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El director de cine Rodrigo Cortés saltó a la fama internacional con la película Buried (2010), protagonizada por Ryan Reynolds, y también ha dirigido títulos como Concursante, Luces rojas o Love Gets a Room. Desde su último trabajo en la gran pantalla, Escape, protagonizada por Mario Casas y producida por Martin Scorsese, ha seguido dando rienda suelta a su creatividad a través de la literatura, colaborando en ABC, y participando en podcast. Sobre esta trayectoria inmejorable ha conversado con Mara Torres en El Faro.
¡HOLA, AMIGUITOS! Les dejamos un NUEVO EPISODIO de AISLADOS. Estamos los MIÉRCOLES al MEDIODÍA por YOUTUBE y SPOTIFY. TICKETS a los SHOWS en VIVO: https://linktr.ee/aisladoselpodcast¡SIGAN NUESTRAS REDES!Tiktok.com/aisladoselpodcastInstagram.com/aisladoselpodcast
Siguenos en las redes sociales y en Discordhttps://linktr.ee/eytbiterosDiscord: https://discord.gg/eytbiterosPodcast en VIVO todos los Lunes a las 9pm: https://www.twitch.tv/eytbiterosFacebook: https://www.facebook.com/EYTBiterosInstagram: https://www.instagram.com/eytbiterosX: https://twitter.com/EYTBiteros
Adobe is settling a lawsuit with the DOJ. The EU is looking to an alternative office suite. Amazon is removing 4k video streaming for the poors. Meta is doing another round of layoffs, while the company looks to buy MORE AI nonsense. Google sells off their fiber broadband business. Oppo and Vivo announce price increases. Apple launches the AirPods Max 2. Samsung is looking to make benchmarking easier for developers. Google Play Games is offering game trial downloads! Digg is dead. Again. And we can chat about the Steam Frame and Steam Machine news! Let's get our tech week started off RIGHT! -- Show Notes and Links: https://somegadgetguy.com/b/4bT Support Talking Tech with SomeGadgetGuy by contributing to their tip jar: https://tips.pinecast.com/jar/talking-tech-with-somegadgetgu Find out more at https://talking-tech-with-somegadgetgu.pinecast.co This podcast is powered by Pinecast. Try Pinecast for free, forever, no credit card required. If you decide to upgrade, use coupon code r-c117ce for 40% off for 4 months, and support Talking Tech with SomeGadgetGuy.
Una mirada profunda a la abundancia interna. Reconocer lo que ya está funcionando como punto de expansión real.
Televisores velhos, computadores encostados e eletrodomésticos sem uso guardados em casa podem virar equipamento médico. O Rotary Club de Getúlio Vargas realiza nesta sexta-feira, dia 13 de março, uma campanha de recolhimento de lixo eletrônico cujos recursos serão revertidos para a compra de um raio-X portátil destinado ao Hospital São Roque, avaliado em aproximadamente R$ 200 mil.A ação acontece no calçadão da cidade, das 8h às 17h, sem interrupção ao meio-dia. A campanha é realizada em parceria com a Prefeitura e é a primeira organizada pelo Clube na cidade. As informações foram divulgadas em entrevista ao programa Olho Vivo, da Rádio Sideral, na manhã desta quarta-feira (11), pela presidente do Rotary Clube, Josiane Bellé, e pelo secretário Edmar Urio.
¡HOLA, AMIGUITOS! Les dejamos un NUEVO EPISODIO de AISLADOS. Estamos los MIÉRCOLES al MEDIODÍA por YOUTUBE y SPOTIFY. TICKETS a los SHOWS en VIVO: https://linktr.ee/aisladoselpodcast¡SIGAN NUESTRAS REDES!Tiktok.com/aisladoselpodcastInstagram.com/aisladoselpodcast
* Queríamos al Mencho vivo, dice el secretario de la Defensa* Líbano, el otro frente de la guerra contra Irán* Cercano a Sheinbaum queda como Auditor de la Federación
Neste episódio com Calunga, a conversa gira em torno de um princípio simples e radical: você vive no astral que escolhe sintonizar. Ao longo do programa, ele explica como as “correntes astrais” funcionam — faixas de pensamento, emoção e crença que se fortalecem quando várias pessoas alimentam a mesma vibração.Calunga mostra como o chamado “astral de cáritas” — marcado por culpa, sacrifício, medo de Deus, obrigação moral e autonegação — aprisiona a pessoa numa vida de drama e desgaste. Ele provoca o ouvinte a perceber que ninguém está preso à família, à religião ou a um padrão emocional: está preso à sintonia que mantém.O episódio aprofunda temas como sensibilidade, corpo astral, influência energética, afinidade, livre-arbítrio e responsabilidade. A tese central é direta: mudar de vida não começa fora, começa mudando de corrente. Uma conversa forte sobre independência espiritual, escolha consciente e a coragem de sair do papel de “bom demais” para assumir a própria verdade.Com uma vasta biblioteca de cursos e palestras em áudio e vídeo do nosso mestre Luiz Gasparetto, você pode descobrir as leis universais e o poder do autoconhecimento. Acesse agora e comece a sua jornada: www.gasparettoplay.com.br
Llevo algunas semanas (meses) muy ocupado. Por eso no he tenido tiempo de publicar muchos episodios de nuestro podcast. Pero sigo vivo. Vivo y coleando. ESCUCHA TODOS LOS EPISODIOS DE NUESTRO PODCAST: https://1001reasonstolearnspanish.com/podcasts/
Join Kyle, Nader, Vibhu, and swyx live at NVIDIA GTC next week!Now that AIE Europe tix are ~sold out, our attention turns to Miami and World's Fair!The definitive AI Accelerator chip company has more than 10xed this AI Summer:And is now a $4.4 trillion megacorp… that is somehow still moving like a startup. We are blessed to have a unique relationship with our first ever NVIDIA guests: Kyle Kranen who gave a great inference keynote at the first World's Fair and is one of the leading architects of NVIDIA Dynamo (a Datacenter scale inference framework supporting SGLang, TRT-LLM, vLLM), and Nader Khalil, a friend of swyx from our days in Celo in The Arena, who has been drawing developers at GTC since before they were even a glimmer in the eye of NVIDIA:Nader discusses how NVIDIA Brev has drastically reduced the barriers to entry for developers to get a top of the line GPU up and running, and Kyle explains NVIDIA Dynamo as a data center scale inference engine that optimizes serving by scaling out, leveraging techniques like prefill/decode disaggregation, scheduling, and Kubernetes-based orchestration, framed around cost, latency, and quality tradeoffs. We also dive into Jensen's “SOL” (Speed of Light) first-principles urgency concept, long-context limits and model/hardware co-design, internal model APIs (https://build.nvidia.com), and upcoming Dynamo and agent sessions at GTC.Full Video pod on YouTubeTimestamps00:00 Agent Security Basics00:39 Podcast Welcome and Guests07:19 Acquisition and DevEx Shift13:48 SOL Culture and Dynamo Setup27:38 Why Scale Out Wins29:02 Scale Up Limits Explained30:24 From Laptop to Multi Node33:07 Cost Quality Latency Tradeoffs38:42 Disaggregation Prefill vs Decode41:05 Kubernetes Scaling with Grove43:20 Context Length and Co Design57:34 Security Meets Agents58:01 Agent Permissions Model59:10 Build Nvidia Inference Gateway01:01:52 Hackathons And Autonomy Dreams01:10:26 Local GPUs And Scaling Inference01:15:31 Long Running Agents And SF ReflectionsTranscriptAgent Security BasicsNader: Agents can do three things. They can access your files, they can access the internet, and then now they can write custom code and execute it. You literally only let an agent do two of those three things. If you can access your files and you can write custom code, you don't want internet access because that's one to see full vulnerability, right?If you have access to internet and your file system, you should know the full scope of what that agent's capable of doing. Otherwise, now we can get injected or something that can happen. And so that's a lot of what we've been thinking about is like, you know, how do we both enable this because it's clearly the future.But then also, you know, what, what are these enforcement points that we can start to like protect?swyx: All right.Podcast Welcome and Guestsswyx: Welcome to the Lean Space podcast in the Chromo studio. Welcome to all the guests here. Uh, we are back with our guest host Viu. Welcome. Good to have you back. And our friends, uh, Netter and Kyle from Nvidia. Welcome.Kyle: Yeah, thanks for having us.swyx: Yeah, thank you. Actually, I don't even know your titles.Uh, I know you're like architect something of Dynamo.Kyle: Yeah. I, I'm one of the engineering leaders [00:01:00] and a architects of Dynamo.swyx: And you're director of something and developers, developer tech.Nader: Yeah.swyx: You're the developers, developers, developers guy at nvidia,Nader: open source agent marketing, brev,swyx: and likeNader: Devrel tools and stuff.swyx: Yeah. BeenNader: the focus.swyx: And we're, we're kind of recording this ahead of Nvidia, GTC, which is coming to town, uh, again, uh, or taking over town, uh, which, uh, which we'll all be at. Um, and we'll talk a little bit about your sessions and stuff. Yeah.Nader: We're super excited for it.GTC Booth Stunt Storiesswyx: One of my favorite memories for Nader, like you always do like marketing stunts and like while you were at Rev, you like had this surfboard that you like, went down to GTC with and like, NA Nvidia apparently, like did so much that they bought you.Like what, what was that like? What was that?Nader: Yeah. Yeah, we, we, um. Our logo was a chaka. We, we, uh, we were always just kind of like trying to keep true to who we were. I think, you know, some stuff, startups, you're like trying to pretend that you're a bigger, more mature company than you are. And it was actually Evan Conrad from SF Compute who was just like, you guys are like previousswyx: guest.Yeah.Nader: Amazing. Oh, really? Amazing. Yeah. He was just like, guys, you're two dudes in the room. Why are you [00:02:00] pretending that you're not? Uh, and so then we were like, okay, let's make the logo a shaka. We brought surfboards to our booth to GTC and the energy was great. Yeah. Some palm trees too. They,Kyle: they actually poked out over like the, the walls so you could, you could see the bread booth.Oh, that's so funny. AndNader: no one else,Kyle: just from very far away.Nader: Oh, so you remember it backKyle: then? Yeah I remember it pre-acquisition. I was like, oh, those guys look cool,Nader: dude. That makes sense. ‘cause uh, we, so we signed up really last minute, and so we had the last booth. It was all the way in the corner. And so I was, I was worried that no one was gonna come.So that's why we had like the palm trees. We really came in with the surfboards. We even had one of our investors bring her dog and then she was just like walking the dog around to try to like, bring energy towards our booth. Yeah.swyx: Steph.Kyle: Yeah. Yeah, she's the best,swyx: you know, as a conference organizer, I love that.Right? Like, it's like everyone who sponsors a conference comes, does their booth. They're like, we are changing the future of ai or something, some generic b******t and like, no, like actually try to stand out, make it fun, right? And people still remember it after three years.Nader: Yeah. Yeah. You know what's so funny?I'll, I'll send, I'll give you this clip if you wanna, if you wanna add it [00:03:00] in, but, uh, my wife was at the time fiance, she was in medical school and she came to help us. ‘cause it was like a big moment for us. And so we, we bought this cricket, it's like a vinyl, like a vinyl, uh, printer. ‘cause like, how else are we gonna label the surfboard?So, we got a surfboard, luckily was able to purchase that on the company card. We got a cricket and it was just like fine tuning for enterprises or something like that, that we put on the. On the surfboard and it's 1:00 AM the day before we go to GTC. She's helping me put these like vinyl stickers on.And she goes, you son of, she's like, if you pull this off, you son of a b***h. And so, uh, right. Pretty much after the acquisition, I stitched that with the mag music acquisition. I sent it to our family group chat. Ohswyx: Yeah. No, well, she, she made a good choice there. Was that like basically the origin story for Launchable is that we, it was, and maybe we should explain what Brev is andNader: Yeah.Yeah. Uh, I mean, brev is just, it's a developer tool that makes it really easy to get a GPU. So we connect a bunch of different GPU sources. So the