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  • In this episode of the Neil Ashton Podcast, Dr. Prith Banerjee, CTO of Ansys, shares his extensive journey from academia to the corporate world, discussing the interplay between academia and industry, the role of startups in innovation, and the transformative potential of AI and ML in simulation. He emphasizes the importance of solving real-world problems and the need for collaboration between academia, startups, and large corporations to foster disruptive innovation. He discusses innovative business models for data sharing, the intersection of data-driven and physics-informed approaches, the role of open source in AI innovation, the potential of foundational models in computer-aided engineering (CAE), the future of quantum computing in simulation, and offers advice for aspiring innovators and entrepreneurs. He emphasizes the importance of collaboration, data governance, and the need for interdisciplinary approaches to solve complex problems in engineering and technology.

    Dr. Banerjee's book - The Innovation factory: https://www.amazon.com/Innovation-Factory-Prith-Banerjee-PH/dp/B0B7LZPDZW

    Youtube version of this episode: https://youtu.be/9Ic5xgJt6BQ

    Chapters

    00:00 Introduction to the Podcast and Guest
    05:18 Dr. Prith Banerjee's Journey: From Academia to CTO
    09:10 The Role of Academia, Startups, and Industry
    17:22 Advice for Startups: Motivation and Market Sizing
    24:04 The Impact of AI and ML on Simulation
    35:07 Future of AI in Physics and Simulation
    36:10 The Power of Data in AI Models
    40:33 Incentivizing Data Sharing for Better Models
    42:55 Physics-Driven vs Data-Driven Approaches
    47:30 The Role of Open Source in AI Innovation
    52:06 Foundational Models and Simulation Data
    58:22 The Future of CAE and Quantum Computing
    01:06:29 Advice for Aspiring Innovators

    Keywords

    Neil Ashton, Prith Banerjee, CAE, AI, ML, simulation, academia, startups, industry, innovation, AI, data sharing, physics-driven, open source, foundational models, quantum computing, CAE, simulation, innovation, engineering

  • In this episode of the Neil Ashton podcast, Peter Coen from NASA discusses the evolution and future of supersonic travel, focusing on the challenges faced by the Concorde, the technological hurdles of modern supersonic aircraft, and the innovative NASA Quesst mission (and X-59 demonstrator) that aims to provide crucial data to rewrite the aviation noise regulations. The conversation delves into the history of supersonic flight, the impact of sonic booms, and the regulatory landscape that will shape the future of aviation. In this conversation, Peter discusses the complexities of supersonic flight, focusing on the physics of shockwaves, innovative design strategies to mitigate sonic booms, and advancements in pilot visibility technology. He emphasizes the importance of human factors in aircraft design and the role of simulation in the development process. The discussion also covers the challenges of engine technology for commercial supersonic travel, the potential for hypersonic passenger travel, and the future of battery technology in aviation. Finally, Peter offers career advice for aspiring professionals in the aeronautics field.

    Links
    NASA Quesst mission: https://www.nasa.gov/mission/quesst/
    AIAA Low-Boom Prediction Workshop: https://lbpw.larc.nasa.gov
    X-59 (Lockheed Martin website): https://www.lockheedmartin.com/en-us/products/x-59-quiet-supersonic.html

    Chapters

    00:00 Introduction to Supersonic Travel
    04:05 The History of Supersonic Flight
    09:56 Challenges Faced by Concorde
    16:02 Technological Challenges of Supersonic Travel
    25:48 NASA's X-59 and the Quest Mission
    33:45 Future of Supersonic Travel and Regulations
    38:04 Understanding Shockwaves in Supersonic Flight
    40:02 Design Innovations for Sonic Boom Reduction
    43:16 Advancements in Pilot Visibility Technology
    46:27 Human Factors in Aircraft Design
    48:23 The Role of Simulation in Aircraft Development
    51:42 Engine Noise and Its Impact on Supersonic Travel
    54:31 The Future of Commercial Supersonic Travel
    57:13 Challenges in Engine Technology for Supersonic Aircraft
    01:00:17 The Intersection of Military and Supersonic Travel
    01:02:09 Exploring Hypersonic Passenger Travel
    01:06:39 The Future of Battery Technology in Aviation
    01:09:09 Career Advice for Aspiring Aeronautics Professionals

    Keywords

    supersonic travel, Concorde, NASA, X-59, sonic boom, aviation technology, hypersonic flight, aerospace engineering, aircraft design, noise regulations, supersonic flight, sonic boom, aircraft design, pilot technology, simulation, engine noise, commercial aviation, hypersonic travel, battery technology, aeronautics careers, Peter Coen

