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Unit 42

The Cloud Experience Everywhere articles

What I learned about Epistemia: A new way to build AI you can trust Strategy is the easy part, but can you deliver? Simplify HPE Morpheus Software automation with the new visual workflow builder AI evolution: Shifting from training to inference needs infrastructure modernization HPE Morpheus Central is here. Managing a multisite fleet just changed. Architecting your IT environment for change is key to the Great VM Reset An overview of IT service management using HPE OpsRamp Software Service Desk Beyond the basics: Deeper observability for HPE Morpheus Software – VM essentials Simpler, faster hybrid cloud management with agentic AI in HPE Morpheus Software 9.0 Navigating the signal tsunami: Why shared observability matters today HPE OpsRamp Software named as major player in the IDC MarketScape Achieving zero downtime: A deep dive into HPE Morpheus Software high availability Scaling the hybrid cloud: Unveiling HPE Morpheus Software version 9.0 The rise of agentic AI: Ushering in the next era of intelligent IT Unleashing AI factory ROI: Secure agentic AI on multitenant infrastructure Introducing HPE CloudOps Software for cloud service providers Introducing HPE CloudOps Software for cloud service providers Next-gen IT unleashed: The boom of cloud paging and application packaging The critical role of security fundamentals in the age of AI GreenLake Marketplace launches end-to-end commerce capabilities Discover what’s next with HPE Services at HPE Discover Las Vegas 2026 Secure application modernization with the Strangler Pattern to reduce security risk The private cloud resurgence by IDC—rebalancing cost, control, and AI HPE global trade integration: Enabling compliance in a connected digital world Sovereign by design for the workplace Reset with intent: Four smart moves to rationalize VMware exposure Building the high-performance data foundation for enterprise AI with HPE Storage Mastering hybrid cloud migration with HPE CloudOps Software suite Why sovereign cloud is becoming the backbone of modern workplace solutions Reviving private cloud by automating day‑2 operations using Kubernetes operators From alerts to action: how Operations Copilot accelerates incident response Unleashing enterprise AI factories with Kubeflow: Overcoming multitenancy hurdles What a ride it has been—HPE Morpheus VM Essentials Software hits version 8.1 Cyber resilience: Securing the last line of defense in the digital age AI-augmented endpoint engineering: From deterministic to autonomous delivery HPE OpsRamp Software March 2026 release: Key updates for IT operations teams Simplify bare metal management with HPE Morpheus Enterprise Software BMaaS Operations Copilot from HPE OpsRamp Software: Your partner for next-gen IT operations ITIL (version 5): What’s new, what’s different, and why recertification matters Stop overpaying for platforms: Invest in GPUs for real AI value Why buying a training subscription is just like buying a gym membership HPE Morpheus Enterprise Software enhances its Kubernetes service with new features The great VM reset: Why enterprise virtualization needs a new foundation Engineering modern resilient-by-design applications for hybrid cloud PostgreSQL's BM25 ranking algorithm for enterprise-grade search quality Streamlining hybrid cloud: Announcing the unified HPE/hpe Terraform provider v1.1.0 Inside HPE Morpheus Minute: A closer look at storage types in HPE Morpheus Software Half your AI factory is sitting idle; here is the blueprint that fixes it Introducing True N-Tier Multi-Tenancy in HPE Morpheus Enterprise Software v8.1.0 Beyond observability: From signals to semantic intelligence in hybrid cloud Operationalizing agentic AI with NVIDIA Nemotron and HPE agents hub
Facilitating federated data and AI at scale with federated mesh architectures
HPE_Experts · 2026-04-28 · via The Cloud Experience Everywhere articles

Explore how federated mesh architectures enable trusted, sovereign data and AI ecosystems that scale collaboration, data sharing, and value across organizations.

HPE202601301378_800_0_72_RGB (1).jpg

“In the future we’ll look back and see a clear demarcation: life before LLMs and life after.”

Kirk Bresniker, HPE Fellow and Chief Architect at Hewlett Packard Labs

Large language models (LLMs) revealed what is possible for language-based human interaction with technology.

Agentic AI and retrieval-augmented generation (RAG) are currently revolutionizing the value capture processes on data.

Retrieval-augmented agentic AI

Onboarding data to RAG-based retrieval systems can create a comprehensive knowledge base combining unstructured and structured, internal and external sources and—critically—makes that knowledge available for language-based human interaction and efficient value capture.

“Nothing of significance was ever achieved by an individual acting alone. Look below the surface and you will find that all seemingly solo acts are really team efforts.”

