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| "use client"; | |
| // azure and openai, using same models. so using same LLMApi. | |
| import { | |
| ApiPath, | |
| SILICONFLOW_BASE_URL, | |
| SiliconFlow, | |
| DEFAULT_MODELS, | |
| } from "@/app/constant"; | |
| import { | |
| useAccessStore, | |
| useAppConfig, | |
| useChatStore, | |
| ChatMessageTool, | |
| usePluginStore, | |
| } from "@/app/store"; | |
| import { preProcessImageContent, streamWithThink } from "@/app/utils/chat"; | |
| import { | |
| ChatOptions, | |
| getHeaders, | |
| LLMApi, | |
| LLMModel, | |
| SpeechOptions, | |
| } from "../api"; | |
| import { getClientConfig } from "@/app/config/client"; | |
| import { | |
| getMessageTextContent, | |
| getMessageTextContentWithoutThinking, | |
| isVisionModel, | |
| getTimeoutMSByModel, | |
| } from "@/app/utils"; | |
| import { RequestPayload } from "./openai"; | |
| import { fetch } from "@/app/utils/stream"; | |
| export interface SiliconFlowListModelResponse { | |
| object: string; | |
| data: Array<{ | |
| id: string; | |
| object: string; | |
| root: string; | |
| }>; | |
| } | |
| export class SiliconflowApi implements LLMApi { | |
| private disableListModels = false; | |
| path(path: string): string { | |
| const accessStore = useAccessStore.getState(); | |
| let baseUrl = ""; | |
| if (accessStore.useCustomConfig) { | |
| baseUrl = accessStore.siliconflowUrl; | |
| } | |
| if (baseUrl.length === 0) { | |
| const isApp = !!getClientConfig()?.isApp; | |
| const apiPath = ApiPath.SiliconFlow; | |
| baseUrl = isApp ? SILICONFLOW_BASE_URL : apiPath; | |
| } | |
| if (baseUrl.endsWith("/")) { | |
| baseUrl = baseUrl.slice(0, baseUrl.length - 1); | |
| } | |
| if ( | |
| !baseUrl.startsWith("http") && | |
| !baseUrl.startsWith(ApiPath.SiliconFlow) | |
| ) { | |
| baseUrl = "https://" + baseUrl; | |
| } | |
| console.log("[Proxy Endpoint] ", baseUrl, path); | |
| return [baseUrl, path].join("/"); | |
| } | |
| extractMessage(res: any) { | |
| return res.choices?.at(0)?.message?.content ?? ""; | |
| } | |
| speech(options: SpeechOptions): Promise<ArrayBuffer> { | |
| throw new Error("Method not implemented."); | |
| } | |
| async chat(options: ChatOptions) { | |
| const visionModel = isVisionModel(options.config.model); | |
| const messages: ChatOptions["messages"] = []; | |
| for (const v of options.messages) { | |
| if (v.role === "assistant") { | |
| const content = getMessageTextContentWithoutThinking(v); | |
| messages.push({ role: v.role, content }); | |
| } else { | |
| const content = visionModel | |
| ? await preProcessImageContent(v.content) | |
| : getMessageTextContent(v); | |
| messages.push({ role: v.role, content }); | |
| } | |
| } | |
| const modelConfig = { | |
| ...useAppConfig.getState().modelConfig, | |
| ...useChatStore.getState().currentSession().mask.modelConfig, | |
| ...{ | |
| model: options.config.model, | |
| providerName: options.config.providerName, | |
| }, | |
| }; | |
| const requestPayload: RequestPayload = { | |
| messages, | |
| stream: options.config.stream, | |
| model: modelConfig.model, | |
| temperature: modelConfig.temperature, | |
| presence_penalty: modelConfig.presence_penalty, | |
| frequency_penalty: modelConfig.frequency_penalty, | |
| top_p: modelConfig.top_p, | |
| // max_tokens: Math.max(modelConfig.max_tokens, 1024), | |
| // Please do not ask me why not send max_tokens, no reason, this param is just shit, I dont want to explain anymore. | |
| }; | |
| console.log("[Request] openai payload: ", requestPayload); | |
| const shouldStream = !!options.config.stream; | |
| const controller = new AbortController(); | |
| options.onController?.(controller); | |
| try { | |
| const chatPath = this.path(SiliconFlow.ChatPath); | |
| const chatPayload = { | |
| method: "POST", | |
