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WeaveMuse: An Open Agentic System for Multimodal Music Understanding and Generation

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arxiv 2509.11183 v1 pith:LLRDPIWS submitted 2025-09-14 cs.SD eess.AS

WeaveMuse: An Open Agentic System for Multimodal Music Understanding and Generation

classification cs.SD eess.AS
keywords modelssystemtoolsacrossagentagenticaudioconstraints
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Agentic AI has been standardized in industry as a practical paradigm for coordinating specialized models and tools to solve complex multimodal tasks. In this work, we present WeaveMuse, a multi-agent system for music understanding, symbolic composition, and audio synthesis. Each specialist agent interprets user requests, derives machine-actionable requirements (modalities, formats, constraints), and validates its own outputs, while a manager agent selects and sequences tools, mediates user interaction, and maintains state across turns. The system is extendable and deployable either locally, using quantization and inference strategies to fit diverse hardware budgets, or via the HFApi to preserve free community access to open models. Beyond out-of-the-box use, the system emphasizes controllability and adaptation through constraint schemas, structured decoding, policy-based inference, and parameter-efficient adapters or distilled variants that tailor models to MIR tasks. A central design goal is to facilitate intermodal interaction across text, symbolic notation and visualization, and audio, enabling analysis-synthesis-render loops and addressing cross-format constraints. The framework aims to democratize, implement, and make accessible MIR tools by supporting interchangeable open-source models of various sizes, flexible memory management, and reproducible deployment paths.

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Cited by 1 Pith paper

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  1. MMGenre: Benchmarking Singing Voice Synthesis across Multiple Musical Genres

    cs.SD 2026-07 conditional novelty 6.0

    Current singing voice synthesis models fail to differentiate musical genres, defaulting to pop-like output regardless of input genre, unless given genre-specific fine-tuning data.