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  <title>FoDES - Future of Design &amp; Engineering Software</title>

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  <copyright>© 2026 FoDES - Future of Design &amp; Engineering Software</copyright>
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  <itunes:author>Roopinder Tara</itunes:author>
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  <description><![CDATA[<p>We discuss tools and technology that engineers will find interesting and useful. This can be software, hardware or a service.</p>]]></description>
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    <itunes:title>Viral Shah on Dyad - Physical AI for Systems Analysis</itunes:title>
    <title>Viral Shah on Dyad - Physical AI for Systems Analysis</title>
    <itunes:summary><![CDATA[“Make me a car” is an impressive demo until you ask where the braking hydraulics, controls, and safety logic went.  We let Viral Shah, CEO and founder of JuliaHub, and Chris Rackauckas, tell us about physical AI and its use for systems analysis.  Its a different AI story than the popular one: physical AI for engineers, where models must respect governing equations, compile, and validate against known test cases. Along the way we unpack why Julia, a programming language, was created ...]]></itunes:summary>
    <description><![CDATA[<p>“Make me a car” is an impressive demo until you ask where the braking hydraulics, controls, and safety logic went. </p><p>We let Viral Shah, CEO and founder of JuliaHub, and Chris Rackauckas, tell us about physical AI and its use for systems analysis. </p><p>Its a different AI story than the popular one: physical AI for engineers, where models must respect governing equations, compile, and validate against known test cases. Along the way we unpack why Julia, a programming language, was created and how it led to Dyad. Hint: to do systems analyses.  Any system. Also how open source shaped its growth, and why that foundation matters when you want AI to do more than autocomplete code.<br/><br/>We then get concrete with Dyad, JuliaHub’s domain-specific language for systems modeling and multiphysics simulation. Rather than building another CAD tool, Dyad focuses on function over form, the system and subsystem level where real products live. That unlocks fast iteration in the engineering V-model: requirements, architecture, integration, and ultimately digital twin workflows, without forcing every engineer to become a full-time programmer.<br/><br/>The highlight is a demo where an agent ingests NASA HL-20 lifting body documents and aerodynamic data, generates a working systems model, runs a documented pitch-pulse test, and produces plots you can compare to the original validation figures. We also talk about the trust problem with AI and why physics-aware compilers, transparent artifacts, and test cases change the conversation from “wow” to “verify.” If you care about engineering simulation, systems engineering, agentic AI, and digital twins, subscribe, share this with a colleague, and leave a review with the tool you want AI to tackle next.</p>]]></description>
    <content:encoded><![CDATA[<p>“Make me a car” is an impressive demo until you ask where the braking hydraulics, controls, and safety logic went. </p><p>We let Viral Shah, CEO and founder of JuliaHub, and Chris Rackauckas, tell us about physical AI and its use for systems analysis. </p><p>Its a different AI story than the popular one: physical AI for engineers, where models must respect governing equations, compile, and validate against known test cases. Along the way we unpack why Julia, a programming language, was created and how it led to Dyad. Hint: to do systems analyses.  Any system. Also how open source shaped its growth, and why that foundation matters when you want AI to do more than autocomplete code.<br/><br/>We then get concrete with Dyad, JuliaHub’s domain-specific language for systems modeling and multiphysics simulation. Rather than building another CAD tool, Dyad focuses on function over form, the system and subsystem level where real products live. That unlocks fast iteration in the engineering V-model: requirements, architecture, integration, and ultimately digital twin workflows, without forcing every engineer to become a full-time programmer.<br/><br/>The highlight is a demo where an agent ingests NASA HL-20 lifting body documents and aerodynamic data, generates a working systems model, runs a documented pitch-pulse test, and produces plots you can compare to the original validation figures. We also talk about the trust problem with AI and why physics-aware compilers, transparent artifacts, and test cases change the conversation from “wow” to “verify.” If you care about engineering simulation, systems engineering, agentic AI, and digital twins, subscribe, share this with a colleague, and leave a review with the tool you want AI to tackle next.</p>]]></content:encoded>
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    <pubDate>Mon, 25 May 2026 10:00:00 -0700</pubDate>
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  <psc:chapter start="0:00" title="Welcome And Show Purpose" />
  <psc:chapter start="2:10" title="Meeting Dimitri And Origin Stories" />
  <psc:chapter start="5:00" title="India’s Tech Gap And Open Source Culture" />
  <psc:chapter start="11:15" title="Why Julia Had To Exist" />
  <psc:chapter start="16:40" title="How Julia Grew Into A Global Tool" />
  <psc:chapter start="19:00" title="Physical AI Beyond Chatbots" />
  <psc:chapter start="22:00" title="What Dyad Models And Why" />
  <psc:chapter start="29:30" title="Demo: Building The NASA HL-20 Model" />
  <psc:chapter start="39:50" title="Validation Plots And Trustworthy AI" />
  <psc:chapter start="52:30" title="The V-Model And Electrifying A Car" />
  <psc:chapter start="1:00:40" title="Bringing Your Company Context Securely" />
  <psc:chapter start="1:02:15" title="Closing Thoughts And Listener Outreach" />
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    <itunes:duration>3783</itunes:duration>
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    <itunes:title>Mark Burhop on AI For Engineers</itunes:title>
    <title>Mark Burhop on AI For Engineers</title>
    <itunes:summary><![CDATA[CAD should be the easiest tool in the room, yet it still feels like stepping into a cockpit packed with controls you have to relearn every time. We sit down with Mark, a longtime developer and former Siemens leader, to talk about why AI is racing ahead in some areas while product design and manufacturing still feel stuck and why the biggest blocker is not geometry, it is the interface.  We break down what large language models are genuinely great at today: procedural work, fast research, docu...]]></itunes:summary>
    <description><![CDATA[<p>CAD should be the easiest tool in the room, yet it still feels like stepping into a cockpit packed with controls you have to relearn every time. We sit down with Mark, a longtime developer and former Siemens leader, to talk about why AI is racing ahead in some areas while product design and manufacturing still feel stuck and why the biggest blocker is not geometry, it is the interface.<br/><br/>We break down what large language models are genuinely great at today: procedural work, fast research, documentation, and especially coding. Mark explains why “vibe coding” and multi agent workflows are changing software development, pushing value toward architecture, domain experience, and good judgment. We also get real about the messy side: non deterministic outputs, security risks, and the stress of managing agents that never stop running.<br/><br/>Then we move to the physical world. Robots look impressive on stage, but on the factory floor speed, sensing, touch, and reliability matter more than demos. We talk about physical AI, why humanoid robots are both tempting and often impractical, and where near term wins actually live, like AI that helps operators troubleshoot CNC errors instantly or reduces time wasted searching documentation.<br/><br/>Finally, we connect the dots back to CAD, CAM, and CAE: automated drawings, design checking, natural language design, generative design exploration, and the emerging standards like MCP that aim to connect AI to engineering tools. If you care about the future of engineering software, AI for manufacturing, and the next generation of CAD interfaces, this conversation will sharpen your thinking. </p>]]></description>
    <content:encoded><![CDATA[<p>CAD should be the easiest tool in the room, yet it still feels like stepping into a cockpit packed with controls you have to relearn every time. We sit down with Mark, a longtime developer and former Siemens leader, to talk about why AI is racing ahead in some areas while product design and manufacturing still feel stuck and why the biggest blocker is not geometry, it is the interface.<br/><br/>We break down what large language models are genuinely great at today: procedural work, fast research, documentation, and especially coding. Mark explains why “vibe coding” and multi agent workflows are changing software development, pushing value toward architecture, domain experience, and good judgment. We also get real about the messy side: non deterministic outputs, security risks, and the stress of managing agents that never stop running.<br/><br/>Then we move to the physical world. Robots look impressive on stage, but on the factory floor speed, sensing, touch, and reliability matter more than demos. We talk about physical AI, why humanoid robots are both tempting and often impractical, and where near term wins actually live, like AI that helps operators troubleshoot CNC errors instantly or reduces time wasted searching documentation.<br/><br/>Finally, we connect the dots back to CAD, CAM, and CAE: automated drawings, design checking, natural language design, generative design exploration, and the emerging standards like MCP that aim to connect AI to engineering tools. If you care about the future of engineering software, AI for manufacturing, and the next generation of CAD interfaces, this conversation will sharpen your thinking. </p>]]></content:encoded>
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    <pubDate>Mon, 25 May 2026 08:00:00 -0700</pubDate>
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  <psc:chapter start="0:00" title="Welcome And AI Time" />
  <psc:chapter start="1:30" title="From SDRC To Siemens Research" />
  <psc:chapter start="3:35" title="Where LLMs Shine And Slip" />
  <psc:chapter start="6:50" title="Physical AI And The Robot Reality" />
  <psc:chapter start="12:40" title="Vibe Coding And Multi Agent Development" />
  <psc:chapter start="20:00" title="CAD Jobs Drawings And Automation" />
  <psc:chapter start="26:15" title="The UI Bottleneck In Engineering Software" />
  <psc:chapter start="31:30" title="Startups Generative Design And Exploration" />
  <psc:chapter start="40:15" title="Trust Adoption And Non Deterministic AI" />
  <psc:chapter start="46:00" title="MCPs Tools And The CLI Alternative" />
  <psc:chapter start="57:20" title="What Comes Next And How To Reach Us" />
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    <itunes:duration>3637</itunes:duration>
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    <itunes:title>Jarek Rzepecki from Monumo: Motor Simulation and Optimization...For Now</itunes:title>
    <title>Jarek Rzepecki from Monumo: Motor Simulation and Optimization...For Now</title>
    <itunes:summary><![CDATA[Rare earth magnets, AI data center energy demand, and electrification are colliding in one place most people ignore: the electric motor. I sit down with Jarek Rzepecki from Monumo to get practical about what it takes to design motors and powertrains when costs, materials, and constraints can shift fast, and when “just optimize the motor” is never the whole story.  We dig into why system-level optimization matters, how a change to one component can cascade through the entire design, and why en...]]></itunes:summary>
    <description><![CDATA[<p>Rare earth magnets, AI data center energy demand, and electrification are colliding in one place most people ignore: the electric motor. I sit down with Jarek Rzepecki from Monumo to get practical about what it takes to design motors and powertrains when costs, materials, and constraints can shift fast, and when “just optimize the motor” is never the whole story.<br/><br/>We dig into why system-level optimization matters, how a change to one component can cascade through the entire design, and why engineers can’t realistically brute-force the search space as parameters multiply. Derek explains how physics-informed AI, machine learning, and simulation can work together to explore designs faster, including approaches that reduce reliance on rare earth magnets while keeping performance targets intact. We also break down the motor landscape in plain terms: permanent magnet motors, wound rotor designs, and magnet-free reluctance motors, plus the real-world problem of torque ripple and what it does to noise, vibration, and durability.<br/><br/>Along the way, we connect the dots to robotics actuators, drones, generators, and the broader sustainability angle, because improving efficiency on the generation side and the consumption side can move the needle at global scale. If you like engineering software, multi-physics simulation, FEM, and the future of AI for engineering design, you’ll get a lot out of this interview. </p>]]></description>
    <content:encoded><![CDATA[<p>Rare earth magnets, AI data center energy demand, and electrification are colliding in one place most people ignore: the electric motor. I sit down with Jarek Rzepecki from Monumo to get practical about what it takes to design motors and powertrains when costs, materials, and constraints can shift fast, and when “just optimize the motor” is never the whole story.<br/><br/>We dig into why system-level optimization matters, how a change to one component can cascade through the entire design, and why engineers can’t realistically brute-force the search space as parameters multiply. Derek explains how physics-informed AI, machine learning, and simulation can work together to explore designs faster, including approaches that reduce reliance on rare earth magnets while keeping performance targets intact. We also break down the motor landscape in plain terms: permanent magnet motors, wound rotor designs, and magnet-free reluctance motors, plus the real-world problem of torque ripple and what it does to noise, vibration, and durability.<br/><br/>Along the way, we connect the dots to robotics actuators, drones, generators, and the broader sustainability angle, because improving efficiency on the generation side and the consumption side can move the needle at global scale. If you like engineering software, multi-physics simulation, FEM, and the future of AI for engineering design, you’ll get a lot out of this interview. </p>]]></content:encoded>
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    <pubDate>Sun, 24 May 2026 17:00:00 -0700</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And A San Francisco Hello" />
  <psc:chapter start="2:51" title="From CAD Copilots To Today" />
  <psc:chapter start="4:33" title="Poland To Germany Through Physics" />
  <psc:chapter start="5:55" title="Why Leave Academia For Industry" />
  <psc:chapter start="8:50" title="Rare Earth Risk Meets Motor Design" />
  <psc:chapter start="11:34" title="Monumo And System-Level Optimization" />
  <psc:chapter start="15:53" title="Motors Everywhere From Robots To Grids" />
  <psc:chapter start="22:09" title="Motor Types And The Torque Tradeoff" />
  <psc:chapter start="25:38" title="Beating Torque Ripple With Co-Design" />
  <psc:chapter start="28:27" title="Simulation Stack AI And Manufacturing Limits" />
  <psc:chapter start="37:06" title="Partnerships Pricing And Delivering Value" />
  <psc:chapter start="40:02" title="EV Futures Bay Area Trips And Waymo" />
  <psc:chapter start="44:36" title="Closing Thoughts And Listener Outreach" />
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    <itunes:duration>2746</itunes:duration>
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    <itunes:title>Bamelak and Vlodymyr&#39;s TSFWaves Connect Antennas to Real Network Performance</itunes:title>
    <title>Bamelak and Vlodymyr&#39;s TSFWaves Connect Antennas to Real Network Performance</title>
    <itunes:summary><![CDATA[Your wireless device can pass every isolated RF check and still disappoint in the real world. That’s the uncomfortable truth behind crowded stadium Wi-Fi, high-speed mobility, and the next wave of machine-type communication, and it’s exactly why I sat down with the team behind TSF Waves to unpack what “system-level wireless design” actually means.  We get into the hard split that’s held the industry back for years: RF and antenna engineers work inside electromagnetic theory and tools like ANS...]]></itunes:summary>
