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graphql logographql-spec

GraphQL is a query language and execution engine tied to any backend service.

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GraphQL is a query language and execution engine tied to any backend service.

🌍  Spec-compliant and production ready JavaScript GraphQL server that lets you develop in a schema-first way. Built for Express, Connect, Hapi, Koa, and more.

GraphQL Java implementation

38,831

Next-generation ORM for Node.js & TypeScript | PostgreSQL, MySQL, MariaDB, SQL Server, SQLite, MongoDB and CockroachDB

Blazing fast, instant realtime GraphQL APIs on your DB with fine grained access control, also trigger webhooks on database events.

Awesome list of GraphQL

Quick Overview

The graphql/graphql-spec repository contains the specification for GraphQL, a query language for APIs. It defines the syntax, semantics, and execution model for GraphQL, providing a standardized approach for building and consuming APIs across different platforms and languages.

Pros

  • Flexible and efficient data fetching, allowing clients to request only the data they need
  • Strong typing system, providing clear contract between client and server
  • Language-agnostic, can be implemented in various programming languages
  • Introspection capabilities, enabling self-documenting APIs

Cons

  • Increased complexity for simple APIs compared to REST
  • Potential performance issues with deeply nested queries
  • Learning curve for developers new to GraphQL concepts
  • Limited built-in caching mechanisms compared to REST

Code Examples

This repository does not contain code examples as it is a specification document rather than a code library. The specification defines the GraphQL language and its implementation requirements, but does not provide executable code.

Getting Started

As this is a specification repository, there is no code to run directly. However, to get started with understanding the GraphQL specification:

  1. Visit the repository: https://github.com/graphql/graphql-spec
  2. Read the main specification document: spec/GraphQL.md
  3. Explore the working draft and other resources in the repository
  4. Join the GraphQL community discussions through issues and pull requests

For implementing GraphQL in your projects, refer to language-specific libraries and tools that adhere to this specification.

Competitor Comparisons

GraphQL is a query language and execution engine tied to any backend service.

Pros of graphql-spec

  • Comprehensive documentation of the GraphQL specification
  • Regularly updated with new features and improvements
  • Serves as the authoritative source for GraphQL implementers

Cons of graphql-spec

  • May be overwhelming for newcomers to GraphQL
  • Focuses on technical details rather than practical implementation

Code comparison

Both repositories contain the same content, as they are the same repository. Here's an example of the GraphQL schema definition language from the spec:

type Query {
  hero(episode: Episode): Character
  droid(id: ID!): Droid
}

enum Episode {
  NEWHOPE
  EMPIRE
  JEDI
}

interface Character {
  id: ID!
  name: String!
  friends: [Character]
  appearsIn: [Episode]!
}

type Human implements Character {
  id: ID!
  name: String!
  friends: [Character]
  appearsIn: [Episode]!
  starships: [Starship]
  totalCredits: Int
}

type Droid implements Character {
  id: ID!
  name: String!
  friends: [Character]
  appearsIn: [Episode]!
  primaryFunction: String
}

This code snippet demonstrates the schema definition language used in GraphQL, which is a key part of the specification documented in the graphql-spec repository.

🌍  Spec-compliant and production ready JavaScript GraphQL server that lets you develop in a schema-first way. Built for Express, Connect, Hapi, Koa, and more.

Pros of Apollo Server

  • Provides a complete, production-ready GraphQL server implementation
  • Offers extensive features like caching, subscriptions, and schema stitching
  • Includes built-in developer tools and integrations with popular frameworks

Cons of Apollo Server

  • More opinionated and less flexible than the GraphQL specification
  • Requires additional setup and configuration compared to bare-bones GraphQL
  • May introduce unnecessary complexity for simple GraphQL implementations

Code Comparison

GraphQL Spec (schema definition):

type Query {
  hello: String
}

Apollo Server (server setup):

const server = new ApolloServer({
  typeDefs,
  resolvers,
});
await server.start();

