Blog
Insights on AI reasoning, knowledge graphs, and building trustworthy AI agents.
GraphRAG vs Synalinks: Retrieval is Not Reasoning
GraphRAG still relies on LLMs and embeddings to build and query its graph. Synalinks extracts knowledge from structured data instantly, with zero cost and real reasoning.
AI Agent Memory: Short-Term, Long-Term & Structured
Most agent frameworks only solve short-term memory. A complete guide to AI agent memory: chat buffers, persistent recall, and structured knowledge graphs.
Build an AI Agent That Never Hallucinates
AI hallucinations follow predictable patterns. Learn how to make them structurally impossible by switching from retrieval to structured knowledge.
RAG vs Knowledge Graphs: A Developer's Decision Guide
When should you use vector RAG, and when do you need a knowledge graph? A practical comparison with trade-offs and production guidance for developers.
Traceable AI: Make Your Agents EU AI Act Ready
The EU AI Act requires explainability for high-risk AI by August 2026. Learn how a deterministic memory layer makes your agents audit-compliant by design.
What Is a Deterministic Reasoning Layer for AI Agents?
AI agents generate answers probabilistically. A deterministic reasoning layer derives them from verified knowledge for traceable, repeatable results.
Why AI Agent Failures Start at the Memory Layer
Most AI agent failures aren't model problems, they're memory problems. Stale context, conflicting retrievals, and no reasoning chain. Here's how to fix it.
Your AI Agent Gave the Wrong Answer. Now What?
AI agents are powerful, until they hallucinate. Learn why deterministic reasoning over structured knowledge is the missing layer your AI stack needs.