nightingale-karaoke
ML-powered Karaoke app in Rust using Bevy, WhisperX, and Demucs for stem separation, lyrics transcription, and pitch scoring.
How do I install this agent skill?
npx skills add https://github.com/aradotso/trending-skills --skill nightingale-karaokeIs this agent skill safe to install?
- Gen Agent Trust Hubwarn
The skill instructs users to download and run software from an unverified GitHub repository and provides commands to bypass operating system security features like macOS quarantine and Windows PowerShell policy. It also automates the download of numerous external tools and machine learning models from various sources during its setup process.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
Nightingale Karaoke Skill
Skill by ara.so — Daily 2026 Skills collection.
Nightingale is a self-contained, ML-powered karaoke application written in Rust (Bevy engine). It scans a local music folder, separates vocals from instrumentals (UVR Karaoke model or Demucs), transcribes lyrics with word-level timestamps (WhisperX), and plays back with synchronized highlighting, real-time pitch scoring, player profiles, and GPU shader / video backgrounds. Everything — ffmpeg, Python, PyTorch, ML models — is bootstrapped automatically on first launch.
Installation
Pre-built Binary (Recommended)
Download the latest release from the Releases page for your platform and run it.
macOS only — remove quarantine after extracting:
xattr -cr Nightingale.app
Build from Source
Prerequisites:
- Rust 1.85+ (edition 2024)
- Linux additionally needs:
libasound2-dev libudev-dev libwayland-dev libxkbcommon-dev
git clone https://github.com/rzru/nightingale
cd nightingale
# Development build
cargo build --release
# Run directly
./target/release/nightingale
Release Packaging
# Linux / macOS
scripts/make-release.sh
# Windows (PowerShell)
powershell -ExecutionPolicy Bypass -File scripts/make-release.ps1
Outputs a .tar.gz (Linux/macOS) or .zip (Windows) ready for distribution.
First Launch / Bootstrap
On first run, Nightingale downloads and configures:
ffmpegbinaryuv(Python package manager)- Python 3.10 via uv
- PyTorch + WhisperX + audio-separator in a virtual environment
- UVR Karaoke ONNX model and WhisperX
large-v3model
This takes 2–10 minutes depending on network speed. A progress screen is shown in-app.
To force re-bootstrap at any time:
./nightingale --setup
Bootstrap completion is marked by ~/.nightingale/vendor/.ready.
CLI Flags
| Flag | Description |
|---|---|
--setup | Force re-run of the first-launch bootstrap (re-downloads vendor deps) |
Keyboard & Gamepad Controls
Navigation
| Action | Keyboard | Gamepad |
|---|---|---|
| Move | Arrow keys | D-pad / Left stick |
| Confirm | Enter | A (South) |
| Back | Escape | B (East) / Start |
| Switch panel | Tab | — |
| Search | Type to filter | — |
Playback
| Action | Keyboard | Gamepad |
|---|---|---|
| Pause / Resume | Space | Start |
| Exit to menu | Escape | B (East) |
| Toggle guide vocals | G | — |
| Guide volume up/down | + / - | — |
| Cycle background | T | — |
| Cycle video flavor | F | — |
| Toggle microphone | M | — |
| Next microphone | N | — |
| Toggle fullscreen | F11 | — |
Configuration
Main Config
Located at ~/.nightingale/config.json. Edit directly or via in-app settings.
{
"music_folder": "/home/user/Music",
"separator": "uvr",
"guide_vocal_volume": 0.3,
"background_theme": "plasma",
"video_flavor": "nature",
"default_profile": "Alice"
}
separator options: "uvr" (default, preserves backing vocals) | "demucs"
background_theme options: "plasma", "aurora", "waves", "nebula", "starfield", "video", "source_video"
video_flavor options: "nature", "underwater", "space", "city", "countryside"
Profiles
Located at ~/.nightingale/profiles.json:
{
"profiles": [
{
"name": "Alice",
"scores": {
"blake3_hash_of_song": {
"stars": 4,
"score": 87250,
"played_at": "2026-03-18T21:00:00Z"
}
}
}
]
}
Pixabay Video Backgrounds (Dev)
API key is embedded in release builds. For local development, create .env at project root:
# .env
PIXABAY_API_KEY=$PIXABAY_API_KEY
The release script (make-release.sh) sources .env automatically.