Key Differences

  • GraphQL Spec focuses on defining the GraphQL language and protocol
  • Apollo Server provides a full-featured implementation of a GraphQL server
  • GraphQL Spec is language-agnostic, while Apollo Server is JavaScript/TypeScript-centric
  • Apollo Server includes additional tooling and features beyond the core GraphQL specification

Use Cases

  • GraphQL Spec: Reference for implementing custom GraphQL servers or clients
  • Apollo Server: Rapid development of GraphQL APIs with a robust feature set

Community and Ecosystem

  • GraphQL Spec: Managed by the GraphQL Foundation with broad industry support
  • Apollo Server: Developed by Apollo GraphQL with a large and active community

GraphQL Java implementation

Pros of graphql-java

  • Provides a complete Java implementation of GraphQL, allowing developers to build GraphQL servers in Java
  • Offers extensive documentation and examples for Java developers
  • Includes built-in support for common Java frameworks and libraries

Cons of graphql-java

  • Limited to Java ecosystem, whereas graphql-spec is language-agnostic
  • May lag behind the official specification in terms of new features and updates
  • Requires additional setup and configuration compared to using the spec directly

Code Comparison

graphql-spec (SDL):

type Query {
  hello: String
}

graphql-java:

GraphQLObjectType queryType = newObject()
    .name("Query")
    .field(newFieldDefinition()
        .name("hello")
        .type(GraphQLString))
    .build();

The graphql-spec repository contains the official GraphQL specification, which serves as the foundation for all GraphQL implementations across different programming languages. It provides a language-agnostic description of GraphQL's syntax, semantics, and behavior.

On the other hand, graphql-java is a Java implementation of the GraphQL specification. It allows developers to create GraphQL servers and execute GraphQL queries in Java applications. While graphql-java follows the specification defined in graphql-spec, it provides Java-specific tools and utilities to work with GraphQL in the Java ecosystem.

38,831

Next-generation ORM for Node.js & TypeScript | PostgreSQL, MySQL, MariaDB, SQL Server, SQLite, MongoDB and CockroachDB

Pros of Prisma

  • Provides a complete ORM solution with database migrations and type-safe queries
  • Offers auto-generated and customizable database client
  • Supports multiple databases (PostgreSQL, MySQL, SQLite, etc.)

Cons of Prisma

  • More opinionated and less flexible than raw GraphQL
  • Steeper learning curve for developers new to ORM concepts
  • Limited to specific programming languages (primarily TypeScript/JavaScript)

Code Comparison

GraphQL-spec (SDL):

type User {
  id: ID!
  name: String!
  email: String!
}

type Query {
  user(id: ID!): User
}

Prisma (schema):

model User {
  id    Int     @id @default(autoincrement())
  name  String
  email String  @unique
}

Key Differences

  • GraphQL-spec focuses on defining a language-agnostic API specification
  • Prisma is a database toolkit that can be used with GraphQL but isn't limited to it
  • GraphQL-spec requires separate resolvers and data access layer implementation
  • Prisma generates database access code and provides query building

Use Cases

  • GraphQL-spec: Defining API contracts, building flexible and scalable APIs
  • Prisma: Rapid application development, database management, type-safe database access

Both projects serve different purposes in the development ecosystem, with GraphQL-spec providing a foundation for API design and Prisma offering a comprehensive database toolkit that can complement GraphQL implementations.

Blazing fast, instant realtime GraphQL APIs on your DB with fine grained access control, also trigger webhooks on database events.

Pros of GraphQL Engine

  • Ready-to-use implementation with instant GraphQL APIs for databases
  • Includes built-in authorization and authentication features
  • Provides a user-friendly interface for managing GraphQL APIs

Cons of GraphQL Engine

  • Specific to Postgres databases, limiting flexibility compared to the spec
  • May introduce additional complexity for simple use cases
  • Potential vendor lock-in with Hasura-specific features

Code Comparison

GraphQL Spec (schema definition):

type Query {
  user(id: ID!): User
}

type User {
  id: ID!
  name: String!
}

GraphQL Engine (Hasura-specific configuration):

tables:
  - table:
      schema: public
      name: users
    select_permissions:
      - role: user
        permission:
          columns:
            - id
            - name
          filter: {}

The GraphQL spec defines the language and structure for GraphQL schemas, while GraphQL Engine provides a higher-level abstraction for creating APIs directly from database tables. The spec offers more flexibility but requires more implementation work, whereas GraphQL Engine provides a quicker setup at the cost of some customization options.