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  • In this episode of the Neil Ashton podcast, we celebrate the life and contributions of Professor Antony Jameson, a pioneer in Computational Fluid Dynamics (CFD). The conversation explores his early influences, academic journey, and significant contributions to aerodynamics and engineering. Professor Jameson shares insights from his career in both academia and industry, highlighting pivotal moments that shaped his work in CFD and transonic flow. Prof. Jameson discusses his journey through the complexities of numerical methods for fluid flow, his transition from industry to academia, the development of influential flow codes, and the evolution of computational fluid dynamics (CFD). He reflects on the challenges of teaching, the impact of his work on the aerospace industry, and the commercialization of CFD technologies. In this conversation, he shares his journey from academia to industry, discussing the challenges and successes he faced in the field of aerodynamics and computational fluid dynamics. He reflects on the importance of innovation, the impact of industry experience on academic research, and offers valuable advice for aspiring professionals in aeronautics. The discussion also touches on the evolution of computational power and the role of machine learning in the field.

    Chapters

    00:00 Introduction to Computational Fluid Dynamics and Professor Jameson
    05:02 Professor Jameson's Early Life and Influences
    20:00 Academic Journey and Contributions to Aerodynamics
    34:50 Career in Industry and Transition to Academia
    48:52 Pivotal Moments in Computational Fluid Dynamics
    50:19 Navigating Numerical Methods for Fluid Flow
    57:02 Transitioning to Academia and Teaching Challenges
    01:06:25 Developing Flow Codes FLO & SYN and Their Impact
    01:12:21 The Evolution of Computational Fluid Dynamics
    01:19:10 Commercialization and the Future of CFD
    01:30:34 Journey to Success: From Code to Commercialization
    01:37:02 Innovations in Aerodynamics: Control Theory and Design
    01:43:06 The Impact of Industry Experience on Academic Research
    01:51:24 The Evolution of Computational Power in Aerodynamics
    02:01:29 Advice for Aspiring Aeronautics Professionals

    Summary of key work:

    (see http://aero-comlab.stanford.edu/jameson/publication_list.html for the publication number)
    Th first work that had a strong impact on the aircraft industry was Flo22. The numerical algorithm used in Flo22 is analyzed in detail in Publication 31, Iterative solution of transonic flows.
    The next work that had a worldwide impact was the JST scheme in 1981. The AIAA Paper 81-1259 (publication 67) has more than 6000 citations on Google Scholar. Prof. Jameson gave two other presentations a few months earlier which describe the numerical method in more detail. These are publications 63 and 65. More recently he gave a history of the JST scheme and its further development in publication 456, which also gives a detailed discussion of the multigrid scheme which was first described in publication 78.
    The Airplane Code described in AIAA Paper 86-0103 (publication 104) was the first code that could solve the Euler equations for a complete aircraft, the culmination of 15 years of his efforts to calculate transonic flows for progressively more complex configurations and with more complete mathematical models. It was never published as a journal article. The design of algorithms for unstructured grids is comprehensively discussed in his book (publication 500).
    He proposed the idea of using control theory for aerodynamic shape optimization in 1988 in publication 127, and its further development for transonic flows modeled by the RANS equations is described publications 222 and 229. Its most striking application was the aerodynamic design of the Gulfstream G650 in 2006, when he performed the calculations with Syn107 on a server in his garage.

  • In this episode of the Neil Ashton podcast, we delve into the fascinating world of cycling, focusing on the critical role of aerodynamics and the evolution of training techniques. Featuring Dr. Michael Hutchinson, a former top-level cyclist and expert in cycling aerodynamics, the conversation explores Dr. Hutch's journey from competitive cycling to becoming a prominent figure in cycling media. The discussion highlights the importance of power meters in training, the cultural landscape of cycling in the UK, and the technical innovations that have transformed the sport. In this conversation, we discuss the evolution of cycling performance, focusing on the impact of training, nutrition, and equipment. We highlight the importance of training less, the advancements in nutrition that allow cyclists to perform better, and the diverse training approaches that exist among athletes. The conversation also touches on the professionalism of cyclists, the rise of women's cycling, and the significant role of aerodynamics and equipment in enhancing performance. In this conversation, Neil and Dr Hutch discusses the intricate balance between power and aerodynamics in cycling, the evolution of rider trust in aerodynamic advice, and the significant impact of wind tunnels on performance. He explores the challenges of wind tunnel testing versus real-world validation, the role of computational fluid dynamics (CFD) in cycling aerodynamics, and the regulatory challenges that arise with advancing technology.

