S
- Sandbox Environments
- Secure Coding Practices
- Security Automation
- Security Awareness Training
- Security Champions
- Security Information and Event Management (SIEM)
- Security Orchestration
- Security Posture
- Shift-Left Security
- Smart City
- Smart Home
- Smart Manufacturing
- Smart Meters
- Smart Products
- Smart Spaces
- Software as a Service (SaaS)
- Software Composition Analysis (SCA)
- Software Defined Networking (SDN)
- Software Development Life Cycle (SDLC)
- Static Application Security Testing (SAST)
- Structured Data
Energy data analytics
Simple Definition for Beginners:
Energy data analytics is the use of computer programs to analyze energy usage data, helping people and businesses understand how they use energy and find ways to save money and be more efficient.
Common Use Example:
A household can use a smart energy meter that collects data on electricity usage. By analyzing this data, the meter provides insights into which appliances use the most energy and suggests ways to reduce consumption, like using energy-efficient bulbs or optimizing heating and cooling systems.
Technical Definition for Professionals:
Energy data analytics involves the application of advanced data analysis techniques and tools to energy-related data. It encompasses the collection, processing, and analysis of data from various sources such as smart meters, sensors, and energy management systems. The objective is to derive insights for optimizing energy consumption, improving operational efficiency, reducing costs, and supporting decision-making processes. Techniques used include statistical analysis, machine learning, and predictive modeling. Energy data analytics is crucial for sectors like utilities, manufacturing, and smart grids, enabling real-time monitoring, fault detection, and predictive maintenance.
Energy data analytics