    <description><![CDATA[<p>Your wireless device can pass every isolated RF check and still disappoint in the real world. That’s the uncomfortable truth behind crowded stadium Wi-Fi, high-speed mobility, and the next wave of machine-type communication, and it’s exactly why I sat down with the team behind TSF Waves to unpack what “system-level wireless design” actually means.<br/><br/>We get into the hard split that’s held the industry back for years: RF and antenna engineers work inside electromagnetic theory and tools like ANSYS HFSS, while signal processing engineers live in algorithms, scheduling, decoding, and 3GPP-style resource allocation. For 5G and emerging 6G, especially at millimeter wave with large antenna arrays, those worlds collide. TSF Waves explains how they couple physics-based electromagnetic simulation inside the ANSYS Electronics Desktop ecosystem with a signal processing layer to produce system-level KPIs like channel capacity, block error rate, and usable spatial streams, so teams can evaluate hardware choices against real network performance.<br/><br/>We also talk about why edge AI, IoT, robotics, and V2X vehicle-to-everything connectivity are forcing order-of-magnitude jumps in data rates while power consumption stays a constraint. Then we explore their practical answer: a workflow-driven Python API and a “Wireless AI” agent that helps engineers run complex HFSS-based workflows without living in tedious code, while still understanding what they’re doing.<br/><br/>If you care about 5G, 6G, RF simulation, digital twins, and making wireless design faster and more reliable, subscribe, share this with an engineer on your team, and leave a review with the biggest wireless problem you want solved next.</p>]]></description>
    <content:encoded><![CDATA[<p>Your wireless device can pass every isolated RF check and still disappoint in the real world. That’s the uncomfortable truth behind crowded stadium Wi-Fi, high-speed mobility, and the next wave of machine-type communication, and it’s exactly why I sat down with the team behind TSF Waves to unpack what “system-level wireless design” actually means.<br/><br/>We get into the hard split that’s held the industry back for years: RF and antenna engineers work inside electromagnetic theory and tools like ANSYS HFSS, while signal processing engineers live in algorithms, scheduling, decoding, and 3GPP-style resource allocation. For 5G and emerging 6G, especially at millimeter wave with large antenna arrays, those worlds collide. TSF Waves explains how they couple physics-based electromagnetic simulation inside the ANSYS Electronics Desktop ecosystem with a signal processing layer to produce system-level KPIs like channel capacity, block error rate, and usable spatial streams, so teams can evaluate hardware choices against real network performance.<br/><br/>We also talk about why edge AI, IoT, robotics, and V2X vehicle-to-everything connectivity are forcing order-of-magnitude jumps in data rates while power consumption stays a constraint. Then we explore their practical answer: a workflow-driven Python API and a “Wireless AI” agent that helps engineers run complex HFSS-based workflows without living in tedious code, while still understanding what they’re doing.<br/><br/>If you care about 5G, 6G, RF simulation, digital twins, and making wireless design faster and more reliable, subscribe, share this with an engineer on your team, and leave a review with the biggest wireless problem you want solved next.</p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/19192545-bamelak-and-vlodymyr-s-tsfwaves-connect-antennas-to-real-network-performance.mp3" length="21243307" type="audio/mpeg" />
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    <pubDate>Sun, 17 May 2026 17:00:00 -0700</pubDate>
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  <psc:chapter start="0:00" title="Welcome And The Problem To Solve" />
  <psc:chapter start="2:12" title="Why RF And Algorithms Must Merge" />
  <psc:chapter start="4:42" title="Where ANSYS Stops And We Start" />
  <psc:chapter start="8:23" title="What Better Wireless Changes In Practice" />
  <psc:chapter start="14:48" title="Edge AI V2X And Power Limits" />
  <psc:chapter start="20:35" title="Research Roots And Startup Strategy" />
  <psc:chapter start="24:16" title="Demo Workflows And Wireless AI Agent" />
  <psc:chapter start="28:55" title="Closing And How To Reach Us" />
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    <itunes:duration>1764</itunes:duration>
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    <itunes:title>John Harrington of HighByte: Stop Making Data Swamps, Start Shipping Chocolate</itunes:title>
    <title>John Harrington of HighByte: Stop Making Data Swamps, Start Shipping Chocolate</title>
    <itunes:summary><![CDATA[We talk with John Harrington, co-founder of HighByte, about why factory-floor data stays invisible to the teams who need it most and how Industrial DataOps closes that gap. We explore contextualized data pipelines, the post-IoT architecture shift toward cloud data platforms, and why AI agents will force a new level of data quality and governance.  • Moving beyond “throw it over the wall” design and giving engineers real manufacturing feedback loops  • Defining Industrial DataOps and...]]></itunes:summary>
    <description><![CDATA[<p>We talk with John Harrington, co-founder of HighByte, about why factory-floor data stays invisible to the teams who need it most and how Industrial DataOps closes that gap. We explore contextualized data pipelines, the post-IoT architecture shift toward cloud data platforms, and why AI agents will force a new level of data quality and governance. <br/>• Moving beyond “throw it over the wall” design and giving engineers real manufacturing feedback loops <br/>• Defining Industrial DataOps and why context makes raw OT data usable <br/>• Handling messy realities across MES, ERP, historians, inspection systems, files, and streaming telemetry <br/>• Avoiding data swamps by standardizing, governing, and observing data pipelines at scale <br/>• Using no-code tooling to build and maintain pipelines without relying on programmers <br/>• Filtering and sampling data based on use case, frequency needs, and event triggers <br/>• Preparing for AI agents as massive new consumers of shop floor data <br/>• Realistic talk on AI and jobs, focusing on better work through better signal detection <br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with John Harrington, co-founder of HighByte, about why factory-floor data stays invisible to the teams who need it most and how Industrial DataOps closes that gap. We explore contextualized data pipelines, the post-IoT architecture shift toward cloud data platforms, and why AI agents will force a new level of data quality and governance. <br/>• Moving beyond “throw it over the wall” design and giving engineers real manufacturing feedback loops <br/>• Defining Industrial DataOps and why context makes raw OT data usable <br/>• Handling messy realities across MES, ERP, historians, inspection systems, files, and streaming telemetry <br/>• Avoiding data swamps by standardizing, governing, and observing data pipelines at scale <br/>• Using no-code tooling to build and maintain pipelines without relying on programmers <br/>• Filtering and sampling data based on use case, frequency needs, and event triggers <br/>• Preparing for AI agents as massive new consumers of shop floor data <br/>• Realistic talk on AI and jobs, focusing on better work through better signal detection <br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18985201-john-harrington-of-highbyte-stop-making-data-swamps-start-shipping-chocolate.mp3" length="32707722" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/x1kv4ottz80ufv5bfvswt6wqeab0?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18985201</guid>
    <pubDate>Wed, 08 Apr 2026 14:00:00 -0700</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18985201/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18985201/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Background" />
  <psc:chapter start="3:40" title="Why Engineers Need Shop Floor Data" />
  <psc:chapter start="6:40" title="What Industrial DataOps Really Means" />
  <psc:chapter start="12:10" title="Context And The Factory Data Puzzle" />
  <psc:chapter start="15:40" title="AI Agents As Data Super Consumers" />
  <psc:chapter start="19:30" title="Why Industrial IoT Platforms Stalled" />
  <psc:chapter start="25:50" title="No Code Pipelines And The Intelligence Hub" />
  <psc:chapter start="33:00" title="Filtering Data By Use Case" />
  <psc:chapter start="36:50" title="AI Assistance Inside DataOps Tools" />
  <psc:chapter start="40:10" title="AI And Jobs Plus Adoption Reality" />
  <psc:chapter start="44:25" title="Closing Thoughts And How To Reach Us" />
</psc:chapters>
    <itunes:duration>2715</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Juan Carlos Santamaria, Trimble. Physical AI On The Jobsite</itunes:title>
    <title>Juan Carlos Santamaria, Trimble. Physical AI On The Jobsite</title>
    <itunes:summary><![CDATA[We talk with Juan Carlos Santamaria about how AI in engineering has evolved from rule-based robotics to modern systems that perceive job sites and help machines make better decisions. We dig into Trimble’s push from AI perception to operator assist and what it will take for engineers and operators to trust AI in the field and in design tools.  • Juan Carlos’s PhD-era view of AI as a multidisciplinary field  • Planning versus reactive robotics and why brittle plans fail  • AI fo...]]></itunes:summary>
    <description><![CDATA[<p>We talk with Juan Carlos Santamaria about how AI in engineering has evolved from rule-based robotics to modern systems that perceive job sites and help machines make better decisions. We dig into Trimble’s push from AI perception to operator assist and what it will take for engineers and operators to trust AI in the field and in design tools. <br/>• Juan Carlos’s PhD-era view of AI as a multidisciplinary field <br/>• Planning versus reactive robotics and why brittle plans fail <br/>• AI for perception on construction sites using point cloud images and video <br/>• Turning recognition into jobsite semantics like cycles and bucket loads <br/>• The shift toward decision making with operator assist in the cab <br/>• Autonomy in mining versus the realities of safety policy and adoption <br/>• Why trust builds faster when operators can experience the system <br/>• Zero tolerance expectations for machines compared with human error <br/>• Point cloud segmentation today and what engineers want next <br/>• Natural language interfaces that execute software commands from prompts <br/>• SketchUp and 3D Warehouse visual search and AI-assisted edits <br/>• Interoperability across tools and the “Tower of Babel” problem <br/>• Planning for unknown unknowns when digging into existing infrastructure <br/>• How AI work gets prioritized across product teams <br/>• Why kids and professionals should learn AI as a tool for thinking clearly <br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with Juan Carlos Santamaria about how AI in engineering has evolved from rule-based robotics to modern systems that perceive job sites and help machines make better decisions. We dig into Trimble’s push from AI perception to operator assist and what it will take for engineers and operators to trust AI in the field and in design tools. <br/>• Juan Carlos’s PhD-era view of AI as a multidisciplinary field <br/>• Planning versus reactive robotics and why brittle plans fail <br/>• AI for perception on construction sites using point cloud images and video <br/>• Turning recognition into jobsite semantics like cycles and bucket loads <br/>• The shift toward decision making with operator assist in the cab <br/>• Autonomy in mining versus the realities of safety policy and adoption <br/>• Why trust builds faster when operators can experience the system <br/>• Zero tolerance expectations for machines compared with human error <br/>• Point cloud segmentation today and what engineers want next <br/>• Natural language interfaces that execute software commands from prompts <br/>• SketchUp and 3D Warehouse visual search and AI-assisted edits <br/>• Interoperability across tools and the “Tower of Babel” problem <br/>• Planning for unknown unknowns when digging into existing infrastructure <br/>• How AI work gets prioritized across product teams <br/>• Why kids and professionals should learn AI as a tool for thinking clearly <br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18926376-juan-carlos-santamaria-trimble-physical-ai-on-the-jobsite.mp3" length="31381622" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/axa7fd0qh27y8ayr9rqmlm3658ad?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18926376</guid>
    <pubDate>Mon, 30 Mar 2026 11:00:00 -0700</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18926376/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18926376/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Juan Carlos Santamaria, Trimble. Physical AI On The Jobsite" />
  <psc:chapter start="0:07" title="Welcome And Guest Introduction" />
  <psc:chapter start="2:10" title="What AI Meant In The 90s" />
  <psc:chapter start="6:10" title="Planning Versus Reactive Robotics" />
  <psc:chapter start="10:25" title="Trimble AI Starts With Perception" />
  <psc:chapter start="16:15" title="Operator Assist And Physical AI" />
  <psc:chapter start="26:05" title="Trust Safety And Zero Tolerance" />
  <psc:chapter start="31:35" title="Point Clouds And Natural Language UI" />
  <psc:chapter start="36:55" title="Interoperability And Planning For Unknowns" />
  <psc:chapter start="40:10" title="Picking AI Projects And Learning AI" />
  <psc:chapter start="43:05" title="Closing Thanks And Listener Outreach" />
</psc:chapters>
    <itunes:duration>2612</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>2</itunes:season>
    <itunes:episode>8</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Michael Fleischman  — OpenSpace is Reality Capture Plus AI</itunes:title>
    <title>Michael Fleischman  — OpenSpace is Reality Capture Plus AI</title>
    <itunes:summary><![CDATA[We talk with OpenSpace CTO Michael Fleischman about turning job-site photos into spatial data that teams can actually act on, from 360 degree capture to progress tracking and AI agents. We dig into why construction software adoption is so hard, and what changes when your phone can be used to create higher-quality data and automation.  • Michael’s path from philosophy and psychology to computational linguistics and AI  • Meeting OpenSpace co-founders at MIT Media Lab and pivoting int...]]></itunes:summary>
    <description><![CDATA[<p>We talk with OpenSpace CTO Michael Fleischman about turning job-site photos into spatial data that teams can actually act on, from 360 degree capture to progress tracking and AI agents. We dig into why construction software adoption is so hard, and what changes when your phone can be used to create higher-quality data and automation. <br/>• Michael’s path from philosophy and psychology to computational linguistics and AI <br/>• Meeting OpenSpace co-founders at MIT Media Lab and pivoting into construction <br/>• Reality capture as the foundation and why “agents need eyes” <br/>• Cameras vs LiDAR on phones and why photos solve most field needs <br/>• AI autolocation as indoor GPS without beacons <br/>• Lowering friction as the real key to construction tech adoption <br/>• Progress tracking against BIM models or 2D drawings and closing the loop with reality <br/>• Disperse acquisition and why construction-specific spatial understanding matters <br/>• Flagging potential issues with Spotlight and keeping humans in control <br/>• Letting customers build customized agents for safety, QA, and workflows <br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with OpenSpace CTO Michael Fleischman about turning job-site photos into spatial data that teams can actually act on, from 360 degree capture to progress tracking and AI agents. We dig into why construction software adoption is so hard, and what changes when your phone can be used to create higher-quality data and automation. <br/>• Michael’s path from philosophy and psychology to computational linguistics and AI <br/>• Meeting OpenSpace co-founders at MIT Media Lab and pivoting into construction <br/>• Reality capture as the foundation and why “agents need eyes” <br/>• Cameras vs LiDAR on phones and why photos solve most field needs <br/>• AI autolocation as indoor GPS without beacons <br/>• Lowering friction as the real key to construction tech adoption <br/>• Progress tracking against BIM models or 2D drawings and closing the loop with reality <br/>• Disperse acquisition and why construction-specific spatial understanding matters <br/>• Flagging potential issues with Spotlight and keeping humans in control <br/>• Letting customers build customized agents for safety, QA, and workflows <br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18902084-michael-fleischman-openspace-is-reality-capture-plus-ai.mp3" length="32454549" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/ldqh7voku3kus30hmx2lil9zvjjp?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18902084</guid>
