• Home
  • New
  • Top Charts
  • Search

Technology

  • TikTok
    TikTok

    1

    TikTok

    Catarina Vieira

  • TBPN
    TBPN

    2

    TBPN

    John Coogan & Jordi Hays

  • The a16z Show
    The a16z Show

    3

    The a16z Show

    Andreessen Horowitz

  • Machine Learning Guide
    Machine Learning Guide

    4

    Machine Learning Guide

    OCDevel

  • AI Agents
    AI Agents

    5

    AI Agents

    Inception Point Ai

  • آنکات فارسی || UncutFarsi
    آنکات فارسی || UncutFarsi

    6

    آنکات فارسی || UncutFarsi

    آنکات فارسی

  • The Official SaaStr Podcast: SaaS | Founders | Investors
    The Official SaaStr Podcast: SaaS | Founders | Investors

    7

    The Official SaaStr Podcast: SaaS | Founders | Investors

    SaaStr

Essentials

  • Hard Fork
    Technology
    Technology

    Updated weekly

  • The Vergecast
    Technology
    Technology

    Updated twice weekly

  • There Are No Girls on the Internet
    Technology
    Technology

    Updated weekly

  • Endless Thread
    Technology
    Technology

    Updated weekly

  • Land of the Giants
    Business
    Business

    Weekly series

  • Channels with Peter Kafka
    Business News
    Business News

    Updated weekly

  • Uncanny Valley | WIRED
    Technology
    Technology

    Updated weekly

  • TikTok

    08/04/2021

    1

    TikTok

    Tiktok: qué es y nuestra opinión

    08/04/2021

    •
    9 min
  • X Article Apocalypse, Hollywood's AI Takes | Jordan Schneider, Eliot Pence, Fil Aronshtein & Matt Grimm

    1 DAY AGO

    2

    X Article Apocalypse, Hollywood's AI Takes | Jordan Schneider, Eliot Pence, Fil Aronshtein & Matt Grimm

    Sign up for TBPN’s daily newsletter at TBPN.com (01:11) - X Article Apocalypse (44:42) - Hollywood's AI Takes (01:01:44) - Elon vs. OpenAI Updates (01:05:33) - 𝕏 Timeline Reactions (01:17:54) - Is the American Dream Obsolete? (01:25:25) - Jordan Schneider is the creator of the ChinaTalk podcast and newsletter, focusing on U.S.-China relations and technology. In the conversation, he discusses his disappointment over the Buffalo Bills' firing of head coach Sean McDermott, analyzes the political strategy of Ro Khanna in positioning himself against Silicon Valley, and critiques the media's role in political discourse, emphasizing the importance of asking challenging questions to guests. (01:59:18) - 𝕏 Timeline Reactions (02:16:21) - Eliot Pence, founder and CEO of Dominion Dynamics, discusses the company's mission to enhance Arctic surveillance by developing distributed mesh networks that integrate commercial off-the-shelf sensors across land, sea, air, and space domains. He highlights the strategic importance of the Arctic, noting Canada's underinvestment in the region and the need for improved situational awareness to secure it. Pence explains that Dominion Dynamics' technology enables Canadian Rangers to capture and transmit data from remote areas lacking communication infrastructure, thereby strengthening Canada's defense capabilities in the Arctic. (02:29:15) - Fil Aronshtein is a technologist and entrepreneur focused on applied AI and software infrastructure. He’s known for building products at the intersection of data, automation, and developer tooling, with an emphasis on shipping fast and scaling systems in production. Matt Grimm is a technology investor and operator with a background in software, startups, and venture capital. He focuses on early-stage companies, platform shifts, and the business mechanics behind emerging technologies. TBPN.com is made possible by:  Ramp - https://Ramp.com AppLovin - https://axon.ai Cognition - https://cognition.ai Console - https://console.com CrowdStrike - https://crowdstrike.com ElevenLabs - https://elevenlabs.io Figma - https://figma.com Fin - https://fin.ai Gemini - https://gemini.google.com Graphite - https://graphite.com Gusto - https://gusto.com/tbpn Labelbox - https://labelbox.com Lambda - https://lambda.ai Linear - https://linear.app MongoDB - https://mongodb.com NYSE - https://nyse.com Phantom - https://phantom.com/cash Plaid - https://plaid.com Public - https://public.com Railway - https://railway.com Restream - https://restream.io Shopify - https://shopify.com Turbopuffer - https://turbopuffer.com Vanta - https://vanta.com Vibe - https://vibe.co Sentry - https://sentry.io Cisco - https://cisco.com Okta - https://www.okta.com Follow TBPN:  https://TBPN.com https://x.com/tbpn https://open.spotify.com/show/2L6WMqY3GUPCGBD0dX6p00?si=674252d53acf4231 https://podcasts.apple.com/us/podcast/technology-brothers/id1772360235 https://www.youtube.com/@TBPNLive

