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490 lines
17 KiB
JavaScript
490 lines
17 KiB
JavaScript
/**
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* Full-wiring ask_user_question lifecycle e2e.
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*
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* Companion to `hitlCheckpoint.e2e.spec.js`, same REAL components: the
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* `@librechat/agents` Run (FakeChatModel scripted to call the ask tool), the
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* LazyMongoSaver over mongodb-memory-server, the GenerationJobManager, and the
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* `/agents/chat/resume` controller via supertest. The seam under test here is
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* different, though: the interrupt is raised INSIDE a tool body (the tool's
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* func calls the SDK's `askUserQuestion()` helper, which wraps LangGraph
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* `interrupt()`), not by the PreToolUse approval gate — and the run carries a
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* checkpointer but NO `humanInTheLoop` switch and NO hooks, proving the
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* question flow works with the approval policy fully disabled.
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*/
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const express = require('express');
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const request = require('supertest');
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const mongoose = require('mongoose');
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const { MongoMemoryServer } = require('mongodb-memory-server');
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const { z } = require('zod');
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const { tool } = require('@langchain/core/tools');
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const { HumanMessage } = require('@langchain/core/messages');
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const { Run, Providers, FakeChatModel, askUserQuestion } = require('@librechat/agents');
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const mockLogger = { debug: jest.fn(), info: jest.fn(), warn: jest.fn(), error: jest.fn() };
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jest.mock('@librechat/data-schemas', () => ({
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...jest.requireActual('@librechat/data-schemas'),
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logger: mockLogger,
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}));
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jest.mock('@librechat/api', () => ({
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...jest.requireActual('@librechat/api'),
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checkAndIncrementPendingRequest: jest.fn(async () => ({ allowed: true })),
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decrementPendingRequest: jest.fn(async () => {}),
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}));
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jest.mock('~/models', () => ({
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saveMessage: jest.fn(async (req, message) => message),
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getConvo: jest.fn(async () => null),
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getMessages: jest.fn(async () => []),
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}));
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jest.mock('~/server/cleanup', () => ({
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disposeClient: jest.fn(),
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}));
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jest.mock('~/server/services/MCPRequestContext', () => ({
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getMCPRequestContext: jest.fn(() => null),
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cleanupMCPRequestContextForReq: jest.fn(),
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}));
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// Import after mocks — these are the REAL implementations.
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const {
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GenerationJobManager,
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createStreamServices,
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buildPendingAction,
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getAgentCheckpointer,
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deleteAgentCheckpoint,
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__resetCheckpointerForTests,
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} = require('@librechat/api');
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const ResumeAgentController = require('~/server/controllers/agents/resume');
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const USER_ID = 'ask-e2e-user';
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const MONGO_CFG = { type: 'mongo', ttl: 3600 };
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const ASK_TOOL = 'ask_user_question';
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/**
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* Body-run counter + captured resolution. The body executes TWICE per answered
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* question by LangGraph contract (pass 1 runs until `interrupt()` throws; the
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* resume pass re-runs the body from the top and `askUserQuestion()` returns the
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* host's answer), so `bodyRuns` proves the re-entry semantics and
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* `resolvedAnswers` proves the answer round-trip.
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*/
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let bodyRuns = 0;
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let resolvedAnswers = [];
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const askTool = tool(
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async (input) => {
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bodyRuns += 1;
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const { answer } = askUserQuestion(input);
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resolvedAnswers.push(answer);
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return answer;
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},
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{
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name: ASK_TOOL,
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description: 'Ask the user a clarifying question and wait for their answer.',
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schema: z.object({
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question: z.string(),
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description: z.string().optional(),
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options: z.array(z.object({ label: z.string(), value: z.string() })).optional(),
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}),
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},
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);
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/**
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* Build a REAL run shaped like production `createRun` for the ask-only case:
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* durable checkpointer attached, `eagerEventToolExecution` on with the ask
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* tool excluded (mirrors the planned run.ts wiring) — and, deliberately, NO
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* `humanInTheLoop` and NO hooks.
