MapD Distributed Configuration

MapD supports distributed configuration, which allows single queries to span more than one physical host when the scale of the data is too large to fit on a single machine.

In addition to increased capacity, a distributed setup has other advantages. Writes to the database can be distributed across the nodes, thereby speeding up import. Reads from disk are similarly accelerated. For clients that have performance requirements higher than the levels a single node can provide, additional GPUs in a distributed cluster can significantly increase read performance in many usage scenarios. Performance scales linearly, or near linearly, with the number of GPUs, for simple queries requiring little communication between servers.

GPU processing is distributed in a similar fashion. Multiple GPUs across the cluster query data on their local hosts. This allows processing of larger datasets, distributed across multiple servers.

The MapD Distributed Cluster

A MapD distributed database consists of three components:

  • An aggregator, which is a specialized MapD Core Database instance for managing the cluster
  • One or more leaf nodes, each being a complete MapD Core Database instance for storing and querying data
  • A String Dictionary Server, which is a centralized repository for all dictionary-encoded items

Conceptually, a MapD distributed database is horizontally sharded across n leaf nodes. Each leaf node holds one nth of the total dataset. Sharding currently is round-robin only. Queries and responses are orchestrated by a MapD Aggregator server.

The MapD Aggregator

Clients interact with the aggregator. The aggregator orchestrates execution of a query across the appropriate leaf nodes. The aggregator composes the steps of the query execution plan to send to each leaf node, and manages their results. The full query execution might require multiple iterations between the aggregator and leaf nodes before returning a result to the client.

A core feature of the MapD Core Database is backend, GPU-based rendering for data-rich charts such as point maps. When running as a distributed cluster, the backend rendering is distributed across all leaf nodes, and the aggregator composes the final image.

String Dictionary Server

The String Dictionary Server manages and allocates IDs for dictionary-encoded fields, ensuring that these IDs are consistent across the entire cluster.

The server creates a new ID for each new encoded value. For queries returning results from encoded fields, the IDs are automatically converted to the original values by the aggregator. Leaf nodes use the string dictionary for processing joins on encoded columns.

For moderately sized configurations, the String Dictionary Server can share a host with a leaf node. For larger clusters, this service can be configured to run on a small, separate CPU-only server.

Replicated Tables

A table is split by default to 1/nth of the complete dataset. When you create a table used to provide dimension information, you can improve performance by replicating its contents onto every leaf node using the partitions property. For example:


This reduces the distribution overhead during query execution in cases where sharding is not possible or appropriate. This is most useful for relatively small, heavily used dimension tables.

Data Loading

You can load data on a MapD distributed cluster in two ways:

*You can execute a COPY FROM statement to the aggregator exactly as with MapD single-node processing. The aggregator distributes data evenly across the leaf nodes.

An Example MapD Distributed Cluster

This example uses four GPU-based machines, each with a combination of one or more CPUs and GPUs.

Hostname IP Role(s)
Node1 Leaf, Aggregator
Node2 Leaf, String Dictionary Server
Node3 Leaf
Node4 Leaf

Install MapD server on each node. For larger deployments, you can have the install on a shared drive.

Set up the configuration file for the entire cluster. This file is the same for all nodes.

    "host": "node1",
    "port": 19091,
    "role": "dbleaf"
    "host": "node2",
    "port": 19091,
    "role": "dbleaf"
    "host": "node3",
    "port": 19091,
    "role": "dbleaf"
    "host": "node4",
    "port": 19091,
    "role": "dbleaf"

    "host": "node2",
    "port": 10301,
    "role": "string"

In the cluster.conf file, the location of each leaf node is identified as well as the location of the String Dictionary server. Here, dbleaf is a leaf node, and string is the String Dictionary Server. The port each node is listening on is also identified. These ports must match the ports configured on the individual server.

Each leaf node requires a mapd.conf configuration file.

port = 19091
http-port = 19090
calcite-port = 19093
data = "<location>/mapd-storage/nodeLocal/data"
read-only = false
quiet = false
string-servers = "<location>/mapd-storage/cluster.conf"

The parameter string-servers identifies the file containing the cluster configuration, to tell the leaf node where the String Dictionary Server is.

The aggregator node requires a slightly different mapd.conf. The file is named mapd-agg.conf in this example.

port = 9091
http-port = 9090
calcite-port = 9093
data = "<location>/mapd-storage/nodeLocalAggregator/data"
read-only = false
quiet = false
num-gpus = 1
cluster = "<location>/mapd-storage/cluster.conf"

port = 9092
frontend = "<location>/prod/mapd/frontend"

The parameter cluster tells the MapD Core Database instance that it is an aggregator node, and where to find the rest of its cluster.

If your aggregator node is sharing a machine with a leaf node, there might be a conflict on the calcite-port. Consider changing the port number of the aggregator node to another that is not in use.

Implementing a MapD Distributed Cluster

Contact MapD support for assistance with MapD Distributed Cluster implementation.