29.1 C
New Delhi
Friday, May 10, 2024

Shop

Edge Computing

Edge computing is a distributed computing paradigm that involves processing data near the source of data generation, rather than relying on a centralized cloud-based server. In edge computing, data is processed locally on devices or in edge servers located close to the data source, reducing latency, improving efficiency, and enhancing the overall performance of applications and services. This approach is particularly relevant in scenarios where real-time processing and low-latency responses are critical.

Key characteristics and concepts of edge computing include:

  1. Proximity to Data Source: Edge computing brings computational resources closer to the location where data is generated. This proximity reduces the need to send all data to a centralized cloud server, minimizing latency and bandwidth usage.
  2. Low Latency: One of the primary advantages of edge computing is the reduction of latency. By processing data closer to the source, applications can achieve faster response times, making it suitable for real-time and time-sensitive applications.
  3. Bandwidth Efficiency: Edge computing helps alleviate network congestion by processing data locally. This is particularly beneficial in scenarios where transmitting large amounts of data to a centralized cloud would be impractical or costly.
  4. Decentralized Processing: In edge computing, processing is distributed across multiple edge devices or servers. This decentralization enhances scalability, fault tolerance, and resilience, as failures in one part of the system don’t necessarily affect the entire network.
  5. Internet of Things (IoT): Edge computing is closely associated with IoT, where numerous sensors and devices generate data. Edge devices in IoT applications often perform initial data processing, filtering, and analysis before sending relevant information to the cloud for further processing.
  6. Real-Time Analytics: Edge computing is well-suited for applications that require real-time analytics, such as monitoring and control systems, video analytics, and industrial automation.
  7. Privacy and Security: By processing sensitive data locally, edge computing can enhance privacy and security. Critical data can be processed on-site without necessarily being transmitted over public networks, reducing exposure to potential security threats.
  8. Autonomous Systems: Edge computing is essential for the development of autonomous systems, such as self-driving cars and drones, where quick decision-making based on real-time data is crucial.
  9. Cloud-Edge Collaboration: Edge computing often works in conjunction with cloud computing. While edge devices handle immediate processing needs, the cloud can be used for more resource-intensive tasks, storage, and long-term analytics.

Examples of edge computing applications include smart cities, smart grids, healthcare monitoring, retail analytics, and various IoT use cases.

Prominent technology companies are developing edge computing solutions and services to support the growing demand for decentralized and real-time processing. As the number of connected devices increases and the need for low-latency applications rises, edge computing is becoming increasingly important in the broader landscape of computing and network architectures.

More Terms

Full Frame

Intranet

Shutter

2G

Burst Mode

Industrial IoT (IIoT)

OIS

Google Chrome

Pervasive Sensing

ProMotion Display

New Additions

Webinar

IR thermal sensor

LIDAR

Digital Signal Processing (DSP) technology

Clepsydra ( Water Clock)

Carbon Footprint

Mechanical clock

Sundial

UIDAI

OCR