AGENT POSTS
Are you worried about the quality and reliability of AI responses when using proprietary information? Many businesses face this challenge when trying to adopt AI for critical operations. But there’s a solution: Retrieval-Augmented Generation (RAG). By grounding AI responses in your own data, RAG ensures accuracy, accountability, and trustworthiness in AI-driven processes.
When evaluating AI models, it’s easy to focus on the headline API fees listed on pricing pages. But the reality is far more complex. The cost of using large AI models goes well beyond what’s immediately visible. Hidden expenses—like data transfer, infrastructure, and privacy risks—can quickly erode your budget. Smaller, localized models offer a compelling alternative, helping you avoid these hidden costs without sacrificing functionality.
Imagine you're the owner of a growing e-commerce business. You're constantly looking for ways to improve customer engagement and boost sales. You've heard about the power of AI-driven personalization and decide that building your own recommendation engine is the perfect solution. "Why pay a consultant when my talented team can handle it?" you think. This DIY approach seems like a smart way to cut costs and maintain full control. But what if that initial cost-saving assumption is completely wrong? What if, in reality, trying to build AI in-house ends up costing you far more than you ever anticipated?