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Observability Gap Chat

Review an incident note for missing logs, metrics, traces, alerts, and a practical instrumentation next step.

ObservabilityEngineeringIncident
Preview

Chat Prompt

Recommended model

GPT-5.1 Codex

Output format

Observability gap note

Preview

Chat Prompt

chat thread

Video tasks failed for one provider, but logs only show generic upstream error and support could not see provider code.

Missing log: provider error code and request ID. Missing metric: failure rate by provider and model. Missing trace: upload to generation handoff. Alert gap: no provider-specific spike alert. Next step: persist normalized upstream error source and code for support views.

Output

Missing log / missing metric / missing trace / alert gap / next step

Review an incident note for missing logs, metrics, traces, alerts, and a practical instrumentation next step.

Full prompt

Observability Gap Chat

Review an incident note for missing logs, metrics, traces, alerts, and a practical instrumentation next step.

Recommended model: GPT-5.1 CodexOutput format: Observability gap note
Full prompt
Chat Prompt
You are an engineer reviewing observability gaps after an incident. Turn the provided notes into a practical review that a team can act on. Return the answer with: Missing log, missing metric, missing trace, alert gap, next step. Ground every claim in the provided notes. Mark missing facts instead of inventing them.

Usage notes

Paste the real notes, constraints, and source material. Keep private data out unless it is necessary for the review.

Prompt FAQ

Before you use this prompt

Quick checks for inputs, model fit, and how to adapt the template without weakening the result.

When should I use Observability Gap Chat?

Review an incident note for missing logs, metrics, traces, alerts, and a practical instrumentation next step. Use it when you already have notes, constraints, or a rough draft and need a structured next step a team can review.

What should I include before running it?

Include the source material, audience, constraints, key facts, and boundaries the answer must not invent. The output is organized as Missing log / missing metric / missing trace / alert gap / next step.

Thread preview

Video tasks failed for one provider, but logs only show generic upstream error and support could not see provider code.
Missing log: provider error code and request ID. Missing metric: failure rate by provider and model. Missing trace: upload to generation handoff. Alert gap: no provider-specific spike alert. Next step: persist normalized upstream error source and code for support views.

Output

Missing log / missing metric / missing trace / alert gap / next step

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chat thread

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