Machine Minds

Greg Toroosian

Machine Minds - the minds behind the machines! This is the show where we dive deep into the intricate worlds of robotics, AI, and Hard Tech. In each episode, we bring you intimate conversations with the founders, investors, and trailblazers who are at the heart of these tech revolutions. We dig into their journeys, the challenges they've overcome, and the breakthroughs that are shaping our future. Join us as we explore how these machine minds are transforming the way we live, work, and understand our world. 

  1. Conviction Before Consensus - Outlander VC with Paige Craig

    HACE 3 DÍAS

    Conviction Before Consensus - Outlander VC with Paige Craig

    From bootstrapping a defense intelligence startup with five credit cards to backing some of the most ambitious robotics and autonomy companies in the world, Paige Craig has built his career around one core belief: exceptional people matter more than polished ideas. In this conversation, Paige Craig, founder and managing partner of Outlander VC, joins Greg to unpack how his unconventional path through the Marine Corps, intelligence work, and entrepreneurship shaped his philosophy as an investor. Paige shares why he spends more time analyzing founders than products, how his team evaluates leadership under chaos, and why physical AI and robotics will define the next two decades of innovation. The discussion also dives deep into the realities of robotics deployment, the hidden complexity behind autonomy, and what separates founders who can survive the brutal transition from prototype to real-world scale. Highlights: Paige’s journey from a difficult childhood and military service to building and bootstrapping a multi-hundred-million-dollar intelligence companyWhy Outlander VC invests at the “pre-conception” stage, backing founders before products or customers existThe 38-point founder framework Outlander uses to evaluate vision, intelligence, character, and executionWhy great founders often emerge from hardship, high agency, and an obsession with solving problemsThe loneliness of leadership and why Paige believes the best investors act as true problem-solving partnersHow Outlander structures conviction-driven investing, including single-partner authority to write early checksWhy physical AI, robotics, and automation are entering a massive growth cycle driven by AI, manufacturing reshoring, and falling hardware costsThe biggest differences between investing in robotics versus pure software startupsWhy cheap, rapidly deployable robots often outperform “exquisite” high-cost systems in the race toward autonomyLessons from backing Coco Robotics and Havoc AI, including the realities of deploying robots into unpredictable real-world environmentsThe overlooked operational challenges of robotics businesses: supply chains, government relations, field operations, and human oversightWhy many robotics founders underestimate the difficulty of scaling hardware systems outside the labPaige’s perspective on defense tech investing, the influx of “tourist VCs,” and what founders should look for in strategic investorsThe leadership gaps technical founders often face as companies scale, and how mentorship can help engineering leaders grow into organizational leadership rolesWhy AI may fundamentally reshape the future role of engineering leadership and startup team structuresConnect with Paige Craig on LinkedIn: https://www.linkedin.com/in/paigecraig/ Learn more about Outlander VC: https://outlander.vc/ Connect with Greg Toroosian on LinkedIn: https://www.linkedin.com/in/gregtoroosian/

