graphql-engine/dc-agents
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Data Connectors

This document describes the current specification of the new _data connectors_s feature of graphql-engine, which is under active development.

The data connectors feature allows graphql-engine to delegate the execution of operations to external web services called agents. Such agents provide access to a data set, allowing graphql-engine to query that data set over a web API.

This document specifies (1) the web API that must be presented by agents, and (2) the precise behaviour of agents for specific reference data sets.

For further reference, the directory in which this document resides contains some implementations of different agents:

Stability

This specification is complete with regards to the current implementation, but should be considered unstable until the Data Connectors feature is officially released and explicitly marked as a non-experimental feature.

Setting up Data Connector agents with graphql-engine

In order to run one of the example agents, follow the steps in its respective README document.

Once an agent is running, import the following metadata into graphql-engine:

POST /v1/metadata

{
  "type": "replace_metadata",
  "args": {
    "metadata": {
      "version": 3,
      "backend_configs": {
        "dataconnector": {
          "reference": {
            "uri": "http://localhost:8100/"
          }
        }
      },
      "sources": [
        {
          "name": "chinook",
          "kind": "reference",
          "tables": [
            {
              "table": ["Album"],
              "object_relationships": [
                {
                  "name": "Artist",
                  "using": {
                    "manual_configuration": {
                      "remote_table": ["Artist"],
                      "column_mapping": {
                        "ArtistId": "ArtistId"
                      }
                    }
                  }
                }
              ]
            },
            {
              "table": ["Artist"],
              "array_relationships": [
                {
                  "name": "Album",
                  "using": {
                    "manual_configuration": {
                      "remote_table": ["Album"],
                      "column_mapping": {
                        "ArtistId": "ArtistId"
                      }
                    }
                  }
                }
              ]
            }
          ],
          "configuration": {
            "value": {
              "tables": [ "Artist", "Album" ]
            }
          }
        }
      ]
    }
  }
}

The backend_configs.dataconnector section lets you set the URIs for as many agents as you'd like. In this case, we've defined one called "reference". When you create a source, the kind of the source should be set to the name you gave the agent in the backend_configs.dataconnector section (in this case, "reference").

The configuration property under the source can contain an 'arbitrary' JSON object, and this JSON will be sent to the agent on every request via the X-Hasura-DataConnector-Config header. The example here is configuration that the reference agent uses. The JSON object must conform to the schema specified by the agent from its /capabilities endpoint.

The name property under the source will be sent to the agent on every request via the X-Hasura-DataConnector-SourceName header. This name uniquely identifies a source within an instance of HGE.

The albums and artists tables should now be available in the GraphiQL console. You should be able to issue queries via the web service. For example:

query {
  artists {
    name
    albums {
      title
    }
  }
}

Implementing Data Connector agents

This section is a guide to implementing Data Connector agents for graphql-engine. You may find it useful to consult the code examples for reference.

The entry point to the reference agent application is a Fastify HTTP server. Raw data is loaded from JSON files on disk, and the server provides the following endpoints:

  • GET /capabilities, which returns the capabilities of the agent and a schema that describes the type of the configuration expected to be sent on the X-Hasura-DataConnector-Config header
  • GET /schema, which returns information about the provided data schema, its tables and their columns
  • POST /query, which receives a query structure to be executed, encoded as the JSON request body, and returns JSON conforming to the schema described by the /schema endpoint, and contining the requested fields.
  • GET /health, which can be used to either check if the agent is running, or if a particular data source is healthy

The /schema and /query endpoints require the request to have the X-Hasura-DataConnector-Config header set. That header contains configuration information that agent can use to configure itself. For example, the header could contain a connection string to the database, if the agent requires a connection string to know how to connect to a specific database. The header must be a JSON object, but the specific properties that are required are up to the agent to define.

The /schema and /query endpoints also require the request to have the X-Hasura-DataConnector-SourceName header set. This header contains the name of the data source configured in HGE that will be querying the agent. This can be used by the agent to maintain things like connection pools and configuration maps on a per-source basis.

We'll look at the implementation of each of the endpoints in turn.

