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  • Machine Learning Guide
    Machine Learning Guide

    1

    Machine Learning Guide

    OCDevel

  • The AI Daily Brief: Artificial Intelligence News and Analysis
    The AI Daily Brief: Artificial Intelligence News and Analysis

    2

    The AI Daily Brief: Artificial Intelligence News and Analysis

    Nathaniel Whittemore

  • The Intersect of Tech and Art
    The Intersect of Tech and Art

    3

    The Intersect of Tech and Art

    Juergen Berkessel

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    Talks at Climind

    4

    Talks at Climind

    Climind

  • TBPN
    TBPN

    5

    TBPN

    John Coogan & Jordi Hays

  • Tierra de Hackers
    Tierra de Hackers

    6

    Tierra de Hackers

    Martin Vigo

  • TikTok
    TikTok

    7

    TikTok

    Catarina Vieira

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    Technology
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    Updated twice weekly

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    Business
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    Weekly series

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    Technology
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  • SuperBox

    1 DAY AGO

    1

    SuperBox

    What if there was a device which gave you endless movies and TV shows without ads? Ok great sign me up! In this episode we interview “D3ada55”, who found such a device, but as she gazed into it, she discovered it gazing back at her. SponsorsSupport for this show comes from ThreatLocker®. ThreatLocker® is a Zero Trust Endpoint Protection Platform that strengthens your infrastructure from the ground up. With ThreatLocker® Allowlisting and Ringfencing™, you gain a more secure approach to blocking exploits of known and unknown vulnerabilities. ThreatLocker® provides Zero Trust control at the kernel level that enables you to allow everything you need and block everything else, including ransomware! Learn more at www.threatlocker.com. This episode is sponsored by Meter, the company building networks from the ground up. Meter delivers a complete networking stack - wired, wireless, and cellular - in one solution that’s built for performance and scale. Alongside their partners, Meter designs the hardware, writes the firmware, builds the software, manages deployments, and runs support. Learn more at meter.com. This episode is sponsored by Exaforce. Exaforce was created to handle the complete security operations workflow - detect, triage, investigate, respond. Exabots autonomously manage every stage, eliminating gaps between alert and action that slow down traditional security operations. And how it works is simple too: the exabots ingest all security data and then semantically connects it to understand the full context of security events and how they relate to each other. Learn more at exaforce.com/darknet-diaries.

    1 day ago

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    1hr 28min
  • MLG 002 Difference Between Artificial Intelligence, Machine Learning, Data Science

    SEASON 1, EPISODE 2

    2

    MLG 002 Difference Between Artificial Intelligence, Machine Learning, Data Science

