Build with an Azure free account. Get USD200 credit for 30 days and 12 months of free services.

Start free today

Machine Learning Interpretability Toolkit

Play Machine Learning Interpretability Toolkit
Sign in to queue

Description

Understanding what your AI models are doing is super important both from a functional as well as ethical aspects. In this episode we will discuss what it means to develop AI in a transparent way. Mehrnoosh introduces an awesome interpretability toolkit which enables you to use different state-of-the-art interpretability methods to explain your models decisions. By using this toolkit during the training phase of the AI development cycle, you can use the interpretability output of a model to verify hypotheses and build trust with stakeholders. You can also use the insights for debugging, validating model behavior, and to check for bias. The toolkit can even be used at inference time to explain the predictions of a deployed model to the end users. 

Learn more:

Segments of the video:

The AI Show's Favorite links:

 

Embed

Download

The Discussion

Add Your 2 Cents