Attribution infrastructure for AI music

We build intrinsic, block-level attribution for AI-generated and hybrid music. So provenance is traceable, compensation is structured, and rights tracking is not guesswork

What we build

  • Intrinsic Attribution

    Intrinsic Attribution

    Attribution is embedded at generation time, at block level (melody, harmony, stems, motifs, structure).

  • ISBC

    ISBC

    International Standard Sound Block Code, a granular identifier for musical components

  • BlockDB

    BlockDB

    A rights-aware database for AI music that connects blocks, usage, and revenue logic

What this enables

  • Licensing and royalty flows

    Easier split calculation, derivative work classification, and audit trails for PROs, publishers and labels. Enables tracking how works influence outputs and making revenue flows auditable in real time, a capability the industry is increasingly demanding.

  • Metadata and work matching

    Bridges ISRC and ISWC, improves registration and reduces mismatch in existing systems. Supports enterprise-focused models that show that robust licensing frameworks are not a theoretical need, but a commercial necessity.

  • Copyright enforcement and AI detection (in development)

    Attribution is the backbone for copyright infringement detection, AI music detection, and bot stream analysis. These are active R&D and pilot topics that build on the same attribution layer.

Whitepaper

Whitepaper on attribution-driven remix licensing and usage-based economic models

Link

Contact

Jongpil Lee
Technology and research

Jongpil Lee

CEO


Virginie Berger
Partnerships and industry (US-Europe)

Virginie Berger

Chief Industry and Rights Officer


© 2025 Neutune. Building attribution, provenance and rights infrastructure for AI music.