622 lines
19 KiB
TypeScript
622 lines
19 KiB
TypeScript
"use client";
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// azure and openai, using same models. so using same LLMApi.
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import {
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ApiPath,
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DEFAULT_API_HOST,
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DEFAULT_MODELS,
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OpenaiPath,
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Azure,
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REQUEST_TIMEOUT_MS,
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ServiceProvider,
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} from "@/app/constant";
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import {
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ChatMessageTool,
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useAccessStore,
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useAppConfig,
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useChatStore,
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} from "@/app/store";
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import { collectModelsWithDefaultModel } from "@/app/utils/model";
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import {
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preProcessImageContent,
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uploadImage,
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base64Image2Blob,
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} from "@/app/utils/chat";
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import { cloudflareAIGatewayUrl } from "@/app/utils/cloudflare";
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import { DalleSize, DalleQuality, DalleStyle } from "@/app/typing";
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import {
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ChatOptions,
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getHeaders,
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LLMApi,
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LLMModel,
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LLMUsage,
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MultimodalContent,
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} from "../api";
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import Locale from "../../locales";
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import {
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EventStreamContentType,
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fetchEventSource,
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} from "@fortaine/fetch-event-source";
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import { prettyObject } from "@/app/utils/format";
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import { getClientConfig } from "@/app/config/client";
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import {
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getMessageTextContent,
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getMessageImages,
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isVisionModel,
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isDalle3 as _isDalle3,
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} from "@/app/utils";
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export interface OpenAIListModelResponse {
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object: string;
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data: Array<{
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id: string;
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object: string;
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root: string;
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}>;
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}
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export interface RequestPayload {
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messages: {
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role: "system" | "user" | "assistant";
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content: string | MultimodalContent[];
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}[];
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stream?: boolean;
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model: string;
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temperature: number;
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presence_penalty: number;
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frequency_penalty: number;
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top_p: number;
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max_tokens?: number;
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}
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export interface DalleRequestPayload {
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model: string;
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prompt: string;
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response_format: "url" | "b64_json";
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n: number;
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size: DalleSize;
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quality: DalleQuality;
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style: DalleStyle;
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}
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export class ChatGPTApi implements LLMApi {
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private disableListModels = true;
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path(path: string): string {
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const accessStore = useAccessStore.getState();
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let baseUrl = "";
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const isAzure = path.includes("deployments");
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if (accessStore.useCustomConfig) {
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if (isAzure && !accessStore.isValidAzure()) {
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throw Error(
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"incomplete azure config, please check it in your settings page",
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);
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}
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baseUrl = isAzure ? accessStore.azureUrl : accessStore.openaiUrl;
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}
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if (baseUrl.length === 0) {
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const isApp = !!getClientConfig()?.isApp;
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const apiPath = isAzure ? ApiPath.Azure : ApiPath.OpenAI;
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baseUrl = isApp ? DEFAULT_API_HOST + "/proxy" + apiPath : apiPath;
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}
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if (baseUrl.endsWith("/")) {
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baseUrl = baseUrl.slice(0, baseUrl.length - 1);
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}
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if (
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!baseUrl.startsWith("http") &&
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!isAzure &&
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!baseUrl.startsWith(ApiPath.OpenAI)
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) {
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baseUrl = "https://" + baseUrl;
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}
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console.log("[Proxy Endpoint] ", baseUrl, path);
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// try rebuild url, when using cloudflare ai gateway in client
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return cloudflareAIGatewayUrl([baseUrl, path].join("/"));
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}
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async extractMessage(res: any) {
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if (res.error) {
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return "```\n" + JSON.stringify(res, null, 4) + "\n```";
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}
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// dalle3 model return url, using url create image message
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if (res.data) {
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let url = res.data?.at(0)?.url ?? "";
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const b64_json = res.data?.at(0)?.b64_json ?? "";
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if (!url && b64_json) {
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// uploadImage
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url = await uploadImage(base64Image2Blob(b64_json, "image/png"));
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}
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return [
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{
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type: "image_url",
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image_url: {
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url,
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},
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},
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];
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}
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return res.choices?.at(0)?.message?.content ?? res;
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}
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async chat(options: ChatOptions) {
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const modelConfig = {
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...useAppConfig.getState().modelConfig,
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...useChatStore.getState().currentSession().mask.modelConfig,
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...{
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model: options.config.model,
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providerName: options.config.providerName,
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},
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};
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let requestPayload: RequestPayload | DalleRequestPayload;
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const isDalle3 = _isDalle3(options.config.model);
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if (isDalle3) {
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const prompt = getMessageTextContent(
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options.messages.slice(-1)?.pop() as any,
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);
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requestPayload = {
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model: options.config.model,
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prompt,
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// URLs are only valid for 60 minutes after the image has been generated.