    Artificial intelligence is the automation of tasks that require human intelligence, encompassing fields like natural language processing, perception, planning, and robotics, with machine learning emerging as the primary method to recognize patterns in data and make predictions. Data science serves as the overarching discipline that includes artificial intelligence and machine learning, focusing broadly on extracting knowledge and actionable insights from data using scientific and computational methods. Links Notes and resources at ocdevel.com/mlg/2 Try a walking desk - stay healthy & sharp while you learn & code Track privacy-first web traffic with OCDevel Analytics. Data Science Overview Data science encompasses any professional role that deals extensively with data, including but not limited to artificial intelligence and machine learning. The data science pipeline includes data ingestion, storage, cleaning (feature engineering), and outputs in data analytics, business intelligence, or machine learning. A data lake aggregates raw data from multiple sources, while a feature store holds cleaned and transformed data, prepared for analysis or model training. Data analysts and business intelligence professionals work primarily with data warehouses to generate human-readable reports, while machine learning engineers use transformed data to build and deploy predictive models. At smaller organizations, one person ("data scientist") may perform all data pipeline roles, whereas at large organizations, each phase may be specialized. Wikipedia: Data Science describes data science as the interdisciplinary field for extracting knowledge and insights from structured and unstructured data. Artificial Intelligence: Definition and Sub-disciplines Artificial intelligence (AI) refers to the theory and development of computer systems capable of performing tasks that typically require human intelligence, such as visual perception, speech recognition, decision-making, and language translation. (Wikipedia: Artificial Intelligence) The AI discipline is divided into subfields: Reasoning and problem solving Knowledge representation (such as using ontologies or knowledge graphs) Planning (selecting actions in an environment, e.g., chess- or Go-playing bots, self-driving cars) Learning Natural language processing (simulated language, machine translation, chatbots, speech recognition, question answering, summarization) Perception (AI perceives the world with sensors; e.g., cameras, microphones in self-driving cars) Motion and manipulation (robotics, transforming decisions into physical actions via actuators) Social intelligence (AI tuned to human emotions, sentiment analysis, emotion recognition) General intelligence (Artificial General Intelligence, or AGI: a system that generalizes across all domains at or beyond human skill) Applications of AI include autonomous vehicles, medical diagnosis, creating art, proving theorems, playing strategy games, search engines, digital assistants, image recognition, spam filtering, judicial decision prediction, and targeted online advertising. AI has both objective definitions (automation of intellectual tasks) and subjective debates around the threshold for "intelligence." The Turing Test posits that if a human cannot distinguish an AI from another human through conversation, the AI can be considered intelligent. Weak AI targets specific domains, while general AI aspires to domain-independent capability. AlphaGo Movie depicts the use of AI planning and learning in the game of Go. Machine Learning: Within AI Machine learning (ML) is a subdiscipline of AI focused on building models that learn patterns from data and make predictions or decisions. (Wikipedia: Machine Learning) Machine learning involves feeding data (such as spreadsheets of stock prices) into algorithms that detect patterns (learning phase) and generate models, which are then used to predict future outcomes. Although ML started as a distinct subfield, in recent years it has subsumed many of the original AI subdisciplines, becoming the primary approach in areas like natural language processing, computer vision, reasoning, and planning. Deep learning has driven this shift, employing techniques such as neural networks, convolutional networks (image processing), and transformers (language tasks), allowing generalizable solutions across multiple domains. Reinforcement learning, a form of machine learning, enables AI systems to learn sequences of actions in complex environments, such as games or real-world robotics, by maximizing cumulative rewards. Modern unified ML models, such as Google's Pathways and transformer architectures, can now tackle tasks in multiple subdomains (vision, language, decision-making) with a single framework. Data Pipeline and Roles in Data Science Data engineering covers obtaining and storing raw data from various data sources (datasets, databases, streams), aggregating into data lakes, and applying schema or permissions. Feature engineering cleans and transforms raw data (imputation, feature transformation, selection) for machine learning or analytics. Data warehouses store column-oriented, recent slices of data optimized for fast querying and are used by analysts and business intelligence professionals. The analytics branch (data analysts, BI professionals) uses cleaned, curated data to generate human insights and reports. Data analysts apply technical and coding skills, while BI professionals often use specialized tools (e.g., Tableau, Power BI). The machine learning branch uses feature data to train predictive models, automate decisions, and in some cases, trigger actions (robots, recommender systems). The role of a "data scientist" can range from specialist to generalist, depending on team size and industry focus. Historical Context of Artificial Intelligence Early concepts of artificial intelligence appear in Greek mythology (automatons) and Jewish mythology (Golems). Ramon Lull in the 13th century and Leonardo da Vinci constructed early automatons. Contributions: Thomas Bayes (probability inference, 1700s) George Boole (logical reasoning, binary algebra) Gottlob Frege (propositional logic) Charles Babbage and Ada Byron/Lovelace (Analytical Engine, 1832) Alan Turing (Universal Turing Machine, 1936; foundational ideas on computing and AI) John von Neumann (Universal Computing Machine, 1946) Warren McCulloch, Walter Pitts, Frank Rosenblatt (artificial neurons, perceptron, foundation of connectionist/neural net models) John McCarthy, Marvin Minsky, Arthur Samuel, Oliver Selfridge, Ray Solomonoff, Allen Newell, Herbert Simon (Dartmouth Workshop, 1956: "AI" coined) Newell and Simon (Heuristics, General Problem Solver) Feigenbaum (expert systems) GOFAI/symbolism (logic- and knowledge-based systems) The "AI winter" followed the Lighthill report (1970s) due to overpromising and slow real-world progress. AI resurgence in the 1990s was fueled by advances in computation, increased availability of data (the era of "big data"), and improvements in neural network methodologies (notably Geoffrey Hinton's optimization of backpropagation in 2006). The 2010s saw dramatic progress, with companies such as DeepMind (acquired by Google in 2014) achieving state-of-the-art results in reinforcement learning and general AI research. The Sub-disciplines of AI and other resources: AI on Wikipedia Machine Learning on Wikipedia Data Science on Wikipedia Further Learning Resources Artificial Intelligence (Wikipedia) Machine Learning (Wikipedia) Data Science (Wikipedia) AlphaGo Movie AI Sub-disciplines