Capabilities and configuration schema

The GET /capabilities endpoint is used by graphql-engine to discover the capabilities supported by the agent, and so that it can know the correct shape of configuration data that needs to be collected from the user and sent to the agent in the X-Hasura-DataConnector-Config header. It should return a JSON object similar to the following:

{
  "capabilities": {
    "relationships": {},
    "graphql_schema": "scalar DateTime\n\ninput DateTimeComparisons {\n  in_year: Number\n}",
    "scalar_types": {
      "DateTime": {"comparisonType": "DateTimeComparisons"}
    }
  },
  "config_schemas": {
    "config_schema": {
      "type": "object",
      "nullable": false,
      "properties": {
        "tables": { "$ref": "#/other_schemas/Tables" }
      }
    },
    "other_schemas": {
      "Tables": {
        "description": "List of tables to make available in the schema and for querying",
        "type": "array",
        "items": { "$ref": "#/other_schemas/TableName" },
        "nullable": true
      },
      "TableName": {
        "nullable": false,
        "type": "string"
      }
    }
  }
}

The capabilities section describes the capabilities of the service. This includes

  • relationships: whether or not the agent supports relationships
  • scalar_types: custom scalar types and the operations they support. See Scalar types capabilities.
  • graphql_schema: a GraphQL schema document containing type definitions referenced by the scalar_types capabilities.

The config_schema property contains an OpenAPI 3 Schema object that represents the schema of the configuration object. It can use references ($ref) to refer to other schemas defined in the other_schemas object by name.

graphql-engine will use the config_schema OpenAPI 3 Schema to validate the user's configuration JSON before putting it into the X-Hasura-DataConnector-Config header.

Scalar type capabilities

The agent is expected to support a default set of scalar types (Number, String, Bool) and a default set of comparison operators on these types. Agents may optionally declare support for their own custom scalar types and custom comparison operators on those types. Hasura GraphQL Engine does not validate the JSON format for values of custom scalar types. It passes them through transparently to the agent when they are used as GraphQL input values and returns them transparently when they are produced by the agent. It is the agent's responsibility to validate the values provided as GraphQL inputs.

Custom scalar types are declared by adding a property to the scalar_types section of the capabilities and by adding scalar type declaration with the same name in the graphql_schema capabilities property. Custom comparison types can be defined by adding a comparisonType property to the scalar type capabilities object. The comparisonType property gives the name of a GraphQL input object type, which must be defined in the graphql_schema capabilities property. The input object type will be spliced into the where argument for any columns of the scalar type in the GraphQL schema.

Example:

capabilities:
  graphql_schema: |
    scalar DateTime

    input DateTimeComparisons {
      in_year: Number
    }    
  scalar_types:
    DateTime:
      comparisonType: DateTimeComparisons

This example declares a custom scalar type DateTime, with comparison operators defined by the GraphQL input object type DateTimeComparisons. The input type DateTimeComparisons defines one comparison operator in_year which takes a Number argument

An example GraphQL query using this custom operator might look like below:

query MyQuery {
  Employee(where: {BirthDate: {in_year: 1962}}) {
    Name
    BirthDate
  }
}

In this query we have an Employee field with a BirthDate property of type DateTime. The in_year custom comparison operator is being used to request all employees with a birth date in the year 1962.

Schema

The GET /schema endpoint is called whenever the metadata is (re)loaded by graphql-engine. It returns the following JSON object:

{
  "tables": [
    {
      "name": ["Artist"],
      "primary_key": ["ArtistId"],
      "description": "Collection of artists of music",
      "columns": [
        {
          "name": "ArtistId",
          "type": "number",
          "nullable": false,
          "description": "Artist primary key identifier"
        },
        {
          "name": "Name",
          "type": "string",
          "nullable": true,
          "description": "The name of the artist"
        }
      ]
    },
    {
      "name": ["Album"],
      "primary_key": ["AlbumId"],
      "description": "Collection of music albums created by artists",
      "columns": [
        {
          "name": "AlbumId",
          "type": "number",
          "nullable": false,
          "description": "Album primary key identifier"
        },
        {
          "name": "Title",
          "type": "string",
          "nullable": false,
          "description": "The title of the album"
        },
        {
          "name": "ArtistId",
          "type": "number",
          "nullable": false,
          "description": "The ID of the artist that created this album"
        }
      ]
    }
  ]
}

The tables section describes the two available tables, as well as their columns, including types and nullability information.

Notice that the names of tables and columns are used in the metadata document to describe tracked tables and relationships.

Table names are described as an array of strings. This allows agents to fully qualify their table names with whatever namespacing requirements they have. For example, if the agent connects to a database that puts tables inside schemas, the agent could use table names such as ["my_schema", "my_table"].

Type definitions

The SchemaResponse TypeScript type from the reference implementation describes the valid response body for the GET /schema endpoint.

Responding to queries

The POST /query endpoint is invoked when the user requests data from graphql-engine which is resolved by the service.

