Implementing Nested Learning: Memory That Evolves at Inference Time
A deep dive into our implementation of Google Research's Nested Learning framework - neural networks that update their memory during inference, not just training.
Read MoreAI agents that learn from every interaction, adapt to your processes, and continuously optimize themselves. No retraining. No maintenance. Just perpetual improvement.
We've developed an Agentic framework that empowers our AI engineers to deploy agents that self-learn, identifying their own flaws and fixing them autonomously.
Our framework enables agents to observe their own performance, detect errors before they cascade, and implement improvements without human intervention. The result: AI that gets smarter with every task it performs.
A complete platform for deploying, monitoring, and scaling self-improving AI agents across your organization.
Our learning engine observes agent behavior in real-time, identifies inefficiencies, and deploys improvements without downtime or manual intervention.
Deploy complex multi-agent workflows that coordinate seamlessly, share learnings, and optimize collective performance.
SOC 2 Type II certified with end-to-end encryption, role-based access control, and comprehensive audit logging.
Track agent performance, learning velocity, cost savings, and ROI with comprehensive real-time analytics.
Connect to your existing tech stack with pre-built integrations for Salesforce, SAP, Workday, and 200+ enterprise tools.
Agents share learnings across your organization, creating a collective intelligence that accelerates improvement.
Average reduction in task completion time across deployed workflows
Accelerated development cycles with learning agents
Enterprise-grade reliability with automatic failover and recovery
Average return on investment within the first year of deployment
Agents are deployed to your environment and immediately begin learning your specific processes, data patterns, and success metrics.
Our learning core continuously analyzes performance, identifying bottlenecks, errors, and opportunities for optimization.
The system autonomously generates and tests improvements in isolated environments before deployment.
Validated improvements are deployed seamlessly with zero downtime, and the cycle continues perpetually.
Stay up to date with the latest in self-improving AI, industry trends, and product announcements.
A deep dive into our implementation of Google Research's Nested Learning framework - neural networks that update their memory during inference, not just training.
Read MoreFounder
Over a decade of experience in AI and machine learning. Former Head of Data Science at OCBC Bank where he scaled AI adoption with 300+ models in production, pioneering GenAI and Agentic AI technologies. Previously led data science teams at Gojek and worked at the European Central Bank.
Our Agentic framework and AI engineers will deploy self-learning agents that transform your operations.
Request DemoNo credit card required.