    Dr Hutch X handle: https://x.com/Doctor_Hutch
    Faster: The Obsession, Science and Luck Behind the World's Fastest Cyclists: https://www.amazon.co.uk/Faster-Obsession-Science-Fastest-Cyclists/dp/1408843757


    Chapters

    00:00 Introduction to the Podcast and Cycling Passion
    02:57 The Intersection of Cycling and Aerodynamics
    06:02 Dr. Hutch's Journey into Competitive Cycling
    08:57 The Evolution of Aerodynamics in Cycling
    12:13 The Role of Power Meters in Cycling Performance
    15:01 Training Techniques and the Shift to Power Metrics
    17:58 Transitioning from Cycling to Media and Writing
    20:50 The Cultural Landscape of Cycling in the UK
    24:13 Technical Innovations and Personal Experiments in Aerodynamics
    27:01 The Impact of Power Meters on Training and Performance
    32:51 The Power of Training Less
    34:15 Evolution of Cycling Performance
    38:30 Nutrition: The Game Changer
    39:47 Diverse Training Approaches
    42:31 The Professionalism of Cyclists
    48:11 The Rise of Women's Cycling
    50:33 Aerodynamics: The Key to Speed
    56:06 The Impact of Equipment on Performance
    01:05:08 Balancing Power and Aerodynamics in Cycling
    01:07:05 The Evolution of Rider Trust in Aerodynamics
    01:10:55 The Impact of Wind Tunnels on Cycling Performance
    01:12:21 Challenges of Wind Tunnel Testing and Real-World Validation
    01:20:26 The Role of CFD in Cycling Aerodynamics
    01:25:31 Regulatory Challenges in Cycling Technology
    01:31:08 The Future of Cycling: Balancing Technology and Tradition

    Keywords

    cycling, aerodynamics, Dr. Hutch, power meters, training techniques, cycling culture, performance metrics, cycling history, competitive cycling, cycling media, cycling, training, nutrition, performance, aerodynamics, women's cycling, professional cycling, power meter, skin suits, coaching, cycling, aerodynamics, wind tunnels, biomechanics, CFD, technology, performance, regulations, rider trust, power

  • In this episode, Neil discusses five key trends in Computational Fluid Dynamics (CFD) that are shaping the industry now and in the coming years. He emphasizes the growing importance of GPUs, the integration of AI and machine learning, the shift towards cloud computing, and the potential for mergers and acquisitions in the CFD space. Each trend is explored in detail, highlighting its implications for accuracy, efficiency, and the future of simulation technologies.

    Takeaways

    GPUs are becoming the primary computing platform for CFD.
    AI and ML are driving advancements in CFD methodologies.
    Cloud computing is essential for accessing high-performance resources.
    The CFD industry is experiencing a shift towards digital certification.
    Startups are emerging, focusing on innovative CFD solutions.
    Mergers and acquisitions are likely to increase in the CFD market.
    Higher fidelity simulations are becoming more feasible with new technologies.
    The integration of AI could lead to real-time CFD capabilities.
    Cost efficiency is a major driver for adopting new technologies.
    The CFD landscape is evolving rapidly, with significant opportunities ahead.

    Keywords

    CFD, GPUs, AI, Machine Learning, Cloud Computing, Trends, Digital Certification, Mergers, Acquisitions, Simulation

    Chapters

    00:00 Introduction to CFD Trends
    02:04 The Rise of GPUs in CFD
    14:06 The Impact of AI and Machine Learning
    29:39 The Shift to Cloud Computing
    38:41 Digital certification: Higher-fidelity methods
    43:00 Future of CFD: Mergers and Innovations

  • In this episode of the Neil Ashton podcast, Nikolas Tombazis discusses his journey into engineering and Formula One, starting from his passion for mathematics, physics, and design. He shares how his childhood dream of designing Formula One cars led him to pursue engineering. Tombazis also talks about his experience at Cambridge University and the freedom he enjoyed during his university years. He then delves into his decision to pursue a PhD in experimental aerodynamics and the valuable skills he gained from his research. Tombazis reflects on the challenges and responsibilities of being a chief aerodynamicist in Formula One, as well as the evolving role of CFD in the industry. The conversation explores the advancements in wind tunnel technology and computational fluid dynamics (CFD) in Formula One. It discusses the role of CFD as a design tool and the potential for it to become the predominant tool in the future. The conversation also touches on the balance between the technical aspects of the sport and the entertainment value for fans. The importance of teamwork, leadership, and culture in Formula One teams is highlighted, as well as the challenges of maintaining success and avoiding complacency. The conversation concludes with advice for aspiring Formula One professionals, emphasizing the value of a broad skill set and the potential for Formula One as a stepping stone to other industries.

