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The Next Platform: In-depth coverage of high end computing

Uncle Sam Awards $2 Billion-Plus To Quantum Companies, But Wants A Cut Oak Ridge Starts Weaving Together A Quantum, Classical HPC, And AI System Stack Dell Bulks Up Hardware As AI Infrastructure Shifts To On-Premises Cisco Wins Over AI Customers With Merchant Silicon And Optics With Its IPO Done, Cerebras Can Get Back To Pushing The AI Envelope HPE Throws VM Users A Lifeline, Unifying Containers And VM Management In Cloud Stack OpenAI, Microsoft And Friends Build A Better, More Scalable Ethernet Compute And Memory Price Hikes Drive IT Spending Way Higher Sometimes, Air Is The Only Way For AI Systems To Keep Their Cool Arista Rides AI Scale Out Networks, Moves Into Scale Across, And Awaits Scale Up If You Can Make A Compute Engine, You Can Sell A Compute Engine Cleveland Clinic Simulates Large Proteins With Quantum-Centric Supercomputing Broadcom Helps CPU And XPU Makers Go Vertical With Compute Microsoft Committed To Doubling AI Infrastructure In Two Years Google Is A Full Stack AI Player, And Is Playing Well AWS Will Be An OEM, Just Like Google And Maybe Microsoft New Google Networks Tuned Up For GenAI Inference And Training Microsoft And OpenAI Remain Friends, Are Looking To Hook Up With Others AI-Driven CPU Shortage Saves Intel’s Financial Cookies The GenAI Battle Shifts From Frontier Models To Agentic Platforms With TPU 8, Google Makes GenAI Systems Much Better, Not Just Bigger Cisco Scales Out Quantum Systems With A Quantum Network Switch The Second Time Will Be The IPO Charm For Cerebras Imagine An Army Of AI Minions Handling Incident Response AI Will Soon Drive A Third Of TSMC’s Business Bechtolsheim & Friends Breathe Life Into Pluggable Optics One Last Time How HPC And AI Digital Twins Accelerate Quantum Error Correction Nvidia Brings The Power Of Open Source AI Models To Quantum Computing Building The Imperfect Beast For Enterprises, GPUs Need Virtualization As Much As CPUs Ever Did CoreWeave Takes As Much Financial Engineering As It Does Datacenter Design Contemplating Meta’s Homegrown MTIA Compute Engine Roadmap Most Neoclouds, Sovereigns, And Enterprises Will Buy, Not Build, Their AI Stacks Broadcom And Google Benefit Mightily From Anthropic’s Meteoric Growth Rebellions AI Rings Up The Money To Rack Up AI Inference Systems Nvidia Software Pushes MLPerf Inference Benchmarks To New Highs Broadcom Makes Its Pitch To Run Kubernetes On VMware VCF The $2 Billion Nvidia Deal With Marvell Is About A Lot More Than NVLink Fusion Classiq Says Quantum Is On Its Way, But Patience Is Needed Demonstrating The Scientific Usefulness Of Quantum Systems We Need Servers – Lots Of Servers. . . . Arm Comes Full Circle With Homegrown, AI-Tuned Server CPU Riding The Memory Boom And Trying To Avoid The Bust Data Analytics Helps Make The Mighty Lionesses Roar Driving Down The AI System Roadmap With Nvidia The Open Agentic AI World According To Nvidia Nvidia Finally Admits Why It Shelled Out $20 Billion For Groq Nvidia Says OpenClaw Is To Agentic AI What GPT Was To Chattybots IBM Unrolls Blueprint For Quantum-Classical HPC Computing Women Get Data-Driven Health Boost As The FA Tackles Sports Science Four Months Into Its Comeback, Zapata Stakes Its Claim In Quantum Software Eridu Cuts To The AI Networking Chase With High Radix Switch System HPE Works Harder And Smarter To Chase Datacenter Profits We Need A Proper AI Inference Benchmark Test How AI Is Boosting Gender Equality In High Performance Racing Custom Compute Engine Biz Growing More Than Marvell Ever Hoped Broadcom May Become The Biggest Counterbalance To Nvidia Ayar Labs Gets $500 Million To Ramp Photonics Into 2028 AI Systems With Cisco Outshift, Agentic AI Is Teed Up For the Internet Of Cognition Nvidia Sees The Light On Silicon Photonics And Maybe Optical Switching AI Servers Finally Dominate Dell’s Systems Business VAST Data: What Controls The Data Is More Important Than What Stores It So Far, Nobody Turns Tokens Into Money Like Nvidia SambaNova Pits Its Engineering Against Nvidia For Agentic AI Some More Game Theory, This Time On The AMD-Meta Platforms Deal AMD Says “Helios” Racks And MI400 Series GPUs On Track For 2H 2026 CPU-Only Compute Still Matters To A Lot Of HPC Centers Taalas Etches AI Models Onto Transistors To Rocket Boost Inference Some Game Theory On That Nvidia-Meta Platforms Partnership AI Eats The World, And Most Of Its Flash Storage The Current AI Networking Wave Will Be A Tsunami Of Money By 2027 The Memory Crunch Pinches Cisco’s Profits Only A Few AI Platforms Can Survive The Greatest AI Show On Earth Cisco Doubles Up The Switch Bandwidth To Take On AI Scale Out And Eventually Scale Up Datacenter Spending Forecast Revised Upwards – Yet Again The Twin Engine Strategy That Propels AWS Is Working Well With GenAI Turbochargers, Google Is Shifting Its Cloud Into A Higher Gear AMD Finally Makes More Money On GPUs Than CPUs In A Quarter Dassault And Nvidia Bring Industrial World Models To Physical AI TACC Explores Mixed Precision And FP64 Emulation For HPC With Horizon Robotics Will Break AI infrastructure: Here's What Comes Next Oracle’s Financing Primes The OpenAI Pump Gartner Takes Another Stab At Forecasting AI Spending Microsoft Is More Dependent On OpenAI Than The Converse Big Blue Poised To Peddle Lots Of On Premises GenAI Microsoft Takes On Other Clouds With “Braga” Maia 200 AI Compute Engines Nvidia’s $2 Billion Investment In CoreWeave Is A Drop In A $250 Billion Bucket Intel Is Still Struggling In The Datacenter, But It Could Get Better Is Nvidia Assembling The Parts For Its Next Inference Platform? 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The Embrace Of AI In Design Transforms Cadence And Its Customers
Jeff Burt · 2026-04-16 · via The Next Platform: In-depth coverage of high end computing