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response_format: "b64_json", // using b64_json, and save image in CacheStorage
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n: 1,
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size: options.config?.size ?? "1024x1024",
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quality: options.config?.quality ?? "standard",
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style: options.config?.style ?? "vivid",
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};
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} else {
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const visionModel = isVisionModel(options.config.model);
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const messages: ChatOptions["messages"] = [];
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for (const v of options.messages) {
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const content = visionModel
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? await preProcessImageContent(v.content)
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: getMessageTextContent(v);
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messages.push({ role: v.role, content });
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}
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requestPayload = {
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messages,
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stream: options.config.stream,
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model: modelConfig.model,
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temperature: modelConfig.temperature,
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presence_penalty: modelConfig.presence_penalty,
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frequency_penalty: modelConfig.frequency_penalty,
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top_p: modelConfig.top_p,
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// max_tokens: Math.max(modelConfig.max_tokens, 1024),
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// Please do not ask me why not send max_tokens, no reason, this param is just shit, I dont want to explain anymore.
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};
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// add max_tokens to vision model
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if (visionModel && modelConfig.model.includes("preview")) {
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requestPayload["max_tokens"] = Math.max(modelConfig.max_tokens, 4000);
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}
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}
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console.log("[Request] openai payload: ", requestPayload);
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const shouldStream = !isDalle3 && !!options.config.stream;
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const controller = new AbortController();
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options.onController?.(controller);
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try {
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let chatPath = "";
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if (modelConfig.providerName === ServiceProvider.Azure) {
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// find model, and get displayName as deployName
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const { models: configModels, customModels: configCustomModels } =
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useAppConfig.getState();
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const {
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defaultModel,
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customModels: accessCustomModels,
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useCustomConfig,
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} = useAccessStore.getState();
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const models = collectModelsWithDefaultModel(
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configModels,
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[configCustomModels, accessCustomModels].join(","),
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defaultModel,
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);
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const model = models.find(
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(model) =>
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model.name === modelConfig.model &&
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model?.provider?.providerName === ServiceProvider.Azure,
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);
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chatPath = this.path(
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(isDalle3 ? Azure.ImagePath : Azure.ChatPath)(
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(model?.displayName ?? model?.name) as string,
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useCustomConfig ? useAccessStore.getState().azureApiVersion : "",
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),
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);
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} else {
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chatPath = this.path(
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isDalle3 ? OpenaiPath.ImagePath : OpenaiPath.ChatPath,
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);
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}
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const chatPayload = {
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method: "POST",
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body: JSON.stringify(requestPayload),
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signal: controller.signal,
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headers: getHeaders(),
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};
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// make a fetch request
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const requestTimeoutId = setTimeout(
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() => controller.abort(),
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isDalle3 ? REQUEST_TIMEOUT_MS * 2 : REQUEST_TIMEOUT_MS, // dalle3 using b64_json is slow.
