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Implementing Time Series: Practical Use Cases Across Multiple Industries

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Time-series data is truly industry-agnostic. It's created across use cases, from financial services to smart manufacturing and beyond. However, it can be challenging to work with due to its enormous storage footprint, which creates further challenges for querying and analyses to extract real-time insights. In this talk, we will cover the fundamentals of time series data and its usage. We will then dive deep into the technicals of MongoDB Time Series collections and introduce the newest features. Speakers: Sahi Muthyala, Associate, Product Manager at MongoDB and Michael Gargiulo, Lead Product Manager, Time Series at MongoDB.
#MongoDBlocalNYC2023
#MongoDBlocalNYC2023
Implementing Time Series: Practical Use Cases Across Multiple Industries
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