    Chapters

    00:00 Introduction to the Podcast and Season Two
    03:38 Nikolas Tombazis: A Key Figure in Formula One
    04:56 Early Influences and Passion for Engineering
    08:52 The Journey Through Cambridge and PhD Studies
    12:57 Entering Formula One: The Path to Benetton
    18:25 The Evolution of Aerodynamics in Formula One
    24:06 The Role of CFD and Wind Tunnel Technology
    38:53 Balancing Technology and Entertainment in F1
    44:47 The Future of AI in Formula One
    54:56 Understanding Team Dynamics and Performance Variability
    01:03:44 Advice for Aspiring Engineers in Formula One

  • The first season of the Neil Ashton podcast comes to a close with a recap of the episodes and a glimpse into what's to come in the next season. Look out for Season 2 in September with lots more great guests and discussion on hypersonics, CFD, Formula One, cycling, space exploration and more!

  • Professor Anima Anandkumar is one of the worlds leading scientists in the field of AI & ML with more than 30k citations, a h-index of 80 and numerous landmark papers such as FourCastNet, which got world-wide coverage for demonstrating how AI can be used to speed up weather prediction. She is the Bren Professor at Caltech, leading a large team of PhD students and post-docs in her AI+Science lab, and has had extensive experience in industry, previously being the Senior Director of AI Resarch at Nvidia.

    In this episode I speak to her about her background in academia and industry, her journey into machine learning, and the importance of AI for science. We discuss the integration of AI and scientific research, the potential of AI in weather modeling, and the challenges of applying AI to other areas of science. Prof Anandkumar shares examples of successful AI applications in science and explains the concept of AI + science. We also touch on the skepticism surrounding machine learning in physics and the need for data-driven approaches. The conversation explores the potential of AI in the field of science and engineering, specifically in the context of physics-based simulations. Prof. Anandkumar discusses the concept of neural operators, highlights the advantages of neural operators, such as their ability to handle multiple domains and resolutions, and their potential to revolutionize traditional simulation methods. Prof. Anandkumar also emphasizes the importance of integrating AI with scientific knowledge and the need for interdisciplinary collaboration between ML specialists and domain experts. She also emphasizes the importance of integrating AI with traditional numerical solvers and the need for interdisciplinary collaboration between ML specialists and domain experts. Finall she provides advice for PhD students and highlights the significance of attending smaller workshops and conferences to stay updated on emerging ideas in the field.

    Links:
    LinkedIn: https://www.linkedin.com/in/anima-anandkumar/
    Ted Video: https://www.youtube.com/watch?v=6bl5XZ8kOzI
    FourCastNet: https://arxiv.org/abs/2202.11214
    Google Scholar: https://scholar.google.com/citations?hl=en&user=bEcLezcAAAAJ
    Lab page: http://tensorlab.cms.caltech.edu/users/anima/

    Takeaways

    - Anima's background includes both academia and industry, and she sees value in bridging the gap between the two.
    - AI for science is the integration of AI and scientific research, with the goal of enhancing and accelerating scientific developments.
    - AI has shown promise in weather modeling, with AI-based weather models outperforming traditional numerical models in terms of speed and accuracy.
    - The skepticism surrounding machine learning in physics can be addressed by verifying the accuracy of AI models against known physics principles.
    - Applying AI to other areas of science, such as aircraft design and fluid dynamics, presents challenges in terms of data availability and computational cost. Neural operators have the potential to revolutionize traditional simulation methods in science and engineering.
    - Integrating AI with scientific knowledge is crucial for the development of effective AI models in the field of physics-based simulations.
    - Interdisciplinary collaboration between ML specialists and domain experts is essential for advancing AI in science and engineering.
    - The future of AI in science and engineering lies in the integration of various modalities, such as text, observational data, and physical understanding.

    Chapters

    00:00 Introduction and Overview
    04:29 Professor Anima Anandkumar's Career Journey
    09:14 Moving to the US for PhD and Transitioning to Industry
    13:00 Academia vs Industry: Personal Choices and Opportunities
    17:49 Defining AI for Science and Its Importance
    22:05 AI's Promise in Enhancing Scientific Discovery
    28:18 The Success of AI-Based Wea

  • Prof. Karthik Duraisamy is a Professor at the University of Michigan, the Director of the Michigan Institute for Computational Discovery and Engineering (MICDE) and the founder of the startup Geminus.AI. In this episode, we discusses AI4Science, with a particular focus on fluid dynamics and computational fluid dynamics. Prof. Duraisamy talks about the progress and challenges of using machine learning in turbulence modeling and the potential of surrogate models (both data-driven and physics-informed neural networks). He also explores the concept of foundational models for science and the role of data and physics in AI applications. The discussion highlights the importance of using machine learning as a tool in the scientific process and the potential benefits of large language models in scientific discovery. We also discuss the need for collaboration between academia, tech companies, and startups to achieve the vision of a new platform for scientific discovery. Prof. Duraisamy predicts that in the next few years, there may be major advancements in foundation models for science however he cautions against unrealistic expectations and emphasizes the importance of understanding the limitations of AI.

