Specification: GraphQL for MicroProfile Version: 1.0-M2 Status: Draft Release: June 17, 2019 Copyright (c) 2019 Contributors to the Eclipse Foundation Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.
Introduction to MicroProfile GraphQL
GraphQL is an open-source data query and manipulation language for APIs, and a runtime for fulfilling queries with existing data. GraphQL interprets strings from the client, and returns data in an understandable, predictable, pre-defined manner. GraphQL is an alternative, though not necessarily a replacement for REST.
On 7 November 2018, Facebook moved the GraphQL project to the newly-established GraphQL foundation, hosted by the non-profit Linux Foundation. This is a significant milestone in terms of industry and community adoption. GraphQL is widely used by many customers.
More info: https://en.wikipedia.org/wiki/GraphQL
Home page: https://graphql.org/
The main reasons for using GraphQL are:
Avoiding over-fetching or under-fetching data. Clients can retrieve several types of data in a single request or can limit the response data based on specific criteria.
Enabling data models to evolve. Changes to the schema can be made so as to not require changes on existing clients, and vice versa - this can be done without a need for a new version of the application.
Advanced developer experience:
The schema defines how the data can be accessed and serves as the contract between the client and the server. Development teams on both sides can work without further communication.
Native schema introspection enables users to discover APIs and to refine the queries on the client-side. This advantage is increased with graphical tools such as GraphiQL and GraphQL Voyager enabling smooth and easy API discovery.
On the client-side, the query language provides flexibility and efficiency enabling developers to adapt to the constraints of their technical environments while reducing server round-trips.
GraphQL and REST
GraphQL and REST have many similarities and are both widely used in modern microservice applications. The two technologies also have some differences.
REST stands for "Representational State Transfer". It is an architectural style for network-based software specified by Roy Fielding in 2000 in a dissertation defining 6 theoretical constraints:
code on demand (optional).
REST is often implemented as JSON over HTTP, but REST is fundamentally technically agnostic to data type and transport; it is an architectural style. In particular, it doesn’t require to use HTTP. However, it recommends using the maximum capacity of the underlying network protocol to apply the 6 basic principles. For instance, REST implementations can utilize HTTP semantics with a proper use of verbs (POST, GET, PUT, PATCH, DELETE) and response codes (2xx, 4xx, 5xx).
GraphQL takes its roots from a Facebook specification published in 2015. As of this date, GraphQL has been subject to 5 releases:
According to it’s definition: "GraphQL is a query language for describing the capabilities and requirements of data models for client‐server applications."
Like REST, GraphQL is independent from particular transport protocols or data models:
it does not endorse the use of HTTP though in practice, and like REST, it is clearly the most widely used protocol,
it is not tied to any specific database technology or storage engine and is instead backed by existing code and data.
What make GraphQL different?
In practice, here are the main differentiating features of GraphQL compared to REST:
schema-driven: a GraphQL API natively exposes a schema describing the structure of the data and operations (queries and mutations) exposed. This schema acts as a contract between the server and its clients. In a way GraphQL provides an explicit answer to the API discovery problem where REST relies on the ability of developers to properly use other mechanisms such as HATEOS and/or OpenAPI,
single HTTP endpoint: a typical GraphQL API is made of a single endpoint and access to data and operations is achieved through the query language. In a HTTP context, the endpoint is defined as a URL and the query can be transported as a query string (GET request) or in the request body (POST request),
flexible data retrieval: by construction the query language enables the client to select the expected data in the response with a fine level of granularity, thus avoiding over- or under-fetching data,
reduction of server requests: the language allows the client to aggregate the expected data into a single request,
easier version management: thanks to the native capabilities to create new data while deprecating old ones,
partial results: partial results are delivered by the GraphQL server in case of errors. A GraphQL result is made of data and errors. Clients are responsible for processing the partial results,
low coupling with HTTP: GraphQL does not try to make the most of HTTP semantics. Queries can be made using GET or POST requests. The HTTP result code does not reflect the GraphQL response,
challenging authorization handling: an appropriate data access authorization policy must be defined and implemented to counter the extreme flexibility of the query language. For example, one client may be authorized to access some data that others are not,
challenging API management: most API management solutions are based on REST capabilities and allow for endpoint (URL-based) policies to be established. GraphQL API has a single entry point. It may be necessary to analyze the client request data to ensure it conforms to established policies. For example, it may be necessary to validate mutations or to prevent the client from executing an overly complex request that would crash the server.
GraphQL and Databases
GraphQL is about data query and manipulation but it is not a database technology:
It is a query language for APIs,
It is database and storage agnostic,
It can be used in front of any kind of backend, with or without a database.
One of GraphQL’s strength is its multi-datasource capability enabling a single endpoint to aggregate data from various sources with a single API.
Entities are the objects used in GraphQL. They can be simple objects ("scalars" in GraphQL terminology) or more complex objects
that are composed of scalars.
According to the GraphQL documentation a scalar has no sub-fields, and all
GraphQL implementations are expected to handle, the following scalar types:
Int - which maps to a Java
Float - which maps to a Java
String - which maps to a Java
Boolean - which maps to a Java
ID - which is a specialized type serialized like a
In order for an entity class to be defined in the GraphQL schema, it must meet at least one of the following criteria:
- It must be the return type or parameter (annotated with
@Argument) of a query or mutation method,
- It must be annotated with
- It must be annotated with
Any Plain Old Java Object (POJO) can be an entity. No special annotations are required. Implementations of MicroProfile GraphQL must use JSON-B to serialize and deserialize entities to JSON, so it is possible to further define entities using JSON-B annotations.
If the entity cannot be serialized by JSON-B, the implementation must return in an internal server error to the client.
Types vs InputTypes
GraphQL differentiates types from input types. Input types are entities that are sent by the client as arguments to queries or mutations. Types are entities that are sent from the server to the client as return types from queries or mutations.
In many cases the same Java type can be used for input (sent from client) and output (sent to the client), but there are cases where an application may need two different Java types to handle input and output.
@Type annotation is used for output entities while the
@InputType annotation is used for input entities.
Normally these annotations are unnecessary if the type can be serialized and/or deserialized by JSON-B, and if the type is specified in a query or mutation method. These annotations can be used to specify the name of the type in the GraphQL schema; by default, the entity name in the schema will be the same as the simple class name of the entity type. These annotations can also be used to add a description to the entity in the schema.
Java interfaces as GraphQL entity types
It is possible for entities (types and input types) to be defined as a Java interfaces. In order for JSON-B to deserialize an
interface, the interface may need a
JsonbDeserializer in order to instantiate a concrete type.
Application developers can mark entity fields as deprecated in the GraphQL schema with the
@Deprecated annotation -
either the annotation that comes from the JDK in the
java.lang package or the MicroProfile GraphQL annotation in the
org.eclipse.microprofile.graphql package. The latter annotation allows the developer to specify additional text that
might provide more information to the consumers of the schema.
@DefaultValue annotation may be used to specify a value in an input type to be used if the client did not specify
a value. Default values may only be specified on input types (and also as
@Argument parameters) and will have no
effect if specified on output types. The value specified in this annotation may be
TODO: info on how to use the
@Deprecated annotation appropriately
Release Notes for MicroProfile GraphQL 1.0
Code-first approach to GraphQL schema generation.