library/specializations/domains/social-sciences-humanities/arts-culture/music-album-creation/skills/style-specification/SKILL.md
Create ultra-detailed musical style specifications including genres, BPM, instrumentation, vocal direction, production aesthetics, and reference tracks for AI music generation
npx skillsauth add a5c-ai/babysitter style-specificationInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Create comprehensive musical style specifications optimized for AI music generation platforms like Suno and Udio.
This skill provides the framework for translating artistic vision into detailed technical specifications that AI music generators can interpret. It covers genre classification, tempo, instrumentation, vocal direction, production aesthetics, and reference track selection.
## Genre Classification
- **Primary Genre**: [Genre]
- **Secondary Genres**: [List]
- **Subgenres**: [Specific subgenres]
## Technical Specifications
- **BPM**: [Number or range]
- **Key**: [If relevant]
- **Time Signature**: [4/4, 3/4, etc.]
## Instrumentation
- **Drums**: [Detailed description]
- **Bass**: [Type and character]
- **Keys/Synths**: [Sounds and patches]
- **Guitars**: [Types and tones]
- **Additional**: [Other instruments]
## Vocal Direction
- **Style**: [Descriptors]
- **Register**: [Range]
- **Techniques**: [List]
- **Emotion**: [Quality]
- **Influences**: [Artists]
## Production Aesthetics
- **Era**: [Decade/period]
- **Mix**: [Character]
- **Effects**: [List]
- **Sound**: [Overall quality]
## Reference Tracks
1. "[Song]" by [Artist] - for [element]
2. "[Song]" by [Artist] - for [element]
3. "[Song]" by [Artist] - for [element]
## AI Platform Prompt
[Condensed single paragraph for Suno/Udio]
| Genre | Typical BPM | |-------|-------------| | Ballad | 60-80 | | R&B | 60-90 | | Hip-Hop | 80-115 | | Pop | 100-130 | | Rock | 110-140 | | House | 120-130 | | Techno | 130-150 | | Drum & Bass | 160-180 |
development
Model documentation skill for generating model cards following Google's model card framework.
development
MLflow integration skill for experiment tracking, model registry, and artifact management. Enables LLMs to log experiments, compare runs, manage model lifecycle, and retrieve artifacts through the MLflow API.
data-ai
LIME-based local explanation skill for individual predictions across tabular, text, and image data.
devops
Kubeflow Pipelines skill for ML workflow orchestration, component management, and Kubernetes-native ML.