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Austin Calling: As Texas Absorbs Influx of Residents, Rekor Taps NVIDIA Technology for Roadway Safety, Traffic Relief

Company is introducing AI-driven analytics using NVIDIA AI, Metropolis and Jetson for Texas and Philadelphia roads that could reduce fatalities and improve quality of life.
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Austin is drawing people to jobs, music venues, comedy clubs, barbecue and more. But with this boom has come a big city blues: traffic jams.

Rekor, which offers traffic management and public safety analytics, has a front-row seat to the increasing traffic from an influx of new residents migrating to Austin. Rekor works with the Texas Department of Transportation, which has a $7 billion project addressing this, to help mitigate the roadway concerns.

“Texas has been trying to meet that growth and demand on the roadways by investing a lot in infrastructure, and they’re focusing a lot on digital infrastructure,” said Shervin Esfahani, vice president of global marketing and communications at Rekor. “It’s super complex, and they realized their traditional systems were unable to really manage and understand it in real time.”

Rekor, based in Columbia, Maryland, has been harnessing NVIDIA Metropolis for real-time video understanding and NVIDIA Jetson Xavier NX modules for edge AI in Texas, Florida, Philadelphia, Georgia, Nevada, Oklahoma and many more U.S. destinations as well as in Israel and other places internationally.

Metropolis is an application framework for smart infrastructure development with vision AI. It provides developer tools, including the NVIDIA DeepStream SDK, NVIDIA TAO Toolkit, pretrained models on the NVIDIA NGC catalog and NVIDIA TensorRT. NVIDIA Jetson is a compact, powerful and energy-efficient accelerated computing platform used for embedded and robotics applications.

Rekor’s efforts in Texas and Philadelphia to help better manage roads with AI are the latest development in an ongoing story for traffic safety and traffic management.

Reducing Rubbernecking, Pileups, Fatalities and Jams

Rekor offers two main products: Rekor Command and Rekor Discover. Command is an AI-driven platform for traffic management centers, providing rapid identification of traffic events and zones of concern. It offers departments of transportation with real-time situational awareness and alerts that allows them to keep city roadways safer and more congestion-free.

Discover taps into Rekor’s edge system to fully automate the capture of comprehensive traffic and vehicle data and provides robust traffic analytics that turn roadway data into measurable, reliable traffic knowledge. With Rekor Discover, departments of transportation can see a full picture of how vehicles move on roadways and the impact they make, allowing them to better organize and execute their future city-building initiatives.

The company has deployed Command across Austin to help detect issues, analyze incidents and respond to roadway activity with a real-time view.

“For every minute an incident happens and stays on the road, it creates four minutes of traffic, which puts a strain on the road, and the likelihood of a secondary incident like an accident from rubbernecking massively goes up,” said Paul-Mathew Zamsky, vice president of strategic growth and partnerships at Rekor. “Austin deployed Rekor Command and saw a 159% increase in incident detections, and they were able to respond eight and a half minutes faster to those incidents.”

Rekor Command takes in many feeds of data — like traffic camera footage, weather, connected car info and construction updates — and taps into any other data infrastructure, as well as third-party data. It then uses AI to make connections and surface up anomalies, like a roadside incident. That information is presented in workflows to traffic management centers for review, confirmation and response.

“They look at it and respond to it, and they are doing it faster than ever before,” said Esfahani. “It helps save lives on the road, and it also helps people’s quality of life, helps them get home faster and stay out of traffic, and it reduces the strain on the system in the city of Austin.”

In addition to adopting NVIDIA’s full-stack accelerated computing for roadway intelligence, Rekor is going all in on NVIDIA AI and NVIDIA AI Blueprints, which are reference workflows for generative AI use cases, built with NVIDIA NIM microservices as part of the NVIDIA AI Enterprise software platform. NVIDIA NIM is a set of easy-to-use inference microservices for accelerating deployments of foundation models on any cloud or data center while keeping data secure.