    <pubDate>Tue, 24 Mar 2026 16:00:00 -0700</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18902084/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18902084/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Quick Introductions" />
  <psc:chapter start="1:36" title="From Philosophy To AI Research" />
  <psc:chapter start="6:26" title="The Origin Story Of OpenSpace" />
  <psc:chapter start="8:13" title="Agents Need Data And Accountability" />
  <psc:chapter start="9:45" title="Cameras LiDAR And Smartphone Capture" />
  <psc:chapter start="13:11" title="AI Autolocation As Indoor GPS" />
  <psc:chapter start="16:24" title="Why Construction Tech Adoption Is Hard" />
  <psc:chapter start="22:21" title="Progress Tracking Needs A Brain Layer" />
  <psc:chapter start="25:14" title="Closing The Loop With Schedule And QA" />
  <psc:chapter start="31:46" title="Let Customers Build Their Own Agents" />
  <psc:chapter start="35:39" title="Physical AI And Training With Spatial Data" />
  <psc:chapter start="41:11" title="Global Scale Business Updates And Farewell" />
</psc:chapters>
    <itunes:duration>2703</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Matt Mcelvogue, VP at Teague on Human-Centered Design</itunes:title>
    <title>Matt Mcelvogue, VP at Teague on Human-Centered Design</title>
    <itunes:summary><![CDATA[Matt McElvogue, VP at Teague, talks about Teague's human-centered design. We explore how building early aligns design, engineering, and business, and why full-scale prototypes beat slide decks. From accessible aircraft cabins to friendlier autonomous shuttles, we show how human-centered design meets hard constraints while accounting for many factors, such as aesthetics and functionality, that design engineers may not consider. • Teague’s “thinking through making” philosophy across aerospace, ...]]></itunes:summary>
    <description><![CDATA[<p>Matt McElvogue, VP at Teague, talks about Teague&apos;s human-centered design. We explore how building early aligns design, engineering, and business, and why full-scale prototypes beat slide decks. From accessible aircraft cabins to friendlier autonomous shuttles, we show how human-centered design meets hard constraints while accounting for many factors, such as aesthetics and functionality, that design engineers may not consider.</p><p>• Teague’s “thinking through making” philosophy across aerospace, automotive and defense<br/>• Tooling choices from Rhino and SolisWorks to CATIA for aerospace rigor<br/>• Full-scale cabin mockups and high-fidelity showpieces that survive travel<br/>• Aligning desirability with feasibility in regulated environments<br/>• Accessibility in aviation using sensors and smart wayfinding<br/>• Factory-floor innovation with a microphone-based wire seating tool<br/>• Where Teague complements in‑house prototype shops<br/>• Autonomy, safety, public trust and external vehicle communication<br/>• A friendly, bidirectional autonomous school shuttle concept<br/>• Faster visualization, humanoid robots and emergent AI-driven design<br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>Matt McElvogue, VP at Teague, talks about Teague&apos;s human-centered design. We explore how building early aligns design, engineering, and business, and why full-scale prototypes beat slide decks. From accessible aircraft cabins to friendlier autonomous shuttles, we show how human-centered design meets hard constraints while accounting for many factors, such as aesthetics and functionality, that design engineers may not consider.</p><p>• Teague’s “thinking through making” philosophy across aerospace, automotive and defense<br/>• Tooling choices from Rhino and SolisWorks to CATIA for aerospace rigor<br/>• Full-scale cabin mockups and high-fidelity showpieces that survive travel<br/>• Aligning desirability with feasibility in regulated environments<br/>• Accessibility in aviation using sensors and smart wayfinding<br/>• Factory-floor innovation with a microphone-based wire seating tool<br/>• Where Teague complements in‑house prototype shops<br/>• Autonomy, safety, public trust and external vehicle communication<br/>• A friendly, bidirectional autonomous school shuttle concept<br/>• Faster visualization, humanoid robots and emergent AI-driven design<br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18804107-matt-mcelvogue-vp-at-teague-on-human-centered-design.mp3" length="34253529" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/tg4wbw8jm4jkvcmmi20ldrdwhg5c?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18804107</guid>
    <pubDate>Fri, 06 Mar 2026 15:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18804107/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18804107/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Teague’s Century Of Making" />
  <psc:chapter start="1:05" title="Matt’s Path From Software To Systems" />
  <psc:chapter start="4:10" title="Tooling Across Industries" />
  <psc:chapter start="6:35" title="The Shop: From Foam To First Class" />
  <psc:chapter start="10:40" title="Showpiece Prototypes With Engineering Rigor" />
  <psc:chapter start="13:45" title="Thinking Through Making" />
  <psc:chapter start="17:40" title="Beyond Aesthetics: Feasibility And Regulation" />
  <psc:chapter start="21:25" title="Human Factors And Accessibility In Aviation" />
  <psc:chapter start="25:00" title="Human-Centered Design On The Factory Floor" />
  <psc:chapter start="28:05" title="Where Teague Fits With In‑House Shops" />
  <psc:chapter start="30:20" title="Autonomy, Safety, And Public Trust" />
  <psc:chapter start="35:10" title="Pedestrian Communication And External HMI" />
  <psc:chapter start="39:05" title="A Friendlier Autonomous School Vehicle" />
  <psc:chapter start="43:00" title="Concept Provocations And Industry Impact" />
  <psc:chapter start="46:10" title="Faster Visualization And Humanoid Robots" />
</psc:chapters>
    <itunes:duration>2851</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Nineteen Year Old Parth Mehta Reinvents CAD with AI</itunes:title>
    <title>Nineteen Year Old Parth Mehta Reinvents CAD with AI</title>
    <itunes:summary><![CDATA[We talk with Makistry founder Parth Meta about turning plain English prompts into parametric CAD and why a structured AI “brainstorm” can speed design without losing engineering control. We dig into standards-aware reasoning, exports, limitations, and the roadmap for assemblies and 2D-to-3D.  • Why CAD still slows real projects • Text to parametric models through a guided brainstorm • Using RAG to ground standards like M4 and hole specs • Open Cascade kernel, STEP exports, in-browser visualiz...]]></itunes:summary>
    <description><![CDATA[<p>We talk with Makistry founder Parth Meta about turning plain English prompts into parametric CAD and why a structured AI “brainstorm” can speed design without losing engineering control. We dig into standards-aware reasoning, exports, limitations, and the roadmap for assemblies and 2D-to-3D.<br/><br/>• Why CAD still slows real projects<br/>• Text to parametric models through a guided brainstorm<br/>• Using RAG to ground standards like M4 and hole specs<br/>• Open Cascade kernel, STEP exports, in-browser visualization<br/>• Measuring and parameter checks for trust and repeatability<br/>• Limits on complexity and plans for sketches to 3D<br/>• Assemblies, mates, and constraints on the roadmap<br/>• Moving beyond copilots to AI-native design and CAM<br/>• Balancing startup work with school and sport<br/>• Making geometry organic yet manufacturable<br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with Makistry founder Parth Meta about turning plain English prompts into parametric CAD and why a structured AI “brainstorm” can speed design without losing engineering control. We dig into standards-aware reasoning, exports, limitations, and the roadmap for assemblies and 2D-to-3D.<br/><br/>• Why CAD still slows real projects<br/>• Text to parametric models through a guided brainstorm<br/>• Using RAG to ground standards like M4 and hole specs<br/>• Open Cascade kernel, STEP exports, in-browser visualization<br/>• Measuring and parameter checks for trust and repeatability<br/>• Limits on complexity and plans for sketches to 3D<br/>• Assemblies, mates, and constraints on the roadmap<br/>• Moving beyond copilots to AI-native design and CAM<br/>• Balancing startup work with school and sport<br/>• Making geometry organic yet manufacturable<br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18770374-nineteen-year-old-parth-mehta-reinvents-cad-with-ai.mp3" length="30895378" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/iz2exin4a3b2j9y63h4nsl0j7ird?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18770374</guid>
    <pubDate>Mon, 02 Mar 2026 16:00:00 -0800</pubDate>
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    <podcast:transcript url="https://www.buzzsprout.com/2529753/18770374/transcript.vtt" type="text/vtt" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Meet Parth And Makeistry" />
  <psc:chapter start="1:45" title="CAD Pain Points And The Spark" />
  <psc:chapter start="3:40" title="From Class Project To Prototype" />
  <psc:chapter start="5:50" title="Surveys Validate The Need" />
  <psc:chapter start="7:45" title="Building The Beta And Traction" />
  <psc:chapter start="9:30" title="Naming And Vision" />
  <psc:chapter start="10:35" title="Why CAD Still Feels Hard" />
  <psc:chapter start="13:30" title="Student Life And Background" />
  <psc:chapter start="16:40" title="Access And Cloud App Basics" />
  <psc:chapter start="18:10" title="Live Demo Setup" />
  <psc:chapter start="19:20" title="Text First, Then Structured Brainstorm" />
  <psc:chapter start="21:00" title="LLM Choice, RAG, And Guardrails" />
  <psc:chapter start="23:30" title="Secret Sauce Without The Secrets" />
  <psc:chapter start="25:10" title="Standards, Consistency, And Reliability" />
  <psc:chapter start="27:00" title="Geometry Kernel And Exports" />
  <psc:chapter start="28:40" title="Measuring, Parameters, And Control" />
  <psc:chapter start="30:20" title="Editing By Chat And Design Intuition" />
  <psc:chapter start="31:50" title="Complexity Limits And 2D-To-3D" />
  <psc:chapter start="33:00" title="Assemblies And Constraints Roadmap" />
  <psc:chapter start="34:40" title="Beyond Copilots To AI-Native CAD" />
  <psc:chapter start="36:40" title="Organic Shapes Without Unmakeable Blobs" />
  <psc:chapter start="38:30" title="Team, Support, And Collaboration" />
  <psc:chapter start="40:00" title="Balancing Startup, School, And Sport" />
  <psc:chapter start="41:50" title="Closing Thoughts And Next Steps" />
</psc:chapters>
    <itunes:duration>2571</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title> Rand Simulation: Democratization is Fine  — Up to a Point</itunes:title>
    <title> Rand Simulation: Democratization is Fine  — Up to a Point</title>
    <itunes:summary><![CDATA[We trace how focused simulation wins over all-in-one platforms, then try to find out more about the design of an Olympic helmet  — with no luck. Rand Simulation experts use LS-DYNA and validate the results to cut risk and time. We close with a frank take on what AI can and cannot do for complex physics and where humans must stay in the loop.   ANSYS ability to simulate crash behaviour, fragmentationGPU solvers move design feedback to secondsHow designers and analysts collaborate without ...]]></itunes:summary>
    <description><![CDATA[<p>We trace how focused simulation wins over all-in-one platforms, then try to find out more about the design of an Olympic helmet  — with no luck. Rand Simulation experts use LS-DYNA and validate the results to cut risk and time. We close with a frank take on what AI can and cannot do for complex physics and where humans must stay in the loop.<br/><br/></p><ul><li>ANSYS ability to simulate crash behaviour, fragmentation</li><li>GPU solvers move design feedback to seconds</li><li>How designers and analysts collaborate without overlap</li><li>Services, training, and keeping skills sharp</li><li>Aerodynamic shell vs impact liner complexity</li><li>LS-DYNA for explicit dynamics and complex foams</li><li>DOEs to find worst cases across speed and temperature</li><li>3D-printed lattices promise and current limits</li><li>Safety trade-offs comfort, mass, and adoption</li><li>Where AI assists setup vs where experts decide</li></ul><p><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We trace how focused simulation wins over all-in-one platforms, then try to find out more about the design of an Olympic helmet  — with no luck. Rand Simulation experts use LS-DYNA and validate the results to cut risk and time. We close with a frank take on what AI can and cannot do for complex physics and where humans must stay in the loop.<br/><br/></p><ul><li>ANSYS ability to simulate crash behaviour, fragmentation</li><li>GPU solvers move design feedback to seconds</li><li>How designers and analysts collaborate without overlap</li><li>Services, training, and keeping skills sharp</li><li>Aerodynamic shell vs impact liner complexity</li><li>LS-DYNA for explicit dynamics and complex foams</li><li>DOEs to find worst cases across speed and temperature</li><li>3D-printed lattices promise and current limits</li><li>Safety trade-offs comfort, mass, and adoption</li><li>Where AI assists setup vs where experts decide</li></ul><p><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18766205-rand-simulation-democratization-is-fine-up-to-a-point.mp3" length="36043921" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/kf5mjtxtnmeqzgw0cleg6k01ov9u?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18766205</guid>
    <pubDate>Sat, 28 Feb 2026 15:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18766205/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18766205/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Meet The Guests And Set The Stage" />
  <psc:chapter start="2:20" title="Careers, Blue Ridge, And Autodesk Era" />
  <psc:chapter start="4:40" title="Why ANSYS And Building Rand Simulation" />
  <psc:chapter start="7:20" title="Democratization Debate And Designer Tools" />
  <psc:chapter start="10:50" title="GPU Breakthroughs With ANSYS Discovery" />
  <psc:chapter start="13:40" title="Analysts And Designers Working In Tandem" />
  <psc:chapter start="16:00" title="Services, Training, And Real-World Value" />
  <psc:chapter start="18:20" title="Olympic Helmet Project: Scope And Stakes" />
  <psc:chapter start="21:00" title="Impact Physics And Why LS-DYNA" />
  <psc:chapter start="24:00" title="DOEs, Temperature Effects, And Worst Cases" />
  <psc:chapter start="27:20" title="3D Printing Lattices And Material Limits" />
  <psc:chapter start="30:00" title="What Makes A “Perfect” Helmet" />
  <psc:chapter start="32:00" title="Football Caps, Concussions, And Adoption" />
  <psc:chapter start="35:00" title="Which Sports Need Better Protection" />
  <psc:chapter start="38:00" title="Correlation Moments And Crash History" />
  <psc:chapter start="41:00" title="LS-DYNA Beyond Crashes And Metal Forming" />
  <psc:chapter start="44:00" title="Tools For Every Physics And User" />
  <psc:chapter start="46:00" title="AI, LLMs, And Simulation Co-Pilots" />
  <psc:chapter start="49:00" title="Silicon To Systems And Human Judgment" />
</psc:chapters>
    <itunes:duration>3000</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>2</itunes:season>
    <itunes:episode>5</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Amit Shastri, CTO Americas, Digitate, on AI Agents to Handle Outages, More</itunes:title>
    <title>Amit Shastri, CTO Americas, Digitate, on AI Agents to Handle Outages, More</title>
    <itunes:summary><![CDATA[Amit Shastri, CTO Americas at Digitate, explains how composite AI moves operations from reactive firefighting to predictive and autonomous action, without sidelining human judgment or ripping out trusted systems. Digitate’s approach blends logical reasoning, LLMs, and guardrails to deliver unified observability across IT, OT, and business processes.  • Regional CTO role bridging customers and product • Autonomous and ticketless operations as the North Star • Predictive alerts that prevent dow...]]></itunes:summary>
