Mastering Prompt Engineering: Few-Shot Learning, Custom Responses, and Real Data Examples
Description
This episode begins with a welcome and an introduction to episode thirty-seven. The discussion then moves to prompt engineering with a focus on few-shot learning and the tool Prompt Poet. It explores customizing responses using YAML, Jinja2, and tone variations. Real customer data examples are used to demonstrate tone customization. The episode also covers combining these elements for coherent prompt creation. It concludes with closing thoughts on the capabilities of Prompt Poet.
In episode 54, we begin with an introduction to AI multihoming and its potential impact on businesses. The discussion explores current AI spending trends and the importance of vendor diversity in leveraging AI technologies. We take a closer look at Anthropic's AI models and the factors involved...
Published 10/30/24
In episode 53, we begin with a welcome and an introduction to the concept of cooking with AI. The episode explores how AI-powered tools are democratizing software development, making it accessible to a broader audience. We discuss AI's role as a new sous chef, empowering software creation and...
Published 10/28/24