    Links:
    Summer school tutorials https://github.com/scifm/summer-school-2024 (scroll down for links to specific tutorials)
    SciFM24 recordings : https://micde.umich.edu/news-events/annual-symposia/2024-symposium/
    SciFM24 Summary : https://drive.google.com/file/d/1eC2HJdpfyZZ42RaT9KakcuACEo4nqAsJ/view
    Trillion parameter consortium : https://tpc.dev
    Turbulence Modelling in the age of data: https://www.annualreviews.org/content/journals/10.1146/annurev-fluid-010518-040547
    LinkedIn: https://www.linkedin.com/showcase/micde/

    Chapters

    00:00 Introduction
    09:41 Turbulence Modeling and Machine Learning
    21:30 Surrogate Models and Physics-Informed Neural Networks
    28:42 Foundational Models for Science
    35:23 The Power of Large Language Models
    47:43 Tools for Foundation Models
    48:39 Interfacing with Specialized Agents
    53:31 The Importance of Collaboration
    58:57 The Role of Agents and Solvers
    01:08:26 Balancing AI and Existing Expertise
    01:21:28 Predicting the Future of AI in Fluid Dynamics
    01:23:18 Closing Gaps in Turbulence Modeling
    01:25:42 Achieving Productivity Benefits with Existing Tools

    Takeaways

    -Machine learning is a valuable tool in the development of turbulence modeling and other scientific applications.
    -Data-driven modeling can provide additional insights and improve the accuracy of scientific models.
    -Physics-informed neural networks have potential in solving inverse problems but may not be as effective in solving complex PDEs.
    -Foundational models for science can benefit from a combination of data-driven approaches and physics-based knowledge.
    -Large language models have the potential to assist in scientific discovery and provide valuable insights in various scientific domains. Having a strong foundation in the domain of study is crucial before applying AI techniques.
    -Collaboration between academia, tech companies, and startups is necessary to achieve the vision of a new platform for scientific discovery.
    -Understanding the limitations of AI and managing expectations is important.
    -AI can be a valuable tool for productivity gains and scientific assistance, but it will not replace human expertise.

    Keywords

    #computationalfluiddynamics , #ailearning #largelanguagemodels , #cfd , #supercomputing , #fluiddynamics

  • In this episode, Neil interviews Professor Max Welling, one of the foremost experts in Machine Learning about AI4Science: the use of machine learning and AI to solve challenges in various scientific disciplines. They discuss and debate between data-driven and physics-driven approaches, the potential for foundational models, the importance of open sourcing models and data, the challenges of data sharing in science, and the ethical considerations of releasing powerful models. The conversation covers the role of academia, industry, and startups in driving innovation, with a focus on the field of AI. Professor Welling discusses the advantages and limitations of each sector and shares his experience in academia, big tech companies, and startups. The conversation then shifts to Professor Wellings new company; CuspAI, which focuses on material discovery for carbon capture using metal organic frameworks and machine learning. Prof. Welling provides insights into the potential applications of this technology and the importance of addressing sustainability challenges. The conversation concludes with a discussion on career advice and the future of AI for science.

    Links

    CuspAI : https://www.cusp.ai
    University website: https://staff.fnwi.uva.nl/m.welling/
    Google scholar: https://scholar.google.com/citations?user=8200InoAAAAJ&hl=en
    AI4Science NeurIPS 2023 workshop: https://neurips.cc/virtual/2023/workshop/66548
    AI4Science NeurIPS 2022 workshop: https://nips.cc/virtual/2022/workshop/50019
    Aurora paper: https://arxiv.org/abs/2405.13063

    Chapters

    00:00 Introduction to the Neil Ashton Podcast
    00:39 Guest Introduction: Professor Max Welling
    11:12 Data-Driven vs. Physics-Driven Approaches in Machine Learning for Science
    17:00 Foundational models for science
    23:08 Discussion around Open-Sourcing Models and Data
    29:26 Ethical Considerations in Releasing Powerful Models for Public Use
    33:14 Collaboration and Shared Resources in Addressing Global Challenges
    34:07 The Role of Academia, Industry, and Startups
    43:27 Material Discovery for Carbon Capture
    52:02 Career Advice for Early-stage Researchers
    01:01:07 The Future of AI for Science and Sustainability

    Keywords

    AI for science, machine learning, data-driven approaches, physics-driven approaches, foundational models, open sourcing, data sharing, ethical considerations, blockchain technology, academia, industry, startups, AI, material discovery, carbon capture, metal organic frameworks, machine learning, sustainability, career advice, future of AI for science

  • This episode sets the scene for upcoming discussions on AI4Science with world renowned experts on machine learning. The focus is on using machine learning to solve scientific problems, such as computational fluid dynamics, weather modeling, material design, and drug discovery. The episode introduces the concept of machine learning and its potential to accelerate simulations and predictions. The episode also discusses the differences between machine learning for scientific problems and large language models, and the ongoing debate on incorporating physics into machine learning models.

