dtamind-components
Version:
DTAmindai Components
1,149 lines (1,057 loc) • 98.9 kB
text/typescript
import { BaseChatModel } from '@langchain/core/language_models/chat_models'
import {
ICommonObject,
IDatabaseEntity,
IHumanInput,
IMessage,
INode,
INodeData,
INodeOptionsValue,
INodeParams,
IServerSideEventStreamer,
IUsedTool
} from '../../../src/Interface'
import { AIMessageChunk, BaseMessageLike, MessageContentText } from '@langchain/core/messages'
import { AnalyticHandler } from '../../../src/handler'
import { DEFAULT_SUMMARIZER_TEMPLATE } from '../prompt'
import { ILLMMessage } from '../Interface.Agentflow'
import { Tool } from '@langchain/core/tools'
import { ARTIFACTS_PREFIX, SOURCE_DOCUMENTS_PREFIX, TOOL_ARGS_PREFIX } from '../../../src/agents'
import { flatten } from 'lodash'
import zodToJsonSchema from 'zod-to-json-schema'
import { getErrorMessage } from '../../../src/error'
import { DataSource } from 'typeorm'
import {
getPastChatHistoryImageMessages,
getUniqueImageMessages,
processMessagesWithImages,
replaceBase64ImagesWithFileReferences,
updateFlowState
} from '../utils'
import { convertMultiOptionsToStringArray, getCredentialData, getCredentialParam } from '../../../src/utils'
import { addSingleFileToStorage } from '../../../src/storageUtils'
import fetch from 'node-fetch'
interface ITool {
agentSelectedTool: string
agentSelectedToolConfig: ICommonObject
agentSelectedToolRequiresHumanInput: boolean
}
interface IKnowledgeBase {
documentStore: string
docStoreDescription: string
returnSourceDocuments: boolean
}
interface IKnowledgeBaseVSEmbeddings {
vectorStore: string
vectorStoreConfig: ICommonObject
embeddingModel: string
embeddingModelConfig: ICommonObject
knowledgeName: string
knowledgeDescription: string
returnSourceDocuments: boolean
}
interface ISimpliefiedTool {
name: string
description: string
schema: any
toolNode: {
label: string
name: string
}
}
class Agent_Agentflow implements INode {
label: string
name: string
version: number
description: string
type: string
icon: string
category: string
color: string
baseClasses: string[]
documentation?: string
credential: INodeParams
inputs: INodeParams[]
constructor() {
this.label = 'Agent'
this.name = 'agentAgentflow'
this.version = 2.0
this.type = 'Agent'
this.category = 'Agent Flows'
this.description = 'Dynamically choose and utilize tools during runtime, enabling multi-step reasoning'
this.color = '#4DD0E1'
this.baseClasses = [this.type]
this.inputs = [
{
label: 'Model',
name: 'agentModel',
type: 'asyncOptions',
loadMethod: 'listModels',
loadConfig: true
},
{
label: 'Messages',
name: 'agentMessages',
type: 'array',
optional: true,
acceptVariable: true,
array: [
{
label: 'Role',
name: 'role',
type: 'options',
options: [
{
label: 'System',
name: 'system'
},
{
label: 'Assistant',
name: 'assistant'
},
{
label: 'Developer',
name: 'developer'
},
{
label: 'User',
name: 'user'
}
]
},
{
label: 'Content',
name: 'content',
type: 'string',
acceptVariable: true,
generateInstruction: true,
rows: 4
}
]
},
{
label: 'OpenAI Built-in Tools',
name: 'agentToolsBuiltInOpenAI',
type: 'multiOptions',
optional: true,
options: [
{
label: 'Web Search',
name: 'web_search_preview',
description: 'Search the web for the latest information'
},
{
label: 'Code Interpreter',
name: 'code_interpreter',
description: 'Write and run Python code in a sandboxed environment'
},
{
label: 'Image Generation',
name: 'image_generation',
description: 'Generate images based on a text prompt'
}
],
show: {
agentModel: 'chatOpenAI'
}
},
{
label: 'Tools',
name: 'agentTools',
type: 'array',
optional: true,
array: [
{
label: 'Tool',
name: 'agentSelectedTool',
type: 'asyncOptions',
loadMethod: 'listTools',
loadConfig: true
},
{
label: 'Require Human Input',
name: 'agentSelectedToolRequiresHumanInput',
type: 'boolean',
optional: true
}
]
},
{
label: 'Knowledge (Document Stores)',
