AI Across The Product Lifecycle Podcast

Engineering’s Spatial AI Moment - Campfire & Gravity Sketch

56 min · 7. Mai 2026
Episode Engineering’s Spatial AI Moment - Campfire & Gravity Sketch Cover

Beschreibung

What happens when AI, virtual reality, and spatial computing move beyond demos and start reshaping real engineering work? In this episode of AI Across the Product Lifecycle, Michael Finocchiaro speaks with Jay Wright, Co-Founder and CEO of Campfire, and Oluwaseyi “Shay” Sosanya, Co-Founder and CEO of Gravity Sketch, about the future of immersive engineering workflows. This is not a “metaverse” conversation. It is about what spatial tools can actually do for product development, design reviews, manufacturing validation, training, collaboration, and digital transformation. Jay explains why AI is becoming a first-class user inside Campfire, acting almost like another participant in a 3D workspace. Shay breaks down why Gravity Sketch keeps humans at the center of the design process while using AI to remove friction, speed iteration, and help teams communicate better. The conversation covers the hard parts too: why LLMs still struggle with geometry, why industrial companies remain cautious about cloud and AI adoption, why employees are already using AI tools outside official policy, and why the next breakthrough in engineering may not be AI replacing CAD, but AI controlling and accelerating the tools engineers already use. For anyone working in CAD, PLM, industrial AI, digital thread, manufacturing, design, or engineering software, this is a sharp look at where spatial computing is actually useful and where the hype still needs to become workflow value. Featuring: Jay Wright, Co-Founder & CEO, Campfire Oluwaseyi “Shay” Sosanya, Co-Founder & CEO, Gravity Sketch Host: Michael Finocchiaro, AI Across the Product Lifecycle Transcript source:   TIMELINE 00:00 Welcome and guest introductions 03:05 Jay Wright on being bullish about AI after ChatGPT 04:33 Shay Sosanya on cautious optimism and the speed of AI progress 07:06 Why 3D geometry is harder for AI than language 08:42 AI capabilities are moving faster than expected 10:07 How Gravity Sketch adopted AI in software development 12:27 Campfire’s AI-assisted development workflow 13:32 AI agents in meetings, code, and product workflows 16:11 Using AI with existing 3D assets, BOMs, documents, and legacy data 18:26 Campfire’s spatial workflows for engineering, training, and sales 20:02 Where AI sits in the software stack 20:28 Campfire’s spatial agent as a first-class user 21:46 Gravity Sketch’s human-first approach to AI in spatial design 23:36 Foundation models, 3D generation, and geometry engines 25:29 AI cost, IP protection, customer data, and bring-your-own-LLM models 28:00 Has engineering had its ChatGPT moment yet? 29:05 Why physical product development will see staged AI adoption 31:17 The engineering-to-manufacturing gap 32:13 Simulating manufacturing workflows before production 34:12 AI connectors, Blender, Fusion 360, and tool control 35:18 Advice for young engineers worried about AI 39:41 Making real products, not just AI-generated concepts 40:00 Digital maturity in industrial companies 41:21 Why many manufacturers remain at low digital maturity 42:31 Headsets, cloud, InfoSec, and adoption barriers 43:39 Employees are already using AI and immersive tools informally 46:57 Can agile startups move industrial customers faster than incumbents? 48:17 Campfire on solving workflows rather than selling AI novelty 50:29 Gravity Sketch on value, workflow depth, and avoiding AI hype 53:09 Where to see Campfire and Gravity Sketch next 56:12 Closing thoughts

Kommentare

0

Sei die erste Person, die kommentiert

Melde dich jetzt an und werde Teil der AI Across The Product Lifecycle Podcast-Community!

Loslegen

2 Monate für 1 €

Dann 4,99 € / Monat · Jederzeit kündbar.

