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GraphAware Neo4j Importer - RETIRED

Importer Has Been Retired

As of April 1st 2017, this module is retiring in favour of GraphAware Databridge. This means it will no longer be maintained and released together with new versions of the GraphAware Framework and Neo4j. The last compatible Neo4j version is 3.1.0.

This repository will remain public.

Introduction

Build Status | Products | Latest Release: 3.1.0.44.3

GraphAware Importer is a high-performance importer for importing data from any data source to Neo4j. It is intended for initial one-off imports of large amounts of data (millions to billions of nodes and relationships), which needs to be cleansed, normalised, or transformed during the import. Depending on many things (connection speed, database speed, query complexity, data quality,...), you'll be able to import millions of nodes and relationships in minutes.

Another Importer?

There are a number of ways of getting data into Neo4j.

  • If you have small amounts of CSV data, use Neo4j's LOAD CSV
  • If you have large amounts of clean CSV data where you can separate nodes and relationships into different files, use Neo4j's Import Tool
  • If you have large amounts of ready-to-be imported (i.e. not too dirty) data in any tabular form and don't want do code, use GraphAware's Neo4j DataBridge (coming soon)
  • For all other scenarios, especially if you have large volumes of data from any source (CSV, MySQL, Oracle, HBase, you name it!) that need to be cleansed, normalised or transformed in some way, use this importer. You will need to code in Java.

Tutorial

This tutorial will guide you through writing an efficient one-off importer of data into Neo4j in a short amount of time. You need to be able to write some Java. What you will get at the end of the process is a standalone Java application that you can invoke from the command line. It will import data from a data source of your choice and create a brand new fully usable Neo4j database on disk. It is using Neo4j's BatchInserter under the hood.

This tool will not be able to import into an existing database, or a running Neo4j instance (yet).

Step 0: Get Data

You need some data of course. For this tutorial, we're going to be importing from 2 CSV files:

people-file.csv:

"id","name","location","age"
"1","Michal Bachman","1",30
"2","Adam George","2",29
"","PersonWithNoId","2",99
"4","  ","2",100

locations-file.csv:

"id","name"
"1","London"
"2","Watnall"
"3","Prague"

In practice, these could be tables from (or queries against) a relational database, column families from Cassandra, you name it.

The graph we're looking to get by importing the files above is:

CREATE
(m:Person {id:1, name:'Michal Bachman', age:30}),
(a:Person {id:2, name:'Adam George', age:29}),
(l:City {id:1, name:'London'}),
(w:City {id:2, name:'Watnall'}),
(p:City {id:3, name:'Prague'}),
(m)-[:LIVES_IN]->(l),
(a)-[:LIVES_IN]->(w)

Note that the last two lines in people-file.csv are bad data, we don't want to import these.

Step 1: New Project

Create a brand new Java project and bring this project as its dependency. Assuming you're using Maven, declare the following dependency in your pom.xml

<dependency>
    <groupId>com.graphaware.neo4j</groupId>
    <artifactId>programmatic-importer</artifactId>
    <version>3.1.0.44.2</version>
</dependency>

You will also need to make sure that the .jar file produced at the end of the process is a "fat jar", i.e. that it contains all the needed dependencies. For this to happen, you need something like this in your pom.xml:

<build>
    <plugins>
        <plugin>
            <artifactId>maven-assembly-plugin</artifactId>
            <version>2.4.1</version>
            <executions>
                <execution>
                    <phase>package</phase>
                    <goals>
                        <goal>attached</goal>
                    </goals>
                </execution>
            </executions>
            <configuration>
                <finalName>my-importer</finalName>
                <descriptorRefs>
                    <descriptorRef>jar-with-dependencies</descriptorRef>
                </descriptorRefs>
                <appendAssemblyId>false</appendAssemblyId>
            </configuration>
        </plugin>
    </plugins>
</build>

Step 2: Data Reader

Implement a DataReader that is able to read from your data source. Most readers will be TabularDataReaders. If you're importing from a CSV file, you can skip this step and use the provided CsvDataReader. If you're importing from a relational database, you can save some time by extending DbDataReader or QueueDbDataReader (recommended).