    S1, E2

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    1hr 5min
  • #490 – State of AI in 2026: LLMs, Coding, Scaling Laws, China, Agents, GPUs, AGI

    1 FEB

    3

    #490 – State of AI in 2026: LLMs, Coding, Scaling Laws, China, Agents, GPUs, AGI

    Nathan Lambert and Sebastian Raschka are machine learning researchers, engineers, and educators. Nathan is the post-training lead at the Allen Institute for AI (Ai2) and the author of The RLHF Book. Sebastian Raschka is the author of Build a Large Language Model (From Scratch) and Build a Reasoning Model (From Scratch). Thank you for listening ❤ Check out our sponsors: https://lexfridman.com/sponsors/ep490-sc See below for timestamps, transcript, and to give feedback, submit questions, contact Lex, etc. Transcript: https://lexfridman.com/ai-sota-2026-transcript CONTACT LEX: Feedback – give feedback to Lex: https://lexfridman.com/survey AMA – submit questions, videos or call-in: https://lexfridman.com/ama Hiring – join our team: https://lexfridman.com/hiring Other – other ways to get in touch: https://lexfridman.com/contact SPONSORS: To support this podcast, check out our sponsors & get discounts: Box: Intelligent content management platform. Go to https://box.com/ai Quo: Phone system (calls, texts, contacts) for businesses. Go to https://quo.com/lex UPLIFT Desk: Standing desks and office ergonomics. Go to https://upliftdesk.com/lex Fin: AI agent for customer service. Go to https://fin.ai/lex Shopify: Sell stuff online. Go to https://shopify.com/lex CodeRabbit: AI-powered code reviews. Go to https://coderabbit.ai/lex LMNT: Zero-sugar electrolyte drink mix. Go to https://drinkLMNT.com/lex Perplexity: AI-powered answer engine. Go to https://perplexity.ai/ OUTLINE: (00:00) – Introduction (01:39) – Sponsors, Comments, and Reflections (16:29) – China vs US: Who wins the AI race? (25:11) – ChatGPT vs Claude vs Gemini vs Grok: Who is winning? (36:11) – Best AI for coding (43:02) – Open Source vs Closed Source LLMs (54:41) – Transformers: Evolution of LLMs since 2019 (1:02:38) – AI Scaling Laws: Are they dead or still holding? (1:18:45) – How AI is trained: Pre-training, Mid-training, and Post-training (1:51:51) – Post-training explained: Exciting new research directions in LLMs (2:12:43) – Advice for beginners on how to get into AI development & research (2:35:36) – Work culture in AI (72+ hour weeks) (2:39:22) – Silicon Valley bubble (2:43:19) – Text diffusion models and other new research directions (2:49:01) – Tool use (2:53:17) – Continual learning (2:58:39) – Long context (3:04:54) – Robotics (3:14:04) – Timeline to AGI (3:21:20) – Will AI replace programmers? (3:39:51) – Is the dream of AGI dying? (3:46:40) – How AI will make money? (3:51:02) – Big acquisitions in 2026 (3:55:34) – Future of OpenAI, Anthropic, Google DeepMind, xAI, Meta (4:08:08) – Manhattan Project for AI (4:14:42) – Future of NVIDIA, GPUs, and AI compute clusters (4:22:48) – Future of human civilization

