
To kickoff the year, we have released our Physical AI Podcast episode: โPhysical AI 2026 Outlookโโa fast-moving, technical conversation with advisory committee members about whatโs actually going to matter as AI leaves the cloud and enters factories, fleets, farms, jobsites, and robots.
Featured Physical AI Advisory committee member guests in this episode (and why they matter):
Apurv Naman Senior Product Manager, NVIDIA
Harnish Jani โ AI Product & Innovation Executive (former BCG X)
Anupam Govil โ Managing Partner, Avasant
Keith Newman โ Managing Partner, The GTM Firm
David Cao โ Managing Partner, F50
More about the Physical AI Advisory Committeeโa new leadership group bringing together builders and decision-makers across embodied AI, robotics, industrial automation, manufacturing, energy, infrastructure, logistics, and construction to shape what comes next.
What our committee predicts for the Physical AI landscape in 2026
Below are the 2026 outlook highlights (edited into newsletter form from a longer conversation):
๐น Apurv (NVIDIA): Simulation-first becomes the default path to real-world autonomy Apurvโs outlook is that the next acceleration wave will come from teams who treat simulation as the training ground for everythingโusing world models to generate scenarios, bootstrap data, and shorten time-to-skill across new environments. In one clip, he describes how โworld foundation modelsโ can generate physics-aware scenarios from a prompt, and flags compute cost as a practical limiter on how far teams can push โeverything in simulation.โ Why this matters: the broader ecosystem is investing heavily in physics-aware synthetic data generation and simulation pipelines, which is consistent with NVIDIAโs world foundation model framing and simulation/synthetic data positioning.
๐น Anupam: 2026 is when enterprises escape AI pilot purgatory and scale into physical operations Anupamโs forecast focuses on the โenterprise reality checkโ: scaling Physical AI requires reliability, predictability, and latency performance at the edge. Why this matters: industrial systems are explicitly constrained by safety/performance requirements, and reliability + latency are recurring โhard requirementsโ in OT and industrial wireless contextsโespecially once AI is making real-time decisions.
๐น Harnish: Physical AI expands beyond controlled indoor settings into messy outdoor domains Harnishโs 2026 view is a resurgence of robots and AI systems leaving structured indoor environments and moving into unpredictable outdoor settingsโconstruction, agriculture, and other real-world โlong tailโ conditionsโdriven by better edge deployment and more capable multimodal action models. Why this matters: vision-language-action progress is making it more credible to unify perception + language + action planning in a single model familyโcrucial for unconstrained environments.
๐น David: The next bottleneck wonโt just be modelsโitโll be the robotics supply chain and services layer David flags a practical constraint: physical deployment scales through supply chains, integrators, testing, maintenance, logistics, and partsโan ecosystem that must mature alongside the models. (If youโre building in the โpicks and shovelsโ layerโthis is your opening.)
๐น Keith: Data advantage shifts toward 3D workflowsโand governance becomes a moat Keithโs 2026 emphasis is that experimentation and proprietary data loops will determine who winsโand that 3D data around products, facilities, and fleets (plus licensing/protection) will become a major competitive differentiator. Why this matters: digital twin frameworks and standards are evolving because the world is pushing toward reusable, interoperable โdigital representations of physical systems,โ not just one-off demos.
Full Episode on Youtube
Why weโre building this committee now
Physical AI is entering a phase where the hard problems arenโt only model architectureโtheyโre data pipelines, simulation-to-real transfer, edge reliability, safety constraints, and the industrial deployment surface area. Thatโs exactly why the advisory committee exists: to keep the ecosystem grounded in what works, what breaks, and whatโs worth funding or building next.
Join us and bring your perspective
If youโre leading in any of these areasโrobotics, embodied AI, industrial automation, fleet autonomy, smart infrastructure, energy systems, data centers, edge AI, manufacturing ops, or supply-chain modernizationโwe want your voice in the room.
Next episode teaser
Coming next: Product Alpha in the Age of Physical AI: Lessons from Groqโs $20B NVIDIA Deal with SC Moatti.
Which 2026 prediction do you agree with mostโand what are we missing? Drop your take in the comments. ๐
#PhysicalAI #Robotics #EmbodiedA