Rekor has multiple large language models and vision language models  running on NVIDIA Triton Inference Server in production,” according to Shai Maron, senior vice president of global software and data engineering at Rekor. 

“Internally, we’ll use it for data annotation, and it will help us optimize different aspects of our day to day,” he said. “LLMs externally will help us calibrate our cameras in a much more efficient way and configure them.”

Rekor is using the NVIDIA AI Blueprint for video search and summarization to build AI agents for city services, particularly in areas such as traffic management, public safety and optimization of city infrastructure. NVIDIA recently announced a new AI Blueprint for video search and summarization enabling a range of interactive visual AI agents that extracts complex activities from massive volumes of live or archived video.

Philadelphia Monitors Roads, EV Charger Needs, Pollution

Philadelphia Navy Yard is a tourism hub run by the Philadelphia Industrial Development Corporation (PIDC), which has some challenges in road management and gathering data on new developments for the popular area. The Navy Yard location, occupying 1,200 acres, has more than 150 companies and 15,000 employees, but a $6 billion redevelopment plan there promises to bring in 12,000-plus new jobs and thousands more as residents to the area.

PIDC sought greater visibility into the effects of road closures and construction projects on mobility and how to improve mobility during significant projects and events. PIDC also looked to strengthen the Navy Yard’s ability to understand the volume and traffic flow of car carriers or other large vehicles and quantify the impact of speed-mitigating devices deployed across hazardous stretches of roadway.

Discover provided PIDC insights into additional infrastructure projects that need to be deployed to manage any changes in traffic.

Understanding the number of electric vehicles, and where they’re entering and leaving the Navy Yard, provides PIDC with clear insights on potential sites for electric vehicle (EV) charge station deployment in the future. By pulling insights from Rekor’s edge systems, built with NVIDIA Jetson Xavier NX modules for powerful edge processing and AI, Rekor Discover lets Navy Yard understand the number of EVs and where they’re entering and leaving, allowing PIDC to better plan potential sites for EV charge station deployment in the future.

Rekor Discover enabled PIDC planners to create a hotspot map of EV traffic by looking at data provided by the AI platform. The solution relies on real-time traffic analysis using NVIDIA’s DeepStream data pipeline and Jetson. Additionally, it uses NVIDIA Triton Inference Server to enhance LLM capabilities.

The PIDC wanted to address public safety issues related to speeding and collisions as well as decrease property damage. Using speed insights, it’s deploying traffic calming measures where average speeds are exceeding what’s ideal on certain segments of roadway.

NVIDIA Jetson Xavier NX to Monitor Pollution in Real Time

Traditionally, urban planners can look at satellite imagery to try to understand pollution locations, but Rekor’s vehicle recognition models, running on NVIDIA Jetson Xavier NX modules, were able to track it to the sources, taking it a step further toward mitigation.

“It’s about air quality,” said Shobhit Jain, senior vice president of product management at Rekor. “We’ve built models to be really good at that. They can know how much pollution each vehicle is putting out.”

Looking ahead, Rekor is examining how NVIDIA Omniverse might be used for digital twins development in order to simulate traffic mitigation with different strategies. Omniverse is a platform for developing OpenUSD applications for industrial digitalization and generative physical AI.

Developing digital twins with Omniverse for municipalities has enormous implications for reducing traffic, pollution and road fatalities — all areas Rekor sees as hugely beneficial to its customers.

“Our data models are granular, and we’re definitely exploring Omniverse,” said Jain. “We’d like to see how we can support those digital use cases.”

Learn about the NVIDIA AI Blueprint for building AI agents for video search and summarization.

Coherent Breaks Ground on Expanded Texas Facility, Scaling AI’s Optical Backbone

Coherent’s expansion at its Sherman, Texas, campus scales what it calls the world’s first volume production 6-inch indium phosphide fab, a key supplier across NVIDIA’s AI stack.
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AI runs at the speed of light. More and more, that light is made in Texas.

Coherent broke ground today on an expanded manufacturing building in Sherman, Texas. 

