Spaces:
Running
on
CPU Upgrade
Running
on
CPU Upgrade
| import { predict } from "./predict" | |
| import { Preset } from "../engine/presets" | |
| import { GeneratedPanel } from "@/types" | |
| import { cleanJson } from "@/lib/cleanJson" | |
| import { createZephyrPrompt } from "@/lib/createZephyrPrompt" | |
| import { dirtyGeneratedPanelCleaner } from "@/lib/dirtyGeneratedPanelCleaner" | |
| import { dirtyGeneratedPanelsParser } from "@/lib/dirtyGeneratedPanelsParser" | |
| export const predictNextPanels = async ({ | |
| preset, | |
| prompt = "", | |
| nbPanelsToGenerate = 2, | |
| nbTotalPanels = 8, | |
| existingPanels = [], | |
| }: { | |
| preset: Preset; | |
| prompt: string; | |
| nbPanelsToGenerate?: number; | |
| nbTotalPanels?: number; | |
| existingPanels: GeneratedPanel[]; | |
| }): Promise<GeneratedPanel[]> => { | |
| // console.log("predictNextPanels: ", { prompt, nbPanelsToGenerate }) | |
| // throw new Error("Planned maintenance") | |
| // In case you need to quickly debug the RENDERING engine you can uncomment this: | |
| // return mockGeneratedPanels | |
| const existingPanelsTemplate = existingPanels.length | |
| ? ` To help you, here are the previous panels and their captions (note: if you see an anomaly here eg. no caption or the same description repeated multiple times, do not hesitate to fix the story): ${JSON.stringify(existingPanels, null, 2)}` | |
| : '' | |
| const firstNextOrLast = | |
| existingPanels.length === 0 | |
| ? "first" | |
| : (nbTotalPanels - existingPanels.length) === nbTotalPanels | |
| ? "last" | |
| : "next" | |
| const query = createZephyrPrompt([ | |
| { | |
| role: "system", | |
| content: [ | |
| `You are a writer specialized in ${preset.llmPrompt}`, | |
| `Please write detailed drawing instructions and short (2-3 sentences long) speech captions for the ${firstNextOrLast} ${nbPanelsToGenerate} panels (out of ${nbTotalPanels} in total) of a new story, but keep it open-ended (it will be continued and expanded later). Please make sure each of those ${nbPanelsToGenerate} panels include info about character gender, age, origin, clothes, colors, location, lights, etc. Only generate those ${nbPanelsToGenerate} panels, but take into account the fact the panels are part of a longer story (${nbTotalPanels} panels long).`, | |
| `Give your response as a VALID JSON array like this: \`Array<{ panel: number; instructions: string; caption: string; }>\`.`, | |
| // `Give your response as Markdown bullet points.`, | |
| `Be brief in the instructions and narrative captions of those ${nbPanelsToGenerate} panels, don't add your own comments. The captions must be captivating, smart, entertaining. Be straight to the point, and never reply things like "Sure, I can.." etc. Reply using valid JSON!! Important: Write valid JSON!` | |
| ].filter(item => item).join("\n") | |
| }, | |
| { | |
| role: "user", | |
| content: `The story is about: ${prompt}.${existingPanelsTemplate}`, | |
| } | |
| ]) + "\n[{" | |
| let result = "" | |
| try { | |
| // console.log(`calling predict(${query}, ${nbTotalPanels})`) | |
| result = `${await predict(query, nbPanelsToGenerate) || ""}`.trim() | |
| console.log("LLM result (1st trial):", result) | |
| if (!result.length) { | |
| throw new Error("empty result on 1st trial!") | |
| } | |
| } catch (err) { | |
| // console.log(`prediction of the story failed, trying again..`) | |
| try { | |
| result = `${await predict(query + " \n ", nbPanelsToGenerate) || ""}`.trim() | |
| console.log("LLM result (2nd trial):", result) | |
| if (!result.length) { | |
| throw new Error("empty result on 2nd trial!") | |
| } | |
| } catch (err) { | |
| console.error(`prediction of the story failed twice π©`) | |
| throw new Error(`failed to generate the story twice π© ${err}`) | |
| } | |
| } | |
| // console.log("Raw response from LLM:", result) | |
| const tmp = cleanJson(result) | |
| let generatedPanels: GeneratedPanel[] = [] | |
| try { | |
| generatedPanels = dirtyGeneratedPanelsParser(tmp) | |
| } catch (err) { | |
| // console.log(`failed to read LLM response: ${err}`) | |
| // console.log(`original response was:`, result) | |
| // in case of failure here, it might be because the LLM hallucinated a completely different response, | |
| // such as markdown. There is no real solution.. but we can try a fallback: | |
| generatedPanels = ( | |
| tmp.split("*") | |
| .map(item => item.trim()) | |
| .map((cap, i) => ({ | |
| panel: i, | |
| caption: cap, | |
| instructions: cap, | |
| })) | |
| ) | |
| } | |
| return generatedPanels.map(res => dirtyGeneratedPanelCleaner(res)) | |
| } |