    1 day ago

    •
    3h 13m
  • Ben & Marc: Why Everything Is About to Get 10x Bigger

    6 DAYS AGO

    3

    Ben & Marc: Why Everything Is About to Get 10x Bigger

    a16z cofounders Marc Andreessen and Ben Horowitz join a16z general partner Erik Torenberg and Not Boring founder Packy McCormick for a conversation on how the media and information ecosystem has changed over the past decade. The discussion breaks down the shift toward a more open and decentralized speech environment, the rise of writer- and creator-led platforms like Substack, and the erosion of centralized media gatekeepers. Marc and Ben also tie these dynamics to their investing worldview, outlining how supply-driven markets, major technological step changes, and reputation-driven venture platforms shape outcomes in the AI era. Timecodes:  00:00  Introduction 00:46  How the media ecosystem is changing 4:20  Why a16z invested in Substack 6:28  Supply-driven markets and new content creation 8:07  Why writers felt trapped by media companies 10:09  Databricks and the 10x cloud multiplier 13:58  Long-form podcasting proves demand 15:40  What the new fund signals about the future 16:24  AI as a universal problem solver 18:49  Why market sizing is broken 20:45  Go-to-market, policy, and platform power 22:37  Turning inventors into confident CEOs 25:58  Borrowing power to scale faster 27:29  Building dreamers, not killing dreams 30:46  Reputation as a core competitive advantage 35:57  Taking arrows in public 38:56  Avoiding big company failure modes 40:39  Autonomous teams inside a16z 41:54  Venture capital as the last job 46:01  Why intangibles matter more than ever 48:17  Original thinkers with charisma 50:06  Why Zoomers are different Resources:  https://www.notboring.co/p/a16z-the-power-brokers https://www.a16z.news/p/firm-fund Follow Marc Andreessen on X: https://twitter.com/pmarca Follow Ben Horowitz on X: https://twitter.com/bhorowitz Follow Erik Torenberg on X: https://twitter.com/eriktorenberg Follow Packy McCormick on X: https://twitter.com/packyM   Stay Updated: If you enjoyed this episode, be sure to like, subscribe, and share with your friends! Find a16z on X: https://twitter.com/a16z Find a16z on LinkedIn: https://www.linkedin.com/company/a16z Listen to the a16z Podcast on Spotify: https://open.spotify.com/show/5bC65RDvs3oxnLyqqvkUYX Listen to the a16z Podcast on Apple Podcasts: https://podcasts.apple.com/us/podcast/a16z-podcast/id842818711 Follow our host: https://twitter.com/eriktorenberg](https://x.com/eriktorenberg Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures.   Stay Updated: Find a16z on X Find a16z on LinkedIn Listen to the a16z Show on Spotify Listen to the a16z Show on Apple Podcasts Follow our host: https://twitter.com/eriktorenberg   Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures. Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

    6 days ago

    •
    58 min
  • MLG 002 Difference Between Artificial Intelligence, Machine Learning, Data Science

