Question 4Which of the following stages are part of the generative AI model lifecycle mentioned in the course? (Select all that apply)1 pointSelecting a candidate model and potentially pre-training a custom model.Deploying the model into the infrastructure and integrating it with the application.Defining the problem and identifying relevant datasets.Manipulating the model to align with specific project needs.Performing regularization
Question
Question 4Which of the following stages are part of the generative AI model lifecycle mentioned in the course? (Select all that apply)1 pointSelecting a candidate model and potentially pre-training a custom model.Deploying the model into the infrastructure and integrating it with the application.Defining the problem and identifying relevant datasets.Manipulating the model to align with specific project needs.Performing regularization
Solution
The stages that are part of the generative AI model lifecycle mentioned in the course are:
- Selecting a candidate model and potentially pre-training a custom model.
- Deploying the model into the infrastructure and integrating it with the application.
- Defining the problem and identifying relevant datasets.
- Manipulating the model to align with specific project needs.
The option "Performing regularization" is not typically considered a stage in the generative AI model lifecycle. Regularization is a technique used during the training of the model to prevent overfitting, but it's not a stage of the lifecycle itself.
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What are foundation models in Generative AI?
Generative AI is a type of artificial intelligence that can ____.Generate text, images, or other data using generative models.Make predictions about future events.Generate responses on real-time data.Perform complex calculations and mathematical operations.
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Why should you consider a phased delivery plan for your generative AI solution? To enable you to gather feedback and identify issues before releasing the solution more broadlyTo eliminate the need to identify, measure, and mitigate potential harmsTo enable you to charge more for the solution
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