

Made by artists in Japan
SOUNDRAW’s Approach to Ethical AI Music
SOUNDRAW’s Approach to Ethical AI Music
Artificial intelligence is changing how music is created, but how AI is built matters just as much as what it produces.
"When I started SOUNDRAW, I made one promise: build AI music generation the right way
Our model is trained 100% on music composed by our team. That means creators and businesses can use SOUNDRAW with full confidence, even in commercial environments."
Daigo Kusunoki, CEO and Founder

What Makes AI Music Ethical?
What “Ethical AI Music” Means to Us
Why Creators Use
SOUNDRAW
SOUNDRAW is an ethical AI music generator designed to respect artists, protect creativity, and provide copyright-safe music for real-world use. Our model is trained exclusively on music created by our in-house team across Japan, not scraped from the internet, and is built to support creators, not replace or exploit them.



This page explains exactly how SOUNDRAW approaches ethical AI music, training data, and creator rights.here is no single industry-wide definition of ethical AI music — but at SOUNDRAW, we believe ethical AI must meet three core principles:
This page explains exactly how SOUNDRAW approaches ethical AI music, training data, and creator rights.here is no single industry-wide definition of ethical AI music — but at SOUNDRAW, we believe ethical AI must meet three core principles:
100% In-House Training Data
100% In-House Training Data
AI music should not be trained on copyrighted works without consent.
SOUNDRAW is trained only on music composed by our in-house production team. We do not scrape songs from the internet, streaming platforms, or artist catalogs.
AI music should not be trained on copyrighted works without consent.
SOUNDRAW is trained only on music composed by our in-house production team. We do not scrape songs from the internet, streaming platforms, or artist catalogs.
Respect for Artists
Respect for Artists
Respect for Artists
Ethical AI should support musicians, not imitate or replace them.
SOUNDRAW does not clone artists, copy specific songs, or replicate identifiable styles of living musicians. The system generates original compositions based on musical structure and parameters — not imitation.
Ethical AI should support musicians, not imitate or replace them.
SOUNDRAW does not clone artists, copy specific songs, or replicate identifiable styles of living musicians. The system generates original compositions based on musical structure and parameters — not imitation.
Clear Rights for Creators
Clear Rights for Creators
Clear Rights for Creators
AI-generated music must be usable in the real world.
Music created with SOUNDRAW can be used for private and commercial projects, giving creators, businesses, and artists clarity and peace of mind.
AI-generated music must be usable in the real world.
Music created with SOUNDRAW can be used for private and commercial projects, giving creators, businesses, and artists clarity and peace of mind.
How SOUNDRAW Is Trained
How SOUNDRAW Generates Music Without Scraping Copyrighted Songs
How SOUNDRAW Generates Music Without Scraping Copyrighted Songs
How SOUNDRAW Generates Music Without Scraping Copyrighted Songs
Many AI music generators are trained on massive datasets that include copyrighted recordings. SOUNDRAW takes a different approach.
All training data is created internally by professional composers and producers
No third-party copyrighted catalogs are ingested
No artist voices, names, or musical fingerprints are used
Instead of learning by copying existing songs, SOUNDRAW learns musical structure, arrangement logic, and composition rules, allowing it to generate original music while avoiding style theft.
This approach makes SOUNDRAW suitable for:
Content creators
Brands and agencies
Game developers and app developers
Filmmakers
Artists releasing music commercially
Enterprises and retail stores
Many AI music generators are trained on massive datasets that include copyrighted recordings. SOUNDRAW takes a different approach.
All training data is created internally by professional composers and producers
No third-party copyrighted catalogs are ingested
No artist voices, names, or musical fingerprints are used
Instead of learning by copying existing songs, SOUNDRAW learns musical structure, arrangement logic, and composition rules, allowing it to generate original music while avoiding style theft.
This approach makes SOUNDRAW suitable for:
Content creators
Brands and agencies
Game developers and app developers
Filmmakers
Artists releasing music commercially
Enterprises and retail stores

Ownership & Commercial Use
Who Owns Music Created With SOUNDRAW?
Who Owns Music Created With SOUNDRAW?
Who Owns Music Created With SOUNDRAW?
As soon as you download it, it’s yours! Music generated with SOUNDRAW can be used for commercial projects, including monetized videos, games, apps, podcasts, and music releases.
Key points:
No copyright claims from SOUNDRAW on your projects
No hidden royalties
Clear licensing terms for real-world use
This is especially important in an era where unclear AI licensing can put creators at legal risk.
👉 Learn more on our Music Licensing page
As soon as you download it, it's yours! Music generated with SOUNDRAW can be used for commercial projects, including monetized videos, games, apps, podcasts, and music releases.
Key points:
No copyright claims from SOUNDRAW on your projects
No hidden royalties
Clear licensing terms for real-world use
This is especially important in an era where unclear AI licensing can put creators at legal risk.
👉 Learn more on our Music Licensing page

Ethical AI Beyond Training Data
Responsible AI Is an Ongoing Commitment
Responsible AI Is an Ongoing Commitment
Responsible AI Is an Ongoing Commitment
Ethical AI is not just about training data — it’s about long-term responsibility.
SOUNDRAW:
Actively participates in industry discussions around responsible AI
Supports initiatives focused on ethical AI in music such as AI for music
Builds AI tools meant to augment human creativity, not replace it
We believe AI should empower more people to create music — while respecting the work of musicians who came before.
Ethical AI is not just about training data — it’s about long-term responsibility.
SOUNDRAW:
Actively participates in industry discussions around responsible AI
Supports initiatives focused on ethical AI in music such as AI for music
Builds AI tools meant to augment human creativity, not replace it
We believe AI should empower more people to create music — while respecting the work of musicians who came before.

Why Ethical AI Music Matters
Why Creators and Companies Choose Ethical AI Music
Why Creators and Companies Choose Ethical AI Music
Why Creators and Companies Choose Ethical AI Music
Choosing an ethical AI music generator means:
Lower legal and copyright risk
Respect for artists and the music ecosystem
Sustainable creative technology
As AI-generated content becomes more common, ethical foundations will increasingly define which tools creators trust — and which ones they avoid.
Choosing an ethical AI music generator means:
Lower legal and copyright risk
Respect for artists and the music ecosystem
Sustainable creative technology
As AI-generated content becomes more common, ethical foundations will increasingly define which tools creators trust — and which ones they avoid.
SOUNDRAW at a Glance
SOUNDRAW’s Ethical AI Principles
SOUNDRAW’s Ethical AI Principles
SOUNDRAW’s Ethical AI Principles
✅ Trained exclusively on in-house music
✅ No scraped or unauthorized copyrighted data
✅ No artist cloning or song imitation
✅ Commercial-use friendly licensing
✅ Built to support creators, not exploit them
✅ Trained exclusively on in-house music
✅ No scraped or unauthorized copyrighted data
✅ No artist cloning or song imitation
✅ Commercial-use friendly licensing
✅ Built to support creators, not exploit them
Unleash your creativity
Start making music now!
Start making music now!
Start making music now!
More helpful info



Soundraw Inc.
AI Beats Generator
Tokyo, New York
Soundraw Inc.
AI Beats Generator
Tokyo, New York
Soundraw Inc.
AI Beats Generator
Tokyo, New York