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mirror of synced 2024-06-18 18:35:37 +12:00

Add support for accessing unlimited levels of nested JSON arrays

This commit is contained in:
Andrew Kingston 2021-12-07 21:19:14 +00:00
parent a0f3863f69
commit ba2588d44e
4 changed files with 107 additions and 74 deletions

View file

@ -15,7 +15,10 @@ import {
encodeJSBinding,
} from "@budibase/string-templates"
import { TableNames } from "../constants"
import { convertJSONSchemaToTableSchema } from "./jsonUtils"
import {
convertJSONSchemaToTableSchema,
getJSONArrayDatasourceSchema,
} from "./jsonUtils"
// Regex to match all instances of template strings
const CAPTURE_VAR_INSIDE_TEMPLATE = /{{([^}]+)}}/g
@ -218,7 +221,9 @@ const getProviderContextBindings = (asset, dataProviders) => {
Object.keys(schema).forEach(fieldKey => {
const fieldSchema = schema[fieldKey]
if (fieldSchema.type === "json") {
const jsonSchema = convertJSONSchemaToTableSchema(fieldSchema, true)
const jsonSchema = convertJSONSchemaToTableSchema(fieldSchema, {
squashObjects: true,
})
Object.keys(jsonSchema).forEach(jsonKey => {
jsonAdditions[`${fieldKey}.${jsonKey}`] = {
type: jsonSchema[jsonKey].type,
@ -419,19 +424,8 @@ export const getSchemaForDatasource = (asset, datasource, isForm = false) => {
// "jsonarray" datasources are arrays inside JSON fields
else if (type === "jsonarray") {
table = tables.find(table => table._id === datasource.tableId)
// We parse the label of the datasource to work out where we are inside
// the structure. We can use this to know which part of the schema
// is available underneath our current position.
const keysToSchema = datasource.label.split(".").slice(2)
let jsonSchema = table?.schema
for (let i = 0; i < keysToSchema.length; i++) {
jsonSchema = jsonSchema[keysToSchema[i]].schema
}
// We need to convert the JSON schema into a more typical looking table
// schema so that it works with the rest of the platform
schema = convertJSONSchemaToTableSchema(jsonSchema, true)
let tableSchema = table?.schema
schema = getJSONArrayDatasourceSchema(tableSchema, datasource)
}
// Otherwise we assume we're targeting an internal table or a plus

View file

@ -1,10 +1,59 @@
export const convertJSONSchemaToTableSchema = (
jsonSchema,
squashObjects = false
) => {
/**
* Gets the schema for a datasource which is targeting a JSON array, including
* nested JSON arrays. The returned schema is a squashed, table-like schema
* which is fully compatible with the rest of the platform.
* @param tableSchema the full schema for the table this JSON field is in
* @param datasource the datasource configuration
*/
export const getJSONArrayDatasourceSchema = (tableSchema, datasource) => {
let jsonSchema = tableSchema
let keysToSchema = []
// If we are already deep inside a JSON field then we need to account
// for the keys that brought us here, so we can get the schema for the
// depth we're actually at
if (datasource.prefixKeys) {
keysToSchema = datasource.prefixKeys.concat(["schema"])
}
// We parse the label of the datasource to work out where we are inside
// the structure. We can use this to know which part of the schema
// is available underneath our current position.
keysToSchema = keysToSchema.concat(datasource.label.split(".").slice(2))
// Follow the JSON key path until we reach the schema for the level
// we are at
for (let i = 0; i < keysToSchema.length; i++) {
jsonSchema = jsonSchema?.[keysToSchema[i]]
if (jsonSchema?.schema) {
jsonSchema = jsonSchema.schema
}
}
// We need to convert the JSON schema into a more typical looking table
// schema so that it works with the rest of the platform
return convertJSONSchemaToTableSchema(jsonSchema, {
squashObjects: true,
prefixKeys: keysToSchema,
})
}
/**
* Converts a JSON field schema (or sub-schema of a nested field) into a schema
* that looks like a typical table schema.
* @param jsonSchema the JSON field schema or sub-schema
* @param options
*/
export const convertJSONSchemaToTableSchema = (jsonSchema, options) => {
if (!jsonSchema) {
return null
}
// Add default options
options = { squashObjects: false, prefixKeys: null, ...options }
// Immediately strip the wrapper schema for objects, or wrap shallow values in
// a fake "value" schema
if (jsonSchema.schema) {
jsonSchema = jsonSchema.schema
} else {
@ -12,34 +61,60 @@ export const convertJSONSchemaToTableSchema = (
value: jsonSchema,
}
}
const keys = extractJSONSchemaKeys(jsonSchema, squashObjects)
// Extract all deep keys from the schema
const keys = extractJSONSchemaKeys(jsonSchema, options.squashObjects)
// Form a full schema from all the deep schema keys
let schema = {}
keys.forEach(({ key, type }) => {
schema[key] = { type, name: key }
schema[key] = { type, name: key, prefixKeys: options.prefixKeys }
})
return schema
}
/**
* Recursively builds paths to all leaf fields in a JSON field schema structure,
* stopping when leaf nodes or arrays are reached.
* @param jsonSchema the JSON field schema or sub-schema
* @param squashObjects whether to recurse into objects or not
*/
const extractJSONSchemaKeys = (jsonSchema, squashObjects = false) => {
if (!jsonSchema || !Object.keys(jsonSchema).length) {
return []
}
// Iterate through every schema key
let keys = []
Object.keys(jsonSchema).forEach(key => {
const type = jsonSchema[key].type
// If we encounter an object, then only go deeper if we want to squash
// object paths
if (type === "json" && squashObjects) {
// Find all keys within this objects schema
const childKeys = extractJSONSchemaKeys(
jsonSchema[key].schema,
squashObjects
)
// Append child paths onto the current path to build the full path
keys = keys.concat(
childKeys.map(childKey => ({
key: `${key}.${childKey.key}`,
type: childKey.type,
}))
)
} else if (type !== "array") {
keys.push({ key, type })
}
// Otherwise add this as a lead node.
// We transform array types from "array" into "jsonarray" here to avoid
// confusion with the existing "array" type that represents a multi-select.
else {
keys.push({
key,
type: type === "array" ? "jsonarray" : type,
})
}
})
return keys