Rob Knoth harkens back to 2019, when Anirudh Devgan, then president of Cadence Design Systems, walked to the whiteboard at the head of the meeting room and started to draw circles. By this time, Cadence had been around for almost three decades and was well known for designing semiconductors and circuits

“We make the EDA software and the IP that's critical to today's semiconductor and electronics industry,” Knoth, the company’s senior group director for strategy and new ventures, tells The Next Platform. “Cadence was in the business of helping companies make their semiconductors, helping them make their printed circuit boards. That was really the fundamental part of the company.”

However, things changed for the company that day seven years ago. Devgan, who two years later also assumed the title of Cadence’s chief executive officer, outlined how the company was going to grow and expand in the coming years, noting that its competency in EDA software and the IP that is critical to the semiconductor and electronics industry means its “insanely good at simulating and optimizing incredibly complicated systems with a high degree of precision, accuracy, and speed.”

“He saw the fact that we could grow from that core of design excellence and start tackling full systems innovation,” he says. “It really is just a matter of bringing in some additional expertise at the algorithm level, but the core concepts of creating engineering software translate incredibly well. The core ability to match an algorithm to a compute platform and get it to accelerate or be able to deal with a designer's thought process. Those are all very transferable skills.”

According to Knoth, Devgan also saw the promising role AI could play in Cadence’s ambitions and the IT industry in general, not only in terms of products but also in the impact it would have in software, bringing intelligence to design. Embracing the emerging technology – and more recently generative and agentic AI – not only accelerated what the company does but also opened up myriad verticals, from consumer tech to hyperscalers.

Cadence has been on the AI-fueled journey since. It’s got a growing Candence.AI portfolio of AI-based tools. It includes its Millennium M2000 supercomputer, introduced last year and powered by Nvidia’s Blackwell GPU architecture. The system includes Nvidia’s HGX B200 systems, RTX Pro 6000 Blackwell Server Edition GPUs, and CUDA-X libraries and solver software, and Cadence uses it to accelerate many of its operations, including EDA, system design analysis and molecular solvers.

The means being able to run huge simulations that the company couldn’t before, which changes how it can approach the work it does, from semiconductor and 3D-IC design and datacenter digital twins to modeling for drug discovery and engineering work Cadence is doing in other sectors it’s expanded into, including hyperscale computing, automotive, and aerospace and defense.

Other tools include the Verisium verification platform, which enables algorithms to use big data and generative AI capabilities across multiple runs and engine in security-on-a-chip (SoC) verification processes and Allegro-X for faster PCB design. Cadence also is bringing agents into its offerings, including Cerebrus AI Studio, which the company describes as an agentic AI-based multi-block and multi-user SoC design platform.

