Published April 3, 2026 | Version v1

LabelBuddy: An Open Source Music and Audio Language Annotation Tagging Tool Using AI Assistance

  • 1. Orfium
  • 2. ROR icon University of Patras
  • 3. ROR icon Athens University of Economics and Business
  • 4. Omilia Conversational Intelligence

Description

The advancement of Machine learning (ML), Large Audio Language Models (LALMs), and autonomous AI agents in Music Information Retrieval (MIR) necessitates a shift from static tagging to rich, human-aligned representation learning. However, the scarcity of open-source infrastructure capable of capturing the subjective nuances of audio annotation remains a critical bottleneck. This paper introduces LabelBuddy, an open-source collaborative auto-tagging audio annotation tool designed to bridge the gap between human intent and machine understanding. Unlike static tools, it decouples the interface from inference via containerized backends, allowing users to plug in custom models for AI-assisted pre-annotation. We describe the system architecture, which supports multi-user consensus, containerized model isolation, and a roadmap for extending agents and LALMs. 

Files

Labelbuddy___NLP4MUSA__aixpert.pdf

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Additional details

Funding

European Commission
AIXPERT - An agentic, multi-layer, GenAI-powered backbone to make an AI system explainable, accountable, and transparent 101214389

Dates

Accepted
2026-04-03
Accepted at NLP4MusA 2026 (4th Workshop on NLP for Music and Audio)

Software

Repository URL
https://github.com/GiannisProkopiou/gsoc2022-Label-buddy
Programming language
Python
Development Status
Wip