basics of it is like, how quickly can we SSH you into a G, into a GPU and whenever we would talk to users, they wanted A GPU. They wanted an A 100. And if you go to like any cloud [00:04:00] provisioning page, usually it's like three pages of forms or in the forms somewhere there's a dropdown.And in the dropdown there's some weird code that you know to translate to an A 100. And I remember just thinking like. Every time someone says they want an A 100, like the piece of text that they're telling me that they want is like, stuffed away in the corner. Yeah. And so we were like, what if the biggest piece of text was what the user's asking for?And so when you go to Brev, it's just big GPU chips with the type that you want withswyx: beautiful animations that you worked on pre, like pre you can, like, now you can just prompt it. But back in the day. Yeah. Yeah. Those were handcraft, handcrafted artisanal code.Nader: Yeah. I was actually really proud of that because, uh, it was an, i I made it in Figma.Yeah. And then I found, I was like really struggling to figure out how to turn it from like Figma to react. So what it actually is, is just an SVG and I, I have all the styles and so when you change the chip, whether it's like active or not it changes the SVG code and that somehow like renders like, looks like it's animating, but it, we just had the transition slow, but it's just like the, a JavaScript function to change the like underlying SVG.Yeah. And that was how I ended up like figuring out how to move it from from Figma. But yeah, that's Art Artisan. [00:05:00]Kyle: Speaking of marketing stunts though, he actually used those SVGs. Or kind of use those SVGs to make these cards.Nader: Oh yeah. LikeKyle: a GPU gift card Yes. That he handed out everywhere. That was actually my first impression of thatNader: one.Yeah,swyx: yeah, yeah.Nader: Yeah.swyx: I think I still have one of them.Nader: They look great.Kyle: Yeah.Nader: I have a ton of them still actually in our garage, which just, they don't have labels. We should honestly like bring, bring them back. But, um, I found this old printing press here, actually just around the corner on Ven ness. And it's a third generation San Francisco shop.And so I come in an excited startup founder trying to like, and they just have this crazy old machinery and I'm in awe. ‘cause the the whole building is so physical. Like you're seeing these machines, they have like pedals to like move these saws and whatever. I don't know what this machinery is, but I saw all three generations.Like there's like the grandpa, the father and the son, and the son was like, around my age. Well,swyx: it's like a holy, holy trinity.Nader: It's funny because we, so I just took the same SVG and we just like printed it and it's foil printing, so they make a a, a mold. That's like an inverse of like the A 100 and then they put the foil on it [00:06:00] and then they press it into the paper.And I remember once we got them, he was like, Hey, don't forget about us. You know, I guess like early Apple and Cisco's first business cards were all made there. And so he was like, yeah, we, we get like the startup businesses but then as they mature, they kind of go somewhere else. And so I actually, I think we were talking with marketing about like using them for some, we should go back and make some cards.swyx: Yeah, yeah, yeah. You know, I remember, you know, as a very, very small breadth investor, I was like, why are we spending time like, doing these like stunts for GPUs? Like, you know, I think like as a, you know, typical like cloud hard hardware person, you go into an AWS you pick like T five X xl, whatever, and it's just like from a list and you look at the specs like, why animate this GP?And, and I, I do think like it just shows the level of care that goes throughout birth and Yeah. And now, and also the, and,Nader: and Nvidia. I think that's what the, the thing that struck me most when we first came in was like the amount of passion that everyone has. Like, I think, um, you know, you talk to, you talk to Kyle, you talk to, like, every VP that I've met at Nvidia goes so close to the metal.Like, I remember it was almost a year ago, and like my VP asked me, he's like, Hey, [00:07:00] what's cursor? And like, are you using it? And if so, why? Surprised at this, and he downloaded Cursor and he was asking me to help him like, use it. And I thought that was, uh, or like, just show him what he, you know, why we were using it.And so, the amount of care that I think everyone has and the passion, appreciate, passion and appreciation for the moment. Right. This is a very unique time. So it's really cool to see everyone really like, uh, appreciate that.swyx: Yeah.Acquisition and DevEx Shiftswyx: One thing I wanted to do before we move over to sort of like research topics and, uh, the, the stuff that Kyle's working on is just tell the story of the acquisition, right?Like, not many people have been, been through an acquisition with Nvidia. What's it like? Uh, what, yeah, just anything you'd like to say.Nader: It's a crazy experience. I think, uh, you know, we were the thing that was the most exciting for us was. Our goal was just to make it easier for developers.We wanted to find access to GPUs, make it easier to do that. And then all, oh, actually your question about launchable. So launchable was just make one click exper, like one click deploys for any software on top of the GPU. Mm-hmm. And so what we really liked about Nvidia was that it felt like we just got a lot more resources to do all of that.I think, uh, you [00:08:00] know, NVIDIA's goal is to make things as easy for developers as possible. So there was a really nice like synergy there. I think that, you know, when it comes to like an acquisition, I think the amount that the soul of the products align, I think is gonna be. Is going speak to the success of the acquisition.Yeah. And so it in many ways feels like we're home. This is a really great outcome for us. Like we you know, I love brev.nvidia.com. Like you should, you should use it's, it's theKyle: front page for GPUs.Nader: Yeah. Yeah. If you want GP views,Kyle: you go there, getswyx: it there, and it's like internally is growing very quickly.I, I don't remember You said some stats there.Nader: Yeah, yeah, yeah. It's, uh, I, I wish I had the exact numbers, but like internally, externally, it's been growing really quickly. We've been working with a bunch of partners with a bunch of different customers and ISVs, if you have a solution that you want someone that runs on the GPU and you want people to use it quickly, we can bundle it up, uh, in a launchable and make it a one click run.If you're doing things and you want just like a sandbox or something to run on, right. Like open claw. Huge moment. Super exciting. Our, uh, and we'll talk into it more, but. You know, internally, people wanna run this, and you, we know we have to be really careful from the security implications. Do we let this run on the corporate network?Security's guidance was, Hey, [00:09:00] run this on breath, it's in, you know, it's, it's, it's a vm, it's sitting in the cloud, it's off the corporate network. It's isolated. And so that's been our stance internally and externally about how to even run something like open call while we figure out how to run these things securely.But yeah,swyx: I think there's also like, you almost like we're the right team at the right time when Nvidia is starting to invest a lot more in developer experience or whatever you call it. Yeah. Uh, UX or I don't know what you call it, like software. Like obviously NVIDIA is always invested in software, but like, there's like, this is like a different audience.Yeah. It's aNader: widerKyle: developer base.swyx: Yeah. Right.Nader: Yeah. Yeah. You know, it's funny, it's like, it's not, uh,swyx: so like, what, what is it called internally? What, what is this that people should be aware that is going on there?Nader: Uh, what, like developer experienceswyx: or, yeah, yeah. Is it's called just developer experience or is there like a broader strategy hereNader: in Nvidia?Um, Nvidia always wants to make a good developer experience. The thing is and a lot of the technology is just really complicated. Like, it's not, it's uh, you know, I think, um. The thing that's been really growing or the AI's growing is having a huge moment, not [00:10:00] because like, let's say data scientists in 2018, were quiet then and are much louder now.The pie is com, right? There's a whole bunch of new audiences. My mom's wondering what she's doing. My sister's learned, like taught herself how to code. Like the, um, you know, I, I actually think just generally AI's a big equalizer and you're seeing a more like technologically literate society, I guess.Like everyone's, everyone's learning how to code. Uh, there isn't really an excuse for that. And so building a good UX means that you really understand who your end user is. And when your end user becomes such a wide, uh, variety of people, then you have to almost like reinvent the practice, right? Yeah. You haveKyle: to, and actually build more developer ux, right?Because the, there are tiers of developer base that were added. You know, the, the hackers that are building on top of open claw, right? For example, have never used gpu. They don't know what kuda is. They, they, they just want to run something.Nader: Yeah.Kyle: You need new UX that is not just. Hey, you know, how do you program something in Cuda and run it?And then, and then we built, you know, like when Deep Learning was getting big, we built, we built Torch and, and, but so recently the amount of like [00:11:00] layers that are added to that developer stack has just exploded because AI has become ubiquitous. Everyone's using it in different ways. Yeah. It'sNader: moving fast in every direction.Vertical, horizontal.Vibhu: Yeah. You guys, you even take it down to hardware, like the DGX Spark, you know, it's, it's basically the same system as just throwing it up on big GPU cluster.Nader: Yeah, yeah, yeah. It's amazing. Blackwell.swyx: Yeah. Uh, we saw the preview at the last year's GTC and that was one of the better performing, uh, videos so far, and video coverage so far.Awesome. This will beat it. Um,Nader: that wasswyx: actually, we have fingersNader: crossed. Yeah.DGX Spark and Remote AccessNader: Even when Grace Blackwell or when, um, uh, DGX Spark was first coming out getting to be involved in that from the beginning of the developer experience. And it just comes back to what youswyx: were involved.Nader: Yeah. St. St.swyx: Mars.Nader: Yeah. Yeah. I mean from, it was just like, I, I got an email, we just got thrown into the loop and suddenly yeah, I, it was actually really funny ‘cause I'm still pretty fresh from the acquisition and I'm, I'm getting an email from a bunch of the engineering VPs about like, the new hardware, GPU chip, like we're, or not chip, but just GPU system that we're putting out.And I'm like, okay, cool. Matters. Now involved with this for the ux, I'm like. What am I gonna do [00:12:00] here? So, I remember the first meeting, I was just like kind of quiet as I was hearing engineering VPs talk about what this box could be, what it could do, how we should use it. And I remember, uh, one of the first ideas that people were idea was like, oh, the first thing that it was like, I think a quote was like, the first thing someone's gonna wanna do with this is get two of them and run a Kubernetes cluster on top of them.And I was like, oh, I think I know why I'm here. I was like, the first thing we're doing is easy. SSH into the machine. And then, and you know, just kind of like scoping it down of like, once you can do that every, you, like the person who wants to run a Kubernetes cluster onto Sparks has a higher propensity for pain, then, then you know someone who buys it and wants to run open Claw right now, right?If you can make sure that that's as effortless as possible, then the rest becomes easy. So there's a tool called Nvidia Sync. It just makes the SSH connection really simple. So, you know, if you think about it like. If you have a Mac, uh, or