    1 Feb

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  • Formula 1

    2 MAR

    4

    Formula 1

    Formula 1 is three competitions in one: a 200mph battle of the world's best race car drivers, the world cup of engineering where thousand-person teams spend hundreds of millions designing cars from scratch, and — as one of our listeners perfectly put it — the “Real Housewives of the Garage”, a soap opera of billionaire egos, team politics, and paddock drama that makes for incredible reality television. It's also the world's most popular annual sporting series with over 827 million fans globally — a fact that would shock most Americans, who until a recent viral Netflix series had barely heard of it. Today we tell the story of how a chaotic, deadly, and gloriously dysfunctional European racing series became one of the greatest business stories in sports. For decades, brilliant engineers and daredevil drivers dedicated their lives (and too often lost them) to a league controlled for 45 years by a single man: a former London car dealer named Bernie Ecclestone, who centralized power and extracted billions, while also undeniably single-handedly making the sport successful. Then, in a move no one saw coming, the American company Liberty Media bought the whole thing in 2017, installed a team of Fox Sports and ESPN veterans, and did what Bernie never would — professionalized it. All of a sudden famously money-losing F1 teams turned into real businesses, with the average team valuation today clocking in at an astounding $3.6 billion. Buckle up for one of our most-requested episodes: the wild story of Formula 1. Sponsors: Many thanks to our fantastic Spring '26 Season partners: J.P. Morgan PaymentsServiceNowVercelStatsigLinks: Sign up for email updates and vote on future episodes!The Formula by Joshua Robinson and Jonathan CleggDrive to Survive on NetflixF1 The Movie on Apple TVAdrian Newey, How to Build a CarSenna documentaryWorldly Partners' Multi-Decade Formula One StudyAll episode sourcesCarve Outs: Cirque du Soleil EchoSuper Bowl LX Mic'd UpTonalPrincess Peach: Showtime! on Nintendo SwitchDaloopa for historical financial dataMore Acquired: Get email updates and vote on future episodes!Join the SlackSubscribe to ACQ2Check out the latest swag in the ACQ Merch Store!00:00:00 Intro00:05:52 Origins of F1: Britain, Italy, and Monaco00:30:43 Bernie's Entrance00:37:42 Bernie Consolidates Power00:50:33 F1 as a Global TV Sport (Except America)01:08:08 F1's Incredible Engineering Achievements01:19:34 Senna's Crash and a New Era for Safety01:33:18 The Many Owners of F1, and Bernie's Liquidity Drama01:57:48 FOTA: The attempted breakaway series02:05:07 RedBull, Mercedes, and Reinventing the Sport02:42:33 Liberty Media buys F1 and Brings it to the Modern Era03:05:03 Drive to Survive03:26:45 Apple, TV Rights, and Success in America03:41:52 F1: The Business Today03:56:23 Analysis: Why Did F1 Work… and Was Bernie Necessary?04:05:40 7 Powers04:08:23 Bear vs. Bull Cases04:16:32 Quintessence04:20:08 Carve-Outs + Outro ‍Note: Acquired hosts and guests may hold assets discussed in this episode. This podcast is not investment advice, and is intended for informational and entertainment purposes only. You should do your own research and make your own independent decisions when considering any financial transactions.

