课程: Building in Azure AI Foundry
免费学习该课程!
今天就开通帐号,24,700 门业界名师课程任您挑!
Evaluate your AI application
- [Instructor] After developing your AI solution, you need to evaluate its performance. A typical evaluation involves several key elements. We need a test dataset as the input. We need to assess the changes in different areas, such as models, model parameters, prompts, system messages, flows, and your data. We also need to apply various evaluation metrics, such as relevance, coherence, and groundedness. Because there are so many factors in an evaluation, a simple test like entering some prompts in the chat is insufficient and time consuming. We need to use an evaluation tool to help us. In Azure AI Foundry, we can use the tool to run two types of evaluations. Manual evaluations for manually reviewing the results after generating AI responses with your test datasets. Metric evaluations for evaluating the performance of your AI application using industry standard metrics. Now let's do a quick demo. Here's my demo project in the Azure AI Foundry portal. Click Evaluation in the menu…
随堂练习,边学边练
下载课堂讲义。学练结合,紧跟进度,轻松巩固知识。