The service logs queries from the request body in the console. Here is a simple example based on a GraphQL query which fetches all artist data:

query {
  Artist {
    ArtistId
    Name
  }
}

and here is the resulting query request payload:

{
  "table": ["Artist"],
  "table_relationships": [],
  "query": {
    "where": {
      "expressions": [],
      "type": "and"
    },
    "order_by": null,
    "limit": null,
    "offset": null,
    "fields": {
      "ArtistId": {
        "type": "column",
        "column": "ArtistId"
      },
      "Name": {
        "type": "column",
        "column": "Name"
      }
    }
  }
}

The implementation of the service is responsible for intepreting this data structure and producing a JSON response body which is compatible with both the query and the schema.

Let's break down the request:

  • The table field tells us which table to fetch the data from, namely the Artist table. The table name (ie. the array of strings) must be one that was returned previously by the /schema endpoint.
  • The table_relationships field that lists any relationships used to join between tables in the query. This query does not use any relationships, so this is just an empty list here.
  • The query field contains further information about how to query the specified table:
    • The where field tells us that there is currently no (interesting) predicate being applied to the rows of the data set (just an empty conjunction, which ought to return every row).
    • The order_by field tells us that there is no particular ordering to use, and that we can return data in its natural order.
    • The limit and offset fields tell us that there is no pagination required.
    • The fields field tells us that we ought to return two fields per row (ArtistId and Name), and that these fields should be fetched from the columns with the same names.

Response Body Structure

The response body for a call to POST /query must conform to a specific query response format. Here's an example:

{
  "rows": [
    {
      "ArtistId": 1,
      "Name": "AC/DC"
    },
    {
      "ArtistId": 2,
      "Name": "Accept"
    }
  ]
}

The rows returned by the query must be put into the rows property array in the query response object. Each object within this array represents a row, and the row object properties are the fields requested in the query. The value of the row object properties can be one of two types:

  • column: The field was a column field, then value of that column for this row is used
  • relationship: If the field was a relationship field, then a new query response object that contains the results of navigating that relationship for the current row must be used. (The query response structure is recursive via relationship-typed field values). Examples of this can be seen in the Relationships section below.

Pagination

If the GraphQL query contains pagination information, then the limit and offset fields may be set to integer values, indicating the number of rows to return, and the index of the first row to return, respectively.

Filters

The where field contains a recursive expression data structure which should be interpreted as a predicate in the context of each record.

Each node of this recursive expression structure is tagged with a type property, which indicates the type of that node, and the node will contain one or more additional fields depending on that type. The valid expression types are enumerated below, along with these additional fields:

type Additional fields Description
and expressions A conjunction of several subexpressions
or expressions A disjunction of several subexpressions
not expression The negation of a single subexpression
exists in_table, where Test if a row exists that matches the where subexpression in the specified table (in_table)
binary_op operator, column, value Test the specified column against a single value using a particular binary comparison operator
binary_arr_op operator, column, values Test the specified column against an array of values using a particular binary comparison operator
unary_op operator, column Test the specified column against a particular unary comparison operator

The value of the in_table property of the exists expression is an object that describes which table to look for rows in. The object is tagged with a type property:

| type | Additional fields | Description | |-------------|---------------------------------| | related | relationship | The table is related to the current table via the relationship name specified in relationship (this means it should be joined to the current table via the relationship) | | unrelated | table | The table specified by table is unrelated to the current table and therefore is not explicitly joined to the current table |

The "current table" during expression evaluation is the table specified by the closest ancestor exists expression, or if there is no exists ancestor, it is the table involved in the Query that the whole where Expression is from.

The available binary comparison operators that can be used against a single value in binary_op are:

Binary comparison operator Description
less_than The < operator
less_than_or_equal The <= operator
greater_than The > operator
greater_than_or_equal The >= operator
equal The = operator

The available binary comparison operators that can be used against an array of values in binary_arr_op are:

Binary array comparison operator Description
in The SQL IN operator (ie. the column must be any of the array of specified values)

The available unary comparison operators that can be used against a column:

Unary comparison operator Description
is_null Tests if a column is null

Values (as used in value in binary_op and the values array in binary_arr_op) are specified as either a literal value, or a reference to another column, which could potentially be in another related table in the same query. The value object is tagged with a type property and has different fields based on the type.

type Additional fields Description
scalar value A scalar value to compare against
column column A column in the current table being queried to compare against

Columns (as used in column fields in binary_op, binary_arr_op, unary_op and in column-typed Values) are specified as a column name, as well as optionally a path to the table that contains the column. If the path property is missing/null or an empty array, then the column is on the current table. However, if the path is ["$"], then the column is on the table involved in the Query that the whole where expression is from. At this point in time, these are the only valid values of path.

