Daniel Reid Cahn

Thinking Machines: AI & Philosophy

“Thinking Machines,” hosted by Daniel Reid Cahn, bridges the worlds of artificial intelligence and philosophy - aimed at technical audiences. Episodes explore how AI challenges our understanding of topics like consciousness, free will, and morality, featuring interviews with leading thinkers, AI leaders, founders, machine learning engineers, and philosophers. Daniel guides listeners through the complex landscape of artificial intelligence, questioning its impact on human knowledge, ethics, and the future. We talk through the big questions that are bubbling through the AI community, covering to...

Autor

Daniel Reid Cahn

Kategorie

Technology

Podcast-Website

thinkingmachinespodcast.com

Neueste Folge

30. Sep 2025

Wo hören?

Podcasts in der App Replaio Radio Bald verfügbar

Podcasts kommen bald in die App. Installiere sie jetzt und erlebe als Erster einen ganz neuen Blick auf Podcasts

Bei Google Play herunterladen Kostenlos installieren Android 5 Mio.+ Downloads · Bewertung 4,8 iOS bald

Folgen

AI Therapy: An Open Conversation with Therapists 30.09.2025

(Cross-posted from Fit Check)  The mental health field is facing an unexpected disruption: AI is already the largest provider of mental health support in the US, with hundreds of millions using tools like ChatGPT for emotional guidance—whether the technology was designed for it or not. In this AMA, I sit down with Dr. Rachel Wood (licensed counselor with a PhD in cyberpsychology and founder of the...

AI Therapy with Slingshot's Derrick Hull 17.03.2025

“Everyone should go to therapy.” It’s a common statement, but much harder to achieve than it looks. There’s only one therapist for every 10K would-be clients, and the gap is only growing every year. That gap is what my latest guest - Dr. Derrick Hull - has spent his career trying to fix. Now serving as the founding Clinical Lead at Slingshot AI, Derrick previously led Clinical R&D at Talkspace...

What if we could cure loneliness? Philosophy, dopamine, and more with Mark Ungless 26.02.2025

Artificial neural networks were designed to emulate the human brain - and their insane performance on a wide range of tasks is pretty good evidence to support the comparison. Well, it's a bit more complicated than that, at least according to my guest Mark Ungless, former neuroscience lecturer at Imperial and Oxford and current Director of AI at the UK's Mental Health Innovations. Mark and I have c...

Does Philosophy Make Progress? Chatting with Every's Dan Shipper 23.01.2025

Is the AI revolution we're experiencing going to push us into a future we can't imagine? Or will the pace of progress enable us to adjust along the way? Dan Shipper spends his time thinking and writing on these topics (and many others) as the founder and CEO of Every Media, a technology-focused publication trying to understand the future. Dan is also a lifelong coder and entrepreneur with a backgr...

OpenAI o1: Another GPT-3 moment? 18.10.2024

GPT-3 didn't have much of a splash outside of the AI community, but it foreshadowed the AI explosion to come. Is o1 OpenAI's second GPT-3 moment? Machine Learning Researchers Guilherme Freire and Luka Smyth discuss OpenAI o1, it's impact, and it's potential. We discuss early impressions of o1, why inference-time compute and reinforcement learning matter in the LLM story, and the path from o1 to AI...

The Future is Fine Tuned (with Dev Rishi, Predibase) 24.05.2024

Dev Rishi is the founder and CEO of Predibase, the company behind Ludwig and LoRAX. Predibase just released LoRA Land , a technical report showing 310 models that can outcompete GPT-4 on specific tasks through fine-tuning. In this episode, Dev tries (pretty successfully) to convince me that fine-tuning is the future, while answering a bunch of interesting questions, like: Is fine-tuning hard? If L...

Pre-training LLMs: One Model To Rule Them All? with Talfan Evans, DeepMind 18.05.2024

Talfan Evans is a research engineer at DeepMind, where he focuses on data curation and foundational research for pre-training LLMs and multimodal models like Gemini. I ask Talfan:  Will one model rule them all? What does "high quality data" actually mean in the context of LLM training? Is language model pre-training becoming commoditized? Are companies like Google and OpenAI keeping their AI secre...