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);
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if (shouldStream) {
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let responseText = "";
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let remainText = "";
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let finished = false;
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let running = false;
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let runTools: ChatMessageTool[] = [];
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// animate response to make it looks smooth
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function animateResponseText() {
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if (finished || controller.signal.aborted) {
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responseText += remainText;
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console.log("[Response Animation] finished");
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if (responseText?.length === 0) {
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options.onError?.(new Error("empty response from server"));
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}
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return;
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}
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if (remainText.length > 0) {
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const fetchCount = Math.max(1, Math.round(remainText.length / 60));
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const fetchText = remainText.slice(0, fetchCount);
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responseText += fetchText;
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remainText = remainText.slice(fetchCount);
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options.onUpdate?.(responseText, fetchText);
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}
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requestAnimationFrame(animateResponseText);
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}
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// start animaion
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animateResponseText();
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// TODO 后面这里是从选择的plugins中获取function列表
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const funcs = {
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get_current_weather: (args: any) => {
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console.log("call get_current_weather", args);
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return "30";
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},
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};
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const finish = () => {
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if (!finished) {
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console.log("try run tools", runTools.length, finished, running);
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if (!running && runTools.length > 0) {
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const toolCallMessage = {
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role: "assistant",
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tool_calls: [...runTools],
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};
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running = true;
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runTools.splice(0, runTools.length); // empty runTools
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return Promise.all(
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toolCallMessage.tool_calls.map((tool) => {
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options?.onBeforeTool?.(tool);
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return Promise.resolve(
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// @ts-ignore
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funcs[tool.function.name](
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// @ts-ignore
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JSON.parse(tool.function.arguments),
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),
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)
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.then((content) => {
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options?.onAfterTool?.({
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...tool,
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content,
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isError: false,
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});
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return content;
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})
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.catch((e) => {
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options?.onAfterTool?.({ ...tool, isError: true });
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return e.toString();
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})
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.then((content) => ({
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role: "tool",
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content,
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tool_call_id: tool.id,
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}));
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}),
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).then((toolCallResult) => {
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console.log("end runTools", toolCallMessage, toolCallResult);
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// @ts-ignore
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requestPayload?.messages?.splice(
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// @ts-ignore
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requestPayload?.messages?.length,
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0,
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toolCallMessage,
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...toolCallResult,
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);
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setTimeout(() => {
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// call again
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console.log("start again");
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running = false;
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chatApi(chatPath, requestPayload as RequestPayload); // call fetchEventSource
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}, 0);
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});
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console.log("try run tools", runTools.length, finished);
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return;
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}
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if (running) {
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return;
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}
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finished = true;
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options.onFinish(responseText + remainText);
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}
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};
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controller.signal.onabort = finish;
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function chatApi(chatPath: string, requestPayload: RequestPayload) {
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const chatPayload = {
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method: "POST",
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body: JSON.stringify({
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...requestPayload,
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// TODO 这里暂时写死的,后面从store.tools中按照当前session中选择的获取
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tools: [
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{
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type: "function",
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function: {
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name: "get_current_weather",
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description: "Get the current weather",
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parameters: {
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type: "object",
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properties: {
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location: {
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type: "string",
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description:
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"The city and country, eg. San Francisco, USA",
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},
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format: {
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type: "string",
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enum: ["celsius", "fahrenheit"],
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},
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},
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required: ["location", "format"],
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},
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},
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},
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],
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}),
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signal: controller.signal,
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headers: getHeaders(),
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};
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console.log("chatApi", chatPath, requestPayload, chatPayload);
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fetchEventSource(chatPath, {
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...chatPayload,
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async onopen(res) {
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clearTimeout(requestTimeoutId);
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const contentType = res.headers.get("content-type");
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console.log(
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"[OpenAI] request response content type: ",
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contentType,
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);
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if (contentType?.startsWith("text/plain")) {
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responseText = await res.clone().text();
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return finish();
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}
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if (
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!res.ok ||
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!res.headers
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.get("content-type")
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?.startsWith(EventStreamContentType) ||
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res.status !== 200
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) {