Here is a simple example, which correponds to the predicate "first_name is John and last_name is Smith":

{
  "type": "and",
  "expressions": [
    {
      "type": "binary_op",
      "operator": "equal",
      "column": {
        "name": "first_name"
      },
      "value": {
        "type": "scalar",
        "value": "John"
      }
    },
    {
      "type": "binary_op",
      "operator": "equal",
      "column": {
        "name": "last_name"
      },
      "value": {
        "type": "scalar",
        "value": "John"
      }
    }
  ]
}

Here's another example, which corresponds to the predicate "first_name is the same as last_name":

{
  "type": "binary_op",
  "operator": "equal",
  "column": {
    "name": "first_name"
  },
  "value": {
    "type": "column",
    "column": {
      "name": "last_name"
    }
  }
}

In this example, a person table is filtered by whether or not that person has any children 18 years of age or older:

{
  "type": "exists",
  "in_table": {
    "type": "related",
    "relationship": "children"
  },
  "where": {
    "type": "binary_op",
    "operator": "greater_than_or_equal",
    "column": {
      "name": "age"
    },
    "value": {
      "type": "scalar",
      "value": 18
    }
  }
}

In this example, a person table is filtered by whether or not that person has any children that have the same first name as them:

{
  "type": "exists",
  "in_table": {
    "type": "related",
    "relationship": "children"
  },
  "where": {
    "type": "binary_op",
    "operator": "equal",
    "column": {
      "name": "first_name" // This column refers to the child's name
    },
    "value": {
      "type": "column",
      "column": {
        "path": ["$"],
        "name": "first_name" // This column refers to the parent's name
      }
    }
  }
}

Exists expressions can be nested, but the ["$"] path always refers to the query table. So in this example, a person table is filtered by whether or not that person has any children that have any friends that have the same first name as the parent:

{
  "type": "exists",
  "in_table": {
    "type": "related",
    "relationship": "children"
  },
  "where": {
    "type": "exists",
    "in_table": {
      "type": "related",
      "relationship": "friends"
    },
    "where": {
      "type": "binary_op",
      "operator": "equal",
      "column": {
        "name": "first_name" // This column refers to the children's friend's name
      },
      "value": {
        "type": "column",
        "column": {
          "path": ["$"],
          "name": "first_name" // This column refers to the parent's name
        }
      }
    }
  }
}

In this example, a table is filtered by whether or not an unrelated administrators table contains an admin called "superuser". Note that this means if the administrators table contains the "superuser" admin, then all rows of the table are returned, but if not, no rows are returned.

{
  "type": "exists",
  "in_table": {
    "type": "unrelated",
    "table": ["administrators"]
  },
  "where": {
    "type": "binary_op",
    "operator": "equal",
    "column": {
      "name": "username"
    },
    "value": {
      "type": "scalar",
      "value": "superuser"
    }
  }
}

Relationships

If the call to GET /capabilities returns a capabilities record with a relationships field then the query structure may include fields corresponding to relationships.

Note : if the relationships capability is not present then graphql-engine will not send queries to this agent involving relationships.

Relationship fields are indicated by a type field containing the string relationship. Such fields will also include the name of the relationship in a field called relationship. This name refers to a relationship that is specified on the top-level query request object in the table_relationships field.

This table_relationships is a list of tables, and for each table, a map of relationship name to relationship information. The information is an object that has a field target_table that specifies the name of the related table. It has a field called relationship_type that specified either an object (many to one) or an array (one to many) relationship. There is also a column_mapping field that indicates the mapping from columns in the source table to columns in the related table.

It is intended that the backend should execute the query contained in the relationship field and return the resulting query response as the value of this field, with the additional record-level predicate that any mapped columns should be equal in the context of the current record of the current table.

An example will illustrate this. Consider the following GraphQL query:

query {
  Artist {
    Name
    Albums {
      Title
    }
  }
}

This will generate the following JSON query if the agent supports relationships:

{
  "table": ["Artist"],
  "table_relationships": [
    {
      "source_table": ["Artist"],
      "relationships": {
        "ArtistAlbums": {
          "target_table": ["Album"],
          "relationship_type": "array",
          "column_mapping": {
            "ArtistId": "ArtistId"
          }
        }
      }
    }
  ],
  "query": {
    "where": {
      "expressions": [],
      "type": "and"
    },
    "offset": null,
    "order_by": null,
    "limit": null,
    "fields": {
      "Albums": {
        "type": "relationship",
        "relationship": "ArtistAlbums",
        "query": {
          "where": {
            "expressions": [],
            "type": "and"
          },
          "offset": null,
          "order_by": null,
          "limit": null,
          "fields": {
            "Title": {
              "type": "column",
              "column": "Title"
            }
          }
        }
      },
      "Name": {
        "type": "column",
        "column": "Name"
      }
    }
  }
}

