Files
Flowise/packages/components/nodes/embeddings/GoogleVertexAIEmbedding/GoogleVertexAIEmbedding.ts
T
Karl Stoney 5e5b2a18e2 Added region support to chatGoogleVertexAi (#4839)
* Added region support to chatGoogleVertexAi

* Added region to the vertex ai embeddings loader too

* Updated the available vertex text embedding models to be valid

* Update ChatGoogleVertexAI.ts

* Update GoogleVertexAIEmbedding.ts

---------

Co-authored-by: Henry Heng <henryheng@flowiseai.com>
2025-07-18 11:28:23 +01:00

101 lines
4.3 KiB
TypeScript

import { GoogleVertexAIEmbeddingsInput, VertexAIEmbeddings } from '@langchain/google-vertexai'
import { ICommonObject, INode, INodeData, INodeOptionsValue, INodeParams } from '../../../src/Interface'
import { MODEL_TYPE, getModels, getRegions } from '../../../src/modelLoader'
import { getBaseClasses, getCredentialData, getCredentialParam } from '../../../src/utils'
class GoogleVertexAIEmbedding_Embeddings implements INode {
label: string
name: string
version: number
type: string
icon: string
category: string
description: string
baseClasses: string[]
credential: INodeParams
inputs: INodeParams[]
constructor() {
this.label = 'GoogleVertexAI Embeddings'
this.name = 'googlevertexaiEmbeddings'
this.version = 2.1
this.type = 'GoogleVertexAIEmbeddings'
this.icon = 'GoogleVertex.svg'
this.category = 'Embeddings'
this.description = 'Google vertexAI API to generate embeddings for a given text'
this.baseClasses = [this.type, ...getBaseClasses(VertexAIEmbeddings)]
this.credential = {
label: 'Connect Credential',
name: 'credential',
type: 'credential',
credentialNames: ['googleVertexAuth'],
optional: true,
description:
'Google Vertex AI credential. If you are using a GCP service like Cloud Run, or if you have installed default credentials on your local machine, you do not need to set this credential.'
}
this.inputs = [
{
label: 'Model Name',
name: 'modelName',
type: 'asyncOptions',
loadMethod: 'listModels',
default: 'text-embedding-004'
},
{
label: 'Region',
description: 'Region to use for the model.',
name: 'region',
type: 'asyncOptions',
loadMethod: 'listRegions',
optional: true
}
]
}
//@ts-ignore
loadMethods = {
async listModels(): Promise<INodeOptionsValue[]> {
return await getModels(MODEL_TYPE.EMBEDDING, 'googlevertexaiEmbeddings')
},
async listRegions(): Promise<INodeOptionsValue[]> {
return await getRegions(MODEL_TYPE.EMBEDDING, 'googlevertexaiEmbeddings')
}
}
async init(nodeData: INodeData, _: string, options: ICommonObject): Promise<any> {
const credentialData = await getCredentialData(nodeData.credential ?? '', options)
const modelName = nodeData.inputs?.modelName as string
const region = nodeData.inputs?.region as string
const googleApplicationCredentialFilePath = getCredentialParam('googleApplicationCredentialFilePath', credentialData, nodeData)
const googleApplicationCredential = getCredentialParam('googleApplicationCredential', credentialData, nodeData)
const projectID = getCredentialParam('projectID', credentialData, nodeData)
const authOptions: any = {}
if (Object.keys(credentialData).length !== 0) {
if (!googleApplicationCredentialFilePath && !googleApplicationCredential)
throw new Error('Please specify your Google Application Credential')
if (!googleApplicationCredentialFilePath && !googleApplicationCredential)
throw new Error(
'Error: More than one component has been inputted. Please use only one of the following: Google Application Credential File Path or Google Credential JSON Object'
)
if (googleApplicationCredentialFilePath && !googleApplicationCredential)
authOptions.keyFile = googleApplicationCredentialFilePath
else if (!googleApplicationCredentialFilePath && googleApplicationCredential)
authOptions.credentials = JSON.parse(googleApplicationCredential)
if (projectID) authOptions.projectId = projectID
}
const obj: GoogleVertexAIEmbeddingsInput = {
model: modelName
}
if (Object.keys(authOptions).length !== 0) obj.authOptions = authOptions
if (region) obj.location = region
const model = new VertexAIEmbeddings(obj)
return model
}
}
module.exports = { nodeClass: GoogleVertexAIEmbedding_Embeddings }