| body: JSON.stringify(requestPayload), | |
| signal: controller.signal, | |
| headers: getHeaders(), | |
| }; | |
| // console.log(chatPayload); | |
| // Use extended timeout for thinking models as they typically require more processing time | |
| const requestTimeoutId = setTimeout( | |
| () => controller.abort(), | |
| getTimeoutMSByModel(options.config.model), | |
| ); | |
| if (shouldStream) { | |
| const [tools, funcs] = usePluginStore | |
| .getState() | |
| .getAsTools( | |
| useChatStore.getState().currentSession().mask?.plugin || [], | |
| ); | |
| return streamWithThink( | |
| chatPath, | |
| requestPayload, | |
| getHeaders(), | |
| tools as any, | |
| funcs, | |
| controller, | |
| // parseSSE | |
| (text: string, runTools: ChatMessageTool[]) => { | |
| // console.log("parseSSE", text, runTools); | |
| const json = JSON.parse(text); | |
| const choices = json.choices as Array<{ | |
| delta: { | |
| content: string | null; | |
| tool_calls: ChatMessageTool[]; | |
| reasoning_content: string | null; | |
| }; | |
| }>; | |
| const tool_calls = choices[0]?.delta?.tool_calls; | |
| if (tool_calls?.length > 0) { | |
| const index = tool_calls[0]?.index; | |
| const id = tool_calls[0]?.id; | |
| const args = tool_calls[0]?.function?.arguments; | |
| if (id) { | |
| runTools.push({ | |
| id, | |
| type: tool_calls[0]?.type, | |
| function: { | |
| name: tool_calls[0]?.function?.name as string, | |
| arguments: args, | |
| }, | |
| }); | |
| } else { | |
| // @ts-ignore | |
| runTools[index]["function"]["arguments"] += args; | |
| } | |
| } | |
| const reasoning = choices[0]?.delta?.reasoning_content; | |
| const content = choices[0]?.delta?.content; | |
| // Skip if both content and reasoning_content are empty or null | |
| if ( | |
| (!reasoning || reasoning.length === 0) && | |
| (!content || content.length === 0) | |
| ) { | |
| return { | |
| isThinking: false, | |
| content: "", | |
| }; | |
| } | |
| if (reasoning && reasoning.length > 0) { | |
| return { | |
| isThinking: true, | |
| content: reasoning, | |
| }; | |
| } else if (content && content.length > 0) { | |
| return { | |
| isThinking: false, | |
| content: content, | |
| }; | |
| } | |
| return { | |
| isThinking: false, | |
| content: "", | |
| }; | |
| }, | |
| // processToolMessage, include tool_calls message and tool call results | |
| ( | |
| requestPayload: RequestPayload, | |
| toolCallMessage: any, | |
| toolCallResult: any[], | |
| ) => { | |
| // @ts-ignore | |
| requestPayload?.messages?.splice( | |
| // @ts-ignore | |
| requestPayload?.messages?.length, | |
| 0, | |
| toolCallMessage, | |
| ...toolCallResult, | |
| ); | |
| }, | |
| options, | |
| ); | |
| } else { | |
| const res = await fetch(chatPath, chatPayload); | |
| clearTimeout(requestTimeoutId); | |
| const resJson = await res.json(); | |
| const message = this.extractMessage(resJson); | |
| options.onFinish(message, res); | |
| } | |
| } catch (e) { | |
| console.log("[Request] failed to make a chat request", e); | |
| options.onError?.(e as Error); | |
| } | |
| } | |
| async usage() { | |
| return { | |
| used: 0, | |
| total: 0, | |
| }; | |
| } | |
| async models(): Promise<LLMModel[]> { | |
| if (this.disableListModels) { | |
| return DEFAULT_MODELS.slice(); | |
| } | |
| const res = await fetch(this.path(SiliconFlow.ListModelPath), { | |
| method: "GET", | |
| headers: { | |
| ...getHeaders(), | |
| }, | |
| }); | |
| const resJson = (await res.json()) as SiliconFlowListModelResponse; | |
| const chatModels = resJson.data; | |
| console.log("[Models]", chatModels); | |
| if (!chatModels) { | |
| return []; | |
| } | |
| 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: "siliconflow", | |
| providerName: "SiliconFlow", | |
| providerType: "siliconflow", | |
| sorted: 14, | |
| }, | |
| })); | |
| } | |
| } | |