    53 min
  2. Building Robots People Trust: The Andromeda Vision with Grace Brown

    13 MAY

    Building Robots People Trust: The Andromeda Vision with Grace Brown

    From engineering-first robots to emotionally intelligent companions, Andromeda Robotics is redefining what human-robot interaction can look like in the real world. Grace Brown, founder and CEO of Andromeda Robotics, joins Greg to share her journey from a STEM-obsessed student in Australia to building one of the most distinctive companies in the humanoid robotics space. What started as a response to isolation during COVID has evolved into Abby, a social companion robot designed to bring meaningful connection into aged care environments. Rather than optimizing for flashy demos or industrial efficiency, Grace and her team are focused on something far more complex: building robots that people trust, relate to, and genuinely care about. In this conversation, she unpacks why emotional intelligence is the missing layer in robotics, how design and psychology shape adoption, and what it will take for humanoids to scale in human environments. Highlights: Grace’s early path into engineering and how a clear passion for math, physics, and problem-solving led her toward robotics from a young ageThe founding story of Andromeda Robotics and how strict COVID lockdowns in Australia exposed the real-world impact of lonelinessWhy Abby was designed as a character, not a tool, and how Pixar-inspired design principles drive trust and adoptionThe overlooked challenge of social acceptance in robotics and why capability alone is not enough to succeed in human environmentsReal-world deployments of Abby in aged care facilities and what the team has learned from observing how people actually interact with robotsThe importance of personalization in human-robot interaction, from voice tuning to behavioral adaptation for individual usersWhy emotional intelligence and “social awareness” will be critical for all robots working alongside humans, even outside consumer settingsThe interdisciplinary nature of building social robots, combining engineering, animation, healthcare insight, and operationsHow Grace thinks about hiring, from early generalists to later specialists, and why mission alignment is the most important filterThe concept of “anti-selling” during hiring to attract people who truly want ownership and responsibility in a startup environmentUsing AI agents internally to accelerate iteration speed and rethink how teams build and operate in modern startupsThe broader responsibility of shaping the future of robotics and why who builds this technology will determine its impact on societyLearn more about Andromeda Robotics: Youtube: https://www.youtube.com/@AndromedaRoboticsWebsite: https://andromedarobotics.ai/LinkedIn: https://www.linkedin.com/company/andromedarobotics/posts/?feedView=allConnect with Grace Brown: Instagram: https://www.instagram.com/grace.jbrown/LinkedIn: https://www.linkedin.com/in/grace-brown-619b59161/Connect with Greg Toroosian: https://www.linkedin.com/in/gregtoroosian/

    42 min
  3. Rethinking Defect Detection in Modern Manufacturing with Matt Puchalski

    6 MAY

    Rethinking Defect Detection in Modern Manufacturing with Matt Puchalski

    From autonomous vehicles to factory floors, a new wave of vision technology is transforming how manufacturers think about quality. Bucket Robotics is at the center of that shift, bringing simulation-driven inspection systems to an industry long reliant on manual checks and outdated tooling. Matt Puchalski, founder and CEO of Bucket Robotics, joins Greg to share how his experience in self-driving cars shaped a fundamentally different approach to quality inspection. Instead of relying on expensive hardware or months of data collection, his team is using CAD-based simulation to generate training data instantly, unlocking faster deployment, lower costs, and more scalable automation. We explore why quality inspection remains one of the most painful bottlenecks in manufacturing, how legacy vision systems have failed to keep up, and what it takes to build robots that actually work outside of polished demos. Highlights: Matt’s journey from Georgia Tech and Michelin to autonomy startups and ultimately founding Bucket RoboticsWhy quality inspection is still one of the most manual, inconsistent, and frustrating parts of manufacturingThe core insight behind Bucket: applying self-driving car vision systems to factory environmentsHow CAD-based simulation replaces months of data collection with minutes of synthetic training dataThe “sim-to-real” challenge and why perception in changing lighting and environments is harder than it looksWhy most vision systems fail in production and how Bucket is designed for real-world robustness from day oneLessons from early market assumptions, including why medical device manufacturing was not the right starting pointThe economics of inspection: balancing cost, speed, and accuracy across high-mix and high-volume environmentsWhat makes a strong customer fit, from ambiguous defect definitions to expensive rework caught too lateCommon objections from manufacturers burned by legacy vision systems and how simulation changes the equationWhy labor shortages and supply chain reshoring are accelerating demand for automated quality solutionsHiring for empathy in robotics and why understanding the end operator matters more than credentialsThe importance of engineers who ship, not just prototype, and why early adopters beat bleeding edge thinkersHard-earned hiring lessons, especially the need for teams willing to travel and work onsite with customersWhere robotics is overhyped today, especially around deployment at scale versus polished demosWhy lightweight, lower-cost robotic systems are unlocking a new wave of practical automationMatt’s view on the future of manufacturing: a hybrid human and robotic workforce rather than full autonomyFounder reality: why building a company can feel easier than operating autonomous vehicles, but far more isolatingThe long-term vision for Bucket Robotics as the “cloud computing moment” for manufacturing quality systemsMatt's LinkedIn: https://www.linkedin.com/in/matt-puchalski/ Bucket's LinkedIn: https://www.linkedin.com/company/bucketrobotics/ Matt's email: matt@bucketrobotics.com Bucket's Youtube: https://www.youtube.com/@Bucket_Robotics Connect with Greg Toroosian: https://www.linkedin.com/in/gregtoroosian/

