market-debrief-cn
A deep analysis tool for A-share markets generating interactive, FT-style HTML daily reports using multi-agent parallel architecture, AkShare data, and Tavily news.
Discover reusable agent skills, browse implementation details, and find the right skill for your workflow.
476 skills found
A deep analysis tool for A-share markets generating interactive, FT-style HTML daily reports using multi-agent parallel architecture, AkShare data, and Tavily news.
A structured file-based system for tracking todos, managing technical debt, and coordinating code review workflows directly within your repository.
Automate OpenAPI 3.0 specification creation, Apidog synchronization, and API documentation lifecycle management for Bun.js TypeScript backends.
Multi-perspective AI consultation for technical architecture, complex refactoring, and structured debugging.
Debugs deterministic Sui simtest failures using automated logging and the scientific method.
Maintain and synchronize Unified Impact Diagrams using the Diagram Driven Development (DDD) methodology to connect technical architecture with user value.
Captures session learnings into Reusable Intelligence Infrastructure (RII). Converts one-time bug fixes and pattern discoveries into permanent agent-executable knowledge to prevent recurrence and accelerate future development.
Build AI agents with tool calling and multi-step reasoning. Generate, manage, and orchestrate custom skill files for Claude Code, Cursor, Cline, and other AI assistants to standardize your development workflows.
Standardized review patterns, validation checklists, and quality benchmarks for PolicyEngine codebases.
Generate daily and weekly planning reports from backlog and carryover state, applying WIP limits and priority rules from BaseContext.yaml with automatic git commit/push.
Structured, template-driven workflow for end-to-end feature development including coding, automated testing, verification, and session-based improvement.
Analyze codebase statistics: LOC, language distribution, and code-to-comment ratios using pygount.