By jaaaackielai
Interactive brainstorming skills that guide collaborative idea exploration through structured dialogue — one question at a time, multiple approaches, incremental validation
Use when generating research hypotheses, exploring interdisciplinary connections, challenging scientific assumptions, overcoming creative blocks in research, or designing experiments before data collection. For software feature design or implementation planning, use software-brainstorming instead.
Use before implementing features, building components, or modifying code behavior. Explores software design requirements, architecture, and technical constraints. For research hypothesis generation or experimental design, use scientific-brainstorming instead.
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npx claudepluginhub jaaaackielai/deep-learning-claude-code --plugin brainstorming-skillsThe Answer Computer — reasoning tools for brainstorming, planning, architecture design, and deep thinking
This skill should be used when users need to generate ideas, explore creative solutions, or systematically brainstorm approaches to problems. Use when users request help with ideation, content planning, product features, marketing campaigns, strategic planning, creative writing, or any task requiring structured idea generation. The skill provides 30+ research-validated prompt patterns across 14 categories with exact templates, success metrics, and domain-specific applications.
Collaborative design dialogue - idea to approaches to design to plan
Cognitive brainstorming protocol for Claude Code. Structures thinking through GROUND (problem discovery) -> EXPLORE (divergent) -> DECIDE (convergent) -> STRESS (stress-test) -> SHIP (artifacts) phases. Includes domain skills for technical architecture and conceptual work.
Meta-cognition: refine input through brainstorming, refine output through challenge and condensed communication mode.
Focused AI agent skills: brainstorming, planning, research, orchestration, implementation, dreaming (conversation review & knowledge consolidation), git operations, Tilt Kubernetes development, TUI design, cross-model code review, and Python tooling (uv, ruff, ty, uv-build)