    50 min
  4. Building Factory SuperIntelligence with Ariyan Kabir

    29 ABR

    Building Factory SuperIntelligence with Ariyan Kabir

    From disaster response inspiration to reimagining the backbone of global manufacturing, GrayMatter Robotics is tackling one of the largest untapped opportunities in automation: bringing true autonomy to the 90% of factory work still done by hand. Ariyan Kabir, co-founder and CEO of GrayMatter Robotics, joins Greg to share how a firsthand experience with an earthquake in Bangladesh sparked his mission to build intelligent machines that can take on dangerous, tedious work. What started as a question about why robots were not helping in high-risk environments has evolved into a company building “factory superintelligence,” a full stack physical AI platform designed to transform how goods are made. In this conversation, Ariyan breaks down why traditional robotics has struggled in high variability environments, how GrayMatter is bridging the gap with multimodal sensing and foundation models for manufacturing, and why solving these challenges is critical not just for productivity, but for economic resilience and national security. Highlights: Ariyan’s journey from aspiring astronaut to robotics founder, and how a real world disaster shaped his mission to build intelligent, helpful machinesThe hidden reality of manufacturing, with nearly 90% of production still manual despite decades of automationThe core problem GrayMatter is solving, enabling robots to adapt to high variability in materials, environments, and processesWhy physical AI requires more than vision alone, and how multimodal sensing unlocks real world autonomyStarting with sanding as a strategic wedge, then expanding into grinding, painting, blasting, and inspection through transferable learningThe power of data, building one of the largest manufacturing datasets to train foundation models for materials and processesRobot scientists and domain specific AI agents that compress process optimization timelines from months to daysHow optimizing human, robot, and AI workflows can drive massive gains, including tripling throughput without adding robotsLessons from early deployment challenges, from consumables to real world variability, and how they shaped more intelligent systemsThe importance of an adoption playbook, and why deploying robotics successfully depends on process and people as much as technologyAriyan’s perspective on talent, why high agency and system level thinkers are the most valuable builders in the age of AIWhat is still missing in robotics today, and why domain specific intelligence layers are the next frontierA vision for the future, rapidly reconfigurable, fully autonomous factories that can adapt in real time to new products and global needsFor founders, engineers, and operators thinking about the future of manufacturing, this episode offers a deep dive into how physical AI will reshape the industrial world and why the race to build intelligent factories is just getting started. Learn more about GrayMatter Robotics: https://graymatter-robotics.com/https://www.linkedin.com/company/graymatter-robotics/posts/?feedView=allhttps://x.com/GrayMatterRobotConnect with Ariyan Kabir: https://x.com/ariyankabirhttps://www.linkedin.com/in/ariyankabir/Connect with Greg Toroosian: https://www.linkedin.com/in/gregtoroosian/

    57 min
  5. From Robots to Revenue: Marketing That Actually Works in Automation with Kait Peterson

    22 ABR

    From Robots to Revenue: Marketing That Actually Works in Automation with Kait Peterson