  • Podcasts nur bei Podimo
  • 20 Stunden Hörbücher / Monat
  • Alle kostenlosen Podcasts

Alle Folgen

73 Folgen

Episode The Future of PLM Is Human? AI, Trust, Community & the Share PLM Summit 2026 Debate Cover

The Future of PLM Is Human? AI, Trust, Community & the Share PLM Summit 2026 Debate

What happens when some of the most respected voices in PLM gather in a Spanish vineyard to discuss AI, digital transformation, trust, community, and the future of engineering? In this special Share PLM Summit 2026 edition of The Future of PLM Podcast, host Michael Finocchiaro is joined by Jos Voskuil, Oleg Shilovitsky, Rob Ferrone, Patrick Hillberg, Nina Dar, and Maria Morris for a candid, unscripted discussion about the ideas that emerged from one of the industry’s most unique events.   The conversation explores why the human side of PLM remains the hardest part of transformation, whether AI will fundamentally reshape consulting and knowledge work, how organizations build trust during digital change, and why community may be becoming more important than technology itself. From AI adoption and organizational change to conference design and the future of professional expertise, this episode offers practical insights and thought-provoking perspectives from some of the industry’s most experienced practitioners. TOPICS COVERED • The evolution of Share PLM Summit and its human-centered approach • AI’s impact on engineering, consulting, and PLM careers • Why trust may be the real ROI of conferences • Lessons from successful and unsuccessful PLM transformations • Human adoption versus technical implementation • Digital transformation beyond software deployment • The future of work in an AI-driven world • Community, collaboration, and knowledge sharing TIMELINE 00:00 Welcome & introductions 01:20 Why Share PLM Summit feels different 03:30 Breaking away from traditional PLM conferences 05:45 Why attendees travel across continents to attend 07:35 PLM as a people-centered discipline 09:50 AI, digital overload, and human connection 12:40 Measuring conference ROI beyond leads and sales 15:10 Most impactful presentations from the summit 20:05 Data, AI, and the Gentelligence perspective 22:10 Helena Haapio’s keynote and the future of work 24:50 Will AI replace consulting and expertise? 30:05 AI, critical thinking, and engineering risk 31:10 Sponsors, trust, and community building 36:00 Workshops, learning, and audience engagement 42:20 Sustainability and digital product passports 48:20 The Share Nest initiative 51:55 The future of conferences and professional development 58:20 Trust as the new business currency 01:01:00 Community, networking, and collaboration 01:03:40 The value of disagreement and debate 01:05:00 One word that defines Share PLM Summit 2026 01:07:00 Closing thoughts #PLM #AI #DigitalTransformation #Engineering #Manufacturing #Industry40 #DigitalThread #DigitalTwin #ProductLifecycleManagement #IndustrialAI #FutureOfPLM #SharePLM #EngineeringLeadership #SystemsEngineering #Innovation #TechnologyLeadership

Gestern1 h 7 min
Episode When AI Meets Sales, Support & Supply Chain: Omnae & Bardin AI Cover

When AI Meets Sales, Support & Supply Chain: Omnae & Bardin AI

AI in manufacturing does not fail because the demo is bad. It fails when the answer cannot be trusted. In this episode of AI Across the Product Lifecycle, Michael Finocchiaro speaks with Fay Goldstein, Co-Founder and CEO of Bardin AI, and Scott Lionello, Co-Founder and CPO of Omnae Technologies, about where industrial AI is really going: beyond chatbots, beyond copilots, and into the operational workflows that actually run manufacturing businesses. Bardin AI is building an application engineer for industrial automation sales and support teams, helping them answer complex technical questions without escalating everything to senior engineers. Omnae is building supply chain collaboration software that allows AI agents to operate safely across real suppliers, buyers, orders, invoices, and messy enterprise data.   The conversation goes straight into the hard parts of industrial AI: trust, auditability, determinism, human-in-the-loop workflows, knowledge graphs, API costs, token burn, procurement risk, sales engineering bottlenecks, and why “just add a chatbot” is not enough when mistakes touch contracts, general ledgers, supply commitments, or customer trust. Fay and Scott also discuss how AI is changing startup operations and software development, why young professionals need to show AI fluency rather than fear AI replacement, and why mid-market manufacturers may adopt practical AI faster than large enterprises waiting for top-down transformation programs. The big takeaway: the next wave of industrial AI will not be about flashy demos. It will be about operational relief. Fewer escalations. Faster quoting. Cleaner supplier collaboration. Better support workflows. Safer automation. More trust in the decisions AI helps make. This is a grounded, founder-level conversation about how AI is moving into the less glamorous but highly valuable parts of the product lifecycle: sales, support, procurement, supply chain, and the industrial back office. Topics covered: industrial AI, agentic AI, supply chain AI, procurement, pre-sales engineering, industrial automation, knowledge graphs, AI trust, human-in-the-loop workflows, manufacturing software, digital transformation, enterprise AI, startup innovation, and the future of AI across the product lifecycle.