    <description><![CDATA[<p>Amit Shastri, CTO Americas at Digitate, explains how composite AI moves operations from reactive firefighting to predictive and autonomous action, without sidelining human judgment or ripping out trusted systems. Digitate’s approach blends logical reasoning, LLMs, and guardrails to deliver unified observability across IT, OT, and business processes.<br/><br/>• Regional CTO role bridging customers and product<br/>• Autonomous and ticketless operations as the North Star<br/>• Predictive alerts that prevent downtime<br/>• Horizontal observability across procure to pay<br/>• Integrations with ITSM, monitoring, and CMDB<br/>• Composite AI with logic, LLMs, and human approvals<br/>• Action firewalls and role-based controls for safety<br/>• Job shifts from doers to exception handlers<br/>• Build vs buy tradeoffs and enterprise scale<br/>• Natural language interfaces over complex tools<br/>• Leveraging legacy systems for rich operational data<br/>• AI’s global landscape and India’s momentum<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>Amit Shastri, CTO Americas at Digitate, explains how composite AI moves operations from reactive firefighting to predictive and autonomous action, without sidelining human judgment or ripping out trusted systems. Digitate’s approach blends logical reasoning, LLMs, and guardrails to deliver unified observability across IT, OT, and business processes.<br/><br/>• Regional CTO role bridging customers and product<br/>• Autonomous and ticketless operations as the North Star<br/>• Predictive alerts that prevent downtime<br/>• Horizontal observability across procure to pay<br/>• Integrations with ITSM, monitoring, and CMDB<br/>• Composite AI with logic, LLMs, and human approvals<br/>• Action firewalls and role-based controls for safety<br/>• Job shifts from doers to exception handlers<br/>• Build vs buy tradeoffs and enterprise scale<br/>• Natural language interfaces over complex tools<br/>• Leveraging legacy systems for rich operational data<br/>• AI’s global landscape and India’s momentum<br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18763054-amit-shastri-cto-americas-digitate-on-ai-agents-to-handle-outages-more.mp3" length="36530990" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/7nmu0flnborr1ukhx61rlsqufmn6?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18763054</guid>
    <pubDate>Fri, 27 Feb 2026 13:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18763054/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18763054/transcript.json" type="application/json" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18763054/transcript.srt" type="application/x-subrip" />
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    <podcast:chapters url="https://www.buzzsprout.com/2529753/18763054/chapters.json" type="application/json" />
    <psc:chapters>
  <psc:chapter start="0:00" title="Amit Shastri, CTO Americas, Digitate, on AI Agents to Handle Outages, More" />
  <psc:chapter start="0:19" title="Meet Digitate’s Regional CTO" />
  <psc:chapter start="2:12" title="Why Ohio And How Digitate Operates" />
  <psc:chapter start="3:57" title="Beyond Hype: Agents Doing Real Work" />
  <psc:chapter start="5:27" title="Reactive To Predictive To Autonomous" />
  <psc:chapter start="8:20" title="From IT To OT And Business Signals" />
  <psc:chapter start="11:09" title="Supply Chain And Horizontal Observability" />
  <psc:chapter start="13:10" title="Context Via Integrations And Adaptation" />
  <psc:chapter start="15:00" title="AI Hype, Peer Pressure, And Real Needs" />
  <psc:chapter start="18:51" title="Composite AI: Logic, LLMs, And Humans" />
  <psc:chapter start="21:06" title="Guardrails, Trust, And Action Firewalls" />
  <psc:chapter start="23:26" title="Jobs Shift: From Doers To Exception Handlers" />
  <psc:chapter start="27:21" title="Build Vs Buy And Enterprise Scale" />
  <psc:chapter start="30:12" title="Ops As AI’s Sweet Spot For ROI" />
  <psc:chapter start="32:45" title="Natural Language Over Complex Tools" />
  <psc:chapter start="36:04" title="Keep Trusted Systems, Add AI Interfaces" />
  <psc:chapter start="39:04" title="India, China, And The Race In AI" />
  <psc:chapter start="49:59" title="Closing And Listener Invitation" />
</psc:chapters>
    <itunes:duration>3038</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>2</itunes:season>
    <itunes:episode>4</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Looq AI Makes Photogrammetry Work</itunes:title>
    <title>Looq AI Makes Photogrammetry Work</title>
    <itunes:summary><![CDATA[We talk with Lukas Fraser, VP of Product at Looq AI, about a camera-first platform that delivers survey-grade 3D models and automates utility workflows. We cover hardware design, accuracy claims, pole and cable analysis (for power lines), and why controlled capture makes photogrammetry competitive with LiDAR.  • Controlled handheld capture with four synchronized lenses and GNSS • Calibrated hardware and encrypted storage with cloud processing • Point clouds, panos, and ground-view outputs for...]]></itunes:summary>
    <description><![CDATA[<p>We talk with Lukas Fraser, VP of Product at Looq AI, about a camera-first platform that delivers survey-grade 3D models and automates utility workflows. We cover hardware design, accuracy claims, pole and cable analysis (for power lines), and why controlled capture makes photogrammetry competitive with LiDAR.<br/><br/>• Controlled handheld capture with four synchronized lenses and GNSS<br/>• Calibrated hardware and encrypted storage with cloud processing<br/>• Point clouds, panos, and ground-view outputs for engineers<br/>• One-centimeter relative measurements for pole loading analysis<br/>• Image-based detection projected to 3D for faster extraction<br/>• Complementary roles of photogrammetry and LiDAR<br/>• Subscription pricing with hardware, processing, and updates<br/>• Integrations with existing survey and utility software<br/>• Change detection to update models without resurveying<br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with Lukas Fraser, VP of Product at Looq AI, about a camera-first platform that delivers survey-grade 3D models and automates utility workflows. We cover hardware design, accuracy claims, pole and cable analysis (for power lines), and why controlled capture makes photogrammetry competitive with LiDAR.<br/><br/>• Controlled handheld capture with four synchronized lenses and GNSS<br/>• Calibrated hardware and encrypted storage with cloud processing<br/>• Point clouds, panos, and ground-view outputs for engineers<br/>• One-centimeter relative measurements for pole loading analysis<br/>• Image-based detection projected to 3D for faster extraction<br/>• Complementary roles of photogrammetry and LiDAR<br/>• Subscription pricing with hardware, processing, and updates<br/>• Integrations with existing survey and utility software<br/>• Change detection to update models without resurveying<br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18687917-looq-ai-makes-photogrammetry-work.mp3" length="25179199" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/za6x6hijwfgslnfnt192qfpywgak?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18687917</guid>
    <pubDate>Sun, 15 Feb 2026 12:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18687917/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18687917/transcript.json" type="application/json" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18687917/transcript.srt" type="application/x-subrip" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18687917/transcript.vtt" type="text/vtt" />
    <podcast:chapters url="https://www.buzzsprout.com/2529753/18687917/chapters.json" type="application/json" />
    <psc:chapters>
  <psc:chapter start="0:00" title="Meet Lucas And The Product" />
  <psc:chapter start="2:05" title="Photogrammetry Vs LiDAR Origins" />
  <psc:chapter start="4:20" title="Hardware Design And GNSS Edge" />
  <psc:chapter start="7:20" title="Capture To Cloud Workflow" />
  <psc:chapter start="10:40" title="Accuracy Claims And Validation" />
  <psc:chapter start="13:40" title="Utility Poles And Thin Features" />
  <psc:chapter start="16:20" title="Handheld Focus And Calibration" />
  <psc:chapter start="19:30" title="Data Security And Processing Time" />
  <psc:chapter start="22:00" title="Automation Over Manual Clicking" />
  <psc:chapter start="25:00" title="Models, CAD, And Change Detection" />
  <psc:chapter start="27:10" title="Object Libraries And Partnerships" />
  <psc:chapter start="29:20" title="Market Fit And Integrations" />
  <psc:chapter start="31:10" title="Self‑Driving Roots To Survey Niche" />
  <psc:chapter start="33:00" title="Rethinking Photogrammetry’s Role" />
</psc:chapters>
    <itunes:duration>2094</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>2</itunes:season>
    <itunes:episode>3</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Tudor Vasiliu: AI For Architects, from Prompt to Art</itunes:title>
    <title>Tudor Vasiliu: AI For Architects, from Prompt to Art</title>
    <itunes:summary><![CDATA[We talk to Tudor Vasiliu, founder and director of Panoptikon, about how architects use AI to elevate visualization without losing control, unpacking “AI passes,” professional guardrails, and why speed still needs expertise. A live demo shows rapid mood and lighting iteration, while we call for better client tools and more usable AEC software.  • AI passes that enhance materials, lighting, foliage, and people • Why expert workflows beat one‑prompt myths • Accuracy and ethics in public review v...]]></itunes:summary>
    <description><![CDATA[<p>We talk to Tudor Vasiliu, founder and director of Panoptikon, about how architects use AI to elevate visualization without losing control, unpacking “AI passes,” professional guardrails, and why speed still needs expertise. A live demo shows rapid mood and lighting iteration, while we call for better client tools and more usable AEC software.<br/><br/>• AI passes that enhance materials, lighting, foliage, and people<br/>• Why expert workflows beat one‑prompt myths<br/>• Accuracy and ethics in public review visuals<br/>• Faster iteration with in‑house tools and cloud models<br/>• Video enhancements from stills and CG using diffusion<br/>• Client expectations for immersive, truthful previews<br/>• Bridging 2D habits to BIM and lightweight planning<br/>• Startups’ agility vs software giants’ slow pace<br/>• Natural interfaces as the next AEC breakthrough<br/>• Guardrails to keep framing, dimensions, and intent intact</p>]]></description>
    <content:encoded><![CDATA[<p>We talk to Tudor Vasiliu, founder and director of Panoptikon, about how architects use AI to elevate visualization without losing control, unpacking “AI passes,” professional guardrails, and why speed still needs expertise. A live demo shows rapid mood and lighting iteration, while we call for better client tools and more usable AEC software.<br/><br/>• AI passes that enhance materials, lighting, foliage, and people<br/>• Why expert workflows beat one‑prompt myths<br/>• Accuracy and ethics in public review visuals<br/>• Faster iteration with in‑house tools and cloud models<br/>• Video enhancements from stills and CG using diffusion<br/>• Client expectations for immersive, truthful previews<br/>• Bridging 2D habits to BIM and lightweight planning<br/>• Startups’ agility vs software giants’ slow pace<br/>• Natural interfaces as the next AEC breakthrough<br/>• Guardrails to keep framing, dimensions, and intent intact</p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18652830-tudor-vasiliu-ai-for-architects-from-prompt-to-art.mp3" length="54879319" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/60ck36jzwh0yd16xawvpue4fm62l?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18652830</guid>
    <pubDate>Tue, 10 Feb 2026 18:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18652830/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18652830/transcript.json" type="application/json" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18652830/transcript.srt" type="application/x-subrip" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18652830/transcript.vtt" type="text/vtt" />
    <podcast:chapters url="https://www.buzzsprout.com/2529753/18652830/chapters.json" type="application/json" />
    <psc:chapters>
  <psc:chapter start="0:00" title="Tudor Vasiliu: AI For Architects, from Prompt to Art" />
  <psc:chapter start="0:39" title="Meeting The Architect And Work Habits" />
  <psc:chapter start="3:34" title="Language, Education, And Global Clients" />
  <psc:chapter start="8:35" title="Inside The Naples Project Visuals" />
  <psc:chapter start="12:14" title="What An AI Pass Really Does" />
  <psc:chapter start="17:38" title="Fixing People, Depth, And Atmosphere" />
  <psc:chapter start="23:18" title="Speed Gains Without Losing Craft" />
  <psc:chapter start="27:22" title="Professional Process Vs. One-Click Myths" />
  <psc:chapter start="33:28" title="Responsibility, Accuracy, And Public Review" />
  <psc:chapter start="40:23" title="Bold Design, Costs, And Guardrails" />
  <psc:chapter start="48:19" title="Who Should Use AI And How" />
  <psc:chapter start="55:57" title="Rising Client Expectations And Standards" />
  <psc:chapter start="1:04:22" title="Live Demo: Freestyler Workflow" />
  <psc:chapter start="1:15:12" title="Toward Smarter Light, Time, And Location" />
</psc:chapters>
    <itunes:duration>4570</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>2</itunes:season>
    <itunes:episode>2</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Theopile Allard, CTO of Neural Concept, Wants to Free the Engineer</itunes:title>
    <title>Theopile Allard, CTO of Neural Concept, Wants to Free the Engineer</title>
    <itunes:summary><![CDATA[We talk with CTO and co-founder Theopile Allard about Neural Concept’s AI copilot for engineering and how option-driven workflows change speed, creativity, and trust in simulation-heavy design. We explore physics prediction, geometry generation, LLM agents, and how legacy solvers stay central.  • AI copilot that creates and evaluates many variants • Physics predictive engine for CFD, structures, EM • Geometry generation to expand design spaces • LLM agents linking rules, docs, and constraints...]]></itunes:summary>
    <description><![CDATA[<p>We talk with CTO and co-founder Theopile Allard about Neural Concept’s AI copilot for engineering and how option-driven workflows change speed, creativity, and trust in simulation-heavy design. We explore physics prediction, geometry generation, LLM agents, and how legacy solvers stay central.<br/><br/>• AI copilot that creates and evaluates many variants<br/>• Physics predictive engine for CFD, structures, EM<br/>• Geometry generation to expand design spaces<br/>• LLM agents linking rules, docs, and constraints<br/>• Solver integration and uncertainty triggers<br/>• Fluids as a high-impact domain for discovery<br/>• Real-world examples including quieter impellers<br/>• Iterative, interactive design with plain English<br/>• Training, boot camps, and community kit<br/>• Scaling through PLM and enterprise systems<br/>• Human-first approach to protect jobs and skills<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with CTO and co-founder Theopile Allard about Neural Concept’s AI copilot for engineering and how option-driven workflows change speed, creativity, and trust in simulation-heavy design. We explore physics prediction, geometry generation, LLM agents, and how legacy solvers stay central.<br/><br/>• AI copilot that creates and evaluates many variants<br/>• Physics predictive engine for CFD, structures, EM<br/>• Geometry generation to expand design spaces<br/>• LLM agents linking rules, docs, and constraints<br/>• Solver integration and uncertainty triggers<br/>• Fluids as a high-impact domain for discovery<br/>• Real-world examples including quieter impellers<br/>• Iterative, interactive design with plain English<br/>• Training, boot camps, and community kit<br/>• Scaling through PLM and enterprise systems<br/>• Human-first approach to protect jobs and skills<br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18620363-theopile-allard-cto-of-neural-concept-wants-to-free-the-engineer.mp3" length="23771809" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/bufhy3qyipcaw4rw6b3bnvmagfdq?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18620363</guid>
    <pubDate>Tue, 03 Feb 2026 13:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18620363/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18620363/transcript.json" type="application/json" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18620363/transcript.srt" type="application/x-subrip" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18620363/transcript.vtt" type="text/vtt" />
    <podcast:chapters url="https://www.buzzsprout.com/2529753/18620363/chapters.json" type="application/json" />
    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Introduction" />
  <psc:chapter start="1:09" title="CES Launch And Copilot Reveal" />
  <psc:chapter start="2:49" title="From Single Design To Many Variants" />
