0712014fcb
- ASTRA-DEBUG 정상 흐름 로그를 console.error → logInfo/console.log 로 강등 (chatHandlers, extension, slashRouter): DevTools에 ERR로 찍히던 오탐 제거 - sidebar webview에 명시적 CSP meta 추가 + font-src에 data: 허용 (sidebar.html, sidebarProvider._getHtml): VS Code outer iframe이 codicon.ttf를 data:font/ttf 로 inject하면서 기본 CSP에 막혀 매 prompt 마다 violation 경고가 찍히던 문제 해소 - 누적된 LM Studio / agent / 컨텍스트 매니저 / 테스트 갱신 동반 Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
223 lines
8.6 KiB
TypeScript
223 lines
8.6 KiB
TypeScript
/**
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* Unit tests for LMStudioStreamer.
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*
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* Strategy: inject a fake ILMStudioClient that returns a fake model handle whose
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* `respond()` yields a controllable async iterable. No real SDK or WebSocket touched.
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*/
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import { LMStudioStreamer } from '../src/lmstudio/streamer';
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import type { ChatStreamEvent } from '../src/lmstudio/streamer';
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import type { ILMStudioClient } from '../src/lmstudio/client';
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class FakeModel {
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public lastChat: any = null;
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public lastOpts: any = null;
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public cancelCount = 0;
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public failNext: Error | null = null;
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public chunks: string[] = [];
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constructor(opts: { chunks?: string[]; failAfter?: number; throwOnRespond?: Error; stopReason?: string } = {}) {
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this.chunks = opts.chunks ?? ['Hel', 'lo, ', 'world'];
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this._failAfter = opts.failAfter;
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this._throwOnRespond = opts.throwOnRespond;
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this.stopReason = opts.stopReason;
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}
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private _failAfter?: number;
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private _throwOnRespond?: Error;
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public stopReason: string | undefined;
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respond(chat: any, opts: any) {
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if (this._throwOnRespond) {
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throw this._throwOnRespond;
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}
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this.lastChat = chat;
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this.lastOpts = opts;
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const chunks = this.chunks;
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const failAfter = this._failAfter;
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const stopReason = this.stopReason;
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let i = 0;
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const self = this;
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// Real OngoingPrediction is both async-iterable AND a thenable resolving to a
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// PredictionResult with `.stats.stopReason`. Mirror that shape so the streamer
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// can read the stop reason after the stream drains.
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const prediction: any = {
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cancel: async () => { self.cancelCount++; },
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then(resolve: (v: any) => void) { resolve({ stats: { stopReason } }); },
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[Symbol.asyncIterator]() {
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return {
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async next() {
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if (opts?.signal?.aborted) {
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return { value: undefined, done: true };
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}
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if (failAfter !== undefined && i >= failAfter) {
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throw new Error('mid-stream failure');
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}
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if (i >= chunks.length) {
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return { value: undefined, done: true };
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}
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const fragment = { content: chunks[i++] };
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return { value: fragment, done: false };
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},
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};
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},
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};
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return prediction;
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}
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}
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class FakeClient implements ILMStudioClient {
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public model: FakeModel;
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public getModelHandleCalls: string[] = [];
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constructor(model: FakeModel = new FakeModel()) {
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this.model = model;
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}
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setBaseUrl(_: string): void { /* noop */ }
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async load(_: string): Promise<void> { /* noop */ }
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async unload(_: string): Promise<void> { /* noop */ }
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async listLoaded(): Promise<string[]> { return []; }
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async listLoadedCached(): Promise<string[]> { return []; }
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async listDownloaded(): Promise<string[]> { return []; }
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async listDownloadedCached(): Promise<string[]> { return []; }
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async isReachable(): Promise<boolean> { return true; }
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async getModelHandle(modelKey: string): Promise<any> {
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this.getModelHandleCalls.push(modelKey);
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return this.model;
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}
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}
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// The streamer emits a trailing { token: '', stopReason } event on normal completion;
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// `collect` returns just the non-empty content tokens (what every real consumer uses).