a PC or whatever, if you have a laptop and you buy this GPU and you want to use it, you should be able to use it like it's A-A-G-P-U in the cloud, right?Um, but there's all this friction of like, how do you actually get into that? That's part of [00:13:00] Revs value proposition is just, you know, there's a CLI that wraps SSH and makes it simple. And so our goal is just get you into that machine really easily. And one thing we just launched at CES, it's in, it's still in like early access.We're ironing out some kinks, but it should be ready by GTC. You can register your spark on Brev. And so now if youswyx: like remote managed yeah, local hardware. Single pane of glass. Yeah. Yeah. Because Brev can already manage other clouds anyway, right?Vibhu: Yeah, yeah. And you use the spark on Brev as well, right?Nader: Yeah. But yeah, exactly. So, so you, you, so you, you set it up at home you can run the command on it, and then it gets it's essentially it'll appear in your Brev account, and then you can take your laptop to a Starbucks or to a cafe, and you'll continue to use your, you can continue use your spark just like any other cloud node on Brev.Yeah. Yeah. And it's just like a pre-provisioned centerswyx: in yourNader: home. Yeah, exactly.swyx: Yeah. Yeah.Vibhu: Tiny little data center.Nader: Tiny little, the size ofVibhu: your phone.SOL Culture and Dynamo Setupswyx: One more thing before we move on to Kyle. Just have so many Jensen stories and I just love, love mining Jensen stories. Uh, my favorite so far is SOL. Uh, what is, yeah, what is S-O-L-S-O-LNader: is actually, i, I think [00:14:00] of all the lessons I've learned, that one's definitely my favorite.Kyle: It'll always stick with you.Nader: Yeah. Yeah. I, you know, in your startup, everything's existential, right? Like we've, we've run out of money. We were like, on the risk of, of losing payroll, we've had to contract our team because we l ran outta money. And so like, um, because of that you're really always forcing yourself to I to like understand the root cause of everything.If you get a date, if you get a timeline, you know exactly why that date or timeline is there. You're, you're pushing every boundary and like, you're not just say, you're not just accepting like a, a no. Just because. And so as you start to introduce more layers, as you start to become a much larger organization, SOL is is essentially like what is the physics, right?The speed of light moves at a certain speed. So if flight's moving some slower, then you know something's in the way. So before trying to like layer reality back in of like, why can't this be delivered at some date? Let's just understand the physics. What is the theoretical limit to like, uh, how fast this can go?And then start to tell me why. ‘cause otherwise people will start telling you why something can't be done. But actually I think any great leader's goal is just to create urgency. Yeah. [00:15:00] There's an infiniteKyle: create compelling events, right?Nader: Yeah.Kyle: Yeah. So l is a term video is used to instigate a compelling event.You say this is done. How do we get there? What is the minimum? As much as necessary, as little as possible thing that it takes for us to get exactly here and. It helps you just break through a bunch of noise.swyx: Yeah.Kyle: Instantly.swyx: One thing I'm unclear about is, can only Jensen use the SOL card? Like, oh, no, no, no.Not everyone get the b******t out because obviously it's Jensen, but like, can someone else be like, no, likeKyle: frontline engineers use it.Nader: Yeah. Every, I think it's not so much about like, get the b******t out. It's like, it's like, give me the root understanding, right? Like, if you tell me something takes three weeks, it like, well, what's the first principles?Yeah, the first principles. It's like, what's the, what? Like why is it three weeks? What is the actual yeah. What's the actual limit of why this is gonna take three weeks? If you're gonna, if you, if let's say you wanted to buy a new computer and someone told you it's gonna be here in five days, what's the SOL?Well, like the SOL is like, I could walk into a Best Buy and pick it up for you. Right? So then anything that's like beyond that is, and is that practical? Is that how we're gonna, you know, let's say give everyone in the [00:16:00] company a laptop, like obviously not. So then like that's the SOL and then it's like, okay, well if we have to get more than 10, suddenly there might be some, right?And so now we can kind of piece the reality back.swyx: So, so this is the. Paul Graham do things that don't scale. Yeah. And this is also the, what people would now call behi agency. Yeah.Kyle: It's actually really interesting because there's a, there's a second hardware angle to SOL that like doesn't come up for all the org sol is used like culturally at aswyx: media for everything.I'm also mining for like, I think that can be annoying sometimes. And like someone keeps going IOO you and you're like, guys, like we have to be stable. We have to, we to f*****g plan. Yeah.Kyle: It's an interesting balance.Nader: Yeah. I encounter that with like, actually just with, with Alec, right? ‘cause we, we have a new conference so we need to launch, we have, we have goals of what we wanna launch by, uh, by the conference and like, yeah.At the end of the day, where isswyx: this GTC?Nader: Um, well this is like, so we, I mean we did it for CES, we did for GT CDC before that we're doing it for GTC San Jose. So I mean, like every, you know, we have a new moment. Um, and we want to launch something. Yeah. And we want to do so at SOL and that does mean that some, there's some level of prioritization that needs [00:17:00] to happen.And so it, it is difficult, right? I think, um, you have to be careful with what you're pushing. You know, stability is important and that should be factored into S-O-L-S-O-L isn't just like, build everything and let it break, you know, that, that's part of the conversation. So as you're laying, layering in all the details, one of them might be, Hey, we could build this, but then it's not gonna be stable for X, y, z reasons.And so that was like, one of our conversations for CES was, you know, hey, like we, we can get this into early access registering your spark with brev. But there are a lot of things that we need to do in order to feel really comfortable from a security perspective, right? There's a lot of networking involved before we deliver that to users.So it's like, okay. Let's get this to a point where we can at least let people experiment with it. We had it in a booth, we had it in Jensen's keynote, and then let's go iron out all the networking kinks. And that's not easy. And so, uh, that can come later. And so that was the way that we layered that back in.Yeah. ButKyle: It's not really about saying like, you don't have to do the, the maintenance or operational work. It's more about saying, you know, it's kind of like [00:18:00] highlights how progress is incremental, right? Like, what is the minimum thing that we can get to. And then there's SOL for like every component after that.But there's the SOL to get you, get you to the, the starting line. And that, that's usually how it's asked. Yeah. On the other side, you know, like SOL came out of like hardware at Nvidia. Right. So SOL is like literally if we ran the accelerator or the GPU with like at basically full speed with like no other constraints, like how FAST would be able to make a program go.swyx: Yeah. Yeah. Right.Kyle: Soswyx: in, in training that like, you know, then you work back to like some percentage of like MFU for example.Kyle: Yeah, that's a, that's a great example. So like, there's an, there's an S-O-L-M-F-U, and then there's like, you know, what's practically achievable.swyx: Cool. Should we move on to sort of, uh, Kyle's side?Uh, Kyle, you're coming more from the data science world. And, uh, I, I mean I always, whenever, whenever I meet someone who's done working in tabular stuff, graph neural networks, time series, these are basically when I go to new reps, I go to ICML, I walk the back halls. There's always like a small group of graph people.Yes. Absolute small group of tabular people. [00:19:00] And like, there's no one there. And like, it's very like, you know what I mean? Like, yeah, no, like it's, it's important interesting work if you care about solving the problems that they solve.Kyle: Yeah.swyx: But everyone else is just LMS all the time.Kyle: Yeah. I mean it's like, it's like the black hole, right?Has the event horizon reached this yet in nerves? Um,swyx: but like, you know, those are, those are transformers too. Yeah. And, and those are also like interesting things. Anyway, uh, I just wanted to spend a little bit of time on, on those, that background before we go into Dynamo, uh, proper.Kyle: Yeah, sure. I took a different path to Nvidia than that, or I joined six years ago, seven, if you count, when I was an intern.So I joined Nvidia, like right outta college. And the first thing I jumped into was not what I'd done in, during internship, which was like, you know, like some stuff for autonomous vehicles, like heavyweight object detection. I jumped into like, you know, something, I'm like, recommenders, this is popular. Andswyx: yeah, he did RexiKyle: as well.Yeah, Rexi. Yeah. I mean that, that was the taboo data at the time, right? You have tables of like, audience qualities and item qualities, and you're trying to figure out like which member of [00:20:00] the audience matches which item or, or more practically which item matches which member of the audience. And at the time, really it was like we were trying to enable.Uh, recommender, which had historically been like a little bit of a CP based workflow into something that like, ran really well in GPUs. And it's since been done. Like there are a bunch of libraries for Axis that run on GPUs. Uh, the common models like Deeplearning recommendation model, which came outta meta and the wide and deep model, which was used or was released by Google were very accelerated by GPUs using, you know, the fast HBM on the chips, especially to do, you know, vector lookups.But it was very interesting at the time and super, super relevant because like we were starting to get like. This explosion of feeds and things that required rec recommenders to just actively be on all the time. And sort of transitioned that a little bit towards graph neural networks when I discovered them because I was like, okay, you can actually use graphical neural networks to represent like, relationships between people, items, concepts, and that, that interested me.So I jumped into that at [00:21:00] Nvidia and, and got really involved for like two-ish years.swyx: Yeah. Uh, and something I learned from Brian Zaro Yeah. Is that you can just kind of choose your own path in Nvidia.Kyle: Oh my God. Yeah.swyx: Which is not a normal big Corp thing. Yeah. Like you, you have a lane, you stay in your lane.Nader: I think probably the reason why I enjoy being in a, a big company, the mission is the boss probably from a startup guy. Yeah. The missionswyx: is the boss.Nader: Yeah. Uh, it feels like a big game of pickup basketball. Like, you know, if you play one, if you wanna play basketball, you just go up to the court and you're like, Hey look, we're gonna play this game and we need three.Yeah. And you just like find your three. That's honestly for every new initiative that's what it feels like. Yeah.Vibhu: It also like shows, right? Like Nvidia. Just releasing state-of-the-art stuff in every domain. Yeah. Like, okay, you expect foundation models with Nemo tron voice just randomly parakeet.Call parakeet just comes out another one, uh, voice. TheKyle: video voice team has always been producing.Vibhu: Yeah. There's always just every other domain of paper that comes out, dataset that comes out. It's like, I mean, it also stems back to what Nvidia has to do, right? You have to make chips years before they're actually produced.Right? So you need to know, you need to really [00:22:00] focus. TheKyle: design process starts likeVibhu: exactlyKyle: three to five years before