Awesome list of GraphQL

Pros of awesome-graphql

  • Comprehensive collection of GraphQL resources, tools, and libraries
  • Regularly updated with community contributions
  • Easier for developers to find practical implementations and learning materials

Cons of awesome-graphql

  • Less authoritative than the official specification
  • May include outdated or deprecated resources
  • Lacks the detailed technical explanations found in the specification

Code comparison

While graphql-spec provides the formal specification, awesome-graphql focuses on practical implementations. Here's a simple example of how they might differ:

graphql-spec (SDL definition):

type Query {
  hello: String
}

awesome-graphql (JavaScript implementation):

const schema = buildSchema(`
  type Query {
    hello: String
  }
`);

const root = {
  hello: () => 'Hello, world!'
};

Summary

graphql-spec is the official specification for GraphQL, providing detailed technical information and guidelines. awesome-graphql, on the other hand, is a curated list of GraphQL resources, tools, and libraries. While graphql-spec is essential for understanding the core concepts and rules of GraphQL, awesome-graphql is more practical for developers looking for implementations, tutorials, and community-driven resources.

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README

GraphQLConf 2024 Banner: September 10-12, San Francisco. Hosted by the GraphQL Foundation

GraphQL

GraphQL Logo

The GraphQL specification is edited in the markdown files found in /spec the latest release of which is published at https://graphql.github.io/graphql-spec/.

The latest draft specification can be found at https://graphql.github.io/graphql-spec/draft/ which tracks the latest commit to the main branch in this repository.

Previous releases of the GraphQL specification can be found at permalinks that match their release tag. For example, https://graphql.github.io/graphql-spec/October2016/. If you are linking directly to the GraphQL specification, it's best to link to a tagged permalink for the particular referenced version.

Overview

This is a Working Draft of the Specification for GraphQL, a query language for APIs created by Facebook.

The target audience for this specification is not the client developer, but those who have, or are actively interested in, building their own GraphQL implementations and tools.

In order to be broadly adopted, GraphQL will have to target a wide variety of backend environments, frameworks, and languages, which will necessitate a collaborative effort across projects and organizations. This specification serves as a point of coordination for this effort.

Looking for help? Find resources from the community.

Getting Started

GraphQL consists of a type system, query language and execution semantics, static validation, and type introspection, each outlined below. To guide you through each of these components, we've written an example designed to illustrate the various pieces of GraphQL.

This example is not comprehensive, but it is designed to quickly introduce the core concepts of GraphQL, to provide some context before diving into the more detailed specification or the GraphQL.js reference implementation.

The premise of the example is that we want to use GraphQL to query for information about characters and locations in the original Star Wars trilogy.

Type System

At the heart of any GraphQL implementation is a description of what types of objects it can return, described in a GraphQL type system and returned in the GraphQL Schema.

For our Star Wars example, the starWarsSchema.ts file in GraphQL.js defines this type system.

The most basic type in the system will be Human, representing characters like Luke, Leia, and Han. All humans in our type system will have a name, so we define the Human type to have a field called "name". This returns a String, and we know that it is not null (since all Humans have a name), so we will define the "name" field to be a non-nullable String. Using a shorthand notation that we will use throughout the spec and documentation, we would describe the human type as:

type Human {
  name: String
}

This shorthand is convenient for describing the basic shape of a type system; the JavaScript implementation is more full-featured, and allows types and fields to be documented. It also sets up the mapping between the type system and the underlying data; for a test case in GraphQL.js, the underlying data is a set of JavaScript objects, but in most cases the backing data will be accessed through some service, and this type system layer will be responsible for mapping from types and fields to that service.