The company makes the lasers, optical components and compound semiconductors that wire AI systems together — and runs what it calls the world’s first 6-inch indium phosphide fab. 

NVIDIA founder and CEO Jensen Huang and Coherent CEO Jim Anderson were on hand for the ceremony, joined by Sherman Mayor Shawn Temann and Adriana Cruz, executive director of Texas Economic Development and Tourism, who delivered remarks.  

The expanded building will scale production of the same InP wafers that carry data between chips, servers and data centers at the speed of light — the optical backbone of modern AI infrastructure.

It’s the kind of milestone that turns a commitment into construction: a concrete step in expanding advanced semiconductor manufacturing in the United States.

“AI is the ultimate general-purpose technology,” Huang said during a conversation with Anderson at the groundbreaking. “Because intelligence is fundamental — the ability to process information, to reason and solve problems — it affects every single industry.”

Public programs like the CHIPS Act, funded at roughly $50 billion, were designed to bring chip manufacturing back to the U.S. 

As part of today’s event, Coherent is announcing a $50 million CHIPS Act grant to help finance the expanded Sherman facility — building on roughly $17 million in earlier support from the Texas CHIPS program and the Sherman Economic Development Corporation.

NVIDIA’s own commitment to produce up to $500 billion of AI infrastructure in the U.S. through industry partnerships with new sites in Arizona and Texas adds private-sector momentum.

“Coherent is a world-class company, and the work you do is vital to our future, vital to the future of artificial intelligence and vital to reindustrializing the United States,” Huang said.

NVIDIA founder and CEO Jensen Huang and Coherent CEO Jim Anderson.

Compound semiconductors like indium phosphide and gallium arsenide — the materials behind the high-speed networking and optical interconnects that modern AI runs on — don’t get the headlines that logic chips do. But their domestic supply chains have been thin for years. Today’s event was an argument that the gap is closing.

When 576 GPUs span eight racks and operate as a single system — as they will in NVIDIA Vera Rubin Ultra NVL576, which links eight NVLink racks of 72 NVIDIA Rubin Ultra GPUs into one 576-GPU domain — copper can’t carry the signal across that distance. 

To connect hundreds of thousands of processors separated by hundreds or thousands of feet across a data center, the only way to solve that problem is silicon photonics, Huang explained. 

As signaling rates climb, the reach of a metal trace shrinks, and spanning eight racks in copper would burn power on retimers and signal conditioning that a data center would rather spend on compute. 

Optics pays a one-time penalty to move from electrical to light, but once paid, distance is nearly free. At NVL576 scale, light is the most power-efficient option. 

NVIDIA and Coherent aren’t new to each other — they’ve worked together for roughly two decades. 

In March, they deepened the relationship into a multiyear strategic partnership: NVIDIA is investing $2 billion in Coherent to support R&D, future capacity and U.S.-based manufacturing, alongside a multibillion-dollar purchase commitment for advanced laser and optical networking products.

Sherman, a city of roughly 45,000 people an hour north of Dallas, has become the latest dateline for the AI era — emblematic of a boom built as much on picks, shovels and manufacturing muscle as on software.

“When we get to full capacity, this site will support more than 550 direct jobs — and thousands of jobs, direct and indirect,” Anderson said.

What the factory ships isn’t a single product dropped into a single slot. It’s the lasers, transceivers and pluggable optical modules that move data across NVIDIA networking — each enabling a different part of the system.

“As AI systems grow larger and more powerful, connectivity is just as important as compute,” Anderson said. “AI runs on compute, but it scales on connectivity — and Sherman is where that connective tissue gets built.”

Today’s event made that visible.

Before the groundbreaking, guests toured the existing fab and previewed the equipment that will populate the expanded building once it’s running. An NVIDIA rack stood on the factory floor, one of the six stops on the tour. 

The tour was followed by a fireside chat with Huang and Anderson, where the two CEOs discussed the partnership and what scaling domestic optical manufacturing means for the AI buildout ahead.

