/ro/terms/earth-science#" } } rows { name { id: 5 value: "ExecutableResearchObject" } } rows { quad { o_iri { prefix_id: 2 name_id: 5 } } } rows { prefix { id: 5 value: "https://w3id.org/contentdesc#" } } rows { quad { p_iri { prefix_id: 5 name_id: 68 } o_literal { lex: "https://w3id.org/ro-id/24083871-b87f-4b16-8175-ffe485649e03" } } } rows { quad { p_iri { prefix_id: 2 name_id: 46 } o_literal { lex: "https://w3id.org/ro-id/020993ea-2f43-43ac-a9c7-ba93bde7ee85" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/39ee4bb8-6053-4f40-b378-a9fed6ee5b01" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/442b70f2-1904-465a-a6ef-89213f9d63d5" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/50782314-83c8-4add-ad12-727a8a9f8ba1" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/d36a6e11-548b-4693-ac5e-5a8ab46d98d3" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/d90f11a0-5c43-4875-bd87-211d24eb6ac6" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/da760acc-79f9-427b-8f89-65761acb8e07" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/db85f8a1-2f65-4b8d-9cd6-9d61e8a49448" } } } rows { quad { p_iri { name_id: 82 } o_literal { lex: "https://w3id.org/ro-id/70eedfd1-0c99-4d40-b82d-98d171a4ab68" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/d2172481-a5f0-4bd8-9649-90e9412879e3" } } } rows { quad { p_iri { name_id: 74 } o_literal { lex: "https://w3id.org/ro-id/48a5e4d6-4b13-40aa-a696-d5fcdd2ac5cb" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/b6578941-69f1-4d79-9e4b-7994f3a568ea" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/c461a08c-b0a3-4131-8424-6e65ca637f8d" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/cf520f9e-565a-464f-8306-cc3cfb03042d" } } } rows { quad { p_iri { name_id: 63 } o_literal { lex: "https://w3id.org/ro-id/13fde29e-20c9-451d-887a-5b4a6227186b" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/1ed45077-cf8d-4057-b433-4e81ad95a093" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/46d0477b-8855-4835-9e3b-5cda9e9380cb" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/8c196b46-bc61-4541-bcbc-4ca4c9a3ba1c" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/8cdca317-5c07-4159-8873-60ba70a7042c" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/968c0242-cc81-487c-bd5a-c2ccf704e57e" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/ef4febf2-4889-4395-b9b9-5f7bb299cf76" } } } rows { quad { p_iri { name_id: 52 } o_literal { lex: "https://w3id.org/ro-id/05ff7c62-0fda-4b2d-b654-f8b8c0121fdd" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/6ad58da0-eddf-4c16-914b-5e2715303c39" } } } rows { quad { p_iri { name_id: 65 } o_literal { lex: "https://w3id.org/ro-id/1e152ae0-301a-4eb3-b26a-2d3cfab6721b" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/5b42da77-0525-41da-9951-7af6507a3010" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/670fa719-f56f-4fcd-94a6-f224c040ca7a" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/c8a358d4-88b8-423e-9cce-b5b0831b6cb5" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/e9f565d5-6cd0-449f-aa68-68d7c4ca45fc" } } } rows { quad { p_iri { name_id: 50 } o_literal { lex: "https://w3id.org/ro-id/0500450f-25f6-46cf-95ec-6ac8dfda26a2" } } } rows { quad { o_literal { lex: "https://w3id.org/ro-id/c43b47df-0047-47b5-bd9f-75020dccf7c1" } } } rows { prefix { id: 14 value: "https://www.w3.org/ns/iana/link-relations/relation#" } } rows { name { value: "cite-as" } } rows { quad { p_iri { prefix_id: 14 name_id: 6 } o_literal { lex: "Raquel Carmo, Jamila Mifdal, and Alejandro Coca-Castro. \"Detecting floating objects using deep learning and Sentinel-2 imagery (Jupyter Notebook) published in the Environmental Data Science book.