  <psc:chapter start="6:33" title="How The Platform Actually Works" />
  <psc:chapter start="9:26" title="Integrations With Legacy Solvers" />
  <psc:chapter start="11:19" title="When AI Defers To High-Fidelity Simulation" />
  <psc:chapter start="13:05" title="Fluids, Propellers, And New Shapes" />
  <psc:chapter start="16:02" title="Real-World Wins And Breakthrough Designs" />
  <psc:chapter start="18:52" title="Why Iterative, Interactive AI Matters" />
  <psc:chapter start="22:08" title="Restoring Creativity And Systems Thinking" />
  <psc:chapter start="24:14" title="Jobs, Training, And Human-First AI" />
  <psc:chapter start="27:04" title="Scaling Across The Enterprise Stack" />
  <psc:chapter start="29:14" title="Bootcamps, Sensitive Workflows, Community Kit" />
  <psc:chapter start="31:15" title="Time To Proficiency And NL Interfaces" />
  <psc:chapter start="32:40" title="Closing Thoughts And Listener Sign-Off" />
</psc:chapters>
    <itunes:duration>1977</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>2</itunes:season>
    <itunes:episode>1</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Arjun and Kanal Jain, Building Tandem, an AI-based Knowledge Layer for Mechanical Engineers</itunes:title>
    <title>Arjun and Kanal Jain, Building Tandem, an AI-based Knowledge Layer for Mechanical Engineers</title>
    <itunes:summary><![CDATA[We talk with Arjun and Kanal Jain, co-founders of Tandem about building an AI knowledge layer that captures design decisions, links requirements to CAD, and helps engineers spend more time designing. We compare text-to-CAD promises to enterprise reality, dig into traceability and DFM, and explore how integrations unlock better simulation.  • Capturing design intent across CAD, PDM, PLM • Linking requirements, tests, and design changes • Closing the manufacturing feedback loop • Reducing rewor...]]></itunes:summary>
    <description><![CDATA[<p>We talk with Arjun and Kanal Jain, co-founders of Tandem about building an AI knowledge layer that captures design decisions, links requirements to CAD, and helps engineers spend more time designing. We compare text-to-CAD promises to enterprise reality, dig into traceability and DFM, and explore how integrations unlock better simulation.<br/><br/>• Capturing design intent across CAD, PDM, PLM<br/>• Linking requirements, tests, and design changes<br/>• Closing the manufacturing feedback loop<br/>• Reducing rework and documentation overhead<br/>• Enabling simulation through shared context<br/>• Funding path, pilots, and early customers<br/>• Differentiation from text-to-CAD and new CAD software<br/>• Partner strategy with incumbents and AI tools</p><p><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with Arjun and Kanal Jain, co-founders of Tandem about building an AI knowledge layer that captures design decisions, links requirements to CAD, and helps engineers spend more time designing. We compare text-to-CAD promises to enterprise reality, dig into traceability and DFM, and explore how integrations unlock better simulation.<br/><br/>• Capturing design intent across CAD, PDM, PLM<br/>• Linking requirements, tests, and design changes<br/>• Closing the manufacturing feedback loop<br/>• Reducing rework and documentation overhead<br/>• Enabling simulation through shared context<br/>• Funding path, pilots, and early customers<br/>• Differentiation from text-to-CAD and new CAD software<br/>• Partner strategy with incumbents and AI tools</p><p><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18428896-arjun-and-kanal-jain-building-tandem-an-ai-based-knowledge-layer-for-mechanical-engineers.mp3" length="19159386" type="audio/mpeg" />
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Mon, 29 Dec 2025 16:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Intros" />
  <psc:chapter start="2:05" title="Twin Engineers’ Backgrounds" />
  <psc:chapter start="3:50" title="Dream Jobs Vs Reality In Engineering" />
  <psc:chapter start="6:15" title="CAD Tools, Ecosystems, And Strategy" />
  <psc:chapter start="9:51" title="Why A Knowledge Layer Beats Text-To-CAD" />
  <psc:chapter start="12:05" title="Origin Story And Team Formation" />
  <psc:chapter start="15:12" title="Documentation, Requirements, And Traceability" />
  <psc:chapter start="18:35" title="Funding, Pilots, And Early Customers" />
  <psc:chapter start="21:00" title="Simulation, Integrations, And Enablement" />
  <psc:chapter start="23:30" title="Competition And Differentiation" />
  <psc:chapter start="25:30" title="The Assistant Engineers Actually Want" />
</psc:chapters>
    <itunes:duration>1593</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>21</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>true</itunes:explicit>
  </item>
  <item>
    <itunes:title>Antony Samuel - Artifact for Drag and Drop Electrical System Design</itunes:title>
    <title>Antony Samuel - Artifact for Drag and Drop Electrical System Design</title>
    <itunes:summary><![CDATA[We explore how complex electrical systems can be designed faster and with more confidence by combining an intuitive canvas with deep electrical intelligence and pragmatic AI. Anthony Samuel shares lessons from aerospace startups, Y Combinator and competing with incumbents while staying focused on validation and usability.  • Seed funding from YC, Floodgate, Boost VC, enabling hiring and product build • Why New York and other hubs matter for advanced hardware • Startups versus incumbents frame...]]></itunes:summary>
    <description><![CDATA[<p>We explore how complex electrical systems can be designed faster and with more confidence by combining an intuitive canvas with deep electrical intelligence and pragmatic AI. Anthony Samuel shares lessons from aerospace startups, Y Combinator and competing with incumbents while staying focused on validation and usability.<br/><br/>• Seed funding from YC, Floodgate, Boost VC, enabling hiring and product build<br/>• Why New York and other hubs matter for advanced hardware<br/>• Startups versus incumbents framed as validation of the market<br/>• Respect for safety: AI as assistant, not replacement<br/>• Common failure modes in harness design and integration<br/>• Artifact’s core: collaborative system schematics to manufacturing outputs<br/>• Visio-like ease with domain intelligence under the hood<br/>• Parts libraries, BOM accuracy, and rules checking roadmap<br/>• Concept-to-detail design flow and future integrations<br/>• De-risking: technical execution and market fit through real users<br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We explore how complex electrical systems can be designed faster and with more confidence by combining an intuitive canvas with deep electrical intelligence and pragmatic AI. Anthony Samuel shares lessons from aerospace startups, Y Combinator and competing with incumbents while staying focused on validation and usability.<br/><br/>• Seed funding from YC, Floodgate, Boost VC, enabling hiring and product build<br/>• Why New York and other hubs matter for advanced hardware<br/>• Startups versus incumbents framed as validation of the market<br/>• Respect for safety: AI as assistant, not replacement<br/>• Common failure modes in harness design and integration<br/>• Artifact’s core: collaborative system schematics to manufacturing outputs<br/>• Visio-like ease with domain intelligence under the hood<br/>• Parts libraries, BOM accuracy, and rules checking roadmap<br/>• Concept-to-detail design flow and future integrations<br/>• De-risking: technical execution and market fit through real users<br/><br/><br/></p>]]></content:encoded>
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    <itunes:image href="https://storage.buzzsprout.com/kfrrdp1ce3tnf57wdgaaljmcit4u?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Sat, 27 Dec 2025 16:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Guest Intro And Funding Story" />
  <psc:chapter start="1:02" title="Why Build In New York" />
  <psc:chapter start="2:21" title="Competing With Siemens And Incumbents" />
  <psc:chapter start="4:05" title="Lessons From Boom And Hermius" />
  <psc:chapter start="5:20" title="AI’s Role In Hardware Engineering" />
  <psc:chapter start="7:58" title="Validation, Safety, And Rigor" />
  <psc:chapter start="10:03" title="Pain Points In Complex Electrical Systems" />
  <psc:chapter start="12:04" title="Founders’ Origin And Hackathon Spark" />
  <psc:chapter start="14:15" title="What Artifact Actually Does" />
  <psc:chapter start="16:25" title="Demo Walkthrough And Collaboration" />
  <psc:chapter start="18:24" title="From Visio To Intelligent Schematics" />
  <psc:chapter start="20:04" title="Parts Libraries And Rules Checking" />
  <psc:chapter start="21:38" title="Harness Complexity In Cars And Aircraft" />
  <psc:chapter start="23:00" title="Roadmap, Hiring, And De‑Risking" />
  <psc:chapter start="25:05" title="Career, Mentors, And Business Learnings" />
  <psc:chapter start="26:55" title="Closing And Listener Invite" />
</psc:chapters>
    <itunes:duration>1832</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>11</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Patrick Wallis and Marc Goldman about Esri, AI and Gaussian Splats</itunes:title>
    <title>Patrick Wallis and Marc Goldman about Esri, AI and Gaussian Splats</title>
    <itunes:summary><![CDATA[We explore how GIS connects BIM, CAD, and reality capture into usable context for design, construction, and operations. Gaussian splatting takes center stage as Patrick Wallace explains how it preserves fine detail and enables point clouds, meshes, and object detection at scale.  • Indoors product ingesting DWG to power floor-aware campus maps • Difference between authoring tools and GIS as the system of context • Drones, LIDAR, photogrammetry workflows for operational models • Weekly drone f...]]></itunes:summary>
    <description><![CDATA[<p>We explore how GIS connects BIM, CAD, and reality capture into usable context for design, construction, and operations. Gaussian splatting takes center stage as Patrick Wallace explains how it preserves fine detail and enables point clouds, meshes, and object detection at scale.<br/><br/>• Indoors product ingesting DWG to power floor-aware campus maps<br/>• Difference between authoring tools and GIS as the system of context<br/>• Drones, LIDAR, photogrammetry workflows for operational models<br/>• Weekly drone flights for 4D construction review and issue forensics<br/>• Gaussian splatting fundamentals, benefits, and capture best practice<br/>• Filling gaps with open imagery and managing artifacts<br/>• Building point clouds and meshes from images and video<br/>• Cloud-first processing, streaming data, and single source of truth<br/>• AI deep learning models for solar panel and asset detection<br/>• Living Atlas curation, partner data, and scalable access<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We explore how GIS connects BIM, CAD, and reality capture into usable context for design, construction, and operations. Gaussian splatting takes center stage as Patrick Wallace explains how it preserves fine detail and enables point clouds, meshes, and object detection at scale.<br/><br/>• Indoors product ingesting DWG to power floor-aware campus maps<br/>• Difference between authoring tools and GIS as the system of context<br/>• Drones, LIDAR, photogrammetry workflows for operational models<br/>• Weekly drone flights for 4D construction review and issue forensics<br/>• Gaussian splatting fundamentals, benefits, and capture best practice<br/>• Filling gaps with open imagery and managing artifacts<br/>• Building point clouds and meshes from images and video<br/>• Cloud-first processing, streaming data, and single source of truth<br/>• AI deep learning models for solar panel and asset detection<br/>• Living Atlas curation, partner data, and scalable access<br/><br/><br/><br/></p>]]></content:encoded>
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Sat, 27 Dec 2025 12:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18419384/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18419384/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Intros" />
  <psc:chapter start="3:20" title="Why GIS Matters To AEC" />
  <psc:chapter start="5:50" title="Indoors: From CAD To Campus Scale" />
  <psc:chapter start="9:15" title="Reality Capture Beyond Authoring Tools" />
  <psc:chapter start="13:40" title="Drones, Dogs, And Operational Models" />
  <psc:chapter start="18:10" title="Time-Lapse Construction And 4D Context" />
  <psc:chapter start="22:30" title="Gaussian Splatting Explained" />
  <psc:chapter start="27:10" title="Filling Gaps With Open Imagery" />
  <psc:chapter start="31:30" title="Capture Rules For Better Splats" />
  <psc:chapter start="35:50" title="From Images To Point Clouds And Mesh" />
</psc:chapters>
    <itunes:duration>2262</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>8</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Tassos Hadjicocolis, CEO of Phenometry on Phi which Models Organic Shapes</itunes:title>
    <title>Tassos Hadjicocolis, CEO of Phenometry on Phi which Models Organic Shapes</title>
    <itunes:summary><![CDATA[Tassos Hadjicocolis, CEO of Phenometry, and Stephanos Androutsellis-Theotokis, CTO and founder, give a detailed demo of Phi, a browser-based modeler that makes organic shapes quickly and precisely, then sends results to Onshape as clean NURBS for downstream CAD operations.  • Running Phi inside or alongside Onshape • Direct push–pull of vertices, edges, faces • Curvature combs and smoothen for fairing • Precise move, rotate, and scale with inputs • Image‑based modeling and pop‑out extrus...]]></itunes:summary>
    <description><![CDATA[<p>Tassos Hadjicocolis, CEO of Phenometry, and Stephanos Androutsellis-Theotokis, CTO and founder, give a detailed demo of Phi, a browser-based modeler that makes organic shapes quickly and precisely, then sends results to Onshape as clean NURBS for downstream CAD operations. </p><p>• Running Phi inside or alongside Onshape<br/>• Direct push–pull of vertices, edges, faces<br/>• Curvature combs and smoothen for fairing<br/>• Precise move, rotate, and scale with inputs<br/>• Image‑based modeling and pop‑out extrusions<br/>• Exporting to STEP with tight NURBS tolerance<br/>• Snapping to Onshape faces and edges<br/>• Dissolve to replace face groups with a single patch<br/>• Mirror vs symmetry for flexible constraints<br/>• STL attachment and flatten for surface control<br/>• Limits of round‑trip import and current workarounds<br/>• Roadmap toward G2/G3 continuity and shape optimization<br/><br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>Tassos Hadjicocolis, CEO of Phenometry, and Stephanos Androutsellis-Theotokis, CTO and founder, give a detailed demo of Phi, a browser-based modeler that makes organic shapes quickly and precisely, then sends results to Onshape as clean NURBS for downstream CAD operations. </p><p>• Running Phi inside or alongside Onshape<br/>• Direct push–pull of vertices, edges, faces<br/>• Curvature combs and smoothen for fairing<br/>• Precise move, rotate, and scale with inputs<br/>• Image‑based modeling and pop‑out extrusions<br/>• Exporting to STEP with tight NURBS tolerance<br/>• Snapping to Onshape faces and edges<br/>• Dissolve to replace face groups with a single patch<br/>• Mirror vs symmetry for flexible constraints<br/>• STL attachment and flatten for surface control<br/>• Limits of round‑trip import and current workarounds<br/>• Roadmap toward G2/G3 continuity and shape optimization<br/><br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18409561-tassos-hadjicocolis-ceo-of-phenometry-on-phi-which-models-organic-shapes.mp3" length="40119303" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/9iua2xmw2z1o18uaap62y6ggtkkq?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Tue, 23 Dec 2025 18:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Introductions And Episode Setup" />
  <psc:chapter start="1:35" title="What Phi Is And How It Runs" />
  <psc:chapter start="3:20" title="Freeform Editing: Vertices, Edges, Faces" />
  <psc:chapter start="6:40" title="Navigation, Views, Sections, And Curvature Combs" />
  <psc:chapter start="10:30" title="Multi‑Body Scenes And Precise Move Tool" />
  <psc:chapter start="14:40" title="NURBS Export To Onshape And Accuracy" />
  <psc:chapter start="18:45" title="Smoothen Vs Fillet And Continuity Questions" />
  <psc:chapter start="22:45" title="Design Philosophy: Constraining For Fair Shapes" />
  <psc:chapter start="26:00" title="Image‑Based Modeling: Coffee Handle Walkthrough" />
  <psc:chapter start="31:40" title="One‑Click Export And Live Update To Onshape" />
  <psc:chapter start="36:40" title="Limitations: Self‑Intersections And Import Back" />
  <psc:chapter start="41:20" title="Reference Geometry: Snap To Onshape Models" />
  <psc:chapter start="45:10" title="Fast Concepting: Anvil Tip And Assemblies" />
