BigQuery has facilities to parse JSON in real-time interactive queries: Just store the JSON encoded object as a string, and query in real time, with functions like JSON_EXTRACT_SCALAR.

However, I can't find a way to discover all the keys (properties) in these objects.

Can I use a UDF for this?


Below version fixes some "issues" in original answer like:
1. only first level of keys was emitted
2. having to manually comppile and than run final query for extracting info based on discovered keys

SELECT type, key, value, COUNT(1) AS weight 
  (SELECT json, type 
     FROM [fh-bigquery:openlibrary.ol_dump_20151231@0] 
     WHERE type = '/type/edition'
  json, type,                             // Input columns
  "[{name: 'type', type:'string'},        // Output schema
   {name: 'key', type:'string'},
   {name: 'value', type:'string'}]",
   "function(r, emit) {                    // The function
      x = JSON.parse(r.json);
      processKey(x, '');
      function processKey(node, parent) {
        if (parent !== '') {parent += '.'};
        Object.keys(node).map(function(key) {
          value = node[key].toString();
          if (value !== '[object Object]') {
            emit({type:r.type, key:parent + key, value:value});
          } else {
            processKey(node[key], parent + key);
GROUP EACH BY type, key, value
LIMIT 1000

The result is as below

Row          type   key                 value                         weight     
1   /type/edition   type.key            /type/edition               25140209     
2   /type/edition   last_modified.type  /type/datetime              25140209     
3   /type/edition   created.type        /type/datetime              17092292     
4   /type/edition   languages.0.key     /languages/eng              14514830     
5   /type/edition   notes.type          /type/text                  11681480     
6   /type/edition   revision            2                            8714084     
7   /type/edition   latest_revision     2                            8704217     
8   /type/edition   revision            3                            5041680     
9   /type/edition   latest_revision     3                            5040634     
10  /type/edition   created.value       2008-04-01T03:28:50.625462   3579095     
11  /type/edition   revision            1                            3396868     
12  /type/edition   physical_format     Paperback                    3181270     
13  /type/edition   revision            4                            3053266     
14  /type/edition   latest_revision     4                            3053197     
15  /type/edition   revision            5                            2076094     
16  /type/edition   latest_revision     5                            2076072     
17  /type/edition   publish_country     nyu                          1727347     
18  /type/edition   created.value       2008-04-30T09:38:13.731961   1681227     
19  /type/edition   publish_country     enk                          1627969     
20  /type/edition   publish_places      London                       1613755     
21  /type/edition   physical_format     Hardcover                    1495864     
22  /type/edition   publish_places      New York                     1467779     
23  /type/edition   revision            6                            1437467     
24  /type/edition   latest_revision     6                            1437463     
25  /type/edition   publish_country     xxk                          1407624 
  • Thanks! I enjoyed your answer to stackoverflow.com/a/34845698/132438 too! – Felipe Hoffa Jan 20 '16 at 6:48
  • Thank you Felipe. Appreciate your feedback! – Mikhail Berlyant Jan 20 '16 at 7:47
  • Can you translate this in to StandardSql? it doesn't have an emit() function – Jeremy Mar 13 '18 at 18:51
  • sure. will do and post when have it :o) – Mikhail Berlyant Mar 13 '18 at 18:53
  • @Jeremy - meantime, have you tried by your own? should be simple using JS UDF with ARRAY as output! if you can post new question for this - this would expedite answer - as more people will see it and potentially will be able to answer/ help :o) – Mikhail Berlyant Mar 13 '18 at 19:09

How to extract all of a JSON object keys using a JavaScript UDF in BigQuery:

SELECT type, key
    (SELECT json, type FROM [fh-bigquery:openlibrary.ol_dump_20151231]
    // Input columns.
    json, type,
    // Output schema.
    "[{name: 'key', type:'string'},
     {name: 'type', type:'string'}]",
     // The function.
     "function(r, emit) { 
      Object.keys(x).forEach(function(entry) {
        emit({key:entry, type:r.type,});