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const responseTexts = [responseText];
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let extraInfo = await res.clone().text();
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try {
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const resJson = await res.clone().json();
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extraInfo = prettyObject(resJson);
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} catch {}
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if (res.status === 401) {
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responseTexts.push(Locale.Error.Unauthorized);
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}
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if (extraInfo) {
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responseTexts.push(extraInfo);
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}
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responseText = responseTexts.join("\n\n");
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return finish();
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}
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},
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onmessage(msg) {
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if (msg.data === "[DONE]" || finished) {
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return finish();
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}
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const text = msg.data;
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try {
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const json = JSON.parse(text);
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const choices = json.choices as Array<{
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delta: {
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content: string;
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tool_calls: ChatMessageTool[];
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};
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}>;
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console.log("choices", choices);
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const delta = choices[0]?.delta?.content;
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const tool_calls = choices[0]?.delta?.tool_calls;
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const textmoderation = json?.prompt_filter_results;
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if (delta) {
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remainText += delta;
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}
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if (tool_calls?.length > 0) {
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const index = tool_calls[0]?.index;
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const id = tool_calls[0]?.id;
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const args = tool_calls[0]?.function?.arguments;
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if (id) {
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runTools.push({
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id,
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type: tool_calls[0]?.type,
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function: {
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name: tool_calls[0]?.function?.name as string,
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arguments: args,
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},
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});
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} else {
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// @ts-ignore
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runTools[index]["function"]["arguments"] += args;
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}
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}
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console.log("runTools", runTools);
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if (
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textmoderation &&
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textmoderation.length > 0 &&
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ServiceProvider.Azure
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) {
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const contentFilterResults =
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textmoderation[0]?.content_filter_results;
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console.log(
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`[${ServiceProvider.Azure}] [Text Moderation] flagged categories result:`,
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contentFilterResults,
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);
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}
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} catch (e) {
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console.error("[Request] parse error", text, msg);
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}
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},
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onclose() {
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finish();
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},
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onerror(e) {
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options.onError?.(e);
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throw e;
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},
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openWhenHidden: true,
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});
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}
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chatApi(chatPath, requestPayload as RequestPayload); // call fetchEventSource
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} else {
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const res = await fetch(chatPath, chatPayload);
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clearTimeout(requestTimeoutId);
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const resJson = await res.json();
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const message = await this.extractMessage(resJson);
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options.onFinish(message);
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}
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} catch (e) {
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console.log("[Request] failed to make a chat request", e);
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options.onError?.(e as Error);
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}
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}
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async usage() {
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const formatDate = (d: Date) =>
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`${d.getFullYear()}-${(d.getMonth() + 1).toString().padStart(2, "0")}-${d
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.getDate()
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.toString()
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.padStart(2, "0")}`;
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const ONE_DAY = 1 * 24 * 60 * 60 * 1000;
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const now = new Date();
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const startOfMonth = new Date(now.getFullYear(), now.getMonth(), 1);
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const startDate = formatDate(startOfMonth);
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const endDate = formatDate(new Date(Date.now() + ONE_DAY));
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const [used, subs] = await Promise.all([
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fetch(
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this.path(
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`${OpenaiPath.UsagePath}?start_date=${startDate}&end_date=${endDate}`,
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),
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{
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method: "GET",
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headers: getHeaders(),
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},
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),
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fetch(this.path(OpenaiPath.SubsPath), {
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method: "GET",
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headers: getHeaders(),
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}),
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]);
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if (used.status === 401) {
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throw new Error(Locale.Error.Unauthorized);
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||
}
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if (!used.ok || !subs.ok) {
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throw new Error("Failed to query usage from openai");
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}
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const response = (await used.json()) as {
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total_usage?: number;
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error?: {
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type: string;
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message: string;
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||
};
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||
};
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const total = (await subs.json()) as {
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hard_limit_usd?: number;
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||
};
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if (response.error && response.error.type) {
|
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throw Error(response.error.message);
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||
}
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if (response.total_usage) {
|
||
response.total_usage = Math.round(response.total_usage) / 100;
|
||
}
|
||
|
||
if (total.hard_limit_usd) {
|
||
total.hard_limit_usd = Math.round(total.hard_limit_usd * 100) / 100;
|
||
}
|
||
|
||
return {
|
||
used: response.total_usage,
|
||
total: total.hard_limit_usd,
|
||
} as LLMUsage;
|
||
}
|
||
|
||
async models(): Promise<LLMModel[]> {
|
||
if (this.disableListModels) {
|
||
return DEFAULT_MODELS.slice();
|
||
}
|
||
|
||
const res = await fetch(this.path(OpenaiPath.ListModelPath), {
|
||
method: "GET",
|
||
headers: {
|
||
...getHeaders(),
|
||
},
|
||
});
|
||
|
||
const resJson = (await res.json()) as OpenAIListModelResponse;
|
||
const chatModels = resJson.data?.filter((m) => m.id.startsWith("gpt-"));
|
||
console.log("[Models]", chatModels);
|
||
|
||
if (!chatModels) {
|
||
return [];
|
||
}
|
||
|
||
//由于目前 OpenAI 的 disableListModels 默认为 true,所以当前实际不会运行到这场
|
||
let seq = 1000; //同 Constant.ts 中的排序保持一致
|
||
return chatModels.map((m) => ({
|
||
name: m.id,
|
||
available: true,
|
||
sorted: seq++,
|
||
provider: {
|
||
id: "openai",
|
||
providerName: "OpenAI",
|
||
providerType: "openai",
|
||
sorted: 1,
|
||
},
|
||
}));
|
||
}
|
||
}
|
||
export { OpenaiPath };
|