    Warehouse automation is no longer a question of if, but when. As supply chains face growing pressure from labor shortages, unpredictable demand spikes, and rising customer expectations, robotics is becoming a critical lever for speed, accuracy, and resilience. Kait Peterson, VP and Head of Marketing at Locus Robotics, joins Greg to break down how modern warehouse automation is evolving from rigid, capital-intensive systems into flexible, scalable solutions that can adapt in real time. Drawing on 15 years in supply chain technology, Kait shares how robotics, data, and physical AI are reshaping fulfillment operations and why the next wave of adoption will look very different from the last. Kait brings a unique perspective at the intersection of marketing, robotics, and human-centered leadership. From making hundreds of cold calls selling warehouse software early in her career to helping scale one of the most recognized brands in warehouse automation, she has seen firsthand how the industry has shifted from skepticism to rapid acceleration. Now at Locus Robotics, she helps translate complex automation systems into clear business value while championing greater inclusion across the tech ecosystem. In this conversation, Greg and Kait explore: Kait’s journey from supply chain SaaS into robotics and how early exposure to warehouse operations shaped her approach to marketing and leadershipWhy flexibility is becoming the defining advantage in warehouse automation, especially for brownfield facilities that cannot afford disruptionHow Locus Robotics differentiates through its Robots as a Service model, combining deployment, maintenance, and continuous optimization into a single offeringThe role of physical AI and why data from billions of robot interactions is becoming a competitive moat in modern automationWhat success looks like for customers, from improved throughput and accuracy to better worker retention and operational scalabilityWhy marketing in robotics is fundamentally different from traditional B2C and SaaS, and how understanding customer problems outweighs technical specificationsThe shift from early skepticism to ROI-driven adoption and why automation decisions are now tied to short-term financial performanceHow category creation is shaping the market, including Locus’s push toward a new “robots to goods” paradigmThe importance of change management and why the most successful robotics deployments focus as much on people as they do on technologyWhy warehouse automation is still in its early innings, with the vast majority of facilities remaining unautomatedThe debate between humanoids and purpose-built robotics, and why solving specific problems may matter more than mimicking human formKait’s leadership philosophy, from building teams rooted in curiosity and collaboration to avoiding common hiring pitfallsHer perspective on increasing representation in robotics and why creating inclusive environments is critical to the industry’s futureFor anyone building, deploying, or evaluating automation in supply chain operations, this episode offers a practical and forward-looking view of where warehouse robotics is headed and what it takes to succeed in a rapidly evolving market. Learn more about Locus Robotics: https://locusrobotics.com/ Learn more about The Feminist Exec: https://www.feministexec.com/ Connect with Kait Peterson: https://www.linkedin.com/in/kaitvinson/ Connect with Greg Toroosian: https://www.linkedin.com/in/gregtoroosian/

    53 min
  6. The First In-Person Machine Minds with Flyhound, Modovolo, Flox Intelligence, and Aerialoop

    15 ABR

    The First In-Person Machine Minds with Flyhound, Modovolo, Flox Intelligence, and Aerialoop

