AgenticOps is the discipline of running production cloud operations through autonomous AI agents — under team policy, with brokered credentials, sandboxed execution, deterministic data tokenization, and tamper-evident audit. CloudThinker applies that discipline to Dagster, turning slow queries, runaway connection pools, lagging replicas, risky migrations, and backup gaps into a Detect → Analyze → Remediate → Verify loop your database team stays on top of instead of paged into.
CloudThinker investigates the signal, proposes or executes the safe action your policy allows, then verifies the outcome.
$ cloudthinker db diagnose --target Dagster-prod
DETECT orders.list p95 latency 210ms → 1.8s over 15m
└─ plan changed: Index Scan → Seq Scan on orders (5.2M rows)
└─ connection pool 96/100 in use, 41 waiting
ANALYZE root cause: idx_orders_customer_created dropped in migration 2026-07-16
hot path: SELECT * FROM orders WHERE customer_id=$1 ORDER BY created_at DESC
data access: tokenized (0 raw PII values read)
REMEDIATE fix plan (autonomy L2 — read-path, auto-approved):
1. CREATE INDEX CONCURRENTLY idx_orders_customer_created
ON orders (customer_id, created_at DESC); [reversible]
2. raise pool max_size 100 → 140, statement_timeout 30s [policy-checked]
~ HELD FOR APPROVAL: none (no destructive ops)
VERIFY index built in 47s · plan reverted to Index Scan
orders.list p95 1.8s → 190ms · pool 62/140 · 0 waiters
✓ resolved · audit: evt_9f3ac1 (engineer on the loop: notified)Dagster data orchestration platform management. Covers asset management, pipeline runs, sensor and schedule status, IO manager configuration, partition management, and resource health. Use when checki
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Connect CloudThinker to map the signals, tools, and runbooks already in your environment. You choose the approval level; every action stays attributable and auditable.