“Today marks an important milestone — not just for Coherent, but for American manufacturing and for the future of AI infrastructure,” Anderson said. 

The semiconductor laser was born in U.S. labs — Bell Labs demonstrated a room-temperature version in 1970 — before the technology and its manufacturing largely migrated overseas.

“We were founded as a manufacturing company in 1971. We’ve always been a U.S. manufacturing company — and after 50 years, the most advanced 6-inch indium phosphide line in the world is right here in Sherman,” Anderson said. 

That manufacturing gap shows up in the wafers themselves: while silicon fabs run on 12-inch wafers, most of the world’s InP production is still stuck on 3- and 4-inch wafers — lower yields and far fewer components per run. 

Moving to 6-inch wafers roughly quadruples the usable area of a 3-inch wafer (area scales with the square of the diameter), driving down cost and unlocking the volume the AI buildout demands.


It took 50 years to build the first line, Huang said — and in one year, they’ve quadrupled it, a measure of the demand for accelerated computing.

Inside, the core processes are familiar: lithography, photoresist, depositing and etching materials, layer by layer. The difference is the material. On an InP substrate, engineers grow exotic compound-semiconductor layers and tune them for precise optical properties — the physics that lets a chip emit and modulate light.

Today, that InP travels inside Coherent’s pluggable optics — transceivers about the size of a USB stick that plug into the front of NVIDIA networking switches and move data between racks across the data center floor, where copper can’t reach. Each module carries an indium phosphide laser. 

Those same modules now help enable NVIDIA Spectrum-X Photonics and Quantum-X Photonics switches with co-packaged optics: Coherent supplies the external laser module that plugs into the switch’s front plate. 

And as NVIDIA works to keep optics from becoming the next bottleneck, demand for those lasers only climbs.

“Ten years from now, I think we’ll look back and realize AI is what made it possible to invest in sustainable energy, upgrade our energy grid and reconstitute a workforce,” Huang said. “You can’t have only information workers in an economy — you also have to have builders. We have an opportunity over the next 10 years to reshape our communities and be much more balanced.”

How the UK Is Turning Sovereign AI Ambition Into Action With NVIDIA Technologies

A year after declaring itself an “AI maker, not an AI taker,” the UK is delivering sovereign compute, showcasing breakthrough startup and enterprise AI deployments across biology, agentic AI, coding and more.
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A year ago at London Tech Week, NVIDIA founder and CEO Jensen Huang and U.K. Prime Minister Keir Starmer made a declaration: the U.K. would be an AI maker, not an AI taker. 

At this year’s event, NVIDIA and its partners are showcasing how that commitment is producing real momentum across the nation’s infrastructure, startups and enterprises. 

U.K. technology leaders are innovating across healthcare and life sciences, coding, agentic AI, inference and more — all running on sovereign AI deployments.

“A year ago, we said the U.K. would be an AI maker, not an AI taker,” said U.K. AI Minister Kanishka Narayan. “Today we’re delivering on that — with sovereign compute powering British startups to push the boundaries of what AI can do, from drug discovery to healthcare to robotics. This is what it looks like when a country backs its own talent with the infrastructure to match. 

“NVIDIA’s decision to invest billions here is a reflection of the strength of what’s being built in Britain,” he added. “We are determined to make sure the next generation of AI breakthroughs happens in this country, and we have everything we need to make it happen.”

Commitment to Compute

Over the past year, the number of AI cloud providers planning to deploy AI infrastructure on U.K. soil has doubled. 

Nebius has announced plans to expand customers and cloud capabilities with three new deployments of advanced NVIDIA AI infrastructure, as the NVIDIA AI Cloud ecosystem partner continues to build out its commercial and AI R&D hub in London. Combined, the deployments are expected to reach 65 megawatts when fully ramped up in 2027.