    09/02/2017

    4

    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

    09/02/2017

    •
    1h 6m
  • SaaStr 830: 6 Months Later, How Our AI SDRs Actually Work as AI Runs GTM with SaaStr's CEO and Chief AI Officer

    21/11/2025

    5

    SaaStr 830: 6 Months Later, How Our AI SDRs Actually Work as AI Runs GTM with SaaStr's CEO and Chief AI Officer

    SaaStr 830: 6 Months Later, How Our AI SDRs Actually Work as AI Runs GTM with SaaStr's CEO and Chief AI Officer In this episode, SaaStr CEO and Founder Jason Lemkin and SaaStr's Chief AI Officer, Amelia Lerutte delve into their journey of integrating AI into our go-to-market strategy over the past six months. Starting with just one AI agent before SaaStr Annual in May, we've scaled to roughly 20 core agents by November, covering various use cases across marketing, sales, customer support, and operations. Together they discuss the specifics of our AI implementations, the tools we have deployed, including Artisan, Qualified, and Salesforce's AgentForce, and share valuable insights on their performance, benefits, and challenges. Tune in to learn about the unexpected outcomes, the time and management required, and the significant impact on our efficiency and revenue.   --------------------- This episode is Sponsored in part by Salesforce: Connect data, automate busywork and empower teams like nobody's business with the one platform that grows with you, every step of the way. Learn how Salesforce works for Startups at salesforce.com/smb.    --------------------- This episode is Sponsored in part by HappyFox: Imagine having AI agents for every support task — one that triages tickets, another that catches duplicates, one that spots churn risks. That'd be pretty amazing, right? HappyFox just made it real with Autopilot. These pre-built AI agents deploy in about 60 seconds and run for as low as 2 cents per successful action. All of it sits inside the HappyFox omnichannel, AI-first support stack — Chatbot, Copilot, and Autopilot working as one. Check them out at happyfox.com/saastr

    21/11/2025

    •
    1h 25m
  • Phones Will Cost More, but This Camera Is Free?

    5 DAYS AGO

    6

    Phones Will Cost More, but This Camera Is Free?

    In this week's episode the cast is joined by Mariah Zenk and we discuss a phone that feels more like a camera than a phone, why a certain Fuji camera is being given away, everything is a subscription, and we wrap up the episode by explaining some non-tech news in tech terms. Enjoy! Shop the merch: https://shop.mkbhd.com Links: Apple Creator Studio Carl Pei's Tweet Free Fuji X half This Episode is brought to you by: Monarch: https://www.monarch.com/ Shopify: www.shopify.com/waveform Music provided by: Epidemic Sound Social: Waveform Threads: https://www.threads.net/@waveformpodcast Waveform Instagram: https://www.instagram.com/waveformpodcast/?hl=en Waveform TikTok: https://www.tiktok.com/@waveformpodcast Hosts: Marques: https://www.threads.net/@mkbhd Andrew: https://www.threads.net/@andrew_manganelli David: https://www.threads.net/@davidimel Adam: https://www.threads.net/@parmesanpapi17 Ellis: https://twitter.com/EllisRovin Mariah: https://www.instagram.com/totallynotabusinessacc/ Learn more about your ad choices. Visit podcastchoices.com/adchoices

