Scenario: An enterprise wants to monitor and manage its TensorFlow workloads deployed on Google Cloud Platform effectively. Which TensorFlow service or tool should they leverage for this purpose?
- TensorFlow Extended (TFX)
- TensorFlow Serving
- TensorFlow Hub
- TensorFlow Model Optimization Toolkit
TensorFlow Extended (TFX) provides a comprehensive platform for deploying and managing production machine learning pipelines, including monitoring capabilities to ensure the performance and reliability of TensorFlow workloads deployed on Google Cloud Platform. Leveraging TFX would enable the enterprise to effectively monitor and manage their TensorFlow workloads in a scalable and efficient manner.
Loading...
Related Quiz
- What happens to compute resources during periods of low demand when autoscaling is enabled?
- What role does Google Kubernetes Engine play in the process of continuous integration and continuous deployment (CI/CD)?
- Scenario: A team is looking for a serverless solution for data processing to avoid managing infrastructure. Which Google Cloud service would fulfill this requirement effectively?
- AI Platform provides _______ infrastructure for training and serving machine learning models.
- What type of scaling does Cloud SQL offer to handle increased workload demands?