A common pattern in many APIs, and indeed in GraphQL is to give objects an ID that can be used to refetch the object. So let's add that to our Human type. We'll also add a string for their home planet.

type Human {
  id: String
  name: String
  homePlanet: String
}

Since we're talking about the Star Wars trilogy, it would be useful to describe the episodes in which each character appears. To do so, we'll first define an enum, which lists the three episodes in the trilogy:

enum Episode {
  NEWHOPE
  EMPIRE
  JEDI
}

Now we want to add a field to Human describing what episodes they were in. This will return a list of Episodes:

type Human {
  id: String
  name: String
  appearsIn: [Episode]
  homePlanet: String
}

Now, let's introduce another type, Droid:

type Droid {
  id: String
  name: String
  appearsIn: [Episode]
  primaryFunction: String
}

Now we have two types! Let's add a way of going between them: humans and droids both have friends. But humans can be friends with both humans and droids. How do we refer to either a human or a droid?

If we look, we note that there's common functionality between humans and droids; they both have IDs, names, and episodes in which they appear. So we'll add an interface, Character, and make both Human and Droid implement it. Once we have that, we can add the friends field, that returns a list of Characters.

Our type system so far is:

enum Episode {
  NEWHOPE
  EMPIRE
  JEDI
}

interface Character {
  id: String
  name: String
  friends: [Character]
  appearsIn: [Episode]
}

type Human implements Character {
  id: String
  name: String
  friends: [Character]
  appearsIn: [Episode]
  homePlanet: String
}

type Droid implements Character {
  id: String
  name: String
  friends: [Character]
  appearsIn: [Episode]
  primaryFunction: String
}

One question we might ask, though, is whether any of those fields can return null. By default, null is a permitted value for any type in GraphQL, since fetching data to fulfill a GraphQL query often requires talking to different services that may or may not be available. However, if the type system can guarantee that a type is never null, then we can mark it as Non Null in the type system. We indicate that in our shorthand by adding an "!" after the type. We can update our type system to note that the id is never null.

Note that while in our current implementation, we can guarantee that more fields are non-null (since our current implementation has hard-coded data), we didn't mark them as non-null. One can imagine we would eventually replace our hardcoded data with a backend service, which might not be perfectly reliable; by leaving these fields as nullable, we allow ourselves the flexibility to eventually return null to indicate a backend error, while also telling the client that the error occurred.

enum Episode {
  NEWHOPE
  EMPIRE
  JEDI
}

interface Character {
  id: String!
  name: String
  friends: [Character]
  appearsIn: [Episode]
}

type Human implements Character {
  id: String!
  name: String
  friends: [Character]
  appearsIn: [Episode]
  homePlanet: String
}

type Droid implements Character {
  id: String!
  name: String
  friends: [Character]
  appearsIn: [Episode]
  primaryFunction: String
}

We're missing one last piece: an entry point into the type system.

When we define a schema, we define an object type that is the basis for all query operations. The name of this type is Query by convention, and it describes our public, top-level API. Our Query type for this example will look like this:

type Query {
  hero(episode: Episode): Character
  human(id: String!): Human
  droid(id: String!): Droid
}

In this example, there are three top-level operations that can be done on our schema:

  • hero returns the Character who is the hero of the Star Wars trilogy; it takes an optional argument that allows us to fetch the hero of a specific episode instead.
  • human accepts a non-null string as a query argument, a human's ID, and returns the human with that ID.
  • droid does the same for droids.

These fields demonstrate another feature of the type system, the ability for a field to specify arguments that configure their behavior.

When we package the whole type system together, defining the Query type above as our entry point for queries, this creates a GraphQL Schema.

This example just scratched the surface of the type system. The specification goes into more detail about this topic in the "Type System" section, and the type directory in GraphQL.js contains code implementing a specification-compliant GraphQL type system.

Query Syntax

GraphQL queries declaratively describe what data the issuer wishes to fetch from whoever is fulfilling the GraphQL query.

