Processing and Mining Data in IoT Systems and Enterprise Applications

Insight categories: AI and MLIoTAutomotiveCommunicationsConsumer and RetailFinancial ServicesHealthcareManufacturing and IndustrialMedia

In an IoT / internet and things based system or data-oriented enterprise application, a myriad of data is generated on a daily basis in the form of logs, readings from the sensors, users’ comments and reviews, etc. This data contains insights that can be of great business value. But before realizing any real value, the most significant challenge is to find the optimum way to warehouse and then mine this data for business-driven decision making.

This white paper describes two simple but popular data mining techniques—linear regression (in R) and Spring Batch—by working through a use case in the form of an app called Electrack, which helps users minimize their electricity expenses by keeping track of their daily consumption.

Author

Istock 962094986.jpg

Author

Aryan Singh

View all Articles

Trending Insights

If You Build Products, You Should Be Using Digital Twins

If You Build Products, You Should Be Using...

Digital TransformationTesting and QAManufacturing and Industrial
Empowering Teams with Agile Product-Oriented Delivery, Step By Step

Empowering Teams with Agile Product-Oriented Delivery, Step By...

AgileProject ManagementAutomotiveCommunicationsConsumer and RetailMedia

Top Authors

Lavanya Mandavilli

Lavanya Mandavilli

Principal Technical Writer

Oleksandr Fedirko

Oleksandr Fedirko

Senior Solution Architect

Mark Norkin

Mark Norkin

Consultant, Engineering

Deborah Kennedy

Deborah Kennedy

Associate Vice President,Client Engagement

Randy Merry

Randy Merry

Chief Technology Officer, Medical Technology & Healthcare

All Categories

  • URL copied!