  <psc:chapter start="49:30" title="Tangent Control, Combs, And Surface Fairing" />
  <psc:chapter start="54:00" title="Core Tools Tour: Draw, Split, Dissolve, Pop‑Out" />
</psc:chapters>
    <itunes:duration>3340</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>15</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Owein Dourneau, CEO of MecAgent, Converts Natural Language to SolidWorks</itunes:title>
    <title>Owein Dourneau, CEO of MecAgent, Converts Natural Language to SolidWorks</title>
    <itunes:summary><![CDATA[We dive into why CAD feels hard and how natural-language automation can remove friction without forcing a platform switch. Co-founder and CEO Owen Dourneau explains MecAgent’s approach to compiling plain English into SolidWorks actions, the limits of file translation, and where AI can truly help engineers.  • Pain points with feature trees and steep learning curves • Why building on top of SolidWorks beats starting from scratch • LLMs as a CAD compiler for dependable automation • Examples lik...]]></itunes:summary>
    <description><![CDATA[<p>We dive into why CAD feels hard and how natural-language automation can remove friction without forcing a platform switch. Co-founder and CEO Owen Dourneau explains MecAgent’s approach to compiling plain English into SolidWorks actions, the limits of file translation, and where AI can truly help engineers.<br/><br/>• Pain points with feature trees and steep learning curves<br/>• Why building on top of SolidWorks beats starting from scratch<br/>• LLMs as a CAD compiler for dependable automation<br/>• Examples like DXF export and sheet metal unfolding<br/>• Simplicity over code editors to reach non‑programmers<br/>• Risks from incumbents and startup speed advantage<br/>• Drawings automation tradeoffs and scope<br/>• Library, remixing, and sharing of automations<br/>• Roadmap toward more autonomous CAD agents<br/>• Auxiliary tools for engineering Q&amp;A and part finding<br/>• Partner discussions and realistic adoption paths<br/><br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We dive into why CAD feels hard and how natural-language automation can remove friction without forcing a platform switch. Co-founder and CEO Owen Dourneau explains MecAgent’s approach to compiling plain English into SolidWorks actions, the limits of file translation, and where AI can truly help engineers.<br/><br/>• Pain points with feature trees and steep learning curves<br/>• Why building on top of SolidWorks beats starting from scratch<br/>• LLMs as a CAD compiler for dependable automation<br/>• Examples like DXF export and sheet metal unfolding<br/>• Simplicity over code editors to reach non‑programmers<br/>• Risks from incumbents and startup speed advantage<br/>• Drawings automation tradeoffs and scope<br/>• Library, remixing, and sharing of automations<br/>• Roadmap toward more autonomous CAD agents<br/>• Auxiliary tools for engineering Q&amp;A and part finding<br/>• Partner discussions and realistic adoption paths<br/><br/><br/><br/><br/></p>]]></content:encoded>
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Mon, 22 Dec 2025 14:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Owein Dourneau, CEO of MecAgent, Converts Natural Language to SolidWorks" />
  <psc:chapter start="0:21" title="Welcome And Guest Intros" />
  <psc:chapter start="1:09" title="From France To SF And Setup" />
  <psc:chapter start="2:35" title="Why CAD Feels Hard To Use" />
  <psc:chapter start="4:01" title="Vision: AI That Truly Aids Design" />
  <psc:chapter start="5:20" title="LLMs Controlling SolidWorks" />
  <psc:chapter start="6:16" title="Automation Over Co‑Piloting Today" />
  <psc:chapter start="7:17" title="Build On Top Of Existing CAD" />
  <psc:chapter start="9:33" title="Market Strategy And Lock‑In" />
  <psc:chapter start="11:05" title="File Translation Limits And Reality" />
  <psc:chapter start="11:45" title="Risk From Big Vendors And Speed" />
  <psc:chapter start="13:18" title="Startup Leverage And Focus Areas" />
  <psc:chapter start="14:39" title="Long‑Term Vision Beyond Macros" />
  <psc:chapter start="16:50" title="Live Demo: DXF Export Automation" />
  <psc:chapter start="19:56" title="Context, Safety, And Execution Logic" />
  <psc:chapter start="21:04" title="Selecting Parts And Smart Tools" />
  <psc:chapter start="22:15" title="Toward Autonomous CAD Agents" />
  <psc:chapter start="23:55" title="Iterating, Favoriting, And Sharing" />
  <psc:chapter start="26:05" title="Simple Buttons, Real Time Savings" />
  <psc:chapter start="27:40" title="Drawings: Scope And Tradeoffs" />
  <psc:chapter start="29:05" title="Simplicity Over Code Editors" />
  <psc:chapter start="30:25" title="Where Automations Live And Scale" />
  <psc:chapter start="32:02" title="Public Library And Remix Workflow" />
  <psc:chapter start="33:00" title="" />
</psc:chapters>
    <itunes:duration>1996</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>14</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Russ Bukowski, CEO of Mastercam’s and the Bold Bet On AI and Acquisitions</itunes:title>
    <title>Russ Bukowski, CEO of Mastercam’s and the Bold Bet On AI and Acquisitions</title>
    <itunes:summary><![CDATA[We talk with Mastercam CEO Russ Bukowski about how AI, vertical integration are reshaping CAM. From voice‑enabled Copilot to reseller acquisitions under Sandvik, Russ lays out a roadmap for faster programming, safer code, and a tighter art‑to‑part thread.  • Modernizing Mastercam’s UX and onboarding the next generation • Vertical integration of sales, service, and support to get closer to customers • Sandvik acquisition and the digital thread from design to inspection • Copilot as an action l...]]></itunes:summary>
    <description><![CDATA[<p>We talk with Mastercam CEO Russ Bukowski about how AI, vertical integration are reshaping CAM. From voice‑enabled Copilot to reseller acquisitions under Sandvik, Russ lays out a roadmap for faster programming, safer code, and a tighter art‑to‑part thread.<br/><br/>• Modernizing Mastercam’s UX and onboarding the next generation<br/>• Vertical integration of sales, service, and support to get closer to customers<br/>• Sandvik acquisition and the digital thread from design to inspection<br/>• Copilot as an action layer: voice commands, automation, and scripts<br/>• Leveraging tooling data for safer feeds and speeds across materials<br/>• Enabling one‑off and small‑batch work with generative programming<br/>• Partner tools for faster quoting and job breakdowns<br/>• Elevating experts while reducing time‑to‑competency for novices<br/>• Competitive stance on AI leadership in CAM<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We talk with Mastercam CEO Russ Bukowski about how AI, vertical integration are reshaping CAM. From voice‑enabled Copilot to reseller acquisitions under Sandvik, Russ lays out a roadmap for faster programming, safer code, and a tighter art‑to‑part thread.<br/><br/>• Modernizing Mastercam’s UX and onboarding the next generation<br/>• Vertical integration of sales, service, and support to get closer to customers<br/>• Sandvik acquisition and the digital thread from design to inspection<br/>• Copilot as an action layer: voice commands, automation, and scripts<br/>• Leveraging tooling data for safer feeds and speeds across materials<br/>• Enabling one‑off and small‑batch work with generative programming<br/>• Partner tools for faster quoting and job breakdowns<br/>• Elevating experts while reducing time‑to‑competency for novices<br/>• Competitive stance on AI leadership in CAM<br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18400588-russ-bukowski-ceo-of-mastercam-s-and-the-bold-bet-on-ai-and-acquisitions.mp3" length="22835089" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/p2ias9stua5z3gy6fu3wg7we1a6m?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18400588</guid>
    <pubDate>Mon, 22 Dec 2025 09:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18400588/transcript" type="text/html" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Introduction" />
  <psc:chapter start="1:40" title="Russ’s Path: UX, Shops, And Software" />
  <psc:chapter start="5:20" title="Modernizing Mastercam’s User Experience" />
  <psc:chapter start="8:20" title="Sandvik Acquisition And Strategy Shift" />
  <psc:chapter start="11:00" title="Vertical Integration And Reseller Rollups" />
  <psc:chapter start="15:30" title="Building The Digital Thread: Art To Part" />
  <psc:chapter start="18:20" title="Copilot Basics: Help, Voice, And Commands" />
  <psc:chapter start="22:00" title="Automating Workflows And Script Generation" />
  <psc:chapter start="25:40" title="Tool Data, Feeds And Speeds, And Risk" />
  <psc:chapter start="29:00" title="Raising Experts While Onboarding Novices" />
</psc:chapters>
    <itunes:duration>1899</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>13</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Shiva Dhawan, Attentive.ai, and Creating takeoffs from PDFs</itunes:title>
    <title>Shiva Dhawan, Attentive.ai, and Creating takeoffs from PDFs</title>
    <itunes:summary><![CDATA[SPONSORED EPISODE  Shiva Dhawan, CEO &amp; Co-Founder at Attentive.ai shares his journey from mechanical engineering to building an AI-based takeoff software for construction, and explains why manual takeoffs from PDFs remain one of the biggest bottlenecks in bidding workflows. The conversation dives into how AI can read construction drawings, the role of human verification in ensuring accuracy, and why PDFs, not BIM files, still dominate the bid phase in North America. The discussion also co...]]></itunes:summary>
    <description><![CDATA[<p><b>SPONSORED EPISODE</b><br/><br/>Shiva Dhawan, CEO &amp; Co-Founder at Attentive.ai shares his journey from mechanical engineering to building an AI-based takeoff software for construction, and explains why manual takeoffs from PDFs remain one of the biggest bottlenecks in bidding workflows. The conversation dives into how AI can read construction drawings, the role of human verification in ensuring accuracy, and why PDFs, not BIM files, still dominate the bid phase in North America.</p><p>The discussion also covers:</p><ul><li>What construction takeoffs are and why they’re foundational to estimating</li><li>How AI interprets drawings, symbols, and schedules from PDFs</li><li>The challenges of inconsistent symbols and design standards</li><li>Why human-in-the-loop QA is critical for reliable AI takeoffs</li><li>Scaling from 50/50 human–AI effort toward a 90/10 model</li><li>Why automation is essential as estimating labor remains scarce</li><li>What’s next for AI in preconstruction, including estimates and bid filtering</li></ul><p>This episode is especially relevant for estimators, preconstruction managers, contractors, and engineers interested in how AI can increase bid capacity without sacrificing accuracy.</p><p><em>For more about Sponsored Episodes, see our </em><a href='https://engtechnica.com/sponsorship/'><em>Sponsorship</em></a><em> section. </em></p><p><br/></p><p><br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p><b>SPONSORED EPISODE</b><br/><br/>Shiva Dhawan, CEO &amp; Co-Founder at Attentive.ai shares his journey from mechanical engineering to building an AI-based takeoff software for construction, and explains why manual takeoffs from PDFs remain one of the biggest bottlenecks in bidding workflows. The conversation dives into how AI can read construction drawings, the role of human verification in ensuring accuracy, and why PDFs, not BIM files, still dominate the bid phase in North America.</p><p>The discussion also covers:</p><ul><li>What construction takeoffs are and why they’re foundational to estimating</li><li>How AI interprets drawings, symbols, and schedules from PDFs</li><li>The challenges of inconsistent symbols and design standards</li><li>Why human-in-the-loop QA is critical for reliable AI takeoffs</li><li>Scaling from 50/50 human–AI effort toward a 90/10 model</li><li>Why automation is essential as estimating labor remains scarce</li><li>What’s next for AI in preconstruction, including estimates and bid filtering</li></ul><p>This episode is especially relevant for estimators, preconstruction managers, contractors, and engineers interested in how AI can increase bid capacity without sacrificing accuracy.</p><p><em>For more about Sponsored Episodes, see our </em><a href='https://engtechnica.com/sponsorship/'><em>Sponsorship</em></a><em> section. </em></p><p><br/></p><p><br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18382929-shiva-dhawan-attentive-ai-and-creating-takeoffs-from-pdfs.mp3" length="15807820" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/g5rfc3ke7wmj29y1g8km8okqte8d?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18382929</guid>
    <pubDate>Thu, 18 Dec 2025 17:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18382929/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18382929/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Introduction" />
  <psc:chapter start="2:07" title="Founder’s Path Into AI And AEC" />
  <psc:chapter start="4:30" title="From Insurance Imagery To Construction Takeoffs" />
  <psc:chapter start="5:55" title="Why North America And Why PDFs" />
  <psc:chapter start="8:41" title="Defining Construction Takeoffs" />
  <psc:chapter start="10:35" title="Beam AI’s Focus And File Types" />
  <psc:chapter start="12:05" title="Quality Control And Human In The Loop" />
  <psc:chapter start="14:05" title="Pushing Toward 90–10 Automation" />
  <psc:chapter start="16:25" title="Growth, Funding, And Market Expansion" />
  <psc:chapter start="19:05" title="Where The Models Struggle" />
  <psc:chapter start="21:10" title="Standards, Culture, And Training Estimators" />
</psc:chapters>
    <itunes:duration>1314</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>10</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Al Eliasen, CEO of SBS, Has an AutoCAD Add-On for Utility Design</itunes:title>
    <title>Al Eliasen, CEO of SBS, Has an AutoCAD Add-On for Utility Design</title>
    <itunes:summary><![CDATA[We explore how 3D utility-centric design on top of AutoCAD speeds grid and fiber projects by connecting CAD, GIS, and SAP  by enforcing standards that prevent costly errors with Al Eliasen of SBS. We also dig into pragmatic AI uses that shorten proposals and enhance UX without risking safety.  • Origins of SBS and Autodesk utility heritage • Competition with Bentley; partnership with Esri • GIS as source of truth for underground design • 2D input with 3D models for true digital twins • I...]]></itunes:summary>
    <description><![CDATA[<p>We explore how 3D utility-centric design on top of AutoCAD speeds grid and fiber projects by connecting CAD, GIS, and SAP  by enforcing standards that prevent costly errors with Al Eliasen of SBS. We also dig into pragmatic AI uses that shorten proposals and enhance UX without risking safety.<br/><br/>• Origins of SBS and Autodesk utility heritage<br/>• Competition with Bentley; partnership with Esri<br/>• GIS as source of truth for underground design<br/>• 2D input with 3D models for true digital twins<br/>• Intelligent design rules for safety and standards<br/>• Training designers fast with drag-and-drop workflows<br/>• Pragmatic AI for planning, help, and materials selection<br/>• Substation design in 3D with embedded logic<br/>• Fiber design acceleration and strand peel-off handling<br/>• Security and reliability realities for modern grids<br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We explore how 3D utility-centric design on top of AutoCAD speeds grid and fiber projects by connecting CAD, GIS, and SAP  by enforcing standards that prevent costly errors with Al Eliasen of SBS. We also dig into pragmatic AI uses that shorten proposals and enhance UX without risking safety.<br/><br/>• Origins of SBS and Autodesk utility heritage<br/>• Competition with Bentley; partnership with Esri<br/>• GIS as source of truth for underground design<br/>• 2D input with 3D models for true digital twins<br/>• Intelligent design rules for safety and standards<br/>• Training designers fast with drag-and-drop workflows<br/>• Pragmatic AI for planning, help, and materials selection<br/>• Substation design in 3D with embedded logic<br/>• Fiber design acceleration and strand peel-off handling<br/>• Security and reliability realities for modern grids<br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18376854-al-eliasen-ceo-of-sbs-has-an-autocad-add-on-for-utility-design.mp3" length="16286576" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/o3734ca21j97qith9aopt7fzfajv?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18376854</guid>
    <pubDate>Wed, 17 Dec 2025 18:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18376854/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18376854/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Setting The Stage: SBS Origins" />