    Chapters
    00:30 Introduction: AI for Science and Machine Learning
    02:29 The Importance of Computational Fluid Dynamics
    04:53 The Limitations of Physical Testing and Simulation
    05:53 Accelerating Simulations and Predictions with Machine Learning
    09:51 Data-Driven vs Physics-Informed Approaches in Machine Learning
    13:10 The Future of Machine Learning in Science: Foundational Models

  • In this episode of the Neil Ashton podcast, Neil interviews Dr. Chris Rumsey, Research Scientist at NASA Langley Research Center. Chris is one of the main CFD experts at NASA Langley is globally reconised as a leader in CFD, particularly for aeronautical applications. The conversation focuses on computational fluid dynamics (CFD) and turbulence modeling. They discuss Chris's career, his role in public dissemination of CFD methods, and his involvement in the Turbulence Modeling website. They also explore the High Lift Prediction Workshop and the role of machine learning in CFD and turbulence modeling. The conversation provides insights into working at NASA and the challenges and advancements in CFD and turbulence modeling. In this conversation, Neil and Chris Rumsey discuss the progress and challenges in solving the problem of high-lift aerodynamics in aircraft design. They explore the concept of certification by analysis and the role of computational fluid dynamics (CFD) in reducing the need for expensive wind tunnel and flight tests. They also delve into the use of machine learning in CFD and the challenges of reproducibility. The conversation then shifts to conferences, with Neil and Chris sharing their experiences and favorite events. They conclude by discussing career advice for aspiring aerospace professionals and the unique aspects of working at NASA.

    00:00 Introduction to the Neil Ashton podcast
    01:09 Focus on Computational Fluid Dynamics and Turbulence Modeling
    06:51 Chris Rumsey's Journey to NASA
    09:13 From Art to Aeronautical Engineering
    13:08 Transitioning to Turbulence Modeling
    15:34 The Origins of the Turbulence Modeling Website
    20:40 Verification and Validation in Turbulence Modeling
    24:34 The Role of Machine Learning in Turbulence Modeling
    26:00 Advancements in High Lift Prediction
    27:28 Challenges in High Lift Prediction
    28:25 Thoughts on Working at NASA
    29:42 Certification by Analysis: Reducing the Cost of Aircraft Certification
    31:09 The Role of Machine Learning in CFD and Certification by Analysis
    34:03 The Value of Conferences in Networking and Specialized Learning
    40:30 Career Advice for Aspiring Aerospace Professionals
    48:45 Curating and Documenting Knowledge in the Aerospace Community

  • In this episode, Neil speaks to Professor Jack Dongarra, a renowned figure in the supercomputing and high-performance computing (HPC) world. He is a Professor at University of Tennessee as well as a Distinguished Researcher at Oak Ridge National Laboratory (ORNL) and a Turing Fellow at the University of Manchester. He is the inventor of the LINPACK library that is still used today to benchmark the Top 500 list of the most powerful supercomputers and was one of the key people involved in the creation of Message-Passing-Inferface (MPI). They discuss what is HPC, the challenges and opportunities in the field, and the future of HPC. They also touch on the role of machine learning and AI in HPC, the competitiveness of the United States in the field, and potential future technologies in HPC. Professor Dongarra shares his insights and advice based on his extensive experience in the field.

    As part of their discussion they discuss two papers from Prof Dongarra:

    1) High-Performance Computing: Challenges and Opportunities: https://arxiv.org/abs/2203.02544
    2) Can the United States Maintain Its Leadership in High-Performance Computing? - A report from the ASCAC Subcommittee on American Competitiveness and Innovation to the ASCR Office: https://www.osti.gov/biblio/1989107/

    Chapters

    00:00 Introduction
    04:18 Defining HPC and its Impact
    08:11 Challenges and Opportunities in HPC
    28:20 The Competitiveness of the United States in HPC
    44:31 The Future of HPC: Technologies and Innovations
    49:30 Insights and Advice from Professor Jack Dongarra

  • In this episode, Neil interviews Pat Symonds, one of the most well known and respected engineers in Formula One. They discuss Pat's career in engineering, his time in Formula One, and the evolution of the sport. Pat shares insights into his early motivations, his work with different teams, and the challenges he faced. They also touch on the growth of Motorsport Valley in the UK and the potential for Formula One teams to be based in other countries. In this conversation, Pat discusses his experience in Formula One and the challenges of being a technical director. He emphasizes the importance of continuous learning and the ability to make compromises in order to achieve success. He shares insights into the culture at Williams and Benetton and how it impacted their success. Additionally, he discusses the future of Formula One, including the use of AI and ML, the potential shift towards sustainable fuels, and the role of motor manufacturers.