name: 'agentKnowledgeDocumentStores',
type: 'array',
description: 'Give your agent context about different document sources. Document stores must be upserted in advance.',
array: [
{
label: 'Document Store',
name: 'documentStore',
type: 'asyncOptions',
loadMethod: 'listStores'
},
{
label: 'Describe Knowledge',
name: 'docStoreDescription',
type: 'string',
generateDocStoreDescription: true,
placeholder:
'Describe what the knowledge base is about, this is useful for the AI to know when and how to search for correct information',
rows: 4
},
{
label: 'Return Source Documents',
name: 'returnSourceDocuments',
type: 'boolean',
optional: true
}
],
optional: true
},
{
label: 'Knowledge (Vector Embeddings)',
name: 'agentKnowledgeVSEmbeddings',
type: 'array',
description: 'Give your agent context about different document sources from existing vector stores and embeddings',
array: [
{
label: 'Vector Store',
name: 'vectorStore',
type: 'asyncOptions',
loadMethod: 'listVectorStores',
loadConfig: true
},
{
label: 'Embedding Model',
name: 'embeddingModel',
type: 'asyncOptions',
loadMethod: 'listEmbeddings',
loadConfig: true
},
{
label: 'Knowledge Name',
name: 'knowledgeName',
type: 'string',
placeholder:
'A short name for the knowledge base, this is useful for the AI to know when and how to search for correct information'
},
{
label: 'Describe Knowledge',
name: 'knowledgeDescription',
type: 'string',
placeholder:
'Describe what the knowledge base is about, this is useful for the AI to know when and how to search for correct information',
rows: 4
},
{
label: 'Return Source Documents',
name: 'returnSourceDocuments',
type: 'boolean',
optional: true
}
],
optional: true
},
{
label: 'Enable Memory',
name: 'agentEnableMemory',
type: 'boolean',
description: 'Enable memory for the conversation thread',
default: true,
optional: true
},
{
label: 'Memory Type',
name: 'agentMemoryType',
type: 'options',
options: [
{
label: 'All Messages',
name: 'allMessages',
description: 'Retrieve all messages from the conversation'
},
{
label: 'Window Size',
name: 'windowSize',
description: 'Uses a fixed window size to surface the last N messages'
},
{
label: 'Conversation Summary',
name: 'conversationSummary',
description: 'Summarizes the whole conversation'
},
{
label: 'Conversation Summary Buffer',
name: 'conversationSummaryBuffer',
description: 'Summarize conversations once token limit is reached. Default to 2000'
}
],
optional: true,
default: 'allMessages',
show: {
agentEnableMemory: true
}
},
{
label: 'Window Size',
name: 'agentMemoryWindowSize',
type: 'number',
default: '20',
description: 'Uses a fixed window size to surface the last N messages',
show: {
agentMemoryType: 'windowSize'
}
},
{
label: 'Max Token Limit',
name: 'agentMemoryMaxTokenLimit',
type: 'number',
default: '2000',
description: 'Summarize conversations once token limit is reached. Default to 2000',
show: {
agentMemoryType: 'conversationSummaryBuffer'
}
},
{
label: 'Input Message',
name: 'agentUserMessage',
type: 'string',
description: 'Add an input message as user message at the end of the conversation',
rows: 4,
optional: true,
acceptVariable: true,
show: {
agentEnableMemory: true
}
},
{
label: 'Return Response As',
name: 'agentReturnResponseAs',
type: 'options',
options: [
{
label: 'User Message',
name: 'userMessage'
},
{
label: 'Assistant Message',
name: 'assistantMessage'
}
],
default: 'userMessage'
},
{
label: 'Update Flow State',
name: 'agentUpdateState',
description: 'Update runtime state during the execution of the workflow',
type: 'array',
optional: true,
acceptVariable: true,
array: [
{
label: 'Key',
name: 'key',
type: 'asyncOptions',
loadMethod: 'listRuntimeStateKeys',
freeSolo: true
},
{
label: 'Value',
name: 'value',
type: 'string',
acceptVariable: true,
acceptNodeOutputAsVariable: true
}
]
}
]
}
//@ts-ignore
loadMethods = {
