mirror of
https://gitlab.rlp.net/proj-wise2526-video2document/video2document.git
synced 2026-06-15 18:01:52 +02:00
431039d002
# Conflicts: # electron/main/script.js # main.js
271 lines
9.1 KiB
JavaScript
271 lines
9.1 KiB
JavaScript
// Loading required packages
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require("./requires.js")
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console.log(start);
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// Initialising map to be used to store the functionality later on for reloadability
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mapFunctions = new Map()
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// Loading the Function Map
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var path = `${mainDir}/services/modules`
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var folders = fs.readdirSync(path).filter(function (file) {
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return fs.statSync(path+'/'+file).isDirectory();
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});
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folders.forEach(element => {
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var commandFiles = fs.readdirSync(`${path}/${element}`).filter(file => file.endsWith('.js') && !file.startsWith("index"));
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for (const file of commandFiles) {
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delete require.cache[require.resolve(`${path}/${element}/${file}`)];
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const command = require(`${path}/${element}/${file}`);
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mapFunctions.set(command.name, command);
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}
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});
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// The startup information for the project, here you can add stuff that might be nice to see when the app starts
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mapFunctions.get("Startup_function").function()
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console.log("------------------------------------ Status ------------------------------------");
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console.log(__dirname);
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console.log(platform);
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console.log(`The Startup took ${new Date() - start}ms`)
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console.log(`${mapFunctions.size} Function modules loaded`);
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console.log("--------------------------------------------------------------------------------");
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// --------------------------------------------------------- CLI COMMANDS --------------------------------------------------------- //
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const rl = readline.createInterface({
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input: process.stdin,
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output: process.stdout
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});
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rl.on("line", data =>{
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const args = data.trim().split(" ");
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const command = args.shift().toLowerCase();
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mapFunctions.get("cliCommands").function(command, args)
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})
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// ----------------------------------------------------------- ELECTRON ----------------------------------------------------------- //
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let mainWindow;
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function createWindow() {
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mainWindow = new electron.BrowserWindow({
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width: 1200,
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height: 800,
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webPreferences: {
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nodeIntegration: false,
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contextIsolation: true,
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preload: `${mainDir}/electron/main/preload.js`
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}
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});
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mainWindow.loadFile('./electron/main/index.html');
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}
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electron.app.whenReady().then(createWindow);
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// electron.ipcMain.on("extract", (event, args) => {
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// mapFunctions.get("extraction-video-to-audio").function(args)
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// })
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// setTimeout(() => {
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// mainWindow.webContents.send("fuck", "worked uwu")
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// }, 5000);
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electron.ipcMain.handle('get-module-names', async () => {
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let module_array = {
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"ai_modules":[],
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"transcription_modules":[]
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}
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mapFunctions.forEach(e => {
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switch(e.type){
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case "llm":
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module_array.ai_modules.push({"name": e.name, "displayname": e.displayname})
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break;
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case "transcription":
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module_array.transcription_modules.push({"name": e.name, "displayname": e.displayname})
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break;
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}
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})
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// console.log(module_array);
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return module_array
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});
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// electron.ipcMain.on("get_modules", async (event, args) => {
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// let module_array = {
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// "ai_modules":[],
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// "transcription_modules":[]
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// }
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// mapFunctions.forEach(e => {
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// switch(e.type){
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// case "llm":
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// module_array.ai_modules.push({"name": e.name, "displayname": e.displayname})
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// break;
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// case "transcription":
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// module_array.transcription_modules.push({"name": e.name, "displayname": e.displayname})
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// break;
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// }
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// })
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// console.log(module_array);
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// mainWindow.webContents.send("modules", module_array)
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// })
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var globalArgs = {}
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var globalFinalHtmlPath = ""
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electron.ipcMain.on("file_submit", async (event, args) => {
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try {
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globalArgs = args
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let curstep = 0
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let totalsteps = 4
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const TEMPLATE_MAP = {
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"followup-report": "followup_report.txt",
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"agenda": "agenda.txt",
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"result-protocol": "result_protocol.txt",
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"sprint-planning": "sprint_planning_note.txt",
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"custom": "custom_document.txt"
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};
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const templateFile = TEMPLATE_MAP[args.document.type];
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if (!templateFile) {