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*/
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async function buildAskRun({ saver, responses, toolCalls, runId }) {
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const run = await Run.create({
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runId,
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graphConfig: {
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type: 'standard',
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llmConfig: {
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provider: Providers.OPENAI,
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model: 'gpt-4o-mini',
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streaming: true,
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streamUsage: false,
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},
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instructions: 'You are a helpful assistant.',
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tools: [askTool],
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compileOptions: { checkpointer: saver },
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},
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returnContent: true,
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customHandlers: {},
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tokenCounter: (text) => String(text ?? '').length,
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indexTokenCountMap: {},
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eagerEventToolExecution: { enabled: true, excludeToolNames: [ASK_TOOL] },
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});
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run.Graph.overrideModel = new FakeChatModel({ responses, toolCalls });
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return run;
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}
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/**
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* Build a REAL run in the PRODUCTION shape: the agents endpoint loads tools
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* definitions-only, so the run is EVENT-DRIVEN (`toolDefinitions` non-empty flips
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* the SDK ToolNode to event dispatch) and the ask tool rides `graphTools` — the
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* SDK's in-graph direct-tool seam (agents#289, > 3.2.57) — because an event-
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* dispatched tool body executes in the host handler outside the Pregel task
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* frame, where `interrupt()` throws instead of pausing. This is the mode
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* `createRun` produces via `buildAgentInput`; the traditional-mode harness above
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* covers runs with zero toolDefinitions.
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*/
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async function buildAskRunEventMode({ saver, responses, toolCalls, runId }) {
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const run = await Run.create({
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runId,
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graphConfig: {
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type: 'standard',
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agents: [
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{
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agentId: 'agent-ask-event',
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provider: Providers.OPENAI,
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clientOptions: { model: 'gpt-4o-mini', streaming: true, streamUsage: false },
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instructions: 'You are a helpful assistant.',
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maxContextTokens: 8000,
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toolDefinitions: [{ name: 'dummy_event_tool', description: 'host-executed event tool' }],
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graphTools: [askTool],
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},
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],
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compileOptions: { checkpointer: saver },
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},
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returnContent: true,
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customHandlers: {},
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tokenCounter: (text) => String(text ?? '').length,
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indexTokenCountMap: {},
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eagerEventToolExecution: { enabled: true, excludeToolNames: [ASK_TOOL] },
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});
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run.Graph.overrideModel = new FakeChatModel({ responses, toolCalls });
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return run;
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}
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const runConfig = (conversationId) => ({
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runName: 'AgentRun',
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configurable: { thread_id: conversationId, user_id: USER_ID },
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streamMode: 'values',
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version: 'v2',
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});
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/** Poll until `predicate` returns true (the resume continuation is fire-and-forget). */
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async function waitFor(predicate, { timeoutMs = 10_000, intervalMs = 50 } = {}) {
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const deadline = Date.now() + timeoutMs;
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while (Date.now() < deadline) {
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if (await predicate()) {
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return;
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}
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await new Promise((resolve) => setTimeout(resolve, intervalMs));
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}
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throw new Error('waitFor: condition not met within timeout');
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}
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async function checkpointCounts(conversationId) {
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const db = mongoose.connection.db;
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return {
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checkpoints: await db
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.collection('agent_checkpoints')
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.countDocuments({ thread_id: conversationId }),
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writes: await db
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.collection('agent_checkpoint_writes')
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.countDocuments({ thread_id: conversationId }),
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};
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}
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let mongoServer;
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let saver;
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beforeAll(async () => {
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mongoServer = await MongoMemoryServer.create();
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await mongoose.connect(mongoServer.getUri());
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__resetCheckpointerForTests();
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saver = await getAgentCheckpointer(MONGO_CFG);
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GenerationJobManager.configure({ ...createStreamServices(), cleanupOnComplete: false });
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GenerationJobManager.initialize();
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GenerationJobManager.setApprovalExpiredHandler(async (conversationId) => {
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await deleteAgentCheckpoint(conversationId, MONGO_CFG);
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});
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}, 60000);
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afterAll(async () => {
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GenerationJobManager.setApprovalExpiredHandler(null);
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await GenerationJobManager.destroy();
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await mongoose.disconnect();
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await mongoServer.stop();
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});
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beforeEach(() => {
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bodyRuns = 0;
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resolvedAnswers = [];
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jest.clearAllMocks();
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});
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describe('ask_user_question lifecycle (full wiring, approval policy disabled)', () => {