    A rare in-person episode brings together four founders building at the frontier of drones, autonomy, and physical AI. Recorded live from the Drones and Robotics AI Summit in New York, this conversation spans search and rescue, wildlife protection, aerial logistics, and next-generation drone platforms—offering a real-time snapshot of where the industry is heading. From detecting phones in disaster zones to decoding animal communication, deploying drone delivery networks at city scale, and rethinking the cost-performance curve of aerial systems, each founder shares how they are tackling hard, real-world problems—and what it takes to move from prototype to deployment. In this conversation, Greg speaks with Manny Cerniglia (Flyhound), Sara Nozkova (Flox Intelligence), Santiago Barrera (Aerialoop), and Justin Call (Modovolo) about: How Flyhound is turning everyday devices into life-saving signals by enabling drones to locate and identify phones, even without cell service, for search and rescue and disaster responseWhy radio frequency complexity remains one of the hardest challenges in real-world deployment, and how environmental factors shape system performanceHow Flox Intelligence is using AI to decode animal communication and prevent human-wildlife conflicts across airports, railways, and industrial sitesThe shift from drone-based systems to edge-deployed stationary units, and what it takes to move from research to validated, real-world impactWhy physical AI startups face unique hurdles in funding, scaling hardware, and bridging the gap between prototype and productionHow Aerialoop built a “metro system in the sky,” operating high-frequency drone logistics networks and moving everything from food to medical samples in dense urban environmentsLessons from scaling to hundreds of daily drone flights, including what breaks first in operations, manufacturing, and trainingThe importance of regulatory collaboration—and how working alongside governments can accelerate deployment instead of slowing it downWhy finding the right early customers is as critical as finding the right investors when building frontier technologyHow Modovolo is rethinking drone design to dramatically improve performance while reducing cost, unlocking new use cases across defense, public safety, and commercial sectorsThe growing demand for modular, payload-driven drone systems—and why enabling customer innovation is key to long-term adoptionThis episode is a fast-moving look at the builders pushing drones and robotics out of the lab and into the real world—one deployment, one partnership, and one hard-earned lesson at a time. Connect with Manny Cerniglia: https://www.linkedin.com/in/mannyce/ Learn more about Flyhound: https://www.flyhound.com/ Connect with Sara Nozkova: https://www.linkedin.com/in/sára-nožková-91339685/ Learn more about Flox Intelligence: https://floxintelligence.com/ Connect with Santiago Barrera: https://www.linkedin.com/in/santiagobarrerav/ Learn more about Aerialoop: https://www.aerialoop.com/ Connect with Justin Call: https://www.linkedin.com/in/justincall/ Learn more about Modovolo: https://modovolo.com/ Connect with Greg Toroosian: https://www.linkedin.com/in/gregtoroosian/

    33 min
  7. From Models to Machines: Building AI That Actually Delivers with Ash Saxena

    8 ABR

    From Models to Machines: Building AI That Actually Delivers with Ash Saxena

    From early experiments with dismantled electronics to building AI systems that power real-world machines, Ash Saxena has spent decades at the intersection of research, entrepreneurship, and applied intelligence. Now, as Founder & Chief AI Officer of TorqueAGI, he is focused on one of the most ambitious challenges in technology: enabling robots to perform meaningful work in the physical world. Ash brings a rare depth of experience, from his PhD work at Stanford alongside Andrew Ng to founding and scaling multiple AI-driven companies. His perspective cuts through the noise of today’s AI hype cycle, offering a grounded view on what is actually working, what is misunderstood, and where the real opportunities lie in robotics and embodied intelligence. We explore how the shift from data-driven AI to reasoning-based systems is reshaping robotics, why most companies are approaching the problem the wrong way, and what it takes to move from impressive demos to reliable deployment in the real world. Highlights: Ash’s journey from building robots as a child to leading AI innovation across academia and industry, including early work on deep learning for roboticsKey inflection points that led him to found multiple companies, including applying AI to unlock access to credit through CatapultWhy “technology-first” companies often fail and the importance of aligning AI with real customer demand and ROIThe evolution of AI from statistical models to deep learning to today’s foundation models and reasoning-based systemsWhy the biggest shift in AI is not better models, but dramatically faster time to deployment from years to days or weeksWhat Torque AGI is actually building: end-to-end robotic “skills” that combine foundation models, agents, and real-time infrastructureWhy data collection at massive scale may not be the answer and how useful systems can be built with far less data than expectedThe gap between AI demos and real-world deployment, and why most demonstrations fail outside controlled environmentsA pragmatic roadmap for robotics adoption, from simple tasks today to more complex industrial automation over the next decadeWhere Torque AGI fits in the stack as a modular layer that translates AI models into actionable robotic capabilitiesThe importance of interpretability, safety, and measurable performance when deploying AI into physical systemsThe core technical bottleneck in robotics today: bridging deep learning with real-world physics and constraintsWhy industrial robotics will see massive value creation in the next 5 to 10 years, while humanoids remain further outA contrarian take on general-purpose systems: general AI will matter more than general-purpose robotsWhere the industry is overhyping progress, especially around humanoid demos, and what is actually working todayWhy AI-driven upgrades to existing robots could unlock 10x to 40x increases in productivity without new hardwareHow to stay disciplined as a founder in a hype-driven market by focusing on real customer outcomes instead of funding cyclesWhat a successful deployment looks like, from quick demos to full operational integration in messy real-world environmentsLearn more about TorqueAGI: LinkedIn | Twitter | Website Connect with Ash Saxena: LinkedIn | Stanford Connect with Greg Toroosian: https://www.linkedin.com/in/gregtoroosian/

