db2-event-store-iot-analytics - IoT sensor temperature analysis and prediction with IBM Db2 Event Store

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This code pattern demonstrates the use of Jupyter notebooks to interact with IBM Db2 Event Store -- from the creation of database objects to advanced analytics and machine learning model development and deployment. The sample data used in this code pattern simulates data collected by real industry IoT sensors. The IoT sample data includes sensor temperature, ambient temperature, power consumption, and timestamp for a group of sensors identified with unique sensor IDs and device IDs. A simple IBM Streams flow is used to stream the sample data from a CSV file to an Event Store table.

https://developer.ibm.com/patterns/iot-sensor-temperature-analysis-with-ibm-db2-event-store/
https://github.com/IBM/db2-event-store-iot-analytics

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