ai_forecast
function
Applies to: Databricks SQL
Important
This functionality is in Public Preview. Reach out to your Databricks account team to participate in the preview.
ai_forecast()
is a table-valued function designed to extrapolate time series data into the future. See Arguments for available arguments to configure this function.
Syntax
ai_forecast(
observed TABLE,
horizon DATE | TIMESTAMP | STRING,
time_col STRING,
value_col STRING | ARRAY<STRING>,
group_col STRING | ARRAY<STRING> | NULL DEFAULT NULL,
prediction_interval_width DOUBLE DEFAULT 0.95,
frequency STRING DEFAULT 'auto',
seed INTEGER | NULL DEFAULT NULL,
parameters STRING DEFAULT '{}'
)
Arguments
ai_forecast()
can forecast any number of groups (see group_col
) and up to 100 metrics (see value_col
) within each group. The forecast frequency is the same for all metrics in a group but can be different across different groups (see frequency
).
The following are available arguments for this function:
observed
is the table-valued input that is used as training data for the forecasting procedure.This input relation must contain one “time” column and one or more “value” columns. “Group” and “parameters” columns are optional. Any additional columns in the input relation are ignored.
horizon
is a timestamp-castable quantity representing the right-exclusive end time of the forecasting results. Within a group (seegroup_col
) forecast results span the time between the last observation and horizon. If horizon is less than the last observation time, then no results are generated.time_col
is a string referencing the “time column” inobserved
. The column referenced bytime_col
should be aDATE
or aTIMESTAMP
.value_col
is a string or an array of strings referencing value columns inobserved
. The columns referenced by this argument should be castable toDOUBLE
.group_col
(optional) is a string or an array of strings representing the group columns inobserved
. If specified, group columns are used as partitioning criteria, and forecasts are generated for each group independently. If unspecified, the full input data is treated as a single group.prediction_interval_width
(optional) is a value between 0 and 1 representing the width of the prediction interval. Future values have aprediction_interval_width
% probability of falling between{v}_upper
and{v}_lower
.frequency
(optional) is a time unit or pandas offset alias string specifying the time granularity of the forecast results. If unspecified, the forecast granularity is automatically inferred for each group independently. If a frequency value is specified, it is applied equally to all groups.The inferred frequency within a group is the mode of the most recent observations. This is a convenience operation that is not tunable by the user.
As an example, a time series with 99 “mondays” and 1 “tuesday” results in the “week” being the inferred frequency.
seed
(optional) is a number used to initialize any pseudorandom number generators used in the forecasting procedure.parameters
(optional) is a string-encoded JSON or the name of a column identifier that represents the parameterization of the forecasting procedure. Any combination of parameters can be specified in any order, for example,{“weekly_order”: 10, “global_cap”: 1000}
. Any unspecified parameters are automatically determined based on the attributes of the training data. The following parameters are supported:global_cap
andglobal_floor
can be used together or independently to define the possible domain of the metric values.{“global_floor”: 0}
, for example, can be used to constrain a metric like cost to always be positive. These apply globally to the training data and the forecasted data, and can not be used to provide tight constraints on the forecasted values only.daily_order
andweekly_order
set the fourier order of the daily and weekly seasonality components.
Returns
A new set of rows containing the forecasted data. The output schema will contain the time and group columns with their types unchanged. For example, if the input time column has type DATE
, then the output time column type will also be DATE
. For each value column there are three output columns with the pattern {v}_forecast
, {v}_upper
, and {v}_lower
. Regardless of the input value types, the forecasted value columns are always type DOUBLE
. The output table contains future values only, spanning the range of time between the end of the observed data until horizon.
See some examples of the schema inference performed by AI_FORECAST below:
Input table |
Arguments |
Output table |
---|---|---|
|
|
|
|
|
|
|
|
|
|
|
|
Examples
The following example forecasts until a specified date:
WITH
aggregated AS (
SELECT
DATE(tpep_pickup_datetime) AS ds,
SUM(fare_amount) AS revenue
FROM
samples.nyctaxi.trips
GROUP BY
1
)
SELECT * FROM AI_FORECAST(
TABLE(aggregated),
horizon => '2016-03-31',
time_col => 'ds',
value_col => 'revenue'
)
The following is a more complex example:
WITH
aggregated AS (
SELECT
DATE(tpep_pickup_datetime) AS ds,
dropoff_zip,
SUM(fare_amount) AS revenue,
COUNT(*) AS n_trips
FROM
samples.nyctaxi.trips
GROUP BY
1, 2
),
spine AS (
SELECT all_dates.ds, all_zipcodes.dropoff_zip
FROM (SELECT DISTINCT ds FROM aggregated) all_dates
CROSS JOIN (SELECT DISTINCT dropoff_zip FROM aggregated) all_zipcodes
)
SELECT * FROM AI_FORECAST(
TABLE(
SELECT
spine.*,
COALESCE(aggregated.revenue, 0) AS revenue,
COALESCE(aggregated.n_trips, 0) AS n_trips
FROM spine LEFT JOIN aggregated USING (ds, dropoff_zip)
),
horizon => '2016-03-31',
time_col => 'ds',
value_col => ARRAY('revenue', 'n_trips'),
group_col => 'dropoff_zip',
prediction_interval_width => 0.9,
parameters => '{"global_floor": 0}'
)
Note that it is very common for tables to not materialize 0s or empty entries. If the values of the missing entries can be inferred, for example 0
, then these values should be coalesced prior to calling the forecast function. If the values are truly missing or unknown, then they can be left as NULL
.
For very sparse data, it is best practice to coalesce missing values or provide a frequency value explicitly to avoid unexpected output from the “auto” frequency inference. As an example, “auto” frequency inference on two entries 14 days apart will infer a frequency of “14D” even if “real” frequency might be weekly with 1 missing value. Coalescing the missing entries removes this ambiguity.
Finally, we show an example where different forecast parameters are applied to different groups in the input table:
WITH past AS (
SELECT
CASE
WHEN fare_amount < 30 THEN 'Under $30'
ELSE '$30 or more'
END AS revenue_bucket,
CASE
WHEN fare_amount < 30 THEN '{"daily_order": 0}'
ELSE '{"daily_order": "auto"}'
END AS parameters,
DATE(tpep_pickup_datetime) AS ds,
SUM(fare_amount) AS revenue
FROM samples.nyctaxi.trips
GROUP BY ALL
)
SELECT * FROM AI_FORECAST(
TABLE(past),
horizon => (SELECT MAX(ds) + INTERVAL 30 DAYS FROM past),
time_col => 'ds',
value_col => 'revenue',
group_col => ARRAY('revenue_bucket'),
parameters => 'parameters'
)
Note the use of a column identifier as the parameters
argument. This enables users to store previously-determined parameter JSONs in a table and reuse them on new data.
Limitations
The following limitations apply during the preview:
The default forecasting procedure is a prophet-like piecewise linear and seasonality model. This is the only supported forecasting procedure available.
Error messages are delivered through the Python UDTF engine, and contain Python trace back information. The end of the trace back contains the actual error message.