package eu.dnetlib.dhp.collection.orcid import eu.dnetlib.dhp.application.AbstractScalaApplication import eu.dnetlib.dhp.collection.orcid.model.{Author, Employment, Pid, Work} import org.apache.hadoop.io.Text import org.apache.spark.SparkContext import org.apache.spark.sql.{Encoder, Encoders, SaveMode, SparkSession} import org.slf4j.{Logger, LoggerFactory} class SparkGenerateORCIDTable(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: String = parser.get("sourcePath") log.info("found parameters sourcePath: {}", sourcePath) val targetPath: String = parser.get("targetPath") log.info("found parameters targetPath: {}", targetPath) extractORCIDTable(spark, sourcePath, targetPath) extractORCIDEmploymentsTable(spark, sourcePath, targetPath) extractORCIDWorksTable(spark, sourcePath, targetPath) } def extractORCIDTable(spark: SparkSession, sourcePath: String, targetPath: String): Unit = { val sc: SparkContext = spark.sparkContext import spark.implicits._ val df = sc .sequenceFile(sourcePath, classOf[Text], classOf[Text]) .map { case (x, y) => (x.toString, y.toString) } .toDF .as[(String, String)] implicit val orcidAuthor: Encoder[Author] = Encoders.bean(classOf[Author]) // implicit val orcidPID:Encoder[Pid] = Encoders.bean(classOf[Pid]) df.filter(r => r._1.contains("summaries")) .map { r => val p = new OrcidParser p.parseSummary(r._2) } .filter(p => p != null) .write .mode(SaveMode.Overwrite) .save(s"$targetPath/Authors") } def extractORCIDWorksTable(spark: SparkSession, sourcePath: String, targetPath: String): Unit = { val sc: SparkContext = spark.sparkContext import spark.implicits._ val df = sc .sequenceFile(sourcePath, classOf[Text], classOf[Text]) .map { case (x, y) => (x.toString, y.toString) } .toDF .as[(String, String)] implicit val orcidWorkAuthor: Encoder[Work] = Encoders.bean(classOf[Work]) implicit val orcidPID: Encoder[Pid] = Encoders.bean(classOf[Pid]) df.filter(r => r._1.contains("works")) .map { r => val p = new OrcidParser p.parseWork(r._2) } .filter(p => p != null) .write .mode(SaveMode.Overwrite) .save(s"$targetPath/Works") } def extractORCIDEmploymentsTable(spark: SparkSession, sourcePath: String, targetPath: String): Unit = { val sc: SparkContext = spark.sparkContext import spark.implicits._ val df = sc .sequenceFile(sourcePath, classOf[Text], classOf[Text]) .map { case (x, y) => (x.toString, y.toString) } .toDF .as[(String, String)] implicit val orcidEmploymentAuthor: Encoder[Employment] = Encoders.bean(classOf[Employment]) implicit val orcidPID: Encoder[Pid] = Encoders.bean(classOf[Pid]) df.filter(r => r._1.contains("employments")) .map { r => val p = new OrcidParser p.parseEmployment(r._2) } .filter(p => p != null) .write .mode(SaveMode.Overwrite) .save(s"$targetPath/Employments") } } object SparkGenerateORCIDTable { val log: Logger = LoggerFactory.getLogger(SparkGenerateORCIDTable.getClass) def main(args: Array[String]): Unit = { new SparkGenerateORCIDTable("/eu/dnetlib/dhp/collection/orcid/generate_orcid_table_parameter.json", args, log) .initialize() .run() } }