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H2O.ai Launches Industry's First Multi-agent Gen AI Platform

KUALA LUMPUR, Nov 22 (Bernama) -- H2O.ai, the leader in open-source generative artificial intelligence (Gen AI) and the most accurate predictive AI platforms, has announced the industry-first convergence of predictive AI and Gen AI in its enterprise h2oGPTe platform.

According to a statement, the new agentic capabilities enable h2oGPTe agents to seamlessly integrate H2O.ai’s predictive AI models into autonomous workflows, ushering in a new era of operational efficiency and intelligent automation.

This breakthrough transforms h2oGPTe into the only end-to-end enterprise AI platform to converge Gen AI and predictive AI capabilities in air-gapped, on-premise and cloud environments, ensuring both compliance and innovation.

H2O.ai Founder and Chief Executive Officer, Sri Ambati said multi-agent systems are the digital workforce of tomorrow, equipped not only to act but to adapt, collaborate, and evolve.

“Our pioneering work with agentic AI allows organisations to unlock the potential of converged predictive and generative intelligence, moving beyond automation to true transformation of enterprise workflows,” he said.

Built for industries like finance, telco, healthcare, and government, h2oGPTe’s multi-agent AI system autonomously manages complex, multi-step tasks, drawing from both generative insights and predictive accuracy to enhance enterprise decision-making with transparency and control.

To further illustrate, an agent can classify customer call centre inquiries into over 80 categories using a fine-tuned H2O Danube model at a fraction of the cost of traditional large language models (LLMs).

This system is then orchestrated with an agentic AI framework powered by state-of-the-art LLMs to dynamically provision operators using a predictive AI agent, enabling efficient complaint resolution.

With its rich set of features, such as multimodal agentic AI with predictive model integration; coding assistant for rapid prototyping; intelligent model routing for optimised performance; and multimodal audio and vision analysis, h2oGPTe provides robust agent reliability, document AI capabilities, and advanced safety protocols.

-- BERNAMA