the chip gets to the market.Vibhu: Yeah. I, I'm curious more about what that's like, right? So like, you have specialist teams. Is it just like, you know, people find an interest, you go in, you go deep on whatever, and that kind of feeds back into, you know, okay, we, we expect predictions.Like the internals at Nvidia must be crazy. Right? You know? Yeah. Yeah. You know, you, you must. Not even without selling to people, you have your own predictions of where things are going. Yeah. And they're very based, very grounded. Right?Kyle: Yeah. It, it, it's really interesting. So there's like two things that I think that Amed does, which are quite interesting.Uh, one is like, we really index into passion. There's a big. Sort of organizational top sound push to like ensure that people are working on the things that they're passionate about. So if someone proposes something that's interesting, many times they can just email someone like way up the chain that they would find this relevant and say like, Hey, can I go work on this?Nader: It's actually like I worked at a, a big company for a couple years before, uh, starting on my startup journey and like, it felt very weird if you were to like email out of chain, if that makes [00:23:00] sense. Yeah. The emails at Nvidia are like mosh pitsswyx: shoot,Nader: and it's just like 60 people, just whatever. And like they're, there's this,swyx: they got messy like, reply all you,Nader: oh, it's in, it's insane.It's insane. They justKyle: help. You know, Maxim,Nader: the context. But, but that's actually like, I've actually, so this is a weird thing where I used to be like, why would we send emails? We have Slack. I am the entire, I'm the exact opposite. I feel so bad for anyone who's like messaging me on Slack ‘cause I'm so unresponsive.swyx: Your emailNader: Maxi, email Maxim. I'm email maxing Now email is a different, email is perfect because man, we can't work together. I'm email is great, right? Because important threads get bumped back up, right? Yeah, yeah. Um, and so Slack doesn't do that. So I just have like this casino going off on the right or on the left and like, I don't know which thread was from where or what, but like the threads get And then also just like the subject, so you can have like working threads.I think what's difficult is like when you're small, if you're just not 40,000 people I think Slack will work fine, but there's, I don't know what the inflection point is. There is gonna be a point where that becomes really messy and you'll actually prefer having email. ‘cause you can have working threads.You can cc more than nine people in a thread.Kyle: You can fork stuff.Nader: You can [00:24:00] fork stuff, which is super nice and just like y Yeah. And so, but that is part of where you can propose a plan. You can also just. Start, honestly, momentum's the only authority, right? So like, if you can just start, start to make a little bit of progress and show someone something, and then they can try it.That's, I think what's been, you know, I think the most effective way to push anything for forward. And that's both at Nvidia and I think just generally.Kyle: Yeah, there's, there's the other concept that like is explored a lot at Nvidia, which is this idea of a zero billion dollar business. Like market creation is a big thing at Nvidia.Like,swyx: oh, you want to go and start a zero billion dollar business?Kyle: Jensen says, we are completely happy investing in zero billion dollar markets. We don't care if this creates revenue. It's important for us to know about this market. We think it will be important in the future. It can be zero billion dollars for a while.I'm probably minging as words here for, but like, you know, like, I'll give an example. NVIDIA's been working on autonomous driving for a a long time,swyx: like an Nvidia car.Kyle: No, they, they'veVibhu: used the Mercedes, right? They're around the HQ and I think it finally just got licensed out. Now they're starting to be used quite a [00:25:00] bit.For 10 years you've been seeing Mercedes with Nvidia logos driving.Kyle: If you're in like the South San Santa Clara, it's, it's actually from South. Yeah. So, um. Zero billion dollar markets are, are a thing like, you know, Jensen,swyx: I mean, okay, look, cars are not a zero billion dollar market. But yeah, that's a bad example.Nader: I think, I think he's, he's messaging, uh, zero today, but, or even like internally, right? Like, like it's like, uh, an org doesn't have to ruthlessly find revenue very quickly to justify their existence. Right. Like a lot of the important research, a lot of the important technology being developed that, that's kind ofKyle: where research, research is very ide ideologically free at Nvidia.Yeah. Like they can pursue things that they wereswyx: Were you research officially?Kyle: I was never in research. Officially. I was always in engineering. Yeah. We in, I'm in an org called Deep Warning Algorithms, which is basically just how do we make things that are relevant to deep warning go fast.swyx: That sounds freaking cool.Vibhu: And I think a lot of that is underappreciated, right? Like time series. This week Google put out time. FF paper. Yeah. A new time series, paper res. Uh, Symantec, ID [00:26:00] started applying Transformers LMS to Yes. Rec system. Yes. And when you think the scale of companies deploying these right. Amazon recommendations, Google web search, it's like, it's huge scale andKyle: Yeah.Vibhu: You want fast?Kyle: Yeah. Yeah. Yeah. Actually it's, it, I, there's a fun moment that brought me like full circle. Like, uh, Amazon Ads recently gave a talk where they talked about using Dynamo for generative recommendation, which was like super, like weirdly cathartic for me. I'm like, oh my God. I've, I've supplanted what I was working on.Like, I, you're using LMS now to do what I was doing five years ago.swyx: Yeah. Amazing. And let's go right into Dynamo. Uh, maybe introduce Yeah, sure. To the top down and Yeah.Kyle: I think at this point a lot of people are familiar with the term of inference. Like funnily enough, like I went from, you know, inference being like a really niche topic to being something that's like discussed on like normal people's Twitter feeds.It's,Nader: it's on billboardsKyle: here now. Yeah. Very, very strange. Driving, driving, seeing just an inference ad on 1 0 1 inference at scale is becoming a lot more important. Uh, we have these moments like, you know, open claw where you have these [00:27:00] agents that take lots and lots of tokens, but produce, incredible results.There are many different aspects of test time scaling so that, you know, you can use more inference to generate a better result than if you were to use like a short amount of inference. There's reasoning, there's quiring, there's, adding agency to the model, allowing it to call tools and use skills.Dyno sort came about at Nvidia. Because myself and a couple others were, were sort of talking about the, these concepts that like, you know, you have inference engines like VLMS, shelan, tenor, TLM and they have like one single copy. They, they, they sort of think about like things as like one single copy, like one replica, right?Why Scale Out WinsKyle: Like one version of the model. But when you're actually serving things at scale, you can't just scale up that replica because you end up with like performance problems. There's a scaling limit to scaling up replicas. So you actually have to scale out to use a, maybe some Kubernetes type terminology.We kind of realized that there was like. A lot of potential optimization that we could do in scaling out and building systems for data [00:28:00] center scale inference. So Dynamo is this data center scale inference engine that sits on top of the frameworks like VLM Shilling and 10 T lm and just makes things go faster because you can leverage the economy of scale.The fact that you have KV cash, which we can define a little bit later, uh, in all these machines that is like unique and you wanna figure out like the ways to maximize your cash hits or you want to employ new techniques in inference like disaggregation, which Dynamo had introduced to the world in, in, in March, not introduced, it was a academic talk, but beforehand.But we are, you know, one of the first frameworks to start, supporting it. And we wanna like, sort of combine all these techniques into sort of a modular framework that allows you to. Accelerate your inference at scale.Nader: By the way, Kyle and I became friends on my first date, Nvidia, and I always loved, ‘cause like he always teaches meswyx: new things.Yeah. By the way, this is why I wanted to put two of you together. I was like, yeah, this is, this is gonna beKyle: good. It's very, it's very different, you know, like we've, we, we've, we've talked to each other a bunch [00:29:00] actually, you asked like, why, why can't we scale up?Nader: Yeah.Scale Up Limits ExplainedNader: model, you said model replicas.Kyle: Yeah. So you, so scale up means assigning moreswyx: heavier?Kyle: Yeah, heavier. Like making things heavier. Yeah, adding more GPUs. Adding more CPUs. Scale out is just like having a barrier saying, I'm gonna duplicate my representation of the model or a representation of this microservice or something, and I'm gonna like, replicate it Many times.Handle, load. And the reason that you can't scale, scale up, uh, past some points is like, you know, there, there, there are sort of hardware bounds and algorithmic bounds on, on that type of scaling. So I'll give you a good example that's like very trivial. Let's say you're on an H 100. The Maxim ENV link domain for H 100, for most Ds H one hundreds is heus, right?So if you scaled up past that, you're gonna have to figure out ways to handle the fact that now for the GPUs to communicate, you have to do it over Infin band, which is still very fast, but is not as fast as ENV link.swyx: Is it like one order of magnitude, like hundreds or,Kyle: it's about an order of magnitude?Yeah. Okay. Um, soswyx: not terrible.Kyle: [00:30:00] Yeah. I, I need to, I need to remember the, the data sheet here, like, I think it's like about 500 gigabytes. Uh, a second unidirectional for ENV link, and about 50 gigabytes a second unidirectional for Infin Band. I, it, it depends on the, the generation.swyx: I just wanna set this up for people who are not familiar with these kinds of like layers and the trash speedVibhu: and all that.Of course.From Laptop to Multi NodeVibhu: Also, maybe even just going like a few steps back before that, like most people are very familiar with. You see a, you know, you can use on your laptop, whatever these steel viol, lm you can just run inference there. All, there's all, you can, youcan run it on thatVibhu: laptop. You can run on laptop.Then you get to, okay, uh, models got pretty big, right? JLM five, they doubled the size, so mm-hmm. Uh, what do you do when you have to go from, okay, I can get 128 gigs of memory. I can run it on a spark. Then you have to go multi GPU. Yeah. Okay. Multi GPU, there's some support there. Now, if I'm a company and I don't have like.I'm not hiring the best researchers for this. Right. But I need to go [00:31:00] multi-node, right? I have a lot of servers. Okay, now there's efficiency problems, right? You can have multiple eight H 100 nodes, but, you know, is that as a, like, how do you do that efficiently?Kyle: Yeah. How do you like represent them? How do you choose how to represent the model?Yeah, exactly right. That's a, that's like a hard question. Everyone asks, how do you size oh, I wanna run GLM five, which just came out new model. There have been like four of them in the past week, by the way, like a bunch of new models.swyx: You know why? Right? Deep seek.Kyle: No comment. Oh. Yeah, but Ggl, LM five, right?We, we have this, new model. It's, it's like a large size, and you have to figure out how to both scale up and scale out, right? Because you have to find the right representation that you care about. Everyone does this differently. Let's be very clear. Everyone figures this out in their own path.Nader: I feel like a lot of AI or ML even is