\" ROHub. Jan 28 ,2022. https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9." } } } rows { prefix { id: 11 value: "https://doi.org/10.5281/" } } rows { quad { s_iri { prefix_id: 10 name_id: 117 } p_iri { prefix_id: 15 name_id: 116 } o_iri { prefix_id: 11 name_id: 31 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "input" } } } rows { prefix { id: 9 value: "http://purl.org/wf4ever/wf4ever#" } } rows { name { value: "Folder" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 7 } } } rows { quad { o_iri { prefix_id: 15 name_id: 32 } } } rows { prefix { id: 12 value: "https://210507-004.oceansvirtual.com/view/content/skdwP611e3583eba2b/" } } rows { quad { s_iri { prefix_id: 10 name_id: 118 } p_iri { prefix_id: 15 name_id: 116 } o_iri { prefix_id: 12 name_id: 18 } } } rows { prefix { id: 1 value: "https://doi.org/10.5194/" } } rows { quad { o_iri { prefix_id: 1 name_id: 30 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "biblio" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 7 } } } rows { quad { o_iri { prefix_id: 15 name_id: 32 } } } rows { prefix { id: 13 value: "https://edsbook.org/notebooks/gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/" } } rows { quad { s_iri { prefix_id: 10 name_id: 119 } p_iri { prefix_id: 15 name_id: 116 } o_iri { prefix_id: 13 name_id: 34 } } } rows { prefix { id: 4 value: "https://github.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/blob/main/.lock/" } } rows { quad { o_iri { prefix_id: 4 name_id: 37 } } } rows { quad { o_iri { } } } rows { quad { o_iri { } } } rows { prefix { id: 8 value: "https://raw.githubusercontent.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/main/.binder/" } } rows { quad { o_iri { prefix_id: 8 } } } rows { prefix { id: 7 value: "https://raw.githubusercontent.com/eds-book-gallery/b34facfa-cea8-48f5-89f6-f11ce00812a9/main/" } } rows { quad { o_iri { prefix_id: 7 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "tool" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 7 } } } rows { quad { o_iri { prefix_id: 15 name_id: 32 } } } rows { quad { s_iri { prefix_id: 10 name_id: 120 } p_iri { prefix_id: 15 name_id: 116 } o_iri { prefix_id: 11 name_id: 33 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "output" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 9 name_id: 7 } } } rows { quad { o_iri { prefix_id: 15 name_id: 32 } } } rows { prefix { id: 16 value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/resources/" } } rows { prefix { id: 3 } } rows { quad { s_iri { prefix_id: 16 name_id: 121 } p_iri { prefix_id: 15 name_id: 19 } o_iri { prefix_id: 3 } } } rows { quad { p_iri { prefix_id: 15 name_id: 111 } o_literal { lex: "1799691" datatype: 1 } } } rows { quad { p_iri { name_id: 21 } o_literal { lex: "https://api.rohub.org/api/resources/b46914a7-cee7-4026-bc43-46988b8afe7f/download/" } } } rows { quad { p_iri { } o_iri { prefix_id: 3 name_id: 20 } } } rows { quad { p_iri { prefix_id: 15 name_id: 23 } o_literal { lex: "2023-03-05 21:59:06.519381+00:00" } } } rows { quad { p_iri { } o_literal { lex: "2023-03-05 21:59:07.519562+00:00" } } } rows { quad { p_iri { name_id: 35 } o_literal { lex: "image/png" } } } rows { prefix { id: 5 value: "https://choosealicense.com/no-permission/" } } rows { quad { p_iri { name_id: 25 } o_iri { prefix_id: 5 name_id: 2 } } } rows { quad { p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "sketch_680px.png" } } } rows { quad { p_iri { name_id: 26 } o_literal { lex: "2023-03-05 21:59:06.519381+00:00" } } } rows { prefix { id: 2 value: "http://purl.org/wf4ever/roterms#" } } rows { name { value: "Sketch" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 2 name_id: 8 } } } rows { quad { o_iri { prefix_id: 9 name_id: 28 } } } rows { quad { o_iri { prefix_id: 15 } } } rows { prefix { id: 14 value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/" } } rows { name { value: "ro-crate-metadata.json" } } rows { prefix { id: 12 value: "http://purl.org/dc/terms/" } } rows { name { id: 11 value: "conformsTo" } } rows { prefix { id: 1 value: "https://w3id.org/ro/crate/" } } rows { name { id: 4 value: "1.1" } } rows { quad { s_iri { prefix_id: 14 name_id: 9 } p_iri { prefix_id: 12 name_id: 11 } o_iri { prefix_id: 1 name_id: 4 } } } rows { quad { p_iri { prefix_id: 15 name_id: 107 } o_iri { prefix_id: 14 name_id: 2 } } } rows { name { id: 15 value: "CreativeWork" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 15 } } } rows { prefix { id: 13 value: "https://w3id.org/ro-id/" } } rows { name { id: 27 value: "b6578941-69f1-4d79-9e4b-7994f3a568ea" } } rows { quad { s_iri { prefix_id: 13 name_id: 27 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Book industry" } } } rows { prefix { id: 4 value: "https://w3id.org/ro/terms/earth-science#" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 74 } } } rows { quad { p_iri { } o_literal { lex: "Economy, business and finance/Economic sector/Media/Book industry" } } } rows { name { id: 36 value: "c43b47df-0047-47b5-bd9f-75020dccf7c1" } } rows { quad { s_iri { prefix_id: 13 name_id: 36 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "The research object refers to the Detecting floating objects using deep learning and Sentinel-2 imagery notebook published in the Environmental Data Science book." } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 50 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "56.45645645645645" } } } rows { quad { p_iri { } o_literal { lex: "56.4" } } } rows { name { id: 42 value: "c461a08c-b0a3-4131-8424-6e65ca637f8d" } } rows { quad { s_iri { prefix_id: 13 name_id: 42 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Literature" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 74 } } } rows { quad { p_iri { } o_literal { lex: "Arts, culture and entertainment/Arts and entertainment/Literature" } } } rows { name { value: "c8a358d4-88b8-423e-9cce-b5b0831b6cb5" } } rows { quad { s_iri { prefix_id: 13 name_id: 43 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "imagery notebook" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 65 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "43.336724313326556" } } } rows { quad { p_iri { } o_literal { lex: "42.6" } } } rows { name { value: "cf520f9e-565a-464f-8306-cc3cfb03042d" } } rows { quad { s_iri { prefix_id: 13 name_id: 44 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Education" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 74 } } } rows { quad { p_iri { } o_literal { lex: "Education" } } } rows { prefix { id: 8 value: "https://w3id.org/ro-id/communities/" } } rows { quad { s_iri { prefix_id: 8 name_id: 126 } p_iri { prefix_id: 15 name_id: 13 } o_literal { lex: "Computational notebooks community focused on Environmental Data Science" } } } rows { name { value: "email" } } rows { quad { p_iri { name_id: 45 } o_literal { lex: "environmental.ds.book@gmail.com" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "Environmental Data Science Book Community" } } } rows { name { id: 49 value: "url" } } rows { quad { p_iri { name_id: 49 } o_literal { lex: "https://github.com/alan-turing-institute/environmental-ds-book/issues/new/choose" } } } rows { prefix { id: 7 value: "http://w3id.org/ro-id/rohub/model#" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 7 name_id: 125 } } } rows { name { id: 51 value: "d2172481-a5f0-4bd8-9649-90e9412879e3" } } rows { quad { s_iri { prefix_id: 13 name_id: 51 