Overview

Data Model

As a relational database supporting full SQL, TimescaleDB supports flexible data models that can be optimized for different use cases. This makes TimescaleDB somewhat different from most other time-series databases, which typically use “narrow-table” models.

Specifically, TimescaleDB can support both wide-table and narrow-table models. Here, we discuss the different performance trade-offs and implications of these two models using an Internet of Things (IoT) example.

Imagine a distributed group of 1,000 IoT devices designed to collect environmental data at various intervals. This data could include:

  • Identifiers: device_id, timestamp
  • Metadata: location_id, dev_type, firmware_version, customer_id
  • Device metrics: cpu_1m_avg, free_mem, used_mem, net_rssi, net_loss, battery
  • Sensor metrics: temperature, humidity, pressure, CO, NO2, PM10

For example, your incoming data may look like this:

timestampdevice_idcpu_1m_avgfree_memtemperaturelocation_iddev_type
2017-01-01 01:02:00abc12380500MB72335field
2017-01-01 01:02:23def45690400MB64335roof
2017-01-01 01:02:30ghi7891200MB5677roof
2017-01-01 01:03:12abc12380500MB72335field
2017-01-01 01:03:35def45695350MB64335roof
2017-01-01 01:03:42ghi789100100MB5677roof

Now, let’s look at various ways to model this data.

Narrow-table Model

Most time-series databases would represent this data in the following way:

  • Represent each metric as a separate entity (e.g., represent cpu_1m_avg and free_mem as two different things)
  • Store a sequence of “time”, “value” pairs for that metric
  • Represent the metadata values as a “tag-set” associated with that metric/tag-set combination

In this model, each metric/tag-set combination is considered an individual “time series” containing a sequence of time/value pairs.

Using our example above, this approach would result in 9 different “time series”, each of which is defined by a unique set of tags.

  1. 1. {name: cpu_1m_avg, device_id: abc123, location_id: 335, dev_type: field}
  2. 2. {name: cpu_1m_avg, device_id: def456, location_id: 335, dev_type: roof}
  3. 3. {name: cpu_1m_avg, device_id: ghi789, location_id: 77, dev_type: roof}
  4. 4. {name: free_mem, device_id: abc123, location_id: 335, dev_type: field}
  5. 5. {name: free_mem, device_id: def456, location_id: 335, dev_type: roof}
  6. 6. {name: free_mem, device_id: ghi789, location_id: 77, dev_type: roof}
  7. 7. {name: temperature, device_id: abc123, location_id: 335, dev_type: field}
  8. 8. {name: temperature, device_id: def456, location_id: 335, dev_type: roof}
  9. 9. {name: temperature, device_id: ghi789, location_id: 77, dev_type: roof}

The number of such time series scales with the cross-product of the cardinality of each tag, i.e., (# names) × (# device ids) × (# location ids) × (device types). Some time-series databases struggle as cardinality increases, ultimately limiting the number of device types and devices you can store in a single database.

TimescaleDB supports narrow models and does not suffer from the same cardinality limitations as other time-series databases do. A narrow model makes sense if you collect each metric independently. It allows you to add new metrics as you go by adding a new tag without requiring a formal schema change.

However, a narrow model is not as performant if you are collecting many metrics with the same timestamp, since it requires writing a timestamp for each metric. This ultimately results in higher storage and ingest requirements. Further, queries that correlate different metrics are also more complex, since each additional metric you want to correlate requires another JOIN. If you typically query multiple metrics together, it is both faster and easier to store them in a wide table format, which we will cover in the following section.

Wide-table Model

TimescaleDB easily supports wide-table models. Queries across multiple metrics are easier in this model, since they do not require JOINs. Also, ingest is faster since only one timestamp is written for multiple metrics.

A typical wide-table model would match a typical data stream in which multiple metrics are collected at a given timestamp:

timestampdevice_idcpu_1m_avgfree_memtemperaturelocation_iddev_type
2017-01-01 01:02:00abc12380500MB7242field
2017-01-01 01:02:23def45690400MB6442roof
2017-01-01 01:02:30ghi7891200MB5677roof
2017-01-01 01:03:12abc12380500MB7242field
2017-01-01 01:03:35def45695350MB6442roof
2017-01-01 01:03:42ghi789100100MB5677roof

Here, each row is a new reading, with a set of measurements and metadata at a given time. This allows us to preserve relationships within the data, and ask more interesting or exploratory questions than before.

Of course, this is not a new format: it’s what one would commonly find within a relational database.

JOINs with Relational Data

TimescaleDB’s data model also has another similarity with relational databases: it supports JOINs. Specifically, one can store additional metadata in a secondary table, and then utilize that data at query time.

In our example, one could have a separate locations table, mapping location_id to additional metadata for that location. For example:

location_idnamelatitudelongitudezip_coderegion
42Grand Central Terminal40.7527° N73.9772° W10017NYC
77Lobby 742.3593° N71.0935° W02139Massachusetts

Then at query time, by joining our two tables, one could ask questions like: what is the average free_mem of our devices in zip_code 10017?

Without joins, one would need to denormalize their data and store all metadata with each measurement row. This creates data bloat, and makes data management more difficult.

With joins, one can store metadata independently, and update mappings more easily.

For example, if we wanted to update our “region” for location_id 77 (e.g., from “Massachusetts” to “Boston”), we can make this change without having to go back and overwrite historical data.

Next: How is TimescaleDB’s architecture different?