Large Language Models (LLMs) are engineered to handle a diverse array of user inputs, known as prompts, which direct the model to generate text, answer questions, or execute tasks. However, specific prompts—often termed "sick prompts"—can disrupt an LLM’s performance, resulting in suboptimal outputs. The quality of an LLM’s responses heavily relies on robust annotation and... Continue Reading →
How to Craft Effective Queries for AI Search Tools in 2025?
AI search tools, such as Perplexity, ChatGPT Search, Meta AI, and Grok, are new media for finding information. They utilize natural language processing and machine learning to provide more accurate and relevant answers. In contrast to traditional search engines that rely on keyword matching, AI search tools grasp your intent, making them perfect for research,... Continue Reading →

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