| | import { env } from "$env/dynamic/private"; |
| | import type { ChatTemplateInput } from "$lib/types/Template"; |
| | import { compileTemplate } from "$lib/utils/template"; |
| | import { z } from "zod"; |
| | import endpoints, { endpointSchema, type Endpoint } from "./endpoints/endpoints"; |
| | import endpointTgi from "./endpoints/tgi/endpointTgi"; |
| | import { sum } from "$lib/utils/sum"; |
| | import { embeddingModels, validateEmbeddingModelByName } from "./embeddingModels"; |
| |
|
| | import type { PreTrainedTokenizer } from "@xenova/transformers"; |
| |
|
| | import JSON5 from "json5"; |
| | import { getTokenizer } from "$lib/utils/getTokenizer"; |
| | import { logger } from "$lib/server/logger"; |
| |
|
| | type Optional<T, K extends keyof T> = Pick<Partial<T>, K> & Omit<T, K>; |
| |
|
| | const modelConfig = z.object({ |
| | |
| | id: z.string().optional(), |
| | |
| | name: z.string().default(""), |
| | displayName: z.string().min(1).optional(), |
| | description: z.string().min(1).optional(), |
| | logoUrl: z.string().url().optional(), |
| | websiteUrl: z.string().url().optional(), |
| | modelUrl: z.string().url().optional(), |
| | tokenizer: z |
| | .union([ |
| | z.string(), |
| | z.object({ |
| | tokenizerUrl: z.string().url(), |
| | tokenizerConfigUrl: z.string().url(), |
| | }), |
| | ]) |
| | .optional(), |
| | datasetName: z.string().min(1).optional(), |
| | datasetUrl: z.string().url().optional(), |
| | preprompt: z.string().default(""), |
| | prepromptUrl: z.string().url().optional(), |
| | chatPromptTemplate: z.string().optional(), |
| | promptExamples: z |
| | .array( |
| | z.object({ |
| | title: z.string().min(1), |
| | prompt: z.string().min(1), |
| | }) |
| | ) |
| | .optional(), |
| | endpoints: z.array(endpointSchema).optional(), |
| | parameters: z |
| | .object({ |
| | temperature: z.number().min(0).max(1).optional(), |
| | truncate: z.number().int().positive().optional(), |
| | max_new_tokens: z.number().int().positive().optional(), |
| | stop: z.array(z.string()).optional(), |
| | top_p: z.number().positive().optional(), |
| | top_k: z.number().positive().optional(), |
| | repetition_penalty: z.number().min(-2).max(2).optional(), |
| | }) |
| | .passthrough() |
| | .optional(), |
| | multimodal: z.boolean().default(false), |
| | unlisted: z.boolean().default(false), |
| | embeddingModel: validateEmbeddingModelByName(embeddingModels).optional(), |
| | }); |
| |
|
| | const modelsRaw = z.array(modelConfig).parse(JSON5.parse(env.MODELS)); |
| |
|
| | async function getChatPromptRender( |
| | m: z.infer<typeof modelConfig> |
| | ): Promise<ReturnType<typeof compileTemplate<ChatTemplateInput>>> { |
| | if (m.chatPromptTemplate) { |
| | return compileTemplate<ChatTemplateInput>(m.chatPromptTemplate, m); |
| | } |
| | let tokenizer: PreTrainedTokenizer; |
| |
|
| | if (!m.tokenizer) { |
| | return compileTemplate<ChatTemplateInput>( |
| | "{{#if @root.preprompt}}<|im_start|>system\n{{@root.preprompt}}<|im_end|>\n{{/if}}{{#each messages}}{{#ifUser}}<|im_start|>user\n{{content}}<|im_end|>\n<|im_start|>assistant\n{{/ifUser}}{{#ifAssistant}}{{content}}<|im_end|>\n{{/ifAssistant}}{{/each}}", |
| | m |
| | ); |
| | } |
| |
|
| | try { |
| | tokenizer = await getTokenizer(m.tokenizer); |
| | } catch (e) { |
| | logger.error( |
| | "Failed to load tokenizer for model " + |
| | m.name + |
| | " consider setting chatPromptTemplate manually or making sure the model is available on the hub. Error: " + |
| | (e as Error).message |
| | ); |
| | process.exit(); |
| | } |
| |
|
| | const renderTemplate = ({ messages, preprompt }: ChatTemplateInput) => { |