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "geology" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 82 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "100.0" } } } rows { quad { p_iri { } o_literal { lex: "0.5625630021095276" } } } rows { name { id: 62 value: "d36a6e11-548b-4693-ac5e-5a8ab46d98d3" } } rows { quad { s_iri { prefix_id: 13 name_id: 62 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "object" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "9.431345353675452" } } } rows { quad { p_iri { } o_literal { lex: "6.8" } } } rows { name { id: 64 value: "d90f11a0-5c43-4875-bd87-211d24eb6ac6" } } rows { quad { s_iri { prefix_id: 13 name_id: 64 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "physical object" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "11.511789181692096" } } } rows { quad { p_iri { } o_literal { lex: "8.3" } } } rows { name { id: 66 value: "da760acc-79f9-427b-8f89-65761acb8e07" } } rows { quad { s_iri { prefix_id: 13 name_id: 66 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "learning" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "10.540915395284328" } } } rows { quad { p_iri { } o_literal { lex: "7.6" } } } rows { name { value: "db85f8a1-2f65-4b8d-9cd6-9d61e8a49448" } } rows { quad { s_iri { prefix_id: 13 name_id: 67 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "book" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 46 } } } rows { quad { p_iri { } o_literal { lex: "14.147018030513175" } } } rows { quad { p_iri { } o_literal { lex: "10.2" } } } rows { name { id: 69 value: "e9f565d5-6cd0-449f-aa68-68d7c4ca45fc" } } rows { quad { s_iri { prefix_id: 13 name_id: 69 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "refer to the detecting" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 65 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "1.7293997965412005" } } } rows { quad { p_iri { } o_literal { lex: "1.7" } } } rows { name { id: 71 value: "ef4febf2-4889-4395-b9b9-5f7bb299cf76" } } rows { quad { s_iri { prefix_id: 13 name_id: 71 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "Sentinel-2" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 4 name_id: 63 } } } rows { quad { p_iri { name_id: 47 } o_literal { lex: "17.521902377972463" } } } rows { quad { p_iri { } o_literal { lex: "14.0" } } } rows { quad { s_iri { prefix_id: 3 name_id: 20 } p_iri { prefix_id: 15 name_id: 45 } o_literal { lex: "environmental.ds.book@gmail.com" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "Environmental Data Science Book Community" } } } rows { quad { o_literal { lex: "The Environmental Data Science Community" } } } rows { name { value: "Person" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 15 name_id: 72 } } } rows { prefix { id: 10 value: "http://xmlns.com/foaf/0.1/" } } rows { name { value: "Agent" } } rows { quad { o_iri { prefix_id: 10 } } } rows { prefix { value: "mailto:https://github.com/" } } rows { name { id: 76 value: "affiliation" } } rows { quad { s_iri { prefix_id: 11 name_id: 113 } p_iri { prefix_id: 15 name_id: 76 } o_literal { lex: "The Alan Turing Institute" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "Alejandro Coca-Castro" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 10 name_id: 73 } } } rows { prefix { id: 16 value: "mailto:https://orcid.org/" } } rows { quad { s_iri { prefix_id: 16 name_id: 108 } p_iri { prefix_id: 15 name_id: 76 } o_literal { lex: "European Space Agency \316\246-lab" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "Jamila Mifdal" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 10 name_id: 73 } } } rows { quad { s_iri { prefix_id: 16 name_id: 109 } p_iri { prefix_id: 15 name_id: 76 } o_literal { lex: "European Space Agency \316\246-lab" } } } rows { quad { p_iri { name_id: 14 } o_literal { lex: "Raquel Carmo" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 10 name_id: 73 } } } rows { name { id: 54 value: "mailto:service-account-enrichment" } } rows { quad { s_iri { prefix_id: 3 name_id: 54 } p_iri { prefix_id: 15 name_id: 14 } o_literal { lex: "service-account-enrichment" } } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 10 name_id: 73 } } } rows { prefix { id: 5 value: "https://w3id.org/np/RAWsLRkn9NmVndAHyyuYLa3SafzhbLUGQQrVh9hGd8z34/" } } rows { name { value: "assertion" } } rows { prefix { id: 2 value: "http://www.w3.org/ns/prov#" } } rows { name { value: "wasDerivedFrom" } } rows { prefix { id: 9 value: "https://api.rohub.org/api/ros/b34facfa-cea8-48f5-89f6-f11ce00812a9/crate/download/" } } rows { name { value: "provenance" } } rows { quad { s_iri { prefix_id: 5 name_id: 55 } p_iri { prefix_id: 2 } o_iri { prefix_id: 9 name_id: 9 } g_iri { prefix_id: 5 name_id: 57 } } } rows { prefix { id: 12 value: "https://w3id.org/np/" } } rows { name { value: "RAWsLRkn9NmVndAHyyuYLa3SafzhbLUGQQrVh9hGd8z34" } } rows { prefix { id: 1 value: "http://purl.org/dc/terms/" } } rows { name { value: "created" } } rows { datatype { value: "http://www.w3.org/2001/XMLSchema#dateTime" } } rows { name { id: 61 value: "pubinfo" } } rows { quad { s_iri { prefix_id: 12 } p_iri { prefix_id: 1 } o_literal { lex: "2026-03-03T16:30:31.181+01:00" datatype: 2 } g_iri { prefix_id: 5 name_id: 61 } } } rows { prefix { id: 14 value: "https://w3id.org/kpxl/gen/terms/" } } rows { name { id: 78 value: "RoCrateBot" } } rows { quad { p_iri { prefix_id: 1 name_id: 22 } o_iri { prefix_id: 14 name_id: 78 } } } rows { prefix { id: 8 value: "http://purl.org/nanopub/x/" } } rows { name { value: "introduces" } } rows { prefix { id: 7 value: "https://w3id.org/ro-id/b34facfa-cea8-48f5-89f6-f11ce00812a9/" } } rows { quad { p_iri { prefix_id: 8 } o_iri { prefix_id: 7 name_id: 2 } } } rows { name { value: "RoCrateNanopub" } } rows { quad { p_iri { prefix_id: 6 name_id: 10 } o_iri { prefix_id: 8 name_id: 80 } } } rows { prefix { id: 13 value: "http://www.w3.org/2000/01/rdf-schema#" } } rows { name { value: "label" } } rows { quad { p_iri { prefix_id: 13 } o_literal { lex: "Detecting floating objects using deep learning and Sentinel-2 imagery (Jupyter Notebook) published in the Environmental Data Science book" } } } rows { name { id: 83 value: "sig" } } rows { name { value: "hasAlgorithm" } } rows { quad { s_iri { prefix_id: 5 name_id: 83 } p_iri { prefix_id: 8 } o_literal { lex: "RSA" } } } rows { name { value: "hasPublicKey" } } rows { quad { p_iri { } o_literal { lex: "MIIBIjANBgkqhkiG9w0BAQEFAAOCAQ8AMIIBCgKCAQEAxszSDYX5tuCSkP7UiCtftYPFNQVTjgNu0I5fwdML2DLRDlp0xzmsQXRk8oHuvwGvG1aMjj6cpUqO+0rz2Sg/wvHOgUpkRH8VJXvmlkhafMLCMtUtk5JIx7e+fkzCby+fnmD7kMkGLrT+OaExWwEDmNlCAt0TPKcHSdwsjso2isXjtAsGevyCMke8ufnFYpjs746JES1eNzVnHnn2Kp/lqcm60GM+J8dLgRZp7fX0anW098xhKym6+xXFzqeju0vYRIHBPerv+r7skWxwk+a7Sd8msqVeYEv6NTqnyWvyWb6Yh8cvj04N6qm/T6C5FUPLQhzSaQgMVMU6yLqjPuu9DwIDAQAB" } } } rows { name { value: "hasSignature" } } rows { quad { p_iri { } o_literal { lex: "n3WdsqMpxZF60QA+rIe5rzbioBomInob+0eCkt5PwEXN2ejqxpmilvkLgokMqwmDUpJPbuTxtqYbAetuC9N7f+mow5p54lN3/uxCv/ChEEzG4fckzeapCRmnZOmA6Y5V1Uelb0VeNkeUzuTVxtrodgdVLUJjieTOBOCYvzo0eYGOVTs3XCPQNWA33rb3110fTwxuxCQe8QWzVnDEOWtEcYXJIXO9UfmBjRr4E5TcBxsKgLZ0W+MREVA+aaC/8SMSSRF1KJfZJPmAGhiKkYg4wi4BGxONV07F/p9uqh6qcA5hBqYe6ir7OehCfe939GtEmkF7Go4ShYTLV8GII0GTsg==" } } } rows { name { value: "hasSignatureTarget" } } rows { quad { p_iri { } o_iri { prefix_id: 12 name_id: 58 } } } rows { name { value: "signedBy" } } rows { quad { p_iri { prefix_id: 8 name_id: 88 } o_iri { prefix_id: 14 name_id: 78 } } }