    5 days ago

    •
    1h 25m
  • S5E3 - How IATA is Building Digital Trust for 360+ Airlines

    18/12/2025

    7

    S5E3 - How IATA is Building Digital Trust for 360+ Airlines

    How does an industry of over 360 airlines build digital trust across borders, partners, and countless intermediaries? In this episode, Mathieu Glaude speaks with Gabriel Marquie, Digital Identity Lead at IATA, about how digital identity is transforming both airline operations and the passenger journey. Gabriel explains how airline distribution is shifting from legacy GDS systems to modern NDC APIs, why airlines need verifiable credentials to trust travel agencies and employees, and how digital passports, biometrics, and data minimization will enable seamless and contactless travel. He also shares IATA's roadmap, including new trust frameworks and the Contactless Travel Directory, as the industry moves from pilots to coordinated global rollout. This conversation offers a clear and practical look at the future of digital identity in aviation. Chapters: 00:00 - Introduction: The identity challenge in aviation 01:50 - IATA's role in airline distribution and trust networks 07:44 - IATA Strategic Partnership Program and collaboration 12:54 - Trust frameworks: Comparing IATA to payment networks like Visa 18:23 - B2B Use Cases: Travel agency verification deep dive 24:06 - Why airlines need to verify who's selling their seats 30:48 - Northern Block partnership and Air Canada demo 36:17 - B2C Use Cases: The complex passenger journey landscape 43:37 - Digital passport standards and ICAO coordination 50:34 - Apple and Google digital passport announcements57:54 - Biometrics, tap-and-go, and data minimization01:00:47 - Air travel doubling in 10-15 years01:02:04 - Roadmap: Contactless travel directory and next steps01:06:42 - Closing thoughts and call to action

    18/12/2025

    •
    1h 7m
  • #133 – Manolis Kellis: Biology of Disease

    25/10/2020

    8

    #133 – Manolis Kellis: Biology of Disease

    Manolis Kellis is a computational biologist at MIT. Please support this podcast by checking out our sponsors: – SEMrush: https://www.semrush.com/partner/lex/ to get a free month of Guru – Pessimists Archive: https://pessimists.co/ – Eight Sleep: https://www.eightsleep.com/lex and use code LEX to get $200 off – BetterHelp: https://betterhelp.com/lex to get 10% off EPISODE LINKS: Manolis Website: http://web.mit.edu/manoli/ Manolis Twitter: https://twitter.com/manoliskellis Manolis YouTube: https://www.youtube.com/channel/UCkKlJ5LHrE3C7fgbnPA5DGA Manolis Wikipedia: https://en.wikipedia.org/wiki/Manolis_Kellis PODCAST INFO: Podcast website: https://lexfridman.com/podcast Apple Podcasts: https://apple.co/2lwqZIr Spotify: https://spoti.fi/2nEwCF8 RSS: https://lexfridman.com/feed/podcast/ YouTube Full Episodes: https://youtube.com/lexfridman YouTube Clips: https://youtube.com/lexclips SUPPORT & CONNECT: – Check out the sponsors above, it’s the best way to support this podcast – Support on Patreon: https://www.patreon.com/lexfridman – Twitter: https://twitter.com/lexfridman – Instagram: https://www.instagram.com/lexfridman – LinkedIn: https://www.linkedin.com/in/lexfridman – Facebook: https://www.facebook.com/LexFridmanPage – Medium: https://medium.com/@lexfridman OUTLINE: Here’s the timestamps for the episode. On some podcast players you should be able to click the timestamp to jump to that time. 00:00 – Introduction 08:05 – Molecular basis for human disease 32:04 – Deadliest diseases 37:47 – Genetic component of diseases 46:38 – Genetic understanding of disease 1:02:25 – Unified theory of human disease 1:08:26 – Genome circuitry 1:33:29 – CRISPR 1:45:06 – Mitochondria 1:53:10 – Future of biology research 2:22:46 – The genetic circuitry of disease

    25/10/2020

    •
    2h 40m
  • Dive into the revolutionary world of AI agents with Leo Finch!

    TRAILER

    9

    Dive into the revolutionary world of AI agents with Leo Finch!