Grouped and counted:

enter image description here

Once you've found all the keys you can use, then you can use JSON_EXTRACT_SCALAR on a normal SQL query:

Now that you know the keys, you can extract all information known for a type:

SELECT JSON_EXTRACT_SCALAR(json, '$.key') key,
  JSON_EXTRACT_SCALAR(json, '$.type.key') type,
  JSON_EXTRACT(json, '$.revision') revision,
  JSON_EXTRACT_SCALAR(json, '$.last_modified.value') last_modified,
  JSON_EXTRACT_SCALAR(json, '$.title') title,
  JSON_EXTRACT_SCALAR(json, '$.publish_date') publish_date,
  JSON_EXTRACT(json, '$.publishers') publishers,
  JSON_EXTRACT(json, '$.latest_revision') latest_revision,
  JSON_EXTRACT(json, '$.languages') languages,
  JSON_EXTRACT(json, '$.authors') authors,
  JSON_EXTRACT(json, '$.works') works,
  JSON_EXTRACT(json, '$.number_of_pages') number_of_pages,
  JSON_EXTRACT(json, '$.publish_places') publish_places,
  JSON_EXTRACT(json, '$.publish_country') publish_country,
  JSON_EXTRACT(json, '$.subjects') subjects,
  JSON_EXTRACT_SCALAR(json, '$.created.value') created,
  JSON_EXTRACT_SCALAR(json, '$.pagination') pagination,
  JSON_EXTRACT_SCALAR(json, '$.by_statement') by_statement,
  JSON_EXTRACT(json, '$.isbn_10') isbn_10,
  JSON_EXTRACT_SCALAR(json, '$.isbn_10[0]') isbn_10_0,
  JSON_EXTRACT(json, '$.notes') notes,
  JSON_EXTRACT(json, '$.lc_classifications') lc_classifications,
  JSON_EXTRACT_SCALAR(json, '$.subtitle') subtitle,
  JSON_EXTRACT(json, '$.lccn') lccn,
  JSON_EXTRACT(json, '$.identifiers') identifiers,
  JSON_EXTRACT(json, '$.contributions') contributions,
  JSON_EXTRACT(json, '$.isbn_13') isbn_13,
  JSON_EXTRACT_SCALAR(json, '$.isbn_13[0]') isbn_13_0,
  JSON_EXTRACT(json, '$.physical_format') physical_format,
  JSON_EXTRACT(json, '$.oclc_numbers') oclc_numbers,
  JSON_EXTRACT(json, '$.series') series,
  JSON_EXTRACT(json, '$.source_records') source_records,
  JSON_EXTRACT(json, '$.covers') covers,
  JSON_EXTRACT(json, '$.dewey_decimal_class') dewey_decimal_class,
  JSON_EXTRACT_SCALAR(json, '$.edition_name') edition_name,
  # ...
FROM [fh-bigquery:openlibrary.ol_dump_20151231]
WHERE type='/type/edition'

(sample data taken from an Open Library data dump https://openlibrary.org/developers/dumps, based on a reddit conversation)


This is what I came up with (Specifically for StandardSQL).. Not sure if accumulating in a list is the best method... Also.. I simplified for my case where I'm just concerned with keys.

RETURNS Array<String>
      blah = [];

      function processKey(node, parent) {
        if (parent !== '') {parent += '.'};
        Object.keys(node).forEach(function(key) {
          value = node[key].toString();
          if (value !== '[object Object]') {
          } else {
            processKey(node[key], parent + key);

    try {     
      x = JSON.parse(infoo);  
      return blah;
    } catch (e) { return null }      

WITH x as(
select Foo(jsonfield) as bbb from clickstream.clikcs
select distinct arr_item from (SELECT arr_item FROM x, UNNEST(bbb) as arr_item) 

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