Note the Albums field in particular, which traverses the Artists -> Albums relationship, via the ArtistAlbums relationship:

{
  "type": "relationship",
  "relationship": "ArtistAlbums",
  "query": {
    "where": {
      "expressions": [],
      "type": "and"
    },
    "offset": null,
    "order_by": null,
    "limit": null,
    "fields": {
      "Title": {
        "type": "column",
        "column": "Title"
      }
    }
  }
}

The top-level table_relationships can be looked up by starting from the source table (in this case Artist), locating the ArtistAlbums relationship under that table, then extracting the relationship information. This information includes the target_table field which indicates the table to be queried when following this relationship is the Album table. The relationship_type field indicates that this relationship is an array relationship (ie. that it will return zero to many Album rows per Artist row). The column_mapping field indicates the column mapping for this relationship, namely that the Artist's ArtistId must equal the Album's ArtistId.

Back on the relationship field inside the query, there is another query field. This indicates the query that should be executed against the Album table, but we must remember to enforce the additional constraint between Artist's ArtistId and Album's ArtistId. That is, in the context of any single outer Artist record, we should populate the Albums field with the query response containing the array of Album records for which the ArtistId field is equal to the outer record's ArtistId field.

Here's an example (truncated) response:

{
  "rows": [
    {
      "Albums": {
        "rows": [
          {
            "Title": "For Those About To Rock We Salute You"
          },
          {
            "Title": "Let There Be Rock"
          }
        ]
      },
      "Name": "AC/DC"
    },
    {
      "Albums": {
        "rows": [
          {
            "Title": "Balls to the Wall"
          },
          {
            "Title": "Restless and Wild"
          }
        ]
      },
      "Name": "Accept"
    }
    // Truncated, more Artist rows here
  ]
}

Cross-Table Filtering

It is possible to form queries that filter their results by comparing columns across tables via relationships. One way this can happen in Hasura GraphQL Engine is when configuring permissions on a table. It is possible to configure a filter on a table such that it joins to another table in order to compare some data in the filter expression.

The following metadata when used with HGE configures a Customer and Employee table, and sets up a select permission rule on Customer such that only customers that live in the same country as their SupportRep Employee would be visible to users in the user role:

POST /v1/metadata

{
  "type": "replace_metadata",
  "args": {
    "metadata": {
      "version": 3,
      "backend_configs": {
        "dataconnector": {
          "reference": {
            "uri": "http://localhost:8100/"
          }
        }
      },
      "sources": [
        {
          "name": "chinook",
          "kind": "reference",
          "tables": [
            {
              "table": ["Customer"],
              "object_relationships": [
                {
                  "name": "SupportRep",
                  "using": {
                    "manual_configuration": {
                      "remote_table": ["Employee"],
                      "column_mapping": {
                        "SupportRepId": "EmployeeId"
                      }
                    }
                  }
                }
              ],
              "select_permissions": [
                {
                  "role": "user",
                  "permission": {
                    "columns": [
                      "CustomerId",
                      "FirstName",
                      "LastName",
                      "Country",
                      "SupportRepId"
                    ],
                    "filter": {
                      "SupportRep": {
                        "Country": {
                          "_ceq": ["$","Country"]
                        }
                      }
                    }
                  }
                }
              ]
            },
            {
              "table": ["Employee"]
            }
          ],
          "configuration": {}
        }
      ]
    }
  }
}

Given this GraphQL query (where the X-Hasura-Role session variable is set to user):

query getCustomer {
  Customer {
    CustomerId
    FirstName
    LastName
    Country
    SupportRepId
  }
}

We would get the following query request JSON:

{
  "table": ["Customer"],
  "table_relationships": [
    {
      "source_table": ["Customer"],
      "relationships": {
        "SupportRep": {
          "target_table": ["Employee"],
          "relationship_type": "object",
          "column_mapping": {
            "SupportRepId": "EmployeeId"
          }
        }
      }
    }
  ],
  "query": {
    "fields": {
      "Country": {
        "type": "column",
        "column": "Country"
      },
      "CustomerId": {
        "type": "column",
        "column": "CustomerId"
      },
      "FirstName": {
        "type": "column",
        "column": "FirstName"
      },
      "LastName": {
        "type": "column",
        "column": "LastName"
      },
      "SupportRepId": {
        "type": "column",
        "column": "SupportRepId"
      }
    },
    "where": {
      "type": "and",
      "expressions": [
        {
          "type": "exists",
          "in_table": {
            "type": "related",
            "relationship": "SupportRep"
          },
          "where": {
            "type": "binary_op",
            "operator": "equal",
            "column": {
              "name": "Country"
            },
            "value": {
              "type": "column",
              "column": {
                "path": ["$"],
                "name": "Country"
              }
            }
          }
        }
      ]
    }
  }
}

The key point of interest here is in the where field where we are comparing between columns. Our first expression is an exists expression that specifies a row must exist in the table related to the Customer table by the SupportRep relationship (ie. the Employee table). These rows must match a subexpression that compares the related Employee's Country column with equal to Customer's Country column (as indicated by the ["$"] path). So, in order to evaluate this condition, we'd need to join the Employee table using the column_mapping specified in the SupportRep relationship. Then if any of the related rows (in this case, only one because it is an object relation) contain a Country that is equal to Customer row's Country the binary_op would evaluate to True. This would mean a row exists, so the exists evaluates to true, and we don't filter out the Customer row.

Filtering by Unrelated Tables

It is possible to filter a table by a predicate evaluated against a completely unrelated table. This can happen in Hasura GraphQL Engine when configuring permissions on a table.

In the following example, we are configuring HGE's metadata such that when the Customer table is queried by the employee role, the employee currently doing the query (as specified by the X-Hasura-EmployeeId session variable) must be an employee from the city of Calgary, otherwise no rows are returned.

POST /v1/metadata

{
  "type": "replace_metadata",
  "args": {
    "metadata": {
      "version": 3,
      "backend_configs": {
        "dataconnector": {
          "reference": {
            "uri": "http://localhost:8100/"
          }
        }
      },
      "sources": [
        {
          "name": "chinook",
          "kind": "reference",
          "tables": [
            {
              "table": ["Customer"],
              "select_permissions": [
                {
                  "role": "employee",
                  "permission": {
                    "columns": [
                      "CustomerId",
                      "FirstName",
                      "LastName",
                      "Country",
                      "SupportRepId"
                    ],
                    "filter": {
                      "_exists": {
                        "_table": ["Employee"],
                        "_where": {
                          "_and": [
                            { "EmployeeId": { "_eq": "X-Hasura-EmployeeId" } },
                            { "City": { "_eq": "Calgary" } }
                          ]
                        }
                      }
                    }
                  }
                }
              ]
            },
            {
              "table": ["Employee"]
            }
          ],
          "configuration": {}
        }
      ]
    }
  }
}

Given this GraphQL query (where the X-Hasura-Role session variable is set to employee, and the X-Hasura-EmployeeId session variable is set to 2):

query getCustomer {
  Customer {
    CustomerId
    FirstName
    LastName
    Country
    SupportRepId
  }
}

We would get the following query request JSON:

{
  "table": ["Customer"],
  "table_relationships": [],
  "query": {
    "fields": {
      "Country": {
        "type": "column",
        "column": "Country"
      },
      "CustomerId": {
        "type": "column",
        "column": "CustomerId"
      },
      "FirstName": {
        "type": "column",
        "column": "FirstName"
      },
      "LastName": {
        "type": "column",
        "column": "LastName"
      },
      "SupportRepId": {
        "type": "column",
        "column": "SupportRepId"
      }
    },
    "where": {
      "type": "exists",
      "in_table": {
        "type": "unrelated",
        "table": ["Employee"]
      },
      "where": {
        "type": "and",
        "expressions": [
          {
            "type": "binary_op",
            "operator": "equal",
            "column": {
              "name": "EmployeeId"
            },
            "value": {
              "type": "scalar",
              "value": 2
            }
          },
          {
            "type": "binary_op",
            "operator": "equal",
            "column": {
              "name": "City"
            },
            "value": {
              "type": "scalar",
              "value": "Calgary"
            }
          }
        ]
      }
    }
  }
}

The key part in this query is the where expression. The root expression in the where is an exists expression which specifies that at least one row must exist in the unrelated ["Employee"] table that satisfies a subexpression. This subexpression asserts that the rows from the Employee table have both EmployeeId as 2 and City as Calgary. The columns referenced inside this subexpression don't have path properties, which means they refer the columns on the Employee table because that is the closest ancestor exists table.

Aggregates

HGE supports forming GraphQL queries that allow clients to aggregate over the data in their data sources. This type of query can be passed through to Data Connector agents as a part of the Query structure sent to /query.

For example, consider the following GraphQL query:

query {
  Artist_aggregate {
    aggregate {
      max {
        ArtistId
      }
    }
  }
}

This would cause the following query request to be performed:

{
  "table": ["Artist"],
  "table_relationships": [],
  "query": {
    "aggregates": {
      "aggregate_max_ArtistId": {
        "type": "single_column",
        "function": "max",
        "column": "ArtistId"
      }
    }
  }
}

Notice the Query has an aggregates property; this property contains an object where the property name is the field name of the aggregate, and the value is a description of the aggregate. In the example above, we're using the max function on the ArtistId column. The max function is a function that operates on a single column, so the type of the aggregate is single_column.

