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MIS-Contro-Tower/fix4.md
2026-04-29 07:13:42 +00:00

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Task: Implement Control Tower changes only (no Node-RED edits), then run full verification with SQL + backfill script.
Repository context:
- Workspace root: Plastic-Dashboard
- Target branch assumption: sandbox-main
- Database: PostgreSQL via Prisma
- Scope strictly limited to Control Tower code and scripts in this repo
Hard constraints:
1. Do NOT edit any Node-RED flow files or Node-RED runtime code.
2. Do NOT change behavior outside the requested areas unless required for correctness.
3. Preserve existing non-authoritative guard behavior for downtime reasons (PENDIENTE / UNCLASSIFIED).
4. Run verification before and after backfill, and report results clearly.
5. If lint/test has unrelated pre-existing failures, do not refactor unrelated modules.
Implementation requirements:
A) Downtime continuity fallback key fix
File:
- app/api/ingest/event/route.ts
Goal:
- Ensure fallback downtime reason identity/continuity uses episode continuity key (incidentKey) whenever present.
- Use row.id only when incidentKey is truly absent.
- Preserve guard that prevents non-authoritative values from overwriting authoritative manual reasons.
Details:
1. In the event ingestion logic where ReasonEntry payload is created for downtime-like events (including fallback UNCLASSIFIED and mold-change):
- Derive a fallbackIncidentKey from available payload fields in this preference order:
- evData.incidentKey
- dataObj.incidentKey
- evDowntime?.incidentKey
- evReason?.incidentKey (if available)
- Only if all are missing, fallback to row.id.
2. For fallback reasonRaw objects:
- For mold-change fallback, set incidentKey to moldIncidentKey ?? fallbackIncidentKey ?? row.id.
- For unclassified fallback, set incidentKey to fallbackIncidentKey ?? row.id.
3. Create one continuityIncidentKey (single source of truth) used consistently for:
- downtime reasonId construction (evt:<machineId>:downtime:<continuityIncidentKey>)
- ReasonEntry episodeId for downtime
- meta.incidentKey in reason entry writes
- manual-preservation guard queries by episodeId
4. Keep non-authoritative guard semantics unchanged:
- incoming non-authoritative reason should not overwrite existing authoritative reason for same episode
- downtime-acknowledged/manual authoritative path remains preserved
B) OEE trend from production-only snapshots
File:
- app/api/reports/route.ts
Goal:
- Build OEE trend from production-only snapshots:
- trackingEnabled = true
- productionStarted = true
- Keep summary metrics behavior explicit and consistent with this filtering decision.
Details:
1. Include trackingEnabled and productionStarted in KPI snapshot select.
2. Add helper like isProductionSnapshot(trackingEnabled, productionStarted).
3. Compute OEE/Availability/Performance/Quality averages using production-only rows.
4. For trend generation:
- Iterate timeline in ts order.
- For non-production snapshots, emit null points (for OEE and related KPI lines) so chart can render true gaps.
- For production snapshots, emit actual numeric values (or null if value is missing).
5. Keep downtime/event aggregates and cycle-based totals behavior intact unless explicitly tied to OEE production-only requirement.
6. Keep logic explicit in code comments (short, concrete comments only where needed).
C) Chart rendering behavior: no smoothing across gaps
Files:
- app/(app)/reports/ReportsCharts.tsx
- app/(app)/reports/ReportsPageClient.tsx (if types/downsampling need updates)
Goal:
- OEE line interpolation must be linear.
- Gaps must be rendered as gaps (no fake continuity through filtered/non-production windows).
Details:
1. In OEE line chart:
- change Line type from monotone to linear
- set connectNulls={false}
2. Ensure frontend types allow nullable trend values for OEE points.
3. If downsampling exists, preserve gap markers so null separators are not removed.
- Keep null transition points when reducing point count.