  <psc:chapter start="1:45" title="Competing With Bentley, Partnering With Esri" />
  <psc:chapter start="2:35" title="Utility-Centric Workflows And Adoption" />
  <psc:chapter start="2:55" title="California Utilities And Underground Design" />
  <psc:chapter start="3:28" title="GIS As Source Of Truth In 3D" />
  <psc:chapter start="4:10" title="From Corner Store To Integrated Platform" />
  <psc:chapter start="5:06" title="Market Footprint And Growth Plans" />
  <psc:chapter start="5:49" title="Pragmatic AI: Tools Not Autopilot" />
  <psc:chapter start="7:13" title="Training Time And Ease Of Use" />
  <psc:chapter start="8:20" title="2D Input, 3D Models, And Twins" />
  <psc:chapter start="9:18" title="Intelligent Design Rules And Checks" />
  <psc:chapter start="10:40" title="Natural Language UX And Help" />
  <psc:chapter start="12:05" title="Founder’s Path: Controls To Utilities" />
  <psc:chapter start="13:10" title="The Grid’s Hidden Complexity" />
  <psc:chapter start="14:00" title="Fiber Buildouts And Speed Gains" />
  <psc:chapter start="15:05" title="Adapting For Fiber Standards" />
  <psc:chapter start="16:10" title="Telecom Stacks And CAD Automation" />
  <psc:chapter start="17:05" title="Reliability, Security, And NERC" />
  <psc:chapter start="18:15" title="Designing For Physical Security" />
  <psc:chapter start="22:32" title="Closing And Listener Invitation" />
</psc:chapters>
    <itunes:duration>1355</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>9</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Michael Bogomolny, CEO of InfinitFORM</itunes:title>
    <title>Michael Bogomolny, CEO of InfinitFORM</title>
    <itunes:summary><![CDATA[We sit down with Michael Bogomolny, Ph.D. of InfinitFORM, which has blasted through the hype of topology optimization with a deterministic, GPU-accelerated engine that creates parts that are both optimized and manufacturable. The result: shorter design cycles because prismatic parts are ready for machining.  In this podcast, Michael talks about: • Funding update and market momentum • Why mesh-based generative design fails machining • Manufacturable, parametric outputs with feature trees ...]]></itunes:summary>
    <description><![CDATA[<p>We sit down with <a href='https://www.linkedin.com/in/michael-bogomolny-ph-d-95636499/'><b>Michael Bogomolny, Ph.D.</b></a> of <a href='https://infinitform.com/'><b>InfinitFORM</b></a>, which has blasted through the hype of topology optimization with a deterministic, GPU-accelerated engine that creates parts that are <em>both </em>optimized and manufacturable. The result: shorter design cycles because prismatic parts are ready for machining. </p><p>In this podcast, Michael talks about:</p><p>• Funding update and market momentum<br/>• Why mesh-based generative design fails machining<br/>• Manufacturable, parametric outputs with feature trees<br/>• AI as assistant for setup, critique and reports<br/>• GPU solvers for fast, deterministic results<br/>• Cloud and on‑prem options for regulated teams<br/>• SolidWorks add‑in and CAD‑native export<br/>• Roadmap for injection molding and die casting<br/>• Beta learnings and January release timing<br/>• Trust, IP strategy and integration into workflows<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We sit down with <a href='https://www.linkedin.com/in/michael-bogomolny-ph-d-95636499/'><b>Michael Bogomolny, Ph.D.</b></a> of <a href='https://infinitform.com/'><b>InfinitFORM</b></a>, which has blasted through the hype of topology optimization with a deterministic, GPU-accelerated engine that creates parts that are <em>both </em>optimized and manufacturable. The result: shorter design cycles because prismatic parts are ready for machining. </p><p>In this podcast, Michael talks about:</p><p>• Funding update and market momentum<br/>• Why mesh-based generative design fails machining<br/>• Manufacturable, parametric outputs with feature trees<br/>• AI as assistant for setup, critique and reports<br/>• GPU solvers for fast, deterministic results<br/>• Cloud and on‑prem options for regulated teams<br/>• SolidWorks add‑in and CAD‑native export<br/>• Roadmap for injection molding and die casting<br/>• Beta learnings and January release timing<br/>• Trust, IP strategy and integration into workflows<br/><br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18301078-michael-bogomolny-ceo-of-infinitform.mp3" length="23180347" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/9yxrg979pb1z1z7zbi0jrx719t50?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18301078</guid>
    <pubDate>Thu, 04 Dec 2025 12:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18301078/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18301078/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Introduction" />
  <psc:chapter start="2:25" title="Funding, Momentum, And Industry Context" />
  <psc:chapter start="3:40" title="The Workflow Gap In Design To Manufacturing" />
  <psc:chapter start="5:05" title="Why Traditional Generative Design Fails Machining" />
  <psc:chapter start="6:20" title="Parametric, Manufacturable Outputs Explained" />
  <psc:chapter start="8:20" title="AI As Assistant, Deterministic Engine As Core" />
  <psc:chapter start="10:31" title="Cloud vs On‑Prem And GPU Speedups" />
  <psc:chapter start="12:00" title="Live Demo: Setup With AI Copilot" />
  <psc:chapter start="15:00" title="Load Cases, Goals, And Milling Constraints" />
  <psc:chapter start="17:20" title="One Optimal Result And AI Review" />
  <psc:chapter start="19:00" title="Automatic Reports And Stress Feedback" />
  <psc:chapter start="20:40" title="Exporting Native CAD With Feature Trees" />
  <psc:chapter start="22:30" title="Fitting Into Existing CAD Workflows" />
  <psc:chapter start="24:00" title="Shorter Cycles And Practical Adoption" />
  <psc:chapter start="25:20" title="Beta Feedback And January Launch Plan" />
  <psc:chapter start="27:00" title="AI Skepticism And Determinism" />
  <psc:chapter start="28:00" title="Team, IP Strategy, And Head Start" />
  <psc:chapter start="29:30" title="Roadmap: Injection Molding And Beyond" />
  <psc:chapter start="31:00" title="Closing Thoughts And Next Steps" />
</psc:chapters>
    <itunes:duration>1930</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>9</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Uzair Sayid of NexCAD - AI Catches Your Drawing Mistakes</itunes:title>
    <title>Uzair Sayid of NexCAD - AI Catches Your Drawing Mistakes</title>
    <itunes:summary><![CDATA[We sit down with Uzair Sayid, founder of NextCad AI, to explore how automated drawing checks cut busywork, reduce errors, and capture expert standards without slowing design. The conversation tracks his journey from frustrated mechanical engineer to building an on-prem tool that blends rules with AI to expertly check engineering drawings.  • Origin story rooted in wasted time on documentation • Local, secure checker for PDFs and native CAD • Standards and company rules embedded in a knowledge...]]></itunes:summary>
    <description><![CDATA[<p>We sit down with Uzair Sayid, founder of NextCad AI, to explore how automated drawing checks cut busywork, reduce errors, and capture expert standards without slowing design. The conversation tracks his journey from frustrated mechanical engineer to building an on-prem tool that blends rules with AI to expertly check engineering drawings.<br/><br/>• Origin story rooted in wasted time on documentation<br/>• Local, secure checker for PDFs and native CAD<br/>• Standards and company rules embedded in a knowledge graph<br/>• Detection of hidden dimensions, missing depths, and BOM issues<br/>• CAD integrations with Inventor and SolidWorks for deeper checks<br/>• Early drawing creation features and auto-tolerance suggestions<br/>• Roadmap toward model-based definition and 3D-first checks<br/>• Pricing is for setup plus subscription<br/>• Bootstrapped traction, government support<br/>• Long-term vision of CAD-less, decision-first engineering with fast simulation<br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We sit down with Uzair Sayid, founder of NextCad AI, to explore how automated drawing checks cut busywork, reduce errors, and capture expert standards without slowing design. The conversation tracks his journey from frustrated mechanical engineer to building an on-prem tool that blends rules with AI to expertly check engineering drawings.<br/><br/>• Origin story rooted in wasted time on documentation<br/>• Local, secure checker for PDFs and native CAD<br/>• Standards and company rules embedded in a knowledge graph<br/>• Detection of hidden dimensions, missing depths, and BOM issues<br/>• CAD integrations with Inventor and SolidWorks for deeper checks<br/>• Early drawing creation features and auto-tolerance suggestions<br/>• Roadmap toward model-based definition and 3D-first checks<br/>• Pricing is for setup plus subscription<br/>• Bootstrapped traction, government support<br/>• Long-term vision of CAD-less, decision-first engineering with fast simulation<br/><br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/18279675-uzair-sayid-of-nexcad-ai-catches-your-drawing-mistakes.mp3" length="21543584" type="audio/mpeg" />
    <itunes:image href="https://storage.buzzsprout.com/2an8xcitqyferktc5gae5zpa33c5?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
    <guid isPermaLink="false">Buzzsprout-18279675</guid>
    <pubDate>Mon, 01 Dec 2025 09:00:00 -0800</pubDate>
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18279675/transcript" type="text/html" />
    <podcast:transcript url="https://www.buzzsprout.com/2529753/18279675/transcript.json" type="application/json" />
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    <psc:chapters>
  <psc:chapter start="0:00" title="Host Intro And Guest Setup" />
  <psc:chapter start="1:05" title="Said’s Journey From Pakistan To UK" />
  <psc:chapter start="3:15" title="Frustrations With Engineering Busywork" />
  <psc:chapter start="5:25" title="Origin Of NextCad AI" />
  <psc:chapter start="8:40" title="Funding, Family Risks, And Early Traction" />
  <psc:chapter start="12:40" title="Why Drawings Still Matter" />
  <psc:chapter start="15:30" title="Vision: AI-Created And AI-Checked Drawings" />
  <psc:chapter start="19:20" title="Security, On-Prem, And Minimal AI Use" />
  <psc:chapter start="22:30" title="Under The Hood: Rules, Standards, And Knowledge Graphs" />
  <psc:chapter start="26:40" title="CAD Integrations And Geometry Checks" />
</psc:chapters>
    <itunes:duration>1792</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Gustavo Navarro, Founder of Divergence AI - AI Copilots For RF Engineers </itunes:title>
    <title>Gustavo Navarro, Founder of Divergence AI - AI Copilots For RF Engineers </title>
    <itunes:summary><![CDATA[We explore how an AI copilot layers on top of HFSS to automate RF simulations without losing rigor or control. Gustavo Navarro shares a live demo, a practical roadmap from post‑processing to pre‑processing, and a vision for cross‑domain orchestration across trusted solvers.  • Why HFSS expertise is hard but essential • Natural language to HFSS automation without hiding code • Generating S‑parameters, 3D patterns, and full reports • Interactive agents that ask for missing setup details • Orche...]]></itunes:summary>
    <description><![CDATA[<p>We explore how an AI copilot layers on top of HFSS to automate RF simulations without losing rigor or control. Gustavo Navarro shares a live demo, a practical roadmap from post‑processing to pre‑processing, and a vision for cross‑domain orchestration across trusted solvers.<br/><br/>• Why HFSS expertise is hard but essential<br/>• Natural language to HFSS automation without hiding code<br/>• Generating S‑parameters, 3D patterns, and full reports<br/>• Interactive agents that ask for missing setup details<br/>• Orchestrating sweeps and long runs with monitoring<br/>• Using ML for fast screening, solvers for validation<br/>• Pre‑processing: geometry creation and defeaturing<br/>• Moving RF designs across tools for platform studies<br/>• Roadmap: a future with thermal and structural workflows?<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We explore how an AI copilot layers on top of HFSS to automate RF simulations without losing rigor or control. Gustavo Navarro shares a live demo, a practical roadmap from post‑processing to pre‑processing, and a vision for cross‑domain orchestration across trusted solvers.<br/><br/>• Why HFSS expertise is hard but essential<br/>• Natural language to HFSS automation without hiding code<br/>• Generating S‑parameters, 3D patterns, and full reports<br/>• Interactive agents that ask for missing setup details<br/>• Orchestrating sweeps and long runs with monitoring<br/>• Using ML for fast screening, solvers for validation<br/>• Pre‑processing: geometry creation and defeaturing<br/>• Moving RF designs across tools for platform studies<br/>• Roadmap: a future with thermal and structural workflows?<br/><br/><br/><br/></p>]]></content:encoded>
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Fri, 28 Nov 2025 17:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Meet Gustavo And The Mission" />
  <psc:chapter start="2:30" title="From Chile To Math And RF" />
  <psc:chapter start="6:00" title="The Beauty Of Math Beyond School Drills" />
  <psc:chapter start="10:20" title="Why HFSS Mastery Is So Hard" />
  <psc:chapter start="13:45" title="What The RF Copilot Actually Does" />
  <psc:chapter start="18:30" title="Live Demo: Natural Language To Code" />
  <psc:chapter start="23:10" title="Reports, Sweeps, And Beam Patterns" />
  <psc:chapter start="27:40" title="Where AI Helps And Where It Shouldn’t" />
  <psc:chapter start="31:30" title="Orchestrating Multi‑Tool RF Workflows" />
</psc:chapters>
    <itunes:duration>1977</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>6</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
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  </item>
  <item>
    <itunes:title>DraftAId, by Mohammed Al-arnawoot</itunes:title>
    <title>DraftAId, by Mohammed Al-arnawoot</title>
    <itunes:summary><![CDATA[We explore how DraftAId automates mechanical drawings from 3D models, why focus beats hype in CAD AI, and how human-in-the-loop design keeps engineers in control. A live demo shows associative drawings in Inventor, and we preview cost estimation and an upcoming open version.  • Drafting automation for mechanical fabrication • Lessons from YC to 175k+ drawings generated • AI hype versus real manufacturing workflows • Human-in-the-loop interactivity and PMI implementation • Datum strategy, tole...]]></itunes:summary>
    <description><![CDATA[<p>We explore how DraftAId automates mechanical drawings from 3D models, why focus beats hype in CAD AI, and how human-in-the-loop design keeps engineers in control. A live demo shows associative drawings in Inventor, and we preview cost estimation and an upcoming open version.<br/><br/>• Drafting automation for mechanical fabrication<br/>• Lessons from YC to 175k+ drawings generated<br/>• AI hype versus real manufacturing workflows<br/>• Human-in-the-loop interactivity and PMI implementation<br/>• Datum strategy, tolerances, and communication intent<br/>• Integrations with major CAD and vault systems<br/>• Competitive landscape and why focus matters<br/>• Preview of cost estimation for North America<br/>• Shift from enterprise-only to open access<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We explore how DraftAId automates mechanical drawings from 3D models, why focus beats hype in CAD AI, and how human-in-the-loop design keeps engineers in control. A live demo shows associative drawings in Inventor, and we preview cost estimation and an upcoming open version.<br/><br/>• Drafting automation for mechanical fabrication<br/>• Lessons from YC to 175k+ drawings generated<br/>• AI hype versus real manufacturing workflows<br/>• Human-in-the-loop interactivity and PMI implementation<br/>• Datum strategy, tolerances, and communication intent<br/>• Integrations with major CAD and vault systems<br/>• Competitive landscape and why focus matters<br/>• Preview of cost estimation for North America<br/>• Shift from enterprise-only to open access<br/><br/><br/><br/></p>]]></content:encoded>
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Fri, 07 Nov 2025 16:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Welcome And Guest Intro" />
  <psc:chapter start="2:45" title="Origin Story Of DraftAid" />
  <psc:chapter start="7:30" title="AI Hype Versus Real Manufacturing Workflows" />
  <psc:chapter start="12:05" title="Competitive Landscape And Focus" />
  <psc:chapter start="17:40" title="What Makes A Good Drawing" />
  <psc:chapter start="22:00" title="Human-In-The-Loop And Interactivity" />
  <psc:chapter start="27:20" title="Partnerships With Major CAD Platforms" />
</psc:chapters>