For our Star Wars example, the starWarsQueryTests.js file in the GraphQL.js repository contains a number of queries and responses. That file is a test file that uses the schema discussed above and a set of sample data, located in starWarsData.js. This test file can be run to exercise the reference implementation.

An example query on the above schema would be:

query HeroNameQuery {
  hero {
    name
  }
}

The initial line, query HeroNameQuery, defines a query with the operation name HeroNameQuery that starts with the schema's root query type; in this case, Query. As defined above, Query has a hero field that returns a Character, so we'll query for that. Character then has a name field that returns a String, so we query for that, completing our query. The result of this query would then be:

{
  "hero": {
    "name": "R2-D2"
  }
}

Specifying the query keyword and an operation name is only required when a GraphQL document defines multiple operations. We therefore could have written the previous query with the query shorthand:

{
  hero {
    name
  }
}

Assuming that the backing data for the GraphQL server identified R2-D2 as the hero. The response continues to vary based on the request; if we asked for R2-D2's ID and friends with this query:

query HeroNameAndFriendsQuery {
  hero {
    id
    name
    friends {
      id
      name
    }
  }
}

then we'll get back a response like this:

{
  "hero": {
    "id": "2001",
    "name": "R2-D2",
    "friends": [
      {
        "id": "1000",
        "name": "Luke Skywalker"
      },
      {
        "id": "1002",
        "name": "Han Solo"
      },
      {
        "id": "1003",
        "name": "Leia Organa"
      }
    ]
  }
}

One of the key aspects of GraphQL is its ability to nest queries. In the above query, we asked for R2-D2's friends, but we can ask for more information about each of those objects. So let's construct a query that asks for R2-D2's friends, gets their name and episode appearances, then asks for each of their friends.

query NestedQuery {
  hero {
    name
    friends {
      name
      appearsIn
      friends {
        name
      }
    }
  }
}

which will give us the nested response

{
  "hero": {
    "name": "R2-D2",
    "friends": [
      {
        "name": "Luke Skywalker",
        "appearsIn": ["NEWHOPE", "EMPIRE", "JEDI"],
        "friends": [
          { "name": "Han Solo" },
          { "name": "Leia Organa" },
          { "name": "C-3PO" },
          { "name": "R2-D2" }
        ]
      },
      {
        "name": "Han Solo",
        "appearsIn": ["NEWHOPE", "EMPIRE", "JEDI"],
        "friends": [
          { "name": "Luke Skywalker" },
          { "name": "Leia Organa" },
          { "name": "R2-D2" }
        ]
      },
      {
        "name": "Leia Organa",
        "appearsIn": ["NEWHOPE", "EMPIRE", "JEDI"],
        "friends": [
          { "name": "Luke Skywalker" },
          { "name": "Han Solo" },
          { "name": "C-3PO" },
          { "name": "R2-D2" }
        ]
      }
    ]
  }
}

The Query type above defined a way to fetch a human given their ID. We can use it by hard-coding the ID in the query:

query FetchLukeQuery {
  human(id: "1000") {
    name
  }
}

to get

{
  "human": {
    "name": "Luke Skywalker"
  }
}

Alternately, we could have defined the query to have a query parameter:

query FetchSomeIDQuery($someId: String!) {
  human(id: $someId) {
    name
  }
}

This query is now parameterized by $someId; to run it, we must provide that ID. If we ran it with $someId set to "1000", we would get Luke; set to "1002", we would get Han. If we passed an invalid ID here, we would get null back for the human, indicating that no such object exists.

Notice that the key in the response is the name of the field, by default. It is sometimes useful to change this key, for clarity or to avoid key collisions when fetching the same field with different arguments.

We can do that with field aliases, as demonstrated in this query:

query FetchLukeAliased {
  luke: human(id: "1000") {
    name
  }
}

We aliased the result of the human field to the key luke. Now the response is:

{
  "luke": {
    "name": "Luke Skywalker"
  }
}

Notice the key is "luke" and not "human", as it was in our previous example where we did not use the alias.

