| import { z } from "zod"; |
| import type { EmbeddingEndpoint, Embedding } from "../embeddingEndpoints"; |
| import { chunk } from "$lib/utils/chunk"; |
| import { env } from "$env/dynamic/private"; |
|
|
| export const embeddingEndpointOpenAIParametersSchema = z.object({ |
| weight: z.number().int().positive().default(1), |
| model: z.any(), |
| type: z.literal("openai"), |
| url: z.string().url().default("https://api.openai.com/v1/embeddings"), |
| apiKey: z.string().default(env.OPENAI_API_KEY), |
| }); |
|
|
| export async function embeddingEndpointOpenAI( |
| input: z.input<typeof embeddingEndpointOpenAIParametersSchema> |
| ): Promise<EmbeddingEndpoint> { |
| const { url, model, apiKey } = embeddingEndpointOpenAIParametersSchema.parse(input); |
|
|
| const maxBatchSize = model.maxBatchSize || 100; |
|
|
| return async ({ inputs }) => { |
| const requestURL = new URL(url); |
|
|
| const batchesInputs = chunk(inputs, maxBatchSize); |
|
|
| const batchesResults = await Promise.all( |
| batchesInputs.map(async (batchInputs) => { |
| const response = await fetch(requestURL, { |
| method: "POST", |
| headers: { |
| Accept: "application/json", |
| "Content-Type": "application/json", |
| ...(apiKey ? { Authorization: `Bearer ${apiKey}` } : {}), |
| }, |
| body: JSON.stringify({ input: batchInputs, model: model.name }), |
| }); |
|
|
| const embeddings: Embedding[] = []; |
| const responseObject = await response.json(); |
| for (const embeddingObject of responseObject.data) { |
| embeddings.push(embeddingObject.embedding); |
| } |
| return embeddings; |
| }) |
| ); |
|
|
| const flatAllEmbeddings = batchesResults.flat(); |
|
|
| return flatAllEmbeddings; |
| }; |
| } |
|
|