DeepLearning.AI
Join this short course to systematically enhance the accuracy and reliability of your LLM applications. Learn from industry experts and build an SQL agent, apply fine-tuning techniques, and improve model performance.
In this course, you will learn to improve the accuracy of LLM applications by understanding development steps from evaluation to fine-tuning. You will explore memory tuning to enhance model performance and use the Llama 3-8b model to build an LLM application that converts text to SQL. The course covers prompt engineering, self-reflection, and fine-tuning techniques like LoRA and memory tuning to reduce hallucinations.
Developers
Developers looking to enhance the accuracy and reliability of their LLM applications.
Data Scientists
Data scientists interested in building more factual and precise LLM applications.
AI Enthusiasts
AI enthusiasts with intermediate Python knowledge seeking to improve LLM application performance.
Enhance your LLM applications with this course by learning key techniques like prompt engineering and memory tuning. Ideal for developers and data scientists, this course will help you build more accurate and reliable models, advancing your skills and career.
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Intermediate Python knowledge
Familiarity with large language models (LLMs)
Cost
Free
Duration
Dates
Location