This is particularly useful if we want to use the same field twice with different arguments, as in the following query:

query FetchLukeAndLeiaAliased {
  luke: human(id: "1000") {
    name
  }
  leia: human(id: "1003") {
    name
  }
}

We aliased the result of the first human field to the key luke, and the second to leia. So the result will be:

{
  "luke": {
    "name": "Luke Skywalker"
  },
  "leia": {
    "name": "Leia Organa"
  }
}

Now imagine we wanted to ask for Luke and Leia's home planets. We could do so with this query:

query DuplicateFields {
  luke: human(id: "1000") {
    name
    homePlanet
  }
  leia: human(id: "1003") {
    name
    homePlanet
  }
}

but we can already see that this could get unwieldy, since we have to add new fields to both parts of the query. Instead, we can extract out the common fields into a fragment, and include the fragment in the query, like this:

query UseFragment {
  luke: human(id: "1000") {
    ...HumanFragment
  }
  leia: human(id: "1003") {
    ...HumanFragment
  }
}

fragment HumanFragment on Human {
  name
  homePlanet
}

Both of those queries give this result:

{
  "luke": {
    "name": "Luke Skywalker",
    "homePlanet": "Tatooine"
  },
  "leia": {
    "name": "Leia Organa",
    "homePlanet": "Alderaan"
  }
}

The UseFragment and DuplicateFields queries will both get the same result, but UseFragment is less verbose; if we wanted to add more fields, we could add it to the common fragment rather than copying it into multiple places.

We defined the type system above, so we know the type of each object in the output; the query can ask for that type using the special field __typename, defined on every object.

query CheckTypeOfR2 {
  hero {
    __typename
    name
  }
}

Since R2-D2 is a droid, this will return

{
  "hero": {
    "__typename": "Droid",
    "name": "R2-D2"
  }
}

This was particularly useful because hero was defined to return a Character, which is an interface; we might want to know what concrete type was actually returned. If we instead asked for the hero of Episode V:

query CheckTypeOfLuke {
  hero(episode: EMPIRE) {
    __typename
    name
  }
}

We would find that it was Luke, who is a Human:

{
  "hero": {
    "__typename": "Human",
    "name": "Luke Skywalker"
  }
}

As with the type system, this example just scratched the surface of the query language. The specification goes into more detail about this topic in the "Language" section, and the language directory in GraphQL.js contains code implementing a specification-compliant GraphQL query language parser and lexer.

Validation

By using the type system, it can be predetermined whether a GraphQL query is valid or not. This allows servers and clients to effectively inform developers when an invalid query has been created, without having to rely on runtime checks.

For our Star Wars example, the file starWarsValidationTests.js contains a number of demonstrations of invalid operations, and is a test file that can be run to exercise the reference implementation's validator.

To start, let's take a complex valid query. This is the NestedQuery example from the above section, but with the duplicated fields factored out into a fragment:

query NestedQueryWithFragment {
  hero {
    ...NameAndAppearances
    friends {
      ...NameAndAppearances
      friends {
        ...NameAndAppearances
      }
    }
  }
}

fragment NameAndAppearances on Character {
  name
  appearsIn
}

And this query is valid. Let's take a look at some invalid queries!

When we query for fields, we have to query for a field that exists on the given type. So as hero returns a Character, we have to query for a field on Character. That type does not have a favoriteSpaceship field, so this query:

# INVALID: favoriteSpaceship does not exist on Character
query HeroSpaceshipQuery {
  hero {
    favoriteSpaceship
  }
}

is invalid.

Whenever we query for a field and it returns something other than a scalar or an enum, we need to specify what data we want to get back from the field. Hero returns a Character, and we've been requesting fields like name and appearsIn on it; if we omit that, the query will not be valid:

# INVALID: hero is not a scalar, so fields are needed
query HeroNoFieldsQuery {
  hero
}

Similarly, if a field is a scalar, it doesn't make sense to query for additional fields on it, and doing so will make the query invalid:

# INVALID: name is a scalar, so fields are not permitted
query HeroFieldsOnScalarQuery {
  hero {
    name {
      firstCharacterOfName
    }
  }
}

Earlier, it was noted that a query can only query for fields on the type in question; when we query for hero which returns a Character, we can only query for fields that exist on Character. What happens if we want to query for R2-D2s primary function, though?