For example, it you're reading from Oracle, your data reader will look something like this:

/**
 * {@link com.graphaware.importer.data.access.DbDataReader} for Oracle.
 */
public class OracleDataReader extends QueueDbDataReader {

    private final String db;
    private final int prefetchSize;
    private final int fetchSize;

    public OracleDataReader(String dbHost, String dbPort, String user, String password, String db, int prefetchSize, int fetchSize) {
        super(dbHost, dbPort, user, password);
        this.db = db;
        this.prefetchSize = prefetchSize;
        this.fetchSize = fetchSize;
    }

    @Override
    protected String getDriverClassName() {
        return "oracle.jdbc.OracleDriver";
    }

    @Override
    protected String getUrl(String host, String port) {
        return "jdbc:oracle:thin:@//" + host + ":" + port + "/" + db;
    }

    @Override
    protected void additionalConfig(JdbcTemplate template) {
        template.setFetchSize(fetchSize);
    }

    @Override
    protected void additionalConfig(DataSource dataSource) {
        ((BasicDataSource) dataSource).addConnectionProperty("defaultRowPrefetch", String.valueOf(prefetchSize));
        ((BasicDataSource) dataSource).setInitialSize(10);
    }
}

Note that you will have to add the driver (Oracle JDBC driver in this case) into your Maven dependencies.

If you're writing an importer for a non-relational database, for example HBase, you will need to do a bit more work. An example HBase data reader would look like this:

import com.graphaware.importer.data.access.DataReader;
import org.apache.hadoop.conf.Configuration;
import org.apache.hadoop.hbase.TableName;
import org.apache.hadoop.hbase.client.*;
import org.apache.hadoop.hbase.util.Bytes;

import java.io.IOException;
import java.util.*;

public class HbaseDataReader implements DataReader<Map<String, Collection<String>>> {

    private final Configuration configuration;
    private final String columnFamily;
    private Connection connection;
    private ResultScanner scanner;
    private Iterator<Result> results = null;
    private Result result = null;
    private int row = 0;

    public HbaseDataReader(Configuration configuration, String columnFamily) {
        this.configuration = configuration;
        this.columnFamily = columnFamily;
    }

    @Override
    public void initialize() {

    }

    @Override
    public Map<String, Collection<String>> readObject(String columnFamily) {
        Set<String> cells = new HashSet<>();

        for (byte[] cell : result.getFamilyMap(Bytes.toBytes(columnFamily)).keySet()) {
            cells.add(Bytes.toString(cell));
        }

        String key = Bytes.toString(result.getRow());

        return Collections.<String, Collection<String>>singletonMap(key, cells);
    }

    @Override
    public void read(String connectionString, String hint) {
        if (results != null) {
            throw new IllegalStateException("Previous reader hasn't been closed");
        }

        try {
            connection = ConnectionFactory.createConnection(configuration);
            Table table = connection.getTable(TableName.valueOf(connectionString));
            Scan scan = new Scan();
            scan.addFamily(Bytes.toBytes(columnFamily));
            scanner = table.getScanner(scan);
            results = scanner.iterator();
        } catch (IOException e) {
            throw new RuntimeException(e);
        }
    }

    @Override
    public void close() {
        scanner.close();

        try {
            connection.close();
        } catch (IOException e) {
            throw new RuntimeException(e);
        }

        results = null;
        result = null;
    }

    @Override
    public int getRow() {
        return row;
    }

    @Override
    public boolean readRecord() {
        if (!results.hasNext()) {
            return false;
        }
        result = results.next();
        row++;

        return true;
    }

    @Override
    public String getRawRecord() {
        return result.toString();
    }

Step 3: Domain

You now need to define some Java classes that represent the things you are going to be importing. The data from the reader will be translated to these classes. Validation, normalization, and transformation can be applied to these classes, before they are translated into Neo4j nodes and relationships.

If you don't need to apply much logic to the data, you can choose to go with Map<String, Object> instead of concrete objects. The String in the map is some property key and the Object is that property's value.

