Join data with Flux
Use the Flux join
package to join two data sets
based on common values using the following join methods:
Inner join
Left outer join
Right outer join
Full outer join
The join package lets you join data from different data sources such as InfluxDB, SQL database, CSV, and others.
Use join functions to join your data
Import the
join
package.Define the left and right data streams to join:
- Each stream must have one or more columns with common values. Column labels do not need to match, but column values do.
- Each stream should have identical group keys.
For more information, see join data requirements.
Use
join.inner()
to join the two streams together. Provide the following required parameters:left
: Stream of data representing the left side of the join.right
: Stream of data representing the right side of the join.on
: Join predicate. For example:(l, r) => l.column == r.column
.as
: Join output function that returns a record with values from each input stream. For example:(l, r) => ({l with column1: r.column1, column2: r.column2})
.
import "join"
import "sql"
left =
from(bucket: "example-bucket-1")
|> range(start: "-1h")
|> filter(fn: (r) => r._measurement == "example-measurement")
|> filter(fn: (r) => r._field == "example-field")
right =
sql.from(
driverName: "postgres",
dataSourceName: "postgresql://username:password@localhost:5432",
query: "SELECT * FROM example_table",
)
join.inner(
left: left,
right: right,
on: (l, r) => l.column == r.column,
as: (l, r) => ({l with name: r.name, location: r.location}),
)
For more information and detailed examples, see Perform an inner join in the Flux documentation.
Import the
join
package.Define the left and right data streams to join:
- Each stream must have one or more columns with common values. Column labels do not need to match, but column values do.
- Each stream should have identical group keys.
For more information, see join data requirements.
Use
join.left()
to join the two streams together. Provide the following required parameters:left
: Stream of data representing the left side of the join.right
: Stream of data representing the right side of the join.on
: Join predicate. For example:(l, r) => l.column == r.column
.as
: Join output function that returns a record with values from each input stream. For example:(l, r) => ({l with column1: r.column1, column2: r.column2})
.
import "join"
import "sql"
left =
from(bucket: "example-bucket-1")
|> range(start: "-1h")
|> filter(fn: (r) => r._measurement == "example-measurement")
|> filter(fn: (r) => r._field == "example-field")
right =
sql.from(
driverName: "postgres",
dataSourceName: "postgresql://username:password@localhost:5432",
query: "SELECT * FROM example_table",
)
join.left(
left: left,
right: right,
on: (l, r) => l.column == r.column,
as: (l, r) => ({l with name: r.name, location: r.location}),
)
For more information and detailed examples, see Perform a left outer join in the Flux documentation.
Import the
join
package.Define the left and right data streams to join:
- Each stream must have one or more columns with common values. Column labels do not need to match, but column values do.
- Each stream should have identical group keys.
For more information, see join data requirements.
Use
join.right()
to join the two streams together. Provide the following required parameters:left
: Stream of data representing the left side of the join.right
: Stream of data representing the right side of the join.on
: Join predicate. For example:(l, r) => l.column == r.column
.as
: Join output function that returns a record with values from each input stream. For example:(l, r) => ({l with column1: r.column1, column2: r.column2})
.
import "join"
import "sql"
left =
from(bucket: "example-bucket-1")
|> range(start: "-1h")
|> filter(fn: (r) => r._measurement == "example-measurement")
|> filter(fn: (r) => r._field == "example-field")
right =
sql.from(
driverName: "postgres",
dataSourceName: "postgresql://username:password@localhost:5432",
query: "SELECT * FROM example_table",
)
join.right(
left: left,
right: right,
on: (l, r) => l.column == r.column,
as: (l, r) => ({l with name: r.name, location: r.location}),
)
For more information and detailed examples, see Perform a right outer join in the Flux documentation.
Import the
join
package.Define the left and right data streams to join:
- Each stream must have one or more columns with common values. Column labels do not need to match, but column values do.
- Each stream should have identical group keys.
For more information, see join data requirements.
Use
join.full()
to join the two streams together. Provide the following required parameters:left
: Stream of data representing the left side of the join.right
: Stream of data representing the right side of the join.on
: Join predicate. For example:(l, r) => l.column == r.column
.as
: Join output function that returns a record with values from each input stream. For example:(l, r) => ({l with column1: r.column1, column2: r.column2})
.
Full outer joins must account for non-group-key columns in both l
and r
records being null. Use conditional logic to check which record contains non-null
values for columns not in the group key.
For more information, see Account for missing, non-group-key values.
import "join"
import "sql"
left =
from(bucket: "example-bucket-1")
|> range(start: "-1h")
|> filter(fn: (r) => r._measurement == "example-measurement")
|> filter(fn: (r) => r._field == "example-field")
right =
sql.from(
driverName: "postgres",
dataSourceName: "postgresql://username:password@localhost:5432",
query: "SELECT * FROM example_table",
)
join.full(
left: left,
right: right,
on: (l, r) => l.id== r.id,
as: (l, r) => {
id = if exists l.id then l.id else r.id
return {name: l.name, location: r.location, id: id}
},
)
For more information and detailed examples, see Perform a full outer join in the Flux documentation.
Import the
join
package.Define the left and right data streams to join:
- Each stream must also have a
_time
column. - Each stream must have one or more columns with common values. Column labels do not need to match, but column values do.
- Each stream should have identical group keys.
For more information, see join data requirements.
- Each stream must also have a
Use
join.time()
to join the two streams together based on time values. Provide the following parameters:left
: (Required) Stream of data representing the left side of the join.right
: (Required) Stream of data representing the right side of the join.as
: (Required) Join output function that returns a record with values from each input stream. For example:(l, r) => ({r with column1: l.column1, column2: l.column2})
.method
: Join method to use. Default isinner
.
import "join"
import "sql"
left =
from(bucket: "example-bucket-1")
|> range(start: "-1h")
|> filter(fn: (r) => r._measurement == "example-m1")
|> filter(fn: (r) => r._field == "example-f1")
right =
from(bucket: "example-bucket-2")
|> range(start: "-1h")
|> filter(fn: (r) => r._measurement == "example-m2")
|> filter(fn: (r) => r._field == "example-f2")
join.time(method: "left", left: left, right: right, as: (l, r) => ({l with f2: r._value}))
For more information and detailed examples, see Join on time in the Flux documentation.
When to use union and pivot instead of join functions
We recommend using the join
package to join streams that have mostly different
schemas or that come from two separate data sources.
If you’re joining two datasets queried from InfluxDB, using
union()
and pivot()
to combine the data will likely be more performant.
For example, if you need to query fields from different InfluxDB buckets and align field values in each row based on time:
f1 =
from(bucket: "example-bucket-1")
|> range(start: "-1h")
|> filter(fn: (r) => r._field == "f1")
|> drop(columns: "_measurement")
f2 =
from(bucket: "example-bucket-2")
|> range(start: "-1h")
|> filter(fn: (r) => r._field == "f2")
|> drop(columns: "_measurement")
union(tables: [f1, f2])
|> pivot(rowKey: ["_time"], columnKey: ["_field"], valueColumn: "_value")
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