Monitoring LLM applications in production
Shipping an LLM feature is day one — monitoring is what keeps it safe week after week. Unlike static APIs, model outputs drift with prompts, data, and upstream weight changes. You need technical metrics (latency, errors, cost), quality metrics (human labels, model-as-judge, user thumbs), and governance (audit logs, PII detection). This lesson maps a minimal observability stack.
Content is available with subscription.
Get full access to all courses on the platform for one year with a single payment.
▼
Unlike other platforms that charge per course, here you get everything for one price, and after one year of use there will be no automatic charge for the following year.