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jest.setTimeout(30000);
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test('a tool-body interrupt pauses durably and the REAL /resume controller delivers the answer as the tool result', async () => {
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const conversationId = `ask-e2e-resume-${Date.now()}`;
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const responseMessageId = 'resp-ask-1';
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// --- Turn 1: the model calls the ask tool → interrupt() from inside the tool body. ---
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const run = await buildAskRun({
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saver,
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responses: ['Let me check with you.'],
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toolCalls: [
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{
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name: ASK_TOOL,
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args: {
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question: 'Which environment should I deploy to?',
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options: [
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{ label: 'Staging', value: 'staging' },
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{ label: 'Production', value: 'production' },
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],
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},
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id: 'tc_ask_1',
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type: 'tool_call',
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},
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],
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runId: responseMessageId,
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});
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await run.processStream(
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{ messages: [new HumanMessage('deploy the app')] },
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runConfig(conversationId),
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);
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const interrupt = run.getInterrupt();
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expect(interrupt?.payload?.type).toBe('ask_user_question');
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expect(interrupt.payload.question).toEqual({
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question: 'Which environment should I deploy to?',
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options: [
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{ label: 'Staging', value: 'staging' },
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{ label: 'Production', value: 'production' },
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],
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});
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expect(bodyRuns).toBe(1); // body entered once; interrupt() threw before any answer
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expect(resolvedAnswers).toEqual([]);
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const paused = await checkpointCounts(conversationId);
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expect(paused.checkpoints).toBeGreaterThan(0); // the interrupt checkpoint is durable
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// --- Pause bookkeeping (mirrors AgentClient.handleRunInterrupt). ---
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await GenerationJobManager.createJob(conversationId, USER_ID, conversationId);
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await GenerationJobManager.updateMetadata(conversationId, {
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endpoint: 'agents',
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agent_id: 'agent-ask-e2e',
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responseMessageId,
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});
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const pendingAction = buildPendingAction(interrupt.payload, {
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streamId: conversationId,
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conversationId,
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runId: responseMessageId,
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responseMessageId,
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ttlMs: 60_000,
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});
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expect(await GenerationJobManager.approvals.pause(conversationId, pendingAction)).toBe(true);
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// --- Turn 2: answer through the REAL controller; the thin client rebuilds a REAL run. ---
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const thinClient = {
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contentParts: [],
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artifactPromises: [],
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conversationId,
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responseMessageId,
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pendingApproval: null,
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async resumeCompletion({ resumeValue, abortController }) {
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const resumed = await buildAskRun({
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saver,
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responses: ['Deploying to staging.'],
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runId: responseMessageId,
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});
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await resumed.resume(resumeValue, {
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...runConfig(conversationId),
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signal: (abortController ?? new AbortController()).signal,
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});
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const reInterrupt = resumed.getInterrupt?.();
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if (reInterrupt?.payload) {
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this.pendingApproval = reInterrupt.payload;
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}
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this.contentParts.push({ type: 'text', text: 'Deploying to staging.' });
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return resumed;
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},
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};
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const initializeClient = jest.fn(async () => ({ client: thinClient }));
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const addTitle = jest.fn();
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const app = express();
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app.use(express.json());
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app.use((req, _res, next) => {
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req.user = { id: USER_ID };
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req.config = { endpoints: { agents: { checkpointer: MONGO_CFG } }, interfaceConfig: {} };
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next();
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});
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app.post('/api/agents/chat/resume', (req, res, next) =>
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ResumeAgentController(req, res, next, initializeClient, addTitle),
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);
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const response = await request(app).post('/api/agents/chat/resume').send({
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conversationId,
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actionId: pendingAction.actionId,
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agent_id: 'agent-ask-e2e',
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endpoint: 'agents',
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answer: 'staging',
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});
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expect(response.status).toBe(200);
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expect(response.body.status).toBe('resuming');
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await waitFor(async () => {
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const liveJob = await GenerationJobManager.getJob(conversationId);
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return liveJob?.status !== 'requires_action' && liveJob?.status !== 'running';
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});
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expect(initializeClient).toHaveBeenCalledTimes(1);
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// Resume pass re-ran the body from the top; askUserQuestion() returned the answer.
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expect(bodyRuns).toBe(2);
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expect(resolvedAnswers).toEqual(['staging']);
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expect(thinClient.pendingApproval).toBeNull(); // no second question — turn completed
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// Terminal state: the checkpoint was pruned by the REAL finalize path.