    This content was created in partnership and with the help of Artificial Intelligence AI

    Trailer

    •
    1 min
  • شاهد قبل الحذف - How AI Is Rewriting the Truth in Videos

    17/09/2025

    10

    شاهد قبل الحذف - How AI Is Rewriting the Truth in Videos

    في حلقة جديدة من⁠ بودكاست ⁠ذكاء مش اصطناعي⁠⁠، بنفتح ملف حساس ومثير جدًا تزييف الفيديوهات وتأثيرها على صناعة الأخبار والإعلام لكن بشكل خفيف، واعي، ومليان أمثلة واقعية   استضفنا ⁠أحمد أبو الشباب⁠ – متخصص في الذكاء الاصطناعي الإبداعي، ورئيس قسم التصميم الإبداعي، عشان نفهم معاه:هل كل فيديو بنشوفه حقيقي؟هل المؤسسات الإعلامية مستعدة للنوع ده من التزييف؟وإزاي ممكن نحمي نفسنا كجمهور من الوقوع في فخ المعلومات المغلوطة؟الحلقة دي فيها شوية أمثلة هتخليك تعيد التفكير في كل حاجة بتشوفها على السوشيال ميديا، وكمان فيها نصايح ذكية لأي صحفي أو صانع محتوى أو حتى شخص عادي بيحب يعرف الحقيقة. استمعوا قبل ما يتغير المشهد... أو يتحذف!   Episode Description  In this eye-opening episode of Zakaa Mesh Estenai ("Not Artificial Intelligence"), we’re diving into a controversial and timely topic: The rise of fake videos and how they’re shaking the foundations of news and media.But don't worry — we’re keeping it smart, light, and full of real examples you won't believe.   Joining us is Ahmed Aboushabab — an AI Creative Coach and Head of Creative Design who’s worked with major media outlets like SkyNews Arabia and CNN Business Arabia.   Together, we ask: Can you really trust everything you see online? Are media organizations ready to tackle deepfakes and visual misinformation?And how can everyday users protect themselves from being misled?   Expect sharp insights, wild stories, and some golden advice for journalists, content creators, and anyone who just wants to know the truth behind the pixels.   Tune in before the truth disappears… or gets deleted.

    17/09/2025

    •
    46 min

New Shows

  • The Rest Is Science
    Science
    Science

    Every two weeks

  • 罗永浩的十字路口
    Technology
    Technology

    Updated weekly

  • SAP Cybersecurity by NO MONKEY
    Technology
    Technology

    Updated weekly

  • AI Agents
    Technology
    Technology

    Updated 06/10/2025

  • Elon Musk: Elon Musk Podcast
    Business
    Business

    Updated daily

  • AB explains AI
    Technology
    Technology

    Updated daily

  • Decoded by Mo
    Technology
    Technology

    Updated weekly

Tech News

  • Energy Gang
    Tech News
    Tech News

    Every two weeks

  • Software Engineering Daily
    Tech News
    Tech News

    Updated weekly

  • Interchange Recharged
    Tech News
    Tech News

    Every two months

  • The Automated Daily - Hacker News Edition
    Tech News
    Tech News

    Updated daily

  • TechLinked
    Tech News
    Tech News

    Updated twice weekly

  • Android Faithful
    Tech News
    Tech News

    Updated weekly

  • The WAN Show
    Tech News
    Tech News

    Updated weekly

Select a country or region

Africa, Middle East, and India

  • Algeria
  • Angola
  • Armenia
  • Azerbaijan
  • Bahrain
  • Benin
  • Botswana
  • Brunei Darussalam
  • Burkina Faso
  • Cameroun
  • Cape Verde
  • Chad
  • Côte d’Ivoire
  • Congo, The Democratic Republic Of The
  • Egypt
  • Eswatini
  • Gabon
  • Gambia
  • Ghana
  • Guinea-Bissau
  • India
  • Iraq
  • Israel
  • Jordan
  • Kenya
  • Kuwait
  • Lebanon
  • Liberia
  • Libya
  • Madagascar
  • Malawi
  • Mali
  • Mauritania
  • Mauritius
  • Morocco
  • Mozambique
  • Namibia
  • Niger (English)
  • Nigeria
  • Oman
  • Qatar
  • Congo, Republic of
  • Rwanda
  • São Tomé and Príncipe
  • Saudi Arabia
  • Senegal
  • Seychelles
  • Sierra Leone
  • South Africa
  • Sri Lanka
  • Tajikistan
  • Tanzania, United Republic Of
  • Tunisia
  • Turkmenistan
  • United Arab Emirates
  • Uganda
  • Yemen
  • Zambia
  • Zimbabwe

