It is difficult to develop and maintain high-performing AI applications in today’s quickly evolving field of artificial intelligence. The need for more efficient prompts for Generative AI (GenAI) models is one of the most significant challenges facing developers and businesses. It is almost impossible to improve a prompt to get better results, even once a…
For cost, latency, and data control, SaaS companies eventually shift away from third-party managed database platforms and onto their cloud, such as Amazon Web Services (AWS), Google Cloud Platform (GCP), or Microsoft Azure. In addition, they transition from a single shared database architecture to a multi-instance database architecture to meet performance, compliance, and enterprise data…
In today’s digital age, businesses increasingly use artificial intelligence (AI) to enhance customer experience. ChatGPT is emerging as a powerful tool for creating dynamic, responsive, and informative FAQs (Frequently Asked Questions) among the various AI-powered tools. By leveraging ChatGPT, organizations can build AI-powered FAQs that streamline customer support and significantly improve user experience. The Role…
Cerebras Systems has set a new benchmark in artificial intelligence (AI) with the launch of its groundbreaking AI inference solution. The announcement offers unprecedented speed and efficiency in processing large language models (LLMs). This new solution, called Cerebras Inference, is designed to meet AI applications’ challenging and increasing demands, particularly those requiring real-time responses and…
Ensuring the quality and stability of Large Language Models (LLMs) is crucial in the continually changing landscape of LLMs. As the use of LLMs for a variety of tasks, from chatbots to content creation, increases, it is crucial to assess their effectiveness using a range of KPIs in order to provide production-quality applications. Four open-source…
AI systems integrating natural language processing with database management can unlock significant value by enabling users to query custom data sources using natural language. Current methods like Text2SQL and Retrieval-Augmented Generation (RAG) are limited, handling only a subset of queries: Text2SQL addresses queries translatable to relational algebra, while RAG focuses on point lookups within databases.…
RAG systems, which integrate retrieval mechanisms with generative models, have significant potential applications in tasks such as question-answering, summarization, and creative writing. By enhancing the quality and informativeness of generated text, RAG can improve user experience, drive innovation, and create new opportunities in industries such as customer service, education, and content creation. However, developing these…