like, is like this. I think people think, you know, I, I was, there was some tweet a few months ago that was like, why hasn't fine tuning as a service taken off? You know, that might be me. It might have been you. Yeah. But people want it to be such an easy recipe to follow.But even like if you look at an ML model and specificKyle: to you Yeah,Nader: yeah.Kyle: And the [00:32:00] model,Nader: the situation, and there's just so much tinkering, right? Like when you see a model that has however many experts in the ME model, it's like, why that many experts? I don't, they, you know, they tried a bunch of things and that one seemed to do better.I think when it comes to how you're serving inference, you know, you have a bunch of decisions to make and there you can always argue that you can take something and make it more optimal. But I think it's this internal calibration and appetite for continued calibration.Vibhu: Yeah. And that doesn't mean like, you know, people aren't taking a shot at this, like tinker from thinking machines, you know?Yeah. RL as a service. Yeah, totally. It's, it also gets even harder when you try to do big model training, right? We're not the best at training Moes, uh, when they're pre-trained. Like we saw this with LAMA three, right? They're trained in such a sparse way that meta knows there's gonna be a bunch of inference done on these, right?They'll open source it, but it's very trained for what meta infrastructure wants, right? They wanna, they wanna inference it a lot. Now the question to basically think about is, okay, say you wanna serve a chat application, a coding copilot, right? You're doing a layer of rl, you're serving a model for X amount of people.Is it a chat model, a coding model? Dynamo, you know, back to that,Kyle: it's [00:33:00] like, yeah, sorry. So you we, we sort of like jumped off of, you know, jumped, uh, on that topic. Everyone has like, their own, own journey.Cost Quality Latency TradeoffsKyle: And I, I like to think of it as defined by like, what is the model you need? What is the accuracy you need?Actually I talked to NA about this earlier. There's three axes you care about. What is the quality that you're able to produce? So like, are you accurate enough or can you complete the task with enough, performance, high enough performance. Yeah, yeah. Uh, there's cost. Can you serve the model or serve your workflow?Because it's not just the model anymore, it's the workflow. It's the multi turn with an agent cheaply enough. And then can you serve it fast enough? And we're seeing all three of these, like, play out, like we saw, we saw new models from OpenAI that you know, are faster. You have like these new fast versions of models.You can change the amount of thinking to change the amount of quality, right? Produce more tokens, but at a higher cost in a, in a higher latency. And really like when you start this journey of like trying to figure out how you wanna host a model, you, you, you think about three things. What is the model I need to serve?How many times do I need to call it? What is the input sequence link was [00:34:00] the, what does the workflow look like on top of it? What is the SLA, what is the latency SLA that I need to achieve? Because there's usually some, this is usually like a constant, you, you know, the SLA that you need to hit and then like you try and find the lowest cost version that hits all of these constraints.Usually, you know, you, you start with those things and you say you, you kind of do like a bit of experimentation across some common configurations. You change the tensor parallel size, which is a form of parallelismVibhu: I take, it goes even deeper first. Gotta think what model.Kyle: Yes, course,ofKyle: course. It's like, it's like a multi-step design process because as you said, you can, you can choose a smaller model and then do more test time scaling and it'll equate the quality of a larger model because you're doing the test time scaling or you're adding a harness or something.So yes, it, it goes way deeper than that. But from the performance perspective, like once you get to the model you need, you need to host, you look at that and you say, Hey. I have this model, I need to serve it at the speed. What is the right configuration for that?Nader: You guys see the recent, uh, there was a paper I just saw like a few days ago that, uh, if you run [00:35:00] the same prompt twice, you're getting like double Just try itagain.Nader: Yeah, exactly.Vibhu: And you get a lot. Yeah. But the, the key thing there is you give the context of the failed try, right? Yeah. So it takes a shot. And this has been like, you know, basic guidance for quite a while. Just try again. ‘cause you know, trying, just try again. Did you try again? All adviceNader: in life.Vibhu: Just, it's a paper from Google, if I'm not mistaken, right?Yeah,Vibhu: yeah. I think it, it's like a seven bas little short paper. Yeah. Yeah. The title's very cute. And it's just like, yeah, just try again. Give it ask context,Kyle: multi-shot. You just like, say like, hey, like, you know, like take, take a little bit more, take a little bit more information, try and fail. Fail.Vibhu: And that basic concept has gone pretty deep.There's like, um, self distillation, rl where you, you do self distillation, you do rl and you have past failure and you know, that gives some signal so people take, try it again. Not strong enough.swyx: Uh, for, for listeners, uh, who listen to here, uh, vivo actually, and I, and we run a second YouTube channel for our paper club where, oh, that's awesome.Vivo just covered this. Yeah. Awesome. Self desolation and all that's, that's why he, to speed [00:36:00] on it.Nader: I'll to check it out.swyx: Yeah. It, it's just a good practice, like everyone needs, like a paper club where like you just read papers together and the social pressure just kind of forces you to just,Nader: we, we,there'sNader: like a big inference.Kyle: ReadingNader: group at a video. I feel so bad every time. I I, he put it on like, on our, he shared it.swyx: One, one ofNader: your guys,swyx: uh, is, is big in that, I forget es han Yeah, yeah,Kyle: es Han's on my team. Actually. Funny. There's a, there's a, there's a employee transfer between us. Han worked for Nater at Brev, and now he, he's on my team.He wasNader: our head of ai. And then, yeah, once we got in, andswyx: because I'm always looking for like, okay, can, can I start at another podcast that only does that thing? Yeah. And, uh, Esan was like, I was trying to like nudge Esan into like, is there something here? I mean, I don't think there's, there's new infant techniques every day.So it's like, it's likeKyle: you would, you would actually be surprised, um, the amount of blog posts you see. And ifswyx: there's a period where it was like, Medusa hydra, what Eagle, like, youKyle: know, now we have new forms of decode, uh, we have new forms of specula, of decoding or new,swyx: what,Kyle: what are youVibhu: excited? And it's exciting when you guys put out something like Tron.‘cause I remember the paper on this Tron three, [00:37:00] uh, the amount of like post train, the on tokens that the GPU rich can just train on. And it, it was a hybrid state space model, right? Yeah.Kyle: It's co-designed for the hardware.Vibhu: Yeah, go design for the hardware. And one of the things was always, you know, the state space models don't scale as well when you do a conversion or whatever the performance.And you guys are like, no, just keep draining. And Nitron shows a lot of that. Yeah.Nader: Also, something cool about Nitron it was released in layers, if you will, very similar to Dynamo. It's, it's, it's essentially it was released as you can, the pre-training, post-training data sets are released. Yeah. The recipes on how to do it are released.The model itself is released. It's full model. You just benefit from us turning on the GPUs. But there are companies like, uh, ServiceNow took the dataset and they trained their own model and we were super excited and like, you know, celebrated that work.ZoomVibhu: different. Zoom is, zoom is CGI, I think, uh, you know, also just to add like a lot of models don't put out based models and if there's that, why is fine tuning not taken off?You know, you can do your own training. Yeah,Kyle: sure.Vibhu: You guys put out based model, I think you put out everything.Nader: I believe I know [00:38:00]swyx: about base. BasicallyVibhu: without baseswyx: basic can be cancelable.Vibhu: Yeah. Base can be cancelable.swyx: Yeah.Vibhu: Safety training.swyx: Did we get a full picture of dymo? I, I don't know if we, what,Nader: what I'd love is you, you mentioned the three axes like break it down of like, you know, what's prefilled decode and like what are the optimizations that we can get with Dynamo?Kyle: Yeah. That, that's, that's, that's a great point. So to summarize on that three axis problem, right, there are three things that determine whether or not something can be done with inference, cost, quality, latency, right? Dynamo is supposed to be there to provide you like the runtime that allows you to pull levers to, you know, mix it up and move around the parade of frontier or the preto surface that determines is this actually possible with inference And AI todayNader: gives you the knobs.Kyle: Yeah, exactly. It gives you the knobs.Disaggregation Prefill vs DecodeKyle: Uh, and one thing that like we, we use a lot in contemporary inference and is, you know, starting to like pick up from, you know, in, in general knowledge is this co concept of disaggregation. So historically. Models would be hosted with a single inference engine. And that inference engine [00:39:00] would ping pong between two phases.There's prefill where you're reading the sequence generating KV cache, which is basically just a set of vectors that represent the sequence. And then using that KV cache to generate new tokens, which is called Decode. And some brilliant researchers across multiple different papers essentially made the realization that if you separate these two phases, you actually gain some benefits.Those benefits are basically a you don't have to worry about step synchronous scheduling. So the way that an inference engine works is you do one step and then you finish it, and then you schedule, you start scheduling the next step there. It's not like fully asynchronous. And the problem with that is you would have, uh, essentially pre-fill and decode are, are actually very different in terms of both their resource requirements and their sometimes their runtime.So you would have like prefill that would like block decode steps because you, you'd still be pre-filing and you couldn't schedule because you know the step has to end. So you remove that scheduling issue and then you also allow you, or you yourself, to like [00:40:00] split the work into two different ki types of pools.So pre-fill typically, and, and this changes as, as model architecture changes. Pre-fill is, right now, compute bound most of the time with the sequence is sufficiently long. It's compute bound. On the decode side because you're doing a full Passover, all the weights and the entire sequence, every time you do a decode step and you're, you don't have the quadratic computation of KV cache, it's usually memory bound because you're retrieving a linear amount of memory and you're doing a linear amount of compute as opposed to prefill where you retrieve a linear amount of memory and then use a quadratic.You know,Nader: it's funny, someone exo Labs did a really cool demo where for the DGX Spark, which has a lot more compute, you can do the pre the compute hungry prefill on a DG X spark and then do the decode on a, on a Mac. Yeah. And soVibhu: that's faster.Nader: Yeah. Yeah.Kyle: So you could, you can do that. You can do machine strat stratification.Nader: Yeah.Kyle: And like with our future generation generations of hardware, we actually announced, like with Reuben, this [00:41:00] new accelerator that is prefilled specific. It's called Reuben, CPX. SoKubernetes Scaling with GroveNader: I have a question when you do the scale out. Yeah. Is scaling out easier with