How do you deal with performance degradation of a model over time (model drift)?
Answer Posted / Gaurav Goel
To address model drift, there are several approaches: active monitoring to identify changes in the data distribution, retraining the model on more recent data, using ensemble methods for better robustness, and incorporating online learning algorithms that adapt to changing conditions.
| Is This Answer Correct ? | 0 Yes | 0 No |
Post New Answer View All Answers
What is your understanding of the different types of cloud-based machine learning services?
What are the benefits and risks of using AI in financial risk analysis?
How do you ensure that your models are fair and unbiased?
What are the biggest challenges you see in AI implementation across industries?
Why is it important to address bias in AI models?
Discuss how AI is used to identify vulnerabilities.
How does the bias in training data affect the performance of AI models?
What are some of the major challenges facing AI research today?
What are some techniques for developing low-power AI models?
What techniques can be used to make AI models more fair?
What methods are used to make AI decisions more transparent?
How can you optimize AI models for edge deployment?
What frameworks can you use for ethical AI development?
Explain the difference between supervised, unsupervised, and reinforcement learning.
Explain the concept of adversarial attacks and how to protect AI models from them.