On Adversarial Training & Robustness with Bhavna Gopal 08.05.2024

"Understanding what's going on in a model is important to fine-tune it for specific tasks and to build trust." Bhavna Gopal is a PhD candidate at Duke, research intern at Slingshot with experience at Apple, Amazon and Vellum. We discuss How adversarial robustness research impacts the field of AI explainability. How do you evaluate a model's ability to generalize? What adversarial attacks should we...

On Emotionally Intelligent AI (with Chris Gagne, Hume AI) 19.04.2024

Chris Gagne manages AI research at Hume, which just released an expressive text-to-speech model in a super impressive demo. Chris and Daniel discuss AI and emotional understanding: How does “prosody” add a dimension to human communication? What is Hume hoping to gain by adding it to Human-AI communication? Do we want to interact with AI like we interact with humans? Or should the interaction model...

Why Greatness Cannot Be Planned (with Joel Lehman) 22.03.2024

Former OpenAI Research Scientist Joel Lehman joins to discuss the non-linear nature of technological progress and the present day implications of his book, Why Greatness Cannot Be Planned . Joel co-authored the book with Kenneth Stanley back in 2015. The two did ML research at OpenAI, Uber, and the University of Central Florida and wrote the book based on insights from their work. We discuss: AI t...

Where are the good AI products? (with Varun Shenoy) 12.03.2024

“Where are the good AI products?” asks Varun Shenoy, ML engineer in his latest blog post . Varun and I talk through: What are the cool applications that exist? Why aren't there more of them? What do (the few) good AI application companies have in common? What technological or societal leaps are blocking the existence of more AI apps that matter? The optimist case and the pessimist case for the nea...

The End of RAG (with Donato Riccio) 09.02.2024

ML Engineer and tech writer Donato Riccio wrote an article entitled "The End of RAG?" discussing what might replace Retrieval Augmented Generation in the near future. The article was received as highly controversial within the AI echo chamber, so I brought Donato on the podcast to discuss RAG, why people are so obsessed with vector databases, and the upcoming research in AI that might replace it....

GPUs and how the cloud is changing (with Cedana Founder, Neel Master) 02.02.2024

What’s going on with GPUs? We talk through the GPU bottleneck/supply gut, Meta’s apparent 600,000 H100-equivalents and the future of the GPU cloud. Neel Master is the CEO and founder of Cedana , enabling pause/migrate/resume for compute jobs. Neel is a serial entrepreneur, former founder of Engooden and angel investor. He started his career in ML research at MIT's CSAIL. Topics from this podcast i...

Live Video Translation with AI 22.01.2024

Founders of Lingopal, Deven Orie and Casey Schneider, join to talk about their startup story, developing real-time translation software for enterprises. Topics include: Why is translation so hard? How are enterprise and consumer AI products different (e.g. Google Translate vs Lingopal)? Should AI product companies be doing AI research? Is it safe to rely on open source? Share your thoughts with us...

Is open-source AI safe? (with SafeLlama founder, Enoch Kan) 12.01.2024

Founder of the SafeLlama community, Enoch Kan joins us today, to talk about safety in open source and medical AI. Enoch previously worked in AI for radiology, focused on mammography at Kheiron Medical. Enoch is an open source contributor, and his substack is called Cross Validated. Key topics they discuss include: New jailbreaks for LLMs appear every day. Does it matter? How do internet firewalls...

What is the future of AI-assisted or AI-driven software? 05.01.2024

Join Daniel Cahn on another SlingTalk episode with Kristian Freed (ex-CTO at Pariti and Elder), discussing the past, present and future of AI-assisted or AI-driven software. They talked about: The Evolution of Coding Tools: From basic text editors to advanced IDEs and the integration of AI tools like Co-Pilot. The Impact of AI on Software Development Practices: How AI is reshaping the way code is...

