This version is still in development and is not considered stable yet. For the latest stable version, please use Spring Data MongoDB 4.3.5! |
JSON Schema
As of version 3.6, MongoDB supports collections that validate documents against a provided JSON Schema. The schema itself and both validation action and level can be defined when creating the collection, as the following example shows:
{
"type": "object", (1)
"required": [ "firstname", "lastname" ], (2)
"properties": { (3)
"firstname": { (4)
"type": "string",
"enum": [ "luke", "han" ]
},
"address": { (5)
"type": "object",
"properties": {
"postCode": { "type": "string", "minLength": 4, "maxLength": 5 }
}
}
}
}
1 | JSON schema documents always describe a whole document from its root. A schema is a schema object itself that can contain embedded schema objects that describe properties and subdocuments. |
2 | required is a property that describes which properties are required in a document. It can be specified optionally, along with other
schema constraints. See MongoDB’s documentation on available keywords. |
3 | properties is related to a schema object that describes an object type. It contains property-specific schema constraints. |
4 | firstname specifies constraints for the firstname field inside the document. Here, it is a string-based properties element declaring
possible field values. |
5 | address is a subdocument defining a schema for values in its postCode field. |
You can provide a schema either by specifying a schema document (that is, by using the Document
API to parse or build a document object) or by building it with Spring Data’s JSON schema utilities in org.springframework.data.mongodb.core.schema
. MongoJsonSchema
is the entry point for all JSON schema-related operations. The following example shows how use MongoJsonSchema.builder()
to create a JSON schema:
MongoJsonSchema.builder() (1)
.required("lastname") (2)
.properties(
required(string("firstname").possibleValues("luke", "han")), (3)
object("address")
.properties(string("postCode").minLength(4).maxLength(5)))
.build(); (4)
1 | Obtain a schema builder to configure the schema with a fluent API. |
2 | Configure required properties either directly as shown here or with more details as in 3. |
3 | Configure the required String-typed firstname field, allowing only luke and han values. Properties can be typed or untyped. Use a static import of JsonSchemaProperty to make the syntax slightly more compact and to get entry points such as string(…) . |
4 | Build the schema object. |
There are already some predefined and strongly typed schema objects (JsonSchemaObject
and JsonSchemaProperty
) available
through static methods on the gateway interfaces.
However, you may need to build custom property validation rules, which can be created through the builder API, as the following example shows:
// "birthdate" : { "bsonType": "date" }
JsonSchemaProperty.named("birthdate").ofType(Type.dateType());
// "birthdate" : { "bsonType": "date", "description", "Must be a date" }
JsonSchemaProperty.named("birthdate").with(JsonSchemaObject.of(Type.dateType()).description("Must be a date"));
CollectionOptions
provides the entry point to schema support for collections, as the following example shows:
$jsonSchema
MongoJsonSchema schema = MongoJsonSchema.builder().required("firstname", "lastname").build();
template.createCollection(Person.class, CollectionOptions.empty().schema(schema));
Generating a Schema
Setting up a schema can be a time consuming task and we encourage everyone who decides to do so, to really take the time it takes.
It’s important, schema changes can be hard.
However, there might be times when one does not want to balked with it, and that is where JsonSchemaCreator
comes into play.
JsonSchemaCreator
and its default implementation generates a MongoJsonSchema
out of domain types metadata provided by the mapping infrastructure.
This means, that annotated properties as well as potential custom conversions are considered.
public class Person {
private final String firstname; (1)
private final int age; (2)
private Species species; (3)
private Address address; (4)
private @Field(fieldType=SCRIPT) String theForce; (5)
private @Transient Boolean useTheForce; (6)
public Person(String firstname, int age) { (1) (2)
this.firstname = firstname;
this.age = age;
}
// gettter / setter omitted
}
MongoJsonSchema schema = MongoJsonSchemaCreator.create(mongoOperations.getConverter())
.createSchemaFor(Person.class);
template.createCollection(Person.class, CollectionOptions.empty().schema(schema));
{
'type' : 'object',
'required' : ['age'], (2)
'properties' : {
'firstname' : { 'type' : 'string' }, (1)
'age' : { 'bsonType' : 'int' } (2)
'species' : { (3)
'type' : 'string',
'enum' : ['HUMAN', 'WOOKIE', 'UNKNOWN']
}
'address' : { (4)
'type' : 'object'
'properties' : {
'postCode' : { 'type': 'string' }
}
},
'theForce' : { 'type' : 'javascript'} (5)
}
}
1 | Simple object properties are consideres regular properties. |
2 | Primitive types are considered required properties |
3 | Enums are restricted to possible values. |
4 | Object type properties are inspected and represented as nested documents. |
5 | String type property that is converted to Code by the converter. |
6 | @Transient properties are omitted when generating the schema. |
_id properties using types that can be converted into ObjectId like String are mapped to { type : 'object' }
unless there is more specific information available via the @MongoId annotation.
