Production Analytics for Electronics Manufacturing
🔒 Confidential
Three things we want to show you
What We'll Build For You
Live dashboard mockup showing AI-powered manufacturing intelligence for VFD & PCBA production
Why We're The Right Fit
Production-proven at Amphenol FCI. Domain expertise in energy & power electronics manufacturing.
How We'll Execute
Pune-based team. Factory-floor deployment. From discovery to production-live.
200 machines connected. Production-live since September 2025.
Amphenol FCI manufactures electrical connectors through a multi-step precision process. We deployed FluxAI across the three most critical manufacturing stages.
Metal strips, polymers
800+ strokes/min
Injection moulding
Ultrasonic joining
Final connectors
Vision AI captures every stamped component. Dimensional verification against spec. Die wear prediction 7 days ahead. Auto-stop on out-of-spec detection.
Real-time parameter monitoring - pressure, temperature, cycle time. Shot-to-shot consistency tracking. Defect prediction before parts exit mould.
30 welding machines monitored. Energy, force, time parameters. Pull strength prediction without destructive testing. 100% inspection coverage.
200 machines deployed in 14 weeks. Now expanding to all 4 Amphenol factories in India.
Meter Data Management & AI Analytics for a leading Indian OEM.
Recently deployed a complete data platform for a major Indian smart meter manufacturer — demonstrating our expertise in energy systems and industrial data analytics.
Short, medium, and long-term demand prediction. Weather integration. 95%+ accuracy.
Identify unusual consumption patterns. Theft detection with ML models. 3x fewer false positives.
Behavioral clustering. Tariff optimization. DSM targeting. 15+ segment profiles.
Test station analytics and quality prediction for FRENIC production.
Control boards
Thermal interface
Temperature rise
Performance
Insulation
Passed QC
| Thermal Test | Failures detected late in cycle |
| IGBT Mounting | Torque variance causes thermal issues |
| Vibration Patterns | Manual signature analysis |
| Root Cause | Hours to correlate failures to assembly |
| Retest Cycles | 5-8% units need multiple test runs |
| Failure Prediction | Flag issues BEFORE test fails |
| Assembly Correlation | Link failures to torque, TIM volume |
| Pattern Recognition | ML models on vibration/thermal data |
| Instant Root Cause | AI identifies cause in seconds |
| First-Pass Yield | Reduce retest to <2% |
Unit FRN-4521: Passed vibration and load tests. Thermal test marginal.
FluxAI confidence: 82%. Recommendation: Check IGBT thermal pad before shipping.
The AI compares test signatures against historical field failures — flagging units that technically "pass"
but match patterns of units that failed in the field.
SMT line analytics for in-house PCB assembly.
Board input
Solder paste
Paste inspection
Components
Soldering
Final inspect
Traditional quality control catches defects at AOI — after the board has gone through the oven. By then, the defect is permanent. FluxAI predicts defects before reflow.
SPI data → insufficient solder prediction. Flag boards before placement.
Pick & place offset tracking. Bridging and tombstone risk scoring.
Humidity, temperature correlation. Paste viscosity trending.
| Solder Paste Volume | Per-pad measurement |
| Placement Offset | X/Y/theta per component |
| Reflow Profile | Zone temperatures, dwell times |
| First Pass Yield | Boards passing AOI first time |
| Defect Pareto | Type, location, frequency |
| Predict insufficient solder | Before reflow |
| Trigger calibration alerts | Before defects occur |
| Optimize reflow profile | Per board type |
| Identify process drift | Real-time SPC |
| Root cause correlation | Seconds, not hours |
Pune-based team. Factory-floor experience. Production-ready deployment.
Factory visit. Machine audit. Data sources. Requirements.
FluxAI devices on machines. Data pipeline. Cloud setup.
ML models trained on your production data. Validation.
Dashboards. Alerts. Training. Go-live.
| Engineering Team | 85+ engineers, Pune HQ |
| Domain Expertise | Electronics, power systems, energy |
| Platform | FluxAI — production-deployed |
| Edge Hardware | Proprietary FluxAI Edge devices |
| Live Reference | Amphenol FCI — 200 machines |
Chennai VFD facility or Pune UPS plant. Identify priority lines. Define scope. Deploy.
1-day assessment at Chennai or Pune. Identify machines, data sources, priority lines.
Detailed scope, architecture, integration plan, timeline, investment.
Phase 1 on priority lines. Results visible within 12 weeks.
VFD test station or SMT line as priority?
Chennai or Pune facility to start?