freud-detection-ai

SKILL.md

Freud Detection AI

Use this skill to implement anomaly-detection workflows with explainable gating and review paths.

Workflow

  1. Define scope and constraints.
  • Define detection scope, signals, threshold policy, and review SLA.
  • Capture objective metrics, bounds, and release blockers.
  1. Design implementation plan.
  • Design model-scoring flow, fallback heuristics, and escalation rules.
  • Keep ownership and dependency boundaries explicit.
  1. Execute and iterate.
  • Implement in small, traceable increments.
  • Record run/build context for reproducibility.
  1. Validate contract integrity.
  • Validate threshold outcomes, alert quality, and investigation traceability.
  • Treat contract breaches as blockers.
  1. Prepare handoff.
  • Deliver detector configuration diff, alert routing updates, and runbook.
  • Include exact commands and acceptance criteria.

Output Contract

Return:

  1. Context: goals, assumptions, constraints.
  2. Validation: pass/fail checks and key deltas.
  3. Changes: concrete file-level updates.
  4. Commands: commands and expected outputs.
  5. Risks: unresolved issues and limits.

References

  • references/workflow.md: detailed execution flow.
  • references/checklist.md: sign-off checklist.

Execution Rules

  • Keep decisions measurable and reversible.
  • Keep validation criteria explicit before iteration.
  • Escalate unbounded false-positive risk and opaque scoring logic as blockers.
Weekly Installs
1
GitHub Stars
2
First Seen
7 days ago
Installed on
zencoder1
amp1
cline1
openclaw1
opencode1
cursor1