Cloud Network Management Platform for Multi-Site Enterprises at Scale TAIPEI, Dec. 16, 2025 /PRNewswire/ — D-Link Corporation (TWSE: 2332), a global leader in networkingCloud Network Management Platform for Multi-Site Enterprises at Scale TAIPEI, Dec. 16, 2025 /PRNewswire/ — D-Link Corporation (TWSE: 2332), a global leader in networking

D-Link Launches Nuclias Unity

Cloud Network Management Platform for Multi-Site Enterprises at Scale

TAIPEI, Dec. 16, 2025 /PRNewswire/ — D-Link Corporation (TWSE: 2332), a global leader in networking and connectivity solutions, announced the launch of Nuclias Unity, a next-generation license-free cloud network management platform. Purpose-built for organizations ranging from SMBs to large, multi-site enterprises, Nuclias Unity delivers unified control, simplified operations, and enterprise-grade reliability—without the traditional cost and complexity of licensed cloud platforms.

Backed by D-Link’s decades of networking expertise, Nuclias Unity empowers IT teams to manage wired and wireless networks through a unified cloud management platform, accelerating cloud adoption while ensuring visibility, consistency, and operational efficiency across all business environments.

Meeting the Challenges of Modern Distributed IT

As businesses expand across locations and adopt hybrid workplace models, IT teams must manage increasingly complex networks that span multiple sites, devices, and user groups—all while facing limited staff and rising security demands. Fragmented tools and mixed environments amplify the burden, slow troubleshooting, and elevate operational risk.

Nuclias Unity directly addresses these challenges by offering:

  • End-to-end visibility across switches and access points through real-time dashboards and topology maps.
  • Rapid multi-site deployment using cloud-based configuration templates—no on-site IT personnel needed.
  • Proactive monitoring and alerting to maintain service availability and consistent network performance.
  • Stronger governance with centralized policies and role-based access controls that simplify compliance and minimize misconfigurations.
  • License-free scalability, enabling businesses to grow without recurring subscription costs.

A Next-Generation Cloud Platform Built for Scale

Nuclias Unity provides enterprise-class network management through a single intuitive interface that unifies configuration management, monitoring, firmware lifecycle control, troubleshooting tools, and security policy enforcement.

Key capabilities include:

  • Topology-Driven Operational Visibility: Correlate link status, per-port utilization, and device health in a single view to accelerate fault isolation and capacity planning.
  • Port Profiles for Bulk Changes: Apply consistent VLAN, QoS, and security settings to multiple ports and switches in one step, reducing manual configuration time and errors.
  • Proactive Capacity & Power Monitoring: Track CPU, memory, and PoE utilization to identify hot spots early, mitigate overload risk, and keep business-critical services running.
  • Wi-Fi Capacity & Channel Analytics: Track wireless traffic patterns and per-channel utilization over time to prevent congestion and right-size WLAN capacity at each site.
  • Role-Based Access Control (RBAC): Enforce least-privilege access with clearly separated Super Admin, Admin, and Viewer roles scoped by organization or site to minimize configuration risk.

One platform to easily manage networks from single locations to large enterprises.

Nuclias Unity supports a three-layer management model that lets enterprises and service providers structure their networks according to operational scale and governance requirements.

  • Layer 1: Single-Site or Small Environments
    Ideal for cafés, boutique shops, kindergartens, and small offices—simple workflows make setup fast for non-specialist staff.
  • Layer 2: Multi-Branch SMB or Mid-Sized Environments
    Suitable for K–12 schools, business hotels, and retail chains requiring unified policy management and consistent firmware deployment across sites.
  • Layer 3: Large and Regulated Enterprise Environments
    Designed for distributed enterprises that require granular role- and site-based delegation, ensuring proper separation of privileges and governance.

This layered flexibility also makes Nuclias Unity an excellent fit for system integrators, who increasingly need tenant-based structures for large-scale service delivery.

Nuclias Unity Solution – 5 Core Pillars

Nuclias Unity is designed around the internationally recognized FCAPS model, delivering comprehensive operational governance across:

  • Fault Management – Early detection, timely alerts, and actionable diagnostics.
  • Configuration Management – Centralized settings, bulk provisioning, and version consistency.
  • Accounting Management – Real-time usage insights to support capacity planning and cost optimization.
  • Performance Management – Health monitoring and dashboard analytics to prevent bottlenecks.
  • Security Management – Role-based access and standardized policies across all sites.

As D-Link continues empowering businesses in a cloud-driven and hyperconnected world, Nuclias Unity reflects the company’s commitment to delivering simpler, smarter, and more scalable network management for organizations of all sizes. Aligned with D-Link’s brand vision — “One Connection • Infinite Possibilities.” — the platform enables customers to build reliable, secure, and future-ready networks that support limitless innovation and growth.

Global Availability and Contact

For product details, deployment consultations, or to request a live demo of Nuclias Unity, please visit: https://www.dlink.com/en/for-business/nuclias/nuclias-unity or contact your local D-Link representative or authorized partner.

About D-Link

D-Link, a global leader in the networking industry, began expanding worldwide in 1986 and was officially established as D-Link Corporation in 1987. With 90 operational and sales locations across 43 countries, D-Link provides innovative and reliable networking equipment, AI-powered cloud management services, and complete infrastructure solutions for individuals, homes, businesses, and industries. Find out more about D-Link at www.dlink.com

Cision View original content to download multimedia:https://www.prnewswire.com/news-releases/d-link-launches-nuclias-unity-302641986.html

SOURCE D-Link

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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