Operational inefficiencies can stem from which of the following?

Prepare for the Cisco AI Black Belt Academy Test with multiple choice questions and interactive learning tools. Ace your exam with comprehensive hints and detailed explanations.

Operational inefficiencies can often arise from poorly optimized algorithms. When algorithms are not properly tuned, they may consume excessive computational resources, leading to longer processing times, increased costs, and suboptimal performance. This lack of efficiency can manifest in various ways, such as slower response times in applications, and greater energy consumption, ultimately affecting the overall effectiveness of an AI system.

In contrast, excessively large training datasets, while they can contribute to inefficiencies, are not inherently problematic if managed correctly. They can lead to better model generalization but require careful handling to avoid overfitting or increased training times. Consistent model performance is typically a sign of a well-functioning system, suggesting that the model is reliable and predictable. Lastly, high levels of automation generally lead to increased efficiency rather than inefficiencies, as they reduce the need for manual intervention and streamline processes.

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