Overview
Definition and positioning of A-AI
Why Authentify It integrates A-AI
Role of A-AI in strengthening our technology stack
Short overview of AI’s state in the market
Why proprietary and controlled AI is critical for Authentify It
Key differentiation of A-AI compared to generic AI solutions
Accuracy & reliability (hallucinations, variability of responses)
Bias and data integrity
Privacy, compliance, and GDPR alignment
Security and protection against cyberattacks
Sustainability (energy efficiency, green computing)
Ethical and governance considerations
Data ownership (client data stays within their perimeter)
Security by design (dedicated servers, full isolation, encryption)
Compliance (GDPR, ISO, industry-specific standards)
Full transparency and auditability
Multi-channel communication (chat, email, support tools)
Context-aware reasoning and personalization
Advanced request decomposition and orchestration
Analytics, reporting, and insights generation
Multilingual support for international operations
Simplified vocabulary (AI, ML, RAG, Vectors, Prompts, Contexts)
Step-by-step flow of a query in A-AI (from preprocessing to response generation)
Prompt vs Context distinction
How retrieval-augmented generation (RAG) strengthens our answers
Modular architecture allowing domain-specific specialization
Rigorous validation (stress tests, adversarial testing, security checks)
Continuous learning through A-AI Studio
Prompt engineering expertise adapted to Authentify It’s domain
Why A-AI is safer, more reliable, and more specialized than mainstream AI tools
Last updated