Flux vs InfluxQL
Flux is an alternative to InfluxQL and other SQL-like query languages for querying and analyzing data. Flux uses functional language patterns that overcome many InfluxQL limitations. Check out the following distinctions between Flux and InfluxQL:
Tasks possible with Flux
- Joins
- Math across measurements
- Sort by tags
- Group by any column
- Window by calendar months and years
- Work with multiple data sources
- DatePart-like queries
- Pivot
- Histograms
- Covariance
- Cast booleans to integers
- String manipulation and data shaping
- Work with geo-temporal data
Joins
InfluxQL has never supported joins. Although you can use a join in a TICKscript, TICKscript’s join capabilities are limited. Flux’s join() function lets you join data from any bucket, any measurement, and on any columns as long as each data set includes the columns to join on.
dataStream1 = from(bucket: "example-bucket1")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "network" and r._field == "bytes-transferred")
dataStream2 = from(bucket: "example-bucket2")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "httpd" and r._field == "requests-per-sec")
join(tables: {d1: dataStream1, d2: dataStream2}, on: ["_time", "_stop", "_start", "host"])
For an in-depth walkthrough of using the join()
function, see how to join data with Flux.
Math across measurements
Being able to perform joins across measurements lets you calculate data from separate measurements. The example below takes data from two measurements, mem
and processes
, joins them, and then calculates the average amount of memory used per running process:
// Memory used (in bytes)
memUsed = from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "mem" and r._field == "used")
// Total processes running
procTotal = from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "processes" and r._field == "total")
// Join memory used with total processes to calculate
// the average memory (in MB) used for running processes.
join(tables: {mem: memUsed, proc: procTotal}, on: ["_time", "_stop", "_start", "host"])
|> map(fn: (r) => ({_time: r._time, _value: r._value_mem / r._value_proc / 1000000}))
Sort by tags
InfluxQL’s sorting capabilities only let you control the sort order of time
using the ORDER BY time
clause. The Flux sort() function sorts records based on a list of columns. Depending on the column type, Flux sorts records lexicographically, numerically, or chronologically.
from(bucket: "example-bucket")
|> range(start: -12h)
|> filter(fn: (r) => r._measurement == "system" and r._field == "uptime")
|> sort(columns: ["region", "host", "_value"])
Group by any column
InfluxQL lets you group by tags or time intervals only. Flux lets you group data by any column, including _value
. Use the Flux group() function to define which columns to group data by.
from(bucket:"example-bucket")
|> range(start: -12h)
|> filter(fn: (r) => r._measurement == "system" and r._field == "uptime" )
|> group(columns:["host", "_value"])
Window by calendar months and years
InfluxQL does not support windowing data by calendar months and years due to their varied lengths. Flux supports calendar month and year duration units (1mo
, 1y
) and lets you window and aggregate data by calendar month and year.
from(bucket:"example-bucket")
|> range(start:-1y)
|> filter(fn: (r) => r._measurement == "mem" and r._field == "used_percent" )
|> aggregateWindow(every: 1mo, fn: mean)
Work with multiple data sources
InfluxQL can only query data stored in InfluxDB. Flux can query data from other data sources such as CSV, PostgreSQL, MySQL, Google BigTable, and more. Join that data with data in InfluxDB to enrich query results.
import "csv"
import "sql"
csvData = csv.from(csv: rawCSV)
sqlData = sql.from(
driverName: "postgres",
dataSourceName: "postgresql://user:password@localhost",
query: "SELECT * FROM example_table",
)
data = from(bucket: "example-bucket")
|> range(start: -24h)
|> filter(fn: (r) => r._measurement == "sensor")
auxData = join(tables: {csv: csvData, sql: sqlData}, on: ["sensor_id"])
enrichedData = join(tables: {data: data, aux: auxData}, on: ["sensor_id"])
enrichedData
|> yield(name: "enriched_data")
For an in-depth walkthrough of querying SQL data, see Query SQL data sources.
DatePart-like queries
InfluxQL doesn’t support DatePart-like queries that only return results during specified hours of the day. The Flux hourSelection function returns only data with time values in a specified hour range.
from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "cpu" and r.cpu == "cpu-total")
|> hourSelection(start: 9, stop: 17)
Pivot
Pivoting data tables isn’t supported in InfluxQL. Use the Flux pivot() function to pivot data tables by rowKey
, columnKey
, and valueColumn
parameters.
from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "cpu" and r.cpu == "cpu-total")
|> pivot(rowKey: ["_time"], columnKey: ["_field"], valueColumn: "_value")
Histograms
Generating histograms isn’t supported in InfluxQL. Use the Flux histogram() function to generate a cumulative histogram.
from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "mem" and r._field == "used_percent")
|> histogram(buckets: [10, 20, 30, 40, 50, 60, 70, 80, 90, 100])
For more examples, see how to create histograms with Flux.
Covariance
Flux provides functions for simple covariance calculations. Use the covariance() function to calculate the covariance between two columns and the cov() function to calculate the covariance between two data streams.
Covariance between two columns
from(bucket: "example-bucket")
|> range(start:-5m)
|> covariance(columns: ["x", "y"])
Covariance between two streams of data
table1 = from(bucket: "example-bucket")
|> range(start: -15m)
|> filter(fn: (r) => r._measurement == "measurement_1")
table2 = from(bucket: "example-bucket")
|> range(start: -15m)
|> filter(fn: (r) => r._measurement == "measurement_2")
cov(x: table1, y: table2, on: ["_time", "_field"])
Cast booleans to integers
InfluxQL supports type casting for numeric data types (floats to integers and vice versa) only. Use Flux type conversion functions to perform many more type conversions, including casting boolean values to integers.
Cast boolean field values to integers
from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "m" and r._field == "bool_field")
|> toInt()
String manipulation and data shaping
InfluxQL doesn’t support string manipulation when querying data. Use Flux Strings package functions to operate on string data. Combine functions in this package with the map() function to perform operations like sanitizing and normalizing strings.
import "strings"
from(bucket: "example-bucket")
|> range(start: -1h)
|> filter(fn: (r) => r._measurement == "weather" and r._field == "temp")
|> map(
fn: (r) => ({
r with
location: strings.toTitle(v: r.location),
sensor: strings.replaceAll(v: r.sensor, t: " ", u: "-"),
status: strings.substring(v: r.status, start: 0, end: 8),
})
)
Work with geo-temporal data
InfluxQL doesn’t support working with geo-temporal data. The Flux Geo package is a collection of functions that let you shape, filter, and group geo-temporal data.
import "experimental/geo"
from(bucket: "geo/autogen")
|> range(start: -1w)
|> filter(fn: (r) => r._measurement == "taxi")
|> geo.shapeData(latField: "latitude", lonField: "longitude", level: 20)
|> geo.filterRows(region: {lat: 40.69335938, lon: -73.30078125, radius: 20.0}, strict: true)
|> geo.asTracks(groupBy: ["fare-id"])
InfluxQL and Flux parity
We’re continuing to add functions to complete parity between Flux and InfluxQL. The table below shows InfluxQL statements, clauses, and functions along with their equivalent Flux functions.
For a complete list of Flux functions, view all Flux functions.