import { HF_ACCESS_TOKEN, MODELS, OLD_MODELS } from "$env/static/private"; import type { ChatTemplateInput, WebSearchQueryTemplateInput, WebSearchSummaryTemplateInput, } from "$lib/types/Template"; import { compileTemplate } from "$lib/utils/template"; import { z } from "zod"; type Optional = Pick, K> & Omit; const sagemakerEndpoint = z.object({ host: z.literal("sagemaker"), url: z.string().url(), accessKey: z.string().min(1), secretKey: z.string().min(1), sessionToken: z.string().optional(), }); const tgiEndpoint = z.object({ host: z.union([z.literal("tgi"), z.undefined()]), url: z.string().url(), authorization: z.string().min(1).default(`Bearer ${HF_ACCESS_TOKEN}`), }); const localEndpoint = z.object({ host: z.union([z.literal("local"), z.undefined()]), model: z.string(), url: z.string().url(), authorization: z.string().min(1).default(`Bearer ${HF_ACCESS_TOKEN}`), }); const commonEndpoint = z.object({ weight: z.number().int().positive().default(1), }); const endpoint = z.lazy(() => z.union([ sagemakerEndpoint.merge(commonEndpoint), tgiEndpoint.merge(commonEndpoint), localEndpoint.merge(commonEndpoint), ]) ); const combinedEndpoint = endpoint.transform((data) => { if (data.host === "tgi" || data.host === undefined) { return tgiEndpoint.merge(commonEndpoint).parse(data); } else if (data.host === "sagemaker") { return sagemakerEndpoint.merge(commonEndpoint).parse(data); } else if (data.host === "local") { return localEndpoint.merge(commonEndpoint).parse(data); } else { throw new Error(`Invalid host: ${data.host}`); } }); const modelsRaw = z .array( z.object({ /** Used as an identifier in DB */ id: z.string().optional(), /** Used to link to the model page, and for inference */ name: z.string().min(1), displayName: z.string().min(1).optional(), description: z.string().min(1).optional(), is_local: z.boolean().optional(), is_code: z.boolean().optional(), is_phi: z.boolean().optional(), server_addr: z.string().min(1).optional(), type: z.string().min(1), websiteUrl: z.string().url().optional(), modelUrl: z.string().url().optional(), datasetName: z.string().min(1).optional(), datasetUrl: z.string().url().optional(), userMessageToken: z.string().default(""), userMessageEndToken: z.string().default(""), assistantMessageToken: z.string().default(""), assistantMessageEndToken: z.string().default(""), messageEndToken: z.string().default(""), preprompt: z.string().default(""), prepromptUrl: z.string().url().optional(), chatPromptTemplate: z .string() .default( "{{preprompt}}" + "{{#each messages}}" + "{{#ifUser}}{{@root.userMessageToken}}{{content}}{{@root.userMessageEndToken}}{{/ifUser}}" + "{{#ifAssistant}}{{@root.assistantMessageToken}}{{content}}{{@root.assistantMessageEndToken}}{{/ifAssistant}}" + "{{/each}}" ), webSearchSummaryPromptTemplate: z .string() .default( "{{userMessageToken}}{{answer}}{{userMessageEndToken}}" + "{{userMessageToken}}" + "The text above should be summarized to best answer the query: {{query}}." + "{{userMessageEndToken}}" + "{{assistantMessageToken}}Summary: " ), webSearchQueryPromptTemplate: z .string() .default( "{{userMessageToken}}" + "The following messages were written by a user, trying to answer a question." + "{{userMessageEndToken}}" + "{{#each messages}}" + "{{#ifUser}}{{@root.userMessageToken}}{{content}}{{@root.userMessageEndToken}}{{/ifUser}}" + "{{/each}}" + "{{userMessageToken}}" + "What plain-text english sentence would you input into Google to answer the last question? Answer with a short (10 words max) simple sentence." + "{{userMessageEndToken}}" + "{{assistantMessageToken}}Query: " ), promptExamples: z .array( z.object({ title: z.string().min(1), prompt: z.string().min(1), }) ) .optional(), endpoints: z.array(combinedEndpoint).optional(), parameters: z .object({ temperature: z.number().min(0).max(1), truncate: z.number().int().positive(), max_new_tokens: z.number().int().positive(), stop: z.array(z.string()).optional(), }) .passthrough() .optional(), }) ) .parse(JSON.parse(MODELS)); export const models = await Promise.all( modelsRaw.map(async (m) => ({ ...m, userMessageEndToken: m?.userMessageEndToken || m?.messageEndToken, assistantMessageEndToken: m?.assistantMessageEndToken || m?.messageEndToken, chatPromptRender: compileTemplate(m.chatPromptTemplate, m), webSearchSummaryPromptRender: compileTemplate( m.webSearchSummaryPromptTemplate, m ), webSearchQueryPromptRender: compileTemplate( m.webSearchQueryPromptTemplate, m ), id: m.id || m.name, displayName: m.displayName || m.name, preprompt: m.prepromptUrl ? await fetch(m.prepromptUrl).then((r) => r.text()) : m.preprompt, })) ); // Models that have been deprecated export const oldModels = OLD_MODELS ? z .array( z.object({ id: z.string().optional(), name: z.string().min(1), displayName: z.string().min(1).optional(), }) ) .parse(JSON.parse(OLD_MODELS)) .map((m) => ({ ...m, id: m.id || m.name, displayName: m.displayName || m.name })) : []; export type BackendModel = Optional<(typeof models)[0], "preprompt">; export type Endpoint = z.infer; export const defaultModel = models[0]; export const validateModel = (_models: BackendModel[]) => { // Zod enum function requires 2 parameters return z.enum([_models[0].id, ..._models.slice(1).map((m) => m.id)]); };