CoreWeave is building in the U.K. Government’s AI Growth Zones, and seven more NVIDIA AI Cloud ecosystem partners have plans in the pipeline. BT and Nscale announced plans to build sovereign AI data centers across three existing BT sites in the U.K., combining NVIDIA AI infrastructure, Nscale’s full stack and BT’s trusted nationwide connectivity backbone. 

From Fund to Frontier

Central to that sovereign compute story is Isambard-AI — the U.K.’s most powerful computer. Built on 5,400 NVIDIA GH200 Grace Hopper Superchips and running entirely on zero-carbon electricity, it’s the engine behind some of the U.K.’s most ambitious AI research. 

The U.K. government’s Sovereign AI Fund is putting that capability to work by backing homegrown companies and providing the domestic infrastructure needed to scale their ambitions. 

Among its first recipients is Ineffable Intelligence, which recently announced a collaboration with NVIDIA to build the future of reinforcement learning infrastructure. 

Other recipients include four U.K.-based NVIDIA Inception startups, each pushing the AI frontier using Isambard-AI. These startups are:

Cosine Builds Sovereign Coding Platform

Cosine is building an end-to-end sovereign AI coding platform for highly regulated industries such as financial services, critical infrastructure and national security. Using Isambard, Cosine is training a new, large-parameter, mixture-of-experts, multimodal agentic LLM for natively handling data types beyond text and image. 

“Access to Isambard enables the project, full stop,” said Alistair Pullen, cofounder and CEO of Cosine. “We already have the people who know how to do this. We have the data. We have the infrastructure and the training. The thing we’ve never had is this level of compute.”

Cursive Trains Self-Improving AI Systems

Cursive is building self-improving AI systems that learn continuously from real-world data, enabling them to operate autonomously over long periods of time. This is unlocked through new memory-augmented architectures with dramatically larger context windows, currently in development using the Sovereign AI Fund resources. In addition, the team recently adopted the NVIDIA Megatron-LM framework for distributed training at scale.

“The Sovereign AI Fund is more than just processing power — it’s a statement about investing in AI in the U.K.,” said Talfan Evans, cofounder and CEO of Cursive. “Sovereignty is actually now a buying criterion — and it’s a challenge to tap into the resources we uniquely have as U.K. and European companies.”

Doubleword Optimizes Inference to Deliver Abundant Intelligence Tokens

Doubleword, the U.K.’s first dedicated inference lab, optimizes every layer of the AI stack to maximize what it calls “IQ per dollar.” The company deploys open models including NVIDIA Nemotron 3 Super 120B and builds on the NVIDIA Dynamo inference framework. 

On Isambard, Doubleword’s early results achieved 70x faster model cold starts — aka model loading times — and 4x lossless KV cache compression, critical advancements for long-running agentic workloads. The result: inference at 90-95% lower costs than other leading inference providers.

Image courtesy of Doubleword.

“Sovereign AI is most impactful at the inference layer,” said Meryem Arik, cofounder and CEO of Doubleword. “Inference is when you’re actually getting the value from the model — we want that value created in the U.K., with U.K. compute and U.K. data centers.”

Prima Mente Uses Foundation Models to Study Alzheimer’s and More

Prima Mente builds biological foundation models to identify new biomarkers, subtypes and drug targets of Alzheimer’s, Parkinson’s and ALS. With its Isambard allocation, the company is developing Pleiades 2, a foundation model combining five biological data modalities. 

Achieving nearly 3x speedups in model training with NVIDIA Blackwell GPUs, Prima Mente also uses NVIDIA Parabricks for genomic data processing and NVIDIA Transformer Engine for model optimization.

“Research shows Alzheimer’s might be 25 different subgroups of disease, and we want to help by using AI to identify these subtypes and the biology within the cells as they change,” said Hannah Madan, cofounder of Prima Mente.

Video courtesy of Nebius and Prima Mente.

AI Talent, Policy and Production

NVIDIA’s £2 billion investment in the U.K. startup ecosystem — in collaboration with leading venture capital firms — is bringing new capital and advanced AI infrastructure to major U.K. hubs including London, Oxford, Cambridge and Manchester. 

