AI-Native Battery Intelligence

The Operating System
for Batteries

Autonomous, real-time charging control that learns and adapts.
Prevent degradation. Extend lifespan. No hardware changes.

30-40% Longer Battery Life
Production Live Deployments
99.99% System Uptime

Battery Degradation Is a
Control Failure

Not a chemistry problem. Batteries degrade early because charging logic is static and blind to real-world conditions.

Static Charging Logic

Fixed rules ignore battery age, temperature, and duty cycles. Every battery charged the same way, regardless of state.

Analytics Can't Act

Traditional monitoring observes failures after they happen. By the time you see degradation, the damage is done.

Passive Hardware

Batteries are treated as dumb storage. But they're dynamic electrochemical systems that respond to every charge decision.

$1.2T annual battery market facing premature degradation

Eneractiq LabsOS:
Predict. Decide. Act.

A closed-loop AI system that doesn't just monitor—it controls. Learning-based charging decisions generated in real-time, adapting as batteries age and usage patterns change.

  • Ingests live telemetry: voltage, current, temperature
  • Models learn degradation trajectories continuously
  • Charging decisions generated by trained models, not fixed rules
  • AI decisions injected directly into OEM BMS and fleet systems
"Charging decisions are generated by trained models, not fixed rules, and evolve as the battery ages and usage patterns change."
Telemetry AI Engine Control
Continuous Learning Loop

AI That Learns From
Intervention Outcomes

Our models don't just observe—they learn from how batteries respond to active charging interventions. This creates a compounding data advantage OEMs cannot simulate.

01

Learning, Not Rules

Model-driven charging policies that rewrite behavior in real-time based on battery state and history.

02

Degradation Trajectories

Longitudinal data on how batteries age under different conditions, building predictive accuracy over time.

03

Intervention Data

We learn from what happens after a charging decision—not just passive telemetry, but active outcomes.

04

Granted Patent

Protected IP on core charging technology strengthens our defensibility against replication.

A Platform Across
All Battery-Powered Assets

🚁

Drones & eVTOL

🚌

EV Fleets & Buses

🚕

E-Cabs & Rickshaws

🔋

Grid-Scale BESS

2 kWh → 1 MWh Same learning system, any scale

Generalizes across chemistries, voltages, and asset classes without retraining from scratch.

Deployed in Production
With Paying Customers

🚀
Paying
OEM Customer
Defense drone manufacturer
🔧
Live
Firmware Deployed
Production customer assets
🚛
Volvo Eicher
Active Pilot
Commercial vehicle fleet
⬆️
99.99%
System Uptime
Production-grade reliability
Trusted by industry leaders
Defense OEM
Volvo Eicher
EV Fleet Partners

Built by Engineers Operating
Real-Time AI on Live Infrastructure

A

Avinash

Co-founder & CEO

Deep expertise in batteries, charging systems, and energy infrastructure deployment.

A

Arpit

Co-founder & CTO

Experience deploying and operating learning systems in production. Core system architecture design.

🎓 IIT Mandi
🏭 Real-time AI in production
🔌 Safety-critical energy systems

If the next decade belongs to AI + Energy,
Eneractiq Labs is building the OS to power it.

Ready to extend your battery life by 30-40%?