async listModels(_: INodeData, options: ICommonObject): Promise<INodeOptionsValue[]> {
const componentNodes = options.componentNodes as {
[key: string]: INode
}
const returnOptions: INodeOptionsValue[] = []
for (const nodeName in componentNodes) {
const componentNode = componentNodes[nodeName]
if (componentNode.category === 'Chat Models') {
if (componentNode.tags?.includes('LlamaIndex')) {
continue
}
returnOptions.push({
label: componentNode.label,
name: nodeName,
imageSrc: componentNode.icon
})
}
}
return returnOptions
},
async listEmbeddings(_: INodeData, options: ICommonObject): Promise<INodeOptionsValue[]> {
const componentNodes = options.componentNodes as {
[key: string]: INode
}
const returnOptions: INodeOptionsValue[] = []
for (const nodeName in componentNodes) {
const componentNode = componentNodes[nodeName]
if (componentNode.category === 'Embeddings') {
if (componentNode.tags?.includes('LlamaIndex')) {
continue
}
returnOptions.push({
label: componentNode.label,
name: nodeName,
imageSrc: componentNode.icon
})
}
}
return returnOptions
},
async listTools(_: INodeData, options: ICommonObject): Promise<INodeOptionsValue[]> {
const componentNodes = options.componentNodes as {
[key: string]: INode
}
const removeTools = ['chainTool', 'retrieverTool', 'webBrowser']
const returnOptions: INodeOptionsValue[] = []
for (const nodeName in componentNodes) {
const componentNode = componentNodes[nodeName]
if (componentNode.category === 'Tools' || componentNode.category === 'Tools (MCP)') {
if (componentNode.tags?.includes('LlamaIndex')) {
continue
}
if (removeTools.includes(nodeName)) {
continue
}
returnOptions.push({
label: componentNode.label,
name: nodeName,
imageSrc: componentNode.icon
})
}
}
return returnOptions
},
async listRuntimeStateKeys(_: INodeData, options: ICommonObject): Promise<INodeOptionsValue[]> {
const previousNodes = options.previousNodes as ICommonObject[]
const startAgentflowNode = previousNodes.find((node) => node.name === 'startAgentflow')
const state = startAgentflowNode?.inputs?.startState as ICommonObject[]
return state.map((item) => ({ label: item.key, name: item.key }))
},
async listStores(_: INodeData, options: ICommonObject): Promise<INodeOptionsValue[]> {
const returnData: INodeOptionsValue[] = []
const appDataSource = options.appDataSource as DataSource
const databaseEntities = options.databaseEntities as IDatabaseEntity
if (appDataSource === undefined || !appDataSource) {
return returnData
}
const searchOptions = options.searchOptions || {}
const stores = await appDataSource.getRepository(databaseEntities['DocumentStore']).findBy(searchOptions)
for (const store of stores) {
if (store.status === 'UPSERTED') {
const obj = {
name: `${store.id}:${store.name}`,
label: store.name,
description: store.description
}
returnData.push(obj)
}
}
return returnData
},
async listVectorStores(_: INodeData, options: ICommonObject): Promise<INodeOptionsValue[]> {
const componentNodes = options.componentNodes as {
[key: string]: INode
}
const returnOptions: INodeOptionsValue[] = []
for (const nodeName in componentNodes) {
const componentNode = componentNodes[nodeName]
if (componentNode.category === 'Vector Stores') {
if (componentNode.tags?.includes('LlamaIndex')) {
continue
}
returnOptions.push({
label: componentNode.label,
name: nodeName,
imageSrc: componentNode.icon
})
}
}
return returnOptions
}
}
async run(nodeData: INodeData, input: string | Record<string, any>, options: ICommonObject): Promise<any> {
let llmIds: ICommonObject | undefined
let analyticHandlers = options.analyticHandlers as AnalyticHandler
try {
const abortController = options.abortController as AbortController
// Extract input parameters
const model = nodeData.inputs?.agentModel as string
const modelConfig = nodeData.inputs?.agentModelConfig as ICommonObject
if (!model) {
throw new Error('Model is required')
