Redis is an open source, key-value database built with an in-memory design that emphasizes speed. It has support for rich data types, atomic operations, and Lua scripting.
DigitalOcean Managed Databases include metrics visualizations so you can monitor performance and health of your database cluster.
Cluster metrics monitor the performance of the nodes in a database cluster. Cluster metrics cover primary and standby nodes; metrics for each read-only node are displayed independently. This data can help guide capacity planning and optimization. You can also set up alerting on cluster metrics.
Database metrics monitor the performance of the database itself. This data can help assess the health of the database, pinpoint performance bottlenecks, and identify unusual use patterns that may indicate an application bug or security breach.
To view Redis performance metrics, click the name of the database to go to its Overview page, then click the Insights tab.
In the Select Period drop-down menu, you can choose a time frame for the x-axis of the graphs, ranging from 1 hour to 30 days. Each line in the graphs displays about 300 data points.
By default, the summary to the right shows the most recent metrics values. When you hover over a different time in a graph, the summary displays the values from that time instead.
If you recently provisioned the cluster or added nodes, it may take a few minutes for the metrics data to finish processing before you see it on the Insights page.
Database clusters have the following cluster metrics:
All resource usage graphs have three lines for minimum, maximum, and average. If you have a one-node cluster, all three lines are a single, superimposed line.
The CPU usage plot shows, for all nodes in the cluster, the minimum, maximum, and average percentage of processing power being used across all cores.
If you experience a significant increase in CPU usage, check the throughput plot and query statistics to look for unexpected usage patterns or long-running queries.
Learn more about CPU usage in the Droplet metrics definitions.
The load average plot displays 1-, 5-, and 15-minute load averages, averaged across all primary and standby nodes in the cluster. Load average measures the processes that are either being handled by the processor or are waiting for processor time.
The three time-based load average metrics are calculated as an exponentially weighted moving average over the past 1, 5, and 15 minutes. This metric does not adjust for multiple cores. Learn more about load averages in the Droplet metrics definitions.
The memory usage plot presents the minimum, maximum, and average percentage of memory consumption across all nodes in the cluster. Because cached memory can be released on demand, it is not considered in use.
Learn more about memory usage in the Droplet metrics definitions.
The disk usage plot shows the minimum, maximum, and average percentage of disk consumed across all primary and standby nodes in the cluster. You should maintain disk usage below 90<.
Learn more about disk I/O in the Droplet metrics definitions.
You can also view your database cluster’s metrics programatically via the metrics endpoint. This endpoint includes over twenty times the metrics you can access in the Insights tab in the control panel.
You can access the metrics endpoint with a cURL command or a monitoring system like Prometheus.
First, you need to retrieve your cluster’s metrics hostname by sending a GET
request to https://api.digitalocean.com/v2/databases/${UUID}
. In the following example, the target database cluster has a standby node, which requires a second host
/port
pair:
curl --silent -XGET --location 'https://api.digitalocean.com/v2/databases/${UUID}' --header 'Content-Type: application/json' --header "Authorization: Bearer $RO_DIGITALOCEAN_TOKEN" | jq '.database.metrics_endpoints'
Which returns the following host
/port
pairs:
[
{
"host": "db-test-for-metrics.c.db.ondigitalocean.com",
"port": 9273
},
{
"host": "replica-db-test-for-metrics.c.db.ondigitalocean.com",
"port": 9273
}
]
Next, you need your cluster’s metrics credentials. You can retrieve these by making a GET
request to https://api.digitalocean.com/v2/databases/metrics/credentials
with an admin or write token:
curl --silent -XGET --location 'https://api.digitalocean.com/v2/databases/metrics/credentials' --header 'Content-Type: application/json' --header "Authorization: Bearer $RW_DIGITALOCEAN_TOKEN" | jq '.'
Which returns the following credentials:
{
"credentials": {
"basic_auth_username": "..."
"basic_auth_password": "...",
}
}
To access the endpoint using cURL, make a GET
request to https://$HOST:9273/metrics
, replacing the hostname, username, and password variables with the credentials you found in the previous steps:
curl -XGET --silent -u $USERNAME:$PASSWORD https://$HOST:9273/metrics
To access the endpoint using Prometheus, first copy the following configuration into a file prometheus.yml
, replacing the hostname, username, password, and path to CA cert. This configures Prometheus to use all the credentials necessary to access the endpoint:
# prometheus.yml
global:
scrape_interval: 15s
evaluation_interval: 15s
scrape_configs:
- job_name: 'dbaas_cluster_metrics_svc_discovery'
scheme: https
tls_config:
ca_file: /path/to/ca.crt
dns_sd_configs:
- names:
- $TARGET_ADDRESS
type: 'A'
port: 9273
refresh_interval: 15s
metrics_path: '/metrics'
basic_auth:
username: $BASIC_AUTH_USERNAME
password: $BASIC_AUTH_PASSWORD
Then, copy the following connection script into a file named up.sh
. This script runs envsubst
and starts a Prometheus container with the config from the previous step:
#!/bin/bash
envsubst < prometheus.yml > /tmp/dbaas-prometheus.yml
docker run -p 9090:9090 \
-v /tmp/dbaas-prometheus.yml:/etc/prometheus/prometheus.yml \
prom/prometheus
Go to http://localhost:9090/targets
in a browser to confirm that multiple hosts are up and healthy.
Then, navigate to http://localhost:9090/graph
to query Prometheus for metrics.
For more details, see the Prometheus DNS SD docs and TLS config docs.
For more details on each available metric, see the Redis documentation.