Linear Todo Sync
Fetches assigned Linear tasks via GraphQL and generates a project-specific markdown todo list. Helps users track work items, sync priorities, and plan daily development tasks.
Discover reusable agent skills, browse implementation details, and find the right skill for your workflow.
260 skills found
Fetches assigned Linear tasks via GraphQL and generates a project-specific markdown todo list. Helps users track work items, sync priorities, and plan daily development tasks.
Seamlessly publish Markdown to Feishu Docs. Features automatic table conversion, permission management, and intelligent document batch writing.
Unified CLI tool to read, query, discover, and write AI agent conversations using the agents:// URI scheme across multiple coding agents and providers.
Diagnose and debug Agent-to-Agent (A2A) communication, including orchestrator routing, transport connectivity, agent status, and log analysis for multi-agent systems.
Monitor and manage margin-living strategy by tracking balances, interest costs, and coverage ratios. Provides automated scaling recommendations and safety alerts based on portfolio-to-margin thresholds.
Enhance workflow efficiency by performing manual context compaction at logical task boundaries instead of relying on unpredictable auto-compaction.
Activates Prometheus planning mode for structured requirement gathering, codebase research, and task planning within Claude Code.
Generates standardized metadata, including git/jj version info and timestamps, for research docs, handoffs, and implementation plans.
Manage Jira issues via Atlassian MCP. Search, create, update, transition status, and handle sprint tasks with auto-detected workspace configuration.
Autonomous, parallel-safe development workflow using kanban-md. Coordinates multi-agent and human efforts with atomic claims, worktrees, and explicit handoffs.
Diagnose dotCMS CI/CD GitHub Actions failures, including PR builds, merge queue issues, and nightly test reports.
Validate test suite effectiveness and uncover weak assertions by introducing code mutations and measuring kill rates. Essential for proving tests genuinely catch bugs rather than just satisfying coverage metrics.