 – John C. Maxwell

In a global, digital economy, value capture does not stop at national borders, industry lines, organizational boundaries, or domain limits. That landscape requires trust and digital sovereignty. Boundaries can create silos of data, trust, and processes across organizations, regulations, partners, joint ventures, and subsidiaries.

Taking on the challenge

The challenge is to overcome these boundaries as much as avoiding the inertia of traditional data spaces. Modern technology and the communities of the Cloud Native Computing Foundation (CNCF) provide all we need to create data and AI ecosystems maximizing the value of data and AI and limiting the technology and operational impact at the same time.

Our solution implements a federated mesh architecture based on CNCF open-source technology and open standards to create decentralized ecosystems. Participating organizations can connect services like RAG-based retrieval systems and agents. Imagine a multilateral federation dissolving the traditional boundaries of data, knowledge, and intellectual property to create a collective intelligence with built-in sovereignty, trust, control, and accountability.

Dedicated tailored agents and workflows unleash the potential of purpose-driven agentic AI connecting a catalog of services, tools, data, knowledge, and other agents including LLMs creating an ecosystem in which every idea can be realized.

As such, it does not stop at RAG systems and agents. To realize every idea, the federated mesh architecture supports any kind of cloud-native workload and application programming interfaces (APIs) making data and functionality ubiquitously available for usage including data streaming, messaging, graphs, as well as machine learning, swarm learning, and data analytics.

Maximizing value

The long‑term value of AI ecosystems will be defined by their ability to evolve. Our solution and the concept of federation enable organizations to scale AI adoption across data, use cases, and partners without accumulating technical debt or governance friction. As new participants, capabilities, and regulations emerge, ecosystems can adapt incrementally—rather than requiring disruptive platform redesigns.

By grounding collaboration in open, cloud‑native standards, organizations create future‑ready foundations for innovation. This supports faster experimentation, repeatable deployment of AI services, and sustained collaboration across boundaries of industry, geography, and trust. The result is durable value creation: ecosystems that remain relevant as AI models, regulations, and business priorities continue to change.

While the operating model certainly depends on the ecosystem participants, the business case, and governance model, the federated mesh reduces the operational cost and technology leap required with its highly standardized technology stack and platform based on open standards.

Real-world example

A prime example is the Global Data Partnership against Forced Labour (GDPFL). Forced labour remains one of the world’s most persistent and systemic labour rights challenges embedded across global supply chains and societies.1

The GDPFL leverages the federated mesh architecture to build a secure, federated data and AI ecosystem that enables organizations to share insights without giving up sovereignty and control of their sensitive information.

Built on a federated mesh architecture with retrieval‑augmented, agentic AI, the GDPFL ecosystem connects fragmented data and services without moving or centralizing them. Organizations contribute insights from where data is generated—ranging from public and non‑sensitive evidence to advanced-analytics services—while retaining full control, governance, and accountability over their assets.

In practice, this can create a collective intelligence layer where retrieval‑augmented services and purpose‑built agents can surface patterns, risks, and signals across distributed sources, accelerating insight without compromising sovereignty. Lowering technical and trust barriers to participation allows the ecosystem to scale sustainably—onboarding new partners, data, and AI capabilities over time—while remaining transparent, rights based, and resilient by design.

Conclusion

As organizations move beyond experimentation with LLMs toward systems that must operate across boundaries of trust, regulation, and ownership, the future of AI will be defined not by isolated models but by ecosystems. Federated, agentic AI architectures make it possible to transform data into shared value—without sacrificing control, accountability, or sovereignty. By grounding innovation in open standards and cloud‑native technologies, HPE is helping organizations build AI ecosystems that are scalable, sustainable, and ready for real‑world impact.

Learn more at HPE Data Services and Enterprise Security and Digital Protection Services

1”Harnessing Data and Intelligence for Collective Advantage: Ending Forced Labour in Global Supply Chains.” World Economic Forum, January 2026.

Meet the author:

Florian Buehr.jpg

Florian Buehr, HPE Solution Architect, Cybersecurity Services, HPE

Florian joined HP Services in September 1999 and has over 25 years of experience in IT consulting. As a solution architect, he specializes in secure IT architectures and solutions for the data and AI, with a focus on multilateral ecosystems, value capture, and emerging technologies. His work spans strategy, architecture, and delivery, integrating cybersecurity by design to enable trusted, scalable, and resilient solutions across complex business environments.