28. Mai 202645 min
Episode CAD, BIM, and the AI Leap: Qonic & Raven! Cover

CAD, BIM, and the AI Leap: Qonic & Raven!

What happens when AI moves beyond chatbots and starts reshaping the actual tools engineers, architects, and designers use every day? In this episode of AI Across the Product Lifecycle, Michael Finocchiaro speaks with Chloë Guidi of Qonic and Moritz Rietschel of Raven about the AI-native future of CAD, BIM, and AEC workflows. Qonic is building a modern, cloud-based BIM platform from scratch, including its own solid modeling kernel, with a mission to make BIM lighter, faster, more accessible, and more data-rich. Raven is building AI-first workflows for complex design environments like Rhino, Grasshopper, Revit, Tekla, and Archicad, helping users navigate fragmented toolchains with less friction. The conversation cuts through the hype and focuses on what is actually changing: AI-assisted software development. AI-native design workflows. Smarter BIM quality checks. More accessible CAD and AEC tools. The economics of LLM-powered software. The difference between “software built with AI” and “software that only makes sense because AI exists.” Chloë and Moritz also discuss whether engineering and BIM are heading toward their own “OpenAI moment,” why open standards and data quality matter, and what young engineers should do as AI changes the skills required to stay relevant. This is a practical, founder-level look at how AI is moving into the real workflows of design, modeling, validation, and engineering decision-making. Topics covered: AI in CAD, AI in BIM, AEC software, digital twins, Rhino, Grasshopper, Revit, engineering workflows, AI coding, MCP, open standards, startup innovation, and the future of AI-native engineering tools.

28. Mai 202645 min
Episode Engineering’s Spatial AI Moment - Campfire & Gravity Sketch Cover

Engineering’s Spatial AI Moment - Campfire & Gravity Sketch

What happens when AI, virtual reality, and spatial computing move beyond demos and start reshaping real engineering work? In this episode of AI Across the Product Lifecycle, Michael Finocchiaro speaks with Jay Wright, Co-Founder and CEO of Campfire, and Oluwaseyi “Shay” Sosanya, Co-Founder and CEO of Gravity Sketch, about the future of immersive engineering workflows. This is not a “metaverse” conversation. It is about what spatial tools can actually do for product development, design reviews, manufacturing validation, training, collaboration, and digital transformation. Jay explains why AI is becoming a first-class user inside Campfire, acting almost like another participant in a 3D workspace. Shay breaks down why Gravity Sketch keeps humans at the center of the design process while using AI to remove friction, speed iteration, and help teams communicate better. The conversation covers the hard parts too: why LLMs still struggle with geometry, why industrial companies remain cautious about cloud and AI adoption, why employees are already using AI tools outside official policy, and why the next breakthrough in engineering may not be AI replacing CAD, but AI controlling and accelerating the tools engineers already use. For anyone working in CAD, PLM, industrial AI, digital thread, manufacturing, design, or engineering software, this is a sharp look at where spatial computing is actually useful and where the hype still needs to become workflow value. Featuring: Jay Wright, Co-Founder & CEO, Campfire Oluwaseyi “Shay” Sosanya, Co-Founder & CEO, Gravity Sketch Host: Michael Finocchiaro, AI Across the Product Lifecycle Transcript source:   TIMELINE 00:00 Welcome and guest introductions 03:05 Jay Wright on being bullish about AI after ChatGPT 04:33 Shay Sosanya on cautious optimism and the speed of AI progress 07:06 Why 3D geometry is harder for AI than language 08:42 AI capabilities are moving faster than expected 10:07 How Gravity Sketch adopted AI in software development 12:27 Campfire’s AI-assisted development workflow 13:32 AI agents in meetings, code, and product workflows 16:11 Using AI with existing 3D assets, BOMs, documents, and legacy data 18:26 Campfire’s spatial workflows for engineering, training, and sales 20:02 Where AI sits in the software stack 20:28 Campfire’s spatial agent as a first-class user 21:46 Gravity Sketch’s human-first approach to AI in spatial design 23:36 Foundation models, 3D generation, and geometry engines 25:29 AI cost, IP protection, customer data, and bring-your-own-LLM models 28:00 Has engineering had its ChatGPT moment yet? 29:05 Why physical product development will see staged AI adoption 31:17 The engineering-to-manufacturing gap 32:13 Simulating manufacturing workflows before production 34:12 AI connectors, Blender, Fusion 360, and tool control 35:18 Advice for young engineers worried about AI 39:41 Making real products, not just AI-generated concepts 40:00 Digital maturity in industrial companies 41:21 Why many manufacturers remain at low digital maturity 42:31 Headsets, cloud, InfoSec, and adoption barriers 43:39 Employees are already using AI and immersive tools informally 46:57 Can agile startups move industrial customers faster than incumbents? 48:17 Campfire on solving workflows rather than selling AI novelty 50:29 Gravity Sketch on value, workflow depth, and avoiding AI hype 53:09 Where to see Campfire and Gravity Sketch next 56:12 Closing thoughts