Asia Pacific

  • Afghanistan
  • Australia
  • Bhutan
  • Cambodia
  • 中国大陆
  • Fiji
  • 香港
  • Indonesia (English)
  • 日本
  • Kazakhstan
  • 대한민국
  • Kyrgyzstan
  • Lao People's Democratic Republic
  • 澳門
  • Malaysia (English)
  • Maldives
  • Micronesia, Federated States of
  • Mongolia
  • Myanmar
  • Nauru
  • Nepal
  • New Zealand
  • Pakistan
  • Palau
  • Papua New Guinea
  • Philippines
  • Singapore
  • Solomon Islands
  • 台灣
  • Thailand
  • Tonga
  • Turkmenistan
  • Uzbekistan
  • Vanuatu
  • Vietnam

Europe

  • Albania
  • Armenia
  • Österreich
  • Belarus
  • Belgium
  • Bosnia and Herzegovina
  • Bulgaria
  • Croatia
  • Cyprus
  • Czechia
  • Denmark
  • Estonia
  • Finland
  • France (Français)
  • Georgia
  • Deutschland
  • Greece
  • Hungary
  • Iceland
  • Ireland
  • Italia
  • Kosovo
  • Latvia
  • Lithuania
  • Luxembourg (English)
  • Malta
  • Moldova, Republic Of
  • Montenegro
  • Nederland
  • North Macedonia
  • Norway
  • Poland
  • Portugal (Português)
  • Romania
  • Россия
  • Serbia
  • Slovakia
  • Slovenia
  • España
  • Sverige
  • Schweiz
  • Türkiye (English)
  • Ukraine
  • United Kingdom

Latin America and the Caribbean

  • Anguilla
  • Antigua and Barbuda
  • Argentina (Español)
  • Bahamas
  • Barbados
  • Belize
  • Bermuda
  • Bolivia (Español)
  • Brasil
  • Virgin Islands, British
  • Cayman Islands
  • Chile (Español)
  • Colombia (Español)
  • Costa Rica (Español)
  • Dominica
  • República Dominicana
  • Ecuador (Español)
  • El Salvador (Español)
  • Grenada
  • Guatemala (Español)
  • Guyana
  • Honduras (Español)
  • Jamaica
  • México
  • Montserrat
  • Nicaragua (Español)
  • Panamá
  • Paraguay (Español)
  • Perú
  • St. Kitts and Nevis
  • Saint Lucia
  • St. Vincent and The Grenadines
  • Suriname
  • Trinidad and Tobago
  • Turks and Caicos
  • Uruguay (English)
  • Venezuela (Español)

The United States and Canada

  • Canada (English)
  • Canada (Français)
  • United States
  • Estados Unidos (Español México)
  • الولايات المتحدة
  • США
  • 美国 (简体中文)
  • États-Unis (Français France)
  • 미국
  • Estados Unidos (Português Brasil)
  • Hoa Kỳ
  • 美國 (繁體中文台灣)

Copyright © 2026 Apple Inc. All rights reserved.

  • Internet Service Terms
  • Apple Podcasts web player & Privacy
  • Cookie Warning
  • Support
  • Feedback

To listen to explicit episodes, sign in.

Apple Podcasts

Stay up to date with this show

Sign in or sign up to follow shows, save episodes and get the latest updates.

