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ðŠ https://t.co/Oo0c1OwlrD
@DriveNets and @EdgecoreNetwork explore how to build a lossless, congestion-free AI fabric using Ethernet â delivering InfiniBand-class performance at a fraction of the cost and driving the utilization of your GPUs up and to the right...
What you'll learn!
How Fabric Scheduled Ethernet (FSE) and the DriveNets OS on Edgecore platforms enables:
â¶ïžÂ Predictable, lossless performance for AI clusters
â¶ïžÂ High-scale fabrics built on standard Ethernet
â¶ïžÂ Support for any GPU or NIC
â¶ïžÂ Major reductions in AI infrastructure and operational costs
Trim millions of dollars off the costs associated with building and maintaining a large AI cluster, with any GPU or NIC.
As the overall AI networking TAM climbs above $200B, operators are moving toward heterogeneous, multivendor AI fabrics.
ð https://t.co/e3L8X8Bs1B
Alan Weckel, founder and analyst at @650Group shows how DriveNetsâ $410M funding round will strengthen its position in AI networking by increasing inventory investment for supply-constrained markets and expanding its heterogeneous model across more AI accelerator vendors.
That can help operators improve cost models and accelerate deployment cycles as AI infrastructure scales.
With multivendor AI stack optimization and heterogeneous AI readiness, DriveNets is positioned to help Hyperscalers, NeoClouds, and enterprises build the next wave of AI networks.
The most expensive idle asset in the world? A GPU waiting on the network.
When networking bottlenecks slow down your AI clusters, your ROI plummets.
DriveNets just secured $410M in Series D funding to scale the open, multi-vendor Ethernet fabrics that large-scale AI infrastructure demands.
https://t.co/O2zyQXiqBo
DriveNetsâ high-performance AI Fabric eliminates networking bottlenecks by performing end-to-end networking optimizations across the entire AI stack.
âïž Maximize GPU utilization
âïž Reduce cost-per-token
âïž Enable rapid deployment and efficient end-to-end scaling
AI Networking for Service Providers: A Different Approach with DDC Clusters
Juan Rodriguez, Senior Sales Engineer at @drivenets explains how service providers are adopting AI networking through a "third" approach leveraging distributed disaggregated chassis (DDC) cluster technology with fabric architecture.
https://t.co/XL8gTJbJG6
AI infrastructure success isn't measured by the number of GPUs you own.
Find out why in our latest blog post: https://t.co/R7MmnY8unG
The AI landscape is shifting fast. As the industry moves from heavy model training to continuous AI inference, the "one size fits all" approach to hardware is not enough.
Read the full post:
âïž Why traditional TCO metrics are misleading (and the new metric to use)
âïž How multi-vendor, multi-ASIC clusters are tackling the unique demands of AI inference
âïž Why the network is the critical piece of infrastructure that makes or breaks heterogeneous AI
Get ready for the next AI infrastructure revolution.
Scaling AMD AI clusters?â
Let's talk about optimizing them for AI performance. â
Dive into the process and benchmark results behind a system-level optimization journey, starting deep within the host and extending across the entire multi-node network fabric.â
In our latest benchmarks using AMD Instinct MI355X GPUs, we prove what deep optimization can deliver:â
âïž 15% faster Time to First Token (TTFT) at the single-node levelâ
âïž Up to 5% higher multi-node throughputâ
âïž 12â16% faster TTFT at scaleâ
âïž Stronger performance as concurrency increases
https://t.co/riE0hs8wJE
Stop by Booth 506
DriveNets is proud to be a Bronze Sponsor at Dell Technologies World 2026! â
Learn more about how our high-performance AI networking solution ensures optimal GPU utilization and fast deployment - addressing the needs of
âïž large-scale multi-tenant AI clusters
âïž clusters deployed across multiple sites
âïž clusters supporting GPU as a Service (GPUaaS) offering
âïž converged back-end and storage networks
#delltechworld
Scale AI Clusters with DriveNets and @Dell
Build AI fabrics with the performance, reliability, and economics required for demanding AI workloads.
https://t.co/6719UV4SUh
DriveNets Fabric Scheduled Ethernet on the Dell AI Factory helps deliver predictable, high-performance AI networking for multi-tenant, GPUaaS, scale-across, and unified back-end/storage environments.
Build high-performance AI clusters:
- Consistent, low-latency AI performance
- Lossless Ethernet fabric for demanding AI workloads
- Faster deployment with full-stack AI cluster orchestration
Meet us at Booth 506 at #DellTechWorld to learn more about this new solution.