    2 Mar

    •
    4h 30m
  • How Roblox Built a Digital Economy Beneath the Games

    1 APR

    5

    How Roblox Built a Digital Economy Beneath the Games

    David Baszucki, Founder & CEO of Roblox, has quietly built one of the largest & most complex systems on the internet: a real-time, global platform with ~150 million daily active users, 35 billion hours of engagement per quarter, and a $6.8 billion digital economy running on top of massive AI and infrastructure. But Roblox isn’t just scale — it’s a fully functioning economy. The platform has paid out over $1.5 billion to creators, with top 1,000 developers earning over $1.3 million on average, turning games into businesses and players into entrepreneurs. Underneath it all is a deeply engineered system.. 40+ global data centers, hundreds of thousands of servers, and hundreds of AI models powering everything from creation and discovery to safety and real-time interaction. We go deep on how Roblox designed this economy from first principles, why AI will accelerate (not replace) creators, and what it takes to build a platform that blends gaming, social interaction, and entrepreneurship into one system. This is a curious blueprint for the future of the internet & real life where anyone can create, earn, and participate in a global digital world. Subscribe to Sourcery for more conversations with the founders and leaders building the next generation of technology. David Baszucki: https://x.com/DavidBaszucki  Molly O’Shea: https://x.com/MollySOShea  Sourcery: ⁠https://x.com/sourceryy  𝐄𝐏𝐈𝐒𝐎𝐃𝐄 𝐋𝐈𝐍𝐊 YouTube: https://youtu.be/E0xl3PviQh4 𝐒𝐏𝐎𝐍𝐒𝐎𝐑𝐒 • Brex—The modern finance platform, combining the world’s smartest corporate card with integrated expense management, banking, bill pay, & travel. https://brex.com/sourcery • Turing—Turing delivers top-tier talent, data, and tools to help AI labs improve model performance—and enables enterprises to turn those models into powerful, production-ready systems. https://turing.com/sourcery• VCX—VCX is the public ticker for private tech, allowing investors of all sizes to invest in venture capital. View The Portfolio at https://GetVCX.com   • Deel—Deel is the global people platform that helps startups hire, manage, pay, and equip anyone, anywhere. Trusted by more than 35,000 fast-growing companies, Deel is the people platform that just works, so teams can scale without the chaos. Visit: https://www.deel.com/sourcery • Public–Investing platform Public just launched Generated Assets, which lets you turn any idea into an investable index with AI. With Generated Assets, you can build, backtest, refine, and invest in any thesis with AI. Gone are the days of one-size-fits-all ETFs. https://public.com/sourcery  • Merge—The leading provider of customer-facing integrations and agentic tools for frontier LLMs, Fortune 500 organizations, and B2B SaaS companies. Visit https://merge.dev  Follow Sourcery for the latest updates! https://www.sourcery.vc/ Disclosure Paid Endorsement. Brokerage services by Open to the Public Investing Inc, member FINRA & SIPC. Advisory services by Public Advisors LLC, SEC-registered adviser. Crypto trading provided by Zero Hash LLC, licensed by the NYSDFS. Generated Assets is an interactive analysis tool by Public Advisors. Output is for informational purposes only and is not an investment recommendation or advice. See disclosures at public.com/disclosures/ga. Matched funds must remain in your account for at least 5 years. Match rate and other terms are subject to change at any time. 𝐓𝐈𝐌𝐄𝐒𝐓𝐀𝐌𝐏𝐒 (00:00) David Baszucki, Co-Founder & CEO at Roblox (01:21) A spicy start (03:53) The 10% global gaming ambition (05:40) The early vision that built Roblox (07:45) Vision vs metrics (09:08) The most underrated part of Roblox (10:55) Why Roblox data matters for AI (12:55) The future of AI-powered games (16:27) AI won’t replace creators (20:46) Virtual concerts and the future of AR/VR (22:28) What “4D gaming” actually means (24:29) Staying relevant across generations (27:00) The viral engine (27:58) Lessons on human behavior

    1 Apr

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    50 min
  • MLG 005 Linear Regression