    48 min
  8. The Future of Hardware Starts in the Browser with Matthias Wagner

    1 ABR

    The Future of Hardware Starts in the Browser with Matthias Wagner

    Hardware has long lagged behind software in speed, accessibility, and iteration. But that gap is starting to close. Matthias Wagner, founder and CEO of Flux, joins Greg to unpack how AI is transforming electronics design from a slow, manual, and fragmented process into something far more collaborative, automated, and accessible. After years at Facebook and a deep frustration with legacy hardware tooling, Matthias set out to build what he calls the first AI hardware engineer. A system that can help anyone design, iterate, and manufacture electronics with the speed and flexibility of modern software. From rethinking PCB design workflows to enabling entirely new classes of builders around the world, this conversation explores what happens when hardware finally gets its GitHub moment. In this conversation, Greg and Matthias explore: Matthias’s journey from early software engineering to Facebook and ultimately founding Flux to tackle stagnant hardware design toolingWhy hardware has lagged decades behind software in collaboration, automation, and developer experienceHow Flux acts as an AI hardware engineer, guiding users from concept to schematic to manufacturing-ready designThe inefficiencies of traditional PCB design and how AI can consolidate complex systems into single, optimized boardsWhy building in the browser unlocks real-time collaboration, faster iteration cycles, and continuous product improvementHow Flux integrates supply chain data directly into the design process to avoid costly delays and redesignsThe shift from waterfall hardware development to more agile, software-like workflowsWhy democratizing hardware will unlock millions of new builders, not just make existing engineers more productiveReal-world examples of non-traditional users building hardware, including farmers creating custom automation systemsWhere AI fits across the hardware stack, from component selection to simulation and layout optimizationThe reality of building a deep tech startup, including five years with no revenue and multiple near-death momentsLessons on fundraising for long-horizon products and why operator investors matter early onHow AI is reshaping team structure, hiring, and what it means to be an effective engineer todayWhy tooling is the most underestimated lever in accelerating robotics and hardware innovationMatthias’s vision for the future where building hardware becomes so easy that “hardware is hard” disappears as a conceptIf you are building in robotics, hardware, or just thinking about how AI will reshape the physical world, this episode offers a compelling look at the tools and mindset shifts required to unlock the next wave of innovation. Website: https://www.flux.ai/ Job site: https://jobs.ashbyhq.com/flux Connect with Flux on LinkedIn: https://www.linkedin.com/company/buildwithflux/posts/?feedView=all Connect with Matthias Wagner on LinkedIn: https://www.linkedin.com/in/matthias-wagner-5220b047/ Flux X: https://x.com/BuildWithFlux Matthias' X: https://x.com/MatthiasWagner Connect with Greg on Linkedin: https://www.linkedin.com/in/gregtoroosian/

    50 min
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Machine Minds - the minds behind the machines! This is the show where we dive deep into the intricate worlds of robotics, AI, and Hard Tech. In each episode, we bring you intimate conversations with the founders, investors, and trailblazers who are at the heart of these tech revolutions. We dig into their journeys, the challenges they've overcome, and the breakthroughs that are shaping our future. Join us as we explore how these machine minds are transforming the way we live, work, and understand our world. 

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