# INVALID: primaryFunction does not exist on Character
query DroidFieldOnCharacter {
  hero {
    name
    primaryFunction
  }
}

That query is invalid, because primaryFunction is not a field on Character. We want some way of indicating that we wish to fetch primaryFunction if the Character is a Droid, and to ignore that field otherwise. We can use the fragments we introduced earlier to do this. By setting up a fragment defined on Droid and including it, we ensure that we only query for primaryFunction where it is defined.

query DroidFieldInFragment {
  hero {
    name
    ...DroidFields
  }
}

fragment DroidFields on Droid {
  primaryFunction
}

This query is valid, but it's a bit verbose; named fragments were valuable above when we used them multiple times, but we're only using this one once. Instead of using a named fragment, we can use an inline fragment; this still allows us to indicate the type we are querying on, but without naming a separate fragment:

query DroidFieldInInlineFragment {
  hero {
    name
    ... on Droid {
      primaryFunction
    }
  }
}

This has just scratched the surface of the validation system; there are a number of validation rules in place to ensure that a GraphQL query is semantically meaningful. The specification goes into more detail about this topic in the "Validation" section, and the validation directory in GraphQL.js contains code implementing a specification-compliant GraphQL validator.

Introspection

It's often useful to ask a GraphQL schema for information about what queries it supports. GraphQL allows us to do so using the introspection system!

For our Star Wars example, the file starWarsIntrospectionTests.js contains a number of queries demonstrating the introspection system, and is a test file that can be run to exercise the reference implementation's introspection system.

We designed the type system, so we know what types are available, but if we didn't, we can ask GraphQL, by querying the __schema field, always available on the root type of a Query. Let's do so now, and ask what types are available.

query IntrospectionTypeQuery {
  __schema {
    types {
      name
    }
  }
}

and we get back:

{
  "__schema": {
    "types": [
      {
        "name": "Query"
      },
      {
        "name": "Character"
      },
      {
        "name": "Human"
      },
      {
        "name": "String"
      },
      {
        "name": "Episode"
      },
      {
        "name": "Droid"
      },
      {
        "name": "__Schema"
      },
      {
        "name": "__Type"
      },
      {
        "name": "__TypeKind"
      },
      {
        "name": "Boolean"
      },
      {
        "name": "__Field"
      },
      {
        "name": "__InputValue"
      },
      {
        "name": "__EnumValue"
      },
      {
        "name": "__Directive"
      }
    ]
  }
}

Wow, that's a lot of types! What are they? Let's group them:

  • Query, Character, Human, Episode, Droid - These are the ones that we defined in our type system.
  • String, Boolean - These are built-in scalars that the type system provided.
  • __Schema, __Type, __TypeKind, __Field, __InputValue, __EnumValue, __Directive - These all are preceded with a double underscore, indicating that they are part of the introspection system.

Now, let's try and figure out a good place to start exploring what queries are available. When we designed our type system, we specified what type all queries would start at; let's ask the introspection system about that!

query IntrospectionQueryTypeQuery {
  __schema {
    queryType {
      name
    }
  }
}

and we get back:

{
  "__schema": {
    "queryType": {
      "name": "Query"
    }
  }
}

And that matches what we said in the type system section, that the Query type is where we will start! Note that the naming here was just by convention; we could have named our Query type anything else, and it still would have been returned here if we had specified it as the starting type for queries. Naming it Query, though, is a useful convention.