7. Mai 202656 min
Episode Physics has a ChatGPT Moment - Vinci 4D Special Edition! Cover

Physics has a ChatGPT Moment - Vinci 4D Special Edition!

Riverside Event Title Physics Has a ChatGPT Moment: AI, Simulation, and the Future of Engineering What happens when AI stops guessing and starts solving physics? In this episode of AI Across The Product Lifecycle, I’m joined by Hardik Kabaria, co-founder and CFO of Vinci, and Andy Fine of the Fine Physics Consortium, for a sharp discussion on one of the biggest shifts in engineering software: AI-native physics simulation. Vinci is building a physics intelligence layer: a foundation model for physics designed to answer real engineering questions around heat transfer, thermo-mechanical deformation, high-fidelity simulation, and manufacturing-resolution analysis. Hardik says Vinci is already deployed with tier-one hardware companies and can run simulations from hundreds of millions to over a trillion degrees of freedom.   This is not vague AI hype. We dig into what makes AI simulation credible, why deterministic physics matters, how engineers can validate results, and why thermal problems are becoming mission-critical across semiconductors, electronics, batteries, EVs, data centers, robotics, and advanced manufacturing. If your product generates heat, deforms under load, consumes power, or depends on simulation to avoid expensive failures, this conversation matters. Timeline 00:00 — Introduction: Vinci, Fine Physics Consortium, and the “OpenAI moment” for simulation 01:11 — What is physics intelligence? 02:18 — Why physics is universal and governed by differential equations 03:08 — Physics-based AI vs. surrogate models 04:01 — What makes a physics foundation model credible? 06:51 — Why business value beats white papers 08:33 — Where Vinci fits in the engineering workflow 10:16 — Heat transfer, fluid dynamics, and choosing the right wedge use case 11:14 — Vinci’s focus: semiconductor and electronics thermal problems 13:23 — Thermo-mechanical deformation and why materials warp 14:49 — Multi-physics simulation as a long-standing engineering holy grail 16:06 — Yield, reliability, and manufacturing risk in electronics 17:04 — ROI: faster design loops and thousands of analyses per day 19:23 — Uncertainty, validation, and trust in AI simulation 20:08 — Training on 45TB of physics simulation data 21:47 — Residual norms and transparency at inference time 24:42 — 300 million to 1.2 trillion degrees of freedom 25:51 — GPU requirements and why Vinci is built for modern hardware 27:09 — Quantum computing, GPUs, and future scalability 30:22 — Wedge use cases: chips, boards, servers, batteries, defense, robotics, steel plants 31:45 — Who buys AI-native simulation software? 33:50 — Why thermal engineers are Vinci’s first target users 35:06 — Power, cooling, throttling, and data center energy constraints 36:25 — What throttling means in chips, EVs, and thermal runaway scenarios 39:58 — Deployment, IP protection, Docker containers, cloud, and on-prem 41:27 — How to convince skeptical engineers 43:00 — Path to adoption: start with the customer’s real benchmark 44:16 — What engineering leaders should do next 45:47 — The physics brick in the AI factory of the future 46:03 — Final debate: can there ever be one general foundation model for all physics? Join us for a practical, skeptical, deeply technical conversation about what AI can actually do for simulation, hardware design, and the next generation of engineering software. #AI #Simulation #EngineeringSoftware #PhysicsAI #DigitalThread #Semiconductors #ThermalEngineering #CAE #ProductDevelopment #AIAcrossTheProductLifecycle #TheFutureOfPLM #BetterCallFino

5. Mai 202647 min