-
-
-
-
URL copied!
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.
Top Insights
Manchester City Scores Big with GlobalLogic
AI and MLBig Data & AnalyticsCloudDigital TransformationExperience DesignMobilitySecurityMediaTwitter users urged to trigger SARs against energy...
Big Data & AnalyticsDigital TransformationInnovationRetail After COVID-19: How Innovation is Powering the...
Digital TransformationInsightsConsumer and RetailTop Authors
Top Insights Categories
Let’s Work Together
Related Content
Unlock the Power of the Intelligent Healthcare Ecosystem
Welcome to the future of healthcare The healthcare industry is on the cusp of a revolutionary transformation. As we move beyond digital connectivity and data integration, the next decade will be defined by the emergence of the Intelligent Healthcare Ecosystem. This is more than a technological shift—it's a fundamental change in how we deliver, experience, … Continue reading Processing and Mining Data in IoT Systems and Enterprise Applications →
Learn More
Leveraging SaMD Applications to Improve Patient Care and Reduce Costs
One of the most exciting developments in healthcare is the emergence of Software as a Medical Device (SaMD) as a more convenient and cost-effective means to deliver superior care to the tens of millions of people worldwide who suffer from various health conditions.
Learn More
View on payment industry modernisation: Drivers of change
The payment industry has been going through radical modernisation with multiple regulatory and infrastructure changes over the last five to ten years. The post-pandemic era has accelerated these efforts as consumer behaviour changed significantly during the COVID-19 outbreak. Consumers across the world expect real-time responses in all aspects of digital payment transactions and have adopted … Continue reading Processing and Mining Data in IoT Systems and Enterprise Applications →
Learn More
The Rise of The Invisible Bank
Banks will power experiences, but everyone will ignore them. Inspiration for this blog title comes from Jerry Neumann, the author of the blog Reaction Wheel, who wrote in 2015 that ‘software eats the world and everybody ignores it’. Neumann also observed that ‘information and communications technology becomes ubiquitous but invisible’ – in other words, … Continue reading Processing and Mining Data in IoT Systems and Enterprise Applications →
Learn More
MLOps Principles Part Two: Model Bias and Fairness
Welcome back to the second instalment of our two-part series – MLOps (Machine Learning Operations) Principles. If you missed part one, which focused on the importance of model monitoring, it can be found here. This blog explores the various forms that model bias can take, whilst delving into the challenges of detecting and mitigating bias, … Continue reading Processing and Mining Data in IoT Systems and Enterprise Applications →
Learn More
Share this page:
-
-
-
-
URL copied!