Dynamo? Because when you need a new node, you can dedicate it to either the Prefill or, uh, decode.Kyle: Yeah. So Dynamo actually has like a, a Kubernetes component in it called Grove that allows you to, to do this like crazy scaling specialization. It has like this hot, it's a representation that, I don't wanna go too deep into Kubernetes here, but there was a previous way that you would like launch multi-node work.Uh, it's called Leader Worker Set. It's in the Kubernetes standard, and Leader worker set is great. It served a lot of people super well for a long period of time. But one of the things that it's struggles with is representing a set of cases where you have a multi-node replica that has a pair, right?You know, prefill and decode, or it's not paired, but it has like a second stage that has a ratio that changes over time. And prefill and decode are like two different things as your workload changes, right? The amount of prefill you'll need to do may change. [00:42:00] The amount of decode that you, you'll need to do might change, right?Like, let's say you start getting like insanely long queries, right? That probably means that your prefill scales like harder because you're hitting these, this quadratic scaling growth.swyx: Yeah.And then for listeners, like prefill will be long input. Decode would be long output, for example, right?Kyle: Yeah. So like decode, decode scale. I mean, decode is funny because the amount of tokens that you produce scales with the output length, but the amount of work that you do per step scales with the amount of tokens in the context.swyx: Yes.Kyle: So both scales with the input and the output.swyx: That's true.Kyle: But on the pre-fold view code side, like if.Suddenly, like the amount of work you're doing on the decode side stays about the same or like scales a little bit, and then the prefilled side like jumps up a lot. You actually don't want that ratio to be the same. You want it to change over time. So Dynamo has a set of components that A, tell you how to scale.It tells you how many prefilled workers and decoded workers you, it thinks you should have, and also provides a scheduling API for Kubernetes that allows you to actually represent and affect this scheduling on, on, on your actual [00:43:00] hardware, on your compute infrastructure.Nader: Not gonna lie. I feel a little embarrassed for being proud of my SVG function earlier.swyx: No, itNader: wasreallyKyle: cute. I, Iswyx: likeNader: it's all,swyx: it's all engineering. It's all engineering. Um, that's where I'mKyle: technical.swyx: One thing I'm, I'm kind of just curious about with all with you see at a systems level, everything going on here. Mm-hmm. And we, you know, we're scaling it up in, in multi, in distributed systems.Context Length and Co Designswyx: Um, I think one thing that's like kind of, of the moment right now is people are asking, is there any SOL sort of upper bounds. In terms of like, let's call, just call it context length for one for of a better word, but you can break it down however you like.Nader: Yeah.swyx: I just think like, well, yeah, I mean, like clearly you can engage in hybrid architectures and throw in some state space models in there.All, all you want, but it looks, still looks very attention heavy.Kyle: Yes. Uh, yeah. Long context is attention heavy. I mean, we have these hybrid models, um,swyx: to take and most, most models like cap out at a million contexts and that's it. Yeah. Like for the last two years has been it.Kyle: Yeah. The model hardware context co-design thing that we're seeing these days is actually super [00:44:00] interesting.It's like my, my passion, like my secret side passion. We see models like Kimmy or G-P-T-O-S-S. I'm use these because I, I know specific things about these models. So Kimmy two comes out, right? And it's an interesting model. It's like, like a deep seek style architecture is MLA. It's basically deep seek, scaled like a little bit differently, um, and obviously trained differently as well.But they, they talked about, why they made the design choices for context. Kimmy has more experts, but fewer attention heads, and I believe a slightly smaller attention, uh, like dimension. But I need to remember, I need to check that. Uh, it doesn't matter. But they discussed this actually at length in a blog post on ji, which is like our pu which is like credit puswyx: Yeah.Kyle: Um, in, in China. Chinese red.swyx: Yeah.Kyle: It's, yeah. So it, it's, it's actually an incredible blog post. Uh, like all the mls people in, in, in that, I've seen that on GPU are like very brilliant, but they, they talk about like the creators of Kimi K two [00:45:00] actually like, talked about it on, on, on there in the blog post.And they say, we, we actually did an experiment, right? Attention scales with the number of heads, obviously. Like if you have 64 heads versus 32 heads, you do half the work of attention. You still scale quadratic, but you do half the work. And they made a, a very specific like. Sort of barter in their system, in their architecture, they basically said, Hey, what if we gave it more experts, so we're gonna use more memory capacity.But we keep the amount of activated experts the same. We increase the expert sparsity, so we have fewer experts act. The ratio to of experts activated to number of experts is smaller, and we decrease the number of attention heads.Vibhu: And kind of for context, what the, what we had been seeing was you make models sparser instead.So no one was really touching heads. You're just having, uh,Kyle: well, they, they did, they implicitly made it sparser.Vibhu: Yeah, yeah. For, for Kimmy. They did,Kyle: yes.Vibhu: They also made it sparser. But basically what we were seeing was people were at the level of, okay, there's a sparsity ratio. You want more total parameters, less active, and that's sparsity.[00:46:00]But what you see from papers, like, the labs like moonshot deep seek, they go to the level of, okay, outside of just number of experts, you can also change how many attention heads and less attention layers. More attention. Layers. Layers, yeah. Yes, yes. So, and that's all basically coming back to, just tied together is like hardware model, co-design, which isKyle: hardware model, co model, context, co-design.Vibhu: Yeah.Kyle: Right. Like if you were training a, a model that was like. Really, really short context, uh, or like really is good at super short context tasks. You may like design it in a way such that like you don't care about attention scaling because it hasn't hit that, like the turning point where like the quadratic curve takes over.Nader: How do you consider attention or context as a separate part of the co-design? Like I would imagine hardware or just how I would've thought of it is like hardware model. Co-design would be hardware model context co-designKyle: because the harness and the context that is produced by the harness is a part of the model.Once it's trained in,Vibhu: like even though towards the end you'll do long context, you're not changing architecture through I see. Training. Yeah.Kyle: I mean you can try.swyx: You're saying [00:47:00] everyone's training the harness into the model.Kyle: I would say to some degree, orswyx: there's co-design for harness. I know there's a small amount, but I feel like not everyone has like gone full send on this.Kyle: I think, I think I think it's important to internalize the harness that you think the model will be running. Running into the model.swyx: Yeah. Interesting. Okay. Bash is like the universal harness,Kyle: right? Like I'll, I'll give. An example here, right? I mean, or just like a, like a, it's easy proof, right? If you can train against a harness and you're using that harness for everything, wouldn't you just train with the harness to ensure that you get the best possible quality out of,swyx: Well, the, uh, I, I can provide a counter argument.Yeah, sure. Which is what you wanna provide a generally useful model for other people to plug into their harnesses, right? So if youKyle: Yeah. Harnesses can be open, open source, right?swyx: Yeah. So I mean, that's, that's effectively what's happening with Codex.Kyle: Yeah.swyx: And, but like you may want like a different search tool and then you may have to name it differently or,Nader: I don't know how much people have pushed on this, but can you.Train a model, would it be, have you have people compared training a model for the for the harness versus [00:48:00] like post training forswyx: I think it's the same thing. It's the same thing. It's okay. Just extra post training. INader: see.swyx: And so, I mean, cognition does this course, it does this where you, you just have to like, if your tool is slightly different, um, either force your tool to be like the tool that they train for.Hmm. Or undo their training for their tool and then Oh, that's re retrain. Yeah. It's, it's really annoying and like,Kyle: I would hope that eventually we hit like a certain level of generality with respect to training newswyx: tools. This is not a GI like, it's, this is a really stupid like. Learn my tool b***h.Like, I don't know if, I don't know if I can say that, but like, you know, um, I think what my point kind of is, is that there's, like, I look at slopes of the scaling laws and like, this slope is not working, man. We, we are at a million token con
Siguenos en las redes sociales y en Discordhttps://linktr.ee/eytbiterosDiscord: https://discord.gg/eytbiterosPodcast en VIVO todos los Lunes a las 9pm: https://www.twitch.tv/eytbiterosFacebook: https://www.facebook.com/EYTBiterosInstagram: https://www.instagram.com/eytbiterosX: https://twitter.com/EYTBiteros
Clientes da Vivo foram alvo de vírus que rouba senhas. 'Vai impactar o preço', diz presidente da Motorola Brasil contra aumento de imposto de importação. As séries de Vorcaro: 5 produções do streaming mencionadas nas mensagens vazadas. Samsung obtém vitória judicial contra a TCL por 'falsas TVs QLED' e Microsoft anuncia Copilot Cowork, assistente de IA autônomo que trabalha por você.
O Lar dos Idosos e o Lions Clube de Getúlio Vargas apresentaram na manhã desta terça-feira (10) os detalhes da futura "creche do idoso", um centro de convivência diurno projetado para o município. Em entrevista ao programa Olho Vivo, da Rádio Sideral, os representantes das entidades convidaram a população para o jantar beneficente neste sábado, a partir das 20h, no Centro Comunitário Centenário. Na ocasião, será apresentada a maquete da obra.O novo espaço funcionará anexo ao atual complexo do Lar dos Idosos, mas com um modelo de atendimento em turno inverso, voltado a idosos que passam o dia sozinhos em casa.
Musk is in court trying to explain tweets that shook up company stock prices. LibreOffice scores a win against the EU. Oracle is slashing jobs as data center funding dries up. Nvidia slowing investments in OpenAI, and OpenAI hits the brakes on Adult Content. Google is absolutely ripping off websites and hurting their traffic. Vivo is showing off some hot new BIG camera sensors on the X300 Ultra. And we have to chat about these new MacBooks! Let's get our tech week started off RIGHT! -- Show Notes and Links: https://somegadgetguy.com/b/4bC Support Talking Tech with SomeGadgetGuy by contributing to their tip jar: https://tips.pinecast.com/jar/talking-tech-with-somegadgetgu Find out more at https://talking-tech-with-somegadgetgu.pinecast.co This podcast is powered by Pinecast. Try Pinecast for free, forever, no credit card required. If you decide to upgrade, use coupon code r-c117ce for 40% off for 4 months, and support Talking Tech with SomeGadgetGuy.
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The Taste Of Universal Episode 27 MENU Appetizer Digging into menu updates around the resort (Butterbeer season, Vivo, Category 10) Entrée Deep dive into Toon Lagoon & Marvel Superhero Island (spoiler alert: all the menus we discuss will be updated days after recording this episode!) Dessert Each co-host will present their Blue Sky creative overhaul of a Marvel restaurant!
A Prova Oral volta mais um ano com esta grande emissão ao Vivo de tudo aquilo que mereceu destaque.