In recent months, Cadence has unveiled its ChipStack AI Super Agent aimed at silicon design and verification and deeper integration with Nvidia’s technologies – including its Grace CPUs – that executives say will lead to accelerated offerings in such areas as EDA, system design automation.

Core to ChipStack AI Super Agent is what Cadence calls its Mental Model, which provides a structured and persistent understanding of the intent of engineers, acting as a single source of truth that pulls in specification, hierarchies, and relationships for AI agents, ensuring they don’t suffer the hallucinations large language models do.

Cadence began adding agentic capabilities last year, such as natural language interfaces, AI assistants, and basic agents, Knoth says. ChipStack AI Super Agent was a big step.

“The whole reason for that is verification is the tall temple in any of the major semiconductor products that are out there today,” he says. “It's a problem that you can throw as many resources and compute at as possible and you never really finish it. Being able to give people more productivity and more efficacy here, this was a natural win, and the best place to start to apply agentic AI.”

At its CadenceLIVE 2026 show this week in San Jose, California, Devgan and other executives announced expanded partnerships with Nvidia and Google to expand the Cadence’s AI-powered computational software semiconductor and system design capabilities and its reach in the area of AI physics. Cadence and Google are integrating the hyperscaler’s Gemini AI platform with the ChipStack AI Super Agent and it making it available on the Google Cloud Marketplace. The goal is to offer an agentic and scalable cloud-native platform for chip design and verification.

With Nvidia, the companies are looking to combine Cadence’s AI-based design, EDA, and SDA offerings with CUDA-X, AI physics, and Omniverse libraries for digital twins and running this on the Millennium M2000 Supercomputer. This will let engineers to use Cadence’s physics engines and Nvidia AI models to train robots through digital twin technology.

This will allow Cadence to accelerate its principled solvers and use AI physics models to generate engineering workloads that will as much as 100 times faster than what’s offered now.

The announcements and work that Cadence already has done are part of what the company calls its “Design for AI and AI for Design” strategy. It’s essentially the idea of creating tools for AI workloads and using AI to create chips, which centers on AI and agentic AI being used to improve productivity and chip performance. Building the infrastructure – design for AI – is what Cadence has been doing for more than 35 years.

“What's new now is the other half, where we take the AI that's been created and we bake it into our solutions so that they're easier to use, they're more powerful, they're more effective, and that creates a flywheel effect where those tools help design the next generation of infrastructure, that next generation infrastructure creates a more powerful model,” Knoth says. “We integrate that into our tools and it just keeps on going.”

The adoption of AI in most aspects of the business also has helped Cadence expand into markets that it wouldn’t reach before. The industries that Cadence list on its website include aerospace and defense, automotive, hyperscale computing, and life sciences. It’s being accomplished both through in-house innovation and acquisition. For example, Cadence bought startup ChipStack in November 2025, a month after closing on the purchase of Secure-IC for its embedded security IP. In February, the company bought Hexagon AB’s design and engineering business in a move aimed at expanding its SDA portfolio and future in the physical AI space, which includes robots and autonomous vehicles.

“We have expanded from that core of design excellence, which is really that EDA side into systems where we're designing all the world's big 3D-ICs,” Knoth says. “We're continuing to produce PCBs, but we've got industry-leading algorithms and software now and multi-physics where people are designing combustion simulations for energy systems or they're doing drone design or airplane design. They are creating digital twins of datacenters and helping maximize tokens-per-watt and making those more effective. We have even expanded out into molecular science.”

Cadence made the jump into molecular science with the 2022 acquisition of OpenEye Scientific Software, extending its competency in computational software into molecular modeling and simulation. It is the move that put into focus the vision that Devgan outlined on the whiteboard three years earlier, Knoth says, adding that the strategy “goes to infinity. You just find the next new solver you're going after and you marry that with your expertise and you're able to enter these new markets. We don't stray from our center of competence. We're still creating computational software, but the formula is extensible, repeatable and successful.”

It seems to be working for Cadence. The company in February reported FY 2025 results that showed almost $5.3 billion, a year-over-year jump from more than $4.64 billion in 2024.

“Where we see this going is very rapidly,” says Knoth. “You are going to have embodied AI moving in the world around us, sensing, interacting, etc., and this we see mostly focused on drones, autonomous driving, or robots, and that requires incredibly complex silicon and systems that are co-optimized together. These horizons, the things that are happening, they don't stop when the next one starts. They're building on each other, they're continuing to increase, and that goes even further out into applying these domains to all of the disciplines of science, whether that's the drug discovery-type work that we're doing now or material science – battery research, environmental research. These topics are evergreen and the world has no shortage of challenges that are out there to be solved. It's a great place to be.”