It is often useful to examine one specific type. Let's take a look at the Droid type:

query IntrospectionDroidTypeQuery {
  __type(name: "Droid") {
    name
  }
}

and we get back:

{
  "__type": {
    "name": "Droid"
  }
}

What if we want to know more about Droid, though? For example, is it an interface or an object?

query IntrospectionDroidKindQuery {
  __type(name: "Droid") {
    name
    kind
  }
}

and we get back:

{
  "__type": {
    "name": "Droid",
    "kind": "OBJECT"
  }
}

kind returns a __TypeKind enum, one of whose values is OBJECT. If we asked about Character instead:

query IntrospectionCharacterKindQuery {
  __type(name: "Character") {
    name
    kind
  }
}

and we get back:

{
  "__type": {
    "name": "Character",
    "kind": "INTERFACE"
  }
}

We'd find that it is an interface.

It's useful for an object to know what fields are available, so let's ask the introspection system about Droid:

query IntrospectionDroidFieldsQuery {
  __type(name: "Droid") {
    name
    fields {
      name
      type {
        name
        kind
      }
    }
  }
}

and we get back:

{
  "__type": {
    "name": "Droid",
    "fields": [
      {
        "name": "id",
        "type": {
          "name": null,
          "kind": "NON_NULL"
        }
      },
      {
        "name": "name",
        "type": {
          "name": "String",
          "kind": "SCALAR"
        }
      },
      {
        "name": "friends",
        "type": {
          "name": null,
          "kind": "LIST"
        }
      },
      {
        "name": "appearsIn",
        "type": {
          "name": null,
          "kind": "LIST"
        }
      },
      {
        "name": "primaryFunction",
        "type": {
          "name": "String",
          "kind": "SCALAR"
        }
      }
    ]
  }
}

Those are our fields that we defined on Droid!

id looks a bit weird there, it has no name for the type. That's because it's a "wrapper" type of kind NON_NULL. If we queried for ofType on that field's type, we would find the String type there, telling us that this is a non-null String.

Similarly, both friends and appearsIn have no name, since they are the LIST wrapper type. We can query for ofType on those types, which will tell us what these are lists of.

query IntrospectionDroidWrappedFieldsQuery {
  __type(name: "Droid") {
    name
    fields {
      name
      type {
        name
        kind
        ofType {
          name
          kind
        }
      }
    }
  }
}

and we get back:

{
  "__type": {
    "name": "Droid",
    "fields": [
      {
        "name": "id",
        "type": {
          "name": null,
          "kind": "NON_NULL",
          "ofType": {
            "name": "String",
            "kind": "SCALAR"
          }
        }
      },
      {
        "name": "name",
        "type": {
          "name": "String",
          "kind": "SCALAR",
          "ofType": null
        }
      },
      {
        "name": "friends",
        "type": {
          "name": null,
          "kind": "LIST",
          "ofType": {
            "name": "Character",
            "kind": "INTERFACE"
          }
        }
      },
      {
        "name": "appearsIn",
        "type": {
          "name": null,
          "kind": "LIST",
          "ofType": {
            "name": "Episode",
            "kind": "ENUM"
          }
        }
      },
      {
        "name": "primaryFunction",
        "type": {
          "name": "String",
          "kind": "SCALAR",
          "ofType": null
        }
      }
    ]
  }
}

Let's end with a feature of the introspection system particularly useful for tooling; let's ask the system for documentation!

query IntrospectionDroidDescriptionQuery {
  __type(name: "Droid") {
    name
    description
  }
}

yields

{
  "__type": {
    "name": "Droid",
    "description": "A mechanical creature in the Star Wars universe."
  }
}

So we can access the documentation about the type system using introspection, and create documentation browsers, or rich IDE experiences.

This has just scratched the surface of the introspection system; we can query for enum values, what interfaces a type implements, and more. We can even introspect on the introspection system itself. The specification goes into more detail about this topic in the "Introspection" section, and the introspection file in GraphQL.js contains code implementing a specification-compliant GraphQL query introspection system.

Additional Content

This README walked through the GraphQL.js reference implementation's type system, query execution, validation, and introspection systems. There's more in both GraphQL.js and specification, including a description and implementation for executing queries, how to format a response, explaining how a type system maps to an underlying implementation, and how to format a GraphQL response, as well as the grammar for GraphQL.

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