Loading...
Loading...
Found 7 Skills
Set up monitoring, logging, and observability for applications and infrastructure. Use when implementing health checks, metrics collection, log aggregation, or alerting systems. Handles Prometheus, Grafana, ELK Stack, Datadog, and monitoring best practices.
Use when establishing measurement frameworks, dashboards, and optimization rhythms for live campaigns.
Know when your AI breaks in production. Use when you need to monitor AI quality, track accuracy over time, detect model degradation, set up alerts for AI failures, log predictions, measure production quality, catch when a model provider changes behavior, build an AI monitoring dashboard, or prove your AI is still working for compliance. Covers DSPy evaluation for ongoing monitoring, prediction logging, drift detection, and alerting.
Use to design measurement, alerting, and reporting for MQL→SQL SLAs.
Herald integration. Manage data, records, and automate workflows. Use when the user wants to interact with Herald data.
Production observability with structured logging, metrics collection, distributed tracing, and alerting
Use this skill to monitor and verify a deployed URL after releases — checks HTTP endpoints, SSE streams, static assets, console errors, and performance regressions after deploys, merges, or dependency upgrades. Smoke / canary / post-deploy verification.