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await waitFor(async () => (await checkpointCounts(conversationId)).checkpoints === 0);
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expect(await checkpointCounts(conversationId)).toEqual({ checkpoints: 0, writes: 0 });
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});
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test('EVENT-DRIVEN mode (production shape): the graphTools ask tool pauses and resumes over the REAL /resume controller', async () => {
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const conversationId = `ask-e2e-event-${Date.now()}`;
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const responseMessageId = 'resp-ask-event-1';
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const run = await buildAskRunEventMode({
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saver,
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responses: ['Let me check with you.'],
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toolCalls: [
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{
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name: ASK_TOOL,
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args: { question: 'Proceed with the migration?' },
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id: 'tc_ask_ev1',
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type: 'tool_call',
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},
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],
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runId: responseMessageId,
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});
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await run.processStream(
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{ messages: [new HumanMessage('run the migration')] },
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runConfig(conversationId),
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);
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const interrupt = run.getInterrupt();
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expect(interrupt?.payload?.type).toBe('ask_user_question');
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expect(interrupt.payload.question).toEqual({ question: 'Proceed with the migration?' });
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expect(bodyRuns).toBe(1);
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expect((await checkpointCounts(conversationId)).checkpoints).toBeGreaterThan(0);
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await GenerationJobManager.createJob(conversationId, USER_ID, conversationId);
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await GenerationJobManager.updateMetadata(conversationId, {
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endpoint: 'agents',
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agent_id: 'agent-ask-e2e',
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responseMessageId,
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});
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const pendingAction = buildPendingAction(interrupt.payload, {
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streamId: conversationId,
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conversationId,
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runId: responseMessageId,
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responseMessageId,
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ttlMs: 60_000,
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});
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expect(await GenerationJobManager.approvals.pause(conversationId, pendingAction)).toBe(true);
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const thinClient = {
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contentParts: [],
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artifactPromises: [],
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conversationId,
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responseMessageId,
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pendingApproval: null,
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async resumeCompletion({ resumeValue, abortController }) {
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const resumed = await buildAskRunEventMode({
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saver,
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responses: ['Migration underway.'],
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runId: responseMessageId,
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});
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await resumed.resume(resumeValue, {
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...runConfig(conversationId),
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signal: (abortController ?? new AbortController()).signal,
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});
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this.contentParts.push({ type: 'text', text: 'Migration underway.' });
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return resumed;
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},
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};
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const initializeClient = jest.fn(async () => ({ client: thinClient }));
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const app = express();
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app.use(express.json());
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app.use((req, _res, next) => {
|
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req.user = { id: USER_ID };
|
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req.config = { endpoints: { agents: { checkpointer: MONGO_CFG } }, interfaceConfig: {} };
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next();
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});
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app.post('/api/agents/chat/resume', (req, res, next) =>
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ResumeAgentController(req, res, next, initializeClient, jest.fn()),
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);
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const response = await request(app).post('/api/agents/chat/resume').send({
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conversationId,
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actionId: pendingAction.actionId,
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agent_id: 'agent-ask-e2e',
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endpoint: 'agents',
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answer: 'yes, proceed',
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});
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expect(response.status).toBe(200);
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await waitFor(async () => {
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const liveJob = await GenerationJobManager.getJob(conversationId);
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return liveJob?.status !== 'requires_action' && liveJob?.status !== 'running';
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});
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expect(bodyRuns).toBe(2);
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expect(resolvedAnswers).toEqual(['yes, proceed']);
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await waitFor(async () => (await checkpointCounts(conversationId)).checkpoints === 0);
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});
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test('a second question raised after resume re-pauses with a fresh ask_user_question interrupt', async () => {
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const conversationId = `ask-e2e-seq-${Date.now()}`;
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const run = await buildAskRun({
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saver,
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responses: ['First question coming.'],
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|
toolCalls: [
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|
{
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|
name: ASK_TOOL,
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|
args: { question: 'Pick a color?' },
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|
id: 'tc_ask_q1',
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|
type: 'tool_call',
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},
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],
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runId: 'resp-ask-seq',
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});
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await run.processStream({ messages: [new HumanMessage('start')] }, runConfig(conversationId));
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expect(run.getInterrupt()?.payload?.type).toBe('ask_user_question');
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expect(bodyRuns).toBe(1);
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// Resume with the first answer; the NEXT model turn asks a second question.
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const resumed = await buildAskRun({
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saver,
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responses: ['And one more thing.'],
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toolCalls: [
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{
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name: ASK_TOOL,
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args: { question: 'Pick a size?' },
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|
id: 'tc_ask_q2',
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|
type: 'tool_call',
|
|
},
|
|
],
|
|
runId: 'resp-ask-seq',
|
|
});
|
|
await resumed.resume({ answer: 'blue' }, runConfig(conversationId));
|
|
|
|
expect(resolvedAnswers).toEqual(['blue']);
|
|
const second = resumed.getInterrupt();
|
|
expect(second?.payload?.type).toBe('ask_user_question');
|
|
expect(second.payload.question).toEqual({ question: 'Pick a size?' });
|
|
// q1 body ran twice (pass + resume); q2 body entered once and interrupted.
|
|
expect(bodyRuns).toBe(3);
|
|
|
|
await deleteAgentCheckpoint(conversationId, MONGO_CFG);
|
|
});
|
|
});
|