Commit
•
6463491
1
Parent(s):
9074714
the dynamic import is causing issue during build, but it's not an issue we can just put the var init inside the function
Browse files
src/app/queries/predict.ts
CHANGED
@@ -1,13 +1,9 @@
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"use server"
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import { LLMEngine } from "@/types"
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const llmEngine = `${process.env.LLM_ENGINE || ""}` as LLMEngine
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export const predict =
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if (llmEngine === "OPENAI") {
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return (await import("./predictWithOpenAI")).predictWithOpenAI
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} else {
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return (await import("./predictWithHuggingFace")).predictWithHuggingFace
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}
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}
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"use server"
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import { LLMEngine } from "@/types"
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import { predict as predictWithHuggingFace } from "./predictWithHuggingFace"
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import { predict as predictWithOpenAI } from "./predictWithOpenAI"
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const llmEngine = `${process.env.LLM_ENGINE || ""}` as LLMEngine
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export const predict = llmEngine === "OPENAI" ? predictWithOpenAI : predictWithHuggingFace
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src/app/queries/predictWithHuggingFace.ts
CHANGED
@@ -3,45 +3,45 @@
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import { HfInference, HfInferenceEndpoint } from "@huggingface/inference"
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import { LLMEngine } from "@/types"
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const llmEngine = `${process.env.LLM_ENGINE || ""}` as LLMEngine
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const inferenceEndpoint = `${process.env.LLM_HF_INFERENCE_ENDPOINT_URL || ""}`
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const inferenceModel = `${process.env.LLM_HF_INFERENCE_API_MODEL || ""}`
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let hfie: HfInferenceEndpoint = hf
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switch (llmEngine) {
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console.error(error)
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throw new Error(error)
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default:
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const error = "Please check your Hugging Face Inference API or Inference Endpoint settings"
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console.error(error)
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throw new Error(error)
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}
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const api = llmEngine === "INFERENCE_ENDPOINT" ? hfie : hf
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export async function predictWithHuggingFace(inputs: string) {
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let instructions = ""
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try {
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for await (const output of api.textGenerationStream({
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import { HfInference, HfInferenceEndpoint } from "@huggingface/inference"
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import { LLMEngine } from "@/types"
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export async function predict(inputs: string): Promise<string> {
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const hf = new HfInference(process.env.AUTH_HF_API_TOKEN)
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const llmEngine = `${process.env.LLM_ENGINE || ""}` as LLMEngine
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const inferenceEndpoint = `${process.env.LLM_HF_INFERENCE_ENDPOINT_URL || ""}`
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const inferenceModel = `${process.env.LLM_HF_INFERENCE_API_MODEL || ""}`
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let hfie: HfInferenceEndpoint = hf
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switch (llmEngine) {
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case "INFERENCE_ENDPOINT":
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if (inferenceEndpoint) {
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console.log("Using a custom HF Inference Endpoint")
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hfie = hf.endpoint(inferenceEndpoint)
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} else {
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const error = "No Inference Endpoint URL defined"
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console.error(error)
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throw new Error(error)
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}
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break;
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case "INFERENCE_API":
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if (inferenceModel) {
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console.log("Using an HF Inference API Model")
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} else {
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const error = "No Inference API model defined"
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console.error(error)
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throw new Error(error)
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}
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break;
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default:
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const error = "Please check your Hugging Face Inference API or Inference Endpoint settings"
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console.error(error)
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throw new Error(error)
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}
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const api = llmEngine === "INFERENCE_ENDPOINT" ? hfie : hf
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let instructions = ""
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try {
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for await (const output of api.textGenerationStream({
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src/app/queries/predictWithOpenAI.ts
CHANGED
@@ -3,9 +3,8 @@
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import type { ChatCompletionMessage } from "openai/resources/chat"
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import OpenAI from "openai"
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export async function predictWithOpenAI(inputs: string) {
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const openaiApiBaseUrl = `${process.env.LLM_OPENAI_API_BASE_URL || "https://api.openai.com/v1"}`
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const openaiApiModel = `${process.env.LLM_OPENAI_API_MODEL || "gpt-3.5-turbo"}`
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@@ -26,8 +25,9 @@ export async function predictWithOpenAI(inputs: string) {
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temperature: 0.8
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})
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return res.choices[0].message.content
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} catch (err) {
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console.error(`error during generation: ${err}`)
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}
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}
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import type { ChatCompletionMessage } from "openai/resources/chat"
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import OpenAI from "openai"
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export async function predict(inputs: string): Promise<string> {
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const openaiApiKey = `${process.env.AUTH_OPENAI_API_KEY || ""}`
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const openaiApiBaseUrl = `${process.env.LLM_OPENAI_API_BASE_URL || "https://api.openai.com/v1"}`
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const openaiApiModel = `${process.env.LLM_OPENAI_API_MODEL || "gpt-3.5-turbo"}`
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temperature: 0.8
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})
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return res.choices[0].message.content || ""
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} catch (err) {
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console.error(`error during generation: ${err}`)
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return ""
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}
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}
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