Aquí les dejo unos muy buenos pedazos de un show en vivo que tuvimos en Culiacán hace ya algunos 4 años! Que bonito se vivían esos shows que bárbaro! Préndanse un buen gallo y espero lo disfruten
◉ Búscanos en todas las redes sociales como abejorromedia
Most mainstream phone options are kind of the same, year in and year out — but that doesn't mean there's no innovation to be found. The Verge's Allison Johnson is at Mobile World Congress, and joins the show to report on all the modular phones, robot phones, small phones, big phones, and (alas) 6G phones set to hit the market this year. After that, The Verge's Jess Weatherbed explains the phenomenon of the gadget strap, and makes the case that they're an increasingly useful accessory as our phones become even more important to our daily lives. (Yes, even if you have pockets.) Finally, The Verge's Jay Peters helps David answer a question from the Vergecast Hotline (call 866-VERGE11 or email vergecast@theverge.com!) about whether the metaverse, however you want to define it, is ever going to be realized. Further reading: Oh great, here comes 6G Honor claims its Robot Phone will launch later this year Lenovo made a Franken-laptop with modular ports and a second screen Vivo's next phone will launch with a professional camera rig Tecno's latest concept phone is lit by neon Honor's Magic V6 is the first foldable with an IP69 rating The Motorola Razr Fold is shaping up to be pure flagship Xiaomi's super-slim power bank costs extra in orange. Honor's thinnest tablet doesn't come cheap. Peak Design has wearable gadget straps for people who hate bags Apple's misunderstood crossbody iPhone strap might be the best I've seen Meta confirms Reality Labs layoffs and shifts to invest more in wearables Meta's VR metaverse is ditching VR Subscribe to The Verge for unlimited access to theverge.com, subscriber-exclusive newsletters, and our ad-free podcast feed.We love hearing from you! Email your questions and thoughts to vergecast@theverge.com or call us at 866-VERGE11. Learn more about your ad choices. Visit podcastchoices.com/adchoices
Siguenos en las redes sociales y en Discordhttps://linktr.ee/eytbiterosDiscord: https://discord.gg/eytbiterosPodcast en VIVO todos los Lunes a las 9pm: https://www.twitch.tv/eytbiterosFacebook: https://www.facebook.com/EYTBiterosInstagram: https://www.instagram.com/eytbiterosX: https://twitter.com/EYTBiteros
Imagine entrar em uma partida de Fortnite e descobrir que seu adversário pode ser um dos criminosos mais notórios da história recente. Nas últimas semanas, um boato viralizou nas redes sociais afirmando que Jeffrey Epstein estaria vivo e utilizando a conta "littlestjeff1" para jogar o battle royale da Epic Games. A teoria ganhou força após o vazamento de mais de 3,5 milhões de documentos judiciais nos Estados Unidos entre 2025 e 2026, que revelaram apelidos reais utilizados pelo financista. Neste vídeo, entenda a origem dessa desinformação. Explicamos como um jogador alterou seu nome de usuário para surfar na onda do vazamento e qual foi a resposta oficial de Tim Sweeney e da equipe da Epic Games para desmentir a conspiração. Além disso, analisamos o contexto técnico do Fortnite Tracker e o histórico real de Epstein com videogames, incluindo seu banimento da Xbox Live em 2013.
¿Es Jesucristo el único camino para llegar a Dios? Cuando los cristianos afirman que Jesucristo es el único camino para llegar a Dios no están siguiendo una conducta fanátíca o presuntuosa. Los cristianos aceptan esta premisa porque Jesucristo mismo lo afirmó. El cristianismo se fundamenta la verdad que fue revelada cuando Dios intervino en la historia humana a través de Cristo Jesús. "Jesús le dijo: Yo soy el camino la verdad y la vida; nadie viene al padre, sino por mi" San Juan 14;6 info@jesuselunicocamino.com
Siguenos en las redes sociales y en Discordhttps://linktr.ee/eytbiterosDiscord: https://discord.gg/eytbiterosPodcast en VIVO todos los Lunes a las 9pm: https://www.twitch.tv/eytbiterosFacebook: https://www.facebook.com/EYTBiterosInstagram: https://www.instagram.com/eytbiterosX: https://twitter.com/EYTBiteros
Hoje vamos falar sobre aquele filme de horror da década de 1990, que é um slasher com piadas metalinguísticas sobre as regras do gênero e começa com a letra P. Sim, é ele mesmo, Popcorn – O Pesadelo Está de Volta! Antes mesmo do famoso Pânico, esse slasher meio esquecido do início da década apostou no humor autoconsciente e na homenagem ao horror dos anos 1950. A produção investiu quase todo o dinheiro que tinha em um visual alucinado para o vilão e muitos adereços que referenciam as malandragens históricas de nosso amado Roger Corman. Embarque nesse festival de referências cinematográficas e conheça – ou relembre – essa pérola imperdível, mas cuidado, a qualquer momento podemos colocar um filme amaldiçoado para rodar.O RdMCast é produzido e apresentado por: Gabi Larocca, Gabriel Braga e Thiago Natário.Apoie o RdM e receba recompensas exclusivas: https://apoia.se/rdmCITADOS NO PROGRAMA:Popcorn – O Pesadelo Está De Volta (1991)Citações off topic:Pânico (1996)O Novo Pesadelo: O Retorno de Freddy Krueger (1994)Porky's – A Casa do Amor e do Riso (1981)Noite do Terror (1974)Sonho de Morte (1974)O Padrasto (1987)O Fantasma da Ópera (1989)Um Estranho à Minha Porta (1993)A Casa dos Maus Espíritos (1959)Força Diabólica (1959)Treze Fantasmas (1960)O Mundo Perdido (1925)Fúria de uma Região Perdida (1957)O Ataque da Mulher de 15 Metros (1958)O Incrível Homem que Derreteu (1977)Quanto Mais Quente Melhor (1959)Jogador Nº 1 (2018)Terremoto: A Falha de San Andreas (2015)A Invenção de Hugo Cabret (2011)As Aventuras de Sharkboy e Lavagirl em 3-D (2005)Cujo (1981)Pequenos Espiões (2001)EPISÓDIOS CITADOS:RdMCast #281 – Franquia PânicoRdMCast #370 – Especial A Hora do PesadeloRdMCast #323 – A História das Garotas FinaisRdMCast #260 – Especial Fantasma da ÓperaRdMCast #536 – Vivo ou Morto e outros mistérios Knives OutRdMCast #288 – The Rocky Horror Picture ShowRdMCast #284 – Animais no HorrorSiga o RdMYoutube: https://www.youtube.com/c/Rep%C3%BAblicadoMedoInstagram: @republicadomedoTwitter: @RdmcastEntre em contato através do: contato@republicadomedo.com.brLoja do RdMConheça nossos produtos: https://lojaflutuante.com.br/?produto=RdmPODCAST EDITADO PORFelipe LourençoESTÚDIO GRIM – Design para conteúdo digitalPortfólio: https://estudiogrim.com.br/Instagram: @estudiogrimContato: contato@estudiogrim.com.br
Vivo con Marcela Tauro - Sobre la Activación de la Glándula Pineal. Conviértete en un supporter de este podcast: https://www.spreaker.com/podcast/conexion-pineal--3574623/support.
¡HOLA AMIGUITOS! Los dejamos con un NUEVO EPISODIO de AISLADOS. Estamos los MIÉRCOLES al mediodía por YOUTUBE y SPOTIFY. TICKETS a los SHOWS en VIVO: https://linktr.ee/aisladoselpodcast¡SIGAN NUESTRAS REDES!Tiktok.com/aisladoselpodcastInstagram.com/aisladoselpodcast
Charlamos con José María Bellido, alcalde de Córdoba, sobre esta siempre fascinante ciudad y su histórico patrimonio
Reflexiones inspiradas por el Espíritu Santo de Dios.
Raquel Terto é autora roteirista, professora e curadora de roteiro, radicada no Rio de Janeiro. Trabalhou nas séries Central de Bico (Multishow), BA – O Beijo Adolescente (HBO) e Os Parças (Globoplay), além do desenvolvimento do projeto Eloá: Refém ao Vivo. Foi professora de roteiro na Escola de Cinema do Maranhão (IEMA) e palestrante e … Continue lendo "Primeiro Tratamento – Raquel Terto – # 362"
Si te gusta lo que escuchas y quieres apoyar esta empresita, ven a ver el programa en directo de lunes a jueves a las 18:00h en Twitch.tv/chiclanafriends
1. El informe del DTOP sobre la secretaria de la Vivienda y su centro de inspección de vehículos de motor: tiene que esperar. Mientras Justicia se impone fecha del viernes para decidir si investiga. 2. La nueva crisis de este gobierno se agudiza: Cámara citará a presidente de la AAA 3. Y sigue en el limbo el cheque del incentivo reintegrable 4. Confirmado por el gobierno federal, el desembolso de fondos federales bajo el Departamento de la Vivienda pisa y no arranca bajo el gobierno de Jenniffer González 5. La AEE quiere paralizar proceso de revisión de la tarifa fija 6. Vivo en tribunal federal de apelaciones en Boston el caso de LUMA contra DACO 7. DEPORTES ZONA-5 con José Aníbal Herrero y Manuel VélezSee omnystudio.com/listener for privacy information.
Este boletim traz um resumo das principais notícias do dia na análise de Samuel Possebon, editor chefe da TELETIME.TELETIME é a publicação de referência para quem acompanha o mercado de telecomunicações, tecnologia e Internet no Brasil. Uma publicação independente dedicada ao debate aprofundado e criterioso das questões econômicas, regulatórias, tecnológicas, operacionais e estratégicas das empresas do setor. Se você ainda não acompanha a newsletter TELETIME, inscreva-se aqui (shorturl.at/juzF1) e fique ligado no dia a dia do mercado de telecom. É simples e é gratuito.Você ainda pode acompanhar TELETIME nas redes sociais:Linkedin: https://www.linkedin.com/company/teletimenews/Facebook: https://www.facebook.com/Teletime/ Ou entre em nosso canal no Telegram: https://t.me/teletimenews Hosted on Acast. See acast.com/privacy for more information.
