Diagnoses data pipeline performance issues using Monte Carlo observability across Airflow, dbt, and Databricks. Uses tiered investigation to find slow jobs, expensive queries, and root causes.
How this skill is triggered — by the user, by Claude, or both
Slash command
/agentic-awesome-skills:monte-carlo-performance-diagnosisThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
This skill helps diagnose data pipeline performance issues using Monte Carlo's cross-platform observability data. It works across Airflow, dbt, Databricks, and warehouse query engines to find bottlenecks, detect regressions, and identify root causes.
This skill helps diagnose data pipeline performance issues using Monte Carlo's cross-platform observability data. It works across Airflow, dbt, Databricks, and warehouse query engines to find bottlenecks, detect regressions, and identify root causes.
Monte Carlo tool routing (required): Always call Monte Carlo MCP tools through this plugin's bundled server, whose fully-qualified tool names are
mcp__plugin_mc-agent-toolkit_monte-carlo-mcp__<tool>(e.g.mcp__plugin_mc-agent-toolkit_monte-carlo-mcp__get_alerts). Bare tool names used in this skill (get_alerts,search,get_table, …) refer to that bundled server. If the session also has a separately-configuredmonte-carlo-mcpserver, do not route to it — it may point at a different endpoint or credentials.
Reference files live next to this skill file. Use the Read tool (not MCP resources) to access them:
references/investigation-tiers.md (relative to this file)references/query-analysis.md (relative to this file)Activate when the user:
Do not activate when the user is:
The following MCP tools must be available (connect to Monte Carlo's MCP server):
Discovery tools (Tier 1):
get_jobs_performance -- find slow/failing jobs across Airflow, dbt, Databricksget_top_slow_queries -- find slowest query groups by total runtimeBridge tool:
get_tables_for_job -- convert job MCONs to table MCONsDiagnosis tools (Tier 2):
get_tasks_performance -- drill into a job's individual tasksget_change_timeline -- unified timeline of query changes, volume shifts, Airflow/dbt failuresget_query_rca -- root cause analysis for failed/futile queriesget_query_latency_distribution -- latency trend over timeget_asset_lineage -- trace upstream/downstream impactSupporting tools:
get_warehouses -- list available warehousesDetermine what the user wants to investigate:
Call get_warehouses to list available warehouses. Match the user's context to a warehouse.
If you don't have specific MCONs to investigate, start with discovery:
Find slow jobs: Call get_jobs_performance with optional integration_type filter (AIRFLOW, DATABRICKS, DBT) if the user specifies a platform.
avgDuration, negative runDurationTrend7d, high failure ratesFind expensive queries: Call get_top_slow_queries with optional warehouse_id and query_type ("read" for SELECTs, "write" for INSERT/CREATE/MERGE).
Present the top findings to the user before drilling deeper. A typical investigation needs only 3-7 tool calls.
If both discovery tools return no results: Tell the user no performance issues were found in the current time window. Suggest broadening the scope (different warehouse, longer time range, or a different platform filter).
After Tier 1 identifies problematic jobs, convert to table MCONs:
Call get_tables_for_job(job_mcon=..., integration_type=...) using the integration_type from the job performance results.
This gives you the table MCONs needed for Tier 2 investigation.
Now drill into root causes using the MCONs from discovery or the bridge:
Task bottleneck: Call get_tasks_performance to find which specific task in a job is the bottleneck.
What changed? Call get_change_timeline -- this is your most powerful tool. It returns a unified timeline of:
Why are queries failing? Call get_query_rca to get root cause analysis:
Is latency degrading? Call get_query_latency_distribution to see the trend:
bucket="1h". The default downsamples to daily on windows ≥ 3 days, which hides hour-level steps.Trace impact: Call get_asset_lineage with direction="DOWNSTREAM" to see what's affected by a slow table, or direction="UPSTREAM" to find what feeds it.
Structure your response as:
runDurationTrend7d) to distinguish regressions from normal variance. Flag if trend data has less than 0.1 confidence.query_type="read". When they ask about "writes", use query_type="write". Do NOT mix them.npx claudepluginhub sickn33/agentic-awesome-skills --plugin agentic-awesome-skills35plugins reuse this skill
First indexed Jul 2, 2026
Showing the 6 earliest of 35 plugins
Diagnoses data pipeline performance issues using Monte Carlo observability across Airflow, dbt, and Databricks. Uses tiered investigation to find slow jobs, expensive queries, and root causes.
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