    <itunes:duration>1714</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>5</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Brad Rothenberg: nTop Removes CAD&#39;s Limits</itunes:title>
    <title>Brad Rothenberg: nTop Removes CAD&#39;s Limits</title>
    <itunes:summary><![CDATA[We sit down with Brad Rothenberg of nTop to explore how implicit modeling and signed distance fields make computer models that are robust, physics-aware and ready for fast iteration. From aircraft wings to heat exchangers and turbine cooling, we show how fields, splines, and optimization unlock design spaces that B-reps can’t handle.  • Why B‑rep models fail under topology changes  • How signed distance fields encode geometry and space  • Spline-driven aircraft surfaces and robust l...]]></itunes:summary>
    <description><![CDATA[<p>We sit down with Brad Rothenberg of nTop to explore how implicit modeling and signed distance fields make computer models that are robust, physics-aware and ready for fast iteration. From aircraft wings to heat exchangers and turbine cooling, we show how fields, splines, and optimization unlock design spaces that B-reps can’t handle.<br/><br/>• Why B‑rep models fail under topology changes <br/>• How signed distance fields encode geometry and space <br/>• Spline-driven aircraft surfaces and robust lofts <br/>• Custom blocks for reusable parametric assemblies <br/>• Duct and inlet optimization tied to flow targets <br/>• Integrated CFD and meshless solver connections <br/>• Heat exchangers for 3D printing and AI surrogates <br/>• Turbine blade cooling strategies and manufacturability limits <br/>• FEA, topology optimization, and nTop Connect SDK <br/>• Design sprints that compress vehicle-level development<br/><br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>We sit down with Brad Rothenberg of nTop to explore how implicit modeling and signed distance fields make computer models that are robust, physics-aware and ready for fast iteration. From aircraft wings to heat exchangers and turbine cooling, we show how fields, splines, and optimization unlock design spaces that B-reps can’t handle.<br/><br/>• Why B‑rep models fail under topology changes <br/>• How signed distance fields encode geometry and space <br/>• Spline-driven aircraft surfaces and robust lofts <br/>• Custom blocks for reusable parametric assemblies <br/>• Duct and inlet optimization tied to flow targets <br/>• Integrated CFD and meshless solver connections <br/>• Heat exchangers for 3D printing and AI surrogates <br/>• Turbine blade cooling strategies and manufacturability limits <br/>• FEA, topology optimization, and nTop Connect SDK <br/>• Design sprints that compress vehicle-level development<br/><br/><br/><br/></p>]]></content:encoded>
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    <itunes:image href="https://storage.buzzsprout.com/kt329dsevdgcqkk9toul6aq2b8f0?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Wed, 05 Nov 2025 12:00:00 -0800</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Brad Rothenberg: nTop Removes CAD&#39;s Limits" />
  <psc:chapter start="0:20" title="Welcome And Guest Introduction" />
  <psc:chapter start="2:56" title="From B-Rep Pain To Implicit Promise" />
  <psc:chapter start="9:12" title="SDF Breakthroughs And Robust Parametrics" />
  <psc:chapter start="15:20" title="Making Invisible Physics Visible" />
  <psc:chapter start="21:28" title="Aircraft Obsession And Spline-Driven Models" />
  <psc:chapter start="28:47" title="Live Wing Demo And Custom Blocks" />
</psc:chapters>
    <itunes:duration>2117</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>4</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Budapest or Global? Istvan Knows No Boundaries</itunes:title>
    <title>Budapest or Global? Istvan Knows No Boundaries</title>
    <itunes:summary><![CDATA[Shape3D demonstrated how CAD can feel as natural as drawing with a pencil on paper, while still handling complex product design with an iPad and the Apple Pencil. Shapr3D’s founder, István Csanády, has taken the company from its Apple roots to Windows, and by doing so is starting to be recognized by the market.  Join as István discusses: • Pain points with legacy CAD and steep learning curves • Origins of Shapr3D and mission to simplify serious design • GDP-scale impact from productivity...]]></itunes:summary>
    <description><![CDATA[<p>Shape3D demonstrated how CAD can feel as natural as drawing with a pencil on paper, while still handling complex product design with an iPad and the Apple Pencil. Shapr3D’s founder, István Csanády, has taken the company from its Apple roots to Windows, and by doing so is starting to be recognized by the market. </p><p>Join as István discusses:</p><p>• Pain points with legacy CAD and steep learning curves<br/>• Origins of Shapr3D and mission to simplify serious design<br/>• GDP-scale impact from productivity gains in manufacturing<br/>• Building a global, multicultural team from Budapest<br/>• Apple partnership and a single app across iPad, Mac, Windows, Vision Pro<br/>• Offline-first performance, local compute, cloud sync and versioning<br/>• Comparison to cloud CAD and limits of browser-scale assemblies<br/>• Current strengths and acknowledged gaps in drawings and large assemblies<br/>• Beyond B-rep ambition for robust Booleans, fillets and shells<br/>• Practical AI for visualization and auto-generated drawings<br/>• Enterprise traction, shop-floor use, and secure environments<br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>Shape3D demonstrated how CAD can feel as natural as drawing with a pencil on paper, while still handling complex product design with an iPad and the Apple Pencil. Shapr3D’s founder, István Csanády, has taken the company from its Apple roots to Windows, and by doing so is starting to be recognized by the market. </p><p>Join as István discusses:</p><p>• Pain points with legacy CAD and steep learning curves<br/>• Origins of Shapr3D and mission to simplify serious design<br/>• GDP-scale impact from productivity gains in manufacturing<br/>• Building a global, multicultural team from Budapest<br/>• Apple partnership and a single app across iPad, Mac, Windows, Vision Pro<br/>• Offline-first performance, local compute, cloud sync and versioning<br/>• Comparison to cloud CAD and limits of browser-scale assemblies<br/>• Current strengths and acknowledged gaps in drawings and large assemblies<br/>• Beyond B-rep ambition for robust Booleans, fillets and shells<br/>• Practical AI for visualization and auto-generated drawings<br/>• Enterprise traction, shop-floor use, and secure environments<br/><br/><br/></p>]]></content:encoded>
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    <itunes:image href="https://storage.buzzsprout.com/d6x38fyjauk18rtyakuawhr5m0g8?.jpg" />
    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Tue, 07 Oct 2025 17:00:00 -0700</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="A Pencil, An iPad, A Promise" />
  <psc:chapter start="1:05" title="Origins: Pain With Legacy CAD" />
  <psc:chapter start="3:40" title="Ambition and GDP-Level Impact" />
  <psc:chapter start="6:10" title="Building Globally From Budapest" />
  <psc:chapter start="9:05" title="Apple Partnership and Platform Choices" />
  <psc:chapter start="11:05" title="One App, Many Modalities" />
  <psc:chapter start="13:45" title="Offline-first vs Cloud CAD" />
  <psc:chapter start="16:20" title="Reliability, Versioning, and Enterprise Needs" />
  <psc:chapter start="18:20" title="Market Fit, Limits, and Differentiation" />
  <psc:chapter start="21:00" title="Beyond B-Rep: Performance and Scale" />
  <psc:chapter start="23:05" title="Pragmatic AI: Where It Actually Helps" />
  <psc:chapter start="25:00" title="Automating Drawings and What’s Next" />
  <psc:chapter start="29:30" title="Closing and Listener Invitation" />
</psc:chapters>
    <itunes:duration>1848</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>3</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>Mai Bui, Building a Design Wiki</itunes:title>
    <title>Mai Bui, Building a Design Wiki</title>
    <itunes:summary><![CDATA["Why do hardware teams still rely on brittle slides and spreadsheets?" asks Mai Bui, cofounder of Quarter20. "A CAD‑connected wiki can turn documentation into living, executable knowledge." Quarter20 shows auto-updating work instructions, technician analytics, and a cloud workflow that links design to the shop floor.  • The boiling frog of legacy CAD tooling and manual documentation • Quarter20’s origin story from real manufacturing pain • A CAD-connected wiki as a single source of truth • Re...]]></itunes:summary>
    <description><![CDATA[<p>&quot;Why do hardware teams still rely on brittle slides and spreadsheets?&quot; asks Mai Bui, cofounder of Quarter20. &quot;A CAD‑connected wiki can turn documentation into living, executable knowledge.&quot;</p><p>Quarter20 shows auto-updating work instructions, technician analytics, and a cloud workflow that links design to the shop floor.<br/><br/>• The boiling frog of legacy CAD tooling and manual documentation<br/>• Quarter20’s origin story from real manufacturing pain<br/>• A CAD-connected wiki as a single source of truth<br/>• Replacing PowerPoint and Word with live documentation<br/>• Linking hardware tools like software’s integrated stack<br/>• Customer use cases in robotics, agtech, and medical<br/>• Demo of auto-updating images, BOMs, and part tagging<br/>• Cloud access without CAD laptops and large model performance<br/>• Technician mode, analytics, and feedback loops<br/>• Pricing by team with editors and technicians<br/><br/></p><p>&quot;Mention &apos;Roopinder&apos; and I’ll give you a discount because I’m excited to promote more conversations for innovation and design,&quot; says Mai. <br/><br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>&quot;Why do hardware teams still rely on brittle slides and spreadsheets?&quot; asks Mai Bui, cofounder of Quarter20. &quot;A CAD‑connected wiki can turn documentation into living, executable knowledge.&quot;</p><p>Quarter20 shows auto-updating work instructions, technician analytics, and a cloud workflow that links design to the shop floor.<br/><br/>• The boiling frog of legacy CAD tooling and manual documentation<br/>• Quarter20’s origin story from real manufacturing pain<br/>• A CAD-connected wiki as a single source of truth<br/>• Replacing PowerPoint and Word with live documentation<br/>• Linking hardware tools like software’s integrated stack<br/>• Customer use cases in robotics, agtech, and medical<br/>• Demo of auto-updating images, BOMs, and part tagging<br/>• Cloud access without CAD laptops and large model performance<br/>• Technician mode, analytics, and feedback loops<br/>• Pricing by team with editors and technicians<br/><br/></p><p>&quot;Mention &apos;Roopinder&apos; and I’ll give you a discount because I’m excited to promote more conversations for innovation and design,&quot; says Mai. <br/><br/><br/></p>]]></content:encoded>
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Wed, 01 Oct 2025 07:00:00 -0700</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Setting the stage: old vs new CAD" />
  <psc:chapter start="2:36" title="The boiling frog of broken workflows" />
  <psc:chapter start="3:14" title="From pain to product: Quarter20’s origin" />
  <psc:chapter start="6:24" title="CAD‑connected wiki: vision and scope" />
  <psc:chapter start="9:56" title="Replacing slides and docs with live data" />
  <psc:chapter start="12:21" title="Linking the hardware stack like software" />
  <psc:chapter start="16:59" title="Why “Quarter 20” and the tiny screw" />
  <psc:chapter start="19:41" title="Governance and wiki model for teams" />
  <psc:chapter start="22:42" title="Early customers and robotics focus" />
  <psc:chapter start="27:29" title="Go‑to‑market: conferences and LinkedIn" />
</psc:chapters>
    <itunes:duration>1744</itunes:duration>
    <itunes:keywords></itunes:keywords>
    <itunes:season>1</itunes:season>
    <itunes:episode>2</itunes:episode>
    <itunes:episodeType>full</itunes:episodeType>
    <itunes:explicit>false</itunes:explicit>
  </item>
  <item>
    <itunes:title>The AI Revolution in Mechanical Design is Happening</itunes:title>
    <title>The AI Revolution in Mechanical Design is Happening</title>
    <itunes:summary><![CDATA[Maorr Farid, co-founder and CEO of Leo AI, shares how his company is revolutionizing mechanical engineering by creating the first AI that truly understands CAD. His mission is to transform engineers from "glorified secretaries" back into creative innovators by eliminating the tedious 85% of time they spend not actually designing.  • Former Unit 8200 intelligence officer with a PhD from Technion at an unprecedented young age • Founded Leo AI after discovering engineers spend only 15% of their ...]]></itunes:summary>
    <description><![CDATA[<p>Maorr Farid, co-founder and CEO of Leo AI, shares how his company is revolutionizing mechanical engineering by creating the first AI that truly understands CAD. His mission is to transform engineers from &quot;glorified secretaries&quot; back into creative innovators by eliminating the tedious 85% of time they spend not actually designing.<br/><br/>• Former Unit 8200 intelligence officer with a PhD from Technion at an unprecedented young age<br/>• Founded Leo AI after discovering engineers spend only 15% of their time moving the mouse in CAD software<br/>• Already reached 55,000+ users with zero marketing budget, including major clients like HP, Intel, and Scania<br/>• Leo AI focuses on augmenting engineers rather than replacing them<br/>• Customer testimonials include completing designs in 1.5 hours that previously took three engineers three weeks<br/>• Leo connects to PLMs, Windows directories, and CAD files to leverage organizational knowledge<br/>• Engineers maintain control of decision-making while AI handles information retrieval<br/>• Leo is the only AI system specifically built to understand CAD geometry, not just text<br/>• 80% of elite engineering students leave the profession due to the gap between expectations and reality<br/>• Join the Mechanical Intelligence community - the first global community for AI in mechanical engineering<br/><br/></p>]]></description>
    <content:encoded><![CDATA[<p>Maorr Farid, co-founder and CEO of Leo AI, shares how his company is revolutionizing mechanical engineering by creating the first AI that truly understands CAD. His mission is to transform engineers from &quot;glorified secretaries&quot; back into creative innovators by eliminating the tedious 85% of time they spend not actually designing.<br/><br/>• Former Unit 8200 intelligence officer with a PhD from Technion at an unprecedented young age<br/>• Founded Leo AI after discovering engineers spend only 15% of their time moving the mouse in CAD software<br/>• Already reached 55,000+ users with zero marketing budget, including major clients like HP, Intel, and Scania<br/>• Leo AI focuses on augmenting engineers rather than replacing them<br/>• Customer testimonials include completing designs in 1.5 hours that previously took three engineers three weeks<br/>• Leo connects to PLMs, Windows directories, and CAD files to leverage organizational knowledge<br/>• Engineers maintain control of decision-making while AI handles information retrieval<br/>• Leo is the only AI system specifically built to understand CAD geometry, not just text<br/>• 80% of elite engineering students leave the profession due to the gap between expectations and reality<br/>• Join the Mechanical Intelligence community - the first global community for AI in mechanical engineering<br/><br/></p>]]></content:encoded>
    <enclosure url="https://www.buzzsprout.com/2529753/episodes/17694159-the-ai-revolution-in-mechanical-design-is-happening.mp3" length="27914263" type="audio/mpeg" />
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    <itunes:author>Roopinder Tara</itunes:author>
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    <pubDate>Mon, 18 Aug 2025 16:00:00 -0700</pubDate>
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    <psc:chapters>
  <psc:chapter start="0:00" title="Introduction to Mayar Farid" />
  <psc:chapter start="6:43" title="Journey to Mechanical Engineering" />
  <psc:chapter start="10:49" title="Founding Leo AI and Early Success" />
  <psc:chapter start="14:20" title="The Knowledge Problem in Engineering" />
  <psc:chapter start="21:16" title="Leo&#39;s Approach to AI for Engineers" />
  <psc:chapter start="29:04" title="Trust and Fear in AI Adoption" />
  <psc:chapter start="35:28" title="The Modality Challenge in Engineering AI" />
  <psc:chapter start="38:16" title="Closing Thoughts and MI Community" />
</psc:chapters>
    <itunes:duration>2323</itunes:duration>
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    <itunes:season>1</itunes:season>
    <itunes:episode>1</itunes:episode>
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