Flux is a lightweight scripting language for querying databases (like InfluxDB) and working with data. It's part of InfluxDB 1.7 and 2.0, but can be run independently of those. This repo represents the language definition and an implementation of the language core.
A complete specification can be found in SPEC.md. The specification contains many examples to start learning Flux.
Building Flux requires the following:
- Go 1.12 or greater with module support enabled
- Latest stable version of Rust and Cargo (recommended: rustup
- Clang
Flux is currently available in InfluxDB 1.7 and 2.0 or through the REPL that can be compiled from this repository.
To build flux, first install the pkg-config
utility, and ensure the GNU pkg-config
utility is also installed.
# On Debian/Ubuntu
$ sudo apt-get install -y clang pkg-config
# On Mac OS X with Homebrew
$ brew install pkg-config
# Install the pkg-config wrapper utility
$ go get github.com/influxdata/pkg-config
# Ensure the GOBIN directory is on your PATH
$ export PATH=${GOPATH}/bin:${PATH}
To ensure that pkg-config
is configured correctly, you can use which -a
.
$ which -a pkg-config
/home/user/go/bin/pkg-config
/usr/bin/pkg-config
To compile the REPL, use the following command:
$ go build ./cmd/flux
$ ./flux repl
If you do not want to add the wrapper pkg-config
to your PATH
, you can also set PKG_CONFIG
and Go will use it.
$ export PKG_CONFIG=/home/user/go/bin/pkg-config
$ go build ./cmd/flux
$ ./flux repl
If you modify any Rust code, you will need to force Go to rebuild the library.
$ go generate ./libflux/go/libflux
If you create or change any flux functions, you will need to rebuild the stdlib and inform Go that it must rebuild libflux:
$ go generate ./stdlib ./libflux/go/libflux
Your new Flux's code should be formatted to coexist nicely with the existing codebase with go fmt. For example, if you add code to stdlib/universe:
$ go fmt ./stdlib/universe/
Don't forget to add your tests and make sure they work. Here is an example showing how to run the tests for the stdlib/universe package:
$ go test ./stdlib/universe/
From within the REPL, you can run any Flux expression.
Additionally, you can also load a file directly into the REPL by typing @
followed by the filename.
> @my_file_to_load.flux
Here are a few examples of the language to get an idea of the syntax.
// This line is a comment
// Support for traditional math operators
1 + 1
// Several data types are built-in
true // a boolean true value
1 // an int
1.0 // a float
"this is a string" // a string literal
1h5m // a duration of time representing 1 hour and 5 minutes
2018-10-10 // a time starting at midnight for the default timezone on Oct 10th 2018
2018-10-10T10:05:00 // a time at 10:05 AM for the default timezone on Oct 10th 2018
[1,1,2] // an array of integers
{foo: "str", bar: false} // an object with two keys and their values
// Values can be assigned to identifers
x = 5.0
x + 3.0 // 8.0
// Import libraries
import "math"
// Call functions always using keyword arguments
math.pow(x: 5.0, y: 3.0) // 5^3 = 125
// Functions are defined by assigning them to identifers
add = (a, b) => a + b
// Call add using keyword arguments
add(a: 5, b: 3) // 8
// Functions are polymorphic
add(a: 5.5, b: 2.5) // 8.0
// And strongly typed
add(a: 5, b: 2.5) // type error
// Access data from a database and store it as an identifier
// This is only possible within the influxdb repl (at the moment).
import "influxdata/influxdb"
data = influxdb.from(bucket:"telegraf/autogen")
// When running inside of influxdb, the import isn't needed.
data = from(bucket:"telegraf/autogen")
// Chain more transformation functions to further specify the desired data
cpu = data
// only get the last 5m of data
|> range(start: -5m)
// only get the "usage_user" data from the _measurement "cpu"
|> filter(fn: (r) => r._measurement == "cpu" and r._field == "usage_user")
// Return the data to the client
cpu |> yield()
// Group an aggregate along different dimensions
cpu
// organize data into groups by host and region
|> group(columns:["host","region"])
// compute the mean of each group
|> mean()
// yield this result to the client
|> yield()
// Window an aggregate over time
cpu
// organize data into groups of 1 minute
// compute the mean of each group
|> aggregateWindow(every: 1m, fn: mean)
// yield this result to the client
|> yield()
// Gather different data
mem = data
// only get the last 5m of data
|> range(start: -5m)
// only get the "used_percent" data from the _measurement "mem"
|> filter(fn: (r) => r._measurement == "mem" and r._field == "used_percent")
// Join data to create wider tables and map a function over the result
join(tables: {cpu:cpu, mem:mem}, on:["_time", "host"])
// compute the ratio of cpu usage to mem used_percent
|> map(fn:(r) => {_time: r._time, _value: r._value_cpu / r._value_mem)
// again yield this result to the client
|> yield()
The above examples give only a taste of what is possible with Flux. See the complete documentation for more complete examples and instructions for how to use Flux with InfluxDB 2.0.
Flux welcomes contributions to the language and the runtime.
If you are interested in contributing, please read out contributing readme for information about how to contribute.