    SEASON 1, EPISODE 5

    6

    MLG 005 Linear Regression

    Linear regression is introduced as the foundational supervised learning algorithm for predicting continuous numeric values, using cost estimation of Portland houses as an example. The episode explains the three-step process of machine learning - prediction via a hypothesis function, error calculation with a cost function (mean squared error), and parameter optimization through gradient descent - and details both the univariate linear regression model and its extension to multiple features. Links Notes and resources at ocdevel.com/mlg/5 Try a walking desk - stay healthy & sharp while you learn & code Generate a podcast - use my voice to listen to any AI generated content you want Linear Regression Overview of Machine Learning Structure Machine learning is a branch of artificial intelligence, alongside statistics, operations research, and control theory. Within machine learning, supervised learning involves training with labeled examples and is further divided into classification (predicting discrete classes) and regression (predicting continuous values). Linear Regression and Problem Framing Linear regression is the simplest and most commonly taught supervised learning algorithm for regression problems, where the goal is to predict a continuous number from input features. The episode example focuses on predicting the cost of houses in Portland, using square footage and possibly other features as inputs. The Three Steps of Machine Learning in Linear Regression Machine learning in the context of linear regression follows a standard three-step loop: make a prediction, measure how far off the prediction is, and update the prediction method to reduce mistakes. Predicting uses a hypothesis function (also called objective or estimate) that maps input features to a predicted value. The Hypothesis Function The hypothesis function is a formula that multiplies input features by coefficients (weights) and sums them to make a prediction; in mathematical terms, for one feature, it is: h(x) = theta_1 * x_1 + theta_0 Here, theta_1 is the weight for the feature (e.g., square footage), and theta_0 is the bias (an average baseline). With only one feature, the model tries to fit a straight line to a scatterplot of the input feature versus the actual target value. Bias and Multiple Features The bias term acts as the starting value when all features are zero, representing an average baseline cost. In practice, using only one feature limits accuracy; including more features (like number of bedrooms, bathrooms, location) results in multivariate linear regression: h(x) = theta_0 + theta_1 * x_1 + theta_2 * x_2 + ... for each feature x_n. Visualization and Model Fitting Visualizing the problem involves plotting data points in a scatterplot: feature values on the x-axis, actual prices on the y-axis. The goal is to find the line (in the univariate case) that best fits the data, ideally passing through the "center" of the data cloud. The Cost Function (Mean Squared Error) The cost function, or mean squared error (MSE), measures model performance by averaging squared differences between predictions and actual labels across all training examples. Squaring ensures positive and negative errors do not cancel each other, and dividing by twice the number of examples (2m) simplifies the calculus in the next step. Parameter Learning via Gradient Descent Gradient descent is an iterative algorithm that uses calculus (specifically derivatives) to find the best values for the coefficients (thetas) by minimizing the cost function. The cost function's surface can be imagined as a bowl in three dimensions, where each point represents a set of parameter values and the height represents the error. The algorithm computes the slope at the current set of parameters and takes a proportional step (controlled by the learning rate alpha) toward the direction of the steepest decrease. This process is repeated until reaching the lowest point in the bowl, where error is minimized and the model best fits the data. Training will not produce a perfect zero error in practice, but it will yield the lowest achievable average error for the data given. Extension to Multiple Variables Multivariate linear regression extends all concepts above to datasets with multiple input features, with the same process for making predictions, measuring error, and performing gradient descent. Technical details are essentially the same though visualization becomes complex as the number of features grows. Essential Learning Resources The episode strongly directs listeners to the Andrew Ng course on Coursera as the primary recommended starting point for studying machine learning and gaining practical experience with linear regression and related concepts.

    S1, E5

    •
    35 min
  • Epic Systems (MyChart)

    21/04/2025

    7

    Epic Systems (MyChart)

    What if we told you that the most important company in US healthcare was run from a farm in rural Wisconsin? And that farm contained the world’s largest subterranean auditorium, as well as Disneyland—style replicas of Hogwarts and the Emerald City? What if we told you that the person who started, runs and owns this establishment has legally ensured that it will never be sold, never go public and never acquire another company? And that this person, Judy Faulkner, is also likely the wealthiest and most successful self-made woman in history? Welcome to the story of Epic Systems, the software company that underpins the majority of the American healthcare system today. Epic isn’t “just” an electronic medical record (the category it’s usually lumped into), or an online patient portal (which is how most of the US population interacts with it via its MyChart application). It’s more akin to a central nervous system for hospitals and health clinics. Almost everything in a hospital — from patient interactions to billing, staffing, scheduling, prescriptions and even research — happens on Epic’s platform, and over 90% of American medical schools’ graduating doctors, nurses and health administrative staff are trained on it during their educations. Tune in as we dive into the almost-unbelievable story of how this epic company came to be! Sponsors: WorkOS: https://bit.ly/workos25Intapp: https://bit.ly/intappcelesteSentry: https://bit.ly/acquiredsentryAnthropic: https://bit.ly/acquiredclaude25Links: Save the date, July 15 in NYC!Epic’s Verona campusWorldly Partners’ Multi-Decade Epic Systems StudyEpisode sourcesCarve Outs: Ken Block in San FranciscoNintendo Switch 2Knives OutBrat by Charli xcxMusic To Refine To: A Remix Companion to Severance by ODESZA More Acquired! Get email updates with hints on next episode and follow-ups from recent episodesJoin the SlackSubscribe to ACQ2Merch Store!© Copyright 2015-2026 ACQ, LLC ‍Note: Acquired hosts and guests may hold assets discussed in this episode. This podcast is not investment advice, and is intended for informational and entertainment purposes only. You should do your own research and make your own independent decisions when considering any financial transactions.

    21/04/2025

    •
    3h 55m
  • Two People Vibe Coded a $1.8B Company. The AI Hard Takeoff Is Here.

