Agentic A.I. – The future of smarter, more independent technology

LLM-based agents, also known as Agentic AI, represent a transformative leap in artificial intelligence, combining planning, memory, and tool usage with powerful language models. These proactive systems go beyond traditional chatbots to autonomously execute complex tasks, offering businesses unprecedented efficiency, innovation, and the potential to redefine their operations with minimal human oversight.
January insights: 2025, a year to embrace A.I. together

Get the latest news and updates about AI
You don’t need a Robot to work like one

Achieve robot-level efficiency without the robot! Discover how CROPLAND’s AI-driven solutions empower businesses to make smarter, data-driven decisions, optimize workflows, and stay ahead of the competition.
December insights: HR chatbots, municipal mergers and A.I. grannies

Get the latest news and updates about AI
A.I. moves fast – Don’t look away (or you might miss it)

Keeping up with AI is essential for businesses aiming to stay competitive and relevant. This blog explores how AI is transforming industries, helping companies automate processes, gain a competitive edge, and drive innovation. CROPLAND can simplify this journey by helping businesses integrate AI effectively.
Tackling complex HR challenges with AI solutions

Geert Vromman (CROPLAND) and Frank De Weser (Syntegro) explain how the two companies are collaborating on an AI chatbot tailored for companies with complex payroll needs
October insights: Retrieval Augmented Generation, Copyright and Nobelprize material

Get the latest news and updates about AI
Understanding Retrieval Augmented Generation (RAG)

Retrieval Augmented Generation (RAG) might sound complicated, but it’s a smart way for AI systems to give more accurate and useful answers. RAG combines two different techniques: retrieving information (searching for the right answers) and generating responses (like talking or writing) to make sure the AI (like GPT or Gemini) produces better, more reliable results. This addresses one of the major challenges of traditional generative models—their tendency to invent or generate incorrect information, especially when dealing with dynamic or domain-specific knowledge.
September insights: Therapy adherence, and the AI landscape we are operating in

Get the latest news and updates about AI