View file

@ -105,54 +105,23 @@
value: `{{ literal ${runtimeBinding} }}`,
}
})
$: jsonArrays = findJSONArrays(bindings)
const findJSONArrays = bindings => {
let arrays = []
const jsonBindings = bindings.filter(x => x.fieldSchema?.type === "json")
jsonBindings.forEach(binding => {
const {
$: jsonArrays = bindings
.filter(x => x.fieldSchema?.type === "jsonarray")
.map(binding => {
const { providerId, readableBinding, runtimeBinding, tableId } = binding
const { name, type, prefixKeys } = binding.fieldSchema
return {
providerId,
readableBinding,
runtimeBinding,
fieldSchema,
label: readableBinding,
fieldName: name,
fieldType: type,
tableId,
} = binding
const { name, type } = fieldSchema
const schemaArrays = findArraysInSchema(fieldSchema).map(path => {
const safePath = path.split(".").map(makePropSafe).join(".")
return {
providerId,
label: `${readableBinding}.${path}`,
fieldName: name,
fieldType: type,
tableId,
type: "jsonarray",
value: `{{ literal ${runtimeBinding}.${safePath} }}`,
}
})
arrays = arrays.concat(schemaArrays)
prefixKeys,
type: "jsonarray",
value: `{{ literal ${runtimeBinding} }}`,
}
})
return arrays
}
const findArraysInSchema = (schema, path) => {
if (!schema?.schema || !Object.keys(schema.schema).length) {
return []
}
if (schema.type === "array") {
return [path]
}
let arrays = []
Object.keys(schema.schema).forEach(key => {
const newPath = `${path ? `${path}.` : ""}${key}`
const childArrays = findArraysInSchema(schema.schema[key], newPath)
arrays = arrays.concat(childArrays)
})
return arrays
}
const handleSelected = selected => {
dispatch("change", selected)
dropdownRight.hide()

View file

@ -4,7 +4,7 @@ import { fetchViewData } from "./views"
import { fetchRelationshipData } from "./relationships"
import { FieldTypes } from "../constants"
import { executeQuery, fetchQueryDefinition } from "./queries"
import { convertJSONSchemaToTableSchema } from "builder/src/builderStore/jsonUtils"
import { getJSONArrayDatasourceSchema } from "builder/src/builderStore/jsonUtils"
/**
* Fetches all rows for a particular Budibase data source.
@ -80,12 +80,7 @@ export const fetchDatasourceSchema = async dataSource => {
// We can then extract their schema as a subset of the table schema.
if (type === "jsonarray") {
const table = await fetchTableDefinition(dataSource.tableId)
const keysToSchema = dataSource.label.split(".").slice(2)
let schema = table?.schema
for (let i = 0; i < keysToSchema.length; i++) {
schema = schema[keysToSchema[i]].schema
}
return convertJSONSchemaToTableSchema(schema, true)
return getJSONArrayDatasourceSchema(table?.schema, dataSource)
}
// Tables, views and links can be fetched by table ID