}
// Extract tools
const tools = nodeData.inputs?.agentTools as ITool[]
const toolsInstance: Tool[] = []
for (const tool of tools) {
const toolConfig = tool.agentSelectedToolConfig
const nodeInstanceFilePath = options.componentNodes[tool.agentSelectedTool].filePath as string
const nodeModule = await import(nodeInstanceFilePath)
const newToolNodeInstance = new nodeModule.nodeClass()
const newNodeData = {
...nodeData,
credential: toolConfig['FLOWISE_CREDENTIAL_ID'],
inputs: {
...nodeData.inputs,
...toolConfig
}
}
const toolInstance = await newToolNodeInstance.init(newNodeData, '', options)
// toolInstance might returns a list of tools like MCP tools
if (Array.isArray(toolInstance)) {
for (const subTool of toolInstance) {
const subToolInstance = subTool as Tool
;(subToolInstance as any).agentSelectedTool = tool.agentSelectedTool
if (tool.agentSelectedToolRequiresHumanInput) {
;(subToolInstance as any).requiresHumanInput = true
}
toolsInstance.push(subToolInstance)
}
} else {
if (tool.agentSelectedToolRequiresHumanInput) {
toolInstance.requiresHumanInput = true
}
toolsInstance.push(toolInstance as Tool)
}
}
const availableTools: ISimpliefiedTool[] = toolsInstance.map((tool, index) => {
const originalTool = tools[index]
let agentSelectedTool = (tool as any)?.agentSelectedTool
if (!agentSelectedTool) {
agentSelectedTool = originalTool?.agentSelectedTool
}
const componentNode = options.componentNodes[agentSelectedTool]
const jsonSchema = zodToJsonSchema(tool.schema as any)
if (jsonSchema.$schema) {
delete jsonSchema.$schema
}
return {
name: tool.name,
description: tool.description,
schema: jsonSchema,
toolNode: {
label: componentNode?.label || tool.name,
name: componentNode?.name || tool.name
}
}
})
// Extract knowledge
const knowledgeBases = nodeData.inputs?.agentKnowledgeDocumentStores as IKnowledgeBase[]
if (knowledgeBases && knowledgeBases.length > 0) {
for (const knowledgeBase of knowledgeBases) {
const nodeInstanceFilePath = options.componentNodes['retrieverTool'].filePath as string
const nodeModule = await import(nodeInstanceFilePath)
const newRetrieverToolNodeInstance = new nodeModule.nodeClass()
const [storeId, storeName] = knowledgeBase.documentStore.split(':')
const docStoreVectorInstanceFilePath = options.componentNodes['documentStoreVS'].filePath as string
const docStoreVectorModule = await import(docStoreVectorInstanceFilePath)
const newDocStoreVectorInstance = new docStoreVectorModule.nodeClass()
const docStoreVectorInstance = await newDocStoreVectorInstance.init(
{
...nodeData,
inputs: {
...nodeData.inputs,
selectedStore: storeId
},
outputs: {
output: 'retriever'
}
},
'',
options
)
const newRetrieverToolNodeData = {
...nodeData,
inputs: {
...nodeData.inputs,
name: storeName
.toLowerCase()
.replace(/ /g, '_')
.replace(/[^a-z0-9_-]/g, ''),
description: knowledgeBase.docStoreDescription,
retriever: docStoreVectorInstance,
returnSourceDocuments: knowledgeBase.returnSourceDocuments
}
}
const retrieverToolInstance = await newRetrieverToolNodeInstance.init(newRetrieverToolNodeData, '', options)
toolsInstance.push(retrieverToolInstance as Tool)
const jsonSchema = zodToJsonSchema(retrieverToolInstance.schema)
if (jsonSchema.$schema) {
delete jsonSchema.$schema
}
const componentNode = options.componentNodes['retrieverTool']
availableTools.push({
name: storeName
.toLowerCase()
.replace(/ /g, '_')
.replace(/[^a-z0-9_-]/g, ''),
description: knowledgeBase.docStoreDescription,
schema: jsonSchema,
toolNode: {
label: componentNode?.label || retrieverToolInstance.name,
name: componentNode?.name || retrieverToolInstance.name
}
})
}
}
const knowledgeBasesForVSEmbeddings = nodeData.inputs?.agentKnowledgeVSEmbeddings as IKnowledgeBaseVSEmbeddings[]
if (knowledgeBasesForVSEmbeddings && knowledgeBasesForVSEmbeddings.length > 0) {
for (const knowledgeBase of knowledgeBasesForVSEmbeddings) {
