What's included?
You can edit this quickstart to add helpful components. View the repository and open a pull request.
The Importance of Monitoring scikit-learn Models in Production
scikit-learn is a widely-used machine learning library in the Python ecosystem. When deploying these models in production environments, continuous monitoring during inference becomes essential for several key reasons:
Performance optimization:
By keeping an eye on your models, you can detect and rectify performance bottlenecks, ensuring that predictions are made efficiently and promptly.
Early detection of issues:
Through vigilant monitoring, problems such as delayed inference times or unexpected outputs can be identified early on, allowing for swift interventions and minimal service disruption.
Assured Reliability:
Active monitoring guarantees that the scikit-learn models remain dependable, reinforcing user trust in the predictions and insights provided.
Comprehensive monitoring quickstart for scikit-learn
By placing emphasis on real-time monitoring during the inference phase, you not only ensure the efficacy of your training but also guarantee that your scikit-learn models are robust and reliable when serving users.
What’s included in the scikit-learn quickstart?
New Relic scikit-learn monitoring quickstart provides quality out-of-the-box reporting:
- Obtain insights into how your scikit-learn models are performing in real-time
- Alerts on model performance: Set up proactive notifications for any unusual behavior or degradation in the performance of your models