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dnet-hadoop/dhp-workflows/dhp-graph-provision
Miriam Baglioni 2b643059fa [Country Propagation] changed the logic to get the collectedfrom at the result level. To fix issue when no instance is created for a result that should have the country associated. Change the code to use spark instead of hive to prepare the data needed for the propagation step. Added new tests for the intermediate steps and new verification for the propagation itself 2022-03-11 13:56:48 +01:00
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src [Country Propagation] changed the logic to get the collectedfrom at the result level. To fix issue when no instance is created for a result that should have the country associated. Change the code to use spark instead of hive to prepare the data needed for the propagation step. Added new tests for the intermediate steps and new verification for the propagation itself 2022-03-11 13:56:48 +01:00
README.md improved documentation in dhp-graph-provision 2020-11-10 11:48:55 +01:00
pom.xml implemented workflow of creation action set for scholexplorer 2021-07-28 16:15:34 +02:00

README.md

Joins the graph nodes by resolving the links of distance = 1 to create an adjacency list of linked objects. The operation considers all the entity types (publication, dataset, software, ORP, project, datasource, organization, and all the possible relationships (similarity links produced by the Dedup process are excluded).

The operation is implemented by sequentially joining one entity type at time (E) with the relationships (R), and again by E, finally grouped by E.id;

The workflow is organized in different parts aimed to to reduce the complexity of the operation

  1. PrepareRelationsJob: only consider relationships that are not virtually deleted ($.dataInfo.deletedbyinference == false), each entity can be linked at most to 100 other objects

  2. CreateRelatedEntitiesJob: (phase 1): prepare tuples [relation - target entity] (R - T): for each entity type E_i map E_i as RelatedEntity T_i to simplify the model and extracting only the necessary information join (R.target = T_i.id) save the tuples (R_i, T_i) (phase 2): create the union of all the entity types E, hash by id read the tuples (R, T), hash by R.source join E.id = (R, T).source, where E becomes the Source Entity S save the tuples (S, R, T)

  3. AdjacencyListBuilderJob: given the tuple (S - R - T) we need to group by S.id -> List [ R - T ], mapping the result as JoinedEntity

  4. XmlConverterJob: convert the JoinedEntities as XML records