Is the Turing Test Outdated? 15.12.2023

In 1950, Alan Turing asked, “Can machines think?” He suggested the Imitation Game as a test to evaluate whether a machine can think, more commonly called the “Turing Test.” Today we ask, is the Turing Test outdated? Joining Slingtalks this week are Kristian Freed & Guilherme Freire, founding engineers at Slingshot. Guilherme argues against the Turing Test, Kristian argues in favor. Key topics...

Prompt Engineering 08.12.2023

Join Daniel Cahn on SlingTalks as he welcomes Jonathan Pedoeem (Founder of PromptLayer) to talk through Prompt Engineering. This episode offers an in-depth look into the past, present, and future of prompt engineering and the intricacies of crafting effective AI prompts. Key topics they discuss include: Is prompt engineering more art or more science? The role of “prompt engineer” and whether promp...

AI for Investment Diligence 24.11.2023

Adam Kirsh (Head of Product & Engineering, Stealth Startup) joins Slingshot to talk about how AI is transforming investment due diligence. Beyond AI in diligence, we discuss: “Horizontal” and “vertical” business models, that start from a point solution Building products vs. building relationships, and on being an AI partner for the enterprise AI-native startups and the reinvention of business...

The Myth of Human-in-the-Loop 15.11.2023

Ex-Datadog Founding PM, Ayush Kapur, joins Daniel Cahn on SlingTalks to talk through the overloaded term, "Human in the Loop". They hone in on the impact of both, emotional and philosophical aspects of human interactions, for instance, your interaction with a doctor, and how those services can be considered irreplaceable by AI. Key topics include: Human-in-the-loop as human review vs. partially au...

AI-Generated Content and the Boring Apocalypse 08.11.2023

AI is increasingly doing the heavy lifting in our communications and content generation. On this episode, Guilherme Freire, Founding ML Engineer at Slingshot, joins the podcast to discuss the impact of AI-generated content. Some of the topics discussed: “Proof of Work” for humans, when AI makes personalization and connection too easy Potential for subpar AI-generated to put high-quality content cr...

Programming for Machine Learning (Tech Talk) 30.10.2023

Daniel hosts our machine learning research intern and Cambridge Masters student, Andy Lo, to talk about the present and future of ML programming. Topics include: PyTorch vs. TensorFlow vs. Jax vs MoJo No-code, low-code and pro-code for ML engineers The (frustrating) world of debugging ML code Have thoughts? We'd love to hear them! Drop an email at hello@slingshot.xyz or reach out on Twitter: @slin...

AI's End of History Illusion 25.10.2023

In this episode, Daniel shares his perspective on the opportunities for the next wave of AI-native startups. Machine Learning isn’t just about sentiment classification, churn prediction, and revenue forecasting anymore. Generative models can simulate real intelligence. But hard problems continue to require hard solutions, and prompt engineering with retrieval augmented generation won’t be nearly e...

Design Driven Development at Slingshot 16.10.2023

Daniel hosts our Founding Engineer, Edwin Zhang to unravel the balance in Design Driven Developments. Key things they cover: The conundrums faced when balancing user wants with real, valuable needs - showcasing our stance on "Doing what people need, not just what they want." A peek into the futuristic vision of browsers like Arc and how we regard the Browser Company. The harmonious dance between e...

LLM Inference Speed (Tech Deep Dive) 06.10.2023

In this tech talk, we dive deep into the technical specifics around LLM inference. The big question is: Why are LLMs slow? How can they be faster? And might slow inference affect UX in the next generation of AI-powered software? We jump into: Is fast model inference the real moat for LLM companies? What are the implications of slow model inference on the future of decentralized and edge model infe...

Höre den Podcast Thinking Machines: AI & Philosophy in Replaio

Radio und Podcasts in einer App - kostenlos und ohne Anmeldung. Installiere sie noch heute und verpasse den Start nicht

Bei Google Play herunterladen

Replaio ist kein Herausgeber von Podcasts; die Namen der Sendungen, Cover und Audioinhalte gehören ihren Autoren und werden über öffentliche RSS-Feeds verbreitet