I am creating a system which polls devices for data on varying metrics such as CPU utilisation, disk utilisation, temperature etc. at (probably) 5 minute intervals using SNMP. The ultimate goal is to provide visualisations to a user of the system in the form of time-series graphs.
I have looked at using RRDTool in the past, but rejected it as storing the captured data indefinitely is important to my project, and I want higher level and more flexible access to the captured data. So my quesiton is really:
What is better, a relational database (such as MySQL or PostgreSQL) or a non-relational or NoSQL database (such as MongoDB or Redis) with regard to performance when querying data for graphing.
Given a relational database, I would use a
data_instances table, in which would be stored every instance of data captured for every metric being measured for all devices, with the following fields:
When I want to draw a graph for a particular metric on a particular device, I must query this singular table filtering out the other devices, and the other metrics being analysed for this device:
SELECT metric_value, timestamp FROM data_instances WHERE fk_to_device=1 AND fk_to_metric=2
The number of rows in this table would be:
d * m_d * f * t
d is the number of devices,
m_d is the accumulative number of metrics being recorded for all devices,
f is the frequency at which data is polled for and
t is the total amount of time the system has been collecting data.
For a user recording 10 metrics for 3 devices every 5 minutes for a year, we would have just under 5 million records.
Without indexes on
fk_to_metric scanning this continuously expanding table would take too much time. So indexing the aforementioned fields and also
timestamp (for creating graphs with localised periods) is a requirement.
MongoDB has the concept of a collection, unlike tables these can be created programmatically without setup. With these I could partition the storage of data for each device, or even each metric recorded for each device.
I have no experience with NoSQL and do not know if they provide any query performance enhancing features such as indexing, however the previous paragraph proposes doing most of the traditional relational query work in the structure by which the data is stored under NoSQL.
Would a relational solution with correct indexing reduce to a crawl within the year? Or does the collection based structure of NoSQL approaches (which matches my mental model of the stored data) provide a noticeable benefit?