Emulating SQL FILTER with Oracle JSON Aggregate Functions

0
1K

How to implement FILTER semantics with Oracle JSON aggregate functions

A cool standard SQL:2003 feature is the aggregate FILTER clause, which is supported natively by at least these RDBMS:

  • ClickHouse
  • CockroachDB
  • DuckDB
  • Firebird
  • H2
  • HSQLDB
  • PostgreSQL
  • SQLite
  • Trino
  • YugabyteDB

The following aggregate function computes the number of rows per group which satifsy the FILTER clause:

SELECT
  COUNT(*) FILTER (WHERE BOOK.TITLE LIKE 'A%'),
  COUNT(*) FILTER (WHERE BOOK.TITLE LIKE 'B%'),
  ...
FROM BOOK

This is useful for pivot style queries, where multiple aggregate values are computed in one go. For most basic types of aggregate function, it can be emulated simply by using CASE expressions, because standard aggregate functions ignore NULL values when aggregating. The following is equivalent to the above, in all RDBMS:

SELECT
  COUNT(CASE WHEN BOOK.TITLE LIKE 'A%' THEN 1 END),
  COUNT(CASE WHEN BOOK.TITLE LIKE 'B%' THEN 1 END),
  ...
FROM BOOK

What if we’re aggregating JSON?

Things are a bit different when aggregating JSON. Look at the following example, where we don’t want to count the books, but list them in a JSON array, or object:

SELECT
  JSON_ARRAYAGG(BOOK.TITLE)
    FILTER (WHERE BOOK.LANGUAGE_ID = 1),
  JSON_OBJECTAGG('id-' || BOOK.ID, BOOK.TITLE)
    FILTER (WHERE BOOK.LANGUAGE_ID = 2),
  ...
FROM BOOK

Things are different with these collection aggregate functions, because NULL values are actually interesting there, so we want to list them in the resulting JSON document. Assuming there are books with a NULL title, we might get:

|JSON_ARRAYAGG                |JSON_OBJECTAGG                      |
|-----------------------------|------------------------------------|
|["1984", "Animal Farm", null]|{ "id-4" : "Brida", "id-17" : null }|

This makes emulating the FILTER clause (e.g. on Oracle) much harder, because we cannot just use ABSENT ON NULL like this:

SELECT
  JSON_ARRAYAGG(
    CASE WHEN T_BOOK.LANGUAGE_ID = 1 THEN T_BOOK.TITLE END 
    ABSENT ON NULL
  ),
  JSON_OBJECTAGG(
    'id-' || T_BOOK.ID, 
    CASE WHEN T_BOOK.LANGUAGE_ID = 2 THEN T_BOOK.TITLE END
    ABSENT ON NULL
  )
FROM T_BOOK;

Because now, the legitimate null titled books are missing and we’re getting this instead:

|JSON_ARRAYAGG         |JSON_OBJECTAGG  |
|----------------------|----------------|
|["1984","Animal Farm"]|{"id-4":"Brida"}|

We cannot use NULL ON NULL either, because that would just turn the FILTER semantics into a mapping semantics, and produce too many values:

|JSON_ARRAYAGG                        |JSON_OBJECTAGG                                                   |
|-------------------------------------|-----------------------------------------------------------------|
|["1984","Animal Farm",null,null,null]|{"id-1":null,"id-4":"Brida","id-3":null,"id-2":null,"id-17":null}|

E.g. while id-3 and id-2 values are NULL because the FILTER emulating CASE expression maps them to NULL, the id-17 value really has a NULL title.

Workaround: Wrap data in an array

As a workaround, we can:

  • Wrap legitimate data into an array
  • Apply ABSENT ON NULL to remove rows due to the FILTER emulation
  • Unwrap data again from the array

For the unwrapping, we’re going to be using JSON_TRANSFORM:

SELECT
  JSON_TRANSFORM(
    JSON_ARRAYAGG(
      CASE 
        WHEN T_BOOK.LANGUAGE_ID = 1 

        -- Wrap legitimate data into an array, including nulls
        THEN JSON_ARRAY(T_BOOK.TITLE NULL ON NULL)
      END 

      -- Remove NULLs due to FILTER emulation
      ABSENT ON NULL
    ),

    -- Unwrap data gain from the array
    NESTED PATH '$[*]' (REPLACE '@' = PATH '@[0]')
  ),

  JSON_TRANSFORM(
    JSON_OBJECTAGG(
      'id-' || T_BOOK.ID, 
      CASE 
        WHEN T_BOOK.LANGUAGE_ID = 2 

        -- Wrap legitimate data into an array, including nulls
        THEN JSON_ARRAY(T_BOOK.TITLE NULL ON NULL)
      END

      -- Remove NULLs due to FILTER emulation
      ABSENT ON NULL
    ),

    -- Unwrap data gain from the array
    NESTED PATH '$.*' (REPLACE '@' = PATH '@[0]')
  )
FROM T_BOOK;

jOOQ support

jOOQ 3.20 will implement the above emulations for:

This way, you can continue to transparently use FILTER on any aggregate function, also in Oracle.

Sponsorizzato
Sponsorizzato
Sponsorizzato
Sponsorizzato
Sponsorizzato
Cerca
Sponsorizzato
Virtuala FansOnly
CDN FREE
Cloud Convert
Categorie
Leggi tutto
Wellness
How to Transition from Metrics to KPIs and Choose What Truly Matters in Your Business
metrics, KPIs, data-driven decisions, business strategy, performance measurement, strategic...
By Frieda Emilia 2026-01-08 21:05:28 0 216
Altre informazioni
Global Skykraft Space-Based VHF Trials Market Poised for Robust Growth Amid Expanding Satellite Communication Networks
The Skykraft Space-Based VHF Trials Market is gaining significant traction as global aviation and...
By Riya Sharma 2025-10-29 05:31:20 0 1K
Art
Los Cuatro Objetivos del Data Storytelling: How to Make Your Data Tell a Story That Inspires Action?
## Introduction In today’s data-driven world, the ability to transform raw data into compelling...
By Noor Elise 2026-01-17 10:05:25 0 159
Religion
Los Pentawards Celebrate 20 Years of Excellence in Packaging Design
Pentawards, packaging design, 20th anniversary, international awards, design jury, Spanish...
By Mika David 2026-01-24 20:05:23 0 42
Sponsorizzato
Virtuala FansOnly https://virtuala.site