const nodeInstanceFilePath = options.componentNodes['retrieverTool'].filePath as string
const nodeModule = await import(nodeInstanceFilePath)
const newRetrieverToolNodeInstance = new nodeModule.nodeClass()
const selectedEmbeddingModel = knowledgeBase.embeddingModel
const selectedEmbeddingModelConfig = knowledgeBase.embeddingModelConfig
const embeddingInstanceFilePath = options.componentNodes[selectedEmbeddingModel].filePath as string
const embeddingModule = await import(embeddingInstanceFilePath)
const newEmbeddingInstance = new embeddingModule.nodeClass()
const newEmbeddingNodeData = {
...nodeData,
credential: selectedEmbeddingModelConfig['FLOWISE_CREDENTIAL_ID'],
inputs: {
...nodeData.inputs,
...selectedEmbeddingModelConfig
}
}
const embeddingInstance = await newEmbeddingInstance.init(newEmbeddingNodeData, '', options)
const selectedVectorStore = knowledgeBase.vectorStore
const selectedVectorStoreConfig = knowledgeBase.vectorStoreConfig
const vectorStoreInstanceFilePath = options.componentNodes[selectedVectorStore].filePath as string
const vectorStoreModule = await import(vectorStoreInstanceFilePath)
const newVectorStoreInstance = new vectorStoreModule.nodeClass()
const newVSNodeData = {
...nodeData,
credential: selectedVectorStoreConfig['FLOWISE_CREDENTIAL_ID'],
inputs: {
...nodeData.inputs,
...selectedVectorStoreConfig,
embeddings: embeddingInstance
},
outputs: {
output: 'retriever'
}
}
const vectorStoreInstance = await newVectorStoreInstance.init(newVSNodeData, '', options)
const knowledgeName = knowledgeBase.knowledgeName || ''
const newRetrieverToolNodeData = {
...nodeData,
inputs: {
...nodeData.inputs,
name: knowledgeName
.toLowerCase()
.replace(/ /g, '_')
.replace(/[^a-z0-9_-]/g, ''),
description: knowledgeBase.knowledgeDescription,
retriever: vectorStoreInstance,
returnSourceDocuments: knowledgeBase.returnSourceDocuments
}
}
const retrieverToolInstance = await newRetrieverToolNodeInstance.init(newRetrieverToolNodeData, '', options)
toolsInstance.push(retrieverToolInstance as Tool)
const jsonSchema = zodToJsonSchema(retrieverToolInstance.schema)
if (jsonSchema.$schema) {
delete jsonSchema.$schema
}
const componentNode = options.componentNodes['retrieverTool']
availableTools.push({
name: knowledgeName
.toLowerCase()
.replace(/ /g, '_')
.replace(/[^a-z0-9_-]/g, ''),
description: knowledgeBase.knowledgeDescription,
schema: jsonSchema,
toolNode: {
label: componentNode?.label || retrieverToolInstance.name,
name: componentNode?.name || retrieverToolInstance.name
}
})
}
}
// Extract memory and configuration options
const enableMemory = nodeData.inputs?.agentEnableMemory as boolean
const memoryType = nodeData.inputs?.agentMemoryType as string
const userMessage = nodeData.inputs?.agentUserMessage as string
const _agentUpdateState = nodeData.inputs?.agentUpdateState
const agentMessages = (nodeData.inputs?.agentMessages as unknown as ILLMMessage[]) ?? []
// Extract runtime state and history
const state = options.agentflowRuntime?.state as ICommonObject
const pastChatHistory = (options.pastChatHistory as BaseMessageLike[]) ?? []
const runtimeChatHistory = (options.agentflowRuntime?.chatHistory as BaseMessageLike[]) ?? []
const prependedChatHistory = options.prependedChatHistory as IMessage[]
const chatId = options.chatId as string
// Initialize the LLM model instance
const nodeInstanceFilePath = options.componentNodes[model].filePath as string
const nodeModule = await import(nodeInstanceFilePath)
const newLLMNodeInstance = new nodeModule.nodeClass()
const newNodeData = {
...nodeData,
credential: modelConfig['FLOWISE_CREDENTIAL_ID'],
inputs: {
...nodeData.inputs,
...modelConfig
}
}
const llmWithoutToolsBind = (await newLLMNodeInstance.init(newNodeData, '', options)) as BaseChatModel
let llmNodeInstance = llmWithoutToolsBind
