Hugging Face vs Iris.ai
Compare research AI Tools
Hugging Face
Open hub for models datasets and apps plus managed services like Inference Endpoints and dedicated deployments with usage based pricing.
Iris.ai
Enterprise retrieval and evaluation platform for secure agentic AI over private corpora with workflows for ingestion testing and governance.
Feature Tags Comparison
Only in Hugging Face
Shared
Only in Iris.ai
Key Features
Hugging Face
- • Model and dataset hub with versioning and Spaces
- • Pro accounts for private repos and higher limits
- • Inference Endpoints starting at low hourly rates
- • Autoscaling dedicated deployments from the Hub
- • Org workspaces with roles and permissions
- • Transformers libraries and eval tools
Iris.ai
- • Governed Ingestion: Connect wikis drives and repos then normalize content with metadata access rules and retention policies for compliance
- • Evaluation Workflows: Run automatic metrics and human rubrics to measure accuracy hallucination rate and coverage before launch
- • Guardrails and Policies: Define prompts filters and safety limits that block sensitive data flow and unsafe responses in production
- • Observability and Drift: Track quality usage and model costs then alert owners when performance moves outside accepted ranges
- • Integrations: Use existing vector stores model providers and identity controls so deployments align with current architecture
- • Red Teaming: Exercise prompts tools and environments to uncover jailbreaks and leakage risks before go live
Use Cases
Hugging Face
- → Host and share models with your team
- → Deploy OSS models without managing GPUs
- → Run demos in Spaces for feedback
- → Automate CI pushes and evaluations
- → Migrate research to production endpoints
- → Serve long context chat or RAG models
Iris.ai
- → Stand up secure knowledge assistants for employees that search approved sources with clear citations
- → Reduce support handle time by routing assistants to articles with evaluation backed accuracy and policy bounds
- → Enable research teams to explore large archives and synthesize findings with traceable sources for compliance
- → Run pilots that compare prompts models and retrieval settings to pick the highest quality approach
- → Prepare audit evidence with documented controls and results to satisfy internal and external requirements
- → Connect identity and permissions so assistants respect document level access across departments
Perfect For
Hugging Face
ml engineers researchers startups and enterprises standardizing on open ecosystems while needing managed deployment paths
Iris.ai
enterprise knowledge leaders compliance teams information security and platform engineers who need measurable safe retrieval over private data
Capabilities
Hugging Face
Iris.ai
Need more details? Visit the full tool pages: