-
Featured services
Harness innovation to deliver value
Ensure short-term stability as you design a roadmap for new use cases in your industry with emerging technologies.
Explore Connected Industries -
Services
Leverage our capabilities to accelerate your business transformation.
-
Services
Network as a Service
Popular Products
-
Private 5G
Our turnkey private 5G network enables custom-built solutions that are designed around unique use cases and strategies, and deployed, run and optimized through a full network-as-a-service model.
-
Managed Campus Networks
Our Managed Campus Networks services transform campus networks, corporate area networks and interconnected local area networks, and connect smart places and industries.
-
-
Services
Cloud Services
Popular Products
-
Cloud Migration and Transformation Services
Access the people, processes and technologies you need to deliver cloud migration projects that improve your return on investments.
-
Site Reliability Engineering Services
Get the most from your cloud investments when you harness our Site Reliability Engineering Services to support app development and lifecycle management.
-
-
Services
Edge as a Service
Client stories
-
Penske Entertainment and the NTT INDYCAR SERIES
Together with Penske Entertainment, we’re delivering digital innovations for their businesses – including INDYCAR, the sanctioning body of the NTT INDYCAR SERIES – and venues such as the iconic Indianapolis Motor Speedway, home to the Indianapolis 500.
-
Using private wireless networks to power IoT environments with Schneider Electric
Our combined capabilities enable a secure, end-to-end digital on-premises platform that supports different industries with the benefits of private 5G.
-
-
Services
Technology Solutions
-
Services
Global Data Centers
-
Services
Digital Collaboration and CX
IDC MarketScape: Worldwide Datacenter Services 2023 Vendor Assessment
We provide a new kind of intelligent infrastructure to deliver better outcomes through technology.
Get the IDC MarketScape -
-
-
Insights
Recent Insights
-
The Future of Networking in 2025 and Beyond
-
Using the cloud to cut costs needs the right approach
When organizations focus on transformation, a move to the cloud can deliver cost savings – but they often need expert advice to help them along their journey
-
Make zero trust security work for your organization
Make zero trust security work for your organization across hybrid work environments.
-
-
Copilot for Microsoft 365
Everyone can work smarter with a powerful AI tool for everyday work.
Explore Copilot today -
-
Global Employee Experience Trends Report
Excel in EX with research based on interviews with over 1,400 decision-makers across the globe.
Get the EX report -
Discover how we accelerate your business transformation
-
About us
CLIENT STORIES
-
Liantis
Over time, Liantis – an established HR company in Belgium – had built up data islands and isolated solutions as part of their legacy system.
-
Randstad
We ensured that Randstad’s migration to Genesys Cloud CX had no impact on availability, ensuring an exceptional user experience for clients and talent.
-
-
CLIENT STORIES
-
Liantis
Over time, Liantis – an established HR company in Belgium – had built up data islands and isolated solutions as part of their legacy system.
-
Randstad
We ensured that Randstad’s migration to Genesys Cloud CX had no impact on availability, ensuring an exceptional user experience for clients and talent.
-
-
CLIENT STORIES
-
Liantis
Over time, Liantis – an established HR company in Belgium – had built up data islands and isolated solutions as part of their legacy system.
-
Randstad
We ensured that Randstad’s migration to Genesys Cloud CX had no impact on availability, ensuring an exceptional user experience for clients and talent.
-
NTT DATA and HEINEKEN
HEINEKEN revolutionizes employee experience and collaboration with a hybrid workplace model.
Read the HEINEKEN story -
- Careers
Topics in this article
Edge computing is a distributed computing paradigm that moves computer storage and processing to the edge of the network, where it’s closest to users and devices, more secure and, most critically, as close as possible to applications and data sources.
In a traditional computing model, data is sent to a centralized data center or a cloud provider for storage and processing. However, this can result in latency and bandwidth constraints.
With edge computing, devices and sensors located at the edge of the network can process and analyze data in real time. Because data doesn’t have to be sent to a central location for processing, organizations can process it locally, which can improve cost savings, response times and application performance.
What are the benefits of edge computing?
Putting computing at the edge allows organizations to improve how they manage their physical assets and create new, interactive human experiences. Some of the benefits of edge computing include:
- Reduced latency: Bringing data processing closer to the data source means you gain the time it would take to transmit data back and forth to the cloud. This allows for real-time processing and faster decision-making.
- Improved data security: Sensitive data doesn’t have to be sent to cloud servers, where it can be susceptible to cyberattacks or interception. By processing data locally, edge devices can ensure that sensitive data remains within the local network, enhancing data security.
- Cost-effective: Edge computing reduces the bandwidth and storage costs associated with transmitting data to the cloud, making it a more cost-effective option for organizations with large amounts of data.
- Scalability: With edge computing, organizations can scale their compute and storage resources dynamically, based on their needs. This makes it easier to handle any spikes in data volume and processing requirements.
- Enhanced reliability: Edge computing can improve the reliability of applications by enabling them to operate independently of the cloud. This offers advantages in scenarios where a network connection could be unstable or unreliable, such as at remote industrial sites or at offshore oil rigs.
Edge-computing uses cases and examples
Edge computing has a range of potential use cases, especially in applications where real-time data processing and low latency are critical. Some of the most common ones include:
- Industrial automation: Edge computing can enable real-time data processing and analysis for industrial automation applications such as predictive maintenance, machine learning and monitoring factory equipment.
- IoT devices: Edge computing can be used to process and analyze data locally, reducing latency and improving response times. This is particularly useful for applications that require real-time data processing, such as smart cities (for example, how NTT is helping to digitally transform the City of Las Vegas), home automation and wearable devices.
- Autonomous vehicles: Edge computing can enable self-driving vehicles to process data from sensors and cameras in real time, allowing them to make rapid decisions and respond to changes in their environment.
- Healthcare: Healthcare applications such as remote patient monitoring, real-time data analysis and predictive analytics can benefit greatly from the speed that edge computing enables.
- Retail and hospitality: Edge computing can enable real-time data processing and analysis for applications such as inventory management, customer analytics and personalized marketing.
- Video and media streaming: Finally, organizations can use edge computing for content delivery networks (CDNs) to improve streaming performance and reduce latency by caching and processing data at the edge of the network.
Challenges related to edge devices and ways to address them
While edge computing offers several benefits, it does come with a few challenges. They include:
- Network connectivity: Edge devices and sensors may be located in remote or hard-to-reach areas, which can make it difficult to maintain a reliable network connection.
- Security: Edge devices have to be secured against cyberthreats such as hacking or data breaches, which can compromise sensitive data.
- Scalability: As the number of edge devices and sensors grows, it can be difficult to manage and scale the infrastructure needed to support them.
- Data management: Edge devices generate large amounts of data, which can be difficult to manage and store effectively.
To address these challenges, there are several strategies that can be employed:
- Build a robust network infrastructure: A fast, reliable and scalable network infrastructure – for example, NTT’s Private 5G – is key to ensuring that edge devices can connect and communicate effectively.
- Establish security protocols: Implementing security protocols such as encryption, authentication and access control can help protect sensitive data.
- Use the right platforms: Platforms that provide tools for data management, analytics and application development can help to simplify the deployment and management of edge computing.
- Get expert support: Going beyond the technology itself, your organization may lack the broader expertise and support you need to make edge computing a success. Solutions such as NTT’s Edge as a Service can accelerate your digital transformation efforts in this regard in a scalable and cost-effective way.
- Cloud integration: Integrating edge computing with cloud services can help to provide additional processing power, storage and analytics capabilities.
What is the future of edge computing?
The future of edge computing looks promising, and an increased adoption of edge computing is expected in various sectors, including agriculture, transportation and logistics. As edge computing becomes more prevalent, there will be a growing demand for specialized hardware, such as edge servers and sensors, to support its infrastructure.
- ALSO READ → What is edge as a service?
The rollout of 5G networks is expected to further enhance the power of edge computing, providing ultrafast speeds and low latency for data processing and transmission. Edge computing is also a natural fit for AI applications, as it can provide real-time data processing and analysis for AI models. This is expected to further the growth of edge AI.
As more edge computing systems are deployed, there will be a need for standardization and interoperability to ensure that different systems can seamlessly communicate.