const agentToolsBuiltInOpenAI = convertMultiOptionsToStringArray(nodeData.inputs?.agentToolsBuiltInOpenAI)
if (agentToolsBuiltInOpenAI && agentToolsBuiltInOpenAI.length > 0) {
for (const tool of agentToolsBuiltInOpenAI) {
const builtInTool: ICommonObject = {
type: tool
}
if (tool === 'code_interpreter') {
builtInTool.container = { type: 'auto' }
}
;(toolsInstance as any).push(builtInTool)
;(availableTools as any).push({
name: tool,
toolNode: {
label: tool,
name: tool
}
})
}
}
if (llmNodeInstance && toolsInstance.length > 0) {
if (llmNodeInstance.bindTools === undefined) {
throw new Error(`Agent needs to have a function calling capable models.`)
}
// @ts-ignore
llmNodeInstance = llmNodeInstance.bindTools(toolsInstance)
}
// Prepare messages array
const messages: BaseMessageLike[] = []
// Use to store messages with image file references as we do not want to store the base64 data into database
let runtimeImageMessagesWithFileRef: BaseMessageLike[] = []
// Use to keep track of past messages with image file references
let pastImageMessagesWithFileRef: BaseMessageLike[] = []
// Prepend history ONLY if it is the first node
if (prependedChatHistory.length > 0 && !runtimeChatHistory.length) {
for (const msg of prependedChatHistory) {
const role: string = msg.role === 'apiMessage' ? 'assistant' : 'user'
const content: string = msg.content ?? ''
messages.push({
role,
content
})
}
}
for (const msg of agentMessages) {
const role = msg.role
const content = msg.content
if (role && content) {
messages.push({ role, content })
}
}
// Handle memory management if enabled
if (enableMemory) {
await this.handleMemory({
messages,
memoryType,
pastChatHistory,
runtimeChatHistory,
llmNodeInstance,
nodeData,
userMessage,
input,
abortController,
options,
modelConfig,
runtimeImageMessagesWithFileRef,
pastImageMessagesWithFileRef
})
} else if (!runtimeChatHistory.length) {
/*
* If this is the first node:
* - Add images to messages if exist
* - Add user message if it does not exist in the agentMessages array
*/
if (options.uploads) {
const imageContents = await getUniqueImageMessages(options, messages, modelConfig)
if (imageContents) {
const { imageMessageWithBase64, imageMessageWithFileRef } = imageContents
messages.push(imageMessageWithBase64)
runtimeImageMessagesWithFileRef.push(imageMessageWithFileRef)
}
}
if (input && typeof input === 'string' && !agentMessages.some((msg) => msg.role === 'user')) {
messages.push({
role: 'user',
content: input
})
}
}
delete nodeData.inputs?.agentMessages
// Initialize response and determine if streaming is possible
let response: AIMessageChunk = new AIMessageChunk('')
const isLastNode = options.isLastNode as boolean
const isStreamable = isLastNode && options.sseStreamer !== undefined && modelConfig?.streaming !== false
// Start analytics
if (analyticHandlers && options.parentTraceIds) {
const llmLabel = options?.componentNodes?.[model]?.label || model
llmIds = await analyticHandlers.onLLMStart(llmLabel, messages, options.parentTraceIds)
}
// Track execution time
const startTime = Date.now()
// Get initial response from LLM
const sseStreamer: IServerSideEventStreamer | undefined = options.sseStreamer
// Handle tool calls with support for recursion
let usedTools: IUsedTool[] = []
let sourceDocuments: Array<any> = []
let artifacts: any[] = []
let fileAnnotations: any[] = []
let additionalTokens = 0
let isWaitingForHumanInput = false
// Store the current messages length to track which messages are added during tool calls
const messagesBeforeToolCalls = [...messages]
let _toolCallMessages: BaseMessageLike[] = []
// Check if this is hummanInput for tool calls
const _humanInput = nodeData.inputs?.humanInput
const humanInput: IHumanInput = typeof _humanInput === 'string' ? JSON.parse(_humanInput) : _humanInput
const humanInputAction = options.humanInputAction
const iterationContext = options.iterationContext