These are the supported single_column functions:

  • avg
  • max
  • min
  • stddev_pop
  • stddev_samp
  • sum
  • var_pop
  • var_samp

The aggregate function is to be run over all rows that match the Query. In this case, the query has no filters on it (ie. no where, limit or offset properties), so the query would be selecting all rows in the Artist table.

There are two other types of aggregates, column_count and star_count, as demonstrated in this GraphQL query, and its resultant QueryRequest:

query {
  Album_aggregate {
    aggregate {
      distinct_count: count(columns: Title, distinct: true)
      count
    }
  }
}
{
  "table": ["Album"],
  "table_relationships": [],
  "query": {
    "aggregates": {
      "aggregate_distinct_count": {
        "type": "column_count",
        "columns": ["Title"],
        "distinct": true
      },
      "aggregate_count": {
        "type": "star_count"
      }
    }
  }
}

A column_count aggregate counts the number of rows that have non-null values in the specified columns. If distinct is set to true, then the count should only count unique values of those columns. This is like a COUNT(x,y,z) or a COUNT(DISTINCT x,y,z) in SQL.

A star_count aggregate simply counts the number of rows matched by the query (similar to a COUNT(*) in SQL).

The results of the aggregate functions must be returned in an aggregates property on the query response. For example:

{
  "aggregates": {
    "aggregate_distinct_count": 347,
    "aggregate_count": 347
  }
}

HGE's aggregate GraphQL queries can also return the rows involved in the aggregates, as well as apply all the standard filtering operations, for example:

query {
  Artist_aggregate(where: {Name: {_gt: "Z"}}) {
    aggregate {
      count
    }
    nodes {
      ArtistId
      Name
    }
  }
}

The nodes part of the query ends up as standard fields in the Query, and therefore are treated exactly the same as discussed in previous sections:

{
  "table": ["Artist"],
  "table_relationships": [],
  "query": {
    "aggregates": {
      "aggregate_count": {
        "type": "star_count"
      }
    },
    "fields": {
      "nodes_ArtistId": {
        "type": "column",
        "column": "ArtistId"
      },
      "nodes_Name": {
        "type": "column",
        "column": "Name"
      }
    },
    "where": {
      "type": "binary_op",
      "operator": "greater_than",
      "column": {
        "name": "Name"
      },
      "value": {
        "type": "scalar",
        "value": "Z"
      }
    }
  },
}

The response from this query would include both the aggregates and the matching rows containing the specified fields:

{
  "aggregates": {
    "aggregate_count": 1
  },
  "rows": [
    {
      "nodes_ArtistId": 155,
      "nodes_Name": "Zeca Pagodinho"
    }
  ]
}

Aggregate queries can also appear in relationship fields. Consider the following query:

query {
  Artist(limit: 2, offset: 1) {
    Name
    Albums_aggregate {
      aggregate {
        count
      }
    }
  }
}

This would generate the following QueryRequest:

{
  "table": ["Artist"],
  "table_relationships": [
    {
      "source_table": ["Artist"],
      "relationships": {
        "Albums": {
          "target_table": ["Album"],
          "relationship_type": "array",
          "column_mapping": {
            "ArtistId": "ArtistId"
          }
        }
      }
    }
  ],
  "query": {
    "fields": {
      "Albums_aggregate": {
        "type": "relationship",
        "relationship": "Albums",
        "query": {
          "aggregates": {
            "aggregate_count": {
              "type": "star_count"
            }
          }
        }
      },
      "Name": {
        "type": "column",
        "column": "Name"
      }
    },
    "limit": 2,
    "offset": 1
  }
}

This would be expected to return the following response, with the rows from the Artist table, and the aggregates from the related Albums nested under the relationship field values for each Album row:

{
  "rows": [
    {
      "Albums_aggregate": {
        "aggregates": {
          "aggregate_count": 2
        }
      },
      "Name": "Accept"
    },
    {
      "Albums_aggregate": {
        "aggregates": {
          "aggregate_count": 1
        }
      },
      "Name": "Aerosmith"
    }
  ]
}

Ordering

The order_by field can either be null, which means no particular ordering is required, or an object with two properties:

{
  "relations": {},
  "elements": [
    {
      "target_path": [],
      "target": {
        "type": "column",
        "column": "last_name"
      },
      "order_direction": "asc"
    },
    {
      "target_path": [],
      "target": {
        "type": "column",
        "column": "first_name"
      },
      "order_direction": "desc"
    }
  ]
}

The elements field specifies an array of one-or-more ordering elements. Each element represents a "target" to order, and a direction to order by. The direction can either be asc (ascending) or desc (descending). If there are multiple elements specified, then rows should be ordered with earlier elements in the array taking precedence. In the above example, rows are principally ordered by last_name, delegating to first_name in the case where two last names are equal.

