Exabits

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Exabits

Exabits

@exa_bits

The Mothership of AI Compute: The Base Layer Everyone Builds On. Powered by Exascale Labs. 💪 https://t.co/BCZdSSFXBW

San Mateo Katılım Nisan 2022
373 Takip Edilen87.4K Takipçiler
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Mark Fidelman
Mark Fidelman@markfidelman·
What is really happening in AI 1/ The real bottleneck in AI isn’t just GPUs. It’s power, cooling, and data center architecture. Hyperscalers own the entire stack. Neo clouds mostly rent space + GPUs. We’re building the layer in-between: GPU-as-a-Service + vertically integrated power & cooling.
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Exabits
Exabits@exa_bits·
Not all AI compute is urgent. Instead of "compute as fast as possible," we're asking: How do we meet grid constraints while still delivering on performance SLAs? Result? Power capping, intelligent workload shifting, and data centers acting as flexible reserves for the grid. AI infrastructure doesn't have to fight the grid- it can help stabilize it.
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Exabits
Exabits@exa_bits·
In the last 10 years, Moore's Law gave us approximately 100x compute. We scaled 1,000,000x. We'll keep doing it. Energy efficiency directly drives factory revenues and token costs. Hardware prices rise, but token generation gets so much faster- token costs drop an order of magnitude every year. The future of AI isn't just more power. It's radically smarter power.
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Exabits
Exabits@exa_bits·
Why do HVDC + Solid-State Transformers (SSTs) matter for next-gen AI? Everyone focuses on GPUs, but as racks race toward 1MW with Blackwell & Vera Rubin, the real bottleneck is delivering massive, clean power efficiently. NVIDIA’s 800 VDC architecture boosts efficiency up to 5%, cuts maintenance 70%, and slashes TCO 30%. Fewer losses, less copper, lower cooling. Traditional AC worked for old data centers. AI needs HVDC for low-loss transmission + SSTs as smart precision regulators. GPUs are the muscle. This is the circulatory system. exascalelabs.ai/blog/why-hvdc-…
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Exabits
Exabits@exa_bits·
F.03, the first humanoid robot to enter the White House alongside Melania Trump, just created history. Serious AI compute powers advanced robotics from research to reality. Elite compute is needed to train, optimize, and operate these intelligent systems. Exabits can power the robots of the future, today. Visit exabits.ai to learn more.
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Exabits
Exabits@exa_bits·
Power grid is overbuilt for rare peak days. 99% of the time it has massive excess capacity sitting idle. We should design data centers to flex: throttle down or shift load when the grid needs it most. Use the idle power instead of forcing endless new buildouts. Why isn’t this happening?
Lex Fridman@lexfridman

Here's my conversation with Jensen Huang, CEO of NVIDIA, the most valuable & one of the most influential companies in the history of human civilization. It is the engine powering the AI revolution. This was a fascinating & inspiring conversation, in parts super-technical on engineering of every part of the AI stack, memory, power, supply chain (TSMC, ASML, etc), in parts about leadership & psychology, and in parts personal & philosophical about life, consciousness, mortality, and human nature. It's here on X in full and is up everywhere else (see comment). Timestamps: 0:00 - Introduction 0:33 - Extreme co-design and rack-scale engineering 3:18 - How Jensen runs NVIDIA 22:40 - AI scaling laws 37:40 - Biggest blockers to AI scaling laws 39:23 - Supply chain 41:18 - Memory 47:24 - Power 52:43 - Elon and Colossus 56:11 - Jensen's approach to engineering and leadership 1:01:37 - China 1:09:50 - TSMC and Taiwan 1:15:04 - NVIDIA's moat 1:20:41 - AI data centers in space 1:24:30 - Will NVIDIA be worth $10 trillion? 1:34:39 - Leadership under pressure 1:48:25 - Video games 1:55:16 - AGI timeline 1:57:29 - Future of programming 2:11:01 - Consciousness 2:17:22 - Mortality

