| import { |
| VertexAI, |
| HarmCategory, |
| HarmBlockThreshold, |
| type Content, |
| type TextPart, |
| } from "@google-cloud/vertexai"; |
| import type { Endpoint, TextGenerationStreamOutputWithToolsAndWebSources } from "../endpoints"; |
| import { z } from "zod"; |
| import type { Message } from "$lib/types/Message"; |
| import { createImageProcessorOptionsValidator, makeImageProcessor } from "../images"; |
| import { createDocumentProcessorOptionsValidator, makeDocumentProcessor } from "../document"; |
|
|
| export const endpointVertexParametersSchema = z.object({ |
| weight: z.number().int().positive().default(1), |
| model: z.any(), |
| type: z.literal("vertex"), |
| location: z.string().default("europe-west1"), |
| extraBody: z.object({ model_version: z.string() }).optional(), |
| project: z.string(), |
| apiEndpoint: z.string().optional(), |
| safetyThreshold: z |
| .enum([ |
| HarmBlockThreshold.HARM_BLOCK_THRESHOLD_UNSPECIFIED, |
| HarmBlockThreshold.BLOCK_LOW_AND_ABOVE, |
| HarmBlockThreshold.BLOCK_MEDIUM_AND_ABOVE, |
| HarmBlockThreshold.BLOCK_NONE, |
| HarmBlockThreshold.BLOCK_ONLY_HIGH, |
| ]) |
| .optional(), |
| tools: z.array(z.any()).optional(), |
| multimodal: z |
| .object({ |
| image: createImageProcessorOptionsValidator({ |
| supportedMimeTypes: [ |
| "image/png", |
| "image/jpeg", |
| "image/webp", |
| "image/avif", |
| "image/tiff", |
| "image/gif", |
| ], |
| preferredMimeType: "image/webp", |
| maxSizeInMB: 20, |
| maxWidth: 4096, |
| maxHeight: 4096, |
| }), |
| document: createDocumentProcessorOptionsValidator({ |
| supportedMimeTypes: ["application/pdf", "text/plain"], |
| maxSizeInMB: 20, |
| }), |
| }) |
| .default({}), |
| }); |
|
|
| export function endpointVertex(input: z.input<typeof endpointVertexParametersSchema>): Endpoint { |
| const { project, location, model, apiEndpoint, safetyThreshold, tools, multimodal, extraBody } = |
| endpointVertexParametersSchema.parse(input); |
|
|
| const vertex_ai = new VertexAI({ |
| project, |
| location, |
| apiEndpoint, |
| }); |
|
|
| return async ({ messages, preprompt, generateSettings }) => { |
| const parameters = { ...model.parameters, ...generateSettings }; |
|
|
| const hasFiles = messages.some((message) => message.files && message.files.length > 0); |
|
|
| const generativeModel = vertex_ai.getGenerativeModel({ |
| model: extraBody?.model_version ?? model.id ?? model.name, |
| safetySettings: safetyThreshold |
| ? [ |
| { |
| category: HarmCategory.HARM_CATEGORY_DANGEROUS_CONTENT, |
| threshold: safetyThreshold, |
| }, |
| { |
| category: HarmCategory.HARM_CATEGORY_HARASSMENT, |
| threshold: safetyThreshold, |
| }, |
| { |
| category: HarmCategory.HARM_CATEGORY_HATE_SPEECH, |
| threshold: safetyThreshold, |
| }, |
| { |
| category: HarmCategory.HARM_CATEGORY_SEXUALLY_EXPLICIT, |
| threshold: safetyThreshold, |
| }, |
| { |
| category: HarmCategory.HARM_CATEGORY_UNSPECIFIED, |
| threshold: safetyThreshold, |
| }, |
| ] |
| : undefined, |
| generationConfig: { |
| maxOutputTokens: parameters?.max_new_tokens ?? 4096, |
| stopSequences: parameters?.stop, |
| temperature: parameters?.temperature ?? 1, |
| }, |
| |
| tools: !hasFiles ? tools : undefined, |
| }); |
|
|
| |
| let systemMessage = preprompt; |
| if (messages[0].from === "system") { |
| systemMessage = messages[0].content; |
| messages.shift(); |
| } |
|
|
| const vertexMessages = await Promise.all( |
| messages.map(async ({ from, content, files }: Omit<Message, "id">): Promise<Content> => { |
| const imageProcessor = makeImageProcessor(multimodal.image); |
| const documentProcessor = makeDocumentProcessor(multimodal.document); |
|
|
| const processedFilesWithNull = |
| files && files.length > 0 |
| ? await Promise.all( |
| files.map(async (file) => { |
| if (file.mime.includes("image")) { |
| const { image, mime } = await imageProcessor(file); |
|
|
| return { file: image, mime }; |
| } else if (file.mime === "application/pdf" || file.mime === "text/plain") { |
| return documentProcessor(file); |
| } |
|
|
| return null; |
| }) |
| ) |
| : []; |
|
|
| const processedFiles = processedFilesWithNull.filter((file) => file !== null); |
|
|
| return { |
| role: from === "user" ? "user" : "model", |
| parts: [ |
| ...processedFiles.map((processedFile) => ({ |
| inlineData: { |
| data: processedFile.file.toString("base64"), |
| mimeType: processedFile.mime, |
| }, |
| })), |
| { |
| text: content, |
| }, |
| ], |
| }; |
| }) |
| ); |
|
|
| const result = await generativeModel.generateContentStream({ |
| contents: vertexMessages, |
| systemInstruction: systemMessage |
| ? { |
| role: "system", |
| parts: [ |
| { |
| text: systemMessage, |
| }, |
| ], |
| } |
| : undefined, |
| }); |
|
|
| let tokenId = 0; |
| return (async function* () { |
| let generatedText = ""; |
|
|
| const webSources = []; |
|
|
| for await (const data of result.stream) { |
| if (!data?.candidates?.length) break; |
|
|
| const candidate = data.candidates[0]; |
| if (!candidate.content?.parts?.length) continue; |
|
|
| const firstPart = candidate.content.parts.find((part) => "text" in part) as |
| | TextPart |
| | undefined; |
| if (!firstPart) continue; |
|
|
| const isLastChunk = !!candidate.finishReason; |
|
|
| const candidateWebSources = candidate.groundingMetadata?.groundingChunks |
| ?.map((chunk) => { |
| const uri = chunk.web?.uri ?? chunk.retrievedContext?.uri; |
| const title = chunk.web?.title ?? chunk.retrievedContext?.title; |
|
|
| if (!uri || !title) { |
| return null; |
| } |
|
|
| return { |
| uri, |
| title, |
| }; |
| }) |
| .filter((source) => source !== null); |
|
|
| if (candidateWebSources) { |
| webSources.push(...candidateWebSources); |
| } |
|
|
| const content = firstPart.text; |
| generatedText += content; |
| const output: TextGenerationStreamOutputWithToolsAndWebSources = { |
| token: { |
| id: tokenId++, |
| text: content, |
| logprob: 0, |
| special: isLastChunk, |
| }, |
| generated_text: isLastChunk ? generatedText : null, |
| details: null, |
| webSources, |
| }; |
| yield output; |
|
|
| if (isLastChunk) break; |
| } |
| })(); |
| }; |
| } |
| export default endpointVertex; |
|
|