| | let formattedMessages: { role: string; content: string }[] = messages.map((message) => ({ |
| | content: message.content, |
| | role: message.from, |
| | })); |
| |
|
| | if (preprompt) { |
| | formattedMessages = [ |
| | { |
| | role: "system", |
| | content: preprompt, |
| | }, |
| | ...formattedMessages, |
| | ]; |
| | } |
| |
|
| | const output = tokenizer.apply_chat_template(formattedMessages, { |
| | tokenize: false, |
| | add_generation_prompt: true, |
| | }); |
| |
|
| | if (typeof output !== "string") { |
| | throw new Error("Failed to apply chat template, the output is not a string"); |
| | } |
| |
|
| | return output; |
| | }; |
| |
|
| | return renderTemplate; |
| | } |
| |
|
| | const processModel = async (m: z.infer<typeof modelConfig>) => ({ |
| | ...m, |
| | chatPromptRender: await getChatPromptRender(m), |
| | id: m.id || m.name, |
| | displayName: m.displayName || m.name, |
| | preprompt: m.prepromptUrl ? await fetch(m.prepromptUrl).then((r) => r.text()) : m.preprompt, |
| | parameters: { ...m.parameters, stop_sequences: m.parameters?.stop }, |
| | }); |
| |
|
| | const addEndpoint = (m: Awaited<ReturnType<typeof processModel>>) => ({ |
| | ...m, |
| | getEndpoint: async (): Promise<Endpoint> => { |
| | if (!m.endpoints) { |
| | return endpointTgi({ |
| | type: "tgi", |
| | url: `${env.HF_API_ROOT}/${m.name}`, |
| | accessToken: env.HF_TOKEN ?? env.HF_ACCESS_TOKEN, |
| | weight: 1, |
| | model: m, |
| | }); |
| | } |
| | const totalWeight = sum(m.endpoints.map((e) => e.weight)); |
| |
|
| | let random = Math.random() * totalWeight; |
| |
|
| | for (const endpoint of m.endpoints) { |
| | if (random < endpoint.weight) { |
| | const args = { ...endpoint, model: m }; |
| |
|
| | switch (args.type) { |
| | case "tgi": |
| | return endpoints.tgi(args); |
| | case "anthropic": |
| | return endpoints.anthropic(args); |
| | case "aws": |
| | return await endpoints.aws(args); |
| | case "openai": |
| | return await endpoints.openai(args); |
| | case "llamacpp": |
| | return endpoints.llamacpp(args); |
| | case "ollama": |
| | return endpoints.ollama(args); |
| | case "vertex": |
| | return await endpoints.vertex(args); |
| | case "cloudflare": |
| | return await endpoints.cloudflare(args); |
| | case "cohere": |
| | return await endpoints.cohere(args); |
| | case "langserve": |
| | return await endpoints.langserve(args); |
| | default: |
| | |
| | return endpoints.tgi(args); |
| | } |
| | } |
| | random -= endpoint.weight; |
| | } |
| |
|
| | throw new Error(`Failed to select endpoint`); |
| | }, |
| | }); |
| |
|
| | export const models = await Promise.all(modelsRaw.map((e) => processModel(e).then(addEndpoint))); |
| |
|
| | export const defaultModel = models[0]; |
| |
|
| | |
| | export const oldModels = env.OLD_MODELS |
| | ? z |
| | .array( |
| | z.object({ |
| | id: z.string().optional(), |
| | name: z.string().min(1), |
| | displayName: z.string().min(1).optional(), |
| | }) |
| | ) |
| | .parse(JSON5.parse(env.OLD_MODELS)) |
| | .map((m) => ({ ...m, id: m.id || m.name, displayName: m.displayName || m.name })) |
| | : []; |
| |
|
| | export const validateModel = (_models: BackendModel[]) => { |
| | |
| | return z.enum([_models[0].id, ..._models.slice(1).map((m) => m.id)]); |
| | }; |
| |
|
| | |
| |
|
| | export const smallModel = env.TASK_MODEL |
| | ? (models.find((m) => m.name === env.TASK_MODEL) || |
| | (await processModel(modelConfig.parse(JSON5.parse(env.TASK_MODEL))).then((m) => |
| | addEndpoint(m) |
| | ))) ?? |
| | defaultModel |
| | : defaultModel; |
| |
|
| | export type BackendModel = Optional< |
| | typeof defaultModel, |
| | "preprompt" | "parameters" | "multimodal" | "unlisted" |
| | >; |
| |
|