Let's assume location data is clean, so we'll go with the Map approach. For importing people, we choose to create a class like this:

public class Person extends Neo4jPropertyContainer {

    @Neo4jProperty
    private final Long id;
    @Neo4jProperty
    private final String name;
    @Neo4jProperty
    private final Integer age;

    private final Long location;

    public Person(Long id, String name, Integer age, Long location) {
        this.id = id;
        this.name = name;
        this.age = age;
        this.location = location;
    }

    public Long getId() {
        return id;
    }

    public String getName() {
        return name;
    }

    public Integer getAge() {
        return age;
    }

    public Long getLocation() {
        return location;
    }
}

In this case, we're expecting each row from the data source to contain four pieces of information (id, name, age, location). The ones that we want to become a node's properties in Neo4j, we annotate with @Neo4jProperty. The location property will not be stored in Neo4j, it will be used to link the person to a location, so it is not annotated. Choose the names of the properties according to how they will be called in Neo4j - it doesn't matter at this point what they are called in your source database.

Step 4: Importers

Now you define the actual import logic. For each domain class from the previous step, there should be one Importer. Importers should extend BaseImporter. If using TabularDataReader, you can extend TabularImporter instead. For locations and people, we will write the two importers. Don't get scared, we will explain all aspects of writing such importers step-by-step.

public class LocationImporter extends TabularImporter<Map<String, Object>> {

    @InjectCache(name = "locations", creator = true)
    private Cache<Long, Long> locationCache;

    @Override
    public Data inputData() {
        return DynamicData.withName("locations");
    }

    @Override
    public Map<String, Object> produceObject(TabularDataReader record) {
        Map<String, Object> result = new HashMap<>();

        result.put("id", record.readLong("id"));
        result.put("name", record.readObject("name"));

        return result;
    }

    @Override
    public void processObject(Map<String, Object> object) {
        locationCache.put((Long) object.get("id"), context.inserter().createNode(object, Label.label("Location")));
    }

    @Override
    protected void createCache(Caches caches, String name) {
        if ("locations".equals(name)) {
            caches.createCache(name, Long.class, Long.class);
        }
        else {
            super.createCache(caches, name);
        }
    }
}

Let's start with the LocationImporter above. We've decided earlier not to create a dedicated "domain" object for locations. We're importing from tabular data (CSV), therefore we will extend TabularImporter<Map<String, Object>>.

There are two important methods that need to be implemented first. produceObject(..) will produce a "domain" object from a tabular record. processObject(..) should validate and normalize the object and insert it into Neo4j.

Producing the object should be a trivial mapping exercise, reading values from the (database/csv) record and populating our object with it. Populating it with dirty data is fine at this point, but null can be returned if we don't really want to produce an object from the record, because it is apparently wrong.

Processing the object means a couple of things. The minimum we should do is create a Location node from the object by writing: context.inserter().createNode(object, Label.label("Location"). This will create a new node with label "Location" and properties in the Map - "id" and "name" in this case. This method call returns the Neo4j node ID of the newly created node.

Since we will need to link people to locations later on, we should remember what Neo4j node ID was assigned to our the each location. Remember the "id" property of the location is coming from our relational data. For this reason, we need to have an (off-heap) Cache in place:

@InjectCache(name = "locations", creator = true)
private Cache<Long, Long> locationCache;

This tells the importer infrastructure that a cache called "locations" is used by this importer and that the key (own ID) is a Long. The value is usually a Long, because it is the Neo4j node ID. Moreover, creator=true tells the infrastructure that this importer creates this cache. That means other importers that need this cache will need to run after this one has finished. For each cache, there can only ever be a single creator.

When an importer is a cache creator, it needs to actually create the cache by implementing the createCache(..) method. It should check that it is asked to create the right one. If not, it should delegate to super-class, e.g.:

@Override
protected void createCache(Caches caches, String name) {
    if ("locations".equals(name)) {
        caches.createCache(name, Long.class, Long.class);
    }
    else {
        super.createCache(caches, name);
    }
}

With the caches explained, we will refine our node creating method to populate the cache with each new location:

@Override
public void processObject(Map<String, Object> object) {
    locationCache.put((Long) object.get("id"), context.inserter().createNode(object, Label.label("Location")));
}

Finally, each importer needs to implement the inputData() method to indicate, what sort of input data it works with. This is later used to actually find the data. So "locations" here could represent a CSV file called "locations-file.csv", or a SQL query "SELECT * FROM locations", etc...