U.K. membership in the NVIDIA Inception program has increased by 50% over the past year. AI-native companies like Doubleword, Synthesia and PolyAI are scaling globally from U.K. roots. 

At last year’s London Tech Week, NVIDIA announced a collaboration with the U.K Department for Science, Innovation and Technology on 6G and AI skills. The 6G collaboration has seeded testbeds at four U.K. universities. In May, the NVIDIA Deep Learning Institute (DLI) delivered two new courses — added to support the nation’s wireless research community — to participants from over 30 U.K. universities.

Plus, as part of this AI skills collaboration, NVIDIA DLI courses are offered as part of QA’s AI Apprenticeships in England. 

And the NVIDIA Developer Program now includes more than 200,000 U.K. developers. 

The Sovereign AI Forum, which launched last year with seven charter members, convened the country’s AI leadership to turn policy into deployment roadmaps. Over the past year, the Forum has welcomed dozens of participants across government, industry and the startup community — turning policy into deployment roadmaps.

And enterprise AI is moving from pilot to production:

  • Apian is building digital twins of two National Health Service hospitals, combining autonomous devices, ground robots, computer vision and robotic simulation.
  • Deliverance AI is helping regulated enterprises to run, govern and scale AI agents inside their own environment — through a single control plane. The Agentic Operating System is built for organizations where data sovereignty is non-negotiable.
  • Glass Futures has installed an AI-driven digital twin of its glass furnace capable of testing and predicting new, optimal ways to make glass. The digital twin taps into NVIDIA accelerated computing and the NVIDIA PhysicsNeMo framework.
  • OneAdvanced is fine-tuning NVIDIA Nemotron 2 Nano 9B with the NeMo AutoModel for its AI-consultation and triage app with sovereign, real world NHS Primary Care patient triage data.
  • Orbital Industries has announced codesigned, NVIDIA Vera Rubin DSX AI Factory-compliant AI infrastructure that accelerates time to first token.
  • Reading Football Club is partnering with Stelia to establish an AI Centre of Excellence, combining Stelia’s full-stack AI platform with accelerated compute infrastructure from NVIDIA and Lenovo.

It all reflects momentous progress in U.K. AI leadership — and offers a glimpse of where it’s heading.

Join NVIDIA at London Tech Week.

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Industrial Software Leaders Build Secure, Autonomous AI Engineers With NVIDIA NemoClaw

Showcased at GTC Taipei at COMPUTEX, autonomous AI engineers compress weeks of simulation work into just hours.
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Accelerated computing has revolutionized industrial engineering, compressing simulation times from weeks to hours. 

Today’s remaining challenges sit in the end-to-end workflow surrounding the simulations: computer-aided design, meshing, simulation setup and debugging, as well as post-processing and generating summary reports of these processes. 

At GTC Taipei at COMPUTEX, NVIDIA and more than a dozen engineering software providers are showcasing how autonomous AI agents automate this entire workflow.

These AI engineers are based on NVIDIA NemoClaw, an open blueprint for building specialized, long-running agents with a secure runtime and frontier models. 

NemoClaw includes a choice of harness — meaning it can be integrated with various orchestration frameworks enterprises use to deploy and coordinate agents, such as OpenClaw and Hermes — as well as a model router and NVIDIA NeMo libraries for customization. 

Users can easily deploy NemoClaw from NVIDIA DGX Spark personal AI supercomputers, as well as through enterprise data centers and cloud service providers. NVIDIA OpenShell — the open source runtime at its core — governs how each agent accesses files, networks and tools, enforcing policy-based security at every layer.

Industrial Engineering Leaders Build AI Agents Across Design, Engineering, Simulation

Industrial software leaders are building AI engineers for computer-aided engineering (CAE) and electronic design automation (EDA) use cases across automotive, aerospace, semiconductors and manufacturing.