4. Ensure tooltip/value formatting handles nulls gracefully.
Verification and execution steps:
1) Run targeted checks first
- run tests related to downtime guard if available:
- npm run test:downtime-reason-guard
- run lint at least for changed files (or full lint if practical):
- npx eslint app/api/ingest/event/route.ts app/api/reports/route.ts app/(app)/reports/ReportsCharts.tsx app/(app)/reports/ReportsPageClient.tsx
2) SQL Verification Pack (PRE-BACKFILL)
Execute these exactly and capture output snapshots:
A. Recent downtime reason quality mix
SELECT
reasonCode,
COUNT(*) AS rows
FROM "ReasonEntry"
WHERE kind = 'downtime'
AND "capturedAt" >= NOW() - INTERVAL '7 days'
GROUP BY reasonCode
ORDER BY rows DESC;
B. Episodes with conflicting reason codes
SELECT
"orgId",
"machineId",
"episodeId",
COUNT(DISTINCT "reasonCode") AS distinct_codes,
MIN("capturedAt") AS first_seen,
MAX("capturedAt") AS last_seen
FROM "ReasonEntry"
WHERE kind = 'downtime'
AND "episodeId" IS NOT NULL
AND "capturedAt" >= NOW() - INTERVAL '14 days'
GROUP BY "orgId", "machineId", "episodeId"
HAVING COUNT(DISTINCT "reasonCode") > 1
ORDER BY last_seen DESC
LIMIT 200;
C. Potential manual overwritten by non-authoritative check
SELECT
re."orgId",
re."machineId",
re."episodeId",
re."reasonCode",
re."capturedAt",
re.meta
FROM "ReasonEntry" re
WHERE re.kind = 'downtime'
AND re."capturedAt" >= NOW() - INTERVAL '14 days'
AND re."reasonCode" IN ('PENDIENTE', 'UNCLASSIFIED')
ORDER BY re."capturedAt" DESC
LIMIT 200;
D. Event continuity around downtime + ack
SELECT
"machineId",
"eventType",
ts,
data->>'incidentKey' AS incident_key,
data->>'status' AS status,
data->>'is_update' AS is_update,
data->>'is_auto_ack' AS is_auto_ack
FROM "MachineEvent"
WHERE ts >= NOW() - INTERVAL '3 days'
AND "eventType" IN ('microstop', 'macrostop', 'downtime-acknowledged')
ORDER BY ts DESC
LIMIT 500;
E. KPI production vs non-production counts
SELECT
COALESCE("trackingEnabled", false) AS tracking_enabled,
COALESCE("productionStarted", false) AS production_started,
COUNT(*) AS rows
FROM "MachineKpiSnapshot"
WHERE ts >= NOW() - INTERVAL '7 days'
GROUP BY 1,2
ORDER BY rows DESC;
F. Sharp OEE jumps in production snapshots
WITH k AS (
SELECT
"machineId",
ts,
oee,
LAG(oee) OVER (PARTITION BY "machineId" ORDER BY ts) AS prev_oee
FROM "MachineKpiSnapshot"
WHERE ts >= NOW() - INTERVAL '7 days'
AND "trackingEnabled" = true
AND "productionStarted" = true
AND oee IS NOT NULL
)
SELECT
"machineId",
ts,
prev_oee,
oee,
ABS(oee - prev_oee) AS delta
FROM k
WHERE prev_oee IS NOT NULL
AND ABS(oee - prev_oee) >= 25
ORDER BY delta DESC, ts DESC
LIMIT 200;
G. Trend point count comparison
SELECT
'all' AS series,
COUNT(*) AS points
FROM "MachineKpiSnapshot"
WHERE ts >= NOW() - INTERVAL '24 hours'
AND oee IS NOT NULL
UNION ALL
SELECT
'production_only' AS series,
COUNT(*) AS points
FROM "MachineKpiSnapshot"
WHERE ts >= NOW() - INTERVAL '24 hours'
AND oee IS NOT NULL
AND "trackingEnabled" = true
AND "productionStarted" = true;
3) Backfill run plan (must follow this order)
A. Dry-run first:
node scripts/backfill-downtime-reasons.mjs --dry-run --since 30d
B. Review dry-run output:
- candidates
- sampleUpdates
- incident distribution by machine
- any suspicious replacements
C. Apply scoped first (single machine from dry-run sample):
node scripts/backfill-downtime-reasons.mjs --since 30d --machine-id <machine_uuid>
4) SQL Verification Pack (POST-BACKFILL)
- Re-run queries A, B, C at minimum.
- Optionally rerun D/F/G for confidence.
- Confirm reduction in stale PENDIENTE/UNCLASSIFIED rows where authoritative reason exists.
- Confirm conflicting episode reason cases reduced or shifted as expected.
Acceptance criteria checklist:
- New downtime episodes retain authoritative manual reason and do not regress to PENDIENTE/UNCLASSIFIED.
- Fallback downtime continuity now keys by incidentKey whenever available; row.id only when absent.
- OEE trend no longer shows implausible 0/100 jumps from non-production snapshots.
- OEE chart is linear and visually shows true gaps (no smoothing continuity across filtered windows).
- Backfill dry-run and scoped apply outputs are captured and reasonable.
- Post-run SQL confirms expected improvements without obvious regressions.
Output format required from you:
1. Files changed with concise reason per file.
2. Exact diff summary for each modified file.
3. Test/lint commands run + result.
4. Pre-backfill SQL results (compact tables or summarized counts).
5. Dry-run output summary (key fields + sample updates).
6. Scoped apply command used and output summary.
7. Post-backfill SQL delta summary (before vs after).
8. Any blockers (env vars, DB auth, migration state, etc.) and exactly what is needed to unblock.