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Exabits
Exabits@exa_bits·
NVIDIA's Isaac GR00T & Cosmos models redefining robotics dexterity at GTC2026. Simulate, train, deploy faster with Exabits' global GPU marketplace. Accessible compute, lower costs, and no vendor lock-in. Ready to build the next humanoid? Visit exabits.ai
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Exabits
Exabits@exa_bits·
Live from #GTC2026 in San Jose, Exabits Co-Founder Dr. Hoansoo Lee <@hoansoo>, CIO Jonathan Jaranilla <@JJcosino>, and CMO Mark Fidelman <@markfidelman> on the ground witnessing the next AI era unfold- agentic systems, physical AI, massive Blackwell/Rubin scale, DLSS 5, robotics! While the future gets announced, we're already provisioning the GPUs to run it: enterprise-grade clusters ready now. Witness → Build.
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Exabits
Exabits@exa_bits·
Where's the power for exploding AI data centers coming from? ✅Solar/wind only half the time + batteries? Sketchy & pricey for 24/7 gigawatt loads. ✅Small modular nuclear: clean, steady, reliable-seems like the winner. @markfidelman asks- any OTHER clean solution (no gas/oil) that can actually keep up? Drop your thoughts 👇 At Exabits, our AIOps-optimized GPU clusters slash waste & boost efficiency- no new plant needed.
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Exabits
Exabits@exa_bits·
Next week, don’t treat NVIDIA GTC (March 16-19) like “just another AI event.” That’s crazy. Mark <@markfidelman>, Exabits CMO will be there- look him up! Key themes already signaling: inference, agentic AI, physical AI (robotics), open models & AI factories. Predictions: 1. Keynote won’t hype fastest chip—it’s about lowest-cost, massive-scale intelligence. 2. Jensen leans into economics: drive token costs down, boost throughput, make long-context reasoning profitable. (Rubin teases up to 10x inference cost reduction vs Blackwell 🔥) 3. Biggest announcements? Not just GPUs—networking, photonics, storage, power, memory. Bottlenecks shifting to data movement for agent reasoning at scale. 4. Expect heavier push on open models + physical AI. NVIDIA wants the full stack (models, software, tooling, robotics, deployment). When everyone recaps the keynote, watch the real signals: who gets infra edge, factory advantage & cheap inference at scale. That’s where the money moves.
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Exabits
Exabits@exa_bits·
George sums it up perfectly: Organizations remain stuck until the entire factory is redesigned for Institutional Intelligence, but individual AI is like switching from steam to electric motors- huge personal gains. However, without massive, dependable compute at the base layer, none of that redesign is possible. Exabits: the mothership driving tomorrow's agents, coordination, and spontaneous systems, just fuel for genuine institutional upside- no slop.
George Sivulka@gsivulka

x.com/i/article/2024…

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Exabits@exa_bits·
Big Tech clouds charge more because they're racing to build the next ChatGPT themselves. Exabits? We're just in the business of selling compute- no distractions, no self-dealing. We're different: pure compute providers. No internal AI races. No scarcity games. Just high-end power at fair prices.
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Exabits
Exabits@exa_bits·
Kevin O'Leary on AI right now: If he were 25 today, he'd go ALL IN on implementation/execution for small businesses desperate to adopt AI (not just consulting) + data center development. Demand is insane- only 5GW under construction vs 30GW needed! At Exabits, we're building the exascale future in data centers. The road is tough, needs capital, but it's the niche that wins big. Who's ready? Hear it from @markfidelman, Exabits' CMO.
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Exabits retweetledi
Stanford Blockchain Accelerator (SBA)
@markfidelman alpha dropped: @exa_bits going public on NASDAQ in 3-6 months. service + customer advantage over AWS/Google/Microsoft. "good luck especially if you're smaller org" disrespectfully dominated. IPO szn. bussin.
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Exabits
Exabits@exa_bits·
Minimize infrastructure risk with Exabits: ✅ Distributed across multiple enterprise AI data centers worldwide- no single point of failure ✅Built-in global redundancy for consistent reliability ✅ High uptime supports uninterrupted training and inference Deploy with confidence. Scale securely.
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Exabits@exa_bits·
Before AI can generate text, predict outcomes, or automate decisions, it requires powerful compute. AI models need exponential compute power. Exabits ensures that scaling AI workloads doesn’t mean sacrificing performance. Exabits is the backbone of intelligence.
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Exabits
Exabits@exa_bits·
27+ AI-ready DCs. One global low-latency fabric. Scale without borders. Exabits.
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Exabits@exa_bits·
Distributed: partnering with/owning AI data centers worldwide for central control, ultra-low latency globally, optimal speed, and the lowest costs for customers.
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