if (humanInput) {
if (humanInput.type !== 'proceed' && humanInput.type !== 'reject') {
throw new Error(`Invalid human input type. Expected 'proceed' or 'reject', but got '${humanInput.type}'`)
}
const result = await this.handleResumedToolCalls({
humanInput,
humanInputAction,
messages,
toolsInstance,
sseStreamer,
chatId,
input,
options,
abortController,
llmWithoutToolsBind,
isStreamable,
isLastNode,
iterationContext
})
response = result.response
usedTools = result.usedTools
sourceDocuments = result.sourceDocuments
artifacts = result.artifacts
additionalTokens = result.totalTokens
isWaitingForHumanInput = result.isWaitingForHumanInput || false
// Calculate which messages were added during tool calls
_toolCallMessages = messages.slice(messagesBeforeToolCalls.length)
// Stream additional data if this is the last node
if (isLastNode && sseStreamer) {
if (usedTools.length > 0) {
sseStreamer.streamUsedToolsEvent(chatId, flatten(usedTools))
}
if (sourceDocuments.length > 0) {
sseStreamer.streamSourceDocumentsEvent(chatId, flatten(sourceDocuments))
}
if (artifacts.length > 0) {
sseStreamer.streamArtifactsEvent(chatId, flatten(artifacts))
}
}
} else {
if (isStreamable) {
response = await this.handleStreamingResponse(sseStreamer, llmNodeInstance, messages, chatId, abortController)
} else {
response = await llmNodeInstance.invoke(messages, { signal: abortController?.signal })
}
}
// Address built in tools (after artifacts are processed)
const builtInUsedTools: IUsedTool[] = await this.extractBuiltInUsedTools(response, [])
if (!humanInput && response.tool_calls && response.tool_calls.length > 0) {
const result = await this.handleToolCalls({
response,
messages,
toolsInstance,
sseStreamer,
chatId,
input,
options,
abortController,
llmNodeInstance,
isStreamable,
isLastNode,
iterationContext
})
response = result.response
usedTools = result.usedTools
sourceDocuments = result.sourceDocuments
artifacts = result.artifacts
additionalTokens = result.totalTokens
isWaitingForHumanInput = result.isWaitingForHumanInput || false
// Calculate which messages were added during tool calls
_toolCallMessages = messages.slice(messagesBeforeToolCalls.length)
// Stream additional data if this is the last node
if (isLastNode && sseStreamer) {
if (usedTools.length > 0) {
sseStreamer.streamUsedToolsEvent(chatId, flatten(usedTools))
}
if (sourceDocuments.length > 0) {
sseStreamer.streamSourceDocumentsEvent(chatId, flatten(sourceDocuments))
}
if (artifacts.length > 0) {
sseStreamer.streamArtifactsEvent(chatId, flatten(artifacts))
}
}
} else if (!humanInput && !isStreamable && isLastNode && sseStreamer) {
// Stream whole response back to UI if not streaming and no tool calls
let finalResponse = ''
if (response.content && Array.isArray(response.content)) {
finalResponse = response.content.map((item: any) => item.text).join('\n')
} else if (response.content && typeof response.content === 'string') {
finalResponse = response.content
} else {
finalResponse = JSON.stringify(response, null, 2)
}
sseStreamer.streamTokenEvent(chatId, finalResponse)
}
// Calculate execution time
const endTime = Date.now()
const timeDelta = endTime - startTime
// Update flow state if needed
let newState = { ...state }
if (_agentUpdateState && Array.isArray(_agentUpdateState) && _agentUpdateState.length > 0) {
newState = updateFlowState(state, _agentUpdateState)
}
// Clean up empty inputs
for (const key in nodeData.inputs) {
if (nodeData.inputs[key] === '') {
delete nodeData.inputs[key]
}
}
// Prepare final response and output object
let finalResponse = ''
if (response.content && Array.isArray(response.content)) {
finalResponse = response.content.map((item: any) => item.text).join('\n')
} else if (response.content && typeof response.content === 'string') {
finalResponse = response.content
} else {
finalResponse = JSON.stringify(response, null, 2)
