Module 6 Lab: Deployment and operational readiness

Module 6 Lab: Deployment and operational readiness#

Prepare deployment, monitoring, and support artifacts.

Lab Context#

This lab uses synthetic milestone evidence covering scope, implementation, evaluation, deployment readiness, and stakeholder value as a safe proxy for the course setting. It is not a substitute for institutional data, but it lets you practice the reasoning, metrics, and documentation pattern before working with real records.

Lab Tasks#

  1. Run the baseline analysis.

  2. Identify the decision the metric supports.

  3. Change one threshold, score weight, or input assumption.

  4. Compare the result before and after your change.

  5. Record one deployment risk that the synthetic data cannot reveal.

import numpy as np

criteria = np.array(["impact", "evidence_quality", "reversibility", "stakeholder_readiness", "governance_strength"])
weights = np.array([0.30, 0.25, 0.15, 0.15, 0.15])
current = np.array([0.72, 0.48, 0.42, 0.55, 0.50])
target = np.array([0.70, 0.75, 0.70, 0.70, 0.80])

weighted_gap = (target - current) * weights
priority_order = [criteria[i] for i in np.argsort(weighted_gap)[::-1]]
readiness = float(np.dot(current, weights))

assessment = {
    "readiness_score": readiness,
    "highest_priority_gaps": priority_order[:3],
    "go_no_go": "pilot only with mitigations" if readiness >= 0.55 else "do not pilot yet",
}
assessment
{'readiness_score': 0.5565,
 'highest_priority_gaps': [np.str_('evidence_quality'),
  np.str_('governance_strength'),
  np.str_('reversibility')],
 'go_no_go': 'pilot only with mitigations'}
reflection = {
    "what_changed": "",
    "metric_before": "",
    "metric_after": "",
    "interpretation": "",
    "synthetic_data_limit": "",
    "next_real_world_evidence_needed": "",
}
reflection
{'what_changed': '',
 'metric_before': '',
 'metric_after': '',
 'interpretation': '',
 'synthetic_data_limit': '',
 'next_real_world_evidence_needed': ''}