Cadence is building an autonomous register-transfer level (RTL) engineer with NemoClaw that orchestrates Cadence Design Systems ChipStack for design and verification. The workflow was featured yesterday in a GTC Taipei keynote demo and is cutting time for RTL verification — a key step in digital circuit design — from weeks to hours.

Dassault Systèmes is actively productizing the 3DEXPERIENCE Agentic Platform to operate long-running and autonomous agents for design, simulation and manufacturing operations, in a secured environment powered by NVIDIA NemoClaw and OpenShell.  

Siemens is integrating NVIDIA NemoClaw and OpenShell into Fuse EDA AI Agent, a purpose-built autonomous agent that plans and orchestrates domain-scoped multi-tool workflows across semiconductor, 3D integrated circuit and printed circuit board system design.

Synopsys is collaborating with NVIDIA to apply agents to end-to-end engineering workflows with NVIDIA NemoClaw. Ansys Icepak, part of the Synopsys portfolio, is being demoed on the COMPUTEX show floor this week, used within a NemoClaw-based autonomous AI engineer to mesh, simulate and optimize GPU electronics cooling designs.

Image courtesy of Synopsys.

Startups Extend the Reach of Agentic AI

In addition, cutting-edge startups are building AI engineers for their workflows — all using NVIDIA NemoClaw.

Flexcompute is applying OpenShell to its Tidy3D and PhotonForge agents for multiphysics co-packaged optics design. Flexcompute’s autonomous AI workflow combines optical, electrical and thermal simulation to explore thousands of design variants overnight, producing higher-performing components with lower energy consumption. NVIDIA is using Flexcompute technology for the design and optimization of advanced optical and photonic devices.

 

Video courtesy of Flexcompute.

Luminary is building a long-running AI engineer using NemoClaw to dramatically reduce the time and complexity of training AI physics models by autonomously orchestrating data generation, machine learning model selection, and training and re-training loops.

 

Video courtesy of Luminary.

Neural Concept is deploying an agent for electric motor design. The workflow chains electromagnetic, structural and noise, vibration and harness simulations in a multistep engineering pipeline. Watch the full demo.

 

Video courtesy of Neural Concept.

nTop, the geometry engine behind JetZero’s blended-wing-body aircraft program, is using NVIDIA NemoClaw to run autonomous design workflows that compress days of geometry iteration into hours.

 

Video courtesy of nTop.

PhysicsX is partnering with the Microsoft Surface team to build an electronics thermal simulation agent that compresses weeks of manual CAE workflows into automated, AI-driven design cycles. Bringing together the PhysicsX platform, Microsoft Discovery and NVIDIA NemoClaw, the agent automates the full thermal simulation lifecycle for consumer devices such as Microsoft Surface laptops — from mesh sensitivity analysis and simulation data generation, through physics AI model training and optimization-loop execution, to continuous accuracy monitoring across the design exploration process.

 

Video courtesy of PhysicsX.

P-1 AI is building Archie, an AI mechanical and electrical engineer that already works with data center cooling and critical power systems, and will soon work for automotive, aerospace and national security use cases. In a workflow representative of its work with Daikin Applied Americas, Archie synthesizes requirements, selects components, runs design trade studies and produces engineering artifacts to help industrial manufacturers scale engineering capacity.

 

Video courtesy of P-1 AI.

SimScale is adopting NVIDIA NemoClaw to build autonomous simulation agents for hundreds of cross-industry engineering use cases, including noise, vibration and harshness analysis, automating workflows that previously required multiple engineers working over several weeks. 

 

Video courtesy of SimScale.

Synera is building an engineering agent for injection molding — a manufacturing process used to efficiently mass-produce identical parts by injecting molten material, usually plastic, into a custom mold — with Autodesk Moldflow, NVIDIA OpenShell with OpenClaw, as well as Nemotron models.

 

Video courtesy of Synera.

Learn more about NVIDIA technologies for CAE and watch NVIDIA founder and CEO Jensen Huang’s GTC Taipei keynote in replay.

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