Iris.ai

An AI knowledge foundation for regulated enterprises that grounds models in your own trusted data with full audit trails.

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Overview

Iris.ai is an enterprise AI knowledge platform that ingests your company's structured and unstructured data into a graphe de connaissances, grounds modèles d'IA in those trusted sources, and provides full traceability for every output. It's built for regulated industries like pharma, energy, and manufacturing where hallucination and compliance are dealbreakers.

Verdict : A strong choice for large regulated organizations that can invest in setup and expert validation, but smaller teams may find the opaque pricing and upfront effort prohibitive.

Iris.ai positions itself as the missing middle layer between raw enterprise data and AI applications. Instead of plugging a generic LLM into your documents and hoping for the best, it builds a structured knowledge graph that understands your business domain. The platform extracts data from ERP systems, research papers, patents, regulations, and engineering docs, then maps relationships between them. That contextual grounding is what cuts down hallucination — the AI can't invent facts because every answer ties back to a specific source you trust.

The tool is clearly aimed at regulated industries where compliance isn't optional. ArcelorMittal used it to cut months off R&D timelines by processing patents faster. A Finnish food authority used it during a bird flu crisis to surface relevant research across disciplines. Both cases highlight Iris.ai's strength: it works best when you have lots of messy, domain-specific data that needs structure before AI can use it safely.

Pricing is enterprise-only and requires a demo call, which means small teams or individual researchers are probably not the target audience. The platform also expects domain experts to validate and refine the knowledge graph, so it's not a set-it-and-forget-it tool. But for organizations that need auditable, explainable AI at scale, Iris.ai offers something most generic AI tools don't: a paper trail you can defend in court or in front of a regulator.

Key Features

Knowledge Extraction

Ingests structured and unstructured data from across your enterprise and maps relationships into a coherent graph.

Contextual Grounding

Anchors AI outputs to your own trusted documents and domain semantics to prevent hallucination.

Expert Validation

Lets SMEs review and refine the knowledge graph through feedback loops with versioning and audit trails.

LLM Evaluation

Tests outputs against accuracy and compliance criteria with guardrails from expert benchmarks.

Governance & Trust

Provides full source traceability and explainable reasoning paths for regulated deployment.

Model Agnostic

Works with any LLM provider so your knowledge graph isn't tied to a single vendor.

Pricing Contact For Pricing

Entreprise

Contactez pour le prix
  • Custom knowledge ingestion limits
  • Full contextual grounding
  • Expert validation workflows
  • Governance and audit trails
  • AWS partnership support
  • Model-agnostic integration

Pros & Cons

Pros

  • Full source traceability makes every AI output auditable and defensible in regulated environments
  • Model-agnostic design avoids vendor lock-in and lets your knowledge graph outlast any single LLM
  • Handles both structured ERP data and unstructured documents like patents and research papers
  • Client data shows 80%+ acceleration on AI go-to-market timelines for enterprise deployments
  • Built specifically for compliance-heavy industries with governance as a first-class feature

Cons

  • Pricing is opaque with no public tiers, requiring a demo call just to get a quote
  • Setup requires significant upfront investment from IT teams and domain experts
  • Not designed for small teams or individual researchers who need a quick, low-cost solution

Frequently Asked Questions

What types of data can Iris.ai ingest?

Iris.ai handles both structured data like ERP records and unstructured data like research papers, patents, engineering documents, and regulatory submissions. It maps relationships across all of them into a single knowledge graph.

How does Iris.ai prevent AI hallucination?

The platform grounds every AI output in your own trusted documents and domain semantics. It uses contextual grounding to tie answers back to specific sources, so the model can't confidently invent facts.

Is Iris.ai compliant with regulatory requirements?

Yes. Gouvernance is built into the platform from the start, not added later. Every answer includes full source traceability and explainable reasoning paths, which makes audits and compliance reviews straightforward.

Can I use Iris.ai with any large language model?

Yes. Iris.ai is model-agnostic, so you're not locked into a single LLM provider. Your knowledge graph stays independent and compounds in value as models improve over time.

Who typically uses Iris.ai?

Regulated enterprises in life sciences, energy, manufacturing, and professional services. Think pharma R&D teams, oil and gas engineering departments, and legal firms that need auditable AI outputs.

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Traffic Data

Monthly visitors
55,564
Global rank
#627,110
Bounce rate
40%
Pages/Vues
1.92
Last updated: 5 days ago

Traffic sources

Email 4.9%
Reference 4.5%
Searchorganic 57.6%
Direct 32.3%
Génération IA 0.8%

Principaux pays

Inde Inde
18.7%
États-Unis États-Unis
9.3%
Suisse Suisse
7.4%
Royaume-Uni Royaume-Uni
5.3%
Allemagne Allemagne
5.3%

Mots-clés principaux

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irsi ai 190
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Engagement metrics

Average visit duration
0m 23s
Pages per visit
1.92
Classement par pays
#229,931

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