Apache Druid
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Getting started

  • Introduction to Apache Druid
  • Quickstart
  • Docker
  • Single server deployment
  • Clustered deployment

Tutorials

  • Loading files natively
  • Load from Apache Kafka
  • Load from Apache Hadoop
  • Querying data
  • Roll-up
  • Configuring data retention
  • Updating existing data
  • Compacting segments
  • Deleting data
  • Writing an ingestion spec
  • Transforming input data
  • Kerberized HDFS deep storage

Design

  • Design
  • Segments
  • Processes and servers
  • Deep storage
  • Metadata storage
  • ZooKeeper

Ingestion

  • Ingestion
  • Data formats
  • Schema design tips
  • Data management
  • Stream ingestion

    • Apache Kafka
    • Amazon Kinesis
    • Tranquility

    Batch ingestion

    • Native batch
    • Hadoop-based
  • Task reference
  • Troubleshooting FAQ

Querying

  • Druid SQL
  • Native queries
  • Query execution
  • Concepts

    • Datasources
    • Joins
    • Lookups
    • Multi-value dimensions
    • Multitenancy
    • Query caching
    • Context parameters

    Native query types

    • Timeseries
    • TopN
    • GroupBy
    • Scan
    • Search
    • TimeBoundary
    • SegmentMetadata
    • DatasourceMetadata

    Native query components

    • Filters
    • Granularities
    • Dimensions
    • Aggregations
    • Post-aggregations
    • Expressions
    • Having filters (groupBy)
    • Sorting and limiting (groupBy)
    • Sorting (topN)
    • String comparators
    • Virtual columns
    • Spatial filters

Configuration

  • Configuration reference
  • Extensions
  • Logging

Operations

  • Web console
  • Getting started with Apache Druid
  • Basic cluster tuning
  • API reference
  • High availability
  • Rolling updates
  • Retaining or automatically dropping data
  • Metrics
  • Alerts
  • Working with different versions of Apache Hadoop
  • HTTP compression
  • TLS support
  • Password providers
  • dump-segment tool
  • reset-cluster tool
  • insert-segment-to-db tool
  • pull-deps tool
  • Misc

    • Legacy Management UIs
    • Deep storage migration
    • Export Metadata Tool
    • Metadata Migration
    • Segment Size Optimization
    • Content for build.sbt

Development

  • Developing on Druid
  • Creating extensions
  • JavaScript functionality
  • Build from source
  • Versioning
  • Experimental features

Misc

  • Papers

Hidden

  • Apache Druid vs Elasticsearch
  • Apache Druid vs. Key/Value Stores (HBase/Cassandra/OpenTSDB)
  • Apache Druid vs Kudu
  • Apache Druid vs Redshift
  • Apache Druid vs Spark
  • Apache Druid vs SQL-on-Hadoop
  • Authentication and Authorization
  • Broker
  • Coordinator Process
  • Historical Process
  • Indexer Process
  • Indexing Service
  • MiddleManager Process
  • Overlord Process
  • Router Process
  • Peons
  • Approximate Histogram aggregators
  • Apache Avro
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  • DataSketches extension
  • DataSketches HLL Sketch module
  • DataSketches Quantiles Sketch module
  • DataSketches Theta Sketch module
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  • Basic Security
  • Kerberos
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  • Apache Ranger Security
  • Google Cloud Storage
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  • MySQL Metadata Store
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  • Apache Parquet Extension
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Edit

Metadata storage

The Metadata Storage is an external dependency of Apache Druid. Druid uses it to store various metadata about the system, but not to store the actual data. There are a number of tables used for various purposes described below.

Derby is the default metadata store for Druid, however, it is not suitable for production. MySQL and PostgreSQL are more production suitable metadata stores.

The Metadata Storage stores the entire metadata which is essential for a Druid cluster to work. For production clusters, consider using MySQL or PostgreSQL instead of Derby. Also, it's highly recommended to set up a high availability environment because there is no way to restore if you lose any metadata.

Using Derby

Add the following to your Druid configuration.

druid.metadata.storage.type=derby
druid.metadata.storage.connector.connectURI=jdbc:derby://localhost:1527//opt/var/druid_state/derby;create=true

MySQL

See mysql-metadata-storage extension documentation.

PostgreSQL

See postgresql-metadata-storage.

Adding custom dbcp properties

NOTE: These properties are not settable through the druid.metadata.storage.connector.dbcp properties: username, password, connectURI, validationQuery, testOnBorrow. These must be set through druid.metadata.storage.connector properties.

Example supported properties:

druid.metadata.storage.connector.dbcp.maxConnLifetimeMillis=1200000
druid.metadata.storage.connector.dbcp.defaultQueryTimeout=30000

See BasicDataSource Configuration for full list.

Metadata storage tables

Segments table

This is dictated by the druid.metadata.storage.tables.segments property.

This table stores metadata about the segments that should be available in the system. (This set of segments is called "used segments" elsewhere in the documentation and throughout the project.) The table is polled by the Coordinator to determine the set of segments that should be available for querying in the system. The table has two main functional columns, the other columns are for indexing purposes.

Value 1 in the used column means that the segment should be "used" by the cluster (i.e., it should be loaded and available for requests). Value 0 means that the segment should not be loaded into the cluster. We do this as a means of unloading segments from the cluster without actually removing their metadata (which allows for simpler rolling back if that is ever an issue).

The payload column stores a JSON blob that has all of the metadata for the segment (some of the data stored in this payload is redundant with some of the columns in the table, that is intentional). This looks something like

{
 "dataSource":"wikipedia",
 "interval":"2012-05-23T00:00:00.000Z/2012-05-24T00:00:00.000Z",
 "version":"2012-05-24T00:10:00.046Z",
 "loadSpec":{
    "type":"s3_zip",
    "bucket":"bucket_for_segment",
    "key":"path/to/segment/on/s3"
 },
 "dimensions":"comma-delimited-list-of-dimension-names",
 "metrics":"comma-delimited-list-of-metric-names",
 "shardSpec":{"type":"none"},
 "binaryVersion":9,
 "size":size_of_segment,
 "identifier":"wikipedia_2012-05-23T00:00:00.000Z_2012-05-24T00:00:00.000Z_2012-05-23T00:10:00.046Z"
}

Note that the format of this blob can and will change from time-to-time.

Rule table

The rule table is used to store the various rules about where segments should land. These rules are used by the Coordinator when making segment (re-)allocation decisions about the cluster.

Config table

The config table is used to store runtime configuration objects. We do not have many of these yet and we are not sure if we will keep this mechanism going forward, but it is the beginnings of a method of changing some configuration parameters across the cluster at runtime.

Task-related tables

There are also a number of tables created and used by the Overlord and MiddleManager when managing tasks.

Audit table

The Audit table is used to store the audit history for configuration changes e.g rule changes done by Coordinator and other config changes.

##Accessed by: ##

The Metadata Storage is accessed only by:

  1. Indexing Service Processes (if any)
  2. Realtime Processes (if any)
  3. Coordinator Processes

Thus you need to give permissions (e.g., in AWS Security Groups) only for these machines to access the Metadata storage.

← Deep storageZooKeeper →
  • Using Derby
  • MySQL
  • PostgreSQL
  • Adding custom dbcp properties
  • Metadata storage tables
    • Segments table
    • Rule table
    • Config table
    • Task-related tables
    • Audit table

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