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async function collect(stream: AsyncIterable<ChatStreamEvent>): Promise<string[]> {
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const out: string[] = [];
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for await (const { token } of stream) {
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if (token) out.push(token);
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}
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return out;
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}
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async function collectEvents(stream: AsyncIterable<ChatStreamEvent>): Promise<ChatStreamEvent[]> {
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const out: ChatStreamEvent[] = [];
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for await (const ev of stream) out.push(ev);
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return out;
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}
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describe('LMStudioStreamer', () => {
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test('streams tokens from the SDK respond iterator', async () => {
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const client = new FakeClient(new FakeModel({ chunks: ['Hel', 'lo'] }));
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const streamer = new LMStudioStreamer(client);
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const tokens = await collect(streamer.stream({
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modelName: 'm1',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.4,
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}));
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expect(tokens).toEqual(['Hel', 'lo']);
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expect(client.getModelHandleCalls).toEqual(['m1']);
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expect(client.model.lastOpts.temperature).toBe(0.4);
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});
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test('emits a trailing stopReason event from prediction stats', async () => {
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const client = new FakeClient(new FakeModel({ chunks: ['hi'], stopReason: 'maxPredictedTokensReached' }));
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const streamer = new LMStudioStreamer(client);
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const events = await collectEvents(streamer.stream({
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modelName: 'm1',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.1,
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maxTokens: 64,
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}));
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expect(events.map(e => e.token)).toEqual(['hi', '']);
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expect(events[events.length - 1].stopReason).toBe('maxPredictedTokensReached');
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// maxTokens / contextOverflowPolicy are forwarded to the SDK
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expect(client.model.lastOpts.maxTokens).toBe(64);
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expect(client.model.lastOpts.contextOverflowPolicy).toBe('stopAtLimit');
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});
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test('passes signal through to the SDK', async () => {
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const client = new FakeClient();
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const streamer = new LMStudioStreamer(client);
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const ac = new AbortController();
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await collect(streamer.stream({
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modelName: 'm1',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.2,
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signal: ac.signal,
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}));
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expect(client.model.lastOpts.signal).toBe(ac.signal);
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});
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test('aborting mid-stream stops cleanly without throwing', async () => {
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const client = new FakeClient(new FakeModel({ chunks: ['a', 'b', 'c', 'd'] }));
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const streamer = new LMStudioStreamer(client);
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const ac = new AbortController();
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const out: string[] = [];
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const iter = streamer.stream({
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modelName: 'm1',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.3,
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signal: ac.signal,
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});
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for await (const { token } of iter) {
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out.push(token);
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if (out.length === 2) ac.abort();
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}
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expect(out.length).toBeGreaterThanOrEqual(2);
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expect(out.length).toBeLessThanOrEqual(3);
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});
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test('rejects when modelName is empty', async () => {
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const client = new FakeClient();
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const streamer = new LMStudioStreamer(client);
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await expect(collect(streamer.stream({
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modelName: '',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.2,
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}))).rejects.toThrow(/without a model name/i);
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});
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test('mid-stream SDK failure is re-thrown when signal not aborted', async () => {
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const client = new FakeClient(new FakeModel({ chunks: ['a', 'b'], failAfter: 1 }));
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const streamer = new LMStudioStreamer(client);
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await expect(collect(streamer.stream({
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modelName: 'm1',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.2,
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}))).rejects.toThrow(/mid-stream failure/);
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});
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test('mid-stream SDK failure swallowed if signal already aborted', async () => {
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const client = new FakeClient(new FakeModel({ chunks: ['a', 'b'], failAfter: 1 }));
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const streamer = new LMStudioStreamer(client);
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const ac = new AbortController();
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const iter = streamer.stream({
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modelName: 'm1',
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messages: [{ role: 'user', content: 'hi' }],
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temperature: 0.2,
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signal: ac.signal,
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});
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const out: string[] = [];
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try {
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for await (const { token } of iter) {
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out.push(token);
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ac.abort(); // abort right after first token, before failure point
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}
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} catch (e) {
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// expected to be swallowed
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}
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expect(out).toEqual(['a']);
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});
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test('passes messages through to model.respond', async () => {
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const client = new FakeClient();
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const streamer = new LMStudioStreamer(client);
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const messages = [
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{ role: 'system' as const, content: 'sys' },
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{ role: 'user' as const, content: 'hi' },
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];
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await collect(streamer.stream({ modelName: 'm1', messages, temperature: 0.5 }));
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expect(client.model.lastChat).toEqual(messages);
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});
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});
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