With this in mind, let's have a look at the slightly more complicated implementation of PersonImporter:

public class PersonImporter extends TabularImporter<Person> {

    @InjectCache(name = "people", creator = true)
    private Cache<Long, Long> personCache;

    @InjectCache(name = "locations")
    private Cache<Long, Long> locationCache;

    @Override
    public Data inputData() {
        return DynamicData.withName("people");
    }

    @Override
    public Person produceObject(TabularDataReader record) {
        //for demo purposes, let's say we can't construct a person without ID
        if (record.readLong("id") == null) {
            return null;
        }
        return new Person(record.readLong("id"), record.readObject("name"), record.readInt("age"), record.readLong("location"));
    }

    @Override
    public void processObject(Person person) {
        //for demo purposes, let's say people with empty names are invalid.
        if (StringUtils.isEmpty(person.getName())) {
            throw new RuntimeException("Person has empty name");
        }

        personCache.put(person.getId(), context.inserter().createNode(person.getProperties(), Label.label("Person")));
        context.inserter().createRelationship(personCache.get(person.getId()), locationCache.get(person.getLocation()), withName("LIVES_IN"), Collections.<String, Object>emptyMap());
    }

    @Override
    protected void createCache(Caches caches, String name) {
        if ("people".equals(name)) {
            caches.createCache(name, Long.class, Long.class);
        } else {
            super.createCache(caches, name);
        }
    }

    @Override
    public void createIndices() {
        createIndex(Label.label("Person"), "name");
    }
}

This importer is producing a person cache and using a location cache to create relationships between people and locations. It also overrides to createIndices() method to create an index on people's names.

Step 5: Wiring it all together

Finally, we need to create the actual main importer class that will be called when data is to be imported. In our simple case, it will look as follows:

public class MyBatchImporter extends FileBatchImporter {

    public static void main(String[] args) {
        new MyBatchImporter().run(args);
    }

    @Override
    protected Set<Importer> createImporters() {
        //list all importers, order does not matter
        return new HashSet<>(Arrays.<Importer>asList(
                new PersonImporter(),
                new LocationImporter()
        ));
    }

    @Override
    protected Map<Data, String> input() {
        //map logical input names to physical ones (file names, queries,...)

        Map<Data, String> map = new HashMap<>();
        map.put(DynamicData.withName("people"), "people-file");
        map.put(DynamicData.withName("locations"), "locations-file");
        return map;
    }
}

Step 6: Tests

We should now test our importer. This isn't hard. We will be using GraphUnit to do that, so you should have that in your dependencies:

<dependency>
    <groupId>com.graphaware.neo4j</groupId>
    <artifactId>tests</artifactId>
    <version>3.1.0.44</version>
    <scope>test</scope>
</dependency>

The test would use the inserter on our csv data and verify the contents of the produced database:

@Test
public void testImport() throws IOException, InterruptedException {
    TemporaryFolder temporaryFolder = new TemporaryFolder();
    temporaryFolder.create();
    String tmpFolder = temporaryFolder.getRoot().getAbsolutePath();

    String cp = new ClassPathResource("people-file.csv").getFile().getAbsolutePath();
    String path = cp.substring(0, cp.length() - "people-file.csv".length());

    try {
        TestBatchImporter.main(new String[]{"-g", tmpFolder + "/graph.db", "-i", path, "-o", tmpFolder, "-r", "neo4j.properties"});
    } catch (Throwable t) {
        fail();
    }

    GraphDatabaseService database = new GraphDatabaseFactory().newEmbeddedDatabase(tmpFolder + "/graph.db");

    GraphUnit.assertSameGraph(database, "CREATE " +
                    "(p1:Person {id: 1, name: 'Michal Bachman', age:30})," +
                    "(p2:Person {id: 2, name: 'Adam George', age:29})," +
                    "(l1:Location {id: 1, name: 'London'})," +
                    "(l2:Location {id: 2, name: 'Watnall'})," +
                    "(l3:Location {id: 3, name: 'Prague'})," +
                    "(p1)-[:LIVES_IN]->(l1)," +
                    "(p2)-[:LIVES_IN]->(l2)"
    );

    database.shutdown();
    temporaryFolder.delete();
}

Step 7: Use

java -cp ./path/to/importer/importer.jar com.graphaware.importer.MyBatchImporter

usage:

 -g,--graph <arg>        use given directory to output the graph
 -i,--input <arg>        use given directory to find input files
 -o,--output <arg>       use given directory to output auxiliary files, such as statistics
 -r,--properties <arg>   use given file as neo4j properties
 -c,--cachefile <arg>    use given file as temporary on-disk cache

Step 8: Further Customization

Custom Config

The import process can be further customised. First of all, if additional configuration needs to be passed into the process, it is possible to implement a custom CommandLineParser. Typically, this is needed to somehow customise the data reading components. Depending of where you're importing from and what configuration you need, you may choose to extend BaseCommandLineParser, FileCommandLineParser, or DbCommandLineParser.

Closely tied to CommandLineParser is the ImportConfig that it produces. Again, for custom import configuration, you can implement ImportConfig by extending BaseImportConfig, FileImportConfig, or DbImportConfig. ImportConfig then produces a DataReader.

Let's illustrate using an example. If we were importing from Oracle and wanted the user to specify the fetchSize for the JdbcTemplate and prefetchSize for the Oracle connection, we would need to implement the following classes:

public class OracleCommandLineParser extends DbCommandLineParser {

    @Override
    protected DbImportConfig doProduceConfig(CommandLine line, String graphDir, String outputDir, String props, String host, String port, String user, String password) throws ParseException {
        int prefetchSize = Integer.valueOf(getOptionalValue(line, "pfs", "10000"));
        int fetchSize = Integer.valueOf(getOptionalValue(line, "fs", "10000"));

        return new OracleImportConfig(
                graphDir,
                outputDir,
                props,
                host,
                port,
                user,
                password,
                prefetchSize,
                fetchSize);
    }

    @Override
    protected void addOptions(Options options) {
        super.addOptions(options);

        options.addOption(new Option("pfs", "prefetchSize", true, "Oracle row prefetch size (default 10000)"));
        options.addOption(new Option("fs", "fetchSize", true, "JDBC driver row fetch size (default 10000)"));
    }
}
public class OracleImportConfig extends DbImportConfig {

    private final int prefetchSize;
    private final int fetchSize;

    public OracleImportConfig(String graphDir, String outputDir, String props, String dbHost, String dbPort, String user, String password, int prefetchSize, int fetchSize) {
        super(graphDir, outputDir, props, dbHost, dbPort, user, password);
        this.prefetchSize = prefetchSize;
        this.fetchSize = fetchSize;
    }

    @Override
    public DataReader createReader() {
        return new OracleDataReader(getDbHost(), getDbPort(), getUser(), getPassword(), prefetchSize, fetchSize);
    }
}

Once we have these two classes, we can wire them into the top-level importer by overriding a single method:

@Override
protected CommandLineParser<DbImportConfig> commandLineParser() {
    return new OracleCommandLineParser();
}

Custom Context

Throughout the import process, an ImportContext is available to the Inserters by accessing the protected context field. This context provides access to the actual BatchInserter used for creating nodes and relationships, to caches(), etc. In case more context is needed, for example an external validator (e.g. some JSR-303 validator implementation), you can implement a custom ImportContext by extending the default SimpleImportContext.

public class MyImportContext extends SimpleImportContext {

    private ObjectNormalizer normalizer;
    private ObjectValidator validator;

    public MyImportContext(ImportConfig config, Caches caches, DataLocator inputLocator, DataLocator outputLocator) {
        super(config, caches, inputLocator, outputLocator);
    }

    public ObjectNormalizer normalizer() {
        return normalizer;
    }

    public ObjectValidator validator() {
        return validator;
    }

    @Override
    protected void postBootstrap() {
        super.postBootstrap();

        normalizer = createNormalizer();
        validator = createValidator();
    }

    protected ObjectNormalizer createNormalizer() {
        return new AnnotationObjectNormalizer();
    }

    protected ObjectValidator createValidator() {
        return new StandardObjectValidator();
    }
}

Again, this custom context is wired into the import process in the top-level BatchImporter:

@Override
protected ImportContext createContext(T config) {
    return new MyImportContext(config, createCaches(), createInputDataLocator(config), createOutputDataLocator(config));
}

For further customisations, please have a look at the Javadoc or the code in this repo.

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Java importer skeleton for complicated, business-logic-heavy high-performance Neo4j imports directly from SQL databases, CSV files, etc.

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