    5 DAYS AGO

    8

    Two People Vibe Coded a $1.8B Company. The AI Hard Takeoff Is Here.

    Can you vibe code a $1.8 billion company with AI? Sam Altman predicted the one-person billion-dollar startup, and with MedVi, it might've just happened. Today on AI For Humans, we break down the story everyone in AI is talking about: two brothers vibe coded a $1.8 billion company called MedVi, running on GLP-1 supplements with $70 million in profit and a $1 million donation to an animal shelter.  Sam Altman predicted the one-person billion-dollar startup two years ago and now it's real. Greg Brockman weighs in on what this means for the AI hard takeoff.  Plus, Google drops Gemma 4 with small open models built for phones, laptops, and desktops. Qwen 3.6 arrives as another strong open-source contender. We've got updates on Qwopus, Turbo-Quant, and on-device AI's wild future.  We follow up on the Claude Code leak with Anthropic confirming it was human error, and the /buddy tamagotchi feature is now live. Plus, Seedance 2.0 rolls out to more platforms with some incredible new prompts to try. TWO PEOPLE JUST VIBE CODED A BILLION DOLLAR COMPANY. THE HARD TAKEOFF ISN'T COMING. IT'S HERE. Come to our Discord: https://discord.gg/muD2TYgC8f Join our Patreon: https://www.patreon.com/AIForHumansShow AI For Humans Newsletter: https://aiforhumans.beehiiv.com/ Follow us for more on X @AIForHumansShow Join our TikTok @aiforhumansshow To book us for speaking, please visit our website: https://www.aiforhumans.show/   // Links // Two Brothers Built a $1.8 Billion AI Company (NYT) https://www.nytimes.com/2026/04/02/technology/ai-billion-dollar-company-medvi.html Sam Altman Predicted the One-Person Billion Dollar Startup Two Years Ago https://x.com/alexisohanian/status/2039711886384722106?s=20 Not Everyone Thinks This Is a Good Thing https://x.com/pitdesi/status/2039725523849593241?s=20 Greg Brockman on Spud and the Hard Takeoff https://youtu.be/J6vYvk7R190?si=QY-YSdvRwOEmADQN OpenAI Raises $122 Billion in Cash https://openai.com/index/accelerating-the-next-phase-ai/ Gemma 4: Google's Best Open Models for On-Device AI https://blog.google/innovation-and-ai/technology/developers-tools/gemma-4/ Qwen 3.6: New Open-Source Model From Alibaba https://x.com/Alibaba_Qwen/status/2039705104723611829?s=20 Claude Code Leak Follow-Up: Anthropic Confirms Human Error https://x.com/bcherny/status/2039210700657307889?s=20 Claude Code /Buddy Is Now Live https://x.com/gavinpurcell/status/2039424476262355294?s=20 April Fools' Fake Post About the Leak Being Fake Goes Viral https://x.com/Harish_521/status/2039544042980356505?s=20 Grok Gets the Puka Nakua Rehab Story Completely Wrong https://x.com/gavinpurcell/status/2039500653425483829?s=20 HeyGen x Seedance 2.0 Integration https://x.com/HeyGen/status/2039628911727030360?s=20 Seedance 2.0 JSON Prompt Technique https://x.com/CharaspowerAI/status/2039704453784191201?s=20 Gavin's One-Shot Seedance 2.0 Result https://x.com/gavinpurcell/status/2039730049558139217?s=20