Join me for episode 467 of the Mobile Tech Podcast with guest Allison Johnson of The Verge -- brought to you by Mint Mobile. In this episode, we bow to the altar of Purse Computer, sing the praises of the Halide camera app (and Process Zero), lament Google's barely updated Pixel 10a, and brace ourselves for Samsung's upcoming Galaxy AI onslaught. We also discuss the upcoming special Apple Experience and Nothing launch event, then cover rumors, leaks, and news from Moto, Oppo, and Vivo.Episode Links- Support the podcast on Patreon: https://www.patreon.com/tnkgrl- Donate / buy me a coffee (PayPal): https://tnkgrl.com/tnkgrl/- Support the podcast with Mint Mobile: https://mintmobile.com/mobiletech- Allison Johnson: https://www.threads.net/@allisonjo1- All hail Purse Computer: https://www.theverge.com/tech/878485/samsung-galaxy-z-fold-7-travel-keyboard-logitech-laptop-replacement- Allison's Halide app review: https://www.theverge.com/tech/875919/halide-mark-iii-process-zero-hands-on- Google Pixel 10a official; the meh is strong: https://www.theverge.com/tech/880400/pixel-10a-hands-on-a-little-too-much-like-pixel-9a- More Galaxy AI is coming; gird your loins: https://www.theverge.com/tech/880460/looks-like-we-can-expect-more-ai-from-the-galaxy-s26-camera- The special Apple Experience is March 4: https://www.theverge.com/tech/879671/apple-special-experience-event-march-2026- Affordable colorful MacBooks coming soon: https://www.gsmarena.com/entrylevel_macbook_reportedly_launching_next_month_in_multiple_color_options-news-71569.php- More Moto FIFA phones coming soon: https://www.gsmarena.com/motorola_is_allegedly_working_on_a_fourth_fifa_world_cup_26_edition_phone-news-71596.php- Nothing Phone (4a) series details leak, launch event March 5: https://www.gsmarena.com/nothing_phone_4a_series_specs_colors_and_pricing_leaked-news-71607.php- Oppo Find X9 Ultra details leak: https://www.gsmarena.com/oppo_find_x9_ultras_battery_and_display_details_leaked-news-71521.php- Vivo V70:
En este nuevo Vivo del Podcast "La Hora de la Nostalgia", Vamos a Iniciar la temporada 7 charlar lo que se viene, veremos el trailer del primer episodio y leeremos sus comentarios y respondemos inquietudes y mucho más! El Podcast es conducido por Lea Devecchi, Sebastián Saravia y Juan Vargas Eguinoa. Participa con nosotros, como columnista estrella, el Maestro: Carlos Núñez Cortés.Apoyá el proyecto con un café en: https://cafecito.app/lahoradelanostalgiaTambién podés ser parte desde Patreon en: / lahoradelanostalgia Y tenés nuestras remeras acá: https://lhdln.redbubble.comTambién nos podés seguir en instagram: / horadelanostalgia y Facebook: https://www.facebook.com/profile.php?...Unite a la comunidad de Oyentes en Whatsaap https://chat.whatsapp.com/IfUsoup1G3E...Suscribite y dejanos tus comentarios!#lesluthiers #podcast #mastropiero #humor #nuevoepisodio #lahoradelanostalgia #lesluthiers
Editorial."Cada año, la entrega de los Premios Nacionales de Cultura marca un momento de reflexión colectiva sobre el valor profundo que tiene la creación intelectual y artística en la construcción del país. Estos reconocimientos no solo distinguen trayectorias individuales, sino que evidencian la vitalidad de la literatura, el teatro, la danza, la música y las artes plásticas como expresiones esenciales del pensamiento, la sensibilidad y la identidad costarricense..."#larevistacr @larevistacr www.larevista.cr
"Si hubiera"..."Si NO hubiera"... Independientemente de lo que haya pasado, creemos que hay algo que haber pasado para que el resultado fuera distinto. Pero todos tenemos una cita con el final de la vida y llegaremos puntuales, siempre.
¿Hasta dónde puede llegar la magia negra cuando entra en tu vida?
¡HOLA AMIGUITOS!Los dejamos con un NUEVO EPISODIO de AISLADOS. Estamos los MIÉRCOLES al MEDIODÍA por YOUTUBE y SPOTIFY.TICKETS a los SHOWS en VIVO: https://linktr.ee/aisladoselpodcast¡SIGAN NUESTRAS REDES!Instagram.com/aisladoselpodcastTiktok.com/aisladoselpodcast
Vanessa Rousselot, una de las directoras de Diario Vivo, un formato de periodismo en vivo, sobre un escenario, que se celebra dos veces al año, normalmente en un teatro de Madrid, explica la magia de lo efímero y de lo colectivo. Y también la magia, tantas veces terapéutica, de las historias que se preparan en Diario Vivo, donde nadie se sube al escenario a improvisar, sino después de meses de intenso trabajo para extraer, no la anécdota, sino la historia profunda detrás de una experiencia.
Es el responsable de llevar las ideas de los artistas hasta nuestras pantallas. Lleva 15 años a cargo del show del entretiempo en el Super Bowl, estuvo en la magnífica ceremonia de apertura en los Juegos Olímpicos de Londres 2012, y en su currículum anota cientos de especiales y conciertos de los artistas más exitosos del mundo. Para el inglés Hamish Hamilton, dirigir un espectáculo en vivo es una pasión tan desafiante como un deporte extrem o.
#patabajoelpodcast Unete a Nuestro Discord: https://discord.gg/gbUbSFf4 Muchas gracias por sintonizar, no olvides de suscribirse a nuestro canal para mas contenido! Unete a Patabajo Mafia! https://linktr.ee/patabajoelpodcast Kick de Darwin: https://kick.com/darwintvv Buscanos en Spotify: https://open.spotify.com/show/21saOhhqedeUfdWy3T0YY0 Apple Podcast: https://podcasts.apple.com/us/podcast/patabajo-el-podcast/id1570334931 Kit de todo el equipo que usamos para grabar los P Learn more about your ad choices. Visit megaphone.fm/adchoices
Estadão Verifica, núcleo de checagem de informações do jornal, ajuda o ouvinte a identificar o que é verdade, mentira, exagero ou conteúdo enganoso em conteúdos divulgados na Internet.See omnystudio.com/listener for privacy information.
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O ministro Gilmar Mendes, do STF, celebrou a vitória do socialista António José Seguro em Portugal e a derrota do candidato do Chega, André Ventura.Em postagem no X, o decano da Suprema Corte afirmou que o resultado "reafirma a tradição democrática de Portugal e a solidez de seus mecanismos institucionais de alternância de poder".Papo Antagonista é o programa que explica e debate os principais acontecimentos do dia com análises críticas e aprofundadas sobre a política brasileira e seus bastidores. Apresentado por Madeleine Lacsko, o programa traz contexto e opinião sobre os temas mais quentes da atualidade. Com foco em jornalismo, eleições e debate, é um espaço essencial para quem busca informação de qualidade. Ao vivo de segunda a sexta-feira às 18h. Apoie o jornalismo Vigilante: 10% de desconto para audiência do Papo Antagonista https://bit.ly/papoantagonista Siga O Antagonista no X: https://x.com/o_antagonista Acompanhe O Antagonista no canal do WhatsApp. Boletins diários, conteúdos exclusivos em vídeo e muito mais. https://whatsapp.com/channel/0029Va2SurQHLHQbI5yJN344 Leia mais em www.oantagonista.com.br | www.crusoe.com.br
EU Commission claims the TikTok algorithm is bad for you. Tech stocks took a hit last week. Colleges look to ban smartglasses for testing. OpenAI's scheme to eat up all the RAM is also hurting their own products. Samsung is skipping magnets on the S26. Vivo is looking to compete with action cameras. Steam Machine is delayed because of component costs, but why did we think it would be cheap? Let's get our tech week started off RIGHT! -- Show notes and links here: https://somegadgetguy.com/b/4ad Support Talking Tech with SomeGadgetGuy by contributing to their tip jar: https://tips.pinecast.com/jar/talking-tech-with-somegadgetgu Find out more at https://talking-tech-with-somegadgetgu.pinecast.co This podcast is powered by Pinecast. Try Pinecast for free, forever, no credit card required. If you decide to upgrade, use coupon code r-c117ce for 40% off for 4 months, and support Talking Tech with SomeGadgetGuy.
¡HOLA AMIGUITOS!Les dejamos un NUEVO EPISODIO de AISLADOS. Estamos los MIÉRCOLES al MEDIODÍA por YOUTUBE y SPOTIFY. Tickets a los SHOWS en VIVO: https://linktr.ee/aisladoselpodcast¡SIGAN NUESTRAS REDES!Tiktok.com/aisladoselpodcastInstagram.com/aisladoselpodcast
Is the 25-40g of protein per meal max a thing of the past? In a very recent article that released this month, "The Anabolic Response to Protein Ingestion During Recovery from Exercise Has No Upper Limit in Magnitude and Duration in Vivo in Humans" (PMID: 38118410), we see that a 100g protein intake has a "greater and prolonged anabolic response" than the traditional and previously thought of upper limit of 25g. What does this mean for clients? Listen in as I explain more about the study and its application. Topics discussed:- Protein and Upper Limit to Muscle Gain- Muscle Protein Synthesis- Study Details- Application of The Study- Gut Health Considerations- Reminders---------- My Live Program for Coaches: The Functional Nutrition and Metabolism Specialization www.metabolismschool.com---------- [Free] Metabolism School 101: The Video Serieshttp://www.metabolismschool.com/metabolism-101----------Subscribe to My Youtube Channel: https://youtube.com/@sammillerscience?si=s1jcR6Im4GDHbw_1----------Grab a Copy of My New Book - Metabolism Made Simple---------- Stay Connected: Instagram: @sammillerscienceYoutube: SamMillerScience Facebook: The Nutrition Coaching Collaborative CommunityTikTok: @sammillerscience----------“This Podcast is for general informational purposes only and does not constitute the practice of medicine, nursing or other professional health care services, including the giving of medical advice, and no doctor/patient relationship is formed. The use of information on this podcast and the show notes or the reliance on the information provided is to be done at the user's own risk. The content of this podcast is not intended to be a substitute for professional medical advice, diagnosis, or treatment and is for educational purposes only. Always consult your physician before beginning any exercise program and users should not disregard, or delay in obtaining, medical advice for any medical condition they may have and should seek the assistance of their health care professionals for any such conditions. By accessing this Podcast, the listener acknowledges that the entire contents and design of this Podcast, are the property of Oracle Athletic Science LLC, or used by Oracle Athletic Science LLC with permission, and are protected under U.S. and international copyright and trademark laws. Except as otherwise provided herein, users of this Podcast may save and use information contained in the Podcast only for personal or other non-commercial, educational purposes. No other use, including, without limitation, reproduction, retransmission or editing, of this Podcast may be made without the prior written permission of Oracle Athletic Science LLC, which may be requested by contacting the Oracle Athletic Science LLC by email at operations@sammillerscience.com. By accessing this Podcast, the listener acknowledges that Oracle Athletic Science LLC makes no warranty, guarantee, or representation as to the accuracy or sufficiency of the information featured in this Podcast."