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throw new Error("Unknown document type: " + args.document.type);
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}
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console.log(args);
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let audiopath = ""
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let transcriptpath = ""
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console.log("\n\n Running the Video to Audio Extractor");
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// This code handles the Video to Audio extraction module call
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await mapFunctions.get("module-handler").function(args.video.module, {inputVideoPath: args.video.inputVideoPath, outputType: mapFunctions.get(args.transcription.module).audioformat}).then(resp => {
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console.log(resp);
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audiopath = resp
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curstep++
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mainWindow.webContents.send("progress", {curstep:curstep, totalsteps:totalsteps})
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}).catch(err => {
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mainWindow.webContents.send("error", err)
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return
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})
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console.log("\n\n Running the Audio to Transcription module");
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// TODO implement transcription module
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// This code handles the Audio to Text transcription module call
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await mapFunctions.get("module-handler").function(args.transcription.module, audiopath).then(resp => {
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console.log(resp);
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transcriptpath = resp
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curstep++
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mainWindow.webContents.send("progress", {curstep:curstep, totalsteps:totalsteps})
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}).catch(err => {
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mainWindow.webContents.send("error", err)
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return
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})
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console.log("\n\n Running the Transcription Summarizer module");
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// This code summarises the transcript, so that it can be used by an llm
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// await mapFunctions.get("summarize-transcription").function('A:\\programing\\@projects\\video2document\\storage\\transcripts\\IMG_2978.json').then(resp => {
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await mapFunctions.get("summarize-transcription2").function(transcriptpath).then(resp => {
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console.log(resp);
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transcriptpath = resp
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curstep++
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mainWindow.webContents.send("progress", {curstep:curstep, totalsteps:totalsteps})
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}).catch(err => {
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mainWindow.webContents.send("error", err)
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return
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})
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console.log("\n\n Running the LLM module");
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// TODO implement documentation module
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// This code handles the Text to Document processing module call
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console.log(`\n\n Running the LLM for Document Style ${args.document.type}`);
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await mapFunctions.get("module-handler").function(args.document.module, { inputTranscriptPath: transcriptpath, documentTypePath: "./storage/documentType/" + templateFile, language: "en" }).then(resp => {
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console.log(resp);
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transcriptpath = resp
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curstep++
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mainWindow.webContents.send("progress", { curstep: curstep, totalsteps: totalsteps })
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}).catch(err => {
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mainWindow.webContents.send("error", err)
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return
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})
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// TODO actually implement this functionality
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// Module to get the first few lines for each speaker to send to the frontend
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// await mapFunctions.get("speaker-getter-idfk").function(transcriptpath).then(resp => {
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// console.log(resp);
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// transcriptpath = resp
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// curstep++
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// mainWindow.webContents.send("progress", {curstep:curstep, totalsteps:totalsteps})
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// // {
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// // speakerA: {source: "Pfad zur Audio File"},
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// // speakerB:.....
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// // }
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mainWindow.webContents.send("speakers", {speakerA:"pfad1", speakerB:"pfad2"})
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// }).catch(err => {
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// mainWindow.webContents.send("error", err)
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// return
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// })
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} catch (error) {
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console.log(error);
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}
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})
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electron.ipcMain.on("file_download", async() => {
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await mapFunctions.get("htmlDocumentConverter").convert({inputPath:globalFinalHtmlPath, format: globalArgs.document.outputType, showDialog: true});
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})
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let q =
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{
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video: {
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module: "String", // The name of the module, idk if we ever implement other extraction modules, the default one is extraction-video-to-audio
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inputVideoPath: "String", // See script.js on line 27 for an example of what this should look like
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outputType: "String" // The file format to be used for the audio output file, such as wav, mp3, flac and so on
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},
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transcription:{
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module: "String" // The module name of the transcription model you want to use
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},
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document:{
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module: "String", // The module name of the AI model you want to use to create the document
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styles: [ // An array of all the document styles/prompts you want to have the document be processed with
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{
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prompt: "String",
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}
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]
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}
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}
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let q1 = {
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"ai_modules": [
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{name:"abc", displayname:"ABC"},
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{name:"qeg", displayname:"aqghegahu"}
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],
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"transcription_modules": [
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{name:"abc", displayname:"ABC"},
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{name:"qeg", displayname:"aqghegahu"}
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]
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}
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