  • In this episode I speak to Prof Juan J. Alonso on his vision of the future of computational science as well as his journey from academia to entrepreneurship - founding Luminary Cloud. He reflects on the revolutions in computational science and the different ways of developing software throughout his career. Alonso emphasizes the importance of academia in creating and perpetuating knowledge, as well as the value of innovation and new ideas. He also discusses the changes in the CFD world, the emergence of new technologies like GPU computing and cloud computing, and the potential for advancements in computational simulations for analysis and design. We also touch on the transition of the aerospace industry towards commercial software and the potential for cloud computing to revolutionize CFD. The conversation concludes with a discussion on the progress made towards achieving the goals outlined in the 2030 CFD vision report and the role of machine learning and AI in simulation-driven workflows.

    In this final part of the conversation, Juan discusses the potential applications of ML and AI in engineering. He identifies four main areas where these technologies can be beneficial, but emphasizes that these applications will always be based on high-fidelity simulations. He concludes by envisioning the future of computational-driven science and the continued innovation in the field.

    You can check out Luminary Cloud at https://www.luminarycloud.com and Prof Alonso's Stanford research at: https://adl.stanford.edu


    06:00 Introduction and Background
    09:11 Early Interest in Aerospace Engineering
    12:13 From Academia to Industry
    15:11 Decision to Stay in Academia
    17:11 Balancing Fundamental Science and Applied Research
    22:14 Early Aims and Focus on High Performance Computing
    29:18 Emergence of GPU Computing and Cloud Computing
    32:23 Conditions for Innovation and Entrepreneurship
    35:01 The Importance of the Bay Area
    35:37 Challenges and Requirements in Developing Solvers
    41:00 The Role of the Bay Area in Attracting Computational Science Talent
    44:16 The Difficulty and Respect for Building High-Quality Commercial Software
    47:03 The Transition of the Aerospace Industry towards Commercial Software
    49:30 The Potential of Cloud Computing in Revolutionizing CFD
    53:59 Progress towards the Goals of the 2030 CFD Vision Report
    01:00:53 The Role of Machine Learning and AI in Simulation-Driven Workflows
    01:04:01 Applications of ML and AI in Engineering
    01:05:36 Optimization and Design Optimization with ML and AI
    01:06:04 Outer Loops and Uncertainty Quantification
    01:07:04 Digital Twin Frameworks and Constant Retraining
    01:12:36 The Value of Open-Source Codes in Academia
    01:16:19 Challenges of Integrating Commercial Tools with Research
    01:25:20 The Future of Computational-Driven Science
    01:29:01 Continued Innovation and Replacement of Physical Experimentation

  • In this conversation, Neil interviews Dimitris Katsanis, one of the world leading experts in bike design. They discuss the UCI regulations that govern bike design for road and track racing. Dimitris explains the evolution of bike design and the role of carbon fiber and titanium in creating lightweight and aerodynamic bikes. He also talks about his collaboration with Pinarello and the development of the Dogma F8 and F10 bikes.

    Dimitris emphasizes the importance of balancing weight, stiffness, and aerodynamics in bike design and the ongoing pursuit of improvement in the field. In this part of the conversation, Dimitris Katsanis discusses the evolution of bike design, the importance of aerodynamics and system drag reduction, the differences between track and road bike design, the interactions between the bike and rider, the impact of weight and aerodynamics in solo breakaways, the ongoing weight vs. aero debate, the role of stiffness in bike design, the relationship between stiffness and comfort in bike frames, and the potential of 3D printing and additive manufacturing in bike manufacturing.

    In this conversation, we also discuss the limitations of carbon fiber in bike design and the potential of 3D printing to overcome these limitations. He explains how 3D printing allows for the creation of custom shapes and internal structures that can improve the performance and weight of bike components. Katsanis shares examples of 3D printed handlebars and frames that are lighter than their carbon fiber counterparts. He also discusses the future of mass customization in bike design and the impact of regulations on innovation.

    Finally, he speculates on what bikes may look like in the future if design restrictions were lifted.

