Why Enterprise AI stalls
Pilots succeed, but production fails
Working demos break down against real data, real users, and real infrastructure constraints.
Vendor lock-in limits your options
Rigid platforms force architectural decisions you'll be living with for years.
The AI landscape changes faster than your architecture can
New models, new providers, new pricing — every shift forces a rebuild of what you already built.
Control is a business requirement
Build prototypes that become production systems
The same pipeline you test with is the one you deploy. No rebuilding, no framework migration.
Choose the best model, provider, and deployment for every use case
Match the architecture to the problem, not the other way around.
Swap components without rewriting your application
Models, vector stores, and providers are interchangeable parts, not foundational commitments.
Haystack Enterprise Platform puts you in control
Design AI systems your business can rely on
Engineer accuracy into every layer: the context, the model, and the tools to understand what's happening at every step.
Engineer the right context
Define what information, tools, and memory your AI accesses – from RAG pipelines to multi-agent systems reasoning across sources.
Match models to the work
Small models for simple tasks, frontier models for complex reasoning.
See what works, debug what doesn't
Tools to test pipelines, compare prompts and retrieval strategies, and refine before you scale.

Build agents that work in production, not just demos
Agents that reason, act, and recover reliably under real-world conditions.
Orchestrate multi-agent workflows
Define how agents use context, tools, and memory to complete complex tasks, with explicit reasoning patterns, tool invocation logic, and escalation paths.
Standardize across teams
Build and operate AI applications on a shared platform with reusable components and templates.
Ship with confidence
Version pipelines, prompts, and models so teams can reproduce behavior, compare changes, and roll back when something breaks.

Own your stack
Your infrastructure, your models, your foundation – built to stay portable with the freedom to change.
Choose where your AI runs
Deploy on managed cloud, self-hosted, or hybrid – with serverless execution that scales automatically.
Stay model and provider agnostic
Swap between open-source and closed models without code changes.
Build on an open-source foundation
No proprietary abstractions, no black boxes, no long-term dependency.

Govern everything your AI does
Full visibility from input to action, with the controls to enforce policy at runtime.
Trace every decision
Track every query, answer, action, and context source in a unified run history.
Enforce policy across every pipeline
Add guardrails – content filtering, PII detection, output validation – and enforce role-based access across users and teams.
Monitor performance and cost
See latency, quality, and resource usage, then optimize your pipelines accordingly.

Enterprise-grade security and compliance
Built for financial services, healthcare, and public sector organizations with the strictest security and compliance requirements.
Compliance
SOC 2 Type II certified
ISO 27001 certified
GDPR compliant
HIPAA compliant
Platform controls
Role-based access control (RBAC)
Audit logs and full traceability
Guardrails and policy enforcement
Data boundaries and pipeline isolation
Single sign-on (SSO) support
Our Partner Ecosytem Driving Sovereign AI
We work with technology and delivery partners around the world to help organizations adopt, deploy, and scale AI they control.

Get sovereign AI into production with the engineers who build it.
Forward Deployed Engineers
Our AI engineers work directly with your team to design, build, and deploy production agents on your infrastructure. From context engineering and agent architecture to performance optimization and team enablement, they help you move faster without handing the hard parts to a black box.
They don’t just advise. They build.
Strategy and architecture
Define the right use cases, map them to the right architecture, and create a path from first prototype to production deployment.
Implementation and deployment
Hands-on engineering support to build, integrate, and deploy agents and AI systems that meet your security, data, and infrastructure requirements.
Optimization and enablement
Analyze usage, improve performance, and upskill your team to build and govern AI systems independently.