The order by element target is specified as an object, whose type property specifies a different sort of ordering target:

type Additional fields Description
column column Sort by the column specified
star_count_aggregate - Sort by the count of all rows on the related target table (a non-empty target_path will always be specified)
single_column_aggregate function, column Sort by the value of applying the specified aggregate function to the column values of the rows in the related target table (a non-empty target_path will always be specified)

The target_path property is a list of relationships to navigate before finding the target to sort on. This is how sorting on columns or aggregates on related tables is expressed. Note that aggregate-typed targets will never be found on the current table (ie. a target_path of []) and are always applied to a related table.

Here's an example of applying an ordering by a related table; the Album table is being queried and sorted by the Album's Artist's Name.

{
  "table": ["Album"],
  "table_relationships": [
    {
      "source_table": ["Album"],
      "relationships": {
        "Artist": {
          "target_table": ["Artist"],
          "relationship_type": "object",
          "column_mapping": {
            "ArtistId": "ArtistId"
          }
        }
      }
    }
  ],
  "query": {
    "fields": {
      "Title": { "type": "column", "column": "Title" }
    },
    "order_by": {
      "relations": {
        "Artist": {
          "where": null,
          "subrelations": {}
        }
      },
      "elements": [
        {
          "target_path": ["Artist"],
          "target": {
            "type": "column",
            "column": "Name"
          },
          "order_direction": "desc"
        }
      ]
    }
  }
}

Note that the target_path specifies the relationship path of ["Artist"], and that this relationship is defined in the top-level table_relationships. The ordering element target column Name would therefore be found on the Artist table after joining to it from each Album. (See the Relationships section for more information about relationships.)

The relations property of order_by will contain all the relations used in the order by, for the purpose of specifying filters that must be applied to the joined tables before using them for sorting. The relations property captures all target_paths used in the order_by in a recursive fashion, so for example, if the following target_paths were used in the order_by's elements:

  • ["Artist", "Albums"]
  • ["Artist"]
  • ["Tracks"]

Then the value of the relations property would look like this:

{
  "Artist": {
    "where": null,
    "subrelations": {
      "Albums": {
        "where": null,
        "subrelations": {}
      }
    }
  },
  "Tracks": {
    "where": null,
    "subrelations": {}
  }
}

The where properties may contain filtering expressions that must be applied to the joined table before using it for sorting. The filtering expressions are defined in the same manner as specified in the Filters section of this document, where they are used on the where property of Queries.

For example, here's a query that retrieves artists ordered descending by the count of all their albums where the album title is greater than 'T'.

{
  "table": ["Artist"],
  "table_relationships": [
    {
      "source_table": ["Artist"],
      "relationships": {
        "Albums": {
          "target_table": ["Album"],
          "relationship_type": "array",
          "column_mapping": {
            "ArtistId": "ArtistId"
          }
        }
      }
    }
  ],
  "query": {
    "fields": {
      "Name": { "type": "column", "column": "Name" }
    },
    "order_by": {
      "relations": {
        "Albums": {
          "where": {
            "type": "binary_op",
            "operator": "greater_than",
            "column": {
              "name": "Title"
            },
            "value": {
              "type": "scalar",
              "value": "T"
            }
          },
          "subrelations": {}
        }
      },
      "elements": [
        {
          "target_path": ["Albums"],
          "target": {
            "type": "star_count_aggregate"
          },
          "order_direction": "desc"
        }
      ]
    }
  }
}

Type Definitions

The QueryRequest TypeScript type in the reference implementation describes the valid request body payloads which may be passed to the POST /query endpoint. The response body structure is captured by the QueryResponse type.

Health endpoint

Agents must expose a /health endpoint which must return a 204 No Content HTTP response code if the agent is up and running. This does not mean that the agent is able to connect to any data source it performs queries against, only that the agent is running and can accept requests, even if some of those requests might fail because a dependant service is unavailable.

However, this endpoint can also be used to check whether the ability of the agent to talk to a particular data source is healthy. If the endpoint is sent the X-Hasura-DataConnector-Config and X-Hasura-DataConnector-SourceName headers, then the agent is expected to check that it can successfully talk to whatever data source is being specified by those headers. If it can do so, then it must return a 204 No Content response code.