    Chapters

    06:40 Introduction and Background
    11:10 UCI Regulations and Bike Design
    17:48 Evolution of Bike Design and UCI Regulations
    25:27 Influence of Weight and Aerodynamics on Bike Performance
    32:01 Pushing the Limits of Aerodynamics
    37:16 Yaw Sensitivity and Aerofoil Sections
    40:53 Continual Improvement in Bike Design
    42:25 The Evolution of Bike Design
    42:51 Aerodynamics and System Drag Reduction
    44:21 Track vs. Road Bike Design
    47:05 Interactions Between Bike and Rider
    48:02 The Importance of Aero in Solo Breakaways
    53:00 Weight vs. Aero Debate
    56:00 The Impact of Weight on Performance
    58:04 The Role of Stiffness in Bike Design
    01:04:01 Stiffness and Comfort in Bike Frames
    01:11:56 Materials in Bike Design: Steel, Aluminum, Titanium, and Carbon Fiber
    01:18:08 The Potential of 3D Printing and Additive Manufacturing
    01:19:45 The Limitations of Carbon Fiber
    01:21:41 The Potential of 3D Printing
    01:24:10 The Surprising Lightness of 3D Printed Titanium
    01:28:02 The Future of Mass Customization
    01:34:06 The Impact of Regulations on Bike Design
    01:43:09 Speculating on the Bike of the Future

  • Summary

    In this episode, Neil discusses four key career questions that you should think about. He explores the pros and cons of pursuing a PhD, the path to becoming a professor, and the opportunities in the tech sector. He highlights the importance of gaining industry experience and the potential for higher salaries in the tech sector. Neil also mentions the option of dual positions, where academics work in both academia and industry. Overall, he encourages listeners to consider all the options and make informed decisions about their careers.

    Takeaways

    Doing a PhD can provide expertise and specialization in a specific area, but it may delay entry into the job market and result in lower initial salaries.
    Becoming a professor requires a PhD and often involves postdoctoral research positions. Advancement to higher ranks, such as associate professor and full professor, requires publishing, securing funding, and taking on leadership roles.
    The tech sector offers high-paying jobs and opportunities for engineers, particularly in areas like machine learning and data science. Tech companies value both academic and industry experience.
    Consider the trade-offs between academia and industry, such as job security, work-life balance, and the level of freedom and autonomy.
    Dual positions, where academics work in both academia and industry, are becoming more common and offer the best of both worlds.

    Timestamps
    00:00 Introduction
    05:22 Question 1: PhD or no PhD
    09:19 Question 2: How do I become a Professor?
    23:10 Question 3: Academia or Industry?
    31:00 Question 4: The third alternative - tech sector (Amazon, Google, META, Nvidia, Microsoft etc)
    38:38 Dual Positions: Bridging the Gap Between Academia and Industry
    41:00 Conclusions

  • Professor Tony Purnell discusses his journey from a passion for motor racing and engineering in his youth to founding and leading Pi Research, a company specializing in race car electronics. He shares his experiences at university, including a Kennedy Scholarship to MIT, and his early career in the motor racing industry. Tony also explains how Pi Research expanded into the automotive industry and eventually caught the attention of Ford, leading to the company's acquisition. His story highlights the importance of passion, perseverance, and seizing opportunities in pursuing a successful career. Tony shares his experiences in the world of Formula One, from Ford's interest in buying the team to his role in restructuring the Aero department at Jaguar. He discusses the challenges he faced and the politics and dishonesty he encountered in the industry. Tony also reflects on the stress and burnout he experienced and the difficulties he had working with Red Bull.
    He highlights the contrasting views of Max Mosley and Bernie Ecclestone on the future of Formula One and the changes that occurred under Liberty Media's ownership. In this conversation, Tony discusses his experiences in Formula One and British Cycling. He talks about the challenges of managing Formula One and the difficulties faced by organizations like Toyota in adapting to the sport. He also shares his reasons for leaving the FIA, including the Max Mosley sex scandal. He highlights the innovations he contributed to Formula One, such as the introduction of adjustable ride height and the DRS system. He discusses the politics and paranoia in Formula One and the importance of working with manufacturers. He then transitions to his role in British Cycling, where he emphasizes the impact of engineering on the sport. Tony expresses his concerns about the increasing technicality of cycling and the need to balance technology with talent. He concludes by offering advice for aspiring engineers, emphasizing the importance of following dreams. Enjoy!

  • Florian Menter discusses his journey in the field of computational fluid dynamics (CFD) and the development of the K-Omega SST model. He shares his experiences working at NASA Ames and the collaborative environment in the CFD community. Florian also talks about his decision to return to Germany and his role in the early days of what would be become ANSYS. Florian Menter discusses the birth and development of the SST turbulence model, the challenges of transition modeling, and the future of RANS models. He also explores the potential of machine learning in CFD and shares advice for young researchers. The conversation highlights the importance of pursuing valuable ideas, keeping things simple, and envisioning the outcome of one's work.