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Data-modification queries

The following operations can be used to modify data of multiple documents with one query. This is superior to fetching and updating the documents individually with multiple queries. However, if only a single document needs to be modified, ArangoDB’s specialized data-modification operations for single documents might execute faster.

Updating documents

To update existing documents, we can either use the UPDATE or the REPLACE operation. UPDATE updates only the specified attributes in the found documents, and REPLACE completely replaces the found documents with the specified values.

We’ll start with an UPDATE query that rewrites the gender attribute in all documents:

FOR u IN users
  UPDATE u WITH { gender: TRANSLATE(u.gender, { m: 'male', f: 'female' }) } IN users

To add new attributes to existing documents, we can also use an UPDATE query. The following query adds an attribute numberOfLogins for all users with status active:

FOR u IN users
  FILTER u.active == true
  UPDATE u WITH { numberOfLogins: 0 } IN users

Existing attributes can also be updated based on their previous value:

FOR u IN users
  FILTER u.active == true
  UPDATE u WITH { numberOfLogins: u.numberOfLogins + 1 } IN users

The above query will only work if there was already a numberOfLogins attribute present in the document. If it is unsure whether there is a numberOfLogins attribute in the document, the increase must be made conditional:

FOR u IN users
  FILTER u.active == true
  UPDATE u WITH {
    numberOfLogins: HAS(u, 'numberOfLogins') ? u.numberOfLogins + 1 : 1
  } IN users

Updates of multiple attributes can be combined in a single query:

FOR u IN users
  FILTER u.active == true
  UPDATE u WITH {
    lastLogin: DATE_NOW(),
    numberOfLogins: HAS(u, 'numberOfLogins') ? u.numberOfLogins + 1 : 1
  } IN users

Note than an update query might fail during execution, for example because a document to be updated does not exist. In this case, the query will abort at the first error. In single-server mode, all modifications done by the query will be rolled back as if they never happened.

Replacing documents

To not just partially update, but completely replace existing documents, use the REPLACE operation. The following query replaces all documents in the collection backup with the documents found in collection users. Documents common to both collections will be replaced. All other documents will remain unchanged. Documents are compared using their _key attributes:

FOR u IN users
  REPLACE u IN backup

The above query will fail if there are documents in collection users that are not in collection backup yet. In this case, the query would attempt to replace documents that do not exist. If such case is detected while executing the query, the query will abort. In single-server mode, all changes made by the query will also be rolled back.

To make the query succeed for such case, use the ignoreErrors query option:

FOR u IN users
  REPLACE u IN backup OPTIONS { ignoreErrors: true }

Removing documents

Deleting documents can be achieved with the REMOVE operation. To remove all users within a certain age range, we can use the following query:

FOR u IN users
  FILTER u.active == true && u.age >= 35 && u.age <= 37
  REMOVE u IN users

Creating documents

To create new documents, there is the INSERT operation. It can also be used to generate copies of existing documents from other collections, or to create synthetic documents (e.g. for testing purposes). The following query creates 1000 test users in collection users with some attributes set:

FOR i IN 1..1000
  INSERT {
    id: 100000 + i,
    age: 18 + FLOOR(RAND() * 25),
    name: CONCAT('test', TO_STRING(i)),
    active: false,
    gender: i % 2 == 0 ? 'male' : 'female'
  } IN users

Copying data from one collection into another

To copy data from one collection into another, an INSERT operation can be used:

FOR u IN users
  INSERT u IN backup

This will copy over all documents from collection users into collection backup. Note that both collections must already exist when the query is executed. The query might fail if backup already contains documents, as executing the insert might attempt to insert the same document (identified by _key attribute) again. This will trigger a unique key constraint violation and abort the query. In single-server mode, all changes made by the query will also be rolled back. To make such copy operation work in all cases, the target collection can be emptied before, using a REMOVE query.

Handling errors

In some cases it might be desirable to continue execution of a query even in the face of errors (e.g. “document not found”). To continue execution of a query in case of errors, there is the ignoreErrors option.

To use it, place an OPTIONS keyword directly after the data modification part of the query, e.g.

FOR u IN users
  REPLACE u IN backup OPTIONS { ignoreErrors: true }

This will continue execution of the query even if errors occur during the REPLACE operation. It works similar for UPDATE, INSERT, and REMOVE.

Altering substructures

To modify lists in documents we have to work with temporary variables. We will collect the sublist in there and alter it. We choose a simple boolean filter condition to make the query better comprehensible.

First lets create a collection with a sample:

database = db._create('complexCollection')
database.save({
  "topLevelAttribute" : "a",
  "subList" : [
    {
      "attributeToAlter" : "oldValue",
      "filterByMe" : true
    },
    {
      "attributeToAlter" : "moreOldValues",
      "filterByMe" : true
    },
    {
      "attributeToAlter" : "unchangedValue",
      "filterByMe" : false
    }
  ]
})

Heres the Query which keeps the subList on alteredList to update it later:

FOR document in complexCollection
  LET alteredList = (
    FOR element IN document.subList
       LET newItem = (! element.filterByMe ?
                      element :
                      MERGE(element, { attributeToAlter: "shiny New Value" }))
       RETURN newItem)
  UPDATE document WITH { subList:  alteredList } IN complexCollection

While the query as it is is now functional:

db.complexCollection.toArray()
[
  {
    "_id" : "complexCollection/392671569467",
    "_key" : "392671569467",
    "_rev" : "392799430203",
    "topLevelAttribute" : "a",
    "subList" : [
      {
        "filterByMe" : true,
        "attributeToAlter" : "shiny New Value"
      },
      {
        "filterByMe" : true,
        "attributeToAlter" : "shiny New Value"
      },
      {
        "filterByMe" : false,
        "attributeToAlter" : "unchangedValue"
      }
    ]
  }
]

It will probably be soonish a performance bottleneck, since it modifies all documents in the collection regardless whether the values change or not. Therefore we want to only UPDATE the documents if we really change their value. Hence we employ a second FOR to test whether subList will be altered or not:

FOR document in complexCollection
  LET willUpdateDocument = (
    FOR element IN docToAlter.subList
      FILTER element.filterByMe LIMIT 1 RETURN 1)

  FILTER LENGTH(willUpdateDocument) > 0

  LET alteredList = (
    FOR element IN document.subList
       LET newItem = (! element.filterByMe ?
                      element :
                      MERGE(element, { attributeToAlter: "shiny New Value" }))
       RETURN newItem)

  UPDATE document WITH { subList:  alteredList } IN complexCollection