ARA AI Labs
ARA AI Labs builds the decision data plane to make machine learning systems accountable and replayable by binding entities, features, and decisions into a permanent structured record.
At a Glance
- Financial Services
- Insurance
- Regulated AI sectors
- AI-driven consumer platforms
AI Tools by ARA AI Labs
(1)ARA
ML Decision Audit Data Plane
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Products & Services
A free-to-download decision data plane that stores features and decisions for exact replay and auditability.
Production AI compliance infrastructure featuring multi-node HA replication, automated failover, and dedicated engineering support.
Market Position
Positions as the 'Decision Data Plane', a new layer in the AI stack addressing the 'structural gap' where decisions and context are lost. Differentiates by providing a single, temporal record that serves models in microseconds and answers auditors months later.
Leadership
Founders
Tushar Haldar
Nearly two decades building distributed systems and ML infrastructure. Previously a Staff Software Engineer at Unity and worked at Oracle. Engineering leader (IC) with 20+ years of experience.
Executive Team
Tushar Haldar
Founder
Ex-Unity (Staff Software Engineer) and Oracle. Expert in distributed systems and ML infrastructure.
Founding Story
Founded by Tushar Haldar on the observation that modern ML stacks lose the context of decisions. After years in the U.S. (Unity, Oracle), Tushar returned to India in 2025 to build ARA from the storage engine up to provide accountability and exact replayability.
Business Model
Revenue Model
Revenue from Enterprise licenses and subscriptions.
Pricing Tiers
Single binary, stores features and decisions, public documentation.
Multi-node HA replication, SLA-backed support, on-prem deployment.
Target Markets
- Financial Services
- Insurance
- Regulated AI sectors
- AI-driven consumer platforms
- Credit Decisioning
- Fraud Detection
- KYC Compliance
- Insurance AI
- Dynamic Pricing
- Recommendations