Select a country or region

Africa, Middle East, and India

  • Algeria
  • Angola
  • Armenia
  • Azerbaijan
  • Bahrain
  • Benin
  • Botswana
  • Brunei Darussalam
  • Burkina Faso
  • Cameroun
  • Cape Verde
  • Chad
  • Côte d’Ivoire
  • Congo, The Democratic Republic Of The
  • Egypt
  • Eswatini
  • Gabon
  • Gambia
  • Ghana
  • Guinea-Bissau
  • India
  • Iraq
  • Israel
  • Jordan
  • Kenya
  • Kuwait
  • Lebanon
  • Liberia
  • Libya
  • Madagascar
  • Malawi
  • Mali
  • Mauritania
  • Mauritius
  • Morocco
  • Mozambique
  • Namibia
  • Niger (English)
  • Nigeria
  • Oman
  • Qatar
  • Congo, Republic of
  • Rwanda
  • São Tomé and Príncipe
  • Saudi Arabia
  • Senegal
  • Seychelles
  • Sierra Leone
  • South Africa
  • Sri Lanka
  • Tajikistan
  • Tanzania, United Republic Of
  • Tunisia
  • Turkmenistan
  • United Arab Emirates
  • Uganda
  • Yemen
  • Zambia
  • Zimbabwe

Asia Pacific

  • Afghanistan
  • Australia
  • Bhutan
  • Cambodia
  • 中国大陆
  • Fiji
  • 香港
  • Indonesia (English)
  • 日本
  • Kazakhstan
  • 대한민국
  • Kyrgyzstan
  • Lao People's Democratic Republic
  • 澳門
  • Malaysia (English)
  • Maldives
  • Micronesia, Federated States of
  • Mongolia
  • Myanmar
  • Nauru
  • Nepal
  • New Zealand
  • Pakistan
  • Palau
  • Papua New Guinea
  • Philippines
  • Singapore
  • Solomon Islands
  • 台灣
  • Thailand
  • Tonga
  • Turkmenistan
  • Uzbekistan
  • Vanuatu
  • Vietnam

Europe

  • Albania
  • Armenia
  • Österreich
  • Belarus
  • Belgium
  • Bosnia and Herzegovina
  • Bulgaria
  • Croatia
  • Cyprus
  • Czechia
  • Denmark
  • Estonia
  • Finland
  • France (Français)
  • Georgia
  • Deutschland
  • Greece
  • Hungary
  • Iceland
  • Ireland
  • Italia
  • Kosovo
  • Latvia
  • Lithuania
  • Luxembourg (English)
  • Malta
  • Moldova, Republic Of
  • Montenegro
  • Nederland
  • North Macedonia
  • Norway
  • Poland
  • Portugal (Português)
  • Romania
  • Россия
  • Serbia
  • Slovakia
  • Slovenia
  • España
  • Sverige
  • Schweiz
  • Türkiye (English)
  • Ukraine
  • United Kingdom

Latin America and the Caribbean

  • Anguilla
  • Antigua and Barbuda
  • Argentina (Español)
  • Bahamas
  • Barbados
  • Belize
  • Bermuda
  • Bolivia (Español)
  • Brasil
  • Virgin Islands, British
  • Cayman Islands
  • Chile (Español)
  • Colombia (Español)
  • Costa Rica (Español)
  • Dominica
  • República Dominicana
  • Ecuador (Español)
  • El Salvador (Español)
  • Grenada
  • Guatemala (Español)
  • Guyana
  • Honduras (Español)
  • Jamaica
  • México
  • Montserrat
  • Nicaragua (Español)
  • Panamá
  • Paraguay (Español)
  • Perú
  • St. Kitts and Nevis
  • Saint Lucia
  • St. Vincent and The Grenadines
  • Suriname
  • Trinidad and Tobago
  • Turks and Caicos
  • Uruguay (English)
  • Venezuela (Español)

The United States and Canada

  • Canada (English)
  • Canada (Français)
  • United States
  • Estados Unidos (Español México)
  • الولايات المتحدة
  • США
  • 美国 (简体中文)
  • États-Unis (Français France)
  • 미국
  • Estados Unidos (Português Brasil)
  • Hoa Kỳ
  • 美國 (繁體中文台灣)