}
// Address built in tools
const additionalBuiltInUsedTools: IUsedTool[] = await this.extractBuiltInUsedTools(response, builtInUsedTools)
if (additionalBuiltInUsedTools.length > 0) {
usedTools = [...new Set([...usedTools, ...additionalBuiltInUsedTools])]
// Stream used tools if this is the last node
if (isLastNode && sseStreamer) {
sseStreamer.streamUsedToolsEvent(chatId, flatten(usedTools))
}
}
// Extract artifacts from annotations in response metadata
if (response.response_metadata) {
const { artifacts: extractedArtifacts, fileAnnotations: extractedFileAnnotations } =
await this.extractArtifactsFromResponse(response.response_metadata, newNodeData, options)
if (extractedArtifacts.length > 0) {
artifacts = [...artifacts, ...extractedArtifacts]
// Stream artifacts if this is the last node
if (isLastNode && sseStreamer) {
sseStreamer.streamArtifactsEvent(chatId, extractedArtifacts)
}
}
if (extractedFileAnnotations.length > 0) {
fileAnnotations = [...fileAnnotations, ...extractedFileAnnotations]
// Stream file annotations if this is the last node
if (isLastNode && sseStreamer) {
sseStreamer.streamFileAnnotationsEvent(chatId, fileAnnotations)
}
}
}
// Replace sandbox links with proper download URLs. Example: [Download the script](sandbox:/mnt/data/dummy_bar_graph.py)
if (finalResponse.includes('sandbox:/')) {
finalResponse = await this.processSandboxLinks(finalResponse, options.baseURL, options.chatflowid, chatId)
}
const output = this.prepareOutputObject(
response,
availableTools,
finalResponse,
startTime,
endTime,
timeDelta,
usedTools,
sourceDocuments,
artifacts,
additionalTokens,
isWaitingForHumanInput,
fileAnnotations
)
// End analytics tracking
if (analyticHandlers && llmIds) {
await analyticHandlers.onLLMEnd(llmIds, finalResponse)
}
// Send additional streaming events if needed
if (isStreamable) {
this.sendStreamingEvents(options, chatId, response)
}
// Stream file annotations if any were extracted
if (fileAnnotations.length > 0 && isLastNode && sseStreamer) {
sseStreamer.streamFileAnnotationsEvent(chatId, fileAnnotations)
}
// Process template variables in state
if (newState && Object.keys(newState).length > 0) {
for (const key in newState) {
if (newState[key].toString().includes('{{ output }}')) {
newState[key] = newState[key].replaceAll('{{ output }}', finalResponse)
}
}
}
// Replace the actual messages array with one that includes the file references for images instead of base64 data
const messagesWithFileReferences = replaceBase64ImagesWithFileReferences(
messages,
runtimeImageMessagesWithFileRef,
pastImageMessagesWithFileRef
)
// Only add to runtime chat history if this is the first node
const inputMessages = []
if (!runtimeChatHistory.length) {
if (runtimeImageMessagesWithFileRef.length) {
inputMessages.push(...runtimeImageMessagesWithFileRef)
}
if (input && typeof input === 'string') {
if (!enableMemory) {
if (!agentMessages.some((msg) => msg.role === 'user')) {
inputMessages.push({ role: 'user', content: input })
} else {
agentMessages.map((msg) => {
if (msg.role === 'user') {
inputMessages.push({ role: 'user', content: msg.content })
}
})
}
} else {
inputMessages.push({ role: 'user', content: input })
}
}
}
const returnResponseAs = nodeData.inputs?.agentReturnResponseAs as string
let returnRole = 'user'
if (returnResponseAs === 'assistantMessage') {
returnRole = 'assistant'
}
// Prepare and return the final output
return {
id: nodeData.id,
name: this.name,
input: {
messages: messagesWithFileReferences,
...nodeData.inputs
},
output,
state: newState,
chatHistory: [
...inputMessages,
// Add the messages that were specifically added during tool calls, this enable other nodes to see the full tool call history, temporaraily disabled
// ...toolCallMessages,
// End with the final assistant response
{
role: returnRole,
content: finalResponse,
name: nodeData?.label ? nod