Difference between revisions of "Data Assessment and Harmonisation APIs"

From Gcube Wiki
Jump to: navigation, search
(Occurrence Data Management)
m (Odm-client-library)
 
(14 intermediate revisions by 5 users not shown)
Line 17: Line 17:
  
 
==Time-Series-Service==
 
==Time-Series-Service==
* '''Description''':  
+
* '''Description''': management of the entire life-cycle of datasets representing time series
 
* '''Type''': gCube Web Service
 
* '''Type''': gCube Web Service
 
* '''Protocol''': SOAP
 
* '''Protocol''': SOAP
 
* '''Framework''': gCore
 
* '''Framework''': gCore
 
* '''Key Features''':
 
* '''Key Features''':
 +
:* ''import and export in multiple formats (e.g. SDMX, csv)'';
 +
:* ''semi-automatic curation'';
 +
:* ''aggregation, grouping, union, denormalisation and filtering'';
 +
:* ''versioning'';
 +
:* ''logging of time series changes for provenance'';
 
* [[Time_Series_Management|'''Documentation''']]
 
* [[Time_Series_Management|'''Documentation''']]
 +
 
==Occurrence Data Management==
 
==Occurrence Data Management==
 
* '''Description''': a set of features for performing assessment and harmonization on occurrence points of species
 
* '''Description''': a set of features for performing assessment and harmonization on occurrence points of species
Line 29: Line 35:
 
* '''Framework''': gCore
 
* '''Framework''': gCore
 
* '''Key Features''':
 
* '''Key Features''':
** Occurrence Points Enrichment
+
** ''Import from SPD''
** Occurrence Points visualization, aggregation and transformation
+
** ''Occurrence Points visualization, aggregation and transformation''
** Merge, Subtraction and Intersection operations
+
** ''Merge, Subtraction and Intersection operations''
** Points Clustering
+
** ''Points Clustering''
** Anomaly Point Detection
+
** ''Anomaly Point Detection''
* '''Wiki Doc''': [https://gcube.wiki.gcube-system.org/gcube/index.php/Occurrence_Data_Reconciliation Occurrence Data Reconciliation]
+
* [[Occurrence Data Reconciliation|'''Documentation''']]
  
==Odm-client-library==
+
==Odm-client-library (Occurrence Data Management (ODM) Client Library==
* '''Description''':  
+
* '''Description''': Client proxies for [[#ODM API|ODM (Occurrence Data Management)]] endpoints.
 
* '''Type''': Java
 
* '''Type''': Java
 
* '''Protocol''': Local
 
* '''Protocol''': Local
 
* '''Framework''': [https://gcube.wiki.gcube-system.org/gcube/index.php/Integration_and_Interoperability_Facilities_Framework:_Client_Libraries CL]
 
* '''Framework''': [https://gcube.wiki.gcube-system.org/gcube/index.php/Integration_and_Interoperability_Facilities_Framework:_Client_Libraries CL]
 
* '''Key Features''':
 
* '''Key Features''':
 +
:* ''transparent endpoint discovery and caching''
 +
:* ''transparent fault tolerance over endpoint replicas''
 
* '''Wiki Doc''':
 
* '''Wiki Doc''':

Latest revision as of 11:40, 4 October 2012

Data Assessment and Harmonisation APIs provide access to services that deal with a great heterogeneity of data sources having different characteristics both in terms of data types they offer and of data behavior differentiating across the same type. This page outlines the design rationale for those APIs.

Overview

Name Description Type Protocol Framework
Time-Series-Service gCube Web Service SOAP gCore
Occurrence Data Management gCube Web Service SOAP gCore
Odm-client-library Java Local CL

Time-Series-Service

  • Description: management of the entire life-cycle of datasets representing time series
  • Type: gCube Web Service
  • Protocol: SOAP
  • Framework: gCore
  • Key Features:
  • import and export in multiple formats (e.g. SDMX, csv);
  • semi-automatic curation;
  • aggregation, grouping, union, denormalisation and filtering;
  • versioning;
  • logging of time series changes for provenance;

Occurrence Data Management

  • Description: a set of features for performing assessment and harmonization on occurrence points of species
  • Type: gCube Web Service
  • Protocol: SOAP
  • Framework: gCore
  • Key Features:
    • Import from SPD
    • Occurrence Points visualization, aggregation and transformation
    • Merge, Subtraction and Intersection operations
    • Points Clustering
    • Anomaly Point Detection
  • Documentation

Odm-client-library (Occurrence Data Management (ODM) Client Library

  • transparent endpoint discovery and caching
  • transparent fault tolerance over endpoint replicas
  • Wiki Doc: