4min chapter

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"Real-Time" ML: Features and Inference // Sasha Ovsankin and Rupesh Gupta // MLOps Podcast #135

MLOps.community

CHAPTER

What Are You Dealing With Behind the Scenes?

The goal is to reduce the delay between when user takes an action and when it can be leveraged from recommender systems to adapt recommendations. So for example, let's say that in the past, I've always applied for web developer jobs in San Francisco but today, I might start searching for jobs in New York. And this can reflect a change in my preference. But until this change is detected by recommender systems, I might not see the most relevant recommendations. For example, a content recommender might still continue to recommend me content about, say, the developer job market in San Francisco instead of New York.

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