Context matters — and Humee gets it. By understanding meaning beyond keywords, Humee adds depth, nuance, and truly human-like intelligence to every interaction.
Web: humee.com

seen from Germany
seen from Germany

seen from Brazil
seen from China

seen from Germany
seen from China

seen from United Kingdom

seen from Germany

seen from United States
seen from China
seen from United Kingdom

seen from United Kingdom
seen from United States
seen from Philippines
seen from Germany
seen from China

seen from United States
seen from Portugal
seen from Germany
seen from Japan
Context matters — and Humee gets it. By understanding meaning beyond keywords, Humee adds depth, nuance, and truly human-like intelligence to every interaction.
Web: humee.com
AI That Understands Context
🧩🤖 Context awareness is what separates agentic AI from scripts. SDH builds systems that remember, reason, and adapt.
Build custom agentic AI applications with SDH Global. Our autonomous AI systems reason, plan, and act across workflow
NewFangled’s VADY: Precision Decisions Powered by Context-Aware AI At NewFangled, we built VADY to deliver precision through context-aware AI analytics that adapts to each business environment. VADY AI analytics personalizes insights using AI-powered data visualization and a conversational analytics platform for deeper understanding. Every insight from NewFangled’s VADY is accurate, relevant, and designed for confident, data-driven decisions.
Canonical Model: Adding Ontologies and Taxonomies, and arriving at Foundation for AI
Most organizations chase AI capabilities before their data is ready for it. But AI can only reason effectively when the data it consumes is structured, harmonized, and meaningful.This article explores how combining canonical models and ontologies creates that foundation, transforming disconnected data into a unified knowledge layer that AI can truly understand and act upon. Canonical models…
Interview at Scale with Dynamic, Context-driven AI | AI-assisted Live Interviews | Jobma Features
Hiring at scale doesn’t have to mean sacrificing candidate experience, and with Jobma’s latest AI-assisted interviewing innovation, now it doesn’t.
In this video, discover how Jobma’s dynamic, context-aware AI interview format is transforming the way recruiters hire. This isn’t just another automation tool - it’s a smarter, more intuitive system that adapts in real time to deliver meaningful insights for hiring teams and a personalized, engaging experience for candidates.
Here’s what makes it a game-changer:
✅ Context-aware AI that understands candidate responses and adjusts follow-up questions accordingly ✅ Faster screening without compromising quality or accuracy ✅ Data-driven insights to help recruiters make confident decisions backed by consistency ✅ Personalized experience for candidates that feels conversational, not robotic ✅ Scalable for high-volume hiring - ideal for fast-moving teams
Whether you're hiring in healthcare, tech, retail, or education, Jobma's new AI format empowers you to identify top talent quickly and fairly, while keeping the process human and interactive.
Take a tour today by requesting a personalized demo at https://www.jobma.com/request-demo
State Management in AI Agents: Remembering More Than the Last Message
An AI agent must maintain state—context about the conversation, task progress, decisions made, and user preferences.
Without good state management:
Agents repeat themselves
Forget prior constraints
Fail to follow through multi-step tasks
Robust agents use memory buffers, structured state representations (JSON, graphs), or dynamic prompts. Learn how it’s done in production AI agents.
Separate short-term memory (dialogue state) from long-term memory (user history) to keep prompts efficient and responsive.
Memory and Context: Giving AI Agents a Working Brain
For AI agents to function intelligently, memory is not optional—it’s foundational. Contextual memory allows an agent to remember past interactions, track goals, and adapt its behavior over time.
Memory in AI agents can be implemented through various strategies—long short-term memory (LSTM) for sequence processing, vector databases for semantic recall, or simple context stacks in LLM-based agents. These memory systems help agents operate in non-Markovian environments, where past information is crucial to decision-making.
In practical applications like chat-based assistants or automated reasoning engines, a well-structured memory improves coherence, task persistence, and personalization. Without it, AI agents lose continuity, leading to erratic or repetitive behavior.
For developers building persistent agents, the AI agents service page offers insights into modular design for memory-enhanced AI workflows.
Combine short-term and long-term memory modules—this hybrid approach helps agents balance responsiveness and recall.
Image Prompt: A conceptual visual showing an AI agent with layers representing short-term and long-term memory modules.
Make Data-Backed Decisions with VADY! 📊💡 VADY’s AI analytics engine ensures that your business stays context-aware, leveraging AI to enhance decision-making with data-driven insights.