Hermes-agent heartmula
Set up and run HeartMuLa, the open-source music generation model family (Suno-like). Generates full songs from lyrics + tags with multilingual support.
install
source · Clone the upstream repo
git clone https://github.com/NousResearch/hermes-agent
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/NousResearch/hermes-agent "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/media/heartmula" ~/.claude/skills/nousresearch-hermes-agent-heartmula-f5b5d9 && rm -rf "$T"
manifest:
skills/media/heartmula/SKILL.mdsource content
HeartMuLa - Open-Source Music Generation
Overview
HeartMuLa is a family of open-source music foundation models (Apache-2.0) that generates music conditioned on lyrics and tags. Comparable to Suno for open-source. Includes:
- HeartMuLa - Music language model (3B/7B) for generation from lyrics + tags
- HeartCodec - 12.5Hz music codec for high-fidelity audio reconstruction
- HeartTranscriptor - Whisper-based lyrics transcription
- HeartCLAP - Audio-text alignment model
When to Use
- User wants to generate music/songs from text descriptions
- User wants an open-source Suno alternative
- User wants local/offline music generation
- User asks about HeartMuLa, heartlib, or AI music generation
Hardware Requirements
- Minimum: 8GB VRAM with
(loads/unloads models sequentially)--lazy_load true - Recommended: 16GB+ VRAM for comfortable single-GPU usage
- Multi-GPU: Use
to split across GPUs--mula_device cuda:0 --codec_device cuda:1 - 3B model with lazy_load peaks at ~6.2GB VRAM
Installation Steps
1. Clone Repository
cd ~/ # or desired directory git clone https://github.com/HeartMuLa/heartlib.git cd heartlib
2. Create Virtual Environment (Python 3.10 required)
uv venv --python 3.10 .venv . .venv/bin/activate uv pip install -e .
3. Fix Dependency Compatibility Issues
IMPORTANT: As of Feb 2026, the pinned dependencies have conflicts with newer packages. Apply these fixes:
# Upgrade datasets (old version incompatible with current pyarrow) uv pip install --upgrade datasets # Upgrade transformers (needed for huggingface-hub 1.x compatibility) uv pip install --upgrade transformers
4. Patch Source Code (Required for transformers 5.x)
Patch 1 - RoPE cache fix in
src/heartlib/heartmula/modeling_heartmula.py:
In the
setup_caches method of the HeartMuLa class, add RoPE reinitialization after the reset_caches try/except block and before the with device: block:
# Re-initialize RoPE caches that were skipped during meta-device loading from torchtune.models.llama3_1._position_embeddings import Llama3ScaledRoPE for module in self.modules(): if isinstance(module, Llama3ScaledRoPE) and not module.is_cache_built: module.rope_init() module.to(device)
Why:
from_pretrained creates model on meta device first; Llama3ScaledRoPE.rope_init() skips cache building on meta tensors, then never rebuilds after weights are loaded to real device.
Patch 2 - HeartCodec loading fix in
src/heartlib/pipelines/music_generation.py:
Add
ignore_mismatched_sizes=True to ALL HeartCodec.from_pretrained() calls (there are 2: the eager load in __init__ and the lazy load in the codec property).
Why: VQ codebook
initted buffers have shape [1] in checkpoint vs [] in model. Same data, just scalar vs 0-d tensor. Safe to ignore.
5. Download Model Checkpoints
cd heartlib # project root hf download --local-dir './ckpt' 'HeartMuLa/HeartMuLaGen' hf download --local-dir './ckpt/HeartMuLa-oss-3B' 'HeartMuLa/HeartMuLa-oss-3B-happy-new-year' hf download --local-dir './ckpt/HeartCodec-oss' 'HeartMuLa/HeartCodec-oss-20260123'
All 3 can be downloaded in parallel. Total size is several GB.
GPU / CUDA
HeartMuLa uses CUDA by default (
--mula_device cuda --codec_device cuda). No extra setup needed if the user has an NVIDIA GPU with PyTorch CUDA support installed.
- The installed
includes CUDA 12.1 support out of the boxtorch==2.4.1
may report versiontorchtune
— this is just package metadata, it still uses CUDA via PyTorch0.4.0+cpu- To verify GPU is being used, look for "CUDA memory" lines in the output (e.g. "CUDA memory before unloading: 6.20 GB")
- No GPU? You can run on CPU with
, but expect generation to be extremely slow (potentially 30-60+ minutes for a single song vs ~4 minutes on GPU). CPU mode also requires significant RAM (~12GB+ free). If the user has no NVIDIA GPU, recommend using a cloud GPU service (Google Colab free tier with T4, Lambda Labs, etc.) or the online demo at https://heartmula.github.io/ instead.--mula_device cpu --codec_device cpu
Usage
Basic Generation
cd heartlib . .venv/bin/activate python ./examples/run_music_generation.py \ --model_path=./ckpt \ --version="3B" \ --lyrics="./assets/lyrics.txt" \ --tags="./assets/tags.txt" \ --save_path="./assets/output.mp3" \ --lazy_load true
Input Formatting
Tags (comma-separated, no spaces):
piano,happy,wedding,synthesizer,romantic
or
rock,energetic,guitar,drums,male-vocal
Lyrics (use bracketed structural tags):
[Intro] [Verse] Your lyrics here... [Chorus] Chorus lyrics... [Bridge] Bridge lyrics... [Outro]
Key Parameters
| Parameter | Default | Description |
|---|---|---|
| 240000 | Max length in ms (240s = 4 min) |
| 50 | Top-k sampling |
| 1.0 | Sampling temperature |
| 1.5 | Classifier-free guidance scale |
| false | Load/unload models on demand (saves VRAM) |
| bfloat16 | Dtype for HeartMuLa (bf16 recommended) |
| float32 | Dtype for HeartCodec (fp32 recommended for quality) |
Performance
- RTF (Real-Time Factor) ≈ 1.0 — a 4-minute song takes ~4 minutes to generate
- Output: MP3, 48kHz stereo, 128kbps
Pitfalls
- Do NOT use bf16 for HeartCodec — degrades audio quality. Use fp32 (default).
- Tags may be ignored — known issue (#90). Lyrics tend to dominate; experiment with tag ordering.
- Triton not available on macOS — Linux/CUDA only for GPU acceleration.
- RTX 5080 incompatibility reported in upstream issues.
- The dependency pin conflicts require the manual upgrades and patches described above.
Links
- Repo: https://github.com/HeartMuLa/heartlib
- Models: https://huggingface.co/HeartMuLa
- Paper: https://arxiv.org/abs/2601.10547
- License: Apache-2.0