    5 days ago

    •
    30 min
  • OpenAI's New Deal

    20 HR AGO

    9

    OpenAI's New Deal

    OpenAI released a sweeping policy document proposing everything from public wealth funds to portable benefits — but without a single commitment that would cost the company anything. We dig into what's worth discussing, what's window dressing, and why the AI industry's inability to make the case for its own existence is becoming a serious problem. In the headlines: Anthropic's revenue triples to a $30 billion run rate, a massive new Google-Broadcom compute deal, Gemma 4's breakout moment, and Meta's token maxing culture. Brought to you by: KPMG – Agentic AI is powering a potential $3 trillion productivity shift, and KPMG’s new paper, Agentic AI Untangled, gives leaders a clear framework to decide whether to build, buy, or borrow—download it at ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠www.kpmg.us/Navigate⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ Mercury - Modern banking for business and now personal accounts. Learn more at ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://mercury.com/personal-banking⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ Zencoder - From vibe coding to AI-first engineering - ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠http://zencoder.ai/zenflow⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ Blitzy - Want to accelerate enterprise software development velocity by 5x? ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://blitzy.com/⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ AssemblyAI - The best way to build Voice AI apps - ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://www.assemblyai.com/brief⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ Robots & Pencils - Cloud-native AI solutions that power results ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://robotsandpencils.com/⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ The Agent Readiness Audit from Superintelligent - Go to ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://besuper.ai/ ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠to request your company's agent readiness score. The AI Daily Brief helps you understand the most important news and discussions in AI. Subscribe to the podcast version of The AI Daily Brief wherever you listen: ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://pod.link/1680633614⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ Our Newsletter is BACK: ⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://aidailybrief.beehiiv.com/⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠ Interested in sponsoring the show? sponsors@aidailybrief.ai

    20 hr ago

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    36 min
  • MLG 006 Certificates & Degrees

    SEASON 1, EPISODE 6

    10

    MLG 006 Certificates & Degrees

    People interested in machine learning can choose between self-guided learning, online certification programs such as MOOCs, accredited university degrees, and doctoral research, with industry acceptance and personal goals influencing which path is most appropriate. Industry employers currently prioritize a strong project portfolio over non-accredited certificates, and while master's degrees carry more weight for job applications, PhD programs are primarily suited for research interests rather than industry roles. Links Notes and resources at ocdevel.com/mlg/6 Try a walking desk - stay healthy & sharp while you learn & code Learner Types and Self-Guided Education Individuals interested in machine learning may be hobbyists, aspiring professionals, or scientists wishing to contribute to research in artificial intelligence. Hobbyists can rely on structured resources, including curated syllabi and recommended online materials, to guide their self-motivated studies. The "Andrew Ng Coursera" course is frequently recommended as an initial step for self-learners, and advanced resources such as "Artificial Intelligence: A Modern Approach" and "Deep Learning" textbooks are valuable later. MOOCs and Online Certificates MOOCs (Massive Open Online Courses) are widely available from platforms such as Coursera, Udacity, edX, and Khan Academy, but only Coursera and Udacity are commonly recognized for machine learning and data science content. Coursera is typically recommended for individual courses; its specializations are less prominent in professional discussions. Udacity offers both free courses and paid "nano degrees" which include structured mentoring, peer interaction, and project-based learning. Although Udacity certificates demonstrate completion and the development of practical projects, they lack widespread recognition or acceptance from employers. Hiring managers and recruiters consistently emphasize the value of a substantial project portfolio over non-accredited certificates for job-seekers. University Degrees and Industry Recognition Master's degrees in machine learning or computer science remain the most respected credentials for job applications in the industry, with requirements often officially listed in job postings. The Georgia Tech OMSCS program provides an accredited, fully online Master's degree in Computer Science at a much lower cost than traditional programs, reportedly leveraging Udacity's course infrastructure. In some cases, a strong portfolio can substitute for formal educational requirements, particularly if the applicant demonstrates practical and scalable machine learning project experience. Portfolio strength is considered analogous to web development hiring, where demonstrated skills and personal projects can compensate for missing degree credentials. PhD Pathways and Research Careers A PhD is generally unnecessary for industry positions in machine learning; a master's degree or an exceptional portfolio is usually adequate. Doctoral degrees are most useful for those seeking research roles or wishing to investigate complex theoretical questions in artificial intelligence, rather than working in standard industry applications. PhD programs pay a stipend to students, though the compensation is much less than typical industry salaries, which should factor into an individual's decision-making process. Considerations and Resources Choosing an educational path depends on individual goals, available resources, and desired career trajectory; a portfolio of significant machine learning projects is universally beneficial regardless of the chosen route. Community discussions and recruiter perspectives suggest that practical skills, proven through real-world projects, are highly valued in addition to or in place of formal degrees. Interested individuals can review ongoing discussions and perspectives: Self-Guided Data Science Guide (canyon289) Hacker News – Are credentials required? Cole MacLean's Self-Taught AI Blog Hacker News: Self-Study Paths

    S1, E6

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    16 min

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