Data Storage Layout
~/.nightingale/
├── cache/ # Per-song stems, transcripts, lyrics (keyed by blake3 hash)
├── config.json # App settings
├── profiles.json # Player profiles and per-song scores
├── videos/ # Pre-downloaded Pixabay video backgrounds
├── sounds/ # Sound effects
├── vendor/
│ ├── ffmpeg # ffmpeg binary
│ ├── uv # uv binary
│ ├── python/ # Python 3.10
│ ├── venv/ # ML virtualenv (WhisperX, Demucs, audio-separator)
│ ├── analyzer/ # Python analyzer scripts
│ └── .ready # Bootstrap completion marker
└── models/
├── torch/ # Demucs model weights
├── huggingface/ # WhisperX large-v3 weights
└── audio_separator/ # UVR Karaoke ONNX model
Cache keys are blake3 hashes of the source file — re-analysis only triggers if the file changes or is manually invalidated.
Supported File Formats
Audio: .mp3, .flac, .ogg, .wav, .m4a, .aac, .wma
Video: .mp4, .mkv, .avi, .webm, .mov, .m4v
Video files: audio track is extracted, vocals separated, original video plays as background automatically.
Hardware Acceleration
PyTorch backend is auto-detected:
| Backend | Device | Notes |
|---|---|---|
| CUDA | NVIDIA GPU | Fastest; ~2–5 min/song |
| MPS | Apple Silicon | macOS; WhisperX alignment falls back to CPU |
| CPU | Any | Always works; ~10–20 min/song |
UVR Karaoke model uses ONNX Runtime with CUDA (NVIDIA) or CoreML (Apple Silicon) automatically.
Processing Pipeline
Audio/Video file
│
▼
UVR Karaoke (ONNX) or Demucs (PyTorch)
│ vocals.ogg + instrumental.ogg
▼
LRCLIB API ──▶ Synced lyrics fetch (if available)
│
▼
WhisperX large-v3 ──▶ Transcription + word-level timestamps
│
▼
Bevy App (Rust)
- Plays instrumental audio
- Synchronized word highlighting
- Real-time pitch detection & scoring
- GPU shader / video backgrounds
- Scoreboards per profile
Code Patterns
Adding a New Background Theme (Bevy System)
// In your Bevy plugin, register a new background variant
use bevy::prelude::*;
#[derive(Component)]
pub struct MyCustomBackground;
pub fn spawn_custom_background(mut commands: Commands) {
commands.spawn((
MyCustomBackground,
// ... your background components
));
}
pub struct CustomBackgroundPlugin;
impl Plugin for CustomBackgroundPlugin {
fn build(&self, app: &mut App) {
app.add_systems(OnEnter(AppState::Playing), spawn_custom_background);
}
}
Extending Config Deserialization
use serde::{Deserialize, Serialize};
#[derive(Debug, Clone, Serialize, Deserialize)]
pub struct NightingaleConfig {
pub music_folder: String,
#[serde(default = "default_separator")]
pub separator: StemSeparator,
#[serde(default = "default_guide_volume")]
pub guide_vocal_volume: f32,
}
#[derive(Debug, Clone, Serialize, Deserialize, Default)]
#[serde(rename_all = "lowercase")]
pub enum StemSeparator {
#[default]
Uvr,
Demucs,
}
fn default_guide_volume() -> f32 { 0.3 }
fn default_separator() -> StemSeparator { StemSeparator::Uvr }
// Load config
fn load_config() -> NightingaleConfig {
let path = dirs::home_dir()
.unwrap()
.join(".nightingale/config.json");
let raw = std::fs::read_to_string(&path).unwrap_or_default();
serde_json::from_str(&raw).unwrap_or_default()
}
Triggering Re-analysis Programmatically
use std::fs;
use std::path::PathBuf;
/// Remove cached stems/transcript for a song to force re-analysis
fn invalidate_song_cache(song_hash: &str) {
