Real-time deployment is designed for low-latency, high-throughput inference, making it suitable for scenarios where predictions need to be computed quickly for individual records. This paradigm ensures rapid responses to requests, allowing for fast results even for single records.
The correct answer is E. Real-time.
Real-time deployment is designed to compute predictions for individual records with very low latency. This makes it ideal for applications that require immediate predictions, such as recommendation systems, fraud detection systems, and more. In a real-time deployment, the model is typically hosted on a server, and predictions are made on-demand for incoming data.
A voting comment increases the vote count for the chosen answer by one.
Upvoting a comment with a selected answer will also increase the vote count towards that answer by one.
So if you see a comment that you already agree with, you can upvote it instead of posting a new comment.
hugodscarvalho
9 months, 1 week agotrendy01
10 months, 1 week agoBokNinja
10 months, 2 weeks ago