Skyline Exceptions
by ProteoWizard
Use this skill when looking at exception reports from skyline.ms.
Skill Details
Repository Files
1 file in this skill directory
name: skyline-exceptions description: Use this skill when looking at exception reports from skyline.ms.
Skyline Exception Triage
When working with Skyline exception data from skyline.ms, consult these documentation files.
Core Documentation
- ai/docs/mcp/exceptions.md - Complete system documentation
- Architecture and components
- MCP tools reference
- Data schema
- Setup instructions
When to Read What
- Before querying exceptions: Read ai/docs/mcp/exceptions.md (MCP tools section)
- For daily triage: Read ai/docs/mcp/exceptions.md (Daily triage workflow)
- For setup/debugging: Read ai/docs/mcp/exceptions.md (Setup section)
- For code changes to MCP server: Read ai/mcp/LabKeyMcp/README.md
Quick Reference
Data location: skyline.ms → /home/issues/exceptions → announcement.Announcement
MCP tools available:
query_exceptions(days, max_rows)- Recent exceptionsget_exception_details(exception_id)- Full stack tracelist_schemas,list_queries,list_containers- Discoveryquery_table- Generic queries
Title format:
ExceptionType | FileName.cs:line N | Version | InstallIdSuffix
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