|
Java | Schema Type | Notes |
---|---|---|
|
|
with |
|
|
- |
|
|
- |
|
|
with |
|
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simple type array unless it’s a |
|
|
- |
The above example demonstrated how to derive the schema from a very precise typed source.
Using polymorphic elements within the domain model can lead to inaccurate schema representation for Object
and generic <T>
types, which are likely to represented as { type : 'object' }
without further specification.
MongoJsonSchemaCreator.property(…)
allows defining additional details such as nested document types that should be considered when rendering the schema.
class Root {
Object value;
}
class A {
String aValue;
}
class B {
String bValue;
}
MongoJsonSchemaCreator.create()
.property("value").withTypes(A.class, B.class) (1)
{
'type' : 'object',
'properties' : {
'value' : {
'type' : 'object',
'properties' : { (1)
'aValue' : { 'type' : 'string' },
'bValue' : { 'type' : 'string' }
}
}
}
}
1 | Properties of the given types are merged into one element. |
MongoDBs schema-free approach allows storing documents of different structure in one collection.
Those may be modeled having a common base class.
Regardless of the chosen approach, MongoJsonSchemaCreator.merge(…)
can help circumvent the need of merging multiple schema into one.
abstract class Root {
String rootValue;
}
class A extends Root {
String aValue;
}
class B extends Root {
String bValue;
}
MongoJsonSchemaCreator.mergedSchemaFor(A.class, B.class) (1)
{
'type' : 'object',
'properties' : { (1)
'rootValue' : { 'type' : 'string' },
'aValue' : { 'type' : 'string' },
'bValue' : { 'type' : 'string' }
}
}
}
1 | Properties (and their inherited ones) of the given types are combined into one schema. |
Properties with the same name need to refer to the same JSON schema in order to be combined.
The following example shows a definition that cannot be merged automatically because of a data type mismatch.
In this case a
|
Encrypted Fields
MongoDB 4.2 Field Level Encryption allows to directly encrypt individual properties.
Properties can be wrapped within an encrypted property when setting up the JSON Schema as shown in the example below.
MongoJsonSchema schema = MongoJsonSchema.builder()
.properties(
encrypted(string("ssn"))
.algorithm("AEAD_AES_256_CBC_HMAC_SHA_512-Deterministic")
.keyId("*key0_id")
).build();
Instead of defining encrypted fields manually it is possible leverage the @Encrypted
annotation as shown in the snippet below.
@Document
@Encrypted(keyId = "xKVup8B1Q+CkHaVRx+qa+g==", algorithm = "AEAD_AES_256_CBC_HMAC_SHA_512-Random") (1)
static class Patient {
@Id String id;
String name;
@Encrypted (2)
String bloodType;
@Encrypted(algorithm = "AEAD_AES_256_CBC_HMAC_SHA_512-Deterministic") (3)
Integer ssn;
}
1 | Default encryption settings that will be set for encryptMetadata . |
2 | Encrypted field using default encryption settings. |
3 | Encrypted field overriding the default encryption algorithm. |
The
The
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JSON Schema Types
The following table shows the supported JSON schema types:
Schema Type | Java Type | Schema Properties |
---|---|---|
|
- |
|
|
|
|
|
any array except |
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
(none) |
|
|
(none) |
|
|
(none) |
|
|
(none) |
|
|
(none) |
|
|
(none) |
|
|
(none) |
untyped is a generic type that is inherited by all typed schema types. It provides all untyped schema properties to typed schema types.
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For more information, see $jsonSchema.