Generate ambient music from text. Locally. No GPU required.
Project description
LatentScore
Generate ambient music from text. Locally. No GPU required. - Read more about how it works.
1. Try it now
Four ways:
- 🎧 Hear it now - latentscore.com/demo. Browser, no install.
- 🐳 Run the demo + JupyterLab locally -
docker composebuilds the full demo from source in an isolated environment — demo UI and a JupyterLab playground, no local Python needed. ~15 min first build. See Try the demo. - 🟧 Open in Colab - free CPU runtime, no local setup, no key required.
- 🛠 Build with it locally -
pip install latentscoreon macOS or Linux (Python 3.11/3.12). Secondary path — use Docker for the full demo. See Try the SDK.
import latentscore as ls
ls.render("morning coffee shop").play()
That's it. One line. You get audio playing on your speakers.
2. Try the demo
No install needed: open latentscore.com/demo in your browser.
Run it locally — tested on Linux, macOS, and Windows with Docker Desktop (WSL2 backend on Windows).
Build from source (~15 min first time, near-instant after):
docker compose -f demo/docker-compose.yml up --build
The first prompt after build takes ~30 seconds as model weights load; subsequent responses are near-instant.
Then open:
localhost:4242- demo UIlocalhost:8889- JupyterLab playground (SDK pre-installed)
See the demo documentation for architecture, dev setup, and troubleshooting.
3. Contents
- Try it now - four ways to get going (browser, Docker, Colab, pip)
- Try the demo - deeper Docker setup
- Try the SDK - Colab (recommended) or local install
- CLI -
latentscore doctor,download,demo - Quick start - Python in 5 lines
- Controlling the sound -
MusicConfigparameters - Read more - docs, FAQ, research pipeline, contributing
- Citation - SIGGRAPH Talks '26 BibTeX
- Documentation - streaming, live playlists, async, bring-your-own-LLM
- FAQ - common questions
4. Try the SDK
🐳 For the full demo, use Docker. The
pip installpath is for library/scripting use on macOS and Linux.🟧 Easiest SDK path: Open the Colab notebook — free CPU runtime, no install, no system deps to wrangle.
If you'd rather install locally, read on.
⚠️ Local pip installs may require system audio libraries depending on your OS. If you hit issues, use Docker or Colab instead — both include all dependencies.
4.1 Requirements
- OS — macOS or Linux. Windows: use Docker Desktop with the WSL2 backend for the demo. Native Windows pip is unsupported, and WSL2 pip is not part of the supported SDK path.
- Python 3.11 or 3.12 - local SDK installs require this range via package metadata. For other Python versions, use Docker or Colab.
4.2 Install
With venv (regular Python):
python3.12 -m venv .venv
source .venv/bin/activate
pip install latentscore
With conda:
conda create -n latentscore python=3.12 -y
conda activate latentscore
pip install latentscore
[!NOTE] Linux: smaller CPU-only install. PyTorch's default Linux wheel bundles ~5 GB of CUDA libraries. LatentScore is CPU-only, so you can skip them with PyTorch's CPU index:
pip install latentscore --extra-index-url https://download.pytorch.org/whl/cpumacOS is CPU-only already, so plain
pip installis fine there.
4.3 What you get
The default install gives you text prompts, full parameter control, and local playback. See the Quick start below.
Optional extras:
| Install | Adds |
|---|---|
pip install "latentscore[external]" |
bring-your-own hosted LLM via LiteLLM (Anthropic, Gemini, OpenAI, …) |
pip install "latentscore[heavy]" |
CLAP audio-based retrieval (fast_heavy model) |
🚧 pip install "latentscore[expressive]" |
local LLM inference. Extremely experimental, under testing. |
4.4 Verify your install
latentscore doctor --strict --offline
Exits non-zero with a clear hint if anything's broken. Add --json for machine-readable output.
5. CLI
⚠️ The CLI ships with the SDK install — same system-deps caveats as Try the SDK above. Skip the headache by running the Colab notebook instead; most of these CLI commands have equivalent Python calls (
ls.prefetch(...),ls.render(...)) you can run there.
# Verify your install
latentscore doctor # human-readable summary
latentscore doctor --strict --offline # nonzero exit if anything's broken
latentscore doctor --json # machine-readable output
# Pre-download model assets (otherwise the first render call appears to hang)
latentscore download fast # ~90 MB, MiniLM embedding model
latentscore download fast_heavy # ~1.8 GB, LAION-CLAP weights
# Render a sample clip
latentscore demo # play a short ambient clip
latentscore demo --duration 30 --output ambient.wav # 30 seconds, save to file
6. Quick start
🟧 Don't want to install? Try the same code in Colab — free CPU runtime, no install.
6.1 Render and play
import latentscore as ls
# Optional one-time setup: pre-download the embedding model (~90 MB) so
# the first render() call doesn't appear to hang. The download happens
# on the first render anyway; this just makes it explicit and visible.
ls.prefetch("fast")
audio = ls.render("morning coffee shop", duration=10.0)
audio.play() # plays on your speakers
audio.save("output.wav") # save to WAV
6.2 Different vibes
ls.render("morning coffee shop").play()
ls.render("thunderstorm on a tin roof").play()
ls.render("tension over a treasured object").play()
7. Controlling the sound
Beyond text prompts, you can drive synthesis directly:
import latentscore as ls
# Full control: build a MusicConfig with human-readable labels
config = ls.MusicConfig(
tempo="slow",
mode="dorian",
root="d",
bass="drone",
pad="ambient_drift",
melody="contemplative",
rhythm="minimal",
texture="shimmer",
echo="heavy",
density=3,
brightness="dark",
space="vast",
)
ls.render(config, duration=10.0).play()
# Or start from a vibe and slam knobs to opposites
ls.render(
"morning coffee shop",
update=ls.MusicConfigUpdate(
tempo="very_fast",
brightness="very_dark",
echo="infinite",
),
).play()
See the full documentation for the parameter reference, relative-step updates, streaming, live playlists, async API, and bring-your-own-LLM cookbook.
8. Read more
- Documentation - parameter reference, streaming, async API, bring-your-own-LLM
- FAQ - first-call hang, system deps, Windows, citation, …
- Retrieval map card - what powers the default
fastmodel: row schema, construction pipeline, models used, biases, license - Research pipeline - how the dataset was built
- Contributing - setup + style rules
- Demo - run the web demo locally
9. Citation
If you use LatentScore in your research, please cite the SIGGRAPH Talks '26 paper:
@inproceedings{gupta2026latentscore,
author = {Gupta, Prabal},
title = {LatentScore: Sketching Soundscapes with LLM-Distilled Retrieval for Procedural Synthesis},
booktitle = {SIGGRAPH Talks '26},
year = {2026},
publisher = {ACM},
doi = {10.1145/3799818.3812120}
}
10. License
LatentScore is released under the Apache License 2.0.
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