Is your network the hidden ceiling for your AI performance?â
While Mixture-of-Experts (MoE) architectures have drastically reduced compute costs, they have exposed a critical networking bottleneck that GPU investment alone cannot fix. â
Unlike the predictable, choreographed communication of dense models, MoE creates "improvisational" and unpredictable traffic patterns that often lead to significant GPU underutilization. â
ð https://t.co/uZvoFgEB67
Explore how industry leaders like DeepSeek AI and Meta are already reporting that communication latency can account for up to 50% of training time or 30% of serving latency. â
The focus must now shift from raw processing power to optimizing the network fabric that connects it all.
Is the network the hidden bottleneck holding back AI cluster performance?
Let's meet at the @ONUG_ AI Networking Summit
ð DriveNets stand 41
ð March 13-14, 2026 - Frisco|Dallas
Hear our presentation!
ð€ The Most Important Part of Your AI Cluster Isnât What You Think
ð May 14 | 12:30-12:40 pm CT
Sani Ronen will break down the building blocks of AI clusters and how the most critical parts can be optimized for peak performance
Come and see DriveNets at the ONUG AI Networking Summit
ð Stand 41
ð May 13-14, 2026 - Frisco|Dallas
Join our session! ð€
The Most Important Part of Your AI Cluster Isnât What You Think
ð May 14 | 12:30-12:40 pm CT
Sani Ronen, DriveNets Director of AI Networking, will break down the building blocks of AI clusters and how the most critical parts can be optimized for peak performance.
ð https://t.co/NJXPqNsMzw
NEW Report! Top Trends in Networking for AIâ
â ð https://t.co/S8tXsO8ygI
@futuriom explores the growing challenges of networking AI workloads - from datacenter clusters to the edge - covering areas like power consumption, emerging standards, and vendor solutions - as agentic AI rapidly becomes central to business operations.
Is your network the hidden ceiling for your AI performance?â
While Mixture-of-Experts (MoE) architectures have drastically reduced compute costs, they have exposed a critical networking bottleneck that GPU investment alone cannot fix. â
Unlike the predictable, choreographed communication of dense models, MoE creates "improvisational" and unpredictable traffic patterns that often lead to significant GPU underutilization. â
ð https://t.co/uZvoFgE3gz
Explore how industry leaders like DeepSeek AI and Meta are already reporting that communication latency can account for up to 50% of training time or 30% of serving latency. â
The focus must now shift from raw processing power to optimizing the network fabric that connects it all.
Your AMD infrastructure can perform better.
DriveNets and @AMD provide a fully integrated software and hardware stack that serves as a high-performance, competitive alternative for AI infrastructure.
Through our collaboration, we've published a validated Reference Architecture for clusters built with AMD Instinct MI355X GPUs, AMD Pollara NICs, and DriveNets scale-out and frontend solutions.
Read the full Reference Architecture and benchmark results:
ð https://t.co/chN2YgVy7y
By combining AMDâs capabilities with the DriveNets full-system approach, a solution built on AMD Instinct can easily handle the real-world demands of running modern AI inference in production.
We prove what deep optimization can deliver:
âïž 15% faster Time to First Token (TTFT) at the single-node level
âïž 12â16% faster TTFT at scale
âïž Up to 5% higher multi-node throughput
âïž Stronger performance as concurrency increases
Let's meet in Vegas!
DriveNets is proud to be a Bronze Sponsor at Dell Technologies World 2026! â
Stop by Booth 506 to see how weâre helping organizations to implement an open, Ethernet-based alternative to InfiniBand thatâs built for the most demanding AI workloads. â
#DellTechWorld #DellTechnologies
Donât let standard software constraints hold back your compute investment. See how we are unlocking the full power of the AMD ecosystem.
Read the full technical deep dive here: https://t.co/1mK2OzK5gq
Stop touching boxes!
Zero-touch provisioning isnât new. But making it cluster-wide, consistent, and reliable at scale is where things get interesting.
https://t.co/DkajB9yd6T
In this new TechBites, Brad Riapolov breaks down how we:
ð¹ Move from per-device bring-up to cluster-level initialization
ð¹ Enforce state consistency across all nodes
ð¹ Eliminate configuration drift before it even starts
The result: faster deployment, fewer human errors, and predictable outcomes across large-scale systems - not just individual boxes.
ð Follow #DNTechBites for real-world engineering insights, protocol breakdowns, and networking architecture innovations