package eu.dnetlib.dhp.datacite import com.fasterxml.jackson.databind.ObjectMapper import eu.dnetlib.dhp.application.AbstractScalaApplication import eu.dnetlib.dhp.collection.CollectionUtils import eu.dnetlib.dhp.common.Constants.{MDSTORE_DATA_PATH, MDSTORE_SIZE_PATH} import eu.dnetlib.dhp.common.vocabulary.VocabularyGroup import eu.dnetlib.dhp.schema.mdstore.{MDStoreVersion, MetadataRecord} import eu.dnetlib.dhp.schema.oaf.Oaf import eu.dnetlib.dhp.utils.DHPUtils.writeHdfsFile import eu.dnetlib.dhp.utils.ISLookupClientFactory import org.apache.spark.sql.{Encoder, Encoders, SparkSession} import org.slf4j.{Logger, LoggerFactory} class GenerateDataciteDatasetSpark(propertyPath: String, args: Array[String], log: Logger) extends AbstractScalaApplication(propertyPath, args, log: Logger) { /** Here all the spark applications runs this method * where the whole logic of the spark node is defined */ override def run(): Unit = { val sourcePath = parser.get("sourcePath") log.info(s"SourcePath is '$sourcePath'") val exportLinks = "true".equalsIgnoreCase(parser.get("exportLinks")) log.info(s"exportLinks is '$exportLinks'") val isLookupUrl: String = parser.get("isLookupUrl") log.info("isLookupUrl: {}", isLookupUrl) val isLookupService = ISLookupClientFactory.getLookUpService(isLookupUrl) val vocabularies = VocabularyGroup.loadVocsFromIS(isLookupService) require(vocabularies != null) val mdstoreOutputVersion = parser.get("mdstoreOutputVersion") log.info(s"mdstoreOutputVersion is '$mdstoreOutputVersion'") val mapper = new ObjectMapper() val cleanedMdStoreVersion = mapper.readValue(mdstoreOutputVersion, classOf[MDStoreVersion]) val outputBasePath = cleanedMdStoreVersion.getHdfsPath log.info(s"outputBasePath is '$outputBasePath'") val targetPath = s"$outputBasePath$MDSTORE_DATA_PATH" log.info(s"targetPath is '$targetPath'") generateDataciteDataset(sourcePath, exportLinks, vocabularies, targetPath, spark) reportTotalSize(targetPath, outputBasePath) } /** For working with MDStore we need to store in a file on hdfs the size of * the current dataset * @param targetPath * @param outputBasePath */ def reportTotalSize(targetPath: String, outputBasePath: String): Unit = { val total_items = spark.read.text(targetPath).count() writeHdfsFile( spark.sparkContext.hadoopConfiguration, s"$total_items", outputBasePath + MDSTORE_SIZE_PATH ) } /** Generate the transformed and cleaned OAF Dataset from the native one * * @param sourcePath sourcePath of the native Dataset in format JSON/Datacite * @param exportLinks If true it generates unresolved links * @param vocabularies vocabularies for cleaning * @param targetPath the targetPath of the result Dataset */ def generateDataciteDataset( sourcePath: String, exportLinks: Boolean, vocabularies: VocabularyGroup, targetPath: String, spark: SparkSession ): Unit = { require(spark != null) import spark.implicits._ implicit val mrEncoder: Encoder[MetadataRecord] = Encoders.kryo[MetadataRecord] implicit val resEncoder: Encoder[Oaf] = Encoders.kryo[Oaf] CollectionUtils.saveDataset( spark.read .load(sourcePath) .as[DataciteType] .filter(d => d.isActive) .flatMap(d => DataciteToOAFTransformation .generateOAF(d.json, d.timestamp, d.timestamp, vocabularies, exportLinks) ) .filter(d => d != null), targetPath ) } } object GenerateDataciteDatasetSpark { val log: Logger = LoggerFactory.getLogger(GenerateDataciteDatasetSpark.getClass) def main(args: Array[String]): Unit = { new GenerateDataciteDatasetSpark( "/eu/dnetlib/dhp/datacite/generate_dataset_params.json", args, log ).initialize().run() } }