Performance Benchmarking with TPC-C

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Warning:
As of November 12, 2021, CockroachDB v20.1 is no longer supported. For more details, refer to the Release Support Policy.

This page shows you how to reproduce CockroachDB's TPC-C performance benchmarking results on commodity AWS hardware. Across all scales, CockroachDB can process tpmC (new order transactions per minute) at near maximum efficiency. Start by choosing the scale you're interested in:

Warehouses Data size Cluster size
10 2GB 3 nodes on your laptop
1000 80GB 3 nodes on c5d.4xlarge machines
10,000 800GB 15 nodes on c5d.4xlarge machines
100,000 8TB 81 nodes on c5d.9xlarge machines

Before you begin

Review TPC-C concepts

TPC-C provides the most realistic and objective measure for OLTP performance at various scale factors. Before you get started, consider reviewing what TPC-C is and how it is measured.

Step 1. Set up the environment

Provision VMs

  1. Create 4 VM instances, 3 for CockroachDB nodes and 1 for the TPC-C workload.

    • Create all instances in the same region and the same security group.
    • Use the c5d.4xlarge machine type.
    • Use local SSD instance store volumes. Local SSDs are low latency disks attached to each VM, which maximizes performance. This configuration best resembles what a bare metal deployment would look like, with machines directly connected to one physical disk each. We do not recommend using network-attached block storage.
  2. Note the internal IP address of each instance. You'll need these addresses when starting the CockroachDB nodes.

Warning:

This configuration is intended for performance benchmarking only. For production deployments, there are other important considerations, such as security, load balancing, and data location techniques to minimize network latency. For more details, see the Production Checklist.

Configure your network

CockroachDB requires TCP communication on two ports:

  • 26257 for inter-node communication (i.e., working as a cluster) and for the TPC-C workload to connect to nodes
  • 8080 for exposing your Admin UI

Create inbound rules for your security group:

Inter-node and TPCC-to-node communication

Field Recommended Value
Type Custom TCP Rule
Protocol TCP
Port Range 26257
Source The name of your security group (e.g., sg-07ab277a)

Admin UI

Field Recommended Value
Type Custom TCP Rule
Protocol TCP
Port Range 8080
Source Your network's IP ranges

Step 2. Start CockroachDB

  1. SSH to the first VM where you want to run a CockroachDB node.

  2. Download the CockroachDB archive for Linux, extract the binary, and copy it into the PATH:

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    $ curl https://binaries.cockroachdb.com/cockroach-v20.1.17.linux-amd64.tgz \
    | tar -xz
    
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    $ cp -i cockroach-v20.1.17.linux-amd64/cockroach /usr/local/bin/
    

    If you get a permissions error, prefix the command with sudo.

  3. Run the cockroach start command:

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    $ cockroach start \
    --insecure \
    --advertise-addr=<node1 internal address> \
    --join=<node1 internal address>,<node2 internal address>,<node3 internal address> \
    --cache=.25 \
    --max-sql-memory=.25 \
    --background
    
  4. Repeat steps 1 - 3 for the other 2 VMs for CockroachDB nodes. Each time, be sure to adjust the --advertise-addr flag.

  5. On any of the VMs with the cockroach binary, run the one-time cockroach init command to join the first nodes into a cluster:

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    $ cockroach init --insecure --host=<address of any node>
    

Step 3. Import the TPC-C dataset

CockroachDB offers a pre-built workload binary for Linux that includes the TPC-C benchmark. You'll need to put this binary on the VM for importing the dataset and running TPC-C.

  1. SSH to the VM where you want to run TPC-C.

  2. Download the workload binary for Linux and make it executable:

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    $ wget https://edge-binaries.cockroachdb.com/cockroach/workload.LATEST -O workload; chmod 755 workload
    
  3. Import the TPC-C dataset:

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    $ ./workload fixtures import tpcc \
    --warehouses 1000 \
    "postgres://root@<address of any CockroachDB node>:26257?sslmode=disable"
    

    This will load 80GB of data for 1000 "warehouses". This can take a while to complete.

    You can monitor progress on the Jobs screen of the Admin UI. Open the Admin UI by pointing a browser to the address in the admin field in the standard output of any node on startup.

Step 4. Run the benchmark

  1. Still on the VM with the workload binary, create an addrs file containing connection strings to the 3 CockroachDB nodes:

    postgres://root@<node 1 internal address>:26257?sslmode=disable postgres://root@<node 2 internal address>:26257?sslmode=disable postgres://root@<node 3 internal address>:26257?sslmode=disable
    
  2. Run TPC-C for 30 minutes:

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    $ ./workload run tpcc \
    --warehouses 1000 \
    --ramp 1m \
    --duration 30m \
    $(cat addrs)
    

Step 5. Interpret the results

Once the workload has finished running, you will see a final result similar to the following. The efficiency and latency can be combined to determine whether this was a passing run. You should expect to see an efficiency number above 95%, well above the required minimum of 85%, and p95 latencies well below the required maximum of 10 seconds.

_elapsed_______tpmC____efc__avg(ms)__p50(ms)__p90(ms)__p95(ms)__p99(ms)_pMax(ms)
 1800.0s    12474.4  97.0%     24.6     21.0     39.8     52.4     79.7    302.0

See also

  • Performance Overview

  • Hardware

    CockroachDB works well on commodity hardware in public cloud, private cloud, on-prem, and hybrid environments. For hardware recommendations, see our Production Checklist.

    Also note that CockroachDB creates a yearly cloud report focused on evaluating hardware performance. For more information, see the 2020 Cloud Report.

  • Performance Tuning

    For guidance on tuning a real workload's performance, see SQL Best Practices, and for guidance on data location techniques to minimize network latency, see Topology Patterns.


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