Data Lakes, Time-Series Data, and Industrial Analytics
The challenges of integrating time-series data into data lakes can be overcome by using the right architecture and providing the appropriate metadata.
Niki Driessen is Chief Architect at TrendMiner, which provides self-service industrial analytics software to analyze, monitor, and predict operational performance in process manufacturing. He is responsible for defining the architecture and technology strategy for the product. Niki has a broad experience regarding software engineering, architecture, and agile software delivery, both on-premises and cloud-native, in various industries and scales (from start-up to large international enterprises).
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