Training the model with diverse and representative datasets is essential because it enables the system to generalize well to new, unseen data, reducing biases and errors. This leads to more reliable and safer outcomes when the system is deployed in real-world scenarios. Restricting the model to a single hardware platform doesn't inherently improve its robustness or safety. Unnecessarily increasing the model's complexity can introduce overfitting and make maintenance more difficult. Reducing the amount of training data might speed up deployment but compromises the model's ability to learn effectively, leading to unreliable and potentially unsafe predictions.
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Microsoft Azure AI Fundamentals AI-900
Describe Artificial Intelligence Workloads and Considerations
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