let cache_dir = dirs::home_dir()
.unwrap()
.join(".nightingale/cache")
.join(song_hash);
if cache_dir.exists() {
fs::remove_dir_all(&cache_dir)
.expect("Failed to remove cache directory");
println!("Cache invalidated for {}", song_hash);
}
}
Computing a Song's Blake3 Hash (for Cache Lookup)
use blake3::Hasher;
use std::fs::File;
use std::io::{BufReader, Read};
fn hash_file(path: &std::path::Path) -> String {
let file = File::open(path).expect("Cannot open file");
let mut reader = BufReader::new(file);
let mut hasher = Hasher::new();
let mut buf = [0u8; 65536];
loop {
let n = reader.read(&mut buf).unwrap();
if n == 0 { break; }
hasher.update(&buf[..n]);
}
hasher.finalize().to_hex().to_string()
}
Profile Score Update Pattern
use serde::{Deserialize, Serialize};
use std::collections::HashMap;
#[derive(Debug, Serialize, Deserialize)]
pub struct SongScore {
pub stars: u8,
pub score: u32,
pub played_at: String,
}
#[derive(Debug, Serialize, Deserialize)]
pub struct Profile {
pub name: String,
pub scores: HashMap<String, SongScore>, // key = blake3 hash
}
fn update_score(profile: &mut Profile, song_hash: &str, stars: u8, score: u32) {
profile.scores.insert(song_hash.to_string(), SongScore {
stars,
score,
played_at: chrono::Utc::now().to_rfc3339(),
});
}
Troubleshooting
Bootstrap Fails / Stuck on Setup Screen
# Force re-bootstrap
./nightingale --setup
# Or manually remove the vendor directory and restart
rm -rf ~/.nightingale/vendor
./nightingale
Song Analysis Hangs or Errors
# Check the analyzer venv is healthy
~/.nightingale/vendor/venv/bin/python -c "import whisperx; print('ok')"
# Re-bootstrap if broken
./nightingale --setup
macOS "App is damaged" Error
xattr -cr Nightingale.app
GPU Not Being Used
- NVIDIA: Ensure CUDA drivers are installed and
nvidia-smishows your GPU. - Apple Silicon: MPS is used automatically on macOS with Apple Silicon; WhisperX alignment falls back to CPU (normal behavior).
- Check
~/.nightingale/vendor/venv— if PyTorch installed the CPU-only build, re-bootstrap after installing CUDA drivers.
Cache Corruption / Wrong Lyrics
# Find the blake3 hash of your file (build a small tool or use b3sum)
b3sum /path/to/song.mp3
# Remove that song's cache
rm -rf ~/.nightingale/cache/<hash>
Then re-open the song in Nightingale to re-analyze.
Audio Playback Issues (Linux)
Ensure ALSA/PulseAudio/PipeWire is running. Install missing deps:
sudo apt install libasound2-dev libudev-dev libwayland-dev libxkbcommon-dev
Video Backgrounds Not Loading
Video backgrounds are pre-downloaded during setup via the Pixabay API. For development builds, ensure .env contains a valid PIXABAY_API_KEY. If videos are missing in a release build, run --setup to re-trigger the download.
Platform Targets
| Platform | Target Triple |
|---|---|
| Linux x86_64 | x86_64-unknown-linux-gnu |
| Linux aarch64 | aarch64-unknown-linux-gnu |
| macOS ARM | aarch64-apple-darwin |
| macOS Intel | x86_64-apple-darwin |
| Windows x86_64 | x86_64-pc-windows-msvc |
Cross-compile with:
rustup target add aarch64-unknown-linux-gnu
cargo build --release --target aarch64-unknown-linux-gnu
License
GPL-3.0-or-later. See LICENSE.
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/aradotso/trending-skills/nightingale-karaoke">View nightingale-karaoke on skillZs</a>