AI is being revolutionized by large language models (LLMs), but scaling its implementation is difficult. In the absence of an appropriate operational framework, business effect stalls, expenses increase, and models diverge. By considering LLMs as enterprise assets rather than experiments, Applied LLMOps shows how to get over these challenges. The entire lifespan of LLM operations will be covered therein, from data sourcing and cleansing to fine-tuning, deployment, monitoring, and retraining. Additionally, you will learn ...
Read More
AI is being revolutionized by large language models (LLMs), but scaling its implementation is difficult. In the absence of an appropriate operational framework, business effect stalls, expenses increase, and models diverge. By considering LLMs as enterprise assets rather than experiments, Applied LLMOps shows how to get over these challenges. The entire lifespan of LLM operations will be covered therein, from data sourcing and cleansing to fine-tuning, deployment, monitoring, and retraining. Additionally, you will learn how to manage bias, maintain compliance, optimize infrastructure, and protect security. Using the techniques in this book will enable you to: Create dependable and scalable LLM pipelines. Lower operating expenses without compromising effectiveness. Protect AI systems from security risks and data drift in the future. Provide practical applications in fields such as content development, healthcare, and customer service. This is the road map for transforming potent research models into solutions that are essential to business operations and can grow with assurance. Keep your AI initiatives moving forward beyond the prototype phase. Learn how to implement, optimize, and maintain big language models in production. Get Applied LLMOps now to take the lead in the upcoming AI revolution.
Read Less
Add this copy of Applied LLMOps: Building Scalable and Reliable Large to cart. $12